Big Data. Big Decisions
InformationWeek
Special Coverage Series


Teradata Builds Big Data Pipeline To Hadoop

Hortonworks will collaborate with Teradata on cooperative data exchange tools and a reference guide for when--and how--to use Hadoop.

Teradata has teamed up with Hortonworks, the Hadoop spin-off that came out of Yahoo, to build a data pipeline and cooperative data exchange tools between the Hortonworks Data Platform and the Teradata Database and Aster analytical tools.

Teradata is behind some of its major competitors in forging a link to Hadoop but spokesmen for the two companies indicated this alliance is more than one of short-term convenience. Teradata has come to view Hadoop as "a data refining platform" that is ideal for preparing data that will be fed into downstream data analysis tools," such as Teradata's Aster, said Tasso Argyros, VP of product management at Teradata, in an interview. Aster combines SQL with NoSQL functionality to act as a "tool to discover insights hidden deep in the data," he said.

More Insights

Webcasts

More >>

White Papers

More >>

Reports

More >>

In addition to creating a data pipeline between their respective systems, Teradata and Hortonworks will pair up to offer a reference guide on how to make use of Hadoop plus SQL systems in joint operations. Shaun Connolly, VP of corporate strategy at Hortonworks, said in an interview that there was considerable confusion in the marketplace over how to use Hadoop.

[ Want to learn more about the variety of Hadoop systems now in the marketplace? See Hadoop Players Question Forrester's Take On Leaders. ]

"We will guide customers on the right way to use these complementary technologies to create new business value," he said. One of the biggest changes that's come about with the introduction of Hadoop has been the ability of it and other big data systems to refine unstructured data and feed it into downstream systems. Knowing when to use Hadoop in such a fashion is still under debate. The Teradata-Hortonworks reference guide will show use cases and "concrete guidance" on how to use the tools to attack big data problems, said Argyros.

"There are new problems that didn't exist five years ago. Enterprises and customers are not clear on which tool to use with which use case," Connolly said.

In addition, Hortonworks and Teradata will work together on joint marketing initiatives.

Commercial and open source implementations of Hadoop have proliferated in the marketplace, based on accounts of how useful it has been to Yahoo and Rackspace, among others. Yahoo analyzes its Web crawl data with Hadoop; Rackspace managed-services customer Mailtrust uses Hadoop to analyze 150 GB of mail-server log data each day for its customers.

Both commercial and open source implementations of Hadoop combine Hadoop's core distributed file system and MapReduce, a scale-out data sorting mechanism. Together, they can handle masses of data beyond the capacities of commercial relational systems.

Teradata is not the first major vendor to opt to work with Hortonworks, which includes a large contingent of former Yahoo developers who had produced a respected version of Hadoop for production use. Hortonworks spun out of Yahoo last June. Microsoft recently announced the next version of its database system, SQL Server 2012, will include Hadoop, with help from Hortonworks. It also offers a Hadoop service on its Windows Azure cloud.

Oracle adopted Cloudera's ease of use frontend and management tools for its implementation of Hadoop. IBM offers a Hadoop platform, BigInsights, as well as Hadoop-integrated InfoSphere Stream, a complex event processing system.

As enterprises ramp up cloud adoption, service-level agreements play a major role in ensuring quality enterprise application performance. Follow our four-step process to ensure providers live up to their end of the deal. It's all in our Cloud SLA report. (Free registration required.)



Related Reading




Currently we allow the following HTML tags in comments:

Single tags

These tags can be used alone and don't need an ending tag.

