# Efficient Numpy 2D array construction from 1D array

I have an array like this:

``````A = array([1,2,3,4,5,6,7,8,9,10])
``````

And I am trying to get an array like this:

``````B = array([[1,2,3],
[2,3,4],
[3,4,5],
[4,5,6]])
``````

Where each row (of a fixed arbitrary width) is shifted by one. The array of A is 10k records long and I'm trying to find an efficient way of doing this in Numpy. Currently I am using vstack and a for loop which is slow. Is there a faster way?

Edit:

``````width = 3 # fixed arbitrary width
length = 10000 # length of A which I wish to use
B = A[0:length + 1]
for i in range (1, length):
B = np.vstack((B, A[i, i + width + 1]))
``````
-
Can you post your vstack/loop solution? –  eumiro Feb 7 '11 at 16:26
@wxbx: Please elaborate more what you are aiming to do? Please note that `B = array([1,2,3],[2,3,4],[3,4,5],[4,5,6])` is not valid `numpy`! –  eat Feb 7 '11 at 16:30
@wxbx - your solution is really unlucky. You `vstack` the array 10000 times! See my answer, I `vstack` it just once. –  eumiro Feb 7 '11 at 16:37
oops fixed syntax error... thinking in matlab mode. –  wxbx Feb 7 '11 at 16:37
Is `A` really equal to a sequence of increasing numbers or is it just for illustrating the positions? If the former, I know I quick way to do it. :) –  ianalis Feb 7 '11 at 16:43

Actually, there's an even more efficient way to do this... The downside to using `vstack` etc, is that you're making a copy of the array.

Incidentally, this is effectively identical to @Paul's answer, but I'm posting this just to explain things in a bit more detail...

There's a way to do this with just views so that no memory is duplicated.

I'm directly borrowing this from Erik Rigtorp's post to numpy-discussion, who in turn, borrowed it from Keith Goodman's Bottleneck (Which is quite useful!).

The basic trick is to directly manipulate the strides of the array (For one-dimensional arrays):

``````import numpy as np

def rolling(a, window):
shape = (a.size - window + 1, window)
strides = (a.itemsize, a.itemsize)
return np.lib.stride_tricks.as_strided(a, shape=shape, strides=strides)

a = np.arange(10)
print rolling(a, 3)
``````

Where `a` is your input array and `window` is the length of the window that you want (3, in your case).

This yields:

``````[[0 1 2]
[1 2 3]
[2 3 4]
[3 4 5]
[4 5 6]
[5 6 7]
[6 7 8]
[7 8 9]]
``````

However, there is absolutely no duplication of memory between the original `a` and the returned array. This means that it's fast and scales much better than other options.

For example (using `a = np.arange(100000)` and `window=3`):

``````%timeit np.vstack([a[i:i-window] for i in xrange(window)]).T
1000 loops, best of 3: 256 us per loop

%timeit rolling(a, window)
100000 loops, best of 3: 12 us per loop
``````

If we generalize this to a "rolling window" along the last axis for an N-dimensional array, we get Erik Rigtorp's "rolling window" function:

``````import numpy as np

def rolling_window(a, window):
"""
Make an ndarray with a rolling window of the last dimension

Parameters
----------
a : array_like
Array to add rolling window to
window : int
Size of rolling window

Returns
-------
Array that is a view of the original array with a added dimension
of size w.

Examples
--------
>>> x=np.arange(10).reshape((2,5))
>>> rolling_window(x, 3)
array([[[0, 1, 2], [1, 2, 3], [2, 3, 4]],
[[5, 6, 7], [6, 7, 8], [7, 8, 9]]])

Calculate rolling mean of last dimension:
>>> np.mean(rolling_window(x, 3), -1)
array([[ 1.,  2.,  3.],
[ 6.,  7.,  8.]])

"""
if window < 1:
raise ValueError, "`window` must be at least 1."
if window > a.shape[-1]:
raise ValueError, "`window` is too long."
shape = a.shape[:-1] + (a.shape[-1] - window + 1, window)
strides = a.strides + (a.strides[-1],)
return np.lib.stride_tricks.as_strided(a, shape=shape, strides=strides)
``````

So, let's look into what's going on here... Manipulating an array's `strides` may seem a bit magical, but once you understand what's going on, it's not at all. The strides of a numpy array describe the size in bytes of the steps that must be taken to increment one value along a given axis. So, in the case of a 1-dimensional array of 64-bit floats, the length of each item is 8 bytes, and `x.strides` is `(8,)`.

``````x = np.arange(9)
print x.strides
``````

Now, if we reshape this into a 2D, 3x3 array, the strides will be `(3 * 8, 8)`, as we would have to jump 24 bytes to increment one step along the first axis, and 8 bytes to increment one step along the second axis.

``````y = x.reshape(3,3)
print y.strides
``````

Similarly a transpose is the same as just reversing the strides of an array:

``````print y
y.strides = y.strides[::-1]
print y
``````

Clearly, the strides of an array and the shape of an array are intimately linked. If we change one, we have to change the other accordingly, otherwise we won't have a valid description of the memory buffer that actually holds the values of the array.

Therefore, if you want to change both the shape and size of an array simultaneously, you can't do it just by setting `x.strides` and `x.shape`, even if the new strides and shape are compatible.

That's where `numpy.lib.as_strided` comes in. It's actually a very simple function that just sets the strides and shape of an array simultaneously.

It checks that the two are compatible, but not that the old strides and new shape are compatible, as would happen if you set the two independently. (It actually does this through numpy's `__array_interface__`, which allows arbitrary classes to describe a memory buffer as a numpy array.)

