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Forward and reverse Enzyme tests and rules for linalg #449
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a9ebccf
Forward and reverse Enzyme tests and rules for linalg
kshyatt fb8c7d8
Try to cut down on ci times
445701e
Formatter
bf46d8b
Fix tensor for norm
018395d
Fix space for mul also
kshyatt 4b0e7f2
Try to cut down on CI burden some more
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| Original file line number | Diff line number | Diff line change |
|---|---|---|
| @@ -0,0 +1,16 @@ | ||
| module TensorKitEnzymeExt | ||
|
|
||
| using Enzyme | ||
| using TensorKit | ||
| import TensorKit as TK | ||
| using VectorInterface | ||
| using TensorOperations: TensorOperations, IndexTuple, Index2Tuple, linearize | ||
| import TensorOperations as TO | ||
| using MatrixAlgebraKit | ||
| using TupleTools | ||
| using Random: AbstractRNG | ||
|
|
||
| include("utility.jl") | ||
| include("linalg.jl") | ||
|
|
||
| end |
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| Original file line number | Diff line number | Diff line change |
|---|---|---|
| @@ -0,0 +1,262 @@ | ||
| # Shared | ||
| # ------ | ||
| # Can Enzyme do this itself? Apparently not... | ||
| function EnzymeRules.augmented_primal( | ||
| config::EnzymeRules.RevConfigWidth{1}, | ||
| func::Const{typeof(mul!)}, | ||
| ::Type{RT}, | ||
| C::Annotation{<:AbstractTensorMap}, | ||
| A::Annotation{<:AbstractTensorMap}, | ||
| B::Annotation{<:AbstractTensorMap}, | ||
| α::Annotation, | ||
| β::Annotation, | ||
| ) where {RT} | ||
| cacheC = !isa(β, Const) && copy(C.val) | ||
| cacheA = !isa(B, Const) && EnzymeRules.overwritten(config)[3] ? copy(A.val) : nothing | ||
| cacheB = !isa(A, Const) && EnzymeRules.overwritten(config)[4] ? copy(B.val) : nothing | ||
| AB = if !isa(α, Const) | ||
| AB = A.val * B.val | ||
| add!(C.val, AB, α.val, β.val) | ||
| AB | ||
| else | ||
| mul!(C.val, A.val, B.val, α.val, β.val) | ||
| nothing | ||
| end | ||
| primal = EnzymeRules.needs_primal(config) ? C.val : nothing | ||
| shadow = EnzymeRules.needs_shadow(config) ? C.dval : nothing | ||
| cache = (cacheC, cacheA, cacheB, AB) | ||
| return EnzymeRules.AugmentedReturn(primal, shadow, cache) | ||
| end | ||
|
|
||
| function EnzymeRules.reverse( | ||
| config::EnzymeRules.RevConfigWidth{1}, | ||
| func::Const{typeof(mul!)}, | ||
| ::Type{RT}, | ||
| cache, | ||
| C::Annotation{<:AbstractTensorMap}, | ||
| A::Annotation{<:AbstractTensorMap}, | ||
| B::Annotation{<:AbstractTensorMap}, | ||
| α::Annotation{<:Number}, | ||
| β::Annotation{<:Number}, | ||
| ) where {RT} | ||
| if RT <: Const | ||
| Δα = isa(α, Const) ? nothing : zero(α.val) | ||
| Δβ = isa(β, Const) ? nothing : zero(β.val) | ||
| return (nothing, nothing, nothing, Δα, Δβ) | ||
| end | ||
| cacheC, cacheA, cacheB, AB = cache | ||
| Cval = something(cacheC, C.val) | ||
| Aval = something(cacheA, A.val) | ||
| Bval = something(cacheB, B.val) | ||
|
|
||
| !isa(A, Const) && !isa(C, Const) && project_mul!(A.dval, C.dval, Bval', conj(α.val)) | ||
| !isa(B, Const) && !isa(C, Const) && project_mul!(B.dval, Aval', C.dval, conj(α.val)) | ||
| Δαr = pullback_dα(α, C, AB) | ||
| Δβr = pullback_dβ(β, C, Cval) | ||
| !isa(C, Const) && pullback_dC!(C.dval, β.val) | ||
|
|
||
| return (nothing, nothing, nothing, Δαr, Δβr) | ||
| end | ||
|
|
||
