About
Accelerating the discovery, design and integration of new energy materials by extracting knowledge from large-scale data assets and performing AI-driven analytics.
Research Topics
- Data Extraction and Management
 - AI/ML Models
 - Simulations
 - Image Analysis
 - Cloud Applications
 
Data models & management
- Optimierte DatenpipelineData management (mining, extraction, curation)
 - Data models
 - Ontology & materials linguistics
 - Optimized data pipeline
 - Autonomous workflow
 


AI/ML models & methods
- Inverse design for energy materials
 - Predictive analytics & AI-ready data models
 - Automated image analysis
 - Accelerated simulations
 
Application & tool deployment
- Materials intelligence
 - Automated data extraction tools
 - Cloud-based big-data solutions and data services
 - Mix-reality data visualization (XR4MAT)
 

Members
External partners and guests
- Sahand Behnam
 - Dr. Titichai Navessin
 - Sarvin Golravesh Fekri
 - Armin Gheytarani
 
Research
            AI/ML Models and Methods
Accelerating design, integration and scale-up
- Inverser design for new AEM membranes
 - Accelerating simulations and automated FF parametrization
 - Automated image analysis
 
Data Modeling and Management
Scalable and deployable data management and correlation models
- Automated data pipelines and workflow optimization for PEFC/PEWE component fabrication
 - AI-based data handling and workflow optimization
 - Graph database development for OER/ORR electrocatalysts
 - ES materials to devices
 
Keywords: Ontologies for CL-Link, developing workflows, data mining and visualization
Last Modified: 12.09.2024