Machine Learning Modalities for Materials Science

When: 13–17 May 2024

Where:  Jožef Stefan Institute, Ljubljana, Slovenia

Organisers:

Sašo Džeroski, Jožef Stefan Institute, SI
Stefano de Gironcoli, SISSA, IT
Patrick Rinke, Aalto University, FI
Kevin Rossi, TU Delft, NL
Sintija Stevanoska, Jožef Stefan Institute, SI
Milica Todorovic, University of Turku, FI

the DAEMON COST Action CA22154 acts as a co-organizer of the event.
COST (European Cooperation in Science and Technology) is a funding agency for research and innovation networks. Our Actions help connect research initiatives across Europe and enable scientists to grow their ideas by sharing them with their peers. This boosts their research, career and innovation. www.cost.eu

Webpage: https://ml4ms.ijs.si/

A rooted knowledge and understanding of the material and its properties stems from a holistic perspective. Indeed, when discussing the properties of a newly engineered material, it is common to present:

  • a text-based description of the sequence of actions through which such material was obtained, listing key variables as scalars.
  • a characterization of its structure by means of advanced microscopy (e.g., 2D images, 3D tomographies, 4D spatio-temporal analysis) and spectroscopy (e.g., adsorption spectra, NMR spectra), also with the aid of atomistic and electronic structure simulations.
  • a list of key performance indicators, in the form of scalar variables (e.g. the mechanical properties of an alloy or the Seebeck coefficient of a thermoelectric) or a time-series (e.g., activity of a catalyst over time, the capacity of a battery over time).
  • a mechanistic discussion of the relationships that link structure-to-property, often through quantities extracted from electronic structure and atomistic scale simulations.

Machine learning methods are revolutionizing the way we approach materials design, making an impact in each, yet, it is rare that they fully exploit information and data from different modalities and sources. The aim of this workshop is thus two-fold:

  • Young researchers will have the opportunity to grow solid foundations and a complete overview of cutting-edge machine-learning methods that enable the community to tackle outstanding challenges across diverse domains in materials design and discovery.
  • Attendees will have the chance to discuss and identify routes on how to best combine information of different nature towards a unified vision (and solution) of the material design and discovery problem. To this end, during the workshop part, invited and contributed speakers, and panel discussions will take place, with a focus on multi-modal, multi-objective, and multi-fidelity machine learning methods in materials science.

The participation in the workshop is free of charge.