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This page is to track progress in updating the original 2021 white paper "Intelligent Networking, AI and Machine Learning." The goal is to have this complete and ready for publishing at ONE Summit 2024 (April 29 - May 1).


2021 VERSION FOR COMMENTS/SUGGESTIONS: https://docs.google.com/document/d/1RqTZXOXO3bq0Y7ErGitk090CZZ4NBDgM/edit?usp=sharing&ouid=116649357309688115842&rtpof=true&sd=true 


[ For Discussion & iteration baed on 2021 version -  red text below are notes for V2]

White Paper Assumptions and Overall Objectives:

  • Paper Overview: Based on the findings of a LFN sponsored survey of over 60 operators and vendors in the telecom segment, demonstrate the current state of adoption of the AI/ML technology for operators. 

2024: Leverage AI Board survey from late 2023, focus on large models & Gen AI. Discuss how emerging AI tools like LLMs could be applied to network design, build and operation.

  • Audience:  Technical and strategic leaders in the Telecom Industry interested in understanding the role that intelligent tools, AI and machine learning can have in support of their network infrastructure, customers and operations. 
  • 7-10 Pages in length total – possibly might have some separate related papers on specific use cases and other information that does not fit into this one
  • Purpose of White Paper is to share information about EUAG member companies’ approaches to network intelligence 

2024: Purpose is to show LFN's leadership in LLM/AI space by outlining specific plans and areas where the community will collaborate in the open. Specific examples are a plus, as well as planned PoCs

  • Make recommendations on where Open Source communities should be focusing their resources to further the intelligent networking efforts.
  • Call to action. Market and executive orientation.  Purpose is to get people excited about Intelligent Networking as emerging technology and its importance, yet have an understanding of where the gaps are in both the technology and its adoption.. Bullet list of gaps.  2-3 bullet items.  Identify missing Open-Source tools and potential projects.

2024: Promote the LFN AI Task Force; identify areas of momentum and gaps; solicit more contributors to open source efforts driven by LFN; Encourage existing and future LFN members to bring more AI work to the open source communities domain; Create some FOMO by positioning LFN as the collaboration hub for AI.

  • Do not declare or propose a definite solution just share EUAG Operator community point of view


Work stream Schedule

Week ofActivityOwner(s) + Notes
Feb. 5Set up wiki page, identify Tiger Team, solicit general input on direction
Feb. 12Determine section & outline

Feb. 19

Assign section owners + begin drafting
Feb. 26Continue drafting (content + diagrams)

March 4

Continue drafting (content + diagrams)
March 11Begin review process
March 18Continue reviews + edits (content + diagrams)
March 25Finalize content 
April 1Send final draft to Art Dept. for layout
April 8Review + edits
April 15Review + edits
April 22Final for publishing; share with press/analysts early under embargo

White Paper Tiger Team

Name Contact 
Lingli Deng
Muddasar Ahmed
Jason Hunt
LJ Illuzzi (staff)LJ Illuzzi 
Ranny Haiby (staff)Ranny Haiby 
Jill Lovato (staff)Jill Lovato 
Hui DengHui Deng 
ChangJin WangChangJin Wang 


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