Code for "Solving Graph-based Public Good Games with Tree Search and Imitation Learning"

Overview

Code for "Solving Graph-based Public Good Games with Tree Search and Imitation Learning"

This is the code for the paper Solving Graph-based Public Good Games with Tree Search and Imitation Learning by Victor-Alexandru Darvariu, Stephen Hailes and Mirco Musolesi, presented at NeurIPS 2021. If you use this code, please consider citing:

@inproceedings{darvariu_solving_2021,
  title = {Solving Graph-based Public Good Games with Tree Search and Imitation Learning},
  author = {Darvariu, Victor-Alexandru and Hailes, Stephen and Musolesi, Mirco},
  booktitle = {35th Conference on Neural Information Processing Systems (NeurIPS 2021)},
  year={2021},
}

License

MIT.

Prerequisites

Currently tested on Linux and MacOS (specifically, CentOS 7.4.1708 and Mac OS Big Sur 11.2.3), can also be adapted to Windows through WSL. The host machine requires NVIDIA CUDA toolkit version 9.0 or above (tested with NVIDIA driver version 384.81).

Makes heavy use of Docker, see e.g. here for how to install. Tested with Docker 19.03. The use of Docker largely does away with dependency and setup headaches, making it significantly easier to reproduce the reported results.

Configuration

The Docker setup uses Unix groups to control permissions. You can reuse an existing group that you are a member of, or create a new group groupadd -g GID GNAME and add your user to it usermod -a -G GNAME MYUSERNAME.

Create a file relnet.env at the root of the project (see relnet_example.env) and adjust the paths within: this is where some data generated by the container will be stored. Also specify the group ID and name created / selected above.

Add the following lines to your .bashrc, replacing /home/john/git/relnet with the path where the repository is cloned.

export RN_SOURCE_DIR='/home/john/git/relnet'
set -a
. $RN_SOURCE_DIR/relnet.env
set +a

export PATH=$PATH:$RN_SOURCE_DIR/scripts

Make the scripts executable (e.g. chmod u+x scripts/*) the first time after cloning the repository, and run apply_permissions.sh in order to create and permission the necessary directories.

Managing the containers

Some scripts are provided for convenience. To build the containers (note, this will take a significant amount of time e.g. 2 hours, as some packages are built from source):

update_container.sh

To start them:

manage_container_gpu.sh up
manage_container.sh up

To stop them:

manage_container_gpu.sh stop
manage_container.sh stop

To purge the queue and restart the containers (useful for killing tasks that were launched):

purge_and_restart.sh

Adjusting the number of workers and threads

To take maximum advantage of your machine's capacity, you may want to tweak the number of threads for the GPU and CPU workers. This configuration is provided in projectconfig.py. Additionally, you may want to enforce certain memory limits for your workers to avoid OOM errors. This can be tweaked in docker-compose.yml and manage_container_gpu.sh.

It is also relatively straightforward to add more workers from different machines you control. For this, you will need to mount the volumes on networked-attached storage (i.e., make sure paths provided in relnet.env are network-accessible) and adjust the location of backend and queue in projectconfig.py to a network location instead of localhost. On the other machines, only start the worker container (see e.g. manage_container.sh).

Setting up graph data

Synthetic data will be automatically generated when the experiments are ran and stored to $RN_EXPERIMENT_DIR/stored_graphs.

Accessing the services

There are several services running on the manager node.

  • Jupyter notebook server: http://localhost:8888
  • Flower for queue statistics: http://localhost:5555
  • Tensorboard (currently disabled due to its large memory footprint): http://localhost:6006
  • RabbitMQ management: http://localhost:15672

The first time Jupyter is accessed it will prompt for a token to enable password configuration, it can be grabbed by running docker exec -it relnet-manager /bin/bash -c "jupyter notebook list".

