aviary
Materials discovery framework
A framework for building and deploying machine learning models for materials discovery
The Wren sits on its Roost in the Aviary.
48 stars
3 watching
12 forks
Language: Python
last commit: 12 days ago
Linked from 1 awesome list
machine-learningmaterial-sciencematerials-discoveryroostwren
Related projects:
Repository | Description | Stars |
---|---|---|
janosh/matbench-discovery | An evaluation framework for machine learning models simulating high-throughput materials discovery. | 107 |
tri-amdd/camd | Software framework for designing and executing sequential learning experiments in materials discovery | 60 |
materialsintelligence/mat2vec | Unsupervised word embeddings capture latent knowledge from materials science literature | 619 |
asappresearch/flambe | An ML framework for accelerating research and its integration into production workflows | 262 |
materialsproject/emmet | A framework for building and managing material properties databases | 55 |
anthony-wang/crabnet | A deep learning framework for predicting material properties from composition information. | 92 |
puniverse/comsat | A toolkit providing fibers and actors for concurrent web development in Java. | 598 |
pipermerriam/populus | A development framework for Ethereum smart contracts with built-in testing and release management tools | 13 |
usnistgov/jarvis | An open-source software package for data-driven materials design using atomistic simulations and machine learning techniques. | 311 |
ppdebreuck/modnet | A Python package implementing a machine learning framework for predicting material properties from composition or crystal structure data. | 80 |
negrinho/deep_architect | A modular framework for automatically searching over computational graphs to find good architectures for machine learning models | 121 |
achaiah/pywick | A PyTorch-based neural network training framework with advanced features and utilities | 398 |
unslothai/hyperlearn | An optimized machine learning framework using PyTorch that improves performance and efficiency on various hardware configurations | 1,842 |
project-dc/pygeneses | A PyTorch-based framework for training and studying artificial species in bio-inspired environments | 72 |
hal3/macarico | An implementation of an imperative learning to search framework in PyTorch for deep learning-based structured prediction and reinforcement learning. | 111 |