Assertion and Testing¶
Chainer provides some facilities to make debugging easy.
Type checking utilities¶
Function
uses a systematic type checking of the chainer.utils.type_check
module.
It enables users to easily find bugs of forward and backward implementations.
You can find examples of type checking in some function implementations.
chainer.utils.type_check.Expr |
Abstract syntax tree of an expression. |
chainer.utils.type_check.expect |
Evaluates and tests all given expressions. |
chainer.utils.type_check.TypeInfo |
Type information of an input/gradient array. |
chainer.utils.type_check.TypeInfoTuple |
Type information of input/gradient tuples. |
Gradient checking utilities¶
Most function implementations are numerically tested by gradient checking.
This method computes numerical gradients of forward routines and compares their results with the corresponding backward routines.
It enables us to make the source of issues clear when we hit an error of gradient computations.
The chainer.gradient_check
module makes it easy to implement the gradient checking.
chainer.gradient_check.check_backward |
Test backward procedure of a given function. |
chainer.gradient_check.numerical_grad |
Computes numerical gradient by finite differences. |
Standard Assertions¶
The assertions have same names as NumPy’s ones.
The difference from NumPy is that they can accept both numpy.ndarray
and cupy.ndarray
.
chainer.testing.assert_allclose |
Asserts if some corresponding element of x and y differs too much. |
Function testing utilities¶
Chainer provides some utilities for testing its functions.
chainer.testing.unary_math_function_unittest |
Decorator for testing unary mathematical Chainer functions. |