I have a 20 x 4000 dataframe in Python using pandas. Two of these columns are named Year
and quarter
. I'd like to create a variable called period
that makes Year = 2000
and quarter= q2
into 2000q2
.
Can anyone help with that?
I have a 20 x 4000 dataframe in Python using pandas. Two of these columns are named Year
and quarter
. I'd like to create a variable called period
that makes Year = 2000
and quarter= q2
into 2000q2
.
Can anyone help with that?
If both columns are strings, you can concatenate them directly:
df["period"] = df["Year"] + df["quarter"]
If one (or both) of the columns are not string typed, you should convert it (them) first,
df["period"] = df["Year"].astype(str) + df["quarter"]
If you need to join multiple string columns, you can use agg
:
df['period'] = df[['Year', 'quarter', ...]].agg('-'.join, axis=1)
Where "-" is the separator.
add(dataframe.iloc[:, 0:10])
for example?
May 9, 2015 at 19:15
dataframe["period"] = dataframe["Year"].map(str) + dataframe["quarter"].map(str)
map is just applying string conversion to all entries.
Feb 1, 2017 at 21:17
[''.join(i) for i in zip(df["Year"].map(str),df["quarter"])]
or slightly slower but more compact:
df.Year.str.cat(df.quarter)
df['Year'].astype(str) + df['quarter']
UPDATE: Timing graph Pandas 0.23.4
Let's test it on 200K rows DF:
In [250]: df
Out[250]:
Year quarter
0 2014 q1
1 2015 q2
In [251]: df = pd.concat([df] * 10**5)
In [252]: df.shape
Out[252]: (200000, 2)
UPDATE: new timings using Pandas 0.19.0
Timing without CPU/GPU optimization (sorted from fastest to slowest):
In [107]: %timeit df['Year'].astype(str) + df['quarter']
10 loops, best of 3: 131 ms per loop
In [106]: %timeit df['Year'].map(str) + df['quarter']
10 loops, best of 3: 161 ms per loop
In [108]: %timeit df.Year.str.cat(df.quarter)
10 loops, best of 3: 189 ms per loop
In [109]: %timeit df.loc[:, ['Year','quarter']].astype(str).sum(axis=1)
1 loop, best of 3: 567 ms per loop
In [110]: %timeit df[['Year','quarter']].astype(str).sum(axis=1)
1 loop, best of 3: 584 ms per loop
In [111]: %timeit df[['Year','quarter']].apply(lambda x : '{}{}'.format(x[0],x[1]), axis=1)
1 loop, best of 3: 24.7 s per loop
Timing using CPU/GPU optimization:
In [113]: %timeit df['Year'].astype(str) + df['quarter']
10 loops, best of 3: 53.3 ms per loop
In [114]: %timeit df['Year'].map(str) + df['quarter']
10 loops, best of 3: 65.5 ms per loop
In [115]: %timeit df.Year.str.cat(df.quarter)
10 loops, best of 3: 79.9 ms per loop
In [116]: %timeit df.loc[:, ['Year','quarter']].astype(str).sum(axis=1)
1 loop, best of 3: 230 ms per loop
In [117]: %timeit df[['Year','quarter']].astype(str).sum(axis=1)
1 loop, best of 3: 230 ms per loop
In [118]: %timeit df[['Year','quarter']].apply(lambda x : '{}{}'.format(x[0],x[1]), axis=1)
1 loop, best of 3: 9.38 s per loop
Answer contribution by @anton-vbr
df = pd.DataFrame({'Year': ['2014', '2015'], 'quarter': ['q1', 'q2']})
df['period'] = df[['Year', 'quarter']].apply(lambda x: ''.join(x), axis=1)
Yields this dataframe
Year quarter period
0 2014 q1 2014q1
1 2015 q2 2015q2
This method generalizes to an arbitrary number of string columns by replacing df[['Year', 'quarter']]
with any column slice of your dataframe, e.g. df.iloc[:,0:2].apply(lambda x: ''.join(x), axis=1)
.
You can check more information about apply() method here
lambda x: ''.join(x)
construction doesn't do anything; it's like using lambda x: sum(x)
instead of just sum
.
''.join
, i.e.: df['period'] = df[['Year', 'quarter']].apply(''.join, axis=1)
.
Oct 10, 2017 at 5:30
join
takes only str
instances in an iterable. Use a map
to convert them all into str
and then use join
.
