A Study on Scheduling in Grid Environment
Journal Title: International Journal on Computer Science and Engineering - Year 2011, Vol 3, Issue 2
Abstract
Grid Computing is a high performance computing environment that allows sharing of geographically distributed resources across multiple administrative domains and used to solve large scale computational demands. In the grid environment, users can access the resources transparently without knowing where they are physically located. To achieve the promising potentials of computational grids, job scheduling is an important issue to be considered. Scheduling is very complica ted due to the unique characteristics of the grids. This paper gives a classification of scheduling algorithms in distributed computing and the algorithms that are applicable to grid environment. It also studies performance of various scheduling algorithms and the softwares that support scheduling in real grid environment as well as simulated environment.
Authors and Affiliations
Dr. K. Vivekanandan , D. Ramyachitra
Partial fingerprint matching based on SIFT Features
Fingerprints are being extensively used for person identification in a number of commercial, civil, and forensic applications. The current Fingerprint matching technology is quite mature for matching full prints, matchin...
Enhancing Security Of Agent-Oriented Techniques Programs Code Using Jar Files
Agent-oriented techniques characterize an exciting new way of analyzing, designing and building complex software systems in real time world. These techniques have the prospective to significantly improve current practice...
Recoverable Timestamping Approach For Concurrency Control In Distributed Database
A distributed database consists of different number of sites which are interconnected by a communication network. In this environment in absence of proper synchronization among different transaction may lead to inconsist...
Towards Intelligent Information Retrieval on Web
The World Wide Web is an information resource with virtually unlimited potential. However, this potential is relatively untapped because it is difficult for machines to process and integrate this information meaningfully...
An Efficient Pruning Technique for Mining Frequent Itemsets in Spatial Databases
Frequent Itemset Mining is evaluating the rules and relationship within the data items are optimizing it, in the large spatial databases (for e.g. Images, Docs, AVI files etc).It is one of the major problems in DM (Data...