[Abedi, A. and Brecht, T. (2017). Conducting repeatable experiments in highly variable cloud computing environments, Proceedings of the 8th ACM/SPEC on International Conference on Performance Engineering, ICPE’17, L’Aquila, Italy, pp. 287–292.10.1145/3030207.3030229]Search in Google Scholar
[Al-Dhuraibi, Y., Paraiso, F., Djarallah, N. and Merle, P. (2017). Autonomic vertical elasticity of docker containers with elasticdocker, 2017 IEEE 10th International Conference on Cloud Computing (CLOUD), Honolulu, HI, USA, pp. 472–479.10.1109/CLOUD.2017.67]Search in Google Scholar
[Bauer, A., Herbst, N. and Kounev, S. (2017). Design and evaluation of a proactive, application-aware auto-scaler: Tutorial paper, Proceedings of the 8th ACM/SPEC on International Conference on Performance Engineering, ICPE’17, L’Aquila, Italy, pp. 425–428.10.1145/3030207.3053678]Search in Google Scholar
[Bondi, A.B. (2000). Characteristics of scalability and their impact on performance, Proceedings of the 2nd International Workshop on Software and Performance, WOSP’00, Ottawa, Canada, pp. 195–203.10.1145/350391.350432]Search in Google Scholar
[Evangelidis, A., Parker, D. and Bahsoon, R. (2017). Performance modelling and verification of cloud-based auto-scaling policies, Proceedings of the 17th IEEE/ACM International Symposium on Cluster, Cloud and Grid Computing, CCGrid’17, Madrid, Spain, pp. 355–364.10.1109/CCGRID.2017.39]Search in Google Scholar
[Guo, Y., Stolyar, A. and Walid, A. (2018). Online VM auto-scaling algorithms for application hosting in a cloud, IEEE Transactions on Cloud Computing, pp. 1–1, (early access), https://ieeexplore.ieee.org/document/8351912.10.1109/TCC.2018.2830793]Search in Google Scholar
[Herbst, N.R., Kounev, S. and Reussner, R. (2013). Elasticity in cloud computing: What it is, and what it is not, Proceedings of the 10th International Conference on Autonomic Computing (ICAC 13), San Jose, CA, USA, pp. 23–27.]Search in Google Scholar
[Hwang, K., Bai, X., Shi, Y., Li, M., Chen, W.G. and Wu, Y. (2016). Cloud performance modeling with benchmark evaluation of elastic scaling strategies, IEEE Transactions on Parallel and Distributed Systems27(1): 130–143.10.1109/TPDS.2015.2398438]Search in Google Scholar
[Ilyushkin, A., Ali-Eldin, A., Herbst, N., Papadopoulos, A.V., Ghit, B., Epema, D. and Iosup, A. (2017). An experimental performance evaluation of autoscaling policies for complex workflows, Proceedings of the 8th ACM/SPEC on International Conference on Performance Engineering, ICPE’17, L’Aquila, Italy, pp. 75–86.10.1145/3030207.3030214]Search in Google Scholar
[Jakobik, A., Grzonka, D. and Kolodziej, J. (2017). Security supportive energy aware scheduling and scaling for cloud environments, European Conference on Modelling and Simulation, ECMS 2017, Budapest, Hungary, pp. 583–590.10.7148/2017-0583]Search in Google Scholar
[Jindal, A., Podolskiy, V. and Gerndt, M. (2017). Multilayered cloud applications autoscaling performance estimation, 2017 IEEE 7th International Symposium on Cloud and Service Computing (SC2), Kanazawa, Japan, pp. 24–31.10.1109/SC2.2017.12]Search in Google Scholar
[Versluis, L. and Neacsu, A.I. (2017). A trace-based performance study of autoscaling workloads of workflows in datacenters, Technical Report 1711.08993v1, Vrije Universiteit Amsterdam, Amsterdam.]Search in Google Scholar
[Liu, Y., Rameshan, N., Monte, E., Vlassov, V. and Navarro, L. (2015). Prorenata: Proactive and reactive tuning to scale a distributed storage system, 2015 15th IEEE/ACM International Symposium on Cluster, Cloud and Grid Computing, Shenzen, China, pp. 453–464.10.1109/CCGrid.2015.26]Search in Google Scholar
[Lloyd, W., Ramesh, S., Chinthalapati, S., Ly, L. and Pallickara, S. (2018). Serverless computing: An investigation of factors influencing microservice performance, 2018 IEEE International Conference on Cloud Engineering (IC2E), Orlando, FL, USA, pp. 159–169.10.1109/IC2E.2018.00039]Search in Google Scholar
[Moore, L.R., Bean, K. and Ellahi, T. (2013). Transforming reactive auto-scaling into proactive auto-scaling, Proceedings of the 3rd International Workshop on Cloud Data and Platforms, CloudDP’13, Prague, Czech Republic, pp. 7–12.10.1145/2460756.2460758]Search in Google Scholar
[Nikravesh, A.Y., Ajila, S.A. and Lung, C.-H. (2015). Towards an autonomic auto-scaling prediction system for cloud resource provisioning, Proceedings of the 10th International Symposium on Software Engineering for Adaptive and Self-Managing Systems, SEAMS’15, Florence, Italy, pp. 35–45.10.1109/SEAMS.2015.22]Search in Google Scholar
[Papadopoulos, A.V., Ali-Eldin, A., Arzen, K.-E., Tordsson, J. and Elmroth, E. (2016). PEAS: A performance evaluation framework for auto-scaling strategies in cloud applications, ACM Transactions on Modeling and Performance Evaluation of Computing Systems1(4): 15:1–15:31.10.1145/2930659]Search in Google Scholar
[Roy, N., Dubey, A. and Gokhale, A. (2011). Efficient autoscaling in the cloud using predictive models for workload forecasting, 2011 IEEE 4th International Conference on Cloud Computing, Washington, DC, USA, pp. 500–507.10.1109/CLOUD.2011.42]Search in Google Scholar
[Sotomayor, B., Montero, R.S., Llorente, I.M. and Foster, I. (2009a). Resource leasing and the art of suspending virtual machines, Proceedings of the 2009 11th IEEE International Conference on High Performance Computing and Communications, HPCC’09, Seoul, South Korea, pp. 59–68.10.1109/HPCC.2009.17]Search in Google Scholar
[Sotomayor, B., Montero, R.S., Llorente, I.M. and Foster, I. (2009b). Virtual infrastructure management in private and hybrid clouds, IEEE Internet Computing13(5): 14–22.10.1109/MIC.2009.119]Search in Google Scholar