The Practical Guide to MLOps & Data Pipeline Automation: Deliver Fast, Fault-Tolerant Machine Learning with CI/CD, Model Monitoring, and Rollback Strategies - Tapa blanda

Gabe, Avis

 
9798296195050: The Practical Guide to MLOps & Data Pipeline Automation: Deliver Fast, Fault-Tolerant Machine Learning with CI/CD, Model Monitoring, and Rollback Strategies

Sinopsis

What happens when your best model silently fails in production? What’s the true cost of a brittle data pipeline, or an untraceable deployment?

Every ambitious ML project promises the future, but reality bites: endless manual fixes, untracked changes, model drift, downtime, and costs that spiral out of control. This isn’t a book of hollow theory—it’s a blueprint for surviving, and thriving, in production.

Inside, you’ll discover:

  • Foundations of MLOps: Modern principles that power repeatable, reliable machine learning.

  • Data Pipeline Automation: Proven methods for data ingestion, validation, modular ETL, and versioning.

  • Versioning Everything: Strategies for tracking code, datasets, features, experiments, and models.

  • CI/CD for Machine Learning: Concrete steps to automate model delivery using MLflow, Kubeflow, and TFX.

  • Automated Testing: How to build quality gates, detect drift, and deploy with confidence.

  • Model Lifecycle Management: Master model registries, staging, promotion, and lineage.

  • Deployment Recipes: Real-time vs. batch, Docker, Kubernetes, FastAPI—plus blue-green, rolling, and rollback techniques.

  • Monitoring & Alerting: Keep production stable with actionable metrics, drift detection, and alert systems.

  • Cost & Resource Optimization: Tame your compute, storage, and budget before they tame you.

  • Security & Compliance: Practical approaches to pipeline security, auditability, and governance.

  • Case Studies: CI/CD in finance, retail, healthcare, and lessons from industry giants.

  • Building Your Platform: How to scale from scrappy scripts to organization-wide, automated MLOps.

If you want to stop firefighting and start delivering robust, fault-tolerant, and explainable machine learning—this is your field guide.

Ready to automate, monitor, and scale every model you deploy? Turn the page. Production awaits.

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