AI for Materials Science


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AAAI 2024 Bridge, Vancouver, Canada


Vancouver Convention Centre – West Building, Room 220
February 20, 2024

Schedule

9.00 - 9.15: Welcome, introductions, logistics, etc.

9.15 - 10.15: Tutorial on Bayesian optimization (targeted to graduate students and researchers in both areas), Peter Frazier

10.15 - 10.30: Break

10.30 - 11.30: Demonstration of software for Bayesian optimization, Jake Gardner

11.30 - 13.00: Lunch break

13.00 - 14.00: Invited talk: Computational Sustainability Meets Materials Science, Carla Gomes

14.00 - 15.30: Poster session / break

15.30 - 17.00: Breakout sessions to plan future activities, identify directions to pursue, discuss open problems, including wrap-up

Areas

Machine learning and Bayesian optimization in AI, Materials science with individual disciplines (e.g. Physics, Chemistry, Chemical Engineering, Mechanical Engineering).

Outline

Format

Participants submit posters highlighting research at the intersection of AI in materials science (e.g., novel applications, novel algorithms targeting this space), which will undergo a light review for suitability by the organizers. Posters will be available on the Bridge website; we will endeavor to record the invited talks, tutorial, and demonstration and make them available on the Bridge website as well.

The proposed schedule allocates most of the afternoon to interactive sessions to facilitate community building and encourage collaborations that last beyond AAAI. We anticipate that the breakout sessions will crystallize common interests and teams for collaborations, aided by the software demonstration in the morning, which will make the abstract concepts more concrete and tangible.

We will organize a panel discussion at the main AAAI conference to communicate the state of the art, challenges, and opportunities for AI in materials science.

Call for Contributions (closed)

The development of new materials and production processes and the customization of existing ones is increasingly driven by AI, in particular Bayesian optimization and surrogate modeling. In many cases, materials science has relied on compute-intensive simulations to evaluate the properties of proposed designs, or the effect a change might have. Such simulations do not scale to the vast design spaces that materials scientists explore. Machine learning provides an alternative: properties are approximated through the predictions of surrogate models rather than computed by simulations, orders of magnitude faster.

Both AI and materials science are working on conceptually similar problems — how to efficiently identify the best design choices, be that for a machine learning pipeline or a new material. Yet, there is little collaboration between the communities. The purpose of this Bridge is to bring the communities closer together, facilitate cross-disciplinary collaborations, identify common problems, and develop plans for tackling them. We solicit poster submissions that present novel applications, novel algorithms, or pose challenges at the intersection of AI and materials science, in the widest sense. Whether it’s a mature system or only an idea, we welcome your submissions. Areas of interest include, but are not limited to: Bayesian optimization, reinforcement learning, surrogate modeling, neural network approaches and their applications to design new materials and production processes, optimize existing materials and production processes, characterize or test materials, and monitor the performance of materials. Please feel free to contact the organizers informally for any questions.

Posters will undergo a light review by the organizers for suitability for the Bridge. Submissions are due November 18, notifications will be sent out December 2. We have extended the submission deadline to January 20, 2024. All submissions submitted before December 10, however, will receive their decisions before the early registration deadline of December 20. Please submit a PDF version of your poster on Easychair at https://easychair.org/conferences/?conf=aimat24.

Organizers

Peter Collins
Iowa State University
pcollins@iastate.edu

Peter Frazier
Cornell University
pf98@cornell.edu

Roman Garnett
Washington University in St Louis
garnett@wustl.edu

Patrick Johnson
Iowa State University
paj3@istate.edu

Jessica Koehne
NASA
jessica.e.koehne@nasa.gov

Lars Kotthoff
University of Wyoming
larsko@uwyo.edu

Past bridges