Table of Contents
Expanding Figure Box to Accommodate Exceeding Legend
Issue Description
Dynamic Figure Box Expansion
Implementation: Custom savefig Call with bbox_extra_artists
Example and Result
Home Backend Development Python Tutorial How to Expand Figure Box Size Dynamically to Accommodate an Expanding Legend in Matplotlib?

How to Expand Figure Box Size Dynamically to Accommodate an Expanding Legend in Matplotlib?

Oct 18, 2024 pm 12:51 PM

How to Expand Figure Box Size Dynamically to Accommodate an Expanding Legend in Matplotlib?

Expanding Figure Box to Accommodate Exceeding Legend

Issue Description

When placing a legend outside of the axis in Matplotlib, it can occasionally extend beyond the boundaries of the figure box, resulting in a cutoff appearance. Resizing the axis axes by shrinking them is not an optimal solution, as it diminishes the data's visibility.

Dynamic Figure Box Expansion

The desired solution is to dynamically expand the size of the figure box to accommodate an expanding legend.

Implementation: Custom savefig Call with bbox_extra_artists

To achieve this, the savefig function call can be adjusted to include the bbox_extra_artists argument:

<code class="python">fig.savefig('samplefigure', bbox_extra_artists=(lgd,), bbox_inches='tight')</code>
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This specifies that the figure box should consider extra artists, such as the legend (lgd), when calculating its size.

Example and Result

Using this modified savefig call:

<code class="python">import matplotlib.pyplot as plt
import numpy as np

fig = plt.figure(1)
ax = fig.add_subplot(111)
ax.set_title("Trigonometry")
ax.plot(x, np.sin(x), label='Sine')
ax.plot(x, np.cos(x), label='Cosine')
ax.plot(x, np.arctan(x), label='Inverse tan')
lgd = ax.legend(loc='upper center', bbox_to_anchor=(0.5,-0.1))
ax.grid('on')
fig.savefig('samplefigure', bbox_extra_artists=(lgd,), bbox_inches='tight')</code>
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Produces a figure with the legend extending beyond the axis but accommodated within the expanded figure box:

  Trigonometry

  2
  1
  0
 -1
 -2
 -4π  -2π     0     2π    4π
Inverse tan
Cosine
Sine
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