I am sure there is an obvious way to do this but cant think of anything slick right now.

Basically instead of raising exception I would like to get True or False to see if a value exists in pandas df index.

import pandas as pd
df = pd.DataFrame({'test':[1,2,3,4]}, index=['a','b','c','d'])
df.loc['g']  # (should give False)

What I have working now is the following

sum(df.index == 'g')
  • 2
    What about any(df.index == 'g') ?
    – luffe
    May 8, 2014 at 18:13

7 Answers 7


This should do the trick

'g' in df.index
  • 9
    This does not seem to work when several entries share the same index values.
    – MaximG
    Oct 16, 2014 at 17:59
  • 2
    @MaximG What do you mean? This works for a non-unique index as well.
    – joris
    Jul 30, 2015 at 15:40
  • 1
    Also work for multi index. If your index has length n, then a tuple of any length from 1..n can be checked
    – Minh Triet
    Mar 5, 2018 at 10:26
  • 3
    For others coming here, you may need to use 'g' in df.columns if your dataframe was defined with column headings rather than an index, e.g.: df = pandas.DataFrame({'test':[1,2,3,4]}, columns=['a','b','c','d'])
    – Tahlor
    Jun 22, 2018 at 14:54
  • 11
    Is this constant time or linear?
    – Lokesh
    Nov 23, 2018 at 11:00

Multi index works a little different from single index. Here are some methods for multi-indexed dataframe.

df = pd.DataFrame({'col1': ['a', 'b','c', 'd'], 'col2': ['X','X','Y', 'Y'], 'col3': [1, 2, 3, 4]}, columns=['col1', 'col2', 'col3'])
df = df.set_index(['col1', 'col2'])

in df.index works for the first level only when checking single index value.

'a' in df.index     # True
'X' in df.index     # False

Check df.index.levels for other levels.

'a' in df.index.levels[0] # True
'X' in df.index.levels[1] # True

Check in df.index for an index combination tuple.

('a', 'X') in df.index  # True
('a', 'Y') in df.index  # False

Just for reference as it was something I was looking for, you can test for presence within the values or the index by appending the ".values" method, e.g.

g in df.<your selected field>.values
g in df.index.values

I find that adding the ".values" to get a simple list or ndarray out makes exist or "in" checks run more smoothly with the other python tools. Just thought I'd toss that out there for people.

  • but AttributeError: 'DataFrame' object has no attribute 'field'
    – Gank
    Jul 30, 2015 at 14:13
  • 2
    Hi Gank. The "field" was supposed to show you can apply the ".values" method to various fields of the dataframe such as columns or a selected column. ".index" is an example of replacing "field" with an actual field that is available :) I guess that could be clearer... Jul 30, 2015 at 16:15
  • 2
    This was really helpful to point out. I have a hierarchical case where in g in df.index produces true and in g in df.index.values false. Interesting.
    – watsonic
    Sep 21, 2015 at 20:34
  • @watsonic - one caution point there is to see if one of those is returning tuples due to hierarchy. Make sure to look what both are putting out (e.g. in ipython or command line) to make sure you understand what you're comparing to. Another thing you can do with hierarchical indexes is df.index.get_level_values(<level name>) to make things more understandable - depending on your application of course. Sep 21, 2015 at 20:40
  • 3
    This will increase lookup time considerably, because instead of using the pandas optimized search indexer you are traversing a list. Apologies for formatting, python data = [{'a': random.random(), 'b': random.randint(0, 10), 'c': i} for i in range(10000)] data2 = [{'a': random.random(), 'b': random.randint(0, 10), 'c': i} for i in range(100)] df1 = pd.DataFrame.from_records(data) df2 = pd.DataFrame.from_records(data2) timeit 99999 in df2.index # 442ns timeit 99999 in df1.index # 476ns timeit 99999 in df2.index.values # 3310ns timeit 99999 in df1.index.values # 63900ns
    – G.S
    Oct 11, 2021 at 11:05

Code below does not print boolean, but allows for dataframe subsetting by index... I understand this is likely not the most efficient way to solve the problem, but I (1) like the way this reads and (2) you can easily subset where df1 index exists in df2:

df3 = df1[df1.index.isin(df2.index)]

or where df1 index does not exist in df2...

df3 = df1[~df1.index.isin(df2.index)]

with DataFrame: df_data

>>> df_data
  id   name  value
0  a  ampha      1
1  b   beta      2
2  c     ce      3

I tried:

>>> getattr(df_data, 'value').isin([1]).any()
>>> getattr(df_data, 'value').isin(['1']).any()


>>> 1 in getattr(df_data, 'value')
>>> '1' in getattr(df_data, 'value')

So fun :D

  • isin won't check for the dtype. df['value'].isin([True]).any() try this, it will also gives you True, Because it matches with 1. True -> 1. Mar 22, 2019 at 8:23
df = pandas.DataFrame({'g':[1]}, index=['isStop'])


if 'g' in df.index:
    print("find g")

if 'isStop' in df.index:
    print("find a") 
  • What is isStop?
    – Nabin
    Jan 17, 2019 at 12:56

I like to use:

if 'value' in df.index.get_level_values(0):

get_level_values method is good because it allows you to get the value in the indexes no matter if your index is simple or composite.

Use 0 (zero) if you have a single index in your dataframe [or you want to check the first index in multiple index levels]. Use 1 for the second index, and so on...

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