196

How can I build a numpy array out of a generator object?

Let me illustrate the problem:

>>> import numpy
>>> def gimme():
...   for x in xrange(10):
...     yield x
...
>>> gimme()
<generator object at 0x28a1758>
>>> list(gimme())
[0, 1, 2, 3, 4, 5, 6, 7, 8, 9]
>>> numpy.array(xrange(10))
array([0, 1, 2, 3, 4, 5, 6, 7, 8, 9])
>>> numpy.array(gimme())
array(<generator object at 0x28a1758>, dtype=object)
>>> numpy.array(list(gimme()))
array([0, 1, 2, 3, 4, 5, 6, 7, 8, 9])

In this instance, gimme() is the generator whose output I'd like to turn into an array. However, the array constructor does not iterate over the generator, it simply stores the generator itself. The behaviour I desire is that from numpy.array(list(gimme())), but I don't want to pay the memory overhead of having the intermediate list and the final array in memory at the same time. Is there a more space-efficient way?

3
  • 7
    This is an interesting issue. I came accross this by from numpy import *; print any(False for i in range(1)) - which shadows the built-in any() and produces the opposite result (as I know now).
    – moooeeeep
    Jun 7, 2012 at 11:09
  • 5
    @moooeeeep that's terrible. if numpy can't (or doesn't want to) to treat generators as Python does, at least it should raise an exception when it receives a generator as an argument.
    – max
    Dec 10, 2012 at 0:57
  • 2
    @max I stepped on exact same mine. Apparently this was raised on the NumPy list (and earlier) concluding that this will not be changed to raise exception and one should always use namespaces.
    – alexei
    Jan 6, 2014 at 21:51

5 Answers 5

235

One google behind this stackoverflow result, I found that there is a numpy.fromiter(data, dtype, count). The default count=-1 takes all elements from the iterable. It requires a dtype to be set explicitly. In my case, this worked:

numpy.fromiter(something.generate(from_this_input), float)

8
  • how would you apply this to the question? numpy.fromiter(gimme(), float, count=-1) does not work. What does something stand for? Mar 27, 2012 at 18:54
  • 2
    @Matthias009 numpy.fromiter(gimme(), float, count=-1) works for me.
    – moooeeeep
    Jun 7, 2012 at 10:50
  • 19
    A thread explaining why fromiter only works on 1D arrays: mail.scipy.org/pipermail/numpy-discussion/2007-August/….
    – max
    Dec 10, 2012 at 1:04
  • 2
    fwiw, count=-1 does not need to be specified, as it is the default.
    – askewchan
    Mar 27, 2013 at 3:04
  • 6
    If you know the length of the iterable beforehand, specify the count to improve performance. This way it allocates the memory before filling it with values rather than resizing on demand (see the documentation of numpy.fromiter)
    – Eddy
    Aug 14, 2017 at 15:48
147

Numpy arrays require their length to be set explicitly at creation time, unlike python lists. This is necessary so that space for each item can be consecutively allocated in memory. Consecutive allocation is the key feature of numpy arrays: this combined with native code implementation let operations on them execute much quicker than regular lists.

Keeping this in mind, it is technically impossible to take a generator object and turn it into an array unless you either:

  1. can predict how many elements it will yield when run:

    my_array = numpy.empty(predict_length())
    for i, el in enumerate(gimme()): my_array[i] = el
    
  2. are willing to store its elements in an intermediate list :

    my_array = numpy.array(list(gimme()))
    
  3. can make two identical generators, run through the first one to find the total length, initialize the array, and then run through the generator again to find each element:

    length = sum(1 for el in gimme())
    my_array = numpy.empty(length)
    for i, el in enumerate(gimme()): my_array[i] = el
    

1 is probably what you're looking for. 2 is space inefficient, and 3 is time inefficient (you have to go through the generator twice).

5
  • 13
    The builtin array.array is a contiguous non-linked list, and you can simply array.array('f', generator). To say say it's impossible is misleading. It's just dynamic allocation.
    – Cuadue
    Feb 19, 2013 at 20:50
  • 1
    Why numpy.array doesn't do the memory allocation the same way as the builtin array.array, as Cuadue says. What is the tradeof? I ask because there is contiguous allocated memory in both examples. Or not?
    – jgomo3
    Jul 12, 2013 at 22:47
  • 3
    numpy assumes its array sizes to not change. It relies heavily on different views of the same chunk of memory, so allowing arrays to be expanded and reallocated would require an additional layer of indirection to enable views, for example.
    – joeln
    Aug 4, 2013 at 5:08
  • 2
    Using empty is a bit faster. Since you are going to initialize the values any way, no need to do this twice. Mar 24, 2015 at 11:40
  • See also @dhill's answer below which is faster than 1.
    – Bill
    Jul 13, 2019 at 19:16
22

While you can create a 1D array from a generator with numpy.fromiter(), you can create an N-D array from a generator with numpy.stack:

>>> mygen = (np.ones((5, 3)) for _ in range(10))
>>> x = numpy.stack(mygen)
>>> x.shape
(10, 5, 3)

It also works for 1D arrays:

>>> numpy.stack(2*i for i in range(10))
array([ 0,  2,  4,  6,  8, 10, 12, 14, 16, 18])

Note that numpy.stack is internally consuming the generator and creating an intermediate list with arrays = [asanyarray(arr) for arr in arrays]. The implementation can be found here.

[WARNING] As pointed out by @Joseh Seedy, Numpy 1.16 raises a warning that defeats usage of such function with generators.

4
  • 1
    This is a neat solution, thanks for pointing out. But it seems to be quite a bit slower (in my application) than using np.array(tuple(mygen)). Here are the test results: %timeit np.stack(permutations(range(10), 7)) 1 loop, best of 3: 1.9 s per loop compared to %timeit np.array(tuple(permutations(range(10), 7))) 1 loop, best of 3: 427 ms per loop
    – Bill
    Sep 17, 2017 at 16:45
  • 20
    This seems great and works for me. But with Numpy 1.16.1 I get this warning: FutureWarning: arrays to stack must be passed as a "sequence" type such as list or tuple. Support for non-sequence iterables such as generators is deprecated as of NumPy 1.16 and will raise an error in the future. Mar 4, 2019 at 20:19
  • Still 7x faster than the accepted answer, even if you put a list() around the generator, according to my comparison with a 20,000 x 20,000 matrix.
    – EliadL
    Jun 23, 2021 at 20:52
  • In numpy 1.21.2 on an old imac, time np.array( list( np.ndindex( 1000, 1000 ))) # CPU times: user 1.43 s time np.stack( list( np.ndindex( 1000, 1000 ))) # CPU times: user 3.42 s
    – denis
    Oct 18, 2021 at 14:39
6

Somewhat tangential, but if your generator is a list comprehension, you can use numpy.where to more effectively get your result (I discovered this in my own code after seeing this post)

0

The vstack, hstack, and dstack functions can take as input generators that yield multi-dimensional arrays.

2
  • 3
    Can you give an example in case the links change or something? :) Nov 14, 2018 at 20:45
  • 1
    These functions can take a generator of arrays, not a generator of values
    – retnikt
    Mar 24, 2020 at 15:59

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