IBM InfoSphere Streams: Assembling Continuous Insight in the Information Revolution

IBM InfoSphere Streams: Assembling Continuous Insight in the Information Revolution
Author :
Publisher : IBM Redbooks
Total Pages : 456
Release :
ISBN-10 : 9780738436159
ISBN-13 : 0738436151
Rating : 4/5 (151 Downloads)

Book Synopsis IBM InfoSphere Streams: Assembling Continuous Insight in the Information Revolution by : Chuck Ballard

Download or read book IBM InfoSphere Streams: Assembling Continuous Insight in the Information Revolution written by Chuck Ballard and published by IBM Redbooks. This book was released on 2012-05-02 with total page 456 pages. Available in PDF, EPUB and Kindle. Book excerpt: In this IBM® Redbooks® publication, we discuss and describe the positioning, functions, capabilities, and advanced programming techniques for IBM InfoSphereTM Streams (V2), a new paradigm and key component of IBM Big Data platform. Data has traditionally been stored in files or databases, and then analyzed by queries and applications. With stream computing, analysis is performed moment by moment as the data is in motion. In fact, the data might never be stored (perhaps only the analytic results). The ability to analyze data in motion is called real-time analytic processing (RTAP). IBM InfoSphere Streams takes a fundamentally different approach to Big Data analytics and differentiates itself with its distributed runtime platform, programming model, and tools for developing and debugging analytic applications that have a high volume and variety of data types. Using in-memory techniques and analyzing record by record enables high velocity. Volume, variety and velocity are the key attributes of Big Data. The data streams that are consumable by IBM InfoSphere Streams can originate from sensors, cameras, news feeds, stock tickers, and a variety of other sources, including traditional databases. It provides an execution platform and services for applications that ingest, filter, analyze, and correlate potentially massive volumes of continuous data streams. This book is intended for professionals that require an understanding of how to process high volumes of streaming data or need information about how to implement systems to satisfy those requirements. See: http://www.redbooks.ibm.com/abstracts/sg247865.html for the IBM InfoSphere Streams (V1) release.


IBM InfoSphere Streams: Assembling Continuous Insight in the Information Revolution Related Books

IBM InfoSphere Streams: Assembling Continuous Insight in the Information Revolution
Language: en
Pages: 456
Authors: Chuck Ballard
Categories: Computers
Type: BOOK - Published: 2012-05-02 - Publisher: IBM Redbooks

DOWNLOAD EBOOK

In this IBM® Redbooks® publication, we discuss and describe the positioning, functions, capabilities, and advanced programming techniques for IBM InfoSphereTM
IBM InfoSphere Streams
Language: en
Pages:
Authors: Kevin Foster
Categories: Parallel processing (Electronic computers)
Type: BOOK - Published: 2011 - Publisher:

DOWNLOAD EBOOK

IBM InfoSphere Streams: Accelerating Deployments with Analytic Accelerators
Language: en
Pages: 556
Authors: Chuck Ballard
Categories: Computers
Type: BOOK - Published: 2014-02-07 - Publisher: IBM Redbooks

DOWNLOAD EBOOK

This IBM® Redbooks® publication describes visual development, visualization, adapters, analytics, and accelerators for IBM InfoSphere® Streams (V3), a key co
Addressing Data Volume, Velocity, and Variety with IBM InfoSphere Streams V3.0
Language: en
Pages: 326
Authors: Mike Ebbers
Categories: Computers
Type: BOOK - Published: 2013-03-12 - Publisher: IBM Redbooks

DOWNLOAD EBOOK

There are multiple uses for big data in every industry—from analyzing larger volumes of data than was previously possible to driving more precise answers, to
Implementing IBM InfoSphere BigInsights on IBM System x
Language: en
Pages: 224
Authors: Mike Ebbers
Categories: Computers
Type: BOOK - Published: 2013-06-12 - Publisher: IBM Redbooks

DOWNLOAD EBOOK

As world activities become more integrated, the rate of data growth has been increasing exponentially. And as a result of this data explosion, current data mana