executor.cpp 23.3 KB
Newer Older
W
wangliu 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. */

15
#include "io/executor.h"
W
wangliu 已提交
16
#include <operators/math/gemm.h>
D
dolphin8 已提交
17
#include <algorithm>
W
wangliu 已提交
18
#include <vector>
L
liuruilong 已提交
19
#include <framework/cl/cl_image.h>
L
liuruilong 已提交
20
#include "common/enforce.h"
L
liuruilong 已提交
21
#include "common/log.h"
L
liuruilong 已提交
22
#include "framework/framework.pb-c.h"
L
liuruilong 已提交
23 24
#include "framework/lod_tensor.h"
#include "framework/operator.h"
L
liuruilong 已提交
25
#include "framework/program/program-optimize/program_optimize.h"
L
liuruilong 已提交
26 27 28 29
#include "framework/program/program_desc.h"
#include "framework/program/var_desc.h"
#include "framework/scope.h"
#include "framework/tensor.h"
D
dolphin8 已提交
30
#ifdef PADDLE_EXECUTOR_MULTITHREAD
D
dolphin8 已提交
31 32 33 34
#include <queue>
#include <utility>
#include "common/threadpool.h"
#endif
W
wangliu 已提交
35 36 37 38

namespace paddle_mobile {
using framework::Variable;

L
liuruilong 已提交
39 40
char *Get_binary_data(std::string filename) {
  FILE *file = fopen(filename.c_str(), "rb");
L
liuruilong 已提交
41 42
  PADDLE_MOBILE_ENFORCE(file != nullptr, "can't open file: %s ",
                        filename.c_str());
L
liuruilong 已提交
43
  fseek(file, 0, SEEK_END);
44
  int64_t size = ftell(file);
L
liuruilong 已提交
45 46 47 48
  PADDLE_MOBILE_ENFORCE(size > 0, "size is too small");
  rewind(file);
  char *data = new char[size];
  size_t bytes_read = fread(data, 1, size, file);
L
liuruilong 已提交
49 50
  PADDLE_MOBILE_ENFORCE(bytes_read == size,
                        "read binary file bytes do not match with fseek");
L
liuruilong 已提交
51 52
  fclose(file);
  return data;
W
wangliu 已提交
53 54 55 56
}

#pragma mark - executor
template <typename Dtype, Precision P>
L
liuruilong 已提交
57
Executor<Dtype, P>::Executor(const framework::Program<Dtype> p, int batch_size,
xiebaiyuan's avatar
xiebaiyuan 已提交
58 59 60 61 62
                             bool use_optimize, bool loddable)
    : program_(p),
      batch_size_(batch_size),
      use_optimize_(use_optimize),
      loddable_(loddable) {
W
wangliu 已提交
63 64 65 66 67 68 69
  if (use_optimize_) {
    to_predict_program_ = program_.optimizeProgram;
  } else {
    to_predict_program_ = program_.originProgram;
  }
  Variable *variable_ptr = program_.scope->Var("batch_size");
  variable_ptr[0].SetValue<int>(batch_size);
70 71
  PADDLE_MOBILE_ENFORCE(to_predict_program_ != nullptr,
                        "to_predict_program_ == NULL!");
W
wangliu 已提交
72 73
  const std::vector<std::shared_ptr<framework::BlockDesc>> blocks =
      to_predict_program_->Blocks();
D
dolphin8 已提交
74 75 76
#ifdef PADDLE_EXECUTOR_MULTITHREAD
  depManager.resize(blocks.size());
#endif
xiebaiyuan's avatar
xiebaiyuan 已提交
77
  DLOG << "executer in loaddable mode: " << loddable_;
W
wangliu 已提交
78 79 80 81 82
  for (int i = 0; i < blocks.size(); ++i) {
    std::shared_ptr<framework::BlockDesc> block_desc = blocks[i];
    std::vector<std::shared_ptr<framework::OpDesc>> ops = block_desc->Ops();
    for (int j = 0; j < ops.size(); ++j) {
      std::shared_ptr<framework::OpDesc> op = ops[j];
Z
zhangyang 已提交
83
      DLOG << "create op: " << j << "  " << op->Type();
W
wangliu 已提交
84 85 86
      auto op_base = framework::OpRegistry<Dtype>::CreateOp(
          op->Type(), op->GetInputs(), op->GetOutputs(), op->GetAttrMap(),
          program_.scope);
xiebaiyuan's avatar
xiebaiyuan 已提交
87 88 89 90 91
      // use pre_infershape to pre resize , but if u use an lod mode tensor u
      // need to resize in runtime
      if (!loddable_) {
        op_base->InferShape();
      }
W
wangliu 已提交
92
      ops_of_block_[*block_desc.get()].push_back(op_base);
D
dolphin8 已提交
93 94 95
#ifdef PADDLE_EXECUTOR_MULTITHREAD
      depManager[i].analysisDep(ops_of_block_[*block_desc.get()]);
#endif
W
wangliu 已提交
96
    }
97
    DLOG << "Total " << ops.size() << " ops have been created ";
W
wangliu 已提交
98
  }
W
wangliu 已提交
99
  if (program_.combined) {
L
liuruilong 已提交
100 101 102 103
    InitCombineMemory();
  } else {
    InitMemory();
  }
L
liuruilong 已提交
104
  std::shared_ptr<framework::BlockDesc> to_predict_block =
L
liuruilong 已提交
105
      to_predict_program_->Block(0);
L
liuruilong 已提交
106
  auto &ops = ops_of_block_[*to_predict_block.get()];
Z
zhangyang 已提交
107
  int i = 0;
L
liuruilong 已提交
108
  for (const auto &op : ops) {
Z
zhangyang 已提交
109
    DLOG << "Init op: " << i++ << "  " << op->Type();
L
liuruilong 已提交
110 111
    op->Init();
  }
W
wangliu 已提交
112 113 114 115
}

