Merv Adrian

A member of the Gartner Blog Network

Entries Tagged as 'Hadapt'


Hadoop Investments Continue: Teradata, HP Jockey For Position

by Merv Adrian  |  July 24, 2014  |  5 Comments

Interest from the leading players continues to drive investment in the Hadoop marketplace. This week Teradata made two acquisitions – Revelytix and Hadapt – that enrich its already sophisticated big data portfolio, while HP made a $50M investment in, and joined the board of, Hortonworks. These moves continue the ongoing effort by leading players. 4 of […]

5 Comments »

Category: Apache Big Data data warehouse DBMS Gartner Hadapt Hadoop Hortonworks HP IBM MapR Microsoft Oracle RDBMS Revelytix Teradata Uncategorized     Tags: , , , , , , , , , , , , , ,

What, Exactly, Is “Proprietary Hadoop”? Proposed: “distribution-specific.”

by Merv Adrian  |  September 6, 2013  |  12 Comments

Many things have changed in the software industry in an era when the use of open source software has pervaded the mainstream IT shop. One of them is the significance – and descriptive adequacy – of the word “proprietary.” Merriam-Webster defines it as “something that is used, produced, or marketed under exclusive legal right of […]

12 Comments »

Category: Apache Apache Yarn Big Data BigInsights Cassandra Cloudera Hadoop Hbase IBM MapR MapReduce open source OSS Pig YARN     Tags: , , , , , , , , , , , , , ,

Hadoop Summit Recap Part Two – SELECT FROM hdfs WHERE bigdatavendor USING SQL

by Merv Adrian  |  July 15, 2013  |  10 Comments

Probably the most widespread, and commercially imminent, theme at the Summit was “SQL on Hadoop.” Since last year, many offerings have been touted, debated, and some have even shipped. In this post, I offer a brief look at where things stood at the Summit and how we got there. To net it out: offerings today […]

10 Comments »

Category: Apache Apache Drill Apache Yarn Aster Big Data Cloudera data warehouse DBMS Gartner Hadapt Hadoop HCatalog HDFS Hive Hortonworks IBM MapR MapReduce Microsoft Netezza Oozie Oracle Rainstor RDBMS Real-time SQL Server Sqoop Teradata YARN     Tags: , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , ,

Hadoop 2013 – Part Two: Projects

by Merv Adrian  |  February 21, 2013  |  1 Comment

In Part One of this series, I pointed out that how significant attention is being lavished on performance in 2013. In this installment, the topic is projects, which are proliferating precipitously. One of my most frequent client inquiries is “which of these pieces make Hadoop?” As recently as a year ago, the question was pretty simple for […]

1 Comment »

Category: Accumulo Ambari Apache Apache Drill Apache Yarn BigInsights Cassandra Cloudera Dataguise EMC Gartner Giraph graph databases Hadapt Hadoop Hbase HCatalog HDFS Hive Hortonworks Hstreaming IBM InfoSphere MapReduce Mshout Oozie open source Pig Rainstor Serengeti Solr SQLstream Sqoop VMware Zookeeper     Tags: , , , , , , , , , , , , , , , , , , , ,

Stack Up Hadoop to Find Its Place in Your Architecture

by Merv Adrian  |  January 30, 2013  |  8 Comments

2013 promises to be a banner year for Apache Hadoop, platform providers, related technologies – and analysts who try to sort it out. I’ve been wrestling with ways to make sense of it for Gartner clients bewildered by a new set of choices, and for them and myself, I’ve built a stack diagram that describes […]

8 Comments »

Category: Apache Big Data Cloudera data integration Hadoop Hbase HDFS Hortonworks MapReduce open source OSS Sqoop     Tags: , , , , , , , , , , , , , , , , , , , ,

Hadoop Distributions And Kids’ Soccer

by Merv Adrian  |  July 19, 2011  |  4 Comments

The big players are moving in for a piece of the Big Data action. IBM, EMC, and NetApp have stepped up their messaging, in part to prevent startup upstarts like Cloudera from cornering the Apache Hadoop distribution market. They are all elbowing one another to get closest to “pure Apache” while still “adding value.” Numerous […]

4 Comments »

Category: Big Data Hadoop IBM MapReduce Microsoft OSS Yahoo!     Tags: , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , ,