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Can you tell me when to use these vectorization methods with basic examples? I see that map is a Series method whereas the rest are DataFrame methods. I got confused about apply and applymap methods though. Why do we have two methods for applying a function to a DataFrame? Again, simple examples which illustrate the usage would be great!


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4 Answers 4

up vote 88 down vote accepted

Straight from Wes McKinney's Python for Data Analysis book, pg. 132 (I highly recommended this book):

Another frequent operation is applying a function on 1D arrays to each column or row. DataFrame’s apply method does exactly this:

In [116]: frame = DataFrame(np.random.randn(4, 3), columns=list('bde'), index=['Utah', 'Ohio', 'Texas', 'Oregon'])

In [117]: frame
               b         d         e
Utah   -0.029638  1.081563  1.280300
Ohio    0.647747  0.831136 -1.549481
Texas   0.513416 -0.884417  0.195343
Oregon -0.485454 -0.477388 -0.309548

In [118]: f = lambda x: x.max() - x.min()

In [119]: frame.apply(f)
b    1.133201
d    1.965980
e    2.829781
dtype: float64

Many of the most common array statistics (like sum and mean) are DataFrame methods, so using apply is not necessary.

Element-wise Python functions can be used, too. Suppose you wanted to compute a formatted string from each floating point value in frame. You can do this with applymap:

In [120]: format = lambda x: '%.2f' % x

In [121]: frame.applymap(format)
            b      d      e
Utah    -0.03   1.08   1.28
Ohio     0.65   0.83  -1.55
Texas    0.51  -0.88   0.20
Oregon  -0.49  -0.48  -0.31

The reason for the name applymap is that Series has a map method for applying an element-wise function:

In [122]: frame['e'].map(format)
Utah       1.28
Ohio      -1.55
Texas      0.20
Oregon    -0.31
Name: e, dtype: object

Summing up, apply works on a row / column basis of a DataFrame, applymap works element-wise on a DataFrame, and map works element-wise on a Series.

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strictly speaking, applymap internally is implemented via apply with a little wrap-up over passed function parameter (rougly speaking replacing func to lambda x: [func(y) for y in x], and applying column-wise) – alko Nov 5 '13 at 20:53
Thanks for the explanation. Since map and applymap both work element-wise, I would expect a single method (either map or applymap) which would work both for a Series and a DataFrame. Probably there are other design considerations, and Wes McKinney decided to come up with two different methods. – marillion Nov 5 '13 at 21:58

@jeremiahbuddha mentioned that apply works on row/columns, while applymap works element-wise. But it seems you can still use apply for element-wise computation....

                   b         d         e
    Utah         NaN  1.435159       NaN
    Ohio    1.098164  0.510594  0.729748
    Texas        NaN  0.456436  0.697337
    Oregon  0.359079       NaN       NaN

                   b         d         e
    Utah         NaN  1.435159       NaN
    Ohio    1.098164  0.510594  0.729748
    Texas        NaN  0.456436  0.697337
    Oregon  0.359079       NaN       NaN
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Good catch with this. The reason this works in your example is because np.sqrt is a ufunc, i.e. if you give it an array, it will broadcast the sqrt function onto each element of the array. So when apply pushes np.sqrt on each columns, np.sqrt works itself on each of the elements of the columns, so you are essentially getting the same result as applymap. – jeremiahbuddha Jan 16 '14 at 0:22

Adding to the other answers, in a Series there are also map and apply.

Apply can make a DataFrame out of a series; however, map will just put a series in every cell of another series, which is probably not what you want.

In [41]: p=pd.Series([1,2,3])

In [42]: p.apply(lambda x: pd.Series([x, x]))
   0  1
0  1  1
1  2  2
2  3  3

In [43]: x: pd.Series([x, x]))
0    0    1
1    1
dtype: int64
1    0    2
1    2
dtype: int64
2    0    3
1    3
dtype: int64
dtype: object

Also if I had a function with side effects, such as "connect to a web server", I'd probably use apply just for the sake of clarity.


Map can use not only a function, but also a dictionary or another series. Let's say you want to manipulate permutations.


1 2 3 4 5
2 1 4 5 3

The square of this permutation is

1 2 3 4 5
1 2 5 3 4

You can compute it using map. Not sure if self-application is documented, but it works in 0.15.1.

In [39]: p=pd.Series([1,0,3,4,2])

In [40]:
0    0
1    1
2    4
3    2
4    3
dtype: int64
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Just wanted to point out, as I struggled with this for a bit

def f(x):
    if x < 0:
        x = 0
    elif x > 100000:
        x = 100000
    return x


this does not modify the dataframe itself, has to be reassigned

df = df.applymap(f)
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