69

I have the following DataFrame:

   a  b  c
b
2  1  2  3
5  4  5  6

As you can see, column b is used as an index. I want to get the ordinal number of the row fulfilling ('b' == 5), which in this case would be 1.

The column being tested can be either an index column (as with b in this case) or a regular column, e.g. I may want to find the index of the row fulfilling ('c' == 6).

4 Answers 4

75

Use Index.get_loc instead.

Reusing @unutbu's set up code, you'll achieve the same results.

>>> import pandas as pd
>>> import numpy as np


>>> df = pd.DataFrame(np.arange(1,7).reshape(2,3),
                  columns = list('abc'),
                  index=pd.Series([2,5], name='b'))
>>> df
   a  b  c
b
2  1  2  3
5  4  5  6
>>> df.index.get_loc(5)
1
4
  • 11
    This is not what OP wants. You are answering the question, "What is the ordinal location of a given index?". OP wants to know, "What is the ordinal location of a row that fulfills a given condition?". That is, the input is a certain condition e.g. (df.b == 5) or (df.c == 6). May 22, 2016 at 20:50
  • OP said "The column being tested can be either an index column (as with b in this case) or a regular column, e.g. I may want to find the index of the row fulfilling ('c' == 6)"
    – Pete
    Dec 8, 2016 at 17:22
  • Note that Index.get_loc() only returns an integer if the index has all unique values. Otherwise, it returns a boolean mask array.
    – BioData41
    Feb 17, 2023 at 23:12
  • I added an alternate answer that always returns an array of integer values as the return type, whether searching based on index or a column, and whether or not the index has unique or non-unique values.
    – BioData41
    Feb 17, 2023 at 23:41
55

You could use np.where like this:

import pandas as pd
import numpy as np
df = pd.DataFrame(np.arange(1,7).reshape(2,3),
                  columns = list('abc'), 
                  index=pd.Series([2,5], name='b'))
print(df)
#    a  b  c
# b         
# 2  1  2  3
# 5  4  5  6
print(np.where(df.index==5)[0])
# [1]
print(np.where(df['c']==6)[0])
# [1]

The value returned is an array since there could be more than one row with a particular index or value in a column.

3
  • 17
    Instead of doing np.where(df.index == 5)[0], pandas has a get_loc function which seems more kosher. pandas.pydata.org/pandas-docs/stable/generated/…
    – hlin117
    Jul 30, 2015 at 18:01
  • 2
    @hlin117 - your comment should be the correct answer, please add it
    – ihadanny
    Feb 1, 2016 at 14:40
  • Looks way tidier and more comprehensible than the pandas approach.
    – userX
    Mar 31, 2020 at 22:47
15

With Index.get_loc and general condition:

>>> import pandas as pd
>>> import numpy as np


>>> df = pd.DataFrame(np.arange(1,7).reshape(2,3),
                  columns = list('abc'),
                  index=pd.Series([2,5], name='b'))
>>> df
   a  b  c
b
2  1  2  3
5  4  5  6
>>> df.index.get_loc(df.index[df['b'] == 5][0])
1
0

The other answers based on Index.get_loc() do not provide a consistent result, because this function will return in integer if the index consists of all unique values, but it will return a boolean mask array if the index does not consist of unique values. A more consistent approach to return a list of integer values every time would be the following, with this example shown for an index with non-unique values:

df = pd.DataFrame([
    {"A":1, "B":2}, {"A":2, "B":2}, 
    {"A":3, "B":4}, {"A":1, "B":3}
], index=[1,2,3,1])

If searching based on index value:

[i for i,v in enumerate(df.index == 1) if v]
[0, 3]

If searching based on a column value:

[i for i,v in enumerate(df["B"] == 2) if v]
[0, 1]

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