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?
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.
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.
df.head(100)
ordf.tail(100)
this would select first 100 rows from top or bottom