diff --git a/cmake/external/anakin.cmake b/cmake/external/anakin.cmake index d205e3958234cabfbfeba8c3d725fe618ce48ace..fb3d8ef8d53436f387acc3069a0eb887e6f07c59 100644 --- a/cmake/external/anakin.cmake +++ b/cmake/external/anakin.cmake @@ -7,7 +7,17 @@ set(ANAKIN_INSTALL_DIR "${THIRD_PARTY_PATH}/install/anakin" CACHE PATH set(ANAKIN_INCLUDE "${ANAKIN_INSTALL_DIR}" CACHE STRING "root of Anakin header files") set(ANAKIN_LIBRARY "${ANAKIN_INSTALL_DIR}" CACHE STRING "path of Anakin library") -set(ANAKIN_COMPILE_EXTRA_FLAGS -Wno-error=unused-variable -Wno-error=format-extra-args -Wno-error=comment -Wno-error=format -Wno-error=switch -Wno-error=return-type -Wno-error=non-virtual-dtor -Wno-reorder -Wno-error=cpp) +set(ANAKIN_COMPILE_EXTRA_FLAGS + -Wno-error=unused-variable -Wno-unused-variable + -Wno-error=format-extra-args -Wno-format-extra-args + -Wno-error=comment -Wno-comment + -Wno-error=format -Wno-format + -Wno-error=switch -Wno-switch + -Wno-error=return-type -Wno-return-type + -Wno-error=non-virtual-dtor -Wno-non-virtual-dtor + -Wno-sign-compare + -Wno-reorder + -Wno-error=cpp) set(ANAKIN_LIBRARY_URL "https://github.com/pangge/Anakin/releases/download/3.0/anakin_release_simple.tar.gz") diff --git a/cmake/version.cmake b/cmake/version.cmake index cde650128a068faf32f4abfff5cdfdeb656d8577..79b8e8ac496250d85427b77fbd6a9924a962a15b 100644 --- a/cmake/version.cmake +++ b/cmake/version.cmake @@ -1,16 +1,21 @@ # Get the latest git tag. set(PADDLE_VERSION $ENV{PADDLE_VERSION}) set(tmp_version "HEAD") +set(TAG_VERSION_REGEX "[0-9]+\\.[0-9]+\\.[0-9]+(\\.(a|b|rc)\\.[0-9]+)?") +set(COMMIT_VERSION_REGEX "[0-9a-f]+[0-9a-f]+[0-9a-f]+[0-9a-f]+[0-9a-f]+") while ("${PADDLE_VERSION}" STREQUAL "") execute_process( - COMMAND ${GIT_EXECUTABLE} describe --tags --abbrev=0 ${tmp_version} + COMMAND ${GIT_EXECUTABLE} describe --tags --abbrev=0 --always ${tmp_version} WORKING_DIRECTORY ${PADDLE_SOURCE_DIR} OUTPUT_VARIABLE GIT_TAG_NAME RESULT_VARIABLE GIT_RESULT ERROR_QUIET OUTPUT_STRIP_TRAILING_WHITESPACE) if (NOT ${GIT_RESULT}) # Check the tag is a correct version - if (${GIT_TAG_NAME} MATCHES "v[0-9]+\\.[0-9]+\\.[0-9]+(\\.(a|b|rc)\\.[0-9]+)?") + if (${GIT_TAG_NAME} MATCHES "${COMMIT_VERSION_REGEX}") + # if no tag was found, set PADDLE_VERSION to latest + set(PADDLE_VERSION "latest") + elseif (${GIT_TAG_NAME} MATCHES "v${TAG_VERSION_REGEX}") string(REPLACE "v" "" PADDLE_VERSION ${GIT_TAG_NAME}) else() # otherwise, get the previous git tag name. set(tmp_version "${GIT_TAG_NAME}~1") diff --git a/doc/v2/howto/capi/workflow_of_capi_cn.md b/doc/v2/howto/capi/workflow_of_capi_cn.md index 3acdbae28e9b35f8a9104a89c9a5799f8c892334..db1568a2afbea3cca0d4e1fe053ba9536a60ab3d 100644 --- a/doc/v2/howto/capi/workflow_of_capi_cn.md +++ b/doc/v2/howto/capi/workflow_of_capi_cn.md @@ -28,9 +28,9 @@ ### 准备预测模型 -准备预测模型部分,我们以手写数字识别任务为例进行介绍。手写数字识别任务定义了一个含有[两个隐层的简单全连接网络](https://github.com/PaddlePaddle/book/blob/develop/02.recognize_digits/README.cn.md#softmax回归softmax-regression),网络接受一幅图片作为输入,将图片分类到 0 ~ 9 类别标签之一。完整代码可以查看[此目录](https://github.com/PaddlePaddle/Paddle/tree/develop/paddle/capi/examples/model_inference/dense) 中的相关脚本。 +准备预测模型部分,我们以手写数字识别任务为例进行介绍。手写数字识别任务定义了一个含有[两个隐层的简单全连接网络](https://github.com/PaddlePaddle/book/blob/develop/02.recognize_digits/README.cn.md#softmax回归softmax-regression),网络接受一幅图片作为输入,将图片分类到 0 ~ 9 类别标签之一。完整代码可以查看[此目录](https://github.com/PaddlePaddle/Paddle/tree/develop/paddle/legacy/capi/examples/model_inference/dense) 中的相关脚本。 -调用C-API开发预测程序需要一个训练好的模型,运行[MNIST手写数字识别目录](https://github.com/PaddlePaddle/Paddle/tree/develop/paddle/capi/examples/model_inference/dense)下的[mnist_v2.py](https://github.com/PaddlePaddle/Paddle/blob/develop/paddle/capi/examples/model_inference/dense/mnist_v2.py)脚本,在终端执行`python mnist_v2.py`,会使用 PaddlePaddle 内置的 [MNIST 数据集](http://yann.lecun.com/exdb/mnist/)进行训练。训练好的模型默认保存在当前运行目录下的`models`目录中。 +调用C-API开发预测程序需要一个训练好的模型,运行[MNIST手写数字识别目录](https://github.com/PaddlePaddle/Paddle/tree/develop/paddle/legacy/capi/examples/model_inference/dense)下的[mnist_v2.py](https://github.com/PaddlePaddle/Paddle/blob/develop/paddle/legacy/capi/examples/model_inference/dense/mnist_v2.py)脚本,在终端执行`python mnist_v2.py`,会使用 PaddlePaddle 内置的 [MNIST 数据集](http://yann.lecun.com/exdb/mnist/)进行训练。训练好的模型默认保存在当前运行目录下的`models`目录中。 下面,我们将训练结束后存储下来的模型转换成预测模型。 @@ -48,7 +48,7 @@ dump_v2_config(predict, "trainer_config.bin", True) ``` - 对[手写数字识别](https://github.com/PaddlePaddle/Paddle/tree/develop/paddle/capi/examples/model_inference/dense)这个示例,[`mnist_v2.py`](https://github.com/PaddlePaddle/Paddle/tree/develop/paddle/capi/examples/model_inference/dense/mnist_v2.py)脚本集成了序列化神经网络结构的过程,可以直接运行 `python mnist_v2.py --task dump_config` 对神经网络结构进行序列化,结果会写入当前运行目录下的`trainer_config.bin`文件中。 + 对[手写数字识别](https://github.com/PaddlePaddle/Paddle/tree/develop/paddle/legacy/capi/examples/model_inference/dense)这个示例,[`mnist_v2.py`](https://github.com/PaddlePaddle/Paddle/tree/develop/paddle/legacy/capi/examples/model_inference/dense/mnist_v2.py)脚本集成了序列化神经网络结构的过程,可以直接运行 `python mnist_v2.py --task dump_config` 对神经网络结构进行序列化,结果会写入当前运行目录下的`trainer_config.bin`文件中。 使用这种方式,需要**在运行时将神经网络的多个可学习参数放在同一个目录中**,C-API可以通过分别指定序列化后的网络结构文件和参数目录来加载训练好的模型。 @@ -68,7 +68,7 @@ merge_v2_model(net, param_file, output_file) ``` - 对[手写数字识别](https://github.com/PaddlePaddle/Paddle/tree/develop/paddle/capi/examples/model_inference/dense)这个示例,可直接运行 `python` [merge_v2_model.py](https://github.com/PaddlePaddle/Paddle/tree/develop/paddle/capi/examples/model_inference/dense/merge_v2_model.py)。序列化结果会写入当前运行目录下的`output.paddle.model`文件中。使用这种方式,运行时C-API可以通过指定`output.paddle.model`文件的路径来加载预测模型。 + 对[手写数字识别](https://github.com/PaddlePaddle/Paddle/tree/develop/paddle/legacy/capi/examples/model_inference/dense)这个示例,可直接运行 `python` [merge_v2_model.py](https://github.com/PaddlePaddle/Paddle/tree/develop/paddle/legacy/capi/examples/model_inference/dense/merge_v2_model.py)。序列化结果会写入当前运行目录下的`output.paddle.model`文件中。使用这种方式,运行时C-API可以通过指定`output.paddle.model`文件的路径来加载预测模型。 #### 注意事项 1. 为使用C-API,在调用`dump_v2_config`序列化神经网络结构时,参数`binary`必须指定为`True`。 @@ -77,10 +77,10 @@ ### 编写预测代码 -预测代码更多详细示例代码请参考[C-API使用示例](https://github.com/PaddlePaddle/Paddle/tree/develop/paddle/capi/examples/model_inference) 目录下的代码示例。这一节对图1中预测代码编写的5个步骤进行介绍和说明。 +预测代码更多详细示例代码请参考[C-API使用示例](https://github.com/PaddlePaddle/Paddle/tree/develop/paddle/legacy/capi/examples/model_inference) 目录下的代码示例。这一节对图1中预测代码编写的5个步骤进行介绍和说明。 #### step 1. 初始化PaddlePaddle运行环境 -第一步需调用[`paddle_init`](https://github.com/PaddlePaddle/Paddle/blob/develop/paddle/capi/main.h#L27) 初始化PaddlePaddle运行环境,该接口接受两个参数:参数的个数和参数列表。 +第一步需调用[`paddle_init`](https://github.com/PaddlePaddle/Paddle/blob/develop/paddle/legacy/capi/main.h#L27) 初始化PaddlePaddle运行环境,该接口接受两个参数:参数的个数和参数列表。 #### step2. 加载模型 @@ -88,8 +88,8 @@ 概念上,在 PaddlePaddle 内部,一个GradientMachine类的对象管理着一组计算层(PaddlePaddle Layers)来完成前向和反向计算,并处理与之相关的所有细节。在调用C-API预测时,只需进行前向计算而无需调用反向计算。这篇文档之后部分会使用`gradient machine`来特指调用PaddlePaddle C-API创建的GradientMachine类的对象。每一个 `gradient machine` 都会管理维护一份训练好的模型,下面是C-API提供的,两种常用的模型加载方式: -1. 调用[`paddle_gradient_machine_load_parameter_from_disk`](https://github.com/PaddlePaddle/Paddle/blob/develop/paddle/capi/gradient_machine.h#L61)接口,从磁盘加载预测模型。这时`gradient machine`会独立拥有一份训练好的模型; -1. 调用[`paddle_gradient_machine_create_shared_param`](https://github.com/PaddlePaddle/Paddle/blob/develop/paddle/capi/gradient_machine.h#L88)接口,与其它`gradient machine`的共享已经加载的预测模型。