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I'm quite familiar in TensorFlow 1.x and I'm considering to switch to TensorFlow 2 for an upcoming project. I'm having some trouble understanding how to write scalars to TensorBoard logs with eager execution, using a custom training loop.

Problem description

In tf1 you would create some summary ops (one op for each thing you would want to store), which you would then merge into a single op, run that merged op inside a session and then write this to a file using a FileWriter object. Assuming sess is our tf.Session(), an example of how this worked can be seen below:

# While defining our computation graph, define summary ops:
# ... some ops ...
tf.summary.scalar('scalar_1', scalar_1)
# ... some more ops ...
tf.summary.scalar('scalar_2', scalar_2)
# ... etc.

# Merge all these summaries into a single op:
merged = tf.summary.merge_all()

# Define a FileWriter (i.e. an object that writes summaries to files):
writer = tf.summary.FileWriter(log_dir, sess.graph)

# Inside the training loop run the op and write the results to a file:
for i in range(num_iters):
    summary, ... = sess.run([merged, ...], ...)
    writer.add_summary(summary, i)

The problem is that sessions don't exist anymore in tf2 and I would prefer not disabling eager execution to make this work. The official documentation is written for tf1 and all references I can find suggest using the Tensorboard keras callback. However, as far as I know, this only works if you train the model through model.fit(...) and not through a custom training loop.

What I've tried

  • The tf1 version of tf.summary functions, outside of a session. Obviously any combination of these functions fails, as FileWriters, merge_ops, etc. don't even exist in tf2.
  • This medium post states that there has been a "cleanup" in some tensorflow APIs including tf.summary(). They suggest using from tensorflow.python.ops.summary_ops_v2, which doesn't seem to work. This implies using a record_summaries_every_n_global_steps; more on this later.
  • A series of other posts 1, 2, 3, suggest using the tf.contrib.summary and tf.contrib.FileWriter. However, tf.contrib has been removed from the core TensorFlow repository and build process.
  • A TensorFlow v2 showcase from the official repo, which again uses the tf.contrib summaries along with the record_summaries_every_n_global_steps mentioned previously. I couldn't make this to work either (even without using the contrib library).

tl;dr

My questions are:

  • Is there a way to properly use tf.summary in TensroFlow 2?
  • If not, is there another way to write TensorBoard logs in TensorFlow 2, when using a custom training loop (not model.fit())?
1
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Yes, there is a simpler and more elegant way to use summaries in TensorFlow v2.

First, create a file writer that stores the logs (e.g. in a directory named log_dir):

writer = tf.summary.create_file_writer(log_dir)

Anywhere you want to write something to the log file (e.g. a scalar) use your good old tf.summary.scalar inside a context created by the writer. Suppose you want to store the value of scalar_1 for step i:

with writer.as_default():
    tf.summary.scalar('scalar_1', scalar_1, step=i)

You can open as many of these contexts as you like inside or outside of your training loop.

Example:

# create the file writer object
writer = tf.summary.create_file_writer(log_dir)

for i, (x, y) in enumerate(train_set):

    with tf.GradientTape() as tape:
        y_ = model(x)
        loss = loss_func(y, y_)

    grads = tape.gradient(loss, model.trainable_variables)
    optimizer.apply_gradients(zip(grads, model.trainable_variables))

    # write the loss value
    with writer.as_default():
        tf.summary.scalar('training loss', loss, step=i+1)
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  • 2
    Thanks, that works! I can't believe they don't have any documentation for this! – Javier Jul 10 '19 at 7:35
  • 2
    @mathtick one possible solution is to make two different subfolders (eg. 'training' and 'validation'). If you pass the parent folder to tensorboard you'll get a run for each subfolder on the same plot. – EdoardoG Nov 25 '19 at 14:44
  • Why this doesn't work hen using graph execution with @tf.function? – AleB Mar 25 '20 at 17:36
  • The commands shown in the example should work fine in graph mode. Maybe something else in your graph is causing the issue. You could look at an example of this here. – Djib2011 Mar 25 '20 at 19:39

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