| function EnzymeRules.forward( | ||
| config::EnzymeRules.FwdConfigWidth{1}, | ||
| func::Const{typeof(mul!)}, | ||
| ::Type{RT}, | ||
| C::Annotation{<:AbstractTensorMap}, | ||
| A::Annotation{<:AbstractTensorMap}, | ||
| B::Annotation{<:AbstractTensorMap}, | ||
| α::Annotation{<:Number}, | ||
| β::Annotation{<:Number}, | ||
| ) where {RT} | ||
| # ΔC′ = ΔC*β + C*Δβ + A*B*Δα + ΔA*B*α + A*ΔB*α | ||
| if !isa(C, Const) | ||
| scale!(C.dval, β.val) | ||
| !isa(β, Const) && add!(C.dval, C.val, β.dval) | ||
| !isa(α, Const) && project_mul!(C.dval, A.val, B.val, α.dval) | ||
| !isa(A, Const) && project_mul!(C.dval, A.dval, B.val, α.val) | ||
| !isa(B, Const) && project_mul!(C.dval, A.val, B.dval, α.val) | ||
| end | ||
| mul!(C.val, A.val, B.val, α.val, β.val) | ||
| if EnzymeRules.needs_primal(config) && EnzymeRules.needs_shadow(config) | ||
| return C | ||
| elseif EnzymeRules.needs_primal(config) | ||
| return C.val | ||
| elseif EnzymeRules.needs_shadow(config) | ||
| return C.dval | ||
| else | ||
| return nothing | ||
| end | ||
| end | ||
|
|
||
| function EnzymeRules.augmented_primal( | ||
| config::EnzymeRules.RevConfigWidth{1}, | ||
| func::Const{typeof(tr)}, | ||
| ::Type{RT}, | ||
| A::Annotation{<:AbstractTensorMap}, | ||
| ) where {RT} | ||
| ret = func.val(A.val) | ||
| primal = EnzymeRules.needs_primal(config) ? ret : nothing | ||
| shadow = EnzymeRules.needs_shadow(config) ? zero(ret) : nothing | ||
| cache = EnzymeRules.overwritten(config)[2] ? copy(A.val) : nothing | ||
| return EnzymeRules.AugmentedReturn(primal, shadow, cache) | ||
| end | ||
| function EnzymeRules.reverse( | ||
| config::EnzymeRules.RevConfigWidth{1}, | ||
| func::Const{typeof(tr)}, | ||
| dret::Active, | ||
| cache, | ||
| A::Annotation{<:AbstractTensorMap}, | ||
| ) | ||
| Aval = something(cache, A.val) | ||
| Δtrace = dret.val | ||
| if !isa(A, Const) | ||
| for (_, b) in blocks(A.dval) | ||
| TensorKit.diagview(b) .+= Δtrace | ||
| end | ||
| end | ||
| return (nothing,) | ||
| end | ||
| function EnzymeRules.reverse( | ||
| config::EnzymeRules.RevConfigWidth{1}, | ||
| func::Const{typeof(tr)}, | ||
| ::Type{<:Const}, | ||
| cache, | ||
| A::Annotation{<:AbstractTensorMap}, | ||
| ) | ||
| return (nothing,) | ||
| end | ||
| function EnzymeRules.forward( | ||
| config::EnzymeRules.FwdConfigWidth{1}, | ||
| ::Type{RT}, | ||
| func::Const{typeof(tr)}, | ||
| A::Annotation{<:AbstractTensorMap}, | ||
| ) where {RT} | ||
| y = EnzymeRules.needs_primal(config) ? tr(A.val) : nothing | ||
| Δy = if EnzymeRules.needs_shadow(config) && !isa(A, Const) | ||
| tr(A.dval) | ||
| elseif EnzymeRules.needs_shadow(config) | ||
| zero(eltype(A.dval)) | ||
| else | ||
| nothing | ||
| end | ||
| if EnzymeRules.needs_primal(config) && EnzymeRules.needs_shadow(config) | ||
| return Duplicated(y, Δy) | ||
| elseif EnzymeRules.needs_primal(config) | ||
| return y | ||
| elseif EnzymeRules.needs_shadow(config) | ||
| return Δy | ||
| else | ||
| return nothing | ||
| end | ||
| end | ||
| function EnzymeRules.augmented_primal( | ||
| config::EnzymeRules.RevConfigWidth{1}, | ||
| func::Const{typeof(norm)}, | ||
| ::Type{RT}, | ||
| A::Annotation{<:AbstractTensorMap}, | ||
| p::Const{<:Real}, | ||
| ) where {RT} | ||
| p.val == 2 || error("currently only implemented for p = 2") | ||
| ret = func.val(A.val, p.val) | ||
| primal = EnzymeRules.needs_primal(config) ? ret : nothing | ||
