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      Machine learning meets volcano plots: computational discovery of cross-coupling catalysts†

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          Abstract

          The application of modern machine learning to challenges in atomistic simulation is gaining attraction.

          Abstract

          The application of modern machine learning to challenges in atomistic simulation is gaining attraction. We present new machine learning models that can predict the energy of the oxidative addition process between a transition metal complex and a substrate for C–C cross-coupling reactions. In turn, this quantity can be used as a descriptor to estimate the activity of homogeneous catalysts using molecular volcano plots. The versatility of this approach is illustrated for vast libraries of organometallic catalysts based on Pt, Pd, Ni, Cu, Ag, and Au combined with 91 ligands. Out-of-sample machine learning predictions were made on a total of 18 062 compounds leading to 557 catalyst candidates falling into the ideal thermodynamic window. This number was further refined by searching for candidates with an estimated price lower than 10 US$ per mmol. The 37 catalyst finalists are dominated by palladium phosphine ligand combinations but also include the earth abundant transition metal (Cu) with less common ligands. Our results indicate that modern statistical learning techniques can be applied to the computational discovery of readily available and promising catalyst candidates.

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          Inertia and driving force of chemical reactions

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            Machine Learning of Molecular Electronic Properties in Chemical Compound Space

            The combination of modern scientific computing with electronic structure theory can lead to an unprecedented amount of data amenable to intelligent data analysis for the identification of meaningful, novel, and predictive structure-property relationships. Such relationships enable high-throughput screening for relevant properties in an exponentially growing pool of virtual compounds that are synthetically accessible. Here, we present a machine learning (ML) model, trained on a data base of \textit{ab initio} calculation results for thousands of organic molecules, that simultaneously predicts multiple electronic ground- and excited-state properties. The properties include atomization energy, polarizability, frontier orbital eigenvalues, ionization potential, electron affinity, and excitation energies. The ML model is based on a deep multi-task artificial neural network, exploiting underlying correlations between various molecular properties. The input is identical to \emph{ab initio} methods, \emph{i.e.} nuclear charges and Cartesian coordinates of all atoms. For small organic molecules the accuracy of such a "Quantum Machine" is similar, and sometimes superior, to modern quantum-chemical methods---at negligible computational cost.
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              Linear free energy relationships in rate and equilibrium phenomena

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                Author and article information

                Journal
                Chem Sci
                Chem Sci
                Chemical Science
                Royal Society of Chemistry
                2041-6520
                2041-6539
                13 July 2018
                21 September 2018
                : 9
                : 35
                : 7069-7077
                Affiliations
                [a ] Laboratory for Computational Molecular Design , Institute of Chemical Sciences and Engineering , École Polytechnique Fédérale de Lausanne (EPFL) , CH-1015 Lausanne , Switzerland . Email: clemence.corminboeuf@ 123456epfl.ch
                [b ] Institute of Physical Chemistry , Department of Chemistry , University of Basel , Klingelbergstrasse 80 , CH-4056 Basel , Switzerland . Email: anatole.vonlilienfeld@ 123456unibas.ch
                [c ] National Center for Computational Design and Discovery of Novel Materials (MARVEL) , École Polytechnique Fédérale de Lausanne (EPFL) , Lausanne , Switzerland
                Author information
                http://orcid.org/0000-0002-1600-022X
                http://orcid.org/0000-0001-7993-2879
                Article
                c8sc01949e
                10.1039/c8sc01949e
                6137445
                30310627
                19287471-f0b4-4419-8439-d53591454ac3
                This journal is © The Royal Society of Chemistry 2018

                This article is freely available. This article is licensed under a Creative Commons Attribution Non Commercial 3.0 Unported Licence (CC BY-NC 3.0)

                History
                : 29 April 2018
                : 12 July 2018
                Categories
                Chemistry

                Notes

                †Electronic supplementary information (ESI) available: Details of the ligand dataset, machine learning predictions, price of metals and ligands and all Cartesian coordinates (.xyz) are included in the file SuppInfo.tar.bz2. See DOI: 10.1039/c8sc01949e


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