You seek to have
let-statement semantics in python list comprehensions, whose scope is available to both the
___ for..in(map) and the
if ___(filter) part of the comprehension, and whose scope depends on the
..for ___ in....
Your solution, modified:
Your (as you admit unreadable) solution of
[ (x,fx) for x,fx in ( (y,f(y) for y in iterable ) if fx ] is the most straightforward way to write the optimization.
Main idea: lift x into the tuple (x,f(x)).
Some would argue the most "pythonic" way to do things would be the original
[(x,f(x) for x in iterable if f(x)] and accept the inefficiencies.
You can however factor out the
((y,fy) for y in iterable) into a function, if you plan to do this a lot. This is bad because if you ever wish to have access to more variables than
x,fx,ffx), then you will need to rewrite all your list comprehensions. Therefore this isn't a great solution unless you know for sure you only need
x,fx and plan to reuse this pattern.
Main idea: use a more complicated alternative to generator expressions: one where python will let you write multiple lines.
You could just use a generator expression, which python plays nicely with:
for x in iterable:
fx = f(x)
This is how I would personally do it.
Main idea: You could also use(abuse?) side-effects and make
f have a global memoization cache, so you don't repeat operations.
This can have a bit of overhead, and requires a policy of how large the cache should be and when it should be garbage-collected. Thus this should only be used if you'd have other uses for memoizing f, or if f is very expensive. But it would let you write...
[ (x,f(x)) for x in iterable if f(x) ]
...like you originally wanted without the performance hit of doing the expensive operations in
f twice, even if you technically call it twice. You can add a
@memoized decorator to
f: example (without maximum cache size). This will work as long as x is hashable (e.g. a number, a tuple, a frozenset, etc.).
Main idea: capture fx=f(x) in a closure and modify the behavior of the list comprehension.
(lambda fx=f(x): (x,fx) if fx else None)() for x in iterable
where filterTrue(iterable) is filter(None, iterable). You would have to modify this if your list type (a 2-tuple) was actually capable of being