analysis_predictor.cc 94.8 KB
Newer Older
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.

Y
Yan Chunwei 已提交
15
#include "paddle/fluid/inference/api/analysis_predictor.h"
16

17
#include <glog/logging.h>
18

19
#include <algorithm>
N
nhzlx 已提交
20
#include <fstream>
21
#include <memory>
22
#include <set>
23
#include <string>
24
#include <utility>
25
#include <vector>
26

W
Wilber 已提交
27
#include "paddle/fluid//platform/device/gpu/gpu_types.h"
28
#include "paddle/fluid/framework/feed_fetch_method.h"
29
#include "paddle/fluid/framework/feed_fetch_type.h"
30
#include "paddle/fluid/framework/generator.h"
Y
Yan Chunwei 已提交
31
#include "paddle/fluid/framework/ir/fuse_pass_base.h"
32
#include "paddle/fluid/framework/ir/pass.h"
33
#include "paddle/fluid/framework/naive_executor.h"
34
#include "paddle/fluid/framework/op_proto_maker.h"
35
#include "paddle/fluid/framework/operator.h"
36
#include "paddle/fluid/framework/scope.h"
J
JingZhuangzhuang 已提交
37
#include "paddle/fluid/framework/transfer_scope_cache.h"
Y
Yan Chunwei 已提交
38
#include "paddle/fluid/framework/var_type_traits.h"
39
#include "paddle/fluid/framework/version.h"
40
#include "paddle/fluid/inference/analysis/helper.h"
41
#include "paddle/fluid/inference/analysis/pass_result_info.h"
42
#include "paddle/fluid/inference/analysis/passes/convert_to_mixed_precision.h"
Y
Yan Chunwei 已提交
43
#include "paddle/fluid/inference/analysis/passes/memory_optimize_pass.h"
44
#include "paddle/fluid/inference/api/helper.h"
45
#include "paddle/fluid/inference/api/infer_context.h"
46
#include "paddle/fluid/inference/api/paddle_analysis_config.h"
47
#include "paddle/fluid/inference/api/paddle_inference_api.h"
L
luotao1 已提交
48
#include "paddle/fluid/inference/api/paddle_inference_pass.h"
W
Wilber 已提交
49
#include "paddle/fluid/inference/api/resource_manager.h"
50
#include "paddle/fluid/inference/utils/io_utils.h"
51
#include "paddle/fluid/inference/utils/model_utils.h"
52
#include "paddle/fluid/inference/utils/singleton.h"
53
#include "paddle/fluid/memory/memcpy.h"
54
#include "paddle/fluid/platform/cpu_helper.h"
55
#include "paddle/fluid/platform/device/gpu/gpu_info.h"
56
#include "paddle/fluid/platform/device_context.h"
57
#include "paddle/fluid/platform/place.h"
T
tensor-tang 已提交
58
#include "paddle/fluid/platform/profiler.h"
59
#include "paddle/phi/api/ext/op_meta_info.h"
60 61
#include "paddle/phi/common/backend.h"
#include "paddle/phi/common/data_type.h"
W
Wilber 已提交
62
#include "paddle/phi/common/place.h"
W
Wilber 已提交
63
#include "paddle/phi/core/enforce.h"
64 65
#include "paddle/utils/string/split.h"

66
#if defined(PADDLE_WITH_DISTRIBUTE) && defined(PADDLE_WITH_PSCORE)
67 68 69 70
#include "paddle/fluid/distributed/fleet_executor/fleet_executor.h"
#include "paddle/fluid/distributed/fleet_executor/fleet_executor_desc.pb.h"
#include "paddle/fluid/distributed/fleet_executor/task_node.h"
#endif
T
tensor-tang 已提交
71

72 73 74 75
#ifdef PADDLE_WITH_MKLML
#include "paddle/fluid/platform/dynload/mklml.h"
#endif

76 77 78 79
#ifdef PADDLE_WITH_MKLDNN
#include "paddle/fluid/inference/api/mkldnn_quantizer.h"
#endif

80 81 82 83
#ifdef PADDLE_WITH_ONNXRUNTIME
#include "paddle/fluid/inference/api/onnxruntime_predictor.h"
#endif

84
#ifdef PADDLE_WITH_TENSORRT
Y
Yan Chunwei 已提交
85
#include "paddle/fluid/inference/tensorrt/convert/op_converter.h"
86
#include "paddle/fluid/inference/tensorrt/helper.h"
87
#include "paddle/fluid/inference/tensorrt/trt_int8_calibrator.h"
Y
Yan Chunwei 已提交
88 89
#endif

90 91 92 93
#ifdef PADDLE_WITH_IPU
#include "paddle/fluid/platform/device/ipu/paddle_ipu_handler.h"
#endif

94 95
namespace paddle {

N
nhzlx 已提交
96
using inference::Singleton;
97
#ifdef PADDLE_WITH_TENSORRT
N
nhzlx 已提交
98 99
using inference::tensorrt::TRTCalibratorEngine;
using inference::tensorrt::TRTCalibratorEngineManager;
100
using inference::tensorrt::TRTInt8Calibrator;
N
nhzlx 已提交
101
#endif
102

103 104
int AnalysisPredictor::clone_num_ = 1;

105 106 107 108
namespace {
bool IsPersistable(const framework::VarDesc *var) {
  if (var->Persistable() &&
      var->GetType() != framework::proto::VarType::FEED_MINIBATCH &&
109 110
      var->GetType() != framework::proto::VarType::FETCH_LIST &&
      var->GetType() != framework::proto::VarType::RAW) {
111 112 113 114
    return true;
  }
  return false;
}
115 116 117 118 119 120 121 122 123 124 125 126 127 128 129 130 131 132 133

phi::DataType ConvertPrecision(AnalysisConfig::Precision precision) {
  switch (precision) {
    case AnalysisConfig::Precision::kFloat32:
      return phi::DataType::FLOAT32;
    case AnalysisConfig::Precision::kHalf:
      return phi::DataType::FLOAT16;
    case AnalysisConfig::Precision::kBf16:
      return phi::DataType::BFLOAT16;
    case AnalysisConfig::Precision::kInt8:
      return phi::DataType::INT8;
    default:
      PADDLE_THROW(paddle::platform::errors::InvalidArgument(
          "Paddle Inference not support precision. We now only support "
          "Float32, Half, Bfloat16 and Int8"));
      return phi::DataType::FLOAT32;
  }
}

134
phi::Backend ConvertBackend(paddle_infer::PlaceType backend) {
135
  switch (backend) {
136
    case paddle_infer::PlaceType::kGPU:
137 138
      // NOTE: phi also support phi::Backend::GPUDNN.
      return phi::Backend::GPU;
139
    case paddle_infer::PlaceType::kNPU:
140
      return phi::Backend::NPU;
141
    case paddle_infer::PlaceType::kXPU:
142
      return phi::Backend::XPU;
143
    case paddle_infer::PlaceType::kCPU:
144
      return phi::Backend::CPU;
145 146
    case paddle_infer::PlaceType::kIPU:
      return phi::Backend::IPU;
147 148 149 150 151 152 153
    default:
      PADDLE_THROW(paddle::platform::errors::InvalidArgument(
          "Paddle Inference not support backend, we now only support GPU, XPU, "
          "NPU and CPU."));
      return phi::Backend::CPU;
  }
}
154 155
}  // namespace

C
ccrrong 已提交
156
bool PaddleTensorToLoDTensor(const PaddleTensor &pt,
157
                             phi::DenseTensor *t,
158
                             const platform::Place &place) {
159
  framework::DDim ddim = phi::make_ddim(pt.shape);
160 161 162 163 164 165 166
  void *input_ptr;
  if (pt.dtype == PaddleDType::INT64) {
    input_ptr = t->mutable_data<int64_t>(ddim, place);
  } else if (pt.dtype == PaddleDType::FLOAT32) {
    input_ptr = t->mutable_data<float>(ddim, place);
  } else if (pt.dtype == PaddleDType::INT32) {
    input_ptr = t->mutable_data<int32_t>(ddim, place);
167 168
  } else if (pt.dtype == PaddleDType::FLOAT16) {
    input_ptr = t->mutable_data<float16>(ddim, place);
169 170 171 172
  } else {
    LOG(ERROR) << "unsupported feed type " << pt.dtype;
    return false;
  }
173 174 175
  // NOTE(Aurelius84): Some kernels support zero shape input
  // without memory holder, we should skip enforce logic.
  bool has_zero_dim = (phi::product(ddim) == 0);
176 177 178
  VLOG(3) << "Found zero dim: " << has_zero_dim
          << " from input with ddim: " << ddim;
  if (!has_zero_dim) {
179 180 181 182 183 184 185 186
    PADDLE_ENFORCE_NOT_NULL(
        input_ptr,
        paddle::platform::errors::Fatal(
            "Cannot convert to LoDTensor because LoDTensor creation failed."));
    PADDLE_ENFORCE_NOT_NULL(
        pt.data.data(),
        paddle::platform::errors::InvalidArgument(
            "The data contained in the input PaddleTensor is illegal."));
187 188 189 190 191
    PADDLE_ENFORCE_EQ(
        pt.data.length(),
        t->numel() * paddle::experimental::SizeOf(t->dtype()),
        paddle::platform::errors::InvalidArgument(
            "The data contained in the input PaddleTensor had wrong length."));
192
  }
193 194 195

  if (platform::is_cpu_place(place)) {
    // TODO(panyx0718): Init LoDTensor from existing memcpy to save a copy.
196 197 198 199
    if (input_ptr != nullptr) {
      std::memcpy(
          static_cast<void *>(input_ptr), pt.data.data(), pt.data.length());
    }
J
jianghaicheng 已提交
200 201
  } else if (platform::is_ipu_place(place)) {
#ifdef PADDLE_WITH_IPU
C
ccrrong 已提交
202 203
    std::memcpy(
        static_cast<void *>(input_ptr), pt.data.data(), pt.data.length());
J
jianghaicheng 已提交
204 205 206 207
#else
    PADDLE_THROW(paddle::platform::errors::Fatal(
        "Not compile with WITH_IPU, should not reach here."));
#endif
208
  } else if (platform::is_gpu_place(place)) {
C
ccrrong 已提交
209 210
    PADDLE_ENFORCE_EQ(platform::is_xpu_place(place),
                      false,
211 212
                      platform::errors::InvalidArgument(
                          "Only one choice can be made between CPU and XPU."));
213
#if defined(PADDLE_WITH_CUDA) || defined(PADDLE_WITH_HIP)
214
    platform::DeviceContextPool &pool = platform::DeviceContextPool::Instance();
L
Leo Chen 已提交
215
    auto *dev_ctx = static_cast<const phi::GPUContext *>(pool.Get(place));
216
    auto dst_gpu_place = place;
C
ccrrong 已提交
217 218 219 220 221
    memory::Copy(dst_gpu_place,
                 static_cast<void *>(input_ptr),
                 platform::CPUPlace(),
                 pt.data.data(),
                 pt.data.length(),
222 223 224 225 226
                 dev_ctx->stream());
#else
    PADDLE_THROW(paddle::platform::errors::Fatal(
        "Not compile with CUDA, should not reach here."));
#endif
227 228
  } else if (platform::is_xpu_place(place)) {
#ifdef PADDLE_WITH_XPU
229
    auto dst_xpu_place = place;
C
ccrrong 已提交
230 231 232 233 234
    memory::Copy(dst_xpu_place,
                 static_cast<void *>(input_ptr),
                 platform::CPUPlace(),
                 pt.data.data(),
                 pt.data.length());
235 236 237 238 239 240 241
#else
    PADDLE_THROW(paddle::platform::errors::Fatal(
        "Not compile with XPU, should not reach here."));
#endif
  } else {
    PADDLE_THROW(paddle::platform::errors::InvalidArgument(
        "The analysis predictor supports CPU, GPU and XPU now."));
242 243 244 245 246 247 248 249 250 251
  }
  // TODO(Superjomn) Low performance, need optimization for heavy LoD copy.
  framework::LoD lod;
  for (auto &level : pt.lod) {
    lod.emplace_back(level);
  }
  t->set_lod(lod);
  return true;
}

Y
Yan Chunwei 已提交
252
bool AnalysisPredictor::Init(
253 254
    const std::shared_ptr<framework::Scope> &parent_scope,
    const std::shared_ptr<framework::ProgramDesc> &program) {
M
minqiyang 已提交
255
  VLOG(3) << "Predictor::init()";
256 257
  if (config_.with_profile_) {
    LOG(WARNING) << "Profiler is activated, which might affect the performance";
258 259
    auto tracking_device = config_.use_gpu() ? platform::ProfilerState::kAll
                                             : platform::ProfilerState::kCPU;
T
tensor-tang 已提交
260
    platform::EnableProfiler(tracking_device);
261
  } else {
262 263
    VLOG(2) << "Profiler is deactivated, and no profiling report will be "
               "generated.";
T
tensor-tang 已提交
264 265
  }

266 267 268 269
  if (!status_is_cloned_) {
    root_predictor_id_ = predictor_id_;
  }

270
  // no matter with or without MKLDNN
L
luotao1 已提交
271
  paddle::platform::SetNumThreads(config_.cpu_math_library_num_threads());
272

273 274 275
  if (!PrepareScope(parent_scope)) {
    return false;
  }
276 277 278

  InitPlace();

279 280 281 282 283 284 285
  if (!CreateExecutor()) {
    return false;
  }
  if (!PrepareProgram(program)) {
    return false;
  }

286 287 288
  // Get the feed_target_names and fetch_target_names
  PrepareFeedFetch();

289 290 291
  // Prepare executor, create local variables.
  if (!PrepareExecutor()) {
    return true;
Y
Yan Chunwei 已提交
292
  }
293

294 295 296 297 298 299 300 301 302 303 304 305 306
#if defined(PADDLE_WITH_CUDA) || defined(PADDLE_WITH_HIP)
  // TODO(inference): Now only gpu with external stream support private
  // device_context.
  if (config_.use_gpu_ && config_.use_external_stream_) {
    private_context_ = true;
  }
  if (private_context_) {
    if (!status_is_cloned_) {
      predictor_stream_ = config_.GetExecStream();
    }
    // NOTE: If the external_stream equals to global_device_contexts's stream,
    // then fallback.
    auto global_stream =
L
Leo Chen 已提交
307
        static_cast<phi::GPUContext *>(
308 309 310 311 312 313
            platform::DeviceContextPool::Instance().Get(place_))
            ->stream();
    if (predictor_stream_ != global_stream) {
      InitResourceManager(predictor_stream_);
      InitDeviceContexts();
    }
Y
Yan Chunwei 已提交
314
  }
315
#endif
316
  inference::DisplayMemoryInfo(place_, "Init predictor");
317 318
  return true;
}
319

