Diagnostic Metrics

Diagnostic metrics capture basic information of synthetic data, such as the format and validity. They represent the most basic kinds of measurements you can make to ensure nothing is going wrong in your synthetic data creation process.

We expect that diagnostic metrics should almost always achieve perfect scores. The only exception would be if you have made an explicit choice to deviate from the real data in some way. (For example, you purposely want the synthetic data to go out-of-bounds.)

Browse

Apply these metrics to individual columns and tables in your data:

Last updated