25.Bibliography
Aazam, M; Huh, E-M; St-Hilaire, M; Lung, C; Lambadaris, I;, 2015. Cloud of Things: Integration of IoT with Cloud Computing. Robots and Sensor Clouds, SSDC, Volume 36, pp. 77-94.
Abramson, D; Buyya, R; Giddy, J;, 2002. A Computational Economy for Grid Computing and its Implementation in the Nimrod-G Resource Broker. Future Generation Computer Systems (FGCS), Volume 18, pp. 1061-1074.
Akioka, S. & Muraoka, Y., 2010. HPC Benchmarks on Amazon EC2. Perth, 2010 IEEE 24th International Conference on Advanced Information Networking and Applications Workshops (WAINA).
Aljoumah, E; Al-Mousaw, F; Ahmad, I; Al-Shammri, M; Al-Jady, Z;, 2015. SLA in Cloud Computing Architectures: A Comprehensive Study. International Journal of Grid Distribution Computing, 8(5), pp. 7-32.
Aloisio, G; Cafaro, M; Blasi, E; Epicoco, I;, 2002. The Grid Resource Broker, A Ubiquitous Grid Computing Framework. Scientific Programming, 10(2), pp. 113-119.
Alzhouri, F. & Agarwal, A., 2015. Dynamic Pricing Scheme: Towards Cloud Revenue Maximization. Vancouver, 2015 IEEE 7th International Conference on Cloud Computing Technology and Science (CloudCom).
Amato, A; Di Martino, B; Venticinque, S;, 2013. Cloud Brokering as a Service. Compiegne, Proceedings of the 2013 Eighth International Conference on P2P, Parallel, Grid, Cloud and Internet Computing.
Amazon Web Services, 2017. All Customer Success Stories. [Online]
Available at: https://aws.amazon.com/solutions/case-studies/all/
[Accessed 24 10 2017].
Amazon Web Services, 2017. Amazon EC2 FAQs. [Online]
Available at: https://aws.amazon.com/ec2/faqs/
[Accessed 22 10 2014].
Amazon Web Services, 2017. Amazon EC2 Instance Types. [Online]
Available at: https://aws.amazon.com/ec2/instance-types/
[Accessed 22 10 2017].
Amazon Web Services, 2017. Amazon EC2 Service Level Agreement. [Online]
Available at: https://aws.amazon.com/ec2/sla/
[Accessed 24 10 2017].
Amazon Web Services, 2017. Produce Details. [Online]
Available at: https://aws.amazon.com/ecs/details/
[Accessed 22 10 2017].
Anon., 2010. SLA Validation in Layered Cloud Infrastructures. Ischia, Proceedings of Economics of Grids, Clouds, Systems, and Services, 7th International Workshop, (GECON 2010).
Anon., 2011. Self-adaptive Service Monitoring. Adaptive and Intelligent Systems, Lecture Notes in Computer Science , Volume 6943, pp. 119-130.
Armbrust, M; Fox, A; Griffith, R; Joseph, A D; Katz, R H; Konwinski, A; Lee, G; Patterson, D A; Rabkin, A; Stoica, I; Zaharia, M;, 2009. Above the Clouds: A Berkeley View of Cloud Computing, s.l.: EECS Department, University of California, Berkeley UCB/EECS-2009-28.
Armstrong, D; Djemame, K;, 2011. Performance Issues in Clouds: An Evaluation of Virtual Image Propagation and I/O Paravirtualization. THE COMPUTER JOURNAL, 54(6), pp. 836-849.
Banerjee, I; Guo, F; Tati, K; Venkatasubramanian, R;, 2013. Memory Overcommitment in the ESX Server. [Online]
Available at: https://labs.vmware.com/vmtj/memory-overcommitment-in-the-esx-server
[Accessed 21 August 2017].
Bates, A; Mood, B; Pletcher, J; Pruse, H; Valafar, M; Butler, K;, 2014. On detecting co-resident cloud instances using network flow watermarking techniques. International Journal of Information Security, 13(2), pp. 171-189.
Benfiled, A., 2016. Global Insurance Market Opportunities , s.l.: http://thoughtleadership.aonbenfield.com/documents/20160911-ab-analytics-gimo.pdf.
Ben-Yehuda, O; Ben-Yehuda, M; Schuster, A; Tsafrir, D;, 2011. Deconstructing Amazon EC2 Spot Instance Pricing. Athens, 2011 IEEE Third International Conference on Cloud Computing Technology and Science (CloudCom).
Berghel, H., 2014. Why Clouds Give Me a Case of the Vapors. Computer, 47(11), pp. 82-85.
Beyer, B; Jones, C; Petoff, J; Murphy, N;, 2016. Site Reliability Engineering: How Google Runs Production Systems. 1 ed. s.l.:OReilly.
Buyya, R; Amramson, D; Giddy, J; Stockhinger, H;, 2002. Economic Models for Resource Management and Scheduling in Grid Computing. Concurrency and Computation: Practice and Experience, 14(13-15), pp. 1507-1542.
Buyya, R; Yeo, C S; Venugopal, S; Broberg, J; Brandic, I;, 2009. Cloud Computing and Emerging IT Platforms: Vision, Hype and Reality for Delivering Computing as the 5th Utility. Future Generation Computer Systems, 25(6), pp. 519-616.
Caithness, N; Drescher, M; Wallom, D;, 2017. Can functional characteristics usefully define the cloud computing landscape and is the current reference model correct?. Journal of Cloud Computing: Advances, Systems and Applications, 6(10).
