Bültmann & Gerriets
Parallel Computing for Data Science
With Examples in R, C++ and CUDA
von Norman Matloff
Verlag: Taylor & Francis
E-Book / PDF
Kopierschutz: kein Kopierschutz


Speicherplatz: 2 MB
Hinweis: Nach dem Checkout (Kasse) wird direkt ein Link zum Download bereitgestellt. Der Link kann dann auf PC, Smartphone oder E-Book-Reader ausgeführt werden.
E-Books können per PayPal bezahlt werden. Wenn Sie E-Books per Rechnung bezahlen möchten, kontaktieren Sie uns bitte.

ISBN: 978-1-4665-8703-8
Auflage: 1. Auflage
Erschienen am 04.06.2015
Sprache: Englisch
Umfang: 328 Seiten

Preis: 62,99 €

Klappentext
Biografische Anmerkung
Inhaltsverzeichnis

This is one of the first parallel computing books to focus exclusively on parallel data structures, algorithms, software tools, and applications in data science. The book prepares readers to write effective parallel code in various languages and learn more about different R packages and other tools. It covers the classic "n observations, p variables" matrix format and common data structures. Many examples illustrate the range of issues encountered in parallel programming.



Dr. Norman Matloff is a professor of computer science at the University of California, Davis, where he was a founding member of the Department of Statistics. He is a statistical consultant and a former database software developer. He has published numerous articles in prestigious journals, such as the ACM Transactions on Database Systems, ACM Transactions on Modeling and Computer Simulation, Annals of Probability, Biometrika, Communications of the ACM, and IEEE Transactions on Data Engineering. He earned a PhD in pure mathematics from UCLA, specializing in probability/functional analysis and statistics.



Introduction to Parallel Processing in R. "Why Is My Program So Slow?": Obstacles to Speed. Principles of Parallel Loop Scheduling. The Shared Memory Paradigm: A Gentle Introduction through R. The Shared Memory Paradigm: C Level. The Shared Memory Paradigm: GPUs. Thrust and Rth. The Message Passing Paradigm. MapReduce Computation. Parallel Sorting and Merging. Parallel Prefix Scan. Parallel Matrix Operations. Inherently Statistical Approaches: Subset Methods. Appendices.


andere Formate