Versions Compared

Key

  • This line was added.
  • This line was removed.
  • Formatting was changed.
Comment: Added Gerrit Repository details

AI/ML for NFV Usecases

Image Added

6 is the number of Thoth, and Ibis/Beak-of-Ibis is one of the symbols  of Thoth - The above symbol captures both.

Introduction

AI has the potential in creating value in terms of enhanced workload availability and improved performance and efficiency for NFV use cases. This work aims to build machine-Learning models and Tools that can be used by Telcos (typically by the operations team in Telcos). Each of these models aims to solve a single problem within a particular category. For example, the first category we have chosen is Failure prediction, and we aim to create 6 models - failure prediction of VMs. Containers, Nodes,  Network-Links, Applications, and middleware services. This project also aims to define a set of data models for each of the decision-making problems, that will help both providers and consumers of the data to collaborate. 

Presentations



12-November-2021

Updated: 19-November

View file
nameAboutThoth.pptx
height250

10-July-2021

View file
nameThoth-10July2021.pptx
height250

Approach

Decision-Driven Data Analytics. 

https://mitsloan.mit.edu/ideas-made-to-matter/decisions-not-data-should-drive-analytics-programs

PTL

Rohit Singh Rathaur 

Committers

Introduction

...

Sridhar K. N. Rao

...

Sridhar Rao 

Key-Info (info.yaml)

Intern

Accepted: Rohit Singh Rathaur

Code Block
languageyml
---
project: 'Thoth'
project_creation_date: '01 June 2021'
project_category: 'Infrastructure' # One of: Deployment, Integration & Testing, Infrastructure
lifecycle_state: 'Incubation' # One of: Incubation, Mature, Integration, Archived
project_lead: &anuket_PROJECTNAME_ptl
    name: 'Rohit Singh Rathaur'
    email: 'rohitrathore.imh55@gmail.com'
    company: 'Birla Institute of Technology, Mesra'
    id: 'TeAmp0is0N' # Linux Foundation ID
    timezone: 'IST ((GMT+5:30)'
primary_contact: *anuket_PROJECTNAME_ptl
issue_tracking:
    type: 'jira'
    url: 'https://jira.anuket.io/projects/thoth'
    key: 'thoth'
mailing_list:
    type: 'groups.io'
    url: 'anuket-tech-discuss@lists.anuket.io'
    tag: 'thoth'
realtime_discussion: # Fields may be blank if no realtime discussions
    type: 'slack'
    server: 'anuketworkspace.slack.com'
    channel: '#thoth'
meetings: # Fields may be blank if no standing meetings
    - type: 'zoom'
      agenda: 'https://wiki.anuket.io/display/HOME/Thoth-Meeting+Minutes' # eg: 'https://wiki.anuket.io/display/HOME'
      url: 'https://zoom.us/j/96163911066' # eg: 'https://global.gotomeeting.com/join/819733085'
      repeats: 'bi-weekly' # ex: weekly, monthly, bi-weekly
      time: '13:00 UTC' # ex: '16:00 UTC'
repositories:
    - 'thoth' # ex: myproject
committers:
    - name: 'Sridhar K. N. Rao' # repeat all fields for each committer
      email: 'srao@linuxfoundation.org'
      company: 'The Linux Foundation'
      id: 'sridharkn'
tsc:
    # yamllint disable rule:line-length
    approval: 'https://wiki.anuket.io/display/HOME/2021-08-03+TSC+Agenda+and+Minutes' # ex: https://wiki.anuket.io/display/HOME/2021-01-12+TSC+Agenda+and+Minutes
    changes:
        - type: ''
          link: ''
          # yamllint enable rule:line-length


Contributors

  1. Rohit Singh Rathaur
  2. Kanak Raj 
  3. Shubhank Saxena 
  4. Akanksha Singh
  5. Jahanvi Ojha


Meeting Details

Topic: AI/ML for NFV
Time: 13:00 Universal Time UTC

Day: Every week on Friday
Zoom Link: https://zoom.us/j/96163911066

Meeting ID: 961 6391 1066
Find your local number: https://zoom.us/u/acEvZCMvjT


Gerrit Details


...

Contributions


Sl. No.ContributorContributionDurationCertificate of Appreciation
/
OR Contribution
1Girish L


Survey of:

  1. Existing works on AI/ML in Networking - works related to NFV - problems, ML-Techniques, Data, etc.
  2. NFV Problems - Event Correlation, VNF Placement, Anomaly Detection, VNF Failure Prediction, and Synthetic Data Generation.
  3. OSS Projects for AI/ML that can be (re)used
1 Month

...

Sl. No.Activity by Intern/Researcher(s)                                                              WeekComment / Support from Advisor (s)               1

Understand the state of art - Publications and OS projects

Analyze the Gaps.

Create 1-Page report based on the analysis.

Identify for the problems in NFV for which the techniques are still not good enough.

1.5

Share the State of art survey.

Provide initial gap-analysis.

2

Deploy the ML Framework (Tentative: LFN Acumos).

  • Document the usage workflow
  • Try any existing model.
1.5

Provide access to server(s).

Intel Pod?

3

Collect, analyze and document implementation of 3 existing models for NFV.

Collect the data.

1Provide the 3 models to use.4

Deploy the models on the framework (2)

Collect the data (contd).

1None.5Test and optimize the models - If possible.2Suggestion for optimization approaches.6Study ML technique for Synthetic time-series data generation (STSDG)1Suggest the right technique7Implement the technique for STSDG28Test and optimize STSDG19Knowledge Transfer, Handoff (Buffer)1
PhaseTime130 November 2021

Phase-1 Goals 

  1. Running ML-Framework with at least 3 existing models for NFV.
  2. Generate Synthetic Data using ML.
  3. Identify 3 problems for which ML can be applied in NFV - For which no acceptable models exist.
  4. Identify the ML technique that can be used for these problems.

Phase-1 Weekly Activity

12 weeks, if the Intern is working Full-time.