AILGFeb 14, 2025

Artificial Intelligence in Spectroscopy: Advancing Chemistry from Prediction to Generation and Beyond

arXiv:2502.09897v117 citationsh-index: 17Has CodeIJCAI
Originality Incremental advance
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This work addresses the problem of automated and intelligent analysis of spectroscopic data for chemists and researchers, providing an incremental step towards advancing chemistry from prediction to generation and beyond.

The authors tackled the problem of applying machine learning and artificial intelligence to spectroscopic and spectrometric data, providing a unified review of state-of-the-art approaches and highlighting emerging directions. The result is a roadmap for researchers, guiding progress at the intersection of spectroscopy and AI.

The rapid advent of machine learning (ML) and artificial intelligence (AI) has catalyzed major transformations in chemistry, yet the application of these methods to spectroscopic and spectrometric data, referred to as Spectroscopy Machine Learning (SpectraML), remains relatively underexplored. Modern spectroscopic techniques (MS, NMR, IR, Raman, UV-Vis) generate an ever-growing volume of high-dimensional data, creating a pressing need for automated and intelligent analysis beyond traditional expert-based workflows. In this survey, we provide a unified review of SpectraML, systematically examining state-of-the-art approaches for both forward tasks (molecule-to-spectrum prediction) and inverse tasks (spectrum-to-molecule inference). We trace the historical evolution of ML in spectroscopy, from early pattern recognition to the latest foundation models capable of advanced reasoning, and offer a taxonomy of representative neural architectures, including graph-based and transformer-based methods. Addressing key challenges such as data quality, multimodal integration, and computational scalability, we highlight emerging directions such as synthetic data generation, large-scale pretraining, and few- or zero-shot learning. To foster reproducible research, we also release an open-source repository containing recent papers and their corresponding curated datasets (https://github.com/MINE-Lab-ND/SpectrumML_Survey_Papers). Our survey serves as a roadmap for researchers, guiding progress at the intersection of spectroscopy and AI.

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