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FunctionsManual.cpp
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FunctionsManual.cpp
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#include <torch/csrc/autograd/FunctionsManual.h>
#include <torch/csrc/autograd/functions/basic_ops.h>
#include <torch/csrc/autograd/functions/utils.h>
#include <torch/csrc/autograd/variable.h>
#include <ATen/ATen.h>
#include <ATen/AccumulateType.h>
#include <ATen/Dispatch.h>
#include <ATen/ExpandUtils.h>
#include <ATen/LegacyBatchedTensorImpl.h>
#include <ATen/ScalarOps.h>
#include <ATen/SparseCsrTensorUtils.h>
#include <ATen/TensorSubclassLikeUtils.h>
#include <ATen/Utils.h>
#include <ATen/WrapDimUtils.h>
#include <ATen/WrapDimUtilsMulti.h>
#include <ATen/core/Reduction.h>
#include <ATen/core/grad_mode.h>
#include <ATen/native/Activation.h>
#include <ATen/native/IndexingUtils.h>
#include <ATen/native/LinearAlgebraUtils.h>
#include <ATen/native/SparseTensorUtils.h>
#include <ATen/native/nested/NestedTensorUtils.h>
#include <c10/core/TensorOptions.h>
#include <c10/util/OptionalArrayRef.h>
#include <c10/util/SmallBuffer.h>
#include <c10/util/accumulate.h>
#include <c10/util/irange.h>
#include <algorithm>
#include <ciso646>
#include <functional>
#include <numeric>
#include <utility>
// Helper functions for autogenerated code
// These used to be inlined into the codegened Functions.cpp
namespace torch {
namespace autograd {
namespace generated {
namespace details {
using at::areAnyTensorSubclassLike;
using at::IntArrayRef;
using at::OptionalIntArrayRef;
using at::Scalar;
using at::Tensor;
using at::TensorList;
const char* kCudnnDoubleBackwardMsg =
"Double backwards is not supported for CuDNN RNNs due to limitations in the CuDNN API. To run double backwards, please disable the CuDNN backend temporarily while running the forward pass of your RNN. For example: \nwith torch.backends.cudnn.flags(enabled=False):\n output = model(inputs)";
Tensor apply_loss_reduction(const Tensor& unreduced, int64_t reduction) {
if (reduction == at::Reduction::Mean) {
return unreduced.mean();
} else if (reduction == at::Reduction::Sum) {
return unreduced.sum();
}
return unreduced;
}
static bool isDefined(const std::optional<Tensor>& t) {
return t.has_value() && t->defined();
}
Tensor toNonOptTensor(const std::optional<Tensor>& t) {
return t.has_value() ? *t : Tensor();
}
Tensor toNonOptFwGrad(const std::optional<Tensor>& t) {
return (t.has_value() && t->defined()) ? t->_fw_grad(/*level */ 0) : Tensor();
}
Tensor toNonOptPrimal(const std::optional<Tensor>& t) {
if (t.has_value() && t->defined()) {
if (t->unsafeGetTensorImpl()->is_wrapped_number()) {
return *t;
}
return t->_fw_primal(/* level */ 0);
}
return Tensor();
}
void copy_range(variable_list& out, IndexRange range, const Tensor& t) {
TORCH_CHECK(range.second <= out.size());
TORCH_CHECK(
range.second - range.first == 1, "inconsistent range for Tensor output");
out[range.first] = t;
}
void copy_range(variable_list& out, IndexRange range, at::ArrayRef<Tensor> t) {
TORCH_CHECK(range.second <= out.size());
TORCH_CHECK(
range.second - range.first == t.size(),
"inconsistent range for TensorList output");
std::copy(
t.begin(), t.end(), out.begin() + static_cast<int64_t>(range.first));
}
Tensor copysign_tensor_self_backward(
const Tensor& grad,
const Tensor& self,
const Tensor& result) {
auto ratio = result / self;
ratio.masked_fill_(self == 0, 0);
return grad * ratio;
}
template <typename T>
T not_implemented_base(const char* name, const char* reason) {
std::string msg =
