This paper explores the application of generative pre-trained transformer (GPT)-based large language models (LLMs) in the development of simulation and analysis tools for X-ray powder diffraction. We demonstrate how these models enable users with minimal programming experience to generate functional and efficient code through natural language prompts. The discussion highlights both the capabilities and limitations of LLM-assisted coding, offering insights into the practical integration of artificial intelligence for simulating and analysing simple X-ray powder diffraction patterns.
Artificial Intelligence in Action: Building Simulation and Analysis Tools for Powder Diffraction / Scardi, Paolo; Malagutti, Marcelo A.. - In: ACTA CRYSTALLOGRAPHICA. SECTION A, FOUNDATIONS AND ADVANCES. - ISSN 2053-2733. - ELETTRONICO. - 2025, 81:5(2025), pp. 401-404. [10.1107/s2053273325007508]
Artificial Intelligence in Action: Building Simulation and Analysis Tools for Powder Diffraction
Scardi, Paolo;Malagutti, Marcelo A.
2025-01-01
Abstract
This paper explores the application of generative pre-trained transformer (GPT)-based large language models (LLMs) in the development of simulation and analysis tools for X-ray powder diffraction. We demonstrate how these models enable users with minimal programming experience to generate functional and efficient code through natural language prompts. The discussion highlights both the capabilities and limitations of LLM-assisted coding, offering insights into the practical integration of artificial intelligence for simulating and analysing simple X-ray powder diffraction patterns.| File | Dimensione | Formato | |
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Artificial intelligence in action: building simulation and analysis tools for powder diffraction.pdf
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Descrizione: Acta Cryst. (2025). A81, 401–404 article
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