Model-driven & AI-Enabled Inter-Cloud Optimization Architecture - - PowerPoint PPT Presentation

model driven ai enabled inter cloud optimization
SMART_READER_LITE
LIVE PREVIEW

Model-driven & AI-Enabled Inter-Cloud Optimization Architecture - - PowerPoint PPT Presentation

Model-driven & AI-Enabled Inter-Cloud Optimization Architecture and Benefjts Ramki Krishnan Introduction What did we talk about so far? Model-driven & AI-Enabled Inter-Cloud Optjmizatjon 5G/Edge Computjng Use Cases Dilip


slide-1
SLIDE 1

Model-driven & AI-Enabled Inter-Cloud Optimization

Architecture and Benefjts Ramki Krishnan

slide-2
SLIDE 2

Introduction

  • What did we talk about so far?
  • Model-driven & AI-Enabled Inter-Cloud Optjmizatjon
  • 5G/Edge Computjng Use Cases – Dilip Krishnaswamy
  • Let us talk about the architectural requirements
slide-3
SLIDE 3

End-to-end Reference Architecture – ONAP Perspective

Discussion in Progress: Edge Automatjon Through ONAP WG (htups://wiki.onap.org/display/DW/Edge+Automatjon+through+ONAP)

*** This diagram is discussion in progress and not fjnal ***

slide-4
SLIDE 4

Architecture - What do we need? (1)

  • Centralized Resource Management/Optjmizatjon
  • 1000’s of Clouds
  • Probabilistjc Decisioning
  • Multjple Solutjon Choices – Aggregate Data for scale, Data Collectjon tjme lag etc.
  • Several Constraints, need fmexibility to easily add new constraints
  • Cost (Partner Cloud, Private Cloud etc.), Service SLA (Latency etc.)
  • Data Sources are ofuen Aggregates, examples below
  • Partner/Public Cloud -- Cloud Region & Tenant Resource (Compute/Network/Storage) Available

Capacity & Utjlizatjon; Cloud Region Energy Utjlizatjon

  • Private Cloud

– Above + Cluster Capacity/Utjlizatjon etc.

  • Policies are ofuen sofu constraints, examples below
  • Find Cloud Regions(s) with least resource/energy utjlizatjon, least cost etc.
  • Automatjon Intelligence (AI) through Machine Learning (ML)
  • Use ML (non-linear regression etc.) techniques on operatjonal data to predict the thresholds for

sofu/hard constraints

  • Update the thresholds for sofu/hard constraints in a closed-loop operatjon

Discussion in Progress: Edge Automatjon Through ONAP WG (htups://wiki.onap.org/display/DW/Edge+Automatjon+through+ONAP)

slide-5
SLIDE 5

Architecture - What do we need? (2)

  • Edge Resource Management/Optjmizatjon
  • 1-10 Clouds
  • Accurate Decisioning
  • Single Solutjon Choice
  • Data Sources are Atomics, examples below
  • Partner/Public Cloud -- Workload (VM/Container) Resource

(Compute/Network/Storage) Available Capacity & Utjlizatjon etc.

  • Private Cloud

– Above + Host Capacity/Utjlizatjon etc.

  • Inter-cloud latency, bandwidth etc.
  • Policies are ofuen hard constraints, examples below
  • Find Cloud Regions(s) with SR-IOV support
  • Automatjon Intelligence (AI) through Machine Learning (ML)
  • Same as Central Resource Management/Optjmizatjon
  • Note: For some deployments, this functjon could be combined with the central component

Discussion in Progress: Edge Automatjon Through ONAP WG (htups://wiki.onap.org/display/DW/Edge+Automatjon+through+ONAP)

slide-6
SLIDE 6

Resource Management/Optimization and Related Components

  • Designer & Developer friendly Domain-Specifjc Modelling Language for Service Placement/Scheduling Policy
  • Address Central/Edge Resource Management/Optjmizatjon Requirements
  • Masks the Mathematjcal complexity of optjmizatjon algorithms through Modelling
  • Flexibility to add Custom optjmizers especially for Edge Resource Management/Optjmizatjon
  • Drive Service Creatjon Agility for 5G, Edge Computjng etc.

Discussion in Progress: ONAP Optjmizatjon Framework (OOF) -- htups://wiki.onap.org/pages/viewpage.actjon?pageId=3247288

Flexibility to add Custom Optjmizers

Model-driven Optjmizatjon Libraries – Minizinc etc. ML Component Use Operatjonal data to predict the thresholds for sofu/hard constraints Architectural Framework

Note: This is an exemplary architectural framework/implementatjon choice

slide-7
SLIDE 7

Upcoming Talks

  • “Recent Trends in Constraint Optjmizatjon and Satjsfactjon” -- Nina Narodytska
  • “SCOR: Sofuware-defjned Constraint Optjmal Routjng platgorm for SDN” – Siamak

Layeghy

  • Model-driven Minizinc applicatjon for constrained-based Routjng