Mar 27, 2018 at 12:51
The method cat()
of the .str
accessor works really well for this:
>>> import pandas as pd
>>> df = pd.DataFrame([["2014", "q1"],
... ["2015", "q3"]],
... columns=('Year', 'Quarter'))
>>> print(df)
Year Quarter
0 2014 q1
1 2015 q3
>>> df['Period'] = df.Year.str.cat(df.Quarter)
>>> print(df)
Year Quarter Period
0 2014 q1 2014q1
1 2015 q3 2015q3
cat()
even allows you to add a separator so, for example, suppose you only have integers for year and period, you can do this:
>>> import pandas as pd
>>> df = pd.DataFrame([[2014, 1],
... [2015, 3]],
... columns=('Year', 'Quarter'))
>>> print(df)
Year Quarter
0 2014 1
1 2015 3
>>> df['Period'] = df.Year.astype(str).str.cat(df.Quarter.astype(str), sep='q')
>>> print(df)
Year Quarter Period
0 2014 1 2014q1
1 2015 3 2015q3
Joining multiple columns is just a matter of passing either a list of series or a dataframe containing all but the first column as a parameter to str.cat()
invoked on the first column (Series):
>>> df = pd.DataFrame(
... [['USA', 'Nevada', 'Las Vegas'],
... ['Brazil', 'Pernambuco', 'Recife']],
... columns=['Country', 'State', 'City'],
... )
>>> df['AllTogether'] = df['Country'].str.cat(df[['State', 'City']], sep=' - ')
>>> print(df)
Country State City AllTogether
0 USA Nevada Las Vegas USA - Nevada - Las Vegas
1 Brazil Pernambuco Recife Brazil - Pernambuco - Recife
Do note that if your pandas dataframe/series has null values, you need to include the parameter na_rep to replace the NaN values with a string, otherwise the combined column will default to NaN.
lambda
or map
; also it just reads most cleanly.
May 22, 2016 at 20:31
sep
keyword? in pandas-0.23.4. Thanks!
Dec 5, 2018 at 20:56
sep
parameter is only necessary if you intend to separate the parts of the concatenated string. If you get an error, please show us your failing example.
Dec 10, 2018 at 19:34
.str.cat(df[['State', 'City']], sep ='\n')
, for example. I haven't tested it yet, though.
Jun 21, 2021 at 12:08
Use of a lamba function this time with string.format().
import pandas as pd
df = pd.DataFrame({'Year': ['2014', '2015'], 'Quarter': ['q1', 'q2']})
print df
df['YearQuarter'] = df[['Year','Quarter']].apply(lambda x : '{}{}'.format(x[0],x[1]), axis=1)
print df
Quarter Year
0 q1 2014
1 q2 2015
Quarter Year YearQuarter
0 q1 2014 2014q1
1 q2 2015 2015q2
This allows you to work with non-strings and reformat values as needed.
import pandas as pd
df = pd.DataFrame({'Year': ['2014', '2015'], 'Quarter': [1, 2]})
print df.dtypes
print df
df['YearQuarter'] = df[['Year','Quarter']].apply(lambda x : '{}q{}'.format(x[0],x[1]), axis=1)
print df
Quarter int64
Year object
dtype: object
Quarter Year
0 1 2014
1 2 2015
Quarter Year YearQuarter
0 1 2014 2014q1
1 2 2015 2015q2
df_game['formatted_game_time'] = df_game[['wday', 'month', 'day', 'year', 'time']].apply(lambda x: '{}, {}/{}/{} @ {}'.format(x[0], x[1], x[2], x[3], x[4]), axis=1)
generalising to multiple columns, why not:
columns = ['whatever', 'columns', 'you', 'choose']
df['period'] = df[columns].astype(str).sum(axis=1)
You can use lambda:
combine_lambda = lambda x: '{}{}'.format(x.Year, x.quarter)
And then use it with creating the new column:
df['period'] = df.apply(combine_lambda, axis = 1)
Let us suppose your dataframe
is df
with columns Year
and Quarter
.
import pandas as pd
df = pd.DataFrame({'Quarter':'q1 q2 q3 q4'.split(), 'Year':'2000'})
Suppose we want to see the dataframe;
df
>>> Quarter Year
0 q1 2000
1 q2 2000
2 q3 2000
3 q4 2000
Finally, concatenate the Year
and the Quarter
as follows.
df['Period'] = df['Year'] + ' ' + df['Quarter']
You can now print
df
to see the resulting dataframe.
df
>>> Quarter Year Period
0 q1 2000 2000 q1
1 q2 2000 2000 q2
2 q3 2000 2000 q3
3 q4 2000 2000 q4
If you do not want the space between the year and quarter, simply remove it by doing;
df['Period'] = df['Year'] + df['Quarter']
df['Period'] = df['Year'].map(str) + df['Quarter'].map(str)
TypeError: Series cannot perform the operation +
when I run either df2['filename'] = df2['job_number'] + '.' + df2['task_number']
or df2['filename'] = df2['job_number'].map(str) + '.' + df2['task_number'].map(str)
.
