I have a following DataFrame:

from pandas import *
df = DataFrame({'foo':['a','b','c'], 'bar':[1, 2, 3]})

It looks like this:

    bar foo
0    1   a
1    2   b
2    3   c

Now I want to have something like:

0    1 is a
1    2 is b
2    3 is c

How can I achieve this? I tried the following:

df['foo'] = '%s is %s' % (df['bar'], df['foo'])

but it gives me a wrong result:

>>>print df.ix[0]

bar                                                    a
foo    0    a
1    b
2    c
Name: bar is 0    1
1    2
Name: 0

Sorry for a dumb question, but this one pandas: combine two columns in a DataFrame wasn't helpful for me.


df['bar'] = df.bar.map(str) + " is " + df.foo.


This question has already been answered, but I believe it would be good to throw some useful methods not previously discussed into the mix, and compare all methods proposed thus far in terms of performance.

Here are some useful solutions to this problem, in increasing order of performance.


This is a simple str.format-based approach.

df['baz'] = df.agg('{0[bar]} is {0[foo]}'.format, axis=1)
  foo  bar     baz
0   a    1  1 is a
1   b    2  2 is b
2   c    3  3 is c

You can also use f-string formatting here:

df['baz'] = df.agg(lambda x: f"{x['bar']} is {x['foo']}", axis=1)
  foo  bar     baz
0   a    1  1 is a
1   b    2  2 is b
2   c    3  3 is c

char.array-based Concatenation

Convert the columns to concatenate as chararrays, then add them together.

a = np.char.array(df['bar'].values)
b = np.char.array(df['foo'].values)

df['baz'] = (a + b' is ' + b).astype(str)
  foo  bar     baz
0   a    1  1 is a
1   b    2  2 is b
2   c    3  3 is c

List Comprehension with zip

I cannot overstate how underrated list comprehensions are in pandas.

df['baz'] = [str(x) + ' is ' + y for x, y in zip(df['bar'], df['foo'])]

Alternatively, using str.join to concat (will also scale better):

df['baz'] = [
    ' '.join([str(x), 'is', y]) for x, y in zip(df['bar'], df['foo'])]

  foo  bar     baz
0   a    1  1 is a
1   b    2  2 is b
2   c    3  3 is c

List comprehensions excel in string manipulation, because string operations are inherently hard to vectorize, and most pandas "vectorised" functions are basically wrappers around loops. I have written extensively about this topic in For loops with pandas - When should I care?. In general, if you don't have to worry about index alignment, use a list comprehension when dealing with string and regex operations.

The list comp above by default does not handle NaNs. However, you could always write a function wrapping a try-except if you needed to handle it.

def try_concat(x, y):
        return str(x) + ' is ' + y
    except (ValueError, TypeError):
        return np.nan

df['baz'] = [try_concat(x, y) for x, y in zip(df['bar'], df['foo'])]

perfplot Performance Measurements

enter image description here

Graph generated using perfplot. Here's the complete code listing.


def brenbarn(df):
    return df.assign(baz=df.bar.map(str) + " is " + df.foo)

def danielvelkov(df):
    return df.assign(baz=df.apply(
        lambda x:'%s is %s' % (x['bar'],x['foo']),axis=1))

def chrimuelle(df):
    return df.assign(
        baz=df['bar'].astype(str).str.cat(df['foo'].values, sep=' is '))

def vladimiryashin(df):
    return df.assign(baz=df.astype(str).apply(lambda x: ' is '.join(x), axis=1))

def erickfis(df):
    return df.assign(
        baz=df.apply(lambda x: f"{x['bar']} is {x['foo']}", axis=1))

def cs1_format(df):
    return df.assign(baz=df.agg('{0[bar]} is {0[foo]}'.format, axis=1))

def cs1_fstrings(df):
    return df.assign(baz=df.agg(lambda x: f"{x['bar']} is {x['foo']}", axis=1))

def cs2(df):
    a = np.char.array(df['bar'].values)
    b = np.char.array(df['foo'].values)

    return df.assign(baz=(a + b' is ' + b).astype(str))

def cs3(df):
    return df.assign(
        baz=[str(x) + ' is ' + y for x, y in zip(df['bar'], df['foo'])])
  • 4
    That's all I always wanted to know about string concatenation in pandas, but was too afraid too ask! – IanS Feb 4 '19 at 15:59
  • Can you please update the plot to next level 104 (or even higher), a quick visual answer with the current plot limited to 103 (1000 which is very small for today condition) is that cs3 is the best, eventually when you see brenbarn is looking less exponential than cs3, so most probably for large dataset brenbarn is the best (faster) answer. – Velizar VESSELINOV Jun 13 '19 at 19:46
  • 1
    @VelizarVESSELINOV Updated! What surprises me is that the numpy concatenation is slower than both the list comp and the pandas concatenation. – cs95 Jun 13 '19 at 20:01
  • 1
    Have you considered using df['bar'].tolist() and df['foo'].tolist() in cs3()? My guess is that it would increase "base" time slightly but it would scale better. – shadowtalker Aug 22 '19 at 2:53

The problem in your code is that you want to apply the operation on every row. The way you've written it though takes the whole 'bar' and 'foo' columns, converts them to strings and gives you back one big string. You can write it like:

df.apply(lambda x:'%s is %s' % (x['bar'],x['foo']),axis=1)

It's longer than the other answer but is more generic (can be used with values that are not strings).


You could also use

df['bar'] = df['bar'].str.cat(df['foo'].values.astype(str), sep=' is ')
  • 1
    This doesn't work since df['bar'] is not a string column. The correct assignment is df['bar'] = df['bar'].astype(str).str.cat(df['foo'], sep=' is '). – cbrnr May 24 '18 at 8:42
df.astype(str).apply(lambda x: ' is '.join(x), axis=1)

0    1 is a
1    2 is b
2    3 is c
dtype: object
  • This answer also works with undetermined number of columns (> 1) & undetermined column names, making it more useful than the rest. – johnDanger Apr 25 '20 at 0:22

series.str.cat is the most flexible way to approach this problem:

For df = pd.DataFrame({'foo':['a','b','c'], 'bar':[1, 2, 3]})

df.foo.str.cat(df.bar.astype(str), sep=' is ')

>>>  0    a is 1
     1    b is 2
     2    c is 3
     Name: foo, dtype: object


df.bar.astype(str).str.cat(df.foo, sep=' is ')

>>>  0    1 is a
     1    2 is b
     2    3 is c
     Name: bar, dtype: object

Unlike .join() (which is for joining list contained in a single Series), this method is for joining 2 Series together. It also allows you to ignore or replace NaN values as desired.


@DanielVelkov answer is the proper one BUT using string literals is faster:

# Daniel's
%timeit df.apply(lambda x:'%s is %s' % (x['bar'],x['foo']),axis=1)
## 963 µs ± 157 µs per loop (mean ± std. dev. of 7 runs, 1000 loops each)

# String literals - python 3
%timeit df.apply(lambda x: f"{x['bar']} is {x['foo']}", axis=1)
## 849 µs ± 4.28 µs per loop (mean ± std. dev. of 7 runs, 1000 loops each)

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