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Cracking the Data Science Interview

You're reading from  Cracking the Data Science Interview

Product type Book
Published in Feb 2024
Publisher Packt
ISBN-13 9781805120506
Pages 404 pages
Edition 1st Edition
Languages
Authors (2):
Leondra R. Gonzalez Leondra R. Gonzalez
Profile icon Leondra R. Gonzalez
Aaren Stubberfield Aaren Stubberfield
Profile icon Aaren Stubberfield
View More author details

Table of Contents (21) Chapters

Preface 1. Part 1: Breaking into the Data Science Field
2. Chapter 1: Exploring Today’s Modern Data Science Landscape 3. Chapter 2: Finding a Job in Data Science 4. Part 2: Manipulating and Managing Data
5. Chapter 3: Programming with Python 6. Chapter 4: Visualizing Data and Data Storytelling 7. Chapter 5: Querying Databases with SQL 8. Chapter 6: Scripting with Shell and Bash Commands in Linux 9. Chapter 7: Using Git for Version Control 10. Part 3: Exploring Artificial Intelligence
11. Chapter 8: Mining Data with Probability and Statistics 12. Chapter 9: Understanding Feature Engineering and Preparing Data for Modeling 13. Chapter 10: Mastering Machine Learning Concepts 14. Chapter 11: Building Networks with Deep Learning 15. Chapter 12: Implementing Machine Learning Solutions with MLOps 16. Part 4: Getting the Job
17. Chapter 13: Mastering the Interview Rounds 18. Chapter 14: Negotiating Compensation 19. Index 20. Other Books You May Enjoy

Reducing the dimensionality

In this section, we will explore the concept of dimensionality reduction, a critical technique in machine learning and data analysis that aims to reduce the number of features or variables in a dataset while preserving essential information. High-dimensional datasets often suffer from the “curse of dimensionality,” leading to increased computational complexity and potential overfitting. Dimensionality reduction methods help to transform data into a lower-dimensional space, enabling easier visualization, improved model performance, and enhanced interpretability.

Here, we will delve into various dimensionality reduction techniques, and their applications, and provide code examples in Python to implement them effectively.

Principal component analysis

Principal Component Analysis (PCA) is a widely used linear dimensionality reduction technique that projects data onto orthogonal axes to capture the maximum variance in the first principal...

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