Bodhi8 / pycausalsimLinks
PyCausalSim is a Python framework for discovering and validating causal relationships through simulation. Unlike traditional analytics that only show correlation, PyCausalSim uses counterfactual simulation and structural causal models to identify true cause-and-effect relationships in your data.
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