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  • Definition
    • Initial AI/ML workflow implementation for O-RAN environment. Need to interact with another project to accomplish a whole life cycle management of the AI model.
  • Project Scope
    • AI 모델 라이프 사이클 관리 ( 모델 학습 파이프라인 관리 / 학습완료된 모델 버전 관리 및 배포시스템 연동 / AI 서비스 (Application) 관리 ) , Dashboard
    • AI 모델 학습 환경 ( 데이터 추출 / Feature 관리 및 연동 / AI 모델 저장 기능 / 모델 학습 플랫폼 지원 or 모델 학습/학습 파이프라인 구동 환경 )
    • AI 모델 추론 환경 ( 모델 서빙 플랫폼 지원 or 모델 추론 서비스 구동 환경 )
  • g rel scope
  • AIML Framework (AIMLFW)

    Mission: Stand-alone installation (separated from existing platform deployment) and initial AIML workflow modules

    Original primary goals:

    • Stand-alone installation with Kubeflow as a Training host backend and Kserve as a Inference host backend

    • Manual Deployment of ML rApp and ML xApp

    • Training Job Management: Create/Edit/Delete usecases and Training pipelines and monitoring current training jobs

    • Data Extraction for model training from data lake

    • Model feature database for Training pipeline

    • Trained model storage

    • Sample ML pipeline and ML xApp : QoE Prediction model using LSTM with data from ricapp/qp

    G release source code, container images and deployment instructions

    TODO








Repo. hierarchy

Repository (Hierarchy)

Description

aiml-fw

awmf

tm

Training Manager : pipeline and model management



athp 





dataextraction

Data broker, Interaction with Data lake (SMO)


sdk


featurestore

Feature store

modelstore

Model Storage


tps 

kubeflowadatper

Adapter for Kubeflow


aihp

ips 

kserveadapter

Adapter for Kserve

dep

Deployment scripts aiml workflow → it/dep linking 

portal 

aiml-dashboard

GUI for AIML Workflow


ric-app

qp-aimlfw

Sample pipeline and ML xApp for QoE prediction


Image Added