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Episode 28: Reinforcement Learning and Q-Learning

The Theory of Anything

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State Transition and Reward Functions

This chapter discusses the concept of the agent taking action in a given state, receiving a reward, and transitioning to the next state. It explains the state transition function and the reward function in the environment, using examples of a robot reaching its goal state and a grid world scenario.

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