Accessing experiment data and results database

Experiment data and results are stored in part as files (under your configured $RN_EXPERIMENT_DATA_DIR) as well as in a MongoDB database. To access the MongoDB database with a GUI, you can use a MongoDB client such as Robo3T and point it to http://localhost:27017.

Some functionality is provided in relnet/evaluation/storage.py to insert and retrieve data, you can use it in e.g. analysis notebooks.

Running experiments

Experiments are launched from the manager container and processed (in a parallel way) by the workers. The file relnet/evaluation/experiment_conditions.py contains the configuration for the experiments reported in the paper, but you may modify e.g. agents, objective functions, hyperparameters etc. to suit your needs.

Then, you can launch all the experiments as follows:

Part 1: Hyperparameter optimization & evaluation for all aproaches except GIL

run_part1.sh

Part 2: Data collection for GIL using the UCT algorithm

run_part2.sh

Part 3: Training & hyperparameter optimization for GIL

run_part3.sh

Monitoring experiments

  • You can navigate to http://localhost:5555 for the Flower interface which shows the progress of processing tasks in the queue. You may also check logs for both manager and worker at $RN_EXPERIMENT_DATA_DIR/logs.

Reproducing the results

Jupyter notebooks are used to perform the data analysis and produce tables and figures. Navigate to http://localhost:8888, then notebooks folder.

All tables and result figures can be obtained by opening the GGNN_Evaluation.ipynb notebook, selecting the py3-relnet kernel and run all cells. Resulting .pdf figures and .tex tables can be found at $RN_EXPERIMENT_DIR/aggregate. There are additional notebooks provided for analyzing the results of hyperparameter optimization:

  • GGNN_Hyperparam_Optimisation.ipynb for UCT
  • GGNN_Hyperparam_Optimisation_IL.ipynb for GIL

Problems with jupyter kernel

In case the py3-relnet kernel is not found, try reinstalling the kernel by running docker exec -it -u 0 relnet-manager /bin/bash -c "source activate relnet-cenv; python -m ipykernel install --user --name relnet --display-name py3-relnet"

Owner
Victor-Alexandru Darvariu
Doctoral Student at University College London and The Alan Turing Institute.
Victor-Alexandru Darvariu
The repository contains source code and models to use PixelNet architecture used for various pixel-level tasks. More details can be accessed at .

PixelNet: Representation of the pixels, by the pixels, and for the pixels. We explore design principles for general pixel-level prediction problems, f

Aayush Bansal 196 Aug 10, 2022
The official PyTorch code for NeurIPS 2021 ML4AD Paper, "Does Thermal data make the detection systems more reliable?"

MultiModal-Collaborative (MMC) Learning Framework for integrating RGB and Thermal spectral modalities This is the official code for NeurIPS 2021 Machi

NeurAI 12 Nov 02, 2022
This repository is for DSA and CP scripts for reference.

dsa-script-collections This Repo is the collection of DSA and CP scripts for reference. Contents Python Bubble Sort Insertion Sort Merge Sort Quick So

Aditya Kumar Pandey 9 Nov 22, 2022
TResNet: High Performance GPU-Dedicated Architecture

TResNet: High Performance GPU-Dedicated Architecture paperV2 | pretrained models Official PyTorch Implementation Tal Ridnik, Hussam Lawen, Asaf Noy, I

426 Dec 28, 2022
For IBM Quantum Challenge Africa 2021, 9 September (07:00 UTC) - 20 September (23:00 UTC).

IBM Quantum Challenge Africa 2021 To ensure Africa is able to apply quantum computing to solve problems relevant to the continent, the IBM Research La

Qiskit Community 48 Dec 25, 2022
InsightFace: 2D and 3D Face Analysis Project on MXNet and PyTorch

InsightFace: 2D and 3D Face Analysis Project on MXNet and PyTorch

Deep Insight 13.2k Jan 06, 2023
Voxel Set Transformer: A Set-to-Set Approach to 3D Object Detection from Point Clouds (CVPR 2022)

