Implementing the IBM Storwize V5000 Implementing the IBM Storwize V5000

Implementing the IBM Storwize V5000

Descripción editorial

Organizations of all sizes are faced with the challenge of managing massive volumes of increasingly valuable data. But storing this data can be costly, and extracting value from the data is becoming more difficult. IT organizations have limited resources but must stay responsive to dynamic environments and act quickly to consolidate, simplify, and optimize their IT infrastructures. The IBM® Storwize® V5000 system provides a smarter solution that is affordable, easy to use, and self-optimizing, which enables organizations to overcome these storage challenges.

Storwize V5000 delivers efficient, entry-level configurations that are specifically designed to meet the needs of small and midsize businesses. Designed to provide organizations with the ability to consolidate and share data at an affordable price, Storwize V5000 offers advanced software capabilities that are usually found in more expensive systems.

This IBM Redbooks® publication is intended for pre-sales and post-sales technical support professionals and storage administrators.

The concepts in this book also relate to the IBM Storwize V3700.

This book was written at a software level of Version 7 Release 4.

GÉNERO
Informática e internet
PUBLICADO
2015
6 de febrero
IDIOMA
EN
Inglés
EXTENSIÓN
682
Páginas
EDITORIAL
IBM Redbooks
TAMAÑO
26,5
MB

Más libros de IBM Redbooks

TCP/IP Tutorial and Technical Overview TCP/IP Tutorial and Technical Overview
2006
IPv6 Introduction and Configuration IPv6 Introduction and Configuration
2012
WebSphere Message Broker V7.0 Integration with WebSphere Adapter for SAP Software WebSphere Message Broker V7.0 Integration with WebSphere Adapter for SAP Software
2010
Big Data Networked Storage Solution for Hadoop Big Data Networked Storage Solution for Hadoop
2013
Advanced Networking Concepts Applied Using Linux on IBM System z Advanced Networking Concepts Applied Using Linux on IBM System z
2012
Building Big Data and Analytics Solutions in the Cloud Building Big Data and Analytics Solutions in the Cloud
2014