Encoding Label to One-Hot

# Introduction In this project, you will learn how to perform one-hot encoding on label data for a single-label classification task. One-hot encoding is a common technique used to transform categorical variables into a format that can be used by machine learning algorithms. ## ðŸŽŊ Tasks In this project, you will learn: - How to understand the concept of one-hot encoding and its importance in machine learning. - How to implement a function to perform one-hot encoding on a list of sample labels. - How to test the label encoding function with sample data. ## 🏆 Achievements After completing this project, you will be able to: - Transform categorical labels into a numerical format suitable for machine learning models. - Understand the importance of data preprocessing and feature engineering in the machine learning pipeline. - Demonstrate practical coding skills in Python to manipulate and transform data for machine learning tasks.

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