@misc{4cc670f44522477a911f38be8d680083,
title = "The Rise of Intelligent Materials Science: Unleashing the Power of Machine Intelligence in Characterization",
abstract = "Machine intelligence has the potential to revolutionize materials science, enabling autonomous synthesis, self-driving characterization, and accelerated modeling. However, despite the promise, successful implementation of these methods in day-to-day research remains a challenge. This talk will delve into the reasons behind this, exploring how truly intelligent experiments are hindered by opaque experiment control, a lack of domain-specific models, and human-centric design. Through a focus on the characterization of next-generation microelectronics and energy storage materials, I will share insights from both successful and failed attempts to implement machine intelligence. We will then explore the next steps necessary to unlock the full potential of machine intelligence in materials science, creating a future where intelligent systems work seamlessly alongside researchers to drive innovation and discovery.",
keywords = "autonomous, electron microscopy, machine learning, materials science",
author = "Steven Spurgeon",
year = "2024",
language = "American English",
series = "Presented at the CINT Annual User Meeting, 16-17 September 2024, Santa Fe, New Mexico",
type = "Other",
}