Energy Efficient Cloud Computing: Challenges and Solutions
|
|
|
- Patience Daniels
- 10 years ago
- Views:
Transcription
1 Energy Efficient Cloud Computing: Challenges and Solutions Burak Kantarci and Hussein T. Mouftah School of Electrical Engineering and Computer Science University of Ottawa Ottawa, ON, Canada 08 September 2011
2 Outline PART-I: CLOUD COMPUTING Cloud computing Energy Consumption of Cloud Computing PART-II: ENERGY-EFFICIENCY IN CLOUD COMPUTING: PROCESSING AND STORAGE Energy Savings in High Performance Data Centers (HPDCs) Wireless Sensor Network (WSN)-based Thermal Activity Monitoring in HPDCs PART-III: ENERGY-EFFICIENCY IN CLOUD COMPUTING: TRANSPORT Energy-efficient manycast provisioning PART-IV: CONCLUSION Research Challenges and Open Issues 2 /30
3 PART I: CLOUD COMPUTING 3/30
4 What is cloud computing? Many definitions of cloud computing exist Vaquero L, Rodero-Merino L, Caceres J, Lindner M (2009) A break in the clouds: towards a cloud definition. ACM SIGCOMM computer communications review 20 definitions of cloud computing are studied Cloud computing is a model for enabling convenient, on-demand network access to a shared pool of configurable computing resources that can be rapidly provisioned and released with minimal management effort or service provider interaction. (P. Mell and T. Grance, Draft NIST Working Definition of Cloud Computing v14, Nat. Inst. Standards Technol., [Online]. Available: cloud-computing/index.html.) 4/30
5 Cloud Computing Autonomic Computing Client-Server Model Service Provider- Service Requester Networked Cluster of High Performance Computers Grid Computing Self- management- capable computer systems CLOUD COMPUTING Powerful computers for critical applications Software as a Service Computation and storage as a metered service Mainframe Computing Service-Oriented Computing Peer-to-Peer Distributed architecture without central coordination Utility Computing 5/30
6 Towards Green ICT Why is energy efficiency important? ICT consumes 4% of the electricity and expected to be doubled (8%) Leisching and Pickavet, Energy Footprint of ICT: Forecasts and network solutions,ofc 2009 Telecommunication networks contribute a big portion of the CO 2 emissions of ICTs L. Kumar and L. Mieritz, Conceptualizing Green IT and Data Center Power and Cooling Issues, 2007 GHG emission contribution of the telecom networks 6/30
7 Cloud Computing and Energy Efficiency Cloud Computing infrastructure is housed in Data Centers US Data Centers consume 1.7%~2.2% of the total electricity consumed in the country (61 billion kwh in 2006, doubled in 2007) Worldwide data centers consume 1.1%~1.5% of all electricity consumed in the world Proper Power Management in the data centers can lead to significant energy savings Virtualization of computing resources Sleep scheduling Shared Servers and Storage Units Energy savings possible if users migrate IT services towards remote resources Increase in the network traffic and the associated network energy Will be addressed in PART III J. Baliga et al., Green Cloud Computing: Balancing Energy in Processing, Storage, and Transport, Proceedings of the IEEE, vol. 99, issue-1, pp , /30
8 PART II: ENERGY EFFICIENCY IN CLOUD COMPUTING Processing Storage Transport 8/30
9 Energy-Efficiency of Data Centers CO 2 Emission in Data Centers Heat Generation Non uniform workload distribution Heterogeneity of computing hardware Heat Extraction Layout of server racks Placement of Computer Room Air- Conditioner (CRAC) unit fans and air vents Autonomic Data Center Management Solutions: Thermal and Energy-Aware Resource Provisioning Cooling system Optimization Anomaly Detection Requirements: Continuous processing and analysis of real-time feedback 9/30
