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Dhabaleswar “DK” Panda, Ohio State State University | SuperComputing 22


 

>>Welcome back to The Cube's coverage of Supercomputing Conference 2022, otherwise known as SC 22 here in Dallas, Texas. This is day three of our coverage, the final day of coverage here on the exhibition floor. I'm Dave Nicholson, and I'm here with my co-host, tech journalist extraordinaire, Paul Gillum. How's it going, >>Paul? Hi, Dave. It's going good. >>And we have a wonderful guest with us this morning, Dr. Panda from the Ohio State University. Welcome Dr. Panda to the Cube. >>Thanks a lot. Thanks a lot to >>Paul. I know you're, you're chopping at >>The bit, you have incredible credentials, over 500 papers published. The, the impact that you've had on HPC is truly remarkable. But I wanted to talk to you specifically about a product project you've been working on for over 20 years now called mva, high Performance Computing platform that's used by more than 32 organ, 3,200 organizations across 90 countries. You've shepherded this from, its, its infancy. What is the vision for what MVA will be and and how is it a proof of concept that others can learn from? >>Yeah, Paul, that's a great question to start with. I mean, I, I started with this conference in 2001. That was the first time I came. It's very coincidental. If you remember the Finman Networking Technology, it was introduced in October of 2000. Okay. So in my group, we were working on NPI for Marinette Quadrics. Those are the old technology, if you can recollect when Finman was there, we were the very first one in the world to really jump in. Nobody knew how to use Infin van in an HPC system. So that's how the Happy Project was born. And in fact, in super computing 2002 on this exhibition floor in Baltimore, we had the first demonstration, the open source happy, actually is running on an eight node infinite van clusters, eight no zeros. And that was a big challenge. But now over the years, I means we have continuously worked with all infinite van vendors, MPI Forum. >>We are a member of the MPI Forum and also all other network interconnect. So we have steadily evolved this project over the last 21 years. I'm very proud of my team members working nonstop, continuously bringing not only performance, but scalability. If you see now INFIN event are being deployed in 8,000, 10,000 node clusters, and many of these clusters actually use our software, stack them rapid. So, so we have done a lot of, like our focuses, like we first do research because we are in academia. We come up with good designs, we publish, and in six to nine months, we actually bring it to the open source version and people can just download and then use it. And that's how currently it's been used by more than 3000 orange in 90 countries. And, but the interesting thing is happening, your second part of the question. Now, as you know, the field is moving into not just hvc, but ai, big data, and we have those support. This is where like we look at the vision for the next 20 years, we want to design this MPI library so that not only HPC but also all other workloads can take advantage of it. >>Oh, we have seen libraries that become a critical develop platform supporting ai, TensorFlow, and, and the pie torch and, and the emergence of, of, of some sort of default languages that are, that are driving the community. How, how important are these frameworks to the, the development of the progress making progress in the HPC world? >>Yeah, no, those are great. I mean, spite our stencil flow, I mean, those are the, the now the bread and butter of deep learning machine learning. Am I right? But the challenge is that people use these frameworks, but continuously models are becoming larger. You need very first turnaround time. So how do you train faster? How do you do influencing faster? So this is where HPC comes in and what exactly what we have done is actually we have linked floor fighters to our happy page because now you see the MPI library is running on a million core system. Now your fighters and tenor four clan also be scaled to to, to those number of, large number of course and gps. So we have actually done that kind of a tight coupling and that helps the research to really take advantage of hpc. >>So if, if a high school student is thinking in terms of interesting computer science, looking for a place, looking for a university, Ohio State University, bruns, world renowned, widely known, but talk about what that looks like from a day on a day to day basis in terms of the opportunity for undergrad and graduate students to participate in, in the kind of work that you do. What is, what does that look like? And is, and is that, and is that a good pitch to for, for people to consider the university? >>Yes. I mean, we continuously, from a university perspective, by the way, the Ohio State University is one of the largest single campus in, in us, one of the top three, top four. We have 65,000 students. Wow. It's one of the very largest campus. And especially within computer science where I am located, high performance computing is a very big focus. And we are one of the, again, the top schools all over the world for high performance computing. And we also have very strength in ai. So we always encourage, like the new students who like to really work on top of the art solutions, get exposed to the concepts, principles, and also practice. Okay. So, so we encourage those people that wish you can really bring you those kind of experience. And many of my past students, staff, they're all in top companies now, have become all big managers. >>How, how long, how long did you say you've been >>At 31 >>Years? 31 years. 31 years. So, so you, you've had people who weren't alive when you were already doing this stuff? That's correct. They then were born. Yes. They then grew up, yes. Went to university graduate school, and now they're on, >>Now they're in many top companies, national labs, all over the universities, all over the world. So they have been trained very well. Well, >>You've, you've touched a lot of lives, sir. >>Yes, thank you. Thank >>You. We've seen really a, a burgeoning of AI specific hardware emerge over the last five years or so. And, and architectures going beyond just CPUs and GPUs, but to Asics and f PGAs and, and accelerators, does this excite you? I mean, are there innovations that you're seeing in this area that you think have, have great promise? >>Yeah, there is a lot of promise. I think every time you see now supercomputing technology, you see there is sometime a big barrier comes barrier jump. Rather I'll say, new technology comes some disruptive technology, then you move to the next level. So that's what we are seeing now. A lot of these AI chips and AI systems are coming up, which takes you to the next level. But the bigger challenge is whether it is cost effective or not, can that be sustained longer? And this is where commodity technology comes in, which commodity technology tries to take you far longer. So we might see like all these likes, Gaudi, a lot of new chips are coming up, can they really bring down the cost? If that cost can be reduced, you will see a much more bigger push for AI solutions, which are cost effective. >>What, what about on the interconnect side of things, obvi, you, you, your, your start sort of coincided with the initial standards for Infin band, you know, Intel was very, very, was really big in that, in that architecture originally. Do you see interconnects like RDMA over converged ethernet playing a part in that sort of democratization or commoditization of things? Yes. Yes. What, what are your thoughts >>There for internet? No, this is a great thing. So, so we saw the infinite man coming. Of course, infinite Man is, commod is available. But then over the years people have been trying to see how those RDMA mechanisms can be used for ethernet. And then Rocky has been born. So Rocky has been also being deployed. But besides these, I mean now you talk about Slingshot, the gray slingshot, it is also an ethernet based systems. And a lot of those RMA principles are actually being used under the hood. Okay. So any modern networks you see, whether it is a Infin and Rocky Links art network, rock board network, you name any of these networks, they are using all the very latest principles. And of course everybody wants to make it commodity. And this is what you see on the, on the slow floor. Everybody's trying to compete against each other to give you the best performance with the lowest cost, and we'll see whoever wins over the years. >>Sort of a macroeconomic question, Japan, the US and China have been leapfrogging each other for a number of years in terms of the fastest supercomputer performance. How important do you think it is for the US to maintain leadership in this area? >>Big, big thing, significantly, right? We are saying that I think for the last five to seven years, I think we lost that lead. But now with the frontier being the number one, starting from the June ranking, I think we are getting that leadership back. And I think it is very critical not only for fundamental research, but for national security trying to really move the US to the leading edge. So I hope us will continue to lead the trend for the next few years until another new system comes out. >>And one of the gating factors, there is a shortage of people with data science skills. Obviously you're doing what you can at the university level. What do you think can change at the secondary school level to prepare students better to, for data science careers? >>Yeah, I mean that is also very important. I mean, we, we always call like a pipeline, you know, that means when PhD levels we are expecting like this even we want to students to get exposed to, to, to many of these concerts from the high school level. And, and things are actually changing. I mean, these days I see a lot of high school students, they, they know Python, how to program in Python, how to program in sea object oriented things. Even they're being exposed to AI at that level. So I think that is a very healthy sign. And in fact we, even from Ohio State side, we are always engaged with all this K to 12 in many different programs and then gradually trying to take them to the next level. And I think we need to accelerate also that in a very significant manner because we need those kind of a workforce. It is not just like a building a system number one, but how do we really utilize it? How do we utilize that science? How do we propagate that to the community? Then we need all these trained personal. So in fact in my group, we are also involved in a lot of cyber training activities for HPC professionals. So in fact, today there is a bar at 1 1 15 I, yeah, I think 1215 to one 15. We'll be talking more about that. >>About education. >>Yeah. Cyber training, how do we do for professionals? So we had a funding together with my co-pi, Dr. Karen Tom Cook from Ohio Super Center. We have a grant from NASA Science Foundation to really educate HPT professionals about cyber infrastructure and ai. Even though they work on some of these things, they don't have the complete knowledge. They don't get the time to, to learn. And the field is moving so fast. So this is how it has been. We got the initial funding, and in fact, the first time we advertised in 24 hours, we got 120 application, 24 hours. We couldn't even take all of them. So, so we are trying to offer that in multiple phases. So, so there is a big need for those kind of training sessions to take place. I also offer a lot of tutorials at all. Different conference. We had a high performance networking tutorial. Here we have a high performance deep learning tutorial, high performance, big data tutorial. So I've been offering tutorials at, even at this conference since 2001. Good. So, >>So in the last 31 years, the Ohio State University, as my friends remind me, it is properly >>Called, >>You've seen the world get a lot smaller. Yes. Because 31 years ago, Ohio, in this, you know, of roughly in the, in the middle of North America and the United States was not as connected as it was to everywhere else in the globe. So that's, that's pro that's, I i it kind of boggles the mind when you think of that progression over 31 years, but globally, and we talk about the world getting smaller, we're sort of in the thick of, of the celebratory seasons where, where many, many groups of people exchange gifts for varieties of reasons. If I were to offer you a holiday gift, that is the result of what AI can deliver the world. Yes. What would that be? What would, what would, what would the first thing be? This is, this is, this is like, it's, it's like the genie, but you only get one wish. >>I know, I know. >>So what would the first one be? >>Yeah, it's very hard to answer one way, but let me bring a little bit different context and I can answer this. I, I talked about the happy project and all, but recently last year actually we got awarded an S f I institute award. It's a 20 million award. I am the overall pi, but there are 14 universities involved. >>And who is that in that institute? >>What does that Oh, the I ici. C e. Okay. I cycle. You can just do I cycle.ai. Okay. And that lies with what exactly what you are trying to do, how to bring lot of AI for masses, democratizing ai. That's what is the overall goal of this, this institute, think of like a, we have three verticals we are working think of like one is digital agriculture. So I'll be, that will be my like the first ways. How do you take HPC and AI to agriculture the world as though we just crossed 8 billion people. Yeah, that's right. We need continuous food and food security. How do we grow food with the lowest cost and with the highest yield? >>Water >>Consumption. Water consumption. Can we minimize or minimize the water consumption or the fertilization? Don't do blindly. Technologies are out there. Like, let's say there is a weak field, A traditional farmer see that, yeah, there is some disease, they will just go and spray pesticides. It is not good for the environment. Now I can fly it drone, get images of the field in the real time, check it against the models, and then it'll tell that, okay, this part of the field has disease. One, this part of the field has disease. Two, I indicate to the, to the tractor or the sprayer saying, okay, spray only pesticide one, you have pesticide two here. That has a big impact. So this is what we are developing in that NSF A I institute I cycle ai. We also have, we have chosen two additional verticals. One is animal ecology, because that is very much related to wildlife conservation, climate change, how do you understand how the animals move? Can we learn from them? And then see how human beings need to act in future. And the third one is the food insecurity and logistics. Smart food distribution. So these are our three broad goals in that institute. How do we develop cyber infrastructure from below? Combining HP c AI security? We have, we have a large team, like as I said, there are 40 PIs there, 60 students. We are a hundred members team. We are working together. So, so that will be my wish. How do we really democratize ai? >>Fantastic. I think that's a great place to wrap the conversation here On day three at Supercomputing conference 2022 on the cube, it was an honor, Dr. Panda working tirelessly at the Ohio State University with his team for 31 years toiling in the field of computer science and the end result, improving the lives of everyone on Earth. That's not a stretch. If you're in high school thinking about a career in computer science, keep that in mind. It isn't just about the bits and the bobs and the speeds and the feeds. It's about serving humanity. Maybe, maybe a little, little, little too profound a statement, I would argue not even close. I'm Dave Nicholson with the Queue, with my cohost Paul Gillin. Thank you again, Dr. Panda. Stay tuned for more coverage from the Cube at Super Compute 2022 coming up shortly. >>Thanks a lot.

Published Date : Nov 17 2022

SUMMARY :

Welcome back to The Cube's coverage of Supercomputing Conference 2022, And we have a wonderful guest with us this morning, Dr. Thanks a lot to But I wanted to talk to you specifically about a product project you've So in my group, we were working on NPI for So we have steadily evolved this project over the last 21 years. that are driving the community. So we have actually done that kind of a tight coupling and that helps the research And is, and is that, and is that a good pitch to for, So, so we encourage those people that wish you can really bring you those kind of experience. you were already doing this stuff? all over the world. Thank this area that you think have, have great promise? I think every time you see now supercomputing technology, with the initial standards for Infin band, you know, Intel was very, very, was really big in that, And this is what you see on the, Sort of a macroeconomic question, Japan, the US and China have been leapfrogging each other for a number the number one, starting from the June ranking, I think we are getting that leadership back. And one of the gating factors, there is a shortage of people with data science skills. And I think we need to accelerate also that in a very significant and in fact, the first time we advertised in 24 hours, we got 120 application, that's pro that's, I i it kind of boggles the mind when you think of that progression over 31 years, I am the overall pi, And that lies with what exactly what you are trying to do, to the tractor or the sprayer saying, okay, spray only pesticide one, you have pesticide two here. I think that's a great place to wrap the conversation here On

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Lucas Snyder, Indiana University and Karl Oversteyns, Purdue University | SuperComputing 22


 

(upbeat music) >> Hello, beautiful humans and welcome back to Supercomputing. We're here in Dallas, Texas giving you live coverage with theCUBE. I'm joined by David Nicholson. Thank you for being my left arm today. >> Thank you Savannah. >> It's a nice little moral. Very excited about this segment. We've talked a lot about how the fusion between academia and the private sector is a big theme at this show. You can see multiple universities all over the show floor as well as many of the biggest companies on earth. We were very curious to learn a little bit more about this from people actually in the trenches. And we are lucky to be joined today by two Purdue students. We have Lucas and Karl. Thank you both so much for being here. >> One Purdue, one IU, I think. >> Savannah: Oh. >> Yeah, yeah, yeah. >> I'm sorry. Well then wait, let's give Indiana University their fair do. That's where Lucas is. And Karl is at Purdue. Sorry folks. I apparently need to go back to school to learn how to read. (chuckles) In the meantime, I know you're in the middle of a competition. Thank you so much for taking the time out. Karl, why don't you tell us what's going on? What is this competition? What brought you all here? And then let's dive into some deeper stuff. >> Yeah, this competition. So we're a joint team between Purdue and IU. We've overcome our rivalries, age old rivalries to computer at the competition. It's a multi-part competition where we're going head to head against other teams from all across the world, benchmarking our super computing cluster that we designed. >> Was there a moment of rift at all when you came together? Or was everyone peaceful? >> We came together actually pretty nicely. Our two advisors they were very encouraging and so we overcame that, no hostility basically. >> I love that. So what are you working on and how long have you guys been collaborating on it? You can go ahead and start Lucas. >> So we've been prepping for this since the summer and some of us even before that. >> Savannah: Wow. >> And so currently we're working on the application phase of the competition. So everybody has different specialties and basically the competition gives you a set of rules and you have to accomplish what they tell you to do in the allotted timeframe and run things very quickly. >> And so we saw, when we came and first met you, we saw that there are lights and sirens and a monitor looking at the power consumption involved. So part of this is how much power is being consumed. >> Karl: That's right. >> Explain exactly what are the what are the rules that you have to live within? >> So, yeah, so the main constraint is the time as we mentioned and the power consumption. So for the benchmarking phase, which was one, two days ago there was a hard camp of 3000 watts to be consumed. You can't go over that otherwise you would be penalized for that. You have to rerun, start from scratch basically. Now there's a dynamic one for the application section where it's it modulates at random times. So we don't know when it's going to go down when it's going to go back up. So we have to adapt to that in real time. >> David: Oh, interesting. >> Dealing with a little bit of real world complexity I guess probably is simulation is here. I think that's pretty fascinating. I want to know, because I am going to just confess when I was your age last week, I did not understand the power of supercomputing and high performance computing. Lucas, let's start with you. How did you know this was the path you wanted to go down in your academic career? >> David: Yeah, what's your background? >> Yeah, give us some. >> So my background is intelligence systems engineering which is kind of a fusion. It's between, I'm doing bioengineering and then also more classical computer engineering. So my background is biology actually. But I decided to go down this path kind of on a whim. My professor suggested it and I've kind of fallen in love with it. I did my summer internship doing HPC and I haven't looked back. >> When did you think you wanted to go into this field? I mean, in high school, did you have a special teacher that sparked it? What was it? >> Lucas: That's funny that you say that. >> What was in your background? >> Yes, I mean, in high school towards the end I just knew that, I saw this program at IU and it's pretty new and I just thought this would be a great opportunity for me and I'm loving it so far. >> Do you have family in tech or is this a different path for you? >> Yeah, this is a different path for me, but my family is so encouraging and they're very happy for me. They text me all the time. So I couldn't be happier. >> Savannah: Just felt that in my heart. >> I know. I was going to say for the parents out there get the tissue out. >> Yeah, yeah, yeah. (chuckles) >> These guys they don't understand. But, so Karl, what's your story? What's your background? >> My background, I'm a major in unmanned Aerial systems. So this is a drones commercial applications not immediately connected as you might imagine although there's actually more overlap than one might think. So a lot of unmanned systems today a lot of it's remote sensing, which means that there's a lot of image processing that takes place. Mapping of a field, what have you, or some sort of object, like a silo. So a lot of it actually leverages high performance computing in order to map, to visualize much replacing, either manual mapping that used to be done by humans in the field or helicopters. So a lot of cost reduction there and efficiency increases. >> And when did you get this spark that said I want to go to Purdue? You mentioned off camera that you're from Belgium. >> Karl: That's right. >> Did you, did you come from Belgium to Purdue or you were already in the States? >> No, so I have family that lives in the States but I grew up in Belgium. >> David: Okay. >> I knew I wanted to study in the States. >> But at what age did you think that science and technology was something you'd be interested in? >> Well, I've always loved computers from a young age. I've been breaking computers since before I can remember. (chuckles) Much to my parents dismay. But yeah, so I've always had a knack for technology and that's sort of has always been a hobby of mine. >> And then I want to ask you this question and then Lucas and then Savannah will get some time. >> Savannah: It cool, will just sit here and look pretty. >> Dream job. >> Karl: Dream job. >> Okay. So your undergrad both you. >> Savannah: Offering one of my questions. Kind of, It's adjacent though. >> Okay. You're undergrad now? Is there grad school in your future do you feel that's necessary? Is that something you want to pursue? >> I think so. Entrepreneurship is something that's been in the back of my head for a while as well. So may be or something. >> So when I say dream job, understand could be for yourself. >> Savannah: So just piggyback. >> Dream thing after academia or stay in academia. What's do you think at this point? >> That's a tough question. You're asking. >> You'll be able to review this video in 10 years. >> Oh boy. >> This is give us your five year plan and then we'll have you back on theCUBE and see 2027. >> What's the dream? There's people out here watching this. I'm like, go, hey, interesting. >> So as I mentioned entrepreneurship I'm thinking I'll start a company at some point. >> David: Okay. >> Yeah. In what? I don't know yet. We'll see. >> David: Lucas, any thoughts? >> So after graduation, I am planning to go to grad school. IU has a great accelerated master's degree program so I'll stay an extra year and get my master's. Dream job is, boy, that's impossible to answer but I remember telling my dad earlier this year that I was so interested in what NASA was doing. They're sending a probe to one of the moons of Jupiter. >> That's awesome. From a parent's perspective the dream often is let's get the kids off the payroll. So I'm sure that your families are happy to hear that you have. >> I think these two will be right in that department. >> I think they're going to be okay. >> Yeah, I love that. I was curious, I want to piggyback on that because I think when NASA's doing amazing we have them on the show. Who doesn't love space. >> Yeah. >> I'm also an entrepreneur though so I very much empathize with that. I was going to ask to your dream job, but also what companies here do you find the most impressive? I'll rephrase. Because I was going to say, who would you want to work with? >> David: Anything you think is interesting? >> But yeah. Have you even had a chance to walk the floor? I know you've been busy competing >> Karl: Very little. >> Yeah, I was going to say very little. Unfortunately I haven't been able to roam around very much. But I look around and I see names that I'm like I can't even, it's crazy to see them. Like, these are people who are so impressive in the space. These are people who are extremely smart. I'm surrounded by geniuses everywhere I look, I feel like, so. >> Savannah: That that includes us. >> Yeah. >> He wasn't talking about us. Yeah. (laughs) >> I mean it's hard to say any of these companies I would feel very very lucky to be a part of, I think. >> Well there's a reason why both of you were invited to the party, so keep that in mind. Yeah. But so not a lot of time because of. >> Yeah. Tomorrow's our day. >> Here to get work. >> Oh yes. Tomorrow gets play and go talk to everybody. >> Yes. >> And let them recruit you because I'm sure that's what a lot of these companies are going to be doing. >> Yeah. Hopefully it's plan. >> Have you had a second at all to look around Karl. >> A Little bit more I've been going to the bathroom once in a while. (laughs) >> That's allowed I mean, I can imagine that's a vital part of the journey. >> I've ruin my gaze a little bit to what's around all kinds of stuff. Higher education seems to be very important in terms of their presence here. I find that very, very impressive. Purdue has a big stand IU as well, but also others all from Europe as well and Asia. I think higher education has a lot of potential in this field. >> David: Absolutely. >> And it really is that union between academia and the private sector. We've seen a lot of it. But also one of the things that's cool about HPC is it's really not ageist. It hasn't been around for that long. So, I mean, well, at this scale it's obviously this show's been going on since 1988 before you guys were even probably a thought. But I think it's interesting. It's so fun to get to meet you both. Thank you for sharing about what you're doing and what your dreams are. Lucas and Karl. >> David: Thanks for taking the time. >> I hope you win and we're going to get you off the show here as quickly as possible so you can get back to your teams and back to competing. David, great questions as always, thanks for being here. And thank you all for tuning in to theCUBE Live from Dallas, Texas, where we are at Supercomputing. My name's Savannah Peterson and I hope you're having a beautiful day. (gentle upbeat music)

Published Date : Nov 16 2022

SUMMARY :

Thank you for being my left arm today. Thank you both so much for being here. I apparently need to go back from all across the world, and so we overcame that, So what are you working on since the summer and some and you have to accomplish and a monitor looking at the So for the benchmarking phase, How did you know this was the path But I decided to go down I saw this program at They text me all the time. I was going to say for Yeah, yeah, yeah. But, so Karl, what's your story? So a lot of unmanned systems today And when did you get that lives in the States I can remember. ask you this question Savannah: It cool, will of my questions. Is that something you want to pursue? I think so. So when I say dream job, understand What's do you think at this point? That's a tough question. You'll be able to review and then we'll have you back What's the dream? So as I mentioned entrepreneurship I don't know yet. planning to go to grad school. to hear that you have. I think these two will I was curious, I want to piggyback on that I was going to ask to your dream job, Have you even had I can't even, it's crazy to see them. Yeah. I mean it's hard to why both of you were invited go talk to everybody. And let them recruit you Have you had a second I've been going to the I mean, I can imagine that's I find that very, very impressive. It's so fun to get to meet you both. going to get you off the show

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Kelly Gaither, University of Texas | SuperComputing 22


 

>>Good afternoon everyone, and thank you so much for joining us. My name is Savannah Peterson, joined by my co-host Paul for the afternoon. Very excited. Oh, Savannah. Hello. I'm, I'm pumped for this. This is our first bit together. Exactly. >>It's gonna be fun. Yes. We have a great guest to kick off with. >>We absolutely do. We're at Supercomputing 2022 today, and very excited to talk to our next guest. We're gonna be talking about data at scale and data that really matters to us joining us. Kelly Gayer, thank you so much for being here and you are with tech. Tell everyone what TAC is. >>Tech is the Texas Advanced Computing Center at the University of Texas at Austin. And thank you so much for having me here. >>It is wonderful to have you. Your smile's contagious. And one of the themes that's come up a lot with all of our guests, and we just talked about it, is how good it is to be back in person, how good it is to be around our hardware, community tech. You did some very interesting research during the pandemic. Can you tell us about that? >>I can. I did. So when we realized sort of mid-March, we realized that, that this was really not normal times and the pandemic was statement. Yes. That pandemic was really gonna touch everyone. I think a lot of us at the center and me personally, we dropped everything to plug in and that's what we do. So UT's tagline is what starts here changes the world and tax tagline is powering discoveries that change the world. So we're all about impact, but I plugged in with the research group there at UT Austin, Dr. Lauren Myers, who's an epidemiologist, and just we figured out how to plug in and compute so that we could predict the spread of, of Covid 19. >>And you did that through the use of mobility data, cell phone signals. Tell us more about what exactly you were choreographing. >>Yeah, so that was really interesting. Safe graph during the pandemic made their mobility data. Typically it was used for marketing purposes to know who was going into Walmart. The offenses >>For advertising. >>Absolutely, yeah. They made all of their mobility data available for free to people who were doing research and plugging in trying to understand Covid. 19, I picked that data up and we used it as a proxy for human behavior. So we knew we had some idea, we got weekly mobility updates, but it was really mobility all day long, you know, anonymized. I didn't know who they were by cell phones across the US by census block group or zip code if we wanted to look at it that way. And we could see how people were moving around. We knew what their neighbor, their home neighborhoods were. We knew how they were traveling or not traveling. We knew where people were congregating, and we could get some idea of, of how people were behaving. Were they really, were they really locking down or were they moving in their neighborhoods or were they going outside of their neighborhoods? >>What a, what a fascinating window into our pandemic lives. So now that you were able to do this for this pandemic, as we look forward, what have you learned? How quickly could we forecast? What's the prognosis? >>Yeah, so we, we learned a tremendous amount. I think during the pandemic we were reacting, we were really trying. It was a, it was an interesting time as a scientist, we were reacting to things almost as if the earth was moving underneath us every single day. So it was something new every day. And I've told people since I've, I haven't, I haven't worked that hard since I was a graduate student. So it was really daylight to dark 24 7 for a long period of time because it was so important. And we knew, we, we knew we were, we were being a part of history and affecting something that was gonna make a difference for a really long time. And, and I think what we've learned is that indeed there is a lot of data being collected that we can use for good. We can really understand if we get organized and we get set up, we can use this data as a means of perhaps predicting our next pandemic or our next outbreak of whatever. It is almost like using it as a canary in the coal mine. There's a lot in human behavior we can use, given >>All the politicization of, of this last pandemic, knowing what we know now, making us better prepared in theory for the next one. How confident are you that at least in the US we will respond proactively and, and effectively when the next one comes around? >>Yeah, I mean, that's a, that's a great question and, and I certainly understand why you ask. I think in my experience as a scientist, certainly at tech, the more transparent you are with what you do and the more you explain things. Again, during the pandemic, things were shifting so rapidly we were reacting and doing the best that we could. And I think one thing we did right was we admitted where we felt uncertain. And that's important. You have to really be transparent to the general public. I, I don't know how well people are gonna react. I think if we have time to prepare, to communicate and always be really transparent about it. I think those are three factors that go into really increasing people's trust. >>I think you nailed it. And, and especially during times of chaos and disaster, you don't know who to trust or what to believe. And it sounds like, you know, providing a transparent source of truth is, is so critical. How do you protect the sensitive data that you're working with? I know it's a top priority for you and the team. >>It is, it is. And we, we've adopted the medical mantra, do no harm. So we have, we feel a great responsibility there. There's, you know, two things that you have to really keep in mind when you've got sensitive data. One is the physical protection of it. And so that's, that's governed by rule, federal rules, hipaa, ferpa, whatever, whatever kind of data that you have. So we certainly focus on the physical protection of it, but there's also sort of the ethical protection of it. What, what is the quote? There's lies, damn lies and statistics. >>Yes. Twain. >>Yeah. So you, you really have to be responsible with what you're doing with the data, how you're portraying the results. And again, I think it comes back to transparency is is basically if people are gonna reproduce what I did, I have to be really transparent with what I did. >>I, yeah, I think that's super important. And one of the themes with, with HPC that we've been talking about a lot too is, you know, do people trust ai? Do they trust all the data that's going into these systems? And I love that you just talked about the storytelling aspect of that, because there is a duty, it's not, you can cut data kind of however you want. I mean, I come from marketing background and we can massage it to, to do whatever we want. So in addition to being the deputy director at Tech, you are also the DEI officer. And diversity I know is important to you probably both as an individual, but also in the work that you're doing. Talk to us about that. >>Yeah, I mean, I, I very passionate about diversity, equity and inclusion in a sense of belongingness. I think that's one of the key aspects of it. Core >>Of community too. >>I got a computer science degree back in the eighties. I was akin to a unicorn in a, in an engineering computer science department. And, but I was really lucky in a couple of respects. I had a, I had a father that was into science that told me I could do anything I, I wanted to set my mind to do. So that was my whole life, was really having that support system. >>He was cheers to dad. >>Yeah. Oh yeah. And my mom as well, actually, you know, they were educators. I grew up, you know, in that respect, very, very privileged, but it was still really hard to make it. And I couldn't have told you back in that time why I made it and, and others didn't, why they dropped out. But I made it a mission probably back, gosh, maybe 10, 15 years ago, that I was really gonna do all that I could to change the needle. And it turns out that there are a number of things that you can do grassroots. There are certainly best practices. There are rules and there are things that you really, you know, best practices to follow to make people feel more included in an organization, to feel like they belong it, shared mission. But there are also clever things that you can do with programming to really engage students, to meet people and students where they are interested and where they are engaged. And I think that's what, that's what we've done over, you know, the course of our programming over the course of about maybe since 2016. We have built a lot of programming ATAC that really focuses on that as well, because I'm determined the needle is gonna change before it's all said and done. It just really has to. >>So what, what progress have you made and what goals have you set in this area? >>Yeah, that, that's a great question. So, you know, at first I was a little bit reluctant to set concrete goals because I really didn't know what we could accomplish. I really wasn't sure what grassroots efforts was gonna be able to, you're >>So honest, you can tell how transparent you are with the data as well. That's >>Great. Yeah, I mean, if I really, most of the successful work that I've done is both a scientist and in the education and outreach space is really trust relationships. If I break that trust, I'm done. I'm no longer effective. So yeah, I am really transparent about it. But, but what we did was, you know, the first thing we did was we counted, you know, to the extent that we could, what does the current picture look like? Let's be honest about it. Start where we are. Yep. It was not a pretty picture. I mean, we knew that anecdotally it was not gonna be a great picture, but we put it out there and we leaned into it. We said, this is what it is. We, you know, I hesitated to say we're gonna look 10% better next year because I'm, I'm gonna be honest, I don't always know we're gonna do our best. >>The things that I think we did really well was that we stopped to take time to talk and find out what people were interested in. It's almost like being present and listening. My grandmother had a saying, you have two errors in one mouth for a reason, just respect the ratio. Oh, I love that. Yeah. And I think it's just been building relationships, building trust, really focusing on making a difference, making it a priority. And I think now what we're doing is we've been successful in pockets of people in the center and we are, we are getting everybody on board. There's, there's something everyone can do, >>But the problem you're addressing doesn't begin in college. It begins much, much, that's right. And there's been a lot of talk about STEM education, particularly for girls, how they're pushed out of the system early on. Also for, for people of color. Do you see meaningful progress being made there now after years of, of lip service? >>I do. I do. But it is, again, grassroots. We do have a, a, a researcher who was a former teacher at the center, Carol Fletcher, who is doing research and for CS for all we know that the workforce, so if you work from the current workforce, her projected workforce backwards, we know that digital skills of some kind are gonna be needed. We also know we have a, a, a shortage. There's debate on how large that shortage is, but about roughly about 1 million unmet jobs was projected in 2020. It hasn't gotten a lot better. We can work that problem backwards. So what we do there is a little, like a scatter shot approach. We know that people come in all forms, all shapes, all sizes. They get interested for all different kinds of reasons. We expanded our set of pathways so that we can get them where they can get on to the path all the way back K through 12, that's Carol's work. Rosie Gomez at the center is doing sort of the undergraduate space. We've got Don Hunter that does it, middle school, high school space. So we are working all parts of the problem. I am pretty passionate about what we consider opportunity youth people who never had the opportunity to go to college. Is there a way that we can skill them and get, get them engaged in some aspect and perhaps get them into this workforce. >>I love that you're starting off so young. So give us an example of one of those programs. What are you talking to kindergartners about when it comes to CS education? >>You know, I mean, gaming. Yes. Right. It's what everybody can wrap their head around. So most kids have had some sort of gaming device. You talk in the context, in the context of something they understand. I'm not gonna talk to them about high performance computing. It, it would go right over their heads. And I think, yeah, you know, I, I'll go back to something that you said Paul, about, you know, girls were pushed out. I don't know that girls are being pushed out. I think girls aren't interested and things that are being presented and I think they, I >>Think you're generous. >>Yeah. I mean, I was a young girl and I don't know why I stayed. Well, I do know why I stayed with it because I had a father that saw something in me and I had people at critical points in my life that saw something in me that I didn't see. But I think if we ch, if we change the way we teach it, maybe in your words they don't get pushed out or they, or they won't lose interest. There's, there's some sort of computing in everything we do. Well, >>Absolutely. There's also the bro culture, which begins at a very early >>Age. Yeah, that's a different problem. Yeah. That's just having boys in the classroom. Absolutely. You got >>It. That's a whole nother case. >>That's a whole other thing. >>Last question for you, when we are sitting here, well actually I've got, it's two parter, let's put it that way. Is there a tool or something you wish you could flick a magic wand that would make your job easier? Where you, you know, is there, can you identify the, the linchpin in the DEI challenge? Or is it all still prototyping and iterating to figure out the best fit? >>Yeah, that is a, that's a wonderful question. I can tell you what I get frustrated with is that, that >>Counts >>Is that I, I feel like a lot of people don't fully understand the level of effort and engagement it takes to do something meaningful. The >>Commitment to a program, >>The commitment to a program. Totally agree. It's, there is no one and done. No. And in fact, if I do that, I will lose them forever. They'll be, they will, they will be lost in the space forever. Rather. The engagement is really sort of time intensive. It's relationship intensive, but there's a lot of follow up too. And the, the amount of funding that goes into this space really is not, it, it, it's not equal to the amount of time and effort that it really takes. And I think, you know, I think what you work in this space, you realize that what you gain is, is really more of, it's, it really feels good to make a difference in somebody's life, but it's really hard to do on a shoer budget. So if I could kind of wave a magic wand, yes, I would increase understanding. I would get people to understand that it's all of our responsibility. Yes, everybody is needed to make the difference and I would increase the funding that goes to the programs. >>I think that's awesome, Kelly, thank you for that. You all heard that. More funding for diversity, equity, and inclusion. Please Paul, thank you for a fantastic interview, Kelly. Hopefully everyone is now inspired to check out tac perhaps become a, a Longhorn, hook 'em and, and come deal with some of the most important data that we have going through our systems and predicting the future of our pandemics. Ladies and gentlemen, thank you for joining us online. We are here in Dallas, Texas at Supercomputing. My name is Savannah Peterson and I look forward to seeing you for our next segment.

