Literature DB >> 30834738

Designing in the Face of Uncertainty: Exploiting Electronic Structure and Machine Learning Models for Discovery in Inorganic Chemistry.

Jon Paul Janet1, Fang Liu1, Aditya Nandy1,2, Chenru Duan1,2, Tzuhsiung Yang1, Sean Lin1, Heather J Kulik1.   

Abstract

Recent transformative advances in computing power and algorithms have made computational chemistry central to the discovery and design of new molecules and materials. First-principles simulations are increasingly accurate and applicable to large systems with the speed needed for high-throughput computational screening. Despite these strides, the combinatorial challenges associated with the vastness of chemical space mean that more than just fast and accurate computational tools are needed for accelerated chemical discovery. In transition-metal chemistry and catalysis, unique challenges arise. The variable spin, oxidation state, and coordination environments favored by elements with well-localized d or f electrons provide great opportunity for tailoring properties in catalytic or functional (e.g., magnetic) materials but also add layers of uncertainty to any design strategy. We outline five key mandates for realizing computationally driven accelerated discovery in inorganic chemistry: (i) fully automated simulation of new compounds, (ii) knowledge of prediction sensitivity or accuracy, (iii) faster-than-fast property prediction methods, (iv) maps for rapid chemical space traversal, and (v) a means to reveal design rules on the kilocompound scale. Through case studies in open-shell transition-metal chemistry, we describe how advances in methodology and software in each of these areas bring about new chemical insights. We conclude with our outlook on the next steps in this process toward realizing fully autonomous discovery in inorganic chemistry using computational chemistry.

Entities:  

Year:  2019        PMID: 30834738     DOI: 10.1021/acs.inorgchem.9b00109

Source DB:  PubMed          Journal:  Inorg Chem        ISSN: 0020-1669            Impact factor:   5.165


  10 in total

1.  Bi-LSTM-Augmented Deep Neural Network for Multi-Gbps VCSEL-Based Visible Light Communication Link.

Authors:  Seoyeon Oh; Minseok Yu; Seonghyeon Cho; Song Noh; Hyunchae Chun
Journal:  Sensors (Basel)       Date:  2022-05-30       Impact factor: 3.847

2.  New Strategies for Direct Methane-to-Methanol Conversion from Active Learning Exploration of 16 Million Catalysts.

Authors:  Aditya Nandy; Chenru Duan; Conrad Goffinet; Heather J Kulik
Journal:  JACS Au       Date:  2022-04-27

3.  Accurate Multiobjective Design in a Space of Millions of Transition Metal Complexes with Neural-Network-Driven Efficient Global Optimization.

Authors:  Jon Paul Janet; Sahasrajit Ramesh; Chenru Duan; Heather J Kulik
Journal:  ACS Cent Sci       Date:  2020-03-11       Impact factor: 14.553

4.  Machine learning dihydrogen activation in the chemical space surrounding Vaska's complex.

Authors:  Pascal Friederich; Gabriel Dos Passos Gomes; Riccardo De Bin; Alán Aspuru-Guzik; David Balcells
Journal:  Chem Sci       Date:  2020-04-07       Impact factor: 9.825

5.  tmQM Dataset-Quantum Geometries and Properties of 86k Transition Metal Complexes.

Authors:  David Balcells; Bastian Bjerkem Skjelstad
Journal:  J Chem Inf Model       Date:  2020-11-09       Impact factor: 4.956

6.  ChemSpaX: exploration of chemical space by automated functionalization of molecular scaffold.

Authors:  Adarsh V Kalikadien; Evgeny A Pidko; Vivek Sinha
Journal:  Digit Discov       Date:  2022-01-06

7.  Electron configuration-based neural network model to predict physicochemical properties of inorganic compounds.

Authors:  Hyun Kil Shin
Journal:  RSC Adv       Date:  2020-09-08       Impact factor: 4.036

8.  Seeing Is Believing: Experimental Spin States from Machine Learning Model Structure Predictions.

Authors:  Michael G Taylor; Tzuhsiung Yang; Sean Lin; Aditya Nandy; Jon Paul Janet; Chenru Duan; Heather J Kulik
Journal:  J Phys Chem A       Date:  2020-04-09       Impact factor: 2.781

9.  A quantitative uncertainty metric controls error in neural network-driven chemical discovery.

Authors:  Jon Paul Janet; Chenru Duan; Tzuhsiung Yang; Aditya Nandy; Heather J Kulik
Journal:  Chem Sci       Date:  2019-07-11       Impact factor: 9.825

10.  The Role of Machine Learning in the Understanding and Design of Materials.

Authors:  Seyed Mohamad Moosavi; Kevin Maik Jablonka; Berend Smit
Journal:  J Am Chem Soc       Date:  2020-11-10       Impact factor: 15.419

  10 in total

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