I want to change the column labels of a Pandas DataFrame from
['$a', '$b', '$c', '$d', '$e']
to
['a', 'b', 'c', 'd', 'e']
Use the df.rename()
function and refer the columns to be renamed. Not all the columns have to be renamed:
df = df.rename(columns={'oldName1': 'newName1', 'oldName2': 'newName2'})
# Or rename the existing DataFrame (rather than creating a copy)
df.rename(columns={'oldName1': 'newName1', 'oldName2': 'newName2'}, inplace=True)
Minimal Code Example
df = pd.DataFrame('x', index=range(3), columns=list('abcde'))
df
a b c d e
0 x x x x x
1 x x x x x
2 x x x x x
The following methods all work and produce the same output:
df2 = df.rename({'a': 'X', 'b': 'Y'}, axis=1)
df2 = df.rename({'a': 'X', 'b': 'Y'}, axis='columns')
df2 = df.rename(columns={'a': 'X', 'b': 'Y'})
df2
X Y c d e
0 x x x x x
1 x x x x x
2 x x x x x
Remember to assign the result back, as the modification is not-inplace. Alternatively, specify inplace=True
:
df.rename({'a': 'X', 'b': 'Y'}, axis=1, inplace=True)
df
X Y c d e
0 x x x x x
1 x x x x x
2 x x x x x
You can specify errors='raise'
to raise errors if an invalid column-to-rename is specified.
Use df.set_axis()
with axis=1
.
df2 = df.set_axis(['V', 'W', 'X', 'Y', 'Z'], axis=1)
df2
V W X Y Z
0 x x x x x
1 x x x x x
2 x x x x x
Headers can be assigned directly:
df.columns = ['V', 'W', 'X', 'Y', 'Z']
df
V W X Y Z
0 x x x x x
1 x x x x x
2 x x x x x
Answered 2023-09-20 20:23:13
Just assign it to the .columns
attribute:
>>> df = pd.DataFrame({'$a':[1,2], '$b': [10,20]})
>>> df
$a $b
0 1 10
1 2 20
>>> df.columns = ['a', 'b']
>>> df
a b
0 1 10
1 2 20
Answered 2023-09-20 20:23:13
The rename
method can take a function, for example:
In [11]: df.columns
Out[11]: Index([u'$a', u'$b', u'$c', u'$d', u'$e'], dtype=object)
In [12]: df.rename(columns=lambda x: x[1:], inplace=True)
In [13]: df.columns
Out[13]: Index([u'a', u'b', u'c', u'd', u'e'], dtype=object)
Answered 2023-09-20 20:23:13
As documented in Working with text data:
df.columns = df.columns.str.replace('$', '')
Answered 2023-09-20 20:23:13
There have been some significant updates to column renaming in version 0.21.
rename
method has added the axis
parameter which may be set to columns
or 1
. This update makes this method match the rest of the pandas API. It still has the index
and columns
parameters but you are no longer forced to use them. set_axis
method with the inplace
set to False
enables you to rename all the index or column labels with a list.Construct sample DataFrame:
df = pd.DataFrame({'$a':[1,2], '$b': [3,4],
'$c':[5,6], '$d':[7,8],
'$e':[9,10]})
$a $b $c $d $e
0 1 3 5 7 9
1 2 4 6 8 10
rename
with axis='columns'
or axis=1
df.rename({'$a':'a', '$b':'b', '$c':'c', '$d':'d', '$e':'e'}, axis='columns')
or
df.rename({'$a':'a', '$b':'b', '$c':'c', '$d':'d', '$e':'e'}, axis=1)
Both result in the following:
a b c d e
0 1 3 5 7 9
1 2 4 6 8 10
It is still possible to use the old method signature:
df.rename(columns={'$a':'a', '$b':'b', '$c':'c', '$d':'d', '$e':'e'})
The rename
function also accepts functions that will be applied to each column name.
df.rename(lambda x: x[1:], axis='columns')
or
df.rename(lambda x: x[1:], axis=1)
set_axis
with a list and inplace=False
You can supply a list to the set_axis
method that is equal in length to the number of columns (or index). Currently, inplace
defaults to True
, but inplace
will be defaulted to False
in future releases.
df.set_axis(['a', 'b', 'c', 'd', 'e'], axis='columns', inplace=False)
or
df.set_axis(['a', 'b', 'c', 'd', 'e'], axis=1, inplace=False)
df.columns = ['a', 'b', 'c', 'd', 'e']
?There is nothing wrong with assigning columns directly like this. It is a perfectly good solution.
