Generated at Fri, 13 Dec 2019 05:34:53 GMT exp-ck: undefined; xpa: ;
Electrode, Comp-845274728, DC-prod-dfw01, ENV-prod-a, PROF-PROD, VER-19.1.31, SHA-771c9ce79737366b1d5f53d21cad4086bf722e21, CID-8177accb-7c7-16efdc0ae84fb9, Generated: Fri, 13 Dec 2019 05:34:53 GMT

High-Performance Scientific Computing : Algorithms and Applications

Walmart # 578213385
$109.84$109.84
Out of stock
Delivery not available
Pickup not available

Sold & shipped bythebookpros
Presenting the state of the art in parallel numerical algorithms, applications, architectures and system software, this book examines solutions for issues of concurrency, scale, energy efficiency and programmability, in a diverse range of applications.

About This Item

We aim to show you accurate product information. Manufacturers, suppliers and others provide what you see here, and we have not verified it.
Presenting the state of the art in parallel numerical algorithms, applications, architectures and system software, this book examines solutions for issues of concurrency, scale, energy efficiency and programmability, in a diverse range of applications. High-Performance Scientific Computing: Algorithms and Applications (Hardcover)

Specifications

Publisher
Springer London
Book Format
Hardcover
Original Languages
English
Number of Pages
350
Author
Professor Michael W Berry; Kyle A Gallivan; Efstratios Gallopoulos
ISBN-13
9781447124368
Publication Date
January, 2012
Assembled Product Dimensions (L x W x H)
9.21 x 6.14 x 0.81 Inches
ISBN-10
1447124367

Customer Reviews

Be the first to review this item!

Customer Q&A

Get specific details about this product from customers who own it.

Policies & Plans

Pricing policy

About our prices
We're committed to providing low prices every day, on everything. So if you find a current lower price from an online retailer on an identical, in-stock product, tell us and we'll match it. See more details atOnline Price Match.
webapp branch
Electrode, Comp-276499334, DC-prod-dfw5, ENV-prod-a, PROF-PROD, VER-30.0.3-ebf-2, SHA-8c8e8dc1c07e462c80c1b82096c2da2858100078, CID-a198e777-122-16efdc575b9792, Generated: Fri, 13 Dec 2019 05:40:06 GMT