Data package for the paper "Machine learning short-ranged many-body interactions in colloidal systems using descriptors based on Voronoi cells"
Authors/Creators
Description
Data package accompanying the publication "Machine learning short-ranged many-body interactions in colloidal systems using descriptors based on Voronoi cells". It provides all the necessary resources to reproduce the results and analyses presented in the study, which introduces a machine learning (ML) strategy for accurately modeling highly local many-body interactions in colloidal systems. Specifically, for a two-dimensional system consisting of polymers and colloids, we developed a Voronoi-based description of the system and demonstrated that it accurately captures the many-body nature of the system. This data package contains all relevant codes, data and analysis notebooks te reproduce the results found in the paper. The package has the following structure:
- [FIGURES] contains all figures from the paper, along with the relevant analysis notebooks, Adobe Illustrator files, and additional data to generate the figures.
- [CODES] contains the scripts to generate the training data, to train the machine learning models, and to run both the reference, brute force system and the machine learning system.
- [DATA] contains the training data, the pre-trained models, and simulation output from both the brute force system an d the machine learned system.
Each directory contains a README.txt file that describes the content of the directory.
Files
DATA_PACKAGE.zip
Files
(3.6 GB)
| Name | Size | Download all |
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md5:3ee5c4a0f3bb002a698455abe1f3e00f
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3.6 GB | Preview Download |
Additional details
Related works
- Is supplement to
- Publication: arXiv:2502.19044 (arXiv)