5

Executing the following merge

import pandas as pd
s = pd.Series(range(5, 10), index=range(10, 15), name='score')
df = pd.DataFrame({'id': (11, 13), 'value': ('a', 'b')})
pd.merge(s, df, 'left', left_index=True, right_on='id')

results in this data frame:

     score  id value
NaN      5  10   NaN
0.0      6  11     a
NaN      7  12   NaN
1.0      8  13     b
NaN      9  14   NaN

Why does Pandas take the index from the right data frame as the index for the result, instead of the index from the left series, even though I specified both a left merge and left_index=True? The documentation says

left: use only keys from left frame

which I interpreted differently from the result I am actually getting. What I expected was the following data frame.

    score  id value
10      5  10   NaN
11      6  11     a
12      7  12   NaN
13      8  13     b
14      9  14   NaN

I am using Python 3.7.5 with Pandas 0.25.3.

2

Here's what happens:

  1. the output index is the intersection of the index/column merge keys [0, 1].
  2. missing keys are replaced with NaN
  3. NaNs result in the index type being upcasted to float

To set the index, just assign to it:

s2 = pd.merge(s, df, how='left', left_index=True, right_on='id')
s2.index = s.index

    score  id value
10      5  10   NaN
11      6  11     a
12      7  12   NaN
13      8  13     b
14      9  14   NaN

You can also merge on s (just because I dislike calling pd.merge directly):

(s.to_frame()
  .merge(df, how='left', left_index=True, right_on='id')
  .set_axis(s.index, axis=0, inplace=False))

    score  id value
10      5  10   NaN
11      6  11     a
12      7  12   NaN
13      8  13     b
14      9  14   NaN
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  • Thanks for your answer, but it does not really fit my usecase. I want to preserve the index from the series, which is not always equal to range(len(s)). I edited my question to clarify this point. – Hendrikto Dec 11 '19 at 21:06
  • 1
    @Hendrikto Should've just said so, you can set the index post-merge; see my edit. – cs95 Dec 11 '19 at 21:09
2

You can do this with reset_index:

df = pd.merge(s,df, 'left', left_index=True, right_on='id').reset_index(drop=True).set_index('id').rename_axis(index=None)
df.insert(1, 'id', df.index)

    score  id value
10      5  10   NaN
11      6  11     a
12      7  12   NaN
13      8  13     b
14      9  14   NaN
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  • Thanks for the answer, but the index is not always equal to range(len(s)). I should have been more clear about that. See the edit to my question. – Hendrikto Dec 11 '19 at 21:09
  • 1
    I updated to make that change so the answer is right – oppressionslayer Dec 11 '19 at 21:43
0

Since I do not need the duplicated information in both the id column and the index, I went with a combination of the answers from cs95 and oppressionslayer, and did the following:

pd.merge(s, df, 'left', left_index=True, right_on='id').set_index('id')

Which results in this data frame:

    score value
id             
10      5   NaN
11      6     a
12      7   NaN
13      8     b
14      9   NaN

Since this is different from what I initially asked for, I am leaving the answer from cs95 as the accepted answer, but I think this use case needs to be documented as well.

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