c10::str("the derivative for '", name, "' is not implemented.");
if (reason[0] != '\0') {
msg = c10::str(msg, " ", reason);
};
TORCH_CHECK_NOT_IMPLEMENTED(false, msg);
}
Tensor not_implemented(const char* name, const char* reason) {
return not_implemented_base<Tensor>(name, reason);
}
std::vector<Tensor> not_implemented_list(const char* name, const char* reason) {
return not_implemented_base<std::vector<Tensor>>(name, reason);
}
Tensor maybe_multiply(const Tensor& t, const Scalar& s) {
bool is_one = false;
if (s.isFloatingPoint()) {
is_one = s.toSymFloat() == 1;
} else if (s.isIntegral(true)) {
is_one = s.toSymInt() == 1;
}
if (is_one) {
return t;
} else {
return t * s;
}
}
int64_t _safe_size(IntArrayRef sizes, IntArrayRef dim) {
int64_t size = 1;
if (sizes.empty()) {
return 1;
}
for (auto d : dim) {
d = at::maybe_wrap_dim(d, static_cast<int64_t>(sizes.size()));
size *= sizes[d];
}
return size;
}
static c10::SymInt _safe_size(c10::SymIntArrayRef sizes, c10::IntArrayRef dim) {
c10::SymInt size = 1;
if (sizes.empty()) {
return 1;
}
for (auto d : dim) {
d = at::maybe_wrap_dim(d, static_cast<int64_t>(sizes.size()));
size *= sizes[d];
}
return size;
}
Tensor handle_r_to_c(ScalarType self_st, Tensor gradient_result) {
if (!at::isComplexType(self_st) && gradient_result.is_complex()) {
// R -> C
return at::real(gradient_result);
}
return gradient_result;
}
static Tensor handle_r_to_c(const Tensor& self, Tensor gradient_result) {
if (!self.is_complex() && gradient_result.is_complex()) {
// R -> C
return at::real(gradient_result);
}
return gradient_result;
}
Tensor restore_reduced_dims(
const Tensor& output,
IntArrayRef dims,
bool keepdim) {
if (keepdim) {
return output;
}
auto total_dims = output.dim() + dims.size();
std::vector<c10::SymInt> target_shape(total_dims, 0);
for (int64_t i : dims) {
if (i < 0) {
i = static_cast<int64_t>(total_dims) + i;
}
target_shape[i] = 1;
}
int64_t j = 0;
for (const c10::SymInt& i : output.sym_sizes()) {
while (target_shape[j] > 0)
j++;
target_shape[j++] = i;
}
return output.reshape_symint(target_shape);
}
Tensor scale_grad_by_count(
const Tensor& grad,
const Tensor& mask,
IntArrayRef dims) {
return (grad / mask.sum(dims, true)) * mask;
}
Tensor amaxamin_jvp(
const Tensor& x,
const Tensor& dx,
const Tensor& result,
IntArrayRef dim,
bool keepdim) {
auto mask = x == restore_reduced_dims(result, dim, keepdim);
return at::where(mask, dx, 0.).sum(dim, keepdim) / mask.sum(dim, keepdim);
}
std::tuple<Tensor, Tensor> _euclidean_dist_backward(
const Tensor& grad,
const Tensor& x1,
const Tensor& x2,
const Tensor& res) {
if (!grad.defined()) {
return std::tuple<Tensor, Tensor>(Tensor(), Tensor());
}
// handle case at 0 where we return a subgradient containing 0
Tensor ratio = grad / res;
ratio.masked_fill_(res == 0, 0);
return std::tuple<Tensor, Tensor>{
x1 * ratio.sum(-1, true) - ratio.matmul(x2),
x2 * ratio.sum(-2, false).unsqueeze(-1) - ratio.mT().matmul(x1)};
}
Tensor norm_backward(
const Tensor& grad,
const Tensor& self,
const std::optional<Scalar>& p_,
const Tensor& norm) {
return norm_backward(grad, self, p_, norm, {}, true);
}
Tensor norm_backward(
Tensor grad,
const Tensor& self,
const std::optional<Scalar>& p_,
Tensor norm,
IntArrayRef dim,
bool keepdim) {
// NB: We mask fill the NaNs in the output to be zero but still do float
// division
// by zero, which ASAN complains about. One way to appease ASAN is to fill
// the problematic values with something arbitrary before the division,
// but we decide not to due to the perf hit. Instead we just silence ASAN
// where necessary
