未验证 提交 c2153a91 编写于 作者: R Ray Liu 提交者: GitHub

Merge pull request #1106 from codeWorm2015/opencl

update conv cl kernel
...@@ -65,8 +65,7 @@ class CLHelper { ...@@ -65,8 +65,7 @@ class CLHelper {
auto work_size_2 = n * h; auto work_size_2 = n * h;
return {work_size_0, work_size_1, work_size_2}; return {work_size_0, work_size_1, work_size_2};
}else if(image_dim.size()==2){ } else if (image_dim.size() == 2) {
auto image_width = image.ImageWidth(); auto image_width = image.ImageWidth();
auto work_size_0 = image_width / image_dim[1]; auto work_size_0 = image_width / image_dim[1];
......
...@@ -12,10 +12,324 @@ WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. ...@@ -12,10 +12,324 @@ WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
See the License for the specific language governing permissions and See the License for the specific language governing permissions and
limitations under the License. */ limitations under the License. */
#pragma OPENCL EXTENSION cl_khr_fp16 : enable
#define BIASE #define BIASE
#define BATCH_NORM #define BATCH_NORM
#define RELU
#include "conv_kernel.inc.cl" __kernel void conv_3x3(__private const int global_size_dim0,
#undef __private const int global_size_dim1,
#undef __private const int global_size_dim2,
#undef __read_only image2d_t input_image,
__read_only image2d_t filter,
#ifdef BIASE
__read_only image2d_t bias,
#endif
#ifdef BATCH_NORM
__read_only image2d_t new_scale,
__read_only image2d_t new_biase,
#endif
__write_only image2d_t output_image,
__private const int stride,
__private const int offset,
__private const int input_c,
__private const int dilation,
__private const int input_width,/* of one block */
__private const int input_height,/* of one block */
__private const int output_width,
__private const int output_height) {
const int out_c = get_global_id(0);
const int out_w = get_global_id(1);
const int out_nh = get_global_id(2);
int2 stride_xy;
stride_xy.x = stride;
stride_xy.y = stride;
int2 ouput_pos_in_one_block;
ouput_pos_in_one_block.x = out_w;
ouput_pos_in_one_block.y = out_nh;
int2 in_pos_in_one_block;
in_pos_in_one_block.x = ouput_pos_in_one_block.x * stride + offset;
in_pos_in_one_block.y = ouput_pos_in_one_block.y * stride + offset;
#ifdef BIASE
half4 output = read_imageh(bias, sampler, int2(out_c, 0));
#else
half4 output = 0.0f;
#endif
half4 input[9];
const sampler_t sampler = CLK_NORMALIZED_COORDS_TRUE |
CLK_ADDRESS_CLAMP |
CLK_FILTER_NEAREST;
for (int i = 0; i < input_c; ++i) {
int2 pos_in = (int2)(i * input_width + in_pos_in_one_block.x, in_pos_in_one_block.y);
input[0] = select(read_imageh(input_image, sampler,
(int2)(pos_in.x - dilation, pos_in.y - dilation)),
(half4)(0.0f),
(ushort4)(in_pos_in_one_block.x - dilation < 0 || in_pos_in_one_block.y - dilation < 0 || in_pos_in_one_block.x - dilation >= input_width || in_pos_in_one_block.y - dilation >= input_height));
input[1] = select(read_imageh(input_image, sampler,
(int2)(pos_in.x, pos_in.y - dilation)),
(half4)(0.0f),
(ushort4)(in_pos_in_one_block.x < 0 || in_pos_in_one_block.y - dilation < 0 || in_pos_in_one_block.x >= input_width || in_pos_in_one_block.y - dilation >= input_height));
input[2] = select(read_imageh(input_image, sampler,
(int2)(pos_in.x + dilation, pos_in.y - dilation)),
(half4)(0.0f),
(ushort4)(in_pos_in_one_block.x + dilation < 0 || in_pos_in_one_block.y - dilation < 0 || in_pos_in_one_block.x + dilation >= input_width || in_pos_in_one_block.y - dilation >= input_height));
input[3] = select(read_imageh(input_image, sampler,
(int2)(pos_in.x - dilation, pos_in.y)),
(half4)(0.0f),
(ushort4)(in_pos_in_one_block.x - dilation < 0 || in_pos_in_one_block.y < 0 || in_pos_in_one_block.x - dilation >= input_width || in_pos_in_one_block.y >= input_height));
input[4] = select(read_imageh(input_image, sampler,
(int2)(pos_in.x, pos_in.y)),
(half4)(0.0f),
(ushort4)(in_pos_in_one_block.x < 0 || in_pos_in_one_block.y < 0 || in_pos_in_one_block.x >= input_width || in_pos_in_one_block.y >= input_height));
input[5] = select(read_imageh(input_image, sampler,
(int2)(pos_in.x + dilation, pos_in.y)),
(half4)(0.0f),
(ushort4)(in_pos_in_one_block.x + dilation < 0 || in_pos_in_one_block.y < 0 || in_pos_in_one_block.x + dilation >= input_width || in_pos_in_one_block.y >= input_height));
input[6] = select(read_imageh(input_image, sampler,
(int2)(pos_in.x - dilation, pos_in.y + dilation)),
(half4)(0.0f),
(ushort4)(in_pos_in_one_block.x - dilation < 0 || in_pos_in_one_block.y + dilation < 0 || in_pos_in_one_block.x - dilation >= input_width || in_pos_in_one_block.y + dilation >= input_height));
input[7] = select(read_imageh(input_image, sampler,
(int2)(pos_in.x, pos_in.y + dilation)),
(half4)(0.0f),