10 Energy-Efficiency of Data Centers A key metric to evaluate how green is a data center Power Usage Efficiency (PUE) PUE = P process P + P process cool Data Center Efficiency (DCE) DCE = P P IT Equipment Data Center A good DCE is A reasonable DCE target is 0.5 C. Belady, Hewlett Packard Source: Google 10/30
11 Energy-Efficiency of Data Centers Job Management in Data Centers No cooling and thermal-awarenessawareness Cooling and thermal-aware aware job management 11/30
12 Energy-Efficiency of Data Centers Coordinated job and cooling management in Data Centers 12/30
13 Energy-Efficiency of Data Centers Temporal Job Scheduling First Come First Serve (FCFS) Earliest Deadline First (EDF) Spatial Job Scheduling Thermal-Aware Job Scheduling Minimum Re-circulated Heat (MRH) Cooling-aware Job Scheduling Highest Thermostat Setting (HTS) A. Banerjee et al., Integrating cooling awareness with thermal aware workload placement for HPC data centers, Sustainable Computing: Informatics and Systems, vol 1., Issue 2, pp , /30
14 Energy-Efficiency of Data Centers Highest Thermostat Setting (HTS): A Cooling and Thermal- Aware Workload Placement scheme Temporally schedule the jobs EDF / FCFS Server Ranking According to the requirement of thermostat set temperature to meet the redline for 100% utilization Spatial scheduling Place jobs to the available servers with the lowest rank Obtain power distribution vector P h Set thermostat setting to the highest possible value (T th high ) 14/30
15 Energy-Efficiency of Data Centers l i. r ac Determining the highest thermostat value comp low low high max 1 ph pex p ex 1 ( T th ) = F Tred. tsw F. D. P rroom r ac r ac : Thermal capacity of air flowing out of the CRAC r room : Thermal capacity of air flowing in the data center room + n j= 1 a ji. r Ti in ( t). dt = l i. r ac. T sup ( t). dt + n j= 1 n in out li. rac a ji. r + Ti ( t). dt+ Pi ( t). dt = r. Tj ( t). dt j= 1 a ji. r. T out j h ( t). dt Heat input to chassis i in time dt = the input from CRAC at chassis i in time dt + re-circulated heat to chassis i from all other chassis in time dt Heat input to chassis i in time dt + Heat generated from chassis i in time dt = Heat output of chassis i at time dt p h comp : Total computing power at the period h p ex low : Power extracted by CRAC Vectorize: (sup) T in ( t) = FT ( t) + DP( t) 15/30
16 Energy-Efficiency of Data Centers RACNet: Wireless Sensor Networks (WSNs) in Data Centers Wireless sensor network developed for Microsoft Research Data Center Genome project Provides fine-grained and real-time visibility to data center cooling behaviour ~700 sensors deployed in a MMW data center Hierarchical topology Master and slave sensor nodes Large-scale sensor network Multiple slave sensors for collecting temperature, humidity Several master sensors providing connectivity Uses IEEE radios J. Liu et al., Project Genome: Wireless Sensor Network for Data Center Cooling, The Architecture Journal, Microsoft, vol 18, pp , /30
17 Energy-Efficiency of Data Centers Cold-aisle heat map An instance of the heat map generated from24 sensors in the front and back of a row in the Genome Data Center Hot-aisle heat map 17/30
18 PART III: ENERGY EFFICIENCY IN CLOUD COMPUTING Processing Storage Transport 18/30
19 Energy-Efficient Transport of Cloud Services in the Internet Backbone Conventional network services Unicast (s, d) Multicast (s, D) Cloud computing services Anycast Manycast ( s, d D) i ( s, D D) k 19/30
