
Vector Models for Data-Parallel Computing
by Guy Blelloch
Publisher: The MIT Press 1990
ISBN/ASIN: 026202313X
ISBN-13: 9780262023139
Number of pages: 268
Description:
Vector Models for Data-Parallel Computing describes a model of parallelism that extends and formalizes the Data-Parallel model on which the Connection Machine and other supercomputers are based. It presents many algorithms based on the model, ranging from graph algorithms to numerical algorithms, and argues that data-parallel models are not only practical and can be applied to a surprisingly wide variety of problems, they are also well suited for very-high-level languages and lead to a concise and clear description of algorithms and their complexity.
Download or read it online for free here:
Download link
(1.3MB, PDF)
Similar books
Knapsack Problems: Algorithms and Computer Implementationsby Silvano Martello, Paolo Toth - John Wiley & Sons
The book on exact and approximate algorithms for a number of important problems in the field of integer linear programming, which the authors refer to as 'knapsack'. Includes knapsack problems such as binary, bounded, unbounded or binary multiple.
(19969 views)
The Design of Approximation Algorithmsby D. P. Williamson, D. B. Shmoys - Cambridge University Press
This book shows how to design approximation algorithms: efficient algorithms that find provably near-optimal solutions. It is organized around techniques for designing approximation algorithms, including greedy and local search algorithms.
(18191 views)
Elementary Algorithmsby Larry LIU Xinyu - Github
'Elementary Algorithms' is a free book about elementary algorithms and data structures. This book doesn't only focus on an imperative (or procedural) approach, but also includes purely functional algorithms and data structures.
(11104 views)
Algorithmsby Robert Sedgewick, Kevin Wayne - Addison-Wesley Professional
This textbook surveys the most important algorithms and data structures in use today. Applications to science, engineering, and industry are a key feature of the text. We motivate each algorithm by examining its impact on specific applications.
(14997 views)