301

How to do this in pandas:

I have a function extract_text_features on a single text column, returning multiple output columns. Specifically, the function returns 6 values.

The function works, however there doesn't seem to be any proper return type (pandas DataFrame/ numpy array/ Python list) such that the output can get correctly assigned df.ix[: ,10:16] = df.textcol.map(extract_text_features)

So I think I need to drop back to iterating with df.iterrows(), as per this?

UPDATE: Iterating with df.iterrows() is at least 20x slower, so I surrendered and split out the function into six distinct .map(lambda ...) calls.

UPDATE 2: this question was asked back around v0.11.0, before the useability df.apply was improved or df.assign() was added in v0.16. Hence much of the question and answers are not too relevant.

7
  • 1
    I don't think you can do multiple assignment the way you have it written: df.ix[: ,10:16]. I think you'll have to merge your features into the dataset.
    – Zelazny7
    Apr 26, 2013 at 20:52
  • 2
    For those wanting a much more performant solution check this one below which does not use apply
    – Ted Petrou
    Nov 3, 2017 at 14:08
  • Most numeric operations with pandas can be vectorized - this means they are much faster than conventional iteration. OTOH, some operations (such as string and regex) are inherently hard to vectorize. This this case, it is important to understand how to loop over your data. More more information on when and how looping over your data is to be done, please read For loops with Pandas - When should I care?.
    – cs95
    Jan 4, 2019 at 10:15
  • @coldspeed: the main issue was not choosing which was the higher-performance among several options, it was fighting pandas syntax to get this to work at all, back around v0.11.0.
    – smci
    Jan 4, 2019 at 11:56
  • Indeed, the comment is intended for future readers who're looking for iterative solutions, who either don't know any better, or who know what they're doing.
    – cs95
    Jan 4, 2019 at 20:42

14 Answers 14

260

I usually do this using zip:

>>> df = pd.DataFrame([[i] for i in range(10)], columns=['num'])
>>> df
    num
0    0
1    1
2    2
3    3
4    4
5    5
6    6
7    7
8    8
9    9

>>> def powers(x):
>>>     return x, x**2, x**3, x**4, x**5, x**6

>>> df['p1'], df['p2'], df['p3'], df['p4'], df['p5'], df['p6'] = \
>>>     zip(*df['num'].map(powers))

>>> df
        num     p1      p2      p3      p4      p5      p6
0       0       0       0       0       0       0       0
1       1       1       1       1       1       1       1
2       2       2       4       8       16      32      64
3       3       3       9       27      81      243     729
4       4       4       16      64      256     1024    4096
5       5       5       25      125     625     3125    15625
6       6       6       36      216     1296    7776    46656
7       7       7       49      343     2401    16807   117649
8       8       8       64      512     4096    32768   262144
9       9       9       81      729     6561    59049   531441
6
  • 14
    But what do you do if you have 50 columns added like this rather than 6?
    – max
    Nov 4, 2015 at 23:21
  • 19
    @max temp = list(zip(*df['num'].map(powers))); for i, c in enumerate(columns): df[c] = temp[c]
    – ostrokach
    Nov 5, 2015 at 0:35
  • 9
    @ostrokach I think you meant for i, c in enumerate(columns): df[c] = temp[i]. Thanks to this, I really got the purpose of enumerate :D
    – rocarvaj
    Feb 26, 2016 at 4:25
  • 9
    This is by far the most elegant and readable solution I've come across for this. Unless you're getting performance problems, the idiom zip(*df['col'].map(function)) is probably the way to go. Aug 1, 2017 at 20:36
  • 1
    @XiaoyuLu See stackoverflow.com/questions/3394835/args-and-kwargs
    – ostrokach
    Oct 18, 2018 at 15:29
131

In 2020, I use apply() with argument result_type='expand'

applied_df = df.apply(lambda row: fn(row.text), axis='columns', result_type='expand')
df = pd.concat([df, applied_df], axis='columns')
10
  • 13
    That is how you do it, nowadays!
    – Make42
    Jul 13, 2019 at 11:43
  • 2
    This worked out of the box in 2020 while many other questions did not. Also it doesn't use pd.Series which is always nice regarding performance issues Mar 12, 2020 at 9:48
  • 1
    This is a good solution. The only problem is, you can't choose the name for the 2 newly added columns. You need to later do df.rename(columns={0:'col1', 1:'col2'}) Mar 27, 2020 at 16:00
  • 11
    @pedrambashiri If the function you pass to df.apply returns a dict, the columns will come out named according to the keys.
    – Seb
    Apr 16, 2020 at 12:09
  • 3
    all I needed from this answer was result_type='expand'. E.g. df[new_cols] = df.apply(extract_text_features, axis=1, result_type='expand') just works. Although you'd need to know names of the new columns.
    – Ufos
    Mar 22 at 16:25
130

