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Learn Python by Building Data Science Applications

You're reading from   Learn Python by Building Data Science Applications A fun, project-based guide to learning Python 3 while building real-world apps

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Product type Paperback
Published in Aug 2019
Publisher Packt
ISBN-13 9781789535365
Length 482 pages
Edition 1st Edition
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Authors (2):
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Philipp Kats Philipp Kats
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Philipp Kats
David Katz David Katz
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David Katz
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Table of Contents (26) Chapters Close

Preface 1. Section 1: Getting Started with Python
2. Preparing the Workspace FREE CHAPTER 3. First Steps in Coding - Variables and Data Types 4. Functions 5. Data Structures 6. Loops and Other Compound Statements 7. First Script – Geocoding with Web APIs 8. Scraping Data from the Web with Beautiful Soup 4 9. Simulation with Classes and Inheritance 10. Shell, Git, Conda, and More – at Your Command 11. Section 2: Hands-On with Data
12. Python for Data Applications 13. Data Cleaning and Manipulation 14. Data Exploration and Visualization 15. Training a Machine Learning Model 16. Improving Your Model – Pipelines and Experiments 17. Section 3: Moving to Production
18. Packaging and Testing with Poetry and PyTest 19. Data Pipelines with Luigi 20. Let's Build a Dashboard 21. Serving Models with a RESTful API 22. Serverless API Using Chalice 23. Best Practices and Python Performance 24. Assessments 25. Other Books You May Enjoy

Summary

Over the course of this chapter, we worked iteratively on improving the machine learning model we built in Chapter 13, Training a Machine Learning Model—adding features and tuning it to achieve maximum performance. As the code and iterations get more complex and multiple trial-and-error attempts are required, it is important to keep track of your research. Therefore, we further discussed how to keep track of not only the code but also data and metrics, making sure we can always switch back and reproduce any of the previous versions.

In the next chapter, we'll take another stab at our Wikipedia scraping code, building it into an independent Python library you could share with your friends and colleagues. Throughout the rest of this book, we will focus on different ways of delivering our code as a product to the client—as a standalone package, scheduled...

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