size_t ndim = self.dim();
double p = p_.value_or(2.0).toDouble();
Tensor self_scaled;
Tensor scale_v;
if (!keepdim && self.dim() != 0) {
grad = unsqueeze_multiple(grad, dim, ndim);
norm = unsqueeze_multiple(norm, dim, ndim);
}
if (p == 0.0) {
return {};
} else if (p == 1.0) {
return self.sgn() * grad;
} else if (p == 2.0) {
return grad * (self / norm).masked_fill_(norm == 0, 0);
} else if (std::isinf(p)) {
// Derivative of amax(abs(self), dim, keepdim) but respecting nans
// We create a mask of `argmax`: it's argmax if self.abs() == norm or it's
// NaN
auto self_abs = self.abs();
auto mask = self_abs.eq(norm).logical_or(self_abs.isnan());
return self.sgn() * ((grad / mask.sum(dim, true)) * mask);
} else if (p < 1.0) {
self_scaled =
self.sgn() * self.abs().pow_(p - 1).masked_fill_(self == 0, 0);
return self_scaled * grad * norm.pow(1 - p);
} else if (p < 2.0) {
self_scaled = self.sgn() * self.abs().pow_(p - 1);
scale_v = grad / norm.pow(p - 1);
scale_v.masked_fill_(norm == 0, 0);
return self_scaled * scale_v;
} else {
self_scaled = self * self.abs().pow_(p - 2);
scale_v = grad / norm.pow(p - 1);
scale_v.masked_fill_(norm == 0, 0);
return self_scaled * scale_v;
}
}
// See norm_backward above for a note on ignoring the sanitizer
Tensor norm_jvp(
const Tensor& self_p,
const Tensor& self_t,
const std::optional<Scalar>& p_,
Tensor norm,
IntArrayRef dim,
bool keepdim) {
// NB: currently norm_jvp is also reused for dist's jvp (which haas two
// differentiable inputs)
// but self_t still cannot be a ZT because that would require both self_t
// and other_t to be ZT
TORCH_INTERNAL_ASSERT(!self_t._is_zerotensor());
size_t ndim = self_p.dim(); // composite compliance?
double p = p_.value_or(2.0).toDouble();
if (p == 0.0) {
return at::zeros_like(norm);
} else if (p == 1.0) {
auto result = self_p.sgn();
result = areAnyTensorSubclassLike({self_t}) ? result.mul(self_t.conj())
: result.mul_(self_t.conj());
result = at::real(result);
return result.sum(dim, keepdim);
} else if (p == 2.0) {
auto result = self_p.mul(self_t.conj());
result = at::real(result);
result = result.sum(dim, keepdim);
return result.div_(norm).masked_fill_(norm == 0, 0);
} else if (std::isinf(p)) {
if (!keepdim && self_p.dim() != 0) {
norm = unsqueeze_multiple(norm, dim, ndim);
}
const auto self_isnan = self_p.isnan();
const auto norm_isnan = norm.isnan();
const auto& self_and_norm_isnan = areAnyTensorSubclassLike({norm})
? self_isnan.logical_and(norm_isnan)
: self_isnan.logical_and_(norm_isnan);
const auto is_eq_max =
(self_p.abs() == norm).logical_or_(self_and_norm_isnan).type_as(norm);
auto nb_max = is_eq_max.count_nonzero(dim);
if (self_p.dim() != 0) {
nb_max = unsqueeze_multiple(nb_max, dim, ndim);
}
return (at::real(self_p.sgn() * self_t.conj()) * is_eq_max / nb_max)
.sum(dim, keepdim);
} else if (p < 1.0) {
auto sumpow_t = (self_p.abs().pow_(p - 1).masked_fill_(self_p == 0, 0) *
at::real(self_p.sgn() * self_t.conj()))
.sum(dim, keepdim);
return sumpow_t * norm.pow(1 - p);
} else if (p < 2.0) {
auto sumpow_t =
(self_p.abs().pow_(p - 1) * at::real(self_p.sgn() * self_t.conj()))
.sum(dim, keepdim);
auto out = sumpow_t / norm.pow(p - 1);
return out.masked_fill_(norm == 0, 0);
} else {
auto sumpow_t =
(self_p.abs().pow_(p - 2) * at::real(self_p * self_t.conj()))
.sum(dim, keepdim);
auto out = sumpow_t / norm.pow(p - 1);
return out.masked_fill_(norm == 0, 0);
}
}
Tensor norm_jvp(
const Tensor& self_p,
const Tensor& self_t,
const std::optional<Scalar>& p_,
Tensor norm) {
return norm_jvp(self_p, self_t, p_, std::move(norm), {}, true);
