stanford-cs-229-machine-learning
Machine Learning Cheat Sheet
A comprehensive resource collection of machine learning concepts and techniques
VIP cheatsheets for Stanford's CS 229 Machine Learning
18k stars
715 watching
4k forks
last commit: almost 5 years ago cheatsheetcs229data-sciencedeep-learningmachine-learningml-cheatsheetsupervised-learningunsupervised-learning
Related projects:
Repository | Description | Stars |
---|---|---|
| Provides essential reference materials for machine learning and deep learning researchers and engineers | 15,137 |
| A comprehensive resource collection of data science cheatsheets and tutorials covering various programming languages, tools, and techniques | 14,817 |
| A collection of classical equations and diagrams on machine learning in LaTeX format | 7,520 |
| Practices implementing popular machine learning algorithms from scratch to gain a deeper understanding of their mathematics | 23,191 |
| A collection of notes and summaries on various deep learning research papers, including their topics, techniques, and applications. | 4,416 |
| An interactive deep learning book with code and discussions | 24,218 |
| A curated collection of state-of-the-art results for various machine learning problems and domains, serving as a single reference point. | 8,943 |
| A collection of tutorials and code examples for learning deep learning concepts using MIT Deep Learning courses | 10,190 |
| A deep learning optimization library that simplifies distributed training and inference on modern computing hardware. | 35,863 |
| A structured study plan to help software developers learn machine learning and become a machine learning engineer | 28,216 |
| Implementations of various deep learning algorithms and techniques with accompanying documentation | 57,177 |
| Automated notification system for machine learning model training | 343 |
| A curated collection of machine learning and data science projects applied to various industries. | 7,274 |
| A software toolkit for extracting information from text using machine learning and natural language processing techniques. | 2,925 |
| A comprehensive resource for software developers to learn and implement transfer learning, domain adaptation, and related techniques. | 13,547 |