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Managing Data Science

You're reading from   Managing Data Science Effective strategies to manage data science projects and build a sustainable team

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Product type Paperback
Published in Nov 2019
Publisher Packt
ISBN-13 9781838826321
Length 290 pages
Edition 1st Edition
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Author (1):
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Kirill Dubovikov Kirill Dubovikov
Author Profile Icon Kirill Dubovikov
Kirill Dubovikov
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Toc

Table of Contents (18) Chapters Close

1. Section 1: What is Data Science? FREE CHAPTER
2. What You Can Do with Data Science 3. Testing Your Models 4. Understanding AI 5. Section 2: Building and Sustaining a Team
6. An Ideal Data Science Team 7. Conducting Data Science Interviews 8. Building Your Data Science Team 9. Section 3: Managing Various Data Science Projects
10. Managing Innovation 11. Managing Data Science Projects 12. Common Pitfalls of Data Science Projects 13. Creating Products and Improving Reusability 14. Section 4: Creating a Development Infrastructure
15. Implementing ModelOps 16. Building Your Technology Stack 17. Conclusion 18. Other Books You May Enjoy

Continuous model training

The end goal of applying CI/CD to data science projects is to have a continuous learning pipeline that creates new model versions automatically. This level of automation will allow your team to examine new experiment results right after pushing the changed code. If everything works as expected, automated tests finish, and model quality reports show good results, the model can be deployed into an online testing environment.

Let's describe the steps of continuous model learning:

  1. CI:
    1. Perform static code analysis.
    2. Launch automated tests.
  2. Continuous model learning:
    1. Fetch new data.
    2. Generate EDA reports.
    3. Launch data quality tests.
    4. Perform data processing and create a training dataset.
    5. Train a new model.
    6. Test the model's quality.
    7. Fix experiment results in an experiment log.
  1. CD:
    1. Package the new model version.
    2. Package the source code.
    3. Publish...
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