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| #include "common/checkMacrosPlugin.h" |
| #include "zeroPadding2d.h" |
| #include <array> |
| #include <cstring> |
|
|
| using namespace nvinfer1; |
|
|
| namespace nvinfer1 |
| { |
| namespace plugin |
| { |
| namespace bert |
| { |
|
|
| constexpr int32_t kMAX_THREADS_PER_BLOCK{256}; |
|
|
| template <typename TDataType> |
| __global__ void __launch_bounds__(kMAX_THREADS_PER_BLOCK) |
| zeroPadding2dKernel(const TDataType* src, int32_t spitch, TDataType* dst, int32_t dpitch, int32_t height) |
| { |
| int32_t uid = blockIdx.x * blockDim.x + threadIdx.x; |
| int32_t numElements = dpitch * height; |
| int32_t numThreads = gridDim.x * blockDim.x; |
|
|
| #pragma unroll |
| for (; uid < numElements; uid += numThreads) |
| { |
| int32_t ty = uid / dpitch; |
| if (ty >= height) |
| { |
| return; |
| } |
| int32_t tx = uid % dpitch; |
|
|
| TDataType val = 0; |
| if (tx < spitch) |
| { |
| val = src[ty * spitch + tx]; |
| } |
|
|
| dst[ty * dpitch + tx] = val; |
| } |
| } |
|
|
| template <> |
| __global__ void __launch_bounds__(kMAX_THREADS_PER_BLOCK) |
| zeroPadding2dKernel(const int4* src, int32_t spitch, int4* dst, int32_t dpitch, int32_t height) |
| { |
| int32_t uid = blockIdx.x * blockDim.x + threadIdx.x; |
| int32_t numElements = dpitch * height; |
| int32_t numThreads = gridDim.x * blockDim.x; |
|
|
| #pragma unroll |
| for (; uid < numElements; uid += numThreads) |
| { |
| int32_t ty = uid / dpitch; |
| if (ty >= height) |
| { |
| continue; |
| } |
| int32_t tx = uid % dpitch; |
|
|
| int4 val{0, 0, 0, 0}; |
| if (tx < spitch) |
| { |
| val = src[ty * spitch + tx]; |
| } |
|
|
| dst[ty * dpitch + tx] = val; |
| } |
| } |
|
|
| cudaError_t zeroPadding2d( |
| const void* src, int32_t spitch, void* dst, int32_t dpitch, int32_t height, cudaStream_t stream) |
| { |
| using kernel_ptr_t = void (*)(const void* src, int32_t spitch, void* dst, int32_t dpitch, int32_t height); |
| kernel_ptr_t kernels[5]{reinterpret_cast<kernel_ptr_t>(zeroPadding2dKernel<int8_t>), |
| reinterpret_cast<kernel_ptr_t>(zeroPadding2dKernel<int16_t>), |
| reinterpret_cast<kernel_ptr_t>(zeroPadding2dKernel<int32_t>), |
| reinterpret_cast<kernel_ptr_t>(zeroPadding2dKernel<int64_t>), |
| reinterpret_cast<kernel_ptr_t>(zeroPadding2dKernel<int4>)}; |
|
|
| auto select = [](size_t width) -> int32_t { |
| if (!(width & 0xF)) |
| { |
| return 4; |
| } |
| if (!(width & 0x7)) |
| { |
| return 3; |
| } |
| if (!(width & 0x3)) |
| { |
| return 2; |
| } |
| if (!(width & 0x1)) |
| { |
| return 1; |
| } |
| return 0; |
| }; |
|
|
| auto kernelId = 4; |
| std::array<size_t, 4> checkAlignment{reinterpret_cast<size_t>(src), static_cast<size_t>(spitch), |
| reinterpret_cast<size_t>(dst), static_cast<size_t>(dpitch)}; |
| for (auto size : checkAlignment) |
| { |
| auto shiftId = select(size); |
| if (shiftId < kernelId) |
| { |
| kernelId = shiftId; |
| } |
| } |
|
|
| spitch >>= kernelId; |
| dpitch >>= kernelId; |
|
|
| int32_t devId; |
| PLUGIN_CHECK_CUDA(cudaGetDevice(&devId)); |
| int32_t numSms; |
| PLUGIN_CHECK_CUDA(cudaDeviceGetAttribute(&numSms, cudaDevAttrMultiProcessorCount, devId)); |
| auto kernel = kernels[kernelId]; |
| int32_t block = kMAX_THREADS_PER_BLOCK; |
