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GatedLinearUnit.cpp
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GatedLinearUnit.cpp
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#define TORCH_ASSERT_ONLY_METHOD_OPERATORS
#include <ATen/core/Tensor.h>
#include <ATen/TensorIterator.h>
#include <ATen/TensorOperators.h>
#include <ATen/native/Activation.h>
#ifndef AT_PER_OPERATOR_HEADERS
#include <ATen/Functions.h>
#include <ATen/NativeFunctions.h>
#else
#include <ATen/ops/cat.h>
#include <ATen/ops/empty.h>
#include <ATen/ops/glu_backward_native.h>
#include <ATen/ops/glu_backward_jvp_native.h>
#include <ATen/ops/glu_jvp_native.h>
#include <ATen/ops/glu_native.h>
#include <ATen/ops/sigmoid.h>
#endif
namespace at::meta {
TORCH_META_FUNC(glu) (
const Tensor& self, int64_t dim
) {
// this can't pass anyway because a 0-dimensional tensor has "size" 1, which
// can't be evenly halved, but give a nicer error message here.
TORCH_CHECK(self.dim() > 0, "glu does not support 0-dimensional tensors");
auto wrap_dim = maybe_wrap_dim(dim, self.dim());
const int64_t nIn = self.size(wrap_dim);
TORCH_CHECK(nIn % 2 == 0, "Halving dimension must be even, but dimension ",
wrap_dim, " is size ", nIn);
// size output to half of input
const int64_t selfSize = nIn / 2;
Tensor firstHalf = self.narrow(wrap_dim, 0, selfSize);
Tensor secondHalf = self.narrow(wrap_dim, selfSize, selfSize);
build_borrowing_binary_op(maybe_get_output(), firstHalf, secondHalf);
}
} // namespace at::meta
namespace at::native {
// NOLINTNEXTLINE(cppcoreguidelines-avoid-non-const-global-variables)
DEFINE_DISPATCH(glu_stub);
// NOLINTNEXTLINE(cppcoreguidelines-avoid-non-const-global-variables)
DEFINE_DISPATCH(glu_backward_stub);
// NOLINTNEXTLINE(cppcoreguidelines-avoid-non-const-global-variables)
DEFINE_DISPATCH(glu_jvp_stub);
TORCH_IMPL_FUNC(glu_out) (const Tensor& self, int64_t dim, const Tensor& out) {
glu_stub(device_type(), *this);
}
Tensor& glu_backward_cpu_out(const Tensor& grad_output, const Tensor& input,
int64_t dim, Tensor& grad_input) {
TORCH_CHECK(input.dim() > 0, "glu does not support 0-dimensional tensors");
auto wrap_dim = maybe_wrap_dim(dim, input.dim());
const int64_t nIn = input.size(wrap_dim);
TORCH_CHECK(nIn % 2 == 0, "Halving dimension must be even, but dimension ",
wrap_dim, " is size ", nIn);
grad_input.resize_as_(input);
const int64_t inputSize = nIn / 2;
// half tensor
Tensor firstHalf = input.narrow(wrap_dim, 0, inputSize);
Tensor secondHalf = input.narrow(wrap_dim, inputSize, inputSize);
Tensor gradInputfirstHalf = grad_input.narrow(wrap_dim, 0, inputSize);
Tensor gradInputsecondHalf = grad_input.narrow(wrap_dim, inputSize, inputSize);
at::sigmoid_out(gradInputfirstHalf, secondHalf);
// for second gradinput half, can get a better performance by fusion
auto iter = at::TensorIteratorConfig()
.add_output(gradInputsecondHalf)
.add_input(gradInputfirstHalf)
.add_input(firstHalf)
.add_input(grad_output)
.build();
glu_backward_stub(iter.device_type(), iter);
gradInputfirstHalf.mul_(grad_output);
return grad_input;
}
Tensor glu_backward_cpu(const Tensor& grad_output, const Tensor& input, int64_t dim) {
auto grad_input = at::empty({0}, input.options());
return glu_backward_cpu_out(grad_output, input, dim, grad_input);
}
Tensor glu_jvp(
const Tensor& glu,
const Tensor& x,
const Tensor& dx,
int64_t dim
) {
dim = maybe_wrap_dim(dim, x.dim());
const auto glu_size = glu.size(dim);
const auto b = x.narrow(dim, glu_size, glu_size);
const auto da = dx.narrow(dim, 0, glu_size);
const auto db = dx.narrow(dim, glu_size, glu_size);
auto dglu = at::empty_like(glu);
auto iter = at::TensorIteratorConfig()
.add_output(dglu)
.add_input(glu)
.add_input(b)
.add_input(da)
.add_input(db)
.build();
glu_jvp_stub(iter.device_type(), iter);
return dglu;
}
Tensor glu_backward_jvp(
const Tensor& grad_x,
const Tensor& grad_glu,
const Tensor& x,
const Tensor& dgrad_glu,
const Tensor& dx,
int64_t dim
) {
dim = maybe_wrap_dim(dim, x.dim());
const auto glu_size = grad_glu.size(dim);
const auto a = x.narrow(dim, 0, glu_size);
const auto b = x.narrow(dim, glu_size, glu_size);
const auto da = dx.narrow(dim, 0, glu_size);
const auto db = dx.narrow(dim, glu_size, glu_size);
// grad_x_a = grad_glu * sigmoid(b)
const auto grad_x_a = grad_x.narrow(dim, 0, glu_size);
// grad_x_b = grad_x_a * a * (1 - sigmoid(b))
const auto grad_x_b = grad_x.narrow(dim, glu_size, glu_size);
const auto sig_b = at::sigmoid(b);
// TODO: use glu from forward.
// TODO: fuse kernels.
const auto glu = a * sig_b;
const auto db_neg_sig_b = db - db * sig_b;
// dgrad_x_a = d(grad_glu * sigmoid(b))
// = dgrad_glu * sigmoid(b) + grad_glu * sigmoid(b) * (1 - sigmoid(b)) * db
// = dgrad_glu * sig_b + grad_x_a * (db - db * sig_b)
// = dgrad_glu * sig_b + grad_x_a * db_neg_sig_b
const auto dgrad_x_a = dgrad_glu * sig_b + grad_x_a * db_neg_sig_b;
// dgrad_x_b = d(grad_glu * sigmoid(b) * a * (1 - sigmoid(b))
// = d(grad_glu * sigmoid(b)) * a * (1 - sigmoid(b))
// + grad_glu * sigmoid(b) * da * (1 - sigmoid(b))
// - grad_glu * sigmoid(b) * a * sigmoid(b) * (1 - sigmoid(b)) * db
// = dgrad_x_a * a * (1 - sigmoid(b))
// + (grad_glu * sigmoid(b)) * (da * (1 - sigmoid(b)) - a * sigmoid(b) * (1 - sigmoid(b)) * db)
// = dgrad_x_a * (a - glu) + grad_x_a * (da - da * sig_b - glu * db_neg_sig_b
const auto dgrad_x_b = dgrad_x_a * (a - glu) + grad_x_a * (da - da * sig_b - glu * db_neg_sig_b);
return at::cat({dgrad_x_a, dgrad_x_b}, dim);
}
} // namespace at::native