IMAIMar 2, 2025

AI Agents for Ground-Based Gamma Astronomy

arXiv:2503.00821v14 citationsh-index: 20
Originality Synthesis-oriented
AI Analysis

This addresses operational and data analysis inefficiencies for astronomers using next-generation telescopes, but it is incremental as it applies existing LLM methods to a new domain.

The paper tackles the challenge of managing complex ground-based gamma-ray astronomy instruments by developing AI agents based on instruction-finetuned large language models, resulting in prototypes that automate data model implementation and code generation for observatory pipelines.

Next-generation instruments for ground-based gamma-ray astronomy are marked by a substantial increase in complexity, featuring dozens of telescopes. This leap in scale introduces significant challenges in managing system operations and offline data analysis. Methods, which depend on advanced personnel training and sophisticated software, become increasingly strained as system complexity grows, making it more challenging to effectively support users in such a multifaceted environment. To address these challenges, we propose the development of AI agents based on instruction-finetuned large language models (LLMs). These agents align with specific documentation and codebases, understand the environmental context, operate with external APIs, and communicate with humans in natural language. Leveraging the advanced capabilities of modern LLMs, which can process and retain vast amounts of information, these AI agents offer a transformative approach to system management and data analysis by automating complex tasks and providing intelligent assistance. We present two prototypes that integrate with the Cherenkov Telescope Array Observatory pipelines for operations and offline data analysis. The first prototype automates data model implementation and maintenance for the Configuration Database of the Array Control and Data Acquisition (ACADA). The second prototype is an open-access code generation application tailored for data analysis based on the Gammapy framework.

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