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AveragePool2d.cu
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AveragePool2d.cu
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#define TORCH_ASSERT_ONLY_METHOD_OPERATORS
#include <ATen/core/Tensor.h>
#include <ATen/AccumulateType.h>
#include <ATen/ceil_div.h>
#include <ATen/Dispatch.h>
#include <ATen/native/Pool.h>
#include <ATen/cuda/CUDAContext.h>
#include <ATen/cuda/detail/TensorInfo.cuh>
#include <ATen/cuda/detail/IndexUtils.cuh>
#include <ATen/cuda/detail/KernelUtils.h>
#include <c10/macros/Macros.h>
#ifndef AT_PER_OPERATOR_HEADERS
#include <ATen/Functions.h>
#include <ATen/NativeFunctions.h>
#else
#include <ATen/ops/avg_pool2d_native.h>
#include <ATen/ops/avg_pool2d_backward_native.h>
#endif
namespace at {
namespace native {
namespace {
__device__ inline int min(int a, int b) {
return a <= b ? a : b;
}
__device__ inline int max(int a, int b) {
return a >= b ? a : b;
}
template <typename scalar_t, typename accscalar_t>
__global__ void avg_pool2d_out_cuda_frame(const int nthreads,
const scalar_t* const bottom_data, const int channels,
const int height, const int width, const int pooled_height,
const int pooled_width, const int kernel_h, const int kernel_w,
const int stride_h, const int stride_w, const int pad_h, const int pad_w,
scalar_t* const top_data, const int divisor_override,
const bool count_include_pad, const bool use_divisor) {
CUDA_KERNEL_LOOP(index, nthreads) {
const int pw = index % pooled_width;
const int ph = (index / pooled_width) % pooled_height;
const int c = (index / pooled_width / pooled_height) % channels;
const int n = index / pooled_width / pooled_height / channels;
int hstart = ph * stride_h - pad_h;
int wstart = pw * stride_w - pad_w;
int hend = min(hstart + kernel_h, height + pad_h);
int wend = min(wstart + kernel_w, width + pad_w);
const int pool_size = (hend - hstart) * (wend - wstart);
hstart = max(hstart, 0);
wstart = max(wstart, 0);
hend = min(hend, height);
wend = min(wend, width);
if (hstart >= hend || wstart >= wend) {
top_data[index] = scalar_t(0);
continue;
}
accscalar_t aveval = accscalar_t(0);
const scalar_t* const bottom_slice = bottom_data + (n * channels + c) * height * width;
for (int h = hstart; h < hend; ++h) {
for (int w = wstart; w < wend; ++w) {
aveval += bottom_slice[h * width + w];
}
}
int divide_factor;
if (use_divisor) {
divide_factor = divisor_override;
} else {
if(count_include_pad) {
divide_factor = pool_size;
} else {
divide_factor = (hend - hstart) * (wend - wstart);
}
}
top_data[index] = static_cast<scalar_t>(aveval / divide_factor);
}
}
template <typename scalar_t, typename accscalar_t>
__global__ void avg_pool2d_out_cuda_frame_nhwc(const int nthreads,
const scalar_t* const bottom_data, const int channels,
const int height, const int width, const int pooled_height,
const int pooled_width, const int kernel_h, const int kernel_w,
const int stride_h, const int stride_w, const int pad_h, const int pad_w,
scalar_t* const top_data, const int divisor_override,
const bool count_include_pad, const bool use_divisor) {
CUDA_KERNEL_LOOP(index, nthreads) {
const int c = index % channels;
const int pw = (index / channels) % pooled_width;
const int ph = (index / channels / pooled_width) % pooled_height;
const int n = index / channels / pooled_width / pooled_height;
int hstart = ph * stride_h - pad_h;
int wstart = pw * stride_w - pad_w;
int hend = min(hstart + kernel_h, height + pad_h);
int wend = min(wstart + kernel_w, width + pad_w);