Cartlidge, J., 2014. Trading experiments using financial agents in a simulated cloud computing commodity market. Angers, 6th International Conference on Agents and Artificial Intelligence (ICAART 2014).
Cartlidge, J. & Clamp, P., 2014. Correcting a Financial Brokerage Model for Cloud Computing: Closing the Window of Opportunity for Commercialisation. Journal of Cloud Computing, 3(1).
Cartlidge, J. & Phelps, S., 2011. Estimating demand for dynamic pricing in electronic markets. GSTF Journal on Computing (JoC, 1(2), pp. 128-133.
Cerotti, D; Gribaudo, M; Piazzola, P; Serazzi, G;, 2012. Flexible CPU Provisioning in Clouds: A New Source of Performance Unpredictability. London, QEST '12 Proceedings of the 2012 Ninth International Conference on Quantitative Evaluation of Systems.
Chatfield, C., 2003. The Analysis of Time Series. 6 ed. s.l.:Chapman & Hall.
Cito, j. & Leitner, P., 2016. Patterns in the Chaos: A Study and Performance Variation and Predictability in Public IaaS Clouds. ACM Transactions on Internet Technology, 16(3).
Clamp, P. & Cartlidge, J., 2013. Pricing the cloud: An adaptive brokerage for cloud computing. Venice, Proc. 5th Int. Conf. Advances in System Simulation (SIMUL-2013).
Clayman, S; Toffetti, G; Galis, A; Chapman, C;, 2012. Monitoring services in a federated cloud-the reservoir experience. Achieving Federated and Self-Manageable Cloud Infrastructures: Theory and Practice, pp. 242-265.
Cliff, D., 2009. ZIP60: Further Explorations in the Evolutionary Design of Trader Agents and Online Auction-Market Mechanisms. IEEE Transactions on Evolutionary Computation, 13(1), pp. 3-18.
Cliff, D. & Bruten, J., 1997. Zero is Not Enough: On The Lower Limit of Agent Intelligence For Continuous Double Auction Markets, Bristol: HP Laboratories.
Cloud Computing and Distributed Systems (CLOUDS) Laboratory, n.d. CloudSim: A Framework For Modeling And Simulation Of Cloud Computing Infrastructures And Services. [Online]
Available at: http://www.cloudbus.org/cloudsim/
[Accessed 24 10 2017].
CloudHarmony, 2017. CloudHarmony. [Online]
Available at: https://cloudharmony.com/
[Accessed 24 10 2017].
Cohen, M; Keller, P; Mirrokni, V; Zadimoghaddam, M;, 2017. Overcommitment in Cloud Services – Bin packing. [Online]
Available at: https://arxiv.org/pdf/1705.09335.pdf
[Accessed 21 August 2017].
Cohen, M; Weller, P; Mirrokni, V; Zadimoghaddam, M;, 2017. Overcommitment in Cloud Services -- Bin packing with Chance Constraints. [Online]
Available at: https://arxiv.org/abs/1705.09335
[Accessed 22 10 2017].
Cohen, R., 2013. Compute Derivatives: The Next Big Thing In Commodities?. [Online]
Available at: https://www.forbes.com/sites/reuvencohen/2013/10/02/compute-derivatives-the-next-big-thing-in-commodities/#48bd1bd42f5f
[Accessed 24 10 2017].
Cowhey, P. & Kleeman, M., 2012. Unlocking the Benefits of Cloud Computing for Emerging Economies - A Policy Overview, s.l.: s.n.
Croux, C. & Dehon, C., 2010. Influence functions of the Spearman and Kendall correlation measures. Statistical Methods and Applications, Volume 19, pp. 497-515.
Curnow, H. & Wichmann, B., 1976. A Synthetic Benchmark. THE COMPUTER JOURNAL, 1(1), pp. 43-49.
Cycle Computing, 2017. CYCLECLOUD. [Online]
Available at: https://cyclecomputing.com/wp-content/uploads/2017/02/MayKhanna.pdf
[Accessed 24 10 2017].
Daconta, M., 2013. Cloud Broker Software an Emerging Force for Enterprise Migrations. [Online]
Available at: https://gcn.com/Articles/2013/04/23/Cloud-broker-software-enterprise-migrations.aspx
[Accessed 20 August 2017].
Dalpe, G; Joly, Y;, 2014. Opportunities and Challenges Provided by Cloud Repositories for Bioinformatics-Enabled Drug Discover. DRUG DEVELOPMENT RESEARCH, 75(6), pp. 393-401.
Darrow, B., 2012. Cycle Computing spins up 50K core Amazon cluster. [Online]
Available at: https://gigaom.com/2012/04/19/cycle-computing-spins-up-50k-core-amazon-cluster
[Accessed 22 10 2017].
Delimitrou, C. & Kozyrakis, C., 2017. Bolt: I Know What You Did Last Summer... in the Cloud. Xi'an, China, In Proc. of the Twenty Second International Conference on Architectural Support for Programming Languages and Operating Systems (ASPLOS).
Dixit, K., 1993. Overview of the SPEC Benchmarks. [Online]
Available at: http://jimgray.azurewebsites.net/benchmarkhandbook/chapter9.pdf
[Accessed 21 August 2017].
Djemame, K; Padget, J; Gourlay, L; Armstrong, D;, 2011. Brokering of risk‐aware service level agreements in grids. Concurrency and Computation: Practice and Experienc, 23(13), pp. 1558-1582.
