Structured Parallel Programming Structured Parallel Programming

Structured Parallel Programming

Patterns for Efficient Computation

Michael McCool and Others
    • $59.99
    • $59.99

Publisher Description

Structured Parallel Programming offers the simplest way for developers to learn patterns for high-performance parallel programming. Written by parallel computing experts and industry insiders Michael McCool, Arch Robison, and James Reinders, this book explains how to design and implement maintainable and efficient parallel algorithms using a composable, structured, scalable, and machine-independent approach to parallel computing. It presents both theory and practice, and provides detailed concrete examples using multiple programming models.

The examples in this book are presented using two of the most popular and cutting edge programming models for parallel programming: Threading Building Blocks, and Cilk Plus. These architecture-independent models enable easy integration into existing applications, preserve investments in existing code, and speed the development of parallel applications. Examples from realistic contexts illustrate patterns and themes in parallel algorithm design that are widely applicable regardless of implementation technology.

Software developers, computer programmers, and software architects will find this book extremely helpful.



- The patterns-based approach offers structure and insight that developers can apply to a variety of parallel programming models

- Develops a composable, structured, scalable, and machine-independent approach to parallel computing

- Includes detailed examples in both Cilk Plus and the latest Threading Building Blocks, which support a wide variety of computers

GENRE
Computers & Internet
RELEASED
2012
July 31
LANGUAGE
EN
English
LENGTH
432
Pages
PUBLISHER
Morgan Kaufmann
SELLER
Elsevier Ltd.
SIZE
12.4
MB
Languages and Compilers for Parallel Computing Languages and Compilers for Parallel Computing
2008
Parallel Programming Parallel Programming
2017
Patterns for Parallel Programming Patterns for Parallel Programming
2004
Elements of Parallel Computing Elements of Parallel Computing
2016
Multicore and GPU Programming Multicore and GPU Programming
2022
Multicore Programming Using the ParC Language Multicore Programming Using the ParC Language
2012