320
void AnalysisPredictor::InitPlace() {
321
  if (config_.use_gpu()) {
C
ccrrong 已提交
322 323
    PADDLE_ENFORCE_EQ(config_.use_xpu(),
                      false,
324 325
                      platform::errors::InvalidArgument(
                          "Only one choice can be made between CPU and XPU."));
326
    place_ = paddle::platform::CUDAPlace(config_.gpu_device_id());
327
#if defined(PADDLE_WITH_CUDA) || defined(PADDLE_WITH_HIP)
328
    if (config_.thread_local_stream_enabled()) {
W
Wilber 已提交
329 330
      LOG_FIRST_N(WARNING, 1) << "We will remove this interface in the future. "
                                 "Please use config.SetExecStream instead.";
331 332
    }
#endif
333
  } else if (config_.use_xpu()) {
334 335 336 337 338 339 340 341 342 343 344 345 346 347 348 349 350 351 352 353 354 355 356
    if (config_.lite_engine_enabled()) {
#ifdef LITE_SUBGRAPH_WITH_XPU
      // Currently, Paddle-Lite's XPU user interface only supports the transfer
      // of Host data pointers. If it is currently used as a subgraph, execution
      // efficiency will be sacrificed, so it is temporarily set to cpu place.
      // And, the current lite engine of xpu must execute all parts of the
      // model.
      place_ = paddle::platform::CPUPlace();
#else
      PADDLE_THROW(platform::errors::Unavailable(
          "You tried to use an XPU lite engine, but Paddle was not compiled "
          "with it."));
#endif  // LITE_SUBGRAPH_WITH_XPU
    } else {
#ifdef PADDLE_WITH_XPU
      place_ = paddle::platform::XPUPlace(config_.xpu_device_id());
#else
      PADDLE_THROW(platform::errors::Unavailable(
          "You tried to use XPU forward propagation (inference without lite "
          "engine), but Paddle was not compiled "
          "with WITH_XPU."));
#endif  // PADDLE_WITH_XPU
    }
W
Wilber 已提交
357 358 359 360 361 362 363 364
  } else if (config_.use_npu()) {
#ifdef PADDLE_WITH_ASCEND_CL
    place_ = paddle::platform::NPUPlace(config_.npu_device_id());
#else
    PADDLE_THROW(platform::errors::Unavailable(
        "You tried to use NPU forward propagation, but Paddle was not compiled "
        "with WITH_ASCEND_CL."));
#endif
365 366 367 368 369 370 371 372 373 374 375 376 377 378 379 380
  } else if (config_.NNAdapter().use_nnadapter) {
    if (config_.lite_engine_enabled()) {
      place_ = paddle::platform::CPUPlace();
#ifndef LITE_SUBGRAPH_WITH_NNADAPTER
      PADDLE_THROW(
          platform::errors::Unavailable("You tried to use an NNAdapter lite "
                                        "engine, but Paddle was not compiled "
                                        "with it."));
#endif  // LITE_SUBGRAPH_WITH_NNADAPTER
    } else {
      PADDLE_THROW(
          platform::errors::Unavailable("You tried to use NNadapter forward "
                                        "propagation (inference without lite "
                                        "engine), but Paddle was not compiled "
                                        "with LITE_WITH_NNADAPTER."));
    }
J
jianghaicheng 已提交
381 382 383 384 385 386 387
  } else if (config_.use_ipu()) {
#ifdef PADDLE_WITH_IPU
    place_ = paddle::platform::IPUPlace();
#else
    PADDLE_THROW(platform::errors::Unavailable(
        "You tried to use IPU forward propagation, but Paddle was not compiled "
        "with WITH_IPU."));
388 389 390 391 392 393 394 395 396
#endif
  } else if (config_.use_custom_device()) {
#ifdef PADDLE_WITH_CUSTOM_DEVICE
    place_ = paddle::platform::CustomPlace(config_.custom_device_type());
#else
    PADDLE_THROW(platform::errors::Unavailable(
        "You tried to use CustomDevice forward propagation, but Paddle was not "
        "compiled "
        "with WITH_CUSTOM_DEVICE."));
J
jianghaicheng 已提交
397
#endif
398 399 400
  } else {
    place_ = paddle::platform::CPUPlace();
  }
401 402 403 404 405 406 407 408 409 410 411 412 413 414 415 416 417
}

void AnalysisPredictor::InitResourceManager(void *stream) {
#if defined(PADDLE_WITH_CUDA) || defined(PADDLE_WITH_HIP)
  predictor_stream_ =
      ResourceManager::Instance().InitGPUResource(place_, stream);
#endif
}

void AnalysisPredictor::InitDeviceContexts() {
// Init GPUContext.
#if defined(PADDLE_WITH_CUDA) || defined(PADDLE_WITH_HIP)
  if (place_.GetType() == phi::AllocationType::GPU) {
    device_contexts_.emplace(
        place_, std::async(std::launch::deferred, [=] {
          auto *gpu_resource =
              ResourceManager::Instance().GetGPUResource(predictor_stream_);
W
Wilber 已提交
418
          auto *gpu_context = new InferGPUContext(place_);
419 420 421 422 423 424 425 426 427 428 429 430 431 432 433 434
          gpu_context->SetAllocator(
              memory::allocation::AllocatorFacade::Instance()
                  .GetAllocator(place_, gpu_resource->GetStream())
                  .get());
          gpu_context->SetPinnedAllocator(
              memory::allocation::AllocatorFacade::Instance()
                  .GetAllocator(paddle::platform::CUDAPinnedPlace())
                  .get());
          gpu_context->SetHostAllocator(
              memory::allocation::AllocatorFacade::Instance()
                  .GetAllocator(platform::CPUPlace())
                  .get());
          gpu_context->SetZeroAllocator(
              memory::allocation::AllocatorFacade::Instance()
                  .GetZeroAllocator(place_)
                  .get());
435 436 437 438
          gpu_context->SetHostZeroAllocator(
              memory::allocation::AllocatorFacade::Instance()
                  .GetZeroAllocator(platform::CPUPlace())
                  .get());
439 440 441 442 443
          gpu_context->SetGenerator(
              framework::DefaultCUDAGenerator(place_.GetDeviceId()).get());
          gpu_context->SetHostGenerator(framework::DefaultCPUGenerator().get());

          gpu_context->SetStream(gpu_resource->GetStream());
444
          gpu_context->SetBlasHandle(gpu_resource->GetBlasHandleCreator());
445
          gpu_context->SetBlasTensorCoreHandle(
446 447 448 449 450 451 452 453
              gpu_resource->GetBlasTensorCoreHandleCreator());
          gpu_context->SetBlasTF32Handle(
              gpu_resource->GetBlasTF32TensorCoreHandleCreator());
          gpu_context->SetDnnHandle(gpu_resource->GetDnnHandleCreator());
          gpu_context->SetSolverHandle(
              gpu_resource->GetSolverDnHandleCreator());
          gpu_context->SetSparseHandle(gpu_resource->GetSparseHandleCreator());
          gpu_context->SetEigenDevice(gpu_resource->GetGpuEigenDeviceCreator());
454 455 456 457 458 459 460 461 462 463 464 465 466 467 468 469 470 471 472 473 474 475 476 477 478 479 480 481 482 483 484 485 486 487 488 489 490 491 492 493 494 495 496 497 498 499 500 501 502 503 504 505 506 507 508 509 510 511 512 513 514 515 516 517 518 519 520 521 522 523 524 525 526 527 528 529 530 531 532 533 534 535 536 537 538 539 540 541 542 543 544 545 546 547
          gpu_context->SetComputeCapability(
              gpu_resource->GetGpuComputeCapability());
          gpu_context->SetMaxThreadsPerBlock(
              gpu_resource->GetGpuMaxThreadsPerBlock());
          gpu_context->SetMaxThreadsPerMultiProcessor(
              gpu_resource->GetGpuMaxThreadsPerMp());
          gpu_context->SetMaxGridDimSize(gpu_resource->GetGpuMaxGridDimSize());
          gpu_context->SetMultiProcessors(
              gpu_resource->GetGPUMultiProcessors());
          gpu_context->SetDriverVersion(gpu_resource->GetGpuDriverVersion());
          gpu_context->SetRuntimeVersion(gpu_resource->GetGpuRuntimeVersion());
          VLOG(1) << "thread id is " << std::this_thread::get_id()
                  << ", stream id is "
                  << reinterpret_cast<void *>(gpu_resource->GetStream())
                  << ", allotor ptr is "
                  << reinterpret_cast<void *>(
                         memory::allocation::AllocatorFacade::Instance()
                             .GetAllocator(place_, gpu_resource->GetStream())
                             .get());
          return std::unique_ptr<phi::DeviceContext>(gpu_context);
        }));
  }
#endif
  // TODO(Inference): Support other backends.
}

void *AnalysisPredictor::GetExecStream() const {
#if defined(PADDLE_WITH_CUDA) || defined(PADDLE_WITH_HIP)
  if (place_.GetType() == phi::AllocationType::GPU) {
    if (private_context_) {
      return predictor_stream_;
    } else {
      paddle::platform::DeviceContextPool &pool =
          paddle::platform::DeviceContextPool::Instance();
      return reinterpret_cast<const phi::GPUContext *>(pool.Get(place_))
          ->stream();
    }
  } else {
    return nullptr;
  }
  return nullptr;
#else
  // TODO(inference): Support other backends.
  return nullptr;
#endif
}

const void *AnalysisPredictor::GetDeviceContexts() const {
  if (private_context_) {
    return &device_contexts_;
  } else {
    paddle::platform::DeviceContextPool &pool =
        paddle::platform::DeviceContextPool::Instance();
    const auto &dev_ctxs = pool.device_contexts();
    return &dev_ctxs;
  }
}

bool AnalysisPredictor::PrepareScope(
    const std::shared_ptr<framework::Scope> &parent_scope) {
  if (parent_scope) {
    PADDLE_ENFORCE_NOT_NULL(
        parent_scope,
        platform::errors::PreconditionNotMet(
            "Both program and parent_scope should be set in Clone mode."));
    scope_ = parent_scope;
    status_is_cloned_ = true;
  } else {
    paddle::framework::InitDevices();
    paddle::framework::InitDefaultKernelSignatureMap();
    // TODO(wilber): we need to release memory occupied by weights.
    scope_.reset(new paddle::framework::Scope());
    status_is_cloned_ = false;
  }
  sub_scope_ = &scope_->NewScope();
  return true;
}

bool AnalysisPredictor::PrepareProgram(
    const std::shared_ptr<framework::ProgramDesc> &program) {
  if (!program) {
    if (!LoadProgramDesc()) return false;
    // If not cloned, the parameters should be loaded.
    // If config_.ir_optim() is True, parameters is loaded in
    // OptimizeInferenceProgram(), but other persistable variables
    // (like RAW type var) are not created in scope.
    // If config_.ir_optim() is False, parameters is loaded in LoadParameters(),
    // still need to create other persistable variables.
    // So in both case, create persistable variables at first.
    executor_->CreateVariables(*inference_program_, 0, true, sub_scope_);

    // if enable_ir_optim_ is false,
    // the analysis pass(op fuse, graph analysis, trt subgraph, mkldnn etc) will
    // not be executed.
548 549
    model_precision_ =
        paddle::inference::GetModelPrecision(*inference_program_);
550 551 552 553 554
    OptimizeInferenceProgram();
  } else {
    // If the program is passed from external, no need to optimize it, this
    // logic is used in the clone scenario.
    inference_program_ = program;
555 556 557 558 559
    if (config_.apply_optim_) {
      VLOG(3)
          << "apply_optim is enabled, will call OptimizeInferenceProgram().";
      OptimizeInferenceProgram();
    }
560 561 562 563 564 565 566 567
  }

  executor_->CreateVariables(*inference_program_, 0, false, sub_scope_);

  return true;
}

bool AnalysisPredictor::CreateExecutor() {
568 569 570
  executor_.reset(new paddle::framework::NaiveExecutor(place_));
  return true;
}
W
wenbin 已提交
571 572 573 574 575 576 577 578 579 580 581 582 583 584 585 586 587 588 589

static bool IsPrepareDataOptTargetOp(framework::OpDesc *op) {
  // here is prepare data optimization related bad cases:
  // let's assume an op behind conditional_block and if conditional_block
  // chooses branch 1, the op need to call prepare data. else the op don't need
  // to call prepare data. In running, if predictor chooses branch 2, then
  // optimization takes effect, later issue is followed if predictor chooses
  // branch 1, because the op lost chance to prepare data.
  std::vector<std::string> op_type = {"conditional_block_infer",
                                      "select_input"};
  for (const auto &type : op_type) {
    if (op->Type() == type) {
      return true;
    }
  }
  return false;
}

static void DisablePrepareDataOpt(
C
ccrrong 已提交
590 591
    std::shared_ptr<framework::ProgramDesc> inference_program,
    int block,
W
wenbin 已提交
592 593 594 595 596 597 598 599 600
    bool pre_disable_opt) {
  bool disable_opt = false;
  auto &infer_block = inference_program->Block(block);
  for (auto *op : infer_block.AllOps()) {
    if (disable_opt || pre_disable_opt) {
      op->SetAttr("inference_force_prepare_data", true);
    }
    if (op->HasAttr("sub_block")) {
      int blockID = op->GetBlockAttrId("sub_block");
C
ccrrong 已提交
601 602
      DisablePrepareDataOpt(
          inference_program, blockID, disable_opt || pre_disable_opt);
W
wenbin 已提交
603 604
    }
    // disable prepare data if unfriendly op is found
W
wenbin 已提交
605 606 607
    if (!disable_opt) {
      disable_opt = IsPrepareDataOptTargetOp(op);
    }
W
wenbin 已提交
608 609 610
  }
}

611
bool AnalysisPredictor::PrepareExecutor() {
612
#if defined(PADDLE_WITH_DISTRIBUTE) && defined(PADDLE_WITH_PSCORE)
613 614 615 616 617
  if (config_.dist_config().use_dist_model()) {
    VLOG(3) << "use_dist_model is enabled, will init FleetExecutor.";
    return PrepareFleetExecutor();
  }
#endif
W
wenbin 已提交
618 619
  DisablePrepareDataOpt(inference_program_, 0, false);

C
ccrrong 已提交
620 621
  executor_->Prepare(
      sub_scope_, *inference_program_, 0, config_.use_feed_fetch_ops_);
622

623 624 625 626 627 628 629 630 631
  if (config_.enable_memory_optim_) {
    auto *pass_res_info =
        inference::analysis::PassResultInfoForRuntime::Instance();
    auto reuse_table =
        pass_res_info->Get<std::unordered_map<std::string, std::string>>(
            root_predictor_id_, "memory_optimize_pass");
    executor_->MakeReusePlan(reuse_table);
  }

632 633 634
  PADDLE_ENFORCE_NOT_NULL(sub_scope_,
                          platform::errors::PreconditionNotMet(
                              "The sub_scope should not be nullptr."));
Y
Yan Chunwei 已提交
635

636 637 638
  return true;
}

639
#if defined(PADDLE_WITH_DISTRIBUTE) && defined(PADDLE_WITH_PSCORE)
640 641 642 643 644 645 646 647 648 649 650 651 652 653 654 655 656 657 658 659 660 661 662 663 664 665 666 667 668 669 670 671 672 673 674 675
bool AnalysisPredictor::PrepareFleetExecutor() {
  VLOG(3) << "AnalysisPredictor::PrepareFleetExecutor()";
  if (config_.dist_config().nranks() > 1 && !CommInit()) {
    return false;
  }
  task_node_.reset(new distributed::TaskNode(inference_program_.get(),
                                             config_.dist_config().rank()));
  // With auto cut, there is no concept of pp, no need to add dependency.
  task_node_->SetType("Compute");
  task_node_->Init(config_.use_feed_fetch_ops_enabled());
  executor_desc_ = distributed::FleetExecutorDesc();
  executor_desc_.set_cur_rank(config_.dist_config().rank());
  std::unordered_map<int64_t, int64_t> id_to_rank;
  for (int i = 0; i < config_.dist_config().nranks(); ++i) {
    distributed::RankInfo *rank_info = executor_desc_.add_cluster_info();
    rank_info->set_rank(i);
    rank_info->set_ip_port(config_.dist_config().trainer_endpoints()[i]);
    id_to_rank.insert({i, i});
  }
  fleet_exe_.reset(new distributed::FleetExecutor(executor_desc_));
  // NOTE: Vars of feed fetch ops are not persistable,
  // which will result in that those vars will be created in
  // the subscope (microscope) in fleet executor. This will
  // cause that the GetInputTensor/GetOutputTensor funct
  // in analysis predictor cannot find those vars in the scope
  // returned by the DistModel, since DistModel only return the
  // root scope. So, those vars must  to be created in the root
  // scope instead of in the microscope
  std::vector<std::string> feed_fetch_vars;
  for (auto pair : idx2feeds_) {
    feed_fetch_vars.emplace_back(pair.second);
  }
  for (auto pair : idx2fetches_) {
    feed_fetch_vars.emplace_back(pair.second);
  }
  fleet_exe_->Init(config_.dist_config().carrier_id(),
C
ccrrong 已提交
676 677 678 679 680 681 682
                   *(inference_program_.get()),
                   scope_.get(),
                   place_,
                   1,
                   {task_node_.get()},
                   id_to_rank,
                   feed_fetch_vars);
683 684 685 686 687 688 689 690 691 692 693 694 695 696 697 698 699 700 701 702 703 704 705 706 707 708 709 710 711 712 713 714 715 716 717 718
  return true;
}

