Copyright © 2010, Performance and Power Management for Cloud Infrastructures Hien Nguyen Van; Tran, F.D.; Menaud, J.-M. Cloud Computing (CLOUD),

Slides:



Advertisements
Similar presentations
Capacity Planning in a Virtual Environment
Advertisements

2  Industry trends and challenges  Windows Server 2012: Beyond virtualization  Complete virtualization platform  Improved scalability and performance.
University of Minnesota Optimizing MapReduce Provisioning in the Cloud Michael Cardosa, Aameek Singh†, Himabindu Pucha†, Abhishek Chandra
© 2013 The SmartenIT Consortium 1 Commercial in Confidence Game Theoretic approach to energy efficiency Mateusz Wielgosz, Krzysztof Wajda, AGH Krakow Meeting,
Hadi Goudarzi and Massoud Pedram
VCRIB: Virtual Cloud Rule Information Base Masoud Moshref, Minlan Yu, Abhishek Sharma, Ramesh Govindan HotCloud 2012.
SLA-Oriented Resource Provisioning for Cloud Computing
Walter Binder University of Lugano, Switzerland Niranjan Suri IHMC, Florida, USA Green Computing: Energy Consumption Optimized Service Hosting.
Power Aware Virtual Machine Placement Yefu Wang. 2 ECE Introduction Data centers are underutilized – Prepared for extreme workloads – Commonly.
Power Management in Cloud Computing using Green Algorithm -Kushal Mehta COP 6087 University of Central Florida.
Energy-efficient Virtual Machine Provision Algorithms for Cloud System Ching-Chi Lin Institute of Information Science, Academia Sinica Department of Computer.
Overcoming the challenge of virtual blindness Colin Richardson on365 Ltd.
1 Placement (Scheduling) Optimal mapping of VMs – to physical hosts in a data center (cloud) – across multiple clouds Federation and bursting Multi-cloud.
Infrastructure layer Massonet Philippe, CETIC RESERVOIR Dissemination Activity Leader John Kennedy, INTEL Infrastructure Leader.
Power-aware Resource Allocation for Cpu- and Memory Intense Internet Services Vlasia Anagnostopoulou Susmit Biswas, Heba Saadeldeen,
Copyright © 2012, An SLA-aware load balancing scheme for cloud datacenters 指導教授:王國禎 學生:黎中誠 國立交通大學資訊工程系 行動計算與寬頻網路實驗室 1.
Multifaceted Resource Management in Virtualized Providers Íñigo Goiri PhD Defense June 14th, 2011 Advisors: Jordi Guitart and Jordi Torres.
Green Cloud Computing Hadi Salimi Distributed Systems Lab, School of Computer Engineering, Iran University of Science and Technology,
The RESERVOIR Model and Architecture for Open Federated Cloud Computing B. Rochwerger D. Breitgand E. Levy A. Galis K. Nagin I. Llorente R. Montero Y.
Virtualization and Cloud Computing Virtualization David Bednárek, Jakub Yaghob, Filip Zavoral.
CloudScale: Elastic Resource Scaling for Multi-Tenant Cloud Systems Zhiming Shen, Sethuraman Subbiah, Xiaohui Gu, John Wilkes.
Xavier León PhD defense
Efficient Autoscaling in the Cloud using Predictive Models for Workload Forecasting Roy, N., A. Dubey, and A. Gokhale 4th IEEE International Conference.
The Role of Grid in the IT Landscape
SLA-aware Virtual Resource Management for Cloud Infrastructures
Application Models for utility computing Ulrich (Uli) Homann Chief Architect Microsoft Enterprise Services.
COMS E Cloud Computing and Data Center Networking Sambit Sahu
U NIVERSITY OF M ASSACHUSETTS, A MHERST Department of Computer Science Virtualization in Data Centers Prashant Shenoy
Online Auctions in IaaS Clouds: Welfare and Profit Maximization with Server Costs Xiaoxi Zhang 1, Zhiyi Huang 1, Chuan Wu 1, Zongpeng Li 2, Francis C.M.
By- Jaideep Moses, Ravi Iyer , Ramesh Illikkal and
Copyright Tim Antonowicz, This work is the intellectual property of the author. Permission is granted for this material to be shared for non- commercial,
Exploiting Virtualization for Delivering Cloud based IPTV Services Speaker : 吳靖緯 MA0G IEEE Conference on Computer Communications Workshops.
WHAT IS PRIVATE CLOUD? Michał Jędrzejczak Główny Architekt Rozwiązań Infrastruktury IT