这种情况多出现在使用多线程预测时,通过多个线程共享同一个模型来减少内存开销。可参考[此示例](https://github.com/PaddlePaddle/Paddle/blob/develop/paddle/capi/examples/model_inference/multi_thread/main.c)。 +1. 调用[`paddle_gradient_machine_load_parameter_from_disk`](https://github.com/PaddlePaddle/Paddle/blob/develop/paddle/legacy/capi/gradient_machine.h#L61)接口,从磁盘加载预测模型。这时`gradient machine`会独立拥有一份训练好的模型; +1. 调用[`paddle_gradient_machine_create_shared_param`](https://github.com/PaddlePaddle/Paddle/blob/develop/paddle/legacy/capi/gradient_machine.h#L88)接口,与其它`gradient machine`的共享已经加载的预测模型。这种情况多出现在使用多线程预测时,通过多个线程共享同一个模型来减少内存开销。可参考[此示例](https://github.com/PaddlePaddle/Paddle/blob/develop/paddle/legacy/capi/examples/model_inference/multi_thread/main.c)。 - 注意事项 @@ -117,7 +117,7 @@ C-API支持的所有输入数据类型和他们的组织方式,请参考“输 #### step 4. 前向计算 -完成上述准备之后,通过调用 [`paddle_gradient_machine_forward`](https://github.com/PaddlePaddle/Paddle/blob/develop/paddle/capi/gradient_machine.h#L73) 接口完成神经网络的前向计算。 +完成上述准备之后,通过调用 [`paddle_gradient_machine_forward`](https://github.com/PaddlePaddle/Paddle/blob/develop/paddle/legacy/capi/gradient_machine.h#L73) 接口完成神经网络的前向计算。 #### step 5. 清理 diff --git a/paddle/contrib/inference/test_paddle_inference_api_impl.cc b/paddle/contrib/inference/test_paddle_inference_api_impl.cc index 88c4e665a3daed0ed34b23b75d360acbd586401f..c3649dcb96c77f449d876bef34c4aea7afb31daa 100644 --- a/paddle/contrib/inference/test_paddle_inference_api_impl.cc +++ b/paddle/contrib/inference/test_paddle_inference_api_impl.cc @@ -249,7 +249,7 @@ void MainThreadsImageClassification(bool use_gpu) { const size_t len = local_outputs[0].data.length(); float* data = static_cast(local_outputs[0].data.data()); float* ref_data = refs[tid].data(); - EXPECT_EQ(refs[tid].numel(), len / sizeof(float)); + EXPECT_EQ((size_t)refs[tid].numel(), len / sizeof(float)); for (int i = 0; i < refs[tid].numel(); ++i) { EXPECT_NEAR(ref_data[i], data[i], 1e-3); } diff --git a/paddle/fluid/framework/CMakeLists.txt b/paddle/fluid/framework/CMakeLists.txt index 397c9f739452e5130dad28a763b92cf76720ec61..ec252929d5584c211cea7fa52004ecdfdf586a85 100644 --- a/paddle/fluid/framework/CMakeLists.txt +++ b/paddle/fluid/framework/CMakeLists.txt @@ -27,6 +27,7 @@ cc_test(lod_tensor_test SRCS lod_tensor_test.cc DEPS lod_tensor memory) nv_test(lod_tensor_gpu_test SRCS lod_tensor_test.cu DEPS lod_tensor) cc_library(reader SRCS reader.cc DEPS lod_tensor ddim) +cc_test(reader_test SRCS reader_test.cc DEPS reader) cc_test(variable_test SRCS variable_test.cc) diff --git a/paddle/fluid/framework/op_info.cc b/paddle/fluid/framework/op_info.cc index f1261dee0319440995951d1bee145404186a8ad4..af75baa5c4b98f7d092834c05eb57e9c7e131b29 100644 --- a/paddle/fluid/framework/op_info.cc +++ b/paddle/fluid/framework/op_info.cc @@ -21,8 +21,8 @@ namespace framework { // a static local variable is already being initialized. // https://stackoverflow.com/questions/11711920/how-to-implement-multithread-safe-singleton-in-c11-without-using-mutex OpInfoMap& OpInfoMap::Instance() { - static OpInfoMap* g_op_info_map = new OpInfoMap(); - return *g_op_info_map; + static OpInfoMap g_op_info_map; + return g_op_info_map; } } // namespace framework } // namespace paddle diff --git a/paddle/fluid/framework/reader.cc b/paddle/fluid/framework/reader.cc index 0b36f1116d15004b355e854e101abb9ad3297836..5897d320a8b7e5af541098cadff8e78f8324949c 100644 --- a/paddle/fluid/framework/reader.cc +++ b/paddle/fluid/framework/reader.cc @@ -13,29 +13,61 @@ // limitations under the License. #include "paddle/fluid/framework/reader.h" +#include namespace paddle { namespace framework { -ReaderBase::~ReaderBase() {} -FileReader::FileReader(const std::vector &dims) : dims_(dims) {} - -void FileReader::ReadNext(std::vector *out) { +void ReaderBase::ReadNext(std::vector *out) { + std::lock_guard lock(mu_); + PADDLE_ENFORCE_EQ(status_, ReaderStatus::kRunning); ReadNextImpl(out); - if (out->empty()) { - return; - } +} - PADDLE_ENFORCE_EQ(out->size(), dims_.size()); - for (size_t i = 0; i < dims_.size(); ++i) { - auto &actual = (*out)[i].dims(); - auto &expect = dims_[i]; +void ReaderBase::InsertDecoratedReader( + const std::shared_ptr &decorated_reader) { + std::lock_guard guard(mu_); + decorated_readers_.emplace_back(decorated_reader); +} - PADDLE_ENFORCE_EQ(actual.size(), expect.size()); - for (int j = 0; j < actual.size(); ++j) { - // PADDLE_ENFORCE(actual[i] == expect[i] || expect[i] == -1); +std::unordered_set ReaderBase::GetEndPoints() { + std::unordered_set result; + std::deque queue; + queue.emplace_back(this); + while (!queue.empty()) { // BFS search + auto *front = queue.front(); + queue.pop_front(); + if (front->decorated_readers_.empty()) { + result.emplace(front); + } else { + for (auto &reader : front->decorated_readers_) { + if (auto *reader_ptr = reader.lock().get()) { + queue.emplace_back(reader_ptr); + } + } } } + + return result; } + +void ReaderBase::Shutdown() { + std::lock_guard lock(mu_); + if (status_ != ReaderStatus::kStopped) { + ShutdownImpl(); + status_ = ReaderStatus::kStopped; + } +} + +void ReaderBase::Start() { + std::lock_guard lock(mu_); + if (status_ != ReaderStatus::kRunning) { + StartImpl(); + status_ = ReaderStatus::kRunning; + } +} + +ReaderBase::~ReaderBase() { Shutdown(); } + } // namespace framework } // namespace paddle diff --git a/paddle/fluid/framework/reader.h b/paddle/fluid/framework/reader.h index 64d4ceab624312ed366d7e835072899f1f033a88..6c4432cb7a70853e19460b1980d621c02caed970 100644 --- a/paddle/fluid/framework/reader.h +++ b/paddle/fluid/framework/reader.h @@ -15,6 +15,7 @@ #pragma once #include +#include #include #include "paddle/fluid/framework/ddim.h" @@ -24,61 +25,116 @@ namespace paddle { namespace framework { +enum ReaderStatus { kRunning, kStopped }; + class ReaderBase { public: - virtual void ReadNext(std::vector* out) = 0; + void ReadNext(std::vector* out); + + void Shutdown(); - virtual void ReInit() = 0; + void Start(); + + // Return the readers which are the end of decorating chain. Basically + // they are readers just before read op. + std::unordered_set GetEndPoints(); virtual ~ReaderBase(); + + protected: + virtual void ReadNextImpl(std::vector* out) = 0; + + virtual void ShutdownImpl() {} + + virtual void StartImpl() {} + + ReaderStatus status_{kRunning}; + + mutable std::mutex mu_; + + private: + friend class DecoratedReader; + // These methods can be only invoked inside DecoratedReader to record the + // decorating chain. + void InsertDecoratedReader( + const std::shared_ptr& decorated_reader); + // A set of which readers that decorated this reader. + std::vector> decorated_readers_; }; -class DecoratedReader : public ReaderBase { +class DecoratedReader : public ReaderBase, + public std::enable_shared_from_this { public: explicit DecoratedReader(const std::shared_ptr& reader) : ReaderBase(), reader_(reader) { PADDLE_ENFORCE_NOT_NULL(reader_); } - void ReInit() override { reader_->ReInit(); } + void RegisterDecorateChain() { + reader_->InsertDecoratedReader(shared_from_this()); + } protected: - std::shared_ptr reader_; -}; - -class FileReader : public ReaderBase { - public: - explicit FileReader(const std::vector& dims); - - void ReadNext(std::vector* out) override; + void ShutdownImpl() override { reader_->Shutdown(); } - protected: - virtual void ReadNextImpl(std::vector* out) = 0; + void StartImpl() override { reader_->Start(); } - private: - std::vector