Building off of user1827356 's answer, you can do the assignment in one pass using df.merge:

df.merge(df.textcol.apply(lambda s: pd.Series({'feature1':s+1, 'feature2':s-1})), 
    left_index=True, right_index=True)

    textcol  feature1  feature2
0  0.772692  1.772692 -0.227308
1  0.857210  1.857210 -0.142790
2  0.065639  1.065639 -0.934361
3  0.819160  1.819160 -0.180840
4  0.088212  1.088212 -0.911788

EDIT: Please be aware of the huge memory consumption and low speed: https://ys-l.github.io/posts/2015/08/28/how-not-to-use-pandas-apply/ !

4
  • 2
    just out of curiousity, is it expected to use up a lot of memory by doing this? I am doing this on a dataframe that holds 2.5mil rows, and i nearly ran into memory problems (also it is much slower than returning just 1 column).
    – Jeffrey04
    Nov 4, 2015 at 7:54
  • 2
    'df.join(df.textcol.apply(lambda s: pd.Series({'feature1':s+1, 'feature2':s-1})))' would be a better option I think. Mar 3, 2018 at 20:28
  • @ShivamKThakkar why do you think your suggestion would be a better option? Would it be more efficient you think or have less memory cost?
    – tsando
    May 8, 2018 at 10:34
  • 4
    Please consider the speed and the memory required: ys-l.github.io/posts/2015/08/28/how-not-to-use-pandas-apply
    – Make42
    Jul 13, 2019 at 11:31
92

This is what I've done in the past

df = pd.DataFrame({'textcol' : np.random.rand(5)})

df
    textcol
0  0.626524
1  0.119967
2  0.803650
3  0.100880
4  0.017859

df.textcol.apply(lambda s: pd.Series({'feature1':s+1, 'feature2':s-1}))
   feature1  feature2
0  1.626524 -0.373476
1  1.119967 -0.880033
2  1.803650 -0.196350
3  1.100880 -0.899120
4  1.017859 -0.982141

Editing for completeness

pd.concat([df, df.textcol.apply(lambda s: pd.Series({'feature1':s+1, 'feature2':s-1}))], axis=1)
    textcol feature1  feature2
0  0.626524 1.626524 -0.373476
1  0.119967 1.119967 -0.880033
2  0.803650 1.803650 -0.196350
3  0.100880 1.100880 -0.899120
4  0.017859 1.017859 -0.982141
2
  • concat() looks simpler than merge() for connecting the new cols to the original dataframe.
    – cumin
    Sep 29, 2017 at 14:19
  • 4
    nice answer, you don't need to use a dict or a merge if you specify the columns outside of the apply df[['col1', 'col2']] = df['col3'].apply(lambda x: pd.Series('val1', 'val2'))
    – Matt
    Feb 25, 2020 at 10:45
83

This is the correct and easiest way to accomplish this for 95% of use cases:

>>> df = pd.DataFrame(zip(*[range(10)]), columns=['num'])
>>> df
    num
0    0
1    1
2    2
3    3
4    4
5    5

>>> def example(x):
...     x['p1'] = x['num']**2
...     x['p2'] = x['num']**3
...     x['p3'] = x['num']**4
...     return x