}
Tensor _nested_from_padded_backward(
const Tensor& grad,
const Tensor& input,
bool do_transform_0213) {
if (do_transform_0213) {
auto new_sizes = {
input.size(0), input.size(2), (input.size(1) * input.size(3))};
auto out = grad.to_padded_tensor(0, new_sizes);
auto expand_last_dim_size = {
input.size(0), input.size(2), input.size(1), input.size(3)};
return out.view(expand_last_dim_size).permute({0, 2, 1, 3});
}
return grad.to_padded_tensor(0, input.sizes());
}
std::tuple<Tensor, Tensor, Tensor> linear_double_backward(
const variable_list& grads,
const Tensor& self,
const Tensor& grad_output,
const Tensor& weight) {
if (!grad_output.defined()) {
return std::make_tuple(Tensor(), Tensor(), Tensor());
}
Tensor grad_self, grad_grad_output, grad_weight;
if (grads[1].defined()) {
grad_self =
(grad_output.dim() == 1 ? grad_output.unsqueeze(0) : grad_output)
.matmul(grads[1]);
if (grad_output.dim() == 1) {
grad_self = grad_self.squeeze(0);
}
}
if (grads[0].defined()) {
grad_weight =
(grad_output.dim() == 1 ? grad_output.unsqueeze(1) : grad_output.mT())
.matmul(grads[0].dim() == 1 ? grads[0].unsqueeze(0) : grads[0]);
}
if (grads[0].defined() || grads[1].defined() || grads[2].defined()) {
grad_grad_output = at::zeros_like(grad_output);
if (grad_output.dim() == 1) {
grad_grad_output = grad_grad_output.unsqueeze(0);
}
}
if (grads[0].defined()) {
grad_grad_output = grad_grad_output +
(grads[0].dim() == 1 ? grads[0].unsqueeze(0) : grads[0])
.matmul(weight.mT());
}
if (grads[1].defined()) {
grad_grad_output = grad_grad_output +
(self.dim() == 1 ? self.unsqueeze(0) : self).matmul(grads[1].mT());
}
if (grads[2].defined()) {
grad_grad_output = grad_grad_output + grads[2];
}
if (grad_grad_output.defined() && grad_output.dim() == 1) {
grad_grad_output = grad_grad_output.squeeze(0);
}
return std::make_tuple(
std::move(grad_self),
std::move(grad_grad_output),
std::move(grad_weight));
}
Tensor linalg_vector_norm_jvp(
const Tensor& self_p,
const Tensor& self_t,
const Scalar& scalar_ord,
Tensor norm,
const at::OptionalIntArrayRef& opt_dim,
bool keepdim) {
// No need to handle the dtype arg as it's handled via broadcasting in the
// function
auto dim = opt_dim.value_or(IntArrayRef({}));
return norm_jvp(self_p, self_t, scalar_ord, std::move(norm), dim, keepdim);
}
Tensor linalg_vector_norm_backward(
Tensor grad,
const Tensor& self,
const Scalar& scalar_ord,
Tensor norm,
const at::OptionalIntArrayRef& opt_dim,
bool keepdim) {
// No need to handle the dtype arg as it's handled via broadcasting in the
// function
auto dim = opt_dim.value_or(IntArrayRef({}));
return norm_backward(
std::move(grad), self, scalar_ord, std::move(norm), dim, keepdim);
}
Tensor pow_backward(Tensor grad, const Tensor& self, const Scalar& exponent) {
if (exponent.equal(0.0)) {
return at::zeros_like(self, LEGACY_CONTIGUOUS_MEMORY_FORMAT);
} else {
auto grad_lambda = [&](auto exp) {
return grad * (exp * self.pow(exp - 1)).conj();
};
Tensor out = (exponent.isComplex())
? grad_lambda(exponent.toComplexDouble())
: grad_lambda(exponent.toDouble());
return handle_r_to_c(self, std::move(out));
}
}
Tensor pow_backward_self(
const Tensor& grad,
const Tensor& self,
const Tensor& exponent) {
auto out = at::where(
exponent == 0.0,
at::zeros({}, grad.options()),
grad * (exponent * self.pow(exponent - 1)).conj());
return handle_r_to_c(self, std::move(out));
}
// Caveats:
// We define d(a^b)/db at a = 0 and b < 0 to be -inf. This is due to
// d(a^b)/db -> -inf for a fixed b as a -> +0
// Currently, tensorflow defines d(a^b)/db = nan for a = 0 and b < 0.