bool AnalysisPredictor::CommInit() {
  std::map<int64_t, std::vector<int64_t>> ring_id_to_ranks{};
  std::map<int64_t, std::vector<int64_t>> rank_to_ring_ids{};
  if (!LoadConverterConfig(&ring_id_to_ranks, &rank_to_ring_ids)) {
    VLOG(3) << "Load converter config failed, DistModel init failed.";
    return false;
  }
  std::unique_ptr<framework::ProgramDesc> comm_init_program(
      new framework::ProgramDesc());
  framework::BlockDesc *comm_init_block = comm_init_program->MutableBlock(0);
  std::vector<int64_t> &ring_ids =
      rank_to_ring_ids[config_.dist_config().rank()];
  int64_t order = 0;
  std::string var_name_base = "comm_init_";
  for (int64_t ring_id : ring_ids) {
    VLOG(3) << "Init comm for ring id: " << ring_id;
    int64_t ranks_in_group = ring_id_to_ranks[ring_id].size();
    int64_t rank_in_group = 0;
    std::vector<int64_t> &ranks = ring_id_to_ranks[ring_id];
    for (int64_t rank : ranks) {
      if (config_.dist_config().rank() == rank) {
        break;
      }
      rank_in_group += 1;
    }
    std::vector<std::string> peer_endpoints;
    for (int64_t rank : ranks) {
      if (config_.dist_config().rank() == rank) {
        continue;
      }
      peer_endpoints.emplace_back(
          config_.dist_config().trainer_endpoints()[rank]);
    }
C
ccrrong 已提交
719 720 721 722 723 724
    InsertCommOp(var_name_base + std::to_string(order),
                 ranks_in_group,
                 rank_in_group,
                 peer_endpoints,
                 comm_init_block,
                 ring_id);
725 726 727 728 729 730 731 732 733 734 735
    order += 1;
  }
  framework::NaiveExecutor e(place_);
  e.CreateVariables(*comm_init_program, 0, true, scope_.get());
  e.Prepare(scope_.get(), *comm_init_program, 0, false);
  e.Run();
  VLOG(3) << "Comm init successful.";
  return true;
}

void AnalysisPredictor::InsertCommOp(
C
ccrrong 已提交
736 737 738 739 740
    std::string tmp_var_name,
    int nranks,
    int rank,
    const std::vector<std::string> &peer_endpoints,
    framework::BlockDesc *block,
741 742 743 744 745 746 747 748 749 750 751 752 753 754 755 756 757 758 759 760 761 762 763 764 765 766 767 768 769 770 771 772 773 774 775 776 777 778 779 780 781 782 783 784 785 786 787 788 789 790 791 792 793 794 795 796
    int ring_id) {
  /*
   * tmp_var_name: the var name for var comm_id
   * nranks: number of total ranks
   * rank: the rank of local rank in the comm group
   * peer_endpoints: peer's endpoints
   * block: the block where to insert the comm ops
   * ring_id: the ring_id to be inited
   */
  const std::string &endpoint = config_.dist_config().current_endpoint();
  std::stringstream ss;
  ss << "Init comm with tmp var: " << tmp_var_name
     << ". The ring id is: " << ring_id << ". The group has: " << nranks
     << " ranks. Current rank in the group is: " << rank
     << ". The endpoint is: " << endpoint << ". Peer endpoints are: ";
  for (auto ep : peer_endpoints) {
    ss << ep << ", ";
  }
  VLOG(3) << ss.str();
  if (config_.use_gpu()) {
    framework::VarDesc *new_var = block->Var(tmp_var_name);
    new_var->SetType(framework::proto::VarType::RAW);
    new_var->SetPersistable(true);
    framework::OpDesc *gen_nccl_id_op = block->AppendOp();
    gen_nccl_id_op->SetType("c_gen_nccl_id");
    gen_nccl_id_op->SetOutput("Out", {tmp_var_name});
    gen_nccl_id_op->SetAttr("rank", rank);
    gen_nccl_id_op->SetAttr("endpoint",
                            config_.dist_config().current_endpoint());
    gen_nccl_id_op->SetAttr("other_endpoints", peer_endpoints);
    gen_nccl_id_op->SetAttr("ring_id", ring_id);
    gen_nccl_id_op->SetAttr("op_role",
                            static_cast<int>(framework::OpRole::kForward));
    gen_nccl_id_op->CheckAttrs();
    framework::OpDesc *comm_init_op = block->AppendOp();
    comm_init_op->SetType("c_comm_init");
    comm_init_op->SetInput("X", {tmp_var_name});
    comm_init_op->SetAttr("rank", rank);
    comm_init_op->SetAttr("nranks", nranks);
    comm_init_op->SetAttr("ring_id", ring_id);
    comm_init_op->SetAttr("op_role",
                          static_cast<int>(framework::OpRole::kForward));
    comm_init_op->CheckAttrs();
  } else {
    LOG(WARNING) << "DistModelInf doesn't init comm.";
    // TODO(fleet exe dev): comm init for more devices
  }
}

bool AnalysisPredictor::LoadConverterConfig(
    std::map<int64_t, std::vector<int64_t>> *ring_id_to_ranks,
    std::map<int64_t, std::vector<int64_t>> *rank_to_ring_ids) {
  VLOG(3) << "Going to load converter config from: "
          << config_.dist_config().comm_init_config() << "\n";
  std::ifstream fin(config_.dist_config().comm_init_config(), std::ios::in);
  PADDLE_ENFORCE_EQ(
C
ccrrong 已提交
797 798
      static_cast<bool>(fin.is_open()),
      true,
799 800 801 802 803 804 805 806 807 808 809 810 811 812 813 814 815 816 817 818 819 820 821 822 823 824 825 826 827 828 829 830 831 832 833 834 835 836 837 838 839 840 841 842 843 844 845 846 847 848 849 850 851 852 853 854 855 856 857 858 859 860 861 862 863 864 865 866 867 868 869 870
      platform::errors::NotFound(
          "Cannot open file %s, please confirm whether the file is normal.",
          config_.dist_config().comm_init_config()));
  std::string line;
  bool ring_to_rank{true};
  // Reading config from file, the config file should like these format
  //  [ring_id -> ranks]
  //  0,0,1,2,3
  //  1,0,1
  //  2,2,3
  //  21,0,1
  //  22,1,2
  //  23,2,3
  //  [rank -> ring_ids]
  //  0,0,1,21
  //  1,0,1,21,22
  //  2,0,2,22,23
  //  3,0,2,23
  while (std::getline(fin, line)) {
    std::vector<std::string> one_line = paddle::string::Split(line, ',');
    if (one_line.size() == 1) {
      // start a new section of the config
      if (line == "[ring_id -> ranks]") {
        ring_to_rank = true;
      } else if (line == "[rank -> ring_ids]") {
        ring_to_rank = false;
      }
    } else {
      // parse key - values pairs in one section
      int64_t key = std::stoll(one_line[0]);
      for (size_t i = 1; i < one_line.size(); ++i) {
        int64_t val = std::stoll(one_line[i]);
        if (ring_to_rank) {
          if (ring_id_to_ranks->find(key) == ring_id_to_ranks->end()) {
            ring_id_to_ranks->insert({key, std::vector<int64_t>()});
          }
          ring_id_to_ranks->at(key).emplace_back(val);
        } else {
          if (rank_to_ring_ids->find(key) == rank_to_ring_ids->end()) {
            rank_to_ring_ids->insert({key, std::vector<int64_t>()});
          }
          rank_to_ring_ids->at(key).emplace_back(val);
        }
        // NOTE: add more configuration sections here
      }
    }
  }
  std::stringstream ss;
  ss << "Loaded the following converter config:\n";
  ss << "ring_id_to_ranks:\n";
  for (auto pair : *ring_id_to_ranks) {
    int64_t key = pair.first;
    ss << "\t" << key << "\t->\t";
    for (auto value : pair.second) {
      ss << value << "\t";
    }
    ss << "\n";
  }
  ss << "rank_to_ring_ids:\n";
  for (auto pair : *rank_to_ring_ids) {
    int64_t key = pair.first;
    ss << "\t" << key << "\t->\t";
    for (auto value : pair.second) {
      ss << value << "\t";
    }
    ss << "\n";
  }
  VLOG(3) << ss.str();
  return true;
}
#endif

871 872
void AnalysisPredictor::MkldnnPreSet(const std::vector<PaddleTensor> &inputs) {
#ifdef PADDLE_WITH_MKLDNN
W
Wilber 已提交
873 874 875 876 877 878 879 880 881 882 883 884
  std::vector<std::vector<int>> inputs_shape;
  for (size_t i = 0; i < inputs.size(); ++i) {
    inputs_shape.emplace_back(inputs[i].shape);
  }
  MkldnnPreSet(inputs_shape);
#endif
}

void AnalysisPredictor::MkldnnPreSet(
    const std::vector<std::vector<int>> &inputs_shape) {
#ifdef PADDLE_WITH_MKLDNN
  VLOG(2) << "AnalysisPredictor::ZeroCopyRun get_cur_mkldnn_session_id="
885
          << phi::OneDNNContext::tls().get_cur_mkldnn_session_id();
886 887 888
  // In cache clearing mode.
  if (config_.mkldnn_cache_capacity_ > 0) {
    VLOG(2) << "In mkldnn cache clear mode.";
889 890
    phi::OneDNNContext::tls().set_cur_mkldnn_session_id(
        phi::OneDNNContextThreadLocals::kMKLDNNSessionID_CacheClearing);
891 892
    // Set current_input_shape for caching dynamic shape.
    std::stringstream ss;
W
Wilber 已提交
893 894 895
    for (size_t i = 0; i < inputs_shape.size(); ++i) {
      for (size_t j = 0; j < inputs_shape[i].size(); ++j) {
        ss << inputs_shape[i][j] << "-";
896 897 898
      }
    }
    VLOG(2) << "Set input shape=" << ss.str();
899
    phi::OneDNNContext::tls().set_cur_input_shape_str(ss.str());
900
  }
901
  phi::OneDNNContext::tls().set_cur_input_shape_cache_capacity(
902 903
      config_.mkldnn_cache_capacity_);

904 905 906 907 908 909
#endif
}

void AnalysisPredictor::MkldnnPostReset() {
#ifdef PADDLE_WITH_MKLDNN
  // In cache clearing mode.
910
  if (config_.mkldnn_cache_capacity_ > 0 &&
911
      static_cast<phi::OneDNNContext *>(
912 913
          (&platform::DeviceContextPool::Instance())->Get(platform::CPUPlace()))
              ->GetCachedObjectsNumber() > 0) {
914
    if (VLOG_IS_ON(2)) {
915
      auto shape_blob_size = static_cast<phi::OneDNNContext *>(
916 917 918 919 920 921
                                 (&platform::DeviceContextPool::Instance())
                                     ->Get(platform::CPUPlace()))
                                 ->GetShapeBlobSize();
      CHECK_LE(shape_blob_size,
               static_cast<size_t>(config_.mkldnn_cache_capacity_));
    }
922 923 924
    // We cannot reset to the default cache settings
    // as there maybe CopyToCPU method used and oneDNN
    // primitives are used there so cache would grow
925 926 927 928
  }
#endif
}

929 930 931
bool AnalysisPredictor::Run(const std::vector<PaddleTensor> &inputs,
                            std::vector<PaddleTensor> *output_data,
                            int batch_size) {
932
  paddle::platform::SetNumThreads(config_.cpu_math_library_num_threads());
933 934 935
#ifdef PADDLE_WITH_MKLDNN
  if (config_.use_mkldnn_) MkldnnPreSet(inputs);
#endif
M
minqiyang 已提交
936
  VLOG(3) << "Predictor::predict";
937 938 939 940
  inference::Timer timer;
  timer.tic();
  // set feed variable
  framework::Scope *scope = sub_scope_ ? sub_scope_ : scope_.get();
C
ccrrong 已提交
941 942 943
  PADDLE_ENFORCE_NOT_NULL(
      scope,
      platform::errors::PreconditionNotMet("The scope should not be nullptr."));
944 945
  if (!SetFeed(inputs, scope)) {
    LOG(ERROR) << "fail to set feed";
Y
Yan Chunwei 已提交
946
    return false;
947
  }
M
Michal Gallus 已提交
948

949 950 951 952 953 954 955 956 957
#ifdef PADDLE_WITH_TENSORRT
  if (config_.tensorrt_engine_enabled()) {
    inference::tensorrt::TensorRTEngine::predictor_id_per_thread =
        predictor_id_;
    VLOG(3) << "thread_local var predictor_id in TensorRTEngine is set to: "
            << inference::tensorrt::TensorRTEngine::predictor_id_per_thread;
  }
#endif

958 959 960
  // Run the inference program
  // if share variables, we need not create variables
  executor_->Run();
961

962 963 964 965
  // get fetch variable
  if (!GetFetch(output_data, scope)) {
    LOG(ERROR) << "fail to get fetches";
    return false;
T
tensor-tang 已提交
966
  }
Y
Yan Chunwei 已提交
967

M
minqiyang 已提交
968
  VLOG(3) << "predict cost: " << timer.toc() << "ms";
Y
Yan Chunwei 已提交
969

Y
Yan Chunwei 已提交
970 971 972 973 974
  // All the containers in the scope will be hold in inference, but the
  // operators assume that the container will be reset after each batch.
  // Here is a bugfix, collect all the container variables, and reset then to a
  // bool; the next time, the operator will call MutableData and construct a new
  // container again, so that the container will be empty for each batch.
975 976 977
  if (sub_scope_) {
    tensor_array_batch_cleaner_.CollectNoTensorVars(sub_scope_);
  }
Y
Yan Chunwei 已提交
978
  tensor_array_batch_cleaner_.ResetNoTensorVars();
979 980 981 982

  // recover the cpu_math_library_num_threads to 1, in order to avoid thread
  // conflict when integrating it into deployment service.
  paddle::platform::SetNumThreads(1);
983 984
#ifdef PADDLE_WITH_MKLDNN
  if (config_.use_mkldnn_) MkldnnPostReset();
T
Tao Luo 已提交
985
#endif
986
#if defined(PADDLE_WITH_MKLML)
T
Tao Luo 已提交
987 988 989 990
  // Frees unused memory allocated by the Intel® MKL Memory Allocator to
  // avoid memory leak. See:
  // https://software.intel.com/en-us/mkl-developer-reference-c-mkl-free-buffers
  platform::dynload::MKL_Free_Buffers();
991
#endif
992 993
  return true;
}
994

995 996
bool AnalysisPredictor::SetFeed(const std::vector<PaddleTensor> &inputs,
                                framework::Scope *scope) {
M
minqiyang 已提交
997
  VLOG(3) << "Predictor::set_feed";
998 999 1000 1001 1002 1003 1004 1005 1006 1007
  if (inputs.size() != feeds_.size()) {
    LOG(ERROR) << "wrong feed input size, need " << feeds_.size() << " but get "
               << inputs.size();
    return false;
  }

  // Cache the inputs memory for better concurrency performance.
  feed_tensors_.resize(inputs.size());

  for (size_t i = 0; i < inputs.size(); ++i) {
1008
    phi::DenseTensor *input = &feed_tensors_[i];
1009
    if (!PaddleTensorToLoDTensor(inputs[i], input, place_)) {
1010 1011 1012
      return false;
    }
    int idx = -1;
1013
    if (config_.specify_input_name_) {
T
tensor-tang 已提交
1014 1015
      auto name = inputs[i].name;
      if (feed_names_.find(name) == feed_names_.end()) {
T
tensor-tang 已提交
1016 1017
        LOG(ERROR) << "feed names from program do not have name: [" << name
                   << "] from specified input";
T
tensor-tang 已提交
1018 1019
      }
      idx = feed_names_[name];
1020
    } else {
R
Ruibiao Chen 已提交
1021
      idx = PADDLE_GET_CONST(int, feeds_[i]->GetAttr("col"));
1022
    }
1023
    framework::SetFeedVariable(scope, *input, "feed", idx);
1024 1025 1026 1027 1028
  }
  return true;
}

template <typename T>
1029
void AnalysisPredictor::GetFetchOne(const phi::DenseTensor &fetch,
1030 1031
                                    PaddleTensor *output) {
  // set shape.
1032
  auto shape = phi::vectorize(fetch.dims());
1033 1034 1035 1036 1037 1038 1039 1040 1041 1042 1043 1044 1045 1046 1047 1048 1049
  output->shape.assign(shape.begin(), shape.end());
  // set data.
  const T *data = fetch.data<T>();
  int num_elems = inference::VecReduceToInt(shape);
  output->data.Resize(num_elems * sizeof(T));
  // The fetched tensor output by fetch op, should always in CPU memory, so just
  // copy.
  memcpy(output->data.data(), data, num_elems * sizeof(T));
  // set lod
  output->lod.clear();
  for (auto &level : fetch.lod()) {
    output->lod.emplace_back(level.begin(), level.end());
  }
}

bool AnalysisPredictor::GetFetch(std::vector<PaddleTensor> *outputs,
                                 framework::Scope *scope) {
M
minqiyang 已提交
1050
  VLOG(3) << "Predictor::get_fetch";
Y
Yan Chunwei 已提交
1051 1052
  outputs->resize(fetches_.size());
  for (size_t i = 0; i < fetches_.size(); ++i) {
R
Ruibiao Chen 已提交
1053
    int idx = PADDLE_GET_CONST(int, fetches_[i]->GetAttr("col"));
1054
    PADDLE_ENFORCE_EQ(
C
ccrrong 已提交
1055 1056
        static_cast<size_t>(idx),
        i,
1057
        platform::errors::InvalidArgument(
C
ccrrong 已提交
1058 1059
            "Fetch op's col attr(%d) should be equal to the index(%d)",
            idx,
1060
            i));
1061
    framework::FetchType &fetch_var =
1062
        framework::GetFetchVariable(*scope, "fetch", idx);
1063
    auto &fetch = PADDLE_GET(phi::DenseTensor, fetch_var);
1064
    auto type = framework::TransToProtoVarType(fetch.dtype());
1065
    auto output = &(outputs->at(i));
Y
Yan Chunwei 已提交
1066
    output->name = fetches_[idx]->Input("X")[0];
Y
Yu Yang 已提交
1067
    if (type == framework::proto::VarType::FP32) {
1068 1069
      GetFetchOne<float>(fetch, output);
      output->dtype = PaddleDType::FLOAT32;
Y
Yu Yang 已提交
1070
    } else if (type == framework::proto::VarType::INT64) {
1071 1072
      GetFetchOne<int64_t>(fetch, output);
      output->dtype = PaddleDType::INT64;
1073 1074 1075
    } else if (type == framework::proto::VarType::INT32) {
      GetFetchOne<int32_t>(fetch, output);
      output->dtype = PaddleDType::INT32;
1076 1077 1078
    } else if (type == framework::proto::VarType::FP16) {
      GetFetchOne<float16>(fetch, output);
      output->dtype = PaddleDType::FLOAT16;
1079
    } else {
1080 1081
      LOG(ERROR) << "unknown type, only support float32, float16, int64 and "
                    "int32 now.";
1082 1083
    }
  }
Y
Yan Chunwei 已提交
1084 1085
  return true;
}
1086

