Deep Reinforcement Learning with pytorch & visdom

Overview

Deep Reinforcement Learning with

pytorch & visdom


  • Sample testings of trained agents (DQN on Breakout, A3C on Pong, DoubleDQN on CartPole, continuous A3C on InvertedPendulum(MuJoCo)):
  • Sample on-line plotting while training an A3C agent on Pong (with 16 learner processes): a3c_pong_plot

  • Sample loggings while training a DQN agent on CartPole (we use WARNING as the logging level currently to get rid of the INFO printouts from visdom):

[WARNING ] (MainProcess) <===================================>
[WARNING ] (MainProcess) bash$: python -m visdom.server
[WARNING ] (MainProcess) http://localhost:8097/env/daim_17040900
[WARNING ] (MainProcess) <===================================> DQN
[WARNING ] (MainProcess) <-----------------------------------> Env
[WARNING ] (MainProcess) Creating {gym | CartPole-v0} w/ Seed: 123
[INFO    ] (MainProcess) Making new env: CartPole-v0
[WARNING ] (MainProcess) Action Space: [0, 1]
[WARNING ] (MainProcess) State  Space: 4
[WARNING ] (MainProcess) <-----------------------------------> Model
[WARNING ] (MainProcess) MlpModel (
  (fc1): Linear (4 -> 16)
  (rl1): ReLU ()
  (fc2): Linear (16 -> 16)
  (rl2): ReLU ()
  (fc3): Linear (16 -> 16)
  (rl3): ReLU ()
  (fc4): Linear (16 -> 2)
)
[WARNING ] (MainProcess) No Pretrained Model. Will Train From Scratch.
[WARNING ] (MainProcess) <===================================> Training ...
[WARNING ] (MainProcess) Validation Data @ Step: 501
[WARNING ] (MainProcess) Start  Training @ Step: 501
[WARNING ] (MainProcess) Reporting       @ Step: 2500 | Elapsed Time: 5.32397913933
[WARNING ] (MainProcess) Training Stats:   epsilon:          0.972
[WARNING ] (MainProcess) Training Stats:   total_reward:     2500.0
[WARNING ] (MainProcess) Training Stats:   avg_reward:       21.7391304348
[WARNING ] (MainProcess) Training Stats:   nepisodes:        115
[WARNING ] (MainProcess) Training Stats:   nepisodes_solved: 114
[WARNING ] (MainProcess) Training Stats:   repisodes_solved: 0.991304347826
[WARNING ] (MainProcess) Evaluating      @ Step: 2500
[WARNING ] (MainProcess) Iteration: 2500; v_avg: 1.73136949539
[WARNING ] (MainProcess) Iteration: 2500; tderr_avg: 0.0964358523488
[WARNING ] (MainProcess) Iteration: 2500; steps_avg: 9.34579439252
[WARNING ] (MainProcess) Iteration: 2500; steps_std: 0.798395631184
[WARNING ] (MainProcess) Iteration: 2500; reward_avg: 9.34579439252
[WARNING ] (MainProcess) Iteration: 2500; reward_std: 0.798395631184
[WARNING ] (MainProcess) Iteration: 2500; nepisodes: 107
[WARNING ] (MainProcess) Iteration: 2500; nepisodes_solved: 106
[WARNING ] (MainProcess) Iteration: 2500; repisodes_solved: 0.990654205607
[WARNING ] (MainProcess) Saving Model    @ Step: 2500: /home/zhang/ws/17_ws/pytorch-rl/models/daim_17040900.pth ...
[WARNING ] (MainProcess) Saved  Model    @ Step: 2500: /home/zhang/ws/17_ws/pytorch-rl/models/daim_17040900.pth.
[WARNING ] (MainProcess) Resume Training @ Step: 2500
...

What is included?

This repo currently contains the following agents:

  • Deep Q Learning (DQN) [1], [2]
  • Double DQN [3]
  • Dueling network DQN (Dueling DQN) [4]
  • Asynchronous Advantage Actor-Critic (A3C) (w/ both discrete/continuous action space support) [5], [6]
  • Sample Efficient Actor-Critic with Experience Replay (ACER) (currently w/ discrete action space support (Truncated Importance Sampling, 1st Order TRPO)) [7], [8]

Work in progress:

  • Testing ACER

Future Plans:

  • Deep Deterministic Policy Gradient (DDPG) [9], [10]
  • Continuous DQN (CDQN or NAF) [11]

Code structure & Naming conventions:

NOTE: we follow the exact code structure as pytorch-dnc so as to make the code easily transplantable.