//
// We define d(a^b)/db = 0 for a = 0 and b = 0 by continuity as
// d(a^b)/db = 0 for a > 0 and b -> +0.
// Currently, tensorflow agrees with us.
Tensor pow_backward_exponent(
const Tensor& grad,
const Tensor& self,
const Tensor& exponent,
const Tensor& result) {
Tensor cond;
if (exponent.is_complex()) {
auto is_real_exp =
at::logical_and(at::imag(exponent) == 0, at::real(exponent) >= 0);
cond = at::logical_and(self == 0, is_real_exp);
} else {
cond = at::logical_and(self == 0, exponent >= 0);
}
auto promoted_dtype = at::result_type(self, exponent);
// `.to()` is no-op if dtype is same.
auto self_ = self.to(promoted_dtype);
auto out =
grad *
at::where(
cond, at::zeros({}, grad.options()), (result * self_.log()).conj());
return handle_r_to_c(exponent, std::move(out));
}
Tensor pow_backward_exponent(
const Tensor& grad,
const Scalar& base,
const Tensor& exponent,
const Tensor& result) {
auto grad_lambda = [](const Tensor& a, const Scalar& b) {
return (a * b.log()).conj();
};
auto base_ = exponent.is_complex() && !base.isComplex()
? base.toComplexDouble()
: base;
if (base.equal(0.0)) {
auto cond = [](auto exp) {
if (exp.is_complex()) {
return at::logical_and(at::imag(exp) == 0, at::real(exp) >= 0);
} else {
return exp >= 0;
}
};
auto out = grad *
at::where(cond(exponent),
at::zeros({}, grad.options()),
grad_lambda(result, base_));
return handle_r_to_c(exponent, std::move(out));
} else {
auto out = grad * grad_lambda(result, base_);
return handle_r_to_c(exponent, std::move(out));
}
}
Tensor angle_backward(const Tensor& grad, const Tensor& self) {
if (self.is_complex()) {
return at::where(
self == 0.0,
at::zeros({}, self.options()),
grad * self / self.abs().pow(2) *
Scalar(c10::complex<double>{0.0, 1.0}));
} else {
return at::zeros_like(self, at::MemoryFormat::Preserve);
}
}
Tensor mvlgamma_backward(const Tensor& grad, const Tensor& self, int64_t p) {
Tensor args = at::arange(
-static_cast<double>(p) / 2. + 0.5,
0.5,
0.5,
// use strided here regardless of self's layout; useful for e.g. NJT
self.options().layout(c10::kStrided));
args = args.add(self.unsqueeze(-1));
return grad * args.digamma_().sum(-1);
}
Tensor sgn_backward(const Tensor& x, const Tensor& gx, const Tensor& sgn) {
if (x.is_complex()) {
auto abs = x.abs();
return ((gx - (sgn * sgn) * gx.conj()) / (2. * abs))
.masked_fill_(abs == 0., 0.);
} else {
return at::_efficientzerotensor(sgn.sizes(), sgn.options());
}
}
Tensor masked_fill_backward(const Tensor& grad, const Tensor& mask) {
// masked_select does not work well with functorch, as its shape is
// data-dependent
return areAnyTensorSubclassLike({grad, mask})
? at::where(mask, grad, 0).sum()
: grad.masked_select(mask).sum();
}
template <typename T>
Tensor mul_tensor_backward(const Tensor& grad, T other, ScalarType self_st) {
auto out = grad * other.conj();
return handle_r_to_c(self_st, std::move(out));
}
template Tensor mul_tensor_backward(const Tensor&, Tensor, ScalarType);
template Tensor mul_tensor_backward(const Tensor&, Scalar, ScalarType);
template <typename T>
Tensor div_tensor_self_backward(
const Tensor& grad,
T other,
ScalarType self_st,
const std::optional<c10::string_view>& rounding_mode) {
if (rounding_mode.has_value()) {
return at::zeros_like(grad, grad.options().dtype(self_st));
}
auto result = grad / other.conj();
return handle_r_to_c(self_st, std::move(result));
}
template Tensor div_tensor_self_backward(
const Tensor&,
Tensor,
ScalarType,
const std::optional<c10::string_view>&);
template Tensor div_tensor_self_backward(
const Tensor&,
Scalar,
ScalarType,
const std::optional<c10::string_view>&);
template <typename T>
Tensor div_tensor_self_backward(
const Tensor& grad,
T other,
ScalarType self_st) {
return div_tensor_self_backward(
grad, std::move(other), self_st, std::nullopt);
}