20 Energy-Efficient Transport of Cloud Services in the Internet Backbone Transport medium: Wavelength Routed (WR) Network During off-peak hours, WR nodes can enter the sleep mode Can add traffic Can drop traffic No pass-through traffic Demand Provisioning Lightpath Light-tree Cloud-over-NSFNET Problem: Energy-Efficient Light-Tree (EELT) selection 20/30
21 Energy-Efficient Transport of Cloud Services in the Internet Backbone Objective Optimization Model for EELT Maximize the number of sleeping nodes min Energy Minimize total energy consumption Minimize maximum resource (channel) consumption 21/30
22 Energy-Efficient Transport of Cloud Services in the Internet Backbone Solving a manycast-based ILP model may lead to significantly long runtimes. Any faster solution? Heuristics: Evolutionary Algorithm for Green Light-tree Establishment (EAGLE) B. Kantarci and H. T. Mouftah, to appear in Proc. of IEEE GLOBECOM 2011, Green Communication Systems and Network Track, Dec. 2011, Houston, TX, USA (accepted).. 22/30
23 Energy-Efficient Transport of Cloud Services in the Internet Backbone Evolutionary Algorithm for Green Light-tree Establishment (EAGLE) Sort the manycast demands in decreasing order Find an initial solution space I Solution Space P = I Compute a fitness function for each solution in P Select two candidate solutions in P w.r.t fitness proportionate Mutate new individuals with probability of γ New solutions valid? YES Add solutions to P End condition reached? YES NO Crossover on two solutions. Obtain new two individuals Channel assignment on the new individuals NO Age Solutions in P 23/30
24 Energy-Efficient Transport of Cloud Services in the Internet Backbone Fitness Functions in EAGLE Maximize the number of sleeping nodes Minimize the maximum channel index Minimize the total consumed energy β of the idle power is consumed in the sleep mode 24/30
25 Energy-Efficient Transport of Cloud Services in the Internet Backbone Cloud service demands arrive in four time zones EST, CST, MST, PST PST MST CST EST Size of the destination set : {3,4} Crossover prob Mutation ratio: 0.01 Solution space: 100 solutions 25/30
26 Energy-Efficient Transport of Cloud Services in the Internet Backbone Energy consumption of EAGLE throughout the day 26/30
27 PART IV: RESEARCH CHALLENGES AND OPEN ISSUES 27/30
28 Conclusion and Future Directions Energy Efficient cloud computing Balance between process, storage and transport Processing and Storage Workload placement Thermal-aware Cooling-aware Thermal-and-cooling-aware highest thermostat setting Thermal activity monitoring of data centers by WSNs Transport Energy-efficient anycasting/manycasting of cloud service demands 28/30
29 Further reading B. Kantarci, H. T. Mouftah, "Energy-Efficient Cloud Services over Wavelength-Routed Optical Transport Networks", in Proc. of IEEE GLOBECOM- Selected Areas in Communications Symp.- Green Communication Systems and Network Track, Dec. 2011, Houston, TX, USA (accepted). H. T. Mouftah and B. Kantarci, Energy-efficient Cloud Computing: A green migration of the traditional IT, to appear in Handbook on Green Communication and Systems, edited by A. Anpalagan and I. Woungang, Elsevier, 2012 (to appear). 29/30
30 For further info:
Energy Constrained Resource Scheduling for Cloud Environment
Energy Constrained Resource Scheduling for Cloud Environment 1 R.Selvi, 2 S.Russia, 3 V.K.Anitha 1 2 nd Year M.E.(Software Engineering), 2 Assistant Professor Department of IT KSR Institute for Engineering
Thermal Management of Datacenter
Thermal Management of Datacenter Qinghui Tang 1 Preliminaries What is data center What is thermal management Why does Intel Care Why Computer Science 2 Typical layout of a datacenter Rack outlet temperature
DataCenter 2020. Data Center Management and Efficiency at Its Best. OpenFlow/SDN in Data Centers for Energy Conservation.
