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.
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.summaryfunctions, 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.contribhas been removed from the core TensorFlow repository and build process.
- A TensorFlow v2 showcase from the official repo, which again uses the
tf.contribsummaries along with the
record_summaries_every_n_global_stepsmentioned previously. I couldn't make this to work either (even without using the contrib library).
My questions are:
- Is there a way to properly use
tf.summaryin TensroFlow 2?
- If not, is there another way to write TensorBoard logs in TensorFlow 2, when using a custom training loop (not