template Tensor div_tensor_self_backward(const Tensor&, Tensor, ScalarType);
template Tensor div_tensor_self_backward(const Tensor&, Scalar, ScalarType);
Tensor div_tensor_other_backward(
const Tensor& grad,
const Tensor& self,
const Tensor& other,
const std::optional<c10::string_view>& rounding_mode) {
if (rounding_mode.has_value()) {
return at::zeros_like(grad, grad.options().dtype(other.scalar_type()));
}
auto result = -grad * ((self / other) / other).conj();
return handle_r_to_c(other, std::move(result));
}
Tensor div_tensor_other_backward(
const Tensor& grad,
const Tensor& self,
const Tensor& other) {
return div_tensor_other_backward(grad, self, other, std::nullopt);
}
Tensor permute_backwards(const Tensor& grad, IntArrayRef fwd_dims) {
// invert the permutation
auto ndims = fwd_dims.size();
std::vector<int64_t> dims(ndims);
for (const auto i : c10::irange(ndims)) {
dims[at::maybe_wrap_dim(fwd_dims[i], static_cast<int64_t>(ndims))] =
static_cast<int64_t>(i);
}
return grad.permute(dims);
}
Tensor rad2deg_backward(const Tensor& grad) {
constexpr double M_180_PI =
57.295779513082320876798154814105170332405472466564;
return at::mul(grad, Scalar(M_180_PI));
}
Tensor deg2rad_backward(const Tensor& grad) {
constexpr double M_PI_180 =
0.017453292519943295769236907684886127134428718885417;
return at::mul(grad, Scalar(M_PI_180));
}
Tensor unsqueeze_multiple(
const Tensor& t,
OptionalIntArrayRef opt_dim,
size_t n_dims) {
if (opt_dim.has_value()) {
IntArrayRef dim = opt_dim.value();
auto dim_size = dim.size();
// Optimisation for two common cases
if (dim_size == 0) {
return t;
} else if (dim_size == 1) {
return t.unsqueeze(dim[0]);
}
}
auto dims_to_unsqueeze = at::dim_list_to_bitset(opt_dim, n_dims);
Tensor res = t;
for (const auto i : c10::irange(n_dims)) {
if (dims_to_unsqueeze[i]) {
res = res.unsqueeze(static_cast<int64_t>(i));
}
}
return res;
}
Tensor sum_backward(
const Tensor& grad,
c10::SymIntArrayRef sizes,
OptionalIntArrayRef opt_dims,
bool keepdim) {
if (!keepdim && !sizes.empty()) {
if (opt_dims.has_value() && !opt_dims.value().empty()) {
return unsqueeze_multiple(grad, opt_dims, sizes.size())
.expand_symint(sizes);
}
}
return grad.expand_symint(sizes);
}
Tensor sum_backward(
const Tensor& grad,
c10::SymIntArrayRef sizes,
c10::IntArrayRef dims,
bool keepdim) {
if (!keepdim && !sizes.empty() && !dims.empty()) {
// we are only using `keepdim=true` path for SymInts for now
TORCH_CHECK_NOT_IMPLEMENTED(
false,
"Only the keepdim=true path is implemented to support symints in autograd");
} else {
return grad.expand_symint(sizes);
}
}
Tensor nansum_backward(
const Tensor& grad,
const Tensor& self,
at::OptionalIntArrayRef dims,
bool keepdim) {
return sum_backward(grad, self.sym_sizes(), dims, keepdim) *
self.isnan().logical_not();
}
Tensor mean_backward(
const Tensor& grad,
c10::SymIntArrayRef shape,
OptionalIntArrayRef opt_dim,
c10::SymInt numel,
bool keepdim) {
bool is_all_reduce = !opt_dim.has_value() || opt_dim.value().empty();
auto n =
is_all_reduce ? std::move(numel) : _safe_size(shape, opt_dim.value());
return sum_backward(grad, shape, opt_dim, keepdim) / std::move(n);
}
std::vector<c10::SymInt> reverse_list_symint(const c10::SymIntArrayRef list) {
auto result = std::vector<c10::SymInt>();
result.reserve(list.size());
for (auto iter = list.rbegin(); iter != list.rend(); iter++) {
result.push_back(*iter);
}
return result;
}
std::vector<int64_t> reverse_list(const IntArrayRef list) {
auto result = std::vector<int64_t>();
result.reserve(list.size());
for (auto iter = list.rbegin(); iter != list.rend(); iter++) {
result.push_back(*iter);
}
return result;
}
Tensor prod_safe_zeros_backward(
const Tensor& grad,
const Tensor& inp,
int64_t dim) {
if (inp.sym_numel() == 0) {
// When input has a zero sized dimension (empty tensor),
// we don't need to actually compute the grads.
