api.cpp 39.3 KB
Newer Older
H
hanbuhe 已提交
1 2 3 4 5 6 7 8 9 10 11 12 13 14
/* Copyright (c) 2018 PaddlePaddle Authors. All Rights Reserved.

Licensed under the Apache License, Version 2.0 (the "License");
you may not use this file except in compliance with the License.
You may obtain a copy of the License at

    http://www.apache.org/licenses/LICENSE-2.0

Unless required by applicable law or agreed to in writing, software
distributed under the License is distributed on an "AS IS" BASIS,
WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
See the License for the specific language governing permissions and
limitations under the License. */

Z
zhangyang 已提交
15 16
#include "fpga/V1/api.h"
#include "fpga/V1/bias_scale.h"
Z
zhangyang 已提交
17
#include "fpga/V1/deconv_filter.h"
Z
zhangyang 已提交
18 19
#include "fpga/V1/filter.h"
#include "fpga/V1/image.h"
Z
zhangyang 已提交
20

Z
zhangyang 已提交
21
namespace paddle_mobile {
H
hanbuhe 已提交
22 23
namespace fpga {

24 25 26
#define USE_RELU 1
#define USE_BIAS 2

Z
zhangyang 已提交
27 28
void format_image(framework::Tensor *image_tensor) {
  auto dims = image_tensor->dims();
Z
zhangyang 已提交
29
  auto channel = dims[1], height = dims[2], width = dims[3];
30
  auto data_ptr = image_tensor->data<float>();
Z
zhangyang 已提交
31
  size_t memory_size = channel * height * width * sizeof(float);
32
  auto new_data = (float *)fpga_malloc(memory_size);  // NOLINT
Z
zhangyang 已提交
33 34 35 36 37
  fpga_copy(new_data, data_ptr, memory_size);
  image::format_image(&new_data, channel, height, width);
  image_tensor->reset_data_ptr(new_data);
}

38
void format_fp16_ofm(framework::Tensor *ofm_tensor) {
Z
zhangyang 已提交
39
  auto dims = ofm_tensor->dims();
40 41 42 43 44 45 46 47 48 49 50 51 52 53 54
  size_t memory_size = 0;
  if (dims.size() == 4) {
    auto channel = dims[1], height = dims[2], width = dims[3];
    memory_size =
        height * align_to_x(channel * width, IMAGE_ALIGNMENT) * sizeof(half);
  } else if (dims.size() == 2) {
    memory_size = align_to_x(dims[1], IMAGE_ALIGNMENT) * sizeof(half);
  } else {
    DLOG << "Wrong ofm dimension";
  }
  auto p = fpga_malloc(memory_size);
  memset(p, 0, memory_size);
  ofm_tensor->reset_data_ptr(p);
}

55 56 57 58 59 60 61 62 63 64 65 66 67 68 69 70
void format_fp16_ofm(framework::Tensor *ofm_tensor, framework::DDim dims) {
  // auto dims = ofm_tensor->dims();
  size_t memory_size = 0;
  if (dims.size() == 4) {
    auto channel = dims[1], height = dims[2], width = dims[3];
    memory_size =
        height * align_to_x(channel * width, IMAGE_ALIGNMENT) * sizeof(half);
  } else if (dims.size() == 2) {
    memory_size = align_to_x(dims[1], IMAGE_ALIGNMENT) * sizeof(half);
  } else {
    DLOG << "Wrong ofm dimension";
  }
  auto p = fpga_malloc(memory_size);
  memset(p, 0, memory_size);
  ofm_tensor->reset_data_ptr(p);
}
71 72 73 74 75 76 77 78 79 80 81 82 83 84 85
void format_fp32_ofm(framework::Tensor *ofm_tensor) {
  auto dims = ofm_tensor->dims();
  size_t memory_size = 0;
  if (dims.size() == 4) {
    auto channel = dims[1], height = dims[2], width = dims[3];
    memory_size =
        height * align_to_x(channel * width, IMAGE_ALIGNMENT) * sizeof(float);
  } else if (dims.size() == 2) {
    memory_size = align_to_x(dims[1], IMAGE_ALIGNMENT) * sizeof(float);
  } else {
    DLOG << "Wrong ofm dimension";
  }
  auto p = fpga_malloc(memory_size);
  memset(p, 0, memory_size);
  ofm_tensor->reset_data_ptr(p);
Z
zhangyang 已提交
86 87
}

Z
zhangyang 已提交
88 89 90 91
float filter_find_max(framework::Tensor *filter_tensor) {
  auto filter_ptr = filter_tensor->data<float>();
  return filter::find_max(filter_ptr, filter_tensor->numel());
}
Z
zhangyang 已提交
92 93 94

int get_plit_num(framework::Tensor *filter_tensor) {
  auto dims = filter_tensor->dims();
Z
zhangyang 已提交
95 96
  auto chw = dims[1] * dims[2] * dims[3];
  auto num = dims[0];
Z
zhangyang 已提交
97 98 99
  int div_capacity = filter::calc_division_capacity(chw);
  return filter::calc_split_num(num, div_capacity);
}
Z
zhangyang 已提交
100 101 102 103 104 105 106
int get_deconv_plit_num(framework::Tensor *filter_tensor, int stride) {
  auto dims = filter_tensor->dims();
  auto chw = dims[1] * dims[2] / stride * dims[3] / stride;
  auto num = dims[0] * stride;
  int div_capacity = filter::calc_division_capacity(chw);
  return filter::calc_split_num(num, div_capacity);
}
Z
zhangyang 已提交
107

108
int get_filter_num_per_div(framework::Tensor *filter_tensor, int group_num) {
Z
zhangyang 已提交
109
  auto dims = filter_tensor->dims();
Z
zhangyang 已提交
110 111
  auto chw = dims[1] * dims[2] * dims[3];
  auto num = dims[0];
Z
zhangyang 已提交
112 113 114 115
  int div_capacity = filter::calc_division_capacity(chw);
  return filter::calc_num_per_div(num, group_num, div_capacity);
}

Z
zhangyang 已提交
116 117 118 119 120 121 122 123 124
int get_deconv_filter_num_per_div(framework::Tensor *filter_tensor,
                                  int group_num, int stride) {
  auto dims = filter_tensor->dims();
  auto chw = dims[1] * dims[2] / stride * dims[3] / stride;
  auto num = dims[0] * stride;
  int div_capacity = filter::calc_division_capacity(chw);
  return filter::calc_num_per_div(num, group_num, div_capacity);
}

Z
zhangyang 已提交
125 126 127 128
int get_aligned_filter_element_num(int chw) {
  return align_to_x(chw, FILTER_ELEMENT_ALIGNMENT);
}