const int pool_size = (hend - hstart) * (wend - wstart);
hstart = max(hstart, 0);
wstart = max(wstart, 0);
hend = min(hend, height);
wend = min(wend, width);
if (hstart >= hend || wstart >= wend) {
top_data[index] = scalar_t(0);
continue;
}
accscalar_t aveval = accscalar_t(0);
const scalar_t* const bottom_slice = bottom_data + n * channels * height * width + c;
for (int h = hstart; h < hend; ++h) {
for (int w = wstart; w < wend; ++w) {
aveval += bottom_slice[(h * width + w) * channels];
}
}
int divide_factor;
if (use_divisor) {
divide_factor = divisor_override;
} else {
if(count_include_pad) {
divide_factor = pool_size;
} else {
divide_factor = (hend - hstart) * (wend - wstart);
}
}
top_data[index] = static_cast<scalar_t>(aveval / divide_factor);
}
}
template <typename scalar_t, typename accscalar_t>
__global__ void avg_pool2d_backward_out_cuda_frame(const int nthreads, const scalar_t* const top_diff,
const int channels, const int height,
const int width, const int pooled_height, const int pooled_width,
const int kernel_h, const int kernel_w, const int stride_h,
const int stride_w, const int pad_h, const int pad_w,
scalar_t* const bottom_diff, const int divisor_override,
bool count_include_pad, bool use_divisor) {
CUDA_KERNEL_LOOP(index, nthreads) {
// find out the local index
// find out the local offset
const int w = index % width + pad_w;
const int h = (index / width) % height + pad_h;
const int c = (index / width / height) % channels;
const int n = index / width / height / channels;
const int phstart = (h < kernel_h) ? 0 : (h - kernel_h) / stride_h + 1;
const int phend = min(h / stride_h + 1, pooled_height);
const int pwstart = (w < kernel_w) ? 0 : (w - kernel_w) / stride_w + 1;
const int pwend = min(w / stride_w + 1, pooled_width);
accscalar_t gradient = accscalar_t(0);
const scalar_t* const top_diff_slice =
top_diff + (n * channels + c) * pooled_height * pooled_width;
for (int ph = phstart; ph < phend; ++ph) {
for (int pw = pwstart; pw < pwend; ++pw) {
// figure out the pooling size
int hstart = ph * stride_h - pad_h;
int wstart = pw * stride_w - pad_w;
int hend = min(hstart + kernel_h, height + pad_h);
int wend = min(wstart + kernel_w, width + pad_w);
int pool_size = (hend - hstart) * (wend - wstart);
hstart = max(hstart, 0);
wstart = max(wstart, 0);
hend = min(hend, height);
wend = min(wend, width);
if (hstart >= hend || wstart >= wend) {
continue;
}
int divide_factor;
if (use_divisor) {
divide_factor = divisor_override;
} else {
if(count_include_pad) {
divide_factor = pool_size;
} else {
divide_factor = (hend - hstart) * (wend - wstart);
}
}
gradient += top_diff_slice[ph * pooled_width + pw] / divide_factor;
}
}
bottom_diff[index] = static_cast<scalar_t>(gradient);
}
}
template <typename scalar_t, typename accscalar_t>
__global__ void avg_pool2d_backward_out_cuda_frame_nhwc(const int nthreads,
const scalar_t* const top_diff,
const int channels, const int height,
const int width, const int pooled_height, const int pooled_width,
const int kernel_h, const int kernel_w, const int stride_h,
const int stride_w, const int pad_h, const int pad_w,
scalar_t* const bottom_diff, const int divisor_override,
bool count_include_pad, bool use_divisor) {
CUDA_KERNEL_LOOP(index, nthreads) {
const int c = index % channels;
const int w = (index / channels) % width;
const int h = (index / channels / width) % height;
const int n = index / channels / width / height;
const int phstart = (h < kernel_h) ? 0 : (h - kernel_h) / stride_h + 1;
const int phend = min(h / stride_h + 1, pooled_height);
