获取 matplotlib 颜色循环状态

是否可以查询 matplotlib 颜色循环的当前状态?换句话说,是否有一个函数 get_cycle_state将以下列方式运行?

>>> plot(x1, y1)
>>> plot(x2, y2)
>>> state = get_cycle_state()
>>> print state
2

我希望状态是下一个颜色的索引,将用于绘图。或者,如果它返回下一个颜色(上面示例中的默认循环为“ r”) ,也可以。

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Sure, this will do it.

#rainbow


import matplotlib.pyplot as plt
import numpy as np


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


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

Gives:

<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.

#rainbow


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:
rainbow.append(nextval)
else:
return rainbow


def next_color(axis_handle=ax):
rainbow = create_rainbow()
double_rainbow = collections.deque(rainbow)
nextval = ax._get_lines.color_cycle.next()
double_rainbow.rotate(-1)
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
ax.plot(i*(x))




plt.savefig("SO_rotate_color.png")
plt.show()

Console

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

Accessing the color cycle iterator

There's no "user-facing" (a.k.a. "public") method to access the underlying iterator, but you can access it through "private" (by convention) methods. However, you'd can't get the state of an iterator without changing it.

Setting the color cycle

Quick aside: You can set the color/property cycle in a variety of ways (e.g. ax.set_color_cycle in versions <1.5 or ax.set_prop_cycler in >=1.5). Have a look at the example here for version 1.5 or greater, or the previous style here.

Accessing the underlying iterator

However, while there's no public-facing method to access the iterable, you can access it 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. Similarly, there's ax._get_patches_for_fill to control cycling through default fill colors and patch properties.

At any rate, the color cycle iterable is ax._get_lines.color_cycle for lines and ax._get_patches_for_fill.color_cycle for patches. On matplotlib >=1.5, this has changed to use the cycler library, and the iterable is called prop_cycler instead of color_cycle and yields a dict of properties instead of only a color.

All in all, you'd do something like:

import matplotlib.pyplot as plt


fig, ax = plt.subplots()
color_cycle = ax._get_lines.color_cycle
# or ax._get_lines.prop_cycler on version >= 1.5
# Note that prop_cycler cycles over dicts, so you'll want next(cycle)['color']

You can't view the state of an iterator

However, this object is a "bare" iterator. 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 iterator without changing it.

In v1.5 or greater, it would be nice to get the cycler object that's used, as we could infer its current state. However, the cycler object itself isn't accessible (publicly or privately) anywhere. Instead, only the itertools.cycle instance created from the cycler object is accessible. Either way, there's no way to get to the underlying state of the color/property cycler.

Match the color of the previously plotted item instead

In your case, it sounds like you're wanting to match the color of something that was just plotted. Instead of trying to determine what the color/property will be, set the color/etc of your new item based on the properties of what's plotted.

For example, in the case you described, 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)


plt.show()

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.

Note: In the latest versions of matplotlib (>= 1.5) _get_lines has changed. You now need to use next(ax._get_lines.prop_cycler)['color'] in Python 2 or 3 (or ax._get_lines.prop_cycler.next()['color'] in Python 2) to get the next color from the color cycle.

Wherever possible use the more direct approach shown in the lower part of @joe-kington's answer. As _get_lines is not API-facing it might change again in a not backward compatible manner in the future.

I just want to add onto what @Andi said above. Since color_cycle is deprecated in matplotlib 1.5, you have to use prop_cycler, however, Andi's solution (ax._get_lines.prop_cycler.next()['color']) returned this error for me:

AttributeError: 'itertools.cycle' object has no attribute 'next'

The code that worked for me was: next(ax._get_lines.prop_cycler), which actually isn't far off from @joe-kington's original response.

Personally, I ran into this problem when making a twinx() axis, which reset the color cycler. I needed a way to make the colors cycle correctly because I was using style.use('ggplot'). There might be an easier/better way to do this, so feel free to correct me.

