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Debugging Machine Learning Models with Python

You're reading from   Debugging Machine Learning Models with Python Develop high-performance, low-bias, and explainable machine learning and deep learning models

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Product type Paperback
Published in Sep 2023
Publisher Packt
ISBN-13 9781800208582
Length 344 pages
Edition 1st Edition
Languages
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Author (1):
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Ali Madani Ali Madani
Author Profile Icon Ali Madani
Ali Madani
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Toc

Table of Contents (26) Chapters Close

Preface 1. Part 1:Debugging for Machine Learning Modeling
2. Chapter 1: Beyond Code Debugging FREE CHAPTER 3. Chapter 2: Machine Learning Life Cycle 4. Chapter 3: Debugging toward Responsible AI 5. Part 2:Improving Machine Learning Models
6. Chapter 4: Detecting Performance and Efficiency Issues in Machine Learning Models 7. Chapter 5: Improving the Performance of Machine Learning Models 8. Chapter 6: Interpretability and Explainability in Machine Learning Modeling 9. Chapter 7: Decreasing Bias and Achieving Fairness 10. Part 3:Low-Bug Machine Learning Development and Deployment
11. Chapter 8: Controlling Risks Using Test-Driven Development 12. Chapter 9: Testing and Debugging for Production 13. Chapter 10: Versioning and Reproducible Machine Learning Modeling 14. Chapter 11: Avoiding and Detecting Data and Concept Drifts 15. Part 4:Deep Learning Modeling
16. Chapter 12: Going Beyond ML Debugging with Deep Learning 17. Chapter 13: Advanced Deep Learning Techniques 18. Chapter 14: Introduction to Recent Advancements in Machine Learning 19. Part 5:Advanced Topics in Model Debugging
20. Chapter 15: Correlation versus Causality 21. Chapter 16: Security and Privacy in Machine Learning 22. Chapter 17: Human-in-the-Loop Machine Learning 23. Assessments 24. Index 25. Other Books You May Enjoy

To get the most out of this book

In order to follow the instructions given in this book, you will need basic knowledge of the following:

  • Access to Python via Integrated Development Environments (IDE), Jupyter notebook, or Colab notebook.
  • Basics of Python programming.
  • Basic understanding of machine learning modeling and terminologies, such as supervised learning, unsupervised learning, and model training and testing.

Having a virtual environment with all the required libraries would help you to run the code in each chapter, which is provided as Jupyter notebooks in the associated GitHub repository of the book.

The Python libraries required for the book are: sklearn >= 1.2.2, numpy >= 1.22.4, pandas >= 1.4.4, matplotlib >= 3.5.3, collections >= 3.8.16, xgboost >= 1.7.5, sklearn >= 1.2.2, ray >= 2.3.1, tune_sklearn >= 0.4.5, bayesian_optimization >= 1.4.2, imblearn, pytest >= 7.2.2, shap >= 0.41.0, aif360 >= 0.5.0, fairlearn >= 0.8.0, pytest >= 3.6.4, ipytest >= 0.13.0, mlflow >= 2.1.1, libi_detect >= 0.11.1, lightgbm >= 3.3.5, evidently >= 0.2.8, torch >= 2.0.0, torchvision >= 0.15.1, transformers >= 4.28.0, datasets >= 2.12.0, torch_geometric == 2.3.1, dowhy == 0.5.1, bnlearn == 0.7.16, tenseal >= 0.3.14, pycryptodome = 3.18.0, pycryptodomex = 3.18.0

Alternatively, you can use online services, such as Colab, and run the notebooks as Colab notebooks.

Software/hardware covered in the book

Operating system requirements

Python >=3.6

Windows, macOS, or Linux

DVC >= 1.10.0

Importing the required libraries is omitted for every single code cell to eliminate the repetition and keep the book as short as possible. Having the GitHub repository of the book on the side will help you to be sure about the required libraries for each piece of code and learn how to install them. As this book is not a single command tutorial book, the majority of the examples include multi-line processes. As a result, you cannot copy-paste individual lines, in most chapters, without paying attention to the required libraries, their installation, and the code lines before that.

If you are using the digital version of this book, we advise you to type the code yourself or access the code from the book’s GitHub repository (a link is available in the next section). Doing so will help you avoid any potential errors related to the copying and pasting of code.

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