Colin Chatelier, Rabobank | VeeamON 2019
>> Live from Miami Beach, Florida it's the CUBE covering VeeamON 2019 brought to you by Veeam. >> Welcome back to Miami everybody, you're watching the CUBE the leader in live tech coverage as we go out to the events and we extract the signal from the noise, this is day one of VeeamON 2019 the CUBE's third year covering Veeam first year we were in New Orleans, last year Chicago, very cool and hip location here at the Fontainebleau Hotel, I'm Dave Vellante with my co-host Peter Boroughs. Colin Chatelier is here, he's the manager of storage and compute for Europe at Rabobank, Colin thanks for coming on the CUBE it's good to see you. >> Yeah glad to be here. >> So tell us about Rabobank, what are you guys all about? >> Okay, so Rabobank is obviously a bank we have two main focuses, first of all we're trying to be the biggest high street bank in the Netherlands, biggest retail bank in the Netherlands and we've got 7.3 million customers there, in an adult population of 14 million so that's not bad. And secondly the Netherlands is only of certain size and we're not going to grow it that much so the biggest part of our new business is international. And that's the bank is all focused on providing food and agriculture expertise loans, FX, spot work, anything that can help people or help businesses improve their efficiencies and get more food from spade to plate. >> So what are some of your, the drivers in your business that are affecting your technology strategy? >> Drivers in a business I guess again we've got two different parts of the bank I should probably explain, so two years ago we brought the IT of those two different parts of the bank together. >> [Dave} That's the Retail And The International? >> The retail and the international and if you think about it the international is all wholesale work, the retail is all high street banking so the retail those people really want to see their data, they want to see it on the, on the web, their check and balances, transferring pocket money to their kids and if that doesn't happen, that's a tragedy and embarrassing. So we can't be responsible for that as a result one of our watch words is always on, so we need to make sure that data is always available and we need to make sure that systems are always up for them. Part of that really is, occasionally it won't always be on so you need to be able to recover very quickly and getting a product that's simple to use for recovery and fast to recover was really part of that strategy, that's where Veeam came in. >> So when you had to merge those two IT operations, obviously it was more than the data protection side of things, but talk generally about what the challenges were but then specifically about the data protection piece. >> Okay, so bringing two IT departments together of course gives you a choice, "am I going to use product A or product B?" "Or sometimes product A and product B and not C." That gave us an opportunity to really do something that's not that common in the backup world and introduce a bit of churn, especially in retail environments, we have monthly backups, sorry especially in wholesale we have monthly backups. And those monthly backups go for anything from one year to ten years. So trying to get away from a backup product where there's ten years worth of legacy there, to recover, it's very tricky. But bringing the two banks together gave us that opportunity to say, okay well we'll invest in in a move and we really put a whole series of criteria together to try and figure out which one we were going to use. We moved from vmware and Hyper-V we're moving everything to vmware and from, we have a number of other backup products which I won't name because we're moving away from them. And Veeam was the winner there. Now, why? We needed something that would recover quickly we needed something that would scale to the enterprise, we have 13 thousand VMs being backed up today. We needed something that we could deploy reasonably quickly and without too much effort and actually when we deployed Veeam, we started off in November last year and by the end of January we were finished. Now there were a couple of thousand VMs on Veeam at that point >> Hold on, I'm sorry so it took you two months to effectively move out an old backup infrastructure and move in a new one? >> Sort of correct yes, for dailies. For monthly's we haven't touched that yet so we decide to just bite off one chunk at a time. >> Because you've got ten years of legacies with your monthly's... >> We have at least ten years, yeah >> All right but still >> That's pretty quick >> Yeah, yeah yeah >> Now what about cloud, every conference you go to you see the sign, cloud data management everything is cloud, cloud, cloud it used to be in your business, the financial services business, that cloud was an evil word >> Yeah >> Is it still? What's your clod strategy and how does data protection fit in? >> Well we have a strategy of public cloud first, that's a lot easier to do for new applications than it is for existing applications of course. So it tends to be that the existing applications are waiting for a technical refresh or are waiting for a an application re-write and new applications are going straight into the cloud. How we are protecting that, at the moment most of our data is held on prem where as a lot of our applications which can easily be refreshed and re-published is held on the cloud so we, those guys, the dev ops teams are performing their own backup, their own recovery. >> So are you able to sort of, for the on prem stuff are you trying to sort of make that cloud-like so it'll substantially mimic the cloud are you able to do that? You know, Peter you're always talking about bringing the cloud experience to your data, is that something that you're able to do or is that just sort of good marketing tagline? >> It's something that we are just starting to do again, so a year ago we had a private cloud that was just on the verge of being deployed, but we decided then that strategically we'd mothball that and encourage everybody to go to public cloud, and not confuse them with two different choices. That's proving a little difficult so one of the things that we find is development teams who are currently in the cloud can develop things with software defined infrastructure but when they try and interface with the data or with some of the systems that are on prem, then they come to a dramatic holt and they have to wait for the normal on prem processes to kick through. So what we're looking at doing now is we just started a new process or a new project an on prem, proof of concept, on prem cloud that will interact with the off prem cloud and give the cloud-like experience. So we'll see. >> So you have that challenge of agile meets waterfall and now you're trying to create some kind of equilibrium or really trying to modernize the on prem, what's the strategy there? >> Well I don't think it's agile meets waterfall I think its dev ops meets traditional process. It's and, yeah... (laughter) But how are we going to do it you say? >> Yeah, well I guess what I'm getting to is are you gong to find sort of a common ground or are you really going to try to drive that sort of dev ops mentality into the legacy process? >> We'll, continue to have a traditional or legacy, depending on what you want to call it, environment there, but we'll also have a software to find infrastructure environment on prem, if this proof of concept works, it's being built at the moment or being designed at the moment based on a vmware stack. >> What role will containers and microservices play in terms of facilitating that transformation? >> At the moment we have containers on prem which are coming with applications but we don't have a specific container platform which we're offering as a service on prem That's just where, there's containers off prem of course you know as Euro Cloud. >> Right, right, so for the on prem stuff what does that do for you and where do you see that going? >> For