The advantage of using set_axis
is that it can be used as part of a method chain and that it returns a new copy of the DataFrame. Without it, you would have to store your intermediate steps of the chain to another variable before reassigning the columns.
# new for pandas 0.21+
df.some_method1()
.some_method2()
.set_axis()
.some_method3()
# old way
df1 = df.some_method1()
.some_method2()
df1.columns = columns
df1.some_method3()
Answered 2023-09-20 20:23:13
Since you only want to remove the $ sign in all column names, you could just do:
df = df.rename(columns=lambda x: x.replace('$', ''))
OR
df.rename(columns=lambda x: x.replace('$', ''), inplace=True)
Answered 2023-09-20 20:23:13
Renaming columns in Pandas is an easy task.
df.rename(columns={'$a': 'a', '$b': 'b', '$c': 'c', '$d': 'd', '$e': 'e'}, inplace=True)
Answered 2023-09-20 20:23:13
columns
arg here can also be a function. So if you want to remove the first char from each name you can do df.rename(columns=lambda name: name[1:], inplace=True)
(ref) - anyone df.columns = ['a', 'b', 'c', 'd', 'e']
It will replace the existing names with the names you provide, in the order you provide.
Answered 2023-09-20 20:23:13
Use:
old_names = ['$a', '$b', '$c', '$d', '$e']
new_names = ['a', 'b', 'c', 'd', 'e']
df.rename(columns=dict(zip(old_names, new_names)), inplace=True)
This way you can manually edit the new_names
as you wish. It works great when you need to rename only a few columns to correct misspellings, accents, remove special characters, etc.
Answered 2023-09-20 20:23:13
df.columns = ['a', 'b', 'c', 'd', 'e']
is simpler. - anyone df.columns.values
to get the old names. - anyone myList = list(df) myList[10:20]
, etc - so this is perfect. - anyone namez = df.columns.values
followed by some edits, then df.columns = namez
. - anyone I'll focus on two things:
OP clearly states
I have the edited column names stored it in a list, but I don't know how to replace the column names.
I do not want to solve the problem of how to replace '$'
or strip the first character off of each column header. OP has already done this step. Instead I want to focus on replacing the existing columns
object with a new one given a list of replacement column names.
df.columns = new
where new
is the list of new columns names is as simple as it gets. The drawback of this approach is that it requires editing the existing dataframe's columns
attribute and it isn't done inline. I'll show a few ways to perform this via pipelining without editing the existing dataframe.
Setup 1
To focus on the need to rename of replace column names with a pre-existing list, I'll create a new sample dataframe df
with initial column names and unrelated new column names.
df = pd.DataFrame({'Jack': [1, 2], 'Mahesh': [3, 4], 'Xin': [5, 6]})
new = ['x098', 'y765', 'z432']
df
Jack Mahesh Xin
0 1 3 5
1 2 4 6
Solution 1
pd.DataFrame.rename
It has been said already that if you had a dictionary mapping the old column names to new column names, you could use pd.DataFrame.rename
.
d = {'Jack': 'x098', 'Mahesh': 'y765', 'Xin': 'z432'}
df.rename(columns=d)
x098 y765 z432
0 1 3 5
1 2 4 6
However, you can easily create that dictionary and include it in the call to rename
. The following takes advantage of the fact that when iterating over df
, we iterate over each column name.
# Given just a list of new column names
df.rename(columns=dict(zip(df, new)))
x098 y765 z432
0 1 3 5
1 2 4 6
This works great if your original column names are unique. But if they are not, then this breaks down.
