jgamper / experimentation-resources
A collection of experimentation papers/books/articles that I found useful
☆43Updated 3 years ago
Alternatives and similar repositories for experimentation-resources:
Users that are interested in experimentation-resources are comparing it to the libraries listed below
- ☆80Updated 11 months ago
- Papers and Resources on running A/B Experiments☆90Updated 3 years ago
- Code and notebooks for my Medium blog posts☆123Updated last year
- A list of blogs, videos, and other content that provides advice on building experimentation and A/B testing platforms☆157Updated 2 years ago
- ☆88Updated last year
- A full example for causal inference on real-world retail data, for elasticity estimation☆50Updated 3 years ago
- The Identification and Estimation of Direct and Indirect Effects in A/B Tests through Causal Mediation Analysis☆23Updated 2 years ago
- A package to compute a marketing mix model.☆70Updated last year
- Unstructured Code with interesting analysis☆37Updated 6 months ago
- Code for the Book Causal Inference in Python☆310Updated last year
- The Ultimate Product Data Science & Analytics Resource☆66Updated 3 years ago
- scikit-learn compatible tools for building credit risk acceptance models☆99Updated 3 months ago
- Power analysis and AB test analysis library☆37Updated 3 weeks ago
- Synthetic difference in differences for Python☆77Updated last year
- Fit Sparse Synthetic Control Models in Python☆82Updated last year
- A Marketing Mix Modelling project for an E-Commerce company☆13Updated 2 years ago
- Code from the book Fighting Churn With Data☆285Updated last week
- Project work for Udacity's AB Testing Course☆82Updated 7 years ago
- (ml) - python implementation of bayesian media mix modelling with shape and carryover effect☆58Updated 3 years ago
- Causal Inference Crash Course for Scientists - contains slides and Jupyter notebooks☆92Updated 3 weeks ago
- A/B Testing — A complete guide to statistical testing☆168Updated 2 years ago
- A curated list of awesome machine learning libraries for marketing, including media mix models, multi touch attribution, causal inference…☆103Updated last year
- EconML/CausalML KDD 2021 Tutorial☆161Updated last year
- CausalLift: Python package for causality-based Uplift Modeling in real-world business☆347Updated last year
- Python/STAN Implementation of Multiplicative Marketing Mix Model, with deep dive into Adstock (carry-over effect), ROAS, and mROAS☆377Updated 2 years ago
- ☆16Updated last year
- Package for mixture sequential probability ratio test☆21Updated 2 years ago
- Datasets for Online Controlled Experiments☆10Updated last month
- Notes and Python scripts for A/B or Split Testing☆140Updated 2 years ago
- ☆103Updated 4 years ago