Designing and Operating a Data Reservoir Designing and Operating a Data Reservoir

Designing and Operating a Data Reservoir

Descripción editorial

Together, big data and analytics have tremendous potential to improve the way we use precious resources, to provide more personalized services, and to protect ourselves from unexpected and ill-intentioned activities. To fully use big data and analytics, an organization needs a system of insight. This is an ecosystem where individuals can locate and access data, and build visualizations and new analytical models that can be deployed into the IT systems to improve the operations of the organization. The data that is most valuable for analytics is also valuable in its own right and typically contains personal and private information about key people in the organization such as customers, employees, and suppliers.

Although universal access to data is desirable, safeguards are necessary to protect people's privacy, prevent data leakage, and detect suspicious activity.

The data reservoir is a reference architecture that balances the desire for easy access to data with information governance and security. The data reservoir reference architecture describes the technical capabilities necessary for a system of insight, while being independent of specific technologies. Being technology independent is important, because most organizations already have investments in data platforms that they want to incorporate in their solution. In addition, technology is continually improving, and the choice of technology is often dictated by the volume, variety, and velocity of the data being managed.

A system of insight needs more than technology to succeed. The data reservoir reference architecture includes description of governance and management processes and definitions to ensure the human and business systems around the technology support a collaborative, self-service, and safe environment for data use.

The data reservoir reference architecture was first introduced in Governing and Managing Big Data for Analytics and Decision Makers, REDP-5120, which is available at:
http://www.redbooks.ibm.com/redpieces/abstracts/redp5120.html.

This IBM® Redbooks publication, Designing and Operating a Data Reservoir, builds on that material to provide more detail on the capabilities and internal workings of a data reservoir.

GÉNERO
Informática e Internet
PUBLICADO
2015
26 de mayo
IDIOMA
EN
Inglés
EXTENSIÓN
190
Páginas
EDITORIAL
IBM Redbooks
VENTAS
International Business Machines Corp
TAMAÑO
3.6
MB

Más libros de IBM Redbooks

IT Service Management Best Practices Using IBM SmartCloud Control Desk IT Service Management Best Practices Using IBM SmartCloud Control Desk
2013
Building Big Data and Analytics Solutions in the Cloud Building Big Data and Analytics Solutions in the Cloud
2014
Business Process Management Design Guide: Using IBM Business Process Manager Business Process Management Design Guide: Using IBM Business Process Manager
2015
IBM and Cisco: Together for a World Class Data Center IBM and Cisco: Together for a World Class Data Center
2013
Experiences with Oracle Database 12c Release 1 on Linux on System z Experiences with Oracle Database 12c Release 1 on Linux on System z
2014
SOA Policy, Service Gateway, and SLA Management SOA Policy, Service Gateway, and SLA Management
2013

Otros clientes también compraron

The Journey Continues: From Data Lake to Data-Driven Organization The Journey Continues: From Data Lake to Data-Driven Organization
2018
IBM Data Engine for Hadoop and Spark IBM Data Engine for Hadoop and Spark
2016
Big Data Analytics with IBM Cognos Dynamic Cubes Big Data Analytics with IBM Cognos Dynamic Cubes
2015
IBM Fibre Channel Endpoint Security for IBM DS8900F and IBM Z IBM Fibre Channel Endpoint Security for IBM DS8900F and IBM Z
2021
Review of Data Warehousing and Big Data At #OOW16 Review of Data Warehousing and Big Data At #OOW16
2016
IBM Spectrum Scale: Big Data and Analytics  Solution Brief IBM Spectrum Scale: Big Data and Analytics  Solution Brief
2019