225 lines
8.7 KiB
C++
225 lines
8.7 KiB
C++
/* Copyright (c) 2022 PaddlePaddle Authors. All Rights Reserved.
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Licensed under the Apache License, Version 2.0 (the "License");
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you may not use this file except in compliance with the License.
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You may obtain a copy of the License at
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http://www.apache.org/licenses/LICENSE-2.0
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Unless required by applicable law or agreed to in writing, software
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distributed under the License is distributed on an "AS IS" BASIS,
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WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
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See the License for the specific language governing permissions and
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limitations under the License. */
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#include "paddle/phi/kernels/sparse/conv_grad_kernel.h"
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#include "paddle/phi/core/visit_type.h"
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#include "paddle/phi/kernels/funcs/blas/blas.h"
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#include "paddle/phi/kernels/funcs/math_function.h"
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#include "paddle/phi/kernels/sparse/cpu/conv.h"
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namespace phi::sparse {
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// rulebook:
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//[
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// [kernel_index],
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// [in_i],
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// [out_i],
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//]
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// x_grad = out_grad * transpose(kernel)
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// kernel_grad = transpose(x) * out_grad
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template <typename T, typename IntT = int>
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void Conv3dCooGradCPUKernel(const CPUContext& dev_ctx,
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const SparseCooTensor& x,
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const DenseTensor& kernel,
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const SparseCooTensor& out,
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const DenseTensor& rulebook,
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const DenseTensor& counter,
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const SparseCooTensor& out_grad,
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const std::vector<int>& paddings UNUSED,
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const std::vector<int>& dilations UNUSED,
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const std::vector<int>& strides UNUSED,
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const int groups UNUSED,
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const bool subm,
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const std::string& key,
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SparseCooTensor* x_grad,
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DenseTensor* kernel_grad) {
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const auto& kernel_dims = kernel.dims();
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const bool is2D = kernel_dims.size() == 4 ? true : false;
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const int kernel_size =
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static_cast<int>(is2D ? kernel_dims[0] * kernel_dims[1]
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: kernel_dims[0] * kernel_dims[1] * kernel_dims[2]);
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const int in_channels =
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static_cast<int>(is2D ? kernel_dims[2] : kernel_dims[3]);
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const int out_channels =
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static_cast<int>(is2D ? kernel_dims[3] : kernel_dims[4]);
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int rulebook_len = 0;
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const IntT* rulebook_ptr =
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funcs::sparse::GetRulebookPtr<IntT>(out, rulebook, key, &rulebook_len);
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const int* counter_ptr = funcs::sparse::GetCounterPtr(out, counter, key);
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DenseTensorMeta in_features_meta(
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x.dtype(), {rulebook_len, in_channels}, DataLayout::NCHW);
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DenseTensorMeta d_x_features_meta(
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x.dtype(), {rulebook_len, in_channels}, DataLayout::NCHW);
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DenseTensorMeta out_grad_features_meta(
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x.dtype(), {rulebook_len, out_channels}, DataLayout::NCHW);
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DenseTensor in_features = Empty(dev_ctx, std::move(in_features_meta));
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DenseTensor d_x_features = Empty(dev_ctx, std::move(d_x_features_meta));
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DenseTensor out_grad_features =
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Empty(dev_ctx, std::move(out_grad_features_meta));
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T* in_features_ptr = in_features.data<T>();
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T* d_x_features_ptr = d_x_features.data<T>();
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T* out_grad_features_ptr = out_grad_features.data<T>();
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*kernel_grad = EmptyLike<T>(dev_ctx, kernel);
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T* d_kernel_ptr = kernel_grad->data<T>();
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memset(d_kernel_ptr, 0, sizeof(T) * kernel_grad->numel());
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int half_kernel_size = kernel_size / 2;
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auto blas = funcs::GetBlas<CPUContext, T>(dev_ctx);
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DenseTensor x_grad_indices = EmptyLike<IntT>(dev_ctx, x.indices());
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DenseTensor x_grad_values = EmptyLike<T>(dev_ctx, x.values());
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T* x_grad_values_ptr = x_grad_values.data<T>();
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memset(x_grad_values_ptr, 0, sizeof(T) * x_grad_values.numel());
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memset(d_x_features_ptr, 0, sizeof(T) * d_x_features.numel());
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phi::Copy<CPUContext>(
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dev_ctx, x.indices(), dev_ctx.GetPlace(), false, &x_grad_indices);
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x_grad->SetMember(x_grad_indices, x_grad_values, x.dims(), true);
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std::vector<IntT> offsets(kernel_size + 1);
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IntT offset = 0;
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int max_count = 0;
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for (int i = 0; i < kernel_size; i++) {
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offsets[i] = offset;
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offset += counter_ptr[i];
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if (i < half_kernel_size) {
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max_count = std::max(max_count, counter_ptr[i]);
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}
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}
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offsets[kernel_size] = offset;
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if (subm) {