Docker, 2017. docker. [Online]
Available at: https://www.docker.com/
[Accessed 24 10 2017].
Dodd, R. & Mills, P., 2008. Outbreak: U.S. Subprime Contagion. Finance and Development: A quarterly magazine of the IMF, Volume 45, Number 2.
Du, J; Sehrawat, N; Zwaenepoel, W;, 2010. Performance Profiling in a Virtualised Environment. Boston, Proceedings of the 2nd USENIX conference on Hot topics in cloud computing HotCloud'10.
Duncan, R., 1990. A Survey of Parallel Computer Architectures. IEEE Computer, 23(2), pp. 5-16.
Easterbrook, S., 2010. The Difference Between Verification and Validation. [Online]
Available at: http://www.easterbrook.ca/steve/2010/11/the-difference-between-verification-and-validation/
[Accessed 20 August 2017].
EEMBC, 1999. Dhrystone Benchmark. [Online]
Available at: http://www.eembc.org/techlit/datasheets/ECLDhrystoneWhitePaper2.pdf
[Accessed 21 August 2017].
Emeakaroh, V; Netto, M; Calheiro, R; Brandic, I; Buyya, R; De Rose, C;, 2012. Towards autonomic detection of SLA violations in Cloud infrastructures. Future Generation Computer Systems, 28(7), pp. 1017-1029.
Engen, V; Papay, J; Phillips, S; Boniface, M;, 2012. Predicting Application Performance for Multi-vendor Clouds Using Dwarf Benchmarks. Paphos, 13th International Conference, Web Information Systems Engineering - WISE 2012.
Evangelinos, C; Hill, N C;, 2008. Cloud Computing for Parallel Scientific HPC Applications: Feasibility of Running Coupled Atmosphere-Ocean Climate Models on Amazon's EC2. Chicago, IEEE Cloud Computing and its Applications 2008 (CCA-08).
Evangelinos, C. & Hill, C., 2008. Cloud computing for parallel scientific hpc applications: Feasibility of running coupled atmosphere-ocean climate models on amazon’s ec2. Chicago, The first workshop on Cloud Computing and its Applications (CCA’08).
Exposito, R. et al., 2013. Performance Analysis of HPC Applications in the Cloud. Future Generation Computer Systems, 29(1), pp. 218-229.
Farley, B; Juels, A; Varadarajan, V; Ristenpart, T; Bower, K M; Swift, M M;, 2012. More for your Money: Exploiting Performance Heterogeneity in Public Clouds. San Jose, California, Third ACM Symposium on Cloud Computing (SoCC '12).
Felter , W; Ferreira, A; Rajamony, R; Rubio, J;, 2015. An updated performance comparison of virtual machines and Linux containers. Philadelphia, 2015 IEEE International Symposium on Performance Analysis of Systems and Software (ISPASS).
Ficco, M. & Rak, M., 2011. Intrusion Tolerant Approach for Denial of Service Attacks to Web Services. s.l., In: Proc. of the 1st International Conference on Data Compression, Communications and Processing (CCP 2011).
Foster, I., 2009. Whats faster -- a supercomputer or EC2?. [Online]
Available at: http://ianfoster.typepad.com/blog/2009/08/whats-fastera-supercomputer-or-ec2.html
[Accessed 22 10 2017].
Foster, I., Zhao, Y., Raicu, I. & Lu, S., 2008. Cloud and Grid Computing 360-Degree Compared. Austin, Texas, IEEE Grid Computing Environments Workshop, 2008 (GCE 08).
Ganek, A. & Corbi, T., 2003. The Dawning of The Autonomic Computing Era. IBM Systems Journal, 42(1), pp. 5-18.
Garg, S. K., Vecchiola, C. & Buyya, R., 2013. Mandi: A Market Exchange for Trading Utility and Cloud Computing Services, 64(3):. Journal of Supercomputing, 64(3), pp. 1153-1174.
Gens, F., 2009. New IDC it Cloud Services Survey: Top Benefits and Challenges. [Online]
Available at: https://web.archive.org/web/20170620212801/http://blogs.idc.com/ie/?p=730
[Accessed 24 10 2017].
Globus, n.d. Welcome to Globus Toolkit Homepage. [Online]
Available at: http://toolkit.globus.org/toolkit/
[Accessed 22 10 2017].
GNU, 2006. GNU GO. [Online]
Available at: https://www.gnu.org/software/gnugo/
[Accessed 24 10 2017].
Gode, D. & Sunder, S., 1993. Allocative Efficiency of Markets with Zero Intelligence (Z1) Traders: Market as a Partial Substitute for Individual Rationality. Journal of political economy, 101(1), pp. 119-137.
Google Cloud Platform, 2017. Container Engine. [Online]
Available at: https://cloud.google.com/container-engine
[Accessed 22 10 2017].
Google Cloud Platform, 2017. Google App Engine. [Online]
Available at: https://cloud.google.com/appengine/
[Accessed 24 10 2017].
Google Cloud Platform, 2017. Machine types. [Online]
Available at: https://cloud.google.com/compute/docs/machine-types
[Accessed 22 10 2017].
Gottschlich, J., Hiemer, J. & Hinz, O., 2014. Cloud Computing Broker Model for IaaS Resources. s.l., In Proceedings ECIS 2014, pages 1 - 15.
