A FAIR dataset of TCV experimental results for validating edge/divertor turbulence models.

Related tags

Deep LearningTCV-X21
Overview

TCV-X21 validation for divertor turbulence simulations

Quick links

arXiv PDF

Binder DOI

Dataset licence Software licence

Test Python package codecov

Intro

Welcome to TCV-X21. We're glad you've found us!

This repository is designed to let you perform the analysis presented in Oliveira and Body et. al., Nuclear Fusion, 2021, both using the data given in the paper, and with a turbulence simulation of your own. We hope that, by providing the analysis, the TCV-X21 case can be used as a standard validation and bench-marking case for turbulence simulations of the divertor in fusion experiments. The repository allows you to scrutinise and suggest improvements to the analysis (there's always room for improvement), to directly interact with and explore the data in greater depth than is possible in a paper, and — we hope — use this case to test a simulation of your own.

To use this repository, you'll need to either use the mybinder.org link below OR user rights on a computer with Python-3, conda and git-lfs pre-installed.

Video tutorial

This quick tutorial shows you how to navigate the repository and use some of the functionality of the library.

Video_tutorial.mp4

What can you find in this repository

  • 1.experimental_data: data from the TCV experimental campaign, in NetCDF, MATLAB and IMAS formats, as well as information about the reference scenario, and the reference magnetic geometry (in .eqdsk, IMAS and PARALLAX-nc formats)
  • 2.simulation_data: data from simulations of the TCV-X21 case, in NetCDF format, as well as raw data files and conversion routines
  • 3.results: high resolution PNGs and LaTeX-ready tables for a paper
  • tcvx21: a Python library of software, which includes
    • record_c: a class to interface with NetCDF/HDF5 formatted data files
    • observable_c: a class to interact with and plot observables
    • file_io: tools to interact with MATLAB and JSON files
    • quant_validation: routines to perform the quantitative validation
    • analysis: statistics, curve-fitting, bootstrap algorithms, contour finding
    • units_m.py: setting up pint-based unit-aware analysis (it's difficult to overstate how cool this library is)
    • grillix_post: a set of routines used for post-processing GRILLIX simulation data, which might help if you're trying to post-process your own simulation. You can see a worked example in simulation_postprocessing.ipynb
  • notebooks: Jupyter notebooks, which allow us to provide code with outputs and comments together
    • simulation_setup.ipynb: what you might need to set up a simulation to test
    • simulation_postprocessing.ipynb: how to post-process the data
    • data_exploration.ipynb: some examples to get you started exploring the data
    • bulk_process.ipynb: runs over every observable to make the results — which you'll need to do if you're writing a paper from the results
  • tests: tests to make sure that we haven't broken anything in the analysis routines
  • README.md: this file, which helps you to get the software up and running, and to explain where you can find everything you need. It also provides the details of the licencing (below). There's more specific README.md files in several of the subfolders.

and lots more files. If you're not a developer, you can safely ignore these.

What can't you find in this repository

Due to licencing issues, the source code of the simulations is not provided. Sorry!

Also, the raw simulations are not provided here due to space limitations (some runs have more than a terabyte of data), but they are all backed up on archive servers. If you'd like to access the raw data, get in contact.

License and attribution notice

The TCV-X21 datasets are licenced under a Creative Commons Attribution 4.0 license, given in LICENCE. The source code of the analysis routines and Python library is licenced under a MIT license, given in tcvx21/LICENCE.

For the datasets, we ask that you provide attribution if using this data via the citation in the CITATION.cff file. We additionally require that you mark any changes to the dataset, and state specifically that the authors do not endorse your work unless such endorsement has been expressly given.

For the software, you can use, modify and share without attribution or marking changes.

Running the Jupyter notebooks (installation as non-root user)

To run the Jupyter notebooks, you have two options. The first is to use the mybinder.org interface, which let you interact with the notebooks via a web interface. You can launch the binder for this repository by clicking the binder badge in the repository header. Note that not all of the repository content is copied to the Docker image (this is specified in .dockerignore). The large checkpoint files are not included in the image, although they can be found in the repository at 2.simulation_data/GRILLIX/checkpoints_for_1mm. Additionally, the default docker image will not work with git.

Alternatively, if you'd like to run the notebooks locally or to extend the repository, you'll need to install additional Python packages. First of all, you need Python-3 and conda installed (latest versions recommended). Then, to install the necessary packages, we make a sandbox environment. This has a few advantages to installing packages globally — sudo rights are not required, you can install package versions without risking breaking other Python scripts, and if everything goes terribly wrong you can easily delete everything and restart. We've included a simple shell script to perform the necessary steps, which you can execute with

./install_env.sh

This will install the library in a subfolder of the TCV-X21 repository called tcvx21_env. It will also add a kernel to your global Jupyter installation. To remove the repository, you can delete the folder tcvx21_env and run jupyter kernelspec uninstall tcvx21.

