|TensorFlow 1 version|
Stops gradient computation.
Compat aliases for migration
See Migration guide for more details.
tf.stop_gradient( input, name=None )
Used in the notebooks
|Used in the guide|
When executed in a graph, this op outputs its input tensor as-is.
When building ops to compute gradients, this op prevents the contribution of its inputs to be taken into account. Normally, the gradient generator adds ops to a graph to compute the derivatives of a specified 'loss' by recursively finding out inputs that contributed to its computation. If you insert this op in the graph it inputs are masked from the gradient generator. They are not taken into account for computing gradients.
This is useful any time you want to compute a value with TensorFlow but need to pretend that the value was a constant. For example, the softmax function for a vector x can be written as
def softmax(x): numerator = tf.exp(x) denominator = tf.reduce_sum(numerator) return numerator / denominator
This however is susceptible to overflow if the values in x are large. An alternative more stable way is to subtract the maximum of x from each of the values.
def stable_softmax(x): z = x - tf.reduce_max(x) numerator = tf.exp(z) denominator = tf.reduce_sum(numerator) return numerator / denominator
However, when we backprop through the softmax to x, we dont want to backprop
tf.reduce_max(x) (if the max values are not unique then the
gradient could flow to the wrong input) calculation and treat that as a
constant. Therefore, we should write this out as
def stable_softmax(x): z = x - tf.stop_gradient(tf.reduce_max(x)) numerator = tf.exp(z) denominator = tf.reduce_sum(numerator) return numerator / denominator
Some other examples include:
- The EM algorithm where the M-step should not involve backpropagation through the output of the E-step.
- Contrastive divergence training of Boltzmann machines where, when differentiating the energy function, the training must not backpropagate through the graph that generated the samples from the model.
- Adversarial training, where no backprop should happen through the adversarial example generation process.
||A name for the operation (optional).|