Research Line: Computational Platforms and AI-aided Materials Discovery

We leverage high-performance computing, quantum computing, workflow automation, and data-driven approaches to accelerate the discovery and design of new materials.



Research thrustsResearch prioritiesResearch foci
Workflow automation &
data-driven discovery
 
• Workflow automation for materials modeling and experimental data analysis
• High-throughput and data-driven materials discovery
Development of fully automated pipelines that connect simulation codes with experimental databases; ab-initio high-throughput screening combined with machine-learning models to rapidly pinpoint materials exhibiting target properties, accelerating the design–test loop.
Enabling advanced simulations    • Advanced simulation of linear and non-linear spectroscopiesImplementation of many-body and time-dependent methods (GW, BSE, TDDFT, etc.) in open-source scientific software to predict optical, IR and Raman, X-ray, and non-linear spectra, offering direct guidance for experimental analysis.
Tier-0 HPC & quantum computing    • Use of high-performance and quantum computers to carry out atomistic simulationsLeveraging exascale supercomputers and emerging quantum hardware to perform large-scale, high-accuracy atomistic simulations beyond classical computational limits.