Data-Parallel Programming on MIMD Computers (Scientific and Engineering Computation) Buy on Amazon
Facebook LinkedIn

Data-Parallel Programming on MIMD Computers (Scientific and Engineering Computation)

29.95 9.75 USD

Usually ships in 1-2 business days

Book Details
Publisher The MIT Press
ISBN / ASIN 0262082055
ISBN-13 9780262082051
Availability Usually ships in 1-2 business days
Sales Rank #11,412,652
Category Computers
Marketplace United States 🇺🇸
Ratings & Reviews No reviews yet — be the first!

No reviews yet.

Description

Data-Parallel Programming demonstrates that architecture-independent parallel programming is possible by describing in detail how programs written in a high-level SIMD programming language may be compiled and efficiently executed-on both shared-memory multiprocessors and distributed-memory multicomputers.

MIMD computers are notoriously difficult to program. Data-Parallel Programming demonstrates that architecture-independent parallel programming is possible by describing in detail how programs written in a high-level SIMD programming language may be compiled and efficiently executed-on both shared-memory multiprocessors and distributed-memory multicomputers. The authors provide enough data so that the reader can decide the feasibility of architecture-independent programming in a data-parallel language. For each benchmark program they give the source code listing, absolute execution time on both a multiprocessor and a multicomputer, and a speedup relative to a sequential program. And they often present multiple solutions to the same problem, to better illustrate the strengths and weaknesses of these compilers. The language presented is Dataparallel C, a variant of the original C* language developed by Thinking Machines Corporation for its Connection Machine processor array. Separate chapters describe the compilation of Dataparallel C programs for execution on the Sequent multiprocessor and the Intel and nCUBE hypercubes, respectively. The authors document the performance of these compilers on a variety of benchmark programs and present several case studies.

Contents
Introduction • Dataparallel C Programming Language Description • Design of a Multicomputer Dataparallel C Compiler • Design of a Multiprocessor Dataparallel C Compiler • Writing Efficient Programs • Benchmarking the Compilers • Case Studies • Conclusions

Donate to EbookNetworking
Previous Book J2EE and JAX: Developing We... Next Book Excel 2016 For Dummies
Previous J2EE and JAX: Dev...
Next Excel 2016 For Du...