An Introduction to Parallel Programming (2nd Ed.)
Auteurs : Pacheco Peter, Malensek Matthew
As the first undergraduate text to directly address compiling and running parallel programs on multi-core and cluster architecture, this second edition carries forward its clear explanations for designing, debugging and evaluating the performance of distributed and shared-memory programs while adding coverage of accelerators via new content on GPU programming and heterogeneous programming. New and improved user-friendly exercises teach students how to compile, run and modify example programs.
2. Parallel hardware and parallel software
3. Distributed memory programming with MPI
4. Shared-memory programming with Pthreads
5. Shared-memory programming with OpenMP
6. GPU programming with CUDA
7. Parallel program development
8. Where to go from here
His research is in parallel scientific computing. He has worked on the development of parallel software for circuit simulation, speech recognition, and the simulation of large networks of biologically accurate neurons. Peter has been teaching parallel computing at both the undergraduate and graduate levels for nearly twenty years. He is the author of Parallel Programming with MPI, published by Morgan Kaufmann Publishers.
Matthew Malensek is an Assistant Professor in the Department of Computer Science at the University of San Francisco. His research interests are centered around big data, parallel/distributed systems, and cloud computing. This includes systems approaches for processing and managing data at scale in a variety of domains, including fog computing and Internet of Things (IoT) devices.
- Takes a tutorial approach, starting with small programming examples and building progressively to more challenging examples
- Explains how to develop parallel programs using MPI, Pthreads and OpenMP programming models
- A robust package of online ancillaries for instructors and students includes lecture slides, solutions manual, downloadable source code, and an image bank New to this edition:
- New chapters on GPU programming and heterogeneous programming
- New examples and exercises related to parallel algorithms
Date de parution : 11-2021
Ouvrage de 496 p.
19x23.4 cm
Thèmes d’An Introduction to Parallel Programming :
Mots-clés :
parallel programs; hardware; Neumann model; caches; pipelining; SIMD systems; caveats