Can we visualize a large scientific data set with a surrogate model? We're building a GAN for the Earth's Mantle Convection data set to see if we can!

Overview

EarthGAN - Earth Mantle Surrogate Modeling

Can a surrogate model of the Earth’s Mantle Convection data set be built such that it can be readily run in a web-browser and produce high-fidelity results? We're trying to do just that through the use of a generative adversarial network -- we call ours EarthGAN. We are in active research.

See how EarthGAN currently works! Open up the Colab notebook and create results from the preliminary generator: Open In Colab

compare_epoch41_rindex165_moll

Progress updates, along with my thoughts, can be found in the devlog. The preliminary results were presented at VIS 2021 as part of the SciVis contest. See the paper on arXiv, here.

This is active research. If you have any thoughts, suggestions, or would like to collaborate, please reach out! You can also post questions/ideas in the discussions section.

Source code arXiv

Current Approach

We're leveraging the excellent work of Li et al. who have implemented a GAN for creating super-resolution cosmological simulations. The general method is in their map2map repository. We've used their GAN implementation as it works on 3D data. Please cite their work if you find it useful!

The current approach is based on the StyleGAN2 model. In addition, a conditional-GAN (cGAN) is used to produce results that are partially deterministic.

Setup

Works best if you are in a HPC environment (I used Compute Canada). Also tested locally in linux (MacOS should also work). If you run windows you'll have to do much of the environment setup and data download/preprocessing manually.

To reproduce data pipeline and begin training: *

  1. Clone this repo - clone https://github.com/tvhahn/EarthGAN.git

  2. Create virtual environment. Assumes that Conda is installed when on a local computer.

    • HPC: make create_environment will detect HPC environment and automatically create environment from make_hpc_venv.sh. Tested on Compute Canada. Modify make_hpc_venv.sh for your own HPC cluster.

    • Linux/MacOS: use command from Makefile - `make create_environment

  3. Download raw data.

    • HPC: use make download. Will automatically detect HPC environment.

    • Linux/MacOS: use make download. Will automatically download to appropriate data/raw directory.

  4. Extract raw data.

    • HPC: use make download. Will automatically detect HPC environment. Again, modify for your HPC cluster.
    • Linux/MacOS: use make extract. Will automatically extract to appropriate data/raw directory.
  5. Ensure virtual environment is activated. conda activate earth

  6. From root directory of EarthGAN, run pip install -e . -- this will give the python scripts access to the src folders.

  7. Create the processed data that will be used for training.

    • HPC: use make data. Will automatically detect HPC environment and create the processed data.

      πŸ“ Note: You will have to modify the make_hpc_data.sh in the ./bash_scripts/ folder to match the requirements of your HPC environment

    • Linux/MacOS: use make data.

  8. Copy the processed data to the scratch folder if you're on the HPC. Modify copy_processed_data_to_scratch.sh in ./bash_scripts/ folder.

  9. Train!

    • HPC: use make train. Again, modify for your HPC cluster. Not yet optimized for multi-GPU training, so be warned, it will be SLOW!

    • Linux/MacOS: use make train.

* Let me know if you run into any problems! This is still in development.

Project Organization

β”œβ”€β”€ Makefile           <- Makefile with commands like `make data` or `make train`
β”‚
β”œβ”€β”€ bash_scripts	   <- Bash scripts used in for training models or setting up environment
β”‚   β”œβ”€β”€ train_model_hpc.sh       <- Bash/SLURM script used to train models on HPC (you will need to	modify this to work on your HPC). Called with `make train`
β”‚   └── train_model_local.sh     <- Bash script used to train models locally. Called on with `make train`
β”‚
β”œβ”€β”€ data
β”‚   β”œβ”€β”€ interim        <- Intermediate data before we've applied any scaling.
β”‚   β”œβ”€β”€ processed      <- The final, canonical data sets for modeling.
β”‚   └── raw            <- Original data from Earth Mantle Convection simulation.
β”‚
β”œβ”€β”€ models             <- Trained and serialized models, model predictions, or model summaries
β”‚   └── interim        <- Interim models and summaries
β”‚   └── final          <- Final, cononical models
β”‚
β”œβ”€β”€ notebooks          <- Jupyter notebooks. Generally used for explaining various components
β”‚   β”‚                     of the code base.
β”‚   └── scratch        <- Rough-draft notebooks, of questionable quality. Be warned!
β”‚
β”œβ”€β”€ references         <- Data dictionaries, manuals, and all other explanatory materials.
β”‚
β”œβ”€β”€ reports            <- Generated analysis as HTML, PDF, LaTeX, etc.
β”‚   └── figures        <- Generated graphics and figures to be used in reporting
β”‚
β”œβ”€β”€ requirements.txt   <- Recommend using `make create_environment`. However, can use this file
β”‚                         for to recreate environment with pip
β”œβ”€β”€ envearth.yml       <- Used to create conda environment. Use `make create_environment` when
β”‚                         on local compute				
β”‚
β”œβ”€β”€ setup.py           <- makes project pip installable (pip install -e .) so src can be imported
β”œβ”€β”€ src                <- Source code for use in this project.
β”‚   β”œβ”€β”€ __init__.py    <- Makes src a Python module
β”‚   β”‚
β”‚   β”œβ”€β”€ data           <- Scripts to download or generate data
β”‚   β”‚   β”œβ”€β”€ make_dataset.py			<- Script for making downsampled data from the original
β”‚   β”‚   β”œβ”€β”€ data_prep_utils.py		<- Misc functions used in data prep
β”‚   β”‚   β”œβ”€β”€ download.sh				<- Bash script to download entire Earth Mantle data set
β”‚   β”‚   β”‚  							   (used when `make data` called)
β”‚   β”‚   └──download.sh				<- Bash script to extract all Earth Mantle data set files
β”‚   β”‚    							   from zip (used when `make extract` called)								   
β”‚   β”‚
β”‚   β”œβ”€β”€ models         <- Scripts to train models and then use trained models to make
β”‚   β”‚   β”‚                 predictions
β”‚   β”‚   β”‚
β”‚   β”‚   └── train_model.py
β”‚   β”‚
β”‚   └── visualization  <- Scripts to create exploratory and results oriented visualizations
β”‚       └── visualize.py
β”‚
β”œβ”€β”€ LICENSE
└── README.md          <- README describing project.
You might also like...
An implementation of the [Hierarchical (Sig-Wasserstein) GAN] algorithm for large dimensional Time Series Generation
An implementation of the [Hierarchical (Sig-Wasserstein) GAN] algorithm for large dimensional Time Series Generation

