概要
This skill enables Claude to quickly load and explore internal CausalPy example datasets, facilitating immediate demonstrations and testing of causal inference methods. It supports a wide range of experimental designs, including Difference-in-Differences (DiD), Interrupted Time Series (ITS), Synthetic Control (SC), and Regression Discontinuity (RD). By providing instant access to curated data like the Brexit impact study or bank-specific DiD examples, it allows users to jump directly into analysis and model validation without needing to source external data files.