Sears Hadoop Plans: Check Out Data Warehousing's Future
Hours, Not Weeks
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Another vendor operating on top of Hadoop is Hadapt, which implements a SQL-queryable data store running on Hadoop. It uses the power of Hadoop's distributed infrastructure to speed processing, and it can handle unstructured data applications including full-text search.
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Platfora, which launched its first product at Strata New York, is yet another company offering a new-breed analytics platform built to run on Hadoop. The software gives analysts and power-users a data catalog that enumerates the data sets that are available on a Hadoop Distributed File System. When you want to do an analysis, you use a shopping-cart-metaphor interface to pick and choose the dimensions of data you want to use. Behind the scenes, Platfora's software takes care of creating and executing MapReduce processing that brings all the requested data into an interactive data-visualization environment.
[ Want the inside story on big data plans at Sears? Read Why Sears Is Going All-In On Hadoop. ]
Once the data lens is ready, a process that takes a few hours, according to Platfora, analysts and business users alike can query and explore the data with sub-second response time because the data lens runs in memory. Adding new data types or otherwise changing the dimensions used in a data lens takes minutes or hours, says Platfora, not the days, weeks or months it might require to rebuild a conventional data warehouse.
Platfora has a who's who list of prominent venture capital backers -- Andreessen Horowitz, Sutter Hill Ventures, In-Q-Tel -- and on Tuesday it closed a $20 round of funding led by Battery Ventures. The company also reports that more than ten companies are beta testing the software, though none have shared their stories publically as yet.
Established vendors, too, are working on ways to query data in Hadoop without actually moving that data. Teradata, for one, has placed bets on the HCatalog service for Hadoop being developed by Hortonworks, and Microsoft announced last week that it would add a PolyBase feature to the SQL Server 2012 Parallel Data Warehouse that will provide federated querying of Hadoop using Hive.
To get back to the question of how data warehousing will change, it's clear that many vendors are working on ways to run data-warehouse style analyses and analytic applications on Hadoop. The most promising candidates have few references and there's no clear leader as yet.
Amid all the enthusiasm building around Hadoop, you have to catch yourself sometimes and remember that the last public customer count from Cloudera (the leading Hadoop software distributor and support provider) was in the hundreds, not thousands or tens of thousands. Relational database users number in the millions, and the leading commercial vendors have hundreds of thousands of customers each.
Keeping that dose of reality in mind, it's clear that the broad market is not going to substantially change anytime soon, but the early adopters have adopted and the fast followers are now on their heels. It's only a matter of time -- perhaps three to five years -- before the cost, scale and flexibility advantages of Hadoop will give it a sizeable presence in the enterprise market. Showing up in even 20% of large and midsize firms within that timeframe would be breakneck speed compared to how long it took for relational data warehousing to proliferate.
It's at that point that things will really start to change for the relational database.
Just as the Internet and social networks are changing what we watch and how much time we spend watching TV and reading newspapers, the rise of Hadoop will cast relational databases in more tactical roles best suited to the strengths of the platform. Fast querying of structured data is what relational databases do best. Where new data types, complex data and varied data are constantly showing up, relational databases don't adapt quickly or well. And where data volumes are extreme, cost is a killer. That's the bottom line.
What's your view on whether, when and how Hadoop will impact relational databases? Share your comments below.
In-memory analytics offers subsecond response times and hundreds of thousands of transactions per second. Now falling costs put it in reach of more enterprises. Also in the Analytics Speed Demon special issue of InformationWeek: Louisiana State University hopes to align business and IT more closely through a master's program focused on analytics. (Free registration required.)