I need to determine the angle(s) between two ndimensional vectors in Python. For example, the input can be two lists like the following: [1,2,3,4]
and [6,7,8,9]
.

1This is the best answer is @MK83's as it is exactly the mathematical expression theta = atan2(u^v, u.v). even the case where u=[0 0] or v=[0 0] is covered because this is only time atan2 will produce the NaN in the other answers NaN will be produced by the / norm(u) or / norm(v) – PilouPili Sep 1 '18 at 10:38
import math
def dotproduct(v1, v2):
return sum((a*b) for a, b in zip(v1, v2))
def length(v):
return math.sqrt(dotproduct(v, v))
def angle(v1, v2):
return math.acos(dotproduct(v1, v2) / (length(v1) * length(v2)))
Note: this will fail when the vectors have either the same or the opposite direction. The correct implementation is here: https://stackoverflow.com/a/13849249/71522

2Also, if you only need cos, sin, tan of angle, and not the angle itself, then you can skip the math.acos to get cosine, and use cross product to get sine. – mbeckish May 13 '10 at 14:17

8Given that
math.sqrt(x)
is equivalent tox**0.5
andmath.pow(x,y)
is equivalent tox**y
, I'm surprised these survived the redundancy axe wielded during the Python 2.x>3.0 transition. In practice, I'm usually doing these kinds of numeric things as part of a larger computeintensive process, and the interpreter's support for '**' going directly to the bytecode BINARY_POWER, vs. the lookup of 'math', the access to its attribute 'sqrt', and then the painfully slow bytecode CALL_FUNCTION, can make a measurable improvement in speed at no coding or readability cost. – PaulMcG May 14 '10 at 7:11 
5As in the answer with numpy: This can fail if the rounding error comes into play! This can happen for parallel and antiparallel vectors! – BandGap Jan 27 '12 at 11:15

2Note: this will fail if the vectors are identical (ex,
angle((1., 1., 1.), (1., 1., 1.))
). See my answer for a slightly more correct version. – David Wolever Dec 12 '12 at 21:41 
2If you're talking about the implementation above then it fails because of rounding errors, not because the vectors are parallel. – Pace Mar 13 '13 at 0:16
Note: all of the other answers here will fail if the two vectors have either the same direction (ex, (1, 0, 0)
, (1, 0, 0)
) or opposite directions (ex, (1, 0, 0)
, (1, 0, 0)
).
Here is a function which will correctly handle these cases:
import numpy as np
def unit_vector(vector):
""" Returns the unit vector of the vector. """
return vector / np.linalg.norm(vector)
def angle_between(v1, v2):
""" Returns the angle in radians between vectors 'v1' and 'v2'::
>>> angle_between((1, 0, 0), (0, 1, 0))
1.5707963267948966
>>> angle_between((1, 0, 0), (1, 0, 0))
0.0
>>> angle_between((1, 0, 0), (1, 0, 0))
3.141592653589793
"""
v1_u = unit_vector(v1)
v2_u = unit_vector(v2)
return np.arccos(np.clip(np.dot(v1_u, v2_u), 1.0, 1.0))

Wouldn't it be better to use
np.isnan
instead of the one from the math library? In theory they should be identical, but I'm not quite sure in practice. Either way I'd imagine it would be safer. – Hooked Jul 15 '13 at 15:52 
1My numpy (version==1.12.1) can use
arccos
directly and safely. : In [140]: np.arccos(np.dot(np.array([1,0,0]),np.array([1,0,0]) )) Out[140]: 3.1415926535897931 In [141]: np.arccos(np.dot(np.array([1,0,0]),np.array([1,0,0]) )) Out[141]: 0.0 – ene Aug 17 '17 at 8:04 
2The special case where at least one input vector is the zero vector is omitted, which is problematic for the division in
unit_vector
. One possibility is to just return the input vector in this function when this is the case. – kafman Oct 18 '17 at 12:06 
1angle_between((0, 0, 0), (0, 1, 0)) will give nan as result, and not 90 – FabioSpaghetti Jun 4 '19 at 9:34

