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I want to groupby some athletes by their name an get the smallst age from every person and then sort them by their age from the youngest to the oldest, but in my data there are also some Nan values and i get a FutureWarning: Passing list-likes to .loc or [] with any missing label will raise KeyError in the future, you can use .reindex() as an alternative. Is there any option to skip the records with the Nan values?

Here is my code, tab is a table I read form an csv file which i got from my teacher:

tabYoungest=tab.sort_values(by='Age')  
tabYoungestgesamt=tabYoungest.loc[tabYoungest.groupby('Name')['Age'].idxmin()]
tabYoungestgesamt.head(20)
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  • probably as simple as adding .dropna within the .loc: tabYoungest.groupby('Name')['Age'].idxmin().dropna()
    – ALollz
    Feb 11, 2019 at 20:00
  • you can use .fillna() to change those values, if you dont want to lose the info
    – Rolando cq
    Feb 11, 2019 at 20:11
  • Please provide MCVE of your data.
    – Vaishali
    Feb 11, 2019 at 20:13
  • It seems like to me that all you really need is tab.groupby('Name').min(), note also, you could have used tabYoungest.reindex(tabYoungest.groupby('Name')['Age'].idxmin()) as the warning states, if you didn't want to change your approach. Feb 11, 2019 at 20:17
  • .dropna() solved my proplem :) thx @ALollz
    – Kati0208
    Feb 20, 2019 at 17:21

1 Answer 1

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IIUC this can be achieved much more easily by using .sort_values + groupby + head. Output will be youngest age per name, sorted from youngest to oldest with all names with missing ages at the end.

Sample Data:

import pandas as pd
import numpy as np

np.random.seed(1)
tab = pd.DataFrame({'Name': list('ABCDEFGHIJ')*100,
                   'Age': np.random.normal(50,5,1000)})
tab.loc[1000] = ['Z', np.NaN]

Code:

tab = tab.sort_values('Age')
tab.groupby('Name').head(1)

     Name        Age
892     C  34.731178
661     B  36.045018
367     H  36.087328
738     I  36.508191
976     G  36.679370
589     J  37.418481
414     E  37.932485
5       F  38.492307
973     D  38.508971
790     A  39.568047
1000    Z        NaN
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  • Or just tab.groupby('Name').min() Feb 11, 2019 at 20:16
  • @juanpa.arrivillaga good point, that works here, followed by a .sort on age, as long as age is the only information needed. .head(1) is more in line with the output of .loc[...idxmin()] as it brings the entire row where the age is the minimum.
    – ALollz
    Feb 11, 2019 at 20:24
  • You could use tab.groupby('Name').agg(['idxmin','min']) in that case, although, I suspect head might be more efficient. Feb 11, 2019 at 20:27

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