Published Feb 14, 2022
Deep Reinforcement Learning at the Edge of the Statistical Precipice with Rishabh Agarwal - #559
Explore the state of benchmarking in AI with Rishabh Agarwal as he delves into the intricacies of deep reinforcement learning, emphasizing the importance of transparent reporting of statistical uncertainties. Gain insights into the significance of building on existing agents and the value of learning from failures to drive progress in AI research.

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