Sept. 27, 2022, 5:32 p.m. | Google AI (noreply@blogger.com)

Google AI Blog ai.googleblog.com

Posted by Srivatsan Krishnan, Student Researcher, and Aleksandra Faust, Senior Staff Research Scientist, Google Research, Brain Team

Deep reinforcement learning (RL) continues to make great strides in solving real-world sequential decision-making problems such as balloon navigation, nuclear physics, robotics, and games. Despite its promise, one of its limiting factors is long training times. While the current approach to speed up RL training on complex and difficult tasks leverages distributed training scaling up to hundreds or even …

quantization reinforcement reinforcement learning resource optimization

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