>>> df = df.apply(example, axis=1)
>>> df
    num  p1  p2  p3
0    0   0   0    0
1    1   1   1    1
2    2   4   8   16
3    3   9  27   81
4    4  16  64  256
6
  • shouldn't you write: df = df.apply(example(df), axis=1) correct me if I am wrong, I am just a newbie
    – user299791
    Jun 16, 2017 at 19:06
  • 1
    @user299791, No in this case you are treating example as a first class object so you are passing in the function itself. This function will applied to each row. Jun 19, 2017 at 17:38
  • hi Michael, your answer helped me in my problem. Definitely your solution is better than the original pandas' df.assign() method, cuz this is one time per column. Using assign(), if you want to create 2 new columns, you have to use df1 to work on df to get new column1, then use df2 to work on df1 to create the second new column...this is quite monotonous. But your method saved my life!!! Thanks!!! Jul 31, 2018 at 5:49
  • 1
    Won't that run the column assignment code once per row? Wouldn't it be better to return a pd.Series({k:v}) and serialize the column assignment like in Ewan's answer? Jul 23, 2019 at 15:09
  • 1
    If it helps anyone, while this approach is correct and also the simplest of all the presented solutions, updating the row directly like this ended up being surprisingly slow - an order of magnitude slower than the apply with 'expand' + pd.concat solutions Jun 30, 2020 at 17:33
61

Just use result_type="expand"

df = pd.DataFrame(np.random.randint(0,10,(10,2)), columns=["random", "a"])
df[["sq_a","cube_a"]] = df.apply(lambda x: [x.a**2, x.a**3], axis=1, result_type="expand")
4
  • 9
    It helps to point out that option is new in 0.23. The question was asked back on 0.11
    – smci
    Jun 8, 2019 at 2:22
  • 1
    Nice, this is simple and still works neatly. This is the one I was looking for. Thanks
    – Isaac Sim
    Feb 14, 2020 at 4:49
  • 1
    Duplicates an earlier answer: stackoverflow.com/a/52363890/823470
    – tar
    Mar 5, 2020 at 14:51
  • 2
    @tar actually the second line is different and was quite helpful for me to see! Nov 13, 2020 at 3:49
39

For me this worked:

Input df

df = pd.DataFrame({'col x': [1,2,3]})
   col x
0      1
1      2
2      3

Function

def f(x):
    return pd.Series([x*x, x*x*x])

Create 2 new columns:

df[['square x', 'cube x']] = df['col x'].apply(f)

Output:

   col x  square x  cube x
0      1         1       1
1      2         4       8
2      3         9      27
0
22

Summary: If you only want to create a few columns, use df[['new_col1','new_col2']] = df[['data1','data2']].apply( function_of_your_choosing(x), axis=1)

For this solution, the number of new columns you are creating must be equal to the number columns you use as input to the .apply() function. If you want to do something else, have a look at the other answers.

Details Let's say you have two-column dataframe. The first column is a person's height when they are 10; the second is said person's height when they are 20.

Suppose you need to calculate both the mean of each person's heights and sum of each person's heights. That's two values per each row.

You could do this via the following, soon-to-be-applied function:

def mean_and_sum(x):
    """
    Calculates the mean and sum of two heights.
    Parameters:
    :x -- the values in the row this function is applied to. Could also work on a list or a tuple.
    """

    sum=x[0]+x[1]
    mean=sum/2
    return [mean,sum]

You might use this function like so:

 df[['height_at_age_10','height_at_age_20']].apply(mean_and_sum(x),axis=1)

(To be clear: this apply function takes in the values from each row in the subsetted dataframe and returns a list.)

However, if you do this:

df['Mean_&_Sum'] = df[['height_at_age_10','height_at_age_20']].apply(mean_and_sum(x),axis=1)

you'll create 1 new column that contains the [mean,sum] lists, which you'd presumably want to avoid, because that would require another Lambda/Apply.

Instead, you want to break out each value into its own column. To do this, you can create two columns at once:

df[['Mean','Sum']] = df[['height_at_age_10','height_at_age_20']]
.apply(mean_and_sum(x),axis=1)
2
  • 5
    For pandas 0.23, you'll need to use the syntax: df["mean"], df["sum"] = df[['height_at_age_10','height_at_age_20']] .apply(mean_and_sum(x),axis=1)
    – SummerEla
    Oct 26, 2018 at 1:45
  • This function might raise error. The return function must be return pd.Series([mean,sum]) Mar 8, 2020 at 22:21
13

I've looked several ways of doing this and the method shown here (returning a pandas series) doesn't seem to be most efficient.

