# Repeat NumPy array without replicating data?

I'd like to create a 1D NumPy array that would consist of 1000 back-to-back repetitions of another 1D array, without replicating the data 1000 times.

Is it possible?

If it helps, I intend to treat both arrays as immutable.

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I came across this question after trying to search for large-data manipulation in Python. I read about Strides and was wondering why would need a replicated data which is essentially the same (points to same data in the memory). You can read read from single data set twice, can't you? I just want to know the reason you are doing this replication. Thanks. –  sabertooth Dec 23 '11 at 19:12

By "not replicating data" I am assuming you mean "not allocating more memory". In that you just want a view of the data repeating 1000 times.

Setup:

``````import numpy as np
a = np.arange(10)
``````

Make a veiw of a that repeats using no extra allocated memory. (However, this trick can only produce a 2D array)

``````b = np.lib.stride_tricks.as_strided(a, (1000, a.size), (0, a.itemsize))
``````

To use it as a flat array.

``````c = b.flat
``````
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Cool, I was wondering if strides could be used, but I couldn't figure out how! `b.flat` or `b.flatten()`? –  Benjamin Apr 6 '11 at 14:57
`b.flat.base is b` is True; `b.flatten().base is b` is False, so you want `b.flat` –  JoshAdel Apr 6 '11 at 15:04
Not sure what that means. `b.flatten().base` returns nothing... `(b.flat == b.flatten()).all()` is True, so what is the difference? –  Benjamin Apr 6 '11 at 15:15
see docs.scipy.org/doc/numpy/reference/generated/…. The difference is that your comparison tests if the values are the same on an element-wise basis. `.base` tells you about ownership of data. –  JoshAdel Apr 6 '11 at 15:21
@JoshAdel: Thanks, that is useful to know. –  Benjamin Apr 6 '11 at 15:32
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Would this work:

``````import numpy
a = numpy.array([1, 2, 3, 4])
b = numpy.ones((1000, a.shape[0]))
b *= a
b = b.flatten()
``````
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This seems like a very expensive way of doing things if you are going to produce a copy, and is ~15x slower than just using `np.tile` –  JoshAdel Apr 6 '11 at 15:08
Yes, I agree... –  Benjamin Apr 6 '11 at 15:10

I do not claim that this is the most elegant solution, because you have to fool numpy into creating an array of objects (see the line with the comment)

``````from numpy import array

n = 3

a = array([1,2])
a.setflags(write=False)
t = [a]*n + [array([1])] # Append spurious array that is not len(a)
r = array(t,dtype=object)
r.setflags(write=False)

assert id(a) == id(t[1]) == id(r[1])
``````
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I'm not 100% sure what you mean by 'not replicating the data 1000 times'. If you are looking for a numpy method to build `b` from `a` in one fell swoop (rather than looping), you can use:

``````a = np.arange(1000)
b = np.tile(a,1000)
``````

Otherwise, I would do something like:

``````a = np.arange(1000)
ii = [700,2000,10000] # The indices you want of the tiled array
b = a[np.mod(ii,a.size)]
``````

`b` is not a view of `a` in this case because of the fancy indexing (it makes a copy), but at least it returns a numpy array and doesn't create the 1000*1000x1 array in memory and just contains the elements you want.

As far as them being immutable (see Immutable numpy array?), you would need to switch the flag for each separately since copies don't retain the flag setting.

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did you try this one?:

``````import numpy as np
a = np.arange(10)
b = a[range(len(a))*1000]
``````

I didn't check for memory usage, but it behaves correctly

edit: corrected len(b) -> len(a)

Anyway, it creates a copy, so it is not the correct answer to the question.

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