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- Sample plots in Matplotlib
- Line Plot
- Multiple subplots in one figure
- Images
- Contouring and pseudocolor
- Histograms
- Paths
- Three-dimensional plotting
- Streamplot
- Ellipses
- Bar charts
- Pie charts
- Tables
- Scatter plots
- GUI widgets
- Filled curves
- Date handling
- Log plots
- Polar plots
- Legends
- TeX-notation for text objects
- Native TeX rendering
- EEG GUI
- XKCD-style sketch plots
- Subplot example
- Download
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Sample plots in Matplotlib
Here you’ll find a host of example plots with the code that generated them.
Line Plot
Here’s how to create a line plot with text labels using
plot()
.

Simple Plot
Multiple subplots in one figure
Multiple axes (i.e. subplots) are created with the
subplot()
function:

Subplot
Images
Matplotlib can display images (assuming equally spaced
horizontal dimensions) using the imshow()
function.

Example of using imshow()
to display a CT scan
Contouring and pseudocolor
The pcolormesh()
function can make a colored
representation of a two-dimensional array, even if the horizontal dimensions
are unevenly spaced. The
contour()
function is another way to represent
the same data:

Example comparing pcolormesh()
and contour()
for plotting two-dimensional data
Histograms
The hist()
function automatically generates
histograms and returns the bin counts or probabilities:

Histogram Features
Paths
You can add arbitrary paths in Matplotlib using the
matplotlib.path
module:

Path Patch
Three-dimensional plotting
The mplot3d toolkit (see Getting started and 3D plotting) has support for simple 3d graphs including surface, wireframe, scatter, and bar charts.

Surface3d
Thanks to John Porter, Jonathon Taylor, Reinier Heeres, and Ben Root for
the mplot3d
toolkit. This toolkit is included with all standard Matplotlib
installs.
Streamplot
The streamplot()
function plots the streamlines of
a vector field. In addition to simply plotting the streamlines, it allows you
to map the colors and/or line widths of streamlines to a separate parameter,
such as the speed or local intensity of the vector field.

Streamplot with various plotting options.
This feature complements the quiver()
function for
plotting vector fields. Thanks to Tom Flannaghan and Tony Yu for adding the
streamplot function.
Ellipses
In support of the Phoenix
mission to Mars (which used Matplotlib to display ground tracking of
spacecraft), Michael Droettboom built on work by Charlie Moad to provide
an extremely accurate 8-spline approximation to elliptical arcs (see
Arc
), which are insensitive to zoom level.

Ellipse Demo
Bar charts
Use the bar()
function to make bar charts, which
includes customizations such as error bars:

Barchart Demo
You can also create stacked bars (bar_stacked.py), or horizontal bar charts (barh.py).
Pie charts
The pie()
function allows you to create pie
charts. Optional features include auto-labeling the percentage of area,
exploding one or more wedges from the center of the pie, and a shadow effect.
Take a close look at the attached code, which generates this figure in just
a few lines of code.

Pie Features
Tables
The table()
function adds a text table
to an axes.

Table Demo
Scatter plots
The scatter()
function makes a scatter plot
with (optional) size and color arguments. This example plots changes
in Google’s stock price, with marker sizes reflecting the
trading volume and colors varying with time. Here, the
alpha attribute is used to make semitransparent circle markers.

Scatter Demo2
GUI widgets
Matplotlib has basic GUI widgets that are independent of the graphical
user interface you are using, allowing you to write cross GUI figures
and widgets. See matplotlib.widgets
and the
widget examples.

Slider and radio-button GUI.
Filled curves
The fill()
function lets you
plot filled curves and polygons:

Fill
Thanks to Andrew Straw for adding this function.
Date handling
You can plot timeseries data with major and minor ticks and custom tick formatters for both.

Date
See matplotlib.ticker
and matplotlib.dates
for details and usage.
Log plots
The semilogx()
,
semilogy()
and
loglog()
functions simplify the creation of
logarithmic plots.

Log Demo
Thanks to Andrew Straw, Darren Dale and Gregory Lielens for contributions log-scaling infrastructure.
Polar plots
The polar()
function generates polar plots.

Polar Demo
Legends
The legend()
function automatically
generates figure legends, with MATLAB-compatible legend-placement
functions.

Legend
Thanks to Charles Twardy for input on the legend function.
TeX-notation for text objects
Below is a sampling of the many TeX expressions now supported by Matplotlib’s
internal mathtext engine. The mathtext module provides TeX style mathematical
expressions using FreeType
and the DejaVu, BaKoMa computer modern, or STIX
fonts. See the matplotlib.mathtext
module for additional details.

Mathtext Examples
Matplotlib’s mathtext infrastructure is an independent implementation and does not require TeX or any external packages installed on your computer. See the tutorial at Writing mathematical expressions.
Native TeX rendering
Although Matplotlib’s internal math rendering engine is quite powerful, sometimes you need TeX. Matplotlib supports external TeX rendering of strings with the usetex option.

Tex Demo
EEG GUI
You can embed Matplotlib into pygtk, wx, Tk, or Qt applications. Here is a screenshot of an EEG viewer called pbrain.
The lower axes uses specgram()
to plot the spectrogram of one of the EEG channels.
For examples of how to embed Matplotlib in different toolkits, see:
XKCD-style sketch plots
Just for fun, Matplotlib supports plotting in the style of xkcd
.

xkcd
Subplot example
Many plot types can be combined in one figure to create powerful and flexible representations of data.

import matplotlib.pyplot as plt
import numpy as np
np.random.seed(19680801)
data = np.random.randn(2, 100)
fig, axs = plt.subplots(2, 2, figsize=(5, 5))
axs[0, 0].hist(data[0])
axs[1, 0].scatter(data[0], data[1])
axs[0, 1].plot(data[0], data[1])
axs[1, 1].hist2d(data[0], data[1])
plt.show()