# Automatically use list comprehension/map() recursion if a function is given a list

As a Mathematica user, I like functions that automatically "threads over lists" (as the Mathematica people call it - see http://reference.wolfram.com/mathematica/ref/Listable.html). That means that if a function is given a list instead of a single value, it automatically uses each list entry as an argument and returns a list of the results - e.g.

myfunc([1,2,3,4]) -> [myfunc(1),myfunc(2),myfunc(3),myfunc(4)]

I implemented this principle in Python like this:

def myfunc(x):
if isinstance(x,list):
return [myfunc(thisx) for thisx in x]
#rest of the function

Is this a good way to do it? Can you think of any downsides of this implementation or the strategy overall?

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consider try catch –  robert king Aug 29 '12 at 9:46

If this is something you're going to do in a lot of functions, you could use a Python decorator. Here's a simple but useful one.

def wrapped(x, *args, **kwargs):
if isinstance(x, list):
return [fn(e, *args, **kwargs) for e in x]
return fn(x, *args, **kwargs)
return wrapped

This way, just adding the line @threads_over_lists before your function would make it behave this way. For example:

return val + 1

print add_1([10, 15, 20])

# if there are multiple arguments, threads only over the first element,
# keeping others the same

return x + y

print add_2_numbers([1, 2, 3], 10)

You should also consider whether you want this to vectorize only over lists, or also over other iterable objects like tuples and generators. This is a useful StackOverflow question for determining that. Be careful, though- a string is iterable, but you probably won't want your function operating on each character within it.

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That's a good way to do it. However, you would have to do it for each function you write. To avoid that, you could use a decorator like this one :

def wrapper(element_or_list):
if isinstance(element_or_list, list):
return [fun(element) for element in element_or_list]
else:
return fun(element_or_list)

return wrapper