// So we just reshape `grad` as `input`.
return grad.expand_as(inp);
}
if (inp.sym_size(dim) == 1) {
return grad;
}
auto ones_size = inp.sym_sizes().vec();
ones_size[dim] = 1;
Tensor ones = at::ones_symint(ones_size, grad.options());
Tensor exclusive_normal_nocp =
at::cat({ones, inp.narrow_symint(dim, 0, inp.sym_size(dim) - 1)}, dim);
Tensor exclusive_normal = exclusive_normal_nocp.cumprod(dim);
Tensor narrow_reverse =
inp.narrow_symint(dim, 1, inp.sym_size(dim) - 1).flip(dim);
Tensor exclusive_reverse_nocp =
at::cat({std::move(ones), std::move(narrow_reverse)}, dim);
Tensor exclusive_reverse = exclusive_reverse_nocp.cumprod(dim).flip(dim);
return grad * (exclusive_normal * exclusive_reverse).conj();
}
// note that the gradient for prod is equivalent to:
// cumprod(exclusive, normal) * cumprod(exclusive, reverse), e.g.:
// input: [ a, b, c]
// cumprod(exclusive, normal): [1 , a, a * b]
// cumprod(exclusive, reverse): [b * c, c, 1]
// product: [b * c, a * c, a * b]
// and this is safe under input with 0s.
Tensor prod_backward(
const Tensor& grad,
const Tensor& input,
const Tensor& result) {
if (input.dim() == 0) {
return grad;
}
if (input.is_meta() || isTensorSubclassLike(input)) {
// For Composite Compliance, always take the safer (and slower) path
return prod_safe_zeros_backward(grad, input.contiguous().view(-1), 0)
.view_as(input);
}
Tensor zero_idx = (input == 0).nonzero();
if (zero_idx.sym_numel() == 0) {
return grad * (result / input).conj();
} else if (!at::GradMode::is_enabled() && zero_idx.sym_size(0) > 1) {
return at::zeros_like(input, LEGACY_CONTIGUOUS_MEMORY_FORMAT);
} else {
return prod_safe_zeros_backward(grad, input.contiguous().view(-1), 0)
.view_as(input);
}
}
Tensor prod_backward(
Tensor grad,
const Tensor& input,
Tensor result,
int64_t dim,
bool keepdim) {
if (input.dim() == 0) {
return grad;
}
dim = at::maybe_wrap_dim(dim, static_cast<int64_t>(input.sym_sizes().size()));
if (!keepdim) {
// `prod` reduces the dimension at `dim`,
// so, unsqueeze `grad` and `result` at dim.
grad = grad.unsqueeze(dim);
result = result.unsqueeze(dim);
}
if (input.is_meta() || isTensorSubclassLike(input)) {
// For Composite Compliance, always take the safer (and slower) path
return prod_safe_zeros_backward(grad, input, dim);
}
Tensor zero_mask = (input == 0);
Tensor slice_zero_count = zero_mask.sum(dim, true);
int64_t total_zeros = slice_zero_count.sum().item<int64_t>();
if (total_zeros == 0) {
return grad * (result / input).conj();
} else {
return prod_safe_zeros_backward(grad, input, dim);
}
}
template <typename solve_f>
static Tensor generic_solve_jvp(
solve_f solve,
const Tensor& X,
const Tensor& A,
const Tensor& dA,
const Tensor& dB) {
auto is_vector_case = at::native::linalg_solve_is_vector_rhs(dA, dB);
auto dA_contrib =
is_vector_case ? dA.matmul(X.unsqueeze(-1)).squeeze(-1) : dA.matmul(X);
// In general,
// dX = solve(A, dB - dA_contrib), but this behavior is different for
// lu_solve. For refer to lu_solve_jvp for more details on this.
