View source on GitHub
  
 | 
Assert the condition x and y are close element-wise.
tf.compat.v1.assert_near(
    x, y, rtol=None, atol=None, data=None, summarize=None, message=None, name=None
)
Example of adding a dependency to an operation:
with tf.control_dependencies([tf.compat.v1.assert_near(x, y)]):
  output = tf.reduce_sum(x)
This condition holds if for every pair of (possibly broadcast) elements
x[i], y[i], we have
tf.abs(x[i] - y[i]) <= atol + rtol * tf.abs(y[i]).
If both x and y are empty, this is trivially satisfied.
The default atol and rtol is 10 * eps, where eps is the smallest
representable positive number such that 1 + eps != 1.  This is about
1.2e-6 in 32bit, 2.22e-15 in 64bit, and 0.00977 in 16bit.
See numpy.finfo.
Args | |
|---|---|
x
 | 
Float or complex Tensor.
 | 
y
 | 
Float or complex Tensor, same dtype as, and broadcastable to, x.
 | 
rtol
 | 
Tensor.  Same dtype as, and broadcastable to, x.
The relative tolerance.  Default is 10 * eps.
 | 
atol
 | 
Tensor.  Same dtype as, and broadcastable to, x.
The absolute tolerance.  Default is 10 * eps.
 | 
data
 | 
The tensors to print out if the condition is False.  Defaults to
error message and first few entries of x, y.
 | 
summarize
 | 
Print this many entries of each tensor. | 
message
 | 
A string to prefix to the default message. | 
name
 | 
A name for this operation (optional). Defaults to "assert_near". | 
Returns | |
|---|---|
Op that raises InvalidArgumentError if x and y are not close enough.
 | 
Numpy Compatibility
Similar to numpy.testing.assert_allclose, except tolerance depends on data
type. This is due to the fact that TensorFlow is often used with 32bit,
64bit, and even 16bit data.
    View source on GitHub