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Machine Learning Engineering with MLflow

You're reading from   Machine Learning Engineering with MLflow Manage the end-to-end machine learning life cycle with MLflow

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Product type Paperback
Published in Aug 2021
Publisher Packt
ISBN-13 9781800560796
Length 248 pages
Edition 1st Edition
Tools
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Author (1):
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Natu Lauchande Natu Lauchande
Author Profile Icon Natu Lauchande
Natu Lauchande
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Table of Contents (18) Chapters Close

Preface 1. Section 1: Problem Framing and Introductions
2. Chapter 1: Introducing MLflow FREE CHAPTER 3. Chapter 2: Your Machine Learning Project 4. Section 2: Model Development and Experimentation
5. Chapter 3: Your Data Science Workbench 6. Chapter 4: Experiment Management in MLflow 7. Chapter 5: Managing Models with MLflow 8. Section 3: Machine Learning in Production
9. Chapter 6: Introducing ML Systems Architecture 10. Chapter 7: Data and Feature Management 11. Chapter 8: Training Models with MLflow 12. Chapter 9: Deployment and Inference with MLflow 13. Section 4: Advanced Topics
14. Chapter 10: Scaling Up Your Machine Learning Workflow 15. Chapter 11: Performance Monitoring 16. Chapter 12: Advanced Topics with MLflow 17. Other Books You May Enjoy

Creating your training project with MLflow

You receive a specification from a data scientist based on the XGBoost model being ready to move from a proof-of-concept to a production phase.

We can review the original Jupyter notebook from which the model was registered initially by the data scientist, which is a starting point to start creating an ML engineering pipeline. After initial prototyping and training in the notebook, they are ready to move to production.

Some companies go directly to productionize the notebooks themselves and this is definitely a possibility, but it becomes impossible for the following reasons:

  • It's hard to version notebooks.
  • It's hard to unit-test the code.
  • It's unreliable for long-running tests.

With these three distinct phases, we ensure reproducibility of the training data-generation process and visibility and clear separation of the different steps of the process.

We will start by organizing our MLflow project...

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