(ushort4)(in_pos_in_one_block.x < 0 || in_pos_in_one_block.y + dilation < 0 || in_pos_in_one_block.x >= input_width || in_pos_in_one_block.y + dilation >= input_height));
input[8] = select(read_imageh(input_image, sampler,
(int2)(pos_in.x + dilation, pos_in.y + dilation)),
(half4)(0.0f),
(ushort4)(pos_in.x + dilation < 0 || in_pos_in_one_block.y + dilation < 0 || pos_in.x + dilation >= input_width || in_pos_in_one_block.y + dilation >= input_height));
for (int j = 0; j < 9; ++j) {
int2 fuck;
fuck.x = i * 3 + j % 3;
fuck.y = out_c * 4 * 3 + 0 * out_c * 3 + j / 3;
half4 weight_x = read_imageh(filter, sampler, fuck);
output.x += dot(input[j], weight_x);
fuck.y = out_c * 4 * 3 + 1 * out_c * 3 + j / 3;
half4 weight_y = read_imageh(filter, sampler, fuck);
output.y += dot(input[j], weight_y);
fuck.y = out_c * 4 * 3 + 2 * out_c * 3 + j / 3;
half4 weight_z = read_imageh(filter, sampler, fuck);
output.z += dot(input[j], weight_z);
fuck.y = out_c * 4 * 3 + 3 * out_c * 3 + j / 3;
half4 weight_w = read_imageh(filter, sampler, fuck);
output.w += dot(input[j], weight_w);
}
}
#ifdef BATCH_NORM
output = output * read_imageh(new_scale, sampler, int2(out_c, 0)) + read_imageh(new_biase, sampler, int2(out_c, 0))
#endif
#ifdef RELU
output = activation(output);
#endif
write_imageh(output_image, (int2)(out_c * global_size_dim1 + out_w, out_nh), output);
}
__kernel void depth_conv_3x3(__private const int global_size_dim0,
__private const int global_size_dim1,
__private const int global_size_dim2,
__read_only image2d_t input,
__read_only image2d_t filter,
#ifdef BIASE
__read_only image2d_t bias,
#endif
#ifdef BATCH_NORM
__read_only image2d_t new_scale,
__read_only image2d_t new_biase,
#endif
__write_only image2d_t output_image,
__private const int stride,
__private const int offset,
__private const int input_c,
__private const int dilation,
__private const int input_width,/* of one block */
__private const int input_height, /* of one block */
__private const int output_width,
__private const int output_height) {
const int out_c = get_global_id(0);
const int out_w = get_global_id(1);
const int out_nh = get_global_id(2);
const sampler_t sampler = CLK_NORMALIZED_COORDS_TRUE |
CLK_ADDRESS_CLAMP |
CLK_FILTER_NEAREST;
const int batch_index = out_nh / output_height;
const int out_nh_in_one_batch = out_nh % output_height;
const uint kernelHXW = 1;
int2 stride_xy = (int2)(stride, stride);
int2 ouput_pos_in_one_block = (int2)(out_w, out_nh_in_one_batch);
int2 in_pos_in_one_block = ouput_pos_in_one_block * stride_xy + (int2)(offset, offset);
#ifdef BIASE
half4 output = read_imageh(bias, sampler, (int2)(out_c, 0));
#else
half4 output = 0.0f;
#endif
int2 pos_in_input_block = (int2)(out_c * input_width, batch_index * input_height);
int weight_x_to = out_c * 3;
half4 inputs[9];
inputs[0] = select(read_imageh(input, sampler, (int2)(pos_in_input_block.x + in_pos_in_one_block.x - 1, pos_in_input_block.y + in_pos_in_one_block.y - 1)),
(half4)(0.0f),
(ushort4)(in_pos_in_one_block.x - 1 < 0 || in_pos_in_one_block.y - 1 < 0 || in_pos_in_one_block.x - 1 >= input_width || in_pos_in_one_block.y - 1 >= input_height));
inputs[1] = select(read_imageh(input, sampler, (int2)(pos_in_input_block.x + in_pos_in_one_block.x, pos_in_input_block.y + in_pos_in_one_block.y - 1)),
(half4)(0.0f),
(ushort4)(in_pos_in_one_block.x < 0 || in_pos_in_one_block.y - 1 < 0 || in_pos_in_one_block.x >= input_width || in_pos_in_one_block.y - 1 >= input_height));
inputs[2] = select(read_imageh(input, sampler, (int2)(pos_in_input_block.x + in_pos_in_one_block.x + 1, pos_in_input_block.y + in_pos_in_one_block.y - 1)),
(half4)(0.0f),
(ushort4)(in_pos_in_one_block.x + 1 < 0 || in_pos_in_one_block.y - 1 < 0 || in_pos_in_one_block.x + 1 >= input_width || in_pos_in_one_block.y - 1 >= input_height));
inputs[3] = select(read_imageh(input, sampler, (int2)(pos_in_input_block.x + in_pos_in_one_block.x - 1, pos_in_input_block.y + in_pos_in_one_block.y)),
(half4)(0.0f),
(ushort4)(in_pos_in_one_block.x - 1 < 0 || in_pos_in_one_block.y < 0 || in_pos_in_one_block.x - 1 >= input_width || in_pos_in_one_block.y >= input_height));
inputs[4] = select(read_imageh(input, sampler, (int2)(pos_in_input_block.x + in_pos_in_one_block.x, pos_in_input_block.y + in_pos_in_one_block.y)),
(half4)(0.0f),
(ushort4)(in_pos_in_one_block.x < 0 || in_pos_in_one_block.y < 0 || in_pos_in_one_block.x >= input_width || in_pos_in_one_block.y >= input_height));
inputs[5] = select(read_imageh(input, sampler, (int2)(pos_in_input_block.x + in_pos_in_one_block.x + 1, pos_in_input_block.y + in_pos_in_one_block.y)),
(half4)(0.0f),
(ushort4)(in_pos_in_one_block.x + 1 < 0 || in_pos_in_one_block.y < 0 || in_pos_in_one_block.x + 1 >= input_width || in_pos_in_one_block.y >= input_height));
