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Speaker "Saket Mengle" Details Back

 

Topic

Applying Apache Spark on a Petabyte scale Machine learning platform

Abstract

The central premise of DataXu is to apply data science to better marketing. At its core, is the Real-time Bidding Platform that processes 2 petabytes of data per day and responds to ad auctions at a rate of 2.1 million requests per second across 5 different continents. Serving on top of this platform is DataXu’s analytics engine that gives their clients insightful analytics reports addressed towards client marketing business questions. Some common requirements for both these platforms are the ability to do real-time processing, scalable machine learning, and ad-hoc analytics. This talk will showcase DataXu’s successful use-cases of using the Apache® Spark™ framework and Databricks to address all of the above challenges while maintaining its agility and rapid prototyping strengths to take a product from initial R&D phase to full production.

Profile

Saket holds a PhD in machine learning and NLP from Illinois Institute of Technology, Chicago. He has worked in a variety of fields including text classification, information retrieval, large scale machine learning and linear optimization. He currently works as Senior Principal Data Scientist at DataXu Inc., where he is responsible for developing and maintaining the algorithms that drives DataXu’s real-time advertising platform.