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Study mode:
on
1
Intro
2
Why does modern machine learning work
3
Overview
4
Overfitting
5
Distributional Shift
6
implicit constraints
7
conservative qlearning
8
d4rl
9
Results
10
Conclusion
Description:
Explore offline deep reinforcement learning algorithms in this 32-minute lecture by Sergey Levine from UC Berkeley. Delve into the workings of modern machine learning, examining concepts like overfitting, distributional shift, and implicit constraints. Learn about conservative Q-learning and the D4RL dataset. Gain insights into the latest results and conclusions in this field, enhancing your understanding of deep reinforcement learning techniques and their applications.

Offline Deep Reinforcement Learning Algorithms

Simons Institute
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