Testing the numpy.i Typemaps
Introduction
Writing tests for the numpy.i
SWIG interface file is a combinatorial headache. At present, 12 different data types are supported, each with 74 different argument signatures, for a total of 888 typemaps supported “out of the box”. Each of these typemaps, in turn, might require several unit tests in order to verify expected behavior for both proper and improper inputs. Currently, this results in more than 1,000 individual unit tests executed when make test
is run in the numpy/tools/swig
subdirectory.
To facilitate this many similar unit tests, some high-level programming techniques are employed, including C and SWIG macros, as well as Python inheritance. The purpose of this document is to describe the testing infrastructure employed to verify that the numpy.i
typemaps are working as expected.
Testing Organization
There are three indepedent testing frameworks supported, for one-, two-, and three-dimensional arrays respectively. For one-dimensional arrays, there are two C++ files, a header and a source, named:
Vector.h Vector.cxx
that contain prototypes and code for a variety of functions that have one-dimensional arrays as function arguments. The file:
Vector.i
is a SWIG interface file that defines a python module Vector
that wraps the functions in Vector.h
while utilizing the typemaps in numpy.i
to correctly handle the C arrays.
The Makefile
calls swig
to generate Vector.py
and Vector_wrap.cxx
, and also executes the setup.py
script that compiles Vector_wrap.cxx
and links together the extension module _Vector.so
or _Vector.dylib
, depending on the platform. This extension module and the proxy file Vector.py
are both placed in a subdirectory under the build
directory.
The actual testing takes place with a Python script named:
testVector.py
that uses the standard Python library module unittest
, which performs several tests of each function defined in Vector.h
for each data type supported.
Two-dimensional arrays are tested in exactly the same manner. The above description applies, but with Matrix
substituted for Vector
. For three-dimensional tests, substitute Tensor
for Vector
. For four-dimensional tests, substitute SuperTensor
for Vector
. For flat in-place array tests, substitute Flat
for Vector
. For the descriptions that follow, we will reference the Vector
tests, but the same information applies to Matrix
, Tensor
and SuperTensor
tests.
The command make test
will ensure that all of the test software is built and then run all three test scripts.
Testing Header Files
Vector.h
is a C++ header file that defines a C macro called TEST_FUNC_PROTOS
that takes two arguments: TYPE
, which is a data type name such as unsigned int
; and SNAME
, which is a short name for the same data type with no spaces, e.g. uint
. This macro defines several function prototypes that have the prefix SNAME
and have at least one argument that is an array of type TYPE
. Those functions that have return arguments return a TYPE
value.
TEST_FUNC_PROTOS
is then implemented for all of the data types supported by numpy.i
:
signed char
unsigned char
short
unsigned short
int
unsigned int
long
unsigned long
long long
unsigned long long
float
double
Testing Source Files
Vector.cxx
is a C++ source file that implements compilable code for each of the function prototypes specified in Vector.h
. It defines a C macro TEST_FUNCS
that has the same arguments and works in the same way as TEST_FUNC_PROTOS
does in Vector.h
. TEST_FUNCS
is implemented for each of the 12 data types as above.
Testing SWIG Interface Files
Vector.i
is a SWIG interface file that defines python module Vector
. It follows the conventions for using numpy.i
as described in this chapter. It defines a SWIG macro %apply_numpy_typemaps
that has a single argument TYPE
. It uses the SWIG directive %apply
to apply the provided typemaps to the argument signatures found in Vector.h
. This macro is then implemented for all of the data types supported by numpy.i
. It then does a %include "Vector.h"
to wrap all of the function prototypes in Vector.h
using the typemaps in numpy.i
.
Testing Python Scripts
After make
is used to build the testing extension modules, testVector.py
can be run to execute the tests. As with other scripts that use unittest
to facilitate unit testing, testVector.py
defines a class that inherits from unittest.TestCase
:
class VectorTestCase(unittest.TestCase):
However, this class is not run directly. Rather, it serves as a base class to several other python classes, each one specific to a particular data type. The VectorTestCase
class stores two strings for typing information:
- self.typeStr
- A string that matches one of the
SNAME
prefixes used inVector.h
andVector.cxx
. For example,"double"
. - self.typeCode
- A short (typically single-character) string that represents a data type in numpy and corresponds to
self.typeStr
. For example, ifself.typeStr
is"double"
, thenself.typeCode
should be"d"
.
Each test defined by the VectorTestCase
class extracts the python function it is trying to test by accessing the Vector
module’s dictionary:
length = Vector.__dict__[self.typeStr + "Length"]
In the case of double precision tests, this will return the python function Vector.doubleLength
.
We then define a new test case class for each supported data type with a short definition such as:
class doubleTestCase(VectorTestCase): def __init__(self, methodName="runTest"): VectorTestCase.__init__(self, methodName) self.typeStr = "double" self.typeCode = "d"
Each of these 12 classes is collected into a unittest.TestSuite
, which is then executed. Errors and failures are summed together and returned as the exit argument. Any non-zero result indicates that at least one test did not pass.
© 2008–2017 NumPy Developers
Licensed under the NumPy License.
https://docs.scipy.org/doc/numpy-1.13.0/reference/swig.testing.html