Gregg, B., 2012. Systems Perormance: Enterprise and the Cloud. 01 ed. s.l.:Prentice Hall.
GridPP, 2017. Distributed Computing for Data-Intensive Research. [Online]
Available at: https://www.gridpp.ac.uk/
[Accessed 22 10 2017].
Gupta, A. & Milojicic, D., 2011. Evaluation of HPC Applications on Cloud. Washington, OCS '11 Proceedings of the 2011 Sixth Open Cirrus Summit.
Gustafson, J. & Snell, Q., 1995. HINT: A new way to measure computer performance. s.l., IEEE Proceedings of the Twenty-Eighth Annual Hawaii International Conference on System Sciences.
Guzek, M; Gniewek, A; Bouvry, P; Musial, J; Blazewicz, J;, 2015. Cloud Brokering: Current Practices and Upcoming Challenges. IEEE Cloud Computing, 2(2), pp. 40-47.
Halek, M. & Eisenhauer, J., 2001. Demography of Risk Aversion. The Journal of Risk and Insurance, 68(1), pp. 1-24.
Hassan, H. A., Mohamed, S. & Sheta, W., 2016. Scalability and Communication Performance of HPC on Azure Cloud. Egyptian Informatics Journal, 17(2), pp. 175-182.
Hennessy, J. & Patterson, D., 2012. Computer Architecture: A Quantitative Approach. Fifth ed. s.l.:Elsevier.
Heroku, 2017. HEROKU. [Online]
Available at: https://www.heroku.com/
[Accessed 22 10 2017].
HMMER, n.d. HMMER: biosequence analysis using profile hidden Markov models. [Online]
Available at: http://hmmer.org/
[Accessed 22 10 2017].
Hoseinyfarahabady, M R; Samani, H R; Leslie, L M; Lee, Y C; Zomaya, A Y;, 2013. Handling Uncertainty: Pareto-Efficient BoT Scheduling on Hybrid Clouds. Lyon, 2013 42nd International Conference on Parallel Processing.
Hoseinyfarahabady, R; Samani, H; Leslie, L;, 2013. Handling uncertainty: Pareto-efficient bot scheduling on hybrid clouds. Lyon, 2013 42nd International Conference on Parallel Processing (ICPP).
Hoxmeier, J. A. & DeCesare, C., 2000. System response time and user satisfaction: An experimental study of browser-based applications. Long Beach, Proceedings of the Association of Information Systems Americas Conference.
Hoxmeier, J. & DiCesare, C., 2000. System response time and user satisfaction: An experimental study of browser-based application. Long Beach, Proceedings of the Association of Information Systems Americas Conference.
Iosup, A; Jan, M; Sonmez, O; Epema, D;, 2007. The characteristics and Performance of Groups of Jobs in Grids. s.l., Euro-Par'07 Proceedings of the 13th international Euro-Par conference on Parallel Processing.
Iosup, A; Ostermann, S; Yigitbasi, M; Prodan, R; Fahringer, T; Epema, D;, 2010. Performance Analysis of Cloud Computing Services for Many-Tasks Scientific Computing. IEEE Transactions on Parallel and Distributed Systems, 22(6), pp. 931-945.
Iosup, A; Yigitbasi, N; Epema, D;, 2011. On the Performance Variability of Cloud Services. Newport Beach, California, 11th IEEE/ACM International Symposium on Cluster, Cloud and Grid Computing (CCGrid).
iozone, 2016. IOzone Filesystem Benchmark. [Online]
Available at: http://www.iozone.org/
[Accessed 22 10 2017].
Jackson, K; Ramakrishnan, L; Muriki, K; Canon, S; Cholia, S; Shalf, J; Wasserman, H; Wright, N;, 2010. Performance Analysis of High Performance Computing Applications on the Amazon Web Services Cloud. s.l., CLOUDCOM '10 Proceedings of the 2010 IEEE Second International Conference on Cloud Computing Technology and Science.
Jain, R., 1991. The Art of Computer Systems Performance Analysis: Techniques for Experimental Design, Measurement, Simulation and Modelling. 1st ed. s.l.:Wiley.
Jayasinghe, D; Swint, G; Malkowski, S; Li, J; Wang, Q; Park, J; Pu, C;, 2012. Expertus: A Generator Approach to Automate Performance Testing in IaaS Clouds. Honolulu, 2012 IEEE 5th International Conference on Cloud Computing (CLOUD).
Johnson, M; McCraw, H; Moore, S; Mucci, P; Nelson, J; Terpstra, D; Weaver, V; Mohan, T;, 2012. PAPI-V: Performance Monitoring for Virtual Machines. Pittsburgh, 2012 41st International Conference on Parallel Processing Workshops (ICPPW).
Kang, H; Le, M; Tao, S;, 2016. Container and Microservice Driven Design for Cloud Infrastructure DevOps. Berlin, 2016 IEEE International Conference on Cloud Engineering (IC2E).
Khajeh-Hosseini, A; Greenwood, D; Smith, J W; Sommerville, I;, 2012. The Cloud Adoption Toolkit: Supporting Cloud Adoption Decisions in the Enterprise. Software—Practice & Experience, 42(4), pp. 447-465.
Kunreuther , H. & Pauly, M., 2009. Operations, Information and Decisions. [Online]
Available at: http://opim.wharton.upenn.edu/risk/library/WP20090413_HK,MP_KuU.pdf
[Accessed 24 10 2017].