2@kafman 0vectors' angle is undefined (in math). So the fact it raises an error is good. – Fermi paradox Jun 5 '19 at 20:41
Using numpy (highly recommended), you would do:
from numpy import (array, dot, arccos, clip)
from numpy.linalg import norm
u = array([1.,2,3,4])
v = ...
c = dot(u,v)/norm(u)/norm(v) # > cosine of the angle
angle = arccos(clip(c, 1, 1)) # if you really want the angle

3The last line can result in an error as I've found out because of rounding errors. Thus if you to dot(u,u)/norm(u)**2 it results in 1.0000000002 and the arccos then fails (also 'works' for antiparallel vectors) – BandGap Jan 27 '12 at 11:10

I've tested with u=[1,1,1]. u=[1,1,1,1] works fine but every dimension added returns slightly larger or smaler values than 1... – BandGap Jan 27 '12 at 11:20

2Note: this will fail (yield
nan
) when the direction of the two vectors is either identical or opposite. See my answer for a more correct version. – David Wolever Dec 12 '12 at 21:52 
2adding neo's comment to this, the last line should be
angle = arccos(clip(c, 1, 1))
to avoid rounding issues. This solves @DavidWolever 's issue. – Tim Tisdall Dec 30 '14 at 15:40 
4For the folks using the code snippet above:
clip
should be added to the list of numpy imports. – Liam Deacon Jun 18 '15 at 16:11
The other possibility is using just numpy
and it gives you the interior angle
import numpy as np
p0 = [3.5, 6.7]
p1 = [7.9, 8.4]
p2 = [10.8, 4.8]
'''
compute angle (in degrees) for p0p1p2 corner
Inputs:
p0,p1,p2  points in the form of [x,y]
'''
v0 = np.array(p0)  np.array(p1)
v1 = np.array(p2)  np.array(p1)
angle = np.math.atan2(np.linalg.det([v0,v1]),np.dot(v0,v1))
print np.degrees(angle)
and here is the output:
In [2]: p0, p1, p2 = [3.5, 6.7], [7.9, 8.4], [10.8, 4.8]
In [3]: v0 = np.array(p0)  np.array(p1)
In [4]: v1 = np.array(p2)  np.array(p1)
In [5]: v0
Out[5]: array([4.4, 1.7])
In [6]: v1
Out[6]: array([ 2.9, 3.6])
In [7]: angle = np.math.atan2(np.linalg.det([v0,v1]),np.dot(v0,v1))
In [8]: angle
Out[8]: 1.8802197318858924
In [9]: np.degrees(angle)
Out[9]: 107.72865519428085

5This is the best answer as it is exactly the mathematical expression theta = atan2(u^v, u.v). And this never fails ! – PilouPili Sep 1 '18 at 10:32

