Following the suggestion from @user728291, I was able to view gradients in tensorboard by using the the
optimize_loss function as follows.
The function calling syntax for optimize_loss is
The function requires
global_step and is dependent on some other imports as shown next.
from tensorflow.python.ops import variable_scope
from tensorflow.python.framework import dtypes
from tensorflow.python.ops import init_ops
global_step = variable_scope.get_variable( # this needs to be defined for tf.contrib.layers.optimize_loss()
Then replace your typical training operation
training_operation = optimizer.minimize(loss_operation)
training_operation = tf.contrib.layers.optimize_loss(
loss_operation, global_step, learning_rate=rate, optimizer='Adam',
Then have a merge statement for your summaries
summary = tf.summary.merge_all()
Then in your tensorflow session at the end of each run/epoch:
summary_writer = tf.summary.FileWriter(logdir_run_x, sess.graph)
summary_str = sess.run(summary, feed_dict=feed_dict)
summary_writer.flush() # evidently this is needed sometimes or scalars will not show up on tensorboard.
logdir_run_x is a different directory for each run. That way when TensorBoard runs, you can look at each run separately. The gradients will be under the histogram tab and will have the label
OptimizeLoss. It will show all the weights, all the biases, and the
beta parameter as histograms.
UPDATE: Using tf slim, there is another way that also works and is perhaps cleaner.
optimizer = tf.train.AdamOptimizer(learning_rate = rate)
training_operation = slim.learning.create_train_op(loss_operation, optimizer,summarize_gradients=True)
summarize_gradients=True, which is not the default, you will then get gradient summaries for all weights. These will be viewable in Tensorboard under