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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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up vote 2 down vote accepted

Generator expression

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

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

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):
    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
'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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