70

I would like to drop all data in a pandas dataframe, but am getting TypeError: drop() takes at least 2 arguments (3 given). I essentially want a blank dataframe with just my columns headers.

import pandas as pd

web_stats = {'Day': [1, 2, 3, 4, 2, 6],
             'Visitors': [43, 43, 34, 23, 43, 23],
             'Bounce_Rate': [3, 2, 4, 3, 5, 5]}
df = pd.DataFrame(web_stats)

df.drop(axis=0, inplace=True)
print df
5
  • 9
    I do like @ayhan's solution, but I think df = pd.DataFrame(columns=df.columns) would be faster and more efficient... Aug 26, 2016 at 20:55
  • Agree with @MaxU -- it's actually about 100x faster (test dataframe with 1M rows and 10 cols)
    – exp1orer
    Aug 26, 2016 at 23:18
  • 2
    df.iloc[0:0] is faster than the df construction actually. I guess you are comparing it to drop rather than iloc?
    – ayhan
    Aug 27, 2016 at 4:31
  • 1
    @ayhan, you are right, I was talking about df.drop(...) Aug 27, 2016 at 10:14
  • 1
    Wouldn't it be a good idea to use gc.collect() afterwards?
    – Mohd
    Jul 4, 2020 at 11:53

6 Answers 6

138

You need to pass the labels to be dropped.

df.drop(df.index, inplace=True)

By default, it operates on axis=0.

You can achieve the same with

df.iloc[0:0]

which is much more efficient.

1
  • Should it not be df = df.iloc[0:0] ?
    – DISC-O
    May 28 at 17:45
22

My favorite:

df = df.iloc[0:0]

But be aware df.index.max() will be nan. To add items I use:

df.loc[0 if math.isnan(df.index.max()) else df.index.max() + 1] = data
10

My favorite way is:

df = df[0:0] 
1
  • short and sweet, easy to remember!
    – wisbucky
    Jul 21, 2021 at 19:26
6

Overwrite the dataframe with something like that

import pandas as pd

df = pd.DataFrame(None)

or if you want to keep columns in place

df = pd.DataFrame(columns=df.columns)
0

If your goal is to drop the dataframe, then you need to pass all columns. For me: the best way is to pass a list comprehension to the columns kwarg. This will then work regardless of the different columns in a df.

import pandas as pd

web_stats = {'Day': [1, 2, 3, 4, 2, 6],
             'Visitors': [43, 43, 34, 23, 43, 23],
             'Bounce_Rate': [3, 2, 4, 3, 5, 5]}
df = pd.DataFrame(web_stats)

df.drop(columns=[i for i in check_df.columns])
-4

This code make clean dataframe:

df = pd.DataFrame({'a':[1,2], 'b':[3,4]})
#clean
df = pd.DataFrame()
1
  • 3
    OP wrote: I essentially want a blank dataframe with just my columns headers.
    – AMC
    Oct 3, 2020 at 0:45

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