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Building Data Science Solutions with Anaconda

You're reading from   Building Data Science Solutions with Anaconda A comprehensive starter guide to building robust and complete models

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Product type Paperback
Published in May 2022
Publisher Packt
ISBN-13 9781800568785
Length 330 pages
Edition 1st Edition
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Author (1):
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Dan Meador Dan Meador
Author Profile Icon Dan Meador
Dan Meador
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Table of Contents (16) Chapters Close

Preface 1. Part 1: The Data Science Landscape – Open Source to the Rescue
2. Chapter 1: Understanding the AI/ML landscape FREE CHAPTER 3. Chapter 2: Analyzing Open Source Software 4. Chapter 3: Using the Anaconda Distribution to Manage Packages 5. Chapter 4: Working with Jupyter Notebooks and NumPy 6. Part 2: Data Is the New Oil, Models Are the New Refineries
7. Chapter 5: Cleaning and Visualizing Data 8. Chapter 6: Overcoming Bias in AI/ML 9. Chapter 7: Choosing the Best AI Algorithm 10. Chapter 8: Dealing with Common Data Problems 11. Part 3: Practical Examples and Applications
12. Chapter 9: Building a Regression Model with scikit-learn 13. Chapter 10: Explainable AI - Using LIME and SHAP 14. Chapter 11: Tuning Hyperparameters and Versioning Your Model 15. Other Books You May Enjoy

Feature scaling

When you are working with a large spread of numbers, the higher the deviation, the harder it will be to train a good model on them. This issue with deviation is for a number of reasons we won't cover now, but we'll cover scaling techniques more in depth in the Scaling the data section in Chapter 9, Building a Regression Model with scikit-learn. But you should know that sometimes you will come across datasets where someone has already scaled the data.

You can't always know where a dataset has come from, so you may not have the benefit of understanding why a particular decision was made.

This data could come from a colleague, a Kaggle competition, or it is just an example dataset included in scikit-learn, like the one we are using now. This is the same California training dataset that was used in Chapter 2, Analyzing Open Source Software, and we'll assume that you already have the y_test and y_predict setup. If not, refer back to Chapter 2,...

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