Automated machine-learned Potential Landscape explorer
Project description
autoplex
is still under very active development and is only suitable for expert users as not all of the documentation is in place. This will change until end of November 2024.
autoplex
is a software for generating and benchmarking machine learning (ML)-based interatomic potentials. The aim of autoplex
is to provide a fully automated solution for creating high-quality ML potentials. The software is interfaced to multiple different ML potential fitting frameworks and to the atomate2 and ase environments for efficient high-throughput computations. The vision of this project is to allow a wide community of researchers to create accurate and reliable ML potentials for materials simulations.
autoplex
is developed jointly by two research groups at BAM Berlin and the University of Oxford.
autoplex
is an evolving project and contributions are very welcome! To ensure that the code remains of high quality, please raise a pull request for any contributions, which will be reviewed before integration into the main branch of the code. Initially, @JaGeo will handle the reviews.
Documentation
You can find the autoplex
documentation here!
The documentation also contains tutorials that teach you how to use autoplex
for different use cases.
Before you start using autoplex
We expect the general user of autoplex
to be familiar with the Materials Project framework software tools and related
packages for (high-throughput) workflow submission and management.
This involves the following software packages:
- pymatgen for input and output handling of computational materials science software
- atomate2 for providing a library of pre-defined computational materials science workflows
- jobflow for processes, job and workflow handling
- jobflow-remote or FireWorks for workflow and database (MongoDB) management
- MongoDB as the database (we recommend installing the MongoDB community version)
All of these software tools provide documentation and tutorials. Please take your time and check everything out!
Setup
To set up the mandatory prerequisites for using autoplex,
please follow the installation guide of atomate2.
After setting up atomate2
, make sure to add VASP_INCAR_UPDATES: {"NPAR": number}
in your ~/atomate2/config/atomate2.yaml
file.
Set a number that is a divisor of the number of tasks you use for the VASP calculations.
Installation
Python version
Before the installation, please make sure that you are using one of the supported Python versions (see pyproject.toml)
Standard installation
Please install autoplex
using pip install git+https://github.com/autoatml/autoplex.git
. This will install all the Python packages and dependencies needed for MLIP fits. We will release a version of autoplex
to PyPI in the next few weeks.
Additionally, to fit and validate ACEpotentials
, one also needs to install Julia, as Autoplex relies on ACEpotentials, which supports fitting of linear ACE. Currently, no Python package exists for the same.
Please run the following commands to enable the ACEpotentials
fitting options and further functionality.
Install Julia v1.9.2
curl -fsSL https://install.julialang.org | sh -s -- default-channel 1.9.2
Once installed in the terminal, run the following commands to get Julia ACEpotentials dependencies.
julia -e 'using Pkg; Pkg.Registry.add("General"); Pkg.Registry.add(Pkg.Registry.RegistrySpec(url="https://github.com/ACEsuit/ACEregistry")); Pkg.add(Pkg.PackageSpec(;name="ACEpotentials", version="0.6.7")); Pkg.add("DataFrames"); Pkg.add("CSV")'
Enabling RSS workflows
Additionally, buildcell
as a part of AIRSS
needs to be installed if one wants to use the RSS functionality:
curl -O https://www.mtg.msm.cam.ac.uk/files/airss-0.9.3.tgz; tar -xf airss-0.9.3.tgz; rm airss-0.9.3.tgz; cd airss; make ; make install ; make neat; cd ..
Contributing guidelines / Developer's installation
A short guide to contributing to autoplex can be found here. Additional information for developers can be found here.
Workflow overview
We currently have two different types of automation workflows available:
- Workflow to use random-structure searches for the systematic construction of interatomic potentials. The implementation automates ideas from the following articles: Phys. Rev. Lett. 120, 156001 (2018) and npj Comput. Mater. 5, 99 (2019).
- Workflow to train accurate interatomic potentials for harmonic phonon properties. The implementation automates the ideas from the following article: J. Chem. Phys. 153, 044104 (2020).
Project details
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