Failure Prediction And Detection In Cloud Datacenters
Journal: International Journal of Scientific & Technology Research (Vol.6, No. 9)Publication Date: 2017-09-15
Authors : Purvil Bambharolia; Prajeet Bhavsar; Vivek Prasad;
Page : 122-127
Keywords : Cloud computing failure prediction failure detection cloud datacenters probability and statistics Bayesian probability machine learning;
Abstract
Cloud computing is a novel technology in the field of distributed computing. Usage of Cloud computing is increasing rapidly day by day. In order to serve the customers and businesses satisfactorily fault occurring in datacenters and servers must be detected and predicted efficiently in order to launch mechanisms to tolerate the failures occurred. Failure in one of the hosted datacenters may propagate to other datacenters and make the situation worse. In order to prevent such situations one can predict a failure proliferating throughout the cloud computing system and launch mechanisms to deal with it proactively. One of the ways to predict failures is to train a machine to predict failure on the basis of messages or logs passed between various components of the cloud. In the training session the machine can identify certain message patterns relating to failure of data centers. Later on the machine can be used to check whether a certain group of message logs follow such patterns or not. Moreover each cloud server can be defined by a state which indicates whether the cloud is running properly or is facing some failure. Parameters such as CPU usage memory usage etc. can be maintained for each of the servers. Using this parameters we can add a layer of detection where in we develop a decision tree based on these parameters which can classify whether the passed in parameters to the decision tree indicate failure state or proper state.
Other Latest Articles
- Design Of Single-Axis And Dual-Axis Solar Tracking Systems Protected Against High Wind Speeds
- Antioxidant Chemo-Protective Role Of Buffalo Colostrum And Milk Whey Derived Peptide Against 2 4-Dinitrophenol Induced-Oxidative Damage On Human Plasma In Vitro.
- The Impact Of Reward System On Employee Turnover Intention A Study On Logistics Industry Of Sri Lanka
- A Pilot Study On Anti-Diabetic Effect Of A Siddha Herbal Confection In Non-Insulin Dependent Diabetes Mellitus Patients
- P Status In Andisol And P Content In Arabica Coffee Seedling Leaves Due To The Application Of Phosphate Providing Microorganisms And Organic Matters In Bener Meriah District
Last modified: 2017-10-22 19:57:31