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{ "item_title" : "Reproducibility-First ML Experiments", "item_author" : [" Jenny F. Yazzie "], "item_description" : "Reproducibility-First ML Experiments: A Practical Guide to Versioning, Tracking, and Scaling Your ML Workflows for Consistent ResultsAchieving consistent, reliable machine learning results is no longer a luxury it's a necessity. This book shows you how to make reproducibility the foundation of your ML practice, not an afterthought. In Reproducibility-First ML Experiments, you'll learn how to design, implement, and maintain machine learning workflows that produce verifiable and repeatable outcomes every single time. Through practical examples and modern tools, this book bridges the gap between research experimentation and production reliability.From dataset versioning and experiment tracking to environment automation and scalable pipelines, each chapter provides actionable techniques grounded in real-world workflows. You'll explore frameworks like MLflow, DVC, Kubeflow, and Docker, and discover how to integrate them into your daily development cycle with clarity and precision.Whether you're an ML engineer, data scientist, or research practitioner, this book equips you with the systems thinking and automation skills needed to ensure your models stand up to scrutiny and scale smoothly from prototype to production.Benefits:End-to-end reproducibility: Learn how to manage datasets, models, and environments for consistent results across teams and systems.Hands-on tooling: Master frameworks such as MLflow, DVC, Airflow, and Docker through detailed, working examples.Scalable workflows: Build automated pipelines that support collaboration, hyperparameter tuning, and CI/CD for ML models.Real-world case studies: Gain insights from industrial and research-grade projects that successfully implement reproducibility-first principles.Future-proof skills: Stay ahead of emerging trends in MLOps, experiment tracking, and collaborative machine learning.Ready to make your ML experiments truly reliable? Get your copy of Reproducibility-First ML Experiments today and start building machine learning systems that are consistent, transparent, and production-ready.", "item_img_path" : "https://covers1.booksamillion.com/covers/bam/9/79/826/844/9798268446364_b.jpg", "price_data" : { "retail_price" : "19.86", "online_price" : "19.86", "our_price" : "19.86", "club_price" : "19.86", "savings_pct" : "0", "savings_amt" : "0.00", "club_savings_pct" : "0", "club_savings_amt" : "0.00", "discount_pct" : "10", "store_price" : "" } }
Reproducibility-First ML Experiments|Jenny F. Yazzie

Reproducibility-First ML Experiments : A Practical Guide to Versioning, Tracking, and Scaling Your ML Workflows for Consistent Results

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Overview

Reproducibility-First ML Experiments: A Practical Guide to Versioning, Tracking, and Scaling Your ML Workflows for Consistent Results

Achieving consistent, reliable machine learning results is no longer a luxury it's a necessity. This book shows you how to make reproducibility the foundation of your ML practice, not an afterthought. In Reproducibility-First ML Experiments, you'll learn how to design, implement, and maintain machine learning workflows that produce verifiable and repeatable outcomes every single time. Through practical examples and modern tools, this book bridges the gap between research experimentation and production reliability.

From dataset versioning and experiment tracking to environment automation and scalable pipelines, each chapter provides actionable techniques grounded in real-world workflows. You'll explore frameworks like MLflow, DVC, Kubeflow, and Docker, and discover how to integrate them into your daily development cycle with clarity and precision.

Whether you're an ML engineer, data scientist, or research practitioner, this book equips you with the systems thinking and automation skills needed to ensure your models stand up to scrutiny and scale smoothly from prototype to production.

Benefits:

  • End-to-end reproducibility: Learn how to manage datasets, models, and environments for consistent results across teams and systems.

  • Hands-on tooling: Master frameworks such as MLflow, DVC, Airflow, and Docker through detailed, working examples.

  • Scalable workflows: Build automated pipelines that support collaboration, hyperparameter tuning, and CI/CD for ML models.

  • Real-world case studies: Gain insights from industrial and research-grade projects that successfully implement reproducibility-first principles.

  • Future-proof skills: Stay ahead of emerging trends in MLOps, experiment tracking, and collaborative machine learning.

Ready to make your ML experiments truly reliable? Get your copy of Reproducibility-First ML Experiments today and start building machine learning systems that are consistent, transparent, and production-ready.

This item is Non-Returnable

Details

  • ISBN-13: 9798268446364
  • ISBN-10: 9798268446364
  • Publisher: Independently Published
  • Publish Date: October 2025
  • Dimensions: 10 x 7 x 0.16 inches
  • Shipping Weight: 0.33 pounds
  • Page Count: 76

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