P. , Inmon corporation's sflow: A method for monitoring traffic in switched and routed networks, Tech. Rep, 2001.

, Open vSwitch -Production Quality, Multilayer Open Virtual Switch

A. Roy, H. Zeng, J. Bagga, G. Porter, and A. C. Snoeren, Inside the social network's (datacenter) network, Computer Communication Review, vol.45, issue.5, 2015.

K. Gogunska, C. Barakat, G. Urvoy-keller, and D. Lopez-pacheco, On the cost of measuring traffic in a virtualized environment, IEEE CloudNet, 2018.
URL : https://hal.archives-ouvertes.fr/hal-01870293

P. Tsai, C. Tsai, C. Hsu, and C. Yang, Network monitoring in software-defined networking: A review, IEEE Systems Journal, issue.99, 2018.

A. Shatnawi, M. Orrù, M. Mobilio, O. Riganelli, and L. Mariani, Cloudhealth: a model-driven approach to watch the health of cloud services, IEEE/ACM 1st international workshop on Software Health (SoHeal), 2018.

D. R. Teixeira, J. M. Silva, and S. R. Lima, Deploying time-based sampling techniques in software-defined networking, IEEE SoftCOM, 2018.

J. Suh, T. T. Kwon, C. Dixon, W. Felter, and J. Carter, Opensample: A low-latency, sampling-based measurement platform for commodity sdn, IEEE ICDCS, 2014.

A. Mestres, A. Rodriguez-natal, J. Carner, P. Barlet-ros, and A. , Knowledge-defined networking, ACM SIGCOMM Computer Communication Review, 2017.

A. Gulenko, M. Wallschläger, F. Schmidt, O. Kao, and F. Liu, Evaluating machine learning algorithms for anomaly detection in clouds, IEEE Big Data, 2016.

C. Sauvanaud, K. Lazri, M. Kaâniche, and K. Kanoun, Towards blackbox anomaly detection in virtual network functions, IEEE/IFIP DSN-W, 2016.
URL : https://hal.archives-ouvertes.fr/hal-01419016

Z. M. Fadlullah, F. Tang, B. Mao, N. Kato, O. Akashi et al., State-of-the-art deep learning: Evolving machine intelligence toward tomorrows intelligent network traffic control systems, IEEE Communications Surveys & Tutorials, vol.19, issue.4, 2017.

B. Li, M. H. Gunes, G. Bebis, and J. Springer, A supervised machine learning approach to classify host roles on line using sflow, Workshop on High performance and programmable networking, 2013.

S. R. Chowdhury, M. F. Bari, R. Ahmed, and R. Boutaba, Payless: A low cost network monitoring framework for software defined networks, IEEE NOMS, 2014.

O. Alipourfard, M. Moshref, and Y. Zhou, A comparison of performance and accuracy of measurement algorithms in software, Symposium on SDN Research, 2018.

V. Mann, A. Vishnoi, and S. Bidkar, Living on the edge: Monitoring network flows at the edge in cloud data centers, IEEE COMSNETS, 2013.

F. Pedregosa, G. Varoquaux, A. Gramfort, V. Michel, and T. , Scikit-learn: Machine learning in Python, Journal of Machine Learning Research, 2011.
URL : https://hal.archives-ouvertes.fr/hal-00650905

, The ultimate speed test tool for TCP, UDP and SCTP

P. Domingos and G. Hulten, Mining high-speed data streams, KDD, vol.2, 2000.

J. Montiel, J. Read, A. Bifet, and T. Abdessalem, Scikit-multiflow: a multi-output streaming framework, The Journal of Machine Learning Research, vol.19, issue.1, 2018.
URL : https://hal.archives-ouvertes.fr/hal-02287993