Transformer-Based Crystal Structure Generation from OTC and Chemical Composition
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Examensarbete för masterexamen
Master's Thesis
Master's Thesis
Model builders
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Abstract
Multi-component oxides, composed of three or more elements, offer a vast combinatorial
space of possible structures with tunable properties such as thermal stability,
ion conductivity, and catalytic activity. Exploring this space using traditional trialand-
error methods is time-consuming and expensive.
This thesis investigates the use of a Transformer-based language model to generate
Crystallographic Information Files (CIFs), which encode atomic positions, lattice
parameters, and symmetry elements. The model is trained to learn relationships
between structural features and material properties, allowing it to propose new
CIFs representing potential novel crystal structures based on input descriptors like
oxygen transfer capacity and composition.
The results show that the Transformer model can capture complex structural patterns
and generate valid CIF sequences, demonstrating its potential as a data-driven
tool to accelerate the discovery and design of multi-component oxides.
