About this Abstract |
Meeting |
2025 TMS Annual Meeting & Exhibition
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Symposium
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Artificial Intelligence Applications in Integrated Computational Materials Engineering
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Presentation Title |
Establishing a Novel Systematic Alloy Design Strategy Based on Large Language Model Framework
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Author(s) |
Kiwan Seo, Min Seok Kim, Jae Kwon Kim, Eun Soo Park |
On-Site Speaker (Planned) |
Kiwan Seo |
Abstract Scope |
As the demand for modern alloy designs require better performance along with lower maintenance cost, its systematic complexity increase with it. A systematic approach in alloy design could greatly simplify its hierarchical structure, increasing the design process efficiency. When designing a material, it is crucial to identify the relationships between processing parameters, microstructure, properties and the resulting performance in a systematic manner. We intend to utilize the Olson flow-block diagram as an excellent visual representation of the operation sequence within a given system. Said diagram offers a simplified visualization for an otherwise complex system. However, manually drawing an accurate diagram could be very much time consuming and resource intensive. To address this issue, we intend to utilize a code written based on ChatGPT alongside with LLM framework. This poster intends to demonstrate the workings of our code and the subsequent analysis of the drawn Olson flow-block diagram. |
Proceedings Inclusion? |
Planned: |
Keywords |
Computational Materials Science & Engineering, Other, Other |