Pytorch implementation of XRD spectral identification from COD database

Overview

XRDidentifier

Pytorch implementation of XRD spectral identification from COD database.
Details will be explained in the paper to be submitted to NeurIPS 2021 Workshop Machine Learning and the Physical Sciences (https://ml4physicalsciences.github.io/2021/).

Features

expert model

1D-CNN (1D-RegNet) + Hierarchical Deep metric learning (AdaCos + Angular Penalty Softmax Loss)

mixture of experts

73 expert models tailered to general chemical elements with sparsely-gated layer

data augmentation

Physics-informed data augmentation

Requirements

  • Python 3.6
  • PyTorch 1.4
  • pymatgen
  • scikit-learn

Dataset Construction

In the paper, I used ICSD dataset, but it is forbidden to redistribute the CIFs followed by their license. I will write the CIF dataset construction method using COD instead.

1. download cif files from COD

Go to the COD homepage, search and download the cif URL list.
http://www.crystallography.net/cod/search.html

python3 download_cif_from_cod.py --input ./COD-selection.txt --output ./cif

2. convert cif into XRD spectra

First, check the cif files. (some files are broken or physically meaningless)

python3 read_cif.py --input ./cif --output ./lithium_datasets.pkl

lithium_datasets.pkl will be created.

Second, convert the checked results into XRD spectra database.

python3 convertXRDspectra.py --input ./lithium_datasets.pkl --batch 8 --n_aug 5

XRD_epoch5.pkl will be created.

Train expert models

python3 train_expert.py --input ./XRD_epoch5.pkl --output learning_curve.csv --batch 16 --n_epoch 100

Output data

  • Trained model -> regnet1d_adacos_epoch100.pt
  • Learning curve -> learning_curve.csv
  • Correspondence between numerical int label and crystal names -> material_labels.csv

Train Mixture-of-Experts model

You need to prepare both pre-trained expert models and pickled single XRD spectra files.
You should store the pre-trained expert models in './pretrained' folder, and the pickled single XRD spectra files in './pickles' folder.
The number of experts are automatically adjusted according to the number of the pretrained expert models.

python3 train_moe.py --data_path ./pickles --save_model moe.pt --batch 64 --epoch 100

Output data

  • Trained model -> moe.pt
  • Learning curve -> moe.csv

Citation

Papers

Implementation

Owner
Masaki Adachi
DPhil student in Machine Learning @ University of Oxford
Masaki Adachi
PyTorch implementation of InstaGAN: Instance-aware Image-to-Image Translation

InstaGAN: Instance-aware Image-to-Image Translation Warning: This repo contains a model which has potential ethical concerns. Remark that the task of

Sangwoo Mo 827 Dec 29, 2022
Selective Wavelet Attention Learning for Single Image Deraining

SWAL Code for Paper "Selective Wavelet Attention Learning for Single Image Deraining" Prerequisites Python 3 PyTorch Models We provide the models trai

Bobo 9 Jun 17, 2022
Official implementation of the paper 'Details or Artifacts: A Locally Discriminative Learning Approach to Realistic Image Super-Resolution' in CVPR 2022

LDL Paper | Supplementary Material Details or Artifacts: A Locally Discriminative Learning Approach to Realistic Image Super-Resolution Jie Liang*, Hu

150 Dec 26, 2022
Bot developed in Python that automates races in pegaxy.

español | português About it: This is a fork from pega-racing-bot. This bot, developed in Python, is to automate races in pegaxy. The game developers

4 Apr 08, 2022
Seg-Torch for Image Segmentation with Torch

Seg-Torch for Image Segmentation with Torch This work was sparked by my personal research on simple segmentation methods based on deep learning. It is

Eren Gölge 37 Dec 12, 2022
Dense Deep Unfolding Network with 3D-CNN Prior for Snapshot Compressive Imaging, ICCV2021 [PyTorch Code]

Dense Deep Unfolding Network with 3D-CNN Prior for Snapshot Compressive Imaging, ICCV2021 [PyTorch Code]

Jian Zhang 20 Oct 24, 2022
Implementations for the ICLR-2021 paper: SEED: Self-supervised Distillation For Visual Representation.

