Is there a way to select random rows from a DataFrame in Pandas.

In R, using the car package, there is a useful function some(x, n) which is similar to head but selects, in this example, 10 rows at random from x.

I have also looked at the slicing documentation and there seems to be nothing equivalent.


Now using version 20. There is a sample method.


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    If you are looking to sample where the size is greater than the original, use df.sample(N, replace=True). More details here. – cs95 Jan 5 '19 at 14:40

Something like this?

import random

def some(x, n):
    return x.ix[random.sample(x.index, n)]

Note: As of Pandas v0.20.0, ix has been deprecated in favour of loc for label based indexing.

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  • 8
    Thanks @eumiro. I also worked out that df.ix[np.random.random_integers(0, len(df), 10)] would also work. – John Apr 10 '13 at 10:58
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    If you want to use numpy, then you can also do df.ix[np.random.choice(df.index, 10)]. – naught101 Feb 17 '14 at 2:53
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    Someone in an other post mentioned that np.random.choice is twice as fast as random.sample – Phani Jul 7 '14 at 19:00
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    If you use np.random.choice you have to specify replace=False, otherwise you'll get duplicate rows! – stmax Aug 10 '15 at 12:39
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    I think ".ix" is deprecated, and you should use .loc for label based indexing – compguy24 Feb 27 '19 at 17:04

With pandas version 0.16.1 and up, there is now a DataFrame.sample method built-in:

import pandas

df = pandas.DataFrame(pandas.np.random.random(100))

# Randomly sample 70% of your dataframe
df_percent = df.sample(frac=0.7)

# Randomly sample 7 elements from your dataframe
df_elements = df.sample(n=7)

For either approach above, you can get the rest of the rows by doing:

df_rest = df.loc[~df.index.isin(df_percent.index)]
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  • df_0.7 is not a valid name. Moreover, I suggest replacing df_rest = df.loc[~df.index.isin(df_0_7.index)] with df_rest = df.loc[df.index.difference(df_0_7.index)]. – Pietro Battiston May 1 '18 at 15:24
  • @PietroBattiston Thanks. I was attempting to make the answer clearer, but I agree a non-working example is not clear. Nice with the tip on difference. Though, I still prefer writing the slicing so that I read it as indices "not in the index of my sample". Is there a performance increase with difference()? – ryanjdillon May 4 '18 at 7:50
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    @ryanjdillon there was a remaining typo, I fixed it. Concerning the method, I'm actually taking back my suggestion, as indeed it's a bit less efficient. df_percent.index.get_indexer(df.index) == -1 is far more efficient instead (but also more ugly)... – Pietro Battiston May 5 '18 at 8:59


As of v0.20.0, you can use pd.DataFrame.sample, which can be used to return a random sample of a fixed number rows, or a percentage of rows:

df = df.sample(n=k)     # k rows
df = df.sample(frac=k)  # int(len(df.index) * k) rows

For reproducibility, you can specify an integer random_state, equivalent to using np.ramdom.seed. So, instead of setting, for example, np.random.seed = 0, you can:

df = df.sample(n=k, random_state=0)
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The best way to do this is with the sample function from the random module,

import numpy as np
import pandas as pd
from random import sample

# given data frame df

# create random index
rindex =  np.array(sample(xrange(len(df)), 10))

# get 10 random rows from df
dfr = df.ix[rindex]
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Actually this will give you repeated indices np.random.random_integers(0, len(df), N) where N is a large number.

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Below line will randomly select n number of rows out of the total existing row numbers from the dataframe df without replacement.


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