Z
zhangyang 已提交
129 130
void format_filter(framework::Tensor *filter_tensor, float max_value,
                   int group_num) {
131 132
  filter_tensor->scale[0] = float(max_value / 127.0);  // NOLINT
  filter_tensor->scale[1] = float(127.0 / max_value);  // NOLINT
Z
zhangyang 已提交
133
  auto dims = filter_tensor->dims();
Z
zhangyang 已提交
134
  auto num = dims[0], channel = dims[1], height = dims[2], width = dims[3];
135
  auto data_ptr = filter_tensor->data<float>();
Z
zhangyang 已提交
136
  size_t memory_size = num * channel * height * width * sizeof(float);
137
  auto new_data = (float *)fpga_malloc(memory_size);  // NOLINT
Z
zhangyang 已提交
138 139 140 141 142
  fpga_copy(new_data, data_ptr, memory_size);
  filter::format_filter(&new_data, num, channel, height, width, group_num,
                        max_value);
  filter_tensor->reset_data_ptr(new_data);
}
143 144 145 146 147 148 149 150 151 152
void format_dwconv_filter(framework::Tensor *filter_tensor, float *scale_ptr) {
  auto dims = filter_tensor->dims();
  auto num = dims[0], height = dims[2], width = dims[3];
  auto data_ptr = filter_tensor->data<float>();
  size_t memory_size = num * height * width * sizeof(float);
  auto new_data = (float *)fpga_malloc(memory_size);  // NOLINT
  fpga_copy(new_data, data_ptr, memory_size);
  filter::format_dwconv_filter(&new_data, num, height, width, scale_ptr);
  filter_tensor->reset_data_ptr(new_data);
}
Z
zhangyang 已提交
153

qnqinan's avatar
qnqinan 已提交
154 155 156 157 158 159 160 161 162 163 164 165 166 167 168 169 170 171 172 173 174 175 176 177
void format_DWDconv_filter(framework::Tensor *filter_tensor, float *scale_ptr,
                           int stride) {
  auto dims = filter_tensor->dims();
  auto num = dims[0], height = dims[2], width = dims[3];
  auto data_ptr = filter_tensor->data<float>();
  size_t memory_size = num * height * width * sizeof(float);
  auto new_data = (float *)fpga_malloc(memory_size);  // NOLINT
  fpga_copy(new_data, data_ptr, memory_size);

  int hw = height * width;
  deconv_filter::deconv_NC_convert(&new_data, num, 1, hw);

  num = dims[1];
  int channel = dims[0];

  deconv_filter::DWDconv_format_filter(&new_data, num, channel, height, width,
                                       scale_ptr, stride);

  //  framework::DDim dims_new =
  //      framework::make_ddim({num, 1, height, width});
  //  filter_tensor->Resize(dims_new);
  filter_tensor->reset_data_ptr(new_data);
}

Z
zhangyang 已提交
178 179 180 181 182 183 184 185 186 187 188 189 190
void format_fc_filter(framework::Tensor *filter_tensor, float max_value) {
  filter_tensor->scale[0] = float(max_value / 127.0);  // NOLINT
  filter_tensor->scale[1] = float(127.0 / max_value);  // NOLINT
  auto dims = filter_tensor->dims();
  auto num = dims[0], channel = dims[1], height = dims[2], width = dims[3];
  auto data_ptr = filter_tensor->data<float>();
  size_t memory_size = num * channel * height * width * sizeof(float);
  auto new_data = (float *)fpga_malloc(memory_size);  // NOLINT
  fpga_copy(new_data, data_ptr, memory_size);
  filter::format_fc_filter(&new_data, num, channel, height, width, 1,
                           max_value);
  filter_tensor->reset_data_ptr(new_data);
}
Z
zhangyang 已提交
191 192 193 194 195 196 197 198 199 200 201 202 203 204 205 206 207 208 209 210 211 212 213 214 215 216
void format_deconv_filter(framework::Tensor *filter_tensor, float max_value,
                          int group_num, int stride) {
  filter_tensor->scale[0] = float(max_value / 127.0);  // NOLINT
  filter_tensor->scale[1] = float(127.0 / max_value);  // NOLINT
  auto dims = filter_tensor->dims();
  auto num = dims[0], channel = dims[1], height = dims[2], width = dims[3];
  auto data_ptr = filter_tensor->data<float>();
  size_t memory_size = num * channel * height * width * sizeof(float);
  auto new_data = (float *)fpga_malloc(memory_size);  // NOLINT
  memcpy(new_data, data_ptr, memory_size);

  int hw = height * width;
  deconv_filter::deconv_NC_convert(&new_data, num, channel, hw);

  num = dims[1];
  channel = dims[0];
  deconv_filter::deconv_format_filter(
      &new_data, (int)num, (int)channel,          // NOLINT
      (int)height,                                // NOLINT
      (int)width, group_num, max_value, stride);  // NOLINT

  framework::DDim dims_new =
      framework::make_ddim({num, channel, height, width});
  filter_tensor->Resize(dims_new);
  filter_tensor->reset_data_ptr(new_data);
}
Z
zhangyang 已提交
217

Z
zhangyang 已提交
218 219 220 221 222
void format_bias_scale_array(float **bias_scale_array,
                             int element_num_per_division, int num) {
  bias_scale::format_bias_scale_array(bias_scale_array,
                                      element_num_per_division, num);
}
223 224 225
void format_bias_array(float **bias_array, int num) {
  bias_scale::format_bias_array(bias_array, num);
}
Z
zhangyang 已提交
226

Z
zhangyang 已提交
227 228 229 230 231 232 233 234 235
void format_concat_output(framework::Tensor *out, int height, int width,
                          int image_num, uint32_t *channel_num) {
  int sum_channel = 0, sum_cw = 0;
  for (int i = 0; i < image_num; i++) {
    sum_channel += channel_num[i];
  }

  sum_cw = align_to_x(width * sum_channel, IMAGE_ALIGNMENT);
  auto data_ptr = fpga_malloc(height * sum_cw * sizeof(half));
236
  auto ddim = framework::make_ddim({1, sum_channel, height, width});
Z
zhangyang 已提交
237 238 239
  out->Resize(ddim);
  out->reset_data_ptr(data_ptr);
}
240 241 242 243 244 245 246 247 248 249 250 251 252 253 254 255 256 257 258 259 260
void format_conv_data(framework::Tensor *filter_tensor,
                      framework::Tensor *ofm_tensor, float **bs_ptr,
                      int group) {
  float max_value = fpga::filter_find_max(filter_tensor);
  fpga::format_filter(filter_tensor, max_value, group);
  int element_num_per_div = fpga::get_filter_num_per_div(filter_tensor, group);
  fpga::format_bias_scale_array(bs_ptr, element_num_per_div,
                                ofm_tensor->dims()[1]);
  fpga::format_fp16_ofm(ofm_tensor);
}
void format_deconv_data(framework::Tensor *filter_tensor,
                        framework::Tensor *ofm_tensor, float **bs_ptr,
                        int group, int sub_conv_n) {
  int channel = ofm_tensor->dims()[1];
  float max_value = filter_find_max(filter_tensor);
  format_deconv_filter(filter_tensor, max_value, group, sub_conv_n);
  int element_num_per_div =
      get_deconv_filter_num_per_div(filter_tensor, group, sub_conv_n);
  format_bias_scale_array(bs_ptr, element_num_per_div, channel * sub_conv_n);
  format_fp16_ofm(ofm_tensor);
}
Z
zhangyang 已提交
261

