Building Big Data and Analytics Solutions in the Cloud Building Big Data and Analytics Solutions in the Cloud

Building Big Data and Analytics Solutions in the Cloud

発行者による作品情報

Big data is currently one of the most critical emerging technologies. Organizations around the world are looking to exploit the explosive growth of data to unlock previously hidden insights in the hope of creating new revenue streams, gaining operational efficiencies, and obtaining greater understanding of customer needs.

It is important to think of big data and analytics together. Big data is the term used to describe the recent explosion of different types of data from disparate sources. Analytics is about examining data to derive interesting and relevant trends and patterns, which can be used to inform decisions, optimize processes, and even drive new business models.

With today's deluge of data comes the problems of processing that data, obtaining the correct skills to manage and analyze that data, and establishing rules to govern the data's use and distribution. The big data technology stack is ever growing and sometimes confusing, even more so when we add the complexities of setting up big data environments with large up-front investments.

Cloud computing seems to be a perfect vehicle for hosting big data workloads. However, working on big data in the cloud brings its own challenge of reconciling two contradictory design principles. Cloud computing is based on the concepts of consolidation and resource pooling, but big data systems (such as Hadoop) are built on the shared nothing principle, where each node is independent and self-sufficient. A solution architecture that can allow these mutually exclusive principles to coexist is required to truly exploit the elasticity and ease-of-use of cloud computing for big data environments.

This IBM® Redpaper™ publication is aimed at chief architects, line-of-business executives, and CIOs to provide an understanding of the cloud-related challenges they face and give prescriptive guidance for how to realize the benefits of big data solutions quickly and cost-effectively.

ジャンル
コンピュータ/インターネット
発売日
2014年
12月8日
言語
EN
英語
ページ数
101
ページ
発行者
IBM Redbooks
販売元
International Business Machines Corp
サイズ
1.8
MB
Big Data For Dummies Big Data For Dummies
2013年
Performance and Capacity Implications for Big Data Performance and Capacity Implications for Big Data
2014年
Information Governance Principles and Practices for a Big Data Landscape Information Governance Principles and Practices for a Big Data Landscape
2014年
The Microsoft Data Warehouse Toolkit The Microsoft Data Warehouse Toolkit
2011年
Data Warehousing For Dummies Data Warehousing For Dummies
2009年
Data Science For Dummies Data Science For Dummies
2021年
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年
IBM Watson Content Analytics: Discovering Actionable Insight from Your Content IBM Watson Content Analytics: Discovering Actionable Insight from Your Content
2014年
IT Service Management Best Practices Using IBM SmartCloud Control Desk IT Service Management Best Practices Using IBM SmartCloud Control Desk
2013年
IBM and Cisco: Together for a World Class Data Center IBM and Cisco: Together for a World Class Data Center
2013年
Oracle to DB2 Conversion Guide: Compatibility Made Easy Oracle to DB2 Conversion Guide: Compatibility Made Easy
2014年
IBM SAN Solution Design Best Practices for VMware vSphere ESXi IBM SAN Solution Design Best Practices for VMware vSphere ESXi
2013年
Just Enough R: Learn Data Analysis with R in a Day Just Enough R: Learn Data Analysis with R in a Day
2017年
Data Analytics. Fast Overview. Data Analytics. Fast Overview.
2017年
Business Analytics Business Analytics
2012年
Big Data Analytics with IBM Cognos Dynamic Cubes Big Data Analytics with IBM Cognos Dynamic Cubes
2015年
AI and Big Data on IBM Power Systems Servers AI and Big Data on IBM Power Systems Servers
2019年
Complete Guide to SQL Pattern Matching - Volume 1 Complete Guide to SQL Pattern Matching - Volume 1
2017年