DataCenter 2020. Data Center Management and Efficiency at Its Best. OpenFlow/SDN in Data Centers for Energy Conservation. Dr. Rainer Weidmann, DC Architecture & DC Innovation Dr. Rainer Weidmann, DC Architecture
Environmental and Green Cloud Computing
International Journal of Allied Practice, Research and Review Website: www.ijaprr.com (ISSN 2350-1294) Environmental and Green Cloud Computing Aruna Singh and Dr. Sanjay Pachauri Abstract - Cloud computing
A Case Study about Green Cloud Computing: An Attempt towards Green Planet
A Case Study about Green Cloud Computing: An Attempt towards Green Planet Devinder Kaur Padam 1 Analyst, HCL Technologies Infra Structure Department, Sec-126 Noida, India 1 ABSTRACT: Cloud computing is
Measuring Power in your Data Center: The Roadmap to your PUE and Carbon Footprint
Measuring Power in your Data Center: The Roadmap to your PUE and Carbon Footprint Energy usage in the data center Electricity Transformer/ UPS Air 10% Movement 12% Cooling 25% Lighting, etc. 3% IT Equipment
Leveraging Renewable Energy in Data Centers: Present and Future
Leveraging Renewable Energy in Data Centers: Present and Future Ricardo Bianchini Department of Computer Science Collaborators: Josep L. Berral, Inigo Goiri, Jordi Guitart, Md. Haque, William Katsak, Kien
Keywords Distributed Computing, On Demand Resources, Cloud Computing, Virtualization, Server Consolidation, Load Balancing
Volume 5, Issue 1, January 2015 ISSN: 2277 128X International Journal of Advanced Research in Computer Science and Software Engineering Research Paper Available online at: www.ijarcsse.com Survey on Load
Hierarchical Approach for Green Workload Management in Distributed Data Centers
Hierarchical Approach for Green Workload Management in Distributed Data Centers Agostino Forestiero, Carlo Mastroianni, Giuseppe Papuzzo, Mehdi Sheikhalishahi Institute for High Performance Computing and
How To Manage Energy At An Energy Efficient Cost
Hans-Dieter Wehle, IBM Distinguished IT Specialist Virtualization and Green IT Energy Management in a Cloud Computing Environment Smarter Data Center Agenda Green IT Overview Energy Management Solutions
Energy Management in a Cloud Computing Environment
Hans-Dieter Wehle, IBM Distinguished IT Specialist Virtualization and Green IT Energy Management in a Cloud Computing Environment Smarter Data Center Agenda Green IT Overview Energy Management Solutions
Green HPC - Dynamic Power Management in HPC
Gr eenhpc Dynami cpower Management i nhpc AT ECHNOL OGYWHI T EP APER Green HPC Dynamic Power Management in HPC 2 Green HPC - Dynamic Power Management in HPC Introduction... 3 Green Strategies... 4 Implementation...
What Is It? Business Architecture Research Challenges Bibliography. Cloud Computing. Research Challenges Overview. Carlos Eduardo Moreira dos Santos
Research Challenges Overview May 3, 2010 Table of Contents I 1 What Is It? Related Technologies Grid Computing Virtualization Utility Computing Autonomic Computing Is It New? Definition 2 Business Business
Wireless Data Center Network. Reporter: Green
Wireless Data Center Network Reporter: Green Outline What is DCN? Challenges in current DCN Cable Topology Traffic load Heterogeneous DCN Optical DCN Wireless DCN Challenges in WCDN The researches in WDCN
Low-Carbon Routing Algorithms For Cloud Computing Services in IP-over-WDM Networks
Low-Carbon Routing Algorithms For Cloud Computing Services in IP-over-WDM Networks TREND Plenary Meeting, Volos-Greece 01-05/10/2012 TD3.3: Energy-efficient service provisioning and content distribution
Green Cloud Computing 班 級 : 資 管 碩 一 組 員 :710029011 黃 宗 緯 710029021 朱 雅 甜
Green Cloud Computing 班 級 : 資 管 碩 一 組 員 :710029011 黃 宗 緯 710029021 朱 雅 甜 Outline Introduction Proposed Schemes VM configuration VM Live Migration Comparison 2 Introduction (1/2) In 2006, the power consumption
A Game Theory Modal Based On Cloud Computing For Public Cloud
IOSR Journal of Computer Engineering (IOSR-JCE) e-issn: 2278-0661, p- ISSN: 2278-8727Volume 16, Issue 2, Ver. XII (Mar-Apr. 2014), PP 48-53 A Game Theory Modal Based On Cloud Computing For Public Cloud
