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LLMs and GenAI Tools to Depict Contributions of Human Systems to Spaceflight Tasks ExecutionRecent advancements in Artificial Intelligence and Machine Learning (AI/ML) technologies, particularly Large Language Models (LLMs) capable of sophisticated syntax analysis, offer substantial potential in automating complex processes, thereby saving time and human resources. This study explores the development of an LLM-driven model designed to analyze and categorize a diverse set of Mars mission tasks into 18 predefined Human System Task Categories (HSTCs) based on their textual descriptions.

As part of developing the Crew Health and Performance – Probabilistic Risk Assessment (CHP-PRA projects Performance Risk Model (PRisM) proof-of-concept, we established a framework to project performance scores from small-scale tests onto a preliminary list of Mars tasks. The foundation of our model was a comprehensive spreadsheet populated by NASA experts and clinicians, which detailed each Mars task alongside binary indicators of HSTC involvement. This dataset enabled the initial application of supervised ML, training and testing on existing HSTC labels.

The HSTCs were originally defined from a medical system perspective, focusing on task impairments due to deteriorated human health. To expand our model's scope to include categories impacting performance, we face the challenge of generating binary labels (0 or 1) for new categories without pre-existing data. We address this by employing Generative AI (GenAI) software to determine whether a given task involved a new category by asking, "Does task A involve using category B?" We validate our approach by comparing the GenAI's binary classifications with the expert-provided labels for existing HSTCs. Notably, we utilize Ollama [4], a locally hosted GenAI tool that does not require cloud access, thus safeguarding NASA's proprietary data from unauthorized exposure.

This study demonstrates the feasibility of leveraging cutting-edge AI tools to advance research, paving the way for automation and rapid decision-making in space exploration.
Document ID
20250000516
Acquisition Source
Glenn Research Center
Document Type
Presentation
Authors
Mona Matar
(Glenn Research Center Cleveland, United States)
Henry Arthur
(Drew University Madison, New Jersey, United States)
Hunter Rehm
(HX5, LLC)
Date Acquired
January 15, 2025
Subject Category
Cybernetics, Artificial Intelligence and Robotics
Meeting Information
Meeting: Human Research Program Investigators Workshop (HRP IWS)
Location: Galveston, TX
Country: US
Start Date: January 28, 2025
End Date: January 31, 2025
Sponsors: National Aeronautics and Space Administration
Funding Number(s)
WBS: 305041.01.02.10
Distribution Limits
Public
Copyright
Public Use Permitted.
Technical Review
Single Expert
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