I have used for a long time small subroutines to format axes of charts I'm plotting. A couple of examples:

def format_y_label_thousands(): # format y-axis tick labels formats
    ax = plt.gca()
    label_format = '{:,.0f}'
    ax.set_yticklabels([label_format.format(x) for x in ax.get_yticks().tolist()])

def format_y_label_percent(): # format y-axis tick labels formats
    ax = plt.gca()
    label_format = '{:.1%}'
    ax.set_yticklabels([label_format.format(x) for x in ax.get_yticks().tolist()])

However, after an update to matplotlib yesterday, I get the following warning when calling any of these two functions:

UserWarning: FixedFormatter should only be used together with FixedLocator
  ax.set_yticklabels([label_format.format(x) for x in ax.get_yticks().tolist()])

What is the reason for such a warning? I couldn't figure it out looking into matplotlib's documentation.

  • Same here. Just let me comment that it is not an error but a warning. I'm sure people will mention it in their answers.
    – fra_pero
    Sep 3 '20 at 14:25
  • Have you read the doc at matplotlib.org/3.3.0/api/ticker_api.html? It says "FixedFormatter should only be used together with FixedLocator. Otherwise, the labels may end up in unexpected positions". This may help?
    – fra_pero
    Sep 3 '20 at 14:28
  • Thank you @fra_pero for the warning vs. error detail. I just corrected it. I did see the material you pointed to on the link above, but I couldn't use the info there to fix my code. Please vote the question up: hopefully, it will attrack more attention to it. Sep 3 '20 at 22:37
  • 5
    It seems to be a bug in the latest version of matplotlib (3.3.1). I found this bug-report in the github-page of pandas, where they discover the solution is to issue the set_xticks method before the set_xticklabels. It should probably work with the y direction as well. Sep 4 '20 at 21:45
  • Issue at Matplotlib: "That's on purpose. You should also explicitly specify the three ticks to go with the label and then this warning should go away. OTOH I agree the warning is pretty mysterious if u are just using set_xticklabels."
    – Hugo
    Nov 1 '20 at 8:43


The way to avoid the warning is to use FixedLocator (that is part of matplotlib.ticker). Below I show a code to plot three charts. I format their axes in different ways. Note that the "set_ticks" silence the warning, but it changes the actual ticks locations/labels (it took me some time to figure out that FixedLocator uses the same info but keeps the ticks locations intact). You can play with the x/y's to see how each solution might affect the output.

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

mpl.rcParams['font.size'] = 6.5

x = np.array(range(1000, 5000, 500))
y = 37*x

fig, [ax1, ax2, ax3] = plt.subplots(1,3)

ax1.plot(x,y, linewidth=5, color='green')
ax2.plot(x,y, linewidth=5, color='red')
ax3.plot(x,y, linewidth=5, color='blue')

label_format = '{:,.0f}'

# nothing done to ax1 as it is a "control chart."

# fixing yticks with "set_yticks"
ticks_loc = ax2.get_yticks().tolist()
ax2.set_yticklabels([label_format.format(x) for x in ticks_loc])

# fixing yticks with matplotlib.ticker "FixedLocator"
ticks_loc = ax3.get_yticks().tolist()
ax3.set_yticklabels([label_format.format(x) for x in ticks_loc])

# fixing xticks with FixedLocator but also using MaxNLocator to avoid cramped x-labels
ticks_loc = ax3.get_xticks().tolist()
ax3.set_xticklabels([label_format.format(x) for x in ticks_loc])



Sample charts

Obviously, having a couple of idle lines of code like the one above (I'm basically getting the yticks or xticks and setting them again) only adds noise to my program. I would prefer that the warning was removed. However, look into some of the "bug reports" (from links on the comments above/below; the issue is not actually a bug: it is an update that is generating some issues), and the contributors that manage matplotlib have their reasons to keep the warning.

OLDER VERSION OF MATPLOTLIB: If you use your Console to control critical outputs of your code (as I do), the warning messages might be problematic. Therefore, a way to delay having to deal with the issue is to downgrade matplotlib to version 3.2.2. I use Anaconda to manage my Python packages, and here is the command used to downgrade matplotlib:

conda install matplotlib=3.2.2

Not all listed versions might be available. For instance, couldn't install matplotlib 3.3.0 although it is listed on matplotlib's releases page: https://github.com/matplotlib/matplotlib/releases

  • Happy to help. Consider accepting your own answer to this question for now, due to it resolving your issue at the moment. If you find a future solution, you can update this post with the new solution. Sep 5 '20 at 15:12
  • Has a bug been reported against matplotlib?
    – Ilya
    Oct 30 '20 at 19:13
  • P.S: Apparently not. Doing it now.
    – Ilya
    Oct 30 '20 at 19:30
  • Hello @Ilya: I'm assuming a recent bug report on Github was you. I had added a comment to a prior bug-report (see comments at the original post above) that was merged into another issue. Hopefully, they will revise it soon (I will add a note here if there is a solution). I nevertheless added an extra comment on your bug-report. I hope the decision is to remove the warning when one only formats existing ticks labels: otherwise I will have to include an 'idle' line of code to avoid the warning (which messes up my console outputs). Nov 1 '20 at 20:15
  • Yeah, that was me.
    – Ilya
    Nov 2 '20 at 16:36

If someone comes here using the function axes.xaxis.set_ticklabels() (or yaxis equivalent), you don't need to use FixedLocator, you can avoid this warning using axes.xaxis.set_ticks(values_list) BEFORE axes.xaxis.set_ticklabels(labels_list).


According to this matplotlib page

# FixedFormatter should only be used together with FixedLocator. 
# Otherwise, one cannot be sure where the labels will end up.

This means one should do

positions = [0, 1, 2, 3, 4, 5]
labels = ['A', 'B', 'C', 'D', 'E', 'F']

But the issue also persisted with the ticker.LogLocator even if the labels were passed to ticker.FixedFormatter. So the solution in this case was

  1. Define a formatter function

    # FuncFormatter can be used as a decorator
    def major_formatter(x, pos):
        return f'{x:.2f}'
  2. and pass the formatter function to the FixedFormatter

    ax.xaxis.set_major_locator(ticker.LogLocator(base=10, numticks=5))

See the above link for details.


Simplest workaround is to suppress warnings (this includes UserWarning):

import warnings

The use-case would be if you don't want your jupyter notebook on github to look trashed with warning messages. Unlike most warnings, this warning keeps repeating if you're in a loop (python 3.7).


just use axis.set_xticks([labels])

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