Normal view MARC view ISBD view

AI for Physics

By: Knecht, Volker.
Contributor(s): Scheutwinkel, Kilian Hikaru ... [et al.].
Series: AI for Everything.Publisher: Boca Raton : CRC Press, 2023Description: xviii, 129 p. ; ill., 20 cm.ISBN: 9781032151694.Subject(s): Analogue computer | Boson | Calabi-You manifold | Cosmic web | Dark energy | Electromagnetism | Feed-Forward neural network | Gravitational waves | Jet substructure | Machine learning | Neural network | Particle collisions | Quantum mechanics | Red shift | Special relativity | Theory of EveryyhingDDC classification: 530.028563 Summary: Written in accessible language without mathematical formulas, this short book provides an overview of the wide and varied applications of artificial intelligence (AI) across the spectrum of physical sciences. Focusing in particular on AI's ability to extract patterns from data, known as machine learning (ML), the book includes a chapter on important machine learning algorithms and their respective applications in physics. It then explores the use of ML across a number of important sub-fields in more detail, ranging from particle, molecular and condensed matter physics, to astrophysics, cosmology and the theory of everything. The book covers such applications as the search for new particles and the detection of gravitational waves from the merging of black holes, and concludes by discussing what the future may hold.
Tags from this library: No tags from this library for this title. Log in to add tags.
Item type Current location Call number Status Date due Barcode
Books 530.028563 KNE (Browse shelf) Available 034068

Includes bibliographical references and index.

Written in accessible language without mathematical formulas, this short book provides an overview of the wide and varied applications of artificial intelligence (AI) across the spectrum of physical sciences. Focusing in particular on AI's ability to extract patterns from data, known as machine learning (ML), the book includes a chapter on important machine learning algorithms and their respective applications in physics. It then explores the use of ML across a number of important sub-fields in more detail, ranging from particle, molecular and condensed matter physics, to astrophysics, cosmology and the theory of everything. The book covers such applications as the search for new particles and the detection of gravitational waves from the merging of black holes, and concludes by discussing what the future may hold.

There are no comments for this item.

Log in to your account to post a comment.

Powered by Koha