Building a Machine Learning Pipeline with MLOps
Across many industries, machine learning (ML) is becoming a revolutionary force. Companies are leveraging its power for tasks ranging from fraud detection to product recommendation, with impressive results. However, the journey from a promising ML model in a data scientist's notebook to a reliable, real-world solution can be fraught with challenges. This is where MLOps comes in. MLOps: Bridging the Gap Between Data Science and Production MLOps, a term coined by combining " machine learning " with "operations," is a set of practices that automates and manages the ML lifecycle. It ensures a smooth transition from model development to production deployment and continuous monitoring. Here's why MLOps is crucial: Repeatability and Reproducibility: MLOps fosters a standardized and documented approach to model development. This ensures that models can be reliably rebuilt and produce consistent results, even by different teams or after personnel changes. Effici