Welcome!

Web 2.0 Authors: Roger Strukhoff

News Feed Item

MapR Technologies Announces New Reference Architecture for Big Data Workloads

Users Derive New Business Insights, Significant Reduction in Complexity, Faster Time to Value and Improved Performance

SAN JOSE, CA -- (Marketwire) -- 02/13/13 -- MapR Technologies, Inc., the Hadoop technology leader, today announced that it collaborated with HP to develop, configure and test a Reference Architecture for Big Data workloads built on HP ProLiant Generation 8 (Gen8) servers. MapR Technologies tested the platform using industry standard benchmarks that validate the ROI and performance. The HP Reference Architecture for MapR M5 can be used by customers to accelerate performance and improve efficiency in a broad set of use cases across any industry. The Reference Architecture is also available for use by value-added resellers when recommending, selling and supporting customers looking to harness the power of Big Data.

The MapR Distribution uses HP ProLiant Gen8 servers to analyze thousands of system parameters to optimize application performance, improve uptime and provide insight into a company's IT infrastructure. IT is able to derive new business insights from Big Data through a platform to store, manage and process data at scale. The combined testing also validated the resiliency, high availability and data protection capabilities including Snapshots and Mirroring of the MapR Distribution.

"The combination of MapR's technology, innovation and leadership in the Hadoop space and the HP ProLiant servers provides an ideal platform to store, manage and process data at scale," said Jack Norris, vice president of marketing, MapR Technologies. "Customers can confidently deploy the HP Reference Architecture for MapR M5 as a blueprint for their success when working with Big Data datasets."

"Organizations looking to extract actionable insight from Big Data analysis are challenged with the complexities of deploying, configuring, managing and monitoring the enterprise-grade analytics platforms required," said Manoj Suvarna, director, product management, converged application systems group, HP. "With the HP Reference Architecture for MapR M5, based on the HP ProLiant DL380e Gen8 server, both commercial and public sector customers have access to an easy to manage, reliable, secure and economical platform for Hadoop users across a broad range of use cases."

Additional Resources

For more information and to read a discussion of performance-optimized configurations for deploying the MapR Distribution of Apache Hadoop clusters of varying sizes on HP infrastructure, please download the technical white paper: "HP Reference Architecture for MapR M5." http://h20195.www2.hp.com/V2/GetPDF.aspx/4AA4-2434ENW.pdf

About MapR Technologies
MapR delivers on the promise of Hadoop, making managing and analyzing Big Data a reality for more business users. The award-winning MapR Distribution brings unprecedented dependability, speed and ease-of-use to Hadoop. Combined with data protection and business continuity, MapR enables customers to harness the power of Big Data analytics. Leading companies including Amazon, Cisco, EMC and Google partner with MapR to deliver an enterprise-grade Hadoop solution. Investors include Lightspeed Venture Partners, NEA and Redpoint Ventures. Connect with MapR on Facebook, LinkedIn, and Twitter.

Add to Digg Bookmark with del.icio.us Add to Newsvine

Media Contacts:
Beth Winkowski
MapR Technologies, Inc.
(978) 649-7189
Email Contact

Nancy Pieretti
MapR Technologies, Inc.
(603) 268-8007
Email Contact

More Stories By Marketwired .

Copyright © 2009 Marketwired. All rights reserved. All the news releases provided by Marketwired are copyrighted. Any forms of copying other than an individual user's personal reference without express written permission is prohibited. Further distribution of these materials is strictly forbidden, including but not limited to, posting, emailing, faxing, archiving in a public database, redistributing via a computer network or in a printed form.