inputs[6] = select(read_imageh(input, sampler, (int2)(pos_in_input_block.x + in_pos_in_one_block.x - 1, pos_in_input_block.y + in_pos_in_one_block.y + 1)),
(half4)(0.0f),
(ushort4)(in_pos_in_one_block.x - 1 < 0 || in_pos_in_one_block.y + 1 < 0 || in_pos_in_one_block.x - 1 >= input_width || in_pos_in_one_block.y + 1 >= input_height));
inputs[7] = select(read_imageh(input, sampler, (int2)(pos_in_input_block.x + in_pos_in_one_block.x, pos_in_input_block.y + in_pos_in_one_block.y + 1)),
(half4)(0.0f),
(ushort4)(in_pos_in_one_block.x < 0 || in_pos_in_one_block.y + 1 < 0 || in_pos_in_one_block.x >= input_width || in_pos_in_one_block.y + 1 >= input_height));
inputs[8] = select(read_imageh(input, sampler, (int2)(pos_in_input_block.x + in_pos_in_one_block.x + 1, pos_in_input_block.y + in_pos_in_one_block.y + 1)),
(half4)(0.0f),
(ushort4)(in_pos_in_one_block.x + 1 < 0 || in_pos_in_one_block.y + 1 < 0 || in_pos_in_one_block.x + 1 >= input_width || in_pos_in_one_block.y + 1 >= input_height));
for (int j = 0; j < 9; ++j) {
half4 input = inputs[j];
half4 weight = read_imageh(filter, sampler, (int2)(weight_x_to + j % 3, j / 3));
output.x += input.x * weight.x;
output.y += input.y * weight.y;
output.z += input.z * weight.z;
output.w += input.w * weight.w;
}
#ifdef BATCH_NORM
output = output * read_imageh(new_scale, sampler, (int2)(out_c, 0)) + read_imageh(new_biase, sampler, (int2)(out_c, 0))
#endif
#ifdef RELU
output = activation(output);
#endif
int2 output_pos = (int2)(out_c * global_size_dim1 + out_w, out_nh);
write_imageh(output_image, output_pos, output);
}
__kernel void conv_1x1(__private const int global_size_dim0,
__private const int global_size_dim1,
__private const int global_size_dim2,
__read_only image2d_t input_image,
__read_only image2d_t filter,
#ifdef BIASE
__read_only image2d_t bias,
#endif
#ifdef BATCH_NORM
__read_only image2d_t new_scale,
__read_only image2d_t new_biase,
#endif
__write_only image2d_t output_image,
__private const int stride,
__private const int offset,
__private const int input_c,
__private const int dilation,
__private const int input_width,/* of one block */
__private const int input_height,/* of one block */
__private const int output_width,
__private const int output_height) {
const int out_c = get_global_id(0);
const int out_w = get_global_id(1);
const int out_nh = get_global_id(2);
const sampler_t sampler = CLK_NORMALIZED_COORDS_TRUE |
CLK_ADDRESS_CLAMP |
CLK_FILTER_NEAREST;
const uint kernelHXW = 1;
int2 stride_xy = (int2)(stride, stride);
int2 ouput_pos_in_one_block = (int2)(out_w, out_nh);
int2 in_pos_in_one_block = ouput_pos_in_one_block * stride_xy + (int2)(offset, offset);
#ifdef BIASE
half4 output = read_imageh(bias, sampler, (int2)(out_c, 0));
#else
half4 output = 0.0f;
#endif
for (int i = 0; i < input_c; ++i) {
int2 pos_in = (int2)(i * input_width + in_pos_in_one_block.x, in_pos_in_one_block.y);
if (pos_in.x >=0 && pos_in.y >= 0 && pos_in.x < input_width && pos_in.y < input_height) {
half4 input = read_imageh(input_image, sampler, pos_in);
half4 weight_x = read_imageh(filter, sampler, (int2)(i, out_c * 4 + 0));
output.x += dot(input, weight_x);
half4 weight_y = read_imageh(filter, sampler, (int2)(i, out_c * 4 + 1));
output.y += dot(input, weight_y);
half4 weight_z = read_imageh(filter, sampler, (int2)(i, out_c * 4 + 2));
output.z += dot(input, weight_z);
half4 weight_w = read_imageh(filter, sampler, (int2)(i, out_c * 4 + 3));
output.w += dot(input, weight_w);
}
}
#ifdef BATCH_NORM
output = output * read_imageh(new_scale, sampler, (int2)(out_c, 0)) + read_imageh(new_biase, sampler, (int2)(out_c, 0))
#endif
#ifdef RELU
output = activation(output);
#endif
int2 output_pos = (int2)(out_c * global_size_dim1 + out_w, out_nh);
write_imageh(output_image, output_pos, output);
}
...@@ -12,6 +12,322 @@ WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. ...@@ -12,6 +12,322 @@ WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
See the License for the specific language governing permissions and See the License for the specific language governing permissions and
limitations under the License. */ limitations under the License. */
#pragma OPENCL EXTENSION cl_khr_fp16 : enable
#define BIASE #define BIASE
#include "conv_kernel.inc.cl"
#undef __kernel void conv_3x3(__private const int global_size_dim0,
__private const int global_size_dim1,
__private const int global_size_dim2,
__read_only image2d_t input_image,
__read_only image2d_t filter,
#ifdef BIASE
__read_only image2d_t bias,
#endif
#ifdef BATCH_NORM
__read_only image2d_t new_scale,
__read_only image2d_t new_biase,
#endif
__write_only image2d_t output_image,
__private const int stride,
__private const int offset,
__private const int input_c,
__private const int dilation,
__private const int input_width,/* of one block */
__private const int input_height,/* of one block */
__private const int output_width,
__private const int output_height) {
const int out_c = get_global_id(0);