dims_; + std::shared_ptr reader_; }; +// FileReader is just a conceptual class. +class FileReader : public ReaderBase {}; + // The ReaderHolder is used as reader' unified wrapper, // making it easier to access different type reader in Variables. class ReaderHolder { public: - void Reset(ReaderBase* reader) { reader_.reset(reader); } + template + void Reset(const std::shared_ptr& reader) { + auto reader_base = std::dynamic_pointer_cast(reader); + PADDLE_ENFORCE_NOT_NULL(reader_base); + reader_ = reader_base; + } - std::shared_ptr Get() const { return reader_; } + const std::shared_ptr& Get() const { return reader_; } void ReadNext(std::vector* out) { PADDLE_ENFORCE_NOT_NULL(reader_); reader_->ReadNext(out); } - void ReInit() { + + void ResetAll() { + auto end_readers = reader_->GetEndPoints(); + for (auto* reader : end_readers) { + reader->Shutdown(); + } + for (auto* reader : end_readers) { + reader->Start(); + } + } + + void Shutdown() { + PADDLE_ENFORCE_NOT_NULL(reader_); + reader_->Shutdown(); + } + + void Start() { PADDLE_ENFORCE_NOT_NULL(reader_); - reader_->ReInit(); + reader_->Start(); } + operator const std::shared_ptr&() const { return this->reader_; } + private: std::shared_ptr reader_; }; +template +inline std::shared_ptr MakeDecoratedReader(ARGS&&... args) { + std::shared_ptr reader(new T(std::forward(args)...)); + reader->RegisterDecorateChain(); + return reader; +} + } // namespace framework } // namespace paddle diff --git a/paddle/fluid/framework/reader_test.cc b/paddle/fluid/framework/reader_test.cc new file mode 100644 index 0000000000000000000000000000000000000000..f0d07cb7c1367576084b9494e7758103bb45d1e5 --- /dev/null +++ b/paddle/fluid/framework/reader_test.cc @@ -0,0 +1,52 @@ +// 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. + +#include "paddle/fluid/framework/reader.h" +#include +#include "gtest/gtest.h" + +class StubDecoratedReader : public paddle::framework::DecoratedReader { + public: + explicit StubDecoratedReader(const std::shared_ptr &reader) + : DecoratedReader(reader) {} + + void ReadNextImpl(std::vector *out) override {} +}; + +class StubRootReader : public paddle::framework::ReaderBase { + public: + void ReadNextImpl(std::vector *out) override {} +}; + +TEST(READER, decorate_chain) { + auto root = std::make_shared(); + auto end_point1 = + paddle::framework::MakeDecoratedReader(root); + auto end_point2 = + paddle::framework::MakeDecoratedReader(root); + + { + auto endpoints = root->GetEndPoints(); + ASSERT_EQ(endpoints.size(), 2U); + ASSERT_NE(endpoints.count(end_point1.get()), 0); + ASSERT_NE(endpoints.count(end_point2.get()), 0); + } + + { + auto end_point3 = + paddle::framework::MakeDecoratedReader(root); + ASSERT_EQ(root->GetEndPoints().size(), 3U); + } + { ASSERT_EQ(root->GetEndPoints().size(), 2U); } +} diff --git a/paddle/fluid/inference/analysis/fluid_to_data_flow_graph_pass_tester.cc b/paddle/fluid/inference/analysis/fluid_to_data_flow_graph_pass_tester.cc index cfbbc284e491bd62a6108d6d14e7896a57d1b63e..cbca5abdd5fff1672ba5d47a8876489c54ad6947 100644 --- a/paddle/fluid/inference/analysis/fluid_to_data_flow_graph_pass_tester.cc +++ b/paddle/fluid/inference/analysis/fluid_to_data_flow_graph_pass_tester.cc @@ -27,7 +27,7 @@ TEST_F(DFG_Tester, Init) { DataFlowGraph graph; pass.Run(&graph); // Analysis is sensitive to ProgramDesc, careful to change the original model. - ASSERT_EQ(graph.nodes.size(), 37); + ASSERT_EQ(graph.nodes.size(), 37UL); pass.Finalize(); LOG(INFO) << '\n' << graph.DotString(); } diff --git a/paddle/fluid/inference/analysis/subgraph_splitter_tester.cc b/paddle/fluid/inference/analysis/subgraph_splitter_tester.cc index 8134494f8bccb132f2ed7d1ba1fb615a298596ed..67dd4da54b95add703428e1fded61065f60353e8 100644 --- a/paddle/fluid/inference/analysis/subgraph_splitter_tester.cc +++ b/paddle/fluid/inference/analysis/subgraph_splitter_tester.cc @@ -82,7 +82,7 @@ TEST_F(DFG_Tester, Fuse) { // At least one nodes should be deleted. ASSERT_EQ(dfg.nodes.size(), count0 + 1); // added a new FunctionBlock - ASSERT_EQ(6UL, count1); + ASSERT_EQ(6, count1); } } // namespace analysis diff --git a/paddle/fluid/memory/detail/buddy_allocator.cc b/paddle/fluid/memory/detail/buddy_allocator.cc index 4194ba197948b47003863196efdac1c08a7ae4f6..01a8501dd4abe73cbc71dc4c08734cae66df08ef 100644 --- a/paddle/fluid/memory/detail/buddy_allocator.cc +++ b/paddle/fluid/memory/detail/buddy_allocator.cc @@ -19,8 +19,9 @@ namespace paddle { namespace memory { namespace detail { -BuddyAllocator::BuddyAllocator(SystemAllocator* system_allocator, - size_t min_chunk_size, size_t max_chunk_size) +BuddyAllocator::BuddyAllocator( + std::unique_ptr system_allocator, size_t min_chunk_size, + size_t max_chunk_size) : min_chunk_size_(min_chunk_size), max_chunk_size_(max_chunk_size), cache_(system_allocator->UseGpu()), diff --git a/paddle/fluid/memory/detail/buddy_allocator.h b/paddle/fluid/memory/detail/buddy_allocator.h index 2f39d774d6fb6a2bc37877eb2f8b90bebd3cda28..f0c83efc23ce39c4fc89296d672e1e55751851bf 100644 --- a/paddle/fluid/memory/detail/buddy_allocator.h +++ b/paddle/fluid/memory/detail/buddy_allocator.h @@ -14,6 +14,7 @@ limitations under the License. */ #pragma once +#include #include // NOLINT #include #include @@ -32,8 +33,8 @@ namespace detail { class BuddyAllocator { public: - BuddyAllocator(SystemAllocator* system_allocator, size_t min_chunk_size, - size_t max_chunk_size); + BuddyAllocator(std::unique_ptr system_allocator, + size_t min_chunk_size, size_t max_chunk_size); ~BuddyAllocator(); @@ -103,7 +104,7 @@ class BuddyAllocator { private: /*! Allocate CPU/GPU memory from system */ - SystemAllocator* system_allocator_; + std::unique_ptr system_allocator_; std::mutex mutex_; }; diff --git a/paddle/fluid/memory/malloc.cc b/paddle/fluid/memory/malloc.cc index bd98ed81899440a46415d30b6d74fec2dac4c155..7c800b3c164049244770ceb2070b177d8307e85e 100644 --- a/paddle/fluid/memory/malloc.cc +++ b/paddle/fluid/memory/malloc.cc @@ -12,6 +12,8 @@ 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. */ +#include + #include "paddle/fluid/memory/malloc.h" #include "glog/logging.h" @@ -34,12 +36,15 @@ namespace memory { using BuddyAllocator = detail::BuddyAllocator; BuddyAllocator* GetCPUBuddyAllocator() { + static std::once_flag init_flag; static detail::BuddyAllocator* a = nullptr; - if (a == nullptr) { - a = new detail::BuddyAllocator(new detail::CPUAllocator, - platform::CpuMinChunkSize(), - platform::CpuMaxChunkSize()); - } + + std::call_once(init_flag, []() { + a = new detail::BuddyAllocator( + std::unique_ptr(new detail::CPUAllocator), + platform::CpuMinChunkSize(), platform::CpuMaxChunkSize()); + }); + return a; } @@ -68,27 +73,33 @@ size_t Used(platform::CPUPlace place) { #ifdef PADDLE_WITH_CUDA BuddyAllocator* GetGPUBuddyAllocator(int gpu_id) { - static BuddyAllocator** as = NULL; - if (as == NULL) { + static std::once_flag init_flag; + static detail::BuddyAllocator** a_arr = nullptr; + + std::call_once(init_flag, [gpu_id]() { int gpu_num = platform::GetCUDADeviceCount(); - as = new BuddyAllocator*[gpu_num]; - for (int gpu = 0; gpu < gpu_num; gpu++) { - as[gpu] = nullptr; + PADDLE_ENFORCE(gpu_id < gpu_num, "gpu_id:%d should < gpu_num:%d", gpu_id, + gpu_num); + + a_arr = new BuddyAllocator*[gpu_num]; + for (int i = 0; i < gpu_num; i++) { + a_arr[i] = nullptr; + platform::SetDeviceId(i); + a_arr[i] = new BuddyAllocator( + std::unique_ptr(new detail::GPUAllocator(i)), + platform::GpuMinChunkSize(), platform::GpuMaxChunkSize()); + + VLOG(10) << "\n\nNOTE: each GPU device use " + << FLAGS_fraction_of_gpu_memory_to_use * 100 + << "% of GPU memory.