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# Numeric Computation¶

Symbolic computer algebra systems like SymPy facilitate the construction and manipulation of mathematical expressions. Unfortunately when it comes time to evaluate these expressions on numerical data, symbolic systems often have poor performance.

Fortunately SymPy offers a number of easy-to-use hooks into other numeric systems, allowing you to create mathematical expressions in SymPy and then ship them off to the numeric system of your choice. This page documents many of the options available including the math library, the popular array computing package numpy, code generation in Fortran or C, and the use of the array compiler Theano.

## Subs/evalf¶

Subs is the slowest but simplest option. It runs at SymPy speeds. The .subs(...).evalf() method can substitute a numeric value for a symbolic one and then evaluate the result within SymPy.

>>> from sympy import *
>>> from sympy.abc import x
>>> expr = sin(x)/x
>>> expr.evalf(subs={x: 3.14})
0.000507214304613640


This method is slow. You should use this method production only if performance is not an issue. You can expect .subs to take tens of microseconds. It can be useful while prototyping or if you just want to see a value once.

## Lambdify¶

The lambdify function translates SymPy expressions into Python functions, leveraging a variety of numerical libraries. It is used as follows:

>>> from sympy import *
>>> from sympy.abc import x
>>> expr = sin(x)/x
>>> f = lambdify(x, expr)
>>> f(3.14)
0.000507214304614


Here lambdify makes a function that computes f(x) = sin(x)/x. By default lambdify relies on implementations in the math standard library. This numerical evaluation takes on the order of hundreds of nanoseconds, roughly two orders of magnitude faster than the .subs method. This is the speed difference between SymPy and raw Python.

Lambdify can leverage a variety of numerical backends. By default it uses the math library. However it also supports mpmath and most notably, numpy. Using the numpy library gives the generated function access to powerful vectorized ufuncs that are backed by compiled C code.

>>> from sympy import *
>>> from sympy.abc import x
>>> expr = sin(x)/x
>>> f = lambdify(x, expr, "numpy")

>>> import numpy
>>> data = numpy.linspace(1, 10, 10000)
>>> f(data)
[ 0.84147098  0.84119981  0.84092844 ..., -0.05426074 -0.05433146
-0.05440211]


If you have array-based data this can confer a considerable speedup, on the order of 10 nano-seconds per element. Unfortunately numpy incurs some start-up time and introduces an overhead of a few microseconds.

## uFuncify¶

While NumPy operations are very efficient for vectorized data they sometimes incur unnecessary costs when chained together. Consider the following operation

>>> x = get_numpy_array(...)
>>> y = sin(x) / x


The operators sin and / call routines that execute tight for loops in C. The resulting computation looks something like this

for(int i = 0; i < n; i++)
{
temp[i] = sin(x[i]);
}
for(int i = i; i < n; i++)
{
y[i] = temp[i] / x[i];
}

This is slightly sub-optimal because

1. We allocate an extra temp array
2. We walk over x memory twice when once would have been sufficient

A better solution would fuse both element-wise operations into a single for loop

for(int i = i; i < n; i++)
{
y[i] = sin(x[i]) / x[i];
}

Statically compiled projects like NumPy are unable to take advantage of such optimizations. Fortunately, SymPy is able to generate efficient low-level C or Fortran code. It can then depend on projects like Cython or f2py to compile and reconnect that code back up to Python. Fortunately this process is well automated and a SymPy user wishing to make use of this code generation should call the ufuncify function

>>> from sympy import *
>>> from sympy.abc import x
>>> expr = sin(x)/x

>>> from sympy.utilities.autowrap import ufuncify
>>> f = ufuncify([x], expr)


This function f consumes and returns a NumPy array. Generally ufuncify performs at least as well as lambdify. If the expression is complicated then ufuncify often significantly outperforms the NumPy backed solution. Jensen has a good blogpost on this topic http://ojensen.wordpress.com/2010/08/10/fast-ufunc-ish-hydrogen-solutions/

## Theano¶

SymPy has a strong connection with [Theano](http://deeplearning.net/software/theano/), a mathematical array compiler. SymPy expressions can be easily translated to Theano graphs and then compiled using the Theano compiler chain.

>>> from sympy import *
>>> from sympy.abc import x
>>> expr = sin(x)/x

>>> from sympy.printing.theanocode import theano_function
>>> f = theano_function([x], [expr])


If array broadcasting or types are desired then Theano requires this extra information

>>> f = theano_function([x], [expr], dims={x: 1}, dtypes={x: 'float64'})


Theano has a more sophisticated code generation system than SymPy’s C/Fortran code printers. Among other things it handles common sub-expressions and compilation onto the GPU. Theano also supports SymPy Matrix and Matrix Expression objects.

## So Which Should I Use?¶

The options here were listed in order from slowest and least dependencies to fastest and most dependencies. For example, if you have Theano installed then that will often be the best choice. If you don’t have Theano but do have f2py then you should use ufuncify.

Tool Speed Qualities Dependencies
subs/evalf 50us Simple None
lambdify 1us Scalar functions math
lambdify-numpy 10ns Vector functions numpy
ufuncify 10ns Complex vector expressions f2py, Cython
Theano 10ns Many outputs, CSE, GPUs Theano