The Netezza Data Appliance Architecture: A Platform for High Performance Data Warehousing and Analytics The Netezza Data Appliance Architecture: A Platform for High Performance Data Warehousing and Analytics

The Netezza Data Appliance Architecture: A Platform for High Performance Data Warehousing and Analytics

    • 4.5 • 4 Ratings

Publisher Description

Success in any enterprise depends on having the best available information in time to make sound decisions. Anything less wastes opportunities, costs time and resources, and can even put the organization at risk. But finding crucial information to guide the best possible actions can mean analyzing billions of data points and petabytes of data, whether to predict an outcome, identify a trend, or chart the best course through a sea of ambiguity. Companies with this type of intelligence on demand react faster and make better decisions than their competitors.


Netezza, an IBM® company, transforms the data warehouse and analytics landscape with a platform built to deliver extreme, industry-leading price-performance with appliance simplicity. It is a new frontier in advanced analytics, with the ability to carry out monumental processing challenges with blazing speed, without barriers or compromises. For users and their organizations, it means the best intelligence for all who need it, even as demands for information escalate.


This IBM Redguide™ publication introduces the Netezza Asymmetric Massively Parallel Processing™ (AMPP™) architecture, and describes how the system orchestrates queries and analytics to achieve its unprecedented speed. You will see how Netezza software and hardware come together to extract the maximum utilization from every critical component, and how a system optimized for tens of thousands of users querying huge data volumes really works. It is a unique data warehouse and analytics platform with unparalleled price-performance, ready for today's needs and tomorrow's challenges.

GENRE
Computers & Internet
RELEASED
2011
January 14
LANGUAGE
EN
English
LENGTH
16
Pages
PUBLISHER
IBM Redbooks
SELLER
International Business Machines Corp
SIZE
263.5
KB

More Books Like This

Enterprise Data Warehouse Optimization with Hadoop on IBM Power Systems Servers Enterprise Data Warehouse Optimization with Hadoop on IBM Power Systems Servers
2018
Performance and Capacity Implications for Big Data Performance and Capacity Implications for Big Data
2014
Implementing IBM InfoSphere BigInsights on IBM System x Implementing IBM InfoSphere BigInsights on IBM System x
2013
IBM Technical Computing Clouds IBM Technical Computing Clouds
2013
Performance Optimization and Tuning Techniques for IBM Power Systems Processors Including IBM POWER8 Performance Optimization and Tuning Techniques for IBM Power Systems Processors Including IBM POWER8
2017
Fundamentals of Data Engineering Fundamentals of Data Engineering
2022

More Books by IBM Redbooks & Phil Francisco

TCP/IP Tutorial and Technical Overview TCP/IP Tutorial and Technical Overview
2006
Advanced Networking Concepts Applied Using Linux on IBM System z Advanced Networking Concepts Applied Using Linux on IBM System z
2012
IPv6 Introduction and Configuration IPv6 Introduction and Configuration
2012
Network Intrusion Prevention Design Guide: Using IBM Security Network IPS Network Intrusion Prevention Design Guide: Using IBM Security Network IPS
2011
IT Security Compliance Management Design Guide with IBM Tivoli Security Information and Event Manager IT Security Compliance Management Design Guide with IBM Tivoli Security Information and Event Manager
2010
Big Data Networked Storage Solution for Hadoop Big Data Networked Storage Solution for Hadoop
2013

Customers Also Bought

Big Data Analytics with IBM Cognos Dynamic Cubes Big Data Analytics with IBM Cognos Dynamic Cubes
2015
Disruptive Possibilities: How Big Data Changes Everything Disruptive Possibilities: How Big Data Changes Everything
2013
Real-Time Big Data Analytics: Emerging Architecture Real-Time Big Data Analytics: Emerging Architecture
2013
Planning for Big Data Planning for Big Data
2012
Microsoft System Center Data Protection for the Hybrid Cloud Microsoft System Center Data Protection for the Hybrid Cloud
2015
IBM Spectrum Scale: Big Data and Analytics  Solution Brief IBM Spectrum Scale: Big Data and Analytics  Solution Brief
2019