Foundations-of-Applied-Mathematics / Student-MaterialsLinks
Specification files for the Foundations of Applied Mathematics lab curriculum. https://foundations-of-applied-mathematics.github.io/
☆53Updated 10 months ago
Alternatives and similar repositories for Student-Materials
Users that are interested in Student-Materials are comparing it to the libraries listed below
Sorting:
- Labs for the Foundations of Applied Mathematics curriculum.☆222Updated 7 months ago
- Jupyter notebooks with the Python equivalent to the R code sections in Blitzstein and Hwang's Introduction To Probability, Second Edition☆73Updated 6 years ago
- Advanced-Programming☆25Updated last year
- An introduction to Bayesian statistics using Python and (coming soon) R.☆133Updated last year
- Using computational thinking to get deep insights on the foundations of linear algebra☆114Updated 2 months ago
- ☆45Updated 5 years ago
- Source files for https://python.quantecon.org☆63Updated 3 years ago
- Notebooks for https://python-programming.quantecon.org☆60Updated 2 weeks ago
- ☆44Updated 5 years ago
- ☆145Updated last year
- ☆38Updated 4 years ago
- Repository for an online class on Exploratory Data Analysis in Python☆66Updated 5 years ago
- Course notes for Computational Statistics and Statistical Compuing☆63Updated 6 years ago
- Applied Probability Theory for Everyone☆117Updated 9 months ago
- One day workshop for machine learning with scikit-learn☆63Updated last year
- Explorations of survival analysis in Python☆50Updated 2 years ago
- Code and LaTeX source for Think Stats, third edition☆31Updated 5 years ago
- Source code for 'Numerical Python' by Robert Johansson☆63Updated 8 years ago
- Numpy-Tutorial-SciPyConf-2020☆29Updated 3 years ago
- Jupyter Notebooks for https://datascience.quantecon.org☆44Updated 4 years ago
- Repository for a workshop on Bayesian Decision Analysis☆71Updated 2 years ago
- A free open-source textbook for Multivariable Calculus that emphasizes differentials and linear algebra☆38Updated 14 years ago
- Course material for Bayesian and Modern Statistics, STA601, Duke University, Spring 2015.☆20Updated 9 years ago
- Python code for Computer Age Statistical Inference☆52Updated 6 years ago
- ☆133Updated last year
- Repository for a workshop on Complexity Science☆39Updated 3 years ago
- Statistics and Machine Learning in Python☆70Updated 4 years ago
- A Primer on Python for Statistical Programming and Data Science☆26Updated 6 years ago
- Experimenting with and teaching probabilistic programming☆104Updated 3 years ago
- Workshop on Bayesian inference using PyMC☆27Updated 3 years ago