Lavenberg, S., 1983. Computer Performance Modelling Handbook. s.l.:Academic Press.
Leng, T; Ali, R; Hsieh, J; Mashayekh, V; Rooholamini , R;, 2002. An Empirical Study of Hyper-Threading in High Performance Computing Clusters. [Online]
Available at: http://www.linuxclustersinstitute.org/conferences/archive/2002/PDF/11-Leng_T.pdf
[Accessed 21 August 2017].
Lenk, A; Menzel, M; Lipsky, J; Tai, S; Offermann, P, 2011. What are you paying for? performance benchmarking for infrastructure-as-a-service offerings. s.l., 2011 IEEE 4th International Conference on Cloud Computing (CLOUD).
Li, A; Yang, X; Kandula, S; Zhang, M;, 2010. CloudCmp: comparing public cloud. Melbourne, IMC '10 Proceedings of the 10th ACM SIGCOMM conference on Internet measuremen.
Li, J; Wang, Q; Jayasinghe, D; Park, J; Zhu, T; Pu, C;, 2013. Performance Overhead among Three Hypervisors: An Experimental Study Using Hadoop Benchmarks. Santa Clara, 2013 IEEE International Congress on Big Data.
Li, J; Wang, Q; Jayasinghe, D; Park, J; Zhu, T; Pu, C;, 2013. Performance Overhead among Three Hypervisors: An Experimental Study Using Hadoop Benchmarks. Santa Clara, 2013 IEEE International Congress on Big Data (BigData Congress).
Li, B., 2012. Risk Informed Service Level Agreement for Cloud Brokerage. Guildford: University of Surrey.
Lilja, D., 2008. Measuring Computer Performance: A Practitioner's Guide. 2nd ed. s.l.:Cambridge University Press.
Linux Containers, 2017. Infrastructure for container projects. [Online]
Available at: https://linuxcontainers.org
[Accessed 22 10 2017].
Liu, F; Ren, L; Bai, H;, 2014. Mitigating cross-VM side channel attacks on multiple tenants cloud platform.. Journal of Computing, 9(4), pp. 1005-1013.
Liu, Z; Cho, S;, 2012. Characterizing Machines and Workloads on a Google Cluster. Washington, ICPPW '12 Proceedings of the 2012 41st International Conference on Parallel Processing Workshops.
lloyd, W; Pallickara, S; David, O; Arabi, M; Rojas, K;, 2017. Mitigating Resource Contention and Heterogeneity in Public Clouds for Scientific Modeling Services. s.l., 2017 IEEE International Conference on Cloud Engineering (IC2E).
Lucanin, D; Pietri, I; Brandic, I; Sakellariou, R;, 2015. A Cloud Controller for Performance-Based Pricin. New York, 8th International Conference on Cloud Computing.
Mao, M; Humphrey, M;, 2012. A Performance Study on the VM Startup Time in the Cloud. Honolulu, IEEE Fifth International Conference on Cloud Computing.
Marilly, E; Martinot, O; Papini , H; Goderis, D;, 2002. Service Level Agreements: A Main Challenge. Toulouse, In Proceedings of the 2nd European Conference on Universal Multiservice Networks.
Mauch, V; Kunze, M; Hillenbrand, M;, 2013. High Performance Cloud Computing. Future Generation Computer Systems, 29(6), pp. 1408-1416.
McCalpin, n.d. STREAM. [Online]
Available at: http://www.cs.virginia.edu/stream/ref.html
[Accessed 22 10 2017].
Mehta, H; Pawar, P; Kanungo, P;, 2016. A Two Level Broker System for Infrastructure as a Service Cloud. Wireless Personal Communications, 90(3), p. 1135–1147.
Mell, P. & Grance, T., 2011. The NIST Definition of Cloud Comouting, s.l.: http://nvlpubs.nist.gov/nistpubs/Legacy/SP/nistspecialpublication800-145.pdf.
Meulen, R. v. d., 2008. Gartner Says Effective Management Can Cut Total Cost of Ownership for Desktop PCs by 42 Per cent. [Online]
Available at: https://www.gartner.com/newsroom/id/636308
[Accessed 24 10 2017].
Microsoft Azure, 2017. Azure compute unit. [Online]
Available at: https://docs.microsoft.com/en-us/azure/virtual-machines/windows/acu
[Accessed 22 10 2014].
Morgan, T. P., 2014. A Rare Peek Into The Massive Scale of AWS. [Online]
Available at: https://www.enterprisetech.com/2014/11/14/rare-peek-massive-scale-aws
[Accessed 24 10 2017].
Mouline, I., 2009. Why Assumptions about Cloud Performance Can be Dangerous to Your Business. Cloud Computing Journal, 2(3), pp. 24-28.
Nasiriani, N; Kesidis, G; Urgaonkar, B; Wang, Q; Chen, L; Gupta, A; Birke, R;, 2015. Recouping Energy Costs From Cloud Tenants: Tenant Demand Response Aware Pricing Design. Bangalore, Proceedings of the 2015 ACM Sixth International Conference on Future Energy Systems (e-Energy 15).
Naylor, T. & Finger, J., 1967. Verification of Computer Simulation Models. MANAGEMENT SCIENCE, 14(2), pp. 92-101.
Nikolova, M., 2012. Cloud Computing in Goverment. s.l., Proceedings of the International Conference InfoTech-2012 (InfoTech-2012).
