, Cloudnative and verticals' services, 5G-PPP Software Network Working Group, 2019.

A. Mimidis-kentis, J. Soler, P. Veitch, A. Broadbent, M. Mobilio et al., The next generation platform as a service: Composition and deployment of platforms and services, Future Internet, vol.11, issue.5, p.119, 2019.

B. Steven-van-rossem, L. Sayadi, A. Roullet, M. Mimidis, P. Paolino et al., A vision for the next generation platform-as-a-service, IEEE 5G World Forum (5GWF), pp.14-19, 2018.

S. Van-rossem, W. Tavernier, D. Colle, M. Pickavet, and P. Demeester, Profile-based resource allocation for virtualized network functions, IEEE Transactions on Network and Service Management, pp.1-1, 2019.

T. Wood, L. Cherkasova, K. Ozonat, and P. Shenoy, Profiling and modeling resource usage of virtualized applications, ACM/IFIP/USENIX International Conference on

, Distributed Systems Platforms and Open Distributed Processing, pp.366-387, 2008.

V. Sciancalepore, X. Faqir-zarrar-yousaf, and . Costa-perez, z-torch: An automated nfv orchestration and monitoring solution, IEEE Transactions on Network and Service Management, vol.15, issue.4, pp.1292-1306, 2018.

L. Cao, P. Sharma, S. Fahmy, and V. Saxena, Nfv-vital: A framework for characterizing the performance of virtual network functions, 2015 IEEE Conference on Network Function Virtualization and Software Defined Network (NFV-SDN), pp.93-99, 2015.

M. Khan, S. Bastani, J. Taheri, A. Kassler, and S. Deng, Nfv-inspector: A systematic approach to profile and analyze virtual network functions, IEEE 7th International Conference on Cloud Networking (CloudNet), pp.1-7, 2018.

M. Peuster and H. Karl, Profile your chains, not functions: Automated network service profiling in devops environments, Network Function Virtualization and Software Defined Networks (NFV-SDN), 2017.

W. Steven-van-rossem, M. Tavernier, D. Peuster, M. Colle, P. Pickavet et al., Monitoring and debugging using an sdk for nfv-powered telecom applications, IEEE NFV-SDN2016, the IEEE Conference on Network Function Virtualization and Software Defined Networks, pp.1-5, 2016.

C. Raphael-vicente-rosa, C. E. Bertoldo, and . Rothenberg, Take your vnf to the gym: A testing framework for automated nfv performance benchmarking, IEEE Communications Magazine, vol.55, issue.9, pp.110-117, 2017.

J. Nam, J. Seo, and S. Shin, Probius: Automated approach for vnf and service chain analysis in software-defined nfv, Proceedings of the Symposium on SDN Research, p.14, 2018.

J. Omana-iglesias, J. Arjona-aroca, V. Hilt, and D. Lugones, Orca: An orchestration automata for configuring vnfs, Proceedings of the 18th ACM/IFIP/USENIX Middleware Conference, pp.81-94, 2017.

D. Duplyakin, J. Brown, and R. Ricci, Active learning in performance analysis, IEEE International Conference on Cluster Computing (CLUS-TER), pp.182-191, 2016.

N. Jayaraman-j-thiagarajan, R. Jain, A. Anirudh, R. Gimenez, A. Sridhar et al., Bootstrapping parameter space exploration for fast tuning, Proceedings of the 2018 International Conference on Supercomputing, pp.385-395, 2018.

K. Crombecq, D. Gorissen, D. Deschrijver, and T. Dhaene, A novel hybrid sequential design strategy for global surrogate modeling of computer experiments, SIAM Journal on Scientific Computing, vol.33, issue.4, pp.1948-1974, 2011.

I. Giannakopoulos and D. Tsoumakos, Panic: modeling application performance over virtualized resources, Cloud Engineering (IC2E), 2015 IEEE International Conference on, pp.213-218, 2015.

M. Peuster and H. Karl, Understand your chains and keep your deadlines: Introducing time-constrained profiling for nfv, 14th International Conference on Network and Service Management (CNSM), pp.240-246, 2018.

