TL;DR
Egent is an autonomous agent that combines classical fitting techniques with large language models to automate equivalent width measurements in spectra, achieving expert-level accuracy efficiently.
Contribution
The paper introduces Egent, a novel system integrating LLMs with traditional fitting for automated, survey-scale equivalent width measurement without pre-normalized spectra.
Findings
Egent achieves MAD=5-7mA agreement with human experts.
60-65% of lines are refined and accepted by the LLM.
Open-source code and web interface are provided for broad accessibility.
Abstract
We present Egent, an autonomous agent that combines classical multi-Voigt profile fitting with large language model (LLM) visual inspection and iterative refinement. The fitting engine is built from scratch with minimal dependencies, creating an ecosystem where the LLM can reason about fits through function calls--adjusting wavelength windows, adding blend components, modifying continuum treatment, and flagging problematic cases. Egent operates directly on raw flux spectra without requiring pre-normalized continua. We validate against manual measurements from human experts using 18,615 lines from the C3PO program across 84 Magellan/MIKE spectra at SNR~50-250. The raw agreement between Egent and expert measurements is MAD=5-7mA, without any post-hoc per-spectrum correction. Per-spectrum slopes of ~0.85-1.19 around unity reflect differences in global continuum methodology rather than…
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