1
If you're working with 3D vectors, you can do this concisely using the toolbelt vg. It's a light layer on top of numpy.
import numpy as np
import vg
vec1 = np.array([1, 2, 3])
vec2 = np.array([7, 8, 9])
vg.angle(vec1, vec2)
You can also specify a viewing angle to compute the angle via projection:
vg.angle(vec1, vec2, look=vg.basis.z)
Or compute the signed angle via projection:
vg.signed_angle(vec1, vec2, look=vg.basis.z)
I created the library at my last startup, where it was motivated by uses like this: simple ideas which are verbose or opaque in NumPy.
David Wolever's solution is good, but
If you want to have signed angles you have to determine if a given pair is right or left handed (see wiki for further info).
My solution for this is:
def unit_vector(vector):
""" Returns the unit vector of the vector"""
return vector / np.linalg.norm(vector)
def angle(vector1, vector2):
""" Returns the angle in radians between given vectors"""
v1_u = unit_vector(vector1)
v2_u = unit_vector(vector2)
minor = np.linalg.det(
np.stack((v1_u[2:], v2_u[2:]))
)
if minor == 0:
raise NotImplementedError('Too odd vectors =(')
return np.sign(minor) * np.arccos(np.clip(np.dot(v1_u, v2_u), 1.0, 1.0))
It's not perfect because of this NotImplementedError
but for my case it works well. This behaviour could be fixed (cause handness is determined for any given pair) but it takes more code that I want and have to write.
Building on sgt pepper's great answer and adding support for aligned vectors plus adding a speedup of over 2x using Numba
@njit(cache=True, nogil=True)
def angle(vector1, vector2):
""" Returns the angle in radians between given vectors"""
v1_u = unit_vector(vector1)
v2_u = unit_vector(vector2)
minor = np.linalg.det(
np.stack((v1_u[2:], v2_u[2:]))
)
if minor == 0:
sign = 1
else:
sign = np.sign(minor)
dot_p = np.dot(v1_u, v2_u)
dot_p = min(max(dot_p, 1.0), 1.0)
return sign * np.arccos(dot_p)
@njit(cache=True, nogil=True)
def unit_vector(vector):
""" Returns the unit vector of the vector. """
return vector / np.linalg.norm(vector)
def test_angle():
def npf(x):
return np.array(x, dtype=float)
assert np.isclose(angle(npf((1, 1)), npf((1, 0))), pi / 4)
assert np.isclose(angle(npf((1, 0)), npf((1, 1))), pi / 4)
assert np.isclose(angle(npf((0, 1)), npf((1, 0))), pi / 2)
assert np.isclose(angle(npf((1, 0)), npf((0, 1))), pi / 2)
assert np.isclose(angle(npf((1, 0)), npf((1, 0))), 0)
assert np.isclose(angle(npf((1, 0)), npf((1, 0))), pi)
%%timeit
results without Numba
 359 µs ± 2.86 µs per loop (mean ± std. dev. of 7 runs, 1000 loops each)
And with
 151 µs ± 820 ns per loop (mean ± std. dev. of 7 runs, 10000 loops each)
Easy way to find angle between two vectors(works for ndimensional vector),
Python code:
import numpy as np
vector1 = [1,0,0]
vector2 = [0,1,0]
unit_vector1 = vector1 / np.linalg.norm(vector1)
unit_vector2 = vector2 / np.linalg.norm(vector2)
dot_product = np.dot(unit_vector1, unit_vector2)
angle = np.arccos(dot_product) #angle in radian
Using numpy and taking care of BandGap's rounding errors:
from numpy.linalg import norm
from numpy import dot
import math
def angle_between(a,b):
arccosInput = dot(a,b)/norm(a)/norm(b)
arccosInput = 1.0 if arccosInput > 1.0 else arccosInput
arccosInput = 1.0 if arccosInput < 1.0 else arccosInput
return math.acos(arccosInput)
Note, this function will throw an exception if one of the vectors has zero magnitude (divide by 0).
For the few who may have (due to SEO complications) ended here trying to calculate the angle between two lines in python, as in (x0, y0), (x1, y1)
geometrical lines, there is the below minimal solution (uses the shapely
module, but can be easily modified not to):
from shapely.geometry import LineString
import numpy as np
ninety_degrees_rad = 90.0 * np.pi / 180.0
def angle_between(line1, line2):
coords_1 = line1.coords
coords_2 = line2.coords
line1_vertical = (coords_1[1][0]  coords_1[0][0]) == 0.0
line2_vertical = (coords_2[1][0]  coords_2[0][0]) == 0.0
# Vertical lines have undefined slope, but we know their angle in rads is = 90° * π/180
if line1_vertical and line2_vertical:
# Perpendicular vertical lines
return 0.0
if line1_vertical or line2_vertical:
# 90°  angle of nonvertical line
non_vertical_line = line2 if line1_vertical else line1
return abs((90.0 * np.pi / 180.0)  np.arctan(slope(non_vertical_line)))
m1 = slope(line1)
m2 = slope(line2)
return np.arctan((m1  m2)/(1 + m1*m2))
def slope(line):
# Assignments made purely for readability. One could opt to just oneline return them
x0 = line.coords[0][0]
y0 = line.coords[0][1]
x1 = line.coords[1][0]
y1 = line.coords[1][1]
return (y1  y0) / (x1  x0)
And the use would be
>>> line1 = LineString([(0, 0), (0, 1)]) # vertical
>>> line2 = LineString([(0, 0), (1, 0)]) # horizontal
>>> angle_between(line1, line2)
1.5707963267948966
>>> np.degrees(angle_between(line1, line2))
90.0