Safe Policy Optimization with Local Features

Overview

Safe Policy Optimization with Local Feature (SPO-LF)

This is the source-code for implementing the algorithms in the paper "Safe Policy Optimization with Local Generalized Linear Function Approximations" which was presented in NeurIPS-21.

Installation

There is requirements.txt in this repository. Except for the common modules (e.g., numpy, scipy), our source code depends on the following modules.

We also provide Dockerfile in this repository, which can be used for reproducing our grid-world experiment.

Simulation configuration

We manage the simulation configuration using hydra. Configurations are listed in config.yaml. For example, the algorithm to run should be chosen from the ones we implemented:

sim_type: {safe_glm, unsafe_glm, random, oracle, safe_gp_state, safe_gp_feature, safe_glm_stepwise}

Grid World Experiment

The source code necessary for our grid-world experiment is contained in /grid_world folder. To run the simulation, for example, use the following commands.

cd grid_world
python main.py sim_type=safe_glm env.reuse_env=False

For the monte carlo simulation while comparing our proposed method with baselines, use the shell file, run.sh.

We also provide a script for visualization. If you want to render how the agent behaves, use the following command.

python main.py sim_type=safe_glm env.reuse_env=True

Safety-Gym Experiment

The source code necessary for our safety-gym experiment is contained in /safety_gym_discrete folder. Our experiment is based on safety-gym. Our proposed method utilize dynamic programming algorithms to solve Bellman Equation, so we modified engine.py to discrtize the environment. We attach modified safety-gym source code in /safety_gym_discrete/engine.py. To use the modified library, please clone safety-gym, then replace safety-gym/safety_gym/envs/engine.py using /safety_gym_discrete/engine.py in our repo. Using the following commands to install the modified library:

cd safety_gym
pip install -e .

Note that MuJoCo licence is needed for installing Safety-Gym. To run the simulation, use the folowing commands.

cd safety_gym_discrete
python main.py sim_idx=0

We compare our proposed method with three notable baselines: CPO, PPO-Lagrangian, and TRPO-Lagrangian. The baseline implementation depends on safety-starter-agents. We modified run_agent.py in the repo source code.

To run the baseline, use the folowing commands.

cd safety_gym_discrete/baseline
python baseline_run.py sim_type=cpo

The environment that agent runs on is generated using generate_env.py. We provide 10 50*50 environments. If you want to generate other environments, you can change the world shape in safety_gym_discrete.py, and running the following commands:

cd safety_gym_discrete
python generate_env.py

Citation

If you find this code useful in your research, please consider citing:

@inproceedings{wachi_yue_sui_neurips2021,
  Author = {Wachi, Akifumi and Wei, Yunyue and Sui, Yanan},
  Title = {Safe Policy Optimization with Local Generalized Linear Function Approximations},
  Booktitle  = {Neural Information Processing Systems (NeurIPS)},
  Year = {2021}
}
Owner
Akifumi Wachi
Akifumi Wachi
The code is an implementation of Feedback Convolutional Neural Network for Visual Localization and Segmentation.

Feedback Convolutional Neural Network for Visual Localization and Segmentation The code is an implementation of Feedback Convolutional Neural Network

19 Dec 04, 2022
Improving Transferability of Representations via Augmentation-Aware Self-Supervision

Improving Transferability of Representations via Augmentation-Aware Self-Supervision Accepted to NeurIPS 2021 TL;DR: Learning augmentation-aware infor

hankook 38 Sep 16, 2022
A generator of point clouds dataset for PyPipes.

CloudPipesGenerator Documentation | Colab Notebooks | Video Tutorials | Master Degree website A generator of point clouds dataset for PyPipes. TODO Us

1 Jan 13, 2022
TensorFlow implementation for Bayesian Modeling and Uncertainty Quantification for Learning to Optimize: What, Why, and How

Bayesian Modeling and Uncertainty Quantification for Learning to Optimize: What, Why, and How TensorFlow implementation for Bayesian Modeling and Unce

Shen Lab at Texas A&M University 8 Sep 02, 2022
Vehicles Counting using YOLOv4 + DeepSORT + Flask + Ngrok

A project for counting vehicles using YOLOv4 + DeepSORT + Flask + Ngrok

Duong Tran Thanh 37 Dec 16, 2022
SiT: Self-supervised vIsion Transformer

This repository contains the official PyTorch self-supervised pretraining, finetuning, and evaluation codes for SiT (Self-supervised image Transformer).