Energy Efficiency and Green Data Centers. Overview of Recommendations ITU-T L.1300 and ITU-T L.1310
Energy Efficiency and Green Data Centers Overview of Recommendations ITU-T L.1300 and ITU-T L.1310 Paolo Gemma Chairman of Working Party 3 of ITU-T Study Group 5 International Telecommunication Union Agenda
The Load Balancing Strategy to Improve the Efficiency in the Public Cloud Environment
The Load Balancing Strategy to Improve the Efficiency in the Public Cloud Environment Majjaru Chandra Babu Assistant Professor, Priyadarsini College of Engineering, Nellore. Abstract: Load balancing in
Heterogeneous Workload Consolidation for Efficient Management of Data Centers in Cloud Computing
Heterogeneous Workload Consolidation for Efficient Management of Data Centers in Cloud Computing Deep Mann ME (Software Engineering) Computer Science and Engineering Department Thapar University Patiala-147004
Thermal Aware Scheduling in Hadoop MapReduce Framework. Sayan Kole
Thermal Aware Scheduling in Hadoop MapReduce Framework by Sayan Kole A Thesis Presented in Partial Fulfillment of the Requirement for the Degree Master of Science Approved November 2013 by the Graduate
Energy Conscious Virtual Machine Migration by Job Shop Scheduling Algorithm
Energy Conscious Virtual Machine Migration by Job Shop Scheduling Algorithm Shanthipriya.M 1, S.T.Munusamy 2 ProfSrinivasan. R 3 M.Tech (IT) Student, Department of IT, PSV College of Engg & Tech, Krishnagiri,
Green Data Centre Design
Green Data Centre Design A Holistic Approach Stantec Consulting Ltd. Aleks Milojkovic, P.Eng., RCDD, LEED AP Tommy Chiu, EIT, RCDD, LEED AP STANDARDS ENERGY EQUIPMENT MATERIALS EXAMPLES CONCLUSION STANDARDS
SoSe 2014 Dozenten: Prof. Dr. Thomas Ludwig, Dr. Manuel Dolz Vorgetragen von Hakob Aridzanjan 03.06.2014
Total Cost of Ownership in High Performance Computing HPC datacenter energy efficient techniques: job scheduling, best programming practices, energy-saving hardware/software mechanisms SoSe 2014 Dozenten:
A Taxonomy and Survey of Energy-Efficient Data Centers and Cloud Computing Systems
A Taxonomy and Survey of Energy-Efficient Data Centers and Cloud Computing Systems Anton Beloglazov, Rajkumar Buyya, Young Choon Lee, and Albert Zomaya Present by Leping Wang 1/25/2012 Outline Background
Challenges and Importance of Green Data Center on Virtualization Environment
Challenges and Importance of Green Data Center on Virtualization Environment Abhishek Singh Department of Information Technology Amity University, Noida, Uttar Pradesh, India Priyanka Upadhyay Department
Public Cloud Partition Balancing and the Game Theory
Statistics Analysis for Cloud Partitioning using Load Balancing Model in Public Cloud V. DIVYASRI 1, M.THANIGAVEL 2, T. SUJILATHA 3 1, 2 M. Tech (CSE) GKCE, SULLURPETA, INDIA [email protected] [email protected]
Solve your IT energy crisis WITH An energy SMArT SoluTIon FroM Dell
Solve your IT energy crisis WITH AN ENERGY SMART SOLUTION FROM DELL overcome DATA center energy challenges IT managers share a common and pressing problem: how to reduce energy consumption and cost without
Payment minimization and Error-tolerant Resource Allocation for Cloud System Using equally spread current execution load
Payment minimization and Error-tolerant Resource Allocation for Cloud System Using equally spread current execution load Pooja.B. Jewargi Prof. Jyoti.Patil Department of computer science and engineering,
Effective Load Balancing Based on Cloud Partitioning for the Public Cloud
Effective Load Balancing Based on Cloud Partitioning for the Public Cloud 1 T.Satya Nagamani, 2 D.Suseela Sagar 1,2 Dept. of IT, Sir C R Reddy College of Engineering, Eluru, AP, India Abstract Load balancing
A Game Theoretic Approach for Cloud Computing Infrastructure to Improve the Performance
P.Bhanuchand and N. Kesava Rao 1 A Game Theoretic Approach for Cloud Computing Infrastructure to Improve the Performance P.Bhanuchand, PG Student [M.Tech, CS], Dep. of CSE, Narayana Engineering College,