Published Date : Nov 16 2022

SUMMARY :

Good afternoon everyone, and thank you so much for joining us. It's gonna be fun. Kelly Gayer, thank you so much for being here and you are with tech. And thank you so much for having me here. And one of the themes that's come up a to plug in and compute so that we could predict the spread of, And you did that through the use of mobility data, cell phone signals. Yeah, so that was really interesting. but it was really mobility all day long, you know, So now that you were able to do this for this pandemic, as we look forward, I think during the pandemic we were reacting, in the US we will respond proactively and, and effectively when And I think one thing we did right was we I think you nailed it. There's, you know, two things that you have to really keep And again, I think it comes back to transparency is is basically And I love that you just talked about the storytelling aspect of I think that's one of the key aspects of it. I had a, I had a father that was into science I grew up, you know, in that respect, very, very privileged, I really wasn't sure what grassroots efforts was gonna be able to, you're So honest, you can tell how transparent you are with the data as well. but what we did was, you know, the first thing we did was we counted, you And I think now what we're doing is we've been successful in Do you see meaningful progress being all we know that the workforce, so if you work from the current workforce, I love that you're starting off so young. And I think, yeah, you know, I, I'll go back to something that But I think if we ch, There's also the bro culture, which begins at a very early That's just having boys in the classroom. you know, is there, can you identify the, the linchpin in the DEI challenge? I can tell you what I get frustrated with of effort and engagement it takes to do something meaningful. you know, I think what you work in this space, you realize that what I look forward to seeing you for our next segment.

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Dave Jent, Indiana University and Aaron Neal, Indiana University | SuperComputing 22


 

(upbeat music) >> Welcome back. We're here at Supercomputing 22 in Dallas. My name's Paul Gill, I'm your host. With me, Dave Nicholson, my co-host. And one thing that struck me about this conference arriving here, was the number of universities that are exhibiting here. I mean, big, big exhibits from universities. Never seen that at a conference before. And one of those universities is Indiana University. Our two guests, Dave Jent, who's the AVP of Networks at Indiana University, Aaron Neal, Deputy CIO at Indiana University. Welcome, thanks for joining us. >> Thank you for having us. >> Thank you. >> I've always thought that the CIO job at a university has got to be the toughest CIO job there is, because you're managing this sprawling network, people are doing all kinds of different things on it. You've got to secure it. You've got to make it performant. And it just seems to be a big challenge. Talk about the network at Indiana University and what you have done particularly since the pandemic, how that has affected the architecture of your network. And what you do to maintain the levels of performance and security that you need. >> On the network side one of the things we've done is, kept in close contact with what the incoming students are looking for. It's a different environment than it was then 10 years ago when a student would come, maybe they had a phone, maybe they had one laptop. Today they're coming with multiple phones, multiple laptops, gaming devices. And the expectation that they have to come on a campus and plug all that stuff in causes lots of problems for us, in managing just the security aspect of it, the capacity, the IP space required to manage six, seven devices per student when you have 35,000 students on campus, has always been a challenge. And keeping ahead of that knowing what students are going to come in with, has been interesting. During the pandemic the campus was closed for a bit of time. What we found was our biggest challenge was keeping up with the number of people who wanted to VPN to campus. We had to buy additional VPN licenses so they could do their work, authenticate to the network. We doubled, maybe even tripled our our VPN license count. And that has settled down now that we're back on campus. But again, they came back with a vengeance. More gaming devices, more things to be connected, and into an environment that was a couple years old, that we hadn't done much with. We had gone through a pretty good size network deployment of new hardware to try to get ready for them. And it's worked well, but it's always challenging to keep up with students. >> Aaron, I want to ask you about security because that really is one of your key areas of focus. And you're collaborating with counties, local municipalities, as well as other educational institutions. How's your security strategy evolving in light of some of the vulnerabilities of VPNs that became obvious during the pandemic, and this kind of perfusion of new devices that that Dave was talking about? >> Yeah, so one of the things that we we did several years ago was establish what we call OmniSOC, which is a shared security operations center in collaboration with other institutions as well as research centers across the United States and in Indiana. And really what that is, is we took the lessons that we've learned and the capabilities that we've had within the institution and looked to partner with those key institutions to bring that data in-house, utilize our staff such that we can look for security threats and share that information across the the other institutions so that we can give each of those areas a heads up and work with those institutions to address any kind of vulnerabilities that might be out there. One of the other things that you mentioned is, we're partnering with Purdue in the Indiana Office of Technology on a grant to actually work with municipalities, county governments, to really assess their posture as it relates to security in those areas. It's a great opportunity for us to work together as institutions as well as work with the state in general to increase our posture as it relates to security. >> Dave, what brings IU to Supercomputing 2022? >> We've been here for a long time. And I think one of the things that we're always interested in is, what's next? What's new? There's so many, there's network vendors, software vendors, hardware vendors, high performance computing suppliers. What is out there that we're interested in? IU runs a large Cray system in Indiana called Big Red 200. And with any system you procure it, you get it running, you operate it, and your next goal is to upgrade it. And what's out there that we might be interested? That I think why we come to IU. We also like to showcase what we do at IU. If you come by the booth you'll see the OmniSOC, there's some video on that. The GlobalNOC, which I manage, which supports a lot of the RNE institutions in the country. We talk about that. Being able to have a place for people to come and see us. If you stand by the booth long enough people come and find you, and want to talk about a project they have, or a collaboration they'd like to partner with. We had a guy come by a while ago wanting a job. Those are all good things having a big booth can do for you. >> Well, so on that subject, in each of your areas of expertise and your purview are you kind of interleaved with the academic side of things on campus? Do you include students? I mean, I would think it would be a great source of cheap labor for you at least. Or is there kind of a wall between what you guys are responsible for and what students? >> Absolutely we try to support faculty and students as much as we can. And just to go back a little bit on the OmniSOC discussion. One of the things that we provide is internships for each of the universities that we work with. They have to sponsor at least three students every year and make that financial commitment. We bring them on site for three weeks. They learn us alongside the other analysts, information security analysts and work in a real world environment and gain those skills to be able to go back to their institutions and do an additional work there. So it's a great program for us to work with students. I think the other thing that we do is we provide obviously the infrastructure that enable our faculty members to do the research that they need to do. Whether that's through Big Red 200, our Supercomputer or just kind of the everyday infrastructure that allows them to do what they need to do. We have an environment on premise called our Intelligent Infrastructure, that we provide managed access to hardware and storage resources in a way that we know it's secure and they can utilize that environment to do virtually anything that they need in a server environment. >> Dave, I want to get back to the GigaPOP, which you mentioned earlier you're the managing director of the Indiana GigaPOP. What exactly is it? >> Well, the GigaPOP and there are a number of GigaPOP around the country. It was really the aggregation facility for Indiana and all of the universities in Indiana to connect to outside resources. GigaPOP has connections to internet too, the commodity internet, Esnet, the Big Ten or the BTAA a network in Chicago. It's a way for all universities in Indiana to connect to a single source to allow them to connect nationally to research organizations. >> And what are the benefits of having this collaboration of university. >> If you could think of a researcher at Indiana wants to do something with a researcher in Wisconsin, they both connect to their research networks in Wisconsin and Indiana, and they have essentially direct connection. There's no commodity internet, there's no throttling of of capacity. Both networks and the interconnects because we use internet too, are essentially UNT throttled access for the researchers to do anything they need to do. It's secure, it's fast, easy to use, in fact, so easy they don't even know that they're using it. It just we manage the networks and organize the networks in a way configure them that's the path of least resistance and that's the path traffic will take. And that's nationally. There are lots of these that are interconnected in various ways. I do want to get back to the labor point, just for a moment. (laughs) Because... >> You're here to claim you're not violating any labor laws. Is that what you're going to be? >> I'm here to hopefully hire, get more people to be interested to coming to IU. >> Stop by the booth. >> It's a great place to work. >> Exactly. >> We hire lots of interns and in the network space hiring really experienced network engineers, really hard to do, hard to attract people. And these days when you can work from anywhere, you don't have to be any place to work for anybody. We try to attract as many students as we can. And really we're exposing 'em to an environment that exists in very few places. Tens of thousands of wireless access points, big fast networks, interconnections and national international networks. We support the Noah network which supports satellite systems and secure traffic. It really is a very unique experience and you can come to IU, spend lots of years there and never see the same thing twice. We think we have an environment that's really a good way for people to come out of college, graduate school, work for some number of years and hopefully stay at IU, but if not, leave and get a good job and talk well about IU. In fact, the wireless network today here at SC was installed and is managed by a person who manages our campus network wireless, James Dickerson. That's the kind of opportunity we can provide people at IU. >> Aaron, I'd like to ask, you hear a lot about everything moving to the cloud these days, but in the HPC world I don't think that move is happening as quickly as it is in some areas. In fact, there's a good argument some workloads should never move to the cloud. You're having to balance these decisions. Where are you on the thinking of what belongs in the data center and what belongs in the cloud? >> I think our approach has really been specific to what the needs are. As an institution, we've not pushed all our chips in on the cloud, whether it be for high performance computing or otherwise. It's really looking at what the specific need is and addressing it with the proper solution. We made an investment several years ago in a data center internally, and we're leveraging that through the intelligent infrastructure that I spoke about. But really it's addressing what the specific need is and finding the specific solution, rather than going all in in one direction or another. I dunno if Jet Stream is something that you would like to bring up as well. >> By having our own data center and having our own facilities we're able to compete for NSF grants and work on projects that provide shared resources for the research community. Just dream is a project that does that. Without a data center and without the ability to work on large projects, we don't have any of that. If you don't have that then you're dependent on someone else. We like to say that, what we are proud of is the people come to IU and ask us if they can partner on our projects. Without a data center and those resources we are the ones who have to go out and say can we partner on your project? We'd like to be the leaders of that in that space. >> I wanted to kind of double click on something you mentioned. Couple of things. Historically IU has been I'm sure closely associated with Chicago. You think of what are students thinking of doing when they graduate? Maybe they're going to go home, but the sort of center of gravity it's like Chicago. You mentioned talking about, especially post pandemic, the idea that you can live anywhere. Not everybody wants to live in Manhattan or Santa Clara. And of course, technology over decades has given us the ability to do things remotely and IU is plugged into the globe, doesn't matter where you are. But have you seen either during or post pandemic 'cause we're really in the early stages of this. Are you seeing that? Are you seeing people say, Hey, thinking about their family, where do I want to live? Where do I want to raise my family? I'm in academia and no, I don't want to live in Manhattan. Hey, we can go to IU and we're plugged into the globe. And then students in California we see this, there's some schools on the central coast where people loved living there when they were in college but there was no economic opportunity there. Are you seeing a shift, are basically houses in Bloomington becoming unaffordable because people are saying, you know what, I'm going to stay here. What does that look like? >> I mean, for our group there are a lot of people who do work from home, have chosen to stay in Bloomington. We have had some people who for various reasons want to leave. We want to retain them, so we allow them to work remotely. And that has turned into a tool for recruiting. The kid that graduates from Caltech. Doesn't want to stay in Caltech in California, we have an opportunity now he can move to wherever between here and there and we can hire him do work. We love to have people come to Indiana. We think it is a unique experience, Bloomington, Indianapolis are great places. But I think the reality is, we're not going to get everybody to come live, be a Hoosier, how do we get them to come and work at IU? In some ways disappointing when we don't have buildings full of people, but 40 paying Zoom or teams window, not kind the same thing. But I think this is what we're going to have to figure out, how do we make this kind of environment work. >> Last question here, give you a chance to put in a plug for Indiana University. For those those data scientists those researchers who may be open to working somewhere else, why would they come to Indiana University? What's different about what you do from what every other academic institution does, Aaron? >> Yeah, I think a lot of what we just talked about today in terms of from a network's perspective, that were plugged in globally. I think if you look beyond the networks I think there are tremendous opportunities for folks to come to Bloomington and experience some bleeding edge technology and to work with some very talented people. I've been amazed, I've been at IU for 20 years and as I look at our peers across higher ed, well, I don't want to say they're not doing as well I do want brag at how well we're doing in terms of organizationally addressing things like security in a centralized way that really puts us in a better position. We're just doing a lot of things that I think some of our peers are catching up to and have been catching up to over the last 10, 12 years. >> And I think to sure scale of IU goes unnoticed at times. IU has the largest medical school in the country. One of the largest nursing schools in the country. And people just kind of overlook some of that. Maybe we need to do a better job of talking about it. But for those who are aware there are a lot of opportunities in life sciences, healthcare, the social sciences. IU has the largest logistics program in the world. We teach more languages than anybody else in the world. The varying kinds of things you can get involved with at IU including networks, I think pretty unparalleled. >> Well, making the case for high performance computing in the Hoosier State. Aaron, Dave, thanks very much for joining you making a great case. >> Thank you. >> Thank you. >> We'll be back right after this short message. This is theCUBE. (upbeat music)

Published Date : Nov 16 2022

SUMMARY :

that are exhibiting here. and security that you need. of the things we've done is, in light of some of the and looked to partner with We also like to showcase what we do at IU. of cheap labor for you at least. that they need to do. of the Indiana GigaPOP. and all of the universities in Indiana And what are the benefits and that's the path traffic will take. You're here to claim you're get more people to be and in the network space but in the HPC world I and finding the specific solution, the people come to IU and IU is plugged into the globe, We love to have people come to Indiana. open to working somewhere else, and to work with some And I think to sure scale in the Hoosier State. This is theCUBE.

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Marcel Hild, Red Hat & Kenneth Hoste, Ghent University | Kubecon + Cloudnativecon Europe 2022


 

(upbeat music) >> Announcer: theCUBE presents KubeCon and CloudNativeCon Europe 2022, brought to you by Red Hat, the Cloud Native Computing Foundation, and its ecosystem partners. >> Welcome to Valencia, Spain, in KubeCon CloudNativeCon Europe 2022. I'm your host Keith Townsend, along with Paul Gillon. And we're going to talk to some amazing folks. But first Paul, do you remember your college days? >> Vaguely. (Keith laughing) A lot of them are lost. >> I think a lot of mine are lost as well. Well, not really, I got my degree as an adult, so they're not that far past. I can remember 'cause I have the student debt to prove it. (both laughing) Along with us today is Kenneth Hoste, systems administrator at Ghent University, and Marcel Hild, senior manager software engineering at Red Hat. You're working in office of the CTO? >> That's absolutely correct, yes >> So first off, I'm going to start off with you Kenneth. Tell us a little bit about the research that the university does. Like what's the end result? >> Oh, wow, that's a good question. So the research we do at university and again, is very broad. We have bioinformaticians, physicists, people looking at financial data, all kinds of stuff. And the end result can be very varied as well. Very often it's research papers, or spinoffs from the university. Yeah, depending on the domain I would say, it depends a lot on. >> So that sounds like the perfect environment for cloud native. Like the infrastructure that's completely flexible, that researchers can come and have a standard way of interacting, each team just use it's resources as they would, the Navana for cloud native. >> Yeah. >> But somehow, I'm going to guess HPC isn't quite there yet. >> Yeah, not really, no. So, HPC is a bit, let's say slow into adopting new technologies. And we're definitely seeing some impact from cloud, especially things like containers and Kubernetes, or we're starting to hear these things in HPC community as well. But I haven't seen a lot of HPC clusters who are really fully cloud native. Not yet at least. Maybe this is coming. And if I'm walking around here at KubeCon, I can definitely, I'm being convinced that it's coming. So whether we like it or not we're probably going to have to start worrying about stuff like this. But we're still, let's say, the most prominent technologies of things like NPI, which has been there for 20, 30 years. The Fortran programming language is still the main language, if you're looking at compute time being spent on supercomputers, over 1/2 of the time spent is in Fortran code essentially. >> Keith: Wow. >> So either the application itself where the simulations are being done is implemented in Fortran, or the libraries that we are talking to from Python for example, for doing heavy duty computations, that backend library is implemented in Fortran. So if you take all of that into account, easily over 1/2 of the time is spent in Fortran code. >> So is this because the libraries don't migrate easily to, distributed to that environment? >> Well, it's multiple things. So first of all, Fortran is very well suited for implementing these type of things. >> Paul: Right. >> We haven't really seen a better alternative maybe. And also it'll be a huge effort to re-implement that same functionality in a newer language. So, the use case has to be very convincing, there has to be a very good reason why you would move away from Fortran. And, at least the HPC community hasn't seen that reason yet. >> So in theory, and right now we're talking about the theory and then what it takes to get to the future. In theory, I can take that Fortran code put it in a compiler that runs in a container? >> Yeah, of course, yeah. >> Why isn't it that simple? >> I guess because traditionally HPC is very slow at adopting new stuff. So, I'm not saying there isn't a reason that we should start looking at these things. Flexibility is a very important one. For a lot of researchers, their compute needs are very picky. So they're doing research, they have an idea, they want you to run lots of simulations, get the results, but then they're silent for a long time writing the paper, or thinking about how to, what they can learn from the results. So there's lots of peaks, and that's a very good fit for a cloud environment. I guess at the scale of university you have enough diversity end users that all those peaks never fall at the same time. So if you have your big own infrastructure you can still fill it up quite easily and keep your users happy. But this busty thing, I guess we're seeing that more and more or so. >> So Marcel, talk to us about, Red Hat needing to service these types of end users. That it can be on both ends I'd imagine that you have some people still in writing in Fortran, you have some people that's asking you for objects based storage. Where's Fortran, I'm sorry, not Fortran, but where is Red Hat in providing the underlay and the capabilities for the HPC and AI community? >> Yeah. So, I think if you look at the user base that we're looking at, it's on this spectrum from development to production. So putting AI workloads into production, it's an interesting challenge but it's easier to solve, and it has been solved to some extent, than the development cycle. So what we're looking at in Kenneth's domain it's more like the end user, the data scientist, developing code, and doing these experiments. Putting them into production is that's where containers live and thrive. You can containerize your model, you containerize your workload, you deploy it into your OpenShift Kubernetes cluster, done, you monitor it, done. So the software developments and the SRE, the ops part, done, but how do I get the data scientist into this cloud native age where he's not developing on his laptop or on a machine, where he SSH into and then does some stuff there. And then some system admin comes and needs to tweak it because it's running out of memory or whatnot. But how do we take him and make him, well, and provide him an environment that is good enough to work in, in the browser, and then with IDE, where the workload of doing the computation and the experimentation is repeatable, so that the environment is always the same, it's reliable, so it's always up and running. It doesn't consume resources, although it's up and running. Where it's, where the supply chain and the configuration of... And the, well, the modules that are brought into the system are also reliable. So all these problems that we solved in the traditional software development world, now have to transition into the data science and HPC world, where the problems are similar, but yeah, it's different sets. It's more or less, also a huge educational problem and transitioning the tools over into that is something... >> Well, is this mostly a technical issue or is this a cultural issue? I mean, are HPC workloads that different from more conventional OLTP workloads that they would not adapt well to a distributed containerized environment? >> I think it's both. So, on one hand it's the cultural issue because you have two different communities, everybody is reinventing the wheel, everybody is some sort of siloed. So they think, okay, what we've done for 30 years now we, there's no need to change it. And they, so it's, that's what thrives and here at KubeCon where you have different communities coming together, okay, this is how you solved the problem, maybe this applies also to our problem. But it's also the, well, the tooling, which is bound to a machine, which is bound to an HPC computer, which is architecturally different than a distributed environment where you would treat your containers as kettle, and as something that you can replace, right? And the HPC community usually builds up huge machines, and these are like the gray machines. So it's also technical bit of moving it to this age. >> So the massively parallel nature of HPC workloads you're saying Kubernetes has not yet been adapted to that? >> Well, I think that parallelism works great. It's just a matter of moving that out from an HPC computer into the scale out factor of a Kubernetes cloud that elastically scales out. Whereas the traditional HPC computer, I think, and Kenneth can correct me here is, more like, I have this massive computer with 1 million cores or whatnot, and now use it. And I can use my time slice, and book my time slice there. Whereas this a Kubernetes example the concept is more like, I have 1000 cores and I declare something into it and scale it up and down based on the needs. >> So, Kenneth, this is where you talked about the culture part of the changes that need to be happening. And quite frankly, the computer is a tool, it's a tool to get to the answer. And if that tool is working, if I have a 1000 cores on a single HPC thing, and you're telling me, well, I can't get to a system with 2000 cores. And if you containerized your process and move it over then maybe I'll get to the answer 50% faster maybe I'm not that... Someone has to make that decision. How important is it to get people involved in these types of communities from a researcher? 'Cause research is very tight-knit community to have these conversations and help that see move happen. >> I think it's very important to that community should, let's say, the cloud community, HPC research community, they should be talking a lot more, there should be way more cross pollination than there is today. I'm actually, I'm happy that I've seen HPC mentioned at booths and talks quite often here at KubeCon, I wasn't really expecting that. And I'm not sure, it's my first KubeCon, so I don't know, but I think that's kind of new, it's pretty recent. If you're going to the HPC community conferences there containers have been there for a couple of years now, something like Kubernetes is still a bit new. But just this morning there was a keynote by a guy from CERN, who was explaining, they're basically slowly moving towards Kubernetes even for their HPC clusters as well. And he's seeing that as the future because all the flexibility it gives you and you can basically hide all that from the end user, from the researcher. They don't really have to know that they're running on top of Kubernetes. They shouldn't care. Like you said, to them it's just a tool, and they care about if the tool works, they can get their answers and that's what they want to do. How that's actually being done in the background they don't really care. >> So talk to me about the AI side of the equation, because when I talk to people doing AI, they're on the other end of the spectrum. What are some of the benefits they're seeing from containerization? >> I think it's the reproducibility of experiments. So, and data scientists are, they're data scientists and they do research. So they care about their experiment. And maybe they also care about putting the model into production. But, I think from a geeky perspective they are more interested in finding the next model, finding the next solution. So they do an experiment, and they're done with it, and then maybe it's going to production. So how do I repeat that experiment in a year from now, so that I can build on top of it? And a container I think is the best solution to wrap something with its dependency, like freeze it, maybe even with the data, store it away, and then come to it back later and redo the experiment or share the experiment with some of my fellow researchers, so that they don't have to go through the process of setting up an equivalent environment on their machines, be it their laptop, via their cloud environment. So you go to the internet, download something doesn't work, container works. >> Well, you said something that really intrigues me you know in concept, I can have a, let's say a one terabyte data set, have a experiment associated with that. Take a snapshot of that somehow, I don't know how, take a snapshot of that and then share it with the rest of the community and then continue my work. >> Marcel: Yeah. >> And then we can stop back and compare notes. Where are we at in a maturity scale? Like, what are some of the pitfalls or challenges customers should be looking out for? >> I think you actually said it right there, how do I snapshot a terabyte of data? It's, that's... >> It's a terabyte of data. (both conversing) >> It's a bit of a challenge. And if you snapshot it, you have two terabytes of data or you just snapshot the, like and get you to do a, okay, this is currently where we're at. So that's why the technology is evolving. How do we do source control management for data? How do we license data? How do we make sure that the data is unbiased, et cetera? So that's going more into the AI side of things. But at dealing with data in a declarative way in a containerized way, I think that's where currently a lot of innovation is happening. >> What do you mean by dealing with data in a declarative way? >> If I'm saying I run this experiment based on this data set and I'm running this other experiment based on this other data set, and I as the researcher don't care where the data is stored, I care that the data is accessible. And so I might declare, this is the process that I put on my data, like a data processing pipeline. These are the steps that it's going through. And eventually it will have gone through this process and I can work with my data. Pretty much like applying the concept of pipelines through data. Like you have these data pipelines and then now you have cube flow pipelines as one solution to apply the pipeline concept, to well, managing your data. >> Given the stateless nature of containers, is that an impediment to HPC adoption because of the very large data sets that are typically involved? >> I think it is if you have terabytes of data. Just, you have to get it to the place where the computation will happen, right? And just uploading that into the cloud is already a challenge. If you have the data sitting there on a supercomputer and maybe it was sitting there for two years, you probably don't care. And typically a lot of universities the researchers don't necessarily pay for the compute time they use. Like, this is also... At least in Ghent that's the case, it's centrally funded, which means, the researchers don't have to worry about the cost, they just get access to the supercomputer. If they need two terabytes of data, they get that space and they can park it on the system for years, no problem. If they need 200 terabytes of data, that's absolutely fine. >> But the university cares about the cost? >> The university cares about the cost, but they want to enable the researchers to do the research that they want to do. >> Right. >> And we always tell researchers don't feel constrained about things like compute power, storage space. If you're doing smaller research, because you're feeling constrained, you have to tell us, and we will just expand our storage system and buy a new cluster. >> Paul: Wonderful. >> So you, to enable your research. >> It's a nice environment to be in. I think this might be a Jevons paradox problem, you give researchers this capability you might, you're going to see some amazing things. Well, now the people are snapshoting, one, two, three, four, five, different versions of a one terabytes of data. It's a good problem to have, and I hope to have you back on theCUBE, talking about how Red Hat and Ghent have solved those problems. Thank you so much for joining theCUBE. From Valencia, Spain, I'm Keith Townsend along with Paul Gillon. And you're watching theCUBE, the leader in high tech coverage. (upbeat music)

Published Date : May 19 2022

SUMMARY :

brought to you by Red Hat, do you remember your college days? A lot of them are lost. the student debt to prove it. that the university does. So the research we do at university Like the infrastructure I'm going to guess HPC is still the main language, So either the application itself So first of all, So, the use case has talking about the theory I guess at the scale of university and the capabilities for and the experimentation is repeatable, And the HPC community usually down based on the needs. And quite frankly, the computer is a tool, And he's seeing that as the future What are some of the and redo the experiment the rest of the community And then we can stop I think you actually It's a terabyte of data. the AI side of things. I care that the data is accessible. for the compute time they use. to do the research that they want to do. and we will just expand our storage system and I hope to have you back on theCUBE,

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Cecilia Aragon, University of Washington | WiDS Worldwide Conference 2022


 

>>Hey, everyone. Welcome to the cubes coverage of women in data science, 2022. I'm Lisa Martin. And I'm here with one of the key featured keynotes for this year is with events. So the Aragon, the professor and department of human centered design and engineering at the university of Washington Cecilia, it's a pleasure to have you on the cube. >>Thank you so much, Lisa Lisa, it's a pleasure to be here as well. >>You got an amazing background that I want to share with the audience. You are a professor, you are a data scientist, an aerobatic pilot, and an author with expertise in human centered, data science, visual analytics, aviation safety, and analysis of extremely large and complex data sets. That's quite the background. >>Well, thank you so much. It's it's all very interesting and fun. So, >>And as a professor, you study how people make sense of vast data sets, including a combination of computer science and art, which I love. And as an author, you write about interesting things. You write about how to overcome fear, which is something that everybody can benefit from and how to expand your life until it becomes amazing. I need to take a page out of your book. You were also honored by president Obama a few years back. My goodness. >>Thank you so much. Yes. I I've had quite a journey to come here, but I feel really fortunate to be here today. >>Talk about that journey. I'd love to understand if you were always interested in stem, if it was something that you got into later, I know that you are the co-founder of Latinas in computing, a passionate advocate for girls and women in stem. Were you always interested in stem or was it something that you got into in a kind of a non-linear path? >>I was always interested in it when I was a young girl. I grew up in a small Midwestern town and my parents are both immigrants and I was one of the few Latinas in a mostly white community. And I was, um, I loved math, but I also wanted to be an astronaut. And I remember I, when we were asked, I think it was in second grade. What would you like to be when you grow up? I said, oh, I want to be an astronaut. And my teacher said, oh, you can't do that. You're a girl pick something else. And um, so I picked math and she was like, okay. >>Um, so I always wanted to, well, maybe it would be better to say I never really quite lost my love of being up in the air and potentially space. But, um, but I ended up working in math and science and, um, I, I loved it because one of the great advantages of math is that it's kind of like a magic trick for young people, especially if you're a girl or if you are from an underrepresented group, because if you get the answers right on a math test, no one can mark you wrong. It doesn't matter what the color of your skin is or what your gender is. Math is powerful that way. And I will say there's nothing like standing in a room in front of a room of people who think little of you and you silence them with your love with numbers. >>I love that. I never thought about math as power before, but it clearly is. But also, you know, and, and I wish we had more time because I would love to get into how you overcame that fear. And you write books about that, but being told you can't be an astronaut. You're a girl and maybe laughing at you because you liked Matt. How did you overcome that? And so nevermind I'm doing it anyway. >>Well, that's a, it's a, okay. The short answer is I had incredible imposter syndrome. I didn't believe that I was smart enough to get a PhD in math and computer science. But what enabled me to do that was becoming a pilot and I B I learned how to fly small airplanes. I learned how to fly them upside down and pointing straight at the ground. And I know this might sound kind of extreme. So this is not what I recommend to everybody. But if you are brought up in a way where everybody thinks little of you, one of the best things you can possibly do is take on a challenge. That's scary. I was afraid of everything, but by learning to fly and especially learning to fly loops and rolls, it gave me confidence to do everything else because I thought I appointed the airplane at the ground at 250 miles an hour and waited, why am I afraid to get a PhD in computer science? >>Wow. How empowering is that? >>Yeah, it really was. So that's really how I overcame the fear. And I will say that, you know, I encountered situations getting my PhD in computer science where I didn't believe that I was good enough to finish the degree. I didn't believe that I was smart enough. And what I've learned later on is that was just my own emotional, you know, residue from my childhood and from people telling me that they, you know, that they, that I couldn't achieve >>As I look what, look what you've achieved so far. It's amazing. And we're going to be talking about some of the books that you've written, but I want to get into data science and AI and get your thoughts on this. Why is it necessary to think about human issues and data science >>And what are your thoughts there? So there's been a lot of work in data science recently looking at societal impacts. And if you just address data science as a purely technical field, and you don't think about unintended consequences, you can end up with tremendous injustices and societal harms and harms to individuals. And I think any of us who has dealt with an inflexible algorithm, even if you just call up, you know, customer service and you get told, press five for this press four for that. And you say, well, I don't fit into any of those categories, you know, or have the system hang up on you after an hour. I think you'll understand that any type of algorithmic approach, especially on very large data sets has the risk of impacting people, particularly from low income or marginalized groups, but really any of us can be impacted in a negative way. >>And so, as a developer of algorithms that work over very large data sets, I've always found it really important to consider the humans on the other end of the algorithm. And that's why I believe that all data science is truly human centered or should be human centered, should be human centered and also involves both technical issues as well as social issues. Absolutely correct. So one example is that, um, many of us who started working in data science, including I have to admit me when I started out assume that data is unbiased. It's scrubbed of human influence. It is pure in some ways, however, that's really not true as I've started working with datasets. And this is generally known in the field that data sets are touched by humans everywhere. As a matter of fact, in our, in the recent book that we're, that we're coming out with human centered data science, we talk about five important points where humans touch data, no matter how scrubbed of human influence it's support it's supposed to be. >>Um, so the first one is discovery. So when a human encounters, a data set and starts to use it, it's a human decision. And then there's capture, which is the process of searching for a data set. So any data that has to be selected and chosen by an individual, um, then once that data set is brought in there's curation, a human will have to select various data sets. They'll have to decide what is, what is the proper set to use. And they'll be making judgements on this the time. And perhaps one of the most important ways the data is changed and touched by humans is what we call the design of data. And what that means is whenever you bring in a data set, you have to categorize it. No, for example, let's suppose you are, um, a geologist and you are classifying soil data. >>Well, you don't just take whatever the description of the soil data is. You actually may put it into a previously established taxonomy and you're making human judgments on that. So even though you think, oh, geology data, that's just rocks. You know, that's soil. It has nothing to do with people, but it really does. Um, and finally, uh, people will label the data that they have. And this is especially critical when humans are making subjective judgments, such as what race is the person in this dataset. And they may judge it based on looking at the individual skin color. They may try to apply an algorithm to it, but you know what? We all have very different skin colors, categorizing us into race boxes, really diminishes us and makes us less than we truly are. So it's very important to realize that humans touch the data. We interpret the data. It is not scrubbed of bias. And when we make algorithmic decisions, even the very fact of having an algorithm that makes a judgment say on whether a prisoner's likely to offend again, the judge just by having an algorithm, even if the algorithm makes a recommended statement, they are impacted by that algorithms recommendation. And that has obviously an impact on that human's life. So we consider all of this. >>So you just get given five solid reasons why data science and AI are inevitably human centric should be, but in the past, what's led to the separation between data science and humans. >>Well, I think a lot of it simply has to do with incorrect mental models. So many of us grew up thinking that, oh, humans have biases, but computers don't. And so if we just take decision-making out of people's hands and put it into the hands of an algorithm, we will be having less biased results. However, recent work in the field of data science and artificial intelligence has shown that that's simply not true that algorithmic algorithms reinforce human biases. They amplify them. So algorithmic biases can be much worse than human biases and can greater impact. >>So how do we pull ethics into all of this data science and AI and that ethical component, which seems to be that it needs to be foundational. >>It absolutely has to be foundational. And this is why we believe. And what we teach at the university of Washington in our data science courses is that ethical and human centered approaches and ideas have to be brought in at the very beginning of the algorithm. It's not something you slap on at the end or say, well, I'll wait for the ethicists to weigh in on this. Now we are all human. We can all make human decisions. We can all think about the unintended consequences of our algorithms as we develop them. And we should do that at the very beginning. And all algorithm designers really need to spend some time thinking about the impact that their algorithm may have. >>Right. Do you, do you find that people are still in need of convincing of that or is it generally moving in that direction of understanding? We need to bring ethics in from the beginning, >>It's moving in that direction, but there are still people who haven't modified their mental models yet. So we're working on it. And we hope that with the publication of our book, that it will be used as a supplemental textbook in many data science courses that are focused exclusively on the algorithms and that they can open up the idea that considering the human centered approaches at the beginning of learning about algorithms and data science and the mathematical and statistical techniques, that the next generation of data scientists and artificial intelligence developers will be able to mitigate some of the potentially harmful effects. And we're very excited about this. This is why I'm a professor, because I want to teach the next generation of data scientists and artificial intelligence experts, how to make sure that their work really achieves what they intended it to, which is to make the world a better place, not a worse place, but to enable humans to do better and to mitigate biases and really to lead us into this century in a positive way. >>So the book, human centered data science, you can see it there over Sicily, his right shoulder. When does this come out and how can folks get a copy of it? >>So it came out March 1st and it's available in bookstores everywhere. It was published by MIT press, and you can go online or you can go to your local independent bookstore, or you can order it from your university bookstore as well. >>Excellent. Got to, got to get a copy of, get my hands on that. Got cut and get a copy and dig into that. Cause it sounds so interesting, but also so thoughtful and, um, clear in the way that you described that. And also all the opportunities that, that AI data science and humans are gonna unlock for the world and humans and jobs and, and great things like that. So I'm sure there's lots of great information there. Last question I mentioned, you are keynoting at this year's conference. Talk to me about like the top three takeaways that the audience is going to get from your keynote. >>So I'm very excited to have been invited to wins this year, which of course is a wonderful conference to support women in data science. And I've been a big fan of the conference since it was first developed here, uh, here at Stanford. Um, the three, the three top takeaways I would say is to really consider the data. Science can be rigorous and mathematical and human centered and ethical. It's not a trade-off, it's both at the same time. And that's really the, the number one that, that I'm hoping to keynote will bring to, to the entire audience. And secondly, I hope that it will encourage women or people who've been told that maybe you're not a science person or this isn't for you, or you're not good at math. I hope it will encourage them to disbelieve those views. And to realize that if you, as a member of any type of unread, underrepresented group have ever felt, oh, I'm not good enough for this. >>I'm not smart enough. It's not for me that you will reconsider because I firmly believe that everyone can be good at math. And it's a matter of having the information presented to you in a way that honors your, the background you had. So when I started out my, my high school didn't have AP classes and I needed to learn in a somewhat different way than other people around me. And it's really, it's really something. That's what I tell young people today is if you are struggling in a class, don't think it's because you're not good enough. It might just be that the teacher is not presenting it in a way that is best for someone with your particular background. So it doesn't mean they're a bad teacher. It doesn't mean you're unintelligent. It just means the, maybe you need to find someone else that can explain it to you in a simple and clear way, or maybe you need to get some scaffolding that is Tate, learn extra, take extra classes that will help you. Not necessarily remedial classes. I believe very strongly as a teacher in giving students very challenging classes, but then giving them the scaffolding so that they can learn that difficult material. And I have longer stories on that, but I think I've already talked a bit too long. >>I love that. The scaffolding, I th I think the, the one, one of the high level takeaways that we're all going to get from your keynote is inspiration. Thank you so much for sharing your path to stem, how you got here, why humans, data science and AI are, have to be foundationally human centered, looking forward to the keynote. And again, Cecilia, Aragon. Thank you so much for spending time with me today. >>Thank you so much, Lisa. It's been a pleasure, >>Likewise versus silly Aragon. I'm Lisa Martin. You're watching the cubes coverage of women in data science, 2022.

