Planning from Pixels in Environments with Combinatorially Hard Search Spaces -- NeurIPS 2021

Related tags

Deep LearningPPGS
Overview

PPGS: Planning from Pixels in Environments with Combinatorially Hard Search Spaces

PPGS Overview

Environment Setup

  • We recommend pipenv for creating and managing virtual environments (dependencies for other environment managers can be found in Pipfile)
git clone https://github.com/martius-lab/PPGS
cd ppgs
pipenv install
pipenv shell
  • For simplicity, this codebase is ready for training on two of the three environments (IceSlider and DigitJump). They are part of the puzzlegen package, which we provide here, and can be simply installed with
pip install -e https://github.com/martius-lab/puzzlegen
  • Offline datasets can be generated for training and validation. In the case of IceSlider we can use
python -m puzzlegen.extract_trajectories --record-dir /path/to/train_data --env-name ice_slider --start-level 0 --number-levels 1000 --max-steps 20 --n-repeat 20 --random 1
python -m puzzlegen.extract_trajectories --record-dir /path/to/test_data --env-name ice_slider --start-level 1000 --number-levels 1000 --max-steps 20 --n-repeat 5 --random 1
  • Finally, we can add the paths to the extracted datasets in default_params.json as data_params.train_path and data_params.test_path. We should also set the name of the environment for validation in data_params.env_name ("ice_slider" for IceSlider or "digit_jump" for DigitJump).

  • Training and evaluation are performed sequentially by running

python main.py

Configuration

All settings can be handled by editing default_config.json.

Param Default Info
optimizer_params.eps 1e-05 epsilon for Adam
train_params.seed null seed for training
train_params.epochs 40 # of training epochs
train_params.batch_size 128 batch size for training
train_params.save_every_n_epochs 5 how often to save models
train_params.val_every_n_epochs 2 how often to perform validation
train_params.lr_dict - dictionary of learning rates for each component
train_params.loss_weight_dict - dictionary of weights for the three loss functions
train_params.margin 0.1 latent margin epsilon
train_params.hinge_params - hyperparameters for margin loss
train_params.schedule [] learning rate schedule
model_params.name 'ppgs' name of the model to train in ['ppgs', 'latent']
model_params.load_model true whether to load saved model if present
model_params.filters [64, 128, 256, 512] encoder filters
model_params.embedding_size 16 dimensionality of latent space
model_params.normalize true whether to normalize embeddings
model_params.forward_layers 3 layers in MLP forward model for 'latent' world model
model_params.forward_units 256 units in MLP forward model for 'latent' world model
model_params.forward_ln true layer normalization in MLP forward model for 'latent' world model
model_params.inverse_layers 1 layers in MLP inverse model
model_params.inverse_units 32 units in MLP inverse model
model_params.inverse_ln true layer normalization in MLP inverse model
data_params.train_path '' path to training dataset
data_params.test_path '' path to validation dataset
data_params.env_name 'ice_slider' name of environment ('ice_slider' for IceSlider, 'digit_jump' for DigitJump
data_params.seq_len 2 number of steps for multi-step loss
data_params.shuffle true whether to shuffle datasets
data_params.normalize true whether to normalize observations
data_params.encode_position false enables positional encoding
data_params.env_params {} params to pass to environment
eval_params.evaluate_losses true whether to compute evaluation losses
eval_params.evaluate_rollouts true whether to compute solution rates
eval_params.eval_at [1,3,4] # of steps to evaluate at
eval_params.latent_eval_at [1,5,10] K for latent metrics
eval_params.seeds [2000] starting seed for evaluation levels
eval_params.num_levels 100 # evaluation levels
eval_params.batch_size 128 batch size for latent metrics evaluation
eval_params.planner_params.batch_size 256 cutoff for graph search
eval_params.planner_params.margin 0.1 latent margin for reidentification
eval_params.planner_params.early_stop true whether to stop when goal is found
eval_params.planner_params.backtrack false enables backtracking algorithm
eval_params.planner_params.penalize_visited false penalizes visited vertices in graph search
eval_params.planner_params.eps 0 enables epsilon greedy action selection
eval_params.planner_params.max_steps 256 maximal solution length
eval_params.planner_params.replan horizon 10 T_max for full planner
eval_params.planner_params.snap false snaps new vertices to visited ones
working_dir "results/ppgs" directory for checkpoints and results
Owner
Autonomous Learning Group
Autonomous Learning Group
List of content farm sites like g.penzai.com.