containers? >> Yeah >> At the moment we have a policy of not providing a container service on prem >> Oh, oh, oh, sorry, I heard wrong, sorry. Okay so that's not a direction that you're going currently? >> No but it maybe, because we're feeling our way forward I think. >> As you think about, for example banks or financial services companies have been at the Vanguard of a lot of digital business practices because you're core offering is data and how it gets used so is your overall business starting to rethink this notion of backup and restore from something that's just there to you know, make sure the data's available to becoming an essential strategic capability that can span between the two modes that you're describing but a common approach to making sure the data assets aren't compromised by vendor relationships, by application development style, by locations, is that, are you thinking in those terms of a federated approach to ensure the services on the data that you need? >> Okay well that was a very long question >> Yes >> But it's quite a short answer, yes we're thinking about it, no we haven't done it yet. So, but I think you're absolutely right, one of the problems could be for example we deploy in I don't know as your AWS, Google, and we fall out with one of those cloud providers and we try and move our backup data from provider A to provider B, is it transportable? You know, is, have we got the same policy that's been deployed in each of them so that whole thing needs to be... >> You don't want to recreate that problem that you got with those ten years of monthly backups with the new stuff too? >> Exactly, yeah yeah, we've already made that mistake. >> What are the other challenges, well but you made it for good reason, that was the state of the technology at the time and you had to have hardened processes and that was how you did it you know, ten or fifteen years ago. What are the other problems or challenges that you hear from when we talk to financial services organizations is if their data exists, they're data companies as Peter said but their data exits in hardened silos, again for good reason, you had to protect that data it was mission critical family jewels type of stuff >> Regulatory reasons >> Now as you transform into the so-called digital business everybody wants access to that data and so you've got that tough balancing act so, is that obviously a challenge for you, how are you dealing with that challenge and data protection generally was unique to each of those silos, so how are you thinking about data protection going forward in terms of busting those silos? >> Well, I don't think we've eve had silos in data protection, I think we've, our data protection has been uniform across the two banks of course >> Yeah, right. >> So now we've brought them together again, we have what, different retention characteristics, different ways of using the product. But over the last year and a half, two years we've pretty much brought in the same processes. But I don't think that any application on prem or any that will be on the private cloud or on the prem cloud will have anything different. It will use the same product, the same processes and perhaps have more access by the development teams, dev ops teams to be able to fire off their own backups at the right time. >> You're talking from a data protection perspective >> Perspective, yeah >> And then potentially other things like microservices or containers over time? >> Yeah >> Yeah, okay what's happening at the show here? Things you've learned, anything you've seen that's exciting you? Any announcements? >> Well, it's early days isn't it? It's early days so I think the, the best thing for the show so far was last night when it, going on the boat, meeting some of the other execs and sharing some experiences with them. I think, you know one of the things I always think is the best practice comes from worst experience and I don't want to have all that worst experience myself I wouldn't mind it from everybody else. (laughter) So I think you can learn more in an hour in a social situation then you can perhaps in two hours in the conference room there. >> So what are yo hearing from your peers, what are they doing, some of the challenges they're facing this digital business stuff is it real? How are they dealing with it? >> Okay, my peers, I think what they're feeling is that the traditional backup solution, the traditional backup providers are just not quick enough on their feet, agile in a real sense rather than a >> Quotes >> Quotes and marketing sense yeah, and I think the traditional providers tend to be, less grateful for the business perhaps. You know I heard about the number of new customers that Veeam are getting today but they seem to give a lot of attention to those new customers. Now deploying 13 thousand vms in a relatively short period of time we needed a lot of help from Veeam to overcome the obstacles as we hear them and they were there when we needed them and you know that makes a difference I think especially when you're protecting your data and you need to be ale to restore that data you need a partner not a vendor. >> So it's as much the relationship as the technology is what I'm hearing? >> I don't think we would get into bed with a vendor who wasn't a partner as well. >> Or in manner respects it's almost like Veeam understands how to solve the problem and their technology is a way of doing it easily, and simply, and reliably? >> Exactly yeah. >> I want to follow up on that because some of the large companies that can infer what you're talking about, they might have big established direct sales forces, meat eating guys that are in the field that just go belly to belly. You know Veeam all channel, all indirect how are they successfully partnering with you in ways that the other guys may not be with that type of go to market model? >> So we used a company called Pro*Act a reseller to buy into Veeam, I guess Veeam trained them up well because they had all the information at their finger tips and they represented us in the negotiation with Veeam, so it took away perhaps some of the conflict that you would get in an early situation. And then when we needed the direct help from Veeam, Veeam stepped up to the board and started giving that direct help and not cut out the reseller but the reseller wasn't needed anymore at that point. >> And that was help from a technology stand point or a business terms stand point or both? >> Technology, just over coming the problems, you know a big organization has got a lot of networks a lot of lans, v-lans, and we need to be able to punch holes through those v-lans so it's quite interesting to be able to be told up front where we need to punch. >> Make this work >> Yeah >> Great, all right Colin, well thanks very much for coming to the CUBE, it was great having you, give your final thoughts on Miami, you're coming in from out of town and you got the tour last night on the boat, and what'd you think and impressions of the conference? >> Well Miami first of all, it looks like a nice place to live as we cruised past all of those gigantic homes, I didn't notice anyone in them so, perhaps one's going cheap. The conference it looks good, I am always surprised by how big it is, it's my second event and yeah, they've got a hell of a lot of customers and seem to be loyal customers as well, nobody has a bad thing to say. >> Were you here in Chicago last year? >> I wasn't I was here in New Orleans >> New Orleans, yeah, two years ago, all right great well thanks very much of coming to the CUBE we appreciate it >> Thank you >> All right keep it right there everybody, we'll be back with our next guest you're watching the CUBE live from VeeamON 2019, be right back. (upbeat music)
SUMMARY :