CONCEPTUAL MODEL OF MULTI-AGENT BUSINESS COLLABORATION BASED ON CLOUD WORKFLOW
CONCEPTUAL MODEL OF MULTI-AGENT BUSINESS COLLABORATION BASED ON CLOUD WORKFLOW 1 XINQIN GAO, 2 MINGSHUN YANG, 3 YONG LIU, 4 XIAOLI HOU School of Mechanical and Precision Instrument Engineering, Xi'an University
A Load Balancing Model Based on Cloud Partitioning for the Public Cloud
IEEE TRANSACTIONS ON CLOUD COMPUTING YEAR 2013 A Load Balancing Model Based on Cloud Partitioning for the Public Cloud Gaochao Xu, Junjie Pang, and Xiaodong Fu Abstract: Load balancing in the cloud computing
Setting deadlines and priorities to the tasks to improve energy efficiency in cloud computing
Setting deadlines and priorities to the tasks to improve energy efficiency in cloud computing Problem description Cloud computing is a technology used more and more every day, requiring an important amount
7 Best Practices for Increasing Efficiency, Availability and Capacity. XXXX XXXXXXXX Liebert North America
7 Best Practices for Increasing Efficiency, Availability and Capacity XXXX XXXXXXXX Liebert North America Emerson Network Power: The global leader in enabling Business-Critical Continuity Automatic Transfer
A real situation of OpenStack based cloud computing
A real situation of OpenStack based cloud computing łuinea Tudor Faculty of Mathematics and Informatics Spiru Haret University CAMAI 2015 Bucharest, June 12-13, 2015 1 Abstract Cloud Computing - exemplified
Effect of Rack Server Population on Temperatures in Data Centers
Effect of Rack Server Population on Temperatures in Data Centers Rajat Ghosh, Vikneshan Sundaralingam, Yogendra Joshi G.W. Woodruff School of Mechanical Engineering Georgia Institute of Technology, Atlanta,
Energy Savings in the Data Center Starts with Power Monitoring
Energy Savings in the Data Center Starts with Power Monitoring As global competition intensifies, companies are increasingly turning to technology to help turn mountains of data into a competitive edge.
How To Improve Energy Efficiency In A Data Center
Google s Green Data Centers: Network POP Case Study Table of Contents Introduction... 2 Best practices: Measuring. performance, optimizing air flow,. and turning up the thermostat... 2...Best Practice
ADAPTIVE LOAD BALANCING ALGORITHM USING MODIFIED RESOURCE ALLOCATION STRATEGIES ON INFRASTRUCTURE AS A SERVICE CLOUD SYSTEMS
ADAPTIVE LOAD BALANCING ALGORITHM USING MODIFIED RESOURCE ALLOCATION STRATEGIES ON INFRASTRUCTURE AS A SERVICE CLOUD SYSTEMS Lavanya M., Sahana V., Swathi Rekha K. and Vaithiyanathan V. School of Computing,
Efficient Scheduling Of On-line Services in Cloud Computing Based on Task Migration
Efficient Scheduling Of On-line Services in Cloud Computing Based on Task Migration 1 Harish H G, 2 Dr. R Girisha 1 PG Student, 2 Professor, Department of CSE, PESCE Mandya (An Autonomous Institution under
How High Temperature Data Centers & Intel Technologies save Energy, Money, Water and Greenhouse Gas Emissions
Intel Intelligent Power Management Intel How High Temperature Data Centers & Intel Technologies save Energy, Money, Water and Greenhouse Gas Emissions Power and cooling savings through the use of Intel
Energy Efficient Load Balancing among Heterogeneous Nodes of Wireless Sensor Network
Energy Efficient Load Balancing among Heterogeneous Nodes of Wireless Sensor Network Chandrakant N Bangalore, India [email protected] Abstract Energy efficient load balancing in a Wireless Sensor
Office of the Government Chief Information Officer. Green Data Centre Practices
Office of the Government Chief Information Officer Green Data Centre Practices Version : 2.0 April 2013 The Government of the Hong Kong Special Administrative Region The contents of this document remain
Green Wireless Technology Panel Presentation
Green Wireless Technology Panel Presentation Professor Sandeep K. S. Gupta IMPACT (Intelligent Mobile Pervasive Autonomic Computing & Technologies) LAB (http://impact.asu.edu) School of Computing, Informatics,
