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    <title>Phase 7 on Reinforcement Learning Curriculum</title>
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      <title>Phase 7 Assessment: Deep RL</title>
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      <description>10–12 questions on DQN, policy gradient, PPO, replay, target network. Solutions included.</description>
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      <title>Phase 7 — Deep RL</title>
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      <description>Volumes 3–5: value function approximation, DQN family, policy gradients, actor-critic, and advanced policy optimization (chapters 21–50).</description>
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