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Is there a standardized decorator for applying asarray on function arguments?

I.e. something where I could write:

@array_args  # this decorator automatically calls asarray on arguments
def f(x,y):
     return x/y

instead of

def f(x,y):
    (x,y)=(numpy.asarray(x), numpy.asarray(y))
     return x/y

I've only found this discussion, so I could pull the decorator there; but I'd prefer to use a version that has been integrated into numpy.

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1  
I doubt that exists -- Especially since writing the decorator yourself is pretty simple ... –  mgilson Mar 6 '13 at 18:51
    
I figured it was so simple that one of the numpy developers would have put it in the library. –  Dave Mar 6 '13 at 18:54
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2 Answers 2

AFAIK it doesn't exist, but it's quite simple to write one:

from functools import wraps


def array_args(func):
    @wraps(func)
    def wrapper(*args):
        arrays = map(np.asarray, args)
        return func(*arrays)

    return wrapper
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up vote 1 down vote accepted

This is what I ended up with,

import scipy # numpy could work too
from functools import wraps
def asarray_strictnumeric( obj ):
    ''' only convert if the result is a numerical array. '''
    tmp=scipy.asarray(obj)
    if tmp.dtype.kind in 'iufc':
        return tmp
    else:
        return obj

def array_args(f):
    ''' Decorator: 
        - converts numerical positional arguments to arrays,
        - leaves non-numerical positional arguments alone,
        - leaves all keywords alone.
    '''
    @wraps(f)
    def wrapper(*args, **kwds):
        args=[asarray_strictnumeric(x) for x in args]
        return f( *args, **kwds )
    return wrapper 

but @promanow s answer was a useful starting point.

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1  
You should use numpy, not scipy. scipy.asarray is just an alias for numpy.asarray; using it creates an unnecessary dependency on scipy. –  Warren Weckesser Mar 6 '13 at 19:56
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