I. Giannakopoulos, D. Tsoumakos, and N. Koziris, A decision tree based approach towards adaptive modeling of big data applications, 2017 IEEE International Conference on Big Data (Big Data), pp.163-172, 2017.

K. Dunn, Process improvement using data, 2019.

, ETSI. Network functions virtualisation (nfv): Architectural framework, pp.2020-2022, 2014.

G. Sameer, W. Kulkarni, J. Zhang, S. Hwang, . Rajagopalan et al., Nfvnice: Dynamic backpressure and scheduling for nfv service chains, Proceedings of the Conference of the ACM Special Interest Group on Data Communication, pp.71-84, 2017.

H. Parmar and M. Thornburgh, Real-time messaging protocol (rtmp) specification. Adobe specifications, 2012.

R. Pantos and . May, Http live streaming, rfc 8216, 2017.

F. Pedregosa, G. Varoquaux, A. Gramfort, V. Michel, B. Thirion et al., Scikit-learn: Machine learning in python. the, Journal of machine Learning research, vol.12, pp.2825-2830, 2011.
URL : https://hal.archives-ouvertes.fr/hal-00650905

J. Alex, B. Smola, and . Schölkopf, A tutorial on support vector regression, Statistics and computing, vol.14, issue.3, pp.199-222, 2004.

K. I. Christopher, C. E. Williams, and . Rasmussen, Gaussian processes for machine learning, vol.2, 2006.

R. Pfitscher, A. S. Jacobs, L. Zembruzki, R. Luis, E. Santos et al., Guiltiness: A practical approach for quantifying virtual network functions performance, Computer Networks, vol.161, pp.14-31, 2019.

J. Khalid, E. Rozner, W. Felter, C. Xu, K. Rajamani et al., Iron: Isolating network-based {CPU} in container environments, 15th {USENIX} Symposium on Networked Systems Design and Implementation ({NSDI} 18), pp.313-328, 2018.

A. Uta, A. Custura, D. Duplyakin, I. Jimenez, J. Rellermeyer et al., Is big data performance reproducible in modern cloud networks?, 17th USENIX Symposium on Networked Systems Design and Implementation (NSDI 20), pp.513-527, 2020.

P. Xiong, C. Pu, X. Zhu, and R. Griffith, vperfguard: an automated modeldriven framework for application performance diagnosis in consolidated cloud environments, Proceedings of the 4th ACM/SPEC International Conference on Performance Engineering, pp.271-282, 2013.

Y. Gan, Y. Zhang, K. Hu, D. Cheng, Y. He et al., Seer: Leveraging big data to navigate the complexity of performance debugging in cloud microservices, Proceedings of the Twenty-Fourth International Conference on Architectural Support for Programming Languages and Operating Systems, pp.19-33, 2019.

J. Grohmann, K. Patrick, J. O. Nicholson, S. Iglesias, D. Kounev et al., Monitorless: Predicting performance degradation in cloud applications with machine learning, Proceedings of the 20th International Middleware Conference, pp.149-162, 2019.

S. Van-rossem, He started a PhD with the IDLab research group of Ghent University in 2015. His research is situated in the field of Software-Defined Networking and Network Function Virtualization, focusing on scalability and performance profiling of network services, Electrical Engineering in 2010 from K.U. Leuven

, Wouter Tavernier received a M.S. in computer science in 2002, and a Ph.D. degree in computer science engineering in 2012, both from Ghent University. He joined the IDLab, imec research group of Ghent University in 2006 to research future Internet topics. His research focus is on software-defined networking

, Sc. degree in electrotechnical engineering in 1997 from the same university. He is group leader in the imec Software and Applications business unit. He is co-responsible for the research cluster on network modelling, design and evaluation (NetMoDeL)

, Mario Pickavet is professor at Ghent University since 2000 where he is teaching courses on discrete mathematics, broadband networks and network modelling

, Piet Demeester is a professor at Ghent University and director of IDLab

, IDLab's research activities include distributed intelligence in IoT, machine-learning and datamining, semantic intelligence, cloud and big data infrastructures, fixed and wireless networking, electromagnetics and highfrequency circuit design