Suppose you have a function 'normalize' which takes a list of numbers (representing a vector) as input and returns the normalized vector. What should the result be when the vector is all zeros or the sum of its components is zero?
10 Answers
Mathematically speaking, the zero vector cannot be normalized. Its length will always remain 0
.
For given vector v = (v1, v2, ..., vn)
we have: v = sqrt(v1^2 + v2^2 + ... + vn^2)
. Let us remember that a normalized vector is one that has v=1
.
So for v = 0
we have: 0 = sqrt(0^2 + 0^2 + ... + 0^2) = 0
. You can never normalize that.
Also important to note that to ensure consistency, you should not return NaN
or any other null value. The normalized form of v=0
is indeed v=0
.

2I think a small, but important, improvement would be to mention that the actual reason it cannot be normalized is because, in the end, an attempt to divide by the zerolength of the vector being normalized would be required, which is the part that's actually not possible/defined. Still, +1 Jan 22, 2017 at 23:48

2"The normalized form of v=0 is indeed v=0." This doesn't make sense: as you said yourself, the zero vector cannot be normalized. Apr 22, 2019 at 19:46

1normalize(vector(0)) = vector(0)*(1/0) = vector(0)*NaN = NaN @Yuval Adam
Also important to note that to ensure consistency, you should not return NaN or any other null value. The normalized form of v=0 is indeed v=0.
– user16829600Dec 15, 2021 at 13:09
It's even worse than Yuval suggests.
Mathematically, given a vector x you are looking for a new vector x/x
where . is the norm, which you are probably thinking of as a Euclidean norm with
. = sqrt(dot(v,v)) = sqrt(sum_i x_i**2)
These are floating point numbers, so it's not enough to just guard against dividing by zero, you also have a floating point issue if the x_i's are all small (they may underflow and you lose the magnitude).
Basically what it all boils down to is that if you really need to be able to handle small vectors properly, you'll have to do some more work.
If small and zero vectors don't make sense in your application, you can test against the magnitude of the vector and do something appropriate.
(note that as soon as you start dealing with floating point, rather than real, numbers, doing things like squaring and then square rooting numbers (or sums of them) is problematic at both the large an small ends of the representable range)
bottom line: doing numerical work correctly over all cases is trickier than it first looks.
For example, off the top of my head potential problems with this (normalization) operation done in a naive way
 all components (the x_i's) too small
 any single component too large (above square root of max representable) will return infinity. This cuts the available magnitudes componentwise by sqrt .
 if the ratio of a large component to a small component is too large, you can effectively lose the small components direction if you aren't careful
 etc.
Mathematically speaking, the zero vector cannot be normalized. This is an example of what we call in computational geometry a "degenerate case", and this is a huge topic, making much headache for geometry algorithm designers. I can imagine the following approaches to the problem.
 You do not make anything special about the zero vector case. If your vector type has floating point typed coordinates, then you will get zero or infinite coordinates in the result (due to dividing by zero).
 You throw a
degenerate_case_exception
.  You introduce a boolean
is_degenerate_case
output parameter to your procedure.
Personally I in my code use the 3 approach everywhere. One of its advantages is that it does not let the programmer to forget to deal with degenerate cases.
Note, that due to the limited range of floating point numbers, even if the input vector is not equal to the zero vector, You may still get infinite coordinates in the output vector. Because of this, I do not consider the 1. approach to be a bad design decision.
What I can recommend You is to avoid the exception throwing solution. If the degenerate cases are rare among the others, then the exception throwing will not slow down the program. But the problem is that in most cases You can not know that degenerate cases will be rare.
As has already been mentioned several times, you can't normalize a zero vector. So, your options are:
 Return the zero vector
 Return NaN
 Return a bit indicating if the vector was successfully normalized, in addition to the result if successful
 Throw an exception
Option 4 is not very good because some languages (such as C) don't have exceptions, and normalizing a vector is typically found in very lowlevel code. Throwing an exception is rather expensive, and any code that may want to handle the zero/small vector case is going to be given an unnecessary performance hit when that happens.
Option 1 has the problem that the return value won't have a unit length, and so it could silently introduce bugs in the calling code that assumes the resulting vector has unit length.
Option 2 has a similar problem to option 1, but because NaNs are usually much more noticeable than zeroes, it will likely manifest more easily.
I think Option 3 is the best solution, although it does make the interface more complicated. Instead of saying
vec3 = myVec.normalize();
You now have to say something like
vec3 result;
bool success = myVec.normalize(&result);
if(success)
// vector was normalized
else
// vector was zero (or small)

Are the implications to your results 'correctness' if you choose your option a (return a 0)? Feb 3, 2018 at 23:03

an extra bit is easily ignored and the caller might just do
myVec.normalize(&result);
and throw away thesuccess
bit. A good way is to rely on the "language native way of 0/0", that is, vector normalize(){  if(this>length()==0)return vector(0/0);  // ...compute it...  }– user16829600Dec 15, 2021 at 13:27
(0,0,0) should be (0,0,0) normalized plus a warning (or exception) maybe.
mathematically it's not defined I guess.

Sure. It isn't mathmatically defined because the 0 vector is directionless.– user16829600Dec 15, 2021 at 13:34
Well, you'd have to divide by zero, which you can't do, so I think most languages would have some sort of NaN value.
References:
The zero vector is already normalized, under any definition of the norm of a vector that I've ever come across, so that's one case dealt with.
As for a vector with components which sum to zero  well it depends on the definition of norm that you use. With the plain old L2norm (Euclidean distance between origin and vector) the standard formula for calculating the normalized vector should work fine since it first squares the individual components.

The 0 vector is NOT normalized; It's length is 0 rather than 1 required by the property of normalized vectors– user16829600Dec 15, 2021 at 13:35
Given a vector v, to normalize it means keeping its direction and making it unitlength by multiplying it by a wellchosen factor.
This is clearly impossible for the zero vector, because it does not really have a direction, or because its length cannot be changed by mutltiplying it by some factor (it will always be equal to zero).
I would suggest that whatever procedure you would like to use your vector for, and that requires this vector to be normalized, is not welldefined for zero vectors.
It all depends on how you define "normalize". One possible extension of the term is to say that the result of this operation is any unit length vector (I mostly use (1, 0, 0) here). This is useful for example when you need the normalization to return a direction to a circle boundary from a given point.