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Updated in [July 21st, 2023]
What skills and knowledge will you acquire during this course?
Students will acquire skills and knowledge in Model types, Algorithms and approaches, Function approximation, Deep reinforcement-learning, and Deep Multi-agent Reinforcement-learning. They will also gain knowledge in topics such as Markov decision process (MDP), Partially observable Markov decision process (POMDP), Decentralized Partially observable Markov decision process (Dec-POMDP), Bellman equations, Model-free, Off-policy, Exploration-exploitation, Value-iteration, SARSA, Q-learning, Function approximators, Policy-gradient, Value-based, Policy-based, Actor-critic, policy-gradient, and softmax policy, REINFORCE, Deep Q-Network (DQN), Deep Recurrent Q-Learning (DRQN), Optimistic Exploration with Pessimistic Initialization (OPIQ), Value Decomposition Networks (VDN), QMIX, QTRAN, and Weighted QMIX.
How does this course contribute to professional growth?
This course on Modern Reinforcement-learning using Deep Learning contributes to professional growth by providing students with state-of-the-art knowledge and skills in various aspects of reinforcement-learning. Students will gain expertise in model types, algorithms, function approximation, deep reinforcement-learning, and deep multi-agent reinforcement-learning. By completing short quizzes, students can validate their understanding of the lectures. The course covers a wide range of topics, including Markov decision process, Bellman equations, different learning methods, and various deep learning techniques. The resources provided, such as Wikipedia and David Silver's Reinforcement-learning course, further enhance the learning experience. Overall, this course equips students with valuable knowledge and skills that can contribute to their professional growth in the field of reinforcement-learning.
Is this course suitable for preparing further education?
This course on Modern Reinforcement-learning using Deep Learning is suitable for preparing further education.
Course Syllabus
Model types
Algorithms and approaches
Function approximation
Deep reinforcement-learning
Deep Multi-agent Reinforcement-learning
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