K.N. Tu
Materials Science and Engineering: A
Automated structure elucidation from infrared (IR) spectra represents a significant breakthrough in analytical chemistry, having recently gained momentum through the application of Transformer-based language models. In this work, we improve our original Transformer architecture, refine spectral data representations, and implement novel augmentation and decoding strategies to significantly increase performance. We report a Top-1 accuracy of 63.79% and a Top-10 accuracy of 83.95% compared to the current performance of state-of-the-art models of 53.56% and 80.36%, respectively. Our findings not only set a new performance benchmark but also strengthen confidence in the promising future of AI-driven IR spectroscopy as a practical and powerful tool for structure elucidation. To facilitate broad adoption among chemical laboratories and domain experts, we openly share our models and code.
K.N. Tu
Materials Science and Engineering: A
John G. Long, Peter C. Searson, et al.
JES
A. Gupta, R. Gross, et al.
SPIE Advances in Semiconductors and Superconductors 1990
Julian J. Hsieh
Journal of Vacuum Science and Technology A: Vacuum, Surfaces and Films