View source on GitHub
|
Assert the condition x == y holds element-wise.
tf.debugging.assert_equal(
x, y, message=None, summarize=None, name=None
)
Used in the notebooks
| Used in the tutorials |
|---|
This Op checks that x[i] == y[i] holds for every pair of (possibly
broadcast) elements of x and y. If both x and y are empty, this is
trivially satisfied.
If x == y does not hold, message, as well as the first summarize
entries of x and y are printed, and InvalidArgumentError is raised.
When using inside tf.function, this API takes effects during execution.
It's recommended to use this API with tf.control_dependencies to
ensure the correct execution order.
In the following example, without tf.control_dependencies, errors may
not be raised at all.
Check tf.control_dependencies for more details.
def check_size(x):with tf.control_dependencies([tf.debugging.assert_equal(tf.size(x), 3,message='Bad tensor size')]):return x
check_size(tf.ones([2, 3], tf.float32))Traceback (most recent call last):InvalidArgumentError: ...
Returns | |
|---|---|
Op that raises InvalidArgumentError if x == y is False. This can
be used with tf.control_dependencies inside of tf.functions to
block followup computation until the check has executed.
|
Raises | |
|---|---|
InvalidArgumentError
|
if the check can be performed immediately and
x == y is False. The check can be performed immediately during eager
execution or if x and y are statically known.
|
eager compatibility
returns None
View source on GitHub