Mapr + Teradata = Best-In-Class Big Data Analytics

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Mapr + Teradata = Best-In-Class Big Data Analytics Solution Brief ® MapR + Teradata = Best-In-Class Big Data Analytics Hadoop and the data warehouse are complementary when the right products At-a-Glance Big Data Analytics for right use-case are chosen. A careful selection of the right products for the Teradata is the world’s largest and Operations appropriate use cases can ensure “best-in-class” results. company focused on analytic data with Massive MapR and Teradata have partnered to deliver the top-ranked, enterprise-grade solutions through integrated data Scalability Hadoop distribution with the industry-leading data warehouse platform to warehousing, big data analytics, address business-critical use cases. MapR shares a best-of-breed view on work- and business applications. load-specific systems, and fully supports the Teradata Unified Data Architecture Product Snapshot (UDA). The joint solution provides an optimized approach to data warehousing • Appliances and platform family and analytics. According to Gartner, “The hype around replacing the data ware- • Enterprise data warehousing house gives way to the more sensible strategy of augmenting it … The influence • Advanced data management of the logical data warehouse has created a situation in which multiple repository on Hadoop strategies are now expected.”1 • Active intelligence • Integrated analytics The MapR Distribution including Apache Hadoop provides enterprise-grade, Robust Solution Highlights reliable data staging, processing, and flexible programming/analytics along with Architecture SQL on schema-less data. Teradata delivers best-in-class SQL support and per- Enterprise-Grade formance, user concurrency, fine-grained security, data quality and governance. • Fully-automated high availability • Meets enterprise SLAs with snap- Working in unison, Teradata and MapR enable an optimized data architecture shots, disaster recovery, and rolling that lets you move raw data in Hadoop using NFS, with no special APIs required. upgrades You can explore data instantly in Hadoop with Apache Drill, find new insights, and then load into Teradata for enterprise reporting and BI with standard SQL Interoperability and high user concurrency. In addition, MapR provides unique in-Hadoop NoSQL • Full read/write file-system database capabilities for operational analytics such as fraud detection and pre- • Full POSIX NFS—open APIs vention, event processing, and real-time customer targeting. • ODBC and JDBC interoperability True Multi-Tenancy • Volumes, quotas MapR and Teradata • Data and job placement control Optimized Data Architecture Relational, Security SAAS, Batch Interactive Streaming Machine Learning Mainframe MapReduce, Impala, Drill,... Spark Streaming, • Kerberos, non-Kerberos, LDAP Spark, Hive, Storm Documents, Pig,... and PAM standards Emails MapR-DB MapR-FS Operational Apps Blogs, • H/W accelerated encryption Fraud Detection Tweets, MapR Data Platform Link Data Recommendations Performance Log files, Distribution for Logistics • World-record performance for Clickstreams ® Hadoop Hadoop Analytics • Fastest In-Hadoop NoSQL DB Data Transformation, Enrichment and Integration Search Schema-less data Scalability exploration BI, reporting • Support >1 trillion files and tables Data Warehouse Ad-hoc integrated • Largest financial services and retail analytics customer deployments with 2000 nodes 1 Gartner, Inc., Magic Quadrant for Data Warehouse Database Management Systems, M. Beyer and R. Edjlali, Mar 7, 2014 www.mapr.com ® Best-in-Class Performance and Scalability MapR and Teradata bring together the power of two “best-in-class” enterprise- Teradata Benefits Why Teradata on grade architecture solutions. MapR provides 2-7x higher performance than other MapR is Unique More Choices, More Options Hadoop distributions. And, with its built-in 24x7 high availability, data protection, Putting the right data in the right disaster recovery, and resilience, MapR provides the only truly enterprise-grade hands at the right time means Hadoop distribution for Teradata customers. MapR brings many unique features higher profits. to Teradata customers: Innovative and Powerful Commodity Apache Integrated MapR Technology We are continually Hadoop deployment Hadoop deployment redefining and extending the Features with Teradata with Teradata possibilities of data warehousing. Single multi-tenant Hadoop Enterprise Approach Consolidate cluster for multiple groups disparate data sources for a single, Data protection (consistent integrated view of the truth. snapshots, mirroring, DR) Experience and Focus Teradata Ubiquitous high availability is the global leader of Data ware- housing and advanced integrated Maintain same SLAs for Hadoop analytics. as enterprise data warehouse MapR Benefits Support operational and analytical workloads in system Proven Production Readiness Meet stringent SLAs in production The joint solution provides the ingestion of high-speed streaming data, with- deployments with HA, disaster re- out complex layers of data management and storage limitations. In addition, covery, security, multi-tenancy, and Teradata Loom®, a solution for effective data and metadata management on consistent snapshot capabilities. MapR Hadoop, empowers business analysts, data scientists, and data engineers Top-Ranked Hadoop Distribution to work interactively with data in the MapR Distribution for Hadoop to prepare Give end users the responsiveness it for advanced analytics. they need with the distribution for Hadoop that provides the highest Teradata Corporation (NYSE: TDC) is a global leader in analytic data platforms, throughput and lowest latency. About Teradata marketing and analytic applications, and consulting services. Teradata helps Unified Big Data Capabilities organizations collect, integrate, and analyze all of their data so they can know Handle all types of analytical and more about their customers and business and do more of what’s really impor- operational workloads in a single tant. Visit teradata.com cluster. Try MapR Today! MapR delivers on the promise of Hadoop with a proven, enterprise-grade plat- Get the MapR Sandbox for About MapR form that supports a broad set of mission-critical and real-time production uses. Hadoop. A fully functional Hadoop MapR is used by more than 500 customers across financial services, government, cluster running on a virtual machine. healthcare, manufacturing, media, retail and telecommunications as well as by Visit www.mapr.com/sandbox leading Global 2000 and Web 2.0 companies. Investors include Google Capital, Lightspeed Venture Partners, Mayfield Fund, NEA, Qualcomm Ventures and Redpoint Ventures. © 2014 MapR Technologies, Inc..
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