brought to you by Veeam. the CUBE the leader in live tech coverage And that's the bank is all focused on providing explain, so two years ago we brought the IT of those The retail and the international and if you think So when you had to merge those two and by the end of January we were finished. so we decide to just bite off one chunk at a time. with your monthly's... is held on the cloud so we, those guys, are currently in the cloud can develop things But how are we going to do it you say? or being designed at the moment based on a vmware stack. At the moment we have containers on prem Okay so that's not a direction that you're going No but it maybe, because we're feeling our way one of the problems could be for example we deploy in What are the other challenges, well but you and perhaps have more access by the development teams, for the show so far was last night when it, and they were there when we needed them and you know I don't think we would get into bed with a vendor meat eating guys that are in the field giving that direct help and not cut out the reseller Technology, just over coming the problems, to live as we cruised past all of those gigantic we'll be back with our next guest
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Financial Customer Obsession
>>Welcome to the customer. Obsession begins with data session. Uh, thank you for, for attending. Um, at Cloudera, we believe that a custom session begins with, uh, with, with data. Um, and, uh, you know, financial services is Cloudera is largest industry vertical. We have approximately 425 global financial services customers, uh, which consists of 82 out of a hundred of the largest global banks of which we have 27 that are globally systemic banks, uh, four out of the five, uh, top stock exchanges, eight out of the 10 top wealth management firms and all four of the top credit card networks. Uh, so as you can see most financial services institutions utilize Cloudera for data analytics and machine learning. Uh, we also have over 20 central banks and it doesn't or so financial regulators. So it's an incredible footprint, which glimpse Cloudera, lots of insight into the many innovations that our customers are coming in up >>With >>Customers have grown more independent and demanding. Uh, they want the ability to perform many functions on their own and, uh, be able to do it. Uh, he do them on their mobile devices, uh, in a recent Accenture study, more than 50% of customers, uh, are focused on, uh, improving their customer experience through more personalized, uh, offers in advice. The study found that 75% of people are actually willing to share their data for better personalized offers and more efficient and intuitive of services >>Together. And >>A better understanding of your customers use all the data available to develop a complete view of your customer and, uh, and better serve them. Uh, this also breaks down, uh, costly silos, uh, shares data in, in accordance with privacy laws and assists with regulatory adherence. So different and organizations are going to be at different points in their data analytics and AI journey. Uh, there are several degrees of streaming and batch data, both structured and unstructured. Uh, you need a platform that can handle both, uh, with common, with a common governance layer, um, near real time and real real-time sources help make data more relevant. So if you look at this graphic, looking at it from left to right, uh, normal streaming and batch data comes from core banking and, uh, and lending operations data in pretty much a structured format as financial institutions start to evolve. >>Uh, they start to ingest near real-time streaming that comes not only from customers, but also from, from newsfeeds for example, and they start to capture more behavioral data that they can use to evolve their models, uh, and customer experience. Uh, ultimately they start to ingest more real-time streaming data, not only, um, standard, uh, sources like market and transaction data, but also alternative sources such as social media and connected sources, such as wearable devices, uh, giving them more, more data, better data, uh, to extract intelligence and drive personalized actions based on data in real time at the right time, um, and use machine learning and AI, uh, to drive anomaly detection and protect and predict, uh, present potential outcomes. >>So this >>Is another way to look at it. Um, this slide shows the progression of the big data journey as it relates to a customer experience example, um, the dark blue represents, um, visibility or understanding your customer. So we have a data warehouse and are starting to develop some analytics, uh, to know your customer and start to provide a better customer 360 experience. Uh, the medium blue area, uh, is, uh, customer centric or where we learn, uh, the customer's behavior. Uh, at this point we're improving our analytics, uh, gathering more customer centric information to perform, uh, some more exploratory, uh, data sciences. And we can start to do things like cross sell or upsell based on the customer's behavior, which should improve, uh, customer retention. The light blue area is, uh, is proactive customer inter interactions or where we now have the ability, uh, to predict customers needs and wants and improve our interaction with the customer, uh, using applied machine learning and, and AI, uh, clap the Cloudera data platform. >>Um, you know, business use cases require enabling, uh, the end-to-end journey, which we referred to as the data life cycle, uh, what the data life cycle, what is the data life cycle that our customers want to take their data through to enable the end-to-end data journey. If you ask our customers, they want different types of analytics, uh, for their diverse user bases to, to help them implement their, their, their use cases while managed by a centralized security and governance later layer. Uh, in other words, um, the data life cycle to them provides multifunction analytics, uh, at each stage within the data journey, uh, that, uh, integrated and centralized, uh, security, uh, and governance, for example, uh, enterprise data consists of real-time and transactional type type data. Examples include, uh, clickstream data, web logs, um, machine generated, data chatbots, um, call center interactions, uh, transactions, uh, within legacy applications, market data, et cetera. >>We need to manage, uh, that data life cycle, uh, to provide real enterprise data insights, uh, for use cases around enhance them personalized customer experience, um, customer journey analytics, next best action, uh, sentiment and churn analytics market, uh, campaign optimization, uh, mortgage, uh, processing optimization and so on. Um, we bring a diverse set of data then, um, and then enrich it with other data about our customers and products, uh, provide reports and dashboards such as customer 360 and use predictions from machine learning models to provide, uh, business decisions and, and offers of, uh, different products and services to customers and maintain customer satisfaction, um, by using, um, sentiment and turn analytics. These examples show that, um, the whole data life cycle is involved, um, and, uh, is in continuous fashion in order to meet these types of use cases, uh, using a single cohesive platform that can be, uh, that can be served by CDP, uh, the data, the Cloudera data platform. >>Okay. Let's, uh, let's talk about, uh, some of the experiences, uh, from our customers. Uh, first we'll talk about Bunco, something there. Um, Banco Santander is a major global bank headquartered in Spain, uh, with, uh, major operations and subsidiaries all over Europe and north and, and south America. Uh, one of its subsidiary, something there UK wanted to revolutionize the customer experience with the use of real-time data and, uh, in app analytics, uh, for mobile users, however, like many financial institutions send them there had a, he had a, had a large number of legacy data warehouses spread across many business use, and it's within consistent data and different ways of calculating the same metrics, uh, leading to different results. As a result, the company couldn't get the comprehensive customer insights it needed. And, uh, and business staff often worked on multiple versions of the truth. Sometimes