
[07] John Schulman - Optimizing Expectations: From Deep RL to Stochastic Computation Graphs
The Thesis Review
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Reinforcement Learning at Berkeley: Evolution and Challenges
This chapter explores Berkeley's development as a reinforcement learning research hub, emphasizing the collaborative environment fostered by key figures and industry labs. It discusses the importance of generalization in RL, the limitations of traditional benchmarks, and the significance of procedural game generation for training agents. Additionally, the conversation touches on the differences between representation learning and RL, illustrating the evolution of key algorithms and their practical applications.
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