# Having line color vary with data index for line graph in matplotlib?

So I have a 2D array of data producing a plot of many timeseries on the same axes. At the moment, the colour of each line just cycles through and doesn't mean anything.

I want to somehow map the colour of each line to the index of its data - so a set of data with a low index appears red and then fades to blue at a high index.

To clarify, each individual line should be the same colour throughout, not fading with time. The difference should be between each line.

Thankyou!

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Often you pass a colormap to a plotting function, but you can also pass a number or array to a colormap and get the colors in return.

So to color each line according to a variable, do something like this:

``````numlines = 20

for i in np.linspace(0,1, numlines):
plt.plot(np.arange(numlines),np.tile([i],numlines), linewidth=4, color=plt.cm.RdYlBu(i))
``````

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`plot(x,y,'r')` for red lines

`plot(x,y,'b')` for blue lines

Need more colors for a decent X'mas? See here.

``````from matplotlib.pyplot import *

x = list(range(10))
amount = 20

for i in range(amount):
y = [j-i for j in x]
c = [float(i)/float(amount), 0.0, float(amount-i)/float(amount)] #R,G,B
plot(x, y, color=c)
show()
``````

It gives:

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Yes but I have a LOT of sets of timeseries - about 200. I can't manually go through and set the colour of each one. I need a way of taking the index of it and getting the colour from a colormap. –  Catherine Georgia Dec 20 '12 at 12:41
@CatherineGeorgia Sure. Wait a minute. –  Skyler Dec 20 '12 at 12:45

Here I use rgb colors to get an array of 200 different colors. I don't have the time to sort them by intensity, but do a few printouts of the array and you might figure out how. An idea is to sort by the index of the sum of the (sorted) tuples.

``````#colorwheel
import matplotlib.pyplot as plt
from itertools import permutations
from random import sample
import numpy as np

#Get the color-wheel
Nlines = 200
color_lvl = 8
rgb = np.array(list(permutations(range(0,256,color_lvl),3)))/255.0
colors = sample(rgb,Nlines)

#Plots
x = np.linspace(0,2*np.pi)

for i in range(Nlines):
plt.plot(i*np.cos(x),i*np.sin(x),color=colors[i]) #color from index
plt.savefig("SO_colorwheel.png")
plt.show()
``````

Gives

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