What does generator comprehension do? How does it work? I couldn't find a tutorial about it.
Do you understand list comprehensions? If so, a generator expression is like a list comprehension, but instead of finding all the items you're interested and packing them into list, it waits, and yields each item out of the expression, one by one.
>>> my_list = [1, 3, 5, 9, 2, 6] >>> filtered_list = [item for item in my_list if item > 3] >>> print filtered_list [5, 9, 6] >>> len(filtered_list) 3 >>> # compare to generator expression ... >>> filtered_gen = (item for item in my_list if item > 3) >>> print filtered_gen # notice it's a generator object <generator object at 0xb7d5e02c> >>> len(filtered_gen) # So technically, it has no length Traceback (most recent call last): File "<stdin>", line 1, in <module> TypeError: object of type 'generator' has no len() >>> # We extract each item out individually. We'll do it manually first. ... >>> filtered_gen.next() 5 >>> filtered_gen.next() 9 >>> filtered_gen.next() 6 >>> filtered_gen.next() # Should be all out of items and give an error Traceback (most recent call last): File "<stdin>", line 1, in <module> StopIteration >>> # Yup, the generator is spent. No values for you! ... >>> # Let's prove it gives the same results as our list comprehension ... >>> filtered_gen = (item for item in my_list if item > 3) >>> gen_to_list = list(filtered_gen) >>> print gen_to_list [5, 9, 6] >>> filtered_list == gen_to_list True >>>
Because a generator expression only has to yield one item at a time, it can lead to big savings in memory usage. Generator expressions make the most sense in scenarios where you need to take one item at a time, do a lot of calculations based on that item, and then move on to the next item. If you need more than one value, you can also use a generator expression and grab a few at a time. If you need all the values before your program proceeds, use a list comprehension instead.
A generator comprehension is the lazy version of a list comprehension.
It is just like a list comprehension except that it returns an iterator instead of the list ie an object with a next() method that will yield the next element.
List/generator comprehension is a construct which you can use to create a new list/generator from an existing one.
Let's say you want to generate the list of squares of each number from 1 to 10. You can do this in Python:
>>> [x**2 for x in range(1,11)] [1, 4, 9, 16, 25, 36, 49, 64, 81, 100]
range(1,11) generates the list
[1, 2, 3, 4, 5, 6, 7, 8, 9, 10], but the
range function is not a generator before Python 3.0, and therefore the construct I've used is a list comprehension.
If I wanted to create a generator that does the same thing, I could do it like this:
>>> (x**2 for x in xrange(1,11)) <generator object at 0x7f0a79273488>
In Python 3, however,
range is a generator, so the outcome depends only on the syntax you use (square brackets or round brackets).
Generator comprehension is an easy way of creating generators with a certain structure. Lets say you want a
generator that outputs one by one all the even numbers in
your_list. If you create it by using the function style it would be like this:
def allEvens( L ): for number in L: if number % 2 is 0: yield number evens = allEvens( yourList )
You could achieve the same result with this generator comprehension expression:
evens = ( number for number in your_list if number % 2 == 0 )
In both cases, when you call
next(evens) you get the next even number in
Generator comprehension is an approach to create iterables, something like a cursor which moves on a resource. If you know mysql cursor or mongodb cursor, you may be aware of that the whole actual data never gets loaded into the memory at once, but one at a time. Your cursor moves back and forth, but there is always a one row/list element in memory.
In short, by using generators comprehension you can easily create cursors in python.