Beyond the Hype: Navigating the Promise and Pitfalls of Multi-Modal Models for Materials Science

Research output: NRELPresentation

Abstract

Multi-modal models offer great potential for accelerating discovery in materials and chemical systems, but their adoption raises crucial questions: What materials science challenges are best addressed by multi-modal approaches? How do we weigh the benefits against the resource investment required for multi-modal data acquisition? And critically, how can we optimize experimental workflows to leverage these models effectively? In this presentation, I will delve into the development of multi-modal characterization and analytics, focusing on their application in the demanding fields of next-generation microelectronics and energy storage materials. I will share challenges encountered in designing these workflows, highlighting lessons learned and posing questions that remain unanswered.
Original languageAmerican English
Number of pages23
StatePublished - 2024

Publication series

NamePresented at the 2024 Materials Research Society (MRS) Fall Meeting and Exhibit, 1-6 December 2024, Boston, Massachusetts

NREL Publication Number

  • NREL/PR-5K00-92346

Keywords

  • AI
  • crystals
  • microscopy
  • ML
  • multimodal
  • order-disorder

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