there worked with Cloudera to improve a single data platform that could support all its workloads, including self-service analytics, uh, operational analytics and data science processes in processing 10 million transactions, daily or 30,000 transactions per second at peak times. >>And, uh, bringing together really, uh, nearly two to two petabytes of data. The platform provides unprecedented, uh, customer insight and business value across the organization, uh, over 80 cents. And Dera has realized impressive, uh, benefits spanning, uh, new revenues, cost savings and risk reductions, including creating analytics for, for corporate customers with near real-time shopping behavior, um, and, and helping identify 7,000 new corporate, uh, customer prospects, uh, reducing capital expenditures by, uh, 3.2 million annually and decreasing operating expenses by, uh, 650,000, um, enabling marketing to realize, uh, 2.4 million in annual savings on, on cash back on commercial transactions, um, and protecting 3.7 million customers from financial crime impacts through 95, new proactive control alerts, improving risk and capital calculations to reduce the amount of money. It must set aside, uh, as part of a, as part of risk mandates. Uh, for example, in one instance, the risk team was able to release a $5.2 million that it had withheld for non-performing credit card loans by properly identifying healthy accounts miscategorized as high risk next, uh, let's uh, talk about, uh, Rabo bank. >>Um, Rabobank is one of the largest banks in the Netherlands, uh, with approximately 8.3 million customers. Uh, it was founded by farmers in the late 19th century and specializes in agricultural financing and sustainability oriented banking, uh, in order to help its customers become more self-sufficient and, uh, improve their financial situations such as debt settlement, uh, rebel bank needed to access, uh, to a varied mix of high quality, accurate, and timely customer data, the talent, uh, to provide this insight, however, was the ability to execute sophisticated and timely data analytics at scale Rabobank was also faced with the challenge of, uh, shortening time to market. Uh, it needed easier access to customer data sets to ensure that they were using and receiving the right financial support at the right time with, with, uh, data quality and speed of processing. Um, highlighted as two vital areas of improvement. Robert bank was looking to incorporate, um, or create new data in an environment that would not only allow the organization to create a centralized repository of high quality data, but also allow them to stream and, uh, conduct data analytics on the fly, uh, to create actionable insights and deliver a strong customer service experience. >>Rabobank >>Leverage Cloudera due to its ability to cope with heavy pressures on data processing and its capability of ingesting large quantities of real-time streaming data. They were able to quickly create a new data lake that allowed for faster queries of both historical and real-time data to analyze customer loan repayment patterns, uh, to up to the minute transaction records, um, Robert bank and, and its customers could now immediately access, uh, the valuable data needed to help them understand, um, the status of their financial situation, this enabled, uh, rebel bank to spot financial disasters before they happened, enabling them to gain deep and timely insights into which customers were at risk of defaulting on loans. Um, having established the foundation of a modern data architecture Rabobank is now able to run sophisticated machine learning algorithms and, uh, financial models, uh, to help customers manage, um, financial, uh, obligations, um, including, uh, loan repayments, and are able to generate accurate, uh, current liquidity overviews, uh, no next, uh, let's, uh, speak about, um, uh, OVO. >>Uh, so OVO is the leading digital payment rewards and financial services platform in Indonesia, and is present in 115 million devices across the company across the country. Excuse me. Um, as the volume of, of products, uh, within Obos ecosystem increases, the ability to ensure marketing effectiveness is critical to avoid unnecessary waste of time and resources, unlike competitors, uh, banks, w which use traditional mass marketing, uh, to reach customers over, oh, decided to embark on a, on a bold new approach to connect with customers via a ultra personalized marketing, uh, using the stack, the team at OVO were able to implement a change point detection algorithm, uh, to discover customer life stage changes. This allowed OVO, uh, to, uh, build a segmentation model of one, uh, the contextual offer engine Bill's recommendation algorithms on top of the product, uh, including collaborative and context-based filters, uh, to detect changes in consumer consumption >>Patterns. >>As a result, OVO has achieved a 15% increase in revenue, thanks to this, to this project, um, significant time savings through automation and eliminating the chance of human error and have reduced engineers workloads by, by 30%. Uh, next let's talk about, uh, bank Bri, uh, bank Bri is one of the largest and oldest, uh, banks in Indonesia, um, engaging in, in general banking services, uh, for its customers. Uh, they are headquartered in, in Jakarta Indonesia, uh, BR is a well-known, uh, for its, uh, focused on financing initiative initiatives and serves over 75 million customers through its more than 11,000 offices and rural outposts, >>Um, Bri >>Needed to gain better understanding of their customers and market, uh, to improve the efficiency of its operations, uh, reduce losses from non-performing loans and address the rising concern around data security from regulators and consumers, uh, through enhanced fraud detection. This would require the ability to analyze vast amounts of, uh, historical financial data and use those insights, uh, to enhance operations and, uh, deliver better service. Um, Bri used Cloudera's enterprise data platform to build an agile and reliable, uh, predictive augmented intelligence solution. Uh, Bri was now able to analyze 124 years worth of historical financial data and use those insights to enhance its operations and deliver better services. Um, they were able to, uh, enhance their credit scoring system, um, the solution analyzes customer transaction data, and predicts the probability of a customer defaulting on, on payments. Um, the following month, it also alerts Bri's loan officers, um, to at-risk customers, prompting them to take the necessary action to reduce the likelihood of a Vanette profit lost. Uh, this resulted in improved credits in, in improved, uh, credit scoring system, uh, that cut down the approval of micro financing loans, uh, from two weeks to two days to two minutes and, uh, enhanced, uh, fraud detector. >>All right. Uh, this example shows a tabular representation, uh, the evolution of a customer retention use case, um, the evolution of data and analytics, uh, journey that, uh, that for that use case, uh, from aware, uh, text flirtation, uh, to optimization, to being transformative, uh, with every level, uh, data sources increase. And, uh, for the most part, uh, are, are less, less standard, more dynamic and less structured, but always adding more value, more insights into the customer, uh, allowing us to continuously improve our analytics, increase the velocity of the data we ingest, uh, from, from batch, uh, to, uh, near real time, uh, to real-time streaming, uh, the volume of data we ingest continually increases and we progress, uh, the value of the data on our customers, uh, is continuously improving, allowing us to interact more proactively and more efficiently. And, and with that, um, I would, uh, you know, ask you to consider an assess if you are using all the, uh, the data available to understand, uh, and service your customers, and to learn more about, about this, um, you know, visit cloudera.com and schedule a meeting with Cloudera to learn more. And with that, thank you for your time. And thank you for listening.
