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Really missing Haskell right now.

I have this code:

for i in someFunc(arg0...argN):
    //some logic

The problem is that the return value of someFunc is massive, I'm running out of memory.

I thought I could wrap it up in a generator, but this isn't helping because I don't control someFunc, aka doing:

def gen_someFunc(someFunc):
    for i in someFunc(arg0...argN):
        yield i

doesn't help since someFunc is still evaluated immediately. How can I lazily evaluate someFunc?

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To clarify, the problem is that someFunc returns a materialized dataset that is too large? –  Sean Vieira Feb 27 '14 at 21:12
    
@SeanVieira Yes. –  Edgar Aroutiounian Feb 27 '14 at 21:12
4  
@Edgar: Haskell won't save you either. If a function decides to return ByteString instead of Lazy.ByteString, you're just as lost. You can't change the behaviour of existing code. Laziness comes at a huge cost sometimes. –  Niklas B. Feb 27 '14 at 21:26
4  
@EdgarAroutiounian: The point Niklas is making is that the "fault" here doesn't lie with Python (or any arbitrary non-Haskell language); it lies with whoever wrote the nonlazy function. –  John Y Feb 27 '14 at 21:50
3  
@Edgar: A list in Haskell is equivalent to a generator in Python. So let's just say the function would return a "massive" generator, you wouldn't have the problem you have in Python either. Nobody would return "a massive list" unevaluated from a Haskell function, that's a pretty sure way to get a stack overflow (due to unevaluated thunks building up on the stack) –  Niklas B. Feb 27 '14 at 22:39

1 Answer 1

In Python (or Haskell, which this isn't), you can't lazily queue up a function that returns a fully materialized object. Lazy can happen after you use the function, but if the data is dumped on you all at once, there's nothing you can do about it.

Perhaps there are arguments for calling the function that you don't yet know about that will let you lazily evaluate it, but we don't know that from the information given here.

If you could hold the initial call on the data in memory, the Pythonic way to call it, as a generator, would be

gen_some_func = iter(someFunc(arg0...argN))

not write this function and then call it later.

def gen_someFunc(someFunc):
    for i in someFunc(arg0...argN):
        yield i
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