147

I want to apply a function with arguments to a series in python pandas:

x = my_series.apply(my_function, more_arguments_1)
y = my_series.apply(my_function, more_arguments_2)
...

The documentation describes support for an apply method, but it doesn't accept any arguments. Is there a different method that accepts arguments? Alternatively, am I missing a simple workaround?

Update (October 2017): Note that since this question was originally asked that pandas apply() has been updated to handle positional and keyword arguments and the documentation link above now reflects that and shows how to include either type of argument.

170
0

Newer versions of pandas do allow you to pass extra arguments (see the new documentation). So now you can do:

my_series.apply(your_function, args=(2,3,4), extra_kw=1)

The positional arguments are added after the element of the series.


For older version of pandas:

The documentation explains this clearly. The apply method accepts a python function which should have a single parameter. If you want to pass more parameters you should use functools.partial as suggested by Joel Cornett in his comment.

An example:

>>> import functools
>>> import operator
>>> add_3 = functools.partial(operator.add,3)
>>> add_3(2)
5
>>> add_3(7)
10

You can also pass keyword arguments using partial.

Another way would be to create a lambda:

my_series.apply((lambda x: your_func(a,b,c,d,...,x)))

But I think using partial is better.

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  • 12
    For a DataFrame apply method accepts args argument, which is a tuple holding additional positional arguments or **kwds for named ones. I created an issue to have this also for Series.apply() github.com/pydata/pandas/issues/1829 – Wouter Overmeire Aug 30 '12 at 20:11
  • 28
    Feature has been implemented, will be in upcoming pandas release – Wes McKinney Sep 9 '12 at 0:23
  • 4
    This is a nice answer but the first 2/3 of it is really obsolete now. IMO, this answer could be nicely updated by just being a link to the new documentation plus a brief example of how to use with position and/or keyword args. Just FWIW and not a criticism of the original answer, just would benefit from an update IMO, especially as it is a frequently read answer. – JohnE Oct 15 '17 at 14:59
  • @watsonic The documentation has since been updated and clicking on the old links leads to current documentation which now answers the question very well. – JohnE Oct 16 '17 at 16:49
  • Note: If you are passing a single string argument, for example 'abc', then args=('abc') will be evaluated as three arguments ('a', 'b', 'c'). To avoid this, you must pass a tuple containing the string, and to do that, include a trailing comma: args=('abc',) – Rocky K Jun 20 at 12:22
82
0

Steps:

  1. Create a dataframe
  2. Create a function
  3. Use the named arguments of the function in the apply statement.

Example

x=pd.DataFrame([1,2,3,4])  

def add(i1, i2):  
    return i1+i2

x.apply(add,i2=9)

The outcome of this example is that each number in the dataframe will be added to the number 9.

    0
0  10
1  11
2  12
3  13

Explanation:

The "add" function has two parameters: i1, i2. The first parameter is going to be the value in data frame and the second is whatever we pass to the "apply" function. In this case, we are passing "9" to the apply function using the keyword argument "i2".

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  • 2
    Exactly what I was looking for. Notably, this does not require creating a custom function just to handle a Series (or df). Perfect! – Connor May 24 '19 at 17:39
  • The only remaining question is: How to pass a keyword argument to the first arg in add (i1) and iterate with i2? – Connor May 24 '19 at 17:43
  • I think this is the best answer – crypdick Oct 28 '19 at 22:35
43
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Series.apply(func, convert_dtype=True, args=(), **kwds)

args : tuple

x = my_series.apply(my_function, args = (arg1,))
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  • 11
    Thanks! Can you explain why args = (arg1,) needs a comma after the first argument? – DrMisha May 5 '15 at 18:19
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    @MishaTeplitskiy, you need the comma in order for Python to understand the parentheses' contents to be a tuple of length 1. – prooffreader May 18 '15 at 21:10
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    What about putting in args for the func. So if I wish to apply pd.Series.mean(axis=1) how do I put in the axis=1? – Little Bobby Tables Apr 7 '16 at 10:57
  • 1
    As a side note, you can also add a keyword argument without using the <args> parameter (e.g.: x = my_series.apply(my_function, keyword_arg=arg1), where <keyword_arg> is among the input parameters of my_function) – lev Apr 8 '16 at 8:15
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    this response is too short and doesn't explain anything – FistOfFury Apr 17 '17 at 22:08
23
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You can pass any number of arguments to the function that apply is calling through either unnamed arguments, passed as a tuple to the args parameter, or through other keyword arguments internally captured as a dictionary by the kwds parameter.

For instance, let's build a function that returns True for values between 3 and 6, and False otherwise.

s = pd.Series(np.random.randint(0,10, 10))
s

0    5
1    3
2    1
3    1
4    6
5    0
6    3
7    4
8    9
9    6
dtype: int64

s.apply(lambda x: x >= 3 and x <= 6)

0     True
1     True
2    False
3    False
4     True
5    False
6     True
7     True
8    False
9     True
dtype: bool

This anonymous function isn't very flexible. Let's create a normal function with two arguments to control the min and max values we want in our Series.

def between(x, low, high):
    return x >= low and x =< high

We can replicate the output of the first function by passing unnamed arguments to args:

s.apply(between, args=(3,6))

Or we can use the named arguments

s.apply(between, low=3, high=6)

Or even a combination of both

s.apply(between, args=(3,), high=6)
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