115

Python generators are very useful. They have advantages over functions that return lists. However, you could len(list_returning_function()). Is there a way to len(generator_function())?

UPDATE:
Of course len(list(generator_function())) would work.....
I'm trying to use a generator I've created inside a new generator I'm creating. As part of the calculation in the new generator it needs to know the length of the old one. However I would like to keep both of them together with the same properties as a generator, specifically - not maintain the entire list in memory as it may be very long.

UPDATE 2:
Assume the generator knows it's target length even from the first step. Also, there's no reason to maintain the len() syntax. Example - if functions in Python are objects, couldn't I assign the length to a variable of this object that would be accessible to the new generator?

marked as duplicate by oefe, mdml, WiredPrairie, alko, adeneo Nov 23 '13 at 23:51

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  • 2
    You mean avoiding the obvious len(list(generator_function())) ? – 6502 Sep 18 '11 at 10:18
  • 3
    If you really need the length, generators are the wrong approach. But frequently, you don't need it. itertools can do wonders, and at other times the output length can be predicted (accurately) from the input. – user395760 Sep 18 '11 at 10:20
  • 2
    yes, I mean avoiding the obvious len(list(generator_function())) – Jonathan Sep 18 '11 at 10:20
  • Explain why "as part of the calculation in the new generator it needs to know the length of the old one", that's evil and we can probably eliminate that. itertools has a bunch of constructs for that. – smci Sep 18 '11 at 10:46
  • 1
    e.g. the old generator produces a certain random function and the new generator performs a calculation that depends on the current time and on the length of the vector. I don't see how this use would be evil. Trust me that I have a need for this and that it's architecturally sound in my system. – Jonathan Sep 18 '11 at 11:15
57

Generators have no length, they aren't collections after all.

Generators are functions with a internal state (and fancy syntax). You can repeatedly call them to get a sequence of values, so you can use them in loop. But they don't contain any elements, so asking for the length of a generator is like asking for the length of a function.

if functions in Python are objects, couldn't I assign the length to a variable of this object that would be accessible to the new generator?

Functions are objects, but you cannot assign new attributes to them. The reason is probably to keep such a basic object as efficient as possible.

You can however simply return (generator, length) pairs from your functions or wrap the generator in a simple object like this:

class GeneratorLen(object):
    def __init__(self, gen, length):
        self.gen = gen
        self.length = length

    def __len__(self): 
        return self.length

    def __iter__(self):
        return self.gen

g = some_generator()
h = GeneratorLen(g, 1)
print len(h), list(h)
  • 77
    No, it's pretty obvious that it is meaningful to talk about the length of many generators, since many generators return a finite number of elements. Your argument that it is meaningless proves too much; if we accept it, then by the same logic it's also meaningless to convert the output of a generator to a list... and yet list(generator()) works and is built into the language. – Mark Amery Jul 21 '15 at 10:40
  • 1
    @MarkAmery Part of what makes generators so flexible is that they don't have to provide a __len__ method (or a Java-like hasNext and remove, or ...). What would itertools.count return? There's no "infinity" integer in Python. And what about generators that don't know when they'll be done? To write an efficient __len__ method for a Goldbach's Conjecture generator, you'd first have to answer one of the biggest open questions in mathematics. – Kevin J. Chase Mar 15 '16 at 0:08
  • 3
    @KevinJ.Chase I could just as well ask "What would sum(itertools.count()) return?", yet sum can take generators. There's an obvious possible way to implement len() on arbitrary iterables: have it iterate and count how many elements there are. I'd argue that this would be an unhelpful feature to have (knowing the length of a consumed generator whose elements you've discarded isn't going to be useful in most cases), but the fact that it would loop forever on infinite generators plainly isn't the knock-down argument you think it is because sum() and list() have the same behaviour. – Mark Amery Mar 16 '16 at 11:02
  • 2
    ...and to "return the length of a consumed generator whose elements youve discarded" is sometimes useful: As the outermost consumer of a generator chain, you just want to report the number of elements the inner generators operated on (e.g. how many database records were written). – Jonathan Hartley Jun 10 '16 at 12:12
  • 2
    @Roch Oxymoron's answer is exactly what I was looking for. – Jonathan Hartley Jun 10 '16 at 12:39
184

The conversion to list that's been suggested in the other answers is the best way if you still want to process the generator elements afterwards, but has one flaw: It uses O(n) memory. You can count the elements in a generator without using that much memory with:

sum(1 for x in generator)

Of course, be aware that this might be slower than len(list(generator)) in common Python implementations, and if the generators are long enough for the memory complexity to matter, the operation would take quite some time. Still, I personally prefer this solution as it describes what I want to get, and it doesn't give me anything extra that's not required (such as a list of all the elements).

