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noisy-layer
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PyTorch Implementation of Implicit Quantile Networks (IQN) for Distributional Reinforcement Learning with additional extensions like PER, Noisy layer, N-step bootstrapping, Dueling architecture and parallel env support.
reinforcement-learningparallel-computingrainbowpytorchmulti-environmentdqnreinforcement-learning-algorithmsparallel-processingiqnprioritized-experience-replaypytorch-implementationimplicit-quantile-networksn-step-bootstrappingdistributional-rnoisy-layermunchausen
- Updated
Mar 4, 2023 - Jupyter Notebook
PyTorch implementation of the state-of-the-art distributional reinforcement learning algorithm Fully Parameterized Quantile Function (FQF) and Extensions: N-step Bootstrapping, PER, Noisy Layer, Dueling Networks, and parallelization.
reinforcement-learningmultiprocessingpytorchmulti-environmentreinforcement-learning-algorithmsparallel-processingdueling-network-architectureprioritized-experience-replayquantile-functionsdqn-pytorchdistributional-rlnoisy-layerfqfnstep-bootstrapping
- Updated
Oct 10, 2020 - Jupyter Notebook
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