Northrop, L; Feiler, P; Gabriel, R; Goodenough, J; Linger, R; Longstaff, T; Kazman, R; Klein, M; Schmidt, D; Sullivan, k; Wallnau, K, 2006. Ultra-Large-Scale Systems: The Software Challenge of the Future. Technical Report, s.l.: Carnegie Mellon University Software Engineering Institute.
O'Loughlin, J. & Gillam, L., 2014. Should Infrastructure Clouds be Priced Entirely on Performance? An EC2 Case Study. International Journal of Big Data Intelligence, 1(4), pp. 215-229.
O'Loughlin, J. & Gillam, L., 2014. Should Infrastructure Clouds be Priced Entirely on Performance? An EC2 Case Study. International Journal of Big Data Intelligence, 1(4).
Open Cloud Computing Interface, 2017. Specifications. [Online]
Available at: http://occi-wg.org/about/specification/
[Accessed 22 10 2017].
Oprescu, A M; Kielmann, T;, 2010. Bag-of-Tasks Scheduling under Budget Constraints. Indianapolis, 2010 IEEE Second International Conference on Cloud Computing Technology and Science.
Ord-Smith, R. & Stephenson, J., 1978. Computer Simulation of Continuous Systems. ZAMM - Journal of Applied Mathematics and Mechanics, 58(8), pp. 361-362.
Ostermann, S; Iosup, A; Yigitbasi, M N; Prodan, R; Fahringer, T; Epema, D H.J, 2009. A Performance Analysis of EC2 Cloud Computing Services for Scientific Computing. Munich, First International Conference on Cloud Computing (CloudComp) 1 (1), 115-131.
Ou, Z; Zhuang, H; Lukyanenko, A; Nurminen, J; Hui, P; Mazalov, V; Ylä-Jääski, A, 2013. Is the Same Instance Type Created Equal? Exploiting Heterogeneity of Public Clouds. IEEE Transactions on Cloud Computing, 1(2), pp. 201-214.
Palme, J., 1972. Beware of the Gibson Mix. ACM SIGMETRICS Performance Evaluation Review, 1(2), pp. 10-11.
Patel, P; Ranabahu, A; Sheth, A;, 2009. Service level agreement in Cloud computing. s.l., Cloud Workshops at OOPSLA 2009.
Pawluk, P; Simmons, B; Smit, M; Litoiu, M; Mankovski, S;, 2012. Introducing STRATOS: A Cloud Broker Service. Honolulu, 2012 IEEE 5th International Conference on Cloud Computing (CLOUD).
Peck, S., 2004. Simulation as Experiment: A Philosophical Reassment for Biological Modeling. TRENDS in Ecology and Evolution, 19(10).
Pettey, C., 2017. Gartner Says Worldwide Public Cloud Services Market to Grow 18 Percent in 2017. [Online]
Available at: https://www.gartner.com/newsroom/id/3616417
[Accessed 24 10 2017].
Phillips, S., Engen, V. & Papay, J., 2011. Snow White Clouds and the Seven Dwarfs. Athens, IEEE Third International Conference on Cloud Computing Technology and Science (CloudCom).
Popek, G; Goldberg, R;, 1974. Formal Requirements for Virtualizable Third Generation Architectures. Communications of the ACM, 17(7), pp. 412-421.
PostgreSQL, 2017. PostgreSQL Client Applications. [Online]
Available at: https://www.postgresql.org/docs/devel/static/pgbench.html
[Accessed 24 10 2017].
POV-Ray, n.d. Persistence of Vision. [Online]
Available at: http://www.povray.org/
[Accessed 22 10 2017].
Raman, K., 2013. Optimizing Memory Bandwidth on Stream Triad. [Online]
Available at: https://software.intel.com/en-us/articles/optimizing-memory-bandwidth-on-stream-triad
[Accessed 22 10 2017].
Razavi, K; Razorea, L; Keilmann, T;, 2013. Reducing VM Startup Time and Storage Costs by VM Image Content Consolidation, Aachen: In 1st Workshop on Dependability and Interoperability In Heterogeneous Clouds, Euro-Par 2013: Parallel Processing Workshops, 2013..
Rehr, J J; Vila, F D; Gardner, J P; Svec, L; Prange M;, 2010. Scientific Computing in the Cloud. Computing Now, May/June, pp. 34-43.
Reiss, C; Tumanov, A; Ganger, G; Katz, R; Kozuch , M;, 2012. Heterogeneity and dynamicity of Clouds at scale: Google trace analysis. San Jose, Proceedings of the Third ACM Symposium on Cloud Computing (SoCC' 12).
Reiss, C; Wilkes, J; Hellerstein, J;, 2013. Google cluster -usage traces: format + schema. [Online]
Available at: https://drive.google.com/file/d/0B5g07T_gRDg9Z0lsSTEtTWtpOW8/view
[Accessed 24 10 2017].
Ristenpart, T; Tromer, E; Shacham, H; Savage, S;, 2009. Hey you get off my cloud: exploring information leakage in third-party compute clouds. Chicago, CCS '09 Proceedings of the 16th ACM conference on Computer and communications security.
Rogers, O. & Cliff, D., 2012. A Financial Brokerage Model for Cloud Computing. Journal of Cloud Computing: Advances, Systems and ApplicationsAdvances, Systems and Applications, 1(2).
Rotar, V., 2015. ACTUARIAL MODELS: The Mathematics of Insurance. 2 ed. s.l.:Chapman and Hall.