262 263 264 265 266 267 268 269
void format_dwconv_data(framework::Tensor *filter_tensor,
                        framework::Tensor *ofm_tensor, float *scale_ptr,
                        float **bias_ptr) {
  auto channel = ofm_tensor->dims()[1];
  format_dwconv_filter(filter_tensor, scale_ptr);
  format_bias_array(bias_ptr, channel);
  format_fp16_ofm(ofm_tensor);
}
qnqinan's avatar
qnqinan 已提交
270 271 272 273 274 275 276 277 278 279 280
void format_DWDeconv_data(framework::Tensor *filter_tensor,
                          framework::Tensor *ofm_tensor, float **bs_ptr,
                          int group, int sub_conv_n) {
  int channel = ofm_tensor->dims()[1];
  // dw-deconv
  format_DWDconv_filter(
      filter_tensor,
      (reinterpret_cast<float *>(*bs_ptr) + sub_conv_n * channel), sub_conv_n);
  format_bias_array(bs_ptr, channel);
  format_fp16_ofm(ofm_tensor);
}
281 282
void expand_conv_arg(ConvArgs *arg) {
  ConvArgs args = *arg;
283 284

  auto fpga_bias_scale_len =
285 286
      align_to_x(args.filter_num / args.group_num, 8) * args.group_num;

287
  auto output_height =
288 289 290
      (args.image.height + args.image.pad_height * 2 - args.kernel.height) /
          args.kernel.stride_h +
      1;
291
  auto output_width =
292 293 294
      (args.image.width + args.image.pad_width * 2 - args.kernel.width) /
          args.kernel.stride_w +
      1;
295 296 297 298 299 300 301 302 303 304

  auto filter_per_group = args.filter_num / args.group_num;
  auto channel_per_group = args.image.channels / args.group_num;

  auto image_row_count = args.image.width * args.image.channels;
  auto image_amount_per_row = align_to_x(image_row_count, IMAGE_ALIGNMENT);
  auto image_one_pad_per_row = align_to_x(image_row_count, IMAGE_ALIGNMENT) +
                               args.image.pad_width * args.image.channels;
  auto filter_amount_all =
      align_to_x(args.kernel.height * args.kernel.width * channel_per_group,
305 306
                 FILTER_ELEMENT_ALIGNMENT);

307 308 309
  auto output_amount_per_row = align_to_x(
      (output_width - (args.deconv_tx_param.omit_size) * 2) * args.filter_num,
      IMAGE_ALIGNMENT);
310 311 312 313

  // find the opt partition strategy
  uint64_t res_win;
  uint64_t res_fit = 0;
314
  for (res_win = 1; res_win <= output_width; res_win++) {
315 316 317 318 319 320 321 322 323 324 325 326 327 328 329 330 331 332 333 334 335
    if ((align_to_x(
             (args.image.channels *
              (args.kernel.width + (res_win - 1) * args.kernel.stride_w)),
             IMAGE_ALIGNMENT) /
             16 +
         1) *
            args.kernel.height >
        2048) {
      break;
    }
  }

  if (res_win != output_width) {
    res_win -= 1;
  }

  if (((res_win % 2) != 0) && (res_win != 1)) {
    res_win = res_win - 1;
  }
  res_fit = res_win;

336 337 338
  auto block_num = (output_width + res_fit - 1) / res_fit;
  auto block_len = res_fit;
  auto block_last = output_width - res_fit * (block_num - 1);
339

340 341
  auto res_amount_per_row =
      (output_width - (args.deconv_tx_param.omit_size) * 2) * args.filter_num;
342
  auto res_amount_per_row_pad = output_amount_per_row - res_amount_per_row;
343

344 345 346
  auto image_block_amount_per_row =
      args.kernel.stride_w * res_fit * args.image.channels;
  auto filter_pad_width_mul_channel =
347
      args.image.pad_width * args.image.channels;
348
  auto image_amount_per_row_multi_win_first =
349
      image_amount_per_row * (4 * args.kernel.stride_h - args.image.pad_height);
350
  auto image_amount_per_row_multi_win =
351 352
      image_amount_per_row * (4 * args.kernel.stride_h);

353 354
  auto image_block_num = block_num;
  auto image_block_len =
355 356 357 358 359
      align_to_x((args.image.channels *
                  (args.kernel.width + (block_len - 1) * args.kernel.stride_w)),
                 IMAGE_ALIGNMENT) /
          16 +
      1;
360
  auto image_block_len_last =
361 362 363 364 365 366
      align_to_x(
          (args.image.channels *
           (args.kernel.width + (block_last - 1) * args.kernel.stride_w)),
          IMAGE_ALIGNMENT) /
          16 +
      1;
367 368 369
  auto image_win_cnt = block_len;
  auto image_win_cnt_last = block_last;
  auto res_row_data_align4_pad = res_amount_per_row_pad / 8;
370 371
  auto prog_full_cnt = 1024 / (filter_amount_all / 16 * 2) - 1;
  if (prog_full_cnt == 511) {
372 373
    prog_full_cnt--;
  }
374
  auto post_prog_full_cnt =
375 376 377
      (512 / (align_to_x(args.filter_num, 4) / 4 * 2) > 2)
          ? (512 / (align_to_x(args.filter_num, 4) / 4 * 2) - 2)
          : 0;
378
  auto cmd = 0UL | (args.relu_enabled ? USE_RELU : 0) | USE_BIAS;
379

