Hadoop Spurs Big Data Revolution
Open source data processing platform has won over Web giants for its low cost, scalability, and flexibility. Now Hadoop will make its way into more enterprises.
There's a revolution happening in the use of big data, and Apache Hadoop is at the center of it.
Excitement around Hadoop has been building since its release as an open source distributed data processing platform five years ago. But within the last 18 months, Hadoop has taken off, gaining customers, commercial support options, and dozens of integrations from database and data-integration software vendors. The top three commercial database suppliers--Oracle, IBM, and Microsoft--have adopted Hadoop.
More Insights
Webcasts
- The Dell Difference: Lessons from Dell’s Own IT Transformation
- Why Bad Guys Write Malware– And What You Can Do About It
White Papers
- Workload Automation: The Key to Managing Windows Server Sprawl
- Workload Automation: The Heart of Enterprise Operations
Reports
More >>IBM introduced its Hadoop-based InfoSphere BigInsights software in May, and last month Oracle and Microsoft separately revealed plans to release Hadoop-based distributions next year. Both companies plan to provide deployment assistance and enterprise-grade support, and Oracle has promised a prebuilt Oracle Big Data Appliance with Hadoop software already installed.
Will Hadoop turn out to be as significant as SQL, introduced more than 30 years ago? Hadoop is often tagged as a technology exclusively for unstructured data. By combining scalability, flexibility, and low cost, it has become the default choice for Web giants like AOL and ComScore that are dealing with large-scale clickstream analysis and ad targeting scenarios.
But Hadoop is headed for wider use. It's applicable for all types of data and destined to go beyond clickstream and sentiment analysis. For example, SunGard, a hosting and application service provider for small and midsize companies, plans to introduce a cloud-based managed service aimed at helping financial services companies experiment with Hadoop-based MapReduce processing. And software-as-a-service startup Tidemark recently introduced a cloud-based performance management application that will use MapReduce to bring mixed data sources into product and financial planning scenarios.
Related Reading
| To upload an avatar photo, first complete your Disqus profile. | View the list of supported HTML tags you can use to style comments. | Please read our commenting policy. |
Subscribe to RSSResource Links
Related Webcasts
- The Dell Difference: Lessons from Dell’s Own IT Transformation
- Building a Hyperscale Architecture: How Lessons from eBay, Bing and Web Tech Leaders are Transforming Data Centers at Companies Big and Small
- Thriving in a Multi-Platform World: Integrating Mobile Device Management into Your Overall Security Strategy
- How to Build a Next-Generation Big Data Architecture
- Collaborative DevOps: Bridging the gap between development and operations with automation
This Week's Issue
Free Print Subscription
SubscribeCurrent Healthcare Issue
- InformationWeek Healthcare CIO 25: Our second annual honor roll of the health IT leaders driving healthcare's transformation.
- EHR Unreadiness: Only a small percentage of physicians planning to apply for Meaningful Use funds have e-health record systems capable of achieving most of the requirements. .
- And much more!
- Read the Current Issue
Related Whitepapers
- Workload Automation: The Key to Managing Windows Server Sprawl
- Workload Automation: The Heart of Enterprise Operations
- Enterprise Scheduling ROI
- Webinar with Forrester: Mobility and the Open Web: Open Standards and Collaboration Redefine Enterprise IT
- Extending the value of legacy applications through application transformation
Featured Whitepaper
This paper from AccuRev explores the top 5 process development challenges that software development teams face today and focuses on a series of best practices and techniques for development teams looking to improve their software development process.
Learn More