template <typename Dtype, Precision P>
void Executor<Dtype, P>::LoadMemory(const framework::VarDesc var_desc,
116
                                    framework::LoDTensor *tensor, char **data) {
W
wangliu 已提交
117
  // 1. version
118 119 120
  uint32_t version = *reinterpret_cast<uint32_t *>(*data);

  (*data) += sizeof(uint32_t);
W
wangliu 已提交
121 122

  // 2 Lod information
L
liuruilong 已提交
123
  uint64_t *lod_level_ptr = new uint64_t();
124
  memcpy(lod_level_ptr, (*data), sizeof(uint64_t));
L
liuruilong 已提交
125 126
  uint64_t lod_level = *lod_level_ptr;
  delete lod_level_ptr;
127
  (*data) += sizeof(uint64_t);
L
liuruilong 已提交
128

W
wangliu 已提交
129 130 131
  auto &lod = *tensor->mutable_lod();
  lod.resize(lod_level);
  for (uint64_t i = 0; i < lod_level; ++i) {
132 133
    uint64_t size = *reinterpret_cast<uint64_t *>(*data);
    (*data) += sizeof(uint64_t);
W
wangliu 已提交
134
    std::vector<size_t> tmp(size / sizeof(size_t));
L
liuruilong 已提交
135 136

    for (int k = 0; k < tmp.size(); ++k) {
137 138
      tmp[k] = *reinterpret_cast<size_t *>(*data);
      (*data) += sizeof(size_t);
L
liuruilong 已提交
139 140
    }

W
wangliu 已提交
141 142 143 144 145 146 147
    for (auto j : tmp) {
      LOG(kLOG_DEBUG1) << "    lod - " << j;
    }
    lod[i] = tmp;
  }

  // 3. tensor version
148 149
  uint32_t tensor_version = *reinterpret_cast<uint32_t *>(*data);
  (*data) += sizeof(uint32_t);
W
wangliu 已提交
150 151

  // 4. tensor desc
152 153
  int32_t size = *reinterpret_cast<int32_t *>(*data);
  (*data) += sizeof(int32_t);
L
liuruilong 已提交
154

W
wangliu 已提交
155
  std::unique_ptr<char[]> buf(new char[size]);
L
liuruilong 已提交
156
  for (int m = 0; m < size; ++m) {
157
    buf.get()[m] = (*data)[m];
L
liuruilong 已提交
158
  }
159
  (*data) += (sizeof(char) * size);
W
wangliu 已提交
160 161 162 163 164 165 166 167 168

  const framework::TensorDesc &desc = var_desc.Tensor_desc();
  int memory_size = 1;
  for (auto l : desc.Dims()) {
    memory_size *= l;
  }

  tensor->Resize(framework::make_ddim(desc.Dims()));

