# Color and Line writing using MatPlotLib

I am trying to graph families of curves using Matplotlib. I am graphing the data directly using scatter() and then plotting a fit line (least squares from scipy) using plot(). I do not know how many sets of data there will be beforehand, or the limits, etc.

I need to be able to cycle the colors of these lines and points so everything from one set of data matches. Plot rotates colors using some internal default and scatter is coming out as all one color. The data sets could get close together, so just going with the assumption that it will be clear from which points are close to which fit line is not good enough, and since I don't know how many curves there will be manually making a color choice is not scalable.

Further, because these are families of curves (think transistor plots), I need to be able to show the relevant labeling with the curve. What I would like to do is to write the information on the fit line itself.

Does anyone know of a good way to either of these?

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This tries to answer all your questions. The code below cycles a maximum of 7 colors. If you need more you should create a more sofisticated generator, as that shown in another answer.

``````import numpy as np
from matplotlib import pyplot as plt

def get_color():
for item in ['r', 'g', 'b', 'c', 'm', 'y', 'k']:
yield item

x = 0.3 * np.array(range(40))

color = get_color()

for group in range(5):
# generates a collection of points
y = np.exp2(x + 0.5 * group)
# fit to a polynomial
z = np.polyfit(x, y, 6)
p = np.poly1d(z)

acolor = next(color)

plt.scatter(x, y, color=acolor, marker='o')
plt.plot(x, p(x), acolor + '-', label=str(group))

plt.legend()
plt.xlim((0, 15))
plt.show()
``````

The generator in the above code is a bit of an overkilling for the example, but it gives the structure for a more complex calculation. If you only need a few colors you could use a simple iterator

``````>>> color = iter(list_of_colors)
>>> acolor = next(color)
``````

and if you need to cycle endlessly, you can use `itertools.cycle`:

``````>>> from itertools import cycle
>>> color = cycle(['r', 'g', 'b', 'c', 'm', 'y', 'k'])
>>> next(color)
'r'
>>>
``````

Edit: You have several options to get n diferent colors. As I indicated before you can use a generator using the method indicated in other answer. For example, replacing get_color with a different generator:

``````import colorsys
import numpy as np
from matplotlib import pyplot as plt

def get_color(color):
for hue in range(color):
hue = 1. * hue / color
col = [int(x) for x in colorsys.hsv_to_rgb(hue, 1.0, 230)]
yield "#{0:02x}{1:02x}{2:02x}".format(*col)

x = 0.3 * np.array(range(40))

color = get_color(15)

for group in range(15):
# generates a collection of points
y = np.exp2(x + 0.5 * group)
# fit to a polynomial
z = np.polyfit(x, y, 6)
p = np.poly1d(z)

acolor = next(color)

plt.scatter(x, y, color=acolor, marker='o')
plt.plot(x, p(x), color=acolor, linestyle='dashed', label=str(group))

plt.legend()
plt.xlim((0, 15))
plt.show()
``````

You get 15 different colors.

Similar colors are however contiguous not giving a good resolution/contrast. You can increase contrast by skipping hue values with:

``````for hue in range(0, color*3, 3):
``````

The other problem when drawing many lines is the legend...

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Thanks. This solved the immediate issue and forced me to learn about yield and next statements, which I didn't know existed. However, what would you do if you needed an arbitrarily large number of colors? For example, say I have 100 data sets and each needs to be completely distinct (ie cycling is no good). How would you generate a color iterator? Can you do it without explicitly coding in the number of data sets, so the code is extensible? – Elliot Apr 24 '12 at 18:59

I have a similar case where I want to give the same color to multiple lines while still supporting an arbitrary number of lines without defining them all manually. This is a function I came up with to generate colors:

``````import colorsys

def get_colors(i, total):
hue = i*(1.0/total)
dark = [int(x) for x in colorsys.hsv_to_rgb(hue, 1.0, 100)]
light = [int(x) for x in colorsys.hsv_to_rgb(hue, 1.0, 230)]
return "#{0:02x}{1:02x}{2:02x}".format(*dark), "#{0:02x}{1:02x}{2:02x}".format(*light)
``````

As you can see, it generates `total` colors with maximum distance in a dark and a light version.

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