Sara Ahmed 275 Dec 28, 2022
Simulation environments for the CrazyFlie quadrotor: Used for Reinforcement Learning and Sim-to-Real Transfer

Phoenix-Drone-Simulation An OpenAI Gym environment based on PyBullet for learning to control the CrazyFlie quadrotor: Can be used for Reinforcement Le

Sven Gronauer 8 Dec 07, 2022
A 10000+ hours dataset for Chinese speech recognition

WenetSpeech Official website | Paper A 10000+ Hours Multi-domain Chinese Corpus for Speech Recognition Download Please visit the official website, rea

310 Jan 03, 2023
Byzantine-robust decentralized learning via self-centered clipping

Byzantine-robust decentralized learning via self-centered clipping In this paper, we study the challenging task of Byzantine-robust decentralized trai

EPFL Machine Learning and Optimization Laboratory 4 Aug 27, 2022
An implementation of a sequence to sequence neural network using an encoder-decoder

Keras implementation of a sequence to sequence model for time series prediction using an encoder-decoder architecture. I created this post to share a

Luke Tonin 195 Dec 17, 2022
Offical code for the paper: "Growing 3D Artefacts and Functional Machines with Neural Cellular Automata" https://arxiv.org/abs/2103.08737

Growing 3D Artefacts and Functional Machines with Neural Cellular Automata Video of more results: https://www.youtube.com/watch?v=-EzztzKoPeo Requirem

Robotics Evolution and Art Lab 51 Jan 01, 2023
Official PyTorch implementation of "The Center of Attention: Center-Keypoint Grouping via Attention for Multi-Person Pose Estimation" (ICCV 21).

CenterGroup This the official implementation of our ICCV 2021 paper The Center of Attention: Center-Keypoint Grouping via Attention for Multi-Person P

Dynamic Vision and Learning Group 43 Dec 25, 2022
The Unsupervised Reinforcement Learning Benchmark (URLB)

The Unsupervised Reinforcement Learning Benchmark (URLB) URLB provides a set of leading algorithms for unsupervised reinforcement learning where agent

259 Dec 26, 2022
A pytorch implementation of Paper "Improved Training of Wasserstein GANs"

WGAN-GP An pytorch implementation of Paper "Improved Training of Wasserstein GANs". Prerequisites Python, NumPy, SciPy, Matplotlib A recent NVIDIA GPU

Marvin Cao 1.4k Dec 14, 2022
Learning kernels to maximize the power of MMD tests

Code for the paper "Generative Models and Model Criticism via Optimized Maximum Mean Discrepancy" (arXiv:1611.04488; published at ICLR 2017), by Douga

Danica J. Sutherland 201 Dec 17, 2022
Real-time multi-object tracker using YOLO v5 and deep sort

This repository contains a two-stage-tracker. The detections generated by YOLOv5, a family of object detection architectures and models pretrained on the COCO dataset, are passed to a Deep Sort algor

Mike 3.6k Jan 05, 2023
This is official implementaion of paper "Token Shift Transformer for Video Classification".

This is official implementaion of paper "Token Shift Transformer for Video Classification". We achieve SOTA performance 80.40% on Kinetics-400 val. Paper link

VideoNet 60 Dec 30, 2022
BBB streaming without Xorg and Pulseaudio and Chromium and other nonsense (heavily WIP)

BBB Streamer NG? Makes a conference like this... ...streamable like this! I also recorded a small video showing the basic features: https://www.youtub

Lukas Schauer 60 Oct 21, 2022
Neural-fractal - Create Fractals Using Complex-Valued Neural Networks!

Neural Fractal Create Fractals Using Complex-Valued Neural Networks! Home Page Features Define Dynamical Systems Using Complex-Valued Neural Networks

Amirabbas Asadi 10 Dec 17, 2022
Tzer: TVM Implementation of "Coverage-Guided Tensor Compiler Fuzzing with Joint IR-Pass Mutation (OOPSLA'22)“.

Artifact • Reproduce Bugs • Quick Start • Installation • Extend Tzer Coverage-Guided Tensor Compiler Fuzzing with Joint IR-Pass Mutation This is the s

12 Dec 29, 2022