Fair Scheduling Algorithm with Dynamic Load Balancing Using In Grid Computing
Research Inventy: International Journal Of Engineering And Science Vol.2, Issue 10 (April 2013), Pp 53-57 Issn(e): 2278-4721, Issn(p):2319-6483, Www.Researchinventy.Com Fair Scheduling Algorithm with Dynamic
ICT and the Green Data Centre
ICT and the Green Data Centre Scott McConnell Sales Manager c/o Tanya Duncan MD Interxion Ireland Green Data Centres Our Responsibility Data centre greenhouse gas emissions are projected to quadruple by
Statistics Analysis for Cloud Partitioning using Load Balancing Model in Public Cloud
Statistics Analysis for Cloud Partitioning using Load Balancing Model in Public Cloud 1 V.DIVYASRI, M.Tech (CSE) GKCE, SULLURPETA, [email protected] 2 T.SUJILATHA, M.Tech CSE, ASSOCIATE PROFESSOR
Virtual Machine Placement in Cloud systems using Learning Automata
2013 13th Iranian Conference on Fuzzy Systems (IFSC) Virtual Machine Placement in Cloud systems using Learning Automata N. Rasouli 1 Department of Electronic, Computer and Electrical Engineering, Qazvin
DataCenter 2020: first results for energy-optimization at existing data centers
DataCenter : first results for energy-optimization at existing data centers July Powered by WHITE PAPER: DataCenter DataCenter : first results for energy-optimization at existing data centers Introduction
International Journal of Advancements in Research & Technology, Volume 3, Issue 4, April-2014 55 ISSN 2278-7763
International Journal of Advancements in Research & Technology, Volume 3, Issue 4, April-2014 55 Management of Wireless sensor networks using cloud technology Dipankar Mishra, Department of Electronics,
Dealing with Thermal Issues in Data Center Universal Aisle Containment
Dealing with Thermal Issues in Data Center Universal Aisle Containment Daniele Tordin BICSI RCDD Technical System Engineer - Panduit Europe [email protected] AGENDA Business Drivers Challenges
Green Computing. What is Green Computing?
Green Computing David Irwin Dept of Computer Science UMass Amherst What is Green Computing? Greening of computing Sustainable IT How to design energy-efficient hardware, software and systems? Computing
Optical interconnects in data centers
Optical interconnects in data centers Optical Communication Systems and Networks: From Data Centers to Broadband Access to Core Transport Networks 9 May 2014 Christoforos Kachris Athens Information Technology
Demand Response in Data Centers Feasibility and Proof of Concept Demonstration
Demand Response in Data Centers Feasibility and Proof of Concept Demonstration Jay Madden, SCE; Mukesh Khattar, EPRI; Henry Wong, Intel; Chris Battista, Calit2 CalPlug Workshop Series #7 University of
An Architecture Model of Sensor Information System Based on Cloud Computing
An Architecture Model of Sensor Information System Based on Cloud Computing Pengfei You, Yuxing Peng National Key Laboratory for Parallel and Distributed Processing, School of Computer Science, National
Publications of Ugo Fiore
Publications of Ugo Fiore Journal papers [J31] A. Castiglione, R. De Prisco, A. De Santis, U. Fiore, and F. Palmieri. A botnet-based command and control approach relying on swarm intelligence. In: Journal
Energy-Efficient ICT Services using Cloud Computing, Virtualisation and Software as a Service
Energy-Efficient ICT Services using Cloud Computing, Virtualisation and Software as a Service Alexander Schatten www.schatten.info L.S.Z Congress, September 2009 Agenda 1. Motivation 2. Energy Efficient
International Journal of Advance Research in Computer Science and Management Studies
Volume 3, Issue 6, June 2015 ISSN: 2321 7782 (Online) International Journal of Advance Research in Computer Science and Management Studies Research Article / Survey Paper / Case Study Available online
Overview of Green Energy Strategies and Techniques for Modern Data Centers
Overview of Green Energy Strategies and Techniques for Modern Data Centers Introduction Data centers ensure the operation of critical business IT equipment including servers, networking and storage devices.
