Delay mitigation in offloaded cloud controllers in industrial IoT, IEEE Access, vol.5, pp.4418-4430, 2017. ,
Energy-efficient resource allocation and provisioning framework for cloud data centers, IEEE Trans. Netw. Service Manage, vol.12, issue.3, pp.377-391, 2015. ,
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
Quasar: Resource-efficient and QoSaware cluster management, Proc. 19th Int. Conf. Architectural Support Program. Lang. Operating Syst. (ASPLOS), pp.127-144, 2014. ,
Introduction to control theory and its application to computing systems, 2008. ,
Optimal state feedback based resource allocation for resource-constrained control tasks, Proc. 25th IEEE Int. Real-Time Syst. Symp, pp.161-172, 2014. ,
Predictive control for dynamic resource allocation in enterprise data centers, Proc. IEEE/IFIP Netw. Oper. Manage. Symp. (NOMS), pp.115-126, 2006. ,
Computer-Controlled Systems, 1997. ,
, Model Predictive Control, 2007.
Using model predictive control in data centers for dynamic server provisioning, Proc. 19th World Congr. Int. Fed. Autom. Control (IFAC), pp.24-29, 2014. ,
An assisting model predictive controller approach to control over the cloud, 2019. ,
Dynamic energy-aware capacity provisioning for cloud computing environments, Proc. 9th Int. Conf. Autonomic Comput. (ICAC), pp.145-154, 2012. ,
Dynamic heterogeneity-aware resource provisioning in the cloud, IEEE Trans. Cloud Comput, vol.2, issue.1, pp.14-28, 2014. ,
Google cluster-usage traces: Format + schema, 2011. ,
Heterogeneity and dynamicity of clouds at scale: Google trace analysis, Proc. 3rd ACM Symp. Cloud Comput. (SoCC), pp.1-13, 2012. ,
More Google Cluster Data, Google Research Blog, 2011. ,
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
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. ,
Analysis and clustering of workload in Google cluster trace based on resource usage, 2015. ,
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
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. ,
Virtual machine power measuring technique with bounded error in cloud environments, J. Netw. Comput. Appl, vol.36, issue.2, pp.818-828, 2013. ,
Probability, Random Variables and Stochastic Process, 1965. ,
Gametheoretic learning-based QoS satisfaction in autonomous mobile edge computing, Proc. Global Inf. Infrastruct. Netw. Symp. (GIIS), pp.1-5, 2018. ,
Mobile edge computation offloading using game theory and reinforcement learning, 2017. ,
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. ,
Fluctuation-aware and predictive workflow scheduling in cost-effective infrastructure-as-a-service clouds, IEEE Access, vol.6, pp.61488-61502, 2018. ,
TTSA: An effective scheduling approach for delay bounded tasks in hybrid clouds, IEEE Trans. Cybern, vol.47, issue.11, pp.3658-3668, 2017. ,
Scheduling real-time parallel applications in cloud to minimize energy consumption, IEEE Trans. Cloud Comput, 2019. ,