To run tests and open Jupyter

Once you've installed via either option, you can activate the python environment with conda activate ./tcvx21_env. To deactivate, run conda deactivate.

Then, it is recommended to run the test suite with pytest which ensures that everything is installed and working correctly. If something fails, let us know in the issues. Note that this executes all of the analysis notebooks, so it might take a while to run.

Finally, run jupyter lab to open a Jupyter server in the TCV-X21 repository. Then, you can open any of the notebooks (.ipynb extension) by clicking in the side-bar.

A note on pinned dependencies

To ensure that the results are reproducible, the environment.yml file has pinned dependencies. However, if you want to use this software as a library, pinned dependencies are unnecessarily restrictive. You can remove the versions after the = sign in the environment.yml, but be warned that things might break.

You might also like...
Fair Recommendation in Two-Sided Platforms

Fair Recommendation in Two-Sided Platforms

Code for Private Recommender Systems: How Can Users Build Their Own Fair Recommender Systems without Log Data? (SDM 2022)

Private Recommender Systems: How Can Users Build Their Own Fair Recommender Systems without Log Data? (SDM 2022) We consider how a user of a web servi

Regulatory Instruments for Fair Personalized Pricing.

Fair pricing Source code for WWW 2022 paper Regulatory Instruments for Fair Personalized Pricing. Installation Requirements Linux with Python = 3.6 p

This is the official repo for TransFill:  Reference-guided Image Inpainting by Merging Multiple Color and Spatial Transformations at CVPR'21. According to some product reasons, we are not planning to release the training/testing codes and models. However, we will release the dataset and the scripts to prepare the dataset.
This code reproduces the results of the paper, "Measuring Data Leakage in Machine-Learning Models with Fisher Information"

Fisher Information Loss This repository contains code that can be used to reproduce the experimental results presented in the paper: Awni Hannun, Chua

A repository that shares tuning results of trained models generated by TensorFlow / Keras. Post-training quantization (Weight Quantization, Integer Quantization, Full Integer Quantization, Float16 Quantization), Quantization-aware training. TensorFlow Lite. OpenVINO. CoreML. TensorFlow.js. TF-TRT. MediaPipe. ONNX. [.tflite,.h5,.pb,saved_model,tfjs,tftrt,mlmodel,.xml/.bin, .onnx]
Experimental solutions to selected exercises from the book [Advances in Financial Machine Learning by Marcos Lopez De Prado]

Advances in Financial Machine Learning Exercises Experimental solutions to selected exercises from the book Advances in Financial Machine Learning by

An experimental technique for efficiently exploring neural architectures.
An experimental technique for efficiently exploring neural architectures.

SMASH: One-Shot Model Architecture Search through HyperNetworks An experimental technique for efficiently exploring neural architectures. This reposit

A simple but complete full-attention transformer with a set of promising experimental features from various papers
A simple but complete full-attention transformer with a set of promising experimental features from various papers

x-transformers A concise but fully-featured transformer, complete with a set of promising experimental features from various papers. Install $ pip ins

Comments
  • Repair results

    Repair results

    It appears that the 3.results folder had not been updated with the outputs of the notebooks.

    I've rerun the notebooks and now have the latest results in the folder.

    opened by TBody 1
Releases(v1.0)
code associated with ACL 2021 DExperts paper

DExperts Hi! This repository contains code for the paper DExperts: Decoding-Time Controlled Text Generation with Experts and Anti-Experts to appear at

Alisa Liu 68 Dec 15, 2022
Code for paper Adaptively Aligned Image Captioning via Adaptive Attention Time

Adaptively Aligned Image Captioning via Adaptive Attention Time This repository includes the implementation for Adaptively Aligned Image Captioning vi

Lun Huang 45 Aug 27, 2022
Code and experiments for "Deep Neural Networks for Rank Consistent Ordinal Regression based on Conditional Probabilities"

corn-ordinal-neuralnet This repository contains the orginal model code and experiment logs for the paper "Deep Neural Networks for Rank Consistent Ord

Raschka Research Group 14 Dec 27, 2022
Start-to-finish tutorial for interactive music co-creation in PyTorch and Tensorflow.js

Start-to-finish tutorial for interactive music co-creation in PyTorch and Tensorflow.js

Chris Donahue 98 Dec 14, 2022
[ICCV 2021] Amplitude-Phase Recombination: Rethinking Robustness of Convolutional Neural Networks in Frequency Domain

Amplitude-Phase Recombination (ICCV'21) Official PyTorch implementation of "Amplitude-Phase Recombination: Rethinking Robustness of Convolutional Neur

Guangyao Chen 53 Oct 05, 2022
ACAV100M: Automatic Curation of Large-Scale Datasets for Audio-Visual Video Representation Learning. In ICCV, 2021.