Hierarchical GAN for large dimensional financial market data Implementation This repository is an implementation of the [Hierarchical (Sig-Wasserstein

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 (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

A multi-functional library for full-stack Deep Learning. Simplifies Model Building, API development, and Model Deployment.
A multi-functional library for full-stack Deep Learning. Simplifies Model Building, API development, and Model Deployment.

chitra What is chitra? chitra (ΰ€šΰ€Ώΰ€€ΰ₯ΰ€°) is a multi-functional library for full-stack Deep Learning. It simplifies Model Building, API development, and M

Official PyTorch implementation for Generic Attention-model Explainability for Interpreting Bi-Modal and Encoder-Decoder Transformers, a novel method to visualize any Transformer-based network. Including examples for DETR, VQA.
Official PyTorch implementation for Generic Attention-model Explainability for Interpreting Bi-Modal and Encoder-Decoder Transformers, a novel method to visualize any Transformer-based network. Including examples for DETR, VQA.

PyTorch Implementation of Generic Attention-model Explainability for Interpreting Bi-Modal and Encoder-Decoder Transformers 1 Using Colab Please notic

Visualize Camera's Pose Using Extrinsic Parameter by Plotting Pyramid Model on 3D Space
Visualize Camera's Pose Using Extrinsic Parameter by Plotting Pyramid Model on 3D Space

extrinsic2pyramid Visualize Camera's Pose Using Extrinsic Parameter by Plotting Pyramid Model on 3D Space Intro A very simple and straightforward modu

Language Models Can See: Plugging Visual Controls in Text Generation
Language Models Can See: Plugging Visual Controls in Text Generation

Language Models Can See: Plugging Visual Controls in Text Generation Authors: Yixuan Su, Tian Lan, Yahui Liu, Fangyu Liu, Dani Yogatama, Yan Wang, Lin

This is my codes that can visualize the psnr image in testing videos.
This is my codes that can visualize the psnr image in testing videos.

CVPR2018-Baseline-PSNRplot This is my codes that can visualize the psnr image in testing videos. Future Frame Prediction for Anomaly Detection – A New

A library for answering questions using data you cannot see
A library for answering questions using data you cannot see

A library for computing on data you do not own and cannot see PySyft is a Python library for secure and private Deep Learning. PySyft decouples privat

Code and data for the paper
Code and data for the paper "Hearing What You Cannot See"

Hearing What You Cannot See: Acoustic Vehicle Detection Around Corners Public repository of the paper "Hearing What You Cannot See: Acoustic Vehicle D

Releases(v1.0.0)
  • v1.0.0(Nov 4, 2021)

Owner
Tim
Data science. Innovation. ML practitioner.
Tim
Alphabetical Letter Recognition

BayeesNetworks-Image-Classification Alphabetical Letter Recognition In these demo we are using "Bayees Networks" Our database is composed by Learning

Mohammed Firass 4 Nov 30, 2021
A python-image-classification web application project, written in Python and served through the Flask Microframework

A python-image-classification web application project, written in Python and served through the Flask Microframework. This Project implements the VGG16 covolutional neural network, through Keras and

Gerald Maduabuchi 19 Dec 12, 2022
Edge Restoration Quality Assessment

ERQA - Edge Restoration Quality Assessment ERQA - a full-reference quality metric designed to analyze how good image and video restoration methods (SR

MSU Video Group 27 Dec 17, 2022
Code for the Paper: Conditional Variational Capsule Network for Open Set Recognition

Conditional Variational Capsule Network for Open Set Recognition This repository hosts the official code related to "Conditional Variational Capsule N

Guglielmo Camporese 35 Nov 21, 2022
GEP (GDB Enhanced Prompt) - a GDB plug-in for GDB command prompt with fzf history search, fish-like autosuggestions, auto-completion with floating window, partial string matching in history, and more!