内容农场网站清单 Google 中文搜索结果包含了相当一部分的内容农场式条目,比如「小 X 知识网」「小 X 百科网」。此种链接常会 302 重定向其主站,页面内容为自动生成,大量堆叠关键字,揉杂一些爬取到的内容,完全不具可读性和参考价值。 尤为过分的是,该类网站可能有成千上万个分身域名被 Goog

WDMPA 541 Jan 03, 2023
Computer Vision Paper Reviews with Key Summary of paper, End to End Code Practice and Jupyter Notebook converted papers

Computer-Vision-Paper-Reviews Computer Vision Paper Reviews with Key Summary along Papers & Codes. Jonathan Choi 2021 The repository provides 100+ Pap

Jonathan Choi 2 Mar 17, 2022
In-Place Activated BatchNorm for Memory-Optimized Training of DNNs

In-Place Activated BatchNorm In-Place Activated BatchNorm for Memory-Optimized Training of DNNs In-Place Activated BatchNorm (InPlace-ABN) is a novel

1.3k Dec 29, 2022
PyTorch framework for Deep Learning research and development.

Accelerated DL & RL PyTorch framework for Deep Learning research and development. It was developed with a focus on reproducibility, fast experimentati

Catalyst-Team 29 Jul 13, 2022
PyTorch implementation of a collections of scalable Video Transformer Benchmarks.

PyTorch implementation of Video Transformer Benchmarks This repository is mainly built upon Pytorch and Pytorch-Lightning. We wish to maintain a colle

Xin Ma 156 Jan 08, 2023
Official code release for 3DV 2021 paper Human Performance Capture from Monocular Video in the Wild.

Official code release for 3DV 2021 paper Human Performance Capture from Monocular Video in the Wild.

Chen Guo 58 Dec 24, 2022
The fastai deep learning library

Welcome to fastai fastai simplifies training fast and accurate neural nets using modern best practices Important: This documentation covers fastai v2,

fast.ai 23.2k Jan 07, 2023
Automatic Video Captioning Evaluation Metric --- EMScore

Automatic Video Captioning Evaluation Metric --- EMScore Overview For an illustration, EMScore can be computed as: Installation modify the encode_text

Yaya Shi 17 Nov 28, 2022
PyTorch Implementation of our paper Explain Me the Painting: Multi-Topic Knowledgeable Art Description Generation

PyTorch Implementation of our paper Explain Me the Painting: Multi-Topic Knowledgeable Art Description Generation

Zechen Bai 12 Jul 08, 2022
Bayesian Optimization using GPflow

Note: This package is for use with GPFlow 1. For Bayesian optimization using GPFlow 2 please see Trieste, a joint effort with Secondmind. GPflowOpt GP

GPflow 257 Dec 26, 2022
Stochastic Scene-Aware Motion Prediction

Stochastic Scene-Aware Motion Prediction [Project Page] [Paper] Description This repository contains the training code for MotionNet and GoalNet of SA

Mohamed Hassan 31 Dec 09, 2022
A framework for multi-step probabilistic time-series/demand forecasting models

JointDemandForecasting.py A framework for multi-step probabilistic time-series/demand forecasting models File stucture JointDemandForecasting contains

Stanford Intelligent Systems Laboratory 3 Sep 28, 2022
Use VITS and Opencpop to develop singing voice synthesis; Maybe it will VISinger.

Init Use VITS and Opencpop to develop singing voice synthesis; Maybe it will VISinger. 本项目基于 https://github.com/jaywalnut310/vits https://github.com/S

AmorTX 107 Dec 23, 2022
Tackling Obstacle Tower Challenge using PPO & A2C combined with ICM.

Obstacle Tower Challenge using Deep Reinforcement Learning Unity Obstacle Tower is a challenging realistic 3D, third person perspective and procedural

Zhuoyu Feng 5 Feb 10, 2022
Fast and Easy Infinite Neural Networks in Python

Neural Tangents ICLR 2020 Video | Paper | Quickstart | Install guide | Reference docs | Release notes Overview Neural Tangents is a high-level neural

Google 1.9k Jan 09, 2023
Pytorch implementation of XRD spectral identification from COD database

XRDidentifier Pytorch implementation of XRD spectral identification from COD database. Details will be explained in the paper to be submitted to NeurI

Masaki Adachi 4 Jan 07, 2023
The code for SAG-DTA: Prediction of Drug–Target Affinity Using Self-Attention Graph Network.

SAG-DTA The code is the implementation for the paper 'SAG-DTA: Prediction of Drug–Target Affinity Using Self-Attention Graph Network'. Requirements py

Shugang Zhang 7 Aug 02, 2022
Complete the code of prefix-tuning in low data setting

Prefix Tuning Note: 作者在论文中提到使用真实的word去初始化prefix的操作(Initializing the prefix with activations of real words,significantly improves generation)。我在使用作者提供的

Andrew Zeng 4 Jul 11, 2022
Third party Pytorch implement of Image Processing Transformer (Pre-Trained Image Processing Transformer arXiv:2012.00364v2)

ImageProcessingTransformer Third party Pytorch implement of Image Processing Transformer (Pre-Trained Image Processing Transformer arXiv:2012.00364v2)

61 Jan 01, 2023
All supplementary material used by me while TA-ing CS3244: Machine Learning

CS3244-Tutorial-Material All supplementary material used by me while TA-ing CS3244: Machine Learning at NUS School of Computing. What is this? I teach

Rishabh Anand 18 Sep 23, 2022