380 381 382
  auto deconv_param = ((args.deconv_tx_param.deconv_en) << 24) |
                      ((args.deconv_tx_param.sub_conv_num) << 16) |
                      ((args.deconv_tx_param.omit_size) << 0);
383 384 385
  (*arg).driver.image_address_phy = vaddr_to_paddr(args.image.address);
  (*arg).driver.sb_address_phy = vaddr_to_paddr(args.sb_address);
  (*arg).driver.filter_address_phy = vaddr_to_paddr(args.filter_address);
386 387
  (*arg).driver.output_address_phy = vaddr_to_paddr(args.output.address) +
                                     args.deconv_tx_param.out_addr_offset;
388 389 390 391 392 393 394 395 396 397 398 399 400 401 402 403 404 405 406 407 408 409 410
  (*arg).driver.output_height = output_height;
  (*arg).driver.output_width = output_width;
  (*arg).driver.filter_per_group = filter_per_group;
  (*arg).driver.channel_per_group = channel_per_group;
  (*arg).driver.image_amount_per_row = image_amount_per_row;
  (*arg).driver.image_one_pad_per_row = image_one_pad_per_row;
  (*arg).driver.filter_amount_all = filter_amount_all;
  (*arg).driver.output_amount_per_row = output_amount_per_row;
  (*arg).driver.image_block_amount_per_row = image_block_amount_per_row;
  (*arg).driver.filter_pad_width_mul_channel = filter_pad_width_mul_channel;
  (*arg).driver.image_amount_per_row_multi_win_first =
      image_amount_per_row_multi_win_first;
  (*arg).driver.image_amount_per_row_multi_win = image_amount_per_row_multi_win;
  (*arg).driver.image_block_num = image_block_num;
  (*arg).driver.image_block_len = image_block_len;
  (*arg).driver.image_block_len_last = image_block_len_last;
  (*arg).driver.image_win_cnt = image_win_cnt;
  (*arg).driver.image_win_cnt_last = image_win_cnt_last;
  (*arg).driver.res_row_data_align4_pad = res_row_data_align4_pad;
  (*arg).driver.prog_full_cnt = prog_full_cnt;
  (*arg).driver.post_prog_full_cnt = post_prog_full_cnt;
  (*arg).driver.fpga_bias_scale_len = fpga_bias_scale_len;
  (*arg).driver.cmd = cmd;
411
  (*arg).driver.deconv_param = deconv_param;
412 413 414 415 416 417 418 419 420 421 422 423 424 425 426 427 428 429 430 431 432 433 434 435 436 437 438 439 440 441
}  // expand_conv_arg()

void expand_EW_arg(EWAddArgs *arg) {
  EWAddArgs args = *arg;
  uint64_t cmd = args.relu_enabled ? USE_RELU : 0;
  uint64_t datalen = (uint64_t)args.image0.width *
                     (uint64_t)args.image0.height *
                     (uint64_t)args.image0.channels;
  uint64_t coefficient = (uint64_t)args.const0 << 32 | (uint64_t)args.const1;
  uint64_t image0_address_phy = vaddr_to_paddr(args.image0.address);
  uint64_t image1_address_phy = vaddr_to_paddr(args.image1.address);
  uint64_t output_address_phy = vaddr_to_paddr(args.output.address);

  uint64_t image_amount_per_row =
      align_to_x((uint64_t)args.image0.width * (uint64_t)args.image0.channels,
                 IMAGE_ALIGNMENT);
  uint64_t image_image_pixel = ((uint64_t)args.image0.channels << 32) |
                               ((uint64_t)args.image0.width << 16) |
                               (uint64_t)args.image0.height;

  (*arg).driver.image0_address_phy = image0_address_phy;
  (*arg).driver.image1_address_phy = image1_address_phy;
  (*arg).driver.datalen = datalen;
  (*arg).driver.image_image_pixel = image_image_pixel;
  (*arg).driver.image_amount_per_row = image_amount_per_row;
  (*arg).driver.output_address_phy = output_address_phy;
  (*arg).driver.coefficient = coefficient;
  (*arg).driver.cmd = cmd;
}  // expand_EW_arg

Z
zhangyang 已提交
442 443 444 445
void fill_split_arg(struct SplitConvArgs *arg, framework::Tensor *input,
                    framework::Tensor *out, framework::Tensor *filter,
                    bool relu_enabled, int group_num, int stride_h,
                    int stride_w, int padding_h, int padding_w, float *bs_ptr) {
446 447
  auto input_ptr = input->data<float>();
  auto filter_ptr = filter->data<float>();
448
  auto out_ptr = out->data<float>();
Z
zhangyang 已提交
449
  auto deleter = [](void *p) { fpga_free(p); };
450 451

  arg->group_num = (uint32_t)group_num;
452 453
  // Either group_num or split_num = 1;
  arg->split_num = group_num == 1 ? (uint32_t)get_plit_num(filter) : 1;
454 455 456
  arg->filter_num = (uint32_t)filter->dims()[0];
  arg->output.address = out_ptr;
  arg->output.scale_address = out->scale;
Z
zhangyang 已提交
457
  arg->conv_arg =
458
      (ConvArgs *)fpga_malloc(arg->split_num * sizeof(ConvArgs));  // NOLINT
459

Z
zhangyang 已提交
460 461
  arg->shared_conv_arg = std::shared_ptr<ConvArgs>(arg->conv_arg, deleter);

462 463
  memset(arg->conv_arg, 0, arg->split_num * sizeof(struct ConvArgs));

464 465 466
  arg->concat_arg.image_num = arg->split_num;
  arg->concat_arg.image_out = out_ptr;
  arg->concat_arg.scale_out = out->scale;
467 468
  arg->concat_arg.height = (uint32_t)out->dims()[2];
  arg->concat_arg.width = (uint32_t)out->dims()[3];
469 470

  int n = arg->split_num;
471
  arg->concat_arg.images_in =
Z
zhangyang 已提交
472
      static_cast<int16_t **>(fpga_malloc(n * sizeof(int *)));
473
  arg->concat_arg.scales_in =
Z
zhangyang 已提交
474
      static_cast<float **>(fpga_malloc(n * sizeof(float *)));
475
  arg->concat_arg.channel_num =
Z
zhangyang 已提交
476 477 478 479 480 481 482
      static_cast<uint32_t *>(fpga_malloc(n * sizeof(uint32_t)));
  arg->vector_concat_space.push_back(std::shared_ptr<char>(
      reinterpret_cast<char *>(arg->concat_arg.images_in), deleter));
  arg->vector_concat_space.push_back(std::shared_ptr<char>(
      reinterpret_cast<char *>(arg->concat_arg.scales_in), deleter));
  arg->vector_concat_space.push_back(std::shared_ptr<char>(
      reinterpret_cast<char *>(arg->concat_arg.channel_num), deleter));
483

484 485 486
  auto channel = (int)out->dims()[1];  // NOLINT
  int filter_num_per_div = get_filter_num_per_div(filter, group_num);
  int element_num = get_aligned_filter_element_num(
487 488
      (int)(filter->dims()[1] * filter->dims()[2] *  // NOLINT
            filter->dims()[3]));
489 490

  for (int i = 0; i < n; i++) {
Z
zhangyang 已提交
491 492 493 494 495 496 497 498 499 500 501 502 503 504 505
    arg->conv_arg[i].relu_enabled = relu_enabled;
    arg->conv_arg[i].group_num = (uint32_t)group_num;
    arg->conv_arg[i].kernel.stride_h = (uint32_t)stride_h;
    arg->conv_arg[i].kernel.stride_w = (uint32_t)stride_w;
    arg->conv_arg[i].kernel.height = (uint32_t)filter->dims()[2];
    arg->conv_arg[i].kernel.width = (uint32_t)filter->dims()[3];
    arg->conv_arg[i].image.address = input_ptr;
    arg->conv_arg[i].image.channels = (uint32_t)input->dims()[1];
    arg->conv_arg[i].image.height = (uint32_t)input->dims()[2];
    arg->conv_arg[i].image.width = (uint32_t)input->dims()[3];
    arg->conv_arg[i].image.scale_address = input->scale;
    arg->conv_arg[i].image.pad_height = (uint32_t)padding_h;
    arg->conv_arg[i].image.pad_width = (uint32_t)padding_w;
    arg->conv_arg[i].filter_scale_address = filter->scale;
    arg->conv_arg[i].filter_num = (uint32_t)(
506 507
        i == n - 1 ? channel - (n - 1) * filter_num_per_div  // NOLINT
                   : filter_num_per_div);
508

