Detailed Speaker Schedule
Monday (13.05.2024)
- 14:00 – 15:20 Lilo Pozzo
Open-Science laboratory automation for AI-accelerated materials research and optimization - 16:00 – 17:20 Brenden Pelkie
Open-Science laboratory automation for AI-accelerated materials research and optimization
Tuesday (14.05.2024)
- 09:00 – 10:20 Kevin Jablonka
Large language models for materials science - 11:00 – 12:20 Kevin Jablonka
Large language models for materials science - 14:00 – 15:20 Jörg Neugebauer
Maximizing High-Throughput Discovery and Machine Learning Efficiency Through Computational Workflows - 16:00 – 17:20 Jörg Neugebauer
Maximizing High-Throughput Discovery and Machine Learning Efficiency Through Computational Workflows
Wednesday (15.05.2024)
- 09:00 – 10:20 Christoph Koch Machine learning in electron microscopy and spectroscopy
- 11:00 – 12:20 Christoph Koch Machine learning in electron microscopy and spectroscopy
- 14:20 – 15:00 Andy Sode Anker Machine learning for analysis of experimental scattering data in materials chemistry
- 15:00 – 15:20 Andreja Benčan Golob Addressing Challenges in 4D STEM Data of Ferroelectrics Using Machine Learning
- 16:00 – 16:20 Martin Uhrin Symmetry-aware generative model for amorphous solids
- 16:20 – 16:40 Christer Söderholm Materials design of inorganic crystals with 3D transformers
- 16:40 – 17:20 DAEMON talk
Thursday (16.05.2024)
- 09:00 – 09:40 Ekin Dogus Cubuk Scaling up computational materials discovery via deep learning
- 09:40 – 10:00 Javier Heras-Domingo Unlocking the Potential of EXAFS: Machine Learning Approaches for Spectroscopic Data
- 10:00 – 10:20 Nejc Hodnik Exploring Big Data for a Deeper Understanding of Electrocatalyst Behavior
- 11:20 – 11:40 Vinko Sršan Deep learning-based drift correction in atomically resolved STEM images
- 11:40 – 12:00 Andrea Ruiz Quantitative description of metal center organization and interactions in single-atom catalysts
- 12:00 – 12:40 Helge Stein What comes after acceleration of research? What got us here?
- 14:00 – 14:20 Dušan Strmčnik Machine Learning for Investigation of Nickel Surface Chemistry in Electrocatalytic Production of Hydrogen
- 14:20 – 14:40 Sašo Šturm Autonomous laboratory for sustainable research and discovery of new materials
- 14:40 – 15:00 Austin Zadoks Spectral Operator Representations
- 15:00 – 15:20 Franco Pellegrini LATTE: an atomic environment descriptor based on Cartesian tensor contractions
- 16:00 – 16:20 Matthias Stosiek Lignin Carbohydrate Complexes – Learning the Structure-Property Relation with Artificial Intelligence
- 16:20 – 16:40 Nataliya Lopanitsyna Revealing Chemical Pathways in Reaction Data through Noctis
- 16:40 – 17:20 Emma King-Smith Practical Machine Learning for Organic Small Molecule Modelling
Friday (17.05.2024)
- 09:00 – 09:40 Teodoro Laino
Fueling the Digital Chemistry Revolution with Language and Multimodal Foundation Models
- 09:40 – 10:00 Lei Zhang
A Comparative Study of Machine Learning Models and Vector Analysis Techniques for Improved Prediction of Quaternary Material Systems Based on Word Embeddings
- 10:00 – 10:20 Matej Praprotnik
Developing an Implicit Solvation Machine Learning Model for Molecular Simulations of Ionic Media
- 11:20 – 11:40 Matilda Sipilä
Application of the Question Answering method to extract information from materials science literature
- 11:40 – 12:00 Morgan Kerhouant
Enterprise deployment, scaling and democratisation of R&D models
- 12:00 – 12:40 Tian Xie
MatterGen: a generative model for inorganic materials design