const int out_w = get_global_id(1);
const int out_nh = get_global_id(2);
int2 stride_xy;
stride_xy.x = stride;
stride_xy.y = stride;
int2 ouput_pos_in_one_block;
ouput_pos_in_one_block.x = out_w;
ouput_pos_in_one_block.y = out_nh;
int2 in_pos_in_one_block;
in_pos_in_one_block.x = ouput_pos_in_one_block.x * stride + offset;
in_pos_in_one_block.y = ouput_pos_in_one_block.y * stride + offset;
#ifdef BIASE
half4 output = read_imageh(bias, sampler, int2(out_c, 0));
#else
half4 output = 0.0f;
#endif
half4 input[9];
const sampler_t sampler = CLK_NORMALIZED_COORDS_TRUE |
CLK_ADDRESS_CLAMP |
CLK_FILTER_NEAREST;
for (int i = 0; i < input_c; ++i) {
int2 pos_in = (int2)(i * input_width + in_pos_in_one_block.x, in_pos_in_one_block.y);
input[0] = select(read_imageh(input_image, sampler,
(int2)(pos_in.x - dilation, pos_in.y - dilation)),
(half4)(0.0f),
(ushort4)(in_pos_in_one_block.x - dilation < 0 || in_pos_in_one_block.y - dilation < 0 || in_pos_in_one_block.x - dilation >= input_width || in_pos_in_one_block.y - dilation >= input_height));
input[1] = select(read_imageh(input_image, sampler,
(int2)(pos_in.x, pos_in.y - dilation)),
(half4)(0.0f),
(ushort4)(in_pos_in_one_block.x < 0 || in_pos_in_one_block.y - dilation < 0 || in_pos_in_one_block.x >= input_width || in_pos_in_one_block.y - dilation >= input_height));
input[2] = select(read_imageh(input_image, sampler,
(int2)(pos_in.x + dilation, pos_in.y - dilation)),
(half4)(0.0f),
(ushort4)(in_pos_in_one_block.x + dilation < 0 || in_pos_in_one_block.y - dilation < 0 || in_pos_in_one_block.x + dilation >= input_width || in_pos_in_one_block.y - dilation >= input_height));
input[3] = select(read_imageh(input_image, sampler,
(int2)(pos_in.x - dilation, pos_in.y)),
(half4)(0.0f),
(ushort4)(in_pos_in_one_block.x - dilation < 0 || in_pos_in_one_block.y < 0 || in_pos_in_one_block.x - dilation >= input_width || in_pos_in_one_block.y >= input_height));
input[4] = select(read_imageh(input_image, sampler,
(int2)(pos_in.x, pos_in.y)),
(half4)(0.0f),
(ushort4)(in_pos_in_one_block.x < 0 || in_pos_in_one_block.y < 0 || in_pos_in_one_block.x >= input_width || in_pos_in_one_block.y >= input_height));
input[5] = select(read_imageh(input_image, sampler,
(int2)(pos_in.x + dilation, pos_in.y)),
(half4)(0.0f),
(ushort4)(in_pos_in_one_block.x + dilation < 0 || in_pos_in_one_block.y < 0 || in_pos_in_one_block.x + dilation >= input_width || in_pos_in_one_block.y >= input_height));
input[6] = select(read_imageh(input_image, sampler,
(int2)(pos_in.x - dilation, pos_in.y + dilation)),
(half4)(0.0f),
(ushort4)(in_pos_in_one_block.x - dilation < 0 || in_pos_in_one_block.y + dilation < 0 || in_pos_in_one_block.x - dilation >= input_width || in_pos_in_one_block.y + dilation >= input_height));
input[7] = select(read_imageh(input_image, sampler,
(int2)(pos_in.x, pos_in.y + dilation)),
(half4)(0.0f),
(ushort4)(in_pos_in_one_block.x < 0 || in_pos_in_one_block.y + dilation < 0 || in_pos_in_one_block.x >= input_width || in_pos_in_one_block.y + dilation >= input_height));
input[8] = select(read_imageh(input_image, sampler,
(int2)(pos_in.x + dilation, pos_in.y + dilation)),
(half4)(0.0f),
(ushort4)(pos_in.x + dilation < 0 || in_pos_in_one_block.y + dilation < 0 || pos_in.x + dilation >= input_width || in_pos_in_one_block.y + dilation >= input_height));
for (int j = 0; j < 9; ++j) {
int2 fuck;
fuck.x = i * 3 + j % 3;
fuck.y = out_c * 4 * 3 + 0 * out_c * 3 + j / 3;
half4 weight_x = read_imageh(filter, sampler, fuck);
output.x += dot(input[j], weight_x);
fuck.y = out_c * 4 * 3 + 1 * out_c * 3 + j / 3;
half4 weight_y = read_imageh(filter, sampler, fuck);
output.y += dot(input[j], weight_y);
fuck.y = out_c * 4 * 3 + 2 * out_c * 3 + j / 3;
half4 weight_z = read_imageh(filter, sampler, fuck);
output.z += dot(input[j], weight_z);
fuck.y = out_c * 4 * 3 + 3 * out_c * 3 + j / 3;
half4 weight_w = read_imageh(filter, sampler, fuck);
output.w += dot(input[j], weight_w);
}
}
#ifdef BATCH_NORM
output = output * read_imageh(new_scale, sampler, int2(out_c, 0)) + read_imageh(new_biase, sampler, int2(out_c, 0))
#endif
#ifdef RELU
output = activation(output);
#endif
write_imageh(output_image, (int2)(out_c * global_size_dim1 + out_w, out_nh), output);
}
__kernel void depth_conv_3x3(__private const int global_size_dim0,
__private const int global_size_dim1,
__private const int global_size_dim2,
__read_only image2d_t input,
__read_only image2d_t filter,
#ifdef BIASE
__read_only image2d_t bias,
#endif
#ifdef BATCH_NORM
__read_only image2d_t new_scale,
__read_only image2d_t new_biase,
#endif
