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Bibliographic Details
Main Authors: Tseng, Ying-Wei, Kao, Yu-Ting, Chang, Yeong-Jar, Ou, Jia-Han, Zhang, Wen-Zhi, Wang, Jin-Jia, Lin, Yung-Hsiang
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2602.06420
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Table of Contents:
  • This paper introduces a new method that combines Artificial Intelligence (AI) and quantum-inspired techniques to improve the efficiency of multi-variable optimization experiments. By using advanced software simulations, this approach significantly reduces the time and cost compared to traditional physical experiments. The research focuses on enzyme fermentation, demonstrating that this method can achieve better results with fewer experiments. The findings highlight the potential of this approach to more effectively identify optimal formulations, leading to advancements in enzyme fermentation and other fields that require complex optimization. Initially, the Active Ingredients (AIN) could not be improved even after 600 experiments. However, by adopting the method outlined in this paper, we were able to identify a better formula in just 405 experiments. This resulted in an increase of AIN from 8481 to 10068, representing an improvement of 18.7%.