| shadow = EnzymeRules.needs_shadow(config) ? zero(ret) : nothing | ||
| cacheA = EnzymeRules.overwritten(config)[2] ? copy(A.val) : nothing | ||
| cache = (ret, cacheA) | ||
| return EnzymeRules.AugmentedReturn(primal, shadow, cache) | ||
| end | ||
| function EnzymeRules.reverse( | ||
| config::EnzymeRules.RevConfigWidth{1}, | ||
| func::Const{typeof(norm)}, | ||
| dret::Active, | ||
| cache, | ||
| A::Annotation{<:AbstractTensorMap}, | ||
| p::Const{<:Real}, | ||
| ) | ||
| n, cacheA = cache | ||
| Δn = dret.val | ||
| p.val == 2 || error("currently only implemented for p = 2") | ||
| Aval = something(cacheA, A.val) | ||
| if !isa(A, Const) | ||
| x = (Δn' + Δn) / 2 / hypot(n, eps(one(n))) | ||
| add!(A.dval, A.val, x) | ||
| end | ||
| return (nothing, nothing) | ||
| end | ||
| function EnzymeRules.reverse( | ||
| config::EnzymeRules.RevConfigWidth{1}, | ||
| func::Const{typeof(norm)}, | ||
| ::Type{<:Const}, | ||
| cache, | ||
| A::Annotation{<:AbstractTensorMap}, | ||
| p::Const{<:Real}, | ||
| ) | ||
| return (nothing, nothing) | ||
| end | ||
| function EnzymeRules.forward( | ||
| config::EnzymeRules.FwdConfigWidth{1}, | ||
| func::Const{typeof(norm)}, | ||
| ::Type{RT}, | ||
| A::Annotation{<:AbstractTensorMap}, | ||
| p::Const{<:Real}, | ||
| ) where {RT} | ||
| y = norm(A.val, p.val) | ||
| Δy = if EnzymeRules.needs_shadow(config) && !isa(A, Const) | ||
| real(dot(A.val, A.dval)) * pinv(y) | ||
| elseif EnzymeRules.needs_shadow(config) | ||
| zero(eltype(A.dval)) | ||
| else | ||
| nothing | ||
| end | ||
| if EnzymeRules.needs_primal(config) && EnzymeRules.needs_shadow(config) | ||
| return Duplicated(y, Δy) | ||
| elseif EnzymeRules.needs_primal(config) | ||
| return y | ||
| elseif EnzymeRules.needs_shadow(config) | ||
| return Δy | ||
| else | ||
| return nothing | ||
| end | ||
| end | ||
| function EnzymeRules.augmented_primal( | ||
| config::EnzymeRules.RevConfigWidth{1}, | ||
| func::Const{typeof(inv)}, | ||
| ::Type{RT}, | ||
| A::Annotation{<:AbstractTensorMap}, | ||
| ) where {RT} | ||
| ret = inv(A.val) | ||
| primal = EnzymeRules.needs_primal(config) ? ret : nothing | ||
| shadow = EnzymeRules.needs_shadow(config) ? make_zero(ret) : nothing | ||
| cache = (ret, shadow) | ||
| return EnzymeRules.AugmentedReturn(primal, shadow, cache) | ||
| end | ||
|
|
||
| function EnzymeRules.reverse( | ||
| config::EnzymeRules.RevConfigWidth{1}, | ||
| func::Const{typeof(inv)}, | ||
| ::Type{RT}, | ||
| cache, | ||
| A::Annotation{<:AbstractTensorMap}, | ||
| ) where {RT} | ||
| Ainv, ΔAinv = cache | ||
| !isa(A, Const) && mul!(A.dval, Ainv' * ΔAinv, Ainv', -1, One()) | ||
| return (nothing,) | ||
| end | ||
|
|
||
| function EnzymeRules.forward( | ||
| config::EnzymeRules.FwdConfigWidth{1}, | ||
| func::Const{typeof(inv)}, | ||
| ::Type{RT}, | ||
| A::Annotation{<:AbstractTensorMap}, | ||
| ) where {RT} | ||
| Ainv = inv(A.val) | ||
| ΔAinv = !isa(A, Const) ? scale!(Ainv * A.dval * Ainv, -1) : make_zero(Ainv) | ||
| if EnzymeRules.needs_primal(config) && EnzymeRules.needs_shadow(config) | ||
| return Duplicated(Ainv, ΔAinv) | ||
| elseif EnzymeRules.needs_primal(config) | ||
| return Ainv | ||
| elseif EnzymeRules.needs_shadow(config) | ||
| return ΔAinv | ||
| else | ||
| return nothing | ||
| end | ||
| end | ||
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