Schad, J; Dittrich, J; Quiane-Ruiz, J;, 2010. Runtime Measurements in the Cloud: Observing,. s.l., Proceedings of the VLDB Endowment.
Scheuner, J., Leitner, P., Cito, J. & Gall, H., 2014. Cloud Work Bench -- Infrastructure-as-Code Based Cloud Benchmarking. Singapore, 2014 IEEE 6th International Conference on Cloud Computing Technology and Science (CloudCom).
SDSC, 2000. The San Diego Supercomputer Center (SDSC) SP2 log. [Online]
Available at: http://www.cs.huji.ac.il/labs/parallel/workload/l_sdsc_sp2/
[Accessed 24 10 2017].
Seifert, I., Botzen, W., Kreibich, H. & Aerts, J., 2013. Influence of flood risk characteristics on flood insurance demand: a comparison between Germany and the Netherlands. Natural Hazards and Earth System Sciences, 13(7), pp. 1691-1691.
Seward, J., 2017. bzip2. [Online]
Available at: http://www.bzip.org/
[Accessed 24 10 2017].
Siegel, J. & Perdue, A., 2012. Cloud Services Measures for Global Use: The Service Measurement Index (SMI). San Jose, IEEE 2012 Annual SRII Global Conference.
Sjeng, n.d. Leela. [Online]
Available at: https://www.sjeng.org/leela.html
[Accessed 24 10 2017].
Smith, J. E., 1988. Characterising Computer Performance with a Single Number. Communications of the ACM, 31(10), pp. 1202-1206.
Smith, V., 1962. Experimental study of competitive market behavior. Journal of Political Economy, Volume 70, pp. 111-137.
Sommerville, I; Cliff, D; Calinescu, R; Keen, J; Kelly, T; Kwiatkowska, M; Mcdermid, J; Paige, R;, 2012. Large-Scale Complex Systems. Communications of the ACM, 55(7), pp. 71-77.
Sommerville, I., 2013. Teaching Cloud Computing. Journal of Systems and Software, 86(9), pp. 2330-2332.
SpamAssassin, n.d. SpamAssassin. [Online]
Available at: https://spamassassin.apache.org/full/3.1.x/doc/sa-learn.html
[Accessed 24 10 2017].
Spyker, A; Leung, A; Bozarth, T;, 2017. The Evolution of Container Usage at Netflix. [Online]
Available at: https://medium.com/netflix-techblog/the-evolution-of-container-usage-at-netflix-3abfc096781b
[Accessed 21 August 201].
Stahl, E; Corona, A; De Gilio, F; Demuro, M; Dowling, A; Duijvestijn, L; Fernandes, A; Jewell, D; Keshavamurthy, B; Markovit, S; Mouleeswaran, C; Raess, S; Yu, K;, 2013. Performance and Cpacity Themes for Cloud Computing, s.l.: http://www.redbooks.ibm.com/redpapers/pdfs/redp4876.pdf.
Stokes, J., 2010. Inside the Machine: An Illustrated Introduction to Microprocessors and Computer Architecture. 1 ed. s.l.:No Starch Press.
Sundareswaran, S; Squicciarini, A; Lin, D;, 2012. A Brokerage-Based Approach for Cloud Service Selection. Honolulu, 2012 IEEE 5th International Conference on Cloud Computing (CLOUD).
TCP, 2017. TCP-B. [Online]
Available at: TPC-B
[Accessed 24 10 2017].
Tickoo, O; Iyer, R; Illikkal, R; Newell, D;, 2009. Modeling Virtual Machine Performance: Challenges and Approaches. ACM SIGMETRICS Performance Evaluation Review, 37(3), pp. 55-60.
Tordsson, J; Montero, R; Moreno-Vozmediano, R; Llorente, I M;, 2012. Cloud Brokering Mechanisms for Optimized Placement of Virtual Machines Across Multiple Providers. Future Generation Computer Systems, 28(2), pp. 358-367.
Troung, H; Dustdar, S;, 2010. Composable Cost Estimation and Monitoring for Computational Applications in Cloud Computing Environments. Procedia Computer Science, 1(1), pp. 2175-2184.
Truong, H. & Dustdar, S., 2010. Composable cost estimation and monitoring for computational applications in cloud computing environments. Procedia Computer Science, 1(1), pp. 2175-2184.
Tukaani, n.d. XZ Utils. [Online]
Available at: https://tukaani.org/xz/
[Accessed 22 10 2017].
U.S. Department of Commerce, 2006. A Practitioner's Guide to Adjuested Peak Performance. [Online]
Available at: https://www.bis.doc.gov/index.php/documents/product-guidance/865-practioner-s-guide-to-adjusted-peak-performance/file
[Accessed 24 10 2017].
University of Illinois, 2017. NAMD Scalable Molecular Dynamics. [Online]
Available at: http://www.ks.uiuc.edu/Research/namd/
[Accessed 24 10 2017].
Varghese, B; Buyya, R;, 2017. Next Generation Cloud Computing:New Trends and Research Directions. [Online]
Available at: https://arxiv.org/pdf/1707.07452.pdf
[Accessed 21 August 2017].
Verma, A; Pedrosa, L; Korupolu, M; Oppenheimer, D; Tune, E; Wilkes, J;, 2015. Large-Scale Cluster Management at Google with Borg. Bordeaux, EuroSys '15 Proceedings of the Tenth European Conference on Computer Systems.