169
  void *memory = nullptr;
W
wangliu 已提交
170 171 172 173 174 175 176 177 178 179 180 181 182
  int type_size = 0;
  switch (desc.DataType()) {
    case framework::VARTYPE_TYPE_FP16:
      type_size = 2;
      break;
    case framework::VARTYPE_TYPE_FP32:
      type_size = 4;
      memory = tensor->mutable_data<float>();
      break;
    case framework::VARTYPE_TYPE_FP64:
      type_size = 8;
      break;
    case framework::VARTYPE_TYPE_INT32:
xiebaiyuan's avatar
xiebaiyuan 已提交
183
      memory = tensor->mutable_data<int32_t>();
W
wangliu 已提交
184 185 186 187 188 189 190 191 192 193 194
      type_size = 4;
      break;
    case framework::VARTYPE_TYPE_INT64:
      type_size = 8;
      break;
    case framework::VARTYPE_TYPE_BOOL:
      type_size = 1;
      break;
    default:
      break;
  }
W
wangliu 已提交
195 196 197 198 199 200 201 202
  if (program_.quantification) {
    float min_value;
    float max_value;

    memcpy(&min_value, *data, sizeof(float));
    memcpy(&max_value, *data + sizeof(float), sizeof(float));
    *data += 2 * sizeof(float);
    const float factor = (max_value - min_value) / 255.0;
H
hanbuhe 已提交
203
    uint8_t *uint8_data = reinterpret_cast<uint8_t *>(*data);
W
wangliu 已提交
204 205 206 207 208
    for (int k = 0; k < memory_size; ++k) {
      static_cast<float *>(memory)[k] = uint8_data[k] * factor + min_value;
    }
    *data += (memory_size * sizeof(uint8_t));
  } else {
209 210 211 212 213 214 215 216
    for (int n = 0; n < memory_size; n++) {
      float value;
      memcpy(&value, *data + n * type_size, type_size);
      if (value < 1e-30 && value > -1e-30) {
        static_cast<float *>(memory)[n] = 0.0;
      } else {
        static_cast<float *>(memory)[n] = value;
      }
W
wangliu 已提交
217 218
    }
    (*data) += (sizeof(char) * memory_size * type_size);
L
liuruilong 已提交
219
  }
W
wangliu 已提交
220 221 222 223 224 225 226 227 228 229 230 231
}

template <typename Dtype, Precision P>
void Executor<Dtype, P>::InitMemory() {
  for (const auto &block : to_predict_program_->Blocks()) {
    for (const auto &var_desc : block->Vars()) {
      auto var = program_.scope->Var(var_desc->Name());
      if (var_desc->Persistable()) {
        auto tensor = var->template GetMutable<framework::LoDTensor>();
        if (var_desc->Name() == "feed" || var_desc->Name() == "fetch") {
          continue;
        }
L
liuruilong 已提交
232

L
liuruilong 已提交
233 234
        char *origin_data =
            Get_binary_data(program_.model_path + "/" + var_desc->Name());
L
liuruilong 已提交
235
        char *data = origin_data;
236
        LoadMemory(*var_desc, tensor, &data);
L
liuruilong 已提交
237

L
liuruilong 已提交
238
        delete origin_data;
W
wangliu 已提交
239 240
      } else {
        if (var_desc->Type() == framework::VARTYPE_TYPE_LOD_TENSOR) {
xiebaiyuan's avatar
xiebaiyuan 已提交
241 242 243 244 245 246 247 248 249
          bool is_mute_match;
          framework::LoDTensor *tensor = nullptr;

          is_mute_match = varInputMemory(var_desc, var, tensor);

          PADDLE_MOBILE_ENFORCE(
              is_mute_match,
              "got unhandled var_desc->Tensor_desc().DataType(): %d",
              var_desc->Tensor_desc().DataType());
W
wangliu 已提交
250 251 252 253 254 255
        }
      }
    }
  }
}

L
liuruilong 已提交
256
template <typename Dtype, Precision P>
L
liuruilong 已提交
257
void Executor<Dtype, P>::InitCombineMemory() {
258 259 260 261 262 263 264 265 266
  char *origin_data;
  if (program_.combined_params_buf && program_.combined_params_len) {
    LOG(kLOG_INFO) << "use outter memory";
    origin_data = (char *)program_.combined_params_buf;
  } else {
    LOG(kLOG_INFO) << " begin init combine memory";
    origin_data = Get_binary_data(program_.para_path);
  }
  PADDLE_MOBILE_ENFORCE(origin_data != nullptr, "origin_data==nullptr!!!");
L
liuruilong 已提交
267
  char *data = origin_data;
L
liuruilong 已提交
268 269 270 271 272 273 274 275
  for (const auto &block : to_predict_program_->Blocks()) {
    for (const auto &var_desc : block->Vars()) {
      auto var = program_.scope->Var(var_desc->Name());
      if (var_desc->Persistable()) {
        auto tensor = var->template GetMutable<framework::LoDTensor>();
        if (var_desc->Name() == "feed" || var_desc->Name() == "fetch") {
          continue;
        }
276
        LoadMemory(*var_desc, tensor, &data);
L
liuruilong 已提交
277 278
      } else {
        if (var_desc->Type() == framework::VARTYPE_TYPE_LOD_TENSOR) {
xiebaiyuan's avatar
xiebaiyuan 已提交
279 280 281 282 283 284 285 286 287
          bool is_mute_match = false;
          framework::LoDTensor *tensor;

          is_mute_match = varInputMemory(var_desc, var, tensor);

