Projects

Explore our open-source tools, databases, and AI frameworks for materials discovery


Physics Informed AI & Machine Learning

AtomGPT.org

An AI-powered chatbot serving 10,000+ users across 50+ institutions for materials science queries, simulations, and analysis.

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ALIGNN

Atomistic Line Graph Neural Network using both bond distances and bond angles for superior materials property prediction.

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ALIGNN-FF

Universal machine learning force field enabling accurate molecular dynamics at DFT-level accuracy with massive speedup.

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ChatGPT Material Explorer

Custom GPT eliminating AI hallucinations by connecting to verified materials science databases.

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SlakoNet

Physics-informed neural network combining machine learning with tight-binding theory for electronic structure predictions.

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MicroscopyGPT

Vision-language transformer generating atomic structure descriptions from microscopy images of 2D materials.

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DiffractGPT

Generative transformer for atomic structure determination from X-ray diffraction patterns.

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AtomVision

Computer vision tools for STM and STEM microscopy with automated defect detection.

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ChemNLP

Natural language processing toolkit for materials science text mining and information extraction.

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Databases & Infrastructure

JARVIS Infrastructure

1M+ materials calculations spanning DFT, force-fields, ML models, and experimental data.

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SuperconDB

Comprehensive database of superconducting materials with critical temperatures and computed properties.

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InterMat

Database and tools for heterostructure and interface materials design.

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DefectMat

Database of point defects including vacancies, interstitials, and substitutions.

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CatalysisMat

Specialized database for catalytic materials and surface reactions.

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Benchmarking Tools

JARVIS-Leaderboard

Large-scale benchmark with 1281 contributions across 274 benchmarks using 152 methods.

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AtomBench

Comprehensive benchmarking suite for atomistic machine learning models.

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BenchQC

Quantum computing benchmark evaluating variational quantum eigensolvers for materials science.

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CHIPS-FF

Evaluation of universal machine learning force-fields.

GitHub →

CHIPS-TB

Evaluating Tight-Binding Models For Metals, Semiconductors, and Insulators.

GitHub →

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