neonwatty / machine-learning-refinedLinks
Master the fundamentals of machine learning, deep learning, and mathematical optimization by building key concepts and models from scratch using Python.
☆1,811Updated 7 months ago
Alternatives and similar repositories for machine-learning-refined
Users that are interested in machine-learning-refined are comparing it to the libraries listed below
Sorting:
- A series of Python Jupyter notebooks that help you better understand "The Elements of Statistical Learning" book☆900Updated 4 years ago
- Course material for STAT 479: Deep Learning (SS 2019) at University Wisconsin-Madison☆541Updated 6 years ago
- EPFL Course - Optimization for Machine Learning - CS-439☆1,325Updated last month
- Python code for "Probabilistic Machine learning" book by Kevin Murphy☆6,877Updated 9 months ago
- Exercises and supplementary material for the deep learning course 02456 using PyTorch.☆330Updated 10 months ago
- "Probabilistic Machine Learning" - a book series by Kevin Murphy☆5,326Updated 4 months ago
- This is a companion to the ‘Mathematical Foundations’ section of the book, Mathematics for Machine Learning by Marc Deisenroth, Aldo Fais…☆286Updated 4 years ago
- Open source guides/codes for mastering deep learning to deploying deep learning in production in PyTorch, Python, Apptainer, and more.☆856Updated 2 months ago
- VIP cheatsheets for Stanford's CME 106 Probability and Statistics for Engineers☆772Updated 4 years ago
- Machine learning course materials.☆574Updated last year
- Exercises for the Deep Learning textbook at www.deeplearningbook.org☆1,379Updated 3 years ago
- Notebooks about Bayesian methods for machine learning☆1,876Updated last year
- Code / solutions for Mathematics for Machine Learning (MML Book)☆1,154Updated 2 years ago
- STAT 453: Intro to Deep Learning @ UW-Madison (Spring 2020)☆574Updated 5 years ago
- Probabilistic Machine Learning: Advanced Topics☆1,483Updated 4 months ago
- STAT 451: Intro to Machine Learning @ UW-Madison (Fall 2020)☆434Updated 11 months ago
- My notes and codes (jupyter notebooks) for the "The Elements of Statistical Learning" by Trevor Hastie, Robert Tibshirani and Jerome Frie…☆416Updated 3 years ago
- Second edition of Springer Book Python for Probability, Statistics, and Machine Learning☆363Updated 3 years ago
- STAT 453: Intro to Deep Learning @ UW-Madison (Spring 2021)☆512Updated 3 years ago
- Machine learning glossary☆3,086Updated last year
- Self-study on Larry Wasserman's "All of Statistics"☆1,140Updated 2 years ago
- Course notes for CS228: Probabilistic Graphical Models.☆1,969Updated 2 months ago
- NYU Deep Learning Spring 2021☆1,630Updated 11 months ago
- Jupyter notebooks for summarizing and reproducing the textbook "The Elements of Statistical Learning" 2/E by Hastie, Tibshirani, and Frie…☆292Updated 7 years ago
- Jupyter Notebooks for Springer book "Python for Probability, Statistics, and Machine Learning"☆786Updated 2 years ago
- Learn about Machine Learning and Artificial Intelligence☆919Updated 3 years ago
- Lectures for INFO8010 Deep Learning, ULiège☆1,265Updated 3 months ago
- EPFL Machine Learning Course, Fall 2024☆1,315Updated 7 months ago
- Collection of useful machine learning codes and snippets (originally intended for my personal use)☆827Updated last year
- ☆47Updated 2 years ago