16

Is there any way I can retain the original index of my large dataframe after I perform a groupby? The reason I need to this is because I need to do an inner merge back to my original df (after my groupby) to regain those lost columns. And the index value is the only 'unique' column to perform the merge back into. Does anyone know how I can achieve this?

My DataFrame is quite large. My groupby looks like this:

df.groupby(['col1', 'col2']).agg({'col3': 'count'}).reset_index()

This drops my original indexes from my original dataframe, which I want to keep.

2
  • When you group data, what index do you want each row to have? It's likely each group will combine many rows in the original dataframe.. Do you, for example, expect a list of indices relating to the group?
    – jpp
    Mar 11 '18 at 3:37
  • 1
    yes! that is what I'm looking for
    – Hana
    Mar 11 '18 at 3:40
14

You can elevate your index to a column via reset_index. Then aggregate your index to a tuple via agg, together with your count aggregation.

Below is a minimal example.

import pandas as pd, numpy as np

df = pd.DataFrame(np.random.randint(0, 4, (50, 5)),
                  index=np.random.randint(0, 4, 50))

df = df.reset_index()

res = df.groupby([0, 1]).agg({2: 'count', 'index': lambda x: tuple(x)}).reset_index()

#     0  1  2            index
# 0   0  0  4     (2, 0, 0, 2)
# 1   0  1  4     (0, 3, 1, 1)
# 2   0  2  1             (1,)
# 3   0  3  1             (3,)
# 4   1  0  4     (1, 2, 1, 3)
# 5   1  1  2           (1, 3)
# 6   1  2  4     (2, 1, 2, 2)
# 7   1  3  1             (2,)
# 8   2  0  5  (0, 3, 0, 2, 2)
# 9   2  1  2           (0, 2)
# 10  2  2  5  (1, 1, 3, 3, 2)
# 11  2  3  2           (0, 1)
# 12  3  0  4     (0, 3, 3, 3)
# 13  3  1  4     (1, 3, 0, 1)
# 14  3  2  3        (3, 2, 1)
# 15  3  3  4     (3, 3, 2, 1)
2
  • 3
    As I understand the OPs question.. this is the correct answer. Aug 21 '19 at 6:57
  • 1
    Correct answer indeed1 Sep 9 '19 at 17:38
8

I think you are are looking for transform in this situation:

df['count'] = df.groupby(['col1', 'col2'])['col3'].transform('count')
2
  • 2
    according to the comments, he wants to know which indices contributed to each group
    – jpp
    Mar 11 '18 at 4:24
  • This seems to be the most optimal solution out there as of Pandas 0.25.1
    – DACW
    Aug 28 '19 at 19:17
0

You should not use 'reset_index()' if you want to keep your original indexes

2
  • 1
    that doesn't work, even if the reset_index() is not there, the groupby does not retain the original indexes
    – Hana
    Mar 11 '18 at 3:35
  • 1
    you are correct, it won't solve the problem. My bad. Let me see if I can find any solution.
    – manoj
    Mar 11 '18 at 4:00

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