So, all we've done is made it so that steps one item forward (8 bytes in the case of a 64-bit array) along one axis, but also only steps 8 bytes forward along the other axis.

In other words, in case of a "window" size of 3, the array has a shape of `(whatever, 3)`, but instead of stepping a full `3 * x.itemsize` for the second dimension, it only steps one item forward, effectively making the rows of new array a "moving window" view into the original array.

(This also means that `x.shape[0] * x.shape[1]` will not be the same as `x.size` for your new array.)

At any rate, hopefully that makes things slightly clearer..

-
Kinggton: I really admire your answer, but don't you think it's quite a overkill to OP's question? ;-). Thanks –  eat Feb 7 '11 at 18:49
@eat - It is! :) It's definitely overkill for a short array (and the OP's 10K-element array is fairly short), but it's still useful to know about. Honestly, I just think I like writing overly-long answers sometimes... –  Joe Kington Feb 7 '11 at 19:23
Kingston: Thanks for a really detailed answer, I learnt a lot there. I also benched your code against @eumiro's answer and your rolling answer gave me 60x speedup! Considering I plan to use this on a much larger array the speedup is incredibly useful. :) –  wxbx Feb 8 '11 at 2:09

This solution is not efficiently implemented by a python loop since it comes with all kinds of type-checking best avoided when working with numpy arrays. If your array is exceptionally tall, you will notice a large speed up with this:

``````newshape = (4,3)
newstrides = (A.itemsize, A.itemsize)
B = numpy.lib.stride_tricks.as_strided(A, shape=newshape, strides=newstrides)
``````

This gives a view of the array A. If you want a new array you can edit, do the same but with `.copy()` at the end.

Details on strides:

The `newstrides` tuple in this case will be (4,4) because the array has 4-byte items and you want to continue to step thru your data in single-item steps in the i-dimension. The second value '4' refers to the strides in the j-dimension (in a normal 4x4 array it would be 16). Because in this case you want to also also increment your read from the buffer in 4-byte steps in the j-dimension.

Joe give a nice, detailed description and makes things crystal-clear when he says that all this trick does is change strides and shape simultaneously.

-
+1 You beat me to it! I was in the middle of typing this up... I'll still post my answer, as it goes into a bit more detail. Also, your `strides=(4,4)` assumes that `A.itemsize` is 4 (i.e. 32-bit floats or ints). It's best to do `strides=(A.itemsize, A.itemsize)`. –  Joe Kington Feb 7 '11 at 17:25
Can you point me towards the docs for this? I have never seen this function before... –  Benjamin Feb 7 '11 at 17:32
Thanks Joe. I was looking for some on-line documentation to link to but not much out there! This was the best I could find: mentat.za.net/numpy/numpy_advanced_slides –  Paul Feb 7 '11 at 17:32
–  Paul Feb 7 '11 at 17:41
@Paul: That helps a little, but I still can`t find the docs for numpy.lib.stride_tricks.as_strided –  Benjamin Feb 7 '11 at 17:46

Which approach are you using?

``````import numpy as np
A = np.array([1,2,3,4,5,6,7,8,9,10])
width = 3

np.vstack([A[i:i-len(A)+width] for i in xrange(len(A)-width)])
# needs 26.3µs

np.vstack([A[i:i-width] for i in xrange(width)]).T
# needs 13.2µs
``````

If your width is relatively low (3) and you have a big `A` (10000 elements), then the difference is even more important: 32.4ms for the first and 44µs for the second.

-
thanks! this is just what I needed! and yeah just cracked out numpy today so slowly learning. –  wxbx Feb 7 '11 at 16:39

I think this might be faster than looping, when the width is fixed at a low number...

``````import numpy
a = numpy.array([1,2,3,4,5,6])
b = numpy.reshape(a, (numpy.shape(a)[0],1))
b = numpy.concatenate((b, numpy.roll(b,-1,0), numpy.roll(b,-2,0)), 1)
b = b[0:(numpy.shape(a)[0]/2) + 1,:]
``````

EDIT Clearly, the solutions using strides are superior to this, with the only major disadvantage being that they are not yet well documented...

-

Just to further go with the answer of @Joe general

``````import numpy as np
def rolling(a, window):
step = 2
shape = ( (a.size-window)/step + 1   , window)

strides = (a.itemsize*step, a.itemsize)

return np.lib.stride_tricks.as_strided(a, shape=shape, strides=strides)

a = np.arange(10)

print rolling(a, 3)
``````

which outputs:

``````[[0 1 2]
[2 3 4]
[4 5 6]
[6 7 8]]
``````

To generalize further for the 2d case,i.e use it for patch extraction from an image

``````def rolling2d(a,win_h,win_w,step_h,step_w):

h,w = a.shape
shape = ( ((h-win_h)/step_h + 1)  * ((w-win_w)/step_w + 1) , win_h , win_w)

strides = (step_w*a.itemsize, h*a.itemsize,a.itemsize)

return np.lib.stride_tricks.as_strided(a, shape=shape, strides=strides)

a = np.arange(36).reshape(6,6)
print a
print rolling2d (a,3,3,2,2)
``````

which outputs:

``````[[ 0  1  2  3  4  5]
[ 6  7  8  9 10 11]
[12 13 14 15 16 17]
[18 19 20 21 22 23]
[24 25 26 27 28 29]
[30 31 32 33 34 35]]
[[[ 0  1  2]
[ 6  7  8]
[12 13 14]]

[[ 2  3  4]
[ 8  9 10]
[14 15 16]]

[[ 4  5  6]
[10 11 12]
[16 17 18]]

[[ 6  7  8]
[12 13 14]
[18 19 20]]]
``````
-