226

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).

0
265

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
10
  • 2
    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
  • 35
    I think 'a' in s.values should be faster for long Series.
    – DSM
    Jan 23 '14 at 21:48
  • 6
    @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
  • 4
    Starting from pandas 0.24.0 , using s.values and df.values is highly discoraged. See this. Also, s.values is actually much slower in some cases. Feb 1 '19 at 7:09
  • 2
    @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) Feb 1 '19 at 7:44
38

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
33
found = df[df['Column'].str.contains('Text_to_search')]
print(found.count())

the found.count() will contains number of matches

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

5
  • 4
    worked for me, but I used len(found) to get the count
    – kztd
    Apr 6 '19 at 21:35
  • 3
    Yes len(found) is a somewhat better option. Apr 8 '19 at 6:08
  • 1
    This approach worked for me but I had to include the parameters na=False and regex=False for my use case, as explained here: pandas.pydata.org/pandas-docs/stable/reference/api/…
    – Mabyn
    Oct 7 '19 at 22:24
  • 1
    But string.contains does a substring search. Ex: If a value called "head_hunter" is present. Passing "head" in str.contains matches and gives True which is wrong. Jun 8 '20 at 14:09
  • @karthikeyan Its not wrong. Depends on the context of your search. What if you are search for addresses or product. You'll need all product that fit description. Jun 27 '20 at 8:48
17

I did a few simple tests:

In [10]: x = pd.Series(range(1000000))

In [13]: timeit 999999 in x.values
567 µs ± 25.6 µs per loop (mean ± std. dev. of 7 runs, 1000 loops each)

In [24]: timeit 9 in x.values
666 µs ± 15.7 µs per loop (mean ± std. dev. of 7 runs, 1000 loops each)

In [16]: timeit (x == 999999).any()
6.86 ms ± 107 µs per loop (mean ± std. dev. of 7 runs, 100 loops each)

In [21]: timeit x.eq(999999).any()
7.03 ms ± 33.7 µs per loop (mean ± std. dev. of 7 runs, 100 loops each)

In [22]: timeit x.eq(9).any()
7.04 ms ± 60 µs per loop (mean ± std. dev. of 7 runs, 100 loops each)

In [15]: timeit x.isin([999999]).any()
9.54 ms ± 291 µs per loop (mean ± std. dev. of 7 runs, 100 loops each)

In [17]: timeit 999999 in set(x)
79.8 ms ± 1.98 ms per loop (mean ± std. dev. of 7 runs, 10 loops each)

Interestingly it doesn't matter if you look up 9 or 999999, it seems like it takes about the same amount of time using the in syntax (must be using binary search)

In [24]: timeit 9 in x.values
666 µs ± 15.7 µs per loop (mean ± std. dev. of 7 runs, 1000 loops each)

In [25]: timeit 9999 in x.values
647 µs ± 5.21 µs per loop (mean ± std. dev. of 7 runs, 1000 loops each)

In [26]: timeit 999999 in x.values
642 µs ± 2.11 µs per loop (mean ± std. dev. of 7 runs, 1000 loops each)

In [27]: timeit 99199 in x.values
644 µs ± 5.31 µs per loop (mean ± std. dev. of 7 runs, 1000 loops each)

In [28]: timeit 1 in x.values
667 µs ± 20.8 µs per loop (mean ± std. dev. of 7 runs, 1000 loops each)

Seems like using x.values is the fastest, but maybe there is a more elegant way in pandas?

1
  • 2
    It would be great if you change order of results from smallest to largest. Nice work!
    – smm
    Jan 10 '20 at 0:06
7

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.

1

Simple condition:

if any(str(elem) in ['a','b'] for elem in df['column'].tolist()):
0

Use

df[df['id']==x].index.tolist()

If x is present in id then it'll return the list of indices where it is present, else it gives an empty list.

-4

Suppose you dataframe looks like :

enter image description here

Now you want to check if filename "80900026941984" is present in the dataframe or not.

You can simply write :

if sum(df["filename"].astype("str").str.contains("80900026941984")) > 0:
    print("found")

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