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Add within_gradient #434

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Jan 5, 2023
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3 changes: 2 additions & 1 deletion Project.toml
Original file line number Diff line number Diff line change
Expand Up @@ -21,6 +21,7 @@ CUDA = "052768ef-5323-5732-b1bb-66c8b64840ba"
ChainRulesTestUtils = "cdddcdb0-9152-4a09-a978-84456f9df70a"
Documenter = "e30172f5-a6a5-5a46-863b-614d45cd2de4"
FiniteDifferences = "26cc04aa-876d-5657-8c51-4c34ba976000"
ForwardDiff = "f6369f11-7733-5829-9624-2563aa707210"
Logging = "56ddb016-857b-54e1-b83d-db4d58db5568"
NNlibCUDA = "a00861dc-f156-4864-bf3c-e6376f28a68d"
Random = "9a3f8284-a2c9-5f02-9a11-845980a1fd5c"
Expand All @@ -30,4 +31,4 @@ UnicodePlots = "b8865327-cd53-5732-bb35-84acbb429228"
Zygote = "e88e6eb3-aa80-5325-afca-941959d7151f"

[targets]
test = ["ChainRulesTestUtils", "CUDA", "Documenter", "FiniteDifferences", "Logging", "NNlibCUDA", "Random", "StableRNGs", "Test", "UnicodePlots", "Zygote"]
test = ["ChainRulesTestUtils", "CUDA", "Documenter", "FiniteDifferences", "ForwardDiff", "Logging", "NNlibCUDA", "Random", "StableRNGs", "Test", "UnicodePlots", "Zygote"]
1 change: 1 addition & 0 deletions docs/src/reference.md
Original file line number Diff line number Diff line change
Expand Up @@ -132,4 +132,5 @@ ctc_loss
```@docs
logsumexp
NNlib.glu
NNlib.within_gradient
```
6 changes: 6 additions & 0 deletions src/NNlib.jl
Original file line number Diff line number Diff line change
Expand Up @@ -83,6 +83,12 @@ export upsample_nearest, ∇upsample_nearest,
include("gather.jl")
include("scatter.jl")
include("utils.jl")
@init @require ForwardDiff = "f6369f11-7733-5829-9624-2563aa707210" begin
using .ForwardDiff
within_gradient(x::ForwardDiff.Dual) = true
within_gradient(x::AbstractArray{<:ForwardDiff.Dual}) = true
end

include("sampling.jl")
include("functions.jl")

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5 changes: 1 addition & 4 deletions src/softmax.jl
Original file line number Diff line number Diff line change
Expand Up @@ -69,7 +69,7 @@ function softmax!(out::AbstractArray{T}, x::AbstractArray; dims = 1) where {T}
end

function ∇softmax_data(dy::AbstractArray{T}, y::AbstractArray{S}; dims = 1) where {T,S}
dx = if within_grad()
dx = if within_gradient(y)
tmp = dy .* y
tmp .- y .* sum(tmp; dims)
else
Expand All @@ -88,9 +88,6 @@ function rrule(::typeof(softmax), x; dims = 1)
return y, softmax_pullback
end

within_grad() = false
rrule(::typeof(within_grad)) = true, _ -> (NoTangent(),)

fast_maximum(x::AbstractArray{T}; dims) where {T} = @fastmath reduce(max, x; dims, init = float(T)(-Inf))

"""
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52 changes: 52 additions & 0 deletions src/utils.jl
Original file line number Diff line number Diff line change
@@ -1,3 +1,55 @@
"""
within_gradient(x) --> Bool

Returns `false` except when used inside a `gradient` call, when it returns `true`.
Useful for Flux regularisation layers which behave differently during training and inference.

This should work with any ChainRules-based differentiation package, in which case `x` is ignored.
But Tracker.jl overloads `with_gradient(x::TrackedArray)`, thus for widest use you should
pass it an array whose gradient is of interest.
There is also an overload for ForwardDiff.jl's `Dual` types (and arrays of them).

# Examples
```
julia> using ForwardDiff, Zygote, NNlib

julia> f_good(x) = if NNlib.within_gradient(x)
@show 10x
else
x
end;

julia> Zygote.withgradient(f_good, 1.0)
10x = 10.0
(val = 10.0, grad = (10.0,))

julia> ForwardDiff.derivative(f_good, 1.0)
10x = Dual{ForwardDiff.Tag{typeof(f_good), Float64}}(10.0,10.0)
10.0

julia> f_bad(x, y) = if any(NNlib.within_gradient, (x, y))
@show x * y
else
x / y
end;

julia> Zygote.withgradient(f_bad, 2.0, 3.0)
(val = 0.6666666666666666, grad = (0.3333333333333333, -0.2222222222222222))

julia> ForwardDiff.derivative(x -> f_bad(x, 3.0), 2.0)
x * y = Dual{ForwardDiff.Tag{var"#9#10", Float64}}(6.0,3.0)
3.0
```

What goes wrong in `f_bad` is that Zygote knows `any` to be non-differentiable,
and thus completely ignores its contents. This is not a perfect mechanism,
and the only style recommended is precisely that of `f_good` above.
"""
within_gradient(x) = false

ChainRulesCore.rrule(::typeof(within_gradient), x) = true, _ -> (NoTangent(), NoTangent())


"""
safe_div(x, y)

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1 change: 1 addition & 0 deletions test/runtests.jl
Original file line number Diff line number Diff line change
Expand Up @@ -2,6 +2,7 @@ using NNlib, Test, Statistics, Random
using ChainRulesCore, ChainRulesTestUtils
using Base.Broadcast: broadcasted
import FiniteDifferences
import ForwardDiff
import Zygote
using Zygote: gradient
using StableRNGs
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6 changes: 6 additions & 0 deletions test/utils.jl
Original file line number Diff line number Diff line change
@@ -1,3 +1,9 @@
@testset "within_gradient" begin
@test NNlib.within_gradient([1.0]) === false
@test gradient(x -> NNlib.within_gradient(x) * x, 2.0) == (1.0,)
@test NNlib.within_gradient([ForwardDiff.Dual(1.0, 2)]) === true
end

@testset "maximum_dims" begin
ind1 = [1,2,3,4,5,6]
@test NNlib.maximum_dims(ind1) == (6,)
Expand Down