Handbook of Parallel Computing and Statistics

Regular price €204.60
algorithm
Bregman Projections
c012
Category=UMB
Category=UYA
Data Set
dk2384
eq_computing
eq_isMigrated=1
eq_isMigrated=2
eq_non-fiction
IBM SP2
Inverse Iteration
IP Algorithm
IP Method
krylov
lanczos
Lanczos Algorithm
Lanczos Method
Lanczos Recursion
Lanczos Vectors
Linear Algebra
Linear Algebra Operations
Load Balance
Mars
Mars Algorithm
matrix
Matrix Vector Products
Numerical Linear Algebra
Parallel Computing
products
QR Decomposition
Raid Level
Ritz Vectors
Singular Vectors
Statistics DK2384
Statistics DK2384 C000
subspace
Subspace Iteration
vector
vectors

Product details

  • ISBN 9780824740672
  • Weight: 1111g
  • Dimensions: 178 x 254mm
  • Publication Date: 21 Dec 2005
  • Publisher: Taylor & Francis Inc
  • Publication City/Country: US
  • Product Form: Hardback
Delivery/Collection within 10-20 working days

Our Delivery Time Frames Explained
2-4 Working Days: Available in-stock

10-20 Working Days: On Backorder

Will Deliver When Available: On Pre-Order or Reprinting

We ship your order once all items have arrived at our warehouse and are processed. Need those 2-4 day shipping items sooner? Just place a separate order for them!

Technological improvements continue to push back the frontier of processor speed in modern computers. Unfortunately, the computational intensity demanded by modern research problems grows even faster. Parallel computing has emerged as the most successful bridge to this computational gap, and many popular solutions have emerged based on its concepts, such as grid computing and massively parallel supercomputers. The Handbook of Parallel Computing and Statistics systematically applies the principles of parallel computing for solving increasingly complex problems in statistics research.

This unique reference weaves together the principles and theoretical models of parallel computing with the design, analysis, and application of algorithms for solving statistical problems. After a brief introduction to parallel computing, the book explores the architecture, programming, and computational aspects of parallel processing. Focus then turns to optimization methods followed by statistical applications. These applications include algorithms for predictive modeling, adaptive design, real-time estimation of higher-order moments and cumulants, data mining, econometrics, and Bayesian computation. Expert contributors summarize recent results and explore new directions in these areas.

Its intricate combination of theory and practical applications makes the Handbook of Parallel Computing and Statistics an ideal companion for helping solve the abundance of computation-intensive statistical problems arising in a variety of fields.

Erricos John Kontoghiorghes