How can I make this a dynamic or first class function that essentially passes the criteria to a np.where() call?
def num_assets(obj, criteria=None): """ A flexible wrapper to return the number of assets in a portfolio. # list (asset names or characteristics) >>> num_assets([1, 2, 3, 4, 5]) 5 # number (pre-specification) >>> num_assets(7) 7 # column vector (weights) >>> num_assets(np.zeros(shape=(3,1))) 3 # matrix (covariance matrix) >>> num_assets(np.eye(10)) 10 # criteria. >>> num_assets([1, 2, 3, 4, 5], '> 3') ??? I AM STUCK HERE AND NEED SOME HELP! Should return 2 """ if criteria is None: if myc.is_iterable(obj): shape_obj = np.shape(obj) return max(shape_obj) elif myc.is_number(obj): return myc.is_number(obj, True) else: return np.where(criteria)
myc.is_iterable() is essentially a boolean function containing a try except clause to iter notifying me if obj is iterable. myc.is_number() is telling me whether the obj is a number and when I pass the True parameter, it parses the number (in case obj is a string). I consider myself a newbie and know that this should not be too difficult a problem to solve, its just that I am not sure what advanced area of Python I need to apply to solve the criteria type problem (first class objects, meta programming, ...)? Also, if there is a cleaner more pythonic way of formulating the problem/getting the answer, contributions would be most welcome.