const int pwstart = (w < kernel_w) ? 0 : (w - kernel_w) / stride_w + 1;
const int pwend = min(w / stride_w + 1, pooled_width);
accscalar_t gradient = accscalar_t(0);
const scalar_t* const top_diff_slice = top_diff + n * channels * pooled_height * pooled_width + c;
for (int ph = phstart; ph < phend; ++ph) {
for (int pw = pwstart; pw < pwend; ++pw) {
// figure out the pooling size
int hstart = ph * stride_h - pad_h;
int wstart = pw * stride_w - pad_w;
int hend = min(hstart + kernel_h, height + pad_h);
int wend = min(wstart + kernel_w, width + pad_w);
int pool_size = (hend - hstart) * (wend - wstart);
hstart = max(hstart, 0);
wstart = max(wstart, 0);
hend = min(hend, height);
wend = min(wend, width);
if (hstart >= hend || wstart >= wend) {
continue;
}
int divide_factor;
if (use_divisor) {
divide_factor = divisor_override;
} else {
if(count_include_pad) {
divide_factor = pool_size;
} else {
divide_factor = (hend - hstart) * (wend - wstart);
}
}
gradient += top_diff_slice[(ph * pooled_width + pw) * channels] / divide_factor;
}
}
bottom_diff[index] = static_cast<scalar_t>(gradient);
}
}
} // anonymous namespace
TORCH_IMPL_FUNC(avg_pool2d_out_cuda)
(const Tensor& input_,
int64_t kH_,
int64_t kW_,
int64_t dH_,
int64_t dW_,
int64_t padH_,
int64_t padW_,
bool ceil_mode,
bool count_include_pad,
c10::optional<int64_t> divisor_override,
const Tensor& output) {
TensorArg output_arg{ output, "output", 1 };
TensorArg input_arg{ input_, "input_", 2 };
checkAllSameGPU("avg_pool2d_out_cuda", {output_arg, input_arg});
const int kH = safe_downcast<int, int64_t>(kH_);
const int kW = safe_downcast<int, int64_t>(kW_);
const int dH = safe_downcast<int, int64_t>(dH_);
const int dW = safe_downcast<int, int64_t>(dW_);
const int padH = safe_downcast<int, int64_t>(padH_);
const int padW = safe_downcast<int, int64_t>(padW_);
/* sizes */
const int64_t nInputPlane = input_.size(-3);
const int64_t inputHeight = input_.size(-2);
const int64_t inputWidth = input_.size(-1);
int64_t outputWidth = pooling_output_shape<int64_t>(inputWidth, kW, padW, dW, 1, ceil_mode);
int64_t outputHeight = pooling_output_shape<int64_t>(inputHeight, kH, padH, dH, 1, ceil_mode);
const auto memory_format = input_.suggest_memory_format();
Tensor input = input_.contiguous(memory_format);
const int32_t count = safe_downcast<int32_t, int64_t>(output.numel());
const uint32_t num_threads = std::min(at::cuda::getCurrentDeviceProperties()->maxThreadsPerBlock, 1024);
const uint32_t num_blocks = ceil_div<uint32_t>(count, num_threads);
bool use_divisor = divisor_override.has_value();
const auto divisor_override_value = use_divisor ? divisor_override.value() : 0;
if (count != 0) {
AT_DISPATCH_FLOATING_TYPES_AND2(kHalf, kBFloat16, input.scalar_type(),
"avg_pool2d_out_cuda_frame",
[&] {
using accscalar_t = acc_type<scalar_t, true>;
scalar_t *output_data = output.data_ptr<scalar_t>();
scalar_t *input_data = input.data_ptr<scalar_t>();
switch (memory_format){
case MemoryFormat::ChannelsLast: {
output.unsafeGetTensorImpl()->empty_tensor_restride(MemoryFormat::ChannelsLast);
avg_pool2d_out_cuda_frame_nhwc<scalar_t, accscalar_t>
<<<num_blocks,
num_threads,
0,
at::cuda::getCurrentCUDAStream()>>>(
count,
input_data,
nInputPlane,
inputHeight,
inputWidth,
outputHeight,
outputWidth,
kH,
kW,
dH,
dW,
padH,
padW,
output_data,
divisor_override_value,
count_include_pad,
use_divisor);
C10_CUDA_KERNEL_LAUNCH_CHECK();
break;
}
case MemoryFormat::Contiguous: {
avg_pool2d_out_cuda_frame<scalar_t, accscalar_t>
<<<num_blocks,
num_threads,
0,
at::cuda::getCurrentCUDAStream()>>>(
count,