Setup 2
Non-unique columns
df = pd.DataFrame(
[[1, 3, 5], [2, 4, 6]],
columns=['Mahesh', 'Mahesh', 'Xin']
)
new = ['x098', 'y765', 'z432']
df
Mahesh Mahesh Xin
0 1 3 5
1 2 4 6
Solution 2
pd.concat
using the keys
argument
First, notice what happens when we attempt to use solution 1:
df.rename(columns=dict(zip(df, new)))
y765 y765 z432
0 1 3 5
1 2 4 6
We didn't map the new
list as the column names. We ended up repeating y765
. Instead, we can use the keys
argument of the pd.concat
function while iterating through the columns of df
.
pd.concat([c for _, c in df.items()], axis=1, keys=new)
x098 y765 z432
0 1 3 5
1 2 4 6
Solution 3
Reconstruct. This should only be used if you have a single dtype
for all columns. Otherwise, you'll end up with dtype
object
for all columns and converting them back requires more dictionary work.
Single dtype
pd.DataFrame(df.values, df.index, new)
x098 y765 z432
0 1 3 5
1 2 4 6
Mixed dtype
pd.DataFrame(df.values, df.index, new).astype(dict(zip(new, df.dtypes)))
x098 y765 z432
0 1 3 5
1 2 4 6
Solution 4
This is a gimmicky trick with transpose
and set_index
. pd.DataFrame.set_index
allows us to set an index inline, but there is no corresponding set_columns
. So we can transpose, then set_index
, and transpose back. However, the same single dtype
versus mixed dtype
caveat from solution 3 applies here.
Single dtype
df.T.set_index(np.asarray(new)).T
x098 y765 z432
0 1 3 5
1 2 4 6
Mixed dtype
df.T.set_index(np.asarray(new)).T.astype(dict(zip(new, df.dtypes)))
x098 y765 z432
0 1 3 5
1 2 4 6
Solution 5
Use a lambda
in pd.DataFrame.rename
that cycles through each element of new
.
In this solution, we pass a lambda that takes x
but then ignores it. It also takes a y
but doesn't expect it. Instead, an iterator is given as a default value and I can then use that to cycle through one at a time without regard to what the value of x
is.
df.rename(columns=lambda x, y=iter(new): next(y))
x098 y765 z432
0 1 3 5
1 2 4 6
And as pointed out to me by the folks in sopython chat, if I add a *
in between x
and y
, I can protect my y
variable. Though, in this context I don't believe it needs protecting. It is still worth mentioning.
df.rename(columns=lambda x, *, y=iter(new): next(y))
x098 y765 z432
0 1 3 5
1 2 4 6
Answered 2023-09-20 20:23:13
I would like to explain a bit what happens behind the scenes.
Dataframes are a set of Series.
Series in turn are an extension of a numpy.array
.
numpy.array
s have a property .name
.
This is the name of the series. It is seldom that Pandas respects this attribute, but it lingers in places and can be used to hack some Pandas behaviors.
A lot of answers here talks about the df.columns
attribute being a list
when in fact it is a Series
. This means it has a .name
attribute.
This is what happens if you decide to fill in the name of the columns Series
:
df.columns = ['column_one', 'column_two']
df.columns.names = ['name of the list of columns']
df.index.names = ['name of the index']
name of the list of columns column_one column_two
name of the index
0 4 1
1 5 2
2 6 3
Note that the name of the index always comes one column lower.
The .name
attribute lingers on sometimes. If you set df.columns = ['one', 'two']
then the df.one.name
will be 'one'
.
If you set df.one.name = 'three'
then df.columns
will still give you ['one', 'two']
, and df.one.name
will give you 'three'
.
pd.DataFrame(df.one)
will return
three
0 1
1 2
2 3
Because Pandas reuses the .name
of the already defined Series
.
