December 1 - 6, 2024
Boston, Massachusetts
Symposium Supporters
2024 MRS Fall Meeting & Exhibit
MT02.13.04

Understanding and Mitigating Bias in Autonomous Materials Characterization and Discovery

When and Where

Dec 5, 2024
2:30pm - 3:00pm
Hynes, Level 2, Room 209

Presenter(s)

Co-Author(s)

Jason Hattrick-Simpers1

University of Toronto1

Abstract

Jason Hattrick-Simpers1

University of Toronto1
Since the publication of the Mission Innovation Materials Acceleration Platform, AI is increasingly responsible for driving automated experimental and computational tools. There have been multiple case studies for which autonomy was demonstrated to successfully drive materials optimization or discovery problem and the world of scientific robots has moved from science fiction to reality. However, within the broader AI community it is well known that AI’s carry with them their creators’ biases and this has serious implications on model development and deployment. Using several case studies, I will illustrate how biases can arise in materials science and specific steps that can be taken to remove them. Specifically, I will discuss some of our recent work in (1) reducing human bias in label generation by applying robust statistics to spectroscopic data analysis, (2) identifying and mitigating search space bias through model disagreement, and (3) circumventing the big data bias loop by illustrating how to the presence of information redundancy in large computational datasets and (4) how construct an optimally informative dataset for model training.

Symposium Organizers

Andi Barbour, Brookhaven National Laboratory
Lewys Jones, Trinity College Dublin
Yongtao Liu, Oak Ridge National Laboratory
Helge Stein, Karlsruhe Institute of Technology

Session Chairs

Lewys Jones
Yongtao Liu

In this Session