SUMMARY :
that are globally systemic banks, uh, four out of the five, uh, top stock exchanges, customers, uh, are focused on, uh, improving their customer experience And this also breaks down, uh, costly silos, uh, better data, uh, to extract intelligence and drive personalized to develop some analytics, uh, to know your customer and start to provide uh, that, uh, integrated and centralized, uh, security, We need to manage, uh, that data life cycle, uh, the same metrics, uh, leading to different results. uh, let's uh, talk about, uh, Rabo bank. uh, rebel bank needed to access, uh, to a varied mix of high no next, uh, let's, uh, speak about, um, uh, This allowed OVO, uh, to, uh, build a segmentation model about, uh, bank Bri, uh, bank Bri is one of the largest and oldest, those insights, uh, to enhance operations and, uh, deliver better service. uh, to real-time streaming, uh, the volume of data we ingest continually increases
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FINANCIAL SERVICES V1b | Cloudera
>>Uh, hi, I'm Joe Rodriguez, managing director of financial services at Cloudera. Uh, welcome to the fight fraud with a data session, uh, at Cloudera, we believe that fighting fraud with, uh, uh, begins with data. Um, so financial services is Cloudera's largest industry vertical. We have approximately 425 global financial services customers, uh, which consists of 82 out of a hundred of the largest global banks of which we have 27 that are globally systemic banks, uh, four out of the five top, uh, stock exchanges, uh, eight out of the top 10 wealth management firms and all four of the top credit card networks. So as you can see most financial services institutions, uh, utilize Cloudera for data analytics and machine learning, uh, we also have over 20 central banks and a dozen or so financial regulators. So it's an incredible footprint which gives Cloudera lots of insight into the many innovations, uh, that our customers are coming up with. Uh, criminals can steal thousands of dollars before a fraudulent transaction is detected. So the cost of, uh, to purchase a, your account data is well worth the price to fraudsters. Uh, according to Experian credit and debit card account information sells on the dark web for a mere $5 with the CVV number and up to $110. If it comes with all the bank information, including your name, social security number, date of birth, uh, complete account numbers and, and other personal data. >>Um, our customers have several key data and analytics challenges when it comes to fighting financial crime. The volume of data that they need to deal with is, is huge and growing exponentially. Uh, all this data needs to be evaluated in real time. Uh, there is, uh, there are new sources of, of streaming data that need to be integrated with existing, uh, legacy data sources. This includes, um, biometrics data and enhanced, uh, authentication, uh, video surveillance call center data. And of course all that needs to be integrated with existing legacy data sources. Um, there is an analytics arms race between the banks and the criminals and the criminal networks never stop innovating. They also we'll have to deal with, uh, disjointed security and governance, security and governance policies are often set per data source, uh, or application requiring redundant work, work across workloads. And, and they have to deal with siloed environments, um, the specialized nature of platforms and people results in disparate data sources and data management processes, uh, this duplicates efforts and, uh, divides the, the business risk and crime teams, limiting collaboration opportunities between CDP enhances financial crime solutions, uh, to be holistic by eliminating data gaps between siloed solutions with, uh, an enterprise data approach, uh, advanced, uh, data analytics and machine learning, uh, by deploying an enterprise wide data platform, you reduce siloed divisions between business risk and crime teams and enable better collaboration through industrialized machine learning. >>Uh, you tighten up the loop between, uh, detection and new fraud patterns. Cloudera provides the data platform on which a best of breed applications can run and leverage integrated machine learning cloud Derrick stands rather than replaces your existing fraud modeling applications. So Oracle SAS Actimize to, to name a few, uh, integrate with an enterprise data hub to scale the data increased speed and flexibility and improve efficacy of your entire fraud system. It also centralizes the fraud workload on data that can be used for other use cases in applications like enhanced KYC and a customer 360 4 example. >>I just, I wanted to highlight a couple of our partners in financial crime prevention, uh, semi dine, and Quintex, uh, uh, so send me nine provides fraud simulation using agent-based modeling, uh, machine learning techniques, uh, to generate synthetic transaction data. This data simulates potential fraud scenarios in a cost-effective, uh, GDPR compliant, virtual environment, significantly improved financial crime detection systems, semi dine identifies future fraud topologies, uh, from millions of, of simulations that can be used to dynamically train, uh, new machine learning algorithms for enhanced fraud identification and context, um, uh, connects the dots within your data, using dynamic entity resolution, and advanced network analytics to create context around your customers. Um, this enables you to see the bigger picture and automatically assesses potential criminal beads behavior. >>Now let's go some of our, uh, customers, uh, and how they're using cloud caldera. Uh, first we'll talk about, uh, United overseas bank, or you will be, um, you'll be, is a leading full service bank in, uh, in Asia. It, uh, with, uh, a network of more than 500 offices in, in 19 countries and territories in Asia, Pacific, Western Europe and north America UA, um, UOB built a modern data platform on Cloudera that gives it the flexibility and speed to develop new AI and machine learning solutions and to create a data-driven enterprise. Um, you'll be set up, uh, set up it's big data analytics center in 2017. Uh, it was Singapore's first centralized big data unit, uh, within a bank to deepen the bank's data analytic capabilities and to use data insights to enhance, uh, the banks, uh, uh, performance essential to this work was implementing a platform that could cost efficiently, bring together data from dozens of separate systems and incorporate a range of unstructured data, including, uh, voice and text, um, using Cloudera CDP and machine learning. >>UOB gained a richer understanding of its customer