mwidjaja1 / DSOnMacARMLinks
My notes on how I created my Data Science environment on macOS ARM
☆116Updated 4 years ago
Alternatives and similar repositories for DSOnMacARM
Users that are interested in DSOnMacARM are comparing it to the libraries listed below
Sorting:
- Statistical Rethinking (2nd Ed) with Tensorflow Probability☆273Updated 3 years ago
- Materials of the Nordic Probabilistic AI School 2019.☆130Updated 5 years ago
- To Run, Manage and Visualize Large Scale Experiments☆172Updated 2 years ago
- In which I put together my thoughts on the practice of data science.☆303Updated 2 years ago
- Mediterranean Machine Learning school tutorials☆93Updated 4 years ago
- ☆233Updated 4 years ago
- Statistical Rethinking course in pymc3☆144Updated 5 years ago
- Inference case studies in jupyter☆93Updated 7 years ago
- Presented at Scipy Conference 2019☆127Updated 5 years ago
- Functional machine learning for fun☆85Updated 4 years ago
- Flowchart to help choose which causal inference book to read. See https://bradyneal.github.io/which-causal-inference-book for more info s…☆60Updated 6 years ago
- A Visual Exploration of Gaussian Processes☆106Updated 2 years ago
- COMS W4995 Applied Machine Learning - Spring 20☆246Updated 3 years ago
- Crash course to master gradient-based machine learning. Also secretly a JAX course in disguise!☆231Updated last year
- Toy example of an applied ML pipeline for me to experiment with MLOps tools.☆209Updated 3 years ago
- Learn Pyro through the M5 forecasting competition☆86Updated 5 years ago
- Bayesian Bandits☆68Updated 2 years ago
- legend☆208Updated 2 years ago
- ⏸ Parallelized hyper-param optimization with validation set, not crossval☆91Updated 3 years ago
- Template for nbdev projects☆324Updated 3 years ago
- Live Python Notebooks with any Editor☆278Updated 3 years ago
- Convert from Python script to Jupyter notebook and vice versa☆128Updated last year
- Introduction to Probability and Statistics☆56Updated 3 years ago
- Collection of articles listing reasons why data science projects fail.☆464Updated 4 years ago
- Ten Simple Rules for Writing and Sharing Computational Analyses in Jupyter Notebooks☆262Updated last year
- Python port of "Common statistical tests are linear models" by Jonas Kristoffer Lindeløv.☆95Updated last year
- Thrilling tales of heroic feats by ML's larger-than-life champions.☆187Updated 4 years ago
- Applied Machine Learning with Python☆80Updated last year
- A toolset for black-box hyperparameter optimisation.☆136Updated 5 years ago
- Materials for class on topics in deep learning (STAT 991, UPenn/Wharton)☆94Updated 2 years ago