Interpreting Multi-band Galaxy Observations with Large Language Model-Based Agents
Astronomical research traditionally relies on extensive domain knowledge to interpret observations and narrow down hypotheses. We demonstrate that this process can be emulated using large language model-based agents to accelerate research workflows. We propose mephisto, a multi-agent collaboration f...
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Zusammenfassung: | Astronomical research traditionally relies on extensive domain knowledge to
interpret observations and narrow down hypotheses. We demonstrate that this
process can be emulated using large language model-based agents to accelerate
research workflows. We propose mephisto, a multi-agent collaboration framework
that mimics human reasoning to interpret multi-band galaxy observations.
mephisto interacts with the CIGALE codebase, which includes spectral energy
distribution (SED) models to explain observations. In this open-world setting,
mephisto learns from its self-play experience, performs tree search, and
accumulates knowledge in a dynamically updated base. As a proof of concept, we
apply mephisto to the latest data from the James Webb Space Telescope. mephisto
attains near-human proficiency in reasoning about galaxies' physical scenarios,
even when dealing with a recently discovered population of "Little Red Dot"
galaxies. This represents the first demonstration of agentic research in
astronomy, advancing towards end-to-end research via LLM agents and potentially
expediting astronomical discoveries. |
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DOI: | 10.48550/arxiv.2409.14807 |