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pythonnumpyscipyderivative

scipy.misc.derivative for multiple argument function


It is straightforward to compute the partial derivatives of a function at a point with respect to the first argument using the SciPy function scipy.misc.derivative. Here is an example:

def foo(x, y):
  return(x**2 + y**3)

from scipy.misc import derivative
derivative(foo, 1, dx = 1e-6, args = (3, ))

But how would I go about taking the derivative of the function foo with respect to the second argument? One way I can think of is to generate a lambda function that rejigs the arguments around, but that can quickly get cumbersome.

Also, is there a way to generate an array of partial derivatives with respect to some or all of the arguments of a function?


Solution

  • I would write a simple wrapper, something along the lines of

    def partial_derivative(func, var=0, point=[]):
        args = point[:]
        def wraps(x):
            args[var] = x
            return func(*args)
        return derivative(wraps, point[var], dx = 1e-6)
    

    Demo:

    >>> partial_derivative(foo, 0, [3,1])
    6.0000000008386678
    >>> partial_derivative(foo, 1, [3,1])
    2.9999999995311555