Published Date : Feb 1 2022

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of Washington Cecilia, it's a pleasure to have you on the cube. You are a professor, you are a data scientist, Well, thank you so much. And as a professor, you study how people make sense of vast data sets, including a combination of computer Thank you so much. if it was something that you got into later, I know that you are the co-founder of Latinas in computing, And my teacher said, oh, you can't do that. And I will say there's nothing like standing in And you write books about that, but being told you can't be an astronaut. And I know this might sound kind of extreme. And I will say that, you know, I encountered situations And we're going to be talking about some of the books that you've written, but I want to get into data science and AI And you say, well, I don't fit into any of those categories, you know, And so, as a developer of algorithms that work over very large data sets, And what that means is whenever you bring in a And that has obviously an impact on that human's life. So you just get given five solid reasons why data science and AI Well, I think a lot of it simply has to do with incorrect So how do we pull ethics into all of this data science and AI and that ethical And all algorithm designers really need to spend some time thinking about the is it generally moving in that direction of understanding? that considering the human centered approaches at the beginning So the book, human centered data science, you can see it there over Sicily, his right shoulder. or you can go to your local independent bookstore, or you can order it from your university takeaways that the audience is going to get from your keynote. And I've been a big fan of the conference since it was first developed here, the information presented to you in a way that honors your, to stem, how you got here, why humans, data science and AI women in data science, 2022.

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Shruthi Murthy, St. Louis University & Venkat Krishnamachari, MontyCloud | AWS Startup Showcase


 

(gentle music) >> Hello and welcome today's session theCUBE presentation of AWS Startup Showcase powered by theCUBE, I'm John Furrier, for your host of theCUBE. This is a session on breaking through with DevOps data analytics tools, cloud management tools with MontyCloud and cloud management migration, I'm your host. Thanks for joining me, I've got two great guests. Venkat Krishnamachari who's the co-founder and CEO of MontyCloud and Shruthi Sreenivasa Murthy, solution architect research computing group St. Louis University. Thanks for coming on to talk about transforming IT, day one day two operations. Venkat, great to see you. >> Great to see you again, John. So in this session, I really want to get into this cloud powerhouse theme you guys were talking about before on our previous Cube Conversations and what it means for customers, because there is a real market shift happening here. And I want to get your thoughts on what solution to the problem is basically, that you guys are targeting. >> Yeah, John, cloud migration is happening rapidly. Not an option. It is the current and the immediate future of many IT departments and any type of computing workloads. And applications and services these days are better served by cloud adoption. This rapid acceleration is where we are seeing a lot of challenges and we've been helping customers with our platform so they can go focus on their business. So happy to talk more about this. >> Yeah and Shruthi if you can just explain your relationship with these guys, because you're a cloud architect, you can try to put this together. MontyCloud is your customer, talk about your solution. >> Yeah I work at the St. Louis University as the solutions architect for the office of Vice President of Research. We can address St. Louis University as SLU, just to keep it easy. SLU is a 200-year-old university with more focus on research. And our goal at the Research Computing Group is to help researchers by providing the right infrastructure and computing capabilities that help them to advance their research. So here in SLU research portfolio, it's quite diverse, right? So we do research on vaccines, economics, geospatial intelligence, and many other really interesting areas, and you know, it involves really large data sets. So one of the research computing groups' ambitious plan is to move as many high-end computation applications from on-prem to the AWS. And I lead all the cloud initiatives for the St. Louis university. >> Yeah Venkat and I, we've been talking, many times on theCUBE, previous interviews about, you know, the rapid agility that's happening with serverless and functions, and, you know, microservices start to see massive acceleration of how fast cloud apps are being built. It's put a lot of pressure on companies to hang on and manage all this. And whether you're a security group was trying to lock down something, or it's just, it's so fast, the cloud development scene is really fun and you're implementing it at a large scale. What's it like these days from a development standpoint? You've got all this greatness in the cloud. What's the DevOps mindset right now? >> SLU is slowly evolving itself as the AWS Center of Excellence here in St. Louis. And most of the workflows that we are trying to implement on AWS and DevOps and, you know, CICD Pipelines. And basically we want it ready and updated for the researchers where they can use it and not have to wait on any of the resources. So it has a lot of importance. >> Research as code, it's like the internet, infrastructure as code is DevOps' ethos. Venkat, let's get into where this all leads to because you're seeing a culture shift in companies as they start to realize if they don't move fast, and the blockers that get in the way of the innovation, you really can't get your arms around this growth as an opportunity to operationalize all the new technology, could you talk about the transformation goals that are going on with your customer base. What's going on in the market? Can you explain and unpack the high level market around what you guys are doing? >> Sure thing, John. Let's bring up the slide one. So they have some content that Act-On tabs. John, every legal application, commercial application, even internal IT departments, they're all transforming fast. Speed has never been more important in the era we are today. For example, COVID research, you know, analyzing massive data sets to come up with some recommendations. They don't demand a lot from the IT departments so that researchers and developers can move fast. And I need departments that are not only moving current workloads to the cloud they're also ensuring the cloud is being consumed the right way. So researchers can focus on what they do best, what we win, learning and working closely with customers and gathering is that there are three steps or three major, you know, milestone that we like to achieve. I would start the outcome, right? That the important milestone IT departments are trying to get to is transforming such that they're directly tied to the key business objectives. Everything they do has to be connected to the business objective, which means the time and you know, budget and everything's aligned towards what they want to deliver. IT departments we talk with have one common goal. They want to be experts in cloud operations. They want to deliver cloud operations excellence so that researchers and developers can move fast. But they're almost always under the, you know, they're time poor, right? And there is budget gaps and that is talent and tooling gap. A lot of that is what's causing the, you know, challenges on their path to journey. And we have taken a methodical and deliberate position in helping them get there. >> Shruthi hows your reaction to that? Because, I mean, you want it faster, cheaper, better than before. You don't want to have all the operational management hassles. You mentioned that you guys want to do this turnkey. Is that the use case that you're going after? Just research kind of being researchers having the access at their fingertips, all these resources? What's the mindset there, what's your expectation? >> Well, one of the main expectations is to be able to deliver it to the researchers as demand and need and, you know, moving from a traditional on-prem HBC to cloud would definitely help because, you know, we are able to give the right resources to the researchers and able to deliver projects in a timely manner, and, you know, with some additional help from MontyCloud data platform, we are able to do it even better. >> Yeah I like the onboarding thing and to get an easy and you get value quickly, that's the cloud business model. Let's unpack the platform, let's go into the hood. Venkat let's, if you can take us through the, some of the moving parts under the platform, then as you guys have it's up at the high level, the market's obvious for everyone out there watching Cloud ops, speed, stablism. But let's go look at the platform. Let's unpack that, do you mind pick up on slide two and let's go look at the what's going on in the platform. >> Sure. Let's talk about what comes out of the platform, right? They are directly tied to what the customers would like to have, right? Customers would like to fast track their day one activities. Solution architects, such as Shruthi, their role is to try and help get out of the way of the researchers, but we ubiquitous around delegating cloud solutions, right? Our platform acts like a seasoned cloud architect. It's as if you've instantly turned on a cloud solution architect that should, they can bring online and say, Hey, I want help here to go faster. Our lab then has capabilities that help customers provision a set of governance contracts, drive consumption in the right way. One of the key things about driving consumption the right way is to ensure that we prevent a security cost or compliance issues from happening in the first place, which means you're shifting a lot of the operational burden to left and make sure that when provisioning happens, you have a guard rails in place, we help with that, the platform solves a problem without writing code. And an important takeaway here, John is that a was built for architects and administrators who want to move fast without having to write a ton of code. And it is also a platform that they can bring online, autonomous bots that can solve problems. For example, when it comes to post provisioning, everybody is in the business of ensuring security because it's a shared model. Everybody has to keep an eye on compliance, that is also a shared responsibility, so is cost optimization. So we thought wouldn't it be awesome to have architects such as Shruthi turn on a compliance bot on the platform that gives them the peace of mind that somebody else and an autonomous bot is watching our 24 by 7 and make sure that these day two operations don't throw curve balls at them, right? That's important for agility. So platform solves that problem with an automation approach. Going forward on an ongoing basis, right, the operation burden is what gets IT departments. We've seen that happen repeatedly. Like IT department, you know, you know this, John, maybe you have some thoughts on this. You know, you know, if you have some comments on how IT can face this, then maybe that's better to hear from you. >> No, well first I want to unpack that platform because I think one of the advantages I see here and that people are talking about in the industry is not only is the technology's collision colliding between the security postures and rapid cloud development, because DevOps and cloud, folks, are moving super fast. They want things done at the point of coding and CICB pipeline, as well as any kind of changes, they want it fast, not weeks. They don't want to have someone blocking it like a security team, so automation with the compliance is beautiful because now the security teams can provide policies. Those policies can then go right into your platform. And then everyone's got the rules of the road and then anything that comes up gets managed through the policy. So I think this is a big trend that nobody's talking about because this allows the cloud to go faster. What's your reaction to that? Do you agree? >> No, precisely right. I'll let Shurthi jump on that, yeah. >> Yeah, you know, I just wanted to bring up one of the case studies that we read on cloud and use their compliance bot. So REDCap, the Research Electronic Data Capture also known as REDCap is a web application. It's a HIPAA web application. And while the flagship projects for the research group at SLU. REDCap was running on traditional on-prem infrastructure, so maintaining the servers and updating the application to its latest version was definitely a challenge. And also granting access to the researchers had long lead times because of the rules and security protocols in place. So we wanted to be able to build a secure and reliable enrollment on the cloud where we could just provision on demand and in turn ease the job of updating the application to its latest version without disturbing the production environment. Because this is a really important application, most of the doctors and researchers at St. Louis University and the School of Medicine and St. Louis University Hospital users. So given this challenge, we wanted to bring in MontyCloud's cloud ops and, you know, security expertise to simplify the provisioning. And that's when we implemented this compliance bot. Once it is implemented, it's pretty easy to understand, you know, what is compliant, what is noncompliant with the HIPAA standards and where it needs an remediation efforts and what we need to do. And again, that can also be automated. It's nice and simple, and you don't need a lot of cloud expertise to go through the compliance bot and come up with your remediation plan. >> What's the change in the outcome in terms of the speed turnaround time, the before and after? So before you're dealing with obviously provisioning stuff and lead time, but just a compliance closed loop, just to ask a question, do we have, you know, just, I mean, there's a lot of manual and also some, maybe some workflows in there, but not as not as cool as an instant bot that solve yes or no decision. And after MontyCloud, what are some of the times, can you share any data there just doing an order of magnitude. >> Yeah, definitely. So the provisioning was never simpler, I mean, we are able to provision with just one or two clicks, and then we have a better governance guardrail, like Venkat says, and I think, you know, to give you a specific data, it, the compliance bot does about more than 160 checks and it's all automated, so when it comes to security, definitely we have been able to save a lot of effort on that. And I can tell you that our researchers are able to be 40% more productive with the infrastructure. And our research computing group is able to kind of save the time and, you know, the security measures and the remediation efforts, because we get customized alerts and notifications and you just need to go in and, you know. >> So people are happier, right? People are getting along at the office or virtually, you know, no one is yelling at each other on Slack, hey, where's? Cause that's really the harmony here then, okay. This is like a, I'm joking aside. This is a real cultural issue between speed of innovation and the, what could be viewed as a block, or just the time that say security teams or other teams might want to get back to you, make sure things are compliant. So that could slow things down, that tension is real and there's some disconnects within companies. >> Yeah John, that's spot on, and that means we have to do a better job, not only solving the traditional problems and make them simple, but for the modern work culture of integrations. You know, it's not uncommon like you cut out for researchers and architects to talk in a Slack channel often. You say, Hey, I need this resource, or I want to reconfigure this. How do we make that collaboration better? How do you make the platform intelligent so that the platform can take off some of the burden off of people so that the platform can monitor, react, notify in a Slack channel, or if you should, the administrator say, Hey, next time, this happens automatically go create a ticket for me. If it happens next time in this environment automatically go run a playbook, that remediates it. That gives a lot of time back that puts a peace of mind and the process that an operating model that you have inherited and you're trying to deliver excellence and has more help, particularly because it is very dynamic footprint. >> Yeah, I think this whole guard rail thing is a really big deal, I think it's like a feature, but it's a super important outcome because if you can have policies that map into these bots that can check rules really fast, then developers will have the freedom to drive as fast as they want, and literally go hard and then shift left and do the coding and do all their stuff on the hygiene side from the day, one on security is really a big deal. Can we go back to this slide again for the other project? There's another project on that slide. You talked about RED, was it REDCap, was that one? >> Yeah. Yeah, so REDCap, what's the other project. >> So SCAER, the Sinfield Center for Applied Economic Research at SLU is also known as SCAER. They're pretty data intensive, and they're into some really sophisticated research. The Center gets daily dumps of sensitive geo data sensitive de-identified geo data from various sources, and it's a terabyte so every day, becomes petabytes. So you know, we don't get the data in workable formats for the researchers to analyze. So the first process is to convert this data into a workable format and keep an analysis ready and doing this at a large scale has many challenges. So we had to make this data available to a group of users too, and some external collaborators with ads, you know, more challenges again, because we also have to do this without compromising on the security. So to handle these large size data, we had to deploy compute heavy instances, such as, you know, R5, 12xLarge, multiple 12xLarge instances, and optimizing the cost and the resources deployed on the cloud again was a huge challenge. So that's when we had to take MontyCloud help in automating the whole process of ingesting the data into the infrastructure and then converting them into a workable format. And this was all automated. And after automating most of the efforts, we were able to bring down the data processing time from two weeks or more to three days, which really helped the researchers. So MontyCloud's data platform also helped us with automating the risk, you know, the resource optimization process and that in turn helped bring the costs down, so it's been pretty helpful then. >> That's impressive weeks to days, I mean, this is the theme Venkat speed, speed, speed, hybrid, hybrid. A lot of stuff happening. I mean, this is the new normal, this is going to make companies more productive if they can get the apps built faster. What do you see as the CEO and founder of the company you're out there, you know, you're forging new ground with this great product. What do you see as the blockers from customers? Is it cultural, is it lack of awareness? Why aren't people jumping all over this? >> Only people aren't, right. They go at it in so many different ways that, you know, ultimately be the one person IT team or massively well-funded IT team. Everybody wants to Excel at what they're delivering in cloud operations, the path to that as what, the challenging part, right? What are you seeing as customers are trying to build their own operating model and they're writing custom code, then that's a lot of need for provisioning, governance, security, compliance, and monitoring. So they start integrating point tools, then suddenly IT department is now having a, what they call a tax, right? They have to maintain the technical debt while cloud service moving fast. It's not uncommon for one of the developers or one of the projects to suddenly consume a brand new resource. And as you know, AWS throws up a lot more services every month, right? So suddenly you're not keeping up with that service. So what we've been able to look at this from a point of view of how do we get customers to focus on what they want to do and automate things that we can help them with? >> Let me, let me rephrase the question if you don't mind. Cause I I didn't want to give the impression that you guys aren't, you guys have a great solution, but I think when I see enterprises, you know, they're transforming, right? So it's not so much the cloud innovators, like you guys, it's really that it's like the mainstream enterprise, so I have to ask you from a customer standpoint, what's some of the cultural things are technical reasons why they're not going faster? Cause everyone's, maybe it's the pandemic's forcing projects to be double down on, or some are going to be cut, this common theme of making things available faster, cheaper, stronger, more secure is what cloud does. What are some of the enterprise challenges that they have? >> Yeah, you know, it might be money for right, there's some cultural challenges like Andy Jassy or sometimes it's leadership, right? You want top down leadership that takes a deterministic step towards transformation, then adequately funding the team with the right skills and the tools, a lot of that plays into it. And there's inertia typically in an existing process. And when you go to cloud, you can do 10X better, people see that it doesn't always percolate down to how you get there. So those challenges are compounded and digital transformation leaders have to, you know, make that deliberate back there, be more KPI-driven. One of the things we are seeing in companies that do well is that the leadership decides that here are our top business objectives and KPIs. Now if we want the software and the services and the cloud division to support those objectives when they take that approach, transformation happens. But that is a lot more easier said than done. >> Well you're making it really easy with your solution. And we've done multiple interviews. I've got to say you're really onto something really with this provisioning and the compliance bots. That's really strong, that the only goes stronger from there, with the trends with security being built in. Shruthi, got to ask you since you're the customer, what's it like working with MontyCloud? It sounds so awesome, you're customer, you're using it. What's your review, what's your- What's your, what's your take on them? >> Yeah they are doing a pretty good job in helping us automate most of our workflows. And when it comes to keeping a tab on the resources, the utilization of the resources, so we can keep a tab on the cost in turn, you know, their compliance bots, their cost optimization tab. It's pretty helpful. >> Yeah well you're knocking projects down from three weeks to days, looking good, I mean, looking real strong. Venkat this is the track record you want to see with successful projects. Take a minute to explain what else is going on with MontyCloud. Other use cases that you see that are really primed for MontyCloud's platform. >> Yeah, John, quick minute there. Autonomous cloud operations is the goal. It's never done, right? It there's always some work that you hands-on do. But if you set a goal such that customers need to have a solution that automates most of the routine operations, then they can focus on the business. So we are going to relentlessly focused on the fact that autonomous operations will have the digital transformation happen faster, and we can create a lot more value for customers if they deliver to their KPIs and objectives. So our investments in the platform are going more towards that. Today we already have a fully automated compliance bot, a security bot, a cost optimization recommendation engine, a provisioning and governance engine, where we're going is we are enhancing all of this and providing customers lot more fluidity in how they can use our platform Click to perform your routine operations, Click to set up rules based automatic escalation or remediation. Cut down the number of hops a particular process will take and foster collaboration. All of this is what our platform is going and enhancing more and more. We intend to learn more from our customers and deliver better for them as we move forward. >> That's a good business model, make things easier, reduce the steps it takes to do something, and save money. And you're doing all those things with the cloud and awesome stuff. It's really great to hear your success stories and the work you're doing over there. Great to see resources getting and doing their job faster. And it's good and tons of data. You've got petabytes of that's coming in. It's it's pretty impressive, thanks for sharing your story. >> Sounds good, and you know, one quick call out is customers can go to MontyCloud.com today. Within 10 minutes, they can get an account. They get a very actionable and valuable recommendations on where they can save costs, what is the security compliance issues they can fix. There's a ton of out-of-the-box reports. One click to find out whether you are having some data that is not encrypted, or if any of your servers are open to the world. A lot of value that customers can get in under 10 minutes. And we believe in that model, give the value to customers. They know what to do with that, right? So customers can go sign up for a free trial at MontyCloud.com today and get the value. >> Congratulations on your success and great innovation. A startup showcase here with theCUBE coverage of AWS Startup Showcase breakthrough in DevOps, Data Analytics and Cloud Management with MontyCloud. I'm John Furrier, thanks for watching. (gentle music)

Published Date : Sep 22 2021

SUMMARY :

the co-founder and CEO Great to see you again, John. It is the current and the immediate future you can just explain And I lead all the cloud initiatives greatness in the cloud. And most of the workflows that and the blockers that get in important in the era we are today. Is that the use case and need and, you know, and to get an easy and you get of the researchers, but we ubiquitous the cloud to go faster. I'll let Shurthi jump on that, yeah. and reliable enrollment on the cloud of the speed turnaround to kind of save the time and, you know, as a block, or just the off of people so that the and do the coding and do all Yeah, so REDCap, what's the other project. the researchers to analyze. of the company you're out there, of the projects to suddenly So it's not so much the cloud innovators, and the cloud division to and the compliance bots. the cost in turn, you know, to see with successful projects. So our investments in the platform reduce the steps it takes to give the value to customers. Data Analytics and Cloud

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Maurizio Davini, University of Pisa and Kaushik Ghosh, Dell Technologies | CUBE Conversation 2021


 

>>Hi, Lisa Martin here with the cube. You're watching our coverage of Dell technologies world. The digital virtual experience. I've got two guests with me here today. We're going to be talking about the university of Piza and how it is leaning into all flash data lakes powered by Dell technologies. One of our alumni is back MERITO, Debbie, and the CTO of the university of PISA. Maricio welcome back to the cube. Thank you. Very excited to talk to you today. CAUTI Gosha is here as well. The director of product management at Dell technologies. Kaushik. Welcome to the cube. Thank you. So here we are at this virtual event again, Maricio you were last on the cube at VMworld a few months ago, the virtual experience as well, but talk to her audience a little bit before we dig into the technology and some of these demanding workloads that the university is utilizing. Talk to me a little bit about your role as CTO and about the university. >>So my role as CTO at university of PISA is, uh, uh, regarding the, uh, data center operations and, uh, scientific computing support for these, the main, uh, occupation that, uh, that, uh, yeah. Then they support the world, saw the technological choices that university of PISA is, uh, is doing, uh, during the latest, uh, two or three years. >>Talk to me about some, so this is a, in terms of students we're talking about 50,000 or so students 3000 faculty and the campus is distributed around the town of PISA, is that correct? Maricio >>Uh, the university of PISA is sort of a, uh, town campus in the sense that we have 20 departments that are, uh, located inside the immediate eval town, uh, but due to the choices, but university of peace, I S uh, the, uh, last, uh, uh, nineties, uh, we are, uh, owner of, uh, of a private fiber network connecting all our, uh, departments and allow the templates. And so we can use the town as a sort of white board to design, uh, uh, new services, a new kind of support for teaching. Uh, and, uh, and so, >>So you've really modernized the data infrastructure for the university that was founded in the middle ages. Talk to me now about some of the workloads and that are generating massive amounts of data, and then we'll get into what you're doing with Dell technologies. >>Oh, so the university of PISA as a, uh, quite old on HPC, traditional HPC. So we S we are supporting, uh, uh, the traditional workloads from, uh, um, CAE or engineering or chemistry or oil and gas simulations. Uh, of course it during, uh, uh, the pandemic year, last year, especially, uh, we have new, uh, kind of work you'll scan, uh, summer related, uh, to the, uh, fast movement of the HPC workload from let's say, traditional HPC to AI and machine learning. And those are the, um, request that you support a lot of remote activities coming from, uh, uh, uh, distance learning, uh, to remote ties, uh, uh, laboratories or stations or whatever, most elder in presence in the past. And so the impact either on the infrastructure or, and the specialty and the storage part was a significant. >>So you talked about utilizing the high performance computing environments for awhile and for scientific computing and things. I saw a case study that you guys have done with Dell, but then during the pandemic, the challenge and the use case of remote learning brought additional challenges to your environment from that perspective, how, how were you able to transfer your curriculum to online and enable the scientists, the physicists that oil and gas folks doing research to still access that data at the speed that they needed to, >>Uh, you know, for what you got, uh, uh, uh, distance learning? Of course. So we were, uh, based on the cloud services were not provided internally by Yas. So we lie, we based on Microsoft services, so Google services and so on, but what regards, uh, internal support, uh, scientific computing was completely, uh, remote dies either on support or experience, uh, because, uh, I can, uh, I, can I, uh, bring some, uh, some examples, uh, for example, um, laboratory activities, uh, we are, the access to the laboratories, uh, was the of them, uh, as much as possible. Uh, we design a special networker to connect all the and to give the researcher the possibility of accessing the data on visit special network. So as sort of a collector of data, uh, inside our, our university network, uh, you can imagine that the, uh, for example, was, was a key factor for us because utilization was, uh, uh, for us, uh, and flexible way to deliver new services, uh, in an easy way, uh, especially if you have to, uh, have systems for remote. So, as, as I told you before about the, uh, network, as well as a white board, but also the computer infrastructure, it was VM-ware visualization and treated as a, as a sort of what we were designing with services either, either for interactive services or especially for, uh, scientific computing. For example, we have an experience with it and a good polarization of HPC workload. We start agents >>Talk to me about the storage impact, because as we know, we talk about, you know, these very demanding, unstructured workloads, AI machine learning, and that can be, those are difficult for most storage systems to handle the radio. Talk to us about why you leaned into all flash with Dell technologies and talk to us a little bit about the technologies that you've implemented. >>So, uh, if I, if I have to think about our, our storage infrastructure before the pandemic, I have to think about Iceland because our HPC workloads Moss, uh, mainly based off, uh, Isilon, uh, as a storage infrastructure, uh, together with some, uh, final defense system, as you can imagine, we were deploying in-house, uh, duty independently, especially with the explosion of the AI, with them, uh, blueprint of the storage requests change the law because of what we have, uh, uh, deal dens. And in our case, it was an, I breathed the Isilon solution didn't fit so well for HB for AI. And this is why we, uh, start with the data migration. That was, it was not really migration, but the sort of integration of the power scaler or flash machine inside our, uh, environment, because then the power scale, all flesh and especially, uh, IO in the future, uh, the MVME support, uh, is a key factor for the storage. It just support, uh, we already have experience as some of the, uh, NBME, uh, possibilities, uh, on the power PowerMax so that we have here, uh, that we use part for VDI support, uh, but off, um, or fleshly is the minimum land and EME, uh, is what we need to. >>Gotcha. Talk to me about what Dell technologies has seen the uptick in the demand for this, uh, as Maricio said, they were using Isilon before adding in power scale. What are some of the changing demands that, that Dell technologies has seen and how does technologies like how our scale and the F 900 facilitate these organizations being able to rapidly change their environment so that they can utilize and extract the value from data? >>Yeah, no, absolutely. What occupational intelligence is an area that, uh, continues to amaze me. And, uh, personally I think the, the potential here is immense. Um, uh, as Maurizio said, right, um, the, the data sets, uh, with artificial intelligence, I have, uh, grown significantly and, and not only the data has become, um, uh, become larger the models, the AI models that, that we, that are used have become more complex. Uh, for example, uh, one of the studies suggests that, uh, the, uh, that for a modeling of, uh, natural language processing, um, uh, one of the fields in AI, uh, the number of parameters used, could exceed like about a trillion in, uh, in a few years, right? So almost a size of a human brain. So, so not only that means that there's a lot of fear mounted to be, uh, data, to be processed, but, uh, by, uh, the process stored in yesterday, uh, but probably has to be done in the same amount of Dinah's before, perhaps even a smaller amount of time, right? So a larger data theme time, or perhaps even a smaller amount of time. So, absolutely. I agree. I mean, those type of, for these types of workloads, you need a storage that gives you that high-performance access, but also being able to store the store, that data is economically. >>And how does Dell technologies deliver that? The ability to scale the economics what's unique and differentiated about power skill? >>Uh, so power scale is, is, is our all flash, uh, system it's, uh, it's, uh, it's bad users, dark techno does some of the same capabilities that, uh, Isilon, um, products use used to offer, uh, one of his fault system capabilities, some of the capabilities that Maurizio has used and loved in the past, some of those, some of those same capabilities are brought forward. Now on this spar scale platform, um, there are some changes, like for example, on new Parscale's platform supports Nvidia GPU direct, right? So for, uh, artificial intelligence, uh, workloads, you do need these GPU capable machines. And, uh, and, uh, Parscale supports that those, uh, high high-performance Jupiter rec machines, uh, through, through the different technologies that we offer. And, um, the Parscale F 900, which should, which we are going to launch very soon, um, um, is, is, is our best hype, highest performance all-flash and the most economic allowed slash uh, to date. So, um, so it is, um, it not only is our fastest, but also offers, uh, the most economic, uh, most economical way of storing the data. Um, so, so ideal far for these type of high-performance workloads, like AIML, deep learning and so on. Excellent. >>So talk to me about some of the results that the university is achieving so far. I did read a three X improvement in IO performance. You were able to get nearly a hundred percent of the curriculum online pretty quickly, but talk to me about some of the other impacts that Dell technologies has helping the university to achieve. >>Oh, we had, uh, we had an old, uh, in all the Dell customer, and if you, uh, give a Luca walk, we have that inside the insomnia, our data centers. Uh, we typically joking, we define them as a sort of, uh, Dell technologies supermarket in the sense that, uh, uh, degreed part of our, our servers storage environment comes from, uh, from that technology said several generations of, uh, uh, PowerEdge servers, uh, uh, power, my ex, uh, Isaac along, uh, powers, Gale power store. So we, uh, we are, uh, um, using a lot of, uh, uh, Dell technologies here, here, and of course, uh, um, in the past, uh, our traditional, uh, workloads were well supported by that technologies. And, uh, Dell technologies is, uh, uh, driving ourselves versus, uh, the, what we call the next generation workloads, uh, because we are, uh, uh, combining gas, uh, in, um, in the transition of, uh, um, uh, the next generation of computing there, but to be OPA who, uh, to ask here, and he was walked through our research of looking for, cause if I, if I have to, to, to, to give a look to what we are, uh, doing, uh, mostly here, healthcare workloads, uh, deep learning, uh, uh, data analysis, uh, uh, image analysis in C major extraction that everything have be supported, especially from, uh, the next next generation servers typically keep the, uh, with, with GPU's. >>This is why GPU activities is, is so important for answer, but also, uh, supported on the, on the, on the networking side. But because of that, the, the, the speed, the, and the, of the storage, and must be tired to the next generation networking. Uh, low-latency high-performance because at the end of the day, you have to, uh, to bring the data in storage and DP. Can you do it? Uh, so, uh, they're, uh, one of the low latency, uh, uh, I performance, if they're connected zones is also a side effect of these new work. And of course that the college is, is, is. >>I love how you described your data centers as a Dell technologies supermarket, maybe a different way of talking about a center of excellence question. I want to ask you about, I know that the university of PISA is SCOE for Dell. Talk to me about in the last couple of minutes we have here, what that entails and how Dell helps customers become a center of excellence. >>Yeah, so Dell, um, like talked about has a lot of the Dell Dell products, uh, today, and, and, and in fact, he mentioned about the pirate servers, the power scale F 900 is, is actually based on a forehead server. So, so you can see, so a lot of these technologies are sort of in the linked with each other, they talk to each other, they will work together. Um, and, and, and that sort of helps, helps customers manage the entire, uh, ecosystem lifecycle data, life cycle together, versus as piece parts, because we have solutions that solve all aspects of, of, of the, uh, of, of, uh, of our customer like Mauricio's needs. Right. So, um, so yeah, I'm glad Maurizio is, is leveraging Dell and, um, and I'm happy we are able to help help more issue or solve solve, because, uh, all his use cases, uh, and UN >>Excellent. Maricio last question. Are you going to be using AI machine learning, powered by Dell to determine if the tower of PISA is going to continue to lean, or if it's going to stay where it is? >>Uh, the, the, the leaning tower is, uh, an engineering miracle. Uh, some years ago, uh, an engineering, uh, incredible worker, uh, was able, uh, uh, to fix them. They leaning for a while and let's open up the tower visa, stay there because he will be one of our, uh, beauty that you can come to to visit. >>And that's one part of Italy I haven't been to. So as pandemic, I gotta add that to my travel plans, MERITO and Kaushik. It's been a pleasure talking to you about how Dell is partnering with the university of PISA to really help you power AI machine learning workloads, to facilitate many use cases. We are looking forward to hearing what's next. Thanks for joining me this morning. Thank you for my guests. I'm Lisa Martin. You're watching the cubes coverage of Dell technologies world. The digital event experience.

