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Book Description

More than half of the analytics and machine learning (ML) models created by organizations today never make it into production. Instead, many of these ML models do nothing more than provide static insights in a slideshow. If they aren’t truly operational, these models can’t possibly do what you’ve trained them to do.



This report introduces practical concepts to help data scientists and application engineers operationalize ML models to drive real business change. Through lessons based on numerous projects around the world, six experts in data analytics provide an applied four-step approach—Build, Manage, Deploy and Integrate, and Monitor—for creating ML-infused applications within your organization.



You’ll learn how to:



  • Fulfill data science value by reducing friction throughout ML pipelines and workflows
  • Constantly refine ML models through retraining, periodic tuning, and even complete remodeling to ensure long-term accuracy
  • Design the ML Ops lifecycle to ensure that people-facing models are unbiased, fair, and explainable
  • Operationalize ML models not only for pipeline deployment but also for external business systems that are more complex and less standardized
  • Put the four-step Build, Manage, Deploy and Integrate, and Monitor approach into action

Table of Contents

  1. ML Ops: Operationalizing Data Science
    1. An Introduction to ML Ops and Operationalizing Data Science Models
      1. What Is ML Ops?
      2. The ML Ops Pain Point: Time to Deployment
      3. What, Really, Is a Model?
    2. Introducing the Four-Step ML Ops Approach
    3. Build
      1. Data Considerations: Structures and Access
      2. Feature Engineering
      3. Model Testing
    4. Manage
      1. The ML Ops Engineer
      2. Getting Out in Front of Model Proliferation
      3. Auditing, Approvals, and Version Control
      4. Reusing and Repurposing Models from a Centrally Managed Repository
    5. Deploy and Integrate
      1. Where Deploy and Integrate Meet
      2. Business App Development
    6. Monitor
      1. Statistical Metrics
      2. Performance Metrics
      3. Business Metrics and ROI
      4. When Models Drift
      5. Retraining and Remodeling
      6. Monitoring Meets Automation
    7. Case Study: Operationalizing Data Science in the Manufacturing Industry—Digital Twin Models
    8. Case Study: Operationalizing Data Science in the Insurance Industry—Dynamic Pricing Models
    9. Conclusion
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