Voxel Set Transformer: A Set-to-Set Approach to 3D Object Detection from Point Clouds (CVPR2022)[paper] Authors: Chenhang He, Ruihuang Li, Shuai Li, L

Billy HE 141 Dec 30, 2022
Official PyTorch implementation of "Meta-Learning with Task-Adaptive Loss Function for Few-Shot Learning" (ICCV2021 Oral)

MeTAL - Meta-Learning with Task-Adaptive Loss Function for Few-Shot Learning (ICCV2021 Oral) Sungyong Baik, Janghoon Choi, Heewon Kim, Dohee Cho, Jaes

Sungyong Baik 44 Dec 29, 2022
The undersampled DWI image using Slice-Interleaved Diffusion Encoding (SIDE) method can be reconstructed by the UNet network.

UNet-SIDE The undersampled DWI image using Slice-Interleaved Diffusion Encoding (SIDE) method can be reconstructed by the UNet network. For Super Reso

TIANTIAN XU 1 Jan 13, 2022
Adversarial Graph Augmentation to Improve Graph Contrastive Learning

ADGCL : Adversarial Graph Augmentation to Improve Graph Contrastive Learning Introduction This repo contains the Pytorch [1] implementation of Adversa

susheel suresh 62 Nov 19, 2022
RCDNet: A Model-driven Deep Neural Network for Single Image Rain Removal (CVPR2020)

RCDNet: A Model-driven Deep Neural Network for Single Image Rain Removal (CVPR2020) Hong Wang, Qi Xie, Qian Zhao, and Deyu Meng [PDF] [Supplementary M

Hong Wang 6 Sep 27, 2022
My take on a practical implementation of Linformer for Pytorch.

Linformer Pytorch Implementation A practical implementation of the Linformer paper. This is attention with only linear complexity in n, allowing for v

Peter 349 Dec 25, 2022
Facebook Research 605 Jan 02, 2023
[PyTorch] Official implementation of CVPR2021 paper "PointDSC: Robust Point Cloud Registration using Deep Spatial Consistency". https://arxiv.org/abs/2103.05465

PointDSC repository PyTorch implementation of PointDSC for CVPR'2021 paper "PointDSC: Robust Point Cloud Registration using Deep Spatial Consistency",

153 Dec 14, 2022
Semi-supervised learning for object detection

Source code for STAC: A Simple Semi-Supervised Learning Framework for Object Detection STAC is a simple yet effective SSL framework for visual object

Google Research 348 Dec 25, 2022
GndNet: Fast ground plane estimation and point cloud segmentation for autonomous vehicles using deep neural networks.

GndNet: Fast Ground plane Estimation and Point Cloud Segmentation for Autonomous Vehicles. Authors: Anshul Paigwar, Ozgur Erkent, David Sierra Gonzale

Anshul Paigwar 114 Dec 29, 2022
Parsing, analyzing, and comparing source code across many languages

Semantic semantic is a Haskell library and command line tool for parsing, analyzing, and comparing source code. In a hurry? Check out our documentatio

GitHub 8.6k Dec 28, 2022
Tree Nested PyTorch Tensor Lib

DI-treetensor treetensor is a generalized tree-based tensor structure mainly developed by OpenDILab Contributors. Almost all the operation can be supp

OpenDILab 167 Dec 29, 2022
A script helps the user to update Linux and Mac systems through the terminal

Description This script helps the user to update Linux and Mac systems through the terminal. All the user has to install some requirements and then ru

Roxcoder 2 Jan 23, 2022
Code for our EMNLP 2021 paper "Learning Kernel-Smoothed Machine Translation with Retrieved Examples"

KSTER Code for our EMNLP 2021 paper "Learning Kernel-Smoothed Machine Translation with Retrieved Examples" [paper]. Usage Download the processed datas

jiangqn 23 Nov 24, 2022