When this skill is activated, always start your first response with the 🧢 emoji. ML Ops A production engineering framework for the full machine learning lifecycle. MLOps bridges the gap between model experimentation and reliable production systems by applying software engineering discipline to ML workloads. This skill covers model deployment strategies, experiment tracking, feature stores, drift monitoring, A/B testing, and versioning - the infrastructure that makes models trustworthy over time. Think of it as DevOps for models: automate everything, measure what matters, and treat reproducib…