Welcome to the Machine Learning Notes Repository! This collection serves as a comprehensive guide for both beginners and experienced enthusiasts diving into the exciting realm of machine learning.
-
Introduction to Machine Learning
- Overview and key concepts
- Types of machine learning
-
Foundational Concepts
- Linear algebra and calculus basics
- Probability and statistics
-
Algorithms
- Supervised learning (e.g., regression, classification)
- Unsupervised learning (e.g., clustering, dimensionality reduction)
- Reinforcement learning
-
Deep Learning
- Neural networks architecture
- Training models with TensorFlow and PyTorch
-
Advanced Topics
- Computer vision
- Natural language processing
- Model interpretability and explainability
-
Practical Insights
- Code examples and Jupyter notebooks
- Data preprocessing and feature engineering
-
Resources
- Additional learning materials
- Research papers and articles
Clone the repository to your local machine to access the notes and code examples:
git clone https://github.com/your-username/machine-learning-notes.git