Published Date : Jun 9 2021

SUMMARY :

We're going to be talking about the university of Piza and how it is leaning into all flash data uh, scientific computing support for these, the main, uh, uh, uh, nineties, uh, we are, uh, Talk to me now about some of the workloads and that are generating massive amounts of data, a lot of remote activities coming from, uh, uh, scientists, the physicists that oil and gas folks doing research to still access that data at the speed that the access to the laboratories, uh, was the of them, uh, Talk to me about the storage impact, because as we know, we talk about, you know, these very demanding, unstructured workloads, uh, Isilon, uh, as a storage infrastructure, uh, together with for this, uh, as Maricio said, they were using Isilon before adding in power that means that there's a lot of fear mounted to be, uh, data, to be processed, but, and the most economic allowed slash uh, to date. a hundred percent of the curriculum online pretty quickly, but talk to me about some of the other impacts the sense that, uh, uh, degreed part of our, they're, uh, one of the low latency, uh, uh, I know that the university of PISA is SCOE for Dell. a lot of the Dell Dell products, uh, today, and, and, if the tower of PISA is going to continue to lean, or if it's going to stay where it is? Uh, the, the, the leaning tower is, uh, an engineering miracle. So as pandemic, I gotta add that to my travel plans,

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Aedan Macdonald, The Center for Justice at Columbia University | AWS re:Invent 2020 Partner Network


 

>>from around the globe. It's the Cube with digital coverage of AWS reinvent 2020 Special coverage sponsored by A. W s Global Partner Network. Hello. And welcome back to the cubes Live coverage of AWS reinvent 2020. It's virtual this year. Normally, were there in person doing the interviews, getting the signal from the noise. I'm John for your host. And where the cube virtual Got a great guest here. Aidan McDonald, Program manager, Justice through code the center of justice at the Columbia University. Um, this is a great story, Aiden. Thanks for coming on. Appreciate you taking the time to join me. >>Thanks so much for having me, John. >>So first of all talk about the mission of justice through code. This is such an awesome program. It really is impactful. It's one of those examples where, you know, people want to change the world. This is one. You can actually do it. And with code, take us through the mission. >>Yeah, So I think to understand the mission here, you have to understand a little bit about the problem, right? So the United States has, uh, 5% of the world's population, 25% of the global prison population. When people come home from prison, they're confronted with the reality that it's just very difficult to find jobs right. We have unemployment rates that are stratospherically higher than for the general population. And so, at the core of what we're doing in our mission is really to provide a pathway to career track employment for formerly incarcerated individuals to help support them and their families, and also to begin to change the negative stereotypes that air attached to the formerly incarcerated. >>It's an upwardly mobile mindset growth mindset. Also, there's new skills, always hard to do that, given the environmental conditions, what skills are you guys delivering? Take us through how it works. Give us a feel for kind of the skill sets and what gets what happens. >>Yeah, so we focused the program kind of in two distinct ways. So we have the technical skills aspect of the curriculum and the interpersonal skills. So as far as the technical skills go, we teach a version of a course that's taught to current Columbia MBA students eso that is set up. We teach the fundamentals of programming python, what we call phase one of the program. Then we move on to a P I S and data analysis. And then from there we do a Capstone software project. And for that project, groups of two or more students come together. Really? They conceptualize the design on day execute on building this project. And during that phase, of course, we actually pair students with mentors who are season software engineers from many of the top tech companies in the US and then in terms of the story in terms of the interpersonal skills, um, you know, we really focus on the skills that are necessary to success in the tech workforce s Oh, this is, you know, resumes, cover letters, interviewing skills and also really understanding that for many of our students, they don't have the networks that so maney people are fortunate enough to have that have gone through a traditional educational pathways. We bring in guest speakers from different corporations. Um, and, you know, having the students were quick mentors there really able to start to build that network to support themselves in their career transition when they complete the program. >>You know what's really amazing about what you're doing is and this really is so timing. The timing is perfect. Um, is that with the cloud and the tech scene, where we're at now is you don't you can come out. You can level up pretty quickly with things. In other words, you know, you could have someone go to an Ivy League school and be all the pedigree, and it doesn't matter because the skills now are different. You literally could be a surfing and be a couch potato surfing TV and get online and get an Amazon degree and through educate and and come out, make six figures. I mean, so there is definitely a path here. It's not like it's a slog. It's not like it's a huge leap, so the timing is perfect. We're seeing that across the board. There's more empty jobs, opening cybersecurity, cloud computing administration and with land in all these cool services, it's just gonna get easier. We hear that we see that clearly. What are some of the examples can you share of the graduates? What have they gone on to do? You mentioned some of the big tech companies. Take us through that that tipping point when the success kicks in. >>What s so you know, as I mentioned, one of the really integral parts of our program is this mentorship, right? So students finished the program. They often continue to work on their final projects, um, in conjunction with their mentors and then really focused during that time period on developing the skill sets that they'll need to have entering into junior level software development roles a tech companies For some of our students, this means, um, they've actually found out through the course of the class that they prefer front end web development, and they start working on JavaScript and full stack. And a few of our students have gone on to work it a or enter into apprenticeships that major tech companies, um, in those roles. And then we also have students who are focused on continuing in their development of their technical skill set with Python s. So we have some students who have actually entered into the Columbia University I t department on a big project. They're working on other students that have worked with freelance Web development agencies and projects really have a very diverse, talented group of students. And so from that we see that Everybody has different interests and definitely no one specific pathway but many successful pathways. >>How is Amazon Web services helping you guys? They contributing? They're giving you credits. What's their role here? >>Yeah, so they've provided kind of their expertise and support to the program. Just really excited to be collaborating with them on really looking at, How do we take this program to scale? Right. So we know that this is a problem that affect so many Americans, right? There's 77 million Americans currently with a criminal record. And so, um, you know, with the barriers to employment that come from having been incarcerated, I came to this work because I spent four years incarcerated for my own involvement in the marijuana industry in California Prior toe legalization. And so, you know, I saw a kind of these challenges, right? Firsthand of what it's like to try to get a job. And so, you know, we're just very invested in collaborating with AWS again. Thio bring this program to scale so we can really help uplift the communities that have been impacted by mass incarceration. >>It's interesting you talk about your personal experience, talk about this stigma that comes with that and how this breaks through that stigma. And this is really not only is a self esteem issues up this Israel, you could make more money. You have a career and literally the difference between going down or up is huge. Talk about the stigma and how this program changes the lives of the individual. >>Yeah, I think one important thing Thio consider hearing before understanding is this statement right? Is that unemployment or employment should say is the number one predictor of recidivism. Right? So we see that for people that have really jobs, they don't go back to prison on DSO. You know, we're just so invested in working on that and in terms of the stigma, uh, you know, it's just so prevalent, right? I can think through myself. Before I had going thio to prison, I had started to businesses. I was actually accepted. Thio go to Columbia University when I got out and I would apply the landscaping jobs, couldn't get to the final round, and the job offer would be rescinded, right? I mean, just this automatic sense of this person is not to be trusted because they have a history of incarceration. And so what we're really working on doing with our students is first redefining what people think it's possible, right? I saw this myself coming home from prison. The constant messaging is your life is over. You're never going to accomplish anything of meaning and so just kind of accept your lot on DSO. At first, we really focus on that with students in terms of sharing stories of success. Other people that we know that have taken this pathway on been really looking at providing leadership development. So when our students do enter into these companies, they're really able to service leaders and for people to understand that while you may have these assumptions because of depictions of people that have been incarcerated in the media, the end of they formerly incarcerated people, our brothers, sisters, family members and really deserve a chance in life. >>Yeah, And I got to say, you know, as someone who loves technology and been, uh, computer science when his early days, you know, there was a ladder, you have to have a requisite level now. I mean, you literally could be six weeks in and be fluent on Cloud Computing Administration as three bucket configurations. I mean, there are so many things that so many opportunities if you have some intelligence and some drive you're in, I mean, it's just Z pretty right? It's right there. It's great. It's attainable. It's not a fantasy, it's it's doable. And programs like yours are awesome. My hat's off to you for doing that. Thanks for sharing. >>Definitely. Thank you so much for having me >>final question before we go, How does people get involved? Can you share a minute? Give a plug for what you guys are doing? How do I get involved? How do I give support? Take a minute to >>get? Definitely. I mean, I think at the core like the most important thing that anybody can dio right is to look within the organizations that they work and work at and find out what your fair chance hiring practices are and see if if there's an opportunity to hire our students or other formerly incarcerated students. E think it also were very engaged, as I mentioned in our mentorship program s so people can confined US center for Justice that, uh, Colombia dot e d u on board, you know reach out, tow us about the mentorship program and really begin toe talk about this and share the stories of those who have succeeded and provide support Thio other people that will be returning home. >>All right. And thank you very much. Just a fur coat. Check it out. Columbia University 18 McDonald, Program manager. Thanks for joining us. I'm John for here in the Cube Cube Coverage Cube. Virtual coverage of reinvent 2020. Thanks for watching.

Published Date : Dec 4 2020

SUMMARY :

It's the Cube with digital It's one of those examples where, you know, people want to change the world. Yeah, So I think to understand the mission here, you have to understand a little bit about the problem, right? what skills are you guys delivering? And during that phase, of course, we actually pair students with mentors who are season software What are some of the examples can you share of the graduates? And a few of our students have gone on to work it a or How is Amazon Web services helping you guys? And so, um, you know, with the barriers to employment that come from having been incarcerated, And this is really not only is a self esteem issues up this Israel, you could make more money. these companies, they're really able to service leaders and for people to understand that while you may have Yeah, And I got to say, you know, as someone who loves technology and been, uh, Thank you so much for having me can dio right is to look within the organizations that they work and And thank you very much.

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Aedan Macdonald, The Center for Justice at Columbia University | AWS re:Invent 2020


 

>>from around the globe. >>It's the Cube with digital coverage of AWS reinvent 2020 sponsored by Intel and AWS. Yeah. Hello and welcome back to the cubes. Live coverage of AWS reinvent 2020. It's virtual this year. Normally, were there in person doing the interviews, getting the signal from the noise. I'm Sean for your host. And where the cube virtual Got a great guest here. Aidan McDonald, Program manager, Justice through code, the center of justice at the Columbia University. Um, this is a great story, Aiden. Thanks for coming on. Appreciate you taking the time to join me. >>Thanks so much for having me, John. >>So first of all, talk about the mission of justice through code. This is such an awesome program. It really is impactful. It's one of those examples where, you know, people want to change the world. This is one. You can actually do it. And with code, take us through the mission. >>Yeah, so I think to understand the mission here, you have to understand a little bit about the problem, right? So the United States has 5% of the world's population, 25% of the global prison population when people come home from prison, they're confronted with the reality that it's just very difficult to find jobs right. We have unemployment rates that are stratospherically higher than for the general population. And so, at the core of what we're doing in our mission is really to provide a pathway to career track employment for formerly incarcerated individuals to help support them and their families, and also to begin to change the negative stereotypes that air attached to the formerly incarcerated. >>It's an upwardly mobile mindset growth mindset. Also, there's new skills always hard to do that right. Given the environmental conditions. What skills are you guys delivering? Take us through how it works. Give us a feel for kind of the skill sets and what gets what happens. >>Yeah, so we focused the program kind of in two distinct ways. So we have the technical skills aspect of the curriculum and the interpersonal skills. Soas faras. The technical skills go. We teach a version of a course that's taught to current Columbia MBA students eso that is set up. We teach the fundamentals of programming python in what we call phase one of the program. Then we move on to a P I s and data analysis. And then from there we do a Capstone software project. And for that project, groups of two or more students come together. Really? They conceptualize the design on day execute on building this project. And during that phase, of course, we actually pair students with mentors who are season software engineers from many of the top tech companies in the US And then in terms of the story in terms of the interpersonal skills, um, you know, we really focus on the skills that are necessary to success in the tech workforce s Oh, this is, you know, resumes, cover letters, interviewing skills and also really understanding that for many of our students, they don't have the networks that so maney people are fortunate enough to have that have gone through a traditional educational pathway. So we bring in guest speakers from different corporations. Um, and you know, having the students work with mentors there really able to start to build that network to support themselves in their career transition when they complete the program. >>You know what's really amazing about what you're doing is, and this really is so timing The timing is perfect. Um, is that with the cloud and the tech scene, where we're at now is you don't you can come out. You can level up pretty quickly with things. In other words, you know, you could have someone go to an Ivy League school and be all the pedigree, and it doesn't matter because the skills now are different. You literally could be a surfing and be a couch potato surfing TV and get online and get an Amazon degree and through educate and and come out, make six figures. I mean, so there is definitely a path here. It's not like it's a slog. It's not like it's a huge leap, so the timing is perfect. We're seeing that across the board. There's more empty jobs, opening cybersecurity, cloud computing administration, and with land in all these cool services, it's just gonna get easier. We hear that we see that clearly. What are some of the examples can you share of the graduates? What have they gone on to do? You mentioned some of the big tech companies take us through that, that tipping point when the success kicks in? >>Yeah, so you know, as I mentioned one of the really integral parts of our program. Is this mentorship? Right? So students finished the program. They often continue to work on their final projects, um, in conjunction with their mentors and then really focused during that time period on developing the skill sets that they'll need to have entering into junior level software development roles a tech companies For some of our students, this means, um, they've actually found out through the course of the class that they prefer front end web development and they start working on JavaScript and full stack. And a few of our students have gone on to work it a or enter into apprenticeships that major tech companies, um, in those roles. And then we also have students who are focused on continuing in their development of their technical skill set with Python s. So we have some students who have actually entered into the Columbia University I T department on a big project. They're working on other students that have worked with freelance Web development agencies and projects, um, really have a very diverse, talented group of students. And so from that we see that everybody has different interests and definitely no one specific pathway, but many successful pathways. >>How is Amazon Web services helping you guys? They contributing? They're giving you credits. What's their role here? >>Yeah, so they've provided kind of their expertise and support to the program. Just really excited to be collaborating with them on really looking at, How do we take this program to scale? Right. So we know that this is a problem that affect so many Americans, right? There's 77 million Americans currently with a criminal record. And so, um, you know, with the barriers to employment that come from having been incarcerated, I came to this work because I spent four years incarcerated for my own involvement in the marijuana industry in California Prior toe legalization. And so, you know, I saw kind of these challenges right firsthand of what it's like to try to get a job. And so, you know, we're just very invested in collaborating with AWS again. Thio bring this program to scale so we can really help uplift the communities that have been impacted by mass incarceration. >>It's interesting you talk about your personal experience, talk about this stigma that comes with that and how this breaks through that stigma and this is really not only is a self esteem issues up this Israel, you could make more money. You have a career and literally the difference between going down or up is huge. Talk about the stigma and how this program changes the lives of the individual. >>Yeah, I think one important thing Thio consider hearing before understanding is this statement, right? Is that, um, unemployment or employment should say is the number one predictor of recidivism. Right. So we see that for people that have really jobs, they don't go back to prison on dso Um you know, we're just so invested in working on that and in terms of the stigma, um, you know, it's just so prevalent, right? I could think through myself. Before I had gone thio to prison, I had started to businesses. I was actually accepted. Thio go to Columbia University when I got out and I would apply the landscaping jobs, couldn't get to the final round, and the job offer would be rescinded, right? I mean, it's just this automatic sense of this person is not to be trusted because they have a history of incarceration And so what we're really working on doing with our students is first redefining what people think it's possible, right? I saw this myself coming home from prison. The constant messaging is your life is over. You're never going to accomplish anything of meaning and so just kind of accept your lot on DSO. At first, we really focus on that with students in terms of sharing stories of success. Other people that we know that have taken this pathway on been really looking at providing leadership development. So when our students do enter into these companies, they're really able to service leaders and for people to understand that while you may have these assumptions because of depictions of people that have been incarcerated in the media, the end of they formerly incarcerated people, our brothers, sisters, family members and really deserve a chance in life. >>Yeah, And I got to say, you know, as someone who loves technology and been, uh, computer science when his early days, you know, there was a ladder, you have to have a requisite level now. I mean, you literally could be six weeks in and be fluent on Cloud Computing Administration as three bucket configurations. I mean, there are so many things that so many opportunities if you have some intelligence and some drive you're in, I mean, it's just Z pretty right? It's right there. It's great. It's attainable. It's not a fantasy, it's it's doable. And programs like yours are awesome. My hat's off to you for doing that. Thanks for sharing. >>Definitely. Thank you so much for having me >>final question Before we go, How does people get involved? Can you share a minute? Give a plug for what you guys are doing? How do I get involved? How do I give support? Take a minute to >>get? Definitely. I mean, I think at the core like the most important thing that anybody can dio right is to look within the organizations that they work and work at and find out what your fair chance hiring practices are and see if if there's an opportunity to hire our students or other formerly incarcerated students. E think also were very engaged, as I mentioned in our mentorship program s so people can confined US center for Justice that, um, Colombia dot e d u on bond, you know, reach out, tow us about the mentorship program and really begin toe talk about this and share the stories of those who have succeeded and provide support Thio other people that will be returning home. >>All right. And thank you very much. Just a fur coat. Check it out. Columbia University 18 McDonald, Program manager. Thanks for joining us. I'm John for here in the Cube Cube Coverage Cube. Virtual coverage of reinvent 2020. Thanks for watching.

Published Date : Dec 2 2020

SUMMARY :

It's the Cube with digital coverage of AWS reinvent 2020 It's one of those examples where, you know, people want to change the world. Yeah, so I think to understand the mission here, you have to understand a little bit about the problem, right? What skills are you guys delivering? in the tech workforce s Oh, this is, you know, resumes, What are some of the examples can you share of the graduates? Yeah, so you know, as I mentioned one of the really integral parts of our program. How is Amazon Web services helping you guys? And so, um, you know, with the barriers to employment that come from having been incarcerated, It's interesting you talk about your personal experience, talk about this stigma that comes with that and how this breaks through that they don't go back to prison on dso Um you know, we're just so invested Yeah, And I got to say, you know, as someone who loves technology and been, uh, Thank you so much for having me you know, reach out, tow us about the mentorship program and really begin toe talk about this and share And thank you very much.

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The University of Edinburgh and Rolls Royce Drive in Exascale Style | Exascale Day


 

>>welcome. My name is Ben Bennett. I am the director of HPC Strategic programs here at Hewlett Packard Enterprise. It is my great pleasure and honor to be talking to Professor Mark Parsons from the Edinburgh Parallel Computing Center. And we're gonna talk a little about exa scale. What? It means we're gonna talk less about the technology on Maura about the science, the requirements on the need for exa scale. Uh, rather than a deep dive into the enabling technologies. Mark. Welcome. >>I then thanks very much for inviting me to tell me >>complete pleasure. Um, so I'd like to kick off with, I suppose. Quite an interesting look back. You and I are both of a certain age 25 plus, Onda. We've seen these milestones. Uh, I suppose that the S I milestones of high performance computing's come and go, you know, from a gig a flop back in 1987 teraflop in 97 a petaflop in 2000 and eight. But we seem to be taking longer in getting to an ex a flop. Um, so I'd like your thoughts. Why is why is an extra flop taking so long? >>So I think that's a very interesting question because I started my career in parallel computing in 1989. I'm gonna join in. IPCC was set up then. You know, we're 30 years old this year in 1990 on Do you know the fastest computer we have them is 800 mega flops just under a getting flogged. So in my career, we've gone already. When we reached the better scale, we'd already gone pretty much a million times faster on, you know, the step from a tariff block to a block scale system really didn't feel particularly difficult. Um, on yet the step from A from a petaflop PETA scale system. To an extent, block is a really, really big challenge. And I think it's really actually related to what's happened with computer processes over the last decade, where, individually, you know, approached the core, Like on your laptop. Whoever hasn't got much faster, we've just got more often So the perception of more speed, but actually just being delivered by more course. And as you go down that approach, you know what happens in the supercomputing world as well. We've gone, uh, in 2010 I think we had systems that were, you know, a few 1000 cores. Our main national service in the UK for the last eight years has had 118,000 cores. But looking at the X scale we're looking at, you know, four or five million cores on taming that level of parallelism is the real challenge. And that's why it's taking an enormous and time to, uh, deliver these systems. That is not just on the hardware front. You know, vendors like HP have to deliver world beating technology and it's hard, hard. But then there's also the challenge to the users. How do they get the codes to work in the face of that much parallelism? >>If you look at what the the complexity is delivering an annex a flop. Andi, you could have bought an extra flop three or four years ago. You couldn't have housed it. You couldn't have powered it. You couldn't have afforded it on, do you? Couldn't program it. But you still you could have You could have bought one. We should have been so lucky to be unable to supply it. Um, the software, um I think from our standpoint, is is looking like where we're doing mawr enabling with our customers. You sell them a machine on, then the the need then to do collaboration specifically seems mawr and Maura around the software. Um, so it's It's gonna be relatively easy to get one x a flop using limb pack, but but that's not extra scale. So what do you think? On exa scale machine versus an X? A flop machine means to the people like yourself to your users, the scientists and industry. What is an ex? A flop versus >>an exa scale? So I think, you know, supercomputing moves forward by setting itself challenges. And when you when you look at all of the excess scale programs worldwide that are trying to deliver systems that can do an X a lot form or it's actually very arbitrary challenge. You know, we set ourselves a PETA scale challenge delivering a petaflop somebody manage that, Andi. But you know, the world moves forward by setting itself challenges e think you know, we use quite arbitrary definition of what we mean is well by an exit block. So, you know, in your in my world, um, we either way, first of all, see ah flop is a computation, so multiply or it's an ad or whatever on we tend. Thio, look at that is using very high precision numbers or 64 bit numbers on Do you know, we then say, Well, you've got to do the next block. You've got to do a billion billion of those calculations every second. No, a some of the last arbitrary target Now you know today from HPD Aiken by my assistant and will do a billion billion calculations per second. And they will either do that as a theoretical peak, which would be almost unattainable, or using benchmarks that stressed the system on demonstrate a relaxing law. But again, those benchmarks themselves attuned Thio. Just do those calculations and deliver and explore been a steady I'll way if you like. So, you know, way kind of set ourselves this this this big challenge You know, the big fence on the race course, which were clambering over. But the challenge in itself actually should be. I'm much more interesting. The water we're going to use these devices for having built um, eso. Getting into the extra scale era is not so much about doing an extra block. It's a new generation off capability that allows us to do better scientific and industrial research. And that's the interesting bit in this whole story. >>I would tend to agree with you. I think the the focus around exa scale is to look at, you know, new technologies, new ways of doing things, new ways of looking at data and to get new results. So eventually you will get yourself a nexus scale machine. Um, one hopes, sooner rather >>than later. Well, I'm sure you don't tell me one, Ben. >>It's got nothing to do with may. I can't sell you anything, Mark. But there are people outside the door over there who would love to sell you one. Yes. However, if we if you look at your you know your your exa scale machine, Um, how do you believe the workloads are going to be different on an extra scale machine versus your current PETA scale machine? >>So I think there's always a slight conceit when you buy a new national supercomputer. On that conceit is that you're buying a capability that you know on. But many people will run on the whole system. Known truth. We do have people that run on the whole of our archer system. Today's A 118,000 cores, but I would say, and I'm looking at the system. People that run over say, half of that can be counted on Europe on a single hand in a year, and they're doing very specific things. It's very costly simulation they're running on. So, you know, if you look at these systems today, two things show no one is. It's very difficult to get time on them. The Baroque application procedures All of the requirements have to be assessed by your peers and your given quite limited amount of time that you have to eke out to do science. Andi people tend to run their applications in the sweet spot where their application delivers the best performance on You know, we try to push our users over time. Thio use reasonably sized jobs. I think our average job says about 20,000 course, she's not bad, but that does mean that as we move to the exits, kill two things have to happen. One is actually I think we've got to be more relaxed about giving people access to the system, So let's give more people access, let people play, let people try out ideas they've never tried out before. And I think that will lead to a lot more innovation and computational science. But at the same time, I think we also need to be less precious. You know, we to accept these systems will have a variety of sizes of job on them. You know, we're still gonna have people that want to run four million cores or two million cores. That's absolutely fine. Absolutely. Salute those people for trying really, really difficult. But then we're gonna have a huge spectrum of views all the way down to people that want to run on 500 cores or whatever. So I think we need Thio broaden the user base in Alexa Skill system. And I know this is what's happening, for example, in Japan with the new Japanese system. >>So, Mark, if you cast your mind back to almost exactly a year ago after the HPC user forum, you were interviewed for Premier Magazine on Do you alluded in that article to the needs off scientific industrial users requiring, you know, uh on X a flop or an exa scale machine it's clear in your in your previous answer regarding, you know, the workloads. Some would say that the majority of people would be happier with, say, 10 100 petaflop machines. You know, democratization. More people access. But can you provide us examples at the type of science? The needs of industrial users that actually do require those resources to be put >>together as an exa scale machine? So I think you know, it's a very interesting area. At the end of the day, these systems air bought because they are capability systems on. I absolutely take the argument. Why shouldn't we buy 10 100 pattern block systems? But there are a number of scientific areas even today that would benefit from a nexus school system and on these the sort of scientific areas that will use as much access onto a system as much time and as much scale of the system as they can, as you can give them eso on immediate example. People doing chroma dynamics calculations in particle physics, theoretical calculations, they would just use whatever you give them. But you know, I think one of the areas that is very interesting is actually the engineering space where, you know, many people worry the engineering applications over the last decade haven't really kept up with this sort of supercomputers that we have. I'm leading a project called Asimov, funded by M. P S O. C in the UK, which is jointly with Rolls Royce, jointly funded by Rolls Royce and also working with the University of Cambridge, Oxford, Bristol, Warrick. We're trying to do the whole engine gas turbine simulation for the first time. So that's looking at the structure of the gas turbine, the airplane engine, the structure of it, how it's all built it together, looking at the fluid dynamics off the air and the hot gasses, the flu threat, looking at the combustion of the engine looking how fuel is spread into the combustion chamber. Looking at the electrics around, looking at the way the engine two forms is, it heats up and cools down all of that. Now Rolls Royce wants to do that for 20 years. Andi, Uh, whenever they certify, a new engine has to go through a number of physical tests, and every time they do on those tests, it could cost them as much as 25 to $30 million. These are very expensive tests, particularly when they do what's called a blade off test, which would be, you know, blade failure. They could prove that the engine contains the fragments of the blade. Sort of think, continue face really important test and all engines and pass it. What we want to do is do is use an exa scale computer to properly model a blade off test for the first time, so that in future, some simulations can become virtual rather than having thio expend all of the money that Rolls Royce would normally spend on. You know, it's a fascinating project is a really hard project to do. One of the things that I do is I am deaf to share this year. Gordon Bell Price on bond I've really enjoyed to do. That's one of the major prizes in our area, you know, gets announced supercomputing every year. So I have the pleasure of reading all the submissions each year. I what's been really interesting thing? This is my third year doing being on the committee on what's really interesting is the way that big systems like Summit, for example, in the US have pushed the user communities to try and do simulations Nowhere. Nobody's done before, you know. And we've seen this as well, with papers coming after the first use of the for Goku system in Japan, for example, people you know, these are very, very broad. So, you know, earthquake simulation, a large Eddie simulations of boats. You know, a number of things around Genome Wide Association studies, for example. So the use of these computers spans of last area off computational science. I think the really really important thing about these systems is their challenging people that do calculations they've never done before. That's what's important. >>Okay, Thank you. You talked about challenges when I nearly said when you and I had lots of hair, but that's probably much more true of May. Um, we used to talk about grand challenges we talked about, especially around the teraflop era, the ski red program driving, you know, the grand challenges of science, possibly to hide the fact that it was a bomb designing computer eso they talked about the grand challenges. Um, we don't seem to talk about that much. We talk about excess girl. We talk about data. Um Where are the grand challenges that you see that an exa scale computer can you know it can help us. Okay, >>so I think grand challenges didn't go away. Just the phrase went out of fashion. Um, that's like my hair. I think it's interesting. The I do feel the science moves forward by setting itself grand challenges and always had has done, you know, my original backgrounds in particle physics. I was very lucky to spend four years at CERN working in the early stage of the left accelerator when it first came online on. Do you know the scientists there? I think they worked on left 15 years before I came in and did my little ph d on it. Andi, I think that way of organizing science hasn't changed. We just talked less about grand challenges. I think you know what I've seen over the last few years is a renaissance in computational science, looking at things that have previously, you know, people have said have been impossible. So a couple of years ago, for example, one of the key Gordon Bell price papers was on Genome Wide Association studies on some of it. If I may be one of the winner of its, if I remember right on. But that was really, really interesting because first of all, you know, the sort of the Genome Wide Association Studies had gone out of favor in the bioinformatics by a scientist community because people thought they weren't possible to compute. But that particular paper should Yes, you could do these really, really big Continental little problems in a reasonable amount of time if you had a big enough computer. And one thing I felt all the way through my career actually is we've probably discarded Mawr simulations because they were impossible at the time that we've actually decided to do. And I sometimes think we to challenge ourselves by looking at the things we've discovered in the past and say, Oh, look, you know, we could actually do that now, Andi, I think part of the the challenge of bringing an extra service toe life is to get people to think about what they would use it for. That's a key thing. Otherwise, I always say, a computer that is unused to just be turned off. There's no point in having underutilized supercomputer. Everybody loses from that. >>So Let's let's bring ourselves slightly more up to date. We're in the middle of a global pandemic. Uh, on board one of the things in our industry has bean that I've been particularly proud about is I've seen the vendors, all the vendors, you know, offering up machine's onboard, uh, making resources available for people to fight things current disease. Um, how do you see supercomputers now and in the future? Speeding up things like vaccine discovery on help when helping doctors generally. >>So I think you're quite right that, you know, the supercomputer community around the world actually did a really good job of responding to over 19. Inasmuch as you know, speaking for the UK, we put in place a rapid access program. So anybody wanted to do covert research on the various national services we have done to the to two services Could get really quick access. Um, on that, that has worked really well in the UK You know, we didn't have an archer is an old system, Aziz. You know, we didn't have the world's largest supercomputer, but it is happily bean running lots off covert 19 simulations largely for the biomedical community. Looking at Druk modeling and molecular modeling. Largely that's just been going the US They've been doing really large uh, combinatorial parameter search problems on on Summit, for example, looking to see whether or not old drugs could be reused to solve a new problem on DSO, I think, I think actually, in some respects Kobe, 19 is being the sounds wrong. But it's actually been good for supercomputing. Inasmuch is pointed out to governments that supercomputers are important parts off any scientific, the active countries research infrastructure. >>So, um, I'll finish up and tap into your inner geek. Um, there's a lot of technologies that are being banded around to currently enable, you know, the first exa scale machine, wherever that's going to be from whomever, what are the current technologies or emerging technologies that you are interested in excited about looking forward to getting your hands on. >>So in the business case I've written for the U. K's exa scale computer, I actually characterized this is a choice between the American model in the Japanese model. Okay, both of frozen, both of condoms. Eso in America, they're very much gone down the chorus plus GPU or GPU fruit. Um, so you might have, you know, an Intel Xeon or an M D process er center or unarmed process or, for that matter on you might have, you know, 24 g. P. U s. I think the most interesting thing that I've seen is definitely this move to a single address space. So the data that you have will be accessible, but the G p u on the CPU, I think you know, that's really bean. One of the key things that stopped the uptake of GPS today and that that that one single change is going Thio, I think, uh, make things very, very interesting. But I'm not entirely convinced that the CPU GPU model because I think that it's very difficult to get all the all the performance set of the GPU. You know, it will do well in H p l, for example, high performance impact benchmark we're discussing at the beginning of this interview. But in riel scientific workloads, you know, you still find it difficult to find all the performance that has promised. So, you know, the Japanese approach, which is the core, is only approach. E think it's very attractive, inasmuch as you know They're using very high bandwidth memory, very interesting process of which they are going to have to, you know, which they could develop together over 10 year period. And this is one thing that people don't realize the Japanese program and the American Mexico program has been working for 10 years on these systems. I think the Japanese process really interesting because, um, it when you look at the performance, it really does work for their scientific work clothes, and that's that does interest me a lot. This this combination of a A process are designed to do good science, high bandwidth memory and a real understanding of how data flows around the supercomputer. I think those are the things are exciting me at the moment. Obviously, you know, there's new networking technologies, I think, in the fullness of time, not necessarily for the first systems. You know, over the next decade we're going to see much, much more activity on silicon photonics. I think that's really, really fascinating all of these things. I think in some respects the last decade has just bean quite incremental improvements. But I think we're supercomputing is going in the moment. We're a very very disruptive moment again. That goes back to start this discussion. Why is extra skill been difficult to get? Thio? Actually, because the disruptive moment in technology. >>Professor Parsons, thank you very much for your time and your insights. Thank you. Pleasure and folks. Thank you for watching. I hope you've learned something, or at least enjoyed it. With that, I would ask you to stay safe and goodbye.

Published Date : Oct 16 2020

SUMMARY :

I am the director of HPC Strategic programs I suppose that the S I milestones of high performance computing's come and go, But looking at the X scale we're looking at, you know, four or five million cores on taming But you still you could have You could have bought one. challenges e think you know, we use quite arbitrary focus around exa scale is to look at, you know, new technologies, Well, I'm sure you don't tell me one, Ben. outside the door over there who would love to sell you one. So I think there's always a slight conceit when you buy a you know, the workloads. That's one of the major prizes in our area, you know, gets announced you know, the grand challenges of science, possibly to hide I think you know what I've seen over the last few years is a renaissance about is I've seen the vendors, all the vendors, you know, Inasmuch as you know, speaking for the UK, we put in place a rapid to currently enable, you know, I think you know, that's really bean. Professor Parsons, thank you very much for your time and your insights.

