I have a pandas DataFrame with 4 columns and I want to create a new DataFrame that only has three of the columns. This question is similar to: Extracting specific columns from a data frame but for pandas not R. The following code does not work, raises an error, and is certainly not the pandasnic way to do it.
import pandas as pd
old = pd.DataFrame({'A' : [4,5], 'B' : [10,20], 'C' : [100,50], 'D' : [-30,-50]})
new = pd.DataFrame(zip(old.A, old.C, old.D)) # raises TypeError: data argument can't be an iterator
What is the pandasnic way to do it?
Answers:
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Method 1
There is a way of doing this and it actually looks similar to R
new = old[['A', 'C', 'D']].copy()
Here you are just selecting the columns you want from the original data frame and creating a variable for those. If you want to modify the new dataframe at all you’ll probably want to use .copy() to avoid a SettingWithCopyWarning.
An alternative method is to use filter which will create a copy by default:
new = old.filter(['A','B','D'], axis=1)
Finally, depending on the number of columns in your original dataframe, it might be more succinct to express this using a drop (this will also create a copy by default):
new = old.drop('B', axis=1)
Method 2
The easiest way is
new = old[['A','C','D']]
.
Method 3
Another simpler way seems to be:
new = pd.DataFrame([old.A, old.B, old.C]).transpose()
where old.column_name will give you a series.
Make a list of all the column-series you want to retain and pass it to the DataFrame constructor. We need to do a transpose to adjust the shape.
In [14]:pd.DataFrame([old.A, old.B, old.C]).transpose() Out[14]: A B C 0 4 10 100 1 5 20 50
Method 4
columns by index:
# selected column index: 1, 6, 7 new = old.iloc[: , [1, 6, 7]].copy()
Method 5
As far as I can tell, you don’t necessarily need to specify the axis when using the filter function.
new = old.filter(['A','B','D'])
returns the same dataframe as
new = old.filter(['A','B','D'], axis=1)
Method 6
Generic functional form
def select_columns(data_frame, column_names):
new_frame = data_frame.loc[:, column_names]
return new_frame
Specific for your problem above
selected_columns = ['A', 'C', 'D'] new = select_columns(old, selected_columns)
Method 7
As an alternative:
new = pd.DataFrame().assign(A=old['A'], C=old['C'], D=old['D'])
Method 8
If you want to have a new data frame then:
import pandas as pd
old = pd.DataFrame({'A' : [4,5], 'B' : [10,20], 'C' : [100,50], 'D' : [-30,-50]})
new= old[['A', 'C', 'D']]
Method 9
You can drop columns in the index:
df = pd.DataFrame({'A': [1, 1], 'B': [2, 2], 'C': [3, 3], 'D': [4, 4]})
df[df.columns.drop(['B', 'C'])]
or
df.loc[:, df.columns.drop(['B', 'C'])]
Output:
A D 0 1 4 1 1 4
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