2020-11-05 16:41:56 +08:00
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//
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2021-03-12 18:41:50 +08:00
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// RasterBufExecution.cpp
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2020-11-05 16:41:56 +08:00
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// MNN
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//
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// Created by MNN on 2020/05/12.
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// Copyright © 2018, Alibaba Group Holding Limited
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//
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2021-03-12 18:41:50 +08:00
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#ifndef MNN_OPENCL_BUFFER_CLOSED
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#include "backend/opencl/execution/buffer/RasterBufExecution.hpp"
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2020-11-05 16:41:56 +08:00
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#include "core/Macro.h"
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#include "core/TensorUtils.hpp"
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#include "core/OpCommonUtils.hpp"
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#include "backend/opencl/core/OpenCLBackend.hpp"
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namespace MNN {
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namespace OpenCL {
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2021-09-27 11:18:24 +08:00
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RasterBufExecution::RasterBufExecution(const std::vector<Tensor *> &inputs, const MNN::Op *op, Backend *backend)
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: CommonExecution(backend, op) {
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2020-11-05 16:41:56 +08:00
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mOpenCLBackend = (OpenCLBackend *)backend;
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//nothing to do
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}
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2024-04-19 11:58:21 +08:00
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ErrorCode RasterBufExecution::onEncode(const std::vector<Tensor *> &____inputs, const std::vector<Tensor *> &outputs) {
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2020-11-05 16:41:56 +08:00
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#ifdef LOG_VERBOSE
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MNN_PRINT("start RasterBufExecution onResize !\n");
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2020-11-05 16:41:56 +08:00
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#endif
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mTempInput.clear();
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mTempOutput = nullptr;
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MNN_ASSERT(outputs.size() == 1);
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auto output = outputs[0];
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2022-12-30 15:18:58 +08:00
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if (!____inputs.empty()) {
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OpCommonUtils::rasterInputReset(____inputs, outputs[0]);
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}
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auto des = TensorUtils::getDescribe(output);
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auto outputDes = TensorUtils::getDescribe(output);
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mNeedZero = !TensorUtils::regionIsFull(output);
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auto regionNum = des->regions.size();
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auto mOpenCLBackend = static_cast<OpenCLBackend*>(backend());
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auto runtime = mOpenCLBackend->getOpenCLRuntime();
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2023-08-21 14:51:54 +08:00
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bool cancombine = CanCombine(outputs);
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if(cancombine){
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regionNum = 1;
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}
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int kernel_idx = 0;
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mUnits.resize(regionNum);
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auto outputShape = tensorShapeFormat(output);
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if(mNeedZero || (outputShape[3] % 4) != 0)
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{
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mUnits.resize(regionNum + 1);
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int region[] = {outputShape[0], ROUND_UP(outputShape[3], 4), outputShape[1], outputShape[2]};//nhwc
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Unit &unit = mUnits[kernel_idx++];
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unit.kernel = runtime->buildKernel("raster", "buffer_set_zero", {}, output, output);
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unit.localWorkSize = {8, 8};
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unit.globalWorkSize = {(uint32_t)UP_DIV((region[2] * region[3]), 8)*8,
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(uint32_t)UP_DIV((region[0] * region[1]), 8)*8};
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int global_dim0 = region[2] * region[3];
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int global_dim1 = region[0] * region[1];
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2020-11-05 16:41:56 +08:00
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uint32_t idx = 0;
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cl_int ret = CL_SUCCESS;
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ret |= unit.kernel->get().setArg(idx++, global_dim0);
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ret |= unit.kernel->get().setArg(idx++, global_dim1);
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ret |= unit.kernel->get().setArg(idx++, openCLBuffer(output));
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if(ret != CL_SUCCESS)
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{
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MNN_PRINT("setArg err %d\n", (int)ret);
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}
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2023-12-27 17:26:44 +08:00
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mOpenCLBackend->recordKernel2d(unit.kernel, {(uint32_t)UP_DIV((region[2] * region[3]), 8)*8,
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(uint32_t)UP_DIV((region[0] * region[1]), 8)*8}, {8, 8});
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2020-11-05 16:41:56 +08:00
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}
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if(cancombine){
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auto regions = des->regions;
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auto slice = regions[0];
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int nums = regions.size();
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int src_offset = regions[1].src.offset - slice.src.offset;
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int dst_offset = regions[1].dst.offset - slice.dst.offset;
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std::set<std::string> buildOptions;
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auto origin = slice.origin;
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auto inputShape = tensorShapeFormat(origin);
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if(TensorUtils::getDescribe(origin)->dimensionFormat == MNN_DATA_FORMAT_NHWC)
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{
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buildOptions.emplace(" -DINPUT_DATA_FORMAT_NHWC");
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}
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if(outputDes->dimensionFormat == MNN_DATA_FORMAT_NHWC)//nhwc buffer to Image