\n" + << "You can set GFlags environment variable '" + << "FLAGS_fraction_of_gpu_memory_to_use" + << "' to change the fraction of GPU usage.\n\n"; } - } + }); + platform::SetDeviceId(gpu_id); - if (!as[gpu_id]) { - as[gpu_id] = new BuddyAllocator(new detail::GPUAllocator(gpu_id), - platform::GpuMinChunkSize(), - platform::GpuMaxChunkSize()); - VLOG(10) << "\n\nNOTE: each GPU device use " - << FLAGS_fraction_of_gpu_memory_to_use * 100 - << "% of GPU memory.\n" - << "You can set GFlags environment variable '" - << "FLAGS_fraction_of_gpu_memory_to_use" - << "' to change the fraction of GPU usage.\n\n"; - } - return as[gpu_id]; + return a_arr[gpu_id]; } template <> @@ -125,12 +136,16 @@ void Free(platform::CUDAPlace place, void* p) { } BuddyAllocator* GetCUDAPinnedBuddyAllocator() { - static BuddyAllocator* ba = NULL; - if (ba == NULL) { - ba = new BuddyAllocator(new detail::CUDAPinnedAllocator, + static std::once_flag init_flag; + static BuddyAllocator* ba = nullptr; + + std::call_once(init_flag, []() { + ba = new BuddyAllocator(std::unique_ptr( + new detail::CUDAPinnedAllocator), platform::CUDAPinnedMinChunkSize(), platform::CUDAPinnedMaxChunkSize()); - } + }); + return ba; } diff --git a/paddle/fluid/operators/batch_norm_op.cc b/paddle/fluid/operators/batch_norm_op.cc index 693bf973c2b8790d2c50cee9b86b365493e8c754..5912a1a17cbd29c3ebd83f37133c044f0905c8bd 100644 --- a/paddle/fluid/operators/batch_norm_op.cc +++ b/paddle/fluid/operators/batch_norm_op.cc @@ -216,6 +216,18 @@ class BatchNormKernel saved_mean_e.setZero(); saved_variance_e.setZero(); + EigenVectorArrayMap running_mean_arr( + mean_out->mutable_data(ctx.GetPlace()), C); + EigenVectorArrayMap running_var_arr( + variance_out->mutable_data(ctx.GetPlace()), C); + + if ((N * sample_size) == 1) { + LOG(WARNING) << "Only 1 element in normalization dimension, " + << "we skip the batch norm calculation, let y = x."; + framework::TensorCopySync(*x, ctx.GetPlace(), y); + return; + } + switch (data_layout) { case DataLayout::kNCHW: { ConstEigenArrayMap x_arr(x->data(), sample_size, N * C); @@ -247,10 +259,6 @@ class BatchNormKernel PADDLE_THROW("Unknown storage order: %s", data_layout_str); } - EigenVectorArrayMap running_mean_arr( - mean_out->mutable_data(ctx.GetPlace()), C); - EigenVectorArrayMap running_var_arr( - variance_out->mutable_data(ctx.GetPlace()), C); running_mean_arr = running_mean_arr * momentum + saved_mean_e * (1. - momentum); running_var_arr = @@ -427,6 +435,11 @@ class BatchNormGradKernel d_bias_arr.setZero(); d_scale_arr.setZero(); + if ((N * sample_size) == 1) { + framework::TensorCopySync(*d_y, ctx.GetPlace(), d_x); + return; + } + const auto scale_inv_var_nhw = scale_arr * inv_var_arr / (N * sample_size); switch (data_layout) { diff --git a/paddle/fluid/operators/batch_norm_op.cu.cc b/paddle/fluid/operators/batch_norm_op.cu.cc index 550dd32d36767f90e880415bfffaf01aeb623609..ca6cd8669352fd5814f25a04433ca97fe4abe9ff 100644 --- a/paddle/fluid/operators/batch_norm_op.cu.cc +++ b/paddle/fluid/operators/batch_norm_op.cu.cc @@ -72,6 +72,9 @@ class BatchNormKernel int N, C, H, W, D; ExtractNCWHD(x_dims, data_layout, &N, &C, &H, &W, &D); + auto *y = ctx.Output("Y"); + y->mutable_data(ctx.GetPlace()); + // ------------------- cudnn descriptors --------------------- cudnnTensorDescriptor_t data_desc_; cudnnTensorDescriptor_t bn_param_desc_; @@ -93,7 +96,7 @@ class BatchNormKernel mode_ = CUDNN_BATCHNORM_SPATIAL; #endif - VLOG(1) << "Setting descriptors."; + VLOG(3) << "Setting descriptors."; std::vector dims; std::vector strides; if (data_layout == DataLayout::kNCHW) { @@ -113,11 +116,6 @@ class BatchNormKernel const auto *scale = ctx.Input("Scale"); const auto *bias = ctx.Input("Bias"); - auto *y = ctx.Output("Y"); - - // alloc memory - y->mutable_data(ctx.GetPlace()); - auto &dev_ctx = ctx.template device_context(); auto handle = dev_ctx.cudnn_handle(); @@ -162,22 +160,28 @@ class BatchNormKernel functor(dev_ctx, saved_mean, static_cast>(0)); functor(dev_ctx, saved_variance, static_cast>(0)); - double this_factor = 1. - momentum; - - CUDNN_ENFORCE(platform::dynload::cudnnBatchNormalizationForwardTraining( - handle, mode_, CudnnDataType::kOne(), CudnnDataType::kZero(), - data_desc_, x->template data(), data_desc_, - y->template mutable_data(ctx.GetPlace()), bn_param_desc_, - scale->template data>(), - bias->template data>(), this_factor, - mean_out->template mutable_data>( - ctx.GetPlace()), - variance_out->template mutable_data>( - ctx.GetPlace()), - epsilon, saved_mean->template mutable_data>( - ctx.GetPlace()), - saved_variance->template mutable_data>( - ctx.GetPlace()))); + if ((N * H * W * D) == 1) { + LOG(WARNING) << "Only 1 element in normalization dimension, " + << "we skip the batch norm calculation, let y = x."; + framework::TensorCopySync(*x, ctx.GetPlace(), y); + } else { + double this_factor = 1. - momentum; + + CUDNN_ENFORCE(platform::dynload::cudnnBatchNormalizationForwardTraining( + handle, mode_, CudnnDataType::kOne(), CudnnDataType::kZero(), + data_desc_, x->template data(), data_desc_, + y->template mutable_data(ctx.GetPlace()), bn_param_desc_, + scale->template data>(), + bias->template data>(), this_factor, + mean_out->template mutable_data>( + ctx.GetPlace()), + variance_out->template mutable_data>( + ctx.GetPlace()), + epsilon, saved_mean->template mutable_data>( + ctx.GetPlace()), + saved_variance->template mutable_data>( + ctx.GetPlace()))); + } } // clean when exit. @@ -209,6 +213,25 @@ class BatchNormGradKernel int N, C, H, W, D; ExtractNCWHD(x_dims, data_layout, &N, &C, &H, &W, &D); + // init output + auto *d_x = ctx.Output(framework::GradVarName("X")); + auto *d_scale = ctx.Output(framework::GradVarName("Scale")); + auto *d_bias = ctx.Output(framework::GradVarName("Bias")); + + d_x->mutable_data(ctx.GetPlace()); + d_scale->mutable_data(ctx.GetPlace()); + d_bias->mutable_data(ctx.GetPlace()); + + auto &dev_ctx = ctx.template device_context(); + if ((N * H * W * D) == 1) { + framework::TensorCopySync(*d_y, ctx.GetPlace(), d_x); + math::SetConstant> + functor; + functor(dev_ctx, d_scale, static_cast>(0)); + functor(dev_ctx, d_bias, static_cast>(0)); + return; + } + PADDLE_ENFORCE_EQ(scale->dims().size(), 1UL); PADDLE_ENFORCE_EQ(scale->dims()[0], C); @@ -247,21 +270,11 @@ class BatchNormGradKernel CUDNN_ENFORCE(platform::dynload::cudnnDeriveBNTensorDescriptor( bn_param_desc_, data_desc_, mode_)); - // init output - auto *d_x = ctx.Output(framework::GradVarName("X")); - auto *d_scale = ctx.Output(framework::GradVarName("Scale")); - auto *d_bias = ctx.Output(framework::GradVarName("Bias")); - - d_x->mutable_data(ctx.GetPlace()); - d_scale->mutable_data(ctx.GetPlace()); - d_bias->mutable_data(ctx.GetPlace()); - const auto *saved_mean = ctx.Input("SavedMean"); const auto *saved_var = ctx.Input("SavedVariance"); const void *saved_mean_data = saved_mean->template data(); const void *saved_var_data = saved_var->template data(); - auto &dev_ctx = ctx.template device_context(); CUDNN_ENFORCE(platform::dynload::cudnnBatchNormalizationBackward( dev_ctx.cudnn_handle(), mode_, CudnnDataType::kOne(), CudnnDataType::kZero(), CudnnDataType::kOne(), diff --git