T. C. Chieu, A. Mohindra, A. A. Karve, and A. Segal, Dynamic scaling of web applications in a virtualized cloud computing environment, Proc. IEEE ICEBE, 2009.

H. Fernandez, G. Pierre, and T. Kielmann, Autoscaling web applications in heterogeneous cloud infrastructures, Proc. IEEE IC2E, 2014.
URL : https://hal.archives-ouvertes.fr/hal-00937944

A. Ali-eldin, O. Seleznjev, S. Sjöstedt-de-luna, J. Tordsson, and E. Elmroth, Measuring cloud workload burstiness, Proc. IEEE UCC, 2014.

A. Bauer, N. Herbst, S. Spinner, A. Ali-eldin, and S. Kounev, Chameleon: A hybrid, proactive auto-scaling mechanism on a level-playing field, IEEE Trans. Parallel and Distributed Systems, vol.30, issue.4, 2018.

W. Iqbal, M. N. Dailey, D. Carrera, and P. Janeceka, Adaptive resource provisioning for read intensive multi-tier applications in the cloud, Elsevier Future Generation Computer Systems, vol.27, issue.6, 2011.

B. Urgaonkar, P. Shenoy, A. Chandra, and P. Goyal, Dynamic provisioning of multi-tier internet applications, Proc. IEEE ICAC, 2005.

N. Herbst, R. Krebs, G. Oikonomou, G. Kousiouris, A. Evangelinou et al., Ready for rain? A view from SPEC research on the future of cloud metrics, SPEC RG Cloud Working Group, 2016.

G. Cloud-platform, An update on container support on google cloud platform, 2014.

. Kubernetes, Borg: The predecessor to Kubernetes, 2015.

C. Qu, R. N. Calheiros, and R. Buyya, Auto-scaling web applications in clouds: A taxonomy and survey, ACM Computing Surveys, vol.51, issue.4, 2018.

N. Roy, A. Dubey, and A. Gokhale, Efficient autoscaling in the cloud using predictive models for workload forecasting, Proc. IEEE CloudCom, 2011.

A. Gandhi, P. Dube, A. Karve, A. Kochut, and L. Zhang, Adaptive, model-driven autoscaling for cloud applications, Proc. ICAC, 2014.

Y. Al-dhuraibi, F. Paraiso, N. Djarallah, and P. Merle, Elasticity in cloud computing: State of the art and research challenges, IEEE Transactions on Services Computing, vol.11, issue.2, 2017.
URL : https://hal.archives-ouvertes.fr/hal-01529654

A. Ilyushkin, A. Ali-eldin, N. Herbst, A. Bauer, A. V. Papadopoulos et al., An experimental performance evaluation of autoscalers for complex workflows, ACM Transactions on Modeling and Performance Evaluation of Computing Systems, vol.3, issue.2, 2018.

L. Versluis, M. Neacsu, and A. Iosup, A trace-based performance study of autoscaling workloads of workflows in datacenters, Proc. IEEE/ACM CCGRID, 2018.

A. Bauer, V. Lesch, L. Versluis, A. Ilyushkin, N. Herbst et al., Chamulteon: Coordinated auto-scaling of micro-services, Proc. IEEE ICDCS, 2019.

J. Kistowski, S. Eismann, N. Schmitt, A. Bauer, J. Grohmann et al., TeaStore: A micro-service reference application for benchmarking, modeling and resource management research, Proc. IEEE MAS-COTS, 2018.

Y. M. Ramirez, V. Podolskiy, and M. Gerndt, Capacitydriven scaling schedules derivation for coordinated elasticity of containers and virtual machines, Proc. IEEE ICAC, 2019.

V. Podolskiy, A. Jindal, and M. Gerndt, IaaS reactive autoscaling performance challenges, Proc. IEEE CLOUD, 2018.

C. Reiss, A. Tumanov, G. R. Ganger, R. H. Katz, and M. A. Kozuch, Towards understanding heterogeneous clouds at scale: Google trace analysis, Intel Science and Technology Center for Cloud Computing, 2012.

Y. Chen, A. S. Ganapathi, R. Griffith, and R. H. Katz, Analysis and lessons from a publicly available Google cluster trace, 2010.

Z. Liu and S. Cho, Characterizing machines and workloads on a Google cluster, Proc. IEEE ICPP Workshops, 2012.