input_data,
nInputPlane,
inputHeight,
inputWidth,
outputHeight,
outputWidth,
kH,
kW,
dH,
dW,
padH,
padW,
output_data,
divisor_override_value,
count_include_pad,
use_divisor);
C10_CUDA_KERNEL_LAUNCH_CHECK();
break;
}
default: TORCH_CHECK(false, "Unsupported memory format. Supports only ChannelsLast, Contiguous");
}
}
);
}
}
TORCH_IMPL_FUNC(avg_pool2d_backward_out_cuda) (
const Tensor& gradOutput_,
const Tensor& input_,
IntArrayRef kernel_size,
IntArrayRef stride,
IntArrayRef padding,
bool ceil_mode,
bool count_include_pad,
c10::optional<int64_t> divisor_override,
const Tensor& gradInput
) {
TensorArg gradInput_arg{ gradInput, "gradInput", 1 };
TensorArg gradOutput_arg{ gradOutput_, "gradOutput_", 2 };
TensorArg input_arg{ input_, "input_", 3 };
checkAllSameGPU("avg_pool2d_backward_out_cuda",
{gradInput_arg, gradOutput_arg, input_arg});
const int kH = safe_downcast<int, int64_t>(kernel_size[0]);
const int kW = kernel_size.size() == 1 ? kH : safe_downcast<int, int64_t>(kernel_size[1]);
const int dH = stride.empty() ? kH : safe_downcast<int, int64_t>(stride[0]);
const int dW = stride.empty() ? kW :
stride.size() == 1 ? dH : safe_downcast<int, int64_t>(stride[1]);
const int padH = safe_downcast<int, int64_t>(padding[0]);
const int padW = padding.size() == 1 ? padH : safe_downcast<int, int64_t>(padding[1]);
const auto memory_format = input_.suggest_memory_format();
const Tensor input = input_.contiguous(memory_format);
const Tensor gradOutput = gradOutput_.contiguous(memory_format);
const int64_t nInputPlane = input.size(-3);
const int64_t inputHeight = input.size(-2);
const int64_t inputWidth = input.size(-1);
const int64_t outputHeight = pooling_output_shape<int64_t>(inputHeight, kH, padH, dH, 1, ceil_mode);
const int64_t outputWidth = pooling_output_shape<int64_t>(inputWidth, kW, padW, dW, 1, ceil_mode);
const int32_t count = safe_downcast<int32_t, int64_t>(input.numel());
if (count == 0) {
return;
}
const uint32_t num_threads = std::min(at::cuda::getCurrentDeviceProperties()->maxThreadsPerBlock, 1024);
const uint32_t num_blocks = ceil_div<uint32_t>(count, num_threads);
bool use_divisor = divisor_override.has_value();
const auto divisor_override_value = use_divisor ? divisor_override.value() : 0;
AT_DISPATCH_FLOATING_TYPES_AND2(kHalf, kBFloat16, input.scalar_type(),
"avg_pool2d_backward_out_cuda_frame",
[&] {
using accscalar_t = acc_type<scalar_t, true>;
scalar_t *gradOutput_data = gradOutput.data_ptr<scalar_t>();
scalar_t *gradInput_data = gradInput.data_ptr<scalar_t>();
switch (memory_format) {
case MemoryFormat::ChannelsLast: {
gradInput.unsafeGetTensorImpl()->empty_tensor_restride(MemoryFormat::ChannelsLast);
avg_pool2d_backward_out_cuda_frame_nhwc<scalar_t, accscalar_t>
<<<num_blocks, num_threads, 0, at::cuda::getCurrentCUDAStream()>>>(
count,
gradOutput_data,
nInputPlane,
inputHeight, inputWidth,
outputHeight, outputWidth,
kH, kW,
dH, dW,
padH, padW,
gradInput_data,
divisor_override_value,
count_include_pad, use_divisor);
C10_CUDA_KERNEL_LAUNCH_CHECK();
break;
}
case MemoryFormat::Contiguous: {
avg_pool2d_backward_out_cuda_frame<scalar_t, accscalar_t>
<<<num_blocks, num_threads, 0, at::cuda::getCurrentCUDAStream()>>>(
count,
gradOutput_data,
nInputPlane,
inputHeight, inputWidth,
outputHeight, outputWidth,
kH, kW,
dH, dW,
padH, padW,
gradInput_data,
divisor_override_value,
count_include_pad, use_divisor);
C10_CUDA_KERNEL_LAUNCH_CHECK();
break;
}
default: TORCH_CHECK(false, "Unsupported memory format. Supports only ChannelsLast, Contiguous");
}
}
);
}
} // at::native
} // at