a/paddle/fluid/operators/conditional_block_op.cc b/paddle/fluid/operators/conditional_block_op.cc index 8cc1d94260baccfe28d213b7e021956819e2e79e..580fde753816c30b188b8a99cc63fcbafde64e25 100644 --- a/paddle/fluid/operators/conditional_block_op.cc +++ b/paddle/fluid/operators/conditional_block_op.cc @@ -205,9 +205,10 @@ class ConditionalBlockGradInferShape : public framework::InferShapeBase { context->SetOutputsDim(framework::GradVarName("Params"), context->GetInputsDim("Params")); } - PADDLE_ENFORCE(context->HasOutputs(framework::GradVarName("X"))); - context->SetOutputsDim(framework::GradVarName("X"), - context->GetInputsDim("X")); + if (context->HasOutputs(framework::GradVarName("X"))) { + context->SetOutputsDim(framework::GradVarName("X"), + context->GetInputsDim("X")); + } } }; diff --git a/paddle/fluid/operators/cross_entropy_op.cc b/paddle/fluid/operators/cross_entropy_op.cc index d5e095f9cad95b74b8ff79e4a60ccbdf11512a5a..a3bec3da45136bca5cb2763e7ffd6b67703a1813 100644 --- a/paddle/fluid/operators/cross_entropy_op.cc +++ b/paddle/fluid/operators/cross_entropy_op.cc @@ -124,8 +124,7 @@ class CrossEntropyOpMaker : public framework::OpProtoAndCheckerMaker { "Tensor with shape [N x D]."); AddOutput("Y", "(Tensor, default Tensor), a 2-D tensor with shape " - "[N x 1]. The cross entropy loss.") - .Reuse("X"); + "[N x 1]. The cross entropy loss."); AddAttr("soft_label", "(bool, default false), a flag indicating whether to " "interpretate the given labels as soft labels.") diff --git a/paddle/fluid/operators/merge_lod_tensor_op.cc b/paddle/fluid/operators/merge_lod_tensor_op.cc index a16861b3b77fc980ab932b9d88859b38ec36108b..2dc1467b0d4816d5cc0535eb62e936cf342a241c 100644 --- a/paddle/fluid/operators/merge_lod_tensor_op.cc +++ b/paddle/fluid/operators/merge_lod_tensor_op.cc @@ -44,8 +44,10 @@ class MergeLoDTensorOp : public framework::OperatorBase { scope.FindVar(Output("Out"))->GetMutable(); auto level = static_cast(Attr("level")); - auto &mask_dim = mask.dims(); + PADDLE_ENFORCE(in_true.numel() || in_false.numel(), + "Input(InTrue) or Input(InFalse) should be initialized."); + auto &mask_dim = mask.dims(); std::unique_ptr cpu_mask{new framework::LoDTensor()}; if (platform::is_cpu_place(mask.place())) { cpu_mask->ShareDataWith(mask); @@ -59,19 +61,27 @@ class MergeLoDTensorOp : public framework::OperatorBase { } auto *mask_data = cpu_mask->data(); - int rank = in_true.dims().size(); - platform::Place place = in_true.place(); - std::type_index data_type = in_true.type(); - framework::DDim in_true_dims = - framework::slice_ddim(in_true.dims(), 1, rank); - + platform::Place place = dev_place; int64_t batch_size = in_true.dims()[0] + in_false.dims()[0]; - auto in_true_dim_vec = framework::vectorize(in_true_dims); - in_true_dim_vec.insert(in_true_dim_vec.begin(), batch_size); + std::type_index data_type = + in_true.IsInitialized() ? in_true.type() : in_false.type(); + int rank; + framework::DDim in_dims; + if (in_true.IsInitialized()) { + rank = in_true.dims().size(); + in_dims = framework::slice_ddim(in_true.dims(), 1, rank); + } else { + rank = in_false.dims().size(); + in_dims = framework::slice_ddim(in_false.dims(), 1, rank); + } + + auto in_dim_vec = framework::vectorize(in_dims); + in_dim_vec.insert(in_dim_vec.begin(), batch_size); - framework::DDim out_dims = framework::make_ddim(in_true_dim_vec); + framework::DDim out_dims = framework::make_ddim(in_dim_vec); out->Resize(out_dims); + out->mutable_data(place, data_type); auto *out_lod = out->mutable_lod(); diff --git a/paddle/fluid/operators/reader/CMakeLists.txt b/paddle/fluid/operators/reader/CMakeLists.txt index a39c8a00538875e4e3284898230a6cb0693b7a12..9dbcc35e6f5bb01c159980a49dd4b4c9d37d2aab 100644 --- a/paddle/fluid/operators/reader/CMakeLists.txt +++ b/paddle/fluid/operators/reader/CMakeLists.txt @@ -22,7 +22,6 @@ reader_library(create_batch_reader_op SRCS create_batch_reader_op.cc) reader_library(create_recordio_file_reader_op SRCS create_recordio_file_reader_op.cc) reader_library(create_double_buffer_reader_op SRCS create_double_buffer_reader_op.cc) reader_library(create_multi_pass_reader_op SRCS create_multi_pass_reader_op.cc) -reader_library(create_threaded_reader_op SRCS create_threaded_reader_op.cc) reader_library(create_custom_reader_op SRCS create_custom_reader_op.cc) reader_library(create_py_reader_op SRCS create_py_reader_op.cc) diff --git a/paddle/fluid/operators/reader/create_batch_reader_op.cc b/paddle/fluid/operators/reader/create_batch_reader_op.cc index ecbae3894d551186f53625a6cc9cfdb36adc8d2d..1dbafd23e92732bdaf0d263a01e267227786d839 100644 --- a/paddle/fluid/operators/reader/create_batch_reader_op.cc +++ b/paddle/fluid/operators/reader/create_batch_reader_op.cc @@ -20,15 +20,19 @@ namespace reader { class BatchReader : public framework::DecoratedReader { public: - BatchReader(const std::shared_ptr& reader, int batch_size) - : DecoratedReader(reader), batch_size_(batch_size) { + BatchReader(const std::shared_ptr& reader, int batch_size, + bool discard_leftover) + : DecoratedReader(reader), + batch_size_(batch_size), + discard_leftover_(discard_leftover) { buffer_.reserve(batch_size_); } - void ReadNext(std::vector* out) override; + void ReadNextImpl(std::vector* out) override; private: int batch_size_; + bool discard_leftover_; std::vector> buffer_; }; @@ -46,8 +50,9 @@ class CreateBatchReaderOp : public framework::OperatorBase { } const auto& underlying_reader = scope.FindVar(Input("UnderlyingReader")) ->Get(); - out->Reset( - new BatchReader(underlying_reader.Get(), Attr("batch_size"))); + out->Reset(framework::MakeDecoratedReader( + underlying_reader, Attr("batch_size"), + Attr("discard_leftover"))); } }; @@ -57,6 +62,10 @@ class CreateBatchReaderOpMaker : public DecoratedReaderMakerBase { AddAttr("batch_size", "How many instances the batch reader yields each time.") .GreaterThan(0); + AddAttr("discard_leftover", + "If true, the leftover instances that are not enough for a " + "new batch will be discarded.") + .SetDefault(true); AddComment(R"DOC( CreateBatchReader Operator @@ -66,7 +75,7 @@ class CreateBatchReaderOpMaker : public DecoratedReaderMakerBase { } }; -void BatchReader::ReadNext(std::vector* out) { +void BatchReader::ReadNextImpl(std::vector* out) { buffer_.clear(); buffer_.reserve(batch_size_); for (int i = 0; i < batch_size_; ++i) { @@ -77,6 +86,9 @@ void BatchReader::ReadNext(std::vector* out) { break; } } + if (discard_leftover_ && buffer_.size() < batch_size_) { + buffer_.clear(); + } // Concat instances out->clear(); if (buffer_.empty()) { diff --git a/paddle/fluid/operators/reader/create_custom_reader_op.cc b/paddle/fluid/operators/reader/create_custom_reader_op.cc index a75c6d4c567ac93f37b38070421133af305f20a3..85394b336fc967fc6973131fbedda4c796825185 100644 --- a/paddle/fluid/operators/reader/create_custom_reader_op.cc +++ b/paddle/fluid/operators/reader/create_custom_reader_op.cc @@ -33,7 +33,7 @@ class CustomReader : public framework::DecoratedReader { source_var_names_(source_var_names), sink_var_names_(sink_var_names) {} - void ReadNext(std::vector* out) override; + void ReadNextImpl(std::vector* out) override; private: const framework::ProgramDesc program_; @@ -60,10 +60,10 @@ class CreateCustomReaderOp : public framework::OperatorBase { } const auto& underlying_reader = scope.FindVar(Input("UnderlyingReader")) ->Get(); - out->Reset( - new