# Efficient creation of numpy arrays from list comprehension and in general

In my current work i use Numpy and list comprehensions a lot and in the interest of best possible performance i have the following questions:

What actually happens behind the scenes if i create a Numpy array as follows? :

``````a = numpy.array( [1,2,3,4] )
``````

My guess is that python first creates an ordinary list containing the values, then uses the list size to allocate a numpy array and afterwards copies the values into this new array. Is this correct, or is the interpreter clever enough to realize that the list is only intermediary and instead copy the values directly?

Similarly, if i wish to create a numpy array from list comprehension using numpy.fromiter():

``````a = numpy.fromiter( [ x for x in xrange(0,4) ], int )
``````

will this result in an intermediary list of values being created before being fed into fromiter()?

Best regards Niels

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If you're trying to avoid the creation of the list, why `a = numpy.fromiter( [ x for x in xrange(0,4) ], int )` instead of simply `a = numpy.fromiter(xrange(4), int)`? –  wim Jan 17 '13 at 5:21
@wim or just `np.arange` ... –  Jon Clements Jan 17 '13 at 5:23
Just an example (a poor one, i'll admit). The expression could be anything –  NielsGM Jan 17 '13 at 5:23
Note also you have `np.arange` if you need it, but I guess you probably know that already. –  wim Jan 17 '13 at 5:23
The point raised by @wim, is that `numpy.fromiter(list(something), ...` or `numpy.fromiter([something], ...` should never be used! Use always `numpy.fromiter(something, ...` regardless from what `something` is. –  Stefano M Jan 17 '13 at 11:48

I believe than answer you are looking for is using `generator expressions` with numpy.fromiter.

``````numpy.fromiter((<some_func>(x) for x in <something>),<dtype>,<size of something>)
``````

Generator expressions are lazy - they evaluate the expression when you iterate through them.

Using list comprehensions makes the list, then feeds it into numpy, while generator expressions will yield one at a time.

Python evaluates things inside -> out, like most languages (if not all), so using `[<something> for <something_else> in <something_different>]` would make the list, then iterate over it.

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This evaluates to `numpy.fromiter(something...` ... –  Jon Clements Jan 17 '13 at 5:34
@JonClements you could apply some function to `x`, and it would be evaluated as needed –  Snakes and Coffee Jan 17 '13 at 5:35
In which case that's a valid use-case - but your original example wasn't... :) –  Jon Clements Jan 17 '13 at 5:36
numpy needs to know the size of the generator to allocate memory for it. How does `np.fromiter` handle this? Storing the generated values, and thus defeating the purpose of not generating a list or tuple? Or running the generator twice, one for counting, the other to fill the array? –  Jaime Jan 17 '13 at 6:21
@Jaime according to the docs, if you specify the size as `count`, then numpy will preallocate the memory - so if you already have it hanging around then you can do that. Otherwise, you are correct - it would have to run the generator, and count the list it made. –  Snakes and Coffee Jan 17 '13 at 6:26

You could create your own list and experiment with it to shed some light on the situation...

``````>>> class my_list(list):
...   def __init__(self, arg):
...     print 'spam'
...     super(my_list, self).__init__(arg)
...   def __len__(self):
...     print 'eggs'
...     return super(my_list, self).__len__()
...
>>> x = my_list([0,1,2,3])
spam
>>> len(x)
eggs
4
>>> import numpy as np
>>> np.array(x)
eggs
eggs
eggs
eggs
array([0, 1, 2, 3])
>>> np.fromiter(x, int)
array([0, 1, 2, 3])
>>> np.array(my_list([0,1,2,3]))
spam
eggs
eggs
eggs
eggs
array([0, 1, 2, 3])
``````
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Note: this is a python 2.7, IIRC the syntax of `super` changed some in python 3 –  wim Jan 17 '13 at 5:37