  • ./utils/factory.py

We suggest the users refer to ./utils/factory.py, where we list all the integrated Env, Model, Memory, Agent into Dict's. All of those four core classes are implemented in ./core/. The factory pattern in ./utils/factory.py makes the code super clean, as no matter what type of Agent you want to train, or which type of Env you want to train on, all you need to do is to simply modify some parameters in ./utils/options.py, then the ./main.py will do it all (NOTE: this ./main.py file never needs to be modified).

  • namings

To make the code more clean and readable, we name the variables using the following pattern (mainly in inherited Agent's):

  • *_vb: torch.autograd.Variable's or a list of such objects
  • *_ts: torch.Tensor's or a list of such objects
  • otherwise: normal python datatypes

Dependencies


How to run:

You only need to modify some parameters in ./utils/options.py to train a new configuration.

  • Configure your training in ./utils/options.py:
  • line 14: add an entry into CONFIGS to define your training (agent_type, env_type, game, model_type, memory_type)
  • line 33: choose the entry you just added
  • line 29-30: fill in your machine/cluster ID (MACHINE) and timestamp (TIMESTAMP) to define your training signature (MACHINE_TIMESTAMP), the corresponding model file and the log file of this training will be saved under this signature (./models/MACHINE_TIMESTAMP.pth & ./logs/MACHINE_TIMESTAMP.log respectively). Also the visdom visualization will be displayed under this signature (first activate the visdom server by type in bash: python -m visdom.server &, then open this address in your browser: http://localhost:8097/env/MACHINE_TIMESTAMP)
  • line 32: to train a model, set mode=1 (training visualization will be under http://localhost:8097/env/MACHINE_TIMESTAMP); to test the model of this current training, all you need to do is to set mode=2 (testing visualization will be under http://localhost:8097/env/MACHINE_TIMESTAMP_test).
  • Run:

python main.py


Bonus Scripts :)

We also provide 2 additional scripts for quickly evaluating your results after training. (Dependecies: lmj-plot)

  • plot.sh (e.g., plot from log file: logs/machine1_17080801.log)
  • ./plot.sh machine1 17080801
  • the generated figures will be saved into figs/machine1_17080801/
  • plot_compare.sh (e.g., compare log files: logs/machine1_17080801.log,logs/machine2_17080802.log)

./plot.sh 00 machine1 17080801 machine2 17080802

  • the generated figures will be saved into figs/compare_00/
  • the color coding will be in the order of: red green blue magenta yellow cyan

Repos we referred to during the development of this repo:


Citation

If you find this library useful and would like to cite it, the following would be appropriate:

@misc{pytorch-rl,
  author = {Zhang, Jingwei and Tai, Lei},
  title = {jingweiz/pytorch-rl},
  url = {https://github.com/jingweiz/pytorch-rl},
  year = {2017}
}
Owner
Jingwei Zhang
Jingwei Zhang
RIM: Reliable Influence-based Active Learning on Graphs.

RIM: Reliable Influence-based Active Learning on Graphs. This repository is the official implementation of RIM. Requirements To install requirements:

Wentao Zhang 4 Aug 29, 2022
[ICCV 2021 Oral] NerfingMVS: Guided Optimization of Neural Radiance Fields for Indoor Multi-view Stereo

NerfingMVS Project Page | Paper | Video | Data NerfingMVS: Guided Optimization of Neural Radiance Fields for Indoor Multi-view Stereo Yi Wei, Shaohui

Yi Wei 369 Dec 24, 2022
A note taker for NVDA. Allows the user to create, edit, view, manage and export notes to different formats.

