Get Free Shipping on orders over $79
Programming Models for Parallel Computing : Scientific and Engineering Computation - Pavan Balaji

Programming Models for Parallel Computing

By: Pavan Balaji

Paperback | 6 November 2015

At a Glance

Paperback


RRP $130.00

$94.75

27%OFF

or 4 interest-free payments of $23.69 with

 or 

Ships in 25 to 30 business days

An overview of the most prominent contemporary parallel processing programming models, written in a unique tutorial style.

With the coming of the parallel computing era, computer scientists have turned their attention to designing programming models that are suited for high-performance parallel computing and supercomputing systems. Programming parallel systems is complicated by the fact that multiple processing units are simultaneously computing and moving data. This book offers an overview of some of the most prominent parallel programming models used in high-performance computing and supercomputing systems today.

The chapters describe the programming models in a unique tutorial style rather than using the formal approach taken in the research literature. The aim is to cover a wide range of parallel programming models, enabling the reader to understand what each has to offer. The book begins with a description of the Message Passing Interface (MPI), the most common parallel programming model for distributed memory computing. It goes on to cover one-sided communication models, ranging from low-level runtime libraries (GASNet, OpenSHMEM) to high-level programming models (UPC, GA, Chapel); task-oriented programming models (Charm++, ADLB, Scioto, Swift, CnC) that allow users to describe their computation and data units as tasks so that the runtime system can manage computation and data movement as necessary; and parallel programming models intended for on-node parallelism in the context of multicore architecture or attached accelerators (OpenMP, Cilk Plus, TBB, CUDA, OpenCL). The book will be a valuable resource for graduate students, researchers, and any scientist who works with data sets and large computations.

Contributors
Timothy Armstrong, Michael G. Burke, Ralph Butler, Bradford L. Chamberlain, Sunita Chandrasekaran, Barbara Chapman, Jeff Daily, James Dinan, Deepak Eachempati, Ian T. Foster, William D. Gropp, Paul Hargrove, Wen-mei Hwu, Nikhil Jain, Laxmikant Kale, David Kirk, Kath Knobe, Ariram Krishnamoorthy, Jeffery A. Kuehn, Alexey Kukanov, Charles E. Leiserson, Jonathan Lifflander, Ewing Lusk, Tim Mattson, Bruce Palmer, Steven C. Pieper, Stephen W. Poole, Arch D. Robison, Frank Schlimbach, Rajeev Thakur, Abhinav Vishnu, Justin M. Wozniak, Michael Wilde, Kathy Yelick, Yili Zheng

More in Grid & Parallel Computing

CUDA Application Design and Development - Rob Farber
Combinatorial Topology and Distributed Computing - Maurice Herlihy
Accelerating Matlab with GPU 1e : A Primer with Examples - Jung Suh
Heterogeneous Computing with OpenCL 2.0 - David Kaeli

RRP $116.95

$110.75

Foundations of Quantum Programming - Mingsheng Ying

RRP $187.95

$171.75

High Performance Parallel I/O : Computational Science - Prabhat
From Parallel to Emergent Computing - Andrew Adamatzky

RRP $263.00

$228.75

13%
OFF
APPLIED PARALLEL COMPUTING - DENG YUEFAN

RRP $198.99

$179.75

10%
OFF