I. J. Taylor, E. Deelman, D. B. Gannon, and M. Shields, Workflows for e-Science: scientific workflows for grids, vol.1, 2007.

M. Romanus, P. K. Mantha, M. Mckenzie, T. C. Bishop, E. Gallichio et al., The anatomy of successful ecss projects: Lessons of supporting high-throughput high-performance ensembles on xsede, Proceedings of the 1st Conference of the Extreme Science and Engineering Discovery Environment: Bridging from the eXtreme to the campus and beyond, p.46, 2012.

J. Baliga, R. W. Ayre, K. Hinton, and R. S. Tucker, Green cloud computing: Balancing energy in processing, storage, and transport, Proceedings of the IEEE, vol.99, issue.1, pp.149-167, 2010.

A. Beloglazov, R. Buyya, Y. C. Lee, and A. Zomaya, A taxonomy and survey of energy-efficient data centers and cloud computing systems, Advances in computers, vol.82, pp.47-111, 2011.

A. Orgerie, M. D. Assuncao, and L. Lefevre, A survey on techniques for improving the energy efficiency of large-scale distributed systems, ACM Computing Surveys (CSUR), vol.46, issue.4, p.47, 2014.
URL : https://hal.archives-ouvertes.fr/hal-00767582

I. Pietri, M. Malawski, G. Juve, E. Deelman, J. Nabrzyski et al., Energy-constrained provisioning for scientific workflow ensembles, 2013 International Conference on Cloud and Green Computing, pp.34-41, 2013.

J. J. Durillo, V. Nae, and R. Prodan, Multi-objective workflow scheduling: An analysis of the energy efficiency and makespan tradeoff, 13th IEEE/ACM International Symposium on Cluster, Cloud, and Grid Computing, pp.203-210, 2013.

T. Thanavanich and P. Uthayopas, Efficient energy aware task scheduling for parallel workflow tasks on hybrids cloud environment, International Computer Science and Engineering Conference (ICSEC), pp.37-42, 2013.

T. Guérout, T. Monteil, G. Costa, R. N. Calheiros, R. Buyya et al., Energy-aware simulation with dvfs, Simulation Modelling Practice and Theory, vol.39, pp.76-91, 2013.

I. Pietri and R. Sakellariou, Energy-aware workflow scheduling using frequency scaling, International Conference on Parallel Processing Workshops (ICCPW), 2014.

E. N. Watanabe, P. P. Campos, K. R. Braghetto, and D. M. Batista, Energy saving algorithms for workflow scheduling in cloud computing, Brazilian Symposium on Computer Networks and Distributed Systems, pp.9-16, 2014.

D. Shepherd, I. Pietri, and R. Sakellariou, Workflow scheduling on power constrained vms, Proceedings of the 8th International Conference on Utility and Cloud Computing, pp.420-421, 2015.

Z. Li, J. Ge, H. Hu, W. Song, H. Hu et al., Cost and energy aware scheduling algorithm for scientific workflows with deadline constraint in clouds, IEEE Transactions on Services Computing, vol.11, issue.4, pp.713-726, 2015.

M. Ghose, P. Verma, S. Karmakar, and A. Sahu, Energy efficient scheduling of scientific workflows in cloud environment, 2017 IEEE 19th International Conference on High Performance Computing and Communications; IEEE 15th International Conference on Smart City; IEEE 3rd International Conference on Data Science and Systems (HPCC/SmartCity/DSS), pp.170-177, 2017.

T. Wu, H. Gu, J. Zhou, T. Wei, X. Liu et al., Soft error-aware energyefficient task scheduling for workflow applications in dvfs-enabled cloud, Journal of Systems Architecture, vol.84, pp.12-27, 2018.

R. Ferreira-da-silva, A. Orgerie, H. Casanova, R. Tanaka, E. Deelman et al., Accurately simulating energy consumption of i/ointensive scientific workflows, Computational Science -ICCS 2019, pp.138-152, 2019.

D. Balouek, A. C. Amarie, G. Charrier, F. Desprez, E. Jeannot et al., Adding virtualization capabilities to the grid5000 testbed, International Conference on Cloud Computing and Services Science, pp.3-20, 2012.
URL : https://hal.archives-ouvertes.fr/hal-00946971

E. Deelman, K. Vahi, G. Juve, M. Rynge, S. Callaghan et al., Pegasus, a workflow management system for science automation, Future Generation Computer Systems, vol.46, pp.17-35, 2015.

M. Albrecht, P. Donnelly, P. Bui, and D. Thain, Makeflow: A portable abstraction for data intensive computing on clusters, clouds, and grids, Proceedings of the 1st ACM SIGMOD Workshop on Scalable Workflow Execution Engines and Technologies, p.1, 2012.

T. Fahringer, A. Jugravu, S. Pllana, R. Prodan, C. Seragiotto et al., Askalon: a tool set for cluster and grid computing, Concurrency and Computation: Practice and Experience, vol.17, issue.2-4, pp.143-169, 2005.

G. Juve, A. Chervenak, E. Deelman, S. Bharathi, G. Mehta et al., Characterizing and profiling scientific workflows, Future Generation Computer Systems, vol.29, issue.3, pp.682-692, 2013.

T. Joshi, B. Valliyodan, S. M. Khan, Y. Liu, J. M. Santos et al., Next generation resequencing of soybean germplasm for trait discovery on xsede using pegasus workflows and iplant infrastructure, 2014.

G. Juve, B. Tovar, R. Ferreira-da-silva, D. Król, D. Thain et al., Practical resource monitoring for robust high throughput computing, in: 2nd Workshop on Monitoring and Analysis for High Performance Computing Systems Plus Applications (HPC-MASPA'15), pp.650-657, 2015.