Implementations for the ICLR-2021 paper: SEED: Self-supervised Distillation For Visual Representation.

Jacob 27 Oct 23, 2022
Gym-TORCS is the reinforcement learning (RL) environment in TORCS domain with OpenAI-gym-like interface.

Gym-TORCS Gym-TORCS is the reinforcement learning (RL) environment in TORCS domain with OpenAI-gym-like interface. TORCS is the open-rource realistic

naoto yoshida 400 Dec 27, 2022
Introducing neural networks to predict stock prices

IntroNeuralNetworks in Python: A Template Project IntroNeuralNetworks is a project that introduces neural networks and illustrates an example of how o

Vivek Palaniappan 637 Jan 04, 2023
Implementation for "Seamless Manga Inpainting with Semantics Awareness" (SIGGRAPH 2021 issue)

Seamless Manga Inpainting with Semantics Awareness [SIGGRAPH 2021](To appear) | Project Website | BibTex Introduction: Manga inpainting fills up the d

101 Jan 01, 2023
A Python library for common tasks on 3D point clouds

Point Cloud Utils (pcu) - A Python library for common tasks on 3D point clouds Point Cloud Utils (pcu) is a utility library providing the following fu

Francis Williams 622 Dec 27, 2022
Deep Sea Treasure Environment for Multi-Objective Optimization Research

DeepSeaTreasure Environment Installation In order to get started with this environment, you can install it using the following command: python3 -m pip

imec IDLab 6 Nov 14, 2022
Trans-Encoder: Unsupervised sentence-pair modelling through self- and mutual-distillations

Trans-Encoder: Unsupervised sentence-pair modelling through self- and mutual-distillations Code repo for paper Trans-Encoder: Unsupervised sentence-pa

Amazon 101 Dec 29, 2022
This package contains deep learning models and related scripts for RoseTTAFold

RoseTTAFold This package contains deep learning models and related scripts to run RoseTTAFold This repository is the official implementation of RoseTT

1.6k Jan 03, 2023
Re-implement CycleGAN in Tensorlayer

CycleGAN_Tensorlayer Re-implement CycleGAN in TensorLayer Original CycleGAN Improved CycleGAN with resize-convolution Prerequisites: TensorLayer Tenso

89 Aug 15, 2022
PyTorch code of paper "LiVLR: A Lightweight Visual-Linguistic Reasoning Framework for Video Question Answering"

LiVLR-VideoQA We propose a Lightweight Visual-Linguistic Reasoning framework (LiVLR) for VideoQA. The overview of LiVLR: Evaluation on MSRVTT-QA Datas

JJ Jiang 7 Dec 30, 2022
A production-ready, scalable Indexer for the Jina neural search framework, based on HNSW and PSQL

🌟 HNSW + PostgreSQL Indexer HNSWPostgreSQLIndexer Jina is a production-ready, scalable Indexer for the Jina neural search framework. It combines the

Jina AI 25 Oct 14, 2022
PN-Net a neural field-based framework for depth estimation from single-view RGB images.

PN-Net We present a neural field-based framework for depth estimation from single-view RGB images. Rather than representing a 2D depth map as a single

1 Oct 02, 2021
WeakVRD-Captioning - Implementation of paper Improving Image Captioning with Better Use of Caption

WeakVRD-Captioning - Implementation of paper Improving Image Captioning with Better Use of Caption

30 Oct 28, 2022
Surrogate- and Invariance-Boosted Contrastive Learning (SIB-CL)

Surrogate- and Invariance-Boosted Contrastive Learning (SIB-CL) This repository contains all source code used to generate the results in the article "

Charlotte Loh 3 Jul 23, 2022