Z
zhangyang 已提交
509
    size_t filter_size =
510 511 512
        element_num *
        align_to_x(arg->conv_arg[i].filter_num, FILTER_NUM_ALIGNMENT) *
        sizeof(int8_t);
513 514
    auto filter_head = &(
        (int8_t *)filter_ptr)[i * element_num * filter_num_per_div];  // NOLINT
Z
zhangyang 已提交
515
    arg->conv_arg[i].filter_address = fpga_malloc(filter_size);
Z
zhangyang 已提交
516 517
    arg->vector_conv_space.push_back(std::shared_ptr<char>(
        reinterpret_cast<char *>(arg->conv_arg[i].filter_address), deleter));
Z
zhangyang 已提交
518 519 520
    memcpy(arg->conv_arg[i].filter_address, filter_head, filter_size);
    fpga_flush(arg->conv_arg[i].filter_address, filter_size);

521 522 523
    size_t bs_size = 2 *
                     align_to_x(arg->conv_arg[i].filter_num, BS_NUM_ALIGNMENT) *
                     sizeof(float);
Z
zhangyang 已提交
524 525
    auto bs_head = &bs_ptr[i * filter_num_per_div * 2];
    arg->conv_arg[i].sb_address = fpga_malloc(bs_size);
Z
zhangyang 已提交
526 527
    arg->vector_conv_space.push_back(std::shared_ptr<char>(
        reinterpret_cast<char *>(arg->conv_arg[i].sb_address), deleter));
Z
zhangyang 已提交
528 529 530
    memcpy(arg->conv_arg[i].sb_address, bs_head, bs_size);
    fpga_flush(arg->conv_arg[i].sb_address, bs_size);

531
    if (n > 1) {
Z
zhangyang 已提交
532
      arg->conv_arg[i].output.scale_address =
Z
zhangyang 已提交
533
          static_cast<float *>(fpga_malloc(2 * sizeof(float)));
534 535 536 537 538 539
      arg->conv_arg[i].output.address =
          fpga_malloc(out->dims()[2] *
                      align_to_x((int)(out->dims()[3] *  // NOLINT
                                       arg->conv_arg[i].filter_num),
                                 IMAGE_ALIGNMENT) *
                      sizeof(half));
Z
zhangyang 已提交
540 541 542 543 544
      arg->vector_conv_space.push_back(std::shared_ptr<char>(
          reinterpret_cast<char *>(arg->conv_arg[i].output.scale_address),
          deleter));
      arg->vector_conv_space.push_back(std::shared_ptr<char>(
          reinterpret_cast<char *>(arg->conv_arg[i].output.address), deleter));
545
    } else {
Z
zhangyang 已提交
546 547
      arg->conv_arg[i].output.scale_address = out->scale;
      arg->conv_arg[i].output.address = out_ptr;
548 549
    }

550
    arg->concat_arg.images_in[i] =
Z
zhangyang 已提交
551 552 553
        (half *)arg->conv_arg[i].output.address;  // NOLINT
    arg->concat_arg.scales_in[i] = arg->conv_arg[i].output.scale_address;
    arg->concat_arg.channel_num[i] = arg->conv_arg[i].filter_num;
554 555

    expand_conv_arg(&arg->conv_arg[i]);
556
  }
Z
zhangyang 已提交
557 558
  filter->reset_data_ptr(nullptr);
  fpga_free(bs_ptr);
559 560
}  // fill_split_arg

Z
zhangyang 已提交
561 562 563 564 565 566 567
void fill_deconv_arg(struct DeconvArgs *arg, framework::Tensor *input,
                     framework::Tensor *out, framework::Tensor *filter,
                     bool relu_enabled, int group_num, int stride_h,
                     int stride_w, int padding_h, int padding_w,
                     float *bs_ptr) {
  auto input_ptr = input->data<float>();
  auto filter_ptr = filter->data<float>();
Z
zhangyang 已提交
568
  auto deleter = [](void *p) { fpga_free(p); };
Z
zhangyang 已提交
569 570

  arg->group_num = (uint32_t)group_num;
571
  arg->sub_conv_num = (uint32_t)stride_h;
Z
zhangyang 已提交
572
  arg->filter_num = (uint32_t)filter->dims()[0];
573
  uint32_t sub_conv_num = arg->sub_conv_num;
574 575 576
  int sub_pad =
      deconv_filter::deconv_calc_sub_pad((int)filter->dims()[3],  // NOLINT
                                         padding_w, stride_w);
577
  auto sub_filter_width = (uint32_t)deconv_filter::deconv_get_sub_filter_axis(
578
      (int)filter->dims()[3], stride_w);  // NOLINT
579

580
  auto sub_output_width = (uint32_t)deconv_filter::deconv_get_sub_out_axis(
581
      (int)input->dims()[3], sub_pad, sub_filter_width);  // NOLINT
582
  auto sub_output_height = (uint32_t)deconv_filter::deconv_get_sub_out_axis(
583
      (int)input->dims()[2], sub_pad, sub_filter_width);  // NOLINT
Z
zhangyang 已提交
584

585 586 587
  arg->sub_output_width = (uint32_t)sub_output_width;
  arg->sub_output_height = (uint32_t)sub_output_height;
  arg->omit_size = (uint32_t)deconv_filter::deconv_get_omit(
588
      stride_w, (int)filter->dims()[3], padding_w);  // NOLINT
Z
zhangyang 已提交
589

590
  auto sub_channels = (int)input->dims()[1];  // NOLINT
591
  uint32_t omit_size = arg->omit_size;
Z
zhangyang 已提交
592
  int real_out_width = sub_output_width * sub_conv_num - 2 * omit_size;
Z
zhangyang 已提交
593 594
  int sub_filter_num = sub_conv_num * (arg->filter_num);

595 596 597 598 599
  framework::DDim dims_out_new = framework::make_ddim(
      {1, arg->filter_num, sub_output_height * sub_conv_num, real_out_width});
  fpga::format_fp16_ofm(out, dims_out_new);
  auto out_ptr = out->data<float>();
  arg->output.address =
600
      (half *)out_ptr +  // NOLINT
601 602 603 604 605
      omit_size * sizeof(half) *
          (align_to_x(real_out_width * arg->filter_num, IMAGE_ALIGNMENT));
  arg->output.scale_address = out->scale;

  uint32_t conv_output_size =
Z
zhangyang 已提交
606 607
      (align_to_x(sub_output_width * sub_filter_num, IMAGE_ALIGNMENT)) *
      sub_output_height;
608
  uint32_t split_num =
Z
zhangyang 已提交
609 610
      group_num == 1 ? (uint32_t)get_deconv_plit_num(filter, sub_conv_num) : 1;

