Parallel R Parallel R

Parallel R

Data Analysis in the Distributed World

    • 20,99 €
    • 20,99 €

Beschreibung des Verlags

It’s tough to argue with R as a high-quality, cross-platform, open source statistical software product—unless you’re in the business of crunching Big Data. This concise book introduces you to several strategies for using R to analyze large datasets, including three chapters on using R and Hadoop together. You’ll learn the basics of Snow, Multicore, Parallel, Segue, RHIPE, and Hadoop Streaming, including how to find them, how to use them, when they work well, and when they don’t.

With these packages, you can overcome R’s single-threaded nature by spreading work across multiple CPUs, or offloading work to multiple machines to address R’s memory barrier.
Snow: works well in a traditional cluster environmentMulticore: popular for multiprocessor and multicore computersParallel: part of the upcoming R 2.14.0 releaseR+Hadoop: provides low-level access to a popular form of cluster computingRHIPE: uses Hadoop’s power with R’s language and interactive shellSegue: lets you use Elastic MapReduce as a backend for lapply-style operations

GENRE
Computer und Internet
ERSCHIENEN
2011
21. Oktober
SPRACHE
EN
Englisch
UMFANG
126
Seiten
VERLAG
O'Reilly Media
ANBIETERINFO
OREILLY MEDIA INC
GRÖSSE
4,3
 MB
Parallel Processing: Questions and Answers Parallel Processing: Questions and Answers
2018
Parallel and Concurrent Programming in Haskell Parallel and Concurrent Programming in Haskell
2013
Practical Concurrent Haskell Practical Concurrent Haskell
2017
Rust High Performance Rust High Performance
2018
R Programming: Questions and Answers R Programming: Questions and Answers
2018
R Programming: Questions and Answers (2020 Edition) R Programming: Questions and Answers (2020 Edition)
2019
Business Models for the Data Economy Business Models for the Data Economy
2013
Managing RPM-Based Systems with Kickstart and Yum Managing RPM-Based Systems with Kickstart and Yum
2007
Bad Data Handbook Bad Data Handbook
2012