Mar 3, 2019 at 6:43
df2['filename'] = df2['job_number'].astype(str) + '.' + df2['task_number'].astype(str)
did work.
Mar 3, 2019 at 6:51
dataframe
that I created above, you will see that all the columns are string
s.
Mar 3, 2019 at 17:31
Although the @silvado answer is good if you change df.map(str)
to df.astype(str)
it will be faster:
import pandas as pd
df = pd.DataFrame({'Year': ['2014', '2015'], 'quarter': ['q1', 'q2']})
In [131]: %timeit df["Year"].map(str)
10000 loops, best of 3: 132 us per loop
In [132]: %timeit df["Year"].astype(str)
10000 loops, best of 3: 82.2 us per loop
Here is an implementation that I find very versatile:
In [1]: import pandas as pd
In [2]: df = pd.DataFrame([[0, 'the', 'quick', 'brown'],
...: [1, 'fox', 'jumps', 'over'],
...: [2, 'the', 'lazy', 'dog']],
...: columns=['c0', 'c1', 'c2', 'c3'])
In [3]: def str_join(df, sep, *cols):
...: from functools import reduce
...: return reduce(lambda x, y: x.astype(str).str.cat(y.astype(str), sep=sep),
...: [df[col] for col in cols])
...:
In [4]: df['cat'] = str_join(df, '-', 'c0', 'c1', 'c2', 'c3')
In [5]: df
Out[5]:
c0 c1 c2 c3 cat
0 0 the quick brown 0-the-quick-brown
1 1 fox jumps over 1-fox-jumps-over
2 2 the lazy dog 2-the-lazy-dog
more efficient is
def concat_df_str1(df):
""" run time: 1.3416s """
return pd.Series([''.join(row.astype(str)) for row in df.values], index=df.index)
and here is a time test:
import numpy as np
import pandas as pd
from time import time
def concat_df_str1(df):
""" run time: 1.3416s """
return pd.Series([''.join(row.astype(str)) for row in df.values], index=df.index)
def concat_df_str2(df):
""" run time: 5.2758s """
return df.astype(str).sum(axis=1)
def concat_df_str3(df):
""" run time: 5.0076s """
df = df.astype(str)
return df[0] + df[1] + df[2] + df[3] + df[4] + \
df[5] + df[6] + df[7] + df[8] + df[9]
def concat_df_str4(df):
""" run time: 7.8624s """
return df.astype(str).apply(lambda x: ''.join(x), axis=1)
def main():
df = pd.DataFrame(np.zeros(1000000).reshape(100000, 10))
df = df.astype(int)
time1 = time()
df_en = concat_df_str4(df)
print('run time: %.4fs' % (time() - time1))
print(df_en.head(10))
if __name__ == '__main__':
main()
final, when sum
(concat_df_str2) is used, the result is not simply concat, it will trans to integer.
df.values[:, 0:3]
or df.values[:, [0,2]]
.
Feb 9, 2018 at 9:51
Using zip
could be even quicker:
df["period"] = [''.join(i) for i in zip(df["Year"].map(str),df["quarter"])]
Graph:
import pandas as pd
import numpy as np
import timeit
import matplotlib.pyplot as plt
from collections import defaultdict
df = pd.DataFrame({'Year': ['2014', '2015'], 'quarter': ['q1', 'q2']})
myfuncs = {
"df['Year'].astype(str) + df['quarter']":
lambda: df['Year'].astype(str) + df['quarter'],
"df['Year'].map(str) + df['quarter']":
lambda: df['Year'].map(str) + df['quarter'],
"df.Year.str.cat(df.quarter)":
lambda: df.Year.str.cat(df.quarter),
"df.loc[:, ['Year','quarter']].astype(str).sum(axis=1)":
lambda: df.loc[:, ['Year','quarter']].astype(str).sum(axis=1),
"df[['Year','quarter']].astype(str).sum(axis=1)":
lambda: df[['Year','quarter']].astype(str).sum(axis=1),
"df[['Year','quarter']].apply(lambda x : '{}{}'.format(x[0],x[1]), axis=1)":
lambda: df[['Year','quarter']].apply(lambda x : '{}{}'.format(x[0],x[1]), axis=1),
"[''.join(i) for i in zip(dataframe['Year'].map(str),dataframe['quarter'])]":
lambda: [''.join(i) for i in zip(df["Year"].map(str),df["quarter"])]
}
d = defaultdict(dict)
step = 10
cont = True
while cont:
lendf = len(df); print(lendf)
for k,v in myfuncs.items():
iters = 1
t = 0
while t < 0.2:
ts = timeit.repeat(v, number=iters, repeat=3)
t = min(ts)
iters *= 10
d[k][lendf] = t/iters
if t > 2: cont = False
df = pd.concat([df]*step)
pd.DataFrame(d).plot().legend(loc='upper center', bbox_to_anchor=(0.5, -0.15))
plt.yscale('log'); plt.xscale('log'); plt.ylabel('seconds'); plt.xlabel('df rows')
plt.show()
This solution uses an intermediate step compressing two columns of the DataFrame to a single column containing a list of the values. This works not only for strings but for all kind of column-dtypes
import pandas as pd
df = pd.DataFrame({'Year': ['2014', '2015'], 'quarter': ['q1', 'q2']})
df['list']=df[['Year','quarter']].values.tolist()
df['period']=df['list'].apply(''.join)
print(df)
Result:
Year quarter list period
0 2014 q1 [2014, q1] 2014q1
1 2015 q2 [2015, q2] 2015q2
Here is my summary of the above solutions to concatenate / combine two columns with int and str value into a new column, using a separator between the values of columns. Three solutions work for this purpose.