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Maurizio Davini, University of Pisa and Thierry Pellegrino, Dell Technologies | VMworld 2020


 

>> From around the globe, it's theCUBE, with digital coverage of VMworld 2020, brought to you by the VMworld and its ecosystem partners. >> I'm Stu Miniman, and welcome back to theCUBES coverage of VMworld 2020, our 11th year doing this show, of course, the global virtual event. And what do we love talking about on theCUBE? We love talking to customers. It is a user conference, of course, so really happy to welcome to the program. From the University of Pisa, the Chief Technology Officer Maurizio Davini and joining him is Thierry Pellegrini, one of our theCUBE alumni. He's the vice president of worldwide, I'm sorry, Workload Solutions and HPC with Dell Technologies. Thierry, thank you so much for joining us. >> Thanks too. >> Thanks to you. >> Alright, so let, let's start. The University of Pisa, obviously, you know, everyone knows Pisa, one of the, you know, famous city iconic out there. I know, you know, we all know things in Europe are a little bit longer when you talk about, you know, some of the venerable institutions here in the United States, yeah. It's a, you know, it's a couple of hundred years, you know, how they're using technology and everything. I have to imagine the University of Pisa has a long storied history. So just, if you could start before we dig into all the tech, give us our audience a little bit, you know, if they were looking up on Wikipedia, what's the history of the university? >> So University of Pisa is one of the oldest in the world because there has been founded in 1343 by a pope. We were authorized to do a university teaching by a pope during the latest Middle Ages. So it's really one of the, is not the oldest of course, but the one of the oldest in the world. It has a long history, but as never stopped innovating. So anything in Pisa has always been good for innovating. So either for the teaching or now for the technology applied to a remote teaching or a calculation or scientific computing, So never stop innovating, never try to leverage new technologies and new kind of approach to science and teaching. >> You know, one of your historical teachers Galileo, you know, taught at the university. So, you know, phenomenal history help us understand, you know, you're the CTO there. What does that encompass? How, you know, how many students, you know, are there certain areas of research that are done today before we kind of get into the, you know, the specific use case today? >> So consider that the University of Pisa is a campus in the sense that the university faculties are spread all over the town. Medieval like Pisa poses a lot of problems from the infrastructural point of view. So, we have bought a lot in the past to try to adapt the Medieval town to the latest technologies advancement. Now, we have 50,000 students and consider that Pisa is a general partners university. So, we cover science, like we cover letters in engineering, medicine, and so on. So, during the, the latest 20 years, the university has done a lot of effort to build an infrastructure that was able to develop and deploy the latest technologies for the students. So for example, we have a private fiber network covering all the town, 65 kilometers of a dark fiber that belongs to the university, four data centers, one big and three little center connected today at 200 gigabit ethernet. We have a big data center, big for an Italian University, of course, and not Poland and U.S. university, where is, but also hold infrastructure for the enterprise services and the scientific computing. >> Yep, Maurizio, it's great that you've had that technology foundation. I have to imagine the global pandemic COVID-19 had an impact. What's it been? You know, how's the university dealing with things like work from home and then, you know, Thierry would love your commentary too. >> You know, we, of course we were not ready. So we were eaten by the pandemic and we have to adapt our service software to transform from imperson to remote services. So we did a lot of work, but we are able, thanks to the technology that we have chosen to serve almost a 100% of our curriculum studies program. We did a lot of work in the past to move to virtualization, to enable our users to work for remote, either for a workstation or DC or remote laboratories or remote calculation. So virtualization has designed in the past our services. And of course when we were eaten by the pandemic, we were almost ready to transform our service from in person to remote. >> Yeah, I think it's, it's true, like Maurizio said, nobody really was preparing for this pandemic. And even for, for Dell Technologies, it was an interesting transition. And as you can probably realize a lot of the way that we connect with customers is in person. And we've had to transition over to modes or digitally connecting with customers. We've also spent a lot of our energy trying to help the community HPC and AI community fight the COVID pandemic. We've made some of our own clusters that we use in our HPC and AI innovation center here in Austin available to genomic research or other companies that are fighting the the virus. And it's been an interesting transition. I can't believe that it's already been over six months now, but we've found a new normal. >> Detailed, let's get in specifically to how you're partnering with Dell. You've got a strong background in the HPC space, working with supercomputers. What is it that you're turning to Dell in their ecosystem to help the university with? >> So we are, we have a long history in HPC. Of course, like you can imagine not to the biggest HPC like is done in the U.S. so in the biggest supercomputer center in Europe. We have several system for doing HPC. Traditionally, HPC that are based on a Dell Technologies offer. We typically host all kind of technology's best, but now it's available, of course not in a big scale but in a small, medium scale that we are offering to our researcher, student. We have a strong relationship with Dell Technologies developing together solution to leverage the latest technologies, to the scientific computing, and this has a lot during the research that has been done during this pandemic. >> Yeah, and it's true. I mean, Maurizio is humble, but every time we have new technologies that are to be evaluated, of course we spend time evaluating in our labs, but we make it a point to share that technology with Maurizio and the team at the University of Pisa, That's how we find some of the better usage models for customers, help tuning some configurations, whether it's on the processor side, the GPU side, the storage and the interconnect. And then the topic of today, of course, with our partners at VMware, we've had some really great advancements Maurizio and the team are what we call a center of excellence. We have a few of them across the world where we have a unique relationship sharing technology and collaborating on advancement. And recently Maurizio and the team have even become one of the VMware certified centers. So it's a great marriage for this new world where virtual is becoming the norm. >> But well, Thierry, you and I had a conversation to talk earlier in the year when VMware was really geering their full kind of GPU suite and, you know, big topic in the keynote, you know, Jensen, the CEO of Nvidia was up on stage. VMware was talking a lot about AI solutions and how this is going to help. So help us bring us in you work with a lot of the customers theory. What is it that this enables for them and how to, you know, Dell and VMware bring, bring those solutions to bear? >> Yes, absolutely. It's one statistic I'll start with. Can you believe that only on average, 15 to 20% of GPU are fully utilized? So, when you think about the amount of technology that's are at our fingertips and especially in a world today where we need that technology to advance research and scientistic discoveries. Wouldn't it be fantastic to utilize those GPU's to the best of our ability? And it's not just GPU's , I think the industry has in the IT world, leverage virtualization to get to the maximum recycles for CPU's and storage and networking. Now you're bringing the GPU in the fold and you have a perfect utilization and also flexibility across all those resources. So what we've seen is that convergence between the IT world that was highly virtualized, and then this highly optimized world of HPC and AI because of the resources out there and researchers, but also data scientists and company want to be able to run their day to day activities on that infrastructure. But then when they have a big surge need for research or a data science use that same environment and then seamlessly move things around workload wise. >> Yeah, okay I do believe your stat. You know, the joke we always have is, you know, anybody from a networking background, there's no such thing as eliminating a bottleneck, you just move it. And if you talk about utilization, we've been playing the shell game for my entire career of, let's try to optimize one thing and then, oh, there's something else that we're not doing. So,you know, so important. Retail, I want to hear from your standpoint, you know, virtualization and HPC, you know, AI type of uses there. What value does this bring to you and, you know, and key learnings you've had in your organization? >> So, we as a university are a big users of the VMware technologies starting from the traditional enterprise workload and VPI. We started from there in the sense that we have an installation quite significant. But also almost all the services that the university gives to our internal users, either personnel or staff or students. At a certain point that we decided to try to understand the, if a VMware virtualization would be good also for scientific computing. Why? Because at the end of the day, their request that we have from our internal users is flexibility. Flexibility in the sense of be fast in deploying, be fast to reconfiguring, try to have the latest beats on the software side, especially on the AI research. At the end of the day we designed a VMware solution like you, I can say like a whiteboard. We have a whiteboard, and we are able to design a new solution of this whiteboard and to deploy as fast as possible. Okay, what we face as IT is not a request of the maximum performance. Our researchers ask us for flexibility then, and want to be able to have the maximum possible flexibility in configuring the systems. How can I say I, we can deploy as more test cluster on the visual infrastructure in minutes or we can use GPU inside the infrastructure tests, of test of new algorithm for deep learning. And we can use faster storage inside the virtualization to see how certain algorithm would vary with our internal developer can leverage the latest, the beat in storage like NVME, MVMS or so. And this is why at the certain point, we decided to try visualization as a base for HPC and scientific computing, and we are happy. >> Yeah, I think Maurizio described it it's flexibility. And of course, if you think optimal performance, you're looking at the bare medal, but in this day and age, as I stated at the beginning, there's so much technology, so much infrastructure available that flexibility at times trump the raw performance. So, when you have two different research departments, two different portions, two different parts of the company looking for an environment. No two environments are going to be exactly the same. So you have to be flexible in how you aggregate the different components of the infrastructure. And then think about today it's actually fantastic. Maurizio was sharing with me earlier this year, that at some point, as we all know, there was a lot down. You could really get into a data center and move different cables around or reconfigure servers to have the right ratio of memory, to CPU, to storage, to accelerators, and having been at the forefront of this enablement has really benefited University of Pisa and given them that flexibility that they really need. >> Wonderful, well, Maurizio my understanding, I believe you're giving a presentation as part of the activities this week. Give us a final glimpses to, you know, what you want your peers to be taking away from what you've done? >> What we have done that is something that is very simple in the sense that we adapt some open source software to our infrastructure in order to enable our system managers and users to deploy HPC and AI solution fastly and in an easy way to our VMware infrastructure. We started doing a sort of POC. We designed the test infrastructure early this year and then we go fastly to production because we had about the results. And so this is what we present in the sense that you can have a lot of way to deploy Vitola HPC, Barto. We went for a simple and open source solution. Also, thanks to our friends of Dell Technologies in some parts that enabled us to do the works and now to go in production. And that's theory told before you talked to has a lot during the pandemic due to the effect that stay at home >> Wonderful, Thierry, I'll let you have the final word. What things are you drawing customers to, to really dig in? Obviously there's a cost savings, or are there any other things that this unlocks for them? >> Yeah, I mean, cost savings. We talked about flexibility. We talked about utilization. You don't want to have a lot of infrastructure sitting there and just waiting for a job to come in once every two months. And then there's also the world we live in, and we all live our life here through a video conference, or at times through the interface of our phone and being able to have this web based interaction with a lot of infrastructure. And at times the best infrastructure in the world, makes things simpler, easier, and hopefully bring science at the finger tip of data scientists without having to worry about knowing every single detail on how to build up that infrastructure. And with the help of the University of Pisa, one of our centers of excellence in Europe, we've been innovating and everything that's been accomplished for, you know at Pisa can be accomplished by our customers and our partners around the world. >> Thierry, Maurizio, thank you much for so much for sharing and congratulations on all I know you've done building up that COE. >> Thanks to you. >> Thank you. >> Stay with us, lots more covered from VMworld 2020. I'm Stu Miniman as always. Thank you for watching the theCUBE. (soft music)

Published Date : Sep 30 2020

SUMMARY :

brought to you by the VMworld of course, the global virtual event. here in the United States, yeah. So either for the teaching or you know, you're the CTO there. So consider that the University of Pisa and then, you know, Thierry in the past our services. that are fighting the the virus. background in the HPC space, so in the biggest Maurizio and the team are the keynote, you know, Jensen, because of the resources You know, the joke we in the sense that we have an and having been at the as part of the activities this week. and now to go in production. What things are you drawing and our partners around the world. Thierry, Maurizio, thank you much Thank you for watching the theCUBE.

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MedTec Entrepreneurship Education at Stanford University


 

>>thank you very much for this opportunity to talk about Stamp with a bio design program, which is entrepreneurship education for the medical devices. My name is Julia Key Can. Oh, I am Japanese. I have seen the United States since two doesn't want on the more than half of my life after graduating from medical school is in the United States. I hope I can contribute to make them be reached between Japan that you were saying right I did the research in the period of medical devices with a patient all over the world today is my batteries met their country finished medication stamp of the city. Yeah, North Korea academia, but also a wrong. We in the industry sectors sometimes tried to generate new product which can generate revenue from their own research outward, it is explained by three steps. The first one is the debut river, which is the harbor Wrong research output to the idea which can be product eventually. That they are hard, though, is the best body, which is a hot Arboria. From idea to commercial for the other one is that we see which is a harder to make a martial hold up to become a big are revenue generating products for the academia that passed the heart is a critical on the essential to make a research output to the idea. Yeah, they're two different kind of squash for the developing process in the health care innovation, Why's bio and by all the farmer under the other one is medical device regarding the disciplining method is maybe in mechanical engineering. Electrical engineering on the medical under surgical by Obama is mainly chemical engineering, computer science, biology and genetics. However, very important difference off these to be the innovation process. Medic is suitable on these digital innovation and by Obama, is suitable discovery process needs. Yeah, in general transformation of medical research between the aroma academia output to the commercial product in the medical field is called bench to bed. It means from basically such to critical applications. But it is your bio on the path. Yeah, translation. Medical research for medical devices is better. Bench on back to bed, which means quicker Amit needs to bench on back to Greek application. The difference off the process is the same as the difference off the commercialization. Yeah, our goal is to innovate the newer devices for patient over the war. Yeah, yeah, there are two process to do innovation. One is technology push type of innovation. The other one is news, full type of innovation. Ignore the push stop Innovation is coming from research laboratory. It is suitable for the farm on the bios. Happy type of innovation. New, useful or used driven type of type of innovation is suitable for medical devices. Either Take this topic of innovation or useful type of innovation. It is important to have Mini's. We should think about what? It's waas Yeah, in 2001 stop for the Cube, API has started to stop with Bio Design program, which is on entrepreneurship education for medical devices. Our mission is educated on empowering helps technology, no based innovators on the reading, the transition to a barrier to remain a big innovation ecosystem. Our vision is to be a global leader in advancing Hearst technology innovation to improve lives everywhere. There are three steps in our process. Off innovation, identify invent on England. Yeah, yeah. The most important step is the cluster, which is I didn't buy. I didn't buy a well characterized needs is the Vienna off a grating vision. Most of the value off medical device development is due to Iraq Obina unmet needs. So we focused in this gated by creates the most are the mosque to find on the Civic on appropriate. Yeah, our barrels on the student Hickory World in March, disparate 19 that ideally include individual, which are background in many thing engineering on business. Yeah, how to find our needs. Small team will go to the hospital or clinic or environment to offer them the healthcare providers with naive eyes. The team focused. You look to keep all the um, it needs not technology. This method is senior CTO. It's a rocket car approach which can be applied all that design, thinking the team will generate at least 200 needs from economic needs. Next stick to identify Pace is to select the best. Amit Knees were used for different aspect, which can about it the nominees. These background current existing solutions market size on the stakeholders. Once we pick up ur madness from 200 nominees, they can move to the invention pates. Finally, they can't be the solution many people tend to invent on at the beginning base without carefree evaluating its unmet knees to result in a better tend to pouring love. Their whole idea, even amid NIS, is not what this is. Why most of the medical device innovation fail due to the lack off unmet needs. To avoid this Peter Hall, our approach is identify good needs. First on invention is the sex to generate the idea wrong. Unmet knees. We will use seven Rules off race Tony B B zero before judgment encourage wild ideas built on the ideas off. Others. Go Conte. One conversation time. Stay focused on the topic. The brainstorming is like association game. Somebody's idea can stimulate the others ideas. After generating many ideas, the next step is sleeping of idea whether use five different Dustin to embody the ideas. Intellectual property regulatory. Remember National Business Model on technology How, after this election step, we can have the best solution with system it needs, and finally team will go to the implementation pace. This place is more business oriented mothers. The strategy off business implementations on the business planning. Yeah, yeah, students want more than 50 starting up are spinning off from by design program. Let me show one example This is a case of just reputations. If patient your chest pain, most of that patient go to family doctor and trust. The first are probably Dr before the patient to General Securities. General Card, obviously for the patient Director, Geologist, Director, API geologist will make a reservation. Horta uses it. Test patient will come to the clinic people for devices in machine on his chest. Well, what? Two days? Right? That patient will visit clinic to put all the whole decency After a few days off. Analysis patient Come back to Dr to hear the result Each step in his money to pay. This is a minute, Knees. This is a rough sketch off the solutions. The product name is die. A patch on it can save about $620. Part maybe outpatient right here. >>Yeah, yeah. Life is stressful. We all depend on our heart with life source of our incredible machine. The body, however, sometimes are hard Need to check up. Perhaps you felt dizzy heart racing or know someone who has had a serious heart problem The old fashioned monitors that used to get from most doctors or bulky And you can't wear them exercising or in the shower. If appropriate for you, sudden life will provide you the eye rhythm. Zero patch to buy five inch band aid like patch would. You can apply to your chest in the comfort of your own home or in the gym. It will monitor your heart rate for up to 14 days. You never have to come into a doctor's office as you mail back. Patched us shortly after you were receiving. Easy to understand report of your heart activity, along with recommendations from a heart specialists to understand the next steps in your heart. Health sudden life bringing heart monitoring to you. >>This is from the TV broadcasting become Ah, this is a core value we can stamping on his breast. He has a connotation of the decent died. Now the company names Iris is in the public market cap off. This company is more than six billion di parts is replacing grasp all or that you see the examination. However, our main product is huge. The product lifecycle Very divisive, recent being it's. But if we can educate the human decision oil because people can build with other people beyond space and yeah, young broader stop on by design education is now runs the media single on Japan. He doesn't 15 PBS probably star visited Stamp of the diversity and Bang. He announced that Japan, by design, will runs with vampires. That problem? Yeah, Japan Barzan program has started a University of Tokyo Osaka University and we've asked corroborating with Japanese government on Japanese medical device Industry s and change it to that. Yeah, this year that it's batch off Japan better than parachute on. So far more than five. Starting up as being that's all. Thank you very much for your application.

Published Date : Sep 21 2020

SUMMARY :

is. Why most of the medical device innovation fail due to the lack off unmet The body, however, sometimes are hard Need to check up. This is from the TV broadcasting become Ah,

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Farbod Abolhassani, University of Toronto | KubeCon + CloudNativeCon Europe 2020 – Virtual


 

>>from around the globe. >>It's the Cube with coverage >>of Coop con and cloud, Native con Europe 2020 Virtual brought to you by Red Hat, The Cloud Native Computing Foundation and its ecosystem partners. Welcome back. I'm stew minimum. And this is the Cube's coverage of cube con cloud, native con Europe 2020 of course, happening virtual this year. We always love when we get to talk to the practitioners in this community. So much happening in the developer space and really excited to have on the program first time guest in a very timely topic, we welcome our bod. Hassani, Who is the back and lead for house? My flattening, which is a joint research project. It related to code 19 associated with the University of Toronto. About thanks so much for joining us. >>Thank you. >>All right, so maybe explain how is my flattening? You know, the term flattening the curve is something that I think everyone around the globe is familiar with. Now, um, you know, Canada, you've got some great initiatives going. So help us understand how you got involved in this in what? What is the project? Sure, So I'll >>take a stock to March, which now feels like years ago. Um, back in March, way could look across in Europe, and we saw that. You know, I feel we're being overwhelmed. This new Cobra thing was happening, and there seems to be nothing happening here despite the fact that we know what was going on in Europe. So this whole collaboration started. It's really the brainchild of Dr Ben. Fine. Who's the radiologist that actually and partners on the idea was, Why don't we put all the data that is related to co bid, uh, for the province of Ontario, where I'm from in one place, right. So for the data mining people, like a lot of people on the on the program here and for the data minded people of Ontario to be able to have the information they need to make targeted both of the general public on that policy makers to really empower them with the right tools. We know the data was siloed in health care, and we know, you know, when this whole thing started, everything was on a website, you would get a daily update, but it wasn't something that you could analyze. Something you couldn't use. Really? It was unusable. How everything kind of started it. What if we did something about that? What if we brought all the data in one place? What if we visualize it and put all the resources in place that was released? How is my fattening got a Which is this initiative that I got involved with back in March and what we've been doing is building a number of dashboards based on Kobe data that are close to real time as possible. Doing a number of analyses. Um, the answer, your specific questions and doing deep dives into specific question. We have a team of scientific experts where our leadership, um you know Dr Ben Fine. I mentioned earlier. There's Dr Laura Rosello, the epidemiologists out of Ah, Perceptron. Oh, and then we have a Dr Alley that he's Austin Oy. Who the data science lead over it. Quick. Also, we got this kind of three perfect or the organization of the right talent required, and we've been trying Yeah, and whatever way we can by making the data transparent, >>Yeah, there's been a lot of initiatives, obviously that have had to accelerate really fast during this time it bring us inside a little bit. How long did it take to spend the site up? How do you make sure you're getting good data in Who decides? You know which visualizations love to hear a little bit about? You know how that has matured over the months that you've had project out there >>for sure. So when we started what people were doing out on Twitter, really, where there's a lot of this activity was happening was people were grabbing expect sheets and typing out every day what was happening. And I mean, coming from I'm not by any means a technical developer. That's not what I specialize in, but having some development dot com, and it makes sense that things could be done so much better. So we started to build data pipelines. Starting in March. We had a couple of government sources that were public. It was basically scrapping the government website and recording that in a database. Um, and then we start to visualize that we're using, you know, whatever we could that we started with Pablo just because we had a few. We're trying to build a community, right? So a community people want help and do this. But we have some tableau experts on our team and our community and, you know, the way we went. So we had the database. We started to connect with tableau and visualize it. Do you know, besides into and also that and then the project has matured from that web stopper ever since, with more complex data, pipeline building and data from different sources and visualizing them in different ways and expanding our dash boarding and expanding our now >>well in the cube con show that we're here at is so much about community. Obviously, open source is a major driver of what's going on there. So it sounded like that was that was a big piece of what you're working on. Help us bring inside out of that community build. I'd love to hear if there's any projects and tools you mentioned tableau for visualization, but anything from open source also that you're using. >>So actually, I I've never been involved in open source project before That this was kind of my first attempt, if you will, on we started, uh, on get hub quite early on. Actually, one of the partners I got involved in re shots was was Red hat off course. They're known for doing open source and for selling at it, and we have some amazing help from them into how we can organize community. Um, and we started to move the community over from getting up to get lab. You know, we started to the way we collaborate in slack. Ah, lot of times. And there's a lot of silos that we started to break those down and move them into get lab. And all conversations were happening in public that would beam or more closer to an open source approach. And honestly, a lot of people that are involved are our students, grass students who want to help our people in the community that want to help people from all kind of different backgrounds. I think we're really bringing in open source is not not a known concept in a lot of these clinical scientific communities, right? It's a lot more developer oriented, and I think it's been it's been learning opportunity for everyone involved. Uh, you know, something that may seem kind of default or basic have been a big learning opportunity for everyone of, you know, issues shocking and labeling and using comments and I'll going back into our own old ways of like, emailing people are people. Um, they had been digital art to it, and we'll get a lot of the big one. Um, we went from having this kind of monolithic container rising it and using Kubernetes, of course, were developed with the help of Red Hat. We're able to move everything over to their open shift dedicated platform, and that was that allowed us to do is really do a lot of do things a lot better and do things in a more mature way. Um, that's that's quite a bit of information, but that's kind of high level. What it? >>Well, no, it's great. We One of the things we've been poking out for the last few years is you know, in the early days you talk about kubernetes. It was Oh, I need things at a scale on And, you know, while I'm sure that the amount of data and scale is important, speed was a major major piece of what you need to be involved in and you'll be able to rally and James So can you talk a little bit more. Just open shift. What did that bring to the environment? Any aspects related to the data that red hat help you with. >>So a few things there. The one thing that open shift I think really helped us with was really mean and how to help us with generally was establishing a proper see I CD pipeline. Right. So now we we use git lab itself. We have get lab runners that everyone, basically all developers involved have their own branches when they push code to get auto. We like to their branch. It just made everything a lot easier and a lot faster to be able to push things quickly without worrying about everything breaking That was definitely a big plus. Um, the other thing that we're doing with, uh that is using containers. Actually, we've been working on this open data hub, which is, you know, working on another great open source project which is again built on kubernetes and trying to break down some of the barriers when it comes to sharing data in the healthcare system. Um, we're using that and we, with the help of red, how we're able to deploy that to be able to collaborate between hospitals, share data securely. You do security analytics and try to break down some of these silos that I've gone up due to fears over security and find the so That's another great example open source helping us kind of pushing forward. >>Well, that that's I'm glad you brought that up The open data hub, that collaboration with other places when you have data being able to share that, you know, has to be important talk. This was a collaboration to start with, you know, what's the value of being able to work with other groups and to share your data beyond beyond just the community that's working on it. >>So if you think about what's happening right now in a lot of hospitals in Canada, and I mean it's the same in the US is everyone is in this re opening stage. We shut down the economy. We should down a lot of elective surgeries and a lot of procedures. I know hospitals are trying to reopen right so and trying to figure out how to go back to their old capacity, and in that they're all trying to solve the same problem in different ways. So everyone is in their silo trying to tackle the same problems in a way. So what we're trying to do is basically get everyone together and collaborate on this open, open source environments, right? And what this open data allows us to do in to some degree alleviate some of the fears over sharing data so that we're not all doing the same thing in parallel are not talking to each other. We're able to share code, share data, get each other's opinions and, you know, use your resources in the healthcare system or official the drill, you know, all trying to address the same goal here. >>So imagine if you've had a lot of learnings from this project that you've done. Have you given any thought to? You know, once you get past that kind of the immediate hurdle of covert 19 you know what? Will this technology be able to help you going forward? You know, what do you see? Kind of post dynamic, if you will. >>I think the last piece I touched on, there is a big thing that I'm really hoping we'll be able to push forward past the pandemic. I think what? What the pandemic has shown us is the need for more transparency and more collaboration and being able to be more agile in response to things faster. And that's know how they're operating. And I think we know that now we can see that. I'm hoping that can be used as an opportunity to be able to bring people together to collaborate on projects like, How's my funding outside of this, right? We're not Not only the next pandemic. Hopefully I never come. Um but but for other, bigger problem that we face every day, collaboration can only help things, not tender thing. I'm hoping that's one big side effect that comes out of this. And I think the data transparency thing is is another big one that I'm hoping can improve outside of the situation. >>Yeah, I I wonder if I can ask you just a personal question. We've heard certain organizations say that, you know, years of planning have been executed in months. When I think about all the technologies that you had thrown at you, all the new things you learned often that something that would have taken years. But you didn't month. So how do you work through that? You know, there's only 24 hours in any day, and we do need some sleep. So what was important from your standpoint? What partners into tools helped, you know, and And the team, you know, take advantage of all of these new technologies. >>Yeah, honestly, I think that the team is really, really important. We've had an amazing set of people that are quite diverse and then usually would, quite honestly, never be seen in the same room together just because of all the different backgrounds that are there. Um, so that was a big driver. I think everyone was motivated to get things done. What happens when we first launched the site? We, you know, put it together. Basic feedback mechanism. Where we where we could hear from the public on. We've got an outpouring of support, people saying that they found that information really useful. And I think that pushed everyone to work harder and ah, and kind of reinforces our belief that this is what we're doing is helpful on, is making a difference in someone's life. And I think everyone that helped everyone work harder in terms of some of the tools that we use. Yeah, I totally agree. I think there was a 1,000,000 things that we all learned. Um, and it definitely wasn't amazing. Growing opportunity, I think, for the whole group. Um, I I don't know if there's a There's any wisdom I can impart. They're more than I think we were just being pushed by the need and being driven by the support that we're getting. Okay, >>well, you know, when there's a necessity to get things done, it's great to see the team execute the last question I have for you. You've got all this data. You've got visualizations. You've been going through a lot of things any any interesting learnings that you had or something that you were. You able to visualize things in a certain way in the community, reacted anything that you've learned along the way. That may be surprised you. >>That's a really interesting question there. I think the biggest, the biggest learning opportunity or surprise for me was what? How much people are willing to help if you just write, um, a lot of people involved. I mean, this is a huge group of volunteers who are dedicating their time to this because they believe in it on because they think they're doing the right thing and they're doing it for a bigger cause. It sounds very cheesy. Um, but I think that was wonderful to me to see that we can bring together such diverse people to dedicate their time for freedom to do something for the public. >>Yeah, well, and along that note, I I see on the website there is a get involved. But so is there anything you know, skill set or people that you're looking for, uh, further to help the team >>100%. So I think when I every time we do a presentation of any thought really got for anyone who's watching to just go on our site and get involved, there's a 1,000,000 different things that you can get involved with. If you're a developer, we can always use help. If you're a data, this person, we can always use help If you're a designer, honestly, there were a community driven organization. Uhm and we can always use more people in that community. That's that's the unique thing about the organization. 100%. Please do to house my finding, Dr and you get involved in get Lab. >>Well, so far, but thank you so much for sharing. We definitely encourage the unity get involved. It's projects like this that are so critically important. Especially right now during the pandemic. Thanks so much for joining. And thank you for all the work the team did. >>Thank you for having me. >>Alright. And stay tuned for more coverage from Cube Con Cloud native on 2020 in Europe Virtual Edition. I'm Stew Minimum. And thank you for watching the Cube. Yeah, yeah, yeah, yeah, yeah, yeah

Published Date : Aug 18 2020

SUMMARY :

So much happening in the developer space and really excited to have on the program you know, Canada, you've got some great initiatives going. and we know, you know, when this whole thing started, everything was on a website, you would get a daily update, You know how that has matured over the months that you've had project But we have some tableau experts on our team and our community and, you know, So it sounded like that was that was a big piece of what you're working on. Uh, you know, speed was a major major piece of what you need to be involved in and you'll be able we've been working on this open data hub, which is, you know, working on another great open source project This was a collaboration to start with, you know, what's the value of being able to work with the drill, you know, all trying to address the same goal here. Will this technology be able to help you going forward? And I think we know that now we can see that. you know, and And the team, you know, take advantage of all of these new technologies. I think there was a 1,000,000 things that we all learned. any any interesting learnings that you had or something that How much people are willing to help if you just write, But so is there anything you know, skill set or people that you're looking for, Please do to house my finding, Dr and you get involved in get And thank you for all the work the team did. And thank you for watching the Cube.

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Newsha Ajami, Stanford University | Stanford Women in Data Science (WiDS) Conference 2020


 

>>live from Stanford University. It's the queue covering Stanford women in data science 2020. Brought to you by Silicon Angle Media. >>Yeah, yeah, and welcome to the Cube. I'm your host Sonia Category and we're live at Stanford University, covering the fifth annual Woods Women in Data Science Conference. Joining us today is new Sha Ajami, who's the director of urban water policy for Stanford. You should welcome to the Cube. Thank you for having me. Absolutely. So tell us a little bit about your role. So >>I directed around water policy program at Stanford. We focused on building solutions for resilient cities to try to use data science and also the mathematical models to better understand how water use is changing and how we can build a future cities and infrastructure to address the needs of the people in the US, in California and across the world. >>That's great. And you're gonna give a talk today about how to build water security using big data. So give us a preview of your talk. >>Sure. So the 20th century water infrastructure model was very much of a >>top down model, >>so we built solutions or infrastructure to bring water to people, but people were not part of the loop. They were not the way that they behaved their decision making process. What they used, how they use it wasn't necessarily part of the process and the assume. There's enough water out there to bring water to people, and they can do whatever they want with it. So what we're trying to do is you want to change this paradigm and try to make it more bottom up at to engage people's decision making process and the uncertainty associated with that as part of the infrastructure planning process. Until I'll be talking, I'll talk a little bit about that. >>And where is the most water usage coming from? So, >>interestingly enough, in developed world, especially in the in the western United States, 50% of our water is used outdoors for grass and outdoor spacing, which we don't necessarily are dependent on. Our lives depend on it. I'll talk about the statistics and my talk, but grass is the biggest club you're going in the US while you're not really needing it for food consumption and also uses four times more water >>than than >>corn, which is which is a lot of water. And in California alone, if you just think about some of the spaces that we have grass or green spaces, we have our doors in the in. The in the malls are institutional buildings or different outdoor spaces. We have some of that water. If we can save, it can provide water for about a 1,000,000 or two million people a year. So that's a lot of water that we can be able to we can save and use, or you are actually a repurpose for needs that you really half. >>So does that also boil down to like people of watering their own lawns? Or is the problem for a much bigger grass message? >>Actually, interestingly enough, that's only 10% of that water out the water use. The rest of it is actually the residential water use, which is what you and I, the grass you and I have in our backyard and watering it so that water is even more than that amount that I mentioned. So we use a lot of water outdoors and again. Some of these green spaces are important for community building for making sure everybody has access to green spaces and people. Kids can play soccer or play outdoors, but really our individual lawns and outdoor spaces. If there are not really a native you know landscaping, it's not something that views enough to justify the amount of water you use for that purpose. >>So taking longer showers and all the stuff is very minimal compared to no, not >>at all. Sure, those are also very, very important. That's another 50% of our water. They're using that urban areas. It is important to be mindful the baby wash dishes. Maybe take shower the baby brush rt. They're not wasting water while you're doing that. And a lot of other individual decisions that we make that can impact water use on a daily basis. >>Right, So So tell us a little bit more about right now in California, We just had a dry February was the 1st 150 years, and you know, this is a huge issue for cities, agriculture and for potential wildfires. So tell us about your opinion about that. So, >>um, the 20th century's infrastructure model I mentioned at the beginning One of the flaws in that system is that it assumes that we will have enough snow in the mountains that would melt during the spring and summer time and would provide us water. The problem is, climate change has really, really impacted that assumption, and now you're not getting as much snow, which is comes back to the fact that this February we have not received any snow. We're still in the winter and we have spring weather and we don't really have much snow on the mountain. Which means that's going to impact the amount of water we have for summer and spring time this year. We had a great last year. We got enough water in our reservoirs, which means that you can potentially make it through. But then you have consecutive years that are dry and they don't receive a lot of water precipitation in form of snow or rain. That will become a very problematic issue to meet future water demands in California. >>And do you think this issue is along with not having enough rainfall, but also about how we store water, or do you think there should be a change in that policy? >>Sure, I think that it definitely has something also in the way we store water and be definitely you're in the 21st century. We have different problems and challenges. It's good to think about alternative ways off a storing water, including using groundwater sources. Groundwater as a way off, storing excess water or moving water around faster and making sure we use every drop of water that falls on the ground and also protecting our water supplies from contamination or pollution. >>And you see it's ever going to desalination or to get clean water. So, interestingly >>enough, I think desalination definitely has worth in other parts of the world, and then they have. Then you have smaller population or you have already tapped out of all the other options that are available to you. Desalination is expensive. Solution costs a lot of money to build this infrastructure and also again depends on you know, this centralized approach that we will build something and provide resources to people from from that location. So it's very costly to build this kind of solutions. I think for for California we still have plenty of water that we can save and repurpose, I would say, and also we still can do recycling and reuse. We can capture our stone water and reuse it, so there's so many other, cheaper, more accessible options available before you go ahead and build a desalination plants >>and you're gonna be talking about sustainable water resource management. So tell us a little bit more about that, too. So the thing with >>water mismanagement and occasionally I use also the word like building resilient water. Future is all about diversifying our water supply and being mindful of how they use our water, every drop of water that use its degraded on. It needs to be cleaned up and put back in the environment, so it always starts from the bottom. The more you save, the less impact you have on the environment. The second thing is you want to make sure every trouble wanted have used. We can use it as many times possible and not make it not not. Take it, use it, lose its right away, but actually be able to use it multiple times for different purposes. Another point that's very important, as actually majority of the water they've used on a daily basis is it doesn't need to be extremely clean drinking water quality. For example, if you tell someone that you're flushing down our toilets. Drinkable water would surprise you that we would spend this much time and resources and money and energy to clean that water to flush it down the toilet video using it. So So basically rethinking the way we built this infrastructure model is very important, being able to tailor water to the needs that we have and also being mindful of Have you use that resource? >>So is your research focus mainly on California or the local community? We actually >>are solutions that we built on our California focus. Actually, we try to build solutions that can be easily applied to different places. Having said that, because you're working from the bottom up, wavy approach water from the bottom up, you need to have a local collaboration and local perspective to bring to their to this picture on. A lot of our collaborators have been so far in California, we have had data from them. We were able to sort of demonstrate some of the assumptions we had in California. But we work actually all over the world. We have collaborators in Europe in Asia and they're all trying to do the same thing that we dio on. You're trying to sort of collaborate with them on some of the projects in other parts of the world. >>That's awesome. So going forward, what do you hope to see with sustainable water management? So, to >>be honest with you, I would often we think about technology as a way that would solve all our problems and move us out of the challenges we have. I would say technology is great, but we need to really rethink the way we manager resource is on the institutions that we have on there. We manage our data and information that we have. And I really hope that became revolutionized that part of the water sector and disrupt that part because as we disrupt this institutional part >>on the >>system, provide more system level thinking to the water sector, I'm hoping that that would change the way we manage our water and then actually opens up space for some of these technologies to come into play as >>we go forward. That's awesome. So before we leave here, you're originally from Tehran. Um and and now you're in this data science industry. What would you say to a kid who's abroad, who wants to maybe move here and have a career in data science? >>I would say Study hard, Don't let anything to disk or do you know we're all equal? Our brains are all made the same way. Doesn't matter what's on the surface. So, um so I and encourage all the girls study hard and not get discouraged and fail as many times as you can, because failing is an opportunity to become more resilient and learn how to grow. And, um and I have, and I really hope to see more girls and women in this in these engineering and stem fields, to be more active on, become more prominent. >>Have you seen a large growth within the past few years? Definitely, >>the conversation is definitely there, and there are a lot more women, and I love how Margot and her team are sort of trying to highlight the number of people who are out there. And working on these issues because that demonstrates that the field wasn't necessarily empty was just not not highlighted as much. So for sure, it's very encouraging to see how much growth you have seen over the years for sure >>you shed. Thank you so much. It's really inspiring all the work you do. Thank you for having me. So no, Absolutely nice to meet you. I'm Senator Gary. Thanks for watching the Cube and stay tuned for more. Yeah, yeah, yeah.