R. Ferreira-da-silva, G. Juve, M. Rynge, E. Deelman, and M. Livny, Online task resource consumption prediction for scientific workflows, Parallel Processing Letters, vol.25, issue.3, p.1541003, 2015.

Y. Inadomi, T. Patki, K. Inoue, M. Aoyagi, B. Rountree et al., Analyzing and mitigating the impact of manufacturing variability in power-constrained supercomputing, SC'15: Proceedings of the International Conference for High Performance Computing, Networking, Storage and Analysis, pp.1-12, 2015.

F. Cao and M. M. Zhu, Energy-aware workflow job scheduling for green clouds, IEEE International Conference onGreen Computing and Communications (GreenCom), 2013.

J. Pierson and H. Casanova, On the utility of dvfs for power-aware job placement in clusters, Euro-Par 2011 Parallel Processing, 2011.

. Wrench-pegasus-simulator, , 2019.

W. The and . Project, , 2019.

H. Casanova, S. Pandey, J. Oeth, R. Tanaka, F. Suter et al., WRENCH: A Framework for Simulating Workflow Management Systems, 13th Workshop on Workflows in Support of Large-Scale Science (WORKS'18), pp.74-85, 2018.
URL : https://hal.archives-ouvertes.fr/hal-01948162

W. Lin, H. Wang, Y. Zhang, D. Qi, J. Z. Wang et al., A cloud server energy consumption measurement system for heterogeneous cloud environments, Information Sciences, vol.468, pp.47-62, 2018.

M. Kumar, S. Sharma, A. Goel, and S. Singh, A comprehensive survey for scheduling techniques in cloud computing, Journal of Network and Com

H. A. Kholidy, An intelligent swarm based prediction approach for predicting cloud computing user resource needs, Computer Communica

G. Haldeman, I. Rodero, M. Parashar, S. Ramos, E. Z. Zhang et al., Exploring energy-performance-quality tradeoffs for scientific workflows with in-situ data analyses, Computer Science-Research and Development, vol.30, issue.2, p.207218, 2015.

R. Ferreira-da-silva, G. Juve, E. Deelman, T. Glatard, F. Desprez et al., Toward fine-grained online task characteristics estimation in scientific workflows, 8th Workshop on Workflows in Support of Large-Scale Science, WORKS '13, pp.58-67, 2013.
URL : https://hal.archives-ouvertes.fr/hal-00945369

L. Lefevre and A. Orgerie, Towards energy aware reservation infrastructure for large-scale experimental distributed systems, Parallel Processing Letters, vol.19, issue.03, pp.419-433, 2009.
URL : https://hal.archives-ouvertes.fr/ensl-00474724

L. Wang, S. U. Khan, D. Chen, J. Ko?odziej, R. Ranjan et al., Energy-aware parallel task scheduling in a cluster, Future Generation Computer Systems, vol.29, issue.7, pp.1661-1670, 2013.

D. Kliazovich, P. Bouvry, and S. U. Khan, Dens: data center energy-efficient network-aware scheduling, Cluster computing, vol.16, issue.1, pp.65-75, 2013.

H. Liu, C. Xu, H. Jin, J. Gong, and X. Liao, Performance and energy modeling for live migration of virtual machines, Proceedings of the 20th international symposium on High performance distributed computing, pp.171-182, 2011.

S. He, J. Chen, D. K. Yau, H. Shao, and Y. Sun, Energy-efficient capture of stochastic events under periodic network coverage and coordinated sleep, IEEE Transactions on Parallel and Distributed Systems, vol.23, issue.6, pp.1090-1102, 2011.

Y. C. Lee and A. Y. Zomaya, Energy efficient utilization of resources in cloud computing systems, The Journal of Supercomputing, vol.60, issue.2, pp.268-280, 2012.

T. Enokido and M. Takizawa, An extended power consumption model for distributed applications, IEEE International Conference on Advanced Information Networking and Applications (AINA), pp.912-919, 2012.

T. Samak, C. Morin, and D. Bailey, Energy consumption models and predictions for large-scale systems, 2013 IEEE International Symposium on Parallel & Distributed Processing, Workshops and Phd Forum, pp.899-906, 2013.
URL : https://hal.archives-ouvertes.fr/hal-00790349

T. Enokido and M. Takizawa, An integrated power consumption model for distributed systems, IEEE Transactions on Industrial Electronics, vol.60, issue.2, pp.824-836, 2013.

N. P. Jouppi, A. B. Kahng, N. Muralimanohar, and V. Srinivas, Cacti-io: Cacti with off-chip power-area-timing models, IEEE Transactions on Very Large Scale Integration (VLSI) Systems, vol.23, issue.7, pp.1254-1267, 2014.

M. Dorier, O. Yildiz, S. Ibrahim, A. Orgerie, and G. Antoniu, On the energy footprint of i/o management in exascale hpc systems, Future Generation Computer Systems, vol.62, pp.17-28, 2016.
URL : https://hal.archives-ouvertes.fr/hal-01330735

K. Tang, X. He, S. Gupta, S. S. Vazhkudai, and D. Tiwari, Exploring the optimal platform configuration for power-constrained hpc workflows, 27th International Conference on Computer Communication and Networks (ICCCN), pp.1-9, 2018.

R. Ferreira-da-silva, W. Chen, G. Juve, K. Vahi, and E. Deelman, Community resources for enabling and evaluating research in distributed scientific workflows, 10th IEEE International Conference on e-Science (eScience'14), pp.177-184, 2014.