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{
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buildOptions.emplace(" -DOUTPUT_DATA_FORMAT_NHWC");
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}
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2023-08-21 14:51:54 +08:00
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2020-11-05 16:41:56 +08:00
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Unit &unit = mUnits[kernel_idx++];
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unit.kernel = runtime->buildKernel("raster_buf", "raster_direct_buffer", buildOptions, output, output);
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const std::vector<uint32_t> gws = {(uint32_t)slice.size[2] * nums,
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(uint32_t)slice.size[1],
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(uint32_t)slice.size[0]};
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uint32_t mMaxWorkGroupSize = static_cast<uint32_t>(runtime->getMaxWorkGroupSize(unit.kernel));
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2020-11-05 16:41:56 +08:00
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uint32_t idx = 0;
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cl_int ret = CL_SUCCESS;
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ret |= unit.kernel->get().setArg(idx++, gws[0]);
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ret |= unit.kernel->get().setArg(idx++, gws[1]);
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ret |= unit.kernel->get().setArg(idx++, gws[2]);
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ret |= unit.kernel->get().setArg(idx++, slice.size[2]);
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ret |= unit.kernel->get().setArg(idx++, openCLBuffer(origin));
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ret |= unit.kernel->get().setArg(idx++, slice.src.offset);
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ret |= unit.kernel->get().setArg(idx++, src_offset);
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ret |= unit.kernel->get().setArg(idx++, slice.src.stride[0]);
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ret |= unit.kernel->get().setArg(idx++, slice.src.stride[1]);
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ret |= unit.kernel->get().setArg(idx++, slice.src.stride[2]);
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ret |= unit.kernel->get().setArg(idx++, inputShape[2]);
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ret |= unit.kernel->get().setArg(idx++, inputShape[1]);
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ret |= unit.kernel->get().setArg(idx++, inputShape[3]);
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ret |= unit.kernel->get().setArg(idx++, openCLBuffer(output));
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ret |= unit.kernel->get().setArg(idx++, slice.dst.offset);
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ret |= unit.kernel->get().setArg(idx++, dst_offset);
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ret |= unit.kernel->get().setArg(idx++, slice.dst.stride[0]);
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ret |= unit.kernel->get().setArg(idx++, slice.dst.stride[1]);
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ret |= unit.kernel->get().setArg(idx++, slice.dst.stride[2]);
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ret |= unit.kernel->get().setArg(idx++, outputShape[2]);
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ret |= unit.kernel->get().setArg(idx++, outputShape[1]);
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ret |= unit.kernel->get().setArg(idx++, outputShape[3]);
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2020-11-05 16:41:56 +08:00
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if(ret != CL_SUCCESS)
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{
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MNN_PRINT("setArg err %d\n", (int)ret);
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}
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std::string name = "raster_buffer";
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const std::vector<uint32_t> lws = localWS3DDefault(gws, mMaxWorkGroupSize, mOpenCLBackend->getOpenCLRuntime(), name, unit.kernel).first;
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unit.localWorkSize = {lws[0], lws[1], lws[2]};
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unit.globalWorkSize = {ROUND_UP(gws[0], std::max((uint32_t)1, lws[0])),
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ROUND_UP(gws[1], std::max((uint32_t)1, lws[1])),
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ROUND_UP(gws[2], std::max((uint32_t)1, lws[2]))};
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mOpenCLBackend->recordKernel3d(unit.kernel, gws, lws);
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}else{
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for(auto& slice : des->regions){
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std::set<std::string> buildOptions;
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auto origin = slice.origin;
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auto inputShape = tensorShapeFormat(origin);
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int src_offset = 0;
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int dst_offset = 0;
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if(TensorUtils::getDescribe(origin)->dimensionFormat == MNN_DATA_FORMAT_NHWC)
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{
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buildOptions.emplace(" -DINPUT_DATA_FORMAT_NHWC");
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}
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if(outputDes->dimensionFormat == MNN_DATA_FORMAT_NHWC)//nhwc buffer to Image
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{
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buildOptions.emplace(" -DOUTPUT_DATA_FORMAT_NHWC");
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}
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2023-08-21 14:51:54 +08:00
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Unit &unit = mUnits[kernel_idx++];
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unit.kernel = runtime->buildKernel("raster_buf", "raster_direct_buffer", buildOptions, output, output);
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const std::vector<uint32_t> gws = {(uint32_t)slice.size[2],
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(uint32_t)slice.size[1],
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(uint32_t)slice.size[0]};
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uint32_t mMaxWorkGroupSize = static_cast<uint32_t>(runtime->getMaxWorkGroupSize(unit.kernel));
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uint32_t idx = 0;
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cl_int ret = CL_SUCCESS;
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2024-04-19 11:58:21 +08:00
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ret |= unit.kernel->get().setArg(idx++, gws[0]);
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ret |= unit.kernel->get().setArg(idx++, gws[1]);
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ret |= unit.kernel->get().setArg(idx++, gws[2]);
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ret |= unit.kernel->get().setArg(idx++, slice.size[2]);
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ret |= unit.kernel->get().setArg(idx++, openCLBuffer(origin));
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ret |= unit.kernel->get().setArg(idx++, slice.src.offset);
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ret |= unit.kernel->get().setArg(idx++, src_offset);
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ret |= unit.kernel->get().setArg(idx++, slice.src.stride[0]);
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ret |= unit.kernel->get().setArg(idx++, slice.src.stride[1]);
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ret |= unit.kernel->get().setArg(idx++, slice.src.stride[2]);
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ret |= unit.kernel->get().setArg(idx++, inputShape[2]);
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ret |= unit.kernel->get().setArg(idx++, inputShape[1]);
