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.