Published Date : Mar 3 2020

SUMMARY :

Brought to you by Silicon Angle Media. Thank you for having me. models to better understand how water use is changing So give us a preview of your talk. to do is you want to change this paradigm and try to make it more bottom up at and my talk, but grass is the biggest club you're going in the US So that's a lot of water that we can be able to we can save and use, The rest of it is actually the residential water use, which is what you and I, They're not wasting water while you're doing that. We just had a dry February was the 1st 150 years, and you know, Which means that's going to impact the amount of water we have for summer and spring time this year. Sure, I think that it definitely has something also in the way we store water and be definitely you're And you see it's ever going to desalination or to get clean water. I think for for California we still have plenty of water that we can save and repurpose, So the thing with the needs that we have and also being mindful of Have you use that resource? the bottom up, you need to have a local collaboration and local So going forward, what do you hope to see with sustainable that part of the water sector and disrupt that part because as we disrupt this institutional So before we leave here, you're originally from Tehran. and fail as many times as you can, because failing is an opportunity to become more resilient it's very encouraging to see how much growth you have seen over the years for sure It's really inspiring all the work you do.

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Lucy Bernholz, Stanford University | Stanford Women in Data Science (WiDS) Conference 2020


 

>> Announcer: Live from Stanford University. It's theCUBE, covering Stanford Women in Data Science 2020, brought to you by SiliconANGLE Media. (upbeat music) >> Hi, and welcome to theCUBE. I'm your host, Sonia Tagare. And we're live at Stanford University covering the fifth annual WiDS Women in Data Science Conference. Joining us today is Lucy Bernholz, who is the Senior Research Scholar at Stanford University. Lucy, welcome to theCUBE. >> Thanks for having me. >> So you've led the Digital Civil Society Lab at Stanford for the past 11 years. So tell us more about that. >> Sure, so the Digital Civil Society Lab actually exists because we don't think digital civil society exists. So let me take that apart for you. Civil society is that weird third space outside of markets and outside of government. So it's where we associate together, it's where we as people get together and do things that help other people could be the nonprofit sector, it might be political action, it might be the eight of us just getting together and cleaning up a park or protesting something we don't like. So that's civil society. But what's happened over the last 30 years really is that everything we use to do that work has become dependent on digital systems and those digital systems, some tier, I'm talking gadgets, from our phones, to the infrastructure over which data is exchanged. That entire digital system is built by companies and surveilled by governments. So where do we as people get to go digitally? Where we could have a private conversation to say, "Hey, let's go meet downtown and protest x and y, or let's get together and create an alternative educational opportunity 'cause we feel our kids are being overlooked, whatever." All of that information that get exchanged, all of that associating that we might do in the digital world, it's all being watched. It's all being captured (laughs). And that's a problem because both history and political science, history and democracy theory show us that when there's no space for people to get together voluntarily, take collective action, and do that kind of thinking and planning and communicating it just between the people they want involved in that when that space no longer exists, democracies fall. So the lab exists to try to recreate that space. And in order to do that, we have to first of all recognize that it's being closed in. Secondly, we have to make real technological process, we need a whole set of different kind of different digital devices and norms. We need different kinds of organizations, and we need different laws. So that's what the lab does. >> And how does ethics play into that. >> It's all about ethics. And it's a word I try to avoid actually, because especially in the tech industry, I'll be completely blunt here. It's an empty term. It means nothing the companies are using it to avoid being regulated. People are trying to talk about ethics, but they don't want to talk about values. But you can't do that. Ethics is a code of practice built on a set of articulated values. And if you don't want to talk about values, you don't really having conversation about ethics, you're not having a conversation about the choices you're going to make in a difficult situation. You're not having a conversation over whether one life is worth 5000 lives or everybody's lives are equal. Or if you should shift the playing field to account for the millennia of systemic and structural biases that have been built into our system. There's no conversation about ethics, if you're not talking about that thing and those things. As long as we're just talking about ethics, we're not talking about anything. >> And you were actually on the ethics panel just now. So tell us a little bit about what you guys talked about and what were some highlights. >> So I think one of the key things about the ethics panel here at WiDS this morning was that first of all started the day, which is a good sign. It shouldn't be a separate topic of discussion. We need this conversation about values about what we're trying to build for, who we're trying to protect, how we're trying to recognize individual human agency that has to be built in throughout data science. So it's a good start to have a panel about it, the beginning of the conference, but I'm hopeful that the rest of the conversation will not leave it behind. We talked about the fact that just as civil society is now dependent on these digital systems that it doesn't control. Data scientists are building data sets and algorithmic forms of analysis, that are both of those two things are just coated sets of values. And if you try to have a conversation about that, at just the math level, you're going to miss the social level, you're going to miss the fact that that's humanity you're talking about. So it needs to really be integrated throughout the process. Talking about the values of what you're manipulating, and the values of the world that you're releasing these tools into. >> And what are some key issues today regarding ethics and data science? And what are some solutions? >> So I mean, this is the Women and Data Science Conference that happens because five years ago or whenever it was, the organizers realize, "Hey, women are really underrepresented in data science and maybe we should do something about that." That's true across the board. It's great to see hundreds of women here and around the world participating in the live stream, right? But as women, we need to make sure that as you're thinking about, again, the data and the algorithm, the data and the analysis that we're thinking about all of the people, all of the different kinds of people, all of the different kinds of languages, all of the different abilities, all of the different races, languages, ages, you name it that are represented in that data set and understand those people in context. In your data set, they may look like they're just two different points of data. But in the world writ large, we know perfectly well that women of color face a different environment than white men, right? They don't work, walk through the world in the same way. And it's ridiculous to assume that your shopping algorithm isn't going to affect that difference that they experience to the real world that isn't going to affect that in some way. It's fantasy, to imagine that is not going to work that way. So we need different kinds of people involved in creating the algorithms, different kinds of people in power in the companies who can say we shouldn't build that, we shouldn't use it. We need a different set of teaching mechanisms where people are actually trained to consider from the beginning, what's the intended positive, what's the intended negative, and what is some likely negatives, and then decide how far they go down that path? >> Right and we actually had on Dr. Rumman Chowdhury, from Accenture. And she's really big in data ethics. And she brought up the idea that just because we can doesn't mean that we should. So can you elaborate more on that? >> Yeah well, just because we can analyze massive datasets and possibly make some kind of mathematical model that based on a set of value statements might say, this person is more likely to get this disease or this person is more likely to excel in school in this dynamic or this person's more likely to commit a crime. Those are human experiences. And while analyzing large data sets, that in the best scenario might actually take into account the societal creation that those actual people are living in. Trying to extract that kind of analysis from that social setting, first of all is absurd. Second of all, it's going to accelerate the existing systemic problems. So you've got to use that kind of calculation over just because we could maybe do some things faster or with larger numbers, are the externalities that are going to be caused by doing it that way, the actual harm to living human beings? Or should those just be ignored, just so you can meet your shipping deadline? Because if we expanded our time horizon a little bit, if you expand your time horizon and look at some of the big companies out there now, they're now facing those externalities, and they're doing everything they possibly can to pretend that they didn't create them. And that loop needs to be shortened, so that you can actually sit down at some way through the process before you release some of these things and say, in the short term, it might look like we'd make x profit, but spread out that time horizon I don't know two x. And you face an election and the world's largest, longest lasting, stable democracy that people are losing faith in. Set up the right price to pay for a single company to meet its quarterly profit goals? I don't think so. So we need to reconnect those externalities back to the processes and the organizations that are causing those larger problems. >> Because essentially, having externalities just means that your data is biased. >> Data are biased, data about people are biased because people collect the data. There's this idea that there's some magic debias data set is science fiction. It doesn't exist. It certainly doesn't exist for more than two purposes, right? If we could, and I don't think we can debias a data set to then create an algorithm to do A, that same data set is not going to be debiased for creating algorithm B. Humans are biased. Let's get past this idea that we can strip that bias out of human created tools. What we're doing is we're embedding them in systems that accelerate them and expand them, they make them worse (laughs) right? They make them worse. So I'd spend a whole lot of time figuring out how to improve the systems and structures that we've already encoded with those biases. And using that then to try to inform the data science we're going about, in my opinion, we're going about this backwards. We're building the biases into the data science, and then exporting those tools into bias systems. And guess what problems are getting worse. That so let's stop doing that (laughs). >> Thank you so much for your insight Lucy. Thank you for being on theCUBE. >> Oh, thanks for having me. >> I'm Sonia Tagare, thanks for watching theCUBE. Stay tuned for more. (upbeat music)

Published Date : Mar 3 2020

SUMMARY :

brought to you by SiliconANGLE Media. covering the fifth annual WiDS for the past 11 years. So the lab exists to try to recreate that space. for the millennia of systemic and structural biases So tell us a little bit about what you guys talked about but I'm hopeful that the rest of the conversation that they experience to the real world doesn't mean that we should. And that loop needs to be shortened, just means that your data is biased. that same data set is not going to be debiased Thank you so much for your insight Lucy. I'm Sonia Tagare, thanks for watching theCUBE.

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Rachel Botsman, University of Oxford | Coupa Insp!re EMEA 2019


 

>> Announcer: From London, England, it's theCUBE! Covering Coupa Insp!re'19 EMEA. Brought to you by Coupa. >> Hey, welcome to theCUBE. Lisa Martin on the ground in London at Coupa Insp!re'19. Can you hear all the buzz around me? You probably can hear it, it's electric. The keynote just ended, and I'm very pleased to welcome, fresh from the keynote stage, we have Rachel Botsman, author and trust expert from Oxford University. Rachel, welcome to theCUBE! >> Thank you for having me. >> Your talk this morning about the intersection of trust and technology, to say it's interesting is an understatement. You had some great examples where you showed some technology brands, that we all know, and have different relationships with: Uber, Facebook, and Amazon. And the way that you measured the audience is great, you know, clap the brand that you trust the most. And it was so interesting, because we expect these technology brands to, they should be preserving our information, but we've also seen recent history, some big examples, of that trust being broken. >> Rachel: Yeah, yeah. >> Talk to us about your perspectives. >> So what I thought was interesting, well kind of unexpected for me, was no one clapped for Facebook, not one person in the room. And this is really interesting to me, because the point that I was making is that trust is really, really contextual, right? So if I had said to people, do you trust on Facebook that you can find your friends from college, they probably would've clapped. But do I trust them with my data, no. And this distinction is so important, because if you lose trust in one area as a company or a brand, and it can take time, you lose that ability to interact with people. So our relationship and our trust relationship with brands is incredibly complicated. But I think, particular tech brands, what they're realizing is that, how badly things go wrong when they're in a trust crisis. >> Talk to me about trust as a currency. You gave some great examples this morning. Money is the currency for transactions, where trust is the currency of interactions. >> Yeah, well I was trying to frame things, not because they sound nice, but how do you create a lens where people can really understand, like what is the value of this thing, and what is the role that it plays? And I'm never going to say money's not important; money is very important. But people can understand money; people value money. And I think that's because it has a physical, you can touch it, and it has an agreed value, right? Trust I actually don't believe can be measured. Trust is, what is it? It's something there, there's a connection between people. So you know when you have trust because you can interact with people. You know when you have trust because you can place their faith in them, you can share things about yourself and also share things back. So it's kind of this idea that, think of it as a currency, think of it as something that you should really value that is incredibly fragile in any situation in any organization. >> How does a company like Coupa, or an Amazon or a Facebook, how do they leverage trust and turn it into a valuable asset? >> Yeah, I don't like the idea that you sort of unlock trust. I think companies that really get it right are companies that think day in and day out around behaviors and culture. If you get behaviors and culture right, like the way people behave, whether they have empathy, whether they have integrity, whether you feel like you can depend on them, trust naturally flows from that. But the other thing that often you find with brands is they think of trust as like this reservoir, right? So it's different from awareness and loyalty; it's not like this thing that, you can have this really full up battery which means then you can launch some crazy products and everyone will trust it. We've seen this with like, Mattel, the toy brand. They launched a smart system for children called Aristotle, and within six months they had to pull it because people didn't trust what it was recording and watching in people's bedrooms. We were talking about Facebook and the cryptocurrency Libra, their new smart assistants; I wouldn't trust that. Amazon have introduced smart locks; I don't know if you've seen these? >> Lisa: Yes. >> Where if you're not home, it's inconvenient for a very annoying package slip. So you put in an Amazon lock and the delivery person will walk into your home. I trust Amazon to deliver my parcels; I don't trust them to give access to my home. So what we do with the trust and how we tap into that, it really depends on the risk that we're asking people to take. >> That's a great point that you bring about Amazon, because you look at how they are infiltrating our lives in so many different ways. There's a lot of benefits to it, in terms of convenience. I trust Amazon, because I know when I order something it's going to arrive when they say it will. But when you said about trust being contextual and said do you trust that Amazon pays their taxes, I went wow, I hadn't thought of it in that way. Would I want to trust them to come into my home to drop off a package, no. >> Rachel: Yeah. >> But the, I don't know if I want to say infiltration, into our lives, it's happening whether we like it or not. >> Well I think Amazon is really interesting. First of all because so often as consumers, and I'm guilty, we let convenience trump trust. So we talk about trust, but, you know what, like, if I don't really trust that Uber driver but I really want to get somewhere, I'll get in the car, right? I don't really trust the ethics of Amazon as a company or like what they're doing in the world, but I like the convenience. I predict that Amazon is actually going to go through a major trust crisis. >> Lisa: Really? >> Yeah. The reason why is because their trust is largely, I talked about capability and character. Amazon's trust is really built around capability. The capability of their fulfillment centers, like how efficient they are. Character wobbles, right? Like, does Bezos have integrity? Do we really feel like they care about the bookshops they're eating up? Or they want us to spend money on the right things? And when you have a brand and the trust is purely built around capability and the character piece is missing, it's quite a precarious place to be. >> Lisa: I saw a tweet that you tweeted recently. >> Uh oh! (laughs) >> Lisa: On the difference between capability and character. >> Yes, yeah. >> Lisa: And it was fascinating because you mentioned some big examples, Boeing. >> Yes. >> The two big air disasters in the last year. Facebook, obviously, the security breach. WeWork, this overly aggressive business model. And you said these companies are placing the blame, I'm not sure if that's the right word-- >> No no, the blame, yeah. >> On product or service capabilities, and you say it really is character. Can you talk to our audience about the difference, and why character is so important. >> Yeah, it's so interesting. So you know, sometimes you post things. I actually post more on LinkedIn, and suddenly like, you hit a nerve, right? Because I don't know, it's something you're summarizing that many people are feeling. And so the point of that was like, if you look at Boeing, Theranos was another example, WeWork, hundreds of banks, when something goes wrong they say it was a flaw in the product, it was a flaw in the system, it's a capability problem. And I don't think that's the case. Because the root cause of capability problems come from character and culture. And so, capability is really about the competence and reliability of someone or a product or service. Character is how someone behaves. Character gets to their intentions and motives. Character gets to, did they know about it and not tell us. Even VW is another example. >> Lisa: Yes. >> So it's not the product that is the issue. And I think we as consumers and citizens and customers, where many companies get it wrong in a trust crisis is they talk about the product fix. We won't forgive them, or we won't start giving them our trust again until we really believe something's changed about their character. I'm not sure anything has changed with Facebook's culture and character, which is why they're struggling with every move that they take, even though their intentions might be good. That's not how people in the world are viewing them. >> Do you think, taking Boeing as an example, I fly a lot, I'm sure you do as well. >> Rachel: Yeah. >> When those accidents happened, I'm sure everybody, including myself, was checking, what plane is this? >> Rachel: Yeah. >> Because when you know, especially once data starts being revealed, that demonstrated pilots, test pilots, were clearly saying something isn't right here, why do you think a company like Boeing isn't coming out and addressing that head on from an integrity perspective? Do you think that could go a long way in helping their brand reputation? >> I never, I mean I do get it, I'm married to a lawyer so I understand, legal gets involved, governance gets involved, so it's like, let's not disclose that. They're so worried about the implications. But it's this belief they can keep things hidden. It's a continual pattern, right? And that they try to show empathy, but really it comes across as some weird kind of sympathy. They don't really show humility. And so, when the CEO sits there, I have to believe he feels the pain of the human consequence of what happened. But more importantly, I have to believe it will never happen again. And again, it's not necessarily, do I trust the products Boeing creates, it's do I trust the people? Do I trust the decisions that they're making? And so it's really interesting to watch companies, Samsung, right? You can recover from a product crisis, with the phones, and they kind of go away. But it's much harder to recover from what, Boeing is a perfect example, has become a cultural crisis. >> Right, right. Talk to us about the evolution of trust. You talked about these three waves. Tell our audience about that, and what the third wave is and why we're in it, benefits? And also things to be aware of. >> Yes! (laughs) I didn't really talk about this today, because it's all about inspiration. So just to give you a sense, the way I think about trust is three chapters of human history. So the first one is called local trust; all running around villages and communities. I knew you, I knew your sister, I knew whoever was in that village. And it was largely based on reputation. So, I borrowed money from someone I knew, I went to the baker. Now this type of trust, it was actually phenomenally effective, but we couldn't scale it. So when we wanted to trade globally, the Industrial Revolution, moving to cities, we invented what I call institutional trust. And that's everything from financial systems to insurance products, all these mechanisms that allow trust to flow on a different level. Now what's happening today, it's not those two things are going away and they're not important; they are. It's that what technology inherently does, particularly networks, marketplaces, and platforms, is it takes this trust that used to be very hierarchical and linear, we used to look up to the CEO, we used to look up to the expert, and it distributes it around networks and platforms. So you can see that at Coupa, right? And this is amazing because it can unlock value, it can create marketplaces. It can change the way we share, connect, collaborate. But I think what's happened is that, sort of the idealism around this and the empowerment is slightly tinged, in a healthy way, realizing a lot can go wrong. So distributed trust doesn't necessarily mean distributed responsibility. My biggest insight from observing many of these communities is that, we like the idea of empowerment, we like the idea of collaboration, and we like the idea of control, but when things go wrong, they need a center. Does that make sense? >> Lisa: Absolutely, yes. >> So, a lot of the mess that we're seeing in the world today is actually caused by distributed trust. So when I like, read a piece of information that isn't from a trusted source and I make a decision to vote for someone, just an example. And so we're trying to figure out, what is the role of the institution in this distributed world? And that's why I think things have got incredibly messy. >> It certainly has the potential for that, right? Looking at, one of the things that I also saw that you were talking about, I think it was one of your TED Talks, is reputation capital. And you said you believe that will be more powerful than credit history in the 21st century. How can people, like you and I, get, I want to say control, over our reputation, when we're doing so many transactions digitally-- >> Rachel: I know. >> And like I think you were saying in one of your talks, moving from one country to another and your credit history doesn't follow you. How can somebody really control their trust capital and creative positive power from it? >> They can't. >> They can't? Oh no! >> I don't want to disappoint you, but there's always something in a TED speech that you wish you could take out, like 10 years later, and be like, not that you got it wrong, but that there's a naivety, right? So it is working in some senses. So what is really hard is like, if I have a reputation on Airbnb, I have a reputation on Amazon, on either side of the marketplace, I feel like I own that, right? That's my value, and I should be able to aggregate that and use that to get a loan, or get a better insurance, because it's a predictor of how I behave in the future. So I don't believe credit scores are a good predictor of behavior. That is very hard to do, because the marketplaces, they believe they own the data, and they have no incentive to share the reputation. So believe me, like so many companies after, actually it was wonderful after that TED Talk, many tried to figure out how to aggregate reputation. Where I have seen it play out as an idea, and this is really very rewarding, is many entrepreneurs have taken the idea and gone to emerging markets, or situations where people have no credit history. So Tala is a really good example, which is a lending company. Insurance companies are starting to look at this. There's a company called Traity. Where they can't get a loan, they can't get a product, they can't even open a bank account because they have no traditional credit history. Everyone has a reputation somewhere, so they can tap into these networks and use that to have access to things that were previously inaccessible. So that's the application I'm more excited about versus having a trust score. >> A trust score that we would be able to then use for our own advantages, whether it's getting a job, getting a loan. >> Yeah, and then unfortunately what also happened was China, and God forbid that I in any way inspired this decision, decided they would have a national trust score. So they would take what you're buying online and what you were saying online, all these thousands of interactions, and that the government would create a trust score that would really impact your life: the schools that your children could go to, and there's a blacklist, and you know, if you jaywalk your face is projected and your score goes down. Like, this is like an episode of Black Mirror. >> It's terrifying. >> Yeah. >> There's a fine line there. Rachel, I wish we had more time, because we could keep going on and on and on. But I want to thank you-- >> A pleasure. >> For coming right from the keynote stage to our set; it was a pleasure to meet you. >> On that dark note. >> Yes! (laughing) For Rachel Botsman, I'm Lisa Martin. You're watching theCUBE from Coupa Insp!re London '19. Thanks for watching. (digital music)

Published Date : Nov 6 2019

SUMMARY :

Brought to you by Coupa. Can you hear all the buzz around me? And the way that you measured the audience is great, So if I had said to people, do you trust on Facebook Talk to me about trust as a currency. So you know when you have trust Yeah, I don't like the idea that you sort of unlock trust. and the delivery person will walk into your home. and said do you trust that Amazon pays their taxes, But the, I don't know if I want to say infiltration, So we talk about trust, but, you know what, And when you have a brand and the trust you mentioned some big examples, And you said these companies are placing the blame, and you say it really is character. And so the point of that was like, So it's not the product that is the issue. I fly a lot, I'm sure you do as well. And that they try to show empathy, And also things to be aware of. So just to give you a sense, the way I think about trust So, a lot of the mess that we're seeing in the world today I also saw that you were talking about, And like I think you were saying in one of your talks, and be like, not that you got it wrong, A trust score that we would be able and what you were saying online, But I want to thank you-- For coming right from the keynote stage to our set; Yes!

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Nitin Madhok, Clemson University | Splunk .conf19


 

>>live from Las Vegas. It's the Cube covering Splunk dot com. 19. Brought to you by spunk >>Welcome back Everyone's two cubes Live coverage from Las Vegas. Four Splunk dot com 2019 The 10th anniversary of their and user conference I'm John Free host of the key that starts seventh year covering Splunk Riding the wave of Big Data Day three of our three days were winding down. Our show are great to have on next guest Didn't Medoc executive director be Ibis Intelligence? Advanced Data Analytics at Clemson University Big A C C. Football team Everyone knows that. Great stadium. Great to have you on. Thanks for spending the time to come by and on Day three coverage. >>Thanks, John, for having me over. >>So, you know, hospitals, campuses, some use cases just encapsulate the digital opportunities and challenges. But you guys air have that kind of same thing going on. You got students, you got people who work there. You got a I ot or campus to campus is you guys are living the the real life example of physical digital coming together. Tell us about what's going on in your world that Clemson wouldn't your job there. What's your current situation? >>So, like you mentioned, we have a lot of students. So Clemson's about 20,000 undergraduate, children's and 5000 graduate students way faculty and staff. So you're talking about a lot of people every semester. We have new devices coming in. We have to support the entire network infrastructure, our student information systems on and research computing. So way we're focused on how convene make students lives better than experience. Better on how convene facilitated education for them. So way try toe in my role. Specifically, I'm responsible for the advanced eight analytics, the data that we're collecting from our systems. How can we? How can you use that on get more insides for better decision making? So that's that's >>Is a scope university wide, or is it specifically targeted for certain areas? >>So it does interest divide. So we have. We have some key projects going on University wide way, have a project for sure and success. There's a project for space utilization and how how, how we can utilize space and campus more efficiently. And then we're looking at energy energy usage across buildings campus emergency management idea. So we've got a couple of projects, and then Pettersson projects that most hired edge motion overseas work on this father's retention enrollment, graduation rates. How how the academics are. So so we're doing the same thing. >>What's interesting is that the new tagline for Splunk is data to everything. You got a lot of things. Their data. Ah, lot of horizontal use cases. So it seems to me that you have, ah, view and we're kind of talking on camera before we went live here was Dana is a fluid situation is not like just a subsystem. It's gotta be every native everywhere in the organization on touched, touches everything. How do you guys look at the data? Because you want to harness the data? Because data getting gathering on, say, energy. Your specialization might be great data to look at endpoint protection, for instance. I don't know. I'm making it up, but data needs to be workable. Cross. How do you view that? What's what's the state of the art thinking around data everywhere? >>So the key thing is, we've got so many IOC's. We've got so many sensors, we've got so many servers, it's it's hard when you work with different technologies to sort of integrate all of them on in the industry that have bean Some some software companies that try to view themselves as being deking, but really the way to dress it does you look at each system, you look at how you can integrate all of that, all of that data without being deking. So you basically analyze the data from different systems. You figured out a way to get it into a place where you can analyze it on, then make decisions based on that. So so that's essentially what we've been focused on. Working on >>Splunk role in all this is because one of things that we've been doing spot I've been falling spunk for a long time in a very fascinated with law. How they take log files and make make value out of that. And their vision now is that Grew is grow is they're enabling a lot of value of the data which I love. I think it's a mission that's notable, relevant and certainly gonna help a lot of use cases. But their success has been about just dumping data on display and then getting value out of it. How does that translate into this kind of data space that you're looking at, because does it work across all areas? What should what specifically are you guys doing with Splunk and you talk about the case. >>So we're looking at it as a platform, like, how can we provide ah self service platform toe analysts who can who can go into system, analyze the data way not We're not focusing on a specific technology, so our platform is built up of multiple technologies. We have tableau for visual analytics. We're also using Splunk. We also have a data warehouse. We've got a lot of databases. We have a Kafka infrastructure. So how can we integrate all of these tools and give give the choice to the people to use the tools, the place where we really see strong helping us? Originally in our journey when we started, our network team used to long for getting log data from switches. It started off troubleshooting exercise of a switch went down. You know what was wrong with it? Eventually we pulled in all for server logs. That's where security guard interested apart from the traditional idea of monitoring security, saw value in the data on. And then we talked about the whole ecosystem. That that's one provides. It gives you a way to bring in data withdrawal based access control so you can have data in a read only state that you can change when it's in the system and then give access to people to a specific set of data. So so that's that's really game changing, even for us. Like having having people be comfortable to opening data to two analysts for so that they can make better decisions. That's that's the key with a lot of product announcements made during dot com, I think the exciting thing is it's Nargis, the data that you index and spunk anymore, especially with the integration with With Dew and s three. You don't have to bring in your data in response. So even if you have your data sitting in history, our audio do cluster, you can just use the data fabric search and Sarge across all your data sets. And from what I hear that are gonna be more integrations that are gonna be added to the tool. So >>that's awesome. Well, that's a good use. Case shows that they're thinking about it. I got to ask you about Clemson to get into some of the things that you guys do in knowing Clemson. You guys have a lot of new things. You do your university here, building stuff here, you got people doing research. So you guys are bringing on new stuff, The network, a lot of new technology. Is there security concerns in terms of that, How do you guys handle that? Because you want to encourage innovation, students and faculty at the same time. You want gonna have the data to make sure you get the security without giving away the security secrets are things that you do. How do you look at the data when you got an environment that encourages people to put more stuff on the network to generate more data? Because devices generate data project, create more data. How do you view that? How do you guys handle that? >>So our mission and our goal is not to disrupt the student experience. Eso we want to make it seem less. And as we as we get influx of students every semester, we have way have challenges that the traditional corporate sector doesn't have. If you think about our violence infrastructure. We're talking about 20 25,000 students on campus. They're moving around. When, when? When they move from one class to another, they're switching between different access points. So having a robust infrastructure, how can we? How can we use the data to be more proactive and build infrastructure that's more stable? It also helps us plan for maintenance is S O. We don't destruct. Children's so looking at at key usage patterns. How what time's Our college is more active when our submissions happening when our I. D. Computing service is being access more and then finding out the time, which is gonna be less disruptive, do the students. So that's that's how we what's been >>the biggest learnings and challenges that you've overcome or opportunities that you see with data that Clemson What's the What's the exciting areas and or things that you guys have tripped over on, or what I have learned from? We'll share some experiences of what's going on in there for you, >>So I think Sky's the limit here. Really like that is so much data and so less people in the industry, it's hard to analyze all of the data and make sense of it. And it's not just the people who were doing the analysis. You also need people who understand the data. So the data, the data stores, the data trustees you need you need buy in from them. They're the ones who understand what data looks like, how how it should be structured, how, how, how it can be provided for additional analysis s Oh, that's That's the key thing. What's >>the coolest thing you're working on right now? >>So I'm specifically working on analyzing data from our learning management system canvas. So we're getting data informer snapshots that we're trying to analyze, using multiple technologies for that spunk is one of them. But we're loading the data, looking at at key trends, our colleges interacting, engaging with that elements. How can we drive more adoption? How can we encourage certain colleges and departments, too sort of moved to a digital classroom Gordon delivery experience. >>I just l a mess part of the curriculum in gym or online portion? Or is it integrated into the physical curriculum? >>So it's at this time it's more online, But are we trying to trying to engage more classes and more faculty members to use the elements to deliver content. So >>right online, soon to be integrated in Yeah, you know, I was talking with Dawn on our team from the Cube and some of the slum people this week. Look at this event. This is a physical event. Get physical campuses digitizing. Everything is kind of a nirvana. It's kind of aspiration is not. People aren't really doing 100% but people are envisioning that the physical and digital worlds are coming together. If that happens and it's going to happen at some point, it's a day that problem indeed, Opportunity date is everything right? So what's your vision of that as a professional or someone in the industry and someone dealing with data Clemson Because you can digitize everything, Then you can instrument everything of your instrument, everything you could start creating an official efficiencies and innovations. >>Yes, so the way I think you you structure it very accurately. It's amalgam of the physical world and the digital world as the as the as the world is moving towards using more more of smartphones and digital devices, how how can we improve experience by by analyzing the data on and sort of be behind the scenes without even having the user. The North is what's going on trading expedience. If the first expedience is in good that the user has, they're not going to be inclined to continue using the service that we offer. >>What's your view on security now? Splunk House League has been talking about security for a long time. I think about five years ago we started seeing the radar data. Is driving a lot of the cyber security now is ever Everyone knows that you guys have a lot of endpoints. Security's always a concern. How do you guys view the security of picture with data? How do you guys talk about that internally? How do you guys implement data without giving me a secret? You know, >>way don't have ah ready Good Cyber Security Operation Center. That's run by students on. And they do a tremendous job protecting our environment. Way monitored. A lot of activity that goes on higher I deserve is a is a challenge because way have in the corporate industry, you can you can have a set of devices in the in the higher education world We have students coming in every semester that bringing in new, important devices. It causes some unique set of challenges knowing where devices are getting on the network. If if there's fishing campaigns going on, how can be, How can we protect that environment and those sort of things? >>It is great to have you on. First of all, love to have folks from Clemson ons great great university got a great environment. Great Great conversation. Congratulations on all your success on their final question for you share some stories around some mischief that students do because students or students, you know, they're gonna get on the network and most things down. Like when when I was in school, when we were learning they're all love coding. They're all throwing. Who knows? Kitty scripts out there hosting Blockchain mining algorithms. They gonna cause some creek. Curiosity's gonna cause potentially some issues. Um, can you share some funny or interesting student stories of caught him in the dorm room, but a server in there running a Web farm? Is there any kind of cool experiences you can share? That might be interesting to folks that students have done that have been kind of funny mistress, but innovative. >>So without going into Thio, I just say, Like most universities, we have, we have students and computer science programs and people who were programmers and sort of trying to pursue the security route in the industry. So they, um, way also have a lot of research going on the network on. And sometimes research going on may affect our infrastructure environment. So we tried toe account for those use cases and on silo specific use cases and into a dedicated network. >>So they hit the honeypot a lot. They're freshmen together. I'll go right to the kidding, of course. >>Yes. So way do we do try to protect that environment on Dhe. Makes shooting experience better. >>I know you don't want to give any secrets. Thanks for coming on. I always find a talk tech with you guys. Thanks so much appreciated. Okay. Cube coverage. I'm shot for a year. Day three of spunk dot com for more coverage after this short break

Published Date : Oct 24 2019

SUMMARY :

19. Brought to you by spunk Great to have you on. to campus is you guys are living the the real life example How can you use that on How how the academics are. So it seems to me that you have, ah, view and we're kind of talking on camera before we went live here but really the way to dress it does you look at each system, guys doing with Splunk and you talk about the case. So even if you have your data sitting in history, get into some of the things that you guys do in knowing Clemson. So our mission and our goal is not to disrupt the the data stores, the data trustees you need you need buy in from them. So we're getting data informer So it's at this time it's more online, But are right online, soon to be integrated in Yeah, you know, I was talking with Dawn on our team from the Yes, so the way I think you you structure it very accurately. How do you guys talk about that internally? the corporate industry, you can you can have a set of devices in the in the It is great to have you on. also have a lot of research going on the network on. So they hit the honeypot a lot. I always find a talk tech with you guys.

