How can reinforcement learning scale beyond small tabular problems to high-dimensional environments such as games, robotics, and autonomous decision-making? This course introduces deep reinforcement learning, where reinforcement-learning algorithms are combined with neural-network-based function approximation.

Deep Reinforcement Learning: From Theory to Practice
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Deep Reinforcement Learning: From Theory to Practice
This course is part of Foundations of Reinforcement Learning Specialization

Instructor: Ashutosh Trivedi
Included with
Recommended experience
What you'll learn
Explain how neural-network-based function approximation extends reinforcement learning beyond finite tabular settings.
Implement and evaluate value-based deep reinforcement learning algorithms, including Deep Q-Networks and stabilizing techniques.
Derive and implement policy-gradient methods, including REINFORCE, baselines, and advantage-based updates.
Explain and analyze actor–critic methods that combine policy optimization with value estimation.
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June 2026
7 assignments
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