I'm using Jupyter notebook 4.0.6 on OSX El Capitan.

Once in a while I'll start running a notebook and the cell will simply hang, with a [ * ] next to it and no output.

When this happens, I find that only killing Jupyter at the command line and restarting it solves the problem. Relaunching the kernel doesn't help.

Has anyone else had this problem? If so, any tips?

  • I've seen something similar with Jupyter 4.4.0 on MacOS: every so often when I go to run a cell I see the asterisk to indicate it's running, but nothing happens, even if I have a progress bar, and Python isn't using any CPU. I've found if I leave it for a few minutes it'll suddenly spring back to life.
    – alphaloop
    Commented Oct 9, 2018 at 14:10

5 Answers 5


That usually happens when I edit the program after leaving the output running mid-way and then run it again. This will cause the kernel to get struck. I generally just restart the kernel and then it works fine.

To restart the kernel,press Esc to enter command mode, then press 0 0 (zero) to restart the kernel, now your program will run.

To avoid this in the future, remember to complete the execution of your program before editing the code.


If you have been training a large neural network for a long time and then this has happened, you should just wait till the time you expect the process to finish.

Screenshot of the same happening to me

In this image, you can clearly see that the output is frozen on 3rd epoch but the weights have been saved till 14th epoch and the program is still running.

  • 1
    If you "train a large neural network" in a Jupyter(Lab) notebook you get what you deserve... :-) These notebooks were developed for quick interactive work and their Web interface is still a house of cards. Don't run long, computing-intensive jobs in this environment. Commented May 10, 2023 at 12:21

It might not apply to everyone, but here was my case. I had a conda environment in my terminal and I installed ipykernel to access the environment in the Jupyter notebook. The jupyter is hosted in AWS-EMR but it should be still applicable for local use also.

After a while, I faced the same issue. The solution that worked for me was

  1. conda env remove -n env_name remove the environment
  2. conda create -n env_name python=3.9.5 re-install the environment
  3. conda activate env_name activate
  4. pip3 install ipykernel

I hope this solves the issue.

Then it worked as expected.


I am facing the same problem recently, that jupyter notebook often stucks without any reason, even when executing very simple code (such as x = 1), so there was no possibility that I fell into an infinite loop.

I noticed that every time this situation occurred, there was a solid circle on the top right of the page which meant the kernel was busy and working, but it was abnormal that the jupyter took over twenty seconds to process the code like x = 1. I need to wait for several minutes to see if the kernel would come back, while sometimes it never come back, so I have to shut down and restart the kernel with losing all of my data. It is weird that although the kernel sometimes takes a long time to come back on itself, there would be literally NO output, instead "ln []" would be shown in front of that block. Besides, since I am using the extension ExecuteTime, so that I am able to see how long it takes jupyter to execute a code block, and when this awful situtation happens, it turns out

executed in 0ms, finished 01:38:14 2022-03-31

I guess it may be raised by problems of memory, because it seems to have higher frequency when I am processing large datasets or may be due to the unknown incompatibility with nbextensions, as references for other people who meet the same issues.


We can interrupt the kernel.

The [*] symbol means the cell is being processed by the kernel and the process is not complete. Check for infinite loops or recursive functions there. Working with very large data frames and inefficient pandas commands could also be the culprit

This is a bottleneck when we have large data frames already loaded into memory while running earlier cells in the notebook.

We can simply interrupt the kernel, use I, I command for that. But be patient. Top right circle should turn white instead of black.

Here you can interrupt the kernel

Another nice trick I learnt is to reload the libraries using importlib incase I install a different one or change a custom python script where I wrote some handy functions. like this reload libraries

This way we need not run the entire notebook from start which may/may not take a long time.

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