If we start with a largeish dataframe of random data:

# Setup a dataframe of random numbers and create a 
df = pd.DataFrame(np.random.randn(10000,3),columns=list('ABC'))
df['D'] = df.apply(lambda r: ':'.join(map(str, (r.A, r.B, r.C))), axis=1)
columns = 'new_a', 'new_b', 'new_c'

The example shown here:

# Create the dataframe by returning a series
def method_b(v):
    return pd.Series({k: v for k, v in zip(columns, v.split(':'))})
%timeit -n10 -r3 df.D.apply(method_b)

10 loops, best of 3: 2.77 s per loop

An alternative method:

# Create a dataframe from a series of tuples
def method_a(v):
    return v.split(':')
%timeit -n10 -r3 pd.DataFrame(df.D.apply(method_a).tolist(), columns=columns)

10 loops, best of 3: 8.85 ms per loop

By my reckoning it's far more efficient to take a series of tuples and then convert that to a DataFrame. I'd be interested to hear people's thinking though if there's an error in my working.

1
  • This is really useful! I got a 30x speed-up compared to function returning series methods. May 19, 2020 at 6:17
12

The accepted solution is going to be extremely slow for lots of data. The solution with the greatest number of upvotes is a little difficult to read and also slow with numeric data. If each new column can be calculated independently of the others, I would just assign each of them directly without using apply.

Example with fake character data

Create 100,000 strings in a DataFrame

df = pd.DataFrame(np.random.choice(['he jumped', 'she ran', 'they hiked'],
                                   size=100000, replace=True),
                  columns=['words'])
df.head()
        words
0     she ran
1     she ran
2  they hiked
3  they hiked
4  they hiked

Let's say we wanted to extract some text features as done in the original question. For instance, let's extract the first character, count the occurrence of the letter 'e' and capitalize the phrase.

df['first'] = df['words'].str[0]
df['count_e'] = df['words'].str.count('e')
df['cap'] = df['words'].str.capitalize()
df.head()
        words first  count_e         cap
0     she ran     s        1     She ran
1     she ran     s        1     She ran
2  they hiked     t        2  They hiked
3  they hiked     t        2  They hiked
4  they hiked     t        2  They hiked

Timings

%%timeit
df['first'] = df['words'].str[0]
df['count_e'] = df['words'].str.count('e')
df['cap'] = df['words'].str.capitalize()
127 ms ± 585 µs per loop (mean ± std. dev. of 7 runs, 10 loops each)

def extract_text_features(x):
    return x[0], x.count('e'), x.capitalize()

%timeit df['first'], df['count_e'], df['cap'] = zip(*df['words'].apply(extract_text_features))
101 ms ± 2.96 ms per loop (mean ± std. dev. of 7 runs, 10 loops each)

Surprisingly, you can get better performance by looping through each value

%%timeit
a,b,c = [], [], []
for s in df['words']:
    a.append(s[0]), b.append(s.count('e')), c.append(s.capitalize())

df['first'] = a
df['count_e'] = b
df['cap'] = c
79.1 ms ± 294 µs per loop (mean ± std. dev. of 7 runs, 10 loops each)

Another example with fake numeric data

Create 1 million random numbers and test the powers function from above.

df = pd.DataFrame(np.random.rand(1000000), columns=['num'])


def powers(x):
    return x, x**2, x**3, x**4, x**5, x**6

%%timeit
df['p1'], df['p2'], df['p3'], df['p4'], df['p5'], df['p6'] = \
       zip(*df['num'].map(powers))
1.35 s ± 83.6 ms per loop (mean ± std. dev. of 7 runs, 1 loop each)

Assigning each column is 25x faster and very readable:

%%timeit 
df['p1'] = df['num'] ** 1
df['p2'] = df['num'] ** 2
df['p3'] = df['num'] ** 3
df['p4'] = df['num'] ** 4
df['p5'] = df['num'] ** 5
df['p6'] = df['num'] ** 6
51.6 ms ± 1.9 ms per loop (mean ± std. dev. of 7 runs, 10 loops each)

I made a similar response with more details here on why apply is typically not the way to go.

0
10

Have posted the same answer in two other similar questions. The way I prefer to do this is to wrap up the return values of the function in a series:

def f(x):
    return pd.Series([x**2, x**3])

And then use apply as follows to create separate columns:

df[['x**2','x**3']] = df.apply(lambda row: f(row['x']), axis=1)
2
def extract_text_features(feature):
    ...
    ...
    return pd.Series((feature1, feature2)) 

df[['NewFeature1', 'NewFeature1']] = df[['feature']].apply(extract_text_features, axis=1)

Here the a dataframe with a single feature is being converted to two new features. Give this a try too.