CustomReader(underlying_reader.Get(), *sub_block, - Attr>("source_var_names"), - Attr>("sink_var_names"))); + out->Reset(framework::MakeDecoratedReader( + underlying_reader, *sub_block, + Attr>("source_var_names"), + Attr>("sink_var_names"))); } }; @@ -143,7 +143,7 @@ class CustomReaderInferVarType : public framework::VarTypeInference { } }; -void CustomReader::ReadNext(std::vector* out) { +void CustomReader::ReadNextImpl(std::vector* out) { out->clear(); std::vector underlying_outs; reader_->ReadNext(&underlying_outs); diff --git a/paddle/fluid/operators/reader/create_double_buffer_reader_op.cc b/paddle/fluid/operators/reader/create_double_buffer_reader_op.cc index 5f734489a81764875988f440696682570ff4d1d7..7b14370f4fd64e8fd5b8d9038006494b88d671dc 100644 --- a/paddle/fluid/operators/reader/create_double_buffer_reader_op.cc +++ b/paddle/fluid/operators/reader/create_double_buffer_reader_op.cc @@ -23,13 +23,13 @@ namespace reader { // 'Double buffer' means we shall maintain two batches of input data at the same // time. So the kCacheSize shoul be at least 2. -static constexpr size_t kCacheSize = 5; +static constexpr size_t kCacheSize = 3; // There will be two bacthes out of the channel during training: // 1. the one waiting to be sent to the channel // 2. the one just be received from the channel, which is also being used by // subsequent operators. // So the channel size should be kChacheSize - 2 -static constexpr size_t kChannelSize = 3; // kCacheSize - 2 +static constexpr size_t kChannelSize = 1; // kCacheSize - 2 class DoubleBufferReader : public framework::DecoratedReader { public: @@ -50,12 +50,21 @@ class DoubleBufferReader : public framework::DecoratedReader { StartPrefetcher(); } - void ReadNext(std::vector* out) override; - void ReInit() override; + void ReadNextImpl(std::vector* out) override; ~DoubleBufferReader() { EndPrefetcher(); } private: + void ShutdownImpl() override { + EndPrefetcher(); + reader_->Shutdown(); + } + + void StartImpl() override { + reader_->Start(); + StartPrefetcher(); + } + void StartPrefetcher() { channel_ = new reader::BlockingQueue(kChannelSize); prefetcher_ = std::thread([this] { PrefetchThreadFunc(); }); @@ -109,7 +118,8 @@ class CreateDoubleBufferReaderOp : public framework::OperatorBase { place = platform::CUDAPlace(static_cast(num)); } - out->Reset(new DoubleBufferReader(underlying_reader.Get(), place)); + out->Reset(framework::MakeDecoratedReader( + underlying_reader, place)); } }; @@ -136,7 +146,7 @@ class CreateDoubleBufferReaderOpMaker : public DecoratedReaderMakerBase { } }; -void DoubleBufferReader::ReadNext(std::vector* out) { +void DoubleBufferReader::ReadNextImpl(std::vector* out) { size_t cached_tensor_id; if (channel_->Receive(&cached_tensor_id)) { if (platform::is_gpu_place(place_)) { @@ -150,12 +160,6 @@ void DoubleBufferReader::ReadNext(std::vector* out) { } } -void DoubleBufferReader::ReInit() { - reader_->ReInit(); - EndPrefetcher(); - StartPrefetcher(); -} - void DoubleBufferReader::PrefetchThreadFunc() { VLOG(5) << "A new prefetch thread starts."; size_t cached_tensor_id = 0; diff --git a/paddle/fluid/operators/reader/create_multi_pass_reader_op.cc b/paddle/fluid/operators/reader/create_multi_pass_reader_op.cc index 19b54110b9aeece33b8d6c73612ae0e12dbfafbd..0a225597d34f43c7fb82aeae2552cdf16c8ba566 100644 --- a/paddle/fluid/operators/reader/create_multi_pass_reader_op.cc +++ b/paddle/fluid/operators/reader/create_multi_pass_reader_op.cc @@ -24,23 +24,22 @@ class MultiPassReader : public framework::DecoratedReader { MultiPassReader(const std::shared_ptr& reader, int pass_num) : DecoratedReader(reader), pass_num_(pass_num), pass_count_(0) {} - void ReadNext(std::vector* out) override { + void ReadNextImpl(std::vector* out) override { reader_->ReadNext(out); - if (out->empty()) { + if (out->empty() && pass_count_ < pass_num_ - 1) { + reader_->Shutdown(); + reader_->Start(); + reader_->ReadNext(out); ++pass_count_; - if (pass_count_ < pass_num_) { - reader_->ReInit(); - reader_->ReadNext(out); - } } } - void ReInit() override { + private: + void StartImpl() override { pass_count_ = 0; - reader_->ReInit(); + reader_->Start(); } - private: int pass_num_; mutable int pass_count_; }; @@ -60,7 +59,8 @@ class CreateMultiPassReaderOp : public framework::OperatorBase { const auto& underlying_reader = scope.FindVar(Input("UnderlyingReader")) ->Get(); int pass_num = Attr("pass_num"); - out->Reset(new MultiPassReader(underlying_reader.Get(), pass_num)); + out->Reset(framework::MakeDecoratedReader( + underlying_reader, pass_num)); } }; diff --git a/paddle/fluid/operators/reader/create_py_reader_op.cc b/paddle/fluid/operators/reader/create_py_reader_op.cc index 36587360f7347a10e01d4e994482027d9a9bb5d0..d41124279930e92138e7e6a5ab045659a415eb6d 100644 --- a/paddle/fluid/operators/reader/create_py_reader_op.cc +++ b/paddle/fluid/operators/reader/create_py_reader_op.cc @@ -19,22 +19,27 @@ namespace paddle { namespace operators { namespace reader { -class PyReader : public framework::ReaderBase { +class PyReader : public framework::FileReader { public: - explicit PyReader(const std::shared_ptr& queue) { + explicit PyReader(const std::shared_ptr& queue) + : framework::FileReader() { PADDLE_ENFORCE(queue != nullptr, "LoDTensorBlockingQueue must not be null"); queue_ = queue; } - void ReadNext(std::vector* out) override { + void ReadNextImpl(std::vector* out) override { bool success; *out = queue_->Pop(&success); if (!success) out->clear(); } - void ReInit() override {} - private: + void ShutdownImpl() override { /* TODO */ + } + + void StartImpl() override { /* TODO */ + } + std::shared_ptr queue_; }; @@ -51,14 +56,14 @@ class CreatePyReaderOp : public framework::OperatorBase { const std::string& queue_name = Input("blocking_queue"); auto* queue_holder_var = scope.FindVar(queue_name); - PADDLE_ENFORCE( - queue_holder_var != nullptr, + PADDLE_ENFORCE_NOT_NULL( + queue_holder_var, "No LoDTensorBlockingQueueHolder variable with name %s found", queue_name); auto* queue_holder = queue_holder_var->template GetMutable(); - out->Reset(new PyReader(queue_holder->GetQueue())); + out->Reset(std::make_shared(queue_holder->GetQueue())); } }; diff --git a/paddle/fluid/operators/reader/create_random_data_generator_op.cc b/paddle/fluid/operators/reader/create_random_data_generator_op.cc index 5b7e8a063a034f0be056065826fca0fe807bc9a7..e5c116dfcd71ef40597ca19d1da0b51038baaad1 100644 --- a/paddle/fluid/operators/reader/create_random_data_generator_op.cc +++ b/paddle/fluid/operators/reader/create_random_data_generator_op.cc @@ -19,11 +19,11 @@ namespace operators { namespace reader { template -class RandomDataGenerator : public framework::ReaderBase { +class RandomDataGenerator : public framework::FileReader { public: RandomDataGenerator(const std::vector& shapes, float low, float high) - : framework::ReaderBase(), low_(low), high_(high), shapes_(shapes) { + : framework::FileReader(), low_(low), high_(high), shapes_(shapes) { PADDLE_ENFORCE_LE(low, high, "'low' shouldn't be greater than 'high'.