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Mark Penny, University of Leicester | Commvault GO 2019


 

>>live >>from Denver, Colorado. It's the Q covering com vault Go 2019. Brought to you by combo. >>Hey, welcome to the Cube. Lisa Martin in Colorado for CONMEBOL Go 19. Statement. A man is with me this week, and we are pleased to welcome one of combos, longtime customers from the University of Leicester. We have Mark Penny, the systems specialist in infrastructure. Mark. Welcome to the Cube. >>Hi. It's good to be here. >>So you have been a convo customer at the UNI for nearly 10 years now, just giving folks an idea of about the union got 51 different academic departments about five research institutes. Cool research going on, by the way and between staff and students. About 20,000 folks, I'm sure all bringing multiple devices onto the campus. So talk to us about you came on board in 20 ton. It's hard to believe that was almost 10 years ago and said, All right, guys, we really got to get a strategy around back up, talk to us about way back then what? You guys were doing what you saw as an opportunity. What you're doing with combo today, a >>time and the There's a wide range of backup for us. There was no really assurance that we were getting back up. So we had a bit of convert seven that was backing up the Windows infrastructure. There was tyranny storage manager backing up a lot of Linux. And there was Amanda and open source thing. And then there was a LL sorts of scripts and things. So, for instance, of'em where backups were done by creating an array snapshot with the script, then mounting that script into that snapshot into another server backing up the server with calm bolt on the restore process is an absolute takes here. It was very, very difficult, long winded, required a lot of time on the checks. For this, it really was quite quite difficult to run it. Use a lot of stuff. Time we were, as far as the corporate side was concerned it exclusively on tape resource manager, we're using disc. Amanda was again for tape in a different, completely isolated system. Coupled with this, there had been a lack of investment in the data centers themselves, so the network hadn't really got a lot of throughput. This men that way were using data private backup networks in order to keep back up data off the production networks because there was really challenges over bandwidth contention backups on. So consider it over around and so on. If you got a back up coming into the working day defect student So Way started with a blank sheet of paper in many respects on went out to see what was available on Dhe. There was the usual ones it with the net back up, typically obviously again on convert Arc Serve has. But what was really interesting was deed Implication was starting to come in, But at the time, convo tonight just be released, and it had an absolutely killer feature for us, which was client side duplication. This men that we could now get rid of most of this private backup network that was making a lot of complex ISI. So it also did backup disk on back up to tape. So at that point, way went in with six Media agents. Way had a few 100 terabytes of disk storage. The strategy was to keep 28 days on disk and then the long term retention on tape into a tape library. WeII kept back through it about 2013 then took the decision. Disc was working, so let's just do disco only on save a whole load of effort. In even with a take life, you've got to refresh the tapes and things. So give it all on disk with D Duplication way, basically getting a 1 to 1. So if we had take my current figures about 1.5 petabytes of front side protected data, we've got about 1.5 petabytes in the back up system, which, because of all the synthetic fools and everything, we've got 12 months retention. We've got 28 days retention. It works really, really well in that and that that relationship, almost 1 to 1 with what's in the back up with all the attention with plants like data, has been fairly consistent since we went all disc >>mark. I wonder if you'd actually step back a second and talks about the role in importance of data in your organization because way went through a lot of the bits and bytes in that is there. But as a research organization, you know, I expect that data is, you know, quite a strategic component of the data >>forms your intellectual property. It's what is caught your research. It's the output of your investigations. So where were doing Earth Operational science. So we get data from satellites and that is then brought down roars time, little files. They then get a data set, which will consist of multiple packages of these, these vials and maybe even different measurements from different satellites that then combined and could be used to model scenarios climate change, temperature or pollution. All these types of things coming in. It's how you then take that raw data work with it. In our case, we use a lot of HPC haIf of computing to manipulate that data. And a lot of it is how smart researchers are in getting their code getting the maximum out of that data on. Then the output of that becomes a paper project on dhe finalized final set of of date, which is the results, which all goes with paper. We've also done the a lot of genetics and things like that because the DNA fingerprinting with Alec Jeffrey on what was very interesting with that one is how it was those techniques which then identified the bones that were dug up under the car park in Leicester, which is Richard >>Wright documentary. >>Yeah, on that really was quite exciting. The way that well do you really was quite. It's quite fitting, really, techniques that the university has discovered, which were then instrumental in identifying that. >>What? One of the interesting things I found in this part of the market is used to talk about just protecting my data. Yeah, a lot of times now it's about howto. Why leverage my data even Maur. How do I share my data? How do I extract more value out of the data in the 10 years you've been working with calm Boulder? Are you seeing that journey? Is that yes, the organization's going down. >>There's almost there's actually two conflicting things here because researchers love to share their data. But some of the data sets is so big that can be quite challenging. Some of the data sets. We take other people's Day to bring it in, combining with our own to do our own modeling. Then that goes out to provide some more for somebody else on. There's also issues about where data could exist, so there's a lot of very strict controls about the N. H s data. So health data, which so n hs England that can't then go out to Scotland on Booth. Sometimes the regulatory compliance almost gets sidelines with the excitement about research on way have quite a dichotomy of making sure that where we know about the data, that the appropriate controls are there and we understand it on Hopefully, people just don't go on, put it somewhere. It's not because some of the data sets for medical research, given the data which has got personal, identifiable information in it, that then has to be stripped out. So you've got an anonymous data set which they can then work with it Z assuring that the right data used the right information to remove so that you don't inadvertently go and then expose stuff s. So it's not just pure research on it going in this silo and in this silo it's actually ensuring that you've got the right bits in the right place, and it's being handled correctly >>to talk to us about has you know, as you pointed out, this massive growth and data volumes from a university perspective, health data perspective research perspective, the files are getting bigger and bigger In the time that you've started this foundation with combo in the last 9 10 years. Tremendous changes not just and data, but talking about complaints you've now got GDP are to deal with. Give us a perspective and snapshot of your of your con vault implementation and how you've evolved that as all the data changes, compliance changes and converts, technology has evolved. So if you take >>where we started off, we had a few 100 petabytes of disk. It's just before we migrated. Thio on Premise three Cloud Libraries That point. I think I got 2.1 petabytes of backup. Storage on the volume of data is exponentially growing covers the resolution of the instruments increases, so you can certainly have a four fold growth data that some of those are quite interesting things. They when I first joined the great excitement with a project which has just noticed Betty Colombo, which is the Mercury a year for in space agency to Demeter Mercury and they wanted 50 terabytes and way at that time, that was actually quite a big number way. We're thinking, well, we make the split. What? We need to be careful. Yes. Okay. 50 terrorizes that over the life of project. And now that's probably just to get us going. Not much actually happened with it. And then storage system changed and they still had their 50 terabytes with almost nothing in it way then understood that the spacecraft being launched and that once it had been launched, which was earlier this year, it was going to take a couple of years before the first data came back. Because it has to go to Venus. It has to go around Venus in the wrong direction, against gravity to slow it down. Then it goes to Mercury and the rial bolt data then starts coming back in. You'd have thought going to Mercury was dead easy. You just go boom straight in. But actually, if you did that because of gravity of the sun, it would just go in. You'd never stop. Just go straight into the sun. You lose your spacecraft. >>Nobody wants >>another. Eggs are really interesting. Is artfully Have you heard of the guy? A satellite? >>Yes. >>This is the one which is mapping a 1,000,000,000 stars in the Milky Way. It's now gone past its primary mission, and it's got most of that data. Huge data sets on DDE That data, there's, ah, it's already being worked on, but they are the university Thio task, packaging it and cleansing it. We're going to get a set of that data we're going to host. We're currently hosting a national HPC facility, which is for space research that's being replaced with an even bigger, more powerful one. Little probably fill one of our data centers completely. It's about 40 racks worth, and that's just to process that data because there's so much information that's come from it. And it's It's the resolution. It's the speed with which it can be computed on holding so much in memory. I mean, if you take across our current HPC systems, we've got 100 terabytes of memory across two systems, and those numbers were just unthinkable even 10 years ago, a terrible of memory. >>So Mark Lease and I would like to keep you here all way to talk about space, Mark todo of our favorite topics. But before we get towards the end, but a lot of changes, that combo, it's the whole new executive team they bought Hedvig. They land lost this metallic dot io. They've got new things. It's a longtime customer. What your viewpoint on com bold today and what what you've been seeing quite interesting to >>see how convoy has evolved on dhe. These change, which should have happened between 10 and 11 when they took the decision on the next generation platform that it would be this by industry. Sand is quite an aggressive pace of service packs, which are then come out onto this schedule. And to be fair, that schedule is being stuck to waken plan ahead. We know what's happening on Dhe. It's interesting that they're both patches and the new features and stuff, and it's really great to have that line to work, too. Now, Andi way with platform now supports natively stone Much stuff. And this was actually one of the decisions which took us around using our own on Prem Estimate Cloud Library. We were using as you to put a tear on data off site on with All is working Great. That can we do s3 on friend on. It's supported by convoy is just a cloud library. Now, When we first started that didn't exist. Way took the decision. It will proof of concept and so on, and it all worked, and we then got high for scale as well. It's interesting to see how convoy has gone down into the appliance 11 to, because people want to have to just have a box unpack it. Implicated. If you haven't got a technical team or strong yo skills in those area, why worry about putting your own system together? Haifa scale give you back up in a vault on the partnerships with were in HP customer So way we're using Apollo's RS in storage. Andi Yeah, the Apollo is actually the platform. If we bought Heifer Scale, it would have gone on an HP Apollo as well, because of the way with agreements, we've got invited. Actually, it's quite interesting how they've gone from software. Hardware is now come in, and it's evolving into this platform with Hedvig. I mean, there was a convoy object store buried in it, but it was very discreet. No one really knew about it. You occasionally could see a term on it would appear, but it it wasn't something which they published their butt object store with the increasing data volumes. Object Store is the only way to store. There's these volumes of data in a resilient and durable way. Eso Hedvig buying that and integrating in providing a really interesting way forward. And yet, for my perspective, I'm using three. So if we had gone down the Hedvig route from my perspective, what I would like to see is I have a story policy. I click on going to point it to s three, and it goes out it provision. The bucket does the whole lot in one a couple of clicks and that's it. Job done. I don't need to go out, create the use of create the bucket, and then get one out of every little written piece in there. And it's that tight integration, which is where I see benefits coming in you. It's giving value to the platform and giving the customer the assurance that you've configured correctly because the process is an automated in convoy has ensured that every step of the way the right decisions being made on that. Yet with metallic, that's everything is about it's actually tried and tested products with a very, very smart work for a process put round to ensure that the decisions you make. You don't need to be a convoy expert to get the outcome and get the backups. >>Excellent. Well, Mark, thank you for joining Student on the Cape Talking about tthe e evolution that the University of Leicester has gone through and your thoughts on com bolts evolution in parallel. We appreciate your time first to Minutemen. I'm Lisa Martin. You're watching the cue from combo go 19.

Published Date : Oct 15 2019

SUMMARY :

It's the Q covering com vault We have Mark Penny, the systems So talk to us about you came on board in 20 ton. So at that point, way went in with six Media agents. quite a strategic component of the data It's the output of your investigations. It's quite fitting, really, techniques that the university has discovered, the data in the 10 years you've been working with calm Boulder? it Z assuring that the right data used the right information to remove so to talk to us about has you know, as you pointed out, this massive growth and data volumes the great excitement with a project which has just noticed Betty Colombo, Is artfully Have you heard of the guy? It's the speed with which it can be computed on but a lot of changes, that combo, it's the whole new executive team they bought Hedvig. that the decisions you make. We appreciate your time first to Minutemen.

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Linda Babcock, Carnegie Mellon University | Acronis Global Cyber Summit 2019


 

>>from Miami >>Beach, Florida It's the Q covering a Cronus Global Cyber >>Summit 2019. Brought to you by a Cronus. >>Welcome to the Qi. We are in Miami, Florida, for the Cronus Global Cyber Summit. 2019 John for your host of the Cube. We're here for two days of coverage around cybersecurity and the impact to the enterprise in society in a great guest here to kick off the event. Linda Babcock, professor of economics at Carnegie Mellon University, author of the book, Ask for It, and she has a new book she's working on, and we'll get into that. Thanks for joining me. Thanks for coming on. >>Really happy to be here. >>Thanks. So Carnegie Mellon. Great. Great. Uh, University. They stole a bunch of people when I was in school, in the computer science department. Very well known for that as well. Economics, math, machine learning. I was good stuff there. What's going on in Carnegie Mellon? What's new in your world? >>Well, it's just actually just a great place to be because of the focus on interdisciplinary work. You know, problems in the world don't come as disciplines. They come with multiple perspectives needed and So it's just a place where people can flourish, attack ideas from all kinds of angles. And so it's a really great >>one of the things I hear a lot about, and we cover a lot about the the skills gap. Certainly this is Maur job openings than there are jobs and interesting. A lot of the jobs that are new haven't been skilled, important in the classic university setting. So a lot of these jobs, like cybersecurity, cloud computing, Blockchain, crypto economic token economics, all kind of have a maths economic steam to him. So you know your computer science, you got economics and policy. I seem to be the key areas around from these new skills and challenges. Way faces a society which your take on all this >>Well, actually, there's a lot going on in this area at Carnegie Mellon. Actually, the economics group at Carnegie Mellon ISS is been proposing a new major that really focuses on this interface between economics, machine learning and technology. And I think it's going to train our students just for the next generation of problems that the world of tech is gonna have. So it's very exciting. >>So let's talk about your book. Ask for it. Okay. Um, it's not a new book that's been around for a while, but you give a talk here. What's what's the talking talking track here at the event? >>Yeah, so I have a couple of themes of research, and it focuses on women's Berries to advancement in organizations. And so most of the work that I did with this book and my first book, Women Don't Ask, was looking about how men and women approached negotiation differently. And kind of the bottom line is that women are what less likely to negotiate than men over all kinds of things, like pay like opportunities for advancement like the next promotion. And it really harms them in the workplace because men are always out there asking for it and organizations reward that. And so the book is was really about shedding light on this disparity and what organizations could do about it and what women can do about it themselves, how they can learn to negotiate more effectively. >>What did you learn when you were writing the book around? Some of the use cases of best practices that women were doing in the field was it. Maura aggressive style has a more collaborative. You're seeing a lot more solidarity amongst women themselves, and men are getting involved. A lot of companies are kind of talking the game summer walking, the talk. What the big findings that you've learned >>well, I'd say that the approach is that women use are a lot different than the approaches that menus. And it's because our world lets men do a lot of different things. It lets them engage in a cooperative way, lets them be very competitive. But our world has a very narrow view about what's acceptable behavior for women. I often call it a tight rope because women are kind of balancing that they need to go out and assert themselves. But they have to do it in a way that our side, a society finds acceptable, and that that tight rope constrains women and doesn't allow them to be their authentic Selves on DSO. It makes it difficult for women to navigate that. What's your >>take on the the balancing of being aggressive and the pressure companies have to, you know, keep the women population certainly pipeline in tech. We see it all the time and the whole me to thing and the pressure goes on because norms were forming, right? So is there any new data that you can share around how, with norms and for forming and what men can do? Particularly, I get this question a lot, and I always ask myself, What am I doing? Can I do something different? Because I want to be inclusive and I want to do the right thing. But sometimes I don't know what to do. >>Yeah, of course. And it's really important that men get involved in this conversation as allies and, like you said, sometimes men but don't know what to do because they feel like maybe they don't have standing to be in the conversation when it's about women and weigh all need men, his allies. If women are gonna try to reach equality, ATT's some point. But the new data really suggests negotiation may be playing a role. The work that show Sandberg lean in, But the newest work that we have shows that actually the day to day things that happen at work that's holding women back. So let me tell you about that. So what we find is if you think about your calendar and what you do all day there a task that you can classify as being promotable, that is, they're really your core job. Responsibility there noticed, rewarded. But there's glass of other things that happen in your organization that are often below the surface that are important to dio valued but actually not rewarded. And what our research finds is that men spend much more time than women at the tasks that are these promotable task that rewarded women spend much more time than men on these tasks that we call non promotable that are not rewarded. And it's really holding women back. And how men can help is that the reason that women are doing these tasks is because everyone is asking them to do these tasks. And so what men can do is start asking men to do some of these things that are important but yet not rewarded because the portfolio's now are really out of balance and women are really shouldering the burden of these tasks disproportionately. >>So get on the wave of the promotional off the promotional oriented things that Maura and the man can come and pick up the slack on some of the things that were delegated to the women because they could order the kitchen food or whatever >>or help others with their work. Someone has to hire the summer intern. Someone has to organize events. Someone has to resolve underlying conflicts. Those are all really important things. Women get tasked with them, and that really doesn't allow them to focus on their core job responsibilities. And so men can step up to the blade, stop, do it, start doing their fair share of that work, and really then allow women to reach their full >>potential. I've been thinking a lot about this lately around how collaboration software, how collaborative teams. You started to see the big successful coming like Amazon to pizza team concept. Smaller teams, Team Orient. If you're doing it, you're in a teen. These things go. You've given you get so I think it's probably a better environment. Is that happening or no? It's >>unclear how teams kind of shake out for women in this setting, because there's actually some research that shows when a team produces an output and the supervisor trying to figure out, like who really made the output? Who was the valued player on the team. They often overvalue the contributions of men and undervalued the contributions of women. So actually, team projects can be problematic if women don't get their fair share of >>bias. Is everywhere >>biases everywhere. And you know it's not that people are trying discriminate against women. It's just that it's a subconscious, implicit bias and so affects our judgments in ways that we don't even realize. >>It's actually probably amplifies it. You know, the game are gaining a lot of things on digital indigenous communities. We see a lot where people are hiding behind their avatars. Yeah, that's also pretty bad environment. So we've been doing a lot of thinking and reporting around communities and data. I want to get your thoughts is I never really probed at this. But is there any economic incentives? And after you're an economics professor, you seeing things like crypto economics and tokens and all kinds of new things is a potential path towards creating an incentive system that's cutting edge what's progressive thinking around any kind of incentive systems for organizations or individuals. >>Well, when you think about incentives and maybe an economist, I think about those a lot, and I emerged that with my work on various to women's advancement, I think incentives is one area that you can actually play a big role. And that is that Organizational leaders should be incentive fied incentivized to see that they have equal advancement for their male and female employees in their workforce. Because if they don't it means they're losing out on this potential that women have, that they aren't able to fully be productive. And so that's, I think, the place. I think that incentives can really be important, >>a great leader and he said, and I'm quoting him. But I feel the same way says. Our incentive is business. Get a better outcome with them. We include women, give data, goes Yeah, we make software and have people that use our software with women I don't wanna have. So I'm like, Oh, that makes a lot of sense. Biases should be in there. Four Women for women by women for women >>and women spend more money as consumers than men. And so having women on teams allows them to see perspectives that men may not see, and so it can really add two new innovative thinking that hadn't been there before by including women. >>Well, I'm excited that this there's a little bit of movement in tech we're starting to see, certainly in venture capital, starting to see a lot more when you come into the board room work to do. But I think there's a nice sign that there's more jobs that are computer related that aren't just coding. That's male dominant pretty much now and still still is for a while. But there's a lot more skills, all kinds of range now in computer science. It's interesting. How is that affecting some of the new pipeline ing? >>Yeah, well, I think the good news is that there are is increasing levels of women's attainment in stem fields. And so there are more and more female workers entering the labor market today. Way just have to make sure that those workers are valued and feel included when they do doing tech companies. Otherwise they will leave because what happens unfortunately, sometimes in tech is it doesn't feel inclusive for women. And the quick rate for women in tech is over over twice the rate for men, and some of the reasons are is they're not feeling valued in their positions. They're not seeing their advancement. And so with this new wave of female workers, we have to make sure that those workplaces are ready to accept them and include them. >>That's great. Well, ask for it is a great book. I went through it and it's great handbook. I learned a lot. It really is a handbook around. Just standing up and taken what you can. You got some new, but you got a new book you're working on. What's that gonna look like? What if some of the themes in the new book >>Yeah. So the new book is on these promotable tasks, and the way I like to think about it is there's so much attention toe work, life balance, you know? How do you manage both of those with your career, your family? How does that work? But our work actually focuses on work, work, balance, and what remains is paying attention to the things that you do at work. Making sure that those things that you're doing are the things that are most valuable for your employer and are gonna be most valuable for your career. So it's a really different focus on the day to day ways that you spend your time at work and how that can propel women to the next level. >>That's awesome, Linda. Thanks for coming. I appreciate it. What do you think of the event here? Cronies? Global cyber security summit. >>Well, I got to say it's not my typical event, but I'm having a good time learning more about what's happening in the tech industry today. >>Cyber protection, Certainly a cutting edge issue. And certainly on the East Coast in Washington D certainly with national defense and all kinds of things happening, Ransomware is a big topic that kicked around here absolutely getting taken out like, Oh, my God. Yeah. Bitcoin in return for taking your systems out, >>all kinds of new stuff to add to my tool kit. >>Great to have you on. Thanks for your insight. Thanks for sharing. Appreciate it. I'm John for here at the Cube. We're here in Miami Beach for the Cronus Cyber Protection Conference. Thank you for watching

Published Date : Oct 14 2019

SUMMARY :

professor of economics at Carnegie Mellon University, author of the book, in the computer science department. Well, it's just actually just a great place to be because of the focus on interdisciplinary work. A lot of the jobs that are new haven't been skilled, important in the classic university setting. And I think it's going to train our students just been around for a while, but you give a talk here. And so most of the work that I did with this book and my first book, Women Don't Ask, Some of the use cases of best practices that women were doing in the field But they have to do it in a way that our side, a society finds acceptable, and that that tight the pressure companies have to, you know, keep the women population certainly pipeline in tech. how men can help is that the reason that women are doing these tasks is because Someone has to hire the summer intern. You started to see the big successful coming like Amazon to pizza team concept. the contributions of men and undervalued the contributions of women. Is everywhere And you know it's not that people are trying discriminate against women. You know, the game are gaining a lot of things on digital indigenous communities. that they aren't able to fully be productive. But I feel the same way says. And so having women on teams allows is that affecting some of the new pipeline ing? And the quick rate for women in tech is over over twice the rate for men, What if some of the themes in the new book So it's a really different focus on the day to day What do you think of the event here? happening in the tech industry today. And certainly on the East Coast in Washington D certainly with I'm John for here at the Cube.

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Carlos Caicedo, Syracuse University | AnsibleFest 2019


 

>> Narrator: Live from Atlanta, Georgia it's theCube covering AnsibleFest 2019, brought to you by Red Hat. >> Welcome back, this is theCube's coverage of AnsibleFest 2019, here in Atlanta Georgia, I'm Stu Miniman, real excited to be at this event for the first time, getting to talk to a number of the practitioners, talking to some of the executives, and to give us a slightly different angle on it, we're really going to talk about education and what's happening in this space. And joining me, first time guest on the program, Carlos Caicedo, who is an associate professor at Syracuse University. Carlos thanks so much for joining us. >> Thank you, thanks for inviting me. >> All right, so Syracuse, the snow belt hasn't hit yet for 2019 up your neck of the woods, - [Carlos] Yeah. >> but you know tell us a bit about what you know, you do, the programs you work on, and then we'll get into how much automation is a piece of that. >> Okay, so I'm professor at the School of Information Studies at Syracuse University and two years ago, we decided to launch a new masters degree program on enterprise data systems that focuses on cloud technologies, automation, scripting and all that's required now a days to manage and work with the infrastructure that data centric enterprises need now a days. Basically we saw this need because the traditional way of working with infrastructure, from the command line interface wasn't going to cut it anymore. You need to work with scale, new concepts, APIs, git, continualization, virtualization. So we needed to create a program that replace our traditional networking program and modernize it and bring it up to speed with what's currently happening in the industry. >> I think that's great, you know we talk about what is, how do we close the gap between what, you know, business needs, what skillsets are needed, and what's coming out of university. You know for a long time, it was like okay, let's get everybody in computer sciences and do that, but you know, whatever programming language you learn today, it's like oh boy, it seems to change and be out of date there, and if you talk about a masters degree, in IT we're working with, you know, how does the technology and the business, how do they work together. - [Carlos] Yeah. So I have to imagine that this, that masters level helps prepare your students to kind of live in that world. >> Yes, we're a bit different than what you would call a traditional network engineering degree, which focuses a lot on the technology. We imbed or try to give our students also a business perspective so they learn management, information management, or management concepts for information professionals, information policy concepts, so you understand the business side, but then we also imbed a lot of technology components into the curriculum. So the idea is to have this kind of multi-disciplinary hybrid professional, that understands that whatever is being worked at the infrastructural level needs to support the goals of the business and can walk those worlds, be a good participant in teams. Collaboration is the key now a days as we've seen. >> So Carlos, what prerequisites do your students have to have coming in, I mean do they need to be certified on certain network gear or you know what do they need to understand, and what do you give them that might be different than what they would have gotten out in industry? >> Well, preferably, students that come in should have some knowledge of networking the TCP IP stack, basically, what routing an IP address is, and from there on they'll see courses on advanced networking, scripting, cloud management, cloud architecture, and so forth, and plus the business side as I mentioned, to get them prepared for the real world. >> Okay, one of the things that was, you know, greatly talked about here is really that evolution of automation. You know how do we move it from being a just you know, tactical. One of the keynotes speakers yesterday talked about the whack-a-mole I'm going to solve all of these little problems to a more strategic view. How have you been seeing in, how does the evolution of automation impact your curriculum? >> Well, that's a great question. So the idea is not to have automation for the sake of automation. Like you said we need the business focus and whoever is participating in a team and moving the automation story forward needs to be conscious that the end goal is to support business. However, in terms of how it has impacted our curriculum, we embedded automation in several of our courses because that's the way to go in the future, you can't just cut it with, you know, a device by device kind of approach. So everything now a days changes too quickly and the demands for businesses to respond to these changes require a quick turnaround for whatever the infrastructure needs to provide to support the business. So we need to build professionals that understand this and can apply innovation to their benefit and to the benefit of their enterprise. >> Now one of the interesting conversations we've had this week is that the software, the technology, is actually hoping to drive some of the collaboration and communication between groups and roles. How much of that, does that get touched on at all, you know when you talk about working with the business and doing all that? >> Yes, so we kind of build on team based assignments and labs just to get students to understand they're going to have to be part of a team. And you might have people that speak a different language than you or at a different level than you. Let's say more business-oriented, more process-oriented, more technology-oriented but you have to be, well at least a professional would prefer, you have to be that glue that keeps the team cohesive and working together to a common goal. So yeah, collaboration is key and we've seen that in this event, it's all about changing the culture and having this positive approach towards being collaborative. And we're hoping that we're building professionals that from day one understand this and can be part of a team. >> All right, so you talk about that collaboration, I'm curious, in higher education, you know, how is what you're doing impacting your peers, how do you learn from both your peers and education as well as in industry? >> Well, so, at least at our university we have a culture of collaboration between different departments and disciplines. We might work a lot with engineering, we might work a lot with the business school, law school. So again, to bring this interdisciplinary knowledge to students. We also like to reach out to industry and build partnerships, build bridges so that we can leverage some of the resources they have you know to promote or educate people on their products, but also to get students to actually be very hands on and work with things that are out there in the real world. So the idea is that they can speak the same language as many professionals that are already out there. >> Can you speak to you know, Red Hat's participation, how are they partnering and enabling what your mission is? >> So I've been using Ansible in several of my courses and so we have a scripting course, just to mention one, where we do a lot of modules on Ansible and again to understand this concept of mass automation, that automation is the key element for moving infrastructure and having infrastructure deliver goals in the future. So we partner in such that we get to use their products in an easy way and we keep on building new bridges to use more of their products. Now with the announcement of the automation platform, I really want to dig into that and start building new labs for students on that platform. >> Stu: Okay so sounds like you're excited by the announcement. - Oh yeah. >> Anything particular that you know caught your eye on that? It sounds like, you know, the networking pieces with collections seems like something that might be useful. >> Yes, so, well being an information school we're big on data right, so now you have the story of being able to automate a device or a service level, putting that into Ansible tower, doing access control, monitoring and then collecting statistics based on that. Monitoring the performance of your playbooks, monitoring the performance of your automation tasks. So having that data, that analytic side for example, is quite exciting for an information school because we might get some ideas as to how to leverage that in the future. >> So I'm wondering if you could share kind of, you know, what your students think about automation in general. You know if you talk about just the general workforce, you know, over the years there's sometimes that fear oh the robots and the automations are going to takeover you know, what I'm doing, you know, is there any of that fear from the generation, or does working with the technology, you know, help enable what they're looking to do? >> Well, it's definitely kind of a mixed bag. So until students get introduced to tools like Ansible, they do have some fear that well now it's like one person can do the work of 20 or 30 people. But once they understand the story of, you know, tools like Ansible, they change their focus. I had two students at the AnsibleFest last year and they were amazed about looking at the way that many enterprises are using automation. So it's not just about taking out these mundane tasks that network managers have to do, it's getting the time to actually innovate, to be creative, get rid of those tasks that occupy time but are not really important, minimum tasks to get the ship moving along, but then build on top of that to create new products and services. >> It's interesting if you look at the research on it, you know, information technology often has not had the efficiency increases of kind of worker productivity that you might expect and definitely not to the point that it's going to be, you know, massive, you know, job, you know, killing of jobs, you know, hopefully, you know, when we talk to some of the people here it should improve your job satisfaction, hopefully get rid of some of those oh my gosh I got to spend, you know, every fifth weekend, you know, working on this and we can automate some of those away, but yeah there's that disconnect between the reality and, you know, what the technology's actually doing. >> Yes, yeah you don't want to be putting fires every weekend or everyday. And you want to bring additional, how you do to the enterprise and I think that's what automation allows in a big way. >> Great so Carlos you've been to AnsibleFest before, give us your impression so far, the event this week and some of the key things that you, you know, have been or are looking to take away from AnsibleFest 2019. >> Well as I mentioned before, the automation platform definitely want to look into that. I think the way that people are talking about collaboration around automation is very important. I think that kind of validates the team based focus and approach to some of our assignments at least at the program level. Also, I think that the way that companies are now telling their stories of automation. It's pretty neat, I hope to bring some of them into the curriculum. I just saw one from these guys from New Zealand, that they had come, they had videos as to how they implemented some big massive automation and tasks. That was pretty interesting. So hopefully I get to take some of what I've learned here into the curriculum. >> And you know, just a final thing, you know, how prevalent are these, you know, curriculums of automation throughout the country, you know, any data on that? >> Well that's a good question, so basically I would split the university so the program's like in three groups. So you have one group that's developing programs mostly on the network engineering side, very very technical. Other group that probably hasn't really catched on the evolution of networking and probably just teaching networking in the same traditional manner, you know, hoping to get people prepared for cisco certification, certifications of other types, very static, traditional network construction. And then another group which would be kind of in the middle where it's not fully about the technology, it's also about the business and how much you concentrate on both sides can, is where we can distinguish each of these programs. So, besides us I think there are a couple smaller universities that are also preparing these transitions. It's a hard thing to do because things change so quickly and it's hard for faculty to keep up and we want to deliver up to date content to students and it's extremely difficult. My content changes by at least a third from year to year, so I have prepare new slides, new assignments, new labs, get more infrastructure. It's very exciting, but also very challenging and so, we hope that our students are built to embrace change, prepare for it and not oppose it. >> I think it's a great mission, you know, but not only does you know, the technology and the business need to work close together but we know that the only constant in our industry is change. - [Carlos] Yes. So being prepared for, as a workforce, to be able to, you know, live in that and thrive in that environment is so critically important. Carlos, thank you so much for sharing with us, you know, the curriculum at Syracuse and, you know, we look forward to catching up with you in the future. >> Thank you. >> All right we'll be back with lots more coverage, I'm Stu Miniman, John Furrier is also in the house, it's our two days live coverage here from AnsibleFest 2019. Atlanta, thanks for watching theCube.

