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batch_gather_ops.cu
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batch_gather_ops.cu
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#include <fstream>
#include "caffe2/core/common_gpu.h"
#include "caffe2/core/context_gpu.h"
#include "caffe2/operators/batch_gather_ops.h"
// Shared batch kernel
#include "caffe2/operators/gather_op.cuh"
#include "caffe2/utils/GpuAtomics.cuh"
namespace caffe2 {
template <>
bool BatchGatherOp<CUDAContext>::RunOnDevice() {
return DispatchHelper<TensorTypes<int32_t, int64_t>>::call(
this, OperatorBase::Input<Tensor>(INDICES, CUDA));
}
template <>
template <typename TInd>
bool BatchGatherOp<CUDAContext>::DoRunWithType() {
// BatchGather is a special-case of Gather with Axis = 1, wrap = false.
return gather_helper::gather_impl_cuda<TInd>(
this, DATA, INDICES, 0, 1, false, match_outer_);
}
template <typename T_INDEX, typename TData>
__global__ void BatchGatherGradientKernel(
const TData* grad_data,
TData* out,
const T_INDEX* indices,
const int outer_dims_product,
const int N,
const int data_batch_size,
const int gathered_batch_size,
const int block_size,
const int src_indexing_axis_dim,
const bool wrap_indices) {
int begin_idx = blockIdx.x * blockDim.x + threadIdx.x;
int num_items = outer_dims_product * N * block_size;
for (int s = begin_idx; s < num_items; s += blockDim.x * gridDim.x) {
const int k = s % block_size;
const int j = s / block_size % N;
const int i = s / block_size / N;
T_INDEX idx = indices[j];
if (wrap_indices && idx < 0) {
idx = idx + src_indexing_axis_dim;
}
const float* src_offset =
grad_data + i * gathered_batch_size + j * block_size;
float* dst_offset = out + i * data_batch_size + idx * block_size;
gpu_atomic_add(dst_offset + k, src_offset[k]);
}
}
template <>
bool BatchGatherGradientOp<CUDAContext>::RunOnDevice() {
return DispatchHelper<TensorTypes<int32_t, int64_t>>::call(
this, OperatorBase::Input<Tensor>(INDICES, CUDA));
}
template <>
template <typename TInd>
bool BatchGatherGradientOp<CUDAContext>::DoRunWithType() {
return DispatchHelper<
TensorTypes2<float, GenericTensorImplementation>,
TInd>::call(this, OperatorBase::Input<Tensor>(DATA, CUDA));
}
template <>
template <typename TInd, typename TData>
bool BatchGatherGradientOp<CUDAContext>::DoRunWithType2() {
CAFFE_ENFORCE(
!match_outer_, "match_outer=true is currently only supported for CPU");
auto& data = Input(DATA);
auto& indices = Input(INDICES);
auto& grad = Input(GRAD);
// ONNX allows negative axis to index from the back, valid range: [-r, r].
int axis = axis_;
if (axis < 0) {
axis = data.dim() + axis;
}
// Outer dimensions of input data and gradient should be the same
// because they are preserved for gathers with axis > 0.
for (int acheck = 0; acheck < axis; acheck++) {
CAFFE_ENFORCE_EQ(
data.size(acheck), grad.size(acheck), "batch sizes should be the same");
}
auto* output = Output(0, data.sizes(), at::dtype<float>());
auto* out_data = output->template mutable_data<float>();
math::Set<float, CUDAContext>(output->numel(), 0, out_data, &context_);
const auto* grad_data = grad.template data<float>();
const TInd* idxs = indices.template data<TInd>();
// Treat all outer dimensions as a unit as they contribute to larger batch.
const int outer_dims_product = grad.size_to_dim(axis);
const int block_size = data.size_from_dim(axis + 1);
const int N = indices.numel();
const auto data_batch_size = data.size_from_dim(axis);
const auto gathered_batch_size = N * block_size;
const int src_indexing_axis_dim = data.dim(axis);
// Assign each thread index its own 'float' in block_size * N (kernel will
// loop if there is more data than fits NUM_BLOCKS * NUM_THREADS limit).
BatchGatherGradientKernel<<<
std::min(outer_dims_product, CAFFE_MAXIMUM_NUM_BLOCKS),
std::min(N * block_size, CAFFE_CUDA_NUM_THREADS),
0,
context_.cuda_stream()>>>(
grad_data,
out_data,
idxs,
outer_dims_product,
N,
data_batch_size,
gathered_batch_size,
block_size,
src_indexing_axis_dim,
false);
C10_CUDA_KERNEL_LAUNCH_CHECK(); // TBD: Add proper index wrapping support to Gather gradients.
return true;
}
template <>
template <typename TInd>
bool BatchGatherGradientOp<CUDAContext>::DoRunWithOtherType2() {
CAFFE_THROW(
"BatchGatherGradient is not implemented on tensor of type ",
Input(DATA).meta().name(),
"consider adding it as a type in the DispatchHelper list or implementing"
" a generic version (which won't work for duplicated indices though)");
}
REGISTER_CUDA_OPERATOR(BatchGather, BatchGatherOp<CUDAContext>);
REGISTER_CUDA_OPERATOR(BatchGatherGradient, BatchGatherGradientOp<CUDAContext>);
} // namespace caffe2