182

I want to make some modifications to a few selected tick labels in a plot.

For example, if I do:

label = axes.yaxis.get_major_ticks()[2].label
label.set_fontsize(size)
label.set_rotation('vertical')

the font size and the orientation of the tick label is changed.

However, if try:

label.set_text('Foo')

the tick label is not modified. Also if I do:

print label.get_text()

nothing is printed.

Here's some more strangeness. When I tried this:

 from pylab import *
 axes = figure().add_subplot(111)
 t = arange(0.0, 2.0, 0.01)
 s = sin(2*pi*t)
 axes.plot(t, s)
 for ticklabel in axes.get_xticklabels():
     print ticklabel.get_text()

Only empty strings are printed, but the plot contains ticks labeled as '0.0', '0.5', '1.0', '1.5', and '2.0'.

  • Can you supply the plot you used for getting the label from? – Claudio Jun 28 '12 at 13:11
  • You're getting blank labels because you haven't drawn the canvas yet. If you call draw() before trying to print the labels, you'll get what you expect. Setting individual tick labels is unfortunately a touch more difficult (what's happening is that the tick locator and formatter hasn't been reset and it overrides things when you set_text). I'll add an example in a bit, if someone doesn't beat me to it. I have to catch the bus, at the moment, though. – Joe Kington Jun 28 '12 at 13:53
  • @JoeKington: Great! Looking forward to see your fix. – repoman Jun 28 '12 at 15:04
  • @repoman - Well, it seems I spoke a touch too soon. What I had in mind works for older versions of matplotlib, but not the latest version. I need to do a bit more digging. That having been said, this shouldn't be as complicated as it is... – Joe Kington Jun 28 '12 at 15:19
261

Caveat: Unless the ticklabels are already set to a string (as is usually the case in e.g. a boxplot), this will not work with any version of matplotlib newer than 1.1.0. If you're working from the current github master, this won't work. I'm not sure what the problem is yet... It may be an unintended change, or it may not be...

Normally, you'd do something along these lines:

import matplotlib.pyplot as plt

fig, ax = plt.subplots()

# We need to draw the canvas, otherwise the labels won't be positioned and 
# won't have values yet.
fig.canvas.draw()

labels = [item.get_text() for item in ax.get_xticklabels()]
labels[1] = 'Testing'

ax.set_xticklabels(labels)

plt.show()

enter image description here

To understand the reason why you need to jump through so many hoops, you need to understand a bit more about how matplotlib is structured.

Matplotlib deliberately avoids doing "static" positioning of ticks, etc, unless it's explicitly told to. The assumption is that you'll want to interact with the plot, and so the bounds of the plot, ticks, ticklabels, etc will be dynamically changing.

Therefore, you can't just set the text of a given tick label. By default, it's re-set by the axis's Locator and Formatter every time the plot is drawn.

However, if the Locators and Formatters are set to be static (FixedLocator and FixedFormatter, respectively), then the tick labels stay the same.

This is what set_*ticklabels or ax.*axis.set_ticklabels does.

Hopefully that makes it slighly more clear as to why changing an individual tick label is a bit convoluted.

Often, what you actually want to do is just annotate a certain position. In that case, look into annotate, instead.

  • 7
    this does not appear to work with the current version (1.20)! – Andrew Jaffe Mar 13 '13 at 16:38
  • 1
    If the ticklabels are already set to a string as in e.g. a boxplot, this is still working. This might be obvious, but since the first line of the answer is that it is not working on newer matplotlib versions, users might skip it completely (I did initially). Maybe mention this briefly. – joelostblom Dec 7 '14 at 22:15
  • 2
    i think you can condense it down to plt.gca().set_xticklabels(labels) – alexey Aug 5 '17 at 3:31
  • what if I wanna the fontweight of "testing" to be bold while others use fontweight of "light". Is there a way to do it? – steven Jul 15 at 5:29
86

In newer versions of matplotlib, if you do not set the tick labels with a bunch of str values, they are '' by default (and when the plot is draw the labels are simply the ticks values). Knowing that, to get your desired output would require something like this:

>>> from pylab import *
>>> axes = figure().add_subplot(111)
>>> a=axes.get_xticks().tolist()
>>> a[1]='change'
>>> axes.set_xticklabels(a)
[<matplotlib.text.Text object at 0x539aa50>, <matplotlib.text.Text object at 0x53a0c90>, 
<matplotlib.text.Text object at 0x53a73d0>, <matplotlib.text.Text object at 0x53a7a50>, 
<matplotlib.text.Text object at 0x53aa110>, <matplotlib.text.Text object at 0x53aa790>]
>>> plt.show()

and the result: enter image description here

and now if you check the _xticklabels, they are no longer a bunch of ''.

