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Artificial intelligence for science : a deep learning revolution / editors, Alok Choudhary, Geoffrey Fox & Tony Hey.

Contributor(s): Material type: TextPublication details: Singapore : World Scientific Publishing, 2023.Description: 1 online resource (804 p.)ISBN:
  • 9789811265679
  • 9811265674
Subject(s): Genre/Form: DDC classification:
  • 006.309
LOC classification:
  • Q335
Online resources:
Contents:
Introduction to AI for science -- Setting the scene -- Exploring application domains. Astronomy and cosmology -- Climate change - Energy -- Environmental science - Health -- Life sciences -- Materials science and engineering -- Particle physics -- The ecosystem of AI for science -- Perspectives on AI for science -- Endpiece: AI tools and concepts.
Summary: "This unique collection introduces AI, Machine Learning (ML), and deep neural network technologies leading to scientific discovery from the datasets generated both by supercomputer simulation and by modern experimental facilities. Huge quantities of experimental data come from many sources - telescopes, satellites, gene sequencers, accelerators, and electron microscopes, including international facilities such as the Large Hadron Collider (LHC) at CERN in Geneva and the ITER Tokamak in France. These sources generate many petabytes moving to exabytes of data per year. Extracting scientific insights from these data is a major challenge for scientists, for whom the latest AI developments will be essential. The timely handbook benefits professionals, researchers, academics, and students in all fields of science and engineering as well as AI, ML, and neural networks. Further, the vision evident in this book inspires all those who influence or are influenced by scientific progress"-- Publisher's website.
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Electronic Books CUTN Central Library 006.309 (Browse shelf(Opens below)) Link to resource Available EB04931

Includes bibliographical references and index.

Introduction to AI for science -- Setting the scene -- Exploring application domains. Astronomy and cosmology -- Climate change - Energy -- Environmental science - Health -- Life sciences -- Materials science and engineering -- Particle physics -- The ecosystem of AI for science -- Perspectives on AI for science -- Endpiece: AI tools and concepts.

"This unique collection introduces AI, Machine Learning (ML), and deep neural network technologies leading to scientific discovery from the datasets generated both by supercomputer simulation and by modern experimental facilities. Huge quantities of experimental data come from many sources - telescopes, satellites, gene sequencers, accelerators, and electron microscopes, including international facilities such as the Large Hadron Collider (LHC) at CERN in Geneva and the ITER Tokamak in France. These sources generate many petabytes moving to exabytes of data per year. Extracting scientific insights from these data is a major challenge for scientists, for whom the latest AI developments will be essential. The timely handbook benefits professionals, researchers, academics, and students in all fields of science and engineering as well as AI, ML, and neural networks. Further, the vision evident in this book inspires all those who influence or are influenced by scientific progress"-- Publisher's website.

Mode of access: World Wide Web.

System requirements: Adobe Acrobat reader.

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