I know that this question has been asked before, but I tried all the possible solutions and none of them worked for me.

So, I have a log-log plot in matplotlib, and I would like to avoid scientific notation on the x-axis.

This is my code:

from numpy import array, log, pi
import matplotlib.pyplot as plt
from scipy.optimize import curve_fit
import matplotlib.ticker as mticker

plt.rc('axes.formatter', useoffset=False)

tc = array([7499680.0, 12508380.0, 23858280.0, 34877020.0, 53970660.0, 89248580.0, 161032860.0, 326814160.0, 784460200.0])

theta = array([70, 60, 50, 45, 40, 35, 30, 25, 20])






And this is the output: Output

As you can see, the numbers on the x-axis are still in scientific notation. I would like to display them as 20, 30, 40... I tried every possible solution with no result.

Thank you very much to everyone that will help.

NB. I can't use the plt.loglog() command, because I am doing some curve fitting on the data and I need it like that.

NB2. I noticed a very weird thing happening: if I change the code to yaxis.get_mayor_formatter()..., it works on the y-axis! It is just on the x one that it's not working. How is it possible?

Edit: maybe it is not clear, but if you look at the code, there are 3 methods that should affect the display of the x-ticks: plt.rc('axes.formatter', useoffset=False), ax.xaxis.set_major_formatter(mticker.ScalarFormatter()) and ax.xaxis.get_major_formatter().set_scientific(False). They are 3 methods that should all do the trick alone, according to what I found around, but they don't. Of course I also tried them one by one and not all together.

4 Answers 4


Those are minor ticks on the x-axis (i.e. they are not on integer powers of 10), not major ticks. matplotlib automatically detemines if it should label the major or minor ticks - in this case because you don't have any major ticks displayed in the x range, the minor ticks are being labelled). So, you need to use the set_minor_formatter method:


enter image description here

The reason it works on the y-axis is because those ticks are major ticks (i.e. on integer powers of 10), not minor ticks.

  • (This can replace the other 3 ax.xaxis statements in the question.)
    – Max Ghenis
    Apr 11, 2019 at 18:08
  • I'm still having issues with data points that cross an order of magnitude: stackoverflow.com/questions/55638913/…
    – Max Ghenis
    Apr 11, 2019 at 18:26
  • 1
    You probably mean set_major_formatter. And you can also use mticker.FormatStrFormatter('%d') to get 1 instead of 1.0.
    – Suuuehgi
    Feb 25, 2022 at 12:05
  • @tmdavison It's regarding your answer.
    – Suuuehgi
    Feb 26, 2022 at 18:21
  • @Suuuehgi ok, then I don't understand what you are saying. This is definitely not a case where you need a major formatter. If you look at the x-axis, you can see the ticks are all minor ticks, as they are between the integer powers of 10 on the log scale. Also, while the FormatStrFormatter you suggest would work here. the ScalarFormatter I have used is clearly sufficient, as seen in my attached image
    – tmdavison
    Feb 28, 2022 at 11:01

The following can be used as a workaround (original answer):

from matplotlib.ticker import StrMethodFormatter, NullFormatter

If you want to set just the xaxis to no longer use scientific notation you need to change the fromatter and then you can set it to plain.

ax.ticklabel_format(style='plain', axis='x')

If you want to disable both the offset and scientific notaion, you'd use ax.ticklabel_format(useOffset=False, style='plain')

  • 4
    Doesn't work. I get an error: "AttributeError: This method only works with the ScalarFormatter".
    – Tropilio
    Apr 10, 2018 at 9:41
  • That's weird as you are using it
    – Aditya
    Apr 10, 2018 at 9:44
  • 11
    Yes I know. That's why I'm asking the question.
    – Tropilio
    Apr 10, 2018 at 9:47

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