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Programming in Parallel with CUDA: A Practical Guide

Hardback

Main Details

Title Programming in Parallel with CUDA: A Practical Guide
Authors and Contributors      By (author) Richard Ansorge
Physical Properties
Format:Hardback
Pages:395
Dimensions(mm): Height 260,Width 181
Category/GenreEngineering graphics and technical drawing
Computing - general
Computer programming and software development
Mathematical theory of computation
ISBN/Barcode 9781108479530
ClassificationsDewey:005.275
Audience
General
Illustrations Worked examples or Exercises

Publishing Details

Publisher Cambridge University Press
Imprint Cambridge University Press
Publication Date 2 June 2022
Publication Country United Kingdom

Description

CUDA is now the dominant language used for programming GPUs, one of the most exciting hardware developments of recent decades. With CUDA, you can use a desktop PC for work that would have previously required a large cluster of PCs or access to a HPC facility. As a result, CUDA is increasingly important in scientific and technical computing across the whole STEM community, from medical physics and financial modelling to big data applications and beyond. This unique book on CUDA draws on the author's passion for and long experience of developing and using computers to acquire and analyse scientific data. The result is an innovative text featuring a much richer set of examples than found in any other comparable book on GPU computing. Much attention has been paid to the C++ coding style, which is compact, elegant and efficient. A code base of examples and supporting material is available online, which readers can build on for their own projects.

Author Biography

Richard Ansorge is Emeritus University Senior Lecturer at the Cavendish Laboratory, University of Cambridge and Emeritus Tutor and Fellow at Fitzwilliam College, Cambridge. He is the author of over 170 peer-reviewed publications and co-author of the book The Physics and Mathematics of MRI (2016).