


Why Can't I See My Matplotlib Plots Inline in My IPython Notebook on macOS?
Nov 09, 2024 am 08:56 AMDisplaying Matplotlib Plots Inline in IPython Notebooks
You are facing an issue where inline matplotlib graphics fail to display within your IPython notebook on macOS X. Let's delve into the problem and find a solution.
Initial Attempts
You have already tried setting "%matplotlib inline" and "%pylab inline," but these have yielded no results. Additionally, using the "--pylab=inline" flag in the command line has not had an impact.
Possible Solution
One possible solution is to place the "%matplotlib inline" command in the very first cell of your notebook. This directive explicitly instructs IPython to display matplotlib plots inline within the notebook rather than opening a separate figure window.
Code Snippet:
%matplotlib inline import matplotlib import numpy as np import matplotlib.pyplot as plt
Setting Default Configuration
To ensure inline plotting is enabled by default for all IPython kernels, you can modify the following configuration option in your config files:
c.IPKernelApp.matplotlib = 'inline'
This setting will configure matplotlib for interactive use with the default backend, which is set to inline mode.
Verification
Once you have made these adjustments, you should be able to visualize matplotlib plots inline within your IPython notebook. To verify the change, run the following code:
x = np.linspace(0, 3*np.pi, 500) plt.plot(x, np.sin(x**2)) plt.title('A simple chirp')
If all goes well, you will now see the plot displayed within the notebook instead of receiving the string representation of the figure object.
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