preferences, uh, to help make their, their banking experience simpler, safer, and more reliable. Working with Cloudera UOB has a big data platform that gives business staff and data scientists faster access to relevant and quality data for, for self-service analytics, machine learning and, uh, emerging artificial intelligence solutions. Um, with new self-service analytics and machine learning driven insights, you'll be, uh, has realized improvements in, in digital banking, asset management, compliance, AML, and more, uh, advanced AML detection capabilities, help analysts detect suspicious transactions either based on hidden relationships of shell companies and, uh, high risk individuals, uh, with, uh, Cloudera and machine learning, uh, technologies. You you'll be, uh, was able to enhance AML detection and reduce the time to identify new links from months 2, 3, 3 weeks. >>Excellent mass let's speak about MasterCard. So MasterCard's principle businesses to process payments between banks and merchants and the credit issuing banks and credit unions of the purchasers who use the MasterCard brand debit and credit cards to make purchases MasterCard chose Cloudera enterprise for fraud detection, and to optimize their DW infrastructure, delivering deepens insights and best practices in big data security and compliance. Uh, next let's speak about, uh, bank Rakka yet, uh, in Indonesia or Bri. Um, it, VRI is one of the largest and oldest banks in Indonesia and engages in the provision of general banking services. Uh, it's headquartered in Jakarta Indonesia. Uh, Bri is well known for its focus on financing initiatives and serves over 75 million customers through it's more than 11,000 offices and rural service outposts. Uh, Bri required better insight to understand customer activity and identify fraudulent transactions. Uh, the bank needed a solid foundation that allowed it to leverage the power of advanced analytics, artificial intelligence, and machine learning to gain better understanding of customers and the market. >>Uh, Bri used, uh, Cloudera enterprise data platform to build an agile and reliable, predictive augmented intelligence solution, uh, to enhance its credit scoring system and to address the rising concern around data security from regulators, uh, and customers, uh, Bri developed a real-time fraud detection service, uh, powered by Cloudera and Kafka. Uh, Bri's data scientists developed a machine learning model for fraud detection by creating a behavioral scoring model based on customer savings, uh, loan transactions, deposits, payroll and other financial, um, uh, real-time time data. Uh, this led to improvements in its fraud detection and credit scoring capabilities, as well as the development of a, of a new digital microfinancing product, uh, with the enablement of real-time fraud detection, VRI was able to reduce the rate of fraud by 40%. Uh, it improved, uh, relationship manager productivity by two and a half fold. Uh, it improved the credit score scoring system to cut down on micro-financing loan processing times from two weeks to two days to now two minutes. So fraud prevention is a good area to start with a data focus. If you haven't already, it offers a quick return on investment, uh, and it's a focused area. That's not too entrenched across the company, uh, to learn more about fraud prevention, uh, go to kroger.com and to schedule, and you should schedule a meeting with Cloudera, uh, to learn even more. Uh, and with that, thank you for listening and thank you for your time. >>Welcome to the customer. Obsession begins with data session. Uh, thank you for, for attending. Um, at Cloudera, we believe that a custom session begins with, uh, with, with data, um, and, uh, you know, financial services is Cloudera is largest industry vertical. We have approximately 425 global financial services customers, uh, which consists of 82 out of a hundred of the largest global banks of which we have 27 that are globally systemic banks, uh, four out of the five top stock exchanges, eight out of the 10 top wealth management firms and all four of the top credit card networks. Uh, so as you can see most financial services institutions utilize Cloudera for data analytics and machine learning. Uh, we also have over 20 central banks and it doesn't or so financial regulators. So it's an incredible footprint, which glimpse Cloudera, lots of insight into the many innovations that our customers are coming up with. >>Customers have grown more independent and demanding. Uh, they want the ability to perform many functions on their own and, uh, be able to do it. Uh, he do them on their mobile devices, uh, in a recent Accenture study, more than 50% of customers, uh, are focused on, uh, improving their customer experience through more personalized offers and advice. The study found that 75% of people are actually willing to share their data for better personalized offers and more efficient and intuitive services to get it better, better understanding of your customers, use all the data available to develop a complete view of your customer and, uh, and better serve them. Uh, this also breaks down, uh, costly silos, uh, shares data in, in accordance with privacy laws and assists with regulatory advice. It's so different organizations are going to be at different points in their data analytics and AI journey. >>Uh, there are several degrees of streaming and batch data, both structured and unstructured. Uh, you need a platform that can handle both, uh, with common, with a common governance layer, um, near real time. And, uh, real-time sources help make data more relevant. So if you look at this graphic, looking at it from left to right, uh, normal streaming and batch data comes from core banking and, uh, and lending operations data in pretty much a structured format as financial institutions start to evolve. Uh, they start to ingest near real-time streaming data that comes not only from customers, but also from, from newsfeeds for example, and they start to capture more behavioral data that they can use to evolve their models, uh, and customer experience. Uh, ultimately they start to ingest more real time streaming data, not only, um, standard, uh, sources like market and transaction data, but also alternative sources such as social media and connected sources, such as wearable devices, uh, giving them more, more data, better data, uh, to extract intelligence and drive personalized actions based on data in real time at the right time, um, and use machine learning and AI, uh, to drive anomaly detection and protect and predict, uh, present potential outcomes. >>So this is another way to look at