Understanding the Workflow of Machine Learning operations
Machine learning (ML) has become a transformative force across industries, enabling data-driven decision-making and automation. However, building a successful ML model is just one piece of the puzzle. Effectively deploying, managing, and monitoring these models in production requires a robust workflow – enter MLOps (Machine Learning Operations). What is MLOps? MLOps bridges the gap between data science and software engineering, fostering collaboration and streamlining the entire ML lifecycle. It encompasses a set of practices that automate the development, deployment, and monitoring of ML models. By implementing MLOps, organizations can ensure: Reproducibility: MLOps ensures models can be consistently rebuilt and deployed, reducing errors and facilitating collaboration. Scalability: It enables efficient management and deployment of models at scale, crucial for real-world applications. Governance: MLOps establishes frameworks for model versioning, monitoring, and bias detection