| int32_t grid = (dpitch * height + kMAX_THREADS_PER_BLOCK - 1) / kMAX_THREADS_PER_BLOCK; |
| int32_t blocksPerSm; |
| PLUGIN_CHECK_CUDA(cudaOccupancyMaxActiveBlocksPerMultiprocessor(&blocksPerSm, kernel, block, 0)); |
| grid = std::min(numSms * blocksPerSm, grid); |
|
|
| kernel<<<grid, block, 0, stream>>>(src, spitch, dst, dpitch, height); |
| return cudaPeekAtLastError(); |
| } |
|
|
| QkvPaddingRunner::QkvPaddingRunner(DataType dtype, int32_t maxPaddedSize) |
| :mMaxPaddingHeadSize(maxPaddedSize) |
| { |
| PLUGIN_ASSERT(dtype == DataType::kHALF || dtype == DataType::kINT8); |
| mDtypeSize = (dtype == DataType::kHALF) ? 2 : 1; |
| } |
|
|
| int32_t QkvPaddingRunner::getMaxPaddingHeadSize() |
| { |
| return mMaxPaddingHeadSize; |
| } |
|
|
| size_t QkvPaddingRunner::getInputSize(int32_t sumSeqLen, int32_t numHeads) |
| { |
| return (3U * sumSeqLen * numHeads * mMaxPaddingHeadSize* mDtypeSize); |
| } |
|
|
| size_t QkvPaddingRunner::getOutputSize(int32_t sumSeqLen, int32_t numHeads) |
| { |
| return (1U * sumSeqLen * numHeads * mMaxPaddingHeadSize * mDtypeSize); |
| } |
|
|
| size_t QkvPaddingRunner::getWorkspaceSize(int32_t sumSeqLen, int32_t numHeads) |
| { |
| constexpr int32_t reserveForAlignment = 16; |
| return getInputSize(sumSeqLen, numHeads) + getOutputSize(sumSeqLen, numHeads) + reserveForAlignment; |
| } |
|
|
| void* QkvPaddingRunner::get16BytesAlignedPointer(void* workspace, size_t offset) |
| { |
| PLUGIN_VALIDATE(workspace != nullptr); |
| auto addr = reinterpret_cast<uintptr_t>(workspace) + offset; |
| auto shift = 16 - (addr & 0xF); |
| if (shift == 16) |
| { |
| shift = 0; |
| } |
| return reinterpret_cast<void*>(addr + shift); |
| } |
|
|
| cudaError_t QkvPaddingRunner::pad( |
| const void* src, void* workspace, int32_t sumSeqLen, int32_t numHeads, int32_t headSize, int32_t padHeadSize, cudaStream_t stream) |
| { |
| PLUGIN_VALIDATE(padHeadSize <= mMaxPaddingHeadSize); |
| return zeroPadding2d( |
| src, headSize * mDtypeSize, workspace, padHeadSize * mDtypeSize, 3 * sumSeqLen * numHeads, stream); |
| } |
|
|
| cudaError_t QkvPaddingRunner::unpad( |
| const void* workspace, void* dst, int32_t sumSeqLen, int32_t numHeads, int32_t headSize, int32_t padHeadSize, cudaStream_t stream) |
| { |
| PLUGIN_VALIDATE(padHeadSize <= mMaxPaddingHeadSize); |
| return zeroPadding2d( |
| workspace, padHeadSize * mDtypeSize, dst, headSize * mDtypeSize, sumSeqLen * numHeads, stream); |
| } |
|
|
| MhaRunParameter QkvPaddingRunner::patchMhaArgs(const PluginTensorDesc* inputDesc, const PluginTensorDesc* outputDesc, |
| const void* const* inputs, void* const* outputs, void* paddingWorkspace, int32_t sumSeqLen, int32_t numHeads, int32_t padHeadSize) |
| { |
| PLUGIN_VALIDATE(padHeadSize <= mMaxPaddingHeadSize); |
| MhaRunParameter args; |
|
|
| std::memcpy(args.inputDesc, inputDesc, 4 * sizeof(PluginTensorDesc)); |
| auto paddingHiddenSize = numHeads * padHeadSize; |
| args.inputDesc[0].dims.d[1] = 3 * paddingHiddenSize; |
|
|
| args.outputDesc[0] = outputDesc[0]; |
| args.outputDesc[0].dims.d[1] = paddingHiddenSize; |
|
|
| std::memcpy(args.inputs, inputs, 4 * sizeof(void*)); |
| args.inputs[0] = paddingWorkspace; |
|
|
| args.outputs[0] = get16BytesAlignedPointer(paddingWorkspace, getInputSize(sumSeqLen, numHeads)); |
|
|
| return args; |
| } |
|
|
| } |
| } |
| } |
|
|