- I have marked all applicable categories:
- exception-raising bug
- RL algorithm bug
- documentation request (i.e. "X is missing from the documentation.")
- new feature request
- I have visited the [source website], and in particular read the [known issues]
- I have searched through the [issue tracker] for duplicates
- I have mentioned versio
sac
Here are 57 public repositories matching this topic...
PyTorch implementation of DQN, AC, ACER, A2C, A3C, PG, DDPG, TRPO, PPO, SAC, TD3 and ....
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Mar 18, 2020 - Python
lagom: A PyTorch infrastructure for rapid prototyping of reinforcement learning algorithms.
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Feb 26, 2020 - Jupyter Notebook
Hi, I am trying to use the PPO algorithm; however, it's not clear how to construct the stochastic policy. Should I use the Gaussian policy network?
Cool library by the way; I like the modularity!
This repository contains most of pytorch implementation based classic deep reinforcement learning algorithms, including - DQN, DDQN, Dueling Network, DDPG, SAC, A2C, PPO, TRPO. (More algorithms are still in progress)
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Nov 15, 2019 - Python
DrQ: Data regularized Q
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May 13, 2020 - Jupyter Notebook
Implementation of reinforcement learning approach to make a car learn to drive smoothly in minutes
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Feb 23, 2020 - Python
RAD: Reinforcement Learning with Augmented Data
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May 11, 2020 - Jupyter Notebook
CURL: Contrastive Unsupervised Representation Learning for Sample-Efficient Reinforcement Learning
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Apr 15, 2020 - Python
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May 4, 2020 - Python
PyTorch implementation of Soft Actor-Critic (SAC)
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Jan 25, 2020 - Python
Reinforcement Learning Algorithms:SAC, TD3, TAC
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May 30, 2020 - Python
TD3, SAC, IQN, Rainbow, PPO, Ape-X, NoisyNets, PER, etc
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Dec 20, 2019 - Python
Reinforcement learning algorithms implemented for Tensorflow 2.0+ [DQN, DDPG, AE-DDPG, SAC, PPO, Primal-Dual DDPG]
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Apr 23, 2020 - Python
Repository for slides & codes of RL Korea Bootcamp
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Oct 28, 2019 - C#
Pytorch Implementation of Reinforcement Learning Algorithms ( Soft Actor Critic(SAC)/ DDPG / TD3 /DQN / A2C/ PPO / TRPO)
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May 14, 2020 - Python
A Python package to request and process seismic waveform data from Hi-net.
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Mar 18, 2020 - Python
Julia language support for geophysical time series data
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Apr 8, 2020 - Julia
PyTorch implementation of Soft-Actor-Critic and Prioritized Experience Replay (PER) + Emphasizing Recent Experience (ERE)
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May 6, 2020 - Python
AI RC Car Agent that using deep reinforcement learning on Jetson Nano
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May 23, 2020 - Jupyter Notebook
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May 30, 2020 - Python
The version of the construct library that is in PH5 uses for writing SEG-Y is very old and should be updated. I am unable to find documentation for version 2.5 that is currently used in PH5.
More information is available at https://construct.readthedocs.io/en/latest/transition29.html.
Collection of Deep Reinforcement Learning Algorithms implemented in PyTorch.
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May 21, 2020 - Jupyter Notebook
JAX implementations of core Deep RL algorithms
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Apr 21, 2020 - Python
Process seismic data in SAC format with Julia
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Feb 8, 2020 - Julia
A Deep Reinforcement Learning (DeepRL) package for RL algorithm developers.
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Mar 20, 2020 - Python
SACPlot.jl plots seismic traces in SAC format using Julia
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Feb 8, 2020 - Julia
provides a Fortran 90 module named `sacio` for reading and writting evenly-spaced SAC binary format files
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May 24, 2018 - Fortran
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