1087
void AnalysisPredictor::PrepareArgument() {
1088
  argument_.SetUseGPU(config_.use_gpu());
1089
  argument_.SetUseFcPadding(config_.use_fc_padding());
1090
  argument_.SetGPUDeviceId(config_.gpu_device_id());
1091
  argument_.SetEnableIrOptim(config_.enable_ir_optim_);
1092
  argument_.SetEnableMemoryOptim(config_.enable_memory_optim());
T
Tao Luo 已提交
1093
  argument_.SetModelFromMemory(config_.model_from_memory_);
Y
Yan Chunwei 已提交
1094
  // Analyze inference_program
1095
  argument_.SetPredictorID(predictor_id_);
1096
  argument_.SetRootPredictorID(root_predictor_id_);
1097
  argument_.SetOptimCacheDir(config_.opt_cache_dir_);
1098 1099
  if (!config_.model_dir().empty()) {
    argument_.SetModelDir(config_.model_dir());
T
Tao Luo 已提交
1100
  } else {
C
ccrrong 已提交
1101 1102
    PADDLE_ENFORCE_EQ(config_.prog_file().empty(),
                      false,
1103 1104
                      platform::errors::PreconditionNotMet(
                          "Either model_dir or prog_file should be set."));
N
nhzlx 已提交
1105

1106 1107
    argument_.SetModelProgramPath(config_.prog_file());
    argument_.SetModelParamsPath(config_.params_file());
Y
Yan Chunwei 已提交
1108
  }
1109 1110
  // For JITLayer
  argument_.SetSkipLoadParams(config_.skip_load_params_);
1111

1112
  argument_.SetTensorRtPrecisionMode(config_.tensorrt_precision_mode_);
1113
  argument_.SetTensorRtUseOSS(config_.trt_use_varseqlen_);
1114
  argument_.SetTensorRtWithInterleaved(config_.trt_with_interleaved_);
1115 1116
  argument_.SetTensorRtTransformerPosid(config_.tensorrt_transformer_posid_);
  argument_.SetTensorRtTransformerMaskid(config_.tensorrt_transformer_maskid_);
1117 1118 1119 1120 1121
  argument_.SetMinInputShape(config_.min_input_shape_);
  argument_.SetMaxInputShape(config_.max_input_shape_);
  argument_.SetOptimInputShape(config_.optim_input_shape_);
  argument_.SetTensorRtTunedDynamicShape(
      config_.tuned_tensorrt_dynamic_shape());
1122
  if (config_.use_gpu() && config_.tensorrt_engine_enabled()) {
Y
Yan Chunwei 已提交
1123
    LOG(INFO) << "TensorRT subgraph engine is enabled";
1124 1125 1126
    argument_.SetUseTensorRT(true);
    argument_.SetTensorRtWorkspaceSize(config_.tensorrt_workspace_size_);
    argument_.SetTensorRtMaxBatchSize(config_.tensorrt_max_batchsize_);
1127
    argument_.SetTensorRtMinSubgraphSize(config_.tensorrt_min_subgraph_size_);
1128
    argument_.SetTensorRtDisabledOPs(config_.trt_disabled_ops_);
1129 1130
    argument_.SetTensorRtUseDLA(config_.trt_use_dla_);
    argument_.SetTensorRtDLACore(config_.trt_dla_core_);
N
nhzlx 已提交
1131
    argument_.SetTensorRtUseStaticEngine(config_.trt_use_static_engine_);
1132
    argument_.SetTensorRtUseCalibMode(config_.trt_use_calib_mode_);
1133
    argument_.SetCloseTrtPluginFp16(config_.disable_trt_plugin_fp16_);
1134 1135 1136
    argument_.SetTensorRtShapeRangeInfoPath(config_.shape_range_info_path());
    argument_.SetTensorRtAllowBuildAtRuntime(
        config_.trt_allow_build_at_runtime());
1137
    argument_.SetTensorRtUseInspector(config_.trt_use_inspector_);
1138
    argument_.SetTrtEngineMemorySharing(config_.trt_engine_memory_sharing());
W
Wojciech Uss 已提交
1139
  }
1140

D
denglin-github 已提交
1141 1142 1143 1144
  if (config_.dlnne_enabled()) {
    LOG(INFO) << "Dlnne subgraph is enabled";
    argument_.SetUseDlnne(true);
    argument_.SetDlnneMinSubgraphSize(config_.dlnne_min_subgraph_size_);
D
denglin-github 已提交
1145 1146 1147 1148 1149 1150 1151 1152
    argument_.SetDlnneMaxBatchSize(config_.dlnne_max_batchsize_);
    argument_.SetDlnneUseStaticBatch(config_.dlnne_use_static_batch_);
    argument_.SetDlnneWeightShareMode(config_.dlnne_weight_share_mode_);
    argument_.SetDlnneDisableNodesByOutputs(
        config_.dlnne_disable_nodes_by_outputs_);
    argument_.SetDlnneInputShapeDict(config_.dlnne_input_shape_dict_);
    argument_.SetDlnneUseCalibMode(config_.dlnne_use_calib_mode_);
    argument_.SetDlnnePrecisionMode(config_.dlnne_precision_mode_);
D
denglin-github 已提交
1153 1154
  }

石晓伟 已提交
1155
  if (config_.lite_engine_enabled()) {
W
Wilber 已提交
1156 1157
    argument_.SetCpuMathLibraryNumThreads(
        config_.cpu_math_library_num_threads());
石晓伟 已提交
1158 1159 1160
    argument_.SetLitePrecisionMode(config_.lite_precision_mode_);
    argument_.SetLitePassesFilter(config_.lite_passes_filter_);
    argument_.SetLiteOpsFilter(config_.lite_ops_filter_);
1161 1162 1163
    argument_.SetLiteZeroCopy(config_.lite_zero_copy_);
    argument_.SetUseXpu(config_.use_xpu_);
    argument_.SetXpuL3WorkspaceSize(config_.xpu_l3_workspace_size_);
W
Wilber 已提交
1164 1165 1166 1167 1168
    argument_.SetXpuLocked(config_.xpu_locked_);
    argument_.SetXpuAutotune(config_.xpu_autotune_);
    argument_.SetXpuAutotuneFile(config_.xpu_autotune_file_);
    argument_.SetXpuPrecision(config_.xpu_precision_);
    argument_.SetXpuAdaptiveSeqlen(config_.xpu_adaptive_seqlen_);
1169
    argument_.SetXpuDeviceId(config_.xpu_device_id_);
1170
    argument_.SetXpuEnableMultiStream(config_.xpu_enable_multi_stream_);
1171
    argument_.SetUseOpenCL(config_.use_opencl_);
1172 1173 1174 1175 1176 1177 1178 1179 1180 1181 1182 1183 1184 1185 1186 1187 1188 1189 1190 1191
    // NNAdapter related
    argument_.SetUseNNAdapter(config_.NNAdapter().use_nnadapter);
    argument_.SetNNAdapterDeviceNames(
        config_.NNAdapter().nnadapter_device_names);
    argument_.SetNNAdapterContextProperties(
        config_.NNAdapter().nnadapter_context_properties);
    argument_.SetNNAdapterModelCacheDir(
        config_.NNAdapter().nnadapter_model_cache_dir);
    argument_.SetNNAdapterSubgraphPartitionConfigBuffer(
        config_.NNAdapter().nnadapter_subgraph_partition_config_buffer);
    argument_.SetNNAdapterSubgraphPartitionConfigPath(
        config_.NNAdapter().nnadapter_subgraph_partition_config_path);
    std::vector<std::string> buffer_keys;
    std::vector<std::vector<char>> buffer_vals;
    for (auto it : config_.NNAdapter().nnadapter_model_cache_buffers) {
      buffer_keys.emplace_back(it.first);
      buffer_vals.emplace_back(it.second);
    }
    argument_.SetNNAdapterModelCacheToken(buffer_keys);
    argument_.SetNNAdapterModelCacheBuffer(buffer_vals);
石晓伟 已提交
1192 1193 1194
    LOG(INFO) << "Lite subgraph engine is enabled";
  }

1195
#ifdef PADDLE_WITH_IPU
J
jianghaicheng 已提交
1196 1197
  argument_.SetUseIpu(config_.use_ipu_);
  argument_.SetIpuDeviceNum(config_.ipu_device_num());
1198
  argument_.SetIpuMicroBatchSize(config_.ipu_micro_batch_size_);
J
jianghaicheng 已提交
1199 1200
  argument_.SetIpuEnablePipelining(config_.ipu_enable_pipelining_);
  argument_.SetIpuBatchesPerStep(config_.ipu_batches_per_step_);
1201 1202 1203 1204 1205
  argument_.SetIpuEnableFp16(config_.ipu_enable_fp16_);
  argument_.SetIpuReplicaNum(config_.ipu_replica_num_);
  argument_.SetIpuAvailableMemoryProportion(
      config_.ipu_available_memory_proportion_);
  argument_.SetIpuEnableHalfPartial(config_.ipu_enable_half_partial_);
1206 1207
  argument_.SetIpuEnableModelRuntimeExecutor(
      config_.ipu_enable_model_runtime_executor_);
1208 1209
  argument_.SetIpuCustomOpsInfo(config_.ipu_custom_ops_info_);
  argument_.SetIpuCustomPatterns(config_.ipu_custom_patterns_);
1210
#endif
J
jianghaicheng 已提交
1211

1212 1213 1214
  argument_.SetUseNpu(config_.use_npu_);
  argument_.SetNPUDeviceId(config_.npu_device_id());

1215
  if (config_.use_mkldnn_) {
Y
Yan Chunwei 已提交
1216
    LOG(INFO) << "MKLDNN is enabled";
1217 1218 1219
    argument_.SetMKLDNNEnabledOpTypes(config_.mkldnn_enabled_op_types_);
  }

1220 1221 1222 1223
  if (config_.use_cinn_compiler_) {
    argument_.SetUseCinnCompiler(config_.use_cinn_compiler_);
  }

1224 1225 1226 1227 1228 1229 1230 1231
#ifdef PADDLE_WITH_MKLDNN
  if (config_.mkldnn_quantizer_enabled()) {
    LOG(INFO) << "Quantization is enabled";
    argument_.SetQuantizeEnabledOpTypes(
        config_.mkldnn_quantizer_config()->enabled_op_types());
    argument_.SetQuantizeExcludedOpIds(
        config_.mkldnn_quantizer_config()->excluded_op_ids());
  }
1232 1233 1234 1235
  if (config_.use_mkldnn_bfloat16_) {
    LOG(INFO) << "Bfloat16 is enabled";
    argument_.SetBfloat16EnabledOpTypes(config_.bfloat16_enabled_op_types_);
  }
B
baoachun 已提交
1236 1237 1238 1239 1240 1241 1242

  if (config_.use_mkldnn_int8_) {
    LOG(INFO) << "Int8 is enabled";
    argument_.SetQuantizeEnabledOpTypes(config_.quantize_enabled_op_types_);
    argument_.SetQuantizeExcludedOpIds(config_.quantize_excluded_op_ids_);
    argument_.SetQuantVarScales({});
  }
1243 1244
#endif

1245
  auto *pass_builder = config_.pass_builder();
1246 1247
  // TODO(inference): Need to reconstruct the pass_builder, pass should be
  // processed in a single
1248 1249 1250 1251
  if (model_precision_ != phi::DataType::FLOAT32) {
    LOG(INFO) << "Model is mixed precision type with " << model_precision_
              << ", we will use a new PassStrategy. Note that only the GPU "
                 "backend is supported for now.";
1252 1253 1254 1255 1256 1257 1258 1259 1260 1261 1262 1263 1264
    if (!config_.use_cinn_compiler_) {
      pass_builder->ClearPasses();
      const auto &deleted_passes = pass_builder->GetAllDeletedPasses();
      if (config_.tensorrt_engine_enabled()) {
        for (const auto &pass : kTrtLowerPrecisionPasses) {
          if (deleted_passes.count(pass)) continue;
          pass_builder->AppendPass(pass);
        }
      } else if (config_.use_gpu()) {
        for (const auto &pass : kGpuLowerPrecisionPasses) {
          if (deleted_passes.count(pass)) continue;
          pass_builder->AppendPass(pass);
        }
1265 1266 1267
      }
    }
  }
1268

Y
Yan Chunwei 已提交
1269
  if (!config_.ir_optim()) {
1270
    argument_.SetEnableIrOptim(false);
1271 1272 1273 1274 1275 1276 1277 1278 1279 1280 1281 1282 1283 1284 1285 1286 1287
    if (config_.enable_gpu_half_) {
      argument_.SetEnableIrOptim(true);
      pass_builder->ClearPasses();
      pass_builder->AppendPass("float_to_half_pass");
      LOG(INFO)
          << "This model run in Paddle-GPU mixed precision mode with no ir "
             "optimization.";
    } else {
      LOG(INFO) << "ir_optim is turned off, no IR pass will be executed.";
    }
  } else {
    if (config_.ir_debug_) {
      pass_builder->TurnOnDebug();
    }
    if (config_.enable_gpu_half_) {
      LOG(INFO) << "This model run in Paddle-GPU mixed precision mode.";
    }
Y
Yan Chunwei 已提交
1288
  }
1289
  argument_.SetDisableLogs(config_.glog_info_disabled());
1290 1291
  argument_.SetIrAnalysisPasses(pass_builder->AllPasses());
  argument_.SetAnalysisPasses(pass_builder->AnalysisPasses());
1292
  argument_.SetScopeNotOwned(scope_.get());
1293

1294
  // mixed precison.
1295
  argument_.SetModelPrecision(static_cast<int>(model_precision_));
1296
  argument_.SetMixedBlackList(config_.mixed_black_list_);
1297 1298 1299
  argument_.SetEnableGPUHalf(config_.enable_gpu_half_);
  argument_.SetMixedPrecisionMode(static_cast<int>(
      paddle::ConvertPrecision(config_.mixed_precision_mode_)));
1300 1301 1302 1303 1304
}

// NOTE All the members in AnalysisConfig should be copied to Argument.
void AnalysisPredictor::OptimizeInferenceProgram() {
  PrepareArgument();
1305 1306 1307 1308 1309 1310 1311 1312 1313 1314

#ifdef PADDLE_WITH_TENSORRT
  if (config_.tensorrt_engine_enabled()) {
    inference::tensorrt::TensorRTEngine::predictor_id_per_thread =
        predictor_id_;
    VLOG(3) << "thread_local var predictor_id in TensorRTEngine is set to: "
            << inference::tensorrt::TensorRTEngine::predictor_id_per_thread;
  }
#endif