ACAV100M: Automatic Curation of Large-Scale Datasets for Audio-Visual Video Representation Learning This repository contains the code for our ICCV 202

sangho.lee 28 Nov 08, 2022
Framework that uses artificial intelligence applied to mathematical models to make predictions

LiconIA Framework that uses artificial intelligence applied to mathematical models to make predictions Interface Overview Table of contents [TOC] 1 Ar

4 Jun 20, 2021
Code for the paper "Next Generation Reservoir Computing"

Next Generation Reservoir Computing This is the code for the results and figures in our paper "Next Generation Reservoir Computing". They are written

OSU QuantInfo Lab 105 Dec 20, 2022
a pytorch implementation of auto-punctuation learned character by character

Learning Auto-Punctuation by Reading Engadget Articles Link to Other of my work 🌟 Deep Learning Notes: A collection of my notes going from basic mult

Ge Yang 137 Nov 09, 2022
gACSON software for visualization, processing and analysis of three-dimensional electron microscopy images

gACSON gACSON software is to visualize, segment, and analyze the morphology of neurons in three-dimensional electron microscopy images. If you use any

Andrea Behanova 2 May 31, 2022
Unified Pre-training for Self-Supervised Learning and Supervised Learning for ASR

UniSpeech The family of UniSpeech: UniSpeech (ICML 2021): Unified Pre-training for Self-Supervised Learning and Supervised Learning for ASR UniSpeech-

Microsoft 282 Jan 09, 2023
Human Detection - Pedestrian Detection using OpenCV Python

Pedestrian Detection using OpenCV Python Follow us on Instagram for Machine Lear

Hrishikesh Dutta 1 Jan 23, 2022
Contains a bunch of different python programm tasks

py_tasks Contains a bunch of different python programm tasks Armstrong.py - calculate Armsrong numbers in range from 0 to n with / without cache and c

Dmitry Chmerenko 1 Dec 17, 2021
IRON Kaggle project done while doing IRONHACK Bootcamp where we had to analyze and use a Machine Learning Project to predict future sales

IRON Kaggle project done while doing IRONHACK Bootcamp where we had to analyze and use a Machine Learning Project to predict future sales. In this case, we ended up using XGBoost because it was the o

1 Jan 04, 2022
A Pytree Module system for Deep Learning in JAX

Treex A Pytree-based Module system for Deep Learning in JAX Intuitive: Modules are simple Python objects that respect Object-Oriented semantics and sh

Cristian Garcia 216 Dec 20, 2022
State of the art Semantic Sentence Embeddings

Contrastive Tension State of the art Semantic Sentence Embeddings Published Paper · Huggingface Models · Report Bug Overview This is the official code

Fredrik Carlsson 88 Dec 30, 2022
Editing a Conditional Radiance Field

Editing Conditional Radiance Fields Project | Paper | Video | Demo Editing Conditional Radiance Fields Steven Liu, Xiuming Zhang, Zhoutong Zhang, Rich

Steven Liu 216 Dec 30, 2022
MoViNets PyTorch implementation: Mobile Video Networks for Efficient Video Recognition;

MoViNet-pytorch Pytorch unofficial implementation of MoViNets: Mobile Video Networks for Efficient Video Recognition. Authors: Dan Kondratyuk, Liangzh

189 Dec 20, 2022
基于PaddleOCR搭建的OCR server... 离线部署用

开头说明 DangoOCR 是基于大家的 CPU处理器 来运行的,CPU处理器 的好坏会直接影响其速度, 但不会影响识别的精度 ,目前此版本识别速度可能在 0.5-3秒之间,具体取决于大家机器的配置,可以的话尽量不要在运行时开其他太多东西。需要配合团子翻译器 Ver3.6 及其以上的版本才可以使用!

胖次团子 131 Dec 25, 2022
Code for the paper "VisualBERT: A Simple and Performant Baseline for Vision and Language"

This repository contains code for the following two papers: VisualBERT: A Simple and Performant Baseline for Vision and Language (arxiv) with a short

Natural Language Processing @UCLA 463 Dec 09, 2022