xiaohang007/SLICES
SLICES: An Invertible, Invariant, and String-based Crystal Representation [2023, Nature Communications] MatterGPT, SLICES-PLUS
SLICES helps materials scientists and chemists convert crystal structures into a standardized string format and vice-versa. You input crystal information (like a CIF file) and get a unique string representation, or input a SLICES string to reconstruct the crystal. This tool is for researchers and engineers working with crystal structures who need to encode, decode, or design new materials.
140 stars.
Use this if you need an invertible and invariant way to represent crystal structures as text strings, or if you want to generate new solid-state materials with specific properties using AI.
Not ideal if your primary goal is basic crystallographic analysis without a need for generative material design or a text-based crystal representation.
Stars
140
Forks
58
Language
Python
License
LGPL-2.1
Category
Last pushed
Mar 03, 2026
Commits (30d)
0
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