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Diffstat (limited to 'src/dynamic_fusion/sketch/gpu/ckw_driver/components/GpuCkwActivation.cpp')
-rw-r--r-- | src/dynamic_fusion/sketch/gpu/ckw_driver/components/GpuCkwActivation.cpp | 295 |
1 files changed, 295 insertions, 0 deletions
diff --git a/src/dynamic_fusion/sketch/gpu/ckw_driver/components/GpuCkwActivation.cpp b/src/dynamic_fusion/sketch/gpu/ckw_driver/components/GpuCkwActivation.cpp new file mode 100644 index 0000000000..18fda5bd6b --- /dev/null +++ b/src/dynamic_fusion/sketch/gpu/ckw_driver/components/GpuCkwActivation.cpp @@ -0,0 +1,295 @@ +/* + * Copyright (c) 2023-2024 Arm Limited. + * + * SPDX-License-Identifier: MIT + * + * Permission is hereby granted, free of charge, to any person obtaining a copy + * of this software and associated documentation files (the "Software"), to + * deal in the Software without restriction, including without limitation the + * rights to use, copy, modify, merge, publish, distribute, sublicense, and/or + * sell copies of the Software, and to permit persons to whom the Software is + * furnished to do so, subject to the following conditions: + * + * The above copyright notice and this permission notice shall be included in all + * copies or substantial portions of the Software. + * + * THE SOFTWARE IS PROVIDED "AS IS", WITHOUT WARRANTY OF ANY KIND, EXPRESS OR + * IMPLIED, INCLUDING BUT NOT LIMITED TO THE WARRANTIES OF MERCHANTABILITY, + * FITNESS FOR A PARTICULAR PURPOSE AND NONINFRINGEMENT. IN NO EVENT SHALL THE + * AUTHORS OR COPYRIGHT HOLDERS BE LIABLE FOR ANY CLAIM, DAMAGES OR OTHER + * LIABILITY, WHETHER IN AN ACTION OF CONTRACT, TORT OR OTHERWISE, ARISING FROM, + * OUT OF OR IN CONNECTION WITH THE SOFTWARE OR THE USE OR OTHER DEALINGS IN THE + * SOFTWARE. + */ +#include "GpuCkwActivation.h" + +#include "arm_compute/core/Error.h" +#include "arm_compute/core/utils/helpers/AdjustVecSize.h" +#include "arm_compute/core/Validate.h" + +#include "src/core/helpers/WindowHelpers.h" +#include "src/dynamic_fusion/sketch/gpu/ckw_driver/components/utils/CkwHelper.h" +#include "src/dynamic_fusion/sketch/gpu/ckw_driver/components/utils/type_converter/Common.h" +#include "src/dynamic_fusion/sketch/gpu/ckw_driver/GpuCkwScopedKernelWriter.h" +#include "src/dynamic_fusion/sketch/gpu/ckw_driver/GpuCkwVariableTable.h" +#include "src/dynamic_fusion/sketch/gpu/GpuKernelArgument.h" +#include "src/dynamic_fusion/sketch/gpu/GpuKernelComponentGroup.h" + +#include "compute_kernel_writer/include/ckw/KernelWriter.h" +#include <cstdint> +#include <string> + +namespace arm_compute +{ +namespace experimental +{ +namespace dynamic_fusion +{ + +GpuCkwActivation::GpuCkwActivation(ComponentId id, + const ArgumentPack<ITensorInfo> &tensors, + const Attributes &attributes) // NOLINT + : IGpuCkwComponentDriver{id, tensors}, _src{}, _dst{}, _attributes{attributes} +{ + _src = this->tensors().get_const_tensor(TensorType::ACL_SRC_0); + _dst = this->tensors().get_const_tensor(TensorType::ACL_DST_0); + ARM_COMPUTE_ERROR_ON_NULLPTR(_src, _dst); +} + +void GpuCkwActivation::write_component_code(const ComponentGroup &comp_group, + GpuCkwVariableTable &vtable, + GpuCkwScopedKernelWriter writer) const +{ + /******************************************************************************** + * 1 - Define tensors + ********************************************************************************/ + GpuCkwComponentArgument *src = vtable.declare_variable(comp_group, writer, _src, "src"); + GpuCkwComponentArgument *dst = vtable.declare_variable(comp_group, writer, _dst, "dst"); + + /******************************************************************************** + * 2 - Define CKW constants + ********************************************************************************/ + const auto dst_h = static_cast<int32_t>(_dst->dimension(1)); + const auto dst_dt = to_ckw(_dst->data_type()); + + // CKW constants + auto const_dst_h_i32 = writer->declare_constant_tile(ckw::ConstantData({{dst_h}}, ckw::DataType::Int32)); + auto const_pos_1_i32 = writer->declare_constant_tile(ckw::ConstantData({{1}}, ckw::DataType::Int32)); + auto const_0_i32 = writer->declare_constant_tile(ckw::ConstantData({{0}}, ckw::DataType::Int32)); + auto const_neg_1_fp = writer->declare_constant_tile(ckw::ConstantData({{-1.0f}}, dst_dt)); + auto