L. Bertram, A. Ilkay, B. Chad, H. Dan, J. Efrat et al., Scientific workflow management and the kepler system, Concurrency and Computation: Practice and Experience, vol.18, issue.10, pp.1039-1065, 2006.

E. Deelman, D. Gannon, M. Shields, and I. Taylor, Workflows and e-science: An overview of workflow system features and capabilities, Future Generation Computer Systems, vol.25, issue.5, pp.528-540, 2009.

E. N. Alkhanak, S. P. Lee, R. Rezaei, and R. M. Parizi, Cost optimization approaches for scientific workflow scheduling in cloud and grid computing: A review, classifications, and open issues, Journal of Systems and Software, vol.113, pp.1-26, 2016.

L. F. Bittencourt and E. R. Madeira, Hcoc: a cost optimization algorithm for workflow scheduling in hybrid clouds, Journal of Internet Services and Applications, vol.2, issue.3, pp.207-227, 2011.

Y. Caniou, E. Caron, A. K. Chang, and Y. Robert, Budget-aware scheduling algorithms for scientific workflows with stochastic task weights on heterogeneous iaas cloud platforms, 2018 IEEE International Parallel and Distributed Processing Symposium Workshops (IPDPSW), pp.15-26, 2018.
URL : https://hal.archives-ouvertes.fr/hal-01808831

M. A. Rodriguez and R. Buyya, Deadline based resource provisioning and scheduling algorithm for scientific workflows on clouds, IEEE Transactions on Cloud Computing, vol.2, issue.2, pp.222-235, 2014.
DOI : 10.1109/tcc.2014.2314655

URL : http://www.cloudbus.org/papers/TCC-CloudWorkflow2014.pdf

H. Sun, R. Elghazi, A. Gainaru, G. Aupy, and P. Raghavan, Scheduling Parallel Tasks under Multiple Resources: List Scheduling vs. Pack Scheduling, 2018.
DOI : 10.1109/ipdps.2018.00029

URL : https://hal.archives-ouvertes.fr/hal-01951412

H. Topcuouglu, S. Hariri, and M. Wu, Performanceeffective and low-complexity task scheduling for heterogeneous computing, IEEE Trans. Parallel Distrib. Syst, vol.13, issue.3, pp.260-274, 2002.

J. Yu, R. Buyya, and K. Ramamohanarao, Workflow Scheduling Algorithms for Grid Computing, pp.173-214, 2008.
DOI : 10.1007/978-3-540-69277-5_7

R. Buyya, A. Beloglazov, and J. H. Abawajy, Energyefficient management of data center resources for cloud computing: A vision, architectural elements, and open challenges, CoRR, 2010.

W. Wu, W. Lin, and Z. Peng, An intelligent power consumption model for virtual machines under cpu-intensive workload in cloud environment, Soft Computing, vol.21, issue.19, pp.5755-5764, 2017.

C. Hsu and S. W. Poole, Power signature analysis of the specpower ssj2008 benchmark, (IEEE ISPASS) IEEE International Symposium on Performance Analysis of Systems and Software, pp.227-236, 2011.

H. L. Röst, G. Rosenberger, P. Navarro, L. Gillet, S. M. Miladinovi? et al., Openswath enables automated, targeted analysis of data-independent acquisition ms data, Nature Biotechnology, vol.32, p.219, 2014.

H. L. Röst, Y. Liu, G. Agostino, M. Zanella, P. Navarro et al., Tric: an automated alignment strategy for reproducible protein quantification in targeted proteomics, Nature Methods, vol.13, p.777, 2016.

L. Reiter, O. Rinner, P. Picotti, R. Hüttenhain, M. Beck et al., mprophet: automated data processing and statistical validation for largescale srm experiments, Nature Methods, vol.8, p.430, 2011.

S. Abrishami, M. Naghibzadeh, and D. H. Epema, Deadlineconstrained workflow scheduling algorithms for infrastructure as a service clouds, Future Generation Computer Systems, vol.29, issue.1, pp.158-169, 2009.

P. Padala, X. Zhu, Z. Wang, S. Singhal, and K. G. Shin, Performance evaluation of virtualization technologies for server consolidation, 2007.

S. Bharathi, A. Chervenak, E. Deelman, G. Mehta, M. H. Su et al., Characterization of scientific workflows, pp.1-10, 2008.