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AI/ML Models for NFV Usecases

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Internship Projects/Mentors


Title

AI/ML Models for NFV Usecases

Status

APPROVED

Difficulty

HIGH


Description 

This project aims to deploy and run AI/ML models for NFV-usecases. Any two of the following three problems can be considered. .

  1. VNF/CNF Placement
  2. VNF/CNF resource/performance/failure prediction

  3. Packet-Loss Classification
ProblemModelLinkComments

Prediction of VNF Resource Demands

RNN, LSTM

https://ieeexplore.ieee.org/document/8806620
VNF PlacementNeural Network Model (MLP)

https://ieeexplore.ieee.org/document/8806631

https://arxiv.org/abs/2001.07787


Additional Information

LFN Acumos: https://www.acumos.org/

TensorFlow Time Series : https://www.tensorflow.org/tutorials/structured_data/time_series

Collectd : https://collectd.org/

Learning Objectives

ML Techniques: Deep_learning.

ML model development

AI/ML for Telco Usecases.

Expected Outcome

Enhance Acumos with model for NFV/Telco Usecases.

Run Acumos with these enhancements in Anuket Testbeds.

Comprehensive report on applications of AI/ML in Networking(Comparative analysis).

Relation to LF Networking 

Will be part of Anuket.

Education Level

Undergraduate

Skills

Knowledge of ML and ML-Tools - Tensorflow.

Future plans

This work is the first step toward use of AI/ML in Telecom Networks, it can be enhanced to more useful and complex usecases.

Preferred Hours and Length of Internship

Part-Time

Mentor(s) Names and Contact Info

Sridhar K. N. Rao

Spirent Communications

sridhar.rao@spirent.com 


Volunteers

Girish L.  (PhD Student)

VTU

girishlingappa7@gmail.com

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