          PADDLE_MOBILE_ENFORCE(
              is_mute_match,
              "got unhandled var_desc->Tensor_desc().DataType(): %d",
              var_desc->Tensor_desc().DataType());
L
liuruilong 已提交
288 289 290 291 292
        }
      }
    }
  }
  delete origin_data;
L
liuruilong 已提交
293
  LOG(kLOG_INFO) << " end init combine memory ";
L
liuruilong 已提交
294
}
L
liuruilong 已提交
295

xiebaiyuan's avatar
xiebaiyuan 已提交
296 297 298 299 300 301 302 303 304 305 306 307 308 309 310 311 312 313 314 315 316 317
template <typename Dtype, Precision P>
bool Executor<Dtype, P>::varInputMemory(
    const std::shared_ptr<framework::VarDesc> &var_desc, Variable *var,
    framework::LoDTensor *tensor) const {
  bool is_mute_match = false;
  switch (var_desc->Tensor_desc().DataType()) {
    case framework::VARTYPE_TYPE_FP16: {
      break;
    }

    case framework::VARTYPE_TYPE_FP32: {
      tensor = var->template GetMutable<framework::LoDTensor>();
      tensor->template mutable_data<Ptype>();
      is_mute_match = true;
      break;
    }

    case framework::VARTYPE_TYPE_FP64: {
      break;
    }

    case framework::VARTYPE_TYPE_INT32: {
xiebaiyuan's avatar
xiebaiyuan 已提交
318 319 320
      tensor = var->template GetMutable<framework::LoDTensor>();
      tensor->template mutable_data<int32_t>();
      is_mute_match = true;
xiebaiyuan's avatar
xiebaiyuan 已提交
321 322 323 324 325 326 327 328 329 330 331 332 333 334 335 336 337 338
      break;
    }

    case framework::VARTYPE_TYPE_INT64: {
      tensor = var->template GetMutable<framework::LoDTensor>();
      tensor->template mutable_data<int64_t>();
      is_mute_match = true;
      break;
    }
    case framework::VARTYPE_TYPE_BOOL: {
      break;
    }

    default: { break; }
  }

  return is_mute_match;
}
L
liuruilong 已提交
339

W
wangliu 已提交
340
template <typename Dtype, Precision P>
W
wangliu 已提交
341 342
std::shared_ptr<framework::Tensor> Executor<Dtype, P>::Predict(
    const framework::Tensor &t) {
W
wangliu 已提交
343 344 345 346 347 348
  framework::Variable *g_feed_value = program_.scope->Var("feed");
  framework::Tensor *feed_tensor =
      g_feed_value->GetMutable<framework::LoDTensor>();
  feed_tensor->Resize(t.dims());
  feed_tensor->ShareDataWith(t);
  std::shared_ptr<framework::BlockDesc> to_predict_block =
W
wangliu 已提交
349
      to_predict_program_->Block(0);
D
dolphin8 已提交
350
  auto &ops = ops_of_block_[*to_predict_block.get()];
xiebaiyuan's avatar
xiebaiyuan 已提交
351

