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In Alex Martelli's response to Making a Python script Object-Oriented, he mentions that putting module level code into a function and then calling the function is faster in Python. Can someone explain why and whether it's true for all implementations of Python?

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This is mostly due to variable look-up. Looking up a variable in the global scope requires a dictionary look-up. In contrast, the compiler determines local names statically and references them by index, so no dictionary look up is required.

Note that in Python 2.x the presence of an exec statement inside a function will deactivate this optimisation, since names can't be determined statically any more. In Python 3.x, exec() is a regular function, and as such it isn't allowed to change the variables in the local scope.

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So I guess this is true for Jython, IronPython, and PyPy as well? Do they all implement global scope using the dictionary lookup and local scope using a list? – inman320 Nov 8 '11 at 17:45
@inman320: No, this does not hold for other Python implementations. In PyPy, there shouldn't be any difference in speed between code at module or function level respectively (they use a JIT compiler). I don't know how the other implementations perform. – Sven Marnach Nov 8 '11 at 18:20

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