160

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.

Update

Now using version 20. There is a sample method.

df.sample(n)

  • 1
    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
58

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.

| improve this answer | |
  • 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
  • 7
    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
  • 7
    Someone in an other post mentioned that np.random.choice is twice as fast as random.sample – Phani Jul 7 '14 at 19:00
  • 5
    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
  • 2
    I think ".ix" is deprecated, and you should use .loc for label based indexing – compguy24 Feb 27 '19 at 17:04
270

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)]
| improve this answer | |
  • 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
  • 1
    @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
20

sample

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)
| improve this answer | |
7

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]
| improve this answer | |
4

Actually this will give you repeated indices np.random.random_integers(0, len(df), N) where N is a large number.

| improve this answer | |
3

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

df=df.take(np.random.permutation(len(df))[:n])

| improve this answer | |

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.