Z
zhangyang 已提交
611
  for (int i = 0; i < sub_conv_num; ++i) {
Z
zhangyang 已提交
612 613
    arg->split_conv_args.push_back(std::make_shared<SplitConvArgs>());
    arg->split_conv_args[i]->filter_num =
Z
zhangyang 已提交
614
        (arg->sub_conv_num) * (arg->filter_num);
Z
zhangyang 已提交
615 616 617 618 619 620 621 622 623 624 625 626 627 628 629 630 631 632 633 634 635 636 637 638 639 640 641 642 643 644 645
    arg->split_conv_args[i]->group_num = (uint32_t)group_num;
    arg->split_conv_args[i]->split_num = split_num;
    arg->split_conv_args[i]->concat_arg.height = sub_output_height;
    arg->split_conv_args[i]->concat_arg.width = sub_output_width;
    arg->split_conv_args[i]->concat_arg.image_num = split_num;

    arg->split_conv_args[i]->conv_arg =
        static_cast<ConvArgs *>(fpga_malloc(split_num * sizeof(ConvArgs)));
    arg->split_conv_args[i]->concat_arg.images_in =
        static_cast<int16_t **>(fpga_malloc(split_num * sizeof(int16_t *)));
    arg->split_conv_args[i]->concat_arg.scales_in =
        static_cast<float **>(fpga_malloc(split_num * sizeof(float *)));
    arg->split_conv_args[i]->concat_arg.channel_num =
        static_cast<uint32_t *>(fpga_malloc(split_num * sizeof(uint32_t)));
    arg->split_conv_args[i]->shared_conv_arg =
        std::shared_ptr<ConvArgs>(arg->split_conv_args[i]->conv_arg, deleter);
    arg->split_conv_args[i]->vector_concat_space.push_back(
        std::shared_ptr<char>(
            reinterpret_cast<char *>(
                arg->split_conv_args[i]->concat_arg.images_in),
            deleter));
    arg->split_conv_args[i]->vector_concat_space.push_back(
        std::shared_ptr<char>(
            reinterpret_cast<char *>(
                arg->split_conv_args[i]->concat_arg.scales_in),
            deleter));
    arg->split_conv_args[i]->vector_concat_space.push_back(
        std::shared_ptr<char>(
            reinterpret_cast<char *>(
                arg->split_conv_args[i]->concat_arg.channel_num),
            deleter));
Z
zhangyang 已提交
646
  }
Z
zhangyang 已提交
647

648 649
  auto filter_num_per_div =
      (uint32_t)get_deconv_filter_num_per_div(filter, group_num, stride_w);
Z
zhangyang 已提交
650
  int element_num = get_aligned_filter_element_num(
651
      (int)(sub_channels * sub_filter_width * sub_filter_width));  // NOLINT
Z
zhangyang 已提交
652 653 654 655 656 657 658 659 660 661 662 663 664 665 666

  int chw = sub_channels * sub_filter_width * sub_filter_width;
  int division_capacity = filter::calc_division_capacity(chw);
  int num_per_div_before_alignment =
      filter::calc_num_per_div(sub_filter_num, group_num, division_capacity);
  int num_per_div_after_alignment =
      align_to_x(num_per_div_before_alignment, FILTER_NUM_ALIGNMENT);
  int div_num = (sub_filter_num + num_per_div_before_alignment - 1) /
                num_per_div_before_alignment;
  int residual = sub_filter_num % num_per_div_before_alignment;
  int num_after_alignment = num_per_div_after_alignment *
                                ((residual == 0) ? div_num : (div_num - 1)) +
                            align_to_x(residual, FILTER_NUM_ALIGNMENT);

  int filter_sub_conv_offset = element_num * num_after_alignment;
667
  uint32_t out_addr_offset = 0;
Z
zhangyang 已提交
668
  for (int i = 0; i < sub_conv_num; ++i) {
Z
zhangyang 已提交
669
    if (sub_conv_num == 1) {
Z
zhangyang 已提交
670 671
      arg->split_conv_args[i]->output.address = arg->output.address;
      arg->split_conv_args[i]->output.scale_address = arg->output.scale_address;
672
      out_addr_offset = 0;
Z
zhangyang 已提交
673

Z
zhangyang 已提交
674
    } else {
675
      out_addr_offset =
Z
zhangyang 已提交
676
          sizeof(int16_t) * (sub_conv_num - 1 - i) *
677 678
          (align_to_x(real_out_width * arg->filter_num, IMAGE_ALIGNMENT));

Z
zhangyang 已提交
679 680 681 682 683 684 685 686
      arg->split_conv_args[i]->output.address = out_ptr;
      arg->split_conv_args[i]->output.scale_address =
          static_cast<float *>(fpga_malloc(2 * sizeof(float)));
      arg->split_conv_args[i]->vector_conv_space.push_back(
          std::shared_ptr<char>(
              reinterpret_cast<char *>(
                  arg->split_conv_args[i]->output.scale_address),
              deleter));
Z
zhangyang 已提交
687 688
    }

Z
zhangyang 已提交
689
    for (int j = 0; j < split_num; ++j) {
Z
zhangyang 已提交
690 691
      arg->split_conv_args[i]->conv_arg[j].relu_enabled = relu_enabled;
      arg->split_conv_args[i]->conv_arg[j].group_num = (uint32_t)group_num;
Z
zhangyang 已提交
692

Z
zhangyang 已提交
693
      arg->split_conv_args[i]->conv_arg[j].kernel.width =
Z
zhangyang 已提交
694
          (uint32_t)sub_filter_width;
Z
zhangyang 已提交
695
      arg->split_conv_args[i]->conv_arg[j].kernel.height =
Z
zhangyang 已提交
696
          (uint32_t)sub_filter_width;
Z
zhangyang 已提交
697 698
      arg->split_conv_args[i]->conv_arg[j].kernel.stride_w = 1;
      arg->split_conv_args[i]->conv_arg[j].kernel.stride_h = 1;
Z
zhangyang 已提交
699

Z
zhangyang 已提交
700 701
      arg->split_conv_args[i]->conv_arg[j].deconv_tx_param.deconv_en = 1;
      arg->split_conv_args[i]->conv_arg[j].deconv_tx_param.sub_conv_num =
702
          sub_conv_num;
Z
zhangyang 已提交
703 704 705
      arg->split_conv_args[i]->conv_arg[j].deconv_tx_param.omit_size =
          omit_size;
      arg->split_conv_args[i]->conv_arg[j].deconv_tx_param.out_addr_offset =
706 707
          out_addr_offset;

