I neglected to include the rationale: the assumption is this will be a
repeatedly needed process thus a reusable method were helpful. The
predicate/input rules that are supported will need to be flexible enough to
support the range of input data domains and use cases . For my workflows
the predic
Hi Mich!
I think you can combine the good/rejected into one method that
internally:
- Create good/rejected df's given an input df and input rules/predicates
to apply to the df.
- Create a third df containing the good rows and the rejected rows with
the bad columns nulled out
- Ap