MapReduce in the Clouds for Science
Source: Indiana University
The utility computing model introduced by cloud computing combined with the rich set of cloud infrastructure services offers a very viable alternative to traditional servers and computing clusters. MapReduce distributed data processing architecture has become the weapon of choice for data-intensive analyses in the clouds and in commodity clusters due to its excellent fault tolerance features, scalability and the ease of use. Currently, there are several options for using MapReduce in cloud environments, such as using MapReduce as a service, setting up one's own MapReduce cluster on cloud instances, or using specialized cloud MapReduce runtimes that take advantage of cloud infrastructure services.
| Format: | Size: | 711.25 | |
| Date: | Oct 2010 |
People who downloaded this item also downloaded
- Service Oriented Architecture for Cloud Based Travel Reservation Software as a Service
- Cloud Security Guidance: IBM recommendations for the implementation of cloud security
- How to Measure the ROI of Cloud Data Protection
- Best Practices for Capacity and Configuration Management With Virtual Infrastructure



