Machine Learning-Guided Strategies for Reaction Condition Design and Optimization

04 July 2024, Version 1
This content is a preprint and has not undergone peer review at the time of posting.

Abstract

This review surveys the recent advances and challenges in predicting and optimizing reaction conditions using machine learning techniques. The paper emphasizes the importance of acquiring and processing large and diverse datasets of chemical reactions, and the use of both global and local models to guide the design of synthetic processes. Global models exploit the information from comprehensive databases to suggest general reaction conditions for new reactions, while local models fine-tune the specific parameters for a given reaction family to improve yield and selectivity. The paper also identifies the current limitations and opportunities in this field, such as the data quality and availability, and the integration of high-throughput experimentation. The paper demonstrates how the combination of chemical engineering, data science, and ML algorithms can enhance the efficiency and effectiveness of reaction condition design, and enable novel discoveries in synthetic chemistry.

Keywords

Reaction Data Mining
Data Preprocessing
Reaction Representation
Reaction Condition Prediction
Reaction Optimization

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