Using more than 1 function in a groupby-aggregate results in a multi-index which I then want to flatten.
example:
df = pd.DataFrame(
{'A': [1,1,1,2,2,2,3,3,3],
'B': np.random.random(9),
'C': np.random.random(9)}
)
out = df.groupby('A').agg({'B': [np.mean, np.std], 'C': np.median})
# example output
B C
mean std median
A
1 0.791846 0.091657 0.394167
2 0.156290 0.202142 0.453871
3 0.482282 0.382391 0.892514
Currently, I do it manually like this
out.columns = ['B_mean', 'B_std', 'C_median']
which gives me the result I want
B_mean B_std C_median
A
1 0.791846 0.091657 0.394167
2 0.156290 0.202142 0.453871
3 0.482282 0.382391 0.892514
but I'm looking for a way to automate this process, as this is monotonous, time consuming and allows me to make typos as I rename the columns.
Is there a way to return a flattened index instead of a multi-index when doing a groupby-aggregate?
I need to flatten the columns to save to a text file, which will then be read by a different program that doesn't handle multi-indexed columns.