Verma, A; Pedrosa, L; Korupolu, M; Oppenheimer, D; Tune, E; Wilkes, J;, 2015. Large-Scale cluster managment at Google with Borg. Bordeaux, EuroSys '15 Proceedings of the Tenth European Conference on Computer Systems.
Von Neumann, J., 1945. The First Draft Report on the EDVAC. [Online]
Available at: https://fa82ee93-a-62cb3a1a-s-sites.googlegroups.com/site/michaeldgodfrey/vonneumann/vnedvac.pdf?attachauth=ANoY7crxAlgZ09un5z6JT6yq-SBFVNvfMyq8DetJbobtg_LOmOemBoyeyFxYNl_RyKgIwv1CJDlp8poLbutXMR6tz2fOXRIzJhF1nFzYZXanMMuGKOsyTZpGr1DWvMAvmijLgWV5sVjlZn9Ii_3
[Accessed 21 August 2017].
von Neumann, J. & Morgenstern, O., 2007. Theory of Games and Economic Behavior. Sixtieth Anniversary Edition ed. s.l.:Princeton University Press.
Voss, A; Barker, A; Asgari-Targh, M; Van Ballegooijen, A; Sommerville, I;, 2013. An Elastic Virtual Infrastructure for Research Applications (ELVIRA). Journal of Cloud Computing: Advances, Systems and Applications, 2(20).
Wagner , B. & Sood, A., 2016. The Economics of Resilient Cloud Services. s.l., 2016 IEEE International Conference on Software Quality, Reliability and Security Companion (QRS-C).
Wang, W; Liang, B; Li, B;, 2013. Revenue maximization with dynamic auctions in IaaS cloud markets. Montreal, 2013 IEEE/ACM 21st International Symposium on Quality of Service (IWQoS).
Weicker, R., 1984. Dhrystone: A Synthetic Systems Programming Benchmark. Communications of the ACM, 27(10), pp. 1013-1030.
Weicker, R., 1990. An Overview of Common Benchmarks. Computer, 23(12), pp. 65-75.
Weinman, J., 2015. Cloud Pricing and Markets. IEEE Cloud Computing, Cloud Economics Column, February, pp. 10-13.
Westfall, P., 2014. Kurtosis as Peakedness, 1905–2014. R.I.P.. The American Statistician, 68(3), pp. 191-195.
Wiggins, A., 2017. The Twelve-Factor App. [Online]
Available at: https://12factor.net/
[Accessed 21 August 2017].
Wolski, R. & Brevik, J., 2014. Using Parametric Models to Represent Private Cloud Workloads. IEEE Transactions on Services Computing, 7(4), pp. 714-725.
World Gold Council, 2017. About gold jewellery. [Online]
Available at: http://www.gold.org/about-gold/gold-jewellery
[Accessed 24 10 2017].
Wu, F., Zhang, L. & Huberman, B., 2005. Truth-Telling Reservations. Internet and Network Economics. WINE 2005. Lecture Notes in Computer Science, Volume 3828.
Xen, 2015. XenStore Reference. [Online]
Available at: https://wiki.xen.org/wiki/XenStore_Reference
[Accessed 24 10 2017].
Xen, 2017. Credit Scheduler. [Online]
Available at: https://wiki.xen.org/wiki/Credit_Scheduler
[Accessed 01 6 2017].
Yang, C; Yu, M; Hu, F; Jiang, Y; Li, Y;, 2017. Utilizing Cloud Computing to Address Big Geospatial Data Challenges. Computers, Environment and Urban Systems, 61(B), pp. 120-128.
Yelick, K; Coghlan, S; Draney, B; Canon, R S, 2011. The Magellan Report on Cloud Computing for Science, s.l.: U.S. Department of Energy, Office of Science, Office of Advanced Scientific Computing Research (ASCR): http://www.alcf.anl.gov/magellan.
Youn, C., Chen, M. & Dazzi, P., 2017. Cloud Broker and Cloudlet for Workflow Scheduling. 1 ed. s.l.:Springer.
Zaharia, M; Konwinski, A; Joseph, A; Katz, R; Stoica, I;, 2008. Improving MapReduce Performance in Heterogeneous Environments. San Diego, 8th USENIX Symposium on Operating Systems Design and Implementation.
Zant, B. & Gagnaire, M., 2015. Performance and price analysis for cloud service providers. London, Science and Information Conference (SAI), 2015.
Zhang, X; Tune, E; Hgamann, R; Jnagal, R; Gokhale, V; Wilkes, J;, 2013. CPI^2: CPU Performance Isolation for Shared Compute Cluster. Prague, In Proc. of the 8th ACM European Conference on Computer Systems (Eurosys13).
Zhang, Y; Juels, A; Oprea, A; Reiter M;, 2011. HomeAlone: Co-residency Detection in the Cloud via Side-Channel Analysis. Berkeley, 2011 IEEE Symposium on Security and Privacy (SP).
Zhang, Y; Juels, A; Reiter, M; Ristenpart, T;, 2012. Cross-VM side channels and their use to extract prviate keys. Raleigh, CCS '12 Proceedings of the 2012 ACM conference on Computer and communications security.
Zhuang, H., Liu, X., Ou, Z. & Aberer, K., 2013. Impact of Instance Seeking Strategies on Resource Allocation in Cloud Data Centers. Santa Clara, 2013 IEEE Sixth International Conference on Cloud Computing (CLOUD).
Dostları ilə paylaş: |