D
dolphin8 已提交
352
#ifdef PADDLE_MOBILE_PROFILE
D
dolphin8 已提交
353
  std::vector<ProfInfo> profile(ops.size());
D
dolphin8 已提交
354
#endif
D
dolphin8 已提交
355 356 357 358 359 360 361 362 363 364 365 366 367 368 369 370 371 372 373 374 375 376 377 378 379 380 381 382 383 384 385 386 387 388 389 390 391 392 393
#ifdef PADDLE_EXECUTOR_MULTITHREAD
  std::mutex m;
  std::condition_variable cv;
  std::queue<int> next;
  next.push(0);
  int rsize = ops.size();
  std::vector<int> status(rsize, 0);
  auto &threadPool = ThreadPool::getThreadPool();
  auto &dep = depManager[0];
  auto finishF = [&ops, &m, &cv, &next, &status, &rsize, &dep](int opi) {
    std::lock_guard<std::mutex> lk(m);
    rsize--;
    status[opi] = 2;
    for (int i : dep.getNext(opi)) {
      bool ok = true;
      for (int j : dep.getDeps(i)) {
        if (status[j] != 2) {
          ok = false;
          break;
        }
      }
      if (ok && (status[i] == 0)) {
        next.push(i);
      }
    }
    cv.notify_one();
  };
  for (;;) {
    std::unique_lock<std::mutex> lk(m);
    cv.wait(lk, [&next, &rsize] { return rsize == 0 || !next.empty(); });
    if (rsize == 0) {
      break;
    }
    while (next.size() > 0) {
      int opi = next.front();
      next.pop();
      status[opi] = 1;
      threadPool.enqueue([opi, &ops, &finishF, &profile] {
        auto &op = ops[opi];
D
dolphin8 已提交
394
#ifdef PADDLE_MOBILE_PROFILE
D
dolphin8 已提交
395 396 397 398
        struct timespec ts;
        clock_gettime(CLOCK_MONOTONIC, &ts);
        profile[opi].runBegin = (uint64_t)ts.tv_sec * 1e9 + ts.tv_nsec;
        profile[opi].tid = ThreadPool::getThreadPoolThreadId();
D
dolphin8 已提交
399
#endif
D
dolphin8 已提交
400
        ops[opi]->Run();
D
dolphin8 已提交
401
#ifdef PADDLE_MOBILE_PROFILE
D
dolphin8 已提交
402 403
        clock_gettime(CLOCK_MONOTONIC, &ts);
        profile[opi].runEnd = (uint64_t)ts.tv_sec * 1e9 + ts.tv_nsec;
D
dolphin8 已提交
404
#endif
D
dolphin8 已提交
405 406 407
        finishF(opi);
      });
    }
W
wangliu 已提交
408
  }
D
dolphin8 已提交
409 410
#else
  for (int i = 0; i < ops.size(); i++) {
D
dolphin8 已提交
411
#ifdef PADDLE_MOBILE_PROFILE
D
dolphin8 已提交
412 413 414 415
    struct timespec ts;
    clock_gettime(CLOCK_MONOTONIC, &ts);
    profile[i].runBegin = (uint64_t)ts.tv_sec * 1e9 + ts.tv_nsec;
#endif
L
liuruilong 已提交
416
    // to Run
D
dolphin8 已提交
417 418 419 420 421
    ops[i]->Run();
#ifdef PADDLE_MOBILE_PROFILE
    clock_gettime(CLOCK_MONOTONIC, &ts);
    profile[i].runEnd = (uint64_t)ts.tv_sec * 1e9 + ts.tv_nsec;
#endif
D
dolphin8 已提交
422 423
  }
#endif
W
wangliu 已提交
424 425 426 427 428 429 430
  auto last_op = ops.rbegin();
  auto output_map = (*last_op)->Outputs();
  std::vector<std::string> out_keys = (*last_op)->GetOutKeys();
  PADDLE_MOBILE_ENFORCE(out_keys.size() > 0, "the last op contains no output");
  framework::LoDTensor *output_tensor =
      framework::GetVarValue<framework::LoDTensor>(out_keys[0], output_map,
                                                   *(program_.scope));
D
dolphin8 已提交
431 432
#ifdef PADDLE_MOBILE_PROFILE
#ifdef PADDLE_EXECUTOR_MULTITHREAD
433 434
  // TODO(haipeng): expose profile info as an interface, user can get them to
  // analysis
D
dolphin8 已提交
435 436 437 438 439 440 441 442 443 444 445 446 447 448
  //      the performance of their deepnet.
  FILE *df = fopen("net.dot", "w");
  fprintf(df, "digraph {\n");
  for (int i = 0; i < ops.size(); i++) {
    for (int j : dep.getNext(i)) {
      fprintf(df, "op_%d -> op_%d\n", i, j);
    }
  }
  for (int i = 0; i < ops.size(); i++) {
    fprintf(df, "op_%d[label=\"%s (%d)\"]\n", i, ops[i]->Type().c_str(), i);
  }
  fprintf(df, "}\n");
  fclose(df);
#endif
449
  //  FILE *pf = fopen("profile.out", "w");
D
dolphin8 已提交
450 451 452 453 454
  std::unordered_map<std::string, uint64_t> _tp;
  for (int i = 0; i < profile.size(); i++) {
    const auto &pInfo = profile[i];
    uint64_t timeCost = pInfo.runEnd - pInfo.runBegin;
    _tp[ops[i]->Type()] += timeCost;
L
liuruilong 已提交
455 456 457
    //    fprintf(pf, "%d\t%s\t%d\t%llu\t%llu\t%llu\n", i,
    //    ops[i]->Type().c_str(),
    //            pInfo.tid, pInfo.runBegin, pInfo.runEnd, timeCost);
D
dolphin8 已提交
458
  }
459
  //  fclose(pf);
D
dolphin8 已提交
460 461 462 463 464 465 466 467 468 469 470 471 472
  printf("====================[ profile ]======================\n");
  using prof_t = std::pair<std::string, uint64_t>;
  std::vector<prof_t> _tv(_tp.begin(), _tp.end());
  uint64_t _ptotal = 0;
  for (auto const &p : _tv) {
    _ptotal += p.second;
  }
  auto compf = [](const prof_t &a, const prof_t &b) {
    return a.second > b.second;
  };
  std::sort(_tv.begin(), _tv.end(), compf);
  _tv.push_back(std::make_pair("total", _ptotal));
  for (auto const &p : _tv) {
473 474 475
    printf("%-16s\t%-10.0f\t%-2.4f\n", p.first.c_str(),
           static_cast<float>(p.second),
           static_cast<float>(p.second) / _ptotal * 100.0);
D
dolphin8 已提交
476 477 478
  }
  printf("====================[---------]======================\n");
#endif
L
liuruilong 已提交
479
  return std::make_shared<framework::Tensor>(framework::Tensor(*output_tensor));
W
wangliu 已提交
480
}
xiebaiyuan's avatar
xiebaiyuan 已提交
481 482 483 484 485 486 487 488 489 490 491 492 493 494 495 496 497 498 499 500 501 502 503 504 505 506 507 508 509 510 511 512 513 514 515 516 517 518 519 520 521 522 523 524 525 526 527 528 529 530 531 532 533 534 535 536 537 538 539 540 541 542 543 544 545 546 547 548 549 550 551 552 553 554 555 556 557 558 559 560 561 562 563 564 565 566 567 568 569 570 571 572 573 574 575 576 577 578 579 580 581 582 583 584 585 586 587 588 589 590 591 592 593 594 595 596 597 598 599 600 601 602 603 604 605 606 607 608 609 610 611 612 613 614 615 616 617 618 619 620 621 622 623 624 625 626 627 628 629 630 631

