I am noticing quite significant performance (speed) differences when running tensorflow code from inside a jupyter notebook, versus running it as a script from the command line.

For example, below are the results of running the MNIST CNN tutorial (https://www.tensorflow.org/code/tensorflow/examples/tutorials/mnist/fully_connected_feed.py)


AWS instance with 32 Xeon-CPUS, 62GB memory, 4 K520 GPUS (4GB mem)

Linux: 3.13.0-79 Ubuntu

Tensorflow: 0.10.0rc0 (built from sources with GPU support)

Python: 3.5.2 |Anaconda custom (64-bit)|

CUDA libraries : libcublas.so.7.5 , libcudnn.so.5, libcufft.so.7.5, libcuda.so.1, libcurand.so.7.5

Training steps: 2000

Jupyter notebook execution time:

This does not include time for imports and loading the dataset - just the training phase

CPU times: user 8min 58s, sys: 0 ns, total: 8min 58s Wall time: 8min 20s

Command line execution:

This is the time for execution of the full script.

real 0m18.803s user 0m11.326s sys 0m13.200s

The GPU is being used in both cases, but utilization is higher (typically 35% during training phase for the command-line vs 2-3% for the notebook version). I even tried manually placing it on different GPUs but that doesn't make a big difference to the notebook execution time.

Any ideas / suggestions about why this might be ?

  • My guess is this is more of an issue between jupyter/notebooks and command line performance. I did a quick google search, but didn't find too much there. Is there a need for you to use the notebook or is it just a comfort thing? I've found that a ssh terminal and a basic text editor with a ftp plugin (to copy docs back and forth) worked just as well as a notebook in most use cases I had. Sep 5, 2016 at 15:23
  • Is tensorflow seeing your GPU from jupyter? Can you use log_device_placement when creating your session, as in sess = tf.Session(config=tf.ConfigProto(allow_soft_placement=True, log_device_placement=True)) Sep 6, 2016 at 22:33
  • Yes. It is seeing the gpu. I used log_device_placement and the logs are similar to those from the command line.
    – firdaus
    Sep 8, 2016 at 13:07

1 Answer 1


I am seeing the reverse case. GPU utilisation in notebook is better than command line.

I have been training over pong using DQN, the frame speed using command line falls to 17fps, while using notebooks it falls to 100fps.

I saw nvidia-smi stats, which shows 294MB usage in command line method, 984MB usage in Jupiter notebook method.

Don't know the reason, but similar observation in colab also

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