it. Um, this slide shows the progression of the big data journey as it relates to a customer experience example, um, the dark blue represents, um, visibility or understanding your customer. So we have a data warehouse and are starting to develop some analytics, uh, to know your customer and start to provide a better customer 360 experience. Uh, the medium blue area, uh, is a customer centric or where we learn, uh, the customer's behavior. Uh, at this point we're improving our analytics, uh, gathering more customer centric information to perform, uh, some more exploratory, uh, data sciences. And we can start to do things like cross sell or upsell based on the customer's behavior, which should improve, uh, customer retention. The light blue area is, uh, is proactive customer inter interactions, or where we now have the ability, uh, to predict customers needs and wants and improve our interaction with the customer, uh, using applied machine learning and, and AI, uh, the Cloudera data platform, um, you know, business use cases require enabling, uh, the end-to-end journey, which we referred to as the data life cycle, uh, what the data life cycle, what is the data life cycle that our customers want, uh, to take their data through, to enable the end to end data journey. >>If you ask our customers, they want different types of analytics, uh, for their diverse user bases to help them implement their, their, their use cases while managed by a centralized security and governance later layer. Uh, in other words, um, the data life cycle to them provides multifunction analytics, uh, at each stage, uh, within the data journey, uh, that, uh, integrated and centralized, uh, security, uh, and governance, for example, uh, enterprise data consists of real time and transactional type type data. Examples include, uh, click stream data, web logs, um, machine generated, data chat bots, um, call center interactions, uh, transactions, uh, within legacy applications, market data, et cetera. We need to manage, uh, that data life cycle, uh, to provide real enterprise data insights, uh, for use cases around enhanced them, personalized customer experience, um, customer journey analytics next best action, uh, sentiment and churn analytics market, uh, campaign optimization, uh, mortgage, uh, processing optimization and so on. >>Um, we bring a diverse set of data then, um, and then enrich it with other data about our customers and products, uh, provide reports and dashboards such as customer 360 and use predictions from machine models to provide, uh, business decisions and, and offers of, uh, different products and services to customers and maintain customer satisfaction, um, by using, um, sentiment and churn analytics. These examples show that, um, the whole data life cycle is involved, um, and, uh, is in continuous fashion in order to meet these types of use cases, uh, using a single cohesive platform that can be, uh, that can be served by CDP, uh, the data, the Cloudera data platform. >>Okay. Uh, let's talk about, uh, some of the experiences, uh, from our customers. Uh, first we'll talk about Bunco suntan there. Um, is a major global bank headquartered in Spain, uh, with, uh, major operations and subsidiaries all over Europe and north and, and south America. Uh, one of its subsidiaries, something there UK wanted to revolutionize the customer experience with the use of real time data and, uh, in app analytics, uh, for mobile users, however, like many financial institutions send them there had a, he had a, had a large number of legacy data warehouses spread across many business use, and it's within consistent data and different ways of calculating the same metrics, uh, leading to different results. As a result, the company couldn't get the comprehensive customer insights it needed. And, uh, and business staff often worked on multiple versions of the truth. Sometime there worked with Cloudera to improve a single data platform that could support all its workloads, including self-service analytics, uh, operational analytics and data science processes, processing processing, 10 million transactions daily or 30,000 transactions per second at peak times. >>And, uh, bringing together really, uh, nearly two to two petabytes of data. The platform provides unprecedented, uh, customer insight and business value across the organization, uh, over 80 cents. And there has realized impressive, uh, benefits spanning, uh, new revenues, cost savings and risk reductions, including creating analytics for, for corporate customers with near real-time shopping behavior, um, and, and helping identify 7,000 new corporate, uh, customer prospects, uh, reducing capital expenditures by, uh, 3.2 million annually and decreasing operating expenses by, uh, 650,000, um, enabling marketing to realize, uh, 2.4 million in annual savings on, on cash, on commercial transactions, um, and protecting 3.7 million customers from financial crime impacts through 95, new proactive control alerts, improving risk and capital calculations to reduce the amount of money. It must set aside, uh, as part of a, as part of risk mandates. Uh, for example, in one instance, the risk team was able to release a $5.2 million that it had withheld for non-performing credit card loans by properly identifying healthy accounts miscategorized as high risk next, uh, let's uh, talk about, uh, Rabobank. >>Um, Rabobank is one of the largest banks in the Netherlands, uh, with approximately 8.3 million customers. Uh, it was founded by farmers in the late 19th century and specializes in agricultural financing and sustainability oriented banking, uh, in order to help its customers become more self-sufficient and, uh, improve their financial situations such as debt settlement, uh, rebel bank needed to access, uh, to a varied mix of high quality, accurate, and timely customer data, the talent, uh, to provide this insight, however, was the ability to execute sophisticated and timely data analytics at scale Rabobank was also faced with the challenge of, uh, shortening time to market. Uh, it needed easier access to customer data sets to ensure that they were using and receiving the right financial support at the right time with, with, uh, data quality and speed of processing. Um, highlighted as two vital areas of improvement, Rabobank was looking to incorporate, um, or create new data in an environment that would not only allow the organization to create a centralized repository of high quality data, but also allow them to stream and, uh, conduct data analytics on the fly, uh, to create actionable insights and deliver a strong customer experience bank level Cloudera due to its ability