1315 1316
  Analyzer().Run(&argument_);

1317
  PADDLE_ENFORCE_EQ(
C
ccrrong 已提交
1318 1319
      argument_.scope_valid(),
      true,
1320
      platform::errors::InvalidArgument("The argument scope should be valid."));
1321 1322
  VLOG(5) << "to prepare executor";
  ARGUMENT_CHECK_FIELD((&argument_), ir_analyzed_program);
Y
Yan Chunwei 已提交
1323
  inference_program_.reset(
1324 1325 1326 1327
      new framework::ProgramDesc(argument_.ir_analyzed_program()),
      [](framework::ProgramDesc *prog) {
// Note, please do NOT use any member variables, because member variables may
// have been destructed in multiple threads.
1328
#ifdef PADDLE_WITH_TENSORRT
W
Wilber 已提交
1329 1330 1331 1332
        auto &block = prog->Block(0);
        for (auto &op_desc : block.AllOps()) {
          if (op_desc->Type() == "tensorrt_engine") {
            std::string engine_key =
R
Ruibiao Chen 已提交
1333
                PADDLE_GET_CONST(std::string, op_desc->GetAttr("engine_key"));
W
Wilber 已提交
1334
            int engine_predictor_id =
R
Ruibiao Chen 已提交
1335
                PADDLE_GET_CONST(int, op_desc->GetAttr("predictor_id"));
W
Wilber 已提交
1336 1337 1338 1339 1340 1341 1342 1343 1344 1345 1346
            std::string engine_name =
                engine_key + std::to_string(engine_predictor_id);
            if (paddle::inference::Singleton<
                    inference::tensorrt::TRTEngineManager>::Global()
                    .Has(engine_name)) {
              paddle::inference::Singleton<
                  inference::tensorrt::TRTEngineManager>::Global()
                  .DeleteKey(engine_name);
            }
          }
        }
1347 1348 1349
#endif
        delete prog;
      });
1350 1351 1352 1353
  // The config and argument take a lot of storage,
  // when the predictor settings are complete, we release these stores.
  argument_.PartiallyRelease();
  config_.PartiallyRelease();
1354
  LOG(INFO) << "======= optimize end =======";
Y
Yan Chunwei 已提交
1355
}
1356 1357

template <>
1358 1359 1360
std::unique_ptr<PaddlePredictor>
CreatePaddlePredictor<AnalysisConfig, PaddleEngineKind::kAnalysis>(
    const AnalysisConfig &config) {
W
Wilber 已提交
1361 1362
  // TODO(NHZlX): Should add the link to the doc of
  // paddle_infer::CreatePredictor<paddle_infer::Config>
P
Pei Yang 已提交
1363 1364 1365 1366
  if (config.glog_info_disabled()) {
    FLAGS_logtostderr = 1;
    FLAGS_minloglevel = 2;  // GLOG_ERROR
  }
M
minqiyang 已提交
1367
  VLOG(3) << "create AnalysisConfig";
1368
  PADDLE_ENFORCE_EQ(
C
ccrrong 已提交
1369 1370
      config.is_valid(),
      true,
1371 1372
      platform::errors::InvalidArgument(
          "Note: Each config can only be used for one predictor."));
1373

1374 1375 1376 1377
  // Register custom operators compiled by the user.
  // This function can only be executed once per process.
  static std::once_flag custom_operators_registered;
  std::call_once(custom_operators_registered,
1378
                 []() { inference::RegisterAllCustomOperator(); });
1379

1380
  if (config.use_gpu()) {
1381 1382 1383 1384 1385 1386
    static std::once_flag gflags_initialized;
    static bool process_level_allocator_enabled;

    std::call_once(gflags_initialized, [&]() {
      std::vector<std::string> gflags;
      PADDLE_ENFORCE_GE(
C
ccrrong 已提交
1387 1388
          config.memory_pool_init_size_mb(),
          0.f,
1389 1390 1391
          platform::errors::InvalidArgument(
              "The size of memory pool should be greater than 0."));
      PADDLE_ENFORCE_GE(
C
ccrrong 已提交
1392 1393
          config.gpu_device_id(),
          0,
1394 1395 1396 1397 1398 1399 1400 1401 1402 1403 1404 1405 1406
          platform::errors::InvalidArgument(
              "Invalid device id (%d). The device id should be greater than 0.",
              config.gpu_device_id()));
      gflags.push_back("dummy");

      float fraction_of_gpu_memory = config.fraction_of_gpu_memory_for_pool();
      if (fraction_of_gpu_memory > 0.95f) {
        LOG(ERROR)
            << "Allocate too much memory for the GPU memory pool, assigned "
            << config.memory_pool_init_size_mb() << " MB";
        LOG(ERROR) << "Try to shink the value by setting "
                      "AnalysisConfig::EnableGpu(...)";
      }
1407

1408 1409 1410 1411 1412 1413 1414
      if (fraction_of_gpu_memory >= 0.0f || fraction_of_gpu_memory <= 0.95f) {
        std::string flag = "--fraction_of_gpu_memory_to_use=" +
                           std::to_string(fraction_of_gpu_memory);
        VLOG(3) << "set flag: " << flag;
        gflags.push_back(flag);
      }

1415 1416 1417 1418 1419 1420 1421 1422 1423
      // TODO(Shixiaowei02): Add a mandatory scheme to use the thread local
      // allocator when multi-stream is enabled.
      if (config.thread_local_stream_enabled()) {
        gflags.push_back("--allocator_strategy=thread_local");
        process_level_allocator_enabled = false;
      } else {
        process_level_allocator_enabled = true;
      }

W
Wilber 已提交
1424 1425 1426 1427 1428 1429 1430 1431 1432 1433 1434
      // support set flags from enviorment.
      const platform::ExportedFlagInfoMap &env_map =
          platform::GetExportedFlagInfoMap();
      std::ostringstream os;
      os << "--tryfromenv=";
      for (auto &pair : env_map) {
        os << pair.second.name << ",";
      }
      auto tryfromenv_str = os.str();
      gflags.push_back(os.str().substr(0, tryfromenv_str.size() - 1));

1435 1436 1437 1438 1439 1440 1441 1442 1443 1444 1445 1446 1447 1448 1449
      if (framework::InitGflags(gflags)) {
        VLOG(3) << "The following gpu analysis configurations only take effect "
                   "for the first predictor: ";
        for (size_t i = 1; i < gflags.size(); ++i) {
          VLOG(3) << gflags[i];
        }
      } else {
        LOG(WARNING) << "The one-time configuration of analysis predictor "
                        "failed, which may be due to native predictor called "
                        "first and its configurations taken effect.";
      }
    });

    if (config.thread_local_stream_enabled() &&
        process_level_allocator_enabled) {
1450 1451 1452 1453 1454 1455
      PADDLE_THROW(platform::errors::Fatal(
          "When binding threads and streams, the use of "
          "process-level allocators will result in undefined result "
          "errors due to memory asynchronous operations."
          "The thread and stream binding configuration of all "
          "predictors should be the same in a single process."));
1456 1457 1458 1459
    }
  }

  std::unique_ptr<PaddlePredictor> predictor(new AnalysisPredictor(config));
1460 1461
  // Each config can only be used for one predictor.
  config.SetInValid();
1462 1463
  auto predictor_p = dynamic_cast<AnalysisPredictor *>(predictor.get());

1464 1465 1466 1467
#ifdef PADDLE_WITH_TENSORRT
  paddle::framework::ir::patterns::KeyCounter::Instance().CleanCounter();
#endif

1468 1469 1470 1471 1472
  if (!predictor_p->Init(nullptr)) {
    return nullptr;
  }

  if (config.mkldnn_quantizer_enabled() && !predictor_p->MkldnnQuantize()) {
1473 1474
    return nullptr;
  }
1475

G
Gabor Buella 已提交
1476
  return predictor;
1477 1478
}

1479 1480 1481 1482 1483 1484 1485 1486 1487 1488 1489 1490
bool AnalysisPredictor::MkldnnQuantize() {
#if PADDLE_WITH_MKLDNN
  if (!mkldnn_quantizer_)
    mkldnn_quantizer_ = new AnalysisPredictor::MkldnnQuantizer(
        *this, config_.mkldnn_quantizer_config());
  return mkldnn_quantizer_->Quantize();
#else
  LOG(ERROR) << "Please compile with MKLDNN first to use MkldnnQuantizer";
  return false;
#endif
}

1491
void AnalysisPredictor::PrepareFeedFetch() {
1492 1493 1494
  PADDLE_ENFORCE_NOT_NULL(sub_scope_,
                          platform::errors::InvalidArgument(
                              "The sub_scope should not be nullptr."));
1495
  CreateFeedFetchVar(sub_scope_);
1496 1497
  for (auto *op : inference_program_->Block(0).AllOps()) {
    if (op->Type() == "feed") {
R
Ruibiao Chen 已提交
1498
      int idx = PADDLE_GET_CONST(int, op->GetAttr("col"));
1499 1500 1501 1502 1503
      if (feeds_.size() <= static_cast<size_t>(idx)) {
        feeds_.resize(idx + 1);
      }
      feeds_[idx] = op;
      feed_names_[op->Output("Out")[0]] = idx;
N
nhzlx 已提交
1504
      idx2feeds_[idx] = op->Output("Out")[0];
1505
    } else if (op->Type() == "fetch") {
R
Ruibiao Chen 已提交
1506
      int idx = PADDLE_GET_CONST(int, op->GetAttr("col"));
Y
Yan Chunwei 已提交
1507 1508
      if (fetches_.size() <= static_cast<size_t>(idx)) {
        fetches_.resize(idx + 1);
1509
      }
Y
Yan Chunwei 已提交
1510
      fetches_[idx] = op;
N
nhzlx 已提交
1511
      idx2fetches_[idx] = op->Input("X")[0];
1512 1513 1514 1515
    }
  }
}

1516
void AnalysisPredictor::CreateFeedFetchVar(framework::Scope *scope) {
C
ccrrong 已提交
1517 1518 1519
  PADDLE_ENFORCE_NOT_NULL(
      scope,
      platform::errors::InvalidArgument("The scope should not be nullptr."));
1520
  auto *var = scope->Var("feed");
1521
  var->GetMutable<framework::FeedList>();
1522
  var = scope->Var("fetch");
1523
  var->GetMutable<framework::FetchList>();
1524 1525
}

N
nhzlx 已提交
1526 1527 1528 1529 1530 1531 1532 1533
std::vector<std::string> AnalysisPredictor::GetInputNames() {
  std::vector<std::string> input_names;
  for (auto &item : idx2feeds_) {
    input_names.push_back(item.second);
  }
  return input_names;
}

1534 1535 1536 1537 1538 1539
std::map<std::string, std::vector<int64_t>>
AnalysisPredictor::GetInputTensorShape() {
  std::map<std::string, std::vector<int64_t>> input_shapes;
  std::vector<std::string> names = GetInputNames();
  for (std::string name : names) {
    auto *var = inference_program_->Block(0).FindVar(name);
C
ccrrong 已提交
1540 1541 1542
    PADDLE_ENFORCE_NOT_NULL(
        var,
        platform::errors::PreconditionNotMet("Input %s does not exist.", name));
1543 1544 1545 1546 1547
    input_shapes[name] = var->GetShape();
  }
  return input_shapes;
}

1548 1549 1550 1551 1552 1553 1554 1555 1556 1557 1558 1559 1560 1561 1562 1563 1564 1565 1566 1567 1568 1569 1570 1571 1572 1573 1574 1575 1576 1577 1578
std::map<std::string, paddle_infer::DataType>
AnalysisPredictor::GetInputTypes() {
  std::map<std::string, paddle_infer::DataType> input_type;
  std::vector<std::string> names = GetInputNames();
  for (const auto &name : names) {
    auto *var = inference_program_->Block(0).FindVar(name);
    PADDLE_ENFORCE_NOT_NULL(
        var,
        platform::errors::PreconditionNotMet(
            "Input %s does not exist inference_program_.", name));
    auto dtype = var->GetDataType();
    if (dtype == paddle::framework::proto::VarType::FP32) {
      input_type[name] = paddle_infer::DataType::FLOAT32;
    } else if (dtype == paddle::framework::proto::VarType::FP16) {
      input_type[name] = paddle_infer::DataType::FLOAT16;
    } else if (dtype == paddle::framework::proto::VarType::INT64) {
      input_type[name] = paddle_infer::DataType::INT64;
    } else if (dtype == paddle::framework::proto::VarType::INT32) {
      input_type[name] = paddle_infer::DataType::INT32;
    } else if (dtype == paddle::framework::proto::VarType::UINT8) {
      input_type[name] = paddle_infer::DataType::UINT8;
    } else if (dtype == paddle::framework::proto::VarType::INT8) {
      input_type[name] = paddle_infer::DataType::INT8;
    } else {
      PADDLE_THROW(paddle::platform::errors::Unimplemented(
          "Unsupported data type `%s` when get input dtype ", dtype));
    }
  }
  return input_type;
}

N
nhzlx 已提交
1579 1580 1581 1582 1583 1584 1585 1586
std::vector<std::string> AnalysisPredictor::GetOutputNames() {
  std::vector<std::string> output_names;
  for (auto &item : idx2fetches_) {
    output_names.push_back(item.second);
  }
  return output_names;
}

1587 1588
std::unique_ptr<ZeroCopyTensor> AnalysisPredictor::GetInputTensor(
    const std::string &name) {
1589
  framework::Scope *scope;
1590
#if defined(PADDLE_WITH_DISTRIBUTE) && defined(PADDLE_WITH_PSCORE)
1591 1592 1593
  if (config_.dist_config().use_dist_model()) {
    scope = scope_.get();
  } else {
1594
    scope = executor_->GetScope();
1595 1596
  }
#else
1597
  scope = executor_->GetScope();
1598
#endif
1599
  PADDLE_ENFORCE_NOT_NULL(
1600
      scope->FindVar(name),
1601
      platform::errors::PreconditionNotMet(
1602
          "The variable named %s is not found in the scope of the executor.",
1603
          name));
1604 1605
  std::unique_ptr<ZeroCopyTensor> res(new ZeroCopyTensor(
      static_cast<void *>(scope), this->GetDeviceContexts()));
1606 1607
  res->input_or_output_ = true;
  res->SetName(name);
N
nhzlx 已提交
1608 1609
  if (platform::is_cpu_place(place_)) {
    res->SetPlace(PaddlePlace::kCPU);
J
jianghaicheng 已提交
1610 1611 1612 1613
  } else if (platform::is_ipu_place(place_)) {
    // Currently, IPUPlace's tensor copy between cpu and ipu has been set in
    // IpuBackend.
    res->SetPlace(PaddlePlace::kCPU);
1614
  } else if (platform::is_xpu_place(place_)) {
1615 1616 1617 1618 1619 1620 1621 1622
    if (config_.lite_engine_enabled()) {
      // Currently, Paddle-Lite's XPU user interface only supports the transfer
      // of host data pointers. If it is currently used as a subgraph, execution
      // efficiency will be sacrificed, so it is temporarily set to cpu place.
      // And, the current lite engine of xpu must execute all parts of the
      // model.
      res->SetPlace(PaddlePlace::kCPU);
    } else {
1623
      auto xpu_place = place_;
1624 1625
      res->SetPlace(PaddlePlace::kXPU, xpu_place.GetDeviceId());
    }
W
Wilber 已提交
1626
  } else if (platform::is_npu_place(place_)) {
1627
    auto npu_place = place_;
W
Wilber 已提交
1628
    res->SetPlace(PaddlePlace::kNPU, npu_place.GetDeviceId());
1629 1630 1631 1632 1633 1634
  } else if (platform::is_custom_place(place_)) {
    auto custom_place = place_;
    auto paddleplace = static_cast<PaddlePlace>(
        static_cast<size_t>(PaddlePlace::kCUSTOM) +
        phi::GetOrRegisterGlobalDeviceTypeId(place_.GetDeviceType()));
    res->SetPlace(paddleplace, custom_place.GetDeviceId());
N
nhzlx 已提交
1635
  } else {
1636
    auto gpu_place = place_;
N
nhzlx 已提交
1637 1638
    res->SetPlace(PaddlePlace::kGPU, gpu_place.GetDeviceId());
  }
1639 1640 1641 1642 1643
  return res;
}

