Cloud-Based Parameter-Driven Statistical Services and Resource Allocation in a Heterogeneous Platform on Enterprise Environment

A fundamental key for enterprise users is a cloud-based parameter-driven statistical service and it has become a substantial impact on companies worldwide. In this paper, we demonstrate the statistical analysis for some certain criteria that are related to data and applied to the cloud server for a comparison of results. In addition, we present a statistical analysis and cloud-based resource allocation method for a heterogeneous platform environment by performing a data and information analysis with consideration of the application workload and the server capacity, and subsequently propose a service prediction model using a polynomial regression model. In particular, our aim is to provide stable service in a given large-scale enterprise cloud computing environment. The virtual machines (VMs) for cloud-based services are assigned to each server with a special methodology to satisfy the uniform utilization distribution model. It is also implemented between users and the platform, which is a main idea of our cloud computing system. Based on the experimental results, we confirm that our prediction model can provide sufficient resources for statistical services to large-scale users while satisfying the uniform utilization distribution.

[1]  Christian Brecher,et al.  Towards Optimized Machine Operations by Cloud Integrated Condition Estimation , 2015, ML4CPS.

[2]  K. Somasundaram,et al.  Energy efficient in virtual infrastructure and green cloud computing: A review , 2016 .

[3]  Richard T. Watson,et al.  Net-Based Customer Service Systems: Evolution and Revolution in Web Site Functionalities , 2004, Decis. Sci..

[4]  Xian Cheng Xu Design Considerations for Reliable Data Transmission and Network Separation , 2015 .

[5]  A. Parasuraman,et al.  Service quality delivery through web sites: A critical review of extant knowledge , 2002, Journal of the Academy of Marketing Science.

[6]  John B. Mitchell,et al.  Web-based student evaluations of professors: the relations between perceived quality, easiness and sexiness , 2004 .

[7]  Bao Rong Chang,et al.  Empirical Analysis of Server Consolidation and Desktop Virtualization in Cloud Computing , 2013 .

[8]  Κουκουβακης Ε. Γεωργιος Σχεδιασμος Και Υλοποιηση Μοντελου Εξομοιωσης Υπερκειμενων Δικτυων Με Χρηση Του Εργαλειου Network Simulator 2 , 2003 .

[9]  Achim Streit,et al.  Simulation-based Evaluation of an Intercloud Service Broker , 2012, CLOUD 2012.

[10]  Khaled Salah,et al.  VDC-Analyst: Design and verification of virtual desktop cloud resource allocations , 2014, Comput. Networks.

[11]  E. N. Elnozahy,et al.  Measuring Client-Perceived Response Time on the WWW , 2001, USITS.

[12]  Michael Galloway,et al.  Designing a Web-Based Graphical Interface for Virtual Machine Management , 2016 .

[13]  Baik-jun Choi,et al.  Effective Transmission method for High-Quality DaaS(Desktop as a Service) on Mobile Environments , 2014 .

[14]  Jesús Carretero,et al.  iCanCloud: A Brief Architecture Overview , 2012, 2012 IEEE 10th International Symposium on Parallel and Distributed Processing with Applications.

[15]  Siddeswara Guru,et al.  Development of a cloud-based platform for reproducible science: A case study of an IUCN Red List of Ecosystems Assessment , 2016, Ecol. Informatics.

[16]  Dan Wang,et al.  Study on Cloud Service Mode of Agricultural Information Institutions , 2013, CCTA.

[17]  Taikyeong T. Jeong Theoretical and Linearity Analysis for Pressure Sensors and Communication System Development , 2014, Int. J. Distributed Sens. Networks.

[18]  A. Kivity,et al.  kvm : the Linux Virtual Machine Monitor , 2007 .

[19]  Jon Kleinberg,et al.  Authoritative sources in a hyperlinked environment , 1999, SODA '98.

[20]  Rajkumar Buyya,et al.  GridSim: a toolkit for the modeling and simulation of distributed resource management and scheduling for Grid computing , 2002, Concurr. Comput. Pract. Exp..

[21]  Felix B. Tan,et al.  A Study of Web-Designers' Criteria for Effective Business-to-Consumer (B2c) Websites Using the Repertory Grid Technique , 2009 .

[22]  Peng Li,et al.  Selecting and using virtualization solutions: our experiences with VMware and VirtualBox , 2010 .

[23]  Charles David Graziano A performance analysis of Xen and KVM hypervisors for hosting the Xen Worlds Project , 2011 .

[24]  Laura J Gurak,et al.  Internet Protests, from Text to Web , 2003 .

[25]  Rajkumar Buyya,et al.  CloudSim: a toolkit for modeling and simulation of cloud computing environments and evaluation of resource provisioning algorithms , 2011, Softw. Pract. Exp..

[26]  Ebraheim Alsaadi,et al.  Internet of Things : Features , Challenges , and Vulnerabilities Authors , 2015 .

[27]  Tharam S. Dillon,et al.  Cloud Computing: Issues and Challenges , 2010, 2010 24th IEEE International Conference on Advanced Information Networking and Applications.

[28]  Toby Velte,et al.  Cloud Computing, A Practical Approach , 2009 .

[29]  Henri Casanova,et al.  SimGrid: A Generic Framework for Large-Scale Distributed Experiments , 2008, Tenth International Conference on Computer Modeling and Simulation (uksim 2008).

[30]  Dzmitry Kliazovich,et al.  GreenCloud: A Packet-Level Simulator of Energy-Aware Cloud Computing Data Centers , 2010, GLOBECOM.

[31]  Rajkumar Buyya,et al.  NetworkCloudSim: Modelling Parallel Applications in Cloud Simulations , 2011, 2011 Fourth IEEE International Conference on Utility and Cloud Computing.

[32]  Dzmitry Kliazovich,et al.  GreenCloud: a packet-level simulator of energy-aware cloud computing data centers , 2010, The Journal of Supercomputing.