Pandas has ways of doing multi-layered column names. There is not so much magic involved, but I wanted to cover this in my answer too since I don't see anyone picking up on this here.
|one |
|one |two |
0 | 4 | 1 |
1 | 5 | 2 |
2 | 6 | 3 |
This is easily achievable by setting columns to lists, like this:
df.columns = [['one', 'one'], ['one', 'two']]
Answered 2023-09-20 20:23:13
Many of pandas functions have an inplace parameter. When setting it True, the transformation applies directly to the dataframe that you are calling it on. For example:
df = pd.DataFrame({'$a':[1,2], '$b': [3,4]})
df.rename(columns={'$a': 'a'}, inplace=True)
df.columns
>>> Index(['a', '$b'], dtype='object')
Alternatively, there are cases where you want to preserve the original dataframe. I have often seen people fall into this case if creating the dataframe is an expensive task. For example, if creating the dataframe required querying a snowflake database. In this case, just make sure the the inplace parameter is set to False.
df = pd.DataFrame({'$a':[1,2], '$b': [3,4]})
df2 = df.rename(columns={'$a': 'a'}, inplace=False)
df.columns
>>> Index(['$a', '$b'], dtype='object')
df2.columns
>>> Index(['a', '$b'], dtype='object')
If these types of transformations are something that you do often, you could also look into a number of different pandas GUI tools. I'm the creator of one called Mito. It’s a spreadsheet that automatically converts your edits to python code.
Answered 2023-09-20 20:23:13
Let's understand renaming by a small example...
Renaming columns using mapping:
df = pd.DataFrame({"A": [1, 2, 3], "B": [4, 5, 6]}) # Creating a df with column name A and B
df.rename({"A": "new_a", "B": "new_b"}, axis='columns', inplace =True) # Renaming column A with 'new_a' and B with 'new_b'
Output:
new_a new_b
0 1 4
1 2 5
2 3 6
Renaming index/Row_Name using mapping:
df.rename({0: "x", 1: "y", 2: "z"}, axis='index', inplace =True) # Row name are getting replaced by 'x', 'y', and 'z'.
Output:
new_a new_b
x 1 4
y 2 5
z 3 6
Answered 2023-09-20 20:23:13
Suppose your dataset name is df, and df has.
df = ['$a', '$b', '$c', '$d', '$e']`
So, to rename these, we would simply do.
df.columns = ['a','b','c','d','e']
Answered 2023-09-20 20:23:13
Let's say this is your dataframe.
You can rename the columns using two methods.
Using dataframe.columns=[#list]
df.columns=['a','b','c','d','e']
The limitation of this method is that if one column has to be changed, full column list has to be passed. Also, this method is not applicable on index labels. For example, if you passed this:
df.columns = ['a','b','c','d']
This will throw an error. Length mismatch: Expected axis has 5 elements, new values have 4 elements.
Another method is the Pandas rename()
method which is used to rename any index, column or row
df = df.rename(columns={'$a':'a'})
Similarly, you can change any rows or columns.
Answered 2023-09-20 20:23:13
If you've got the dataframe, df.columns dumps everything into a list you can manipulate and then reassign into your dataframe as the names of columns...
columns = df.columns
columns = [row.replace("$", "") for row in columns]
df.rename(columns=dict(zip(columns, things)), inplace=True)
df.head() # To validate the output
Best way? I don't know. A way - yes.
A better way of evaluating all the main techniques put forward in the answers to the question is below using cProfile to gage memory and execution time. @kadee, @kaitlyn, and @eumiro had the functions with the fastest execution times - though these functions are so fast we're comparing the rounding of 0.000 and 0.001 seconds for all the answers. Moral: my answer above likely isn't the 'best' way.