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ret |= unit.kernel->get().setArg(idx++, inputShape[3]);
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ret |= unit.kernel->get().setArg(idx++, openCLBuffer(output));
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ret |= unit.kernel->get().setArg(idx++, slice.dst.offset);
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ret |= unit.kernel->get().setArg(idx++, dst_offset);
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ret |= unit.kernel->get().setArg(idx++, slice.dst.stride[0]);
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ret |= unit.kernel->get().setArg(idx++, slice.dst.stride[1]);
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ret |= unit.kernel->get().setArg(idx++, slice.dst.stride[2]);
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ret |= unit.kernel->get().setArg(idx++, outputShape[2]);
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ret |= unit.kernel->get().setArg(idx++, outputShape[1]);
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ret |= unit.kernel->get().setArg(idx++, outputShape[3]);
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if(ret != CL_SUCCESS)
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{
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MNN_PRINT("setArg err %d\n", (int)ret);
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}
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std::string name = "raster_buffer";
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const std::vector<uint32_t> lws = localWS3DDefault(gws, mMaxWorkGroupSize, mOpenCLBackend->getOpenCLRuntime(), name, unit.kernel).first;
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unit.localWorkSize = {lws[0], lws[1], lws[2]};
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unit.globalWorkSize = {ROUND_UP(gws[0], std::max((uint32_t)1, lws[0])),
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ROUND_UP(gws[1], std::max((uint32_t)1, lws[1])),
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ROUND_UP(gws[2], std::max((uint32_t)1, lws[2]))};
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mOpenCLBackend->recordKernel3d(unit.kernel, gws, lws);
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}
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2020-11-05 16:41:56 +08:00
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}
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#ifdef LOG_VERBOSE
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MNN_PRINT("end RasterBufExecution onResize !\n");
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2020-11-05 16:41:56 +08:00
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#endif
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return NO_ERROR;
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}
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2023-12-27 17:26:44 +08:00
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class RasterBufCreator : public OpenCLBackend::Creator {
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public:
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virtual ~RasterBufCreator() = default;
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virtual Execution *onCreate(const std::vector<Tensor *> &inputs, const std::vector<Tensor *> &outputs, const MNN::Op *op,
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Backend *backend) const override {
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for (int i = 0; i < inputs.size(); ++i) {
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TensorUtils::setTensorSupportPack(inputs[i], false);
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}
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for (int i = 0; i < outputs.size(); ++i) {
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TensorUtils::setTensorSupportPack(outputs[i], false);
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}
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return new RasterBufExecution(inputs, op, backend);
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}
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};
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2023-08-21 14:51:54 +08:00
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bool RasterBufExecution::CanCombine(const std::vector<Tensor *> &outputs){
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auto des = TensorUtils::getDescribe(outputs[0]);
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auto regions = des->regions;
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if(regions.size() < 2)
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return false;
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auto origin = regions[0].origin;
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const int size0 = regions[0].size[0];
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const int size1 = regions[0].size[1];
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const int size2 = regions[0].size[2];
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const int src_offset = regions[1].src.offset - regions[0].src.offset;
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const int dst_offset = regions[1].dst.offset - regions[0].dst.offset;
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const int src_sride0 = regions[0].src.stride[0];
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const int src_sride1 = regions[0].src.stride[1];
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const int src_sride2 = regions[0].src.stride[2];
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const int dst_sride0 = regions[0].dst.stride[0];
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const int dst_sride1 = regions[0].dst.stride[1];
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const int dst_sride2 = regions[0].dst.stride[2];
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bool res = true;
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for(int i = 1; i < regions.size(); ++i){
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res &= regions[i].origin == origin;
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res &= regions[i].size[0] == size0;
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res &= regions[i].size[1] == size1;
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res &= regions[i].size[2] == size2;
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res &= regions[i].src.stride[0] == src_sride0;
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res &= regions[i].src.stride[1] == src_sride1;
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res &= regions[i].src.stride[2] == src_sride2;
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res &= regions[i].dst.stride[0] == dst_sride0;
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res &= regions[i].dst.stride[1] == dst_sride1;
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res &= regions[i].dst.stride[2] == dst_sride2;
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res &= (regions[i].src.offset - regions[i - 1].src.offset) == src_offset;
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res &= (regions[i].dst.offset - regions[i - 1].dst.offset) == dst_offset;
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if(res == false){
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return res;
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}
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}
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return res;
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}
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2023-12-27 17:26:44 +08:00
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REGISTER_OPENCL_OP_CREATOR(RasterBufCreator, OpType_Raster, BUFFER);
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2020-11-05 16:41:56 +08:00
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} // namespace OpenCL
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} // namespace MNN
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2021-03-12 18:41:50 +08:00
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#endif /* MNN_OPENCL_BUFFER_CLOSED */
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