<br> Defines a single line break

<hr> Defines a horizontal line

Matching tags

These require an ending tag - e.g. <i>italic text</i>

<a> Defines an anchor

<b> Defines bold text

<big> Defines big text

<blockquote> Defines a long quotation

<caption> Defines a table caption

<cite> Defines a citation

<code> Defines computer code text

<em> Defines emphasized text

<fieldset> Defines a border around elements in a form

<h1> This is heading 1

<h2> This is heading 2

<h3> This is heading 3

<h4> This is heading 4

<h5> This is heading 5

<h6> This is heading 6

<i> Defines italic text

<p> Defines a paragraph

<pre> Defines preformatted text

<q> Defines a short quotation

<samp> Defines sample computer code text

<small> Defines small text

<span> Defines a section in a document

<s> Defines strikethrough text

<strike> Defines strikethrough text

<strong> Defines strong text

<sub> Defines subscripted text

<sup> Defines superscripted text

<u> Defines underlined text

BYTE encourages readers to engage in spirited, healthy debate, including taking us to task. However, BYTE moderates all comments posted to our site, and reserves the right to modify or remove any content that it determines to be derogatory, offensive, inflammatory, vulgar, irrelevant/off-topic, racist or obvious marketing/SPAM. BYTE further reserves the right to disable the profile of any commenter participating in said activities.

Disqus Tips 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.

Follow InformationWeek

By The Numbers

What Are Your Primary Concerns About Using Big Data Software?

Base: 417 respondents at organizations using or planning to deploy data analytics, BI or statistical analysis software
Data: InformationWeek 2013 Analytics, Business Intelligence and Information Management Survey of 541 business technology professionals, October 2012

What Do You Think?

What's your attitude about SQL analysis on top of Hadoop?
We want fast, standard SQL analysis capabilities on Hadoop ASAP
Hadoop is for unstructured data; SQL is for relational databases
We'll give SQL on Hadoop a try, but relational DBs will remain the mainstay
Given strong SQL support on Hadoop, we'd nix the data warehouse
We're not interested in Hadoop
No opinion



Related Content

From Our Sponsor

Five Big Data Challenges and How to Overcome Them with Visual Analytics

Five Big Data Challenges and How to Overcome Them with Visual Analytics

Business leaders often need a visual snapshot of data to quickly grasp and use it. This paper identifies five challenges in presenting data and how visual analytics can resolve them. Solutions are suggested to overcome the challenges of: speed, data clarity, data quality, displaying meaningful results, and dealing with outliers.

Game-Changing Analytics: How IT Executives Can Use Analytics to Create Innovation and Business Success

Game-Changing Analytics: How IT Executives Can Use Analytics to Create Innovation and Business Success

Today's competitive advantage requires a deeper understanding of your business, your market and your customers. As an IT executive, you can drive that knowledge transformation. In this white paper, learn how to make decisions as a strategic business leader and three steps to begin an analytics initiative within your enterprise.

Data Visualization Techniques: From Basics to Big Data with SAS Visual Analytics

Data Visualization Techniques: From Basics to Big Data with SAS Visual Analytics

High-performance data visualization turns sophisticated analyses into meaningful graphics, leading to faster and smarter decision making. In this white paper, learn how visual analytics can transform big data, with additional features such as real-time functionality, mobile compatibility, robust applications for technical groups and accessibility for nontechnical users.

Big Data: Lessons from the Leaders

Big Data: Lessons from the Leaders

Financial performance, competitive advantage, operational efficiency, strategic decision making - every business goal can extract value from big data, and the time for doubt or inaction has long passed. In this Economist Intelligence Unit report, in-depth interviews with data pioneers reveal the link between the effective use of big data and the bottom line among other results.

Decision-Driven Data Management: A Strategy for Better Decisions with Better Data

Decision-Driven Data Management: A Strategy for Better Decisions with Better Data

Which came first, the data or the decision? This white paper makes the case for having a decision in mind, then tailoring big data's volume, variety and velocity to achieve business results such as overcoming customer dissatisfaction or creating well-informed strategies in real time.

Informationweek Reports

Research: The Big Data Management Challenge

Research: The Big Data Management Challenge

The challenge of big data is real, but most organizations don't differentiate 'big data' from traditional data, and nearly 90% of respondents to our survey use conventional databases as the primary means of handling data. We'll help you understand what constitutes big data (it's not just size) and the numerous management challenges it poses.