A comprehensive survey on machine learning for networking: evolution, applications and research opportunities

@article{Boutaba2018ACS,
  title={A comprehensive survey on machine learning for networking: evolution, applications and research opportunities},
  author={Raouf Boutaba and Mohammad Ali Salahuddin and Noura Limam and Sara Ayoubi and Nashid Shahriar and Felipe Estrada Solano and Oscar Mauricio Caicedo Rendon},
  journal={Journal of Internet Services and Applications},
  year={2018},
  volume={9},
  pages={1-99}
}
  • Raouf Boutaba, Mohammad Ali Salahuddin, +4 authors Oscar Mauricio Caicedo Rendon
  • Published in
    Journal of Internet Services…
    2018
  • Computer Science
  • Machine Learning (ML) has been enjoying an unprecedented surge in applications that solve problems and enable automation in diverse domains. Primarily, this is due to the explosion in the availability of data, significant improvements in ML techniques, and advancement in computing capabilities. Undoubtedly, ML has been applied to various mundane and complex problems arising in network operation and management. There are various surveys on ML for specific areas in networking or for specific… CONTINUE READING

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