1

you can return the entire row instead of values:

df = df.apply(extract_text_features,axis = 1)

where the function returns the row

def extract_text_features(row):
      row['new_col1'] = value1
      row['new_col2'] = value2
      return row
1
  • No I don't want to apply extract_text_features to every column of the df, only to the text column df.textcol
    – smci
    Jun 24, 2018 at 19:29
0

I have a more complicated situation, the dataset has a nested structure:

import json
data = '{"TextID":{"0":"0038f0569e","1":"003eb6998d","2":"006da49ea0"},"Summary":{"0":{"Crisis_Level":["c"],"Type":["d"],"Special_Date":["a"]},"1":{"Crisis_Level":["d"],"Type":["a","d"],"Special_Date":["a"]},"2":{"Crisis_Level":["d"],"Type":["a"],"Special_Date":["a"]}}}'
df = pd.DataFrame.from_dict(json.loads(data))
print(df)

output:

        TextID                                            Summary
0  0038f0569e  {'Crisis_Level': ['c'], 'Type': ['d'], 'Specia...
1  003eb6998d  {'Crisis_Level': ['d'], 'Type': ['a', 'd'], 'S...
2  006da49ea0  {'Crisis_Level': ['d'], 'Type': ['a'], 'Specia...

The Summary column contains dict objects, so I use apply with from_dict and stack to extract each row of dict:

df2 = df.apply(
    lambda x: pd.DataFrame.from_dict(x[1], orient='index').stack(), axis=1)
print(df2)

output:

    Crisis_Level Special_Date Type     
                0            0    0    1
0            c            a    d  NaN
1            d            a    a    d
2            d            a    a  NaN

Looks good, but missing the TextID column. To get TextID column back, I've tried three approach:

  1. Modify apply to return multiple columns:

    df_tmp = df.copy()
    
    df_tmp[['TextID', 'Summary']] = df.apply(
        lambda x: pd.Series([x[0], pd.DataFrame.from_dict(x[1], orient='index').stack()]), axis=1)
    print(df_tmp)
    

    output:

        TextID                                            Summary
    0  0038f0569e  Crisis_Level  0    c
    Type          0    d
    Spec...
    1  003eb6998d  Crisis_Level  0    d
    Type          0    a
        ...
    2  006da49ea0  Crisis_Level  0    d
    Type          0    a
    Spec...
    

    But this is not what I want, the Summary structure are flatten.

  2. Use pd.concat:

    df_tmp2 = pd.concat([df['TextID'], df2], axis=1)
    print(df_tmp2)
    

    output:

        TextID (Crisis_Level, 0) (Special_Date, 0) (Type, 0) (Type, 1)
    0  0038f0569e                 c                 a         d       NaN
    1  003eb6998d                 d                 a         a         d
    2  006da49ea0                 d                 a         a       NaN
    

    Looks fine, the MultiIndex column structure are preserved as tuple. But check columns type:

    df_tmp2.columns
    

    output:

    Index(['TextID', ('Crisis_Level', 0), ('Special_Date', 0), ('Type', 0),
        ('Type', 1)],
        dtype='object')
    

    Just as a regular Index class, not MultiIndex class.

  3. use set_index:

    Turn all columns you want to preserve into row index, after some complicated apply function and then reset_index to get columns back:

    df_tmp3 = df.set_index('TextID')
    
    df_tmp3 = df_tmp3.apply(
        lambda x: pd.DataFrame.from_dict(x[0], orient='index').stack(), axis=1)
    
    df_tmp3 = df_tmp3.reset_index(level=0)
    print(df_tmp3)
    

    output:

        TextID Crisis_Level Special_Date Type     
                            0            0    0    1
    0  0038f0569e            c            a    d  NaN
    1  003eb6998d            d            a    a    d
    2  006da49ea0            d            a    a  NaN
    

    Check the type of columns

    df_tmp3.columns
    

    output:

    MultiIndex(levels=[['Crisis_Level', 'Special_Date', 'Type', 'TextID'], [0, 1, '']],
            codes=[[3, 0, 1, 2, 2], [2, 0, 0, 0, 1]])
    

So, If your apply function will return MultiIndex columns, and you want to preserve it, you may want to try the third method.

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