Z
zhangyang 已提交
708 709
      arg->split_conv_args[i]->conv_arg[j].image.scale_address = input->scale;
      arg->split_conv_args[i]->conv_arg[j].image.channels =
Z
zhangyang 已提交
710
          (uint32_t)sub_channels;
Z
zhangyang 已提交
711
      arg->split_conv_args[i]->conv_arg[j].image.width =
Z
zhangyang 已提交
712
          (uint32_t)input->dims()[3];
Z
zhangyang 已提交
713
      arg->split_conv_args[i]->conv_arg[j].image.height =
Z
zhangyang 已提交
714
          (uint32_t)input->dims()[2];
Z
zhangyang 已提交
715 716 717
      arg->split_conv_args[i]->conv_arg[j].image.pad_width = (uint32_t)sub_pad;
      arg->split_conv_args[i]->conv_arg[j].image.pad_height = (uint32_t)sub_pad;
      arg->split_conv_args[i]->conv_arg[j].image.address = input_ptr;
Z
zhangyang 已提交
718

Z
zhangyang 已提交
719 720
      arg->split_conv_args[i]->conv_arg[j].filter_scale_address = filter->scale;
      arg->split_conv_args[i]->conv_arg[j].filter_num =
721 722 723
          (uint32_t)(j == split_num - 1
                         ? sub_filter_num - (split_num - 1) * filter_num_per_div
                         : filter_num_per_div);
Z
zhangyang 已提交
724 725 726

      size_t filter_size =
          element_num *
Z
zhangyang 已提交
727
          align_to_x(arg->split_conv_args[i]->conv_arg[j].filter_num,
Z
zhangyang 已提交
728 729
                     FILTER_NUM_ALIGNMENT) *
          sizeof(int8_t);
730 731 732
      auto filter_head = &((
          int8_t *)filter_ptr)[j * element_num * filter_num_per_div +  // NOLINT
                               i * filter_sub_conv_offset];
Z
zhangyang 已提交
733
      arg->split_conv_args[i]->conv_arg[j].filter_address =
Z
zhangyang 已提交
734
          fpga_malloc(filter_size);
Z
zhangyang 已提交
735 736 737 738 739 740 741
      arg->split_conv_args[i]->vector_conv_space.push_back(
          std::shared_ptr<char>(
              reinterpret_cast<char *>(
                  arg->split_conv_args[i]->conv_arg[j].filter_address),
              deleter));

      memcpy(arg->split_conv_args[i]->conv_arg[j].filter_address, filter_head,
Z
zhangyang 已提交
742
             filter_size);
Z
zhangyang 已提交
743
      fpga_flush(arg->split_conv_args[i]->conv_arg[j].filter_address,
Z
zhangyang 已提交
744 745 746
                 filter_size);

      size_t bs_align_num = align_to_x(
Z
zhangyang 已提交
747
          arg->split_conv_args[i]->conv_arg[j].filter_num, BS_NUM_ALIGNMENT);
Z
zhangyang 已提交
748 749 750
      size_t bs_size = 2 * bs_align_num * sizeof(float);
      auto bs_head = &bs_ptr[j * filter_num_per_div * 2];

Z
zhangyang 已提交
751 752 753 754 755 756 757 758 759
      arg->split_conv_args[i]->conv_arg[j].sb_address = fpga_malloc(bs_size);
      arg->split_conv_args[i]->vector_conv_space.push_back(
          std::shared_ptr<char>(
              reinterpret_cast<char *>(
                  arg->split_conv_args[i]->conv_arg[j].sb_address),
              deleter));

      memcpy(arg->split_conv_args[i]->conv_arg[j].sb_address, bs_head, bs_size);
      fpga_flush(arg->split_conv_args[i]->conv_arg[j].sb_address, bs_size);
Z
zhangyang 已提交
760 761

      if (split_num == 1) {
Z
zhangyang 已提交
762 763 764 765
        arg->split_conv_args[i]->conv_arg[j].output.address =
            arg->split_conv_args[i]->output.address;
        arg->split_conv_args[i]->conv_arg[j].output.scale_address =
            arg->split_conv_args[i]->output.scale_address;
Z
zhangyang 已提交
766
      } else {
Z
zhangyang 已提交
767 768 769 770 771 772 773 774 775 776 777 778 779 780
        arg->split_conv_args[i]->conv_arg[j].output.address =
            fpga_malloc(conv_output_size * sizeof(int16_t));
        arg->split_conv_args[i]->conv_arg[j].output.scale_address =
            static_cast<float *>(fpga_malloc(2 * sizeof(float)));
        arg->split_conv_args[i]->vector_conv_space.push_back(
            std::shared_ptr<char>(
                reinterpret_cast<char *>(
                    arg->split_conv_args[i]->conv_arg[j].output.address),
                deleter));
        arg->split_conv_args[i]->vector_conv_space.push_back(
            std::shared_ptr<char>(
                reinterpret_cast<char *>(
                    arg->split_conv_args[i]->conv_arg[j].output.scale_address),
                deleter));
Z
zhangyang 已提交
781
      }
Z
zhangyang 已提交
782 783 784 785 786 787 788 789
      arg->split_conv_args[i]->concat_arg.images_in[j] = static_cast<int16_t *>(
          arg->split_conv_args[i]->conv_arg[j].output.address);
      arg->split_conv_args[i]->concat_arg.scales_in[j] =
          arg->split_conv_args[i]->conv_arg[j].output.scale_address;
      arg->split_conv_args[i]->concat_arg.channel_num[j] =
          arg->split_conv_args[i]->conv_arg[j].filter_num;

      expand_conv_arg(&(arg->split_conv_args[i]->conv_arg[j]));
Z
zhangyang 已提交
790 791
    }

Z
zhangyang 已提交
792 793 794 795
    arg->split_conv_args[i]->concat_arg.image_out =
        arg->split_conv_args[i]->output.address;
    arg->split_conv_args[i]->concat_arg.scale_out =
        arg->split_conv_args[i]->output.scale_address;
Z
zhangyang 已提交
796
  }
797
  filter->reset_data_ptr(nullptr);
Z
zhangyang 已提交
798
  fpga_free(bs_ptr);
799 800
}  // fill_deconv_arg

