From Text to Test: AI-Generated Control Software for Materials Science Instruments
Davi M F\'ebba, Kingsley Egbo, William A. Callahan, Andriy Zakutayev

TL;DR
This paper demonstrates how ChatGPT-4 can rapidly generate and refine control software for scientific instruments, enabling automated materials characterization and analysis with minimal human intervention.
Contribution
It introduces a method for quickly deploying AI-generated instrument control software integrated with optimization algorithms for materials science applications.
Findings
Successful deployment of ChatGPT-4 for instrument control
Automated extraction of electronic device parameters
Open-source toolkit for semiconductor device analysis
Abstract
Large language models (LLMs) are transforming the landscape of chemistry and materials science. Recent examples of LLM-accelerated experimental research include virtual assistants for parsing synthesis recipes from the literature, or using the extracted knowledge to guide synthesis and characterization. Despite these advancements, their application is constrained to labs with automated instruments and control software, leaving much of materials science reliant on manual processes. Here, we demonstrate the rapid deployment of a Python-based control module for a Keithley 2400 electrical source measure unit using ChatGPT-4. Through iterative refinement, we achieved effective instrument management with minimal human intervention. Additionally, a user-friendly graphical user interface (GUI) was created, effectively linking all instrument controls to interactive screen elements. Finally, we…
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Taxonomy
TopicsManufacturing Process and Optimization · Machine Learning in Materials Science
