Machine Learning in Chemistry: The Impact of Artificial Intelligence
Progress in the application of machine learning (ML) to the physical and life sciences has been rapid. A decade ago, the method was mainly of interest to those in computer science departments, but more recently ML tools have been developed that show significant potential across wide areas of science. There is a growing consensus that ML software, and related areas of artificial intelligence, may, in due course, become as fundamental to scientific research as computers themselves.
Yet a perception remains that ML is obscure or esoteric, that only computer scientists can really understand it, and that few meaningful applications in scientific research exist. This book challenges that view.
With contributions from leading research groups, it presents in-depth examples to illustrate how ML can be applied to real chemical problems. Through these examples, the reader can both gain a feel for what ML can and cannot (so far) achieve, and also identify characteristics that might make a problem in physical science amenable to a ML approach.
This text is a valuable resource for scientists who are intrigued by the power of machine learning and want to learn more about how it can be applied in their own field.
Machine Learning in Chemistry: The Impact of Artificial Intelligence, The Royal Society of Chemistry, 2020.
Download citation file:
Digital access
Print format
Table of contents
-
Chapter 1: Computers as Scientistsp1-15ByTimothy E. H. AllenTimothy E. H. AllenMRC Toxicology UnitHodgkin Building, Lancaster RoadLeicesterLE1 7HBUKCentre for Molecular Informatics, Department of Chemistry, University of CambridgeLensfield RoadCambridgeCB2 1EWUK[email protected]Search for other works by this author on:
-
Chapter 2: How Do Machines Learn?p16-36ByTimothy E. H. AllenTimothy E. H. AllenCentre for Molecular Informatics, Department of Chemistry, University of CambridgeLensfield RoadCambridgeCB2 1EWUKSearch for other works by this author on:
-
Chapter 3: MedChemInformatics: An Introduction to Machine Learning for Drug Discoveryp37-75ByMatthew G. Roberts;Matthew G. RobertsCancer Research UK – Manchester Institute, Drug Discovery UnitAlderley ParkMacclesfieldSK10 4TGUK[email protected]Search for other works by this author on:Rae LawrenceRae LawrenceCancer Research UK – Manchester Institute, Drug Discovery UnitAlderley ParkMacclesfieldSK10 4TGUK[email protected]Search for other works by this author on:
-
Chapter 4: Machine Learning for Nonadiabatic Molecular Dynamicsp76-108ByJulia Westermayr;Julia WestermayrUniversity of Vienna, Faculty of Chemistry, Institute of Theoretical ChemistryWähringer Str. 171090 ViennaAustria[email protected]Search for other works by this author on:Philipp MarquetandPhilipp MarquetandUniversity of Vienna, Faculty of Chemistry, Institute of Theoretical ChemistryWähringer Str. 171090 ViennaAustria[email protected]Vienna Research Platform on Accelerating Photoreaction Discovery, University of ViennaWähringer Str. 171090 ViennaAustriaUniversity of Vienna, Faculty of Chemistry, Data Science @ Uni ViennaWähringer Str. 291090 ViennaAustriaSearch for other works by this author on:
-
Chapter 5: Machine Learning in Science – A Role for Mechanical Sympathy?p109-135ByHugh M. CartwrightHugh M. CartwrightSearch for other works by this author on:
-
Chapter 6: A Prediction of Future States: AI-powered Chemical Innovation for Defense Applicationsp136-168ByJonathan ClausenJonathan ClausenSearch for other works by this author on:
-
Chapter 7: Machine Learning for Chemical Synthesisp169-194ByJoseph Redshaw;Joseph RedshawSchool of Computer Science, University of NottinghamJubilee CampusNG8 1BBUKSearch for other works by this author on:Thomas Gaertner;Thomas GaertnerTU Wien (Technical University of Vienna), Faculty of Informatics, Information Systems Engineering InstituteFavoritenstraße 9-111040 ViennaAustriaSearch for other works by this author on:Adam Taylor;Adam TaylorGlaxoSmithKlineGunnels Wood RdStevenage SG1 2NYUKSearch for other works by this author on:Andy M. Mason;Andy M. MasonGlaxoSmithKlineGunnels Wood RdStevenage SG1 2NYUKSearch for other works by this author on:Jonathan D. HirstJonathan D. HirstSearch for other works by this author on:
-
Chapter 8: Constraining Chemical Networks in Astrochemistryp195-205BySerena Viti;Serena VitiDepartment of Physics and Astronomy, University College LondonGower StreetLondon, WC1E 6BT[email protected]Leiden Observatory, Leiden UniversityPO Box 9513NL-2300 RA LeidenThe NetherlandsSearch for other works by this author on:Jonathan HoldshipJonathan HoldshipDepartment of Physics and Astronomy, University College LondonGower StreetLondon, WC1E 6BT[email protected]Leiden Observatory, Leiden UniversityPO Box 9513NL-2300 RA LeidenThe NetherlandsSearch for other works by this author on:
-
Chapter 9: Machine Learning at the (Nano)materials-biology Interfacep206-226ByDavid A. WinklerDavid A. WinklerLa Trobe Institute for Molecular Science, La Trobe UniversityBundoora 3046Australia[email protected]Monash Institute of Pharmaceutical Sciences, Monash UniversityParkville 3052AustraliaSchool of Pharmacy, University of NottinghamNottingham NG7 2QLUKCSIRO Data61Pullenvale4069AustraliaSearch for other works by this author on:
-
Chapter 10: Machine Learning Techniques Applied to a Complex Polymerization Processp227-250BySilvia CurteanuSilvia Curteanu“Gheorghe Asachi” Technical University of Iasi, Faculty of Chemical Engineering and Environmental Protection “Cristofor Simionescu”IasiRomania[email protected]Search for other works by this author on:
-
Chapter 11: Machine Learning and Scoring Functions (SFs) for Molecular Drug Discovery: Prediction and Characterisation of Druggable Drugs and Targetsp251-279ByI. L. Hudson;I. L. HudsonMathematical Sciences, College of Science, Engineering and Health, Royal Melbourne Institute of Technology (RMIT)MelbourneVictoriaAustralia[email protected]Search for other works by this author on:S. Y. Leemaqz;S. Y. LeemaqzRobinson Research Institute, Adelaide Medical School, University of AdelaideAdelaideSouth AustraliaSearch for other works by this author on:A. D. AbellA. D. AbellDepartment of Chemistry, Adelaide Node Director Centre for Nanoscale BioPhotonics (CNBP), University of AdelaideAdelaideSouth AustraliaSearch for other works by this author on:
-
Chapter 12: Artificial Intelligence Applied to the Prediction of Organic Materialsp280-310BySteven Bennett;Steven BennettDepartment of Chemistry, Imperial College London, Molecular Sciences Research HubWhite City Campus, Wood LaneLondon W12 0BZUK[email protected]Search for other works by this author on:Andrew Tarzia;Andrew TarziaDepartment of Chemistry, Imperial College London, Molecular Sciences Research HubWhite City Campus, Wood LaneLondon W12 0BZUK[email protected]Search for other works by this author on:Martijn A. Zwijnenburg;Martijn A. ZwijnenburgDepartment of Chemistry, University College London20 Gordon StreetLondon WC1H 0AJUKSearch for other works by this author on:Kim E. JelfsKim E. JelfsDepartment of Chemistry, Imperial College London, Molecular Sciences Research HubWhite City Campus, Wood LaneLondon W12 0BZUK[email protected]Search for other works by this author on:
-
Chapter 13: A New Era of Inorganic Materials Discovery Powered by Data Sciencep311-339ByJakoah BrgochJakoah BrgochSearch for other works by this author on:
-
Chapter 14: Machine Learning Applications in Chemical Engineeringp340-371ByP. T. CloughP. T. CloughSearch for other works by this author on:
-
Chapter 15: Representation Learning in Chemistryp372-397ByGabriel Marques;Gabriel MarquesSchrödinger, Inc.120 West 45th StreetNew YorkNew York 10036United StatesSearch for other works by this author on:J. DakkaJ. DakkaSchrödinger, Inc.120 West 45th StreetNew YorkNew York 10036United StatesSearch for other works by this author on:
-
Chapter 16: Demystifying Artificial Neural Networks as Generators of New Chemical Knowledge: Antimalarial Drug Discovery as a Case Studyp398-423ByAlejandro Speck-Planche;Alejandro Speck-PlanchePrograma Institucional de Fomento a la I+D+i, Universidad Tecnológica MetropolitanaIgnacio Valdivieso 2409San Joaquín, SantiagoChile[email protected]Search for other works by this author on:Valeria V. KleandrovaValeria V. KleandrovaLaboratory of Fundamental and Applied Research of Quality and Technology of Food Production, Moscow State University of Food ProductionVolokolamskoe shosse 11125080, MoscowRussian FederationSearch for other works by this author on:
-
Chapter 17: Machine Learning for Core-loss Spectrump424-449ByS. KiyoharaS. KiyoharaLaboratory for Materials and Structures, Institute of Innovative Research, Tokyo Institute of TechnologyYokohama 226-8503JapanSearch for other works by this author on:
-
Chapter 18: Autonomous Science: Big Data Tools for Small Data Problems in Chemistryp450-487ByGarth J. SimpsonGarth J. SimpsonSearch for other works by this author on:
-
Chapter 19: Machine Learning for Heterogeneous Catalysis: Global Neural Network Potential from Construction to Applicationsp488-511BySicong Ma;Sicong MaCollaborative Innovation Centre of Chemistry for Energy Material, Shanghai Key Laboratory of Molecular Catalysis and Innovative Materials, Key Laboratory of Computational Physical Science, Department of Chemistry, Fudan UniversityShanghai 200433China[email protected]Search for other works by this author on:Pei-Lin Kang;Pei-Lin KangCollaborative Innovation Centre of Chemistry for Energy Material, Shanghai Key Laboratory of Molecular Catalysis and Innovative Materials, Key Laboratory of Computational Physical Science, Department of Chemistry, Fudan UniversityShanghai 200433China[email protected]Search for other works by this author on:Cheng Shang;Cheng ShangCollaborative Innovation Centre of Chemistry for Energy Material, Shanghai Key Laboratory of Molecular Catalysis and Innovative Materials, Key Laboratory of Computational Physical Science, Department of Chemistry, Fudan UniversityShanghai 200433China[email protected]Search for other works by this author on:Zhi-Pan LiuZhi-Pan LiuCollaborative Innovation Centre of Chemistry for Energy Material, Shanghai Key Laboratory of Molecular Catalysis and Innovative Materials, Key Laboratory of Computational Physical Science, Department of Chemistry, Fudan UniversityShanghai 200433China[email protected]Search for other works by this author on:
-
Chapter 20: A Few Guiding Principles for Practical Applications of Machine Learning to Chemistry and Materialsp512-531ByS. Shankar;S. ShankarHarvard University, Applied Physics, Harvard Paulson School of Engineering and Applied Sciences29 Oxford StreetCambridgeMA 02189USA[email protected][email protected]Search for other works by this author on:R. N. ZareR. N. ZareDepartment of Chemistry, Stanford University333 Campus DriveStanfordCA 94305USASearch for other works by this author on:
Spotlight
Advertisement
Advertisement