Information Technology Reference
In-Depth Information
Menzel, M., and R. Ranjan (2012). CloudGenius: decision support for web server
cloud migration. In Proceedings of WWW'12 , pp. 979-988. New York: ACM.
Microsoft (2013a). Develop and deploy with Windows Azure SQL Database. http://
social.technet.microsoft.com/wiki/contents/articles/994.develop-and-deploy-
with-windows-azure-sql-database.aspx.
Microsoft (2013b). Guidelines and limitations (Windows Azure SQL Database).
http://msdn.microsoft.com/en-us/library/windowsazure/ff394102.aspx.
Morris, J. (2012). Practical Data Migration , 2nd ed. London: BCS, The Chartered
Institute for IT.
Mudge, J., P. Chandrasekhar, G. Heinson, and S. Thiel (2011). Evolving inversion
methods in geophysics with cloud computing—a case study of an escience
collaboration. In Proceedings of e-Science'11 , pp. 119-125. Stockholm, Sweden: IEEE.
Power, D. (2002). Decision Support Systems: Concepts and Resources for Managers .
Quorum Books.
Reddy, V. G., and G. S. Kumar (2011). Cloud computing with a data migration. Journal
of Current Computer Science and Technology 1 (06).
Sadalage, P. J., and M. Fowler (2012). NoSQL Distilled: A Brief Guide to the Emerging
World of Polyglot Persistence . Boston: Addison-Wesley.
salesforce.com (2013). Salesforce helpdata importing overview. http://help.
salesforce .com/HTViewHelpDoc?id=importing.htm&language=en_US.
Shull, F., J. Carver, and G. H. Travassos (2001). An empirical methodology for intro-
ducing software processes. SIGSOFT Software Engineering Notes 26(5), 288-296.
Sommerville, I. (1996). Software process models. ACM Computing Surveys 28(1), 269-271.
Sonntag, M., M. Hahn, and D. Karastoyanova (2012, September). Mayflower—
explorative modeling of scientific workflows with BPEL. In Proceedings of CEUR
Workshop'12 , pp. 1-5. New York: Springer.
Sonntag, M., S. Hotta, D. Karastoyanova, D. Molnar, and S. Schmauder (2011). Using
services and service compositions to enable the distributed execution of legacy
simulation applications. In Towards a Service-Based Internet , pp. 242-253. New
York: Springer.
Sonntag, M., and D. Karastoyanova (2010). Next generation interactive scientific
experimenting based on the workflow technology. In Proceedings of MS'10 ,
Alhajj, R. S., Leung, V. C. M., Saif, M., and Thring, R., editors. pp. 349-356. Banff,
Alberta, Canada.
Strauch, S., V. Andrikopoulos, T. Bachmann, D. Karastoynova, S. Passow, and
K.  Vukojevic-Haupt (2013a, December). Decision support for the migration
of the application database layer to the cloud. In Proceedings of CloudCom'13 .
Washington, DC: IEEE Computer Society Press.
Strauch, S., V. Andrikopoulos, T. Bachmann, and F. Leymann (2013b). Migrating appli-
cation data to the cloud using cloud data patterns. In Proceedings of CLOSER'13 ,
pp. 36-46. London: SciTePress.
Strauch, S., V. Andrikopoulos, U. Breitenbücher, S. G. Sáez, O. Kopp, and F. Leymann
(2013c). Using patterns to move the application data layer to the cloud. In Proceedings
of PATTERNS'13 , pp. 26-33. Melbourne: Xpert Publishing Services (XPS).
Taylor, I. J., E. Deelman, and D. B. Gannon (eds.) (2006). Workflows for e-Science:
Scientific Workflows for Grids . New York: Springer.
Tran, V. T. K., K. Lee, A. Fekete, A. Liu, and J. Keung (2011). Size estimation of cloud
migration projects with cloud migration point (CMP). In Proceedings of ESEM'11 ,
pp. 265-274. New York: IEEE.
Search WWH ::




Custom Search