__write_only image2d_t output_image,
__private const int stride,
__private const int offset,
__private const int input_c,
__private const int dilation,
__private const int input_width,/* of one block */
__private const int input_height, /* of one block */
__private const int output_width,
__private const int output_height) {
const int out_c = get_global_id(0);
const int out_w = get_global_id(1);
const int out_nh = get_global_id(2);
const sampler_t sampler = CLK_NORMALIZED_COORDS_TRUE |
CLK_ADDRESS_CLAMP |
CLK_FILTER_NEAREST;
const int batch_index = out_nh / output_height;
const int out_nh_in_one_batch = out_nh % output_height;
const uint kernelHXW = 1;
int2 stride_xy = (int2)(stride, stride);
int2 ouput_pos_in_one_block = (int2)(out_w, out_nh_in_one_batch);
int2 in_pos_in_one_block = ouput_pos_in_one_block * stride_xy + (int2)(offset, offset);
#ifdef BIASE
half4 output = read_imageh(bias, sampler, (int2)(out_c, 0));
#else
half4 output = 0.0f;
#endif
int2 pos_in_input_block = (int2)(out_c * input_width, batch_index * input_height);
int weight_x_to = out_c * 3;
half4 inputs[9];
inputs[0] = select(read_imageh(input, sampler, (int2)(pos_in_input_block.x + in_pos_in_one_block.x - 1, pos_in_input_block.y + in_pos_in_one_block.y - 1)),
(half4)(0.0f),
(ushort4)(in_pos_in_one_block.x - 1 < 0 || in_pos_in_one_block.y - 1 < 0 || in_pos_in_one_block.x - 1 >= input_width || in_pos_in_one_block.y - 1 >= input_height));
inputs[1] = select(read_imageh(input, sampler, (int2)(pos_in_input_block.x + in_pos_in_one_block.x, pos_in_input_block.y + in_pos_in_one_block.y - 1)),
(half4)(0.0f),
(ushort4)(in_pos_in_one_block.x < 0 || in_pos_in_one_block.y - 1 < 0 || in_pos_in_one_block.x >= input_width || in_pos_in_one_block.y - 1 >= input_height));
inputs[2] = select(read_imageh(input, sampler, (int2)(pos_in_input_block.x + in_pos_in_one_block.x + 1, pos_in_input_block.y + in_pos_in_one_block.y - 1)),
(half4)(0.0f),
(ushort4)(in_pos_in_one_block.x + 1 < 0 || in_pos_in_one_block.y - 1 < 0 || in_pos_in_one_block.x + 1 >= input_width || in_pos_in_one_block.y - 1 >= input_height));
inputs[3] = select(read_imageh(input, sampler, (int2)(pos_in_input_block.x + in_pos_in_one_block.x - 1, pos_in_input_block.y + in_pos_in_one_block.y)),
(half4)(0.0f),
(ushort4)(in_pos_in_one_block.x - 1 < 0 || in_pos_in_one_block.y < 0 || in_pos_in_one_block.x - 1 >= input_width || in_pos_in_one_block.y >= input_height));
inputs[4] = select(read_imageh(input, sampler, (int2)(pos_in_input_block.x + in_pos_in_one_block.x, pos_in_input_block.y + in_pos_in_one_block.y)),
(half4)(0.0f),
(ushort4)(in_pos_in_one_block.x < 0 || in_pos_in_one_block.y < 0 || in_pos_in_one_block.x >= input_width || in_pos_in_one_block.y >= input_height));
inputs[5] = select(read_imageh(input, sampler, (int2)(pos_in_input_block.x + in_pos_in_one_block.x + 1, pos_in_input_block.y + in_pos_in_one_block.y)),
(half4)(0.0f),
(ushort4)(in_pos_in_one_block.x + 1 < 0 || in_pos_in_one_block.y < 0 || in_pos_in_one_block.x + 1 >= input_width || in_pos_in_one_block.y >= input_height));
inputs[6] = select(read_imageh(input, sampler, (int2)(pos_in_input_block.x + in_pos_in_one_block.x - 1, pos_in_input_block.y + in_pos_in_one_block.y + 1)),
(half4)(0.0f),
(ushort4)(in_pos_in_one_block.x - 1 < 0 || in_pos_in_one_block.y + 1 < 0 || in_pos_in_one_block.x - 1 >= input_width || in_pos_in_one_block.y + 1 >= input_height));
inputs[7] = select(read_imageh(input, sampler, (int2)(pos_in_input_block.x + in_pos_in_one_block.x, pos_in_input_block.y + in_pos_in_one_block.y + 1)),
(half4)(0.0f),
(ushort4)(in_pos_in_one_block.x < 0 || in_pos_in_one_block.y + 1 < 0 || in_pos_in_one_block.x >= input_width || in_pos_in_one_block.y + 1 >= input_height));
inputs[8] = select(read_imageh(input, sampler, (int2)(pos_in_input_block.x + in_pos_in_one_block.x + 1, pos_in_input_block.y + in_pos_in_one_block.y + 1)),
(half4)(0.0f),
(ushort4)(in_pos_in_one_block.x + 1 < 0 || in_pos_in_one_block.y + 1 < 0 || in_pos_in_one_block.x + 1 >= input_width || in_pos_in_one_block.y + 1 >= input_height));
for (int j = 0; j < 9; ++j) {
half4 input = inputs[j];
half4 weight = read_imageh(filter, sampler, (int2)(weight_x_to + j % 3, j / 3));
output.x += input.x * weight.x;
output.y += input.y * weight.y;
output.z += input.z * weight.z;
output.w += input.w * weight.w;
}
#ifdef BATCH_NORM
output = output * read_imageh(new_scale, sampler, (int2)(out_c, 0)) + read_imageh(new_biase, sampler, (int2)(out_c, 0))
#endif
#ifdef RELU
output = activation(output);
#endif
int2 output_pos = (int2)(out_c * global_size_dim1 + out_w, out_nh);
write_imageh(output_image, output_pos, output);
}
__kernel void conv_1x1(__private const int global_size_dim0,
__private const int global_size_dim1,
__private const int global_size_dim2,
__read_only image2d_t input_image,
__read_only image2d_t filter,
#ifdef BIASE
