84

I am trying to determine whether there is an entry in a Pandas column that has a particular value. I tried to do this with if x in df['id']. I thought this was working, except when I fed it a value that I knew was not in the column 43 in df['id'] it still returned True. When I subset to a data frame only containing entries matching the missing id df[df['id'] == 43] there are, obviously, no entries in it. How to I determine if a column in a Pandas data frame contains a particular value and why doesn't my current method work? (FYI, I have the same problem when I use the implementation in this answer to a similar question).

105

in of a Series checks whether the value is in the index:

In [11]: s = pd.Series(list('abc'))

In [12]: s
Out[12]: 
0    a
1    b
2    c
dtype: object

In [13]: 1 in s
Out[13]: True

In [14]: 'a' in s
Out[14]: False

One option is to see if it's in unique values:

In [21]: s.unique()
Out[21]: array(['a', 'b', 'c'], dtype=object)

In [22]: 'a' in s.unique()
Out[22]: True

or a python set:

In [23]: set(s)
Out[23]: {'a', 'b', 'c'}

In [24]: 'a' in set(s)
Out[24]: True

As pointed out by @DSM, it may be more efficient (especially if you're just doing this for one value) to just use in directly on the values:

In [31]: s.values
Out[31]: array(['a', 'b', 'c'], dtype=object)

In [32]: 'a' in s.values
Out[32]: True
  • I don't want to know whether it is unique necessarily, mainly I want to know if it's there. – Michael Jan 23 '14 at 21:47
  • 14
    I think 'a' in s.values should be faster for long Series. – DSM Jan 23 '14 at 21:48
  • @DSM I assume there is some short circuiting... There is :) – Andy Hayden Jan 23 '14 at 21:51
  • 2
    @AndyHayden Do you know why, for 'a' in s, pandas chooses to check the index rather than the values of the series? In dictionaries they check keys, but a pandas series should behave more like a list or array, no? – Lei Nov 22 '17 at 17:55
  • 1
    @QusaiAlothman neither .to_numpy or .array are available on a Series, so I'm not entirely sure what alternative they're advocating (I don't read "highly discouraged"). In fact they're saying that .values may not return a numpy array, e.g. in the case of a categorical... but that's fine as in will still work as expected (indeed more efficiently that it's numpy array counterpart) – Andy Hayden Feb 1 at 7:44
17

You can also use pandas.Series.isin although it's a little bit longer than 'a' in s.values:

In [2]: s = pd.Series(list('abc'))

In [3]: s
Out[3]: 
0    a
1    b
2    c
dtype: object

In [3]: s.isin(['a'])
Out[3]: 
0    True
1    False
2    False
dtype: bool

In [4]: s[s.isin(['a'])].empty
Out[4]: False

In [5]: s[s.isin(['z'])].empty
Out[5]: True

But this approach can be more flexible if you need to match multiple values at once for a DataFrame (see DataFrame.isin)

>>> df = DataFrame({'A': [1, 2, 3], 'B': [1, 4, 7]})
>>> df.isin({'A': [1, 3], 'B': [4, 7, 12]})
       A      B
0   True  False  # Note that B didn't match 1 here.
1  False   True
2   True   True
1

Or use Series.tolist or Series.any:

>>> s = pd.Series(list('abc'))
>>> s
0    a
1    b
2    c
dtype: object
>>> 'a' in s.tolist()
True
>>> (s=='a').any()
True

Series.tolist makes a list about of a Series, and the other one i am just getting a boolean Series from a regular Series, then checking if there are any Trues in the boolean Series.

0

Simple condition:

if any(str(elem) in ['a','b'] for elem in df['column'].tolist()):
0
found = df[df['Column'].str.contains('Text_to_search')]
print(found.count())

the found.count() will contains number of matches and if

And if it is 0 then means string was not found in the Column.

0

I don't suggest to use "value in series", which can leads many errors. Please see this answer for detail: Using in operator with Pandas series

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