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Is it possible to query the current state of the matplotlib color cycle? In other words is there a function get_cycle_state that will behave in the following way?

>>> plot(x1, y1)
>>> plot(x2, y2)
>>> state = get_cycle_state()
>>> print state

Where I expect the state to be the index of the next color that will be used in a plot. Alternatively, if it returned the next color ("r" for the default cycle in the example above), that would be fine too.

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2 Answers 2

There's no "user-facing" (a.k.a. "public") method to access it. However, you can access the color_cycle iterable for a given axes object (ax) through the _get_lines helper class instance. ax._get_lines is a touch confusingly named, but it's the behind-the-scenes machinery that allows the plot command to process all of the odd and varied ways that plot can be called. Among other things, it's what keeps track of what colors to automatically assign.

At any rate, the color cycle iterable is ax._get_lines.color_cycle.

All in all, you'd do something like:

import matplotlib.pyplot as plt

fig, ax = plt.subplots()
color_cycle = ax._get_lines.color_cycle

However, color_cycle is an iterable. We can easily get the next item (e.g. next_color = next(color_cycle), but that means that the next color after that is what will be plotted. By design, there's no way to get the current state of an iterable without changing it.

What are you trying to do? You may be taking a convoluted approach to it. There's probably a better way.


For the case you describe, I'd do something like this:

import matplotlib.pyplot as plt
import numpy as np

def custom_plot(x, y, **kwargs):
    ax = kwargs.pop('ax', plt.gca())
    base_line, = ax.plot(x, y, **kwargs)
    ax.fill_between(x, 0.9*y, 1.1*y, facecolor=base_line.get_color(), alpha=0.5)

x = np.linspace(0, 1, 10)
custom_plot(x, x)
custom_plot(x, 2*x)
custom_plot(x, -x, color='yellow', lw=3)


enter image description here

It's not the only way, but its cleaner than trying to get the color of the plotted line before-hand, in this case.

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I'm writing some higher-level functions to automate common plotting tasks for my domain of work. Often these entail drawing multiple matplotlib objects, and I'd like to have the several objects share a color in the color cycle, so I don't always have to provide a color argument if I am feeling lazy. –  mwaskom Dec 12 '12 at 2:38
For example, I have a function that takes 2D data with the dimensions corresponding to (observations, time) and draws a timecourse line (representing the mean over observations) and shaded error bands (representing the variance over observations). I'd like those to be the same color. –  mwaskom Dec 12 '12 at 2:47
If you're just wanting to match the color of a particular object, you can always grab its color. e.g. line, = ax.plot(x, y) and then use line.get_color() to get the color of the previously-plotted line. –  Joe Kington Dec 12 '12 at 2:51
Sure, the problem is that sometimes I do want to be able to specify a color for these things, so my function takes a color=None argument, but passing None to the color argument for maplotlob raises an exception. So I need to be able to know what color I'm going to use before I plot the first thing. –  mwaskom Dec 12 '12 at 2:53
If you don't mind using **kwargs, it makes things much cleaner, in this case. Also, if you decide later that you want to specify another property (e.g. linewidth) that you didn't originally explicitly code in, it allows everything to be passed on to plot. I like to add the ability to explicitly specify an axes object to plot on when I write similar functions, so I usually do something along the lines of ax = kwargs.pop('ax', plt.gca()). –  Joe Kington Dec 12 '12 at 3:08

Sure, this will do it.


import matplotlib.pyplot as plt
import numpy as np

x = np.linspace(0,2*np.pi)
ax= plt.subplot(1,1,1)

rainbow = ax._get_lines.color_cycle
print rainbow
for i, color in enumerate(rainbow):
    if i<10:
        print color,


<itertools.cycle object at 0x034CB288>
r c m y k b g r c m

Here is the itertools function that matplotlib uses itertools.cycle

Edit: Thanks for the comment, it seems that it is not possible to copy an iterator. An idea would be to dump a full cycle and keep track of which value you are using, let me get back on that.

Edit2: Allright, this will give you the next color and make a new iterator that behaves as if next was not called. This does not preserve the order of coloring, just the next color value, I leave that to you.

This gives the following output, notice that steepness in the plot corresponds to index, eg first g is the bottomest graph and so on.


import matplotlib.pyplot as plt
import numpy as np
import collections
import itertools

x = np.linspace(0,2*np.pi)
ax= plt.subplot(1,1,1)

def create_rainbow():
    rainbow = [ax._get_lines.color_cycle.next()]
    while True:
        nextval = ax._get_lines.color_cycle.next()
        if nextval not in rainbow:
            return rainbow

def next_color(axis_handle=ax):
    rainbow = create_rainbow()
    double_rainbow = collections.deque(rainbow)
    nextval = ax._get_lines.color_cycle.next()
    return nextval, itertools.cycle(double_rainbow)

for i in range(1,10):
    nextval, ax._get_lines.color_cycle = next_color(ax)
    print "Next color is: ", nextval



Next color is:  g
Next color is:  c
Next color is:  y
Next color is:  b
Next color is:  r
Next color is:  m
Next color is:  k
Next color is:  g
Next color is:  c

Rotate color

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Thanks! Just to clarify, it doesn't look like that returns a copy, but rather a reference to the actual cycle. So, calling rainbow.next() is actually going to change what the next plot will look like, too. –  mwaskom Dec 12 '12 at 2:28

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