In Python 3, how can I check whether an object is a container (rather than an iterator that may allow only one pass)?

Here's an example:

```
def renormalize(cont):
'''
each value from the original container is scaled by the same factor
such that their total becomes 1.0
'''
total = sum(cont)
for v in cont:
yield v/total
list(renormalize(range(5))) # [0.0, 0.1, 0.2, 0.3, 0.4]
list(renormalize(k for k in range(5))) # [] - a bug!
```

Obviously, when the `renormalize`

function receives a generator expression, it does not work as intended. It assumes it can iterate through the container multiple times, while the generator allows only one pass through it.

Ideally, I'd like to do this:

```
def renormalize(cont):
if not is_container(cont):
raise ContainerExpectedException
# ...
```

How can I implement `is_container`

?

I suppose I could check if the argument is empty right as we're starting to do the second pass through it. But this approach doesn't work for more complicated functions where it's not obvious when exactly the second pass starts. Furthermore, I'd rather put the validation at the function entrance, rather than deep inside the function (and shift it around whenever the function is modified).

I can of course rewrite the `renormalize`

function to work correctly with a one-pass iterator. But that require copying the input data to a container. The performance impact of copying millions of large lists "just in case they are not lists" is ridiculous.

EDIT: My original example used a `weighted_average`

function:

```
def weighted_average(c):
'''
returns weighted average of a container c
c contains values and weights in tuples
weights don't need to sum up 1 (automatically renormalized)
'''
return sum((v * w for v, w in c)) / sum((w for v, w in c))
weighted_average([(0,1), (1,1)]) #0.5
weighted_average([(k, 1) for k in range(2)]) #0.5
weighted_average((k, 1) for k in range(2)) #mistake
```

But it was not the best example since the version of `weighted_average`

rewritten to use a single pass is arguably better anyway:

```
def weighted_average(it):
'''
returns weighted average of an iterator it
it yields values and weights in tuples
weights don't need to sum up 1 (automatically renormalized)
'''
total_value = 0
total_weight = 0
for v, w in it:
total_value += v
total_weight += w
return total_value / total_weight
```

`itertools.tee()`

to unconditionally guarantee that you can iterate as many times as necessary. How can it be not obvious when you're designing the algorithms? – S.Lott Jan 24 '12 at 21:03`weighted_average`

. I updated the question to give a different example. – max Jan 24 '12 at 21:09