- Practical_RL VS webdataset
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- Practical_RL VS awesome-rl
- Practical_RL VS TensorFlow-Tutorials
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- Practical_RL VS redisai-examples
- Practical_RL VS labml
- Practical_RL VS YPDL-Build-a-movie-recommendation-engine-with-TensorFlow
- Practical_RL VS rl-trading
- Practical_RL VS dtan
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Practical_RL reviews and mentions
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there is this great github repo where there are lectures and other resources, and have a week by week jupyter notebooks where they explain and code with homeworks at the very end of it. is basics and deepRL, but just dqn and DDPG/ppo but i think will give you good start in the topic for later star working on your own.
yandexdataschool/Practical_RL is an open source project licensed under The Unlicense which is not an OSI approved license.