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Practical MLOps: Operationalizing Machine Learning Models is a hands-on guide for data scientists, machine learning engineers, and DevOps practitioners looking to take their machine learning models from the research phase into production. This book provides practical, actionable insights into the entire machine learning lifecycle, from model development to deployment, monitoring, and continuous improvement.
Through real-world examples and step-by-step instructions, you will learn how to integrate MLOps practices into your workflow, automating the model deployment process, building scalable pipelines, and ensuring seamless collaboration across cross-functional teams.
Covering essential topics such as model versioning, data management, experiment tracking, and performance monitoring, this book emphasizes the importance of robust, repeatable processes in managing the operational aspects of machine learning. You will also explore key MLOps tools and frameworks like Kubernetes, Docker, TensorFlow, and MLflow, and how to use them to streamline model deployment and scaling.
Whether you're new to MLOps or looking to refine your existing practices, Practical MLOps provides a comprehensive roadmap to mastering the complexities of bringing machine learning models to production in a sustainable and reliable way.
Key Features:
Practical MLOps is the definitive guide for transforming your machine learning models into production-ready, business-impacting solutions.