LinkedIn Draft β Workflow (2025-11-18)
π End-to-end MLOps retraining loop
Short, advanced explainer β practical & principle-focused.
Workflow
1οΈβ£ Data versioning (DVC) ensures reproducibility.
2οΈβ£ Kubeflow pipelines orchestrate training stages.
3οΈβ£ Model registry controls promotions.
4οΈβ£ Prometheus/Grafana monitor live drift KPIs.
Key takeaway: Confidence > speed. Guardrails and observability turn velocity into reliability.
π Deep dive: https://neeraja-portfolio-v1.vercel.app/workflows/mlops-feedback-loop
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