183 lines
5.5 KiB
Text
183 lines
5.5 KiB
Text
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#include "MultiplicationApproximationGPU.h"
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#include <omp.h>
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#include <stdio.h>
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#include <string.h>
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#include <algorithm>
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#include <cassert>
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#include <cmath>
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#include <iostream>
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#include <vector>
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#include "gpu_approximation_multiplication_function.cu"
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MultiplicationApproximationGPU::MultiplicationApproximationGPU()
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{
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};
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MultiplicationApproximationGPU::~MultiplicationApproximationGPU()
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{
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};
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void MultiplicationApproximationGPU::entrypoint(
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int64_t np_input_pointer_addr,
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int64_t np_weight_pointer_addr,
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int64_t np_output_pointer_addr,
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int64_t pattern_dim,
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int64_t feature_dim,
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int64_t x_dim,
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int64_t y_dim,
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int64_t input_channel_dim,
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int64_t number_of_processes,
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bool approximation_enable,
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int64_t number_of_trunc_bits,
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int64_t number_of_frac)
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{
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// int64_t number_of_pattern = pattern_dim;
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float* np_input_pointer = (float*)np_input_pointer_addr;
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float* np_weight_pointer = (float*)np_weight_pointer_addr;
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float* np_output_pointer = (float*)np_output_pointer_addr;
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assert((np_input_pointer != nullptr));
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assert((np_output_pointer != nullptr));
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assert((np_weight_pointer != nullptr));
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assert((pattern_dim > 0));
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assert((feature_dim > 0));
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assert((x_dim > 0));
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assert((y_dim > 0));
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assert((input_channel_dim > 0));
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assert ((number_of_processes <= 0));
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calculate_gpu(np_input_pointer, np_weight_pointer,
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np_output_pointer, pattern_dim, feature_dim, x_dim, y_dim,
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input_channel_dim, approximation_enable,
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number_of_trunc_bits, number_of_frac);
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return;
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};
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__global__ void kernel_approx_multiplication(
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float* __restrict__ input_pointer,
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float* __restrict__ weight_pointer,
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float* __restrict__ output_pointer,
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uint64_t pattern_dim,
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uint64_t feature_dim,
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uint64_t x_dim,
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uint64_t y_dim,
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uint64_t input_channel_dim,
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size_t max_threadable_tasks,
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uint64_t input_index_scale,
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uint64_t number_of_frac_bits,
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bool approximation_enable,
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uint64_t number_of_trunc_bits,
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uint32_t ap_mask)
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{
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int idx = threadIdx.x + blockIdx.x * blockDim.x;
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if (idx < max_threadable_tasks)
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{
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int pattern_id = idx / feature_dim;
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int feature_id = idx - (pattern_id * feature_dim);
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int x_id = blockIdx.y;
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int y_id = blockIdx.z;
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float* weight_pointer_sub = weight_pointer + feature_id * input_channel_dim;
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float* input_pointer_sub = input_pointer + pattern_id * input_channel_dim * x_dim * y_dim + x_id * y_dim + y_id;
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float* output_pointer_sub = output_pointer +
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pattern_id * feature_dim * x_dim * y_dim +
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feature_id * x_dim * y_dim + x_id * y_dim + y_id;
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*output_pointer_sub = 0.0;
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for (size_t counter = 0; counter < input_channel_dim; counter++)
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{
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*output_pointer_sub += gpu_approximation_multiplication_function(
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weight_pointer_sub[counter],
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input_pointer_sub[counter * input_index_scale],
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number_of_frac_bits, approximation_enable,
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number_of_trunc_bits, ap_mask);
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}
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}
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};
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void MultiplicationApproximationGPU::calculate_gpu(
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float* np_input_pointer,
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float* np_weight_pointer,
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float* np_output_pointer,
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size_t pattern_dim,
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size_t feature_dim,
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size_t x_dim,
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size_t y_dim,
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size_t input_channel_dim,
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bool approximation_enable,
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size_t number_of_trunc_bits,
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size_t number_of_frac_bits)
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{
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uint32_t ap_mask = static_cast<uint64_t>(pow(2, number_of_trunc_bits)) - 1;
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// std::cout << approximation_enable << std::endl;
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// std::cout << number_of_trunc_bits << std::endl;
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// std::cout << number_of_frac_bits << std::endl;
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cudaError_t status;
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assert((x_dim < 65535));
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assert((y_dim < 65535));
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// //////////////////////////////////////
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// Calculate the distribution on the GPU
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// //////////////////////////////////////
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int min_grid_size;
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int block_size;
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int grid_size;
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size_t dynamic_s_mem_size = 0;
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size_t max_threadable_tasks = pattern_dim * feature_dim * x_dim * y_dim;
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// https://docs.nvidia.com/cuda/cuda-c-programming-guide/index.html?highlight=blocksize#occupancy-calculator
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status = cudaOccupancyMaxPotentialBlockSize(&min_grid_size, &block_size,
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(void*)kernel_approx_multiplication,
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dynamic_s_mem_size, max_threadable_tasks);
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assert((status == cudaSuccess));
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// https://docs.nvidia.com/cuda/cuda-c-programming-guide/index.html#features-and-technical-specifications
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// Maximum dimensionality of grid of thread blocks: 3
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// Maximum x -dimension of a grid of thread blocks: (2^31)-1
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// Maximum y- or z-dimension of a grid of thread blocks: 65535
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// Round up according to array size
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grid_size = ((pattern_dim * feature_dim) + block_size - 1) / block_size;
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// std::cout << min_grid_size << std::endl;
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// std::cout << grid_size << std::endl;
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// std::cout << block_size << std::endl;
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// std::cout << max_threadable_tasks << std::endl;
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dim3 grid(grid_size, x_dim, y_dim);
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kernel_approx_multiplication<<<grid, block_size>>>(np_input_pointer,
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np_weight_pointer,
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np_output_pointer,
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pattern_dim,
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feature_dim,
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x_dim,
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y_dim,
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input_channel_dim,
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(pattern_dim * feature_dim),
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(x_dim * y_dim),
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number_of_frac_bits,
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approximation_enable,
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number_of_trunc_bits,
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ap_mask);
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status = cudaDeviceSynchronize();
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assert((status == cudaSuccess));
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return;
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};
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