DataFlow Supercomputing Essentials DataFlow Supercomputing Essentials
Computer Communications and Networks

DataFlow Supercomputing Essentials

Research, Development and Education

Veljko Milutinovic and Others
    • £72.99
    • £72.99

Publisher Description

This informative text/reference highlights the potential of DataFlow computing in research requiring high speeds, low power requirements, and high precision, while also benefiting from a reduction in the size of the equipment. The cutting-edge research and implementation case studies provided in this book will help the reader to develop their practical understanding of the advantages and unique features of this methodology.

This work serves as a companion title to DataFlow Supercomputing Essentials: Algorithms, Applications and Implementations, which reviews the key algorithms in this area, and provides useful examples.

Topics and features:

Reviews the library of tools, applications, and source code available to support DataFlow programmingDiscusses the enhancements to DataFlow computing yielded by small hardware changes, different compilation techniques, debugging, and optimizing toolsExamines when a DataFlow architecture is best applied, and for which types of calculationDescribes how converting applications to a DataFlow representation can result in an acceleration in performance, while reducing the power consumptionExplains how to implement a DataFlow application on Maxeler hardware architecture, with links to a video tutorial series available online


This enlightening volume will be of great interest to all researchers investigating supercomputing in general, and DataFlow computing in particular. Advanced undergraduate and graduate students involved in courses on Data Mining, Microprocessor Systems, and VLSI Systems, will also find the book to be a helpful reference.​

GENRE
Computing & Internet
RELEASED
2017
30 October
LANGUAGE
EN
English
LENGTH
161
Pages
PUBLISHER
Springer International Publishing
SIZE
3.6
MB
The Art of High Performance Computing for Computational Science, Vol. 1 The Art of High Performance Computing for Computational Science, Vol. 1
2019
Reconfigurable Computing: Architectures, Tools, and Applications Reconfigurable Computing: Architectures, Tools, and Applications
2008
Languages and Compilers for Parallel Computing Languages and Compilers for Parallel Computing
2022
Languages and Compilers for Parallel Computing Languages and Compilers for Parallel Computing
2021
Languages and Compilers for Parallel Computing Languages and Compilers for Parallel Computing
2014
Parallel Computing: Fundamentals, Applications and New Directions Parallel Computing: Fundamentals, Applications and New Directions
1998
The 'Right to Damages' under EU Competition Law : From Courage v. Crehan to the White Paper and Beyond The 'Right to Damages' under EU Competition Law : From Courage v. Crehan to the White Paper and Beyond
2010
Exploring the DataFlow Supercomputing Paradigm Exploring the DataFlow Supercomputing Paradigm
2019
DataFlow Supercomputing Essentials DataFlow Supercomputing Essentials
2017
Mind Genomics Mind Genomics
2016
Guide to DataFlow Supercomputing Guide to DataFlow Supercomputing
2015
Computational Medicine in Data Mining and Modeling Computational Medicine in Data Mining and Modeling
2013
Privacy and Security for Cloud Computing Privacy and Security for Cloud Computing
2012
Resilient Routing in Communication Networks Resilient Routing in Communication Networks
2024
Big Data Platforms and Applications Big Data Platforms and Applications
2021
6G Mobile Wireless Networks 6G Mobile Wireless Networks
2021
Guide to Flow-Aware Networking Guide to Flow-Aware Networking
2020
Guide to Disaster-Resilient Communication Networks Guide to Disaster-Resilient Communication Networks
2020