0
Your cart

Your cart is empty

Browse All Departments
  • All Departments
Price
  • R2,500 - R5,000 (2)
  • -
Status
Brand

Showing 1 - 2 of 2 matches in All Departments

Distributed Graph Analytics - Programming, Languages, and Their Compilation (Hardcover, 1st ed. 2020): Unnikrishnan... Distributed Graph Analytics - Programming, Languages, and Their Compilation (Hardcover, 1st ed. 2020)
Unnikrishnan Cheramangalath, Rupesh Nasre, Y.N. Srikant
R4,319 Discovery Miles 43 190 Ships in 12 - 19 working days

This book brings together two important trends: graph algorithms and high-performance computing. Efficient and scalable execution of graph processing applications in data or network analysis requires innovations at multiple levels: algorithms, associated data structures, their implementation and tuning to a particular hardware. Further, programming languages and the associated compilers play a crucial role when it comes to automating efficient code generation for various architectures. This book discusses the essentials of all these aspects. The book is divided into three parts: programming, languages, and their compilation. The first part examines the manual parallelization of graph algorithms, revealing various parallelization patterns encountered, especially when dealing with graphs. The second part uses these patterns to provide language constructs that allow a graph algorithm to be specified. Programmers can work with these language constructs without worrying about their implementation, which is the focus of the third part. Implementation is handled by a compiler, which can specialize code generation for a backend device. The book also includes suggestive results on different platforms, which illustrate and justify the theory and practice covered. Together, the three parts provide the essential ingredients for creating a high-performance graph application. The book ends with a section on future directions, which offers several pointers to promising topics for future research. This book is intended for new researchers as well as graduate and advanced undergraduate students. Most of the chapters can be read independently by those familiar with the basics of parallel programming and graph algorithms. However, to make the material more accessible, the book includes a brief background on elementary graph algorithms, parallel computing and GPUs. Moreover it presents a case study using Falcon, a domain-specific language for graph algorithms, to illustrate the concepts.

Distributed Graph Analytics - Programming, Languages, and Their Compilation (Paperback, 1st ed. 2020): Unnikrishnan... Distributed Graph Analytics - Programming, Languages, and Their Compilation (Paperback, 1st ed. 2020)
Unnikrishnan Cheramangalath, Rupesh Nasre, Y.N. Srikant
R4,547 Discovery Miles 45 470 Ships in 10 - 15 working days

This book brings together two important trends: graph algorithms and high-performance computing. Efficient and scalable execution of graph processing applications in data or network analysis requires innovations at multiple levels: algorithms, associated data structures, their implementation and tuning to a particular hardware. Further, programming languages and the associated compilers play a crucial role when it comes to automating efficient code generation for various architectures. This book discusses the essentials of all these aspects. The book is divided into three parts: programming, languages, and their compilation. The first part examines the manual parallelization of graph algorithms, revealing various parallelization patterns encountered, especially when dealing with graphs. The second part uses these patterns to provide language constructs that allow a graph algorithm to be specified. Programmers can work with these language constructs without worrying about their implementation, which is the focus of the third part. Implementation is handled by a compiler, which can specialize code generation for a backend device. The book also includes suggestive results on different platforms, which illustrate and justify the theory and practice covered. Together, the three parts provide the essential ingredients for creating a high-performance graph application. The book ends with a section on future directions, which offers several pointers to promising topics for future research. This book is intended for new researchers as well as graduate and advanced undergraduate students. Most of the chapters can be read independently by those familiar with the basics of parallel programming and graph algorithms. However, to make the material more accessible, the book includes a brief background on elementary graph algorithms, parallel computing and GPUs. Moreover it presents a case study using Falcon, a domain-specific language for graph algorithms, to illustrate the concepts.

Free Delivery
Pinterest Twitter Facebook Google+
You may like...
My Day
Anne Giulieri Paperback R137 Discovery Miles 1 370
Wang Fuzhi's Reconstruction of…
Mingran Tan Hardcover R3,805 Discovery Miles 38 050
Reading Champion: Rainforests…
Sue Graves Paperback R154 Discovery Miles 1 540
The Chinese Liberal Spirit - Selected…
Fuguan Xu Paperback R816 Discovery Miles 8 160
Five Nights at Freddy's: Survival…
Scott Cawthon Hardcover  (1)
R370 R292 Discovery Miles 2 920
Reading in the Digital Age: Young…
Ji-Eun Kim, Brenna Hassinger-Das Hardcover R4,330 Discovery Miles 43 300
Cedar Gets Stuck In Screen Land
Nikita Paddock Hardcover R530 Discovery Miles 5 300
Mathematics Education in the Early Years…
Christiane Benz, Anna S. Steinweg, … Hardcover R4,657 Discovery Miles 46 570
Imtiaz Sooliman And The Gift Of The…
Shafiq Morton Paperback  (1)
R232 Discovery Miles 2 320
Coding for Kids
Mark B Bennet Hardcover R950 R823 Discovery Miles 8 230

 

Partners