I'm testing different hyperparameters for a cnn model I built, but I'm having a small annoyance when viewing the summaries in Tensorboard. The problem seems to be that the data is just "added" in consecutive runs, so the functions result in a weird superposition unless I see the information as "relative" instead of "by step". See here:

X Type: Step

X Type: Relative

I've tried killing tensorboard's process and erasing the log files, but it seems it is not enough.

So the question is, how do I reset this information?


  • it seems strange that even after deleting the log files and restarting the web app it still shows the old data. Maybe is the browser's caching ? – fabrizioM Dec 25 '15 at 17:41

Note: The solution you've posted (erase TensorBoard's log files and kill the process) will work, but it isn't preferred, because it destroys historical information about your training.

Instead, you can have each new training job write to a new subdirectory (of your top-level log directory). Then, TensorBoard will consider each job a new "run" and will create a nice comparison view so you can see how the training differed between iterations of your model.

For an example, see: https://www.tensorflow.org/tensorboard/

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    Indeed. What you describe is a killing feature of tensorflow that I've used a lot. But sometimes you just need to check repeatedly if everything behaves as you expect. That's why I needed to wipe everything and start from scratch – mathetes May 24 '16 at 11:48
  • 3
    The link is broken :( – mjaskowski Apr 13 '17 at 15:08
  • I'm having the same problem with binary_crossentropy and an autoencoder. My train values are lower than 1 but some of them are negatives. Can this be a problem? I have this: x_train.min()=-0.48 and x_train.max()=0.51 – Rodrigo Laguna May 24 '18 at 14:58

Ok, for some reason it didn't work before but now it did:

You must erase Tensorboard's log files AND kill its process

After killing the process run fuser 6006/tcp -k to free port 6006 (if you're in linux) and fire tensorboard again.

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    It seems that all you have to do is delete the old directory (or rename it) to get it to refresh, though it doesn't notice until the number of seconds you passed to --reload_interval has elapsed. – golvok Feb 26 '17 at 2:53
  • And for mac it would be lsof -i tcp:6006 | grep -v PID | awk '{print $2}' | xargs kill – jwsmithers Jan 31 at 17:33

Yes, I believe ultimately this aspect is positive.
As an example, in my script I automate new run logs via datetime:

from datetime import datetime
now = datetime.now()
logdir = "tf_logs/.../" + now.strftime("%Y%m%d-%H%M%S") + "/"

Then when running TensorBoard you can click the different runs on and off provided you ran TensorBoard in the parent directory.

If you know you don't care about a previous run and want it out of your life, then yes, you need to remove the event files and endure the unusually long process of killing and restarting TensorBoard.


I just figured out the solution to this problem. Just put each Events.out file in a separate folder inside your log directory. And you will get a nice visualization in tensorboard with each run in a different color.


I had a similar problem, but with a duplication of computational graphs: they've just added in tensorboard when I called


In my case, it wasn't about log files but about Jupyter Notebook context.

I figured out that after multiple runs of a Jupyter cell with a Graph definition the graph hasn't been reset but appeared in the context as a duplicate, so I added


before the start of building a computational graph.

Hope it will help.

  • definitely the fast hack for jupyter notebooks. – vwvan Apr 9 '18 at 7:14
  • This solution worked for me to solve the duplicate issue, thank you @Стас Цепа – Feras Jun 22 '18 at 6:28

Add the following snippet to your code and it should automatically reset your tensorboard.

if tf.gfile.Exists(dirpath):

This will delete the previous logs.

  • This does not work fully-- you must also shut down and restart TB each time. – Novak May 22 '17 at 0:03

This automatically deletes the log directory.

import shutil

shutil.rmtree('log_dir', ignore_errors=True)
  • Please consider writing some explanations about what this function does and why you think this is a correct solution. Also consider using code formatting ;-) – Fabien Jul 13 '17 at 22:29

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