The data quality guardian for causal inference & fraud detection
Catch flipped labels, temporal leaks, and causal biases before they destroy your model — in 5 lines of code.
first_purchase_ts<signup_tsin 38% of rows- Flipped fraud labels from bad annotation
- Treatment applied before user even existed
- Collider bias opening backdoor paths
- Silent distribution shift in causal features
I’ve personally lost months and millions because of these. Never again.
from causalguard import CausalGuard
report = CausalGuard(preset="fraud").scan(df)
report.show() # → instant beautiful HTML report with fixes