The "straightforward" way is to keep an init time within the function, and at sensible times (beginning, end of loops, before/after data writes, whatever) check the current time against that. This, of course, won't necessarily stop right at twenty seconds, and won't work if your foo() is hanging at any point internally.
Otherwise, you're probably looking at this: Asynchronous method call in Python?
If your method is dealing with sockets, asyncore from the Python Standard Library could also be useful.
EDIT: To go more in-depth (from http://docs.python.org/library/multiprocessing.html#multiprocessing.Process):
#identity function, replace with your actual foo
if __name__ == '__main__':
foo_args = #some tuple containing non-kw arguments for your function
foo_kwargs = #some dict containing kw arguments for your function
proc = multiprocessing.Process(target=foo,args=foo_args,kwargs=foo_kwargs)
proc.join(20) #This takes a timeout argument in seconds
You can also, contrary to your assumption in the question, use threads for this. You simply make the parent thread block on the call or until timeout (with the same join call--the interfaces for threading and multiprocessing are identical).
If you need the result of the function as a return value, pipes and queues on the same page can return that.