std::unique_ptr<ZeroCopyTensor> AnalysisPredictor::GetOutputTensor(
    const std::string &name) {
1644
  framework::Scope *scope;
1645
#if defined(PADDLE_WITH_DISTRIBUTE) && defined(PADDLE_WITH_PSCORE)
1646 1647 1648
  if (config_.dist_config().use_dist_model()) {
    scope = scope_.get();
  } else {
1649
    scope = executor_->GetScope();
1650 1651
  }
#else
1652
  scope = executor_->GetScope();
1653
#endif
1654
  PADDLE_ENFORCE_NOT_NULL(
1655
      scope->FindVar(name),
1656
      platform::errors::PreconditionNotMet(
1657
          "The variable named %s is not found in the scope of the executor.",
1658
          name));
1659 1660
  std::unique_ptr<ZeroCopyTensor> res(new ZeroCopyTensor(
      static_cast<void *>(scope), this->GetDeviceContexts()));
1661 1662
  res->input_or_output_ = false;
  res->SetName(name);
N
nhzlx 已提交
1663 1664
  if (platform::is_cpu_place(place_)) {
    res->SetPlace(PaddlePlace::kCPU);
J
jianghaicheng 已提交
1665 1666 1667 1668
  } else if (platform::is_ipu_place(place_)) {
    // Currently, IPUPlace's tensor copy between cpu and ipu has been set in
    // IpuBackend.
    res->SetPlace(PaddlePlace::kCPU);
1669
  } else if (platform::is_xpu_place(place_)) {
1670 1671 1672 1673 1674 1675 1676 1677
    if (config_.lite_engine_enabled()) {
      // Currently, Paddle-Lite's XPU user interface only supports the transfer
      // of host data pointers. If it is currently used as a subgraph, execution
      // efficiency will be sacrificed, so it is temporarily set to cpu place.
      // And, the current lite engine of xpu must execute all parts of the
      // model.
      res->SetPlace(PaddlePlace::kCPU);
    } else {
1678
      auto xpu_place = place_;
1679 1680
      res->SetPlace(PaddlePlace::kXPU, xpu_place.GetDeviceId());
    }
W
Wilber 已提交
1681
  } else if (platform::is_npu_place(place_)) {
1682
    auto npu_place = place_;
W
Wilber 已提交
1683
    res->SetPlace(PaddlePlace::kNPU, npu_place.GetDeviceId());
1684 1685 1686 1687 1688 1689
  } else if (platform::is_custom_place(place_)) {
    auto custom_place = place_;
    auto paddleplace = static_cast<PaddlePlace>(
        static_cast<size_t>(PaddlePlace::kCUSTOM) +
        phi::GetOrRegisterGlobalDeviceTypeId(place_.GetDeviceType()));
    res->SetPlace(paddleplace, custom_place.GetDeviceId());
N
nhzlx 已提交
1690
  } else {
1691
    auto gpu_place = place_;
N
nhzlx 已提交
1692 1693
    res->SetPlace(PaddlePlace::kGPU, gpu_place.GetDeviceId());
  }
1694 1695 1696 1697
  return res;
}

bool AnalysisPredictor::ZeroCopyRun() {
1698
  inference::DisplayMemoryInfo(place_, "before run");
1699
#if defined(PADDLE_WITH_DISTRIBUTE) && defined(PADDLE_WITH_PSCORE)
1700 1701 1702 1703 1704 1705 1706 1707 1708 1709
  if (config_.dist_config().use_dist_model()) {
    VLOG(3) << "ZeroCopyRun will use the fleet executor.";
    inference::Timer timer;
    timer.tic();
    fleet_exe_->Run(config_.dist_config().carrier_id());
    VLOG(3) << "Fleet executor inf runs once use: "
            << std::to_string(timer.toc()) << "ms";
    return true;
  }
#endif
1710 1711 1712
  if (private_context_) {
    paddle::platform::DeviceContextPool::SetDeviceContexts(&device_contexts_);
  }
1713
  paddle::platform::SetNumThreads(config_.cpu_math_library_num_threads());
W
Wilber 已提交
1714 1715 1716 1717 1718 1719 1720 1721 1722 1723 1724
#ifdef PADDLE_WITH_MKLDNN
  if (config_.use_mkldnn_) {
    std::vector<std::vector<int>> shape_vector;
    auto names = GetInputNames();
    for (size_t i = 0; i < names.size(); ++i) {
      auto in_tensor = GetInputTensor(names[i]);
      shape_vector.emplace_back(in_tensor->shape());
    }
    MkldnnPreSet(shape_vector);
  }
#endif
1725 1726 1727 1728 1729 1730 1731 1732 1733 1734

#ifdef PADDLE_WITH_TENSORRT
  if (config_.tensorrt_engine_enabled()) {
    inference::tensorrt::TensorRTEngine::predictor_id_per_thread =
        predictor_id_;
    VLOG(3) << "thread_local var predictor_id in TensorRTEngine is set to: "
            << inference::tensorrt::TensorRTEngine::predictor_id_per_thread;
  }
#endif

1735
  executor_->Run();
1736
  inference::DisplayMemoryInfo(place_, "after run");
1737 1738 1739 1740 1741

  if (config_.shape_range_info_collected()) {
    CollectShapeRangeInfo();
  }

Y
Yan Chunwei 已提交
1742
  // Fix TensorArray reuse not cleaned bug.
Y
Yan Chunwei 已提交
1743
  tensor_array_batch_cleaner_.CollectTensorArrays(sub_scope_);
Y
Yan Chunwei 已提交
1744
  tensor_array_batch_cleaner_.ResetTensorArray();
1745 1746 1747 1748

  // recover the cpu_math_library_num_threads to 1, in order to avoid thread
  // conflict when integrating it into deployment service.
  paddle::platform::SetNumThreads(1);
1749 1750 1751
  if (private_context_) {
    paddle::platform::DeviceContextPool::SetDeviceContexts(nullptr);
  }
W
Wilber 已提交
1752 1753 1754
#ifdef PADDLE_WITH_MKLDNN
  if (config_.use_mkldnn_) MkldnnPostReset();
#endif
1755
#if defined(PADDLE_WITH_MKLML)
T
Tao Luo 已提交
1756 1757 1758 1759 1760
  // Frees unused memory allocated by the Intel® MKL Memory Allocator to
  // avoid memory leak. See:
  // https://software.intel.com/en-us/mkl-developer-reference-c-mkl-free-buffers
  platform::dynload::MKL_Free_Buffers();
#endif
1761 1762 1763
  return true;
}

W
Wilber 已提交
1764 1765
#if defined(PADDLE_WITH_CUDA) || defined(PADDLE_WITH_HIP)
bool AnalysisPredictor::ExpRunWithExternalStream(const gpuStream_t stream) {
W
Wilber 已提交
1766 1767 1768 1769 1770 1771 1772 1773 1774 1775 1776 1777 1778 1779 1780 1781 1782 1783 1784 1785 1786 1787 1788 1789 1790
  if (!private_context_) {
    PADDLE_THROW(platform::errors::Fatal(
        "Please use config.SetExecStream to init gpu resources, and then we "
        "will bind gpu resources to execution stream."));
  }

  if (stream != predictor_stream_) {
#ifdef PADDLE_WITH_HIP
    hipStreamSynchronize(static_cast<gpuStream_t>(predictor_stream_));
#else
    cudaStreamSynchronize(static_cast<gpuStream_t>(predictor_stream_));
#endif
    ResourceManager::Instance().GpuResourceReBindStream(predictor_stream_,
                                                        stream);
    predictor_stream_ = stream;

    auto *dev_ctxs = reinterpret_cast<const std::map<
        phi::Place,
        std::shared_future<std::unique_ptr<phi::DeviceContext>>> *>(
        this->GetDeviceContexts());
    auto *dev_ctx =
        static_cast<InferGPUContext *>(dev_ctxs->at(place_).get().get());
    dev_ctx->SetStream(stream);
  }

W
Wilber 已提交
1791 1792 1793 1794
  return ZeroCopyRun();
}
#endif

1795 1796 1797 1798 1799 1800
void AnalysisPredictor::CollectShapeRangeInfo() {
  // if use gpu, sync first.
  if (config_.use_gpu()) {
#if defined(PADDLE_WITH_CUDA) || defined(PADDLE_WITH_HIP)
    paddle::platform::DeviceContextPool &pool =
        paddle::platform::DeviceContextPool::Instance();
1801
    auto gpu_place = place_;
L
Leo Chen 已提交
1802
    auto *dev_ctx = static_cast<const phi::GPUContext *>(pool.Get(gpu_place));
1803 1804 1805 1806 1807 1808 1809 1810 1811 1812 1813
#ifdef PADDLE_WITH_HIP
    hipStreamSynchronize(dev_ctx->stream());
#else
    cudaStreamSynchronize(dev_ctx->stream());
#endif
#endif
  }

  std::vector<std::string> var_names = sub_scope_->LocalVarNames();
  for (const auto &name : var_names) {
    auto *var = sub_scope_->GetVar(name);
1814
    if (!var->IsType<phi::DenseTensor>()) {
1815 1816
      continue;
    }
1817 1818
    auto tensor = var->Get<phi::DenseTensor>();
    framework::DDim dim = tensor.dims();
1819 1820 1821
    std::vector<int32_t> shape(dim.size());
    for (size_t i = 0; i < shape.size(); ++i) shape[i] = dim[i];
    shape_info_[name].emplace_back(shape);
1822 1823 1824 1825 1826 1827 1828 1829 1830 1831 1832 1833 1834 1835 1836 1837 1838 1839 1840 1841 1842 1843 1844 1845 1846 1847 1848 1849

    // We need collect value range for shape tensor for Paddle-TRT's use.
    // To be noticed, this method to identify all shape tensors is based on
    // assumption that all shape tensors in the model have numbers <= 7.
    // This is a simple method to identify all shape tensors with some
    // mistakes, but it doesn't matter.
    auto is_shape_tensor = tensor.numel() <= 7 && tensor.numel() >= 1;
    if (tensor.dtype() == paddle::experimental::DataType::INT32 &&
        is_shape_tensor) {
      std::vector<int> int32_host(tensor.numel());
      if (tensor.place() == platform::CPUPlace()) {
        paddle::memory::Copy(platform::CPUPlace(),
                             int32_host.data(),
                             platform::CPUPlace(),
                             tensor.data<int>(),
                             tensor.numel() * sizeof(int));
      } else if (tensor.place() == platform::CUDAPlace()) {
#if defined(PADDLE_WITH_CUDA)
        paddle::memory::Copy(platform::CPUPlace(),
                             int32_host.data(),
                             platform::CUDAPlace(),
                             tensor.data<int>(),
                             tensor.numel() * sizeof(int),
                             nullptr);
#endif
      }
      shape_tensor_value_[name].emplace_back(int32_host);
    }
1850 1851 1852 1853 1854 1855 1856
  }
}

void AnalysisPredictor::StatisticShapeRangeInfo() {
  std::map<std::string, std::vector<int32_t>> min_shapes;
  std::map<std::string, std::vector<int32_t>> max_shapes;
  std::map<std::string, std::vector<int32_t>> opt_shapes;
1857 1858 1859 1860 1861 1862 1863 1864 1865 1866 1867 1868 1869 1870 1871 1872 1873 1874 1875 1876 1877 1878 1879 1880 1881 1882 1883 1884 1885 1886 1887 1888 1889 1890 1891 1892 1893 1894 1895
  std::map<std::string, std::vector<int32_t>> min_values;
  std::map<std::string, std::vector<int32_t>> max_values;
  std::map<std::string, std::vector<int32_t>> opt_values;

  auto extract_min_max_opt =
      [](std::map<std::string, std::vector<int32_t>> &min_data,
         decltype(min_data) max_data,
         decltype(min_data) opt_data,
         decltype(shape_info_) shape_data) {
        for (auto it : shape_data) {
          auto name = it.first;
          auto shapes = it.second;

          std::vector<int32_t> min_shape(shapes[0].begin(), shapes[0].end());
          std::vector<int32_t> max_shape(shapes[0].begin(), shapes[0].end());
          std::vector<int32_t> opt_shape(shapes[0].begin(), shapes[0].end());

          auto ShapeMaxFreq =
              [](const std::map<int32_t, int32_t> &m) -> int32_t {
            std::vector<std::pair<int32_t, int32_t>> counter;
            for (auto &it : m) counter.push_back(it);
            std::sort(counter.begin(),
                      counter.end(),
                      [](std::pair<int32_t, int32_t> &a,
                         std::pair<int32_t, int32_t> &b) {
                        return a.second > b.second;
                      });
            return counter[0].first;
          };

          for (size_t d = 0; d < shapes[0].size(); ++d) {
            std::map<int32_t, int32_t> counter;
            for (size_t i = 0; i < shapes.size(); ++i) {
              counter[shapes[i][d]] += 1;
              if (shapes[i][d] < min_shape[d]) min_shape[d] = shapes[i][d];
              if (shapes[i][d] > max_shape[d]) max_shape[d] = shapes[i][d];
            }
            opt_shape[d] = ShapeMaxFreq(counter);
          }
1896

1897 1898 1899 1900 1901 1902 1903 1904 1905 1906 1907 1908 1909 1910 1911
          min_data[name] = min_shape;
          max_data[name] = max_shape;
          opt_data[name] = opt_shape;
        }
      };
  extract_min_max_opt(min_shapes, max_shapes, opt_shapes, shape_info_);
  extract_min_max_opt(min_values, max_values, opt_values, shape_tensor_value_);

  inference::SerializeShapeRangeInfo(config_.shape_range_info_path(),
                                     min_shapes,
                                     max_shapes,
                                     opt_shapes,
                                     min_values,
                                     max_values,
                                     opt_values);
1912 1913
}

1914 1915
bool AnalysisPredictor::LoadProgramDesc() {
  // Initialize the inference program
1916
  std::string filename;
1917 1918
  if (!config_.model_dir().empty()) {
    filename = config_.model_dir() + "/__model__";
1919
  } else if (!config_.prog_file().empty()) {
1920 1921 1922
    // All parameters are saved in a single file.
    // The file names should be consistent with that used
    // in Python API `fluid.io.save_inference_model`.
1923
    filename = config_.prog_file();
1924
  } else {
1925
    if (config_.model_dir().empty() && config_.prog_file().empty()) {
1926 1927 1928 1929
      LOG(ERROR)
          << "Either model_dir or (prog_file, param_file) should be set.";
      return false;
    }
1930
    LOG(ERROR) << string::Sprintf(
C
ccrrong 已提交
1931 1932
        "not valid model path '%s' or program path '%s'.",
        config_.model_dir(),
1933
        config_.params_file());
1934 1935
    return false;
  }
1936 1937 1938

  // Create ProgramDesc
  framework::proto::ProgramDesc proto;
T
Tao Luo 已提交
1939
  if (!config_.model_from_memory()) {
T
Tao Luo 已提交
1940 1941 1942
    std::string pb_content;
    // Read binary
    std::ifstream fin(filename, std::ios::in | std::ios::binary);
1943
    PADDLE_ENFORCE_EQ(
C
ccrrong 已提交
1944 1945
        static_cast<bool>(fin.is_open()),
        true,
1946 1947 1948
        platform::errors::NotFound(
            "Cannot open file %s, please confirm whether the file is normal.",
            filename));
T
Tao Luo 已提交
1949 1950 1951 1952 1953 1954 1955 1956
    fin.seekg(0, std::ios::end);
    pb_content.resize(fin.tellg());
    fin.seekg(0, std::ios::beg);
    fin.read(&(pb_content.at(0)), pb_content.size());
    fin.close();

    proto.ParseFromString(pb_content);
  } else {
1957
    proto.ParseFromString(config_.prog_file());
T
Tao Luo 已提交
1958
  }
1959 1960 1961 1962 1963 1964
  inference_program_.reset(new framework::ProgramDesc(proto));
  return true;
}

bool AnalysisPredictor::LoadParameters() {
  PADDLE_ENFORCE_NOT_NULL(inference_program_.get(),
1965 1966
                          platform::errors::PreconditionNotMet(
                              "The inference program should be loaded first."));
T
Tao Luo 已提交
1967

1968 1969 1970 1971 1972 1973 1974 1975 1976 1977 1978 1979 1980 1981 1982 1983 1984 1985 1986 1987
  const auto &global_block = inference_program_->MutableBlock(0);

  // create a temporary program to load parameters.