# be cautious about the separator, some symbols may cause "SyntaxError: EOL while scanning string literal".
# e.g. ";;" as separator would raise the SyntaxError
separator = "&&"
# pd.Series.str.cat() method does not work to concatenate / combine two columns with int value and str value. This would raise "AttributeError: Can only use .cat accessor with a 'category' dtype"
df["period"] = df["Year"].map(str) + separator + df["quarter"]
df["period"] = df[['Year','quarter']].apply(lambda x : '{} && {}'.format(x[0],x[1]), axis=1)
df["period"] = df.apply(lambda x: f'{x["Year"]} && {x["quarter"]}', axis=1)
df["period"] = (df["Year"].astype(str) + separator + df["quarter"].astype(str)).astype('category')
Mar 16 at 14:01
my take....
listofcols = ['col1','col2','col3']
df['combined_cols'] = ''
for column in listofcols:
df['combined_cols'] = df['combined_cols'] + ' ' + df[column]
'''
When combining columns with strings by concatenating them using the addition operator +
if any is NaN
then entire output will be NaN
so use fillna()
df["join"] = "some" + df["col"].fillna(df["val_if_nan"])
As many have mentioned previously, you must convert each column to string and then use the plus operator to combine two string columns. You can get a large performance improvement by using NumPy.
%timeit df['Year'].values.astype(str) + df.quarter
71.1 ms ± 3.76 ms per loop (mean ± std. dev. of 7 runs, 10 loops each)
%timeit df['Year'].astype(str) + df['quarter']
565 ms ± 22.3 ms per loop (mean ± std. dev. of 7 runs, 1 loop each)
df2['filename'] = df2['job_number'].values.astype(str) + '.' + df2['task_number'].values.astype(str)
--> Output: TypeError: ufunc 'add' did not contain a loop with signature matching types dtype('<U21') dtype('<U21') dtype('<U21')
. Both job_number and task_number are ints.
Mar 3, 2019 at 6:56
df['Year'].values.astype(str) + df.quarter
Feb 10, 2020 at 11:23
One can use assign method of DataFrame:
df= (pd.DataFrame({'Year': ['2014', '2015'], 'quarter': ['q1', 'q2']}).
assign(period=lambda x: x.Year+x.quarter ))
Similar to @geher answer but with any separator you like:
SEP = " "
INPUT_COLUMNS_WITH_SEP = ",sep,".join(INPUT_COLUMNS).split(",")
df.assign(sep=SEP)[INPUT_COLUMNS_WITH_SEP].sum(axis=1)
def madd(x):
"""Performs element-wise string concatenation with multiple input arrays.
Args:
x: iterable of np.array.
Returns: np.array.
"""
for i, arr in enumerate(x):
if type(arr.item(0)) is not str:
x[i] = x[i].astype(str)
return reduce(np.core.defchararray.add, x)
For example:
data = list(zip([2000]*4, ['q1', 'q2', 'q3', 'q4']))
df = pd.DataFrame(data=data, columns=['Year', 'quarter'])
df['period'] = madd([df[col].values for col in ['Year', 'quarter']])
df
Year quarter period
0 2000 q1 2000q1
1 2000 q2 2000q2
2 2000 q3 2000q3
3 2000 q4 2000q4
Use .combine_first
.
df['Period'] = df['Year'].combine_first(df['Quarter'])
.combine_first
will result in either the value from 'Year'
being stored in 'Period'
, or, if it is Null, the value from 'Quarter'
. It will not concatenate the two strings and store them in 'Period'
.