COST IC804 – IC805 Joint meeting, February Jorge G. Barbosa, Altino M. Sampaio, Hamid Harabnejad Universidade do Porto, Faculdade de Engenharia,
Abstract Cloud data center management is a key problem due to the numerous and heterogeneous strategies that can be applied, ranging from the VM placement.
Cloud Data Center/Storage Power Efficiency Solutions Junyao Zhang 1.
Energy Efficiency in Cloud Data Centers: Energy Efficient VM Placement for Cloud Data Centers Doctoral Student : Chaima Ghribi Advisor : Djamal Zeghlache.
Department of Computer Science Engineering SRM University
Virtual Machine Hosting for Networked Clusters: Building the Foundations for “Autonomic” Orchestration Based on paper by Laura Grit, David Irwin, Aydan.
How to Resolve Bottlenecks and Optimize your Virtual Environment Chris Chesley, Sr. Systems Engineer
Virtual Machine Course Rofideh Hadighi University of Science and Technology of Mazandaran, 31 Dec 2009.
Ruppa K. Thulasiram Slide 1/24 Resource Provisioning Policies to Increase IaaS Provider’s Profit in a Federated Cloud Environment Adel Nadjaran Toosi *,
INTRODUCTION TO CLOUD COMPUTING CS 595 LECTURE 2.
Cloud Computing Energy efficient cloud computing Keke Chen.
Adaptive software in cloud computing Marin Litoiu York University Canada.
Improving Network I/O Virtualization for Cloud Computing.
SLA-based Resource Allocation for Software as a Service Provider (SaaS) in Cloud Computing Environments Author Linlin Wu, Saurabh Kumar Garg and Rajkumar.
An Autonomic Framework in Cloud Environment Jiedan Zhu Advisor: Prof. Gagan Agrawal.
RECON: A TOOL TO RECOMMEND DYNAMIC SERVER CONSOLIDATION IN MULTI-CLUSTER DATACENTERS Anindya Neogi IEEE Network Operations and Management Symposium, 2008.
Challenges towards Elastic Power Management in Internet Data Center.
From Virtualization Management to Private Cloud with SCVMM 2012 Dan Stolts Sr. IT Pro Evangelist Microsoft Corporation
CloudNaaS: A Cloud Networking Platform for Enterprise Applications Theophilus Benson*, Aditya Akella*, Anees Shaikh +, Sambit Sahu + (*University of Wisconsin,
Dynamic Resource Monitoring and Allocation in a virtualized environment.
Joint Power Optimization Through VM Placement and Flow Scheduling in Data Centers DAWEI LI, JIE WU (TEMPLE UNIVERISTY) ZHIYONG LIU, AND FA ZHANG (CHINESE.
Copyright © 2011, Performance Evaluation of a Green Scheduling Algorithm for Energy Savings in Cloud Computing Truong Vinh Truong Duy; Sato,
Server Virtualization & Disaster Recovery Ryerson University, Computer & Communication Services (CCS), Technical Support Group Eran Frank Manager, Technical.
A dynamic optimization model for power and performance management of virtualized clusters Vinicius Petrucci, Orlando Loques Univ. Federal Fluminense Niteroi,
© 2012 IBM Corporation Platform Computing 1 IBM Platform Cluster Manager Data Center Operating System April 2013.
VGreen: A System for Energy Efficient Manager in Virtualized Environments G. Dhiman, G Marchetti, T Rosing ISLPED 2009.
Embedded System Lab. 정범종 A_DRM: Architecture-aware Distributed Resource Management of Virtualized Clusters H. Wang et al. VEE, 2015.
June 30 - July 2, 2009AIMS 2009 Towards Energy Efficient Change Management in A Cloud Computing Environment: A Pro-Active Approach H. AbdelSalamK. Maly.
CoreGRID Workpackage 5 Virtual Institute on Grid Information and Monitoring Services Michał Jankowski, Paweł Wolniewicz, Jiří Denemark, Norbert Meyer,
Accounting for Load Variation in Energy-Efficient Data Centers
Capacity Planning in a Virtual Environment Chris Chesley, Sr. Systems Engineer
New Paradigms: Clouds, Virtualization and Co.
LIGHTWEIGHT CLOUD COMPUTING FOR FAULT-TOLERANT DATA STORAGE MANAGEMENT
Analyzing Security and Energy Tradeoffs in Autonomic Capacity Management Wei Wu.
Adaptive Cloud Computing Based Services for Mobile Users
A workload-aware energy model for VM migration
Presentation transcript:

Copyright © 2010, Performance and Power Management for Cloud Infrastructures Hien Nguyen Van; Tran, F.D.; Menaud, J.-M. Cloud Computing (CLOUD), 2010 IEEE 3rd International Conference on

Copyright © 2010, Introduction From the cloud operator perspective, the key issue is to maximize profits by minimizing the operational costs of the datacenter and the SLA violations of hosted applications. Power management in cloud computing datacenters is becoming a crucial issue since it dominates its operational costs.

Copyright © 2010, Introduction A dynamic resource provisioning system is needed capable of addressing two main issues: –How much resource (CPU, memory... ) to allocate to hosted applications? –Where to place the application workloads within the datacenter to maximize energy savings?

Copyright © 2010, Introduction The main contributions of this paper are: –Utility-based dynamic Virtual Machine (VM) provisioning manager capable of balancing application SLA compliance with energy consumption –Dynamic VM placement manager which consolidates VMs on the minimum number of physical hosts through VM live migration so that idle hosts can be turned off to save energy –Two-level resource management middleware framework with a clear separation between application-specific management and a generic resource management substrate.

Copyright © 2010, Related work Issues Performance and Power Management for Cloud Infrastructures Our proposed method SLAYES Monitor applications resource YES Resource allocationYES Prediction require resourcesNOYES Different sizes of VM capacity NOYES

Copyright © 2010, Resource management system We consider a Cloud Computing datacenter DC composed of n virtualized physical hosts DC = {H 1,...,H n }. –CPU Capacity = CPU(H 1 ) –Memory capacity = Mem(H 1 ) A set of m applications A = {A 1,...,A m } are hosted on this virtualized infrastructure. Each Host corresponds to a fixed CPU capacity (MHz) spread over a given number of virtual CPUs and a given memory size.

Copyright © 2010, Utility-directed VM provisioning A VM allocation matrix solution must meet the capacity constraints of the datacenter:

Copyright © 2010, VM placement The placement solution must satisfy the capacity constraints of the physical hosts: The goal is to maximize the number of idle physical hosts N idle which can be turned off:

Copyright © 2010, Middleware Framework

Copyright © 2010, Middleware Framework Performance model component which performs the mapping between resource capacity (expressed in number of VMs), workload and QoS Utility function component which encapsulates the application-specific utility function Application scaler component which hides the application- specific mechanism used to scale up or down horizontally the application.

Copyright © 2010, Evaluation

Copyright © 2010, Evaluation

Copyright © 2010, Evaluation

Copyright © 2010, Conclusion In this paper we have addressed the problem: –Resource allocation in Cloud infrastructures –Application performance and energy cost while providing –Cloud administrator high-level knobs to control the resource –Management system with regard to application-level SLAs –Datacenter exploitation costs

Copyright © 2010, Reference Hien Nguyen Van; Tran, F.D.; Menaud, J.-M.;, "Performance and Power Management for Cloud Infrastructures," Cloud Computing (CLOUD), 2010 IEEE 3rd International Conference on, vol., no., pp , 5-10 July 2010

Copyright © 2010, Thank you!