19

I'm iterating through a dataframe (called hdf) and applying changes on a row by row basis. hdf is sorted by group_id and assigned a 1 through n rank on some criteria.

# Groupby function creates subset dataframes (a dataframe per distinct group_id).
grouped = hdf.groupby('group_id')

# Iterate through each subdataframe. 
for name, group in grouped:

    # This grabs the top index for each subdataframe
    index1 = group[group['group_rank']==1].index

    # If criteria1 == 0, flag all rows for removal
    if(max(group['criteria1']) == 0):    
        for x in range(rank1, rank1 + max(group['group_rank'])):
            hdf.loc[x,'remove_row'] = 1

I'm getting the following error:

TypeError: int() argument must be a string or a number, not 'Int64Index'

I get the same error when I try to cast rank1 explicitly I get the same error:

rank1 = int(group[group['auction_rank']==1].index)

Can someone explain what is happening and provide an alternative?

4
  • It's not totally clear what you're asking. The line index1 = group[group['group_rank']==1].index returns what amounts to a list of all row numbers where group_rank is equal to 1. What would it mean to convert it to an integer? Commented Oct 13, 2015 at 21:10
  • the group_rank is unique for each group. So if there are 5 rows within a group, the group ranks will be 1 through 5. I will eventually remove all rows from hdf where remove_row = 1. The logic to figure out whether a row ought be removed from hdf needs to be done within the groupby for loop. I need the hdf index to make changes that persist to hdf, not the group dataframe. The loc function takes an int not an Int64Index. Commented Oct 13, 2015 at 21:14
  • 1
    Do you want to remove the entire group if max(group['criteria1'] == 0? Commented Oct 13, 2015 at 21:20
  • I do for this criteria but I need to remove specific rows within group for other criteria later on. Commented Oct 13, 2015 at 21:27

3 Answers 3

22

The answer to your specific question is that index1 is an Int64Index (basically a list), even if it has one element. To get that one element, you can use index1[0].

But there are better ways of accomplishing your goal. If you want to remove all of the rows in the "bad" groups, you can use filter:

hdf = hdf.groupby('group_id').filter(lambda group: group['criteria1'].max() != 0)

If you only want to remove certain rows within matching groups, you can write a function and then use apply:

def filter_group(group):
    if group['criteria1'].max() != 0:
        return group
    else:
        return group.loc[other criteria here]

hdf = hdf.groupby('group_id').apply(filter_group)

(If you really like your current way of doing things, you should know that loc will accept an index, not just an integer, so you could also do hdf.loc[group.index, 'remove_row'] = 1).

5
  • Let's say I have multiple removal criteria and a rather large data set. Will I improve performance by using a single group by and single for loop (per my example) or is performance on par with creating multiple functions and a groupby call for each? Commented Oct 13, 2015 at 21:45
  • If you're always grouping on the same thing, almost certainly the single groupby will be faster. Commented Oct 13, 2015 at 21:48
  • Thanks! So easy but struggled for a while before your help :)
    – sparrow
    Commented Jan 21, 2017 at 2:47
  • Int64Index is basically a one-element list! It is a genius answer! thanks. Commented Aug 2, 2019 at 20:16
  • Thanks for writing such a complete and helpful answer @EvanWright
    – AAmes
    Commented Feb 11, 2022 at 10:03
10

call tolist() on Int64Index object. Then the list can be iterated as int values.

1

simply add [0] to insure the getting the first value from the index

rank1 = int(group[group['auction_rank']==1].index[0])

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.