cplot
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:rainbow: Plot complex functions
Plot complex-valued functions with style.
cplot helps plotting complex-valued functions in a visually appealing manner.
Install with
pip install cplot
and use as
import numpy as np
import cplot
def f(z):
return np.sin(z**3) / z
plt = cplot.plot(
f,
(-2.0, +2.0, 400),
(-2.0, +2.0, 400),
# abs_scaling=lambda x: x / (x + 1), # how to scale the lightness in domain coloring
# contours_abs=2.0,
# contours_arg=(-np.pi / 2, 0, np.pi / 2, np.pi),
# emphasize_abs_contour_1: bool = True,
# add_colorbars: bool = True,
# add_axes_labels: bool = True,
# saturation_adjustment: float = 1.28,
# min_contour_length = None,
# linewidth = None,
)
plt.show()
Historically, plotting of complex functions was in one of three ways
Only show the absolute value; sometimes as a 3D plot | Only show the phase/the argument in a color wheel (phase portrait) | Show contour lines for both arg and abs |
Combining all three of them gives you a cplot:
See also Wikipedia: Domain coloring.
Features of this software:
- cplot uses OKLAB, a perceptually uniform color space for the argument colors. This avoids streaks of colors occurring with other color spaces, e.g., HSL.
- The contour
abs(z) == 1
is emphasized, other abs contours are at 2, 4, 8, etc. and 1/2, 1/4, 1/8, etc., respectively. This makes it easy to tell the absolte value precisely. - For
arg(z) == 0
, the color is green, forarg(z) == pi/2
it's blue, forarg(z) = -pi / 2
it's orange, and forarg(z) = pi
it's pink.
Other useful functions:
# There is a tripcolor function as well for triangulated 2D domains
cplot.tripcolor(triang, z)
# The function get_srgb1 returns the SRGB1 triple for every complex input value.
# (Accepts arrays, too.)
z = 2 + 5j
val = cplot.get_srgb1(z)
Riemann sphere
cplot can also plot functions on the Riemann sphere, a mapping of the complex plane to the unit ball.
import cplot
import numpy as np
cplot.riemann_sphere(np.log)
Gallery

Testing
To run the cplot unit tests, check out this repository and run
tox
Similar projects and further reading
- Tristan Needham, Visual Complex Analysis, 1997
- François Labelle, A Gallery of Complex Functions, 2002
- Douglas Arnold and Jonathan Rogness, Möbius transformations revealed, 2008
- Konstantin Poelke and Konrad Polthier, Lifted Domain Coloring, 2009
- Elias Wegert and Gunter Semmler, Phase Plots of Complex Functions: a Journey in Illustration, 2011
- Elias Wegert, Calendars Complex Beauties, 2011-
- Elias Wegert, Visual Complex Functions, 2012
- empet, Visualizing complex-valued functions with Matplotlib and Mayavi, Domain coloring method, 2014
- John D. Cook, Visualizing complex functions, 2017
- endolith, complex-colormap, 2017
- Anthony Hernandez, dcolor, 2017
- Juan Carlos Ponce Campuzano, DC gallery, 2018
- 3Blue1Brown, Winding numbers and domain coloring, 2018
- Ricky Reusser, Domain Coloring with Adaptive Contouring, 2019
- Ricky Reusser, Locally Scaled Domain Coloring, Part 1: Contour Plots, 2020
- David Lowry-Duda, Visualizing modular forms, 2020
License
This software is published under the GPL-3.0 license. In cases where the constraints of the GPL prevent you from using this software, feel free contact the author.