Quick Notetaker add-on for NVDA The Quick Notetaker add-on is a wonderful tool which allows writing notes quickly and easily anytime and from any app

5 Dec 06, 2022
Development of IP code based on VIPs and AADM

Sparse Implicit Processes In this repository we include the two different versions of the SIP code developed for the article Sparse Implicit Processes

1 Aug 22, 2022
Keras implementation of Deeplab v3+ with pretrained weights

Keras implementation of Deeplabv3+ This repo is not longer maintained. I won't respond to issues but will merge PR DeepLab is a state-of-art deep lear

1.3k Dec 07, 2022
Learning RGB-D Feature Embeddings for Unseen Object Instance Segmentation

Unseen Object Clustering: Learning RGB-D Feature Embeddings for Unseen Object Instance Segmentation Introduction In this work, we propose a new method

NVIDIA Research Projects 132 Dec 13, 2022
Linescanning - Package for (pre)processing of anatomical and (linescanning) fMRI data

line scanning repository This repository contains all of the tools used during the acquisition and postprocessing of line scanning data at the Spinoza

Jurjen Heij 4 Sep 14, 2022
一个免费开源一键搭建的通用验证码识别平台,大部分常见的中英数验证码识别都没啥问题。

captcha_server 一个免费开源一键搭建的通用验证码识别平台,大部分常见的中英数验证码识别都没啥问题。 使用方法 python = 3.8 以上环境 pip install -r requirements.txt -i https://pypi.douban.com/simple gun

Sml2h3 189 Dec 02, 2022
Repo for the Video Person Clustering dataset, and code for the associated paper

Video Person Clustering Repo for the Video Person Clustering dataset, and code for the associated paper. This reporsitory contains the Video Person Cl

Andrew Brown 47 Nov 02, 2022
Medical Image Segmentation using Squeeze-and-Expansion Transformers

Medical Image Segmentation using Squeeze-and-Expansion Transformers Introduction This repository contains the code of the IJCAI'2021 paper 'Medical Im

askerlee 172 Dec 20, 2022
BARF: Bundle-Adjusting Neural Radiance Fields 🤮 (ICCV 2021 oral)

BARF 🤮 : Bundle-Adjusting Neural Radiance Fields Chen-Hsuan Lin, Wei-Chiu Ma, Antonio Torralba, and Simon Lucey IEEE International Conference on Comp

Chen-Hsuan Lin 539 Dec 28, 2022
Image Segmentation Animation using Quadtree concepts.

QuadTree Image Segmentation Animation using QuadTree concepts. Usage usage: quad.py [-h] [-fps FPS] [-i ITERATIONS] [-ws WRITESTART] [-b] [-img] [-s S

Alex Eidt 29 Dec 25, 2022
Self-describing JSON-RPC services made easy

ReflectRPC Self-describing JSON-RPC services made easy Contents What is ReflectRPC? Installation Features Datatypes Custom Datatypes Returning Errors

Andreas Heck 31 Jul 16, 2022
(ICCV 2021) Official code of "Dressing in Order: Recurrent Person Image Generation for Pose Transfer, Virtual Try-on and Outfit Editing."

Dressing in Order (DiOr) 👚 [Paper] 👖 [Webpage] 👗 [Running this code] The official implementation of "Dressing in Order: Recurrent Person Image Gene

Aiyu Cui 277 Dec 28, 2022
Use CLIP to represent video for Retrieval Task

A Straightforward Framework For Video Retrieval Using CLIP This repository contains the basic code for feature extraction and replication of results.

Jesus Andres Portillo Quintero 54 Dec 22, 2022
Code for the Paper: Alexandra Lindt and Emiel Hoogeboom.

Discrete Denoising Flows This repository contains the code for the experiments presented in the paper Discrete Denoising Flows [1]. To give a short ov

Alexandra Lindt 3 Oct 09, 2022
Implement slightly different caffe-segnet in tensorflow

Tensorflow-SegNet Implement slightly different (see below for detail) SegNet in tensorflow, successfully trained segnet-basic in CamVid dataset. Due t

Tseng Kuan Lun 364 Oct 27, 2022
PyTorch implementation of the Flow Gaussian Mixture Model (FlowGMM) model from our paper

Flow Gaussian Mixture Model (FlowGMM) This repository contains a PyTorch implementation of the Flow Gaussian Mixture Model (FlowGMM) model from our pa

Pavel Izmailov 124 Nov 06, 2022
Make your master artistic punk avatar through machine learning world famous paintings.

Master-art-punk Make your master artistic punk avatar through machine learning world famous paintings. 通过机器学习世界名画制作属于你的大师级艺术朋克头像 Nowadays, NFT is beco

Philipjhc 53 Dec 27, 2022
Context Decoupling Augmentation for Weakly Supervised Semantic Segmentation

Context Decoupling Augmentation for Weakly Supervised Semantic Segmentation The code of: Context Decoupling Augmentation for Weakly Supervised Semanti

54 Dec 12, 2022