Given any DataFrame 2-dimensional, you can call eg. df.sample(frac=0.3) to retrieve a sample. But this sample will have completely shuffled row order.

Is there a simple way to get a subsample that preserves the row order?

  • I guess you can simply do: df.head(100) or df.tail(100) this would select first 100 rows from top or bottom
    – YOLO
    Jan 4, 2020 at 20:24
  • I know you already accepted an answer, I just want to double check what you mean by get a subsample that preserves the row order. Do you just want to sort the result sample, or change the way the sampling itself works?
    – AMC
    Jan 4, 2020 at 23:10

2 Answers 2


What we can do instead is use df.sample(), and then sort the resultant index by the original row order. Appending the sort_index() call does the trick. Here's my code:

df = pd.DataFrame(np.random.randn(100, 10))
result = df.sample(frac=0.3).sort_index()

You can even get it in ascending order. Documentation here.

  • Thanks, somehow I couldn't find this. Yet, maybe there is another option as this seems to be adding a sorting overhead in time complexity (works for me, through).
    – Nicolas
    Jan 4, 2020 at 21:00
  • Hmmm. If we sample randomly from the DataFrame, though, it's very hard for me to imagine mathematically enforcing this ordering constraint while preserving uniform randomness. Jan 4, 2020 at 21:10
  • Shouldn't the probability of each item involved in the result be equal to the frac value? If so, you could walk through the df and compare a uniform random value with the frac value and include or exclude depending on the result. That should result in O(n) time complexity.
    – Nicolas
    Jan 6, 2020 at 20:47
  • Oh, that sounds reasonable. I wonder how sample is implemented internally.... Jan 6, 2020 at 20:49

The way the question is phrased, it sounds like the accepted answer does not provide a valid solution. I'm not sure what the OP really wanted; however, if we don't assume the original index is already sorted, we can't rely on sort_index() to reorder the rows according to their original order.

Assuming we have a DataFrame with an arbitrary index

df = pd.DataFrame(np.random.randn(100, 10), np.random.rand(100))

We can reset the index first to get a RangeIndex, sample, reorder, and reinstate the original index

df_sample = df.reset_index().sample(frac=0.3).sort_index().set_index("index")

And this guarantees we maintain the original order, whatever it was, whatever the index.

Finally, in case there's already a column named "index", we'll need to do something slightly different such as rename the index first, or keep it in a separate variable while we sample. But the principle remains the same.

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