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

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TLDR
The application of modern machine learning to challenges in atomistic simulation is gaining attraction and the potential for innovation in this area is being explored.
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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Ab initio calculation of vibrational absorption and circular dichroism spectra using density functional force fields

TL;DR: In this paper, the unpolarized absorption and circular dichroism spectra of the fundamental vibrational transitions of the chiral molecule, 4-methyl-2-oxetanone, are calculated ab initio using DFT, MP2, and SCF methodologies and a 5S4P2D/3S2P (TZ2P) basis set.
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Machine Learning of Molecular Electronic Properties in Chemical Compound Space

TL;DR: In this paper, a deep multi-task artificial neural network is used to predict multiple electronic ground-and excited-state properties, such as atomization energy, polarizability, frontier orbital eigenvalues, ionization potential, electron affinity, and excitation energies.
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A Critical Review of Machine Learning of Energy Materials

TL;DR: In this article, the authors provide an in-depth, critical review of ML-guided design and discovery of energy materials, a field where a novel material with superior performance (e.g., higher energy density, higher energy conversion efficiency, etc.) can have a transformative impact on the urgent global problem of climate change.
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Machine Learning for Catalysis Informatics: Recent Applications and Prospects

TL;DR: The discovery and development of catalysts and catalytic processes are essential components to maintaining an ecological balance in the future as mentioned in this paper, and recent revolutions made in data science could have a...
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Quantum Chemistry in the Age of Machine Learning.

TL;DR: A view on the current state of affairs in this new exciting research field is offered, challenges of using ML in QC applications are described, and potential future developments are outlined.
References
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Journal ArticleDOI

Crystal structure representations for machine learning models of formation energies

TL;DR: This work introduces and evaluates a set of feature vector representations of crystal structures for machine learning (ML) models of formation energies of solids.
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Machine-Learning-Augmented Chemisorption Model for CO2 Electroreduction Catalyst Screening

TL;DR: It is illustrated that this integrated approach greatly facilitates high-throughput catalyst screening and, as a specific case, suggests promising {100}-terminated multimetallic alloys with improved efficiency and selectivity for CO2 electrochemical reduction to C2 species.
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Alchemical and structural distribution based representation for universal quantum machine learning

TL;DR: A representation of any atom in any chemical environment for the automatized generation of universal kernel ridge regression-based quantum machine learning (QML) models of electronic properties, trained throughout chemical compound space is introduced.
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Machine learning in catalysis

TL;DR: Machine learning is helping to build better models, understand catalysis research and generate new knowledge about catalysis in a complex, multidimensional and multiscale field of research.
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