EDIT: You probably want to give the official %tensorboard magic a go, available from TensorFlow 1.13 onward.
Prior to the existence of the %tensorboard magic, the standard way to
achieve this was to proxy network traffic to the Colab VM using
ngrok. A Colab example can be found here.
These are the steps (the code snippets represent cells of type “code” in colab):
-
Get TensorBoard running in the background.
Inspired by this answer.LOG_DIR = '/tmp/log' get_ipython().system_raw( 'tensorboard --logdir {} --host 0.0.0.0 --port 6006 &' .format(LOG_DIR) ) -
Download and unzip ngrok.
Replace the link passed towgetwith the correct download link for your OS.! wget https://bin.equinox.io/c/4VmDzA7iaHb/ngrok-stable-linux-amd64.zip ! unzip ngrok-stable-linux-amd64.zip -
Launch ngrok background process…
get_ipython().system_raw('./ngrok http 6006 &')…and retrieve public url.
Source! curl -s http://localhost:4040/api/tunnels | python3 -c \ "import sys, json; print(json.load(sys.stdin)['tunnels'][0]['public_url'])"