__read_only image2d_t bias,
#endif
#ifdef BATCH_NORM
__read_only image2d_t new_scale,
__read_only image2d_t new_biase,
#endif
__write_only image2d_t output_image,
__private const int stride,
__private const int offset,
__private const int input_c,
__private const int dilation,
__private const int input_width,/* of one block */
__private const int input_height,/* of one block */
__private const int output_width,
__private const int output_height) {
const int out_c = get_global_id(0);
const int out_w = get_global_id(1);
const int out_nh = get_global_id(2);
const sampler_t sampler = CLK_NORMALIZED_COORDS_TRUE |
CLK_ADDRESS_CLAMP |
CLK_FILTER_NEAREST;
const uint kernelHXW = 1;
int2 stride_xy = (int2)(stride, stride);
int2 ouput_pos_in_one_block = (int2)(out_w, out_nh);
int2 in_pos_in_one_block = ouput_pos_in_one_block * stride_xy + (int2)(offset, offset);
#ifdef BIASE
half4 output = read_imageh(bias, sampler, (int2)(out_c, 0));
#else
half4 output = 0.0f;
#endif
for (int i = 0; i < input_c; ++i) {
int2 pos_in = (int2)(i * input_width + in_pos_in_one_block.x, in_pos_in_one_block.y);
if (pos_in.x >=0 && pos_in.y >= 0 && pos_in.x < input_width && pos_in.y < input_height) {
half4 input = read_imageh(input_image, sampler, pos_in);
half4 weight_x = read_imageh(filter, sampler, (int2)(i, out_c * 4 + 0));
output.x += dot(input, weight_x);
half4 weight_y = read_imageh(filter, sampler, (int2)(i, out_c * 4 + 1));
output.y += dot(input, weight_y);
half4 weight_z = read_imageh(filter, sampler, (int2)(i, out_c * 4 + 2));
output.z += dot(input, weight_z);
half4 weight_w = read_imageh(filter, sampler, (int2)(i, out_c * 4 + 3));
output.w += dot(input, weight_w);
}
}
#ifdef BATCH_NORM
output = output * read_imageh(new_scale, sampler, (int2)(out_c, 0)) + read_imageh(new_biase, sampler, (int2)(out_c, 0))
#endif
#ifdef RELU
output = activation(output);
#endif
int2 output_pos = (int2)(out_c * global_size_dim1 + out_w, out_nh);
write_imageh(output_image, output_pos, output);
}
...@@ -130,23 +130,54 @@ void ConvAddBNReluKernel<GPU_CL, float>::Compute( ...@@ -130,23 +130,54 @@ void ConvAddBNReluKernel<GPU_CL, float>::Compute(
cl_int status; cl_int status;
status = clSetKernelArg(kernel, 0, sizeof(int), &c_block); status = clSetKernelArg(kernel, 0, sizeof(int), &c_block);
CL_CHECK_ERRORS(status);
status = clSetKernelArg(kernel, 1, sizeof(int), &w); status = clSetKernelArg(kernel, 1, sizeof(int), &w);
CL_CHECK_ERRORS(status);
status = clSetKernelArg(kernel, 2, sizeof(int), &nh); status = clSetKernelArg(kernel, 2, sizeof(int), &nh);
CL_CHECK_ERRORS(status);
status = clSetKernelArg(kernel, 3, sizeof(cl_mem), &input); status = clSetKernelArg(kernel, 3, sizeof(cl_mem), &input);
CL_CHECK_ERRORS(status);
status = clSetKernelArg(kernel, 4, sizeof(cl_mem), &filter); status = clSetKernelArg(kernel, 4, sizeof(cl_mem), &filter);
CL_CHECK_ERRORS(status);
status = clSetKernelArg(kernel, 5, sizeof(cl_mem), &biase); status = clSetKernelArg(kernel, 5, sizeof(cl_mem), &biase);
CL_CHECK_ERRORS(status);
status = clSetKernelArg(kernel, 6, sizeof(cl_mem), &new_scale); status = clSetKernelArg(kernel, 6, sizeof(cl_mem), &new_scale);
CL_CHECK_ERRORS(status);
status = clSetKernelArg(kernel, 7, sizeof(cl_mem), &new_bias); status = clSetKernelArg(kernel, 7, sizeof(cl_mem), &new_bias);
CL_CHECK_ERRORS(status);
status = clSetKernelArg(kernel, 8, sizeof(cl_mem), &output); status = clSetKernelArg(kernel, 8, sizeof(cl_mem), &output);
CL_CHECK_ERRORS(status);
status = clSetKernelArg(kernel, 9, sizeof(int), &stride); status = clSetKernelArg(kernel, 9, sizeof(int), &stride);
CL_CHECK_ERRORS(status);
status = clSetKernelArg(kernel, 10, sizeof(int), &offset); status = clSetKernelArg(kernel, 10, sizeof(int), &offset);
CL_CHECK_ERRORS(status);
status = clSetKernelArg(kernel, 11, sizeof(int), &input_c); status = clSetKernelArg(kernel, 11, sizeof(int), &input_c);
CL_CHECK_ERRORS(status);
status = clSetKernelArg(kernel, 12, sizeof(int), &dilation); status = clSetKernelArg(kernel, 12, sizeof(int), &dilation);
CL_CHECK_ERRORS(status);
status = clSetKernelArg(kernel, 13, sizeof(int), &input_width); status = clSetKernelArg(kernel, 13, sizeof(int), &input_width);
CL_CHECK_ERRORS(status);
status = clSetKernelArg(kernel, 14, sizeof(int), &input_height); status = clSetKernelArg(kernel, 14, sizeof(int), &input_height);
CL_CHECK_ERRORS(status);
status = clSetKernelArg(kernel, 15, sizeof(int), &output_width); status = clSetKernelArg(kernel, 15, sizeof(int), &output_width);
status = clSetKernelArg(kernel, 16, sizeof(int), &output_height); CL_CHECK_ERRORS(status);
status = clSetKernelArg(kernel, 16, sizeof(int), &output_height);
CL_CHECK_ERRORS(status); CL_CHECK_ERRORS(status);
status = status =
......
