Published Nov 13, 2020
Robert Nishihara — The State of Distributed Computing in ML
Delve into the cutting-edge world of distributed computing in machine learning with Robert Nishihara as he explores the rising significance of reinforcement learning in industries and the pivotal role of specialized frameworks like Ray in overcoming complex computational challenges.

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