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  <titleInfo>
    <title>Data-driven science and engineering : machine learning, dynamical systems, and control</title>
  </titleInfo>
  <name type="personal">
    <namePart>Brunton, Steven</namePart>
    <role>
      <roleTerm authority="marcrelator" type="text">creator</roleTerm>
    </role>
  </name>
  <name type="personal">
    <namePart>Kutz, J. Nathan</namePart>
    <role>
      <roleTerm type="text">Co-author</roleTerm>
    </role>
  </name>
  <typeOfResource>text</typeOfResource>
  <originInfo>
    <place>
      <placeTerm type="code" authority="marccountry">2</placeTerm>
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    <place>
      <placeTerm type="text">UK</placeTerm>
    </place>
    <publisher>CAMBRIDGE UNIVERSITY PRESS</publisher>
    <dateIssued>2022</dateIssued>
    <edition>2nd ed.</edition>
    <issuance>monographic</issuance>
  </originInfo>
  <language>
    <languageTerm authority="iso639-2b" type="code">| 0</languageTerm>
  </language>
  <physicalDescription>
    <extent>xxiv, 590p.</extent>
  </physicalDescription>
  <abstract>Data-driven discovery is revolutionizing the modelling, prediction, and control of complex systems. This textbook brings together machine learning, engineering mathematics, and mathematical physics to integrate modelling and control of dynamical systems with modern methods in data science. It highlights many of the recent advances in scientific computing that enable data-driven methods to be applied to a diverse range of complex systems, such as turbulence, the brain, climate, epidemiology, finance, robotics, and autonomy. Aimed at advanced undergraduate and beginning graduate students in the engineering and physical sciences, the text presents a range of topics and methods from introductory to state of the art.</abstract>
  <subject>
    <topic>Sparsity and compressed sensing</topic>
  </subject>
  <subject>
    <topic>Reinforcement Learning</topic>
  </subject>
  <subject>
    <topic>Linear Control Theory</topic>
  </subject>
  <classification authority="ddc">620.0028 BRU</classification>
  <identifier type="isbn">9781009098489</identifier>
  <recordInfo>
    <recordCreationDate encoding="marc">230427</recordCreationDate>
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