to cope with heavy pressures on data processing and its capability of ingesting large quantities of real time streaming data. >>They were able to quickly create a new data lake that allowed for faster queries of both historical and real time data to analyze customer loan repayment patterns, uh, to up to the minute transaction records, um, Robert bank and, and its customers could now immediately access, uh, the valuable data needed to help them understand, um, the status of their financial situation in this enabled, uh, rebel bank to spot financial disasters before they happened, enabling them to gain deep and timely insights into which customers were at risk of defaulting on loans. Um, having established the foundation of a modern data architecture Rabobank is now able to run sophisticated machine learning algorithms and, uh, financial models, uh, to help customers manage, um, financial, uh, obligations, um, including, uh, long repayments and are able to generate accurate, uh, current real liquidity. I refuse, uh, next, uh, let's uh, speak about, um, uh, OVO. >>Uh, so OVO is the leading digital payment rewards and financial services platform in Indonesia, and is present in 115 million devices across the company across the country. Excuse me. Um, as the volume of, of products within Obos ecosystem increases, the ability to ensure marketing effectiveness is critical to avoid unnecessary waste of time and resources, unlike competitors, uh, banks, w which use traditional mass marketing, uh, to reach customers over, oh, decided to embark on a, on a bold new approach to connect with customers via, uh, ultra personalized marketing, uh, using the Cloudera stack. The team at OVO were able to implement a change point detection algorithm, uh, to discover customer life stage changes. This allowed OVO, uh, to, uh, build a segmentation model of one, uh, the contextual offer engine Bill's recommendation algorithms on top of the product, uh, including collaborative and context-based filters, uh, to detect changes in consumer consumption patterns. >>As a result, OVO has achieved a 15% increase in revenue, thanks to this, to this project, um, significant time savings through automation and eliminating the chance of human error and have reduced engineers workloads by, by 30%. Uh, next let's talk about, uh, bank Bri, uh, bank Bri is one of the largest and oldest, uh, banks in Indonesia, um, engaging in, in general banking services, uh, for its customers. Uh, they are headquartered in, in Jakarta Indonesia, uh, PR is a well-known, uh, for its, uh, focused on micro-financing initiative initiatives and serves over 75 million customers through more than 11,000 offices and rural outposts, um, Bri needed to gain better understanding of their customers and market, uh, to improve the efficiency of its operations, uh, reduce losses from non-performing loans and address the rising concern around data security from regulators and consumers, uh, through enhanced fraud detection. This would require the ability to analyze the vast amounts of, uh, historical financial data and use those insights, uh, to enhance operations and, uh, deliver better service. >>Um, Bri used Cloudera's enterprise data platform to build an agile and reliable, uh, predictive augmented intelligence solution. Uh, Bri was now able to analyze 124 years worth of historical financial data and use those insights to enhance its operations and deliver better services. Um, they were able to, uh, enhance their credit scoring system, um, the solution analyzes customer transaction data, and predicts the probability of a customer defaulting on, on payments. Um, the following month, it also alerts Bri's loan officers, um, to at-risk customers, prompting them to take the necessary action to reduce the likelihood of the net profit lost, uh, this resulted in improved credit, improved credit scoring system, uh, that cut down the approval of micro financing loans, uh, from two weeks to two days to, to two minutes and, uh, enhanced fraud detection. >>All right. Uh, this example shows a tabular representation, uh, the evolution of a customer retention use case, um, the evolution of data and analytics, uh, journey that, uh, that for that use case, uh, from aware, uh, text flirtation, uh, to optimization, to being transformative, uh, with every level, uh, data sources increase. And, uh, for the most part, uh, are, are less, less standard, more dynamic and less structured, but always adding more value, more insights into the customer, uh, allowing us to continuously improve our analytics, increase the velocity of the data we ingest, uh, from, from batch, uh, to, uh, near real time, uh, to real-time streaming, uh, the volume of data we ingest continually increases and we progress, uh, the value of the data on our customers, uh, is continuously improving, allowing us to interact more proactively and more efficiently. And, and with that, um, I would, uh, you know, ask you to consider and assess if you are using all the, uh, the data available to understand, uh, and service your customers, and to learn more about, about this, um, you know, visit cloudera.com and schedule a meeting with Cloudera to learn more. And with that, thank you for your time. And thank you for listening.
SUMMARY :
So the cost of, uh, to purchase a, approach, uh, advanced, uh, data analytics and machine learning, uh, integrate with an enterprise data hub to scale the data increased uh, semi dine, and Quintex, uh, uh, so send me nine provides fraud uh, the banks, uh, uh, performance essential to this uh, to help make their, their banking experience simpler, safer, uh, bank Rakka yet, uh, in Indonesia or Bri. the company, uh, to learn more about fraud prevention, uh, go to kroger.com uh, which consists of 82 out of a hundred of the largest global banks of which we have 27 this also breaks down, uh, costly silos, uh, uh, giving them more, more data, better data, uh, to extract to develop some analytics, uh, to know your customer and start to provide We need to manage, uh, and offers of, uh, different products and services to customers and maintain customer satisfaction, the same metrics, uh, leading to different results. as high risk next, uh, let's uh, on the fly, uh, to create actionable insights and deliver a strong customer experience next, uh, let's uh, speak about, um, uh, This allowed OVO, uh, to, uh, build a segmentation model uh, to improve the efficiency of its operations, uh, reduce losses from reduce the likelihood of the net profit lost, uh, to being transformative, uh, with every level, uh, data sources increase.
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