# matplotlib get ylim values

I'm using `matplotlib` to plot data (using `plot` and `errorbar` functions) from Python. I have to plot a set of totally separate and independent plots, and then adjust their `ylim` values so they can be easily visually compared.

How can I retrieve the `ylim` values from each plot, so that I can take the min and max of the lower and upper ylim values, respectively, and adjust the plots so they can be visually compared?

Of course, I could just analyze the data and come up with my own custom `ylim` values... but I'd like to use `matplotlib` to do that for me. Any suggestions on how to easily (and efficiently) do this?

Here's my Python function that plots using `matplotlib`:

``````import matplotlib.pyplot as plt

def myplotfunction(title, values, errors, plot_file_name):

# plot errorbars
indices = range(0, len(values))
fig = plt.figure()
plt.errorbar(tuple(indices), tuple(values), tuple(errors), marker='.')

# axes
axes = plt.gca()
axes.set_xlim([-0.5, len(values) - 0.5])
axes.set_xlabel('My x-axis title')
axes.set_ylabel('My y-axis title')

# title
plt.title(title)

# save as file
plt.savefig(plot_file_name)

# close figure
plt.close(fig)
``````

Just use `axes.get_ylim()`, it is very similar to `set_ylim`. From the docs:

get_ylim()

Get the y-axis range [bottom, top]

• is there a way to get the graph area limit, rather than the axis limit? The black bounding rectangle is slightly beyond these values. – Peter Ehrlich Feb 9 '18 at 2:59
• @PeterEhrlich That's just the margins. – ilija139 Feb 1 '19 at 0:54
• I find `plt.gca().get_ylim()` to be handy - no need for extra axes definition. – Matthias Arras Apr 11 '19 at 15:33
• Alternatively, I prefer to use `fig, ax = plt.subplots()` and then route all my functions through either `fig` or `ax` – BallpointBen Mar 31 '20 at 0:07
`````` ymin, ymax = axes.get_ylim()
``````

If you are using the `plt` api directly, you can avoid calls to `axes` altogether:

``````def myplotfunction(title, values, errors, plot_file_name):

# plot errorbars
indices = range(0, len(values))
fig = plt.figure()
plt.errorbar(tuple(indices), tuple(values), tuple(errors), marker='.')

plt.ylim([-0.5, len(values) - 0.5])
plt.xlabel('My x-axis title')
plt.ylabel('My y-axis title')

# title
plt.title(title)

# save as file
plt.savefig(plot_file_name)

# close figure
plt.close(fig)
``````
• Are there advantages to using the plt api directly vs using axes? I see numerous people suggest that using axes is better, but I haven't been able to nail down why. – BigHeadEd Jun 14 at 0:14
• Axes is more programatic - so for example you can build a library of functions that take and operate on axes objects. But the `plt` object is more for just doing something quick. So if you're tinkering, `plt` is faster. If you're building a bigger app, axes probably best. This has been my experience anyway. It's overall a weird API to be honest. – Adam Hughes Jun 14 at 14:18

Leveraging from the good answers above and assuming you were only using plt as in

``````import matplotlib.pyplot as plt
``````

then you can get all four plot limits using `plt.axis()` as in the following example.

``````import matplotlib.pyplot as plt

x = [1, 2, 3, 4, 5, 6, 7, 8]  # fake data
y = [1, 2, 3, 4, 3, 2, 5, 6]

plt.plot(x, y, 'k')

xmin, xmax, ymin, ymax = plt.axis()

s = 'xmin = ' + str(round(xmin, 2)) + ', ' + \
'xmax = ' + str(xmax) + '\n' + \
'ymin = ' + str(ymin) + ', ' + \
'ymax = ' + str(ymax) + ' '

plt.annotate(s, (1, 5))

plt.show()
``````

The above code should produce the following output plot.

I put above-mentioned methods together using `ax` instead of `plt`

``````import numpy as np
import matplotlib.pyplot as plt

x = range(100)
y = x

fig, ax = plt.subplots(1, 1, figsize=(7.2, 7.2))
ax.plot(x, y);

# method 1
print(ax.get_xlim())
print(ax.get_xlim())
# method 2
print(ax.axis())
``````

It's an old question, but I don't see mentioned that, depending on the details, the `sharey` option may be able to do all of this for you, instead of digging up axis limits, margins, etc. There's a demo in the docs that shows how to use `sharex`, but the same can be done with y-axes.