return solve(A, dB, dA_contrib);
}
Tensor cumsum_backward(const Tensor& grad, int64_t dim) {
// Trivial case
if (grad.sym_numel() <= 1 || grad.sym_size(dim) == 1) {
return grad;
}
return grad.flip(dim).cumsum(dim).flip(dim);
}
Tensor logsumexp_backward(
Tensor grad,
const Tensor& self,
Tensor result,
IntArrayRef dim,
bool keepdim) {
if (!keepdim && self.dim() != 0) {
grad = unsqueeze_multiple(grad, dim, self.sym_sizes().size());
result = unsqueeze_multiple(result, dim, self.sym_sizes().size());
}
return grad * (self - result).exp();
}
Tensor logcumsumexp_backward(
Tensor grad,
const Tensor& self,
Tensor result,
int64_t dim) {
if (grad.dim() == 0 || grad.sym_numel() == 0) {
return grad;
}
// Reference: https://github.com/tensorflow/tensorflow/blob/
// 2a5910906a0e0f3dbc186ff9db6386d81a63448c/tensorflow/python/ops/math_grad.py#L1832-L1863
auto scalar_min = AT_DISPATCH_FLOATING_AND_COMPLEX_TYPES_AND1(
at::ScalarType::BFloat16,
at::typeMetaToScalarType(grad.dtype()),
"logcumsumexp_backward",
[]() { return c10::Scalar(std::numeric_limits<scalar_t>::lowest()); });
auto reverse_logcumsumexp = [dim](auto x) {
return at::flip(at::logcumsumexp(at::flip(x, {dim}), dim), {dim});
};
if (!at::is_complex(grad)) {
auto grad_min = at::scalar_tensor(scalar_min, grad.options());
auto log_abs_grad = grad.abs().log();
auto log_grad_positive = at::where(grad > 0, log_abs_grad, grad_min);
auto log_grad_negative = at::where(grad < 0, log_abs_grad, grad_min);
auto output_pos =
(reverse_logcumsumexp(log_grad_positive - result) + self).exp();
auto output_neg =
(reverse_logcumsumexp(log_grad_negative - result) + self).exp();
return output_pos - output_neg;
} else {
// no trick separating the positive and negative required
auto log_grad = grad.conj().log();
auto output = (reverse_logcumsumexp(log_grad - result) + self).exp();
return output.conj();
}
}
Tensor logcumsumexp_jvp(
const Tensor& self_p,
const Tensor& self_t,
int64_t dim) {
// Mostly taken from logsumexp_jvp
// NB: for simplicity, we recompute some values that can be reused from
// forward
auto self_p_exp = [&self_p, dim]() {
if (!at::is_complex(self_p)) {
return (self_p - std::get<0>(at::max(self_p, dim, true)))
.exp(); // Use the exp-normalize trick
} else {
// at::max doesn't support complex128
return self_p.exp();
}
}();
auto cumsumexp_p = self_p_exp.cumsum(dim);
TORCH_INTERNAL_ASSERT(!self_t._is_zerotensor())
constexpr double eps = 1e-13;
if (areAnyTensorSubclassLike({self_p, self_t})) {
auto result = (self_p_exp * self_t).cumsum(dim);
result /= cumsumexp_p.add_(eps);
return result;
} else {
self_p_exp *= self_t;
auto cumsumexp_t = self_p_exp.cumsum(dim);
return cumsumexp_t /= cumsumexp_p.add_(eps);
}
}
Tensor unbind_backward(const variable_list& grads, int64_t dim) {
c10::SymIntArrayRef sizes;
at::TensorOptions o;
for (const auto& v : grads) {
if (v.defined()) {
sizes = v.sym_sizes();
o = static_cast<Tensor>(v).options();
break;
}
}
auto grads_tensors = fmap(grads, [&](const Variable& v) {
return (
v.defined() ? static_cast<Tensor>(v)
: at::zeros({}, o).expand_symint(sizes));
});
return at::stack(grads_tensors, dim);
}