chqngh-berkeley / personalLinks
☆76Updated 8 years ago
Alternatives and similar repositories for personal
Users that are interested in personal are comparing it to the libraries listed below
Sorting:
- CLRS(Introduction to Algorithms) - Python/C++/Java Implementation of all the major Algorithms in the CLRS Textbook as well as additional …☆70Updated 2 years ago
- Solutions to the exercises in Grinstead and Snell's Introduction to Probability☆92Updated 2 years ago
- Python and MATLAB code for linear algebra textbook.☆198Updated last year
- Specification files for the Foundations of Applied Mathematics lab curriculum. https://foundations-of-applied-mathematics.github.io/☆55Updated last year
- Repo for Statistical Learning course offered by Stanford University☆50Updated 6 years ago
- ☆69Updated 2 years ago
- A dump of all the data science materials (mostly pdf's) that I have accumulated over the years☆393Updated 4 years ago
- "If your experiment needs a statistician, you need a better experiment." ― Ernest Rutherford☆145Updated 6 years ago
- Applied Probability Theory for Everyone☆121Updated last year
- Master of Science degree in Data Science - University of Colorado Boulder☆61Updated last month
- Labs for the Foundations of Applied Mathematics curriculum.☆229Updated last year
- Computer Science II documents and materials☆49Updated 6 months ago
- Data Analysis: Statistical Modeling and Computation in Applications☆60Updated 4 years ago
- Bayesian statistics graduate course☆360Updated last month
- In this repository, I will publish my notes for GaTech's Machine Learning course CS7641.☆223Updated 4 years ago
- Summary of each chapter of the book- Introduction of Statistical Learning (ISL), along with Python code & data.☆188Updated last year
- ☆143Updated 3 years ago
- Solutions to labs and excercises from An Introduction to Statistical Learning, as Jupyter Notebooks.☆345Updated last year
- Probability - The Science of Uncertainty and Data☆33Updated 5 months ago
- Notebooks for https://python.quantecon.org☆237Updated last week
- ☆21Updated 2 years ago
- These are companion notebooks written in Julia and Python for: "Introduction to Applied Linear Algebra" by Boyd and Vandenberghe.☆346Updated 5 years ago
- Figures and code examples from Bayesian Analysis with Python (third edition)☆221Updated 3 months ago
- Forecasting: Principles and Practice☆61Updated 4 years ago
- ☆119Updated 3 years ago
- Code for the book Analytical Skills for AI and Data Science☆47Updated 5 years ago
- CS341 for Spring 2024☆11Updated last year
- ☆60Updated 3 years ago
- Probability - The Science of Uncertainty and Data☆123Updated 6 years ago
- Book code for "Essential Math for Data Science"☆60Updated 2 years ago