Data center lifecycle and energy efficiency
Data center lifecycle and energy efficiency White Paper Lifecycle management, thermal management, and simulation solutions enable data center energy modernization Introduction Data centers are coming under
CURTAIL THE EXPENDITURE OF BIG DATA PROCESSING USING MIXED INTEGER NON-LINEAR PROGRAMMING
Journal homepage: http://www.journalijar.com INTERNATIONAL JOURNAL OF ADVANCED RESEARCH RESEARCH ARTICLE CURTAIL THE EXPENDITURE OF BIG DATA PROCESSING USING MIXED INTEGER NON-LINEAR PROGRAMMING R.Kohila
Data Centers: How Does It Affect My Building s Energy Use and What Can I Do?
Data Centers: How Does It Affect My Building s Energy Use and What Can I Do? 1 Thank you for attending today s session! Please let us know your name and/or location when you sign in We ask everyone to
Design of Remote data acquisition system based on Internet of Things
, pp.32-36 http://dx.doi.org/10.14257/astl.214.79.07 Design of Remote data acquisition system based on Internet of Things NIU Ling Zhou Kou Normal University, Zhoukou 466001,China; [email protected]
Optical interconnection networks for data centers
Optical interconnection networks for data centers The 17th International Conference on Optical Network Design and Modeling Brest, France, April 2013 Christoforos Kachris and Ioannis Tomkos Athens Information
Enabling an agile Data Centre in a (Fr)agile market
Enabling an agile Data Centre in a (Fr)agile market Phil Dodsworth Director, Data Centre Solutions 2008 Hewlett-Packard Development Company, L.P. The information contained herein is subject to change without
Last time. Data Center as a Computer. Today. Data Center Construction (and management)
Last time Data Center Construction (and management) Johan Tordsson Department of Computing Science 1. Common (Web) application architectures N-tier applications Load Balancers Application Servers Databases
Harmonizing Global Metrics for Data Center Energy Efficiency
Harmonizing Global Metrics for Data Center Energy Efficiency Dan Azevedo, Symantec Chairman - Metrics & Measurements Work Group Industry Trends Energy Efficient IT The Climate Group: Smarter technology
Data Center Infrastructure Management. optimize. your data center with our. DCIM weather station. Your business technologists.
Data Center Infrastructure Management optimize your data center with our DCIM weather station Your business technologists. Powering progress Are you feeling the heat of your data center operations? Data
A Dynamic Resource Management with Energy Saving Mechanism for Supporting Cloud Computing
A Dynamic Resource Management with Energy Saving Mechanism for Supporting Cloud Computing Liang-Teh Lee, Kang-Yuan Liu, Hui-Yang Huang and Chia-Ying Tseng Department of Computer Science and Engineering,
CIBSE ASHRAE Group. Data Centre Energy Efficiency: Who, What, Why, When, Where & How
CIBSE ASHRAE Group Data Centre Energy Efficiency: Who, What, Why, When, Where & How Presenters Don Beaty PE, FASHRAE Founder, President & Managing Director DLB Associates Consulting Engineers Paul Finch
How High Temperature Data Centers & Intel Technologies save Energy, Money, Water and Greenhouse Gas Emissions
Intel Intelligent Power Management Intel How High Temperature Data Centers & Intel Technologies save Energy, Money, Water and Greenhouse Gas Emissions Power savings through the use of Intel s intelligent
PERFORMANCE ANALYSIS OF PaaS CLOUD COMPUTING SYSTEM
PERFORMANCE ANALYSIS OF PaaS CLOUD COMPUTING SYSTEM Akmal Basha 1 Krishna Sagar 2 1 PG Student,Department of Computer Science and Engineering, Madanapalle Institute of Technology & Science, India. 2 Associate
Real Time Network Server Monitoring using Smartphone with Dynamic Load Balancing
www.ijcsi.org 227 Real Time Network Server Monitoring using Smartphone with Dynamic Load Balancing Dhuha Basheer Abdullah 1, Zeena Abdulgafar Thanoon 2, 1 Computer Science Department, Mosul University,
AIRAH Presentation April 30 th 2014
Data Centre Cooling Strategies The Changing Landscape.. AIRAH Presentation April 30 th 2014 More Connections. More Devices. High Expectations 2 State of the Data Center, Emerson Network Power Redefining
