S. Mubeen, P. Nikolaidis, A. Didic, H. Pei-breivold, K. Sandstrom et al., Delay mitigation in offloaded cloud controllers in industrial IoT, IEEE Access, vol.5, pp.4418-4430, 2017.

M. Dabbagh, B. Hamdaoui, M. Guizani, and A. Rayes, Energy-efficient resource allocation and provisioning framework for cloud data centers, IEEE Trans. Netw. Service Manage, vol.12, issue.3, pp.377-391, 2015.

R. Milocco, P. Minet, E. Renault, and S. Boumerdassi, Evaluating the upper bound of energy cost saving by proactive data center management, IEEE Trans. Netw. Service Manage, 2020.
URL : https://hal.archives-ouvertes.fr/hal-02585768

C. Delimitrou and C. Kozyrakis, Quasar: Resource-efficient and QoSaware cluster management, Proc. 19th Int. Conf. Architectural Support Program. Lang. Operating Syst. (ASPLOS), pp.127-144, 2014.

T. Abdelzaher, Y. Diao, J. L. Hellerstein, C. Lu, and X. Zhu, Introduction to control theory and its application to computing systems, 2008.

P. Marti, C. Lin, S. A. Brandt, M. Velasco, and J. M. Fuertes, Optimal state feedback based resource allocation for resource-constrained control tasks, Proc. 25th IEEE Int. Real-Time Syst. Symp, pp.161-172, 2014.

W. Xu, X. Zhu, S. Singhal, and Z. Wang, Predictive control for dynamic resource allocation in enterprise data centers, Proc. IEEE/IFIP Netw. Oper. Manage. Symp. (NOMS), pp.115-126, 2006.

K. J. ?ström and B. Wittenmark, Computer-Controlled Systems, 1997.

E. F. Camacho and C. Bordons, Model Predictive Control, 2007.

Q. Fang, J. Wang, H. Zhu, and Q. Gong, Using model predictive control in data centers for dynamic server provisioning, Proc. 19th World Congr. Int. Fed. Autom. Control (IFAC), pp.24-29, 2014.

P. Skarin, J. Eker, M. Kihl, and K. Årzén, An assisting model predictive controller approach to control over the cloud, 2019.

Q. Zhang, M. F. Zhani, S. Zhang, Q. Zhu, R. Boutaba et al., Dynamic energy-aware capacity provisioning for cloud computing environments, Proc. 9th Int. Conf. Autonomic Comput. (ICAC), pp.145-154, 2012.

Q. Zhang, M. F. Zhani, R. Boutaba, and J. L. Hellerstein, Dynamic heterogeneity-aware resource provisioning in the cloud, IEEE Trans. Cloud Comput, vol.2, issue.1, pp.14-28, 2014.

C. Reiss, J. Wilkes, and J. L. Hellerstein, Google cluster-usage traces: Format + schema, 2011.

C. Reiss, A. Tumanov, G. R. Ganger, R. H. Katz, and M. A. Kozuch, Heterogeneity and dynamicity of clouds at scale: Google trace analysis, Proc. 3rd ACM Symp. Cloud Comput. (SoCC), pp.1-13, 2012.

J. Wilkes, More Google Cluster Data, Google Research Blog, 2011.

S. Di, D. Kondo, and W. Cirne, Host load prediction in a Google compute cloud with a Bayesian model, Proc. Int. Conf. High Perform. Comput., Netw., Storage Anal. Salt Lake City, pp.1-11, 2012.
URL : https://hal.archives-ouvertes.fr/hal-00788002

O. Beaumont, L. Eyraud-dubois, and J. Lorenzo-del-castillo, Analyzing real cluster data for formulating allocation algorithms in cloud platforms,'' in Proc, IEEE 26th Int. Symp. Comput. Archit. High Perform. Comput, pp.302-309, 2014.

M. Alam, K. A. Shakil, and S. Sethi, Analysis and clustering of workload in Google cluster trace based on resource usage, 2015.

P. Minet, E. Renault, I. Khoufi, and S. Boumerdassi, Analyzing traces from a Google data center, Proc. 14th Int. Wireless Commun. Mobile Comput. Conf. (IWCMC), pp.1167-1172, 2018.
URL : https://hal.archives-ouvertes.fr/hal-01870216

F. Chen, J. Grundy, Y. Yang, J. Schneider, and Q. He, Experimental analysis of task-based energy consumption in cloud computing systems, Proc. ACM/SPEC Int. Conf. Int. Conf. Perform. Eng. (ICPE), pp.295-306, 2013.

P. Xiao, Z. Hu, D. Liu, G. Yan, and X. Qu, Virtual machine power measuring technique with bounded error in cloud environments, J. Netw. Comput. Appl, vol.36, issue.2, pp.818-828, 2013.

A. Papoulis, Probability, Random Variables and Stochastic Process, 1965.

P. A. Apostolopoulos, E. E. Tsiropoulou, and S. Papavassiliou, Gametheoretic learning-based QoS satisfaction in autonomous mobile edge computing, Proc. Global Inf. Infrastruct. Netw. Symp. (GIIS), pp.1-5, 2018.

S. Ranadheera, S. Maghsudi, and E. Hossain, Mobile edge computation offloading using game theory and reinforcement learning, 2017.

J. Bi, H. Yuan, W. Tan, M. Zhou, Y. Fan et al., Applicationaware dynamic fine-grained resource provisioning in a virtualized cloud data center, IEEE Trans. Autom. Sci. Eng, vol.14, issue.2, pp.1172-1184, 2017.

W. Li, Y. Xia, M. Zhou, X. Sun, and Q. Zhu, Fluctuation-aware and predictive workflow scheduling in cost-effective infrastructure-as-a-service clouds, IEEE Access, vol.6, pp.61488-61502, 2018.

H. Yuan, J. Bi, W. Tan, M. Zhou, B. H. Li et al., TTSA: An effective scheduling approach for delay bounded tasks in hybrid clouds, IEEE Trans. Cybern, vol.47, issue.11, pp.3658-3668, 2017.

B. Hu, Z. Cao, and M. Zhou, Scheduling real-time parallel applications in cloud to minimize energy consumption, IEEE Trans. Cloud Comput, 2019.