import pandas as pd
import cProfile, pstats, re
old_names = ['$a', '$b', '$c', '$d', '$e']
new_names = ['a', 'b', 'c', 'd', 'e']
col_dict = {'$a': 'a', '$b': 'b', '$c': 'c', '$d': 'd', '$e': 'e'}
df = pd.DataFrame({'$a':[1, 2], '$b': [10, 20], '$c': ['bleep', 'blorp'], '$d': [1, 2], '$e': ['texa$', '']})
df.head()
def eumiro(df, nn):
df.columns = nn
# This direct renaming approach is duplicated in methodology in several other answers:
return df
def lexual1(df):
return df.rename(columns=col_dict)
def lexual2(df, col_dict):
return df.rename(columns=col_dict, inplace=True)
def Panda_Master_Hayden(df):
return df.rename(columns=lambda x: x[1:], inplace=True)
def paulo1(df):
return df.rename(columns=lambda x: x.replace('$', ''))
def paulo2(df):
return df.rename(columns=lambda x: x.replace('$', ''), inplace=True)
def migloo(df, on, nn):
return df.rename(columns=dict(zip(on, nn)), inplace=True)
def kadee(df):
return df.columns.str.replace('$', '')
def awo(df):
columns = df.columns
columns = [row.replace("$", "") for row in columns]
return df.rename(columns=dict(zip(columns, '')), inplace=True)
def kaitlyn(df):
df.columns = [col.strip('$') for col in df.columns]
return df
print 'eumiro'
cProfile.run('eumiro(df, new_names)')
print 'lexual1'
cProfile.run('lexual1(df)')
print 'lexual2'
cProfile.run('lexual2(df, col_dict)')
print 'andy hayden'
cProfile.run('Panda_Master_Hayden(df)')
print 'paulo1'
cProfile.run('paulo1(df)')
print 'paulo2'
cProfile.run('paulo2(df)')
print 'migloo'
cProfile.run('migloo(df, old_names, new_names)')
print 'kadee'
cProfile.run('kadee(df)')
print 'awo'
cProfile.run('awo(df)')
print 'kaitlyn'
cProfile.run('kaitlyn(df)')
Answered 2023-09-20 20:23:13
If you already have a list for the new column names, you can try this:
new_cols = ['a', 'b', 'c', 'd', 'e']
new_names_map = {df.columns[i]:new_cols[i] for i in range(len(new_cols))}
df.rename(new_names_map, axis=1, inplace=True)
Answered 2023-09-20 20:23:13
df = pd.DataFrame({'$a': [1], '$b': [1], '$c': [1], '$d': [1], '$e': [1]})
If your new list of columns is in the same order as the existing columns, the assignment is simple:
new_cols = ['a', 'b', 'c', 'd', 'e']
df.columns = new_cols
>>> df
a b c d e
0 1 1 1 1 1
If you had a dictionary keyed on old column names to new column names, you could do the following:
d = {'$a': 'a', '$b': 'b', '$c': 'c', '$d': 'd', '$e': 'e'}
df.columns = df.columns.map(lambda col: d[col]) # Or `.map(d.get)` as pointed out by @PiRSquared.
>>> df
a b c d e
0 1 1 1 1 1
If you don't have a list or dictionary mapping, you could strip the leading $
symbol via a list comprehension:
df.columns = [col[1:] if col[0] == '$' else col for col in df]
Answered 2023-09-20 20:23:13
lambda col: d[col]
you could pass d.get
... so it would look like df.columns.map(d.get)
- anyone df.rename(index=str, columns={'A':'a', 'B':'b'})
Answered 2023-09-20 20:23:13
Another way we could replace the original column labels is by stripping the unwanted characters (here '$') from the original column labels.
This could have been done by running a for loop over df.columns and appending the stripped columns to df.columns.
Instead, we can do this neatly in a single statement by using list comprehension like below:
df.columns = [col.strip('$') for col in df.columns]
(strip
method in Python strips the given character from beginning and end of the string.)
Answered 2023-09-20 20:23:13
It is real simple. Just use:
df.columns = ['Name1', 'Name2', 'Name3'...]
And it will assign the column names by the order you put them in.
