# What is the equivalent of MATLAB's repmat in NumPy

I would like to execute the equivalent of the following MATLAB code using NumPy: `repmat([1; 1], [1 1 1])`. How would I accomplish this?

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Here is a much better (official) NumPy for Matlab Users link - I'm afraid the mathesaurus one is quite out of date.

The numpy equivalent of `repmat(a, m, n)` is `tile(a, (m, n))`.

This works with multiple dimensions and gives a similar result to matlab. (Numpy gives a 3d output array as you would expect - matlab for some reason gives 2d output - but the content is the same).

Matlab:

``````>> repmat([1;1],[1,1,1])

ans =
1
1
``````

Python:

``````In [46]: a = np.array([[1],[1]])
In [47]: np.tile(a, [1,1,1])
Out[47]:
array([[[1],
[1]]])
``````
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when i try size(repmat([1;1],[1,1,2])) it get ans = 2 1 2 [in matlab] but in python np.tile(a,[1,1,2]).shape it get(1, 2, 2) , i want numpy give result as same as matlab – vernomcrp Nov 12 '09 at 19:11
np.tile(a[:,np.newaxis],[1,1,2]) - it gives the same. Problem is tile promotes `a` to the dimension of the tile argument by prepending new axes as necessary. Matlab seems to work the other way. Similarly, with 4d tiling you will need newaxis twice... so `np.tile(a[:,newaxis,newaxis],[1,2,3,4]) = size(repmat(a,[1 2 3 4]))` as required... – robince Nov 12 '09 at 19:29

Note that some of the reasons you'd need to use MATLAB's repmat are taken care of by NumPy's broadcasting mechanism, which allows you to do various types of math with arrays of similar shape. So if you had, say, a 1600x1400x3 array representing a 3-color image, you could (elementwise) multiply it by `[1.0 0.25 0.25]` to reduce the amount of green and blue at each pixel. See the above link for more information.

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thank kwatford :) – vernomcrp Nov 12 '09 at 18:43
Not that Matlab can do this broadcasting as well, if you use `bsxfun`. – gerrit Jul 15 at 13:39

Matlab:

``````repmat(a, 2, 3)
``````

Numpy:

``````numpy.kron(numpy.ones((2,3)), a)
``````
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I don't think the mathesaurus link is very good. There is an Numpy For Matlab Users page as part of the official documentation which is more comprehensive and up to date: scipy.org/NumPy_for_Matlab_Users – robince Nov 12 '09 at 18:40
thank you, rcs ,i will try it – vernomcrp Nov 12 '09 at 18:44
I've edited the answer to point to the official docs. – Joe Shaw Jan 10 '12 at 18:47
This is probably slow, but it works nicely – Thomas Ahle Oct 2 '13 at 7:49

Know both `tile` and `repeat`.

``````x = numpy.arange(5)
print numpy.tile(x, 2)
print x.repeat(2)
``````
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