Overview: We provide a single, integrated view of data for smarter, faster decisions across your enterprise. Teradata gives you the ability to leverage your data assets to gain strategic insight, recognize emerging trends, and respond quickly.
KnowledgeStorm's detailed company reports contain important information including: stock symbols, company size, addresses, and more. You may access this additional information about this company by viewing one of the detailed solution reports or research abstracts listed below.
Solutions offered by Teradata.
Research offered by Teradata
A Beautiful, Cloudy Forecast: Research shows business potential in cloud-based predictive analytic solutions by Teradata. June 21, 2012 -
Predictive analytics and cloud solutions are changing the way organizations do business. But what about predictive analytics in the cloud? Check out this article by industry expert James Taylor on the concerns and benefits regarding cloud-based predictive analytics and learn about companies that have experienced the impressive results.
Cloud Computing Models for Data Warehousing by Teradata. May 07, 2012 - This paper examines cloud computing models for data warehousing and the differences between public versus private clouds.
Cloud-based BI, the pros and cons by Teradata. June 12, 2012 - With the ever-increasing influx of information and the need to effectively analyze it without using excessive time and funds, cloud business intelligence (BI) is becoming widely adopted among organizations. This e-guide provides expert insight on the strengths and weaknesses of cloud analytics and BI versus traditional on-premise systems.
Creating An Integrated BI And Data Warehousing Architecture For Effective Management Of Analytical Workloads by Teradata. October 18, 2012 - Traditional business intelligence (BI) tools no longer cut it in the era of big data analytics as workloads and data requests continue to grow in complexity. Attend this exclusive webcast to learn the benefits of leveraging an integrated BI and data warehouse architecture to meet the increasingly-complex demands of the modern enterprise.
Data Exploration and Discovery: A New Approach to Analytics by Teradata. February 03, 2014 - Access the following white paper to uncover how when used in conjunction with analytics, exploration and discovery tools can give you access to better decision making capabilities, lower operational costs, and an improved business process overall.
Discovering the Value of a Data Discovery Platform by Teradata. January 31, 2014 - Access the following white IDC research paper to uncover the requirements and drivers for acquiring a data discovery platform. Also learn about the capabilities with deployment, recommendations to choose from, and more
Exadata is Still Oracle by Teradata. April 11, 2011 - Sequels are usually never better. How did Oracle try tackling their underlying performance and scalability problems with the release of their third-generation Exadata solution? Read our white paper and discover how Oracle’s Exadata delivers far less improvement in data warehouse performance.
Harnessing the Value of Big Data Analytics by Teradata. January 29, 2014 - Access the following white paper to uncover the tools and strategies you need to know to be able to pull actionable insight from big data. Discover how to choose the right solutions for big data analytics, the challenges of converting big data to insight, and more.
Magic Quadrant for Data Warehouse Database Management Systems by Teradata. April 25, 2011 - The database warehouse DBMS market is evolving as needs change and demands for better, more efficent technology increase. With the competition for the next big database warehouse becoming more and more intense, vendors are stepping up their own marketing efforts. Because of this, it's important to know how to tell which system is right for you.
Magic Quadrant for Data Warehouse Database Management Systems (Gartner) by Teradata. April 11, 2011 - The data warehouse DBMS market is undergoing a transformation, including many acquisitions, as vendors adapt data warehouses to support the modern business intelligence and analytic workload requirements of users. This document compares 16 vendors, including IBM & Netezza, to help customers find the right one for their needs.
Oracle to Teradata Migration Case Studies: Realizing value and improving capabilities by Teradata. April 11, 2011 - This paper profiles four of the more than 200 Oracle customers who have migrated to a Teradata solution. The companies profiled in this paper have achieved performance improvements, additional business benefits that justify the migration cost, and successful integration of the Teradata Database with the Oracle OLTP environment.
Presentation Transcript: Unraveling the Data Warehouse Performance Traffic Jam by Teradata. December 07, 2012 - Today's data warehouse architectures can be highly-complex, expensive to maintain and overburdened by the increasing demand for advanced analytical workloads. Review this presentation transcript to learn the importance of deploying database technology that can handle mixed, shifting, and high-concurrency workloads, and more.
Teradata Active Data Warehouse Private Cloud: Mitigate Risk and Meet Dynamic Business Needs by Teradata. July 02, 2012 - Check out this article now to learn about public v. private clouds and how they stack up when it comes to mitigating risk and meeting business needs.
Teradata Aster Discovery Portfolio by Teradata. February 03, 2014 - Access the following white paper to uncover a discovery and analytics platform that can give you more insight from your big data than what can be found with multiple systems. Get a firsthand look at how an all-inclusive discovery system can deliver faster and more powerful insights, ultimately improving your functions and profitability.
Unified Data Architecture by Teradata. January 31, 2014 - Access the following e-book to uncover the tools and strategies you need to get the most out of big data. Learn from leading authors in the field of data management as they explain some of the common mistakes made by analytics professionals while mining for new insights and what you can do to avoid them.