# How to make the angles in a matplotlib polar plot go clockwise with 0° at the top?

Facebook and Stack Exchange are now working together to support the Facebook developer community. Facebook engineers participate here along with the best Facebook developers in the world. If you have a technical question about Facebook, this is the best place to ask.

I am using matplotlib and numpy to make a polar plot. Here is some sample code:

``````import numpy as N
import matplotlib.pyplot as P

angle = N.arange(0, 360, 10, dtype=float) * N.pi / 180.0
arbitrary_data = N.abs(N.sin(angle)) + 0.1 * (N.random.random_sample(size=angle.shape) - 0.5)

P.clf()
P.polar(angle, arbitrary_data)
P.show()
``````

You will notice that 0° is at 3 o'clock on the plot, and the angles go counterclockwise. It would be more useful for my data visualization purposes to have 0° at 12 o'clock and have the angles go clockwise. Is there any way to do this besides rotating the data and manually changing the axis labels?

-
 You've probably realised that rotating the data isn't quite what you want to do -- you want to reflect it across y==x. – High Performance Mark Mar 10 '10 at 15:00 Er, you're right -- but the question is still how to do it without manipulating the data at all, just the plot. – ptomato Mar 10 '10 at 16:22

I found it out -- matplotlib allows you to create custom projections. I created one that inherits from `PolarAxes`.

``````import numpy as N
import matplotlib.pyplot as P

from matplotlib.projections import PolarAxes, register_projection
from matplotlib.transforms import Affine2D, Bbox, IdentityTransform

class NorthPolarAxes(PolarAxes):
'''
A variant of PolarAxes where theta starts pointing north and goes
clockwise.
'''
name = 'northpolar'

class NorthPolarTransform(PolarAxes.PolarTransform):
def transform(self, tr):
xy   = N.zeros(tr.shape, N.float_)
t    = tr[:, 0:1]
r    = tr[:, 1:2]
x    = xy[:, 0:1]
y    = xy[:, 1:2]
x[:] = r * N.sin(t)
y[:] = r * N.cos(t)
return xy

transform_non_affine = transform

def inverted(self):
return NorthPolarAxes.InvertedNorthPolarTransform()

class InvertedNorthPolarTransform(PolarAxes.InvertedPolarTransform):
def transform(self, xy):
x = xy[:, 0:1]
y = xy[:, 1:]
r = N.sqrt(x*x + y*y)
theta = N.arctan2(y, x)
return N.concatenate((theta, r), 1)

def inverted(self):
return NorthPolarAxes.NorthPolarTransform()

def _set_lim_and_transforms(self):
PolarAxes._set_lim_and_transforms(self)
self.transProjection = self.NorthPolarTransform()
self.transData = (
self.transScale +
self.transProjection +
(self.transProjectionAffine + self.transAxes))
self._xaxis_transform = (
self.transProjection +
self.PolarAffine(IdentityTransform(), Bbox.unit()) +
self.transAxes)
self._xaxis_text1_transform = (
self._theta_label1_position +
self._xaxis_transform)
self._yaxis_transform = (
Affine2D().scale(N.pi * 2.0, 1.0) +
self.transData)
self._yaxis_text1_transform = (
self._r_label1_position +
Affine2D().scale(1.0 / 360.0, 1.0) +
self._yaxis_transform)

register_projection(NorthPolarAxes)

angle = N.arange(0, 360, 10, dtype=float) * N.pi / 180.0
arbitrary_data = (N.abs(N.sin(angle)) + 0.1 *
(N.random.random_sample(size=angle.shape) - 0.5))

P.clf()
P.subplot(1, 1, 1, projection='northpolar')
P.plot(angle, arbitrary_data)
P.show()
``````
-
Awesome, this should be included with their custom projection examples. – Mark Mar 12 '10 at 19:04
I'd recommend it be incorporated into the codebase. – Carl F. Sep 18 '11 at 17:23
Any idea how to get this working with FigureCanvasGTKAgg? – Sardathrion Jul 2 '12 at 12:41
What doesn't work? – ptomato Jul 2 '12 at 21:32

Updating this question, in Matplotlib 1.1, there are now two methods in `PolarAxes` for setting the theta direction (CW/CCW) and location for theta=0.

Specifically, see `set_theta_direction()` and `set_theta_offset()`.

Lots of people attempting to do compass-like plots it seems.

-

You could modify your matplotlib/projections/polar.py.

Where it says:

``````def transform(self, tr):
xy   = npy.zeros(tr.shape, npy.float_)
t    = tr[:, 0:1]
r    = tr[:, 1:2]
x    = xy[:, 0:1]
y    = xy[:, 1:2]
x[:] = r * npy.cos(t)
y[:] = r * npy.sin(t)
return xy
``````

Make it say:

``````def transform(self, tr):
xy   = npy.zeros(tr.shape, npy.float_)
t    = tr[:, 0:1]
r    = tr[:, 1:2]
x    = xy[:, 0:1]
y    = xy[:, 1:2]
x[:] = - r * npy.sin(t)
y[:] = r * npy.cos(t)
return xy
``````

I didn't actually try it, you may need to tweak x[:] and y[:] assignments to your taste. This change will affect all programs that use matplotlib polar plot.

-
 This is ingenious, but patching the code is kind of cheating, isn't it? However, you've given me an idea. Matplotlib allows you to create axes with any kind of transformation; perhaps I can write an alternate polar() function with the transform I'm looking for. – ptomato Mar 11 '10 at 10:07

Both invert routines should use the full path to the transforms:

``````return NorthPolarAxes.InvertedNorthPolarTransform()
``````

and

``````return NorthPolarAxes.NorthPolarTransform()
``````

Now, automatically created subclasses of NorthPolarAxes such as NorthPolarAxesSubplot can access the transform functions.

Hope this helps.

-

To expand klimaat's answer with an example:

``````import math
angle=[0.,5.,10.,15.,20.,25.,30.,35.,40.,45.,50.,55.,60.,65.,70.,75.,\
80.,85.,90.,95.,100.,105.,110.,115.,120.,125.]

angle = [math.radians(a) for a in angle]

lux=[12.67,12.97,12.49,14.58,12.46,12.59,11.26,10.71,17.74,25.95,\
15.07,7.43,6.30,6.39,7.70,9.19,11.30,13.30,14.07,15.92,14.70,\
10.70,6.27,2.69,1.29,0.81]

import matplotlib.pyplot as P
import matplotlib
P.clf()
sp = P.subplot(1, 1, 1, projection='polar')
sp.set_theta_zero_location('N')
sp.set_theta_direction(-1)
P.plot(angle, lux)
P.show()
``````
-