S. Van-rossem and B. Sayadi, A vision for the next generation platform-as-a-service, 5G World Forum (5GWF), 2018.

S. Van-rossem, Introducing development features for virtualized network services, IEEE Communications Magazine, 2018.

, Etsi gs nfv-per 001 v1.1.1 network functions virtualisation (nfv); nfv performance & portability best practises, ETSI NFV, 2014.

V. Fang, Evaluating software switches: Hard or hopeless, Tech. Rep, 2018.

P. L. Ventre, Performance evaluation and tuning of virtual infrastructure managers for (micro) virtual network functions, Network Function Virtualization and Software Defined Networks (NFV-SDN), IEEE Conference on, pp.141-147, 2016.

N. Pitaev and M. Falkner, Multi-vnf performance characterization for virtualized network functions, Network Softwarization (NetSoft), 2017 IEEE Conference, pp.1-5, 2017.

S. G. Kulkarni, Nfvnice: Dynamic backpressure and scheduling for nfv service chains, Conference of the ACM Special Interest Group on Data Communication, pp.71-84, 2017.

G. P. Katsikas, G. Q. Maguire, and D. Kosti?, Profiling and accelerating commodity nfv service chains with scc, Journal of Systems and Software, vol.127, pp.12-27, 2017.

, Red hat enterprise linux network performance tuning guide

L. Chen, S. Patel, H. Shen, and Z. Zhou, Profiling and understanding virtualization overhead in cloud, Parallel Processing (ICPP), 2015 44th International Conference on, pp.31-40, 2015.

P. Veitch and E. Curley, Performance evaluation of cache allocation technology for nfv noisy neighbor mitigation, Network Softwarization (NetSoft), 2017 IEEE Conference, pp.1-5, 2017.

T. Duan, Separating vnf and network control for hardwareacceleration of sdn/nfv architecture, ETRI Journal, 2017.

R. Shea, A deep investigation into network performance in virtual machine based cloud environments, INFOCOM, 2014.

R. V. Rosa and C. Bertoldo, 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.

L. Cao, Nfv-vital: A framework for characterizing the performance of virtual network functions, Network Function Virtualization and Software Defined Network (NFV-SDN), pp.93-99, 2015.

M. Peuster, Understand your chains: Towards performance profile-based network service management, Fifth European Workshop on Software-Defined Networks (EWSDN), pp.7-12, 2016.

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.

M. Amiri and L. Mohammad-khanli, Survey on prediction models of applications for resources provisioning in cloud, Journal of Network and Computer Applications, vol.82, pp.93-113, 2017.

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

J. O. Iglesias, Orca: an orchestration automata for configuring vnfs, Proceedings of the 18th ACM/IFIP/USENIX Middleware Conference, pp.81-94, 2017.

S. Lange, Discrete-time modeling of nfv accelerators that exploit batched processing, INFOCOM -Conference on Computer Communications, pp.64-72, 2019.

J. Prados-garzon, Analytical modeling for virtualized network functions, ICC Workshops. IEEE, 2017.

, Tsi gs nfv 001 v1.1.1 network functions virtualisation (nfv) use cases, ETSI NFV, 2013.

L. Huang and J. Jia, Predicting execution time of computer programs using sparse polynomial regression, Advances in neural information processing systems, pp.883-891, 2010.

E. Jones, T. Oliphant, and P. Peterson, SciPy: Open source scientific tools for Python, 2001.

S. Van-rossem and W. Tavernier, Automated monitoring and detection of resource-limited nfv-based services, Network Softwarization (NetSoft), 2017 IEEE Conference, pp.1-5, 2017.

B. L. Muhammad-bello and M. Aritsugi, A transparent approach to performance analysis and comparison of infrastructure as a service providers, Computers & Electrical Engineering, 2017.

P. Leitner and J. Cito, Patterns in the chaos -a study of performance variation and predictability in public iaas clouds, ACM Transactions on Internet Technology (TOIT), vol.16, issue.3, p.15, 2016.