...@@ -73,27 +73,53 @@ void ConvAddKernel<GPU_CL, float>::Compute( ...@@ -73,27 +73,53 @@ void ConvAddKernel<GPU_CL, float>::Compute(
cl_int status; cl_int status;
status = clSetKernelArg(kernel, 0, sizeof(int), &c_block); status = clSetKernelArg(kernel, 0, sizeof(int), &c_block);
CL_CHECK_ERRORS(status);
status = clSetKernelArg(kernel, 1, sizeof(int), &w); status = clSetKernelArg(kernel, 1, sizeof(int), &w);
CL_CHECK_ERRORS(status);
status = clSetKernelArg(kernel, 2, sizeof(int), &nh); status = clSetKernelArg(kernel, 2, sizeof(int), &nh);
CL_CHECK_ERRORS(status);
status = clSetKernelArg(kernel, 3, sizeof(cl_mem), &input); status = clSetKernelArg(kernel, 3, sizeof(cl_mem), &input);
CL_CHECK_ERRORS(status);
status = clSetKernelArg(kernel, 4, sizeof(cl_mem), &filter); status = clSetKernelArg(kernel, 4, sizeof(cl_mem), &filter);
CL_CHECK_ERRORS(status);
status = clSetKernelArg(kernel, 5, sizeof(cl_mem), &biase); status = clSetKernelArg(kernel, 5, sizeof(cl_mem), &biase);
CL_CHECK_ERRORS(status);
status = clSetKernelArg(kernel, 6, sizeof(cl_mem), &output); status = clSetKernelArg(kernel, 6, sizeof(cl_mem), &output);
CL_CHECK_ERRORS(status);
status = clSetKernelArg(kernel, 7, sizeof(int), &stride); status = clSetKernelArg(kernel, 7, sizeof(int), &stride);
CL_CHECK_ERRORS(status);
status = clSetKernelArg(kernel, 8, sizeof(int), &offset); status = clSetKernelArg(kernel, 8, sizeof(int), &offset);
CL_CHECK_ERRORS(status);
status = clSetKernelArg(kernel, 9, sizeof(int), &input_c); status = clSetKernelArg(kernel, 9, sizeof(int), &input_c);
CL_CHECK_ERRORS(status);
status = clSetKernelArg(kernel, 10, sizeof(int), &dilation); status = clSetKernelArg(kernel, 10, sizeof(int), &dilation);
CL_CHECK_ERRORS(status);
status = clSetKernelArg(kernel, 11, sizeof(int), &input_width); status = clSetKernelArg(kernel, 11, sizeof(int), &input_width);
CL_CHECK_ERRORS(status);
status = clSetKernelArg(kernel, 12, sizeof(int), &input_height); status = clSetKernelArg(kernel, 12, sizeof(int), &input_height);
CL_CHECK_ERRORS(status);
status = clSetKernelArg(kernel, 13, sizeof(int), &output_width); status = clSetKernelArg(kernel, 13, sizeof(int), &output_width);
status = clSetKernelArg(kernel, 14, sizeof(int), &output_height); CL_CHECK_ERRORS(status);
status = clSetKernelArg(kernel, 14, sizeof(int), &output_height);
CL_CHECK_ERRORS(status); CL_CHECK_ERRORS(status);
status = status =
clEnqueueNDRangeKernel(this->cl_helper_.CLCommandQueue(), kernel, 3, NULL, clEnqueueNDRangeKernel(this->cl_helper_.CLCommandQueue(), kernel, 3, NULL,
default_work_size.data(), NULL, 0, NULL, NULL); default_work_size.data(), NULL, 0, NULL, NULL);
CL_CHECK_ERRORS(status); CL_CHECK_ERRORS(status);
} }
......
...@@ -22,14 +22,14 @@ namespace operators { ...@@ -22,14 +22,14 @@ namespace operators {
template <> template <>
bool ElementwiseAddKernel<GPU_CL, float>::Init( bool ElementwiseAddKernel<GPU_CL, float>::Init(
ElementwiseAddParam<GPU_CL> *param) { ElementwiseAddParam<GPU_CL> *param) {
CLImage *bias = (CLImage*)param->InputY(); CLImage *bias = (CLImage *)param->InputY();
bias->InitCLImage(cl_helper_.CLContext(),this->cl_helper_.CLCommandQueue()); bias->InitCLImage(cl_helper_.CLContext(), this->cl_helper_.CLCommandQueue());
if(bias->dims().size()==4){ if (bias->dims().size() == 4) {
this->cl_helper_.AddKernel("elementwise_add", "elementwise_add_kernel.cl"); this->cl_helper_.AddKernel("elementwise_add", "elementwise_add_kernel.cl");
}else if(param->InputY()->dims().size()==1){ } else if (param->InputY()->dims().size() == 1) {
DLOG<<"-----init add-----"; DLOG << "-----init add-----";
this->cl_helper_.AddKernel("channel_add", "channel_add_kernel.cl"); this->cl_helper_.AddKernel("channel_add", "channel_add_kernel.cl");
}else{ } else {
DLOG << "error:bias dims is error"; DLOG << "error:bias dims is error";
} }
...@@ -44,7 +44,7 @@ void ElementwiseAddKernel<GPU_CL, float>::Compute( ...@@ -44,7 +44,7 @@ void ElementwiseAddKernel<GPU_CL, float>::Compute(
auto output = param.Out(); auto output = param.Out();
cl_int status; cl_int status;
auto kernel = this->cl_helper_.KernelAt(0); auto kernel = this->cl_helper_.KernelAt(0);
if(bias->dims().size()==4){ if (bias->dims().size() == 4) {
cl_mem input_image = input->GetCLImage(); cl_mem input_image = input->GetCLImage();
cl_mem bias_image = bias->GetCLImage(); cl_mem bias_image = bias->GetCLImage();
cl_mem output_image = output->GetCLImage(); cl_mem output_image = output->GetCLImage();
