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Main Authors: Ge, Yutang, Cui, Yaning, Li, Hanzheng, Wang, Jun-Jie, Xu, Fanjie, Dong, Jinhan, Jin, Yongqi, Cui, Dongxu, Jin, Peng, Zhao, Guojiang, Cai, Hengxing, Zhu, Rong, Zhang, Linfeng, Ji, Xiaohong, Gao, Zhifeng
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2603.23101
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author Ge, Yutang
Cui, Yaning
Li, Hanzheng
Wang, Jun-Jie
Xu, Fanjie
Dong, Jinhan
Jin, Yongqi
Cui, Dongxu
Jin, Peng
Zhao, Guojiang
Cai, Hengxing
Zhu, Rong
Zhang, Linfeng
Ji, Xiaohong
Gao, Zhifeng
author_facet Ge, Yutang
Cui, Yaning
Li, Hanzheng
Wang, Jun-Jie
Xu, Fanjie
Dong, Jinhan
Jin, Yongqi
Cui, Dongxu
Jin, Peng
Zhao, Guojiang
Cai, Hengxing
Zhu, Rong
Zhang, Linfeng
Ji, Xiaohong
Gao, Zhifeng
contents Intelligent spectroscopy serves as a pivotal element in AI-driven closed-loop scientific discovery, functioning as the critical bridge between matter structure and artificial intelligence. However, conventional expert-dependent spectral interpretation encounters substantial hurdles, including susceptibility to human bias and error, dependence on limited specialized expertise, and variability across interpreters. To address these challenges, we propose SpecXMaster, an intelligent framework leveraging Agentic Reinforcement Learning (RL) for NMR molecular spectral interpretation. SpecXMaster enables automated extraction of multiplicity information from both 1H and 13C spectra directly from raw FID (free induction decay) data. This end-to-end pipeline enables fully automated interpretation of NMR spectra into chemical structures. It demonstrates superior performance across multiple public NMR interpretation benchmarks and has been refined through iterative evaluations by professional chemical spectroscopists. We believe that SpecXMaster, as a novel methodological paradigm for spectral interpretation, will have a profound impact on the organic chemistry community.
format Preprint
id arxiv_https___arxiv_org_abs_2603_23101
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle SpecXMaster Technical Report
Ge, Yutang
Cui, Yaning
Li, Hanzheng
Wang, Jun-Jie
Xu, Fanjie
Dong, Jinhan
Jin, Yongqi
Cui, Dongxu
Jin, Peng
Zhao, Guojiang
Cai, Hengxing
Zhu, Rong
Zhang, Linfeng
Ji, Xiaohong
Gao, Zhifeng
Machine Learning
Intelligent spectroscopy serves as a pivotal element in AI-driven closed-loop scientific discovery, functioning as the critical bridge between matter structure and artificial intelligence. However, conventional expert-dependent spectral interpretation encounters substantial hurdles, including susceptibility to human bias and error, dependence on limited specialized expertise, and variability across interpreters. To address these challenges, we propose SpecXMaster, an intelligent framework leveraging Agentic Reinforcement Learning (RL) for NMR molecular spectral interpretation. SpecXMaster enables automated extraction of multiplicity information from both 1H and 13C spectra directly from raw FID (free induction decay) data. This end-to-end pipeline enables fully automated interpretation of NMR spectra into chemical structures. It demonstrates superior performance across multiple public NMR interpretation benchmarks and has been refined through iterative evaluations by professional chemical spectroscopists. We believe that SpecXMaster, as a novel methodological paradigm for spectral interpretation, will have a profound impact on the organic chemistry community.
title SpecXMaster Technical Report
topic Machine Learning
url https://arxiv.org/abs/2603.23101