Stack Overflow is a community of 4.7 million programmers, just like you, helping each other.

Join them; it only takes a minute:

Sign up
Join the Stack Overflow community to:
  1. Ask programming questions
  2. Answer and help your peers
  3. Get recognized for your expertise

I want to plot some data obtained through measurements each with their fit. I will plot 6 measurements on each figure, but I want each measurement data plot have the same color as its fit. From one measurement data plot to the next I want the defalut color cycle of matplotlib.

First, the data if loaded as following:

import matplotlib.pyplot as plt
import matplotlib as mpl
import numpy as np
data1 = np.genfromtxt('data1.txt')
fit1 = np.genfromtxt('fit1.txt')

Then the problem, I can of course redefine the colour sequence in rcParams, like the following:

ColourSeq = []
ColourSeqOriginal = mpl.rcParams['axes.color_cycle']
for ind in range(len(ColourSeqOriginal)):
mpl.rcParams['axes.color_cycle'] = ColourSeq

but this seems complicated.

The simplest thing seems to be:

plt.plot(xdata, data1, xdata, fit1, '???')
plt.plot(xdata, data2, xdata, fit2, '???')
plt.plot(xdata, data3, xdata, fit3, '???')

'???' being the command option which I don't don't know if some exists that will prevent plt.plot incrementing the color value for the given data. But from one plt.plot() invocation to the next, I need to have the normal color increment.

share|improve this question
up vote 4 down vote accepted

You can set the color cycle on a per-axes basis

ax = plt.gca()

A cleaner way do to this is:

import itertools
colors_ = ['r','b','g','m','k'] # change to what colors you want

datas = [data1, data2, data3]
fits = [fit1, fit2, fit3]
ax = plt.gca()
for d, f, c in zip(datas, fits, itertools.cycle(colors_)):
    ax.plot(xdata, d, color=c)
    ax.plot(xdata, f, color=c) 

This gives you control over exactly which colors get used, and if you decide to change how you are plotting your data and fit, you only have to change it once, not N times. You can also easily add extra lists (like a list of labels, marker types, line styles ect) to control how your lines are plotted. (the itertools.cycle is there to make sure the colors is never the limiting iterable in the zip).

The auto-cycling is good for prototyping, but you should get in the habit of specifying the colors for actual plotting.

share|improve this answer
An interesting point is that matplotlib uses itertools.cycle() to cycle through the default colors in rcParams. – Phil Jan 22 '13 at 10:22
@user1850133 indeed, thanks. You can also suggest edits through the interface (and you get rep for it). – tcaswell Mar 17 '14 at 15:11
As soon as I posted my comment, I noticed you corrected your post by adding that missing 'in' ans so I removed my comment. Next time I will keep it on. – user1850133 Mar 17 '14 at 16:17

There isn't a single argument to plot() that will force the same color for all lines in a single call to plot(). The only way to prevent the color cycle from incrementing is to specify the color using color='x'.

Here is an alternative approach that may work for you:

ax = plt.gca()
ax.plot(xdata, data1)
ax.plot(xdata, fit1, color=ax.lines[-1].get_color())
ax.plot(xdata, data2)
ax.plot(xdata, fit2, color=ax.lines[-1].get_color())
ax.plot(xdata, data3)
ax.plot(xdata, fit3, color=ax.lines[-1].get_color())

By specifying the color of the fit lines, the color cycle is not incremented on the 'fit' data.

share|improve this answer
could you make your suggestion more consistent? what's ax? get_color()? – user1850133 Jan 22 '13 at 8:44
I apologize, ax is the axes on which you're plotting. get_color() just returns the color attribute from a line. – Phil Jan 22 '13 at 10:17
That is matching very much what I was looking for, though I was expecting a simpler command than color=ax.lines[-1].get_color(). Anyway, that's matplotlib... Thanks. – user1850133 Jan 22 '13 at 14:55

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.