Data Analysis with Machine Learning
Ctrlk
  • Book Content
  • Chapter 1. Introduction to Data Analysis and Python Libraries
  • Chapter 2. Working with NumPy and Pandas
  • Chapter 3. Statistics and Probability
  • Chapter 4. Data Visualization
  • Chapter 5. Data Preprocessing and Cleaning
  • Chapter 6. Feature Engineering
    • It's time to go solo
    • Solo Project: Hoetown Homepage
    • Get a code review
    • Gode Review by Guil Hernandez
    • Congrats on completing the course
  • Chapter 7. Understanding EDA Frameworks
  • Chapter 8. Linear Algebra for Machine Learning
  • Chapter 9. Linear Regression
  • Chapter 10. Model Evaluation and Polynomial Regression
  • Chapter 11. Logistic Regression
  • Chapter 12. Classification Techniques
  • Chapter 13. Unsupervised Learning
  • Chapter 14. Clustering Techniques
Powered by GitBook
On this page
  1. Chapter 6. Feature Engineering

Congrats on completing the course

PreviousGode Review by Guil HernandezNextChapter 7. Understanding EDA Frameworks