Default matplotlib graphs look really unattractive and even unprofessional. I tried out couple of packages include seaborn as well as prettyplotlib but both of these just barely improves the styles.

So far I've gotten to following using seaborn package:

enter image description here

Below is the appearance I'm looking for which is far cry from above:

enter image description here

Notice the following niceness in the 2nd example:

  1. Area under the graph is filled with much more eye pleasing color.
  2. The graph line is thinker and nicely stands out.
  3. Axis lines are thinker and again nicely stands out.
  4. Area under the curve is transparent.
  5. X-Axis tick marks are more denser.

My questions are: Do you recognize above as some kind of popular theme or style that I can quickly use in matplotlib? Or if I can use from some package? Failing that, is there anyway to set this style as my global preference? Failing that, is it even possible to do this in matlibplot?


  • 7
    I would not call the bottom one professionally done. Looks like something that came out of excel. – tacaswell Jul 3 '14 at 12:10

This is really a matter of taste, and also a matter of target audience. matplotlib tries to produce clear illustrations for scientific purposes. This is - necessarily - a compromise, and the illustrations are not something you would print in a magazine or show in an advertisement.

There are some good news and some bad news about matplotlib in this sense.

Bad news:

  • There is no single magical command or package which would create beautiful plots with matplotlib.

Good news:

  • There are simple ways to change the default settings, see: http://matplotlib.org/users/customizing.html
  • The object model enables the user to change almost everything and introduce complex new features.
  • The source code is available, and even it can be changed quite easily by the user.

In my opinion the most difficult thing is to decide what you want. Then doing what you want is easier, even though there is a steepish learning curve in the beginning.

Just as an example:

import numpy as np
import matplotlib.pyplot as plt

# create some fictive access data by hour
xdata = np.arange(25)
ydata = np.random.randint(10, 20, 25)
ydata[24] = ydata[0]

# let us make a simple graph
fig = plt.figure(figsize=[7,5])
ax = plt.subplot(111)
l = ax.fill_between(xdata, ydata)

# set the basic properties
ax.set_xlabel('Time of posting (US EST)')
ax.set_ylabel('Percentage of Frontpaged Submissions')
ax.set_title('Likelihood of Reaching the Frontpage')

# set the limits
ax.set_xlim(0, 24)
ax.set_ylim(6, 24)

# set the grid on

(Just a comment: The X-axis limits in the original image do not take the cyclicity of the data into account.)

This will give us something like this:

enter image description here

It is easy to understand that we need to do a lot of changes in order to be able to show this to a less-engineering-minded audience. At least:

  • make the fill transparent and less offensive in colour
  • make the line thicker
  • change the line colour
  • add more ticks to the X axis
  • change the fonts of the titles

# change the fill into a blueish color with opacity .3

# change the edge color (bluish and transparentish) and thickness
l.set_edgecolors([[0, 0, .5, .3]])

# add more ticks
# remove tick marks

# change the color of the top and right spines to opaque gray

# tweak the axis labels
xlab = ax.xaxis.get_label()
ylab = ax.yaxis.get_label()


# tweak the title
ttl = ax.title

Now we have:

enter image description here

This is not exactly as in the question, but everything can be tuned towards that direction. Many of the things set here can be set as defaults for matplotlib. Maybe this gives an idea of how to change things in the plots.

  • Thanks. Is there any way to make top and right edge of the box greyish like in example? – Shital Shah Jul 3 '14 at 10:28
  • 1
    @ShitalShah: There it is, see the code. The keyword is "spine" (which may be a bit difficult to guess). – DrV Jul 3 '14 at 14:52

To get closer to the style you prefer, you could use the whitegrid style in seaborn. As the other answers have noted, you control the transparency of the fill with the alpha parameter to fill_between.

import numpy as np
import seaborn as sns
import matplotlib.pyplot as plt

blue, = sns.color_palette("muted", 1)

x = np.arange(23)
y = np.random.randint(8, 20, 23)

fig, ax = plt.subplots()
ax.plot(x, y, color=blue, lw=3)
ax.fill_between(x, 0, y, alpha=.3)
ax.set(xlim=(0, len(x) - 1), ylim=(0, None), xticks=x)

enter image description here

More information on seaborn styles can be found in the docs.


matplotlib is almost infinitely flexible so you can do almost anything with it and if it doesn't exist you can write it yourself! Obviously the defaults are bland, this is because everyone has there own idea of what is "nice" so it is pointless to impose a predefined style.

Here is a really simple example that addresses 4 of your points.

import matplotlib.pyplot as plt
import numpy as np
from matplotlib.ticker import MultipleLocator, FormatStrFormatter

x = np.linspace(-10, 10, 1000)
y = 1+np.sinc(x)

ax = plt.subplot(111)
ax.plot(x, y, lw=2)
ax.fill_between(x, 0, y, alpha=0.2)

majorLocator   = MultipleLocator(1)


enter image description here

If your want to set defaults so all your plots look the same then you should generate a custom matplotlibrc file. A useful guide is here. To view a list of all the available options just call print plt.rcParams from an interactive terminal.

Some of the other features such as filling will need to be done on a per plot basis. You can standardise this across your work by creating a function which adds the fill between given some input such as the axis instance and data.


You can customize plots style as follow:

import numpy as np
import matplotlib.pyplot as plt
plt.use_style('ggplot') # customize your plots style
x = np.linspace(0,2*np.pi,100)
y = np.sin(x)

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