首页|New Machine Learning Data Have Been Reported by Researchers at Massachusetts Institute of Technology (Machine Learning From Quantum Chemistry To Predict Experimental Solvent Effects On Reaction Rates)

New Machine Learning Data Have Been Reported by Researchers at Massachusetts Institute of Technology (Machine Learning From Quantum Chemistry To Predict Experimental Solvent Effects On Reaction Rates)

扫码查看
Current study results on Machine Learning have been published. According to news reporting from Cambridge, Massachusetts, by NewsRx journalists, research stated, “Fast and accurate prediction of solvent effects on reaction rates are crucial for kinetic modeling, chemical process design, and high-throughput solvent screening. Despite the recent advance in machine learning, a scarcity of reliable data has hindered the development of predictive models that are generalizable for diverse reactions and solvents.” Financial support for this research came from Eni S.p.A.. The news correspondents obtained a quote from the research from the Massachusetts Institute of Technology, “In this work, we generate a large set of data with the COSMO-RS method for over 28 000 neutral reactions and 295 solvents and train a machine learning model to predict the solvation free energy and solvation enthalpy of activation (Delta Delta G double dagger solv, Delta Delta H double dagger solv) for a solution phase reaction. On unseen reactions, the model achieves mean absolute errors of 0.71 and 1.03 kcal mol-1 for Delta Delta G double dagger solv and Delta Delta H double dagger solv, respectively, relative to the COSMO-RS calculations. The model also provides reliable predictions of relative rate constants within a factor of 4 when tested on experimental data. The presented model can provide nearly instantaneous predictions of kinetic solvent effects or relative rate constants for a broad range of neutral closed-shell or free radical reactions and solvents only based on atom-mapped reaction SMILES and solvent SMILES strings.”

CambridgeMassachusettsUnited StatesNorth and Central AmericaChemistryCyborgsEmerging TechnologiesMachine LearningQuantum ChemistryMassachusetts Institute of Technology

2024

Robotics & Machine Learning Daily News

Robotics & Machine Learning Daily News

ISSN:
年,卷(期):2024.(Feb.8)
  • 72