vbartle / MML-CompanionLinks
This is a companion to the ‘Mathematical Foundations’ section of the book, Mathematics for Machine Learning by Marc Deisenroth, Aldo Faisal and Cheng Ong, written in python for Jupyter Notebook.
☆294Updated 4 years ago
Alternatives and similar repositories for MML-Companion
Users that are interested in MML-Companion are comparing it to the libraries listed below
Sorting:
- STAT 451: Intro to Machine Learning @ UW-Madison (Fall 2020)☆442Updated last year
- ☆151Updated 3 years ago
- ☆346Updated 5 years ago
- These are companion notebooks written in Julia and Python for: "Introduction to Applied Linear Algebra" by Boyd and Vandenberghe.☆343Updated 5 years ago
- 🌀 Stanford CS 228 - Probabilistic Graphical Models☆89Updated 6 years ago
- Notebooks for "Probabilistic Machine Learning" book☆202Updated 3 years ago
- Inside Deep Learning: The math, the algorithms, the models☆268Updated 2 years ago
- Course notes for MSDS621 at Univ of San Francisco, introduction to machine learning☆348Updated 3 years ago
- STAT 453: Intro to Deep Learning @ UW-Madison (Spring 2020)☆575Updated 5 years ago
- Python code (in the form of Jupyter ipython notebooks) to support the book "Math and Architectures of Deep Learning" (Krishnendu Chaudhur…☆217Updated last year
- VIP cheatsheets for Stanford's CME 106 Probability and Statistics for Engineers☆791Updated 5 years ago
- Essential mathematics for applied machine learning and data science☆79Updated 3 years ago
- COMS W4995 Applied Machine Learning - Spring 20☆246Updated 3 years ago
- Jupyter notebooks with the Python equivalent to the R code sections in Blitzstein and Hwang's Introduction To Probability, Second Edition☆74Updated 6 years ago
- A series of Python Jupyter notebooks that help you better understand "The Elements of Statistical Learning" book☆903Updated 4 years ago
- An Introduction to Statistical Learning with Applications in PYTHON☆549Updated 3 years ago
- Summary of each chapter of the book- Introduction of Statistical Learning (ISL), along with Python code & data.☆185Updated last year
- My notes and codes (jupyter notebooks) for the "The Elements of Statistical Learning" by Trevor Hastie, Robert Tibshirani and Jerome Frie…☆419Updated last month
- VIP cheatsheets for Stanford's CME 102 Ordinary Differential Equations for Engineers☆253Updated 5 years ago
- DS-GA 1013 Mathematical Tools for Data Science☆52Updated 4 years ago
- Solutions to labs and excercises from An Introduction to Statistical Learning, as Jupyter Notebooks.☆344Updated last year
- FREE ML Courses from Top Universities☆253Updated last month
- ☆269Updated 4 months ago
- Notes on mathematical topics that pertain to machine learning☆112Updated 3 years ago
- Applied Probability Theory for Everyone☆120Updated last year
- Course material for STAT 479: Deep Learning (SS 2019) at University Wisconsin-Madison☆541Updated 6 years ago
- Second edition of Springer Book Python for Probability, Statistics, and Machine Learning☆368Updated 4 years ago
- ML algorithms in depth☆268Updated last year
- ☆88Updated 2 years ago
- STAT 453: Intro to Deep Learning @ UW-Madison (Spring 2021)☆520Updated 3 years ago