  std::unique_ptr<framework::ProgramDesc> load_program(
      new framework::ProgramDesc());
  framework::BlockDesc *load_block = load_program->MutableBlock(0);
  std::vector<std::string> params;

  for (auto *var : global_block->AllVars()) {
    if (IsPersistable(var)) {
      VLOG(3) << "persistable variable's name: " << var->Name();

      framework::VarDesc *new_var = load_block->Var(var->Name());
      new_var->SetShape(var->GetShape());
      new_var->SetDataType(var->GetDataType());
      new_var->SetType(var->GetType());
      new_var->SetLoDLevel(var->GetLoDLevel());
      new_var->SetPersistable(true);

1988
      if (!config_.params_file().empty()) {
1989 1990 1991 1992 1993 1994
        params.push_back(new_var->Name());
      } else {
        // append_op
        framework::OpDesc *op = load_block->AppendOp();
        op->SetType("load");
        op->SetOutput("Out", {new_var->Name()});
1995
        op->SetAttr("file_path", {config_.model_dir() + "/" + new_var->Name()});
1996 1997 1998 1999 2000
        op->CheckAttrs();
      }
    }
  }

2001
  if (!config_.params_file().empty()) {
2002 2003 2004 2005 2006 2007
    // sort paramlist to have consistent ordering
    std::sort(params.begin(), params.end());
    // append just the load_combine op
    framework::OpDesc *op = load_block->AppendOp();
    op->SetType("load_combine");
    op->SetOutput("Out", params);
2008
    op->SetAttr("file_path", {config_.params_file()});
2009 2010 2011 2012
    op->CheckAttrs();
  }

  // Use NaiveExecutor to Load parameters.
S
superjomn 已提交
2013
  framework::NaiveExecutor e(place_);
2014 2015 2016 2017
  e.Prepare(scope_.get(), *load_program, 0, false);
  e.Run();
  VLOG(3) << "get " << scope_->LocalVarNames().size() << " vars after load";

2018 2019
  return true;
}
2020

2021 2022 2023 2024 2025
uint64_t AnalysisPredictor::TryShrinkMemory() {
  ClearIntermediateTensor();
  return paddle::memory::Release(place_);
}

2026 2027 2028 2029 2030 2031 2032 2033
void AnalysisPredictor::ClearIntermediateTensor() {
  PADDLE_ENFORCE_NOT_NULL(inference_program_.get(),
                          platform::errors::PreconditionNotMet(
                              "The inference program should be loaded first."));
  const auto &global_block = inference_program_->MutableBlock(0);
  for (auto *var : global_block->AllVars()) {
    if (!IsPersistable(var)) {
      const std::string name = var->Name();
2034
      auto *variable = executor_->GetScope()->FindVar(name);
2035
      if (variable != nullptr && variable->IsType<phi::DenseTensor>() &&
2036 2037
          name != "feed" && name != "fetch") {
        VLOG(3) << "Clear Intermediate Tensor: " << name;
2038
        auto *t = variable->GetMutable<phi::DenseTensor>();
2039 2040 2041 2042 2043 2044
        t->clear();
      }
    }
  }
}

2045
#ifdef PADDLE_WITH_TENSORRT
N
nhzlx 已提交
2046
bool AnalysisPredictor::SaveTrtCalibToDisk() {
C
ccrrong 已提交
2047 2048
  PADDLE_ENFORCE_EQ(config_.tensorrt_engine_enabled(),
                    true,
2049 2050
                    platform::errors::PreconditionNotMet(
                        "This func can be invoked only in trt mode"));
N
nhzlx 已提交
2051 2052 2053
  auto &block = inference_program_->Block(0);
  for (auto &op_desc : block.AllOps()) {
    if (op_desc->Type() == "tensorrt_engine") {
R
Ruibiao Chen 已提交
2054
      std::string engine_name = PADDLE_GET_CONST(
2055
          std::string, op_desc->GetAttr("calibration_engine_key"));
N
nhzlx 已提交
2056
      if (!Singleton<TRTCalibratorEngineManager>::Global().Has(engine_name)) {
N
nhzlx 已提交
2057 2058 2059 2060
        LOG(ERROR) << "You should run the predictor(with trt) on the real data "
                      "to generate calibration info";
        return false;
      }
N
nhzlx 已提交
2061 2062
      TRTCalibratorEngine *calib_engine =
          Singleton<TRTCalibratorEngineManager>::Global().Get(engine_name);
N
nhzlx 已提交
2063
      LOG(INFO) << "Wait for calib threads done.";
N
nhzlx 已提交
2064
      calib_engine->calib_->waitAndSetDone();
N
nhzlx 已提交
2065 2066
      LOG(INFO) << "Generating TRT Calibration table data, this may cost a lot "
                   "of time...";
N
nhzlx 已提交
2067 2068 2069
      calib_engine->thr_->join();
      std::string calibration_table_data =
          calib_engine->calib_->getCalibrationTableAsString();
N
nhzlx 已提交
2070

N
nhzlx 已提交
2071
      if (calibration_table_data.empty()) {
N
nhzlx 已提交
2072 2073 2074
        LOG(ERROR) << "the calibration table is empty.";
        return false;
      }
N
nhzlx 已提交
2075

N
nhzlx 已提交
2076 2077 2078 2079 2080
      std::string model_opt_cache_dir =
          argument_.Has("model_dir")
              ? argument_.model_dir()
              : inference::analysis::GetDirRoot(argument_.model_program_path());

N
nhzlx 已提交
2081
      std::string calibration_table_data_path =
N
nhzlx 已提交
2082 2083 2084 2085
          inference::analysis::GetTrtCalibPath(
              inference::analysis::GetOrCreateModelOptCacheDir(
                  model_opt_cache_dir),
              engine_name);
N
nhzlx 已提交
2086 2087 2088 2089 2090

      std::ofstream ofile(calibration_table_data_path, std::ios::out);
      LOG(INFO) << "Write Paddle-TRT INT8 calibration table data to file "
                << calibration_table_data_path;
      ofile << calibration_table_data;
N
nhzlx 已提交
2091 2092 2093 2094
      ofile.close();
    }
  }
  // Free all calibrator resources.
N
nhzlx 已提交
2095
  Singleton<TRTCalibratorEngineManager>::Global().DeleteALL();
N
nhzlx 已提交
2096 2097
  return true;
}
N
nhzlx 已提交
2098
#endif
N
nhzlx 已提交
2099

2100
AnalysisPredictor::~AnalysisPredictor() {
2101
#ifdef PADDLE_WITH_TENSORRT
N
nhzlx 已提交
2102
  if (config_.tensorrt_engine_enabled() &&
N
nhzlx 已提交
2103 2104
      config_.tensorrt_precision_mode_ == AnalysisConfig::Precision::kInt8 &&
      Singleton<TRTCalibratorEngineManager>::Global().Has()) {
N
nhzlx 已提交
2105 2106
    SaveTrtCalibToDisk();
  }
N
nhzlx 已提交
2107
#endif
2108
  if (config_.with_profile_) {
2109 2110 2111 2112
    platform::DisableProfiler(platform::EventSortingKey::kTotal,
                              "./profile.log");
  }
  if (sub_scope_) {
J
JingZhuangzhuang 已提交
2113 2114 2115 2116 2117 2118 2119 2120 2121
    if (framework::global_transfer_scope_key().find(sub_scope_) !=
        framework::global_transfer_scope_key().end()) {
      auto scope_key_set = framework::global_transfer_scope_key()[sub_scope_];
      for (auto iter = scope_key_set.begin(); iter != scope_key_set.end();
           iter++) {
        framework::global_transfer_data_cache().erase(*iter);
      }
      framework::global_transfer_scope_key().erase(sub_scope_);
    }
2122 2123
    scope_->DeleteScope(sub_scope_);
  }
Y
Yan Chunwei 已提交
2124

2125 2126 2127 2128 2129 2130
#if PADDLE_WITH_MKLDNN
  if (mkldnn_quantizer_) {
    delete mkldnn_quantizer_;
    mkldnn_quantizer_ = nullptr;
  }
#endif
2131

2132 2133 2134
  if (config_.shape_range_info_collected()) {
    StatisticShapeRangeInfo();
  }
2135 2136 2137 2138 2139
#if defined(PADDLE_WITH_CUDA) || defined(PADDLE_WITH_HIP)
  if (predictor_stream_ != nullptr) {
    ResourceManager::Instance().DestroyGPUResource(predictor_stream_);
  }
#endif
W
Wilber 已提交
2140 2141 2142
  if (place_.GetType() != phi::AllocationType::UNDEFINED) {
    memory::Release(place_);
  }
2143
  device_contexts_.clear();
2144 2145 2146 2147 2148 2149 2150

#ifdef PADDLE_WITH_TENSORRT
  if (config_.trt_engine_memory_sharing()) {
    inference::Singleton<inference::tensorrt::TRTEngineManager>::Global()
        .releaseContextMemory(predictor_id_);
  }
#endif
2151 2152
}

2153
std::unique_ptr<PaddlePredictor> AnalysisPredictor::Clone(void *stream) {
Y
Yan Chunwei 已提交
2154
  std::lock_guard<std::mutex> lk(clone_mutex_);
2155
  auto *x = new AnalysisPredictor(config_);
2156
  x->status_is_cloned_ = true;
2157
  x->root_predictor_id_ = this->root_predictor_id_;
2158 2159 2160 2161 2162 2163 2164 2165 2166 2167
  if (config_.use_external_stream_ && stream == nullptr) {
    PADDLE_THROW(platform::errors::InvalidArgument(
        "config has been configured to use external stream, but the Clone "
        "function has not received a valid stream parameter."));
  } else if (!config_.use_external_stream_ && stream != nullptr) {
    PADDLE_THROW(platform::errors::InvalidArgument(
        "config has not been configured to use external stream, but the Clone "
        "function has received a stream parameter."));
  }
  x->predictor_stream_ = stream;
2168
  x->Init(scope_, inference_program_);
2169
#ifdef PADDLE_WITH_TENSORRT
2170
  x->executor_->ResetTrtOps(++AnalysisPredictor::clone_num_);
2171
#endif
2172 2173 2174
  return std::unique_ptr<PaddlePredictor>(x);
}

2175
std::string AnalysisPredictor::GetSerializedProgram() const {
Y
Yan Chunwei 已提交
2176 2177 2178
  return inference_program_->Proto()->SerializeAsString();
}

2179 2180 2181 2182 2183 2184 2185 2186 2187 2188 2189 2190 2191 2192 2193 2194 2195 2196 2197 2198 2199 2200 2201 2202 2203 2204 2205 2206 2207 2208 2209 2210 2211 2212 2213 2214 2215 2216 2217
// Add SaveOptimModel
void AnalysisPredictor::SaveOptimModel(const std::string &dir) {
  // save model
  std::string model_name = dir + "/model";
  std::ofstream outfile;
  outfile.open(model_name, std::ios::out | std::ios::binary);
  std::string inference_prog_desc = GetSerializedProgram();
  outfile << inference_prog_desc;
  // save params
  framework::ProgramDesc save_program;
  auto *save_block = save_program.MutableBlock(0);

  const framework::ProgramDesc &main_program = program();
  const framework::BlockDesc &global_block = main_program.Block(0);
  std::vector<std::string> save_var_list;
  for (framework::VarDesc *var : global_block.AllVars()) {
    if (IsPersistable(var)) {
      framework::VarDesc *new_var = save_block->Var(var->Name());
      new_var->SetShape(var->GetShape());
      new_var->SetDataType(var->GetDataType());
      new_var->SetType(var->GetType());
      new_var->SetLoDLevel(var->GetLoDLevel());
      new_var->SetPersistable(true);

      save_var_list.push_back(new_var->Name());
    }
  }
  std::sort(save_var_list.begin(), save_var_list.end());
  auto *op = save_block->AppendOp();
  op->SetType("save_combine");
  op->SetInput("X", save_var_list);
  op->SetAttr("file_path", dir + "/params");
  op->CheckAttrs();

  platform::CPUPlace place;
  framework::Executor exe(place);
  exe.Run(save_program, scope(), 0, true, true);
}

2218 2219 2220 2221 2222 2223 2224 2225 2226 2227 2228 2229 2230 2231 2232 2233 2234 2235 2236 2237 2238
void AnalysisPredictor::RegisterOutputHook(const Exp_OutputHookFunc &hookfunc) {
  static std::once_flag register_hook_flag;
  std::call_once(register_hook_flag, [this] {
    executor_->RegisterOutputHook([this](framework::OperatorBase *op) {
      for (auto &output : op->Outputs()) {
        for (auto &var_name : output.second) {
          auto *var = this->sub_scope_->FindVar(var_name);
          if (!var || !var->IsType<phi::DenseTensor>()) continue;
          auto dense_tensor = var->Get<phi::DenseTensor>();
          if (!dense_tensor.initialized()) continue;
          auto tensor = this->GetOutputTensor(var_name);
          for (auto &hookfunc : this->hookfuncs_) {
            hookfunc(op->Type(), var_name, *tensor);
          }
        }
      }
    });
  });
  hookfuncs_.push_back(hookfunc);
}

Y
Yan Chunwei 已提交
2239
template <>
2240 2241
std::unique_ptr<PaddlePredictor> CreatePaddlePredictor<AnalysisConfig>(
    const AnalysisConfig &config) {
W
Wilber 已提交
2242
  LOG(WARNING) << "Deprecated. Please use CreatePredictor instead.";
2243 2244
  return CreatePaddlePredictor<AnalysisConfig, PaddleEngineKind::kAnalysis>(
      config);
Y
Yan Chunwei 已提交
2245 2246
}

