About this Abstract |
Meeting |
TMS Specialty Congress 2024
|
Symposium
|
2nd World Congress on Artificial Intelligence in Materials & Manufacturing (AIM 2024)
|
Presentation Title |
MatGPT™ - Accelerated Alloy Development by Combining LLMs, Machine Learning, Simulation & Validation |
Author(s) |
Achim Tappe, Rüdiger Franke, Golnar Geramifard, Jun-Gyu Kim, Sebastian Jäger, Yiwen Wen, Shameem Ebna Hai, Arnab Mukherjee, Taylor Sparks, Hasan Sayeed |
On-Site Speaker (Planned) |
Achim Tappe |
Abstract Scope |
This work offers insights into AI-driven rapid alloy development methods, aimed at enhancing alloy properties and resource efficiency. A pivotal strategy involves GenAI-driven materials development, incorporating LLMs, machine learning, simulation, and comprehensive validation. The rising demand for advanced alloys, exemplified by the automotive industry's shift from combustion engines to electric motors, underscores the imperative for agile and eco-friendly alloy innovations. Such transitions drive reductions in CO2 emissions and fossil fuel dependency. Our study vividly illustrates how validated GenAI-driven materials development translates into tangible benefits: improved alloy properties, weight reduction, and a more eco-conscious approach. We also introduce the integration of LLMs and natural language processing techniques, further expediting knowledge extraction from various sources. This inclusive process fosters enhanced accessibility and interpretability of materials data, contributing to the acceleration of advanced material development. This streamlined approach combines AI, LLMs, and validation, addressing industrial alloy challenges more swiftly, efficiently, and sustainably. |
Proceedings Inclusion? |
Definite: Other |