I'm encountering a scipy function that seems to return a numpy array no matter what's passed to it. In my application I need to be able to pass scalars and lists only, so the only "problem" is that when I pass a scalar to the function an array with one element is returned (when I would expect a scalar). Should I ignore this behaviour, or hack up the function to ensure that when a scalar is passed a scalar is returned?
#! /usr/bin/env python import scipy import scipy.optimize from numpy import cos # This a some function we want to compute the inverse of def f(x): y = x + 2*cos(x) return y # Given y, this returns x such that f(x)=y def f_inverse(y): # This will be zero if f(x)=y def minimize_this(x): return y-f(x) # A guess for the solution is required x_guess = y x_optimized = scipy.optimize.fsolve(minimize_this, x_guess) # THE PROBLEM COMES FROM HERE return x_optimized # If I call f_inverse with a list, a numpy array is returned print f_inverse([1.0, 2.0, 3.0]) print type( f_inverse([1.0, 2.0, 3.0]) ) # If I call f_inverse with a tuple, a numpy array is returned print f_inverse((1.0, 2.0, 3.0)) print type( f_inverse((1.0, 2.0, 3.0)) ) # If I call f_inverse with a scalar, a numpy array is returned print f_inverse(1.0) print type( f_inverse(1.0) ) # This is the behaviour I expected (scalar passed, scalar returned). # Adding  on the return value is a hackey solution (then thing would break if a list were actually passed). print f_inverse(1.0) # <- bad solution print type( f_inverse(1.0) )
On my system the output of this is:
[ 2.23872989 1.10914418 4.1187546 ] <type 'numpy.ndarray'> [ 2.23872989 1.10914418 4.1187546 ] <type 'numpy.ndarray'> [ 2.23872989] <type 'numpy.ndarray'> 2.23872989209 <type 'numpy.float64'>
I'm using SciPy 0.10.1 and Python 2.7.3 provided by MacPorts.
After reading the answers below I settled on the following solution. Replace the return line in
if(type(y).__module__ == np.__name__): return x_optimized else: return type(y)(x_optimized)
return type(y)(x_optimized) causes the return type to be the same as the type the function was called with. Unfortunately this does not work if y is a numpy type, so
if(type(y).__module__ == np.__name__) is used to detect numpy types using the idea presented here and exclude them from the type conversion.