2247
}  // namespace paddle
2248

2249
#ifdef PADDLE_WITH_TENSORRT
2250
USE_TRT_CONVERTER(elementwise_add_weight);
S
shentanyue 已提交
2251 2252 2253
USE_TRT_CONVERTER(elementwise_sub_weight);
USE_TRT_CONVERTER(elementwise_mul_weight);
USE_TRT_CONVERTER(elementwise_div_weight);
2254 2255
USE_TRT_CONVERTER(elementwise_min_weight);
USE_TRT_CONVERTER(elementwise_max_weight);
S
shentanyue 已提交
2256
USE_TRT_CONVERTER(elementwise_pow_weight);
W
wenbin 已提交
2257
USE_TRT_CONVERTER(elementwise_floordiv_weight);
2258 2259 2260 2261 2262 2263 2264
USE_TRT_CONVERTER(elementwise_add_tensor);
USE_TRT_CONVERTER(elementwise_sub_tensor);
USE_TRT_CONVERTER(elementwise_div_tensor);
USE_TRT_CONVERTER(elementwise_mul_tensor);
USE_TRT_CONVERTER(elementwise_max_tensor);
USE_TRT_CONVERTER(elementwise_min_tensor);
USE_TRT_CONVERTER(elementwise_pow_tensor);
W
wenbin 已提交
2265
USE_TRT_CONVERTER(elementwise_floordiv_tensor);
2266 2267 2268 2269 2270 2271
USE_TRT_CONVERTER(less_than);
USE_TRT_CONVERTER(greater_than);
USE_TRT_CONVERTER(logical_or);
USE_TRT_CONVERTER(logical_xor);
USE_TRT_CONVERTER(logical_and);
USE_TRT_CONVERTER(less_equal);
2272
USE_TRT_CONVERTER(transpose);
2273
USE_TRT_CONVERTER(transpose2);
2274
USE_TRT_CONVERTER(flatten);
2275
USE_TRT_CONVERTER(flatten_contiguous_range);
2276
USE_TRT_CONVERTER(matmul);
2277
USE_TRT_CONVERTER(matmul_v2);
2278
USE_TRT_CONVERTER(bmm);
G
gem5 已提交
2279
USE_TRT_CONVERTER(rsqrt);
2280 2281
USE_TRT_CONVERTER(conv2d);
USE_TRT_CONVERTER(relu);
Z
zhupengyang 已提交
2282 2283
USE_TRT_CONVERTER(exp);
USE_TRT_CONVERTER(log);
2284 2285 2286 2287 2288 2289 2290 2291 2292
USE_TRT_CONVERTER(sigmoid);
USE_TRT_CONVERTER(tanh);
USE_TRT_CONVERTER(fc);
USE_TRT_CONVERTER(pool2d);
USE_TRT_CONVERTER(softmax);
USE_TRT_CONVERTER(batch_norm);
USE_TRT_CONVERTER(concat);
USE_TRT_CONVERTER(dropout);
USE_TRT_CONVERTER(pad);
2293 2294
USE_TRT_CONVERTER(hard_sigmoid);
USE_TRT_CONVERTER(hard_swish);
2295
USE_TRT_CONVERTER(split);
2296
USE_TRT_CONVERTER(fill_any_like);
2297 2298
USE_TRT_CONVERTER(prelu);
USE_TRT_CONVERTER(conv2d_transpose);
H
hjchen2 已提交
2299
USE_TRT_CONVERTER(leaky_relu);
2300
USE_TRT_CONVERTER(shuffle_channel);
2301
USE_TRT_CONVERTER(where);
2302 2303
USE_TRT_CONVERTER(one_hot);
USE_TRT_CONVERTER(one_hot_v2);
2304
USE_TRT_CONVERTER(swish);
L
LielinJiang 已提交
2305
USE_TRT_CONVERTER(silu);
2306
USE_TRT_CONVERTER(group_norm);
2307
USE_TRT_CONVERTER(instance_norm);
P
Pei Yang 已提交
2308 2309 2310
USE_TRT_CONVERTER(layer_norm);
USE_TRT_CONVERTER(gelu);
USE_TRT_CONVERTER(multihead_matmul);
2311
USE_TRT_CONVERTER(multihead_matmul_roformer);
2312
USE_TRT_CONVERTER(skip_layernorm);
2313
USE_TRT_CONVERTER(slice);
2314
USE_TRT_CONVERTER(scale);
2315
USE_TRT_CONVERTER(stack);
P
Pei Yang 已提交
2316
USE_TRT_CONVERTER(clip);
2317
USE_TRT_CONVERTER(gather);
2318
USE_TRT_CONVERTER(anchor_generator);
Z
zlsh80826 已提交
2319
USE_TRT_CONVERTER(yolo_box);
2320
USE_TRT_CONVERTER(yolo_box_head);
2321
USE_TRT_CONVERTER(arg_max);
2322
USE_TRT_CONVERTER(roi_align);
2323
USE_TRT_CONVERTER(affine_channel);
Z
zlsh80826 已提交
2324
USE_TRT_CONVERTER(multiclass_nms);
2325
USE_TRT_CONVERTER(multiclass_nms3);
2326
USE_TRT_CONVERTER(nearest_interp);
2327
USE_TRT_CONVERTER(nearest_interp_v2);
2328
USE_TRT_CONVERTER(bilinear_interp_v2);
W
Wangzheee 已提交
2329
USE_TRT_CONVERTER(reshape);
2330
USE_TRT_CONVERTER(reshape2);
2331
USE_TRT_CONVERTER(gather_nd);
W
wenbin 已提交
2332
USE_TRT_CONVERTER(reduce_mean);
2333 2334
USE_TRT_CONVERTER(reduce_max);
USE_TRT_CONVERTER(reduce_sum);
W
wenbin 已提交
2335
USE_TRT_CONVERTER(tile);
W
wenbin 已提交
2336 2337
USE_TRT_CONVERTER(conv3d);
USE_TRT_CONVERTER(conv3d_transpose);
W
wangxinxin08 已提交
2338
USE_TRT_CONVERTER(mish);
W
wangxinxin08 已提交
2339
USE_TRT_CONVERTER(deformable_conv);
F
feng_shuai 已提交
2340
USE_TRT_CONVERTER(pool3d)
2341 2342
#ifdef _WIN32
#else
2343
USE_TRT_CONVERTER(fused_preln_embedding_eltwise_layernorm)
2344 2345
USE_TRT_CONVERTER(fused_embedding_eltwise_layernorm);
#endif
2346
USE_TRT_CONVERTER(preln_skip_layernorm)
2347 2348
USE_TRT_CONVERTER(preln_residual_bias)
USE_TRT_CONVERTER(c_allreduce_sum)
F
feng_shuai 已提交
2349
USE_TRT_CONVERTER(roll)
F
feng_shuai 已提交
2350
USE_TRT_CONVERTER(strided_slice)
Z
zhoutianzi666 已提交
2351 2352
USE_TRT_CONVERTER(rnn)
USE_TRT_CONVERTER(fill_constant_batch_size_like)
2353
USE_TRT_CONVERTER(transformer_input_convert)
C
ccrrong 已提交
2354
USE_TRT_CONVERTER(cast)
2355 2356
USE_TRT_CONVERTER(recover_padding)
USE_TRT_CONVERTER(remove_padding)
C
ccrrong 已提交
2357
USE_TRT_CONVERTER(equal);
2358 2359
USE_TRT_CONVERTER(top_k)
USE_TRT_CONVERTER(top_k_v2)
2360
USE_TRT_CONVERTER(range)
2361 2362
USE_TRT_CONVERTER(squeeze2)
USE_TRT_CONVERTER(unsqueeze2)
2363 2364
USE_TRT_CONVERTER(sum)
USE_TRT_CONVERTER(shape)
2365
USE_TRT_CONVERTER(fill_constant)
2366
USE_TRT_CONVERTER(fused_token_prune)
2367
USE_TRT_CONVERTER(celu)
W
wenbin 已提交
2368
USE_TRT_CONVERTER(layernorm_shift_partition)
W
Wang Bojun 已提交
2369
USE_TRT_CONVERTER(reverse_roll)
W
wenbin 已提交
2370
USE_TRT_CONVERTER(preln_layernorm_shift_partition)
W
Wang Bojun 已提交
2371
USE_TRT_CONVERTER(merge_layernorm)
W
wenbin 已提交
2372
USE_TRT_CONVERTER(skip_merge_layernorm)
W
weishengying 已提交
2373 2374
USE_TRT_CONVERTER(generic_plugin_creater)
USE_TRT_CONVERTER(custom_plugin_creater)
2375 2376
USE_TRT_CONVERTER(tanh_shrink)
USE_TRT_CONVERTER(logsigmoid)
2377
USE_TRT_CONVERTER(lookup_table)
2378
USE_TRT_CONVERTER(expand_v2)
2379
USE_TRT_CONVERTER(take_along_axis)
2380 2381 2382 2383
#if PADDLE_WITH_CUSPARSELT && IS_TRT_VERSION_GE(8000)
USE_TRT_CONVERTER(sparse_fc)
USE_TRT_CONVERTER(sparse_multihead_matmul)
#endif
2384
#endif
W
Wilber 已提交
2385 2386 2387 2388 2389 2390

namespace paddle_infer {

Predictor::Predictor(const Config &config) {
  const_cast<Config *>(&config)->SwitchUseFeedFetchOps(false);
  // The second parameter indicates that the discard log is not printed
2391 2392 2393 2394 2395 2396 2397 2398 2399 2400
  if (config.use_onnxruntime()) {
#ifdef PADDLE_WITH_ONNXRUNTIME
    if (config.use_gpu()) {
      LOG(WARNING) << "The current ONNXRuntime backend doesn't support GPU,"
                      "and it falls back to use Paddle Inference.";
    } else if (!paddle::CheckConvertToONNX(config)) {
      LOG(WARNING)
          << "Paddle2ONNX do't support convert the Model, fall back to using "
             "Paddle Inference.";
    } else {
C
ccrrong 已提交
2401 2402 2403 2404
      predictor_ =
          paddle::CreatePaddlePredictor<Config,
                                        paddle::PaddleEngineKind::kONNXRuntime>(
              config);
2405 2406 2407 2408 2409 2410 2411 2412 2413
      return;
    }
#else
    LOG(WARNING)
        << "The onnxruntime backend isn't enabled,"
           " and please re-compile Paddle with WITH_ONNXRUNTIME option,"
           "fall back to using Paddle Inference.";
#endif
  }
C
ccrrong 已提交
2414 2415 2416 2417
  predictor_ =
      paddle::CreatePaddlePredictor<Config,
                                    paddle::PaddleEngineKind::kAnalysis>(
          config);
W
Wilber 已提交
2418 2419 2420 2421 2422
}

std::vector<std::string> Predictor::GetInputNames() {
  return predictor_->GetInputNames();
}
2423 2424 2425 2426

std::map<std::string, DataType> Predictor::GetInputTypes() {
  return predictor_->GetInputTypes();
}
W
Wilber 已提交
2427 2428

std::unique_ptr<Tensor> Predictor::GetInputHandle(const std::string &name) {
2429
  return predictor_->GetInputTensor(name);
W
Wilber 已提交
2430 2431 2432 2433 2434 2435 2436
}

std::vector<std::string> Predictor::GetOutputNames() {
  return predictor_->GetOutputNames();
}

std::unique_ptr<Tensor> Predictor::GetOutputHandle(const std::string &name) {
2437
  return predictor_->GetOutputTensor(name);
W
Wilber 已提交
2438 2439 2440 2441
}

bool Predictor::Run() { return predictor_->ZeroCopyRun(); }

2442 2443
std::unique_ptr<Predictor> Predictor::Clone(void *stream) {
  auto analysis_pred = predictor_->Clone(stream);
W
Wilber 已提交
2444 2445 2446 2447 2448 2449 2450 2451
  std::unique_ptr<Predictor> pred(new Predictor(std::move(analysis_pred)));
  return pred;
}

void Predictor::ClearIntermediateTensor() {
  predictor_->ClearIntermediateTensor();
}

2452 2453
uint64_t Predictor::TryShrinkMemory() { return predictor_->TryShrinkMemory(); }

2454 2455 2456 2457
void Predictor::RegisterOutputHook(const Exp_OutputHookFunc &hookfunc) {
  predictor_->RegisterOutputHook(hookfunc);
}

2458 2459
void *Predictor::GetExecStream() const { return predictor_->GetExecStream(); }

W
Wilber 已提交
2460 2461 2462 2463 2464 2465 2466 2467 2468 2469 2470 2471 2472 2473 2474 2475 2476 2477
int GetNumBytesOfDataType(DataType dtype) {
  switch (dtype) {
    case DataType::FLOAT32:
      return sizeof(float);
    case DataType::INT64:
      return sizeof(int64_t);
    case DataType::INT32:
      return sizeof(int32_t);
    case DataType::UINT8:
      return sizeof(uint8_t);
    default:
      assert(false);
      return -1;
  }
}

std::string GetVersion() { return paddle::get_version(); }

2478 2479 2480 2481 2482 2483 2484 2485 2486 2487 2488 2489 2490 2491 2492 2493
std::tuple<int, int, int> GetTrtCompileVersion() {
#ifdef PADDLE_WITH_TENSORRT
  return paddle::inference::tensorrt::GetTrtCompileVersion();
#else
  return std::tuple<int, int, int>{0, 0, 0};
#endif
}

std::tuple<int, int, int> GetTrtRuntimeVersion() {
#ifdef PADDLE_WITH_TENSORRT
  return paddle::inference::tensorrt::GetTrtRuntimeVersion();
#else
  return std::tuple<int, int, int>{0, 0, 0};
#endif
}

W
Wilber 已提交
2494 2495 2496 2497
std::string UpdateDllFlag(const char *name, const char *value) {
  return paddle::UpdateDllFlag(name, value);
}

2498 2499 2500 2501 2502
void ConvertToMixedPrecision(const std::string &model_file,
                             const std::string &params_file,
                             const std::string &mixed_model_file,
                             const std::string &mixed_params_file,
                             PrecisionType mixed_precision,
2503
                             paddle_infer::PlaceType backend,
2504 2505 2506 2507 2508 2509 2510 2511 2512 2513 2514 2515 2516 2517
                             bool keep_io_types,
                             std::unordered_set<std::string> black_list) {
  auto phi_backend = paddle::ConvertBackend(backend);
  auto phi_precision = paddle::ConvertPrecision(mixed_precision);
  paddle::inference::analysis::ConvertToMixedPrecision(model_file,
                                                       params_file,
                                                       mixed_model_file,
                                                       mixed_params_file,
                                                       phi_precision,
                                                       phi_backend,
                                                       keep_io_types,
                                                       black_list);
}

W
Wilber 已提交
2518 2519 2520 2521 2522 2523 2524 2525 2526 2527 2528
}  // namespace paddle_infer

namespace paddle_infer {
std::shared_ptr<Predictor> CreatePredictor(const Config &config) {  // NOLINT
  std::shared_ptr<Predictor> predictor(new Predictor(config));
  return predictor;
}

namespace services {
PredictorPool::PredictorPool(const Config &config, size_t size) {
  PADDLE_ENFORCE_GE(
C
ccrrong 已提交
2529 2530
      size,
      1UL,
W
Wilber 已提交
2531 2532 2533 2534 2535 2536 2537 2538
      paddle::platform::errors::InvalidArgument(
          "The predictor pool size should be greater than 1, but it's (%d)",
          size));
  Config copy_config(config);
  main_pred_.reset(new Predictor(config));
  for (size_t i = 0; i < size - 1; i++) {
    if (config.tensorrt_engine_enabled()) {
      Config config_tmp(copy_config);
2539
      preds_.emplace_back(new Predictor(config_tmp));
W
Wilber 已提交
2540
    } else {
2541
      preds_.emplace_back(main_pred_->Clone());
W
Wilber 已提交
2542 2543 2544 2545 2546 2547
    }
  }
}

Predictor *PredictorPool::Retrive(size_t idx) {
  PADDLE_ENFORCE_LT(
C
ccrrong 已提交
2548 2549
      idx,
      preds_.size() + 1,
W
Wilber 已提交
2550
      paddle::platform::errors::InvalidArgument(
C
ccrrong 已提交
2551 2552
          "There are (%d) predictors in the pool, but the idx is (%d)",
          idx,
W
Wilber 已提交
2553 2554 2555 2556 2557 2558 2559
          preds_.size() + 1));
  if (idx == 0) {
    return main_pred_.get();
  }
  return preds_[idx - 1].get();
}
}  // namespace services
W
Wilber 已提交
2560 2561 2562 2563 2564 2565 2566 2567 2568 2569 2570 2571 2572 2573 2574 2575 2576 2577 2578 2579

namespace experimental {

// Note: Can only be used under thread_local semantics.
bool InternalUtils::RunWithExternalStream(paddle_infer::Predictor *p,
                                          cudaStream_t stream) {
#ifdef PADDLE_WITH_CUDA
  auto pred = dynamic_cast<paddle::AnalysisPredictor *>(p->predictor_.get());
  return pred->ExpRunWithExternalStream(stream);
#endif
  return false;
}
bool InternalUtils::RunWithExternalStream(paddle_infer::Predictor *p,
                                          hipStream_t stream) {
#ifdef PADDLE_WITH_HIP
  auto pred = dynamic_cast<paddle::AnalysisPredictor *>(p->predictor_.get());
  return pred->ExpRunWithExternalStream(stream);
#endif
  return false;
}
W
Wilber 已提交
2580

2581 2582 2583 2584 2585 2586
void InternalUtils::UpdateConfigInterleaved(paddle_infer::Config *c,
                                            bool with_interleaved) {
#ifdef PADDLE_WITH_CUDA
  c->trt_with_interleaved_ = with_interleaved;
#endif
}
W
Wilber 已提交
2587

2588 2589 2590 2591 2592 2593 2594 2595 2596 2597 2598 2599 2600 2601
void InternalUtils::SetTransformerPosid(
    paddle_infer::Config *c, const std::string &tensorrt_transformer_posid) {
#ifdef PADDLE_WITH_CUDA
  c->tensorrt_transformer_posid_ = tensorrt_transformer_posid;
#endif
}

void InternalUtils::SetTransformerMaskid(
    paddle_infer::Config *c, const std::string &tensorrt_transformer_maskid) {
#ifdef PADDLE_WITH_CUDA
  c->tensorrt_transformer_maskid_ = tensorrt_transformer_maskid;
#endif
}

W
Wilber 已提交
2602 2603 2604 2605 2606
void InternalUtils::SyncStream(paddle_infer::Predictor *p) {
#ifdef PADDLE_WITH_CUDA
  auto *pred = dynamic_cast<paddle::AnalysisPredictor *>(p->predictor_.get());
  paddle::platform::DeviceContextPool &pool =
      paddle::platform::DeviceContextPool::Instance();
L
Leo Chen 已提交
2607
  auto *dev_ctx = reinterpret_cast<phi::GPUContext *>(pool.Get(pred->place_));
W
Wilber 已提交
2608 2609 2610 2611 2612 2613 2614 2615 2616
  cudaStreamSynchronize(dev_ctx->stream());
#endif
}
void InternalUtils::SyncStream(cudaStream_t stream) {
#ifdef PADDLE_WITH_CUDA
  cudaStreamSynchronize(stream);
#endif
}

W
Wilber 已提交
2617
}  // namespace experimental
W
Wilber 已提交
2618
}  // namespace paddle_infer