davidrosenberg / ttml2021fallLinks
DS-GA 3001: Tools and Techniques for Machine Learning (NYU Fall 2021)
☆46Updated last year
Alternatives and similar repositories for ttml2021fall
Users that are interested in ttml2021fall are comparing it to the libraries listed below
Sorting:
- Code used in the causality course (401-4632-15) at ETH Zurich.☆22Updated 6 years ago
- Materials for class on topics in deep learning (STAT 991, UPenn/Wharton)☆95Updated 2 years 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
- Code for the book Art of Feature Engineering☆32Updated 3 years ago
- Repository containing the code of the projects presented in my personal website.☆42Updated last week
- Flowchart to help choose which causal inference book to read. See https://bradyneal.github.io/which-causal-inference-book for more info s…☆59Updated 5 years ago
- ☆81Updated 2 years ago
- Lecture Notes on Statistical Inference☆76Updated 8 months ago
- Materials Collection for Causal Inference☆47Updated 2 years ago
- Python code for Computer Age Statistical Inference☆52Updated 6 years ago
- Computational Statistics and Statistical Computing☆37Updated 4 years ago
- A repository for collating all the resources such as articles, blogs, papers, and books related to Bayesian Statistics.☆115Updated 3 years ago
- Repository for ML in Practice Course at CMU (10-718)☆64Updated last year
- 🪜 Bayesian Hierarchical Models at Scale☆51Updated 3 years ago
- In which I play with the ideas surrounding causality☆53Updated 2 years ago
- Explainable Boosted Scoring with Python: turning XGBoost and CatBoost classifiers into explainable scorecards☆15Updated 2 months ago
- ☆79Updated 4 years ago
- The cause2e package provides tools for performing an end-to-end causal analysis of your data. Developed by Daniel Grünbaum (@dg46).☆60Updated 2 months ago
- This course is an overview of applied causal inference.☆49Updated last month
- 🌀 Stanford CS 228 - Probabilistic Graphical Models☆86Updated 6 years ago
- Hypothesis and statistical testing in Python☆64Updated 4 years ago
- LaTeX source code for the slides☆23Updated 4 years ago
- Notebooks for Applied Causal Inference Powered by ML and AI☆127Updated 3 months ago
- Bayesian Learning course at Stockholm University☆153Updated last year
- M6-Forecasting competition☆43Updated last year
- Implementation of algorithms from the paper "Globally-Consistent Rule-Based Summary-Explanations for Machine Learning Models: Application…☆25Updated 3 years ago
- Tools for The Book of Statistical Proofs☆91Updated 6 months ago
- Course syllabus, notes, projects for USF's MSDS689☆61Updated last year
- GRAPL: A computational library for nonparametric structural causal modelling, analysis and inference☆81Updated 6 months ago
- Boosting scorecards☆14Updated last month