Traditional CI/CD pipelines fail for AI models because models are probabilistic, data-dependent, and fail silently. Production MLOps requires a five-layer architecture: data layer with feature stores and data versioning, experimentation layer with tracking and model registries, pipeline layer with orchestrated training and evaluation, deployment layer with canary and shadow scoring, and monitoring layer with drift detection and performance tracking. Organizations should advance through four maturity levels incrementally, matching infrastructure investment to model portfolio size.