15

I have a DF in the following format:

                   col1    col2
ID          Date
 1    1993-12-31      4       6
      1994-12-31      8       5
      1995-12-31      4       7
      1996-12-31      3       3
 2    2000-12-31      7       8
      2001-12-31      5       9
      2002-12-31      8       4

And I want to reset the 'Date' index giving the following:

             col1    col2
ID    Date
 1       0      4       6
         1      8       5
         2      4       7
         3      3       3
 2       0      7       8
         1      5       9
         2      8       4

I thought simply df.reset_index(level='Date', inplace=True, drop=True) would do it, but it does not.

1
  • Yes, that's the behavior I was expecting from reset_index too...
    – Confounded
    Commented Oct 29, 2023 at 23:47

5 Answers 5

11

Using pd.MultiIndex.from_arrays and groupby + cumcount.

df.index = pd.MultiIndex.from_arrays(
    [df.index.get_level_values(0), df.groupby(level=0).cumcount()],
    names=['ID', 'Date'])

df
         col1  col2
ID Date            
1  0        4     6
   1        8     5
   2        4     7
   3        3     3
2  0        7     8
   1        5     9
   2        8     4

This won't generalise to N levels, but there should be a df.index.set_levels equivalent I'm forgetting...

1
  • What is I want to do the same thing but on multi-level columns rather than index? One way is to probably transpose twice, but apparently it changes data types everywhere. Is there a way to do it without transposing? Thank you.
    – Confounded
    Commented Oct 26, 2023 at 7:20
6

Using set_index and cumcount:

tmp = df.reset_index('Date', drop=True)
tmp.set_index(df.groupby(level=0).cumcount().rename('Date'), append=True)

         col1  col2
ID Date
1  0        4     6
   1        8     5
   2        4     7
   3        3     3
2  0        7     8
   1        5     9
   2        8     4
4

You can groupby ID, then reset the index on each group using apply:

new_df = (df.groupby(df.index.get_level_values('ID'))
          .apply(lambda x: x.reset_index()).drop(['ID','Date'],1))

new_df.index = new_df.index.rename(['ID','Date'])

>>> new_df
         col1  col2
ID Date            
1  0        4     6
   1        8     5
   2        4     7
   3        3     3
2  0        7     8
   1        5     9
   2        8     4
3

New Answer

Not as cool as the old answer but I'd rather be accurate than cool.

from collections import defaultdict
from itertools import count
d = defaultdict(count)

lbl = []
for a, *_ in df.index.values:
    lbl.append(next(d[a]))

lvl = pd.RangeIndex(max(lbl) + 1)

df.set_index(df.index.set_labels(lbl, 1).set_levels(lvl, 1))

         col1  col2
ID Date            
1  0        4     6
   1        8     5
   2        4     7
   3        3     3
2  0        7     8
   1        5     9
   2        8     4

OLD ANSWER

Do Not Use

I misread the question. I didn't see that the new index needed to reset for every group.

Hopefully useful to someone.

You can use pandas.MultiIndex.set_levels

n = 1
lvl = df.index.levels[n]
new_lvl = pd.RangeIndex(len(lvl))
new_idx = df.index.set_levels(new_lvl, n)
df.set_index(new_idx)

         col1  col2
ID Date            
1  0        4     6
   1        8     5
   2        4     7
   3        3     3
2  4        7     8
   5        5     9
   6        8     4

One-line

Yay! \o/

df.set_index(df.index.set_levels(pd.RangeIndex(len(df.index.levels[1])), 1))

         col1  col2
ID Date            
1  0        4     6
   1        8     5
   2        4     7
   3        3     3
2  4        7     8
   5        5     9
   6        8     4

In place

df.index.set_levels(pd.RangeIndex(len(df.index.levels[1])), 1, inplace=True)
df

         col1  col2
ID Date            
1  0        4     6
   1        8     5
   2        4     7
   3        3     3
2  4        7     8
   5        5     9
   6        8     4
1

Try this:

df.groupby(level=0).apply(lambda _group:_group.reset_index())

***vrsions warning:

  • the following behavior was tested on pandas version: "1.1.2"

  • according to Pandas - Release notes:

    -> it seem that from version 1.3.0 may be a fix that could effect this method , see Bug-Fix

Example:

let's create MultiIndex df by concatenate dictionary with 2 df, such as the key of each level will be appended into the index level

import pandas as pd
import numpy as np

raw_df = pd.concat({'First':pd.DataFrame(np.random.rand(4,4),index=range(4)),
                    'Second':pd.DataFrame(np.random.rand(4,4),index=range(41,45))})

enter image description here

result:

result_df = raw_df.groupby(level=0).apply(lambda _group:_group.reset_index(drop=True))

enter image description here

1
  • 1
    It would be nice to show the output of your command applied to the given data frame and whether this really matches the output the OP wants. Commented Mar 3, 2022 at 9:47

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