As mentioned in PEP 484:
Using type hints for performance optimizations is left as an exercise for the reader.
Assuming one would be interested in doing this exercise, how hard would it be to undertake, even partially? Is there prior art for using type-hinting in an interpreted language to improve execution speed or is this only possible by going with a JIT compiler?
I should note that I also understand that this is a non-goal and that:
Python will remain a dynamically typed language, and the authors have no desire to ever make type hints mandatory, even by convention.
Consequently, I understand that efforts moving to improve speed would go against this by encouraging type hints by convention. However, I'm still curious about the difficulty of this task.
Update: Although this question is too broad for this site, it is partially answered in the PyPy FAQ:
... the speed benefits would be extremely minor.
There are several reasons for why.
One of them is that annotations are at the wrong level (e.g. a PEP 484 “int” corresponds to Python 3’s int type, which does not necessarily fits inside one machine word; even worse, an “int” annotation allows arbitrary int subclasses).
Another is that a lot more information is needed to produce good code (e.g. “this
f()called here really means this function there, and will never be monkey-patched” – same with
list(), btw). The third reason is that some “guards” in PyPy’s JIT traces don’t really have an obvious corresponding type (e.g. “this dict is so far using keys which don’t override
__hash__so a more efficient implementation was used”). Many guards don’t even have any correspondence with types at all (“this class attribute was not modified”; “the loop counter did not reach zero so we don’t need to release the GIL”; and so on).