Published Date : Sep 25 2019

SUMMARY :

brought to you by Red Hat. for the first time, getting to talk to a number of the All right, so Syracuse, the snow belt hasn't hit yet for about what you know, you do, the programs you work on, and and all that's required now a days to manage and do that, but you know, whatever programming language So the idea is to have this kind of and plus the business side as I mentioned, Okay, one of the things that was, you know, and the demands for businesses to respond to these changes you know when you talk about working with the business more technology-oriented but you have to be, So the idea is that they can speak the same language and having infrastructure deliver goals in the future. by the announcement. Anything particular that you know caught your eye on that? so now you have the story of you know, what I'm doing, you know, it's getting the time to actually innovate, to be creative, that it's going to be, you know, massive, you know, job, how you do to the enterprise you know, have been or are looking to take away and approach to some of our assignments at least at the networking in the same traditional manner, you know, the curriculum at Syracuse and, you know, we look forward to I'm Stu Miniman, John Furrier is also in the house,

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Cameron Mirza, University of Bahrain | AWSPS Summit Bahrain 2019


 

>> from Bahrain. It's the Q covering AWS Public sector Bahrain, brought to you by Amazon Web service, is, >> But we are here. The Cube in Bahrain, Middle East for Amazon Web service is some of our second year were cloud computing and their region of couple availability zones are up and running. Big news with Amazon got our next guest. Here's Cameron Years as head of strategy at the University of By Rain. You guys big news announcing a degree bachelor's degree in cloud computing? Yeah, a certificate one year that is gonna rapidly put new talent in the market. Congratulations. Thank you. Thank you. >> Thank you so much. We're really excited by this announcement today on Dhe. What's exciting about it is Ah, first of all, it's the first cloud computing degree in the Middle East on the other. The other element to this is that the the students suits from any background. Any discipline can get a really good understanding about cloud technology for the certification because the challenges we face in the region right now are we don't have enough skilled tech talent on we don't have enough skill talent to fill the jobs are available in the region. This is not just a regional thing is you know this is a global issue on universities. Have Thio adapt, be a bit more forward thinking live in the future. And we feel really optimistic with our partnership with Amazon today that we can actually fulfill the needs off public sector employers, entrepreneurs, governments throughout the region. And that's the exciting thing >> for us. I mean, let's just take a minute to explain the two components. One's a four year degree, one when you just give a little quick DT on ongoing questions. >> So I need a four year back to the program is gonna be delivered in a very different wave in the traditional academic program is gonna be heavily integrated with the needs of employers, so employees are gonna be really involved in curriculum design. We like them to be part of a teacher faculty as well. The way that the program will be delivered will be very much in a kind of project based way. So it's about developing not just knowledge, but the skills, competency values mindset required to be successful in the 21st century. That's exciting. Think about it, and of course, you know, looking at some of the detail behind the curriculum you're looking at networking, security, machine learning, artificial intelligence, big data. So the fact that this cloud base is actually just a small component to what it opens up in terms of broader skill sets >> I mean, one of the things that we always comment here on the Cube as we cover Amazons reinvent their big annual conference. And the joke is how many more announcement's gonna make this year a tsunami of new things coming. So certainly it's tough to keep up. Many people say that, but for the young people in school, this is relevant stuff. This is like pathway to success. Yeah, job making some cash, making some money, get that's what the purpose of education is. >> Well, I think I think there's a couple of That's a great point. The first thing is, education systems now need to live in the future. Living in a current or in many cases, the past is no acceptable. So it means it means taking some sort of calculated risk. But we're very clear in terms of the direction of travel with regard to technology in the future, jobs The reality is today. But 2/3 of the world's population already needs re Skilling. Those are the challenges we face today. Young people are purpose driven. They know where the where jobs are gonna be. They want to work for themselves. You know, they understand far better than anyone else where the way the future is unraveling do they >> understand how relevant this is? I mean, that's pretty obvious. We're in the industry. Yeah, we kind of obviously known you've been part of you are getting that This is wave. This wave is not gonna end for a while. This is gonna be a great upward migration for opportunity. You know, it's still learning on the young kids part. >> I think I think I think sometimes in education we do a disservice to young people. They're so well informed they understand the market, the trends, the way the technology shaping the future on reality is that what student learns in year one of the university, 50% and acknowledge will be obsolete by the time they graduate. So the focus is no just around giving him a degree. This is also about Skillet Re Skilling and upscaling. People have graduated people in the workforce. So this is a far wider opportunity, even just young people. Well, >> I'll tell you, one thing that gets my attention is that this reminds me of theeighties glider science because I got a degree. I was a freshman. 1983 was just at the beginning of the operating systems movement. Lennox was even around yet Units was just emerging on the scene and was interesting what we learned as building blocks with operating systems and that becoming obsolete in the sense that we don't use it anymore. But coding still happen. So this is had scaled to it with Amazon. You got okay. Easy to industry. Yeah. Now you got He's mentioned machine learning at Lambda Functions server lists. Yep. I'm so much more stuff there for a variety of jobs. >> I think this is just the tip of the iceberg. And I think for us, the way that education is evolving is that we we really believe that education will be more modular, as you say, credentials based, um lifelong on the channel. So some of it will be hands on. Some would be through other channels on competency base, and I think that's the thing. I think competency for us is about the kind of mobilization of the knowledge, your skills, the values attributes. And that's the bit it's gonna add. Value Thio economies throughout >> the world. So had a strategy. You gotta look at the chessboard in the future. You mentioned I live in the future. Yeah. What are some of the feedback you've gotten as you talk to folks in the industry when you roll this out? Um, doing some press interviews? I know you've had some feedback. What's the what's the general sentiment right now? >> Really excited. I think that we talk to employees all the time. We talked to sm easy. You talk to big players like Amazon. I think that in the in the region, I think when we talk about the scale of disruption, I think well, the way we talk about it in U. S. Or Europe is very different to the way we talk about it. I think the Middle East region, like Mellie developing parts of the world still playing catch up on old there. But what you'll find is once they've caught up, the adoption rates go through the roof and then that's that's the challenge for us. Because you know what? We see the uptake. Now we see the update every year growing and growing. And now the next challenge is moving into government, moving into the private sector on upscaling and re Skilling, though. So we're just at the start of this kind of huge opportunity. John and I see it being, you know, exponentially over the next five years. You >> know, it's interesting. I live in San Francisco, Bay Area and Silicon Valley. Invalid. We'll tow you. See what Berkeley's doing. Stand up for you. If you look at Berkeley in particular, number one classes are the data science class and the CS intro. Yeah, I mean, they're kind of hybrids, basically, is all cloudy? Do anything with coding. It's gonna be cloud based, right? Um, and seal, who's the deputy Group CEO? Banky, ABC. I just interviewed earlier today. He said, Aye, aye. He thinks is the biggest thing that's gonna happen. So it's not just racking and stacking standing up infrastructure with Amazon, although great to learn that it will be nerds. Geeks do that. There's a huge machine learning a I field. Yeah, I think that's gonna be something. Is head of strategy. You gotta keep your eye on the prize. They're absolutely What's your view on that? How do you see that happening? >> I think you're right. I think only CD of recently released some doctor to say that over 20% of jobs will be automated as a result of their arrive in the next few years. I think our role is to prepare young people regardless of what they're studying. Fool. Aye, aye. On the impact of machine learning. So I'll give an example. Medicine. You can make a diagnosis now for a patient diagnosis in a fraction of a second compared to what we used to be able to buy using I. Now the reality is that although I all I can give you that information you as a patient, one a robot to give you that diagnosis, right? So our job, I think, is to look at the skills that will define what defines us as human beings away from robots. And that's empathy. That's the stuff around building, building connections around team, working around collaboration. And actually those are the things the education systems of a designed not to deliver. So our job now is by embracing these types of new program is it is. It is to start to work on those softer skills on Prepare this generation of shooting for the for the A. I will that we're moving into >> camera, and I was so excited for your opportunity. Computer science cloud >> all kind, bundle >> together and software is powering this new job. As we say, it's the keys to the kingdom. In this case, it could be the keys to the kingdom. >> Well, I think for us as the national university on for many Ah, not just Bahrain. But for many developing an emerging countries around the world, this is far greater than just technology. Or create Jarvis's about sovereignty. Because if you look at many countries, they import talent. They have to import hardware, software, computers and things imported. This is a great opportunity to help create a workforce but actually flips it on its head. Becomes the innovators, becomes the job creators. So that's the exciting thing for us. It really is >> a generational accident. This is an opportunity for the younger generation to literally take the keys to the kingdom. Absolutely absolutely thanks so much for coming. Thank you. Thank you. Telling cube coverage here by rain Middle East AWS Summit. I'm John Feehery Stables for more coverage after this short break.

Published Date : Sep 15 2019

SUMMARY :

from Bahrain. It's the Q covering AWS the University of By Rain. the challenges we face in the region right now are we don't have enough skilled tech talent on I mean, let's just take a minute to explain the two components. So the fact that this cloud base is actually just a small component to what it opens I mean, one of the things that we always comment here on the Cube as we cover Amazons reinvent their big annual Those are the challenges we face today. You know, it's still learning on the young kids part. I think I think I think sometimes in education we do a disservice to young people. in the sense that we don't use it anymore. And I think for us, the way that education is evolving is that we we You gotta look at the chessboard in the future. the way we talk about it. data science class and the CS intro. I. Now the reality is that although I all I can give you that information you camera, and I was so excited for your opportunity. In this case, it could be the keys to the kingdom. So that's the exciting thing take the keys to the kingdom.

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Sameera Mohammed Al Atawi, American University of Bahrain & Huda Ahmed Mohsen | AWSPS Summit Bahrain


 

>> From Bahrain, it's the Cube. Covering AWS Public Sector, Bahrain. Brought to you by Amazon Web Services. >> Everyone welcome to the Cube here in Bahrain, for AWS in the Middle East, Manama Summit. I'm John for the Cube coverage. It's cloud computing, new Amazon region, a lot of innovation. But two great guests we have, Huda Ahmed Mohsen, who's the Chief of Information Technology and the Ministry of Information and Authority. Welcome to the Cube. And Sameera Mohammed Al Atawi. You are the Information and Communication Technology Director at the American University in Bahrain. Thank you for coming on. >> Thank you so much for having me here. >> Great to have you on. The ministries are mandated to move to the cloud, Huda, so we know what's coming for you, 2020. The goal is cloud first in Bahrain. We covered this last year. How's that going? On plan? >> It is on plan and is in the process. We start in November 2017. We start our journey with the clouds. We start moving our load smoothly. We're planners. Face a lot of challenge in the beginning, of course, as all of the ministries. Then with help the IGA with our governments, we move smoothly. I think now we reach a good position that we can reach our vision in Salah. >> Well, it's great that the government in Bahrain has a mandate for all the ministries to move to the cloud. I have to ask you, share with the folks watching, why the move to the cloud? What was the big reason why the cloud first was in place? >> See, technology's moving fast now, and the speed and security and the availability is very important to us as a ministry, especially for ministry information. That's why we decide, and as a government, vision, of course, we did decide to move to the cloud. >> A lot of integration from the old way to the new way. What are some of your observations between the two? >> Of course, a lot of changing, a lot of difference, because if you need to just establish any projects in an a normal way, how much time you will have spent, and how much resources you will have spent? And a cloud, you can just imagine. It is with a click. >> Sameera, you're in a new role. Talk about your new role where you were before. This is not new to you, the cloud. You've had your toe in the water before. You've been playing around with the cloud. Now with the American University in Bahrain, full steam ahead, a lot of pressure, lot of need, desire? >> I think, yes, it is not new for me. I'm in the IT field like know for ages. I wouldn't say the years. But then, yes, it's not new, but in Bahrain polytechnic we are having the same journey, like migrating to the cloud. It's a new challenge in the American University of Bahrain. It's a new startup, entrepreneur university. But then the interesting thing that I have joined them like three weeks ago and now the IT is up and running within two weeks. So with the help of the cloud and AWS, our servers now all up and running. By the way, this is our first day in school. So our students there just taking their formal classes as per today. So this is a very proud moment. >> And the servers are on the cloud, powering everything? >> Yes, we have more data on the cloud at the moment, and we have also 5365, and we have our ERPC Stem, as well. It's all in the cloud. So within two weeks, that's an amazing story to be told. >> Versus the old way was months, years? >> Well, actually, it's for every institution there are some challenges and there are some pros and cons, but I think the most beautiful thing about Bahrain polytechnic that everybody was working as a team and we understand each others issues. So regardless the time, there always been a support and faith and trust in IT just to deliver the organization mission and vision. This is the same with the American University of Bahrain. There is a huge trust and faith in IT that they will derive the trust formation, or the change to the future. Ironically, the future's here. >> Yeah, and the cloud region is beautiful out here. The impact academic is something that we're going to be watching closely, because the training is coming too. We're seeing that in the announcements here around a cloud computing degree, more skill development. But I have to ask you from a business standpoint in the academic area, what's the main use cases for cloud? Is it the curriculum? Is it the operations? What is some of the key cloud areas you're innovating on? >> Very interesting question. I think we have like a blend of use cases. We have the operational use cases, and we have the academic use cases as well. I mean, the most important for us is in the university is the academic. Now how we can empower our students to face the challenges of the future and the market demand. So we are sensing a lot of interest about the artificial intelligence, robotics, big data, and this morning when I was just scrolling down the menu of AWS, I've been seeing this a lot. So how we can imbed this technology or the reading material like an AWS educate in our courses and material, versus the operational use cases, how we can deliver the business objective in an entire mode and in a most efficient way. You know, like in university, we have so much critical time that we don't afford losing IT, like exams, posting grades, even for our students graduation projects. It's become easier and easier for the business, however with the aid of IT. >> And the agility is very important because the expectation from the students is high. >> It's way high. I mean, the expectation and the use is already there. So, not like before, not like my age, you know, like students, they get to introduce technology when they got to the university. Now all of our students, they already know and use the technology before they join. >> Huda, talk about the ministry, because you guys on the government side, very progressive, doing new things. You got Amazon's region here, which is going to create a revitalization. You're in the middle of it. What are some of your observations on the things that are going on that are new for you guys that are a positive? >> Seeing now a cloud maybe as a ministries and as a government project, the most new thing that we get that the new environment. This is totally new environment. You know if you just have any new thing or any new environment, you have resistance from everyone, because it's a new thing. >> People fear change. >> Yes. >> They don't want to change. >> Of course. Even sometimes the change is good, but this is the mentality of people to resist a change. As a government because we have one vision, which is all the ministries working within this vision. We really plan it well, I think. And we do it well. As you see now in Bahrain, the time that they establish the cloud until now, you can see how many projects in the process, how many project already done. >> You know, cultural change, we cover this. We go to hundreds of events. We cover all around the world, mostly in the United States, but culture's number one. People always want to push back against change. However, the benefits that you were pointing out, Sameera, are undeniable. Two weeks, talk about standing up critical infrastructure for whether it's curriculum or for services for citizens. It's hard to debate, to justify the old way. It's pretty hard. (chuckles) Maybe some political in there, but, I mean, ultimately, the proof is there. That has to be factored in. How do you guys do that? Do you just show people the data? Look what we did. Is that how you get things through? Is it more cultural? >> I think we just discuss in a panel about even let's talk about only the part of the financially thing. Before I was in IT, if you want to just make anything, and data sent out on any projects, how much time you will have spent to bring the devices, to bring the servers, to connect it, to do it. How much time you will have spent, even in the financially procedures, as a government, of course? Now it is, if you have any problem or any projects, you just by click finish it and done. >> I'm very impressed with Iran, second year the Cube's been here. The things we've talked about last year have been executed. They're executing. The region's up and running. The cryptocurreny is in place. We covered that just now. We're going to hear about some curriculum for degrees. But last year, you mentioned the panel. You guys were just on the AWS We Power Tech. Last year, Teresa Cross hosted a big breakfast, and I was lucky enough to attend that. I actually got kicked out of my seat, because with so many women that wanted to sit down, I happily gave up my seat for that. It was a packed house. Women in tech is very real and growing. You guys were just on a great panel talking about this. What was going on in the panel? What was the key topic? >> Well, actually, the key topic is celebrating women in IT. And I think women now they are flourishing in the IT field. We're showing lots of power and strength. Also I think women in nature, we are dealing with problem solving like in a natural way, as well as team buildings. So it comes with our genes. On top of that, the technical power and the technical thinking and the experience in the IT field, of course it adds a lot of confidence when we are presenting our plans. And we see that society is welcoming the woman workforce in IT field more and more every day. So I think this is something that we should celebrate and we should put a lot of highlight on it. Knowing that the value of woman is really growing. >> You were just talking about the time change, how things are faster. Things are getting done much faster, so things are accelerating, and combined with more job openings, more roles are opening. It's not just coding. It's creative, design thinking. So you're seeing a surface area of opportunities. Huda, you're seeing this as well in the government. This is a bigger field now. Your thoughts on how you see the panel. >> Yes, but maybe Sameera will have more experience in this area. >> On the skill gaps question that comes up a lot, there's so many job openings coming. There's a region here, there's entrepreneurs and startups. What are some of the new skills that folks are trying to learn? What do you guys think? >> Well, actually on that, coming from an educational field, we know that cloud computing is like number one set of skills that is on demand for the coming few years. But again, knowing that, it will be as essential as we should not think about it. It just will be transforming as a very catalyst. The way that we're thinking of electricity. At the beginning it was a big deal. Later on, it just there, and it has to be there for us to move as a society, for us to move as an economy. Then we're moving to the real things as, for example, blockchains and we're talking about artificial intelligence. And the technology itself is just not as important unless it has some feed in the economy development or in the society change. So I think this is how we can see that happening. >> So overall, you both think that cloud computing is going to revitalize the area? >> Definitely. >> Of course. >> Definitely, in a big way. I mean, the market, the first skill set is looked at in the IT field and is how many training, how many certificates have you taken in cloud computing? On top of that, robotics, big data, but the most important thing, how to make the technology benefit the citizens. In our case, the students, how we can deliver our classes in a better way. How we can transform the business of university from on campus to study from anywhere. Though we have a very amazing campus in American University of Bahrain. >> Looking forward to covering you guys. Final question for you guys. What's next? What do you guys have coming up in this next year? A lot of activities? What are the goals? What are some of the things you're trying to accomplish? >> Our next thing that we are planning to complete on this cloud project, to shift all our environment to the cloud to success in this, and to implement it in a good way that we can really use it in a good way, because you know, sometimes you will see the cloud and do lose it, but you cannot use it and really benefit way that you can get all the benefit from it. So it show our religion now and our next step to use it inventory. >> I think for us and the American University of Bahrain, we had yesterday an amazing meeting with Teresa, and having our CEO, Dr. Susan in the meeting as well. And I think there is a lot of great anticipation of what we can do together. So something that is put on the table that we want to sort of strengthen this relationship in terms of integrating our courses with AWS, as well as looking forward for new opportunities like training and certificate in the field and so forth. >> This is super exciting, benefits the citizens, students, new educational opportunities, new jobs, new services, whole new oasis. >> I think this is all, it's all about... >> The cloud oasis. This is the Cube coverage. We are here in Bahrain for AWS Summit here. I'm John Furrier, be back with more after this short break.

Published Date : Sep 15 2019

SUMMARY :

From Bahrain, it's the Cube. for AWS in the Middle East, Manama Summit. Great to have you on. Face a lot of challenge in the beginning, of course, has a mandate for all the ministries to move to the cloud. and security and the availability is very important to us A lot of integration from the old way to the new way. in an a normal way, how much time you will have spent, This is not new to you, the cloud. It's a new challenge in the American University of Bahrain. It's all in the cloud. This is the same with the American University of Bahrain. What is some of the key cloud areas you're innovating on? We have the operational use cases, and we have And the agility is very important because the expectation I mean, the expectation and the use is already there. Huda, talk about the ministry, because you guys a government project, the most new thing that we get the cloud until now, you can see how many projects However, the benefits that you were pointing out, even in the financially procedures, But last year, you mentioned the panel. in the IT field, of course it adds a lot of Your thoughts on how you see the panel. in this area. What are some of the new skills that folks of skills that is on demand for the coming few years. In our case, the students, how we can deliver our classes What are some of the things you're trying to accomplish? get all the benefit from it. So something that is put on the table that we want to benefits the citizens, students, new educational This is the Cube coverage.

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Lisa Ehrlinger, Johannes Kepler University | MIT CDOIQ 2019


 

>> From Cambridge, Massachusetts, it's theCUBE, covering MIT Chief Data Officer and Information Quality Symposium 2019. Brought to you by SiliconANGLE Media. >> Hi, everybody, welcome back to Cambridge, Massachusetts. This is theCUBE, the leader in tech coverage. I'm Dave Vellante with my cohost, Paul Gillin, and we're here covering the MIT Chief Data Officer Information Quality Conference, #MITCDOIQ. Lisa Ehrlinger is here, she's the Senior Researcher at the Johannes Kepler University in Linz, Austria, and the Software Competence Center in Hagenberg. Lisa, thanks for coming in theCUBE, great to see you. >> Thanks for having me, it's great to be here. >> You're welcome. So Friday you're going to lay out the results of the study, and it's a study of Data Quality Tools. Kind of the long tail of tools, some of those ones that may not have made the Gartner Magic Quadrant and maybe other studies, but talk about the study and why it was initiated. >> Okay, so the main motivation for this study was actually a very practical one, because we have many company projects with companies from different domains, like steel industry, financial sector, and also focus on automotive industry at our department at Johannes Kepler University in Linz. We have experience with these companies for more than 20 years, actually, in this department, and what reoccurred was the fact that we spent the majority of time in such big data projects on data quality measurement and improvement tasks. So at some point we thought, okay, what possibilities are there to automate these tasks and what tools are out there on the market to automate these data quality tasks. So this was actually the motivation why we thought, okay, we'll look at those tools. Also, companies ask us, "Do you have any suggestions? "Which tool performs best in this-and-this domain?" And I think this study answers some questions that have not been answered so far in this particular detail, in these details. For example, Gartner Magic Quadrant of Data Quality Tools, it's pretty interesting but it's very high-level and focusing on some global windows, but it does not look on the specific measurement functionalities. >> Yeah, you have to have some certain number of whatever, customers or revenue to get into the Magic Quadrant. So there's a long tail that they don't cover. But talk a little bit more about the methodology, was it sort of you got hands-on or was it more just kind of investigating what the capabilities of the tools were, talking to customers? How did you come to the conclusions? >> We actually approached this from a very scientific side. We conducted a systematic search, which tools are out there on the market, not only industrial tools, but also open-sourced tools were included. And I think this gives a really nice digest of the market from different perspectives, because we also include some tools that have not been investigated by Gartner, for example, like more BTQ, Data Quality, or Apache Griffin, which has really nice monitoring capabilities, but lacks some other features from these comprehensive tools, of course. >> So was the goal of the methodology largely to capture a feature function analysis of being able to compare that in terms of binary, did it have it or not, how robust is it? And try to develop a common taxonomy across all these tools, is that what you did? >> So we came up with a very detailed requirements catalog, which is divided into three fields, like the focuses on data profiling to get a first insight into data quality. The second is data quality management in terms of dimensions, metrics, and rules. And the third part is dedicated to data quality monitoring over time, and for all those three categories, we came up with different case studies on a database, on a test database. And so we conducted, we looked, okay, does this tool, yes, support this feature, no, or partially? And when partially, to which extent? So I think, especially on the partial assessment, we got a lot into detail in our survey, which is available on Archive online already. So the preliminary results are already online. >> How do you find it? Where is it available? >> On Archive. >> Archive? >> Yes. >> What's the URL, sorry. Archive.com, or .org, or-- >> Archive.org, yeah. >> Archive.org. >> But actually there is a ID I have not with me currently, but I can send you afterwards, yeah. >> Yeah, maybe you can post that with the show notes. >> We can post it afterwards. >> I was amazed, you tested 667 tools. Now, I would've expected that there would be 30 or 40. Where are all of these, what do all of these long tail tools do? Are they specialized by industry or by function? >> Oh, sorry, I think we got some confusion here, because we identified 667 tools out there on the market, but we narrowed this down. Because, as you said, it's quite impossible to observe all those tools. >> But the question still stands, what is the difference, what are these very small, niche tools? What do they do? >> So most of them are domain-specific, and I think this really highlights also these very basic early definition about data quality, of like data qualities defined as fitness for use, and we can pretty much see it here that we excluded the majority of these tools just because they assess some specific kind of data, and we just really wanted to find tools that are generally applicable for different kinds of data, for structured data, unstructured data, and so on. And most of these tools, okay, someone came up with, we want to assess the quality of our, I don't know, like geological data or something like that, yeah. >> To what extent did you consider other sort of non-technical factors? Did you do that at all? I mean, was there pricing or complexity of downloading or, you know, is there a free version available? Did you ignore those and just focus on the feature function, or did those play a role? >> So basically the focus was on the feature function, but of course we had to contact the customer support. Especially with the commercial tools, we had to ask them to provide us with some trial licenses, and there we perceived different feedback from those companies, and I think the best comprehensive study here is definitely Gartner Magic Quadrant for Data Quality Tools, because they give a broad assessment here, but what we also highlight in our study are companies that have a very open support and they are very willing to support you. For example, Informatica Data Quality, we perceived a really close interaction with them in terms of support, trial licenses, and also like specific functionality. Also Experian, our contact from Experian from France was really helpful here. And other companies, like IBM, they focus on big vendors, and here, it was not able to assess these tools, for example, yeah. >> Okay, but the other differences of the Magic Quadrant is you guys actually used the tools, played with them, experienced firsthand the customer experience. >> Exactly, yeah. >> Did you talk to customers as well, or, because you were the customer, you had that experience. >> Yes, I were the customer, but I was also happy to attend some data quality event in Vienna, and there I met some other customers who had experience with single tools. Not of course this wide range we observed, but it was interesting to get feedback on single tools and verify our results, and it matched pretty good. >> How large was the team that ran the study? >> Five people. >> Five people, and how long did it take you from start to finish? >> Actually, we performed it for one year, roughly. The assessment. And I think it's a pretty long time, especially when you see how quick the market responds, especially in the open source field. But nevertheless, you need to make some cut, and I think it's a very recent study now, and there is also the idea to publish it now, the preliminary results, and we are happy with that. >> Were there any surprises in the results? >> I think the main results, or one of the surprises was that we think that there is definitely more potential for automation, but not only for automation. I really enjoyed the keynote this morning that we need more automation, but at the same time, we think that there is also the demand for more declaration. We observed some tools that say, yeah, we apply machine learning, and then you look into their documentation and find no information, which algorithm, which parameters, which thresholds. So I think this is definitely, especially if you want to assess the data quality, you really need to know what algorithm and how it's attuned and give the user, which in most case will be a technical person with technical background, like some chief data officer. And he or she really needs to have the possibility to tune these algorithms to get reliable results and to know what's going on and why, which records are selected, for example. >> So now what? You're presenting the results, right? You're obviously here at this conference and other conferences, and so it's been what, a year, right? >> Yes. >> And so what's the next wave? What's next for you? >> The next wave, we're currently working on a project which is called some Knowledge Graph for Data Quality Assessment, which should tackle two problems in ones. The first is to come up with a semantic representation of your data landscape in your company, but not only the data landscape itself in terms of gathering meta data, but also to automatically improve or annotate this data schema with data profiles. And I think what we've seen in the tools, we have a lot of capabilities for data profiling, but this is usually left to the user ad hoc, and here, we store it centrally and allow the user to continuously verify newly incoming data if this adheres to this standard data profile. And I think this is definitely one step into the way into more automation, and also I think it's the most... The best thing here with this approach would be to overcome this very arduous way of coming up with all the single rules within a team, but present the data profile to a group of data, within your data quality project to those peoples involved in the projects, and then they can verify the project and only update it and refine it, but they have some automated basis that is presented to them. >> Oh, great, same team or new team? >> Same team, yeah. >> Oh, great. >> We're continuing with it. >> Well, Lisa, thanks so much for coming to theCUBE and sharing the results of your study. Good luck with your talk on Friday. >> Thank you very much, thank you. >> All right, and thank you for watching. Keep it right there, everybody. We'll be back with our next guest right after this short break. From MIT CDOIQ, you're watching theCUBE. (upbeat music)

Published Date : Jul 31 2019

SUMMARY :

Brought to you by SiliconANGLE Media. and the Software Competence Center in Hagenberg. it's great to be here. Kind of the long tail of tools, Okay, so the main motivation for this study of the tools were, talking to customers? And I think this gives a really nice digest of the market And the third part is dedicated to data quality monitoring What's the URL, sorry. but I can send you afterwards, yeah. Yeah, maybe you can post that I was amazed, you tested 667 tools. Oh, sorry, I think we got some confusion here, and I think this really highlights also these very basic So basically the focus was on the feature function, Okay, but the other differences of the Magic Quadrant Did you talk to customers as well, or, and there I met some other customers and we are happy with that. or one of the surprises was that we think but present the data profile to a group of data, and sharing the results of your study. All right, and thank you for watching.

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Dr. Amanda Broderick, University of East London | AWS Imagine 2019


 

(upbeat music) >> Narrator: From Seattle, Washington it's theCUBE. Covering AWS Imagine. Brought to you by Amazon Web Services. >> Hey, welcome back everybody, Jeff Rick here with theCUBE. We're at AWS Imagine, it's a show all about education. That's whether it's university, K to 12, community college, post-military service. Amazon is very, very committed to education market. It's part of the public sector group underneath Teresa Carlson. This is the second year of the conference. We're excited to be back, and really some interesting conversations about how does education move forward. 'Cause it doesn't necessarily have the best reputation for being the most progressive industry out there. So we're excited to have our next guest all the way from London, she's Dr. Amanda Broderick, the Vice-Chancellor and President of the University of East London. Welcome. >> Thank you very much. Thank you, very nice to meet you. >> Absolutely, so first off before we get into it, just kind of your impressions of this event, and kind of what Amazon is doing. Teresa did the keynote today, which is not insignificant. She's a super busy lady, and kind of what does this ecosystem, these resources, this kind of focus, do for you as an educator? >> The main reason that we're working with AWS in such a significant way is actually because of our genuine values alignment. Institutionally, those core priorities are really where we want to go as an organization. And for me this conference, this summit, has been an opportunity to share best practice, to innovate, to truly explore the opportunity to disrupt for ultimately, the end goal. Which is about the education, the development of our next generation, and the support of talent development for the future. >> But unfortunately, a lot of times it feels like institutions put the institution first, and we're seeing a lot of conversations here in the US about these ridiculously crazy, large endowments that sit in piles of money. And is the investment getting back to the students? Are we keeping our eye on the ball? That it's the students that need the investment, not all the other stuff, all the other distractions, that get involved in the higher education. >> I suppose that is where the University of East London is fundamentally different. Core to our mission is driving social mobility, and as such we have to be absolutely clear what those learner outcomes are, and they are about being able to access and accelerate in their careers, and indeed in their lifelong learning to enable them to progress in portfolio careers. >> Right, so it's interesting ahead the three topics for this shows is tomorrow's workforce, which we've talked a lot about the education. The role of ML, which I think is interesting that it got its own bullet. Just because machine learning is so pervasive, and software, and doing lots of things. And the one that that struck me is the effort to have higher predictability on the success of the student, and to really make sure that you're catching problems early, if there is a problem. You're actually using a lot of science to better improve the odds of that student success. A lot of conversation here about that topic. >> Absolutely, absolutely, and that machine learning approach is one of the key dimensions in our relationship with AWS. And this is not just about the student outcomes around continuation, engagement, progression, student success, but actually for the University of East London, it's also been about the identification of students at risk. So we fundamentally believe that health gain is a precondition of learning gain. Particularly important for an institution like ours that is so socially inclusive, and therefore what we're doing, we're actually one of ten institutions that have been funded by the government and working in partnership with AWS as a pilot to share best practice across the UK as a whole, is to identify the proxies. For example, mental health issues, to be able to signpost and traffic light the sign posting to areas of support and to be able to direct prevention, intervention and postvention strategies to those students at risk. And that project is actually a key area of our partnership development with AWS. >> And how long has that been going on? We talked it a little bit about it before we turn the cameras on, and it just seems so foundational to me that without putting in that infrastructure for these kids, regardless of their age, their probability of success on top of that, without a good foundation is so much less. So when did this become a priority? How are you prioritizing it? What are some of the really key measures that you're using to make sure that you're making progress against this goal? >> Absolutely, so the university has made good progress in terms of the fundamental issues of identifying where the correlations and the causations are between both physical and mental health and well-being, and outcomes. What we haven't been able to do at this point is the scalability of this issue, and that's really where this pilot project, which has literally been announced in the last couple of weeks, that we're working very closely with AWS in order to convert that core foundational research and development into scalable solutions. Not just for my own university, but actually for the sector as a whole. >> Right, so we talked about academic institutions, maybe not necessarily have the best reputation for innovation, especially kind of old storied ones with old ivy plants growing up old old brick walls. Is this a new kind of realization of the importance of this? Is this coming from maybe some of the more vocational kind of schools, or is it coming from the top? Do they realize that there's more to this than just making sure people study, and they know what they're doing when they turn in their test and get their paper in on time? >> It's both a top-down and bottom-up approach. It's fundamental to the University of East London. It's new ten year strategy vision 2028. Health gain is that precondition of learning gain. It's fundamental to the realization of our learner's success. But also it's come from a groundswell of the research and development outcomes over a number of years. So it's absolutely been the priority for the institution from September 2018, and we've been able to accelerate this over the last few months. >> So important. Such important work. Flipping the point a little bit on to something a little lighter, a little bit more fun, it's really innovation on the engagement with the students around things like mobile. We've had a lot of conversations here about integrating Alexa, and voice, and competing with online, and competing with other institutions, and being a little bit more proactive in engaging with the customer as your students. I wonder if you can share some thoughts as to how that has evolved over time. Again, you've been in the business for a while, and really starting to cater and be innovative on that front end, versus the back end, to be more engaging and help students learn in different ways. Where they are in little micro segments. It's a very different kind of approach. >> It absolutely is and one of our four major facilitating transformation projects, it's called our digital verse project, and that is across all of our activities of an institution, in terms of business transformation, our particular priority is prospect engagement, and how we actually convert our potential learners in more effective ways. Secondly, enhancing deeper learning, and how we then produce better learner outcomes. Thirdly, how we develop access to new ways of educational provision, 24/7 global access. And fourthly, how do we connect with employers in partnership to make sure that we get those challenges around pre-selection recruitment strategies, and we're unable to get the students, our learners, into careers post graduation. >> Right, and then what's the kind of feedback from the teachers and the professors? They have so much on their plate. Right, they've got their core academic research that they're doing, they're teaching their students, they've got a passion around that area. I always tell people it's like driving in the car in the snow at night with your headlights on, right. Just like all types of new regs that are coming in and requirements and law, and this that and the other. Now we're coming in with this whole four point digital transformation. Are they excited, are they overwhelmed, are they like finally, we're getting to do something different? I mean what's the take within the academics, specifically in your school? >> I think the answer to that is all of the above. >> All of the above. >> It really reflects the classic adoption curve. So you do have the innovators, you have the early adopters, and then you also have the laggards at the other end. And an often actually, the most traditional academics that have been doing things for many, many years, who are very set in their ways, if you expose them to new opportunities, new experiences, and actually provide them with the tools to innovate, they could be some of the best advocates for the transformation and we've certainly found that to be the case. >> Good, well Amanda, thanks for taking a few minutes of your time, it sounds like they're going to start the dancing here behind us soon. So I think we'll have to leave it there, but I look forward to seeing you sometime in London. >> Thank you very much. >> Alright, she's Dr. Amanda Broderick, I'm Jeff Rick, you're watching theCUBE. We're at AWS Imagine in Seattle. Thanks for watching we'll see you next time. (upbeat music)

Published Date : Jul 10 2019

SUMMARY :

Brought to you by Amazon Web Services. of the University of East London. Thank you very much. and kind of what Amazon is doing. and the support of talent development for the future. And is the investment getting back to the students? and they are about being able to access and accelerate is the effort to have higher predictability is one of the key dimensions in our relationship with AWS. and it just seems so foundational to me is the scalability of this issue, maybe not necessarily have the best reputation But also it's come from a groundswell of the research and really starting to cater and be innovative in partnership to make sure that we get those challenges in the snow at night with your headlights on, right. found that to be the case. the dancing here behind us soon. Thanks for watching we'll see you next time.

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