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105 lines
3.7 KiB
Plaintext
105 lines
3.7 KiB
Plaintext
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extern "C" {
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#include "convolutional_layer.h"
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#include "deconvolutional_layer.h"
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#include "gemm.h"
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#include "blas.h"
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#include "im2col.h"
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#include "col2im.h"
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#include "utils.h"
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#include "cuda.h"
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}
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extern "C" void forward_deconvolutional_layer_gpu(deconvolutional_layer layer, float *in)
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{
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int i;
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int out_h = deconvolutional_out_height(layer);
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int out_w = deconvolutional_out_width(layer);
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int size = out_h*out_w;
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int m = layer.size*layer.size*layer.n;
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int n = layer.h*layer.w;
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int k = layer.c;
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bias_output_gpu(layer.output_gpu, layer.biases_gpu, layer.batch, layer.n, size);
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for(i = 0; i < layer.batch; ++i){
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float *a = layer.filters_gpu;
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float *b = in + i*layer.c*layer.h*layer.w;
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float *c = layer.col_image_gpu;
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gemm_ongpu(1,0,m,n,k,1,a,m,b,n,0,c,n);
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col2im_ongpu(c, layer.n, out_h, out_w, layer.size, layer.stride, 0, layer.output_gpu+i*layer.n*size);
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}
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activate_array(layer.output_gpu, layer.batch*layer.n*size, layer.activation);
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}
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extern "C" void backward_deconvolutional_layer_gpu(deconvolutional_layer layer, float *in, float *delta_gpu)
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{
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float alpha = 1./layer.batch;
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int out_h = deconvolutional_out_height(layer);
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int out_w = deconvolutional_out_width(layer);
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int size = out_h*out_w;
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int i;
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gradient_array(layer.output_gpu, size*layer.n*layer.batch, layer.activation, layer.delta_gpu);
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backward_bias(layer.bias_updates_gpu, layer.delta, layer.batch, layer.n, size);
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if(delta_gpu) memset(delta_gpu, 0, layer.batch*layer.h*layer.w*layer.c*sizeof(float));
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for(i = 0; i < layer.batch; ++i){
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int m = layer.c;
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int n = layer.size*layer.size*layer.n;
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int k = layer.h*layer.w;
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float *a = in + i*m*n;
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float *b = layer.col_image_gpu;
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float *c = layer.filter_updates_gpu;
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im2col_ongpu(layer.delta_gpu + i*layer.n*size, layer.n, out_h, out_w,
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layer.size, layer.stride, 0, b);
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gemm_ongpu(0,1,m,n,k,alpha,a,k,b,k,1,c,n);
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if(delta_gpu){
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int m = layer.c;
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int n = layer.h*layer.w;
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int k = layer.size*layer.size*layer.n;
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float *a = layer.filters_gpu;
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float *b = layer.col_image_gpu;
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float *c = delta_gpu + i*n*m;
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gemm(0,0,m,n,k,1,a,k,b,n,1,c,n);
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}
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}
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}
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extern "C" void pull_deconvolutional_layer(deconvolutional_layer layer)
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{
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cuda_pull_array(layer.filters_gpu, layer.filters, layer.c*layer.n*layer.size*layer.size);
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cuda_pull_array(layer.biases_gpu, layer.biases, layer.n);
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cuda_pull_array(layer.filter_updates_gpu, layer.filter_updates, layer.c*layer.n*layer.size*layer.size);
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cuda_pull_array(layer.bias_updates_gpu, layer.bias_updates, layer.n);
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}
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extern "C" void push_deconvolutional_layer(deconvolutional_layer layer)
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{
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cuda_push_array(layer.filters_gpu, layer.filters, layer.c*layer.n*layer.size*layer.size);
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cuda_push_array(layer.biases_gpu, layer.biases, layer.n);
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cuda_push_array(layer.filter_updates_gpu, layer.filter_updates, layer.c*layer.n*layer.size*layer.size);
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cuda_push_array(layer.bias_updates_gpu, layer.bias_updates, layer.n);
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}
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extern "C" void update_deconvolutional_layer_gpu(deconvolutional_layer layer)
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{
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int size = layer.size*layer.size*layer.c*layer.n;
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axpy_ongpu(layer.n, layer.learning_rate, layer.bias_updates_gpu, 1, layer.biases_gpu, 1);
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scal_ongpu(layer.n,layer.momentum, layer.bias_updates_gpu, 1);
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axpy_ongpu(size, -layer.decay, layer.filters_gpu, 1, layer.filter_updates_gpu, 1);
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axpy_ongpu(size, layer.learning_rate, layer.filter_updates_gpu, 1, layer.filters_gpu, 1);
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scal_ongpu(size, layer.momentum, layer.filter_updates_gpu, 1);
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}
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