Skip to content

Theory & Engineering of Large E-commerce Applications

J
Hosted By
Jonn B.
Theory & Engineering of Large E-commerce Applications

Details

Come join us at our next meetup featuring 2 great speakers. Presentations start at 7PM. Appetizers and drinks will be served!

Jiliang Tang - Assistant professor in the Computer Science and Engineering at Michigan State University

Abstract: Deep Reinforcement Learning (DRL) is able to automatically learn the optimal recommendation strategies by capturing real-time users’ feedback and maximizing the expected long-term cumulative benefit from users. In this talk, Prof. Tang will delineate challenges of adopting DRL to recommendations, and detail two representative works from his group: (1) how to jointly optimize recommendation and display strategies in a page and (2) how to capture negative feedback. Some promising directions will be further discussed to bring this research direction into a new frontier.

David Haubenstricker - Staff Data Engineer at Criteo

Abstract: Big-data Spark applications quickly grow to become nearly unreadable and untestable. This presentation will show some simple patterns that will take a whiteboard diagram of a complex process and convert it to readable Spark code, complete with unit tests. Spark experience not necessary. Many of the patterns have application beyond Spark programming.

Photo of Criteo Ann Arbor - Tech Talks group
Criteo Ann Arbor - Tech Talks
See more events
Criteo Ann Arbor Office
523 S Main · Ann Arbor, MI