Passing in custom probability thresholds for classification

Hi there!

I saw this earlier thread: Predict a class using a threshold different than the 0.5 default with tidymodels

I ran into the same question but just wanted to ask if passing in our own probability thresholds for classification was still on the todolist for the next release of workflows?

I found the probably package which could be a workaround for now:

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