I'm trying to read a fairly large CSV file with Pandas and split it up into two random chunks, one of which being 10% of the data and the other being 90%.

Here's my current attempt:

rows = data.index
row_count = len(rows)


training_data = data[row_count // 10:]
testing_data = data[:row_count // 10]

For some reason, sklearn throws this error when I try to use one of these resulting DataFrame objects inside of a SVM classifier:

IndexError: each subindex must be either a slice, an integer, Ellipsis, or newaxis

I think I'm doing it wrong. Is there a better way to do this?

  • 3
    Incidentally, this wouldn't randomly shuffle correctly anyway - the problem is random.shuffle(list(rows)). shuffle alters the data it operates on, but when you call list(rows), you make a copy of rows that gets altered and then thrown away - the underlying pandas Series, rows, is unchanged. One solution is to call rows = list(rows), then random.shuffle(rows) and data.reindex(rows) after that. Feb 20, 2013 at 0:10

5 Answers 5


What version of pandas are you using? For me your code works fine (i`m on git master).

Another approach could be:

In [117]: import pandas

In [118]: import random

In [119]: df = pandas.DataFrame(np.random.randn(100, 4), columns=list('ABCD'))

In [120]: rows = random.sample(df.index, 10)

In [121]: df_10 = df.ix[rows]

In [122]: df_90 = df.drop(rows)

Newer version (from 0.16.1 on) supports this directly: http://pandas.pydata.org/pandas-docs/stable/generated/pandas.DataFrame.sample.html

  • 7
    Another approach is to use np.random.permuation Sep 8, 2012 at 22:37
  • 1
    @WesMcKinney: I notice that np.random.permutation would strip the column names from the DataFrame, because np.random.permutation. Is there a method in pandas that would shuffle the dataframe while retaining the column names?
    – hlin117
    Mar 5, 2015 at 20:03
  • 4
    @hlin df.loc[np.random.permutation(df.index)] will shuffle the dataframe and keep column names. Mar 6, 2015 at 7:22
  • 1
    @Wouter Overmeire, I just tried this, and it looks like it might work fine for now, but it also gave me a deprecation warning.
    – szeitlin
    Apr 8, 2015 at 17:01
  • random.sample() will cause RuntimeError: maximum recursion depth exceeded while calling a Python object if the sample length is too long. recommending np.random.choice() Dec 15, 2015 at 3:21

I have found that np.random.choice() new in NumPy 1.7.0 works quite well for this.

For example you can pass the index values from a DataFrame and and the integer 10 to select 10 random uniformly sampled rows.

rows = np.random.choice(df.index.values, 10)
sampled_df = df.ix[rows]
  • with ipython timeit it takes half of random.sample time.. awesome
    – gc5
    Nov 11, 2013 at 16:34
  • +1 for use of np.random.choice. Also, if you have a pd.Series of probabilities, prob, you can pick from the index as so: np.random.choice(prob.index.values, p=prob.values)
    – LondonRob
    Jan 22, 2014 at 19:06
  • 39
    Don't forget to specify replace=False if you want sampling without replacement. Otherwise this method can potentially sample the same row multiple times. Jan 30, 2014 at 3:55
  • if you'd like to sample N unique values of a column 'A' from df w/o replacement, I found the following useful: rand_Nvals = np.random.choice(list(set(df.A)), N, replace=False) Aug 25, 2015 at 4:49
  • In my case, I wanted to repeat data -- i.e. take the list ['a','b','c'] and make this list 3,000 long (instead of 3 long). random.sample doesn't allow the result to be bigger than the input (ValueError: Sample larger than population) np.random.choice does allow the result to be bigger than the input. I might be describing a different problem than OP (who specifically says "sample" = smaller than population), but... Oct 28, 2015 at 16:54

New in version 0.16.1:

sample_dataframe = your_dataframe.sample(n=how_many_rows_you_want)

doc here: http://pandas.pydata.org/pandas-docs/version/0.17.0/generated/pandas.DataFrame.sample.html

  • Once you've got your sample_dataframe, how do you subtract it from your_dataframe? Jun 7, 2017 at 19:30
  • @ChrisNielsen Are you asking so you can do cross validation? If so, I recommend scikit-learn.org/stable/modules/cross_validation.html as it gives you all your training and testing datasets (X_train, X_test, y_train, y_test) directly
    – dval
    Jun 8, 2017 at 19:13

Pandas 0.16.1 have a sample method for that.

  • Nice! But you still have to load all the data in memory, right?
    – Nikolay
    Jun 23, 2015 at 13:40
  • I do it after loading the data in memory.
    – hurrial
    Jun 24, 2015 at 1:02

If you're using pandas.read_csv you can directly sample when loading the data, by using the skiprows parameter. Here is a short article I've written on this - https://nikolaygrozev.wordpress.com/2015/06/16/fast-and-simple-sampling-in-pandas-when-loading-data-from-files/

  • look at itertools.islice
    – Merlin
    Aug 12, 2015 at 13:50
  • this is the right answer to the question. Dec 15, 2015 at 3:23

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