# Python equivalent of Scala's lazy val

I'm currently trying to port some Scala code to a Python project and I came across the following bit of Scala code:

``````  lazy val numNonZero = weights.filter { case (k,w) => w > 0 }.keys
``````

`weights` is a really long list of tuples of items and their associated probability weighting. Elements are frequently added and removed from this list but checking how many elements have a non-zero probability is relatively rare. There are a few other rare-but-expensive operations like this in the code I'm porting that seem to benefit greatly from usage of `lazy val`. What is the most idiomatic Python way to do something similar to Scala's `lazy val`?

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Generator expression

``````>>> weights = [(1,2), (2,0), (3, 1)]
>>> numNonZero = (k for k, w in weights if w > 0)
>>> next(numNonZero)
1
>>> next(numNonZero)
3
>>> next(numNonZero)
Traceback (most recent call last):
File "<stdin>", line 1, in <module>
StopIteration
>>> next(numNonZero, -1)
-1
``````

``````>>> numNonZero = (k for k, w in weights if w > 0)
>>> for k in numNonZero:
...     print(k)
...
1
3
``````

Python tutorial: Generator expressions

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Can these be used for class attributes? – shuttle87 Aug 17 '13 at 0:26
@shuttle87, I don't understand what do you mean. – falsetru Aug 17 '13 at 3:10

In Scala, `lazy val` is a final variable that is evaluated once at the time it is first accessed, rather than at the time it is declared. It is essentially a memoized function with no arguments. Here's one way you can implement a memoization decorator in Python:

``````from functools import wraps

def memoize(f):
@wraps(f)
def memoized(*args, **kwargs):
key = (args, tuple(sorted(kwargs.items()))) # make args hashable
result = memoized._cache.get(key, None)
if result is None:
result = f(*args, **kwargs)
memoized._cache[key] = result
return result
memoized._cache = {}
return memoized
``````

Here's how it can be used. With `property` you can even drop the empty parentheses, just like Scala:

``````>>> class Foo:
...     @property
...     @memoize
...     def my_lazy_val(self):
...         print "calculating"
...         return "some expensive value"

>>> a = Foo()
>>> a.my_lazy_val
calculating
'some expensive value'

>>> a.my_lazy_val
'some expensive value'
``````
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Interesting approach, thanks for sharing it. – shuttle87 Oct 18 '14 at 0:38

Essentially, you want to change how attribute access works for `numNonZero`. Python does that with a descriptor. In particular, take a look at their application to Properties.

With that, you can defer calculation until the attribute is accessed, caching it for later use.

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