I have a dataframe (df) with approx 800 rows with data like this:

Age: 45 Ticket:1

Age: 30 Ticket:0

1 = has a ticket 0 = does not have a ticket

(sorry, that didn't format very well. It's basically 3 columns in the dataframe: Name, Age and Ticket)

Using Pandas, I am wondering what the syntax is for find the Top 10 oldest people who HAVE a ticket

So far I have:


I know that's not correct but it shows what the parameters are that I am looking for. Any ideas? Thanks

3 Answers 3


If you only want names of the old people,then

df[df['Ticket'] == 1].sort_values('Age')['Names'].head(10)
  • Thank you both. Both of those solutions ran, and they are sorting by Age descending (which is what I want) but neither of them are limiting the dataset to 10 rows. Hmmmm
    – JD2775
    May 9, 2017 at 1:10
  • sorry bigbounty, it only let me upvote the first one for some reason
    – JD2775
    May 9, 2017 at 1:14
  • @JD2775 I just up voted your question. You now have 15 reputation and can upvote.
    – piRSquared
    May 9, 2017 at 1:31
  • And Plus one from me.
    – piRSquared
    May 9, 2017 at 1:31
  • Ha, thanks guys. Newbie probs. So, no idea why the returning list isn't stopping at 10? (see my first reply to the answers)
    – JD2775
    May 9, 2017 at 1:37

One of the common ways to do this is to use nlargest method:

df[df.Ticket == 1].nlargest(10, 'Age')['Names']

This way you don't need to do sorting explicitly


mask, sort, head

df[df.Ticket == 1].sort_values('Age').head(10)

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