5

I am trying to make lambdify understand to expect more than one type of input using the modules keyword argument. According to the source code of lambdify (http://docs.sympy.org/dev/_modules/sympy/utilities/lambdify.html), this can be done by using lists of the arguments, but i am not able to do so.

import sympy
from sympy import lambdify
x,y=sympy.symbols('x y')
from sympy.parsing.sympy_parser import parse_expr
func=lambdify(x,parse_expr(exp(x)),modules=["numpy","sympy"])

func(array([3,4]))

gives

array([ 20.08553692,  54.59815003])

but when i try

func(y)

i get an

Attribute error:exp

What am i doing wrong here? Shouldn't func accept both numpy and sympy types? Any help appreciated!!

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4

The modules don't dispatch or anything like that. The way that lambdify works is that it creates

lambda x: exp(x)

where exp comes from the namespace of the module(s) you chose. lambdify(x, exp(x), ['numpy', 'sympy']) is roughly equivalent to

from sympy import *
from numpy import *
# Various name replacements for differences in numpy naming conventions, like
# asin = arcsin
return lambda x: exp(x)

If you want to provide a custom function that dispatches, you can use something like Saullo Castro's example. You can also use this with lambdify by providing a dict, like

import numpy as np
import sympy

def myexp(x):
    if isinstance(x, np.ndarray):
        return np.exp(x)
    else:
        return sympy.exp(x)

func = lambdify(x, exp(x), [{'exp': myexp}, 'numpy'])

This gives

>>> func(np.array([1, 2]))
array([ 2.71828183,  7.3890561 ])
>>> func(sympy.Symbol('y'))
exp(y)
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  • Why is it necessary to pass 'numpy' in that list? I saw the same syntax in the docs. But this: lambdify(x, exp(x), {'exp': myexp}) will also work. – Georgy Apr 10 '18 at 8:47
  • For just exp(x) including numpy is not necessary, but if you include any other function you will need it for it to lambdify to its corresponding numpy function, since you are bypassing the default third argument of 'numpy'. – asmeurer Apr 10 '18 at 18:30
2

The documentation says that the modules argument will give more priority to the modules appearing first, which in this case is "numpy". Thefore, if the two modules have the same function it will always take the first one.

A good approach would be:

import numpy as np

def func(x):
    if isinstance(x, np.ndarray):
        return np.exp(x)
    else:
        return sympy.exp(x)
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