Seguridad Mania.com - España y América Latina
Portal sobre tecnologías para la seguridad física
- Destacamos »
- software Anti Blanqueo
SANTA CLARA, CA -- (Marketwired) -- 06/03/14 -- DataTorrent, creator of the world's first enterprise grade real-time stream processing platform on Hadoop, today announced the general availability of DataTorrent RTS. DataTorrent RTS enables enterprises to take action in real-time as a result of high-performance complex processing of data as it is created. Separately, DataTorrent announced a strategic go-to-market partnership with Trace3.
With today's release, DataTorrent RTS becomes the industry's first commercial offering to deliver real-time streaming analytic capabilities on Hadoop with performance greater than 1 billion data events per second -- equivalent to processing 46 cumulative hours of streaming Twitter data in one second. Additionally, DataTorrent RTS' fault tolerant architecture ensures zero downtime and is certified to run on all major Hadoop and Cloud distributions.
"We are seeing increasing interest in stream-processing platforms for real-time analytics, as a complement to data warehouses and Apache Hadoop," said Jason Stamper, Research Analyst, 451 Group. "Enterprise adoption of stream-processing requires fast, in-memory processing of a large volume of events at scale -- and in many cases a fault-tolerant architecture too."
By 2020, the number of smartphones, tablets, and personal computers in use will reach 7.3 billion units. Additionally, the number of Internet of Things (IoT) connected devices will grow to 26 billion units, a nearly 30-fold increase from 0.9 billion in 2009.(1)
As this massive amount of human and machine-generated data outpaces the capabilities of traditional databases, organizations are seeking ways to find scalable, predictable technology that enables reduced operational costs, increased revenue and increased customer satisfaction. Current Hadoop technology provides a scalable way to store and process data in a batch-oriented mode, but processing data in this way can take hours or even days.
DataTorrent RTS Streaming Analytics Platform
DataTorrent RTS allows organizations to harness the full potential of big data by enabling faster data ingestion, data processing, and more timely data insights. Key capabilities include:
"Hadoop has made big data analytics a reality; however, the true value of big data is unlocked when it can be acted upon in real-time," said Phu Hoang, co-founder and CEO, DataTorrent. "DataTorrent RTS is designed specifically to address this need for the enterprise. Through the advances provided by Hadoop 2.0, we are proud to raise the bar on real-time analytics to offer the industry's first true real-time data ingestion and analysis platform at scale."
Open Platform Support Provides Customer Choice
DataTorrent RTS is a Hadoop 2.0 (YARN) native application. One hundred percent Hadoop 2.0 compliance allows DataTorrent RTS and Hadoop Map Reduce to exist side-by-side. With more than 400 Apache 2.0 open source DataTorrent operators, creating and deploying real time streaming analytic application is now easier than ever.
DataTorrent's open approach is validated by certifications on the industry leading Hadoop distributions from Cloudera, Hortonworks and MapR Technologies as well as the leading cloud providers, Amazon Web Services and Google Compute Engine.
"The certification of DataTorrent RTS on Cloudera Enterprise 5, provides our joint customers the ability to ingest, analyze, and act on voluminous streams of data in real-time as data flows into an enterprise data hub," said Amr Awadallah, co-founder and chief technology officer, Cloudera. "This real-time capability allows joint customers to uncover real-time insights and enables them to realize the full value of Cloudera's industry leading platform for big data."
"We're pleased to certify DataTorrent RTS on Hortonworks Data Platform 2.1, the industry's only 100-percent open source Apache Hadoop distribution," said John Kreisa, vice president of strategic marketing at Hortonworks. "With partners like DataTorrent and their YARN Ready applications in the Hadoop ecosystem, we're able to provide enterprises with the ability to aggregate new types of data from sensors/machines, server logs, clickstreams, and other sources to a Data Lake, empowering a true modern data architecture that delivers business insights in real-time."
"Real-time data analysis at large scale with fault tolerance is a key customer requirement," said M.C. Srivas, CTO and Co-Founder of MapR Technologies. "DataTorrent RTS certification provides an enterprise-grade, real-time streaming application managed by YARN within the mission-critical, high-performance MapR Distribution for Apache Hadoop."
DataTorrent RTS for Hadoop is generally available today. For more information, or to download, click here.
Additional Resources
About DataTorrent
DataTorrent RTS is the world's most powerful Big Data streaming platform built exclusively on Hadoop. With its massively scalable architecture, DataTorrent RTS allows enterprises to process, monitor, analyze and act on data instantaneously. Based in Santa Clara, California, DataTorrent is backed by leading investors including August Capital, Morado Ventures, and Yahoo co-founder Jerry Yang. For more information, visit our website or follow us on Twitter.
(1) Gartner Press Release, "Gartner Says the Internet of Things Installed Base Will Grow to 26 Billion Units By 2020." December 12, 2013. http://www.gartner.com/newsroom/id/2636073
Media Contact:
Fitzgerald Barth
LEWIS PR for DataTorrent
(415) 432-2457
Email Contact
Publicamos interesante Informe de más de 48 págs y varios videos demostrativos sobre los posibles ataques a los robots de montaje de las fábricas. ... Leer más ►
Publicado el 22-Jun-2017 • 10.48hs
Publicado el 20-Jun-2017 • 20.22hs
Dirigido tanto a los principiantes, como a los expertos en seguridad informática y sistemas de control industrial (ICS), este libro ayudará a los lectores a comprender mejor la protección de normas de control interno de las amenazas electrónicas. ... Leer más ►
Publicado el 3-Ene-2012 • 20.16hs
Publicado el 25-Set-2009 • 01.26hs
Publicado el 17-Dic-2008 • 08.32hs
Publicado el 11-Oct-2016 • 12.48hs
Publicado el 15-Mar-2016 • 11.59hs
Publicado el 2-Feb-2017 • 11.38hs
Publicado el 20-Jun-2014 • 17.17hs
Publicado el 31-May-2011 • 05.13hs
Publicado el 25-Set-2008 • 17.54hs
Publicado el 1-Set-2016 • 16.11hs
Publicado el 31-Ago-2016 • 18.53hs
Publicado el 19-Ene-2017 • 15.47hs
Publicado el 4-Jul-2016 • 18.51hs