801 802 803 804 805 806 807 808 809 810
void fill_dwconv_arg(struct DWconvArgs *arg, framework::Tensor *input,
                     framework::Tensor *out, framework::Tensor *filter,
                     bool relu_enabled, int stride_h, int stride_w,
                     int padding_h, int padding_w, float *bias_ptr) {
  auto filter_ptr = filter->data<float>();
  auto input_ptr = input->data<float>();
  auto output_ptr = out->mutable_data<float>();
  arg->relu_enabled = relu_enabled;
  arg->bias_address = bias_ptr;
  arg->filter_address = filter_ptr;
Z
zhangyang 已提交
811 812 813 814
  arg->kernel.height = (uint32_t)filter->dims()[2];
  arg->kernel.width = (uint32_t)filter->dims()[3];
  arg->kernel.stride_h = (uint32_t)stride_h;
  arg->kernel.stride_w = (uint32_t)stride_w;
815 816 817 818
  arg->image.address = input_ptr;
  arg->image.channels = (uint32_t)input->dims()[1];
  arg->image.height = (uint32_t)input->dims()[2];
  arg->image.width = (uint32_t)input->dims()[3];
Z
zhangyang 已提交
819 820
  arg->image.pad_height = (uint32_t)padding_h;
  arg->image.pad_width = (uint32_t)padding_w;
821 822 823 824 825
  arg->image.scale_address = input->scale;
  arg->output.address = output_ptr;
  arg->output.scale_address = out->scale;
}  // end dwconv arg fill

qnqinan's avatar
qnqinan 已提交
826 827 828 829 830 831 832 833 834 835 836 837 838 839 840 841 842 843 844 845 846 847 848 849 850 851 852 853 854 855 856 857 858 859 860 861 862 863 864 865 866 867 868 869 870 871 872 873 874 875 876 877 878 879 880 881 882 883 884 885 886 887 888 889 890 891 892 893 894 895 896 897 898 899 900 901 902 903 904 905 906 907 908 909 910 911 912 913 914 915 916 917 918 919 920 921 922 923 924 925 926 927 928 929
void fill_DWDeconv_arg(struct DWDeconvArgs *arg, framework::Tensor *input,
                       framework::Tensor *out, framework::Tensor *filter,
                       bool relu_enabled, int stride_h, int stride_w,
                       int padding_h, int padding_w, float *bias_ptr) {
  auto filter_ptr = filter->data<float>();
  auto input_ptr = input->data<float>();
  auto output_ptr = out->mutable_data<float>();

  auto deleter = [](void *p) { fpga_free(p); };

  arg->group_num = (uint32_t)filter->dims()[0];
  arg->sub_conv_num = (uint32_t)stride_w;
  arg->filter_num = (uint32_t)filter->dims()[0];

  int sub_conv_num = stride_w;

  int sub_pad =
      deconv_filter::deconv_calc_sub_pad((int)filter->dims()[3],  // NOLINT
                                         padding_w, stride_w);
  auto sub_filter_width = (uint32_t)deconv_filter::deconv_get_sub_filter_axis(
      (int)filter->dims()[3], stride_w);  // NOLINT

  auto sub_output_width = (uint32_t)deconv_filter::deconv_get_sub_out_axis(
      (int)input->dims()[3], sub_pad, sub_filter_width);  // NOLINT
  auto sub_output_height = (uint32_t)deconv_filter::deconv_get_sub_out_axis(
      (int)input->dims()[2], sub_pad, sub_filter_width);  // NOLINT

  arg->sub_output_width = (uint32_t)sub_output_width;
  arg->sub_output_height = (uint32_t)sub_output_height;
  arg->omit_size = (uint32_t)deconv_filter::deconv_get_omit(
      stride_w, (int)filter->dims()[3], padding_w);  // NOLINT

  auto sub_channels = (int)input->dims()[1];  // NOLINT
  uint32_t omit_size = arg->omit_size;
  int real_out_width = sub_output_width * sub_conv_num - 2 * omit_size;
  int real_out_height = sub_output_height * sub_conv_num - 2 * omit_size;
  int sub_filter_num = sub_conv_num * (arg->filter_num);

  framework::DDim dims_out_new = framework::make_ddim(
      {1, arg->filter_num, real_out_height, real_out_width});
  fpga::format_fp16_ofm(out, dims_out_new);
  auto out_ptr = out->data<float>();

  /*====For Addition
  arg->output.address =
      (half *)out_ptr +  // NOLINT
      omit_size * sizeof(half) *
          (align_to_x(real_out_width * arg->filter_num, IMAGE_ALIGNMENT));
          */
  arg->output.address = out_ptr;
  arg->output.scale_address = out->scale;

  int filter_offset = sub_filter_width * sub_filter_width *
                      align_to_x(sub_channels, FILTER_ELEMENT_ALIGNMENT) *
                      arg->sub_conv_num;

  for (int i = 0; i < sub_conv_num; ++i) {
    arg->dw_conv_args.push_back(std::make_shared<DWconvArgs>());

    arg->dw_conv_args[i]->sub_conv_num = sub_conv_num;
    arg->dw_conv_args[i]->relu_enabled = relu_enabled;
    arg->dw_conv_args[i]->bias_address = bias_ptr;

    arg->dw_conv_args[i]->filter_address =
        fpga_malloc(filter_offset * sizeof(int16_t));
    memcpy(arg->dw_conv_args[i]->filter_address,
           (reinterpret_cast<half *>(filter_ptr) + i * filter_offset),
           filter_offset * sizeof(int16_t));
    arg->vector_dw_conv_space.push_back(std::shared_ptr<char>(
        reinterpret_cast<char *>(arg->dw_conv_args[i]->filter_address),
        deleter));

    arg->dw_conv_args[i]->kernel.height = (uint32_t)sub_filter_width;
    arg->dw_conv_args[i]->kernel.width = (uint32_t)sub_filter_width;

    arg->dw_conv_args[i]->kernel.stride_h = (uint32_t)1;
    arg->dw_conv_args[i]->kernel.stride_w = (uint32_t)1;
    arg->dw_conv_args[i]->image.address = input_ptr;
    arg->dw_conv_args[i]->image.channels = (uint32_t)input->dims()[1];
    arg->dw_conv_args[i]->image.height = (uint32_t)input->dims()[2];
    arg->dw_conv_args[i]->image.width = (uint32_t)input->dims()[3];

    arg->dw_conv_args[i]->image.pad_height = sub_pad;
    arg->dw_conv_args[i]->image.pad_width = sub_pad;
    arg->dw_conv_args[i]->image.scale_address = input->scale;

    arg->dw_conv_args[i]->output.address =
        fpga_malloc(sub_output_height *
                    align_to_x(sub_output_width * sub_channels * sub_conv_num,
                               IMAGE_ALIGNMENT) *
                    sizeof(int16_t));
    arg->dw_conv_args[i]->output.scale_address =
        static_cast<float *>(fpga_malloc(2 * sizeof(float)));
    arg->vector_dw_conv_space.push_back(std::shared_ptr<char>(
        reinterpret_cast<char *>(arg->dw_conv_args[i]->output.address),
        deleter));
    arg->vector_dw_conv_space.push_back(std::shared_ptr<char>(
        reinterpret_cast<char *>(arg->dw_conv_args[i]->output.scale_address),
        deleter));
  }

  // arg->output.scale_address = out->scale;
}  // end dwconv arg fill

H
hanbuhe 已提交
930
}  // namespace fpga
Z
zhangyang 已提交
931
}  // namespace paddle_mobile