(%f vs %f)", low, high); @@ -32,7 +32,7 @@ class RandomDataGenerator : public framework::ReaderBase { dist_ = std::uniform_real_distribution(low_, high_); } - void ReadNext(std::vector* out) override { + void ReadNextImpl(std::vector* out) override { out->clear(); out->reserve(shapes_.size()); for (const framework::DDim& shape : shapes_) { @@ -51,8 +51,6 @@ class RandomDataGenerator : public framework::ReaderBase { } } - void ReInit() override { return; } - private: float low_; float high_; @@ -79,8 +77,8 @@ class CreateRandomDataGeneratorOp : public framework::OperatorBase { std::vector shapes = RestoreShapes(shape_concat, ranks); auto* out = scope.FindVar(Output("Out")) ->template GetMutable(); - out->Reset(new RandomDataGenerator(shapes, Attr("low"), - Attr("high"))); + out->Reset(std::make_shared>( + shapes, Attr("low"), Attr("high"))); } }; diff --git a/paddle/fluid/operators/reader/create_recordio_file_reader_op.cc b/paddle/fluid/operators/reader/create_recordio_file_reader_op.cc index 559827f08494af6730aafa1e67c46a47c21dedf6..b32f09b22524c8b67ce57cc6022ef46efc2e828d 100644 --- a/paddle/fluid/operators/reader/create_recordio_file_reader_op.cc +++ b/paddle/fluid/operators/reader/create_recordio_file_reader_op.cc @@ -21,10 +21,8 @@ namespace reader { template class RecordIOFileReader : public framework::FileReader { public: - explicit RecordIOFileReader(const std::string& filename, - const std::vector& dims) - : FileReader(dims), - scanner_(filename), + explicit RecordIOFileReader(const std::string& filename) + : scanner_(filename), dev_ctx_(*platform::DeviceContextPool::Instance().Get( platform::CPUPlace())) { if (ThreadSafe) { @@ -33,8 +31,6 @@ class RecordIOFileReader : public framework::FileReader { LOG(INFO) << "Creating file reader" << filename; } - void ReInit() override { scanner_.Reset(); } - protected: void ReadNextImpl(std::vector* out) override { if (ThreadSafe) { @@ -45,6 +41,8 @@ class RecordIOFileReader : public framework::FileReader { } } + void StartImpl() override { scanner_.Reset(); } + private: std::unique_ptr mutex_; recordio::Scanner scanner_; @@ -58,20 +56,11 @@ class CreateRecordIOReaderOp : public framework::OperatorBase { private: void RunImpl(const framework::Scope& scope, const platform::Place& dev_place) const override { - const auto& shape_concat = Attr>("shape_concat"); - const auto& ranks = Attr>("ranks"); - PADDLE_ENFORCE(!shape_concat.empty() && !ranks.empty()); - PADDLE_ENFORCE_EQ(std::accumulate(ranks.begin(), ranks.end(), 0), - static_cast(shape_concat.size()), - "The accumulate of all ranks should be equal to the " - "shape concat's length."); std::string filename = Attr("filename"); - auto* out = scope.FindVar(Output("Out")) ->template GetMutable(); - out->Reset(new RecordIOFileReader( - filename, RestoreShapes(shape_concat, ranks))); + out->Reset(std::make_shared>(filename)); } }; diff --git a/paddle/fluid/operators/reader/create_shuffle_reader_op.cc b/paddle/fluid/operators/reader/create_shuffle_reader_op.cc index 57e8e21214b7c99e52550fe51a67c9b5201cb46f..4b308abc290c10a8a5846672e719b503dfc79b21 100644 --- a/paddle/fluid/operators/reader/create_shuffle_reader_op.cc +++ b/paddle/fluid/operators/reader/create_shuffle_reader_op.cc @@ -34,7 +34,7 @@ class ShuffleReader : public framework::DecoratedReader { ReloadBuffer(); } - void ReadNext(std::vector* out) override { + void ReadNextImpl(std::vector* out) override { out->clear(); if (iteration_pos_ >= buffer_.size()) { VLOG(10) << "Resetting shuffle buffer"; @@ -47,6 +47,17 @@ class ShuffleReader : public framework::DecoratedReader { } private: + void ShutdownImpl() override { + buffer_.clear(); + iteration_pos_ = 0; + reader_->Shutdown(); + } + + void StartImpl() override { + reader_->Start(); + ReloadBuffer(); + } + void ReloadBuffer() { buffer_.clear(); buffer_.reserve(buffer_size_); @@ -86,9 +97,8 @@ class CreateShuffleReaderOp : public framework::OperatorBase { } const auto& underlying_reader = scope.FindVar(Input("UnderlyingReader")) ->Get(); - out->Reset( - new ShuffleReader(underlying_reader.Get(), - static_cast(Attr("buffer_size")))); + out->Reset(framework::MakeDecoratedReader( + underlying_reader, static_cast(Attr("buffer_size")))); } }; diff --git a/paddle/fluid/operators/reader/create_threaded_reader_op.cc b/paddle/fluid/operators/reader/create_threaded_reader_op.cc deleted file mode 100644 index 3798015146f4ffb085aa82e23ca3f1fb3c5cf5a4..0000000000000000000000000000000000000000 --- a/paddle/fluid/operators/reader/create_threaded_reader_op.cc +++ /dev/null @@ -1,79 +0,0 @@ -// 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. - -#include "paddle/fluid/operators/detail/safe_ref.h" -#include "paddle/fluid/operators/reader/reader_op_registry.h" - -namespace paddle { -namespace operators { -namespace reader { - -class ThreadedReader : public framework::DecoratedReader { - public: - explicit ThreadedReader(const std::shared_ptr& reader) - : DecoratedReader(reader) {} - - void ReadNext(std::vector* out) override { - std::lock_guard lock(mutex_); - reader_->ReadNext(out); - } - - void ReInit() override { reader_->ReInit(); } - - private: - std::mutex mutex_; -}; - -class CreateThreadedReaderOp : public framework::OperatorBase { - public: - using framework::OperatorBase::OperatorBase; - - private: - void RunImpl(const framework::Scope& scope, - const platform::Place& dev_place) const override { - auto* out = detail::Ref(scope.FindVar(Output("Out"))) - .GetMutable(); - if (out->Get() != nullptr) { - return; - } - const auto& underlying_reader = scope.FindVar(Input("UnderlyingReader")) - ->Get(); - out->Reset(new ThreadedReader(underlying_reader.Get())); - } -}; - -class CreateThreadedReaderOpMaker : public DecoratedReaderMakerBase { - protected: - void Apply() override { - AddComment(R"DOC( - CreateThreadedReader Operator - - This operator creates a threaded reader. A threaded reader's - 'ReadNext()' can be invoked by several threads at the same - time. - When the attribute 'safe_mode' is true, the threaded reader's - 'ReInit()' is disabled to avoid unexpected bugs in multi-thread - environment. - )DOC"); - } -}; - -} // namespace reader -} // namespace operators -} // namespace paddle - -namespace reader = paddle::operators::reader; -REGISTER_DECORATED_READER_OPERATOR(create_threaded_reader, - reader::CreateThreadedReaderOp, - reader::CreateThreadedReaderOpMaker); diff --git a/paddle/fluid/operators/reader/open_files_op.cc b/paddle/fluid/operators/reader/open_files_op.cc index 31e5d81e55ed9703eb3a9ef2595fa2a280f1a734..9a8d203672fa2d560440d063d93fa5f8523690ef 100644 --- a/paddle/fluid/operators/reader/open_files_op.cc +++ b/paddle/fluid/operators/reader/open_files_op.cc @@ -23,24 +23,26 @@ namespace reader { class MultiFileReader : public framework::ReaderBase { public: - MultiFileReader(const std::vector& file_names, - const std::vector& dims, size_t thread_num, + MultiFileReader(const std::vector& file_names, size_t thread_num, size_t buffer_size) : buffer_size_(buffer_size) { readers_.reserve(file_names.size()); for (const std::string& f_name : file_names) { - readers_.emplace_back(CreateReaderByFileName(f_name, dims)); + readers_.emplace_back(CreateReaderByFileName(f_name)); } prefetchers_.resize(thread_num); StartNewScheduler(); } - void ReadNext(std::vector* out) override; - void ReInit() override; + void ReadNextImpl(std::vector* out) override; ~MultiFileReader() { EndScheduler(); } private: + void ShutdownImpl() override { EndScheduler(); } + + void StartImpl() override { StartNewScheduler(); } + void StartNewScheduler(); void EndScheduler(); void ScheduleThreadFunc(); @@ -55,17 +57,12 @@ class MultiFileReader : public framework::ReaderBase { reader::BlockingQueue>* buffer_; }; -void