# Adjusting the Line Colors in a Legend using matplotlib

I'm using the following code to generate a plot with a large number of overplotted lines in Python using matplotlib:

``````def a_run(n, t, s):
xaxis = np.arange(t, dtype=float)
#Scale x-axis by the step size
for i in xaxis:
xaxis[i]=(xaxis[i]*s)
for j in range(n):
result = a_solve(t,s)
plt.plot(result[:,1], color = 'r', alpha=0.1)

def b_run(n, t, s):
xaxis = np.arange(t, dtype=float)
#Scale x-axis by the step size
for i in xaxis:
xaxis[i]=(xaxis[i]*s)
for j in range(n):
result = b_solve(t,s)
plt.plot(result[:,1], color = 'b', alpha=0.1)

a_run(100, 300, 0.02)
b_run(100, 300, 0.02)

plt.xlabel("Time")
plt.ylabel("P")
plt.legend(("A","B"), shadow=True, fancybox=True) Legend providing same color for both
plt.show()
``````

This yields a plot like this:

The problem is the legend - because the lines are plotted with very high transparency, so are the legend lines, and that's very difficult to read. Additionally, it's plotting what I suspect are the "first two" lines, and both are red, when I need one red and one blue.

I can't see any means of adjusting the line colors in Matplotlib like I would in say, the R graphics libraries, but does anyone have a solid workaround?

-

If you plot a lot of lines you should get better performances using LineCollection

``````import matplotlib.collections as mplcol
import matplotlib.colors as mplc

def a_run(n, t, s):
xaxis = np.arange(t, dtype=float)
#Scale x-axis by the step size
for i in xaxis:
xaxis[i]=(xaxis[i]*s)
result = [a_solve(t,s)[:,1] for j in range(n)]
lc = mplcol.LineCollection(result, colors=[mplc.to_rgba('r', alpha=0.1),]*n)
return ls

[...]
lsa = a_run(...)
lsb = b_run(...)
leg = plt.legend((lsa, lsb),("A","B"), shadow=True, fancybox=True)
#set alpha=1 in the legend
for l in leg.get_lines():
l.set_alpha(1)
plt.draw()
``````

I haven't tested the code itself, but I often do something similar to draw large sets of lines and have a legend with one line per each set plotted

-