I want to add _x
suffix to each column name like so:
featuresA = myPandasDataFrame.columns.values + '_x'
How do I do this? Additionally, if I wanted to add x_
as a suffix, how would the solution change?
The following is the nicest way to add suffix in my opinion.
df = df.add_suffix('_some_suffix')
As it is a function that is called on DataFrame and returns DataFrame - you can use it in chain of the calls.
inplace=True
parameter option). Otherwise, perfect.
You can use a list
comprehension:
df.columns = [str(col) + '_x' for col in df.columns]
There are also built-in methods like .add_suffix()
and .add_prefix()
as mentioned in another answer.
If you're trying to modify df
in-place, then the cheapest (and simplest) option is in-place addition directly on df.columns
(i.e., using Index.__iadd__
).
df = pd.DataFrame({"A": [9, 4, 2, 1], "B": [12, 7, 5, 4]})
df
A B
0 9 12
1 4 7
2 2 5
3 1 4
df.columns += '_some_suffix'
df
A_some_suffix B_some_suffix
0 9 12
1 4 7
2 2 5
3 1 4
To add a prefix, you would similarly use
df.columns = 'some_prefix_' + df.columns
df
some_prefix_A some_prefix_B
0 9 12
1 4 7
2 2 5
3 1 4
Another cheap option is using a list comprehension with f-string
formatting (available on python3.6+).
df.columns = [f'{c}_some_suffix' for c in df]
df
A_some_suffix B_some_suffix
0 9 12
1 4 7
2 2 5
3 1 4
And for prefix, similarly,
df.columns = [f'some_prefix{c}' for c in df]
It is also possible to do add *fixes while method chaining. To add a suffix, use DataFrame.add_suffix
df.add_suffix('_some_suffix')
A_some_suffix B_some_suffix
0 9 12
1 4 7
2 2 5
3 1 4
This returns a copy of the data. IOW, df
is not modified.
Adding prefixes is also done with DataFrame.add_prefix
.
df.add_prefix('some_prefix_')
some_prefix_A some_prefix_B
0 9 12
1 4 7
2 2 5
3 1 4
Which also does not modify df
.
add_*fix
These are good methods if you're trying to perform method chaining:
df.some_method1().some_method2().add_*fix(...)
However, add_prefix
(and add_suffix
) creates a copy of the entire dataframe, just to modify the headers. If you believe this is wasteful, but still want to chain, you can call pipe
:
def add_suffix(df):
df.columns += '_some_suffix'
return df
df.some_method1().some_method2().pipe(add_suffix)
new
or old
) instead of every columns? Thanks.
Mar 5, 2019 at 16:28
df = pd.DataFrame([[1,2,3]]*10)
--> df.columns
, then you would use df.add_suffix('_x')
Jul 28, 2020 at 13:22
df.columns = df.columns.astype(str) + '_x'
as my first method shows.
I Know 4 ways to add a suffix (or prefix) to your column's names:
1- df.columns = [str(col) + '_some_suffix' for col in df.columns]
or
2- df.rename(columns= lambda col: col+'_some_suffix')
or
3- df.columns += '_some_suffix'
much easiar.
or, the nicest:
3- df.add_suffix('_some_suffix')
I haven't seen this solution proposed above so adding this to the list:
df.columns += '_x'
And you can easily adapt for the prefix scenario.
df = pd.DataFrame([[1,2,3]]*10)
--> df.columns
, then you would use df.add_suffix('_x')
Jul 28, 2020 at 13:20
DataFrame.rename
df = pd.DataFrame({'A': range(3), 'B': range(4, 7)})
print(df)
A B
0 0 4
1 1 5
2 2 6
Using rename
with axis=1
and string formatting:
df.rename('col_{}'.format, axis=1)
# or df.rename(columns='col_{}'.format)
col_A col_B
0 0 4
1 1 5
2 2 6
To actually overwrite your column names, we can assign the returned values to our df
:
df = df.rename('col_{}'.format, axis=1)
or use inplace=True
:
df.rename('col_{}'.format, axis=1, inplace=True)
I figured that this is what I would use quite often, for example:
df = pd.DataFrame({'silverfish': range(3), 'silverspoon': range(4, 7),
'goldfish': range(10, 13),'goldilocks':range(17,20)})
My way of dynamically renaming:
color_list = ['gold','silver']
for i in color_list:
df[f'color_{i}']=df.filter(like=i).sum(axis=1)
OUTPUT:
{'silverfish': {0: 0, 1: 1, 2: 2},
'silverspoon': {0: 4, 1: 5, 2: 6},
'goldfish': {0: 10, 1: 11, 2: 12},
'goldilocks': {0: 17, 1: 18, 2: 19},
'color_gold': {0: 135, 1: 145, 2: 155},
'color_silver': {0: 20, 1: 30, 2: 40}}