0

I am trying to get some metrics on some data at my company.

Basically, I have this dataframe that I have titled rawData. rawData contains a number of columns, mostly of parameters I am interested in. The specifics of this are not too important I dont think, so we can just think of these as parameter1, parameter2, and so on.

There is an additional column, which I have titled overallResult. This column will always contain either the string PASS, or FAIL. I am trying to extract a sub-dataframe from my raw data based on the overallResult. It sounds simple enough, but I am messing up my implementation somehow.

I make my mask like this: mask = rawData[overallResult].eq(truthyVal), where in this case truthyVal is PASS

The mask is created successfully, but..

The mask is like this: filteredData = rawData[mask] and I would like filteredData to now contain everything that rawData does, but only on rows where truthyVal exists.

and it always give me this error: cannot reindex on an axis with duplicate labels.

From what I understand, the mask contains a boolean list of my overallResult column, true if truthyVal is found on that row, and false if not. I am pretty sure that I am not applying my mask correctly here. There must be some small extra step I am overlooking, and at this point I am frustrated because it seems so simple, so IDK, any ideas?

1 Answer 1

0

You have the principle correct as the following basic example shows:

import pandas as pd

df = pd.DataFrame({'data': [ 1, 2, 3, 4, 5, 6],
                  'test': ['pass', 'fail', 'pass', 'fail','pass', 'fail']})

mask = df['test'].eq('pass')
print(df[mask])

To decipher your error message it would be necessary to see a data sample which produces it; you might get some useful insights here

1
  • Yeah its probably something like that, thanks for the response. I wanted to make sure I was not missing anything obvious, which I thought was pretty likely.
    – creosean
    Jan 26, 2023 at 1:25

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.