MultiFileReader::ReadNext(std::vector* out) { +void MultiFileReader::ReadNextImpl(std::vector* out) { if (!buffer_->Receive(out)) { out->clear(); } } -void MultiFileReader::ReInit() { - EndScheduler(); - StartNewScheduler(); -} - void MultiFileReader::StartNewScheduler() { size_t thread_num = prefetchers_.size(); waiting_reader_idx_ = new reader::BlockingQueue(readers_.size()); @@ -120,7 +117,7 @@ void MultiFileReader::ScheduleThreadFunc() { } } } - // If users invoke ReInit() when scheduler is running, it will close the + // If users invoke Shutdown() when scheduler is running, it will close the // 'avaiable_thread_idx_' and prefecther threads have no way to tell scheduler // to release their resource. So a check is needed before scheduler ends. for (auto& p : prefetchers_) { @@ -138,7 +135,8 @@ void MultiFileReader::PrefetchThreadFunc(size_t reader_idx, size_t thread_idx) { std::vector ins; reader->ReadNext(&ins); if (ins.empty()) { - reader->ReInit(); + reader->Shutdown(); + reader->Start(); break; } try { @@ -180,9 +178,8 @@ class OpenFilesOp : public framework::OperatorBase { auto* out = scope.FindVar(Output("Out")) ->template GetMutable(); - out->Reset(new MultiFileReader(file_names, - RestoreShapes(shape_concat, ranks), - thread_num, buffer_size)); + out->Reset( + std::make_shared(file_names, thread_num, buffer_size)); } }; diff --git a/paddle/fluid/operators/reader/reader_op_registry.cc b/paddle/fluid/operators/reader/reader_op_registry.cc index e11256a49ffa6adc9410376cc8a71fa017df7e9c..b82aab1214992be73d876a42424234e3cea46455 100644 --- a/paddle/fluid/operators/reader/reader_op_registry.cc +++ b/paddle/fluid/operators/reader/reader_op_registry.cc @@ -39,7 +39,7 @@ std::unordered_map& FileReaderRegistry() { } std::unique_ptr CreateReaderByFileName( - const std::string& file_name, const std::vector& dims) { + const std::string& file_name) { size_t separator_pos = file_name.find_last_of(kFileFormatSeparator); PADDLE_ENFORCE_NE(separator_pos, std::string::npos, "File name illegal! A legal file name should be like: " @@ -49,7 +49,7 @@ std::unique_ptr CreateReaderByFileName( auto itor = FileReaderRegistry().find(filetype); PADDLE_ENFORCE(itor != FileReaderRegistry().end(), "No file reader registered for '%s' format.", filetype); - framework::ReaderBase* reader = (itor->second)(file_name, dims); + framework::ReaderBase* reader = (itor->second)(file_name); return std::unique_ptr(reader); } diff --git a/paddle/fluid/operators/reader/reader_op_registry.h b/paddle/fluid/operators/reader/reader_op_registry.h index 244bf15f068a47efc29ee54492cdbdeb10025020..25c3e7d77b788d38daf6dee1fc79e5c1c97e8842 100644 --- a/paddle/fluid/operators/reader/reader_op_registry.h +++ b/paddle/fluid/operators/reader/reader_op_registry.h @@ -25,22 +25,21 @@ namespace reader { static constexpr char kFileFormatSeparator[] = "."; -using FileReaderCreator = std::function&)>; +using FileReaderCreator = + std::function; std::unordered_map& FileReaderRegistry(); template int RegisterFileReader(const std::string& filetype) { - FileReaderRegistry()[filetype] = []( - const std::string& fn, const std::vector& dims) { - return new Reader(fn, dims); + FileReaderRegistry()[filetype] = [](const std::string& fn) { + return new Reader(fn); }; return 0; } std::unique_ptr CreateReaderByFileName( - const std::string& file_name, const std::vector& dims); + const std::string& file_name); extern std::vector RestoreShapes( const std::vector& shape_concat, const std::vector& ranks); diff --git a/paddle/fluid/pybind/pybind.cc b/paddle/fluid/pybind/pybind.cc index 7a8bb712452538b7e2a349d56a15de3284f82b39..0c523b6f176345c0407b8541c04fb8c3b27f7c60 100644 --- a/paddle/fluid/pybind/pybind.cc +++ b/paddle/fluid/pybind/pybind.cc @@ -296,7 +296,7 @@ All parameter, weight, gradient are variables in Paddle. py::return_value_policy::reference); py::class_(m, "Reader", "") - .def("reset", &framework::ReaderHolder::ReInit); + .def("reset", &framework::ReaderHolder::ResetAll); using LoDTensorBlockingQueue = ::paddle::operators::reader::LoDTensorBlockingQueue; diff --git a/python/paddle/fluid/layers/io.py b/python/paddle/fluid/layers/io.py index f33ae76aea95ceeca73c5bae6e4e490cdff29bf3..977abde21f38a0d25a90bc14426fd817df2c8508 100644 --- a/python/paddle/fluid/layers/io.py +++ b/python/paddle/fluid/layers/io.py @@ -375,9 +375,6 @@ def open_recordio_file(filename, if pass_num > 1: main_prog_var = multi_pass(reader=main_prog_var, pass_num=pass_num) - if for_parallel: - main_prog_var = parallel(reader=main_prog_var) - return monkey_patch_reader_methods(main_prog_var) @@ -529,9 +526,6 @@ def open_files(filenames, main_prog_reader = multi_pass( reader=main_prog_reader, pass_num=pass_num) - if for_parallel: - main_prog_reader = parallel(reader=main_prog_reader) - return monkey_patch_reader_methods(main_prog_reader) @@ -647,11 +641,6 @@ def multi_pass(reader, pass_num): 'create_multi_pass_reader', reader, {'pass_num': int(pass_num)}) -def parallel(reader): - return __create_shared_decorated_reader__('create_threaded_reader', reader, - {}) - - def read_file(reader): """ Execute the given reader and get data via it. diff --git a/python/paddle/fluid/tests/test_mnist_if_else_op.py b/python/paddle/fluid/tests/test_if_else_op.py similarity index 66% rename from python/paddle/fluid/tests/test_mnist_if_else_op.py rename to python/paddle/fluid/tests/test_if_else_op.py index d34f52db5ffc889f17513d034ad2c99f696b0cdf..1b58925599de62510ea9048f5210bb0b7e49f933 100644 --- a/python/paddle/fluid/tests/test_mnist_if_else_op.py +++ b/python/paddle/fluid/tests/test_if_else_op.py @@ -14,10 +14,11 @@ import paddle import paddle.fluid.layers as layers -from paddle.fluid.framework import Program, program_guard, default_main_program, default_startup_program +from paddle.fluid.framework import Program, program_guard from paddle.fluid.executor import Executor from paddle.fluid.optimizer import MomentumOptimizer import paddle.fluid.core as core +import paddle.fluid as fluid import unittest import numpy as np @@ -31,14 +32,13 @@ class TestMNISTIfElseOp(unittest.TestCase): label = layers.data(name='y', shape=[1], dtype='int64') - limit = layers.fill_constant_batch_size_like( - input=label, dtype='int64', shape=[1], value=5.0) + limit = layers.fill_constant(shape=[1], dtype='int64', value=5) cond = layers.less_than(x=label, y=limit) true_image, false_image = layers.split_lod_tensor( input=image, mask=cond) true_out = layers.create_tensor(dtype='float32') - true_cond = layers.ConditionalBlock([true_image]) + true_cond = layers.ConditionalBlock([cond]) with true_cond.block(): hidden = layers.fc(input=true_image, size=100, act='tanh') @@ -46,7 +46,7 @@ class TestMNISTIfElseOp(unittest.TestCase): layers.assign(input=prob, output=true_out) false_out = layers.create_tensor(dtype='float32') - false_cond = layers.ConditionalBlock([false_image]) + false_cond = layers.ConditionalBlock([cond]) with false_cond.block(): hidden = layers.fc(input=false_image, size=200, act='tanh') @@ -64,7 +64,7 @@ class TestMNISTIfElseOp(unittest.TestCase): train_reader = paddle.batch( paddle.reader.shuffle( paddle.dataset.mnist.train(), buf_size=8192), - batch_size=200) + batch_size=10) place = core.CPUPlace() exe = Executor(place) @@ -94,8 +94,7 @@ class TestMNISTIfElseOp(unittest.TestCase): label = layers.data(name='y', shape=[1], dtype='int64') - limit = layers.fill_constant_batch_