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funcs::sparse::SubmPreProcess<T, CPUContext>(dev_ctx,
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x,
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kernel,
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out_grad.values(),
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in_channels,
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out_channels,
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half_kernel_size,
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kernel_grad,
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&x_grad_values);
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if (max_count == 0) {
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return;
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}
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}
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Gather<T, IntT>(x.values().data<T>(),
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rulebook_ptr + rulebook_len,
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rulebook_len,
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in_channels,
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in_features_ptr);
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Gather<T, IntT>(out_grad.values().data<T>(),
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rulebook_ptr + rulebook_len * 2,
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rulebook_len,
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out_channels,
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out_grad_features_ptr);
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const T* kernel_ptr = kernel.data<T>();
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for (int i = 0; i < kernel_size; i++) {
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if (counter_ptr[i] <= 0 || (subm && i == half_kernel_size)) {
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continue;
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}
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const int M = counter_ptr[i];
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const int K = in_channels;
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const int N = out_channels;
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T* tmp_in_ptr = in_features_ptr + offsets[i] * in_channels;
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T* tmp_out_grad_ptr = out_grad_features_ptr + offsets[i] * out_channels;
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const T* tmp_kernel_ptr = kernel_ptr + i * in_channels * out_channels;
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T* tmp_d_x_ptr = d_x_features_ptr + offsets[i] * in_channels;
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T* tmp_d_kernel_ptr = d_kernel_ptr + i * in_channels * out_channels;
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// call gemm: d_kernel = transpose(x) * out_grad
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// (in_channels, n) * (n, out_channels)
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blas.GEMM(CblasTrans,
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CblasNoTrans,
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K,
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N,
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M,
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static_cast<T>(1),
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tmp_in_ptr,
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tmp_out_grad_ptr,
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static_cast<T>(0),
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tmp_d_kernel_ptr);
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// call gemm: d_x = out_grad * transpose(kernel)
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// (n, out_channels) * (out_channels, in_channels)
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blas.GEMM(CblasNoTrans,
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CblasTrans,
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M,
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K,
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N,
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static_cast<T>(1),
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tmp_out_grad_ptr,
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tmp_kernel_ptr,
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static_cast<T>(0),
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tmp_d_x_ptr);
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}
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// 4. scatter
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Scatter<T, IntT>(d_x_features_ptr,
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rulebook_ptr + rulebook_len,
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rulebook_len,
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in_channels,
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x_grad_values_ptr);
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}
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template <typename T, typename Context>
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void Conv3dCooGradKernel(const Context& dev_ctx,
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const SparseCooTensor& x,
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const DenseTensor& kernel,
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const SparseCooTensor& out,
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const DenseTensor& rulebook,
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const DenseTensor& counter,
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const SparseCooTensor& out_grad,
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const std::vector<int>& paddings,
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const std::vector<int>& dilations,
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const std::vector<int>& strides,
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const int groups,
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const bool subm,
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const std::string& key,
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SparseCooTensor* x_grad,
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DenseTensor* kernel_grad) {
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PD_VISIT_BASE_INTEGRAL_TYPES(
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x.indices().dtype(), "Conv3dCooGradCPUKernel", ([&] {
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Conv3dCooGradCPUKernel<T, data_t>(dev_ctx,
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x,
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kernel,
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out,
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rulebook,
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counter,
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out_grad,
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paddings,
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dilations,
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strides,
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groups,
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subm,
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key,
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x_grad,
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kernel_grad);
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}));
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}
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} // namespace phi::sparse
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PD_REGISTER_KERNEL(conv3d_coo_grad,
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CPU,
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ALL_LAYOUT,
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phi::sparse::Conv3dCooGradKernel,
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float,
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double) {
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kernel->InputAt(0).SetDataLayout(phi::DataLayout::SPARSE_COO);
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}
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