SciPy 2023

Jules S. Damji

Jules S. Damji is a lead developer advocate at Anyscale Inc, an MLflow contributor, and co-author of Learning Spark, 2nd Edition. He is a hands-on developer with over 25 years of experience and has worked at leading companies, such as Sun Microsystems, Netscape, @Home, Opsware/LoudCloud, VeriSign, ProQuest, Hortonworks, and Databricks, building large-scale distributed systems. He holds a B.Sc and M.Sc in computer science (from Oregon State University and Cal State, Chico respectively), and an MA in political advocacy and communication (from Johns Hopkins University).

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Sessions

07-14
11:25
30min
Modern compute stack for scaling large AI/ML workloads
Jules S. Damji, Amog Kamsetty

Existing production machine learning systems often suffer from various problems that make them hard to use. For example, data scientists and ML practitioners often spend most of their time stitching and managing bespoke distributed systems to build end-to-end ML applications and push models to production.

To address this, the Ray community has built Ray AI Runtime (Ray AIR), an open-source toolkit for building large-scale end-to-end ML applications.

Machine Learning, Data Science, and Ethics in AI
Zlotnik Ballroom