Here's a way that works in 1.5 which will hopefully be future-proof as it doesn't rely on methods prepended with underscores:

colors = plt.rcParams["axes.prop_cycle"].by_key()["color"]

This will give you a list of the colors defined in order for the present style.

Since matplotlib uses itertools.cycle we can actually look through the entire color cycle and then restore the iterator to its previous state:

def list_from_cycle(cycle):
first = next(cycle)
result = [first]
for current in cycle:
if current == first:
break
result.append(current)


# Reset iterator state:
for current in cycle:
if current == result[-1]:
break
return result

This should return the list without changing the state of the iterator.

Use it with matplotlib >= 1.5:

>>> list_from_cycle(ax._get_lines.prop_cycler)
[{'color': 'r'}, {'color': 'g'}, {'color': 'b'}]

or with matplotlib < 1.5:

>>> list_from_cycle(ax._get_lines.color_cycle)
['r', 'g', 'b']

In matplotlib version 2.2.3 there is a get_next_color() method on the _get_lines property:

import from matplotlib import pyplot as plt
fig, ax = plt.subplots()
next_color = ax._get_lines.get_next_color()

get_next_color() returns an html color string, and advances the color cycle iterator.

How to access the color (and complete style) cycle?

The current state is stored in ax._get_lines.prop_cycler. There are no built-in methods to expose the "base list" for a generic itertools.cycle, and in particular for ax._get_lines.prop_cycler (see below).

I have posted here a few functions to get info on a itertools.cycle. One could then use

style_cycle = ax._get_lines.prop_cycler
curr_style = get_cycle_state(style_cycle)  # <-- my (non-builtin) function
curr_color = curr_style['color']

to get the current color without changing the state of the cycle.


TL;DR

Where is the color (and complete style) cycle stored?

The style cycle is stored in two different places, one for the default, and one for the current axes (assuming import matplotlib.pyplot as plt and ax is an axis handler):

default_prop_cycler = plt.rcParams['axes.prop_cycle']
current_prop_cycle = ax._get_lines.prop_cycler

Note these have different classes. The default is a "base cycle setting" and it does not know about any current state for any axes, while the current knows about the cycle to follow and its current state:

print('type(default_prop_cycler) =', type(default_prop_cycler))
print('type(current_prop_cycle) =', type(current_prop_cycle))


[]: type(default_prop_cycler) = <class 'cycler.Cycler'>
[]: type(current_prop_cycle) = <class 'itertools.cycle'>

The default cycle may have several keys (properties) to cycle, and one can get only the colors:

print('default_prop_cycler.keys =', default_prop_cycler.keys)
default_prop_cycler2 = plt.rcParams['axes.prop_cycle'].by_key()
print(default_prop_cycler2)
print('colors =', default_prop_cycler2['color'])


[]: default_prop_cycler.keys = {'color', 'linestyle'}
[]: {'color': ['r', 'g', 'b', 'y'], 'linestyle': ['-', '--', ':', '-.']}
[]: colors = ['r', 'g', 'b', 'y']

One could even change the cycler to use for a given axes, after defining that custom_prop_cycler, with

ax.set_prop_cycle(custom_prop_cycler)

But there are no built-in methods to expose the "base list" for a generic itertools.cycle, and in particular for ax._get_lines.prop_cycler.

The simplest way possible I could find without doing the whole loop through the cycler is ax1.lines[-1].get_color().

minimal working example

I struggelt with this quite a few times already. This is a minimal working example for Andis answer. enter image description here

code

import numpy as np
import matplotlib.pyplot as plt




xs = np.arange(10)




fig, ax = plt.subplots()


for ii in range(3):
color = next(ax._get_lines.prop_cycler)['color']
lbl = 'line {:d}, color {:}'.format(ii, color)
ys = np.random.rand(len(xs))
ax.plot(xs, ys, color=color, label=lbl)
ax.legend()