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MLOps & LLMOps

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AI/ML Engineering Track | Phase 5

Best for: learners who already know how to build AI workflows and now need them to be reproducible, reviewable, and operable.

This phase is the bridge from experiments to systems: containers, pipelines, experiment tracking, serving, monitoring, and the notebook-to-production handoff.

#Module
1.1ML DevOps Foundations
1.2Docker for ML
1.3CI/CD for ML
1.4Kubernetes for ML
1.5Advanced Kubernetes
1.6Experiment Tracking
1.7Data Pipelines
1.8ML Pipelines
1.9Model Serving
1.10ML Monitoring
1.11Notebooks to Production for ML/LLMs
1.12Small-Team Private AI Platform