>>> [item.get_text() for item in axes.get_xticklabels()]
['0.0', 'change', '1.0', '1.5', '2.0']

It works in the versions from 1.1.1rc1 to the current version 2.0.

  • Thanks, this is the answer I was looking for. Cleanest solution IMO; just supply set_xticklabels with a mixed list of strings and tick objects. – Luke Davis Apr 27 '17 at 8:35
  • Be aware that if the tick labels are set as ints, this will change them to floats. Easily worked around but worth noting. – ApproachingDarknessFish Jan 31 '18 at 22:14
  • This one worked (ax.get_xticks().tolist()). The most voted solution did not (ax.get_xtickslabels()). Somehow it was not able to extract the labels before the plt.show() was excuted, although I used fig.canvas.draw() as suggested. – CypherX 2 days ago
76

One can also do this with pylab and xticks

import pylab as plt
x = [0,1,2]
y = [90,40,65]
labels = ['high', 'low', 37337]
plt.plot(x,y, 'r')
plt.xticks(x, labels, rotation='vertical')
plt.show()

http://matplotlib.org/examples/ticks_and_spines/ticklabels_demo_rotation.html

  • This is a simple solution and works with pyplot 1.5.1. This should be upvoted. – wordsmith Oct 22 '16 at 19:09
  • Although the question didn't ask for this, I appreciate that this example lets you set the location of the ticks at the same time as modifying their labels. – eclark May 23 '17 at 1:11
11

The axes class has a set_yticklabels function which allows you to set the tick labels, like so:

#ax is the axes instance
group_labels = ['control', 'cold treatment',
             'hot treatment', 'another treatment',
             'the last one']

ax.set_xticklabels(group_labels)

I'm still working on why your example above didn't work.

  • 3
    But I only want to alter a single label. The above trick requires that you extract all tick labels and set the desired one to a new value. But how can I extract the tick labels when label.get_text() returns nothing? – repoman Jun 28 '12 at 13:21
10

It's been a while since this question was asked. As of today (matplotlib 2.2.2) and after some reading and trials, I think the best/proper way is the following:

Matplotlib has a module named ticker that "contains classes to support completely configurable tick locating and formatting". To modify a specific tick from the plot, the following works for me:

import matplotlib.pyplot as plt
import matplotlib.ticker as mticker
import numpy as np 

def update_ticks(x, pos):
    if x == 0:
        return 'Mean'
    elif pos == 6:
        return 'pos is 6'
    else:
        return x

data = np.random.normal(0, 1, 1000)
fig, ax = plt.subplots()
ax.hist(data, bins=25, edgecolor='black')
ax.xaxis.set_major_formatter(mticker.FuncFormatter(update_ticks))
plt.show()

Histogram with random values from a normal distribution

Caveat! x is the value of the tick and pos is its relative position in order in the axis. Notice that pos takes values starting in 1, not in 0 as usual when indexing.


In my case, I was trying to format the y-axis of a histogram with percentage values. mticker has another class named PercentFormatter that can do this easily without the need to define a separate function as before:

import matplotlib.pyplot as plt
import matplotlib.ticker as mticker
import numpy as np 

data = np.random.normal(0, 1, 1000)
fig, ax = plt.subplots()
weights = np.ones_like(data) / len(data)
ax.hist(data, bins=25, weights=weights, edgecolor='black')
ax.yaxis.set_major_formatter(mticker.PercentFormatter(xmax=1.0, decimals=1))
plt.show()

Histogram with random values from a normal distribution

In this case xmax is the data value that corresponds to 100%. Percentages are computed as x / xmax * 100, that's why we fix xmax=1.0. Also, decimals is the number of decimal places to place after the point.

6

This works:

import matplotlib.pyplot as plt

fig, ax1 = plt.subplots(1,1)

x1 = [0,1,2,3]
squad = ['Fultz','Embiid','Dario','Simmons']

ax1.set_xticks(x1)
ax1.set_xticklabels(squad, minor=False, rotation=45)

FEDS

4

This also works in matplotlib 3:

x1 = [0,1,2,3]
squad = ['Fultz','Embiid','Dario','Simmons']

plt.xticks(x1, squad, rotation=45)
0

If you do not work with fig and ax and you want to modify all labels (e.g. for normalization) you can do this:

labels, locations = plt.yticks()
plt.yticks(labels, labels/max(labels))

-4

you can do:

for k in ax.get_xmajorticklabels():
    if some-condition:
        k.set_color(any_colour_you_like)

draw()

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