Unleashing the power of novel conditional generative approaches for new materials discovery
Lev Novitskiy, Vladimir Lazarev, Mikhail Tiutiulnikov, Nikita, Vakhrameev, Roman Eremin, Innokentiy Humonen, Andrey Kuznetsov, Denis, Dimitrov, and Semen Budennyy

TL;DR
This paper introduces novel conditional generative methods for crystal structure design, enabling targeted materials discovery by generating structures that meet specified properties with high accuracy.
Contribution
It presents two new approaches—conditional structure modification and generation—using advanced generative models to accelerate materials discovery without supercomputers.
Findings
Structure modification accuracy: 41%
Structure generation accuracy: 82%
Potential new structures with low formation energy identified
Abstract
For a very long time, computational approaches to the design of new materials have relied on an iterative process of finding a candidate material and modeling its properties. AI has played a crucial role in this regard, helping to accelerate the discovery and optimization of crystal properties and structures through advanced computational methodologies and data-driven approaches. To address the problem of new materials design and fasten the process of new materials search, we have applied latest generative approaches to the problem of crystal structure design, trying to solve the inverse problem: by given properties generate a structure that satisfies them without utilizing supercomputer powers. In our work we propose two approaches: 1) conditional structure modification: optimization of the stability of an arbitrary atomic configuration, using the energy difference between the most…
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Taxonomy
TopicsAdvanced Materials Characterization Techniques · Machine Learning in Materials Science · Catalysis and Oxidation Reactions
MethodsDiffusion
