Hey everyone, I wanted to ask how you’ve handled building end-to-end MLOps pipelines in real-world production setups. I’ve been helping a small data science team move from manual model training to something more automated, but we keep hitting walls when it comes to integrating monitoring and CI/CD. I’ve read a bit about model drift detection and automated retraining, but it feels like overkill for now. Curious if anyone has practical tips or lessons learned, especially from working with consulting teams or specific tools that made a difference.