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NaN
gradients for sqrt
#1101
NaN
gradients for sqrt
#1101
Comments
I don't think this is really a bug in It's a little like |
Xref also discussion here: #1036 . It might be possible to regularise all |
That's a good point. To be honest, I'm not sure wrong gradients are better than an error. I would say that for this, if no perfect solution is available, the best solution might be an informative error. Something pointing out that the issue comes from this, and proposing a solution (e.g. just use |
I agree that an error is often better than a NaN. Looks like this has been discussed a bit: https://discourse.julialang.org/t/treating-nan-as-error-helping-debugging/36933 Less ambitiously, something like this could potentially be added only to AD. For instance inserting a function which is by default |
Zygote and PyTorch seem to behave similarily in these cases: gradient(x -> x * sqrt(x),0)
# (NaN,)
gradient(x -> x^(1.5),0)
# (0.0,) PyTorch: x = torch.tensor([0.], requires_grad=True); f = x*torch.sqrt(x); f.backward(); x.grad
# tensor([nan])
x = torch.tensor([0.], requires_grad=True); f = x**(1.5); f.backward(); x.grad
# tensor([0.]) To me (to my math professors, as far as I remember :-)) √x and x / √x are just two different functions. √x = 0 for x = 0 but x / √x is undefined for x = 0 (they are equal almost everywhere but still different). Given that the derivative of sqrt is undefined (in the mathematical sense) for x = 0, having NaN as a results seems quite logical too me. I would not expect any symbolic transformation from Zygote (or PyTorch) to lift this pathological case. |
There might be more clever ways, ForwardDiff's nan-safe mode works around some cases where the simple conclusion would be NaN. Today's discussion here: JuliaDiff/ChainRules.jl#576 |
The derivative of Possible solutions to avoid Inf gradients for
|
After a long time hunting a bug with @facusapienza21, we have realized that Zygote fails to provide a gradient for the basic
sqrt
function. This has been discussed at length in this Discourse thread.Here's a MWE to reproduce the issue:
For this last case, the value of back_θ(1.0) is
NaN
. However, if we avoid the use ofsqrt()
by defining the loss function asthen Zygote provides the right gradient.
According to @mcabbott, "the reason we get
NaN
is that the slope ofsqrt
at zero is infinite. That infinity multiplies the slope of0^x
at 4, which is zero. Whereas with the0^(x/2)
version, the slope is simply zero".Being such a basic function, this bug can potentially impact a large number of users.
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