template <typename Dtype, Precision P>
std::shared_ptr<framework::LoDTensor> Executor<Dtype, P>::PredictLod(
    const framework::LoDTensor &t) {
  framework::Variable *g_feed_value = program_.scope->Var("feed");
  framework::LoDTensor *feed_tensor =
      g_feed_value->GetMutable<framework::LoDTensor>();
  feed_tensor->Resize(t.dims());
  feed_tensor->ShareDataWith(t);
  feed_tensor->set_lod(t.lod());

  std::shared_ptr<framework::BlockDesc> to_predict_block =
      to_predict_program_->Block(0);

  auto &ops = ops_of_block_[*to_predict_block.get()];

#ifdef PADDLE_MOBILE_PROFILE
  std::vector<ProfInfo> profile(ops.size());
#endif
#ifdef PADDLE_EXECUTOR_MULTITHREAD
  std::mutex m;
  std::condition_variable cv;
  std::queue<int> next;
  next.push(0);
  int rsize = ops.size();
  std::vector<int> status(rsize, 0);
  auto &threadPool = ThreadPool::getThreadPool();
  auto &dep = depManager[0];
  auto finishF = [&ops, &m, &cv, &next, &status, &rsize, &dep](int opi) {
    std::lock_guard<std::mutex> lk(m);
    rsize--;
    status[opi] = 2;
    for (int i : dep.getNext(opi)) {
      bool ok = true;
      for (int j : dep.getDeps(i)) {
        if (status[j] != 2) {
          ok = false;
          break;
        }
      }
      if (ok && (status[i] == 0)) {
        next.push(i);
      }
    }
    cv.notify_one();
  };
  for (;;) {
    std::unique_lock<std::mutex> lk(m);
    cv.wait(lk, [&next, &rsize] { return rsize == 0 || !next.empty(); });
    if (rsize == 0) {
      break;
    }
    while (next.size() > 0) {
      int opi = next.front();
      next.pop();
      status[opi] = 1;
      threadPool.enqueue([opi, &ops, &finishF, &profile] {
        auto &op = ops[opi];
#ifdef PADDLE_MOBILE_PROFILE
        struct timespec ts;
        clock_gettime(CLOCK_MONOTONIC, &ts);
        profile[opi].runBegin = (uint64_t)ts.tv_sec * 1e9 + ts.tv_nsec;
        profile[opi].tid = ThreadPool::getThreadPoolThreadId();
#endif
        ops[opi]->Run();
#ifdef PADDLE_MOBILE_PROFILE
        clock_gettime(CLOCK_MONOTONIC, &ts);
        profile[opi].runEnd = (uint64_t)ts.tv_sec * 1e9 + ts.tv_nsec;
#endif
        finishF(opi);
      });
    }
  }
#else
  for (int i = 0; i < ops.size(); i++) {
#ifdef PADDLE_MOBILE_PROFILE
    struct timespec ts;
    clock_gettime(CLOCK_MONOTONIC, &ts);
    profile[i].runBegin = (uint64_t)ts.tv_sec * 1e9 + ts.tv_nsec;
#endif
    if (loddable_) {
      ops[i]->InferShape();
    }
    // to Run
    ops[i]->Run();
#ifdef PADDLE_MOBILE_PROFILE
    clock_gettime(CLOCK_MONOTONIC, &ts);
    profile[i].runEnd = (uint64_t)ts.tv_sec * 1e9 + ts.tv_nsec;
#endif
  }
#endif
  auto last_op = ops.rbegin();