Also listen to delnan's advice: If you're discarding the output of the generator it is very likely that there is a way to calculate the number of elements without running it, or by counting them in another manner.

  • 27
    This is the best answer imo. However, it would be slightly more pythonic to write: sum(1 for _ in generator) – RussellStewart Oct 25 '13 at 18:17
  • 1
    As a Python noob I'm probably missing something obvious, but what's the point in using this approach if you cannot use the generator afterwards anymore to generate the actual values, as you already used it to count the values (and generators are fire-once AFAIU)? – sschuberth Feb 7 '17 at 15:05
  • 3
    @sschuberth: You are right. If you need both the length and the values (and you don't control the origin of the generator), turning it into the list is the best option. – evertheylen May 31 '17 at 0:48
  • 1
    Just beautiful. This is very pragmatic and clever! – Emil Ingerslev Jun 2 '17 at 11:03
  • 1
    Found this in scikit-learn's source :) github.com/scikit-learn/scikit-learn/blob/a24c8b46/sklearn/… – victor Nov 21 '17 at 23:07
18

Suppose we have a generator:

def gen():
    for i in range(10):
        yield i

We can wrap the generator, along with the known length, in an object:

import itertools
class LenGen(object):
    def __init__(self,gen,length):
        self.gen=gen
        self.length=length
    def __call__(self):
        return itertools.islice(self.gen(),self.length)
    def __len__(self):
        return self.length

lgen=LenGen(gen,10)

Instances of LenGen are generators themselves, since calling them returns an iterator.

Now we can use the lgen generator in place of gen, and access len(lgen) as well:

def new_gen():
    for i in lgen():
        yield float(i)/len(lgen)

for i in new_gen():
    print(i)
  • you solved it, but with a class. I... didn't expect that :) Is there any advantage in trying to keep the design as a function? – Jonathan Sep 18 '11 at 12:50
  • 2
    @Jonathan: My first attempt was to attach an attribute to the generator object, gen(). Unlike with functions, however, Python does not allow you to attach additional attributes to generator objects. Because of this restriction, I went with a class. – unutbu Sep 18 '11 at 12:55
10

You can use len(list(generator_function()). However, this consumes the generator, but that's the only way you can find out how many elements are generated. So you may want to save the list somewhere if you also want to use the items.

a = list(generator_function())
print(len(a))
print(a[0])
6

You can len(list(generator)) but you could probably make something more efficient if you really intend to discard the results.

6

You can use send as a hack:

def counter():
    length = 10
    i = 0
    while i < length:
        val = (yield i)
        if val == 'length':
            yield length
        i += 1

it = counter()
print(it.next())
#0
print(it.next())
#1
print(it.send('length'))
#10
print(it.next())
#2
print(it.next())
#3
  • This code doesn't work for me (python 3.6). If I do it.next() I get AttributeError: 'generator' object has no attribute 'next'. next(it) works, though. – bli Feb 4 '17 at 10:04
4

You can combine the benefits of generators with the certainty of len(), by creating your own iterable object:

class MyIterable(object):
    def __init__(self, n):
        self.n = n

    def __len__(self):
        return self.n

    def __iter__(self):
        self._gen = self._generator()
        return self

    def _generator(self):
        # Put your generator code here
        i = 0
        while i < self.n:
            yield i
            i += 1

    def next(self):
        return next(self._gen)

mi = MyIterable(100)
print len(mi)
for i in mi:
    print i,

This is basically a simple implementation of xrange, which returns an object you can take the len of, but doesn't create an explicit list.

  • you solved it, but with a class. I... didn't expect that :) Is there any advantage in trying to keep the design as a function? – Jonathan Sep 18 '11 at 12:50
  • 1
    That suffers from a little bug: The iterator you create restarts every time you call iter on it or on the original iterable. It will have less surprising behaviour if you rename _generator to __iter__ and remove next. Your iterator won't have a length, but that's not an issue since the iterable will be. (Another fix is to call self._generator during __init__ and not during __iter__.) – Rosh Oxymoron Sep 18 '11 at 13:36
4

You can use reduce.

For Python 3:

>>> import functools
>>> def gen():
...     yield 1
...     yield 2
...     yield 3
...
>>> functools.reduce(lambda x,y: x + 1, gen(), 0)

In Python 2, reduce is in the global namespace so the import is unnecessary.

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