Answered 2023-09-20 20:23:13
# This way it will work
import pandas as pd
# Define a dictionary
rankings = {'test': ['a'],
'odi': ['E'],
't20': ['P']}
# Convert the dictionary into DataFrame
rankings_pd = pd.DataFrame(rankings)
# Before renaming the columns
print(rankings_pd)
rankings_pd.rename(columns = {'test':'TEST'}, inplace = True)
Answered 2023-09-20 20:23:13
You could use str.slice
for that:
df.columns = df.columns.str.slice(1)
Answered 2023-09-20 20:23:13
df.columns.str[1:]
... probably better to use that, it's shorter and more obvious. - anyone Another option is to rename using a regular expression:
import pandas as pd
import re
df = pd.DataFrame({'$a':[1,2], '$b':[3,4], '$c':[5,6]})
df = df.rename(columns=lambda x: re.sub('\$','',x))
>>> df
a b c
0 1 3 5
1 2 4 6
Answered 2023-09-20 20:23:13
My method is generic wherein you can add additional delimiters by comma separating delimiters=
variable and future-proof it.
Working Code:
import pandas as pd
import re
df = pd.DataFrame({'$a':[1,2], '$b': [3,4],'$c':[5,6], '$d': [7,8], '$e': [9,10]})
delimiters = '$'
matchPattern = '|'.join(map(re.escape, delimiters))
df.columns = [re.split(matchPattern, i)[1] for i in df.columns ]
Output:
>>> df
$a $b $c $d $e
0 1 3 5 7 9
1 2 4 6 8 10
>>> df
a b c d e
0 1 3 5 7 9
1 2 4 6 8 10
Answered 2023-09-20 20:23:13
Note that the approaches in previous answers do not work for a MultiIndex. For a MultiIndex, you need to do something like the following:
>>> df = pd.DataFrame({('$a','$x'):[1,2], ('$b','$y'): [3,4], ('e','f'):[5,6]})
>>> df
$a $b e
$x $y f
0 1 3 5
1 2 4 6
>>> rename = {('$a','$x'):('a','x'), ('$b','$y'):('b','y')}
>>> df.columns = pandas.MultiIndex.from_tuples([
rename.get(item, item) for item in df.columns.tolist()])
>>> df
a b e
x y f
0 1 3 5
1 2 4 6
Answered 2023-09-20 20:23:13
If you have to deal with loads of columns named by the providing system out of your control, I came up with the following approach that is a combination of a general approach and specific replacements in one go.
First create a dictionary from the dataframe column names using regular expressions in order to throw away certain appendixes of column names and then add specific replacements to the dictionary to name core columns as expected later in the receiving database.
This is then applied to the dataframe in one go.
dict = dict(zip(df.columns, df.columns.str.replace('(:S$|:C1$|:L$|:D$|\.Serial:L$)', '')))
dict['brand_timeseries:C1'] = 'BTS'
dict['respid:L'] = 'RespID'
dict['country:C1'] = 'CountryID'
dict['pim1:D'] = 'pim_actual'
df.rename(columns=dict, inplace=True)
Answered 2023-09-20 20:23:13
If you just want to remove the '$' sign then use the below code
df.columns = pd.Series(df.columns.str.replace("$", ""))
Answered 2023-09-20 20:23:13
In addition to the solution already provided, you can replace all the columns while you are reading the file. We can use names
and header=0
to do that.
First, we create a list of the names that we like to use as our column names:
import pandas as pd
ufo_cols = ['city', 'color reported', 'shape reported', 'state', 'time']
ufo.columns = ufo_cols
ufo = pd.read_csv('link to the file you are using', names = ufo_cols, header = 0)
In this case, all the column names will be replaced with the names you have in your list.
Answered 2023-09-20 20:23:13
My one line answer is
df.columns = df_new_cols
It is the best one with 1/3rd the processing time.
timeit
comparison:
df has seven columns. I am trying to change a few of the names.
%timeit df.rename(columns={old_col:new_col for (old_col,new_col) in zip(df_old_cols,df_new_cols)},inplace=True)
214 µs ± 10.1 µs per loop (mean ± std. dev. of 7 runs, 1000 loops each)
%timeit df.rename(columns=dict(zip(df_old_cols,df_new_cols)),inplace=True)
212 µs ± 7.7 µs per loop (mean ± std. dev. of 7 runs, 1000 loops each)
%timeit df.columns = df_new_cols
72.9 µs ± 17.2 µs per loop (mean ± std. dev. of 7 runs, 10000 loops each)
Answered 2023-09-20 20:23:13