I have a class Vector that represents a point in 3-dimensional space. This vector has a method normalize(self, length = 1) which scales the vector down/up to be length == vec.normalize(length).length.
The unittest for this method sometimes fails because of the imprecision of floating-point numbers. My question is, how can I make sure this test does not fail when the methods are implemented correctly? Is it possible to do it without testing for an approximate value?
Additional information:
def testNormalize(self):
vec = Vector(random.random(), random.random(), random.random())
self.assertEqual(vec.normalize(5).length, 5)
This sometimes results in either AssertionError: 4.999999999999999 != 5 or AssertionError: 5.000000000000001 != 5.
Note: I am aware that the floating-point issue may be in the Vector.length property or in Vector.normalize().
1) How can I make sure the test works?
Use
assertAlmostEqual,assertNotAlmostEqual.From the official documentation:
Test that first and second are approximately equal by computing the difference, rounding to the given number of decimal places (default 7), and comparing to zero.
2) Is it possible to do it without testing for an approximate value?
Esentially No.
The floating point issue can’t be bypassed, so you have either to "round" the result given by
vec.normalizeor accept an almost-equal result (each one of the two is an approximation).