Information Technology Reference
In-Depth Information
References
[1] Amazon EC2, http://aws.amazon.com/ec2/ (accessed on September 1, 2014)
[2] Akioka, S., Muraoka, Y.: Extended Forecast of CPU and Network Load on Computation-
al Grid. In: Proc. 2004 IEEE International Symposium on Cluster Computing and the
Grid, pp. 765-772 (2004)
[3] Barga, R., Gannon, D.: Scientific versus Business Workflows. In: Workflows for e-
Science (2007)
[4] Buyya, R., Yeo, C.S., Venugopal, S.: Market-Oriented Cloud Computing: Vision, Hype,
and Reality for Delivering IT Services as Computing Utilities. In: Proc. 10th IEEE Inter-
national Conference on High Performance Computing and Communications (2008)
[5] Chen, J., Yang, Y.: Multiple States based Temporal Consistency for Dynamic Verification
of Fixed-time Constraints in Grid Workflow Systems. Concurrency and Computation:
Practice and Experience 19(7), 965-982 (2007)
[6] Chen, J., Yang, Y.: Adaptive Selection of Necessary and Sufficient Checkpoints for Dy-
namic Verification of Temporal Constraints in Grid Workflow Systems. ACM Trans. on
Auto. and Adapt. Sys. 2(2) (2007)
[7] Chen, J., Yang, Y.: Temporal Dependency based Checkpoint Selection for Dynamic Veri-
fication of Temporal Constraints in Scientific Workflow Systems. ACM Transactions on
Software Engineering and Methodology 20(3), Article 9 (2011)
[8] Chen, J., Yang, Y.: Localising Temporal Constraints in Scientific Workflows. Journal of
Computer and System Sciences 76(6), 464-474 (2010)
[9] Chen, J., Yang, Y., Chen, T.Y.: Dynamic Verification of Temporal Constraints on-the-fly
for Workflow Systems. In: Proc. the 11th Asia-Pacific Software Engineering Conference,
pp. 30-37 (2004)
[10] Chen, J., Yang, Y.: Activity Completion Duration Based Checkpoint Selection for Dy-
namic Verification of Temporal Constraints in Grid Workflow Systems. Int. J. High Per-
form. Comput. Appl. 22(3), 319-329 (2008)
[11] Chen, W., Zhang, J., Yu, Y.: Workflow Scheduling in Grids: An Ant Colony Optimization
Approach. In: Proc. 2007 IEEE Congress on Evolutionary Computation, pp. 3308-3315
(2007)
[12] Chen, W., Zhang, J.: An Ant Colony Optimization Approach to a Grid Workflow Sche-
duling Problem With Various QoS Requirements. IEEE Transactions on Systems, Man,
and Cybernetics, Part C: Applications and Reviews 39(1), 29-43 (2009)
[13] Cooper, K., Dasgupta, A., Kennedy, K., Koelbel, C., Mandal, A.: New Grid Scheduling
and Rescheduling Methods in the GrADS Project. In: Proc. 18th International Parallel
and Distributed Processing Symposium, pp. 199-206 (2004)
[14] Dean, J., Ghemawat, S.: Mapreduce: Simplified Data Processing on Large Clusters.
Communications of the ACM 51(1), 107-113 (2008)
[15] Deelman, E., Gannon, D., Shields, M., Taylor, I.: Workflows and e-Science: An Over-
view of Workflow System Features and Capabilities. Fut. Gene. Comp. Syst. 25(5), 528-
540 (2009)
[16] Dou, W., Zhao, J., Fan, S.: A Collaborative Scheduling Approach for Service-Driven
Scientific Workflow Execution. Journal of Computer and System Sciences 76(6), 416-
427 (2010)
[17] Eder, J., Panagos, E., Rabinovich, M.: Time Constraints in Workflow Systems. In: Jarke,
M., Oberweis, A. (eds.) CAiSE 1999. LNCS, vol. 1626, pp. 286-300. Springer, Heidel-
berg (1999)
[18] Foster, I., Yong, Z., Raicu, I., Lu, S.: Cloud Computing and Grid Computing 360-Degree
Compared. In: Proc. 2008 Grid Computing Environments Workshop, pp. 1-10 (2008)
Search WWH ::




Custom Search