# multiple axis in matplotlib with different scales

How can multiple scales can be implemented in Matplotlib? I am not talking about the primary and secondary axis plotted against the same x-axis but something like many trends which have different scales and can be identified with their colors plotted in same y-axis.

For example, if I have trend1 ([0,1,2,3,4]) and trend2 ([5000,6000,7000,8000,9000]) to be plotted against time and want two trends to be of different colors and in Y-axis, different scales, how can I accomplish this with Matplotlib?

When I checked into MATPLOTLIB, they say that they don't have this for now though it is definitely on their WISHLIST, Is there a way around to make this happen?

Is their any other plotting tools for python that can make this happen?

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Does this answer your question: stackoverflow.com/questions/7733693/… –  Yann Feb 1 '12 at 21:09
The answers to stackoverflow.com/questions/5484922/… give examples. –  Mechanical snail Jun 1 '13 at 15:07

## 3 Answers

If I understand the question, you may interested in this example in the Matplotlib gallery.

Yann's comment above provides a similar example.

Edit - Link above fixed. Corresponding code copied from the Matplotlib gallery:

from mpl_toolkits.axes_grid1 import host_subplot
import mpl_toolkits.axisartist as AA
import matplotlib.pyplot as plt

if 1:

host = host_subplot(111, axes_class=AA.Axes)
plt.subplots_adjust(right=0.75)

par1 = host.twinx()
par2 = host.twinx()

offset = 60
new_fixed_axis = par2.get_grid_helper().new_fixed_axis
par2.axis["right"] = new_fixed_axis(loc="right",
axes=par2,
offset=(offset, 0))

par2.axis["right"].toggle(all=True)

host.set_xlim(0, 2)
host.set_ylim(0, 2)

host.set_xlabel("Distance")
host.set_ylabel("Density")
par1.set_ylabel("Temperature")
par2.set_ylabel("Velocity")

p1, = host.plot([0, 1, 2], [0, 1, 2], label="Density")
p2, = par1.plot([0, 1, 2], [0, 3, 2], label="Temperature")
p3, = par2.plot([0, 1, 2], [50, 30, 15], label="Velocity")

par1.set_ylim(0, 4)
par2.set_ylim(1, 65)

host.legend()

host.axis["left"].label.set_color(p1.get_color())
par1.axis["right"].label.set_color(p2.get_color())
par2.axis["right"].label.set_color(p3.get_color())

plt.draw()
plt.show()

#plt.savefig("Test")

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Thanks! It was what I was looking for... –  Jack_of_All_Trades Feb 1 '12 at 23:11
-1 because answers hidden behind links are less helpful and tend to rot. –  dlras2 Oct 23 '12 at 14:28
Truth. Broken link. –  nathancahill Oct 25 '12 at 19:28
Nice one, but this host plot tested on several plots seems utterly slow compared to the implementation of Yann. Furthermore, it seems to me that set_title in this case is buggy, so that if I plot many charts, the titles are all overlapped to each other. The only advantage of this implementation seems to be that it better supports the legend command. –  Antonio Oct 4 '13 at 8:01
@SteveTjoa, is there any way to avoid the empty room by side the produced figure? –  Py-ser Jun 5 '14 at 3:36

if you want to do very quick plots with secondary Y-Axis then there is much easier way using Pandas wrapper function and just 2 lines of code. Just plot your first column then plot the second but with parameter secondary_y=True, like this:

df.A.plot(label="Points", legend=True)
df.B.plot(secondary_y=True, label="Comments", legend=True)


This would look something like below:

You can do few more things as well. Take a look at Pandas plotting doc.

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Bootstrapping something fast to chart multiple y-axes sharing an x-axis using @joe-kington's answer:

# d = Pandas Dataframe,
# ys = [ [cols in the same y], [cols in the same y], [cols in the same y], .. ]
def chart(d,ys):

from itertools import cycle
fig, ax = plt.subplots()

axes = [ax]
for y in ys[1:]:
# Twin the x-axis twice to make independent y-axes.
axes.append(ax.twinx())

extra_ys =  len(axes[2:])

# Make some space on the right side for the extra y-axes.
if extra_ys>0:
temp = 0.85
if extra_ys<=2:
temp = 0.75
elif extra_ys<=4:
temp = 0.6
if extra_ys>5:
print 'you are being ridiculous'
fig.subplots_adjust(right=temp)
right_additive = (0.98-temp)/float(extra_ys)
# Move the last y-axis spine over to the right by x% of the width of the axes
i = 1.
for ax in axes[2:]:
ax.spines['right'].set_position(('axes', 1.+right_additive*i))
ax.set_frame_on(True)
ax.patch.set_visible(False)
ax.yaxis.set_major_formatter(matplotlib.ticker.OldScalarFormatter())
i +=1.
# To make the border of the right-most axis visible, we need to turn the frame
# on. This hides the other plots, however, so we need to turn its fill off.

cols = []
lines = []
line_styles = cycle(['-','-','-', '--', '-.', ':', '.', ',', 'o', 'v', '^', '<', '>',
'1', '2', '3', '4', 's', 'p', '*', 'h', 'H', '+', 'x', 'D', 'd', '|', '_'])
colors = cycle(matplotlib.rcParams['axes.color_cycle'])
for ax,y in zip(axes,ys):
ls=line_styles.next()
if len(y)==1:
col = y[0]
cols.append(col)
color = colors.next()
lines.append(ax.plot(d[col],linestyle =ls,label = col,color=color))
ax.set_ylabel(col,color=color)
#ax.tick_params(axis='y', colors=color)
ax.spines['right'].set_color(color)
else:
for col in y:
color = colors.next()
lines.append(ax.plot(d[col],linestyle =ls,label = col,color=color))
cols.append(col)
ax.set_ylabel(', '.join(y))
#ax.tick_params(axis='y')
axes[0].set_xlabel(d.index.name)
lns = lines[0]
for l in lines[1:]:
lns +=l
labs = [l.get_label() for l in lns]
axes[0].legend(lns, labs, loc=0)

plt.show()

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Awesome, works like a charm! Thanks! –  Svend Jul 3 at 17:40