I think you can use concat:
df_pivoted = countryKPI.pivot_table(index='country',
columns='indicator',
values='value',
fill_value=0)
print (df_pivoted)
indicator x z
country
Austria 7 7
...
thanks. For now it is (still) running but already showing some warning messages which were not present for the example. --> Future warning sort is deprecated use sort_values
For the small example removing the other calls like
works just fine and that means that I would not require to specify the names in case of multiple / changing countryKPI_names. Why did you add these lines?
I have to admit I am not sure if it works on the big dataset as this seems to be a pretty time-consuming operation. I manually stopped it. If I have it run on a small set of data e.g. 10 rows the kernel is crashing repeatedly.
the grouped operation returns a value error: shape of passed values is 43 - 166 but indices imply 43 158
Strange -> on the toy example it fails in case the dataframe to merge contains categories # we've already checked that all categoricals are the same, so if their
ValueError: incompatible categories in categorical concat
I will try the group-by solution on the big dataset without categories and strings only
Indeed the problem persists.
@jezrael Thank you very much for your help again. Unfortunately, I could not get your solution to run on the big data frame I use. I hope you are not too disappointed that I selected the other solution as correct - > but both solutions do work fine on the small example.