|By Business Wire||
|April 9, 2014 02:00 PM EDT||
Research and Markets (http://www.researchandmarkets.com/research/pl6sf9/big_data_leaders) has announced the addition of the "Big Data Leaders: 1010data, Cloudera, Hortonworks, NetApp, and Tableau Software" report to their offering.
Big Data represents a collection of data sets so large and complex that it becomes difficult to process using on-hand database management tool.
It is also unstructured, meaning that it is not tabulated, correlated, etc. (e.g. it does not have a pre-defined data model or is not organized in a pre-defined manner).
Big Data technologies enable organizations to handle huge datasets and generate information/insights from them with minimal delay time (sometimes in real-time).
Leading companies in Big Data are the already making great strides and will surely represent the forbearers of many great solutions yet to come.
Companies evaluated in this report* include:
For each company evaluated in this report we include the following:
- Company Overview
- Offering Analysis
- Strategies and Plans
- Mergers and Acquisitions
- Partnerships and Alliances
- Financial and Operational Review
- Key Contract Wins Assessment
- Analysis and Conclusions
Key Topics Covered:
1.0 Big Data: An Overview
2.0 Big Data: Market Trends And Forecast
3.0 Tableau Software
For more information visit http://www.researchandmarkets.com/research/pl6sf9/big_data_leaders
Sep. 29, 2016 10:30 PM EDT Reads: 4,021
Sep. 29, 2016 10:15 PM EDT Reads: 2,786
Sep. 29, 2016 10:00 PM EDT Reads: 1,804
Sep. 29, 2016 09:45 PM EDT Reads: 3,126
Sep. 29, 2016 08:45 PM EDT Reads: 1,546
Sep. 29, 2016 08:45 PM EDT Reads: 2,209
Sep. 29, 2016 06:15 PM EDT Reads: 3,685
Sep. 29, 2016 06:00 PM EDT Reads: 1,537
Sep. 29, 2016 05:15 PM EDT Reads: 2,855
Sep. 29, 2016 05:15 PM EDT Reads: 1,583
Sep. 29, 2016 04:45 PM EDT Reads: 2,794
Sep. 29, 2016 04:45 PM EDT Reads: 3,446
Sep. 29, 2016 04:30 PM EDT Reads: 1,343
Sep. 29, 2016 04:30 PM EDT Reads: 1,962
So, you bought into the current machine learning craze and went on to collect millions/billions of records from this promising new data source. Now, what do you do with them? Too often, the abundance of data quickly turns into an abundance of problems. How do you extract that "magic essence" from your data without falling into the common pitfalls? In her session at @ThingsExpo, Natalia Ponomareva, Software Engineer at Google, provided tips on how to be successful in large scale machine learning...
Sep. 29, 2016 04:00 PM EDT Reads: 2,402