NOVEL IMPROVED CAPACITY SCHEDULING ALGORITHM FOR HETEROGENEOUS HADOOP
Journal: International Journal of Engineering Sciences & Research Technology (IJESRT) (Vol.6, No. 6)Publication Date: 2017-06-30
Authors : Charanjeet Kaur; Sumanpreet Kaur;
Page : 401-410
Keywords : Hadoop; map reduce; cloud computing; job scheduler;
Abstract
For large scale parallel applications Mapreduce is a widely used programming model. Mapreduce is an important programming model for parallel applications. Hadoop is a open source which is popular for developing data based applications and hadoop is a open source implementation of Mapreduce. Mapreduce gives programming interfaces to share data based in a cluster or distributed environment. As it works in a distributed environment so it should provide efficient scheduling mechanisms for efficient work capability in distributed environment. locality and synchronization overhead are main issues in mapreduce scheduling. And it also needs to schedule multiple jobs at same time in a correct way. To solve these problems with regards to locality synchronization and fairness constrains this paper review and implements different types of scheduling methods. In this paper it implements various scheduling methods and also compares their strengths and weakness. A paper compares the performances of various schedulers and the analysis will be done over many scheduler i.e, include fair, fifo, late and capacity scheduler. Further enhancement had done on capacity scheduler
Other Latest Articles
- PRINT QUALITY COMPARISON OF SOLID BLEACHED SULPHATE (SBS) BOARDAND DUPLEX BOARDPRINTED WITH WEB OFFSET PRESS
- PRINTABILITY COMPARISON OF WHITE OPAQUE AND GOLDEN OPAQUE NTR (NON TEARABLE) PAPER WITH DIGITAL PRINTING
- A SURVEY OF ECO-FRIENDLY TECHNIQUES COMING FORTH IN SHEET-FED OFFSET PRESSES
- A SURVEY OF AUTOMATION TECHNIQUES COMING FORTH IN SHEET-FED OFFSET PRINTING ORGANIZATIONS
- A FUSION OF LOCAL AND GLOBAL SALIENCIES FOR DETECTING IMAGE SALIENT REGION
Last modified: 2017-06-21 20:02:30