The synthesis of the desired chemical compound is the main task of synthetic organic chemistry. The predictions of reaction conditions and some important quantitative characteristics of chemical reactions as yield and reaction rate can substantially help in the development of optimal synthetic routes and assessment of synthesis cost. Theoretical assessment of these parameters can be performed with the help of modern machine-learning approaches, which use available experimental data to develop predictive models called quantitative or qualitative structure–reactivity relationship (QSRR) modelling. In the article, we review the state-of-the-art in the QSRR area and give our opinion on emerging trends in this field
We present a supervised learning approach to predict the products of organic reactions given their r...
Machine learning models were developed to predict product formation from time-series reaction data f...
The synthesis of molecules with desired properties is an important part of some areas of science and...
As machine learning/artificial intelligence algorithms are defeating chess masters and, most recentl...
Synthetic organic chemists face a dearth of challenges in the efficient construction of functional m...
Machine learning has been used to study chemical reactivity for a long time in fields such as physic...
Automated chemical synthesis is one of the long-term goals pursued in the field of chemistry. In rec...
Discovering new reactions, optimizing their performance, and extending the synthetically accessible ...
Chemical Product Engineering (CPE) is marked by numerous challenges, such as the complexity of the p...
© 2020 by the authors. Licensee MDPI, Basel, Switzerland. Nowadays, the problem of the model’s appli...
In organic chemistry and especially process chemistry, there is a constant need to develop cost-effe...
© 2019 The Royal Society of Chemistry. We present a supervised learning approach to predict the prod...
The review is devoted to the achievements in analysis of information on chemical reactions using mac...
International audienceBased on a recent article "Predicting reaction performance in C-N cross-coupli...
Machines learn chemistry: An artificial intelligence algorithm has learned to predict the outcomes o...
We present a supervised learning approach to predict the products of organic reactions given their r...
Machine learning models were developed to predict product formation from time-series reaction data f...
The synthesis of molecules with desired properties is an important part of some areas of science and...
As machine learning/artificial intelligence algorithms are defeating chess masters and, most recentl...
Synthetic organic chemists face a dearth of challenges in the efficient construction of functional m...
Machine learning has been used to study chemical reactivity for a long time in fields such as physic...
Automated chemical synthesis is one of the long-term goals pursued in the field of chemistry. In rec...
Discovering new reactions, optimizing their performance, and extending the synthetically accessible ...
Chemical Product Engineering (CPE) is marked by numerous challenges, such as the complexity of the p...
© 2020 by the authors. Licensee MDPI, Basel, Switzerland. Nowadays, the problem of the model’s appli...
In organic chemistry and especially process chemistry, there is a constant need to develop cost-effe...
© 2019 The Royal Society of Chemistry. We present a supervised learning approach to predict the prod...
The review is devoted to the achievements in analysis of information on chemical reactions using mac...
International audienceBased on a recent article "Predicting reaction performance in C-N cross-coupli...
Machines learn chemistry: An artificial intelligence algorithm has learned to predict the outcomes o...
We present a supervised learning approach to predict the products of organic reactions given their r...
Machine learning models were developed to predict product formation from time-series reaction data f...
The synthesis of molecules with desired properties is an important part of some areas of science and...