GEP (GDB Enhanced Prompt) GEP (GDB Enhanced Prompt) is a GDB plug-in which make your GDB command prompt more convenient and flexibility. Why I need th

Alan Li 23 Dec 21, 2022
OpenMatch: Open-set Consistency Regularization for Semi-supervised Learning with Outliers (NeurIPS 2021)

OpenMatch: Open-set Consistency Regularization for Semi-supervised Learning with Outliers (NeurIPS 2021) This is an PyTorch implementation of OpenMatc

Vision and Learning Group 38 Dec 26, 2022
Multi-Objective Reinforced Active Learning

Multi-Objective Reinforced Active Learning Dependencies wandb tqdm pytorch = 1.7.0 numpy = 1.20.0 scipy = 1.1.0 pycolab == 1.2 Weights and Biases O

Markus Peschl 6 Nov 19, 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
Adaptive Denoising Training (ADT) for Recommendation.

DenoisingRec Adaptive Denoising Training for Recommendation. This is the pytorch implementation of our paper at WSDM 2021: Denoising Implicit Feedback

Wenjie Wang 51 Dec 30, 2022
Semi-Supervised Semantic Segmentation via Adaptive Equalization Learning, NeurIPS 2021 (Spotlight)

Semi-Supervised Semantic Segmentation via Adaptive Equalization Learning, NeurIPS 2021 (Spotlight) Abstract Due to the limited and even imbalanced dat

Hanzhe Hu 99 Dec 12, 2022
Customizable RecSys Simulator for OpenAI Gym

gym-recsys: Customizable RecSys Simulator for OpenAI Gym Installation | How to use | Examples | Citation This package describes an OpenAI Gym interfac

Xingdong Zuo 14 Dec 08, 2022
Unofficial Tensorflow 2 implementation of the paper Implicit Neural Representations with Periodic Activation Functions

Siren: Implicit Neural Representations with Periodic Activation Functions The unofficial Tensorflow 2 implementation of the paper Implicit Neural Repr

Seyma Yucer 2 Jun 27, 2022
Example-custom-ml-block-keras - Custom Keras ML block example for Edge Impulse

Custom Keras ML block example for Edge Impulse This repository is an example on

Edge Impulse 8 Nov 02, 2022
PyTorchVideo is a deeplearning library with a focus on video understanding work

PyTorchVideo is a deeplearning library with a focus on video understanding work. PytorchVideo provides resusable, modular and efficient components needed to accelerate the video understanding researc

Facebook Research 2.7k Jan 07, 2023
Multilingual Image Captioning

Multilingual Image Captioning Authors: Bhavitvya Malik, Gunjan Chhablani Demo Link: https://huggingface.co/spaces/flax-community/multilingual-image-ca

Gunjan Chhablani 32 Nov 25, 2022
Neural network for digit classification powered by cuda

cuda_nn_mnist Neural network library for digit classification powered by cuda Resources The library was built to work with MNIST dataset. python-mnist

Nikita Ardashev 1 Dec 20, 2021
Official code for the ICCV 2021 paper "DECA: Deep viewpoint-Equivariant human pose estimation using Capsule Autoencoders"

DECA Official code for the ICCV 2021 paper "DECA: Deep viewpoint-Equivariant human pose estimation using Capsule Autoencoders". All the code is writte

23 Dec 01, 2022
[CVPR 2022 Oral] Balanced MSE for Imbalanced Visual Regression https://arxiv.org/abs/2203.16427

Balanced MSE Code for the paper: Balanced MSE for Imbalanced Visual Regression Jiawei Ren, Mingyuan Zhang, Cunjun Yu, Ziwei Liu CVPR 2022 (Oral) News

Jiawei Ren 267 Jan 01, 2023
Unsupervised MRI Reconstruction via Zero-Shot Learned Adversarial Transformers

Official TensorFlow implementation of the unsupervised reconstruction model using zero-Shot Learned Adversarial TransformERs (SLATER). (https://arxiv.

ICON Lab 22 Dec 22, 2022
Off-policy continuous control in PyTorch, with RDPG, RTD3 & RSAC

arXiv technical report soon available. we are updating the readme to be as comprehensive as possible Please ask any questions in Issues, thanks. Intro

Zhihan 31 Dec 30, 2022