...@@ -57,10 +57,11 @@ void ElementwiseAddKernel<GPU_CL, float>::Compute( ...@@ -57,10 +57,11 @@ void ElementwiseAddKernel<GPU_CL, float>::Compute(
int width = input->ImageWidth(); int width = input->ImageWidth();
int height = input->ImageHeight(); int height = input->ImageHeight();
size_t global_work_size[2] = {width, height}; size_t global_work_size[2] = {width, height};
status = clEnqueueNDRangeKernel(this->cl_helper_.CLCommandQueue(), kernel, 2, status =
clEnqueueNDRangeKernel(this->cl_helper_.CLCommandQueue(), kernel, 2,
NULL, global_work_size, NULL, 0, NULL, NULL); NULL, global_work_size, NULL, 0, NULL, NULL);
CL_CHECK_ERRORS(status); CL_CHECK_ERRORS(status);
}else if(bias->dims().size()==1){ } else if (bias->dims().size() == 1) {
cl_mem input_image = input->GetCLImage(); cl_mem input_image = input->GetCLImage();
cl_mem bias_image = bias->GetCLImage(); cl_mem bias_image = bias->GetCLImage();
cl_mem output_image = output->GetCLImage(); cl_mem output_image = output->GetCLImage();
...@@ -76,13 +77,13 @@ void ElementwiseAddKernel<GPU_CL, float>::Compute( ...@@ -76,13 +77,13 @@ void ElementwiseAddKernel<GPU_CL, float>::Compute(
int width = input->ImageWidth(); int width = input->ImageWidth();
int height = input->ImageHeight(); int height = input->ImageHeight();
size_t global_work_size[2] = {width, height}; size_t global_work_size[2] = {width, height};
status = clEnqueueNDRangeKernel(this->cl_helper_.CLCommandQueue(), kernel, 2, status =
clEnqueueNDRangeKernel(this->cl_helper_.CLCommandQueue(), kernel, 2,
NULL, global_work_size, NULL, 0, NULL, NULL); NULL, global_work_size, NULL, 0, NULL, NULL);
CL_CHECK_ERRORS(status); CL_CHECK_ERRORS(status);
}else{ } else {
DLOG << "error:bias dims is error"; DLOG << "error:bias dims is error";
} }
} }
template class ElementwiseAddKernel<GPU_CL, float>; template class ElementwiseAddKernel<GPU_CL, float>;
......
...@@ -20,23 +20,23 @@ namespace operators { ...@@ -20,23 +20,23 @@ namespace operators {
template <> template <>
bool ReluKernel<GPU_CL, float>::Init(ReluParam<GPU_CL>* param) { bool ReluKernel<GPU_CL, float>::Init(ReluParam<GPU_CL>* param) {
// this->cl_helper_.AddKernel("relu", "relu.cl"); // this->cl_helper_.AddKernel("relu", "relu.cl");
return true; return true;
} }
template <> template <>
void ReluKernel<GPU_CL, float>::Compute(const ReluParam<GPU_CL>& param) { void ReluKernel<GPU_CL, float>::Compute(const ReluParam<GPU_CL>& param) {
// auto kernel = this->cl_helper_.KernelAt(0); // auto kernel = this->cl_helper_.KernelAt(0);
// const auto* input = param.InputX(); // const auto* input = param.InputX();
// auto* output = param.Out(); // auto* output = param.Out();
// auto default_work_size = this->cl_helper_.DefaultWorkSize(*output); // auto default_work_size = this->cl_helper_.DefaultWorkSize(*output);
// auto inputImage = input->GetCLImage(); // auto inputImage = input->GetCLImage();
// auto outputImage = output->GetCLImage(); // auto outputImage = output->GetCLImage();
// clSetKernelArg(kernel, 0, sizeof(cl_mem), &inputImage); // clSetKernelArg(kernel, 0, sizeof(cl_mem), &inputImage);
// clSetKernelArg(kernel, 1, sizeof(cl_mem), &outputImage); // clSetKernelArg(kernel, 1, sizeof(cl_mem), &outputImage);
// const size_t work_size[2] = {input->ImageWidth(), input->ImageHeight()}; // const size_t work_size[2] = {input->ImageWidth(), input->ImageHeight()};
// clEnqueueNDRangeKernel(this->cl_helper_.CLCommandQueue(), kernel, 3, NULL, // clEnqueueNDRangeKernel(this->cl_helper_.CLCommandQueue(), kernel, 3, NULL,
// work_size, NULL, 0, NULL, NULL); // work_size, NULL, 0, NULL, NULL);
} }
template class ReluKernel<GPU_CL, float>; template class ReluKernel<GPU_CL, float>;
......
...@@ -38,7 +38,7 @@ void SoftmaxKernel<GPU_CL, float>::Compute(const SoftmaxParam<GPU_CL> &param) { ...@@ -38,7 +38,7 @@ void SoftmaxKernel<GPU_CL, float>::Compute(const SoftmaxParam<GPU_CL> &param) {
const auto &inputDim = input->dims(); const auto &inputDim = input->dims();
int dims[4] = {1, 1, 1, 1}; int dims[4] = {1, 1, 1, 1};
for (int i = 0; i < inputDim.size(); i++) { for (int i = 0; i < inputDim.size(); i++) {
dims[4-inputDim.size()+i] = inputDim[i]; dims[4 - inputDim.size() + i] = inputDim[i];
} }
clSetKernelArg(kernel, 2, sizeof(int), &dims); clSetKernelArg(kernel, 2, sizeof(int), &dims);
clSetKernelArg(kernel, 3, sizeof(int), &dims[1]); clSetKernelArg(kernel, 3, sizeof(int), &dims[1]);
......
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