Using In-Memory Computing to Simplify Big Data Analytics
sponsored by ScaleOut Software

Today’s big data revolution has brought about the need to quickly analyze large datasets for important patterns and trends. Parallel computing techniques, such as ‘map/reduce,’ have opened the door to dramatically reducing analysis times and are now proliferating in platforms such as open source Hadoop.

But the complexity of these techniques can be daunting, impeding adoption and inhibiting widespread use.

The technology of in-memory data grids (IMDGs) offers important breakthroughs in addressing the challenge. This resource explains how IMDGs reduce complexity and lower the barrier to big data analysis, and are able to:

  • Lower the learning curve
  • Shorten the development cycle
  • Reduce analysis time
  • And more.
Available Resources from ScaleOut Software
See what other users are reading via our Daily Top 50 Report

About TechTarget:

TechTarget provides enterprise IT professionals with the information they need to perform their jobs - from developing strategy, to making cost-effective IT purchase decisions and managing their organizations' IT projects - with its network of technology-specific Web sites, events and magazines

All Rights Reserved, Copyright 2000 - 2014, TechTarget | Read our Privacy Statement