"MLflow in Practice" is a comprehensive guide for data scientists, ML engineers, and enterprise practitioners seeking to harness the full power of MLflow in modern MLOps workflows. The book opens with a thorough exploration of MLflow’s core components—including Experiment Tracking, Projects, Models, and Model Registry—demystifying its architecture, deployment patterns, and seamless integration with leading platforms like Databricks, AzureML, Kubeflow, and Airflow. Readers gain valuable insights into positioning MLflow within the broader MLOps ecosystem, choosing between open source and enterprise offerings, and implementing robust security and governance practices from the outset.
Delving deep into practical implementation, the book provides actionable best practices for managing experiments, logging and visualizing runs, packaging reproducible ML projects, and orchestrating scalable deployment pipelines. Advanced chapters address complex scenarios such as distributed experimentation, hybrid and multi-cloud deployments, model lifecycle management, automated retraining, and CI/CD integration. Coverage extends to securing sensitive data, ensuring compliance with industry regulations, and developing enterprise-ready ML systems with full traceability, auditability, and disaster recovery.
Enriched with real-world case studies and forward-looking insights, "MLflow in Practice" showcases MLflow’s transformative role across diverse domains—from regulated enterprise environments and academic research to edge IoT and AI startups. Readers will not only learn how to deploy, monitor, and optimize ML models in production, but also stay ahead of emerging trends in generative AI, open standards, and collaborative experimentation. Whether you are modernizing machine learning operations or scaling ML workflows globally, this book equips you with the strategies, patterns, and technical know-how to maximize impact with MLflow.
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Paperback. Condizione: new. Paperback. "MLflow in Practice" is a comprehensive guide for data scientists, ML engineers, and enterprise practitioners seeking to harness the full power of MLflow in modern MLOps workflows. The book opens with a thorough exploration of MLflow's core components-including Experiment Tracking, Projects, Models, and Model Registry-demystifying its architecture, deployment patterns, and seamless integration with leading platforms like Databricks, AzureML, Kubeflow, and Airflow. Readers gain valuable insights into positioning MLflow within the broader MLOps ecosystem, choosing between open source and enterprise offerings, and implementing robust security and governance practices from the outset.Delving deep into practical implementation, the book provides actionable best practices for managing experiments, logging and visualizing runs, packaging reproducible ML projects, and orchestrating scalable deployment pipelines. Advanced chapters address complex scenarios such as distributed experimentation, hybrid and multi-cloud deployments, model lifecycle management, automated retraining, and CI/CD integration. Coverage extends to securing sensitive data, ensuring compliance with industry regulations, and developing enterprise-ready ML systems with full traceability, auditability, and disaster recovery.Enriched with real-world case studies and forward-looking insights, "MLflow in Practice" showcases MLflow's transformative role across diverse domains-from regulated enterprise environments and academic research to edge IoT and AI startups. Readers will not only learn how to deploy, monitor, and optimize ML models in production, but also stay ahead of emerging trends in generative AI, open standards, and collaborative experimentation. Whether you are modernizing machine learning operations or scaling ML workflows globally, this book equips you with the strategies, patterns, and technical know-how to maximize impact with MLflow. This item is printed on demand. Shipping may be from multiple locations in the US or from the UK, depending on stock availability. Codice articolo 9798896652083
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Paperback. Condizione: new. Paperback. "MLflow in Practice" is a comprehensive guide for data scientists, ML engineers, and enterprise practitioners seeking to harness the full power of MLflow in modern MLOps workflows. The book opens with a thorough exploration of MLflow's core components-including Experiment Tracking, Projects, Models, and Model Registry-demystifying its architecture, deployment patterns, and seamless integration with leading platforms like Databricks, AzureML, Kubeflow, and Airflow. Readers gain valuable insights into positioning MLflow within the broader MLOps ecosystem, choosing between open source and enterprise offerings, and implementing robust security and governance practices from the outset.Delving deep into practical implementation, the book provides actionable best practices for managing experiments, logging and visualizing runs, packaging reproducible ML projects, and orchestrating scalable deployment pipelines. Advanced chapters address complex scenarios such as distributed experimentation, hybrid and multi-cloud deployments, model lifecycle management, automated retraining, and CI/CD integration. Coverage extends to securing sensitive data, ensuring compliance with industry regulations, and developing enterprise-ready ML systems with full traceability, auditability, and disaster recovery.Enriched with real-world case studies and forward-looking insights, "MLflow in Practice" showcases MLflow's transformative role across diverse domains-from regulated enterprise environments and academic research to edge IoT and AI startups. Readers will not only learn how to deploy, monitor, and optimize ML models in production, but also stay ahead of emerging trends in generative AI, open standards, and collaborative experimentation. Whether you are modernizing machine learning operations or scaling ML workflows globally, this book equips you with the strategies, patterns, and technical know-how to maximize impact with MLflow. This item is printed on demand. Shipping may be from our UK warehouse or from our Australian or US warehouses, depending on stock availability. Codice articolo 9798896652083
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