const_pos_1_fp = writer->declare_constant_tile(ckw::ConstantData({{1.0f}}, dst_dt)); + auto const_0_fp = writer->declare_constant_tile(ckw::ConstantData({{0.0f}}, dst_dt)); + auto const_A_fp = writer->declare_constant_tile(ckw::ConstantData({{_attributes.a()}}, dst_dt)); + auto const_B_fp = writer->declare_constant_tile(ckw::ConstantData({{_attributes.b()}}, dst_dt)); + + /******************************************************************************** + * 3 - Define the compute block parameters and destination tile (if not root component) + * Bind the tile to the tensor to share it among different components and + * initialize the compute block parameters + ********************************************************************************/ + // The compute block parameters depend on the employed tensor format + + // Destination compute block size + int32_t dst_n0 = -1; + int32_t dst_m0 = -1; + + // Destination compute block size left-over + int32_t dst_n0_partial = -1; + int32_t dst_m0_partial = -1; + + // Shift-back for the overlapping-min strategy + int32_t dst_shift_back = -1; + + if (!dst->has_tile()) + { + // If ROOT component, we use ckw::TensorSamplerFormat::Dim0_Dim1xDim2_1 + // as tensor format + const auto root_window = comp_group.get_root_component()->ckw_component_driver()->get_window(); + + dst_n0 = root_window.x().step(); + dst_m0 = root_window.y().step(); + dst_n0_partial = _dst->dimension(0) % dst_n0; + dst_m0_partial = (_dst->dimension(1) * _dst->dimension(2)) % dst_m0; + dst_shift_back = (dst_n0 - dst_n0_partial) % dst_n0; + + ckw::TensorSampler sampler_dst; + sampler_dst.format(ckw::TensorSamplerFormat::Dim0_Dim1xDim2_1); + + if (dst_n0_partial == 0) + { + sampler_dst.address_mode_x(ckw::TensorSamplerAddressModeX::None); + } + else + { + sampler_dst.address_mode_x(ckw::TensorSamplerAddressModeX::OverlappingMin); + } + + if (dst_m0_partial == 0) + { + sampler_dst.address_mode_y(ckw::TensorSamplerAddressModeY::None); + } + else + { + sampler_dst.address_mode_y(ckw::TensorSamplerAddressModeY::ClampToBorderMaxOnly); + } + + sampler_dst.address_mode_z(ckw::TensorSamplerAddressModeZ::None); + sampler_dst.storage(ckw::TensorStorageType::BufferUint8Ptr); + + // Declare destination tile + auto tile_dst = writer->declare_tile("dst", ckw::TileInfo(dst_dt, dst_m0, dst_n0)); + + // Bind tile to the tensor + dst->init_virtual_tensor(tile_dst, sampler_dst); + } + else + { + // dst_m0_partial depends on the TensorSamplerFormat + dst_n0 = dst->tile().tile_info().width(); + dst_m0 = dst->tile().tile_info().height(); + dst_n0_partial = _dst->dimension(0) % dst_n0; + + ckw::TensorSampler sampler_dst = dst->tensor_sampler(); + + if (sampler_dst.format() == ckw::TensorSamplerFormat::Dim0_Dim1xDim2_1) + { + dst_m0_partial = (_dst->dimension(1) * _dst->dimension(2)) % dst_m0; + } + else if (sampler_dst.format() == ckw::TensorSamplerFormat::Dim0_Dim1_Dim2) + { + dst_m0_partial = _dst->dimension(1) % dst_m0; + } + + // Shift-back for the overlapping-min strategy + dst_shift_back = (dst_n0 - dst_n0_partial) % dst_n0; + } + + const auto &tile_dst = dst->tile(); + + /******************************************************************************** + * 4 - Define the compute block parameters CKW constants + ********************************************************************************/ + // Only now we can declare the N0 and M0 as constant + auto const_dst_n0 = writer->declare_constant_tile(ckw::ConstantData({{dst_n0}}, ckw::DataType::Int32)); + auto const_dst_m0 = writer->declare_constant_tile(ckw::ConstantData({{dst_m0}}, ckw::DataType::Int32)); + auto const_dst_shift_back_n0 = + writer->declare_constant_tile(ckw::ConstantData({{dst_shift_back}}, ckw::DataType::Int32)); + + /******************************************************************************** + * 5 - Define the sampler for the input tensor + ********************************************************************************/ + if (!src->has_tile()) + { + // Sampler + ckw::TensorSampler sampler_src = dst->tensor_sampler(); + + auto tile_gid_0 = writer->declare_tile("gid_0_src", ckw::TileInfo(ckw::DataType::Int32)); + auto tile_gid_1 = writer->declare_tile("gid_1_src", ckw::TileInfo(ckw::DataType::Int32)); + auto tile_gid_2 = writer->declare_tile("gid_2_src", ckw::TileInfo(ckw::DataType::Int32)); + + writer->op_get_global_id(tile_gid_0, 0); + writer->op_get_global_id(tile_gid_1, 1); + writer->op_get_global_id(tile_gid_2, 2); + + auto tile_nout0 = writer->declare_tile("nout0_src", ckw::TileInfo(ckw::DataType::Int32)); // OFM + auto tile_mout0 = + writer->declare_tile("mout0_src", ckw::TileInfo(ckw::DataType::Int32)); // WIDTH or WIDTH x HEIGHT + auto tile_mout1 = writer->declare_tile("mout1_src", ckw::TileInfo(ckw::DataType::Int32)); // HEIGHT or 0 + auto tile_bout0 = writer->declare_tile("bout0_src", ckw::TileInfo(ckw::DataType::Int32)); // BATCH SIZE IDX + + get_coordinate_from_gws_overlapping_min(writer, tile_nout0, tile_gid_0, const_dst_n0, const_dst_shift_back_n0, + const_0_i32); + get_coordinate_from_gws(writer, tile_mout0, tile_gid_1, const_dst_m0); + + // Get the boundary aware coordinates at each global dimension index + if (sampler_src.format() == ckw::TensorSamplerFormat::Dim0_Dim1xDim2_1) + { + writer->op_assign(tile_mout1, const_0_i32); + get_coordinate_from_gws(writer, tile_bout0, tile_gid_2, const_pos_1_i32); + } + else if (sampler_src.format() == ckw::TensorSamplerFormat::Dim0_Dim1_Dim2) + { + writer->op_binary(tile_mout1, ckw::BinaryOp::Mod, tile_gid_2, const_dst_h_i32); + writer->op_binary(tile_bout0, ckw::BinaryOp::Div, tile_gid_2, const_dst_h_i32); + } + + auto tile_src = writer->declare_tile("src", ckw::TileInfo(dst_dt, dst_m0, dst_n0)); + + writer->op_load(tile_src, src->tensor(), sampler_src, tile_nout0, tile_mout0, tile_mout1, tile_bout0); + + // Here, init_virtual_tensor() it is used to bring the tile_src outside the compound statement + src->init_virtual_tensor(tile_src, sampler_src); + } + + const auto &tile_src = src->tile(); + + /******************************************************************************** + * 7 - Write the rest of the code + ********************************************************************************/ + switch (_attributes.activation()) + { + case ActivationLayerInfo::ActivationFunction::LOGISTIC: + { + // dst = src * -1 + writer->op_binary(tile_dst, ckw::BinaryOp::Mul, tile_src, const_neg_1_fp); + // dst = exp(src * -1) + writer->op_unary(tile_dst, ckw::UnaryOp::Exp, tile_dst); + // dst = 1 + (exp(src * -1)) + writer->op_binary(tile_dst, ckw::BinaryOp::Add, tile_dst, const_pos_1_fp); + // dst = 1 / 1 + (exp(src * -1)) + writer->op_binary(tile_dst, ckw::BinaryOp::Div, const_pos_1_fp, tile_dst); + break; + } + case ActivationLayerInfo::ActivationFunction::TANH: + { + writer->op_unary(tile_dst, ckw::UnaryOp::Tanh, tile_src); + break; + } + case ActivationLayerInfo::ActivationFunction::RELU: + { + // dst = max(src, 0) + writer->op_binary(tile_dst, ckw::BinaryOp::Max, tile_src, const_0_fp); + break; + } + case ActivationLayerInfo::ActivationFunction::BOUNDED_RELU: + { + //dst = max(src, 0) + writer->op_binary(tile_dst, ckw::BinaryOp::Max, tile_src, const_0_fp); + //dst = min(max(src, 0), A_VAL) + writer->op_binary(tile_dst, ckw::BinaryOp::Min, tile_dst, const_A_fp); + break; + } + case ActivationLayerInfo::ActivationFunction::LU_BOUNDED_RELU: + { + //dst = max(src, B_VAL) + writer->op_binary(tile_dst, ckw::BinaryOp::Max, tile_src, const_B_fp); + //dst = min(max(src, B_VAL), A_VAL) + writer->op_binary(tile_dst, ckw::BinaryOp::Min, tile_dst, const_A_fp); + break; + } + default: + CKW_ASSERT(false); + break; + } + ARM_COMPUTE_ERROR_ON_MSG(dst->has_tile() == false, "You must bind a tile before appending another component"); +} + +Window GpuCkwActivation::get_window() const +{ + ARM_COMPUTE_ERROR_ON_MSG(_dst->tensor_shape().total_size() == 0U, "Destination tensor is not initialized"); + + TensorShape output_shape = _dst->tensor_shape(); + // Collapse Dim 1 (W) and Dim 2 (H) together, leave Dim 0 (C) unchanged + // This is in line with the collapsing convention used by operators like Conv2d + output_shape.collapse(2U, 1U); + constexpr uint32_t vector_size_byte_opencl = 16; + const uint32_t num_elems_processed_per_iteration = + adjust_vec_size(vector_size_byte_opencl / _dst->element_size(), _dst->dimension(0)); + Window win = calculate_max_window(output_shape, Steps(num_elems_processed_per_iteration)); + + return win; +} + +} // namespace dynamic_fusion +} // namespace experimental +} // namespace arm_compute |