GOTO is a vendor independent international software development conference with more that 90 top speaker and 1300 attendees. The conference cover topics such as .Net, Java, Open Source, Agile, Architecture and Design, Web, Cloud, New Languages and Processes

Srinivas Palthepu, Capital One

Srinivas Palthepu

Biography: Srinivas Palthepu

Srinivas (Srini) Palthepu has over 20 years of combined IT & Software Engineering experience in various roles including Research & Development, Production Delivery & Execution, Architecture and Strategy. He started Big Data journey before even the term Big Data was coined, at a Chicago Startup Company recently acquired By IBM. In his current role at Capital One, Srini is leading Capital One's new digital transformation of Partnership business with Big Data and Fast Data technologies. He gave talks at several Big Data conferences such as Big Data TechCon, Chicago, and BI Innovation Summit. Srini is also co-organizer of Chicago Flink User Group Meetup. He has a Ph.D in Computer Science from Universiy of Saskatchewan.

Twitter: @SriniPalthepu

Presentation: Real-time Analytics on Customer Financial Activities With Apache Flink

Time: Wednesday 11:00 - 11:50 / Location: Promenade Ballroom A

Peoples financial activities with Banks are increasingly migrating to digital platforms. Banks, which are large institutions that move money are transforming into Software Engineering Companies. At the core of modern banks is a large network of systems and platforms that capture, collect, process and analyze the digital data. Collecting and analyzing customers¹ activities in real-time is critical for modern financial institutions to succeed.

In this talk we present a business use case where Capital One needs to process customer activities real-time and react to events appropriately as needed. We then present our experience in building a real-time analytics application that serves the business using a set of open source software frameworks with Apache Flink at its core for real-time stream processing engine.

We then show a demo of running system serving our use case. Apache Flink with its real-time event processing capability that supports true event­time and its sophisticated windowing semantics is an ideal candidate for our application. We conclude the talk by putting the architecture of this application in the context of generic stream analytics framework and how many other Capital One's use cases such as fraud detection, can be served with this analytics platform.