  auto output_map = (*last_op)->Outputs();
  std::vector<std::string> out_keys = (*last_op)->GetOutKeys();
  PADDLE_MOBILE_ENFORCE(out_keys.size() > 0, "the last op contains no output");
  framework::LoDTensor *output_tensor =
      framework::GetVarValue<framework::LoDTensor>(out_keys[0], output_map,
                                                   *(program_.scope));
#ifdef PADDLE_MOBILE_PROFILE
#ifdef PADDLE_EXECUTOR_MULTITHREAD
  // TODO(haipeng): expose profile info as an interface, user can get them to
  // analysis
  //      the performance of their deepnet.
  FILE *df = fopen("net.dot", "w");
  fprintf(df, "digraph {\n");
  for (int i = 0; i < ops.size(); i++) {
    for (int j : dep.getNext(i)) {
      fprintf(df, "op_%d -> op_%d\n", i, j);
    }
  }
  for (int i = 0; i < ops.size(); i++) {
    fprintf(df, "op_%d[label=\"%s (%d)\"]\n", i, ops[i]->Type().c_str(), i);
  }
  fprintf(df, "}\n");
  fclose(df);
#endif
  //  FILE *pf = fopen("profile.out", "w");
  std::unordered_map<std::string, uint64_t> _tp;
  for (int i = 0; i < profile.size(); i++) {
    const auto &pInfo = profile[i];
    uint64_t timeCost = pInfo.runEnd - pInfo.runBegin;
    _tp[ops[i]->Type()] += timeCost;
    //    fprintf(pf, "%d\t%s\t%d\t%llu\t%llu\t%llu\n", i,
    //    ops[i]->Type().c_str(),
    //            pInfo.tid, pInfo.runBegin, pInfo.runEnd, timeCost);
  }
  //  fclose(pf);
  printf("====================[ profile ]======================\n");
  using prof_t = std::pair<std::string, uint64_t>;
  std::vector<prof_t> _tv(_tp.begin(), _tp.end());
  uint64_t _ptotal = 0;
  for (auto const &p : _tv) {
    _ptotal += p.second;
  }
  auto compf = [](const prof_t &a, const prof_t &b) {
    return a.second > b.second;
  };
  std::sort(_tv.begin(), _tv.end(), compf);
  _tv.push_back(std::make_pair("total", _ptotal));
  for (auto const &p : _tv) {
    printf("%-16s\t%-10.0f\t%-2.4f\n", p.first.c_str(),
           static_cast<float>(p.second),
           static_cast<float>(p.second) / _ptotal * 100.0);
  }
  printf("====================[---------]======================\n");
#endif
  return std::make_shared<framework::LoDTensor>(
      framework::LoDTensor(*output_tensor));
}

W
wangliu 已提交
632 633 634 635
template <typename Dtype, Precision P>
std::shared_ptr<framework::Tensor> Executor<Dtype, P>::Predict(
    const framework::Tensor &t, int block_id) {
  return Predict(t);
W
wangliu 已提交
636 637 638
}

template <typename Dtype, Precision P>
L
liuruilong 已提交
639
std::vector<typename Executor<Dtype, P>::Ptype> Executor<Dtype, P>::Predict(
W
wangliu 已提交
640 641
    const std::vector<Ptype> &input, const std::vector<int64_t> &dims) {
  framework::Tensor tensor(input, framework::make_ddim(dims));
W
wangliu 已提交
642 643 644 645 646 647 648 649
  std::shared_ptr<framework::Tensor> output_tensor = Predict(tensor, 0);
  Executor<Dtype, P>::Ptype *output_ptr =
      output_tensor->data<typename Executor<Dtype, P>::Ptype>();
  std::vector<typename Executor<Dtype, P>::Ptype> result_vector;
  for (int j = 0; j < output_tensor->numel(); ++j) {
    result_vector.push_back(output_ptr[j]);
  }
  return result_vector;
W
wangliu 已提交
650 651
}

652
#ifdef PADDLE_MOBILE_FPGA
653

654
template <typename Dtype, Precision P>
655 656 657
void Executor<Dtype, P>::InjectVariable(const framework::Tensor &t,
                                        string var_name) {
  framework::Variable *g_feed_value = program_.scope->Var(var_name);
658 659 660 661 662 663
  framework::Tensor *feed_tensor =
      g_feed_value->GetMutable<framework::LoDTensor>();
  feed_tensor->Resize(t.dims());
  feed_tensor->ShareDataWith(t);
};

664 665 666 667 668
template <typename Dtype, Precision P>
void Executor<Dtype, P>::FeedData(const framework::Tensor &t) {
  InjectVariable(t, "feed");
};

669
template <typename Dtype, Precision P>
670
std::shared_ptr<framework::Tensor> Executor<Dtype, P>::FetchResult(int id) {
671 672 673
  std::shared_ptr<framework::BlockDesc> to_predict_block =
      to_predict_program_->Block(0);
  auto &ops = ops_of_block_[*to_predict_block.get()];
674 675 676 677 678

  PADDLE_MOBILE_ENFORCE(id < ops.size(), "Index out of range");
  auto last_op = id < 0 ? ops[ops.size() - 1] : ops[id];
  auto output_map = last_op->Outputs();
  std::vector<std::string> out_keys = last_op->GetOutKeys();
679 680 681 682 683 684 685 686 687 688 689 690 691 692 693 694 695 696 697 698 699 700 701 702
  PADDLE_MOBILE_ENFORCE(!out_keys.empty(), "the last op contains no output");
  auto *output_tensor = framework::GetVarValue<framework::LoDTensor>(
      out_keys[0], output_map, *(program_.scope));
  return std::make_shared<framework::Tensor>(framework::Tensor(*output_tensor));
};

template <typename Dtype, Precision P>
void Executor<Dtype, P>::Predict_From_To(int start, int end) {
  std::shared_ptr<framework::BlockDesc> to_predict_block =
      to_predict_program_->Block(0);
  auto &ops = ops_of_block_[*to_predict_block.get()];
  end = end < 0 ? (int)ops.size() : end;
  PADDLE_MOBILE_ENFORCE(start >= 0 && start < end && end <= ops.size(),
                        "start or end parameter is wrong");

#ifdef PADDLE_MOBILE_PROFILE
  std::vector<ProfInfo> profile(ops.size());
#endif
  for (int i = start; i < end; i++) {
#ifdef PADDLE_MOBILE_PROFILE
    struct timespec ts;
    clock_gettime(CLOCK_MONOTONIC, &ts);
    profile[i].runBegin = (uint64_t)ts.tv_sec * 1e9 + ts.tv_nsec;
#endif
Z
zhangyang 已提交
703
    DLOG << "Running op: " << i << "  " << ops[i]->Type();
704 705 706 707 708 709 710 711 712 713 714 715 716 717 718 719 720 721 722 723
    ops[i]->Run();

#ifdef PADDLE_MOBILE_PROFILE
    clock_gettime(CLOCK_MONOTONIC, &ts);
    profile[i].runEnd = (uint64_t)ts.tv_sec * 1e9 + ts.tv_nsec;
#endif
  }
};

template <typename Dtype, Precision P>
void Executor<Dtype, P>::Predict_From(int start) {
  Predict_From_To(start);
};

template <typename Dtype, Precision P>
void Executor<Dtype, P>::Predict_To(int end) {
  Predict_From_To(0, end);
};
#endif

W
wangliu 已提交
724
template class Executor<CPU, Precision::FP32>;
L
liuruilong 已提交
725
template class Executor<FPGA, Precision::FP32>;
L
liuruilong 已提交
726 727
template class Executor<GPU_CL, Precision::FP32>;
template class Executor<GPU_MALI, Precision::FP32>;
W
wangliu 已提交
728 729

}  // namespace paddle_mobile