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So right now, if I multiple a list i.e. x = [1,2,3]* 2 I get x as [1,2,3,1,2,3] But this doesn't work with Pandas.

So if I want to duplicate a PANDAS DF I have to make a column a list and multiple:

col_x_duplicates =  list(df['col_x'])*N

new_df = DataFrame(col_x_duplicates, columns=['col_x'])

Then do a join on the original data:

pd.merge(new_df, df, on='col_x', how='left')

This now duplicates the pandas DF N times, Is there an easier way? Or even a quicker way?

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Numpy's repeat() might be useful (and fast) here. See stackoverflow.com/questions/1550130/…. –  acowlikeobject Jan 27 at 16:08
    
Do you want the output column to look like [1,2,3,1,2,3] or [1,1,2,2,3,3]? –  DSM Jan 27 at 17:25

1 Answer 1

up vote 0 down vote accepted

Actually, since you want to duplicate the entire dataframe (and not each element), numpy.tile() may be better:

In [69]: import pandas as pd

In [70]: arr = pd.np.array([[1, 2, 3], [4, 5, 6]])

In [71]: arr
Out[71]: 
array([[1, 2, 3],
       [4, 5, 6]])

In [72]: df = pd.DataFrame(pd.np.tile(arr, (5, 1)))

In [73]: df
Out[73]: 
   0  1  2
0  1  2  3
1  4  5  6
2  1  2  3
3  4  5  6
4  1  2  3
5  4  5  6
6  1  2  3
7  4  5  6
8  1  2  3
9  4  5  6

[10 rows x 3 columns]

In [75]: df = pd.DataFrame(pd.np.tile(arr, (1, 3)))

In [76]: df
Out[76]: 
   0  1  2  3  4  5  6  7  8
0  1  2  3  1  2  3  1  2  3
1  4  5  6  4  5  6  4  5  6

[2 rows x 9 columns]
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Thanks this is great! Shame is seems soo slow when running it on a large pandas df! –  redrubia Jan 28 at 19:10
    
You know if theres a quick way? –  redrubia Jan 28 at 19:21
    
@redrubia Are you calling tile() several times? It may be slow because you're allocating additional memory each time. If you know the final size (after all duplication), you could try initializing a zeros numpy array of that size, and then fill it in using slicing. –  acowlikeobject Jan 28 at 20:06
    
@redrubia Or, if you don't need to modify the duplicated data, see if you can refactor your code so you're saving the indices somewhere and just accessing the same dataframe repeatedly, instead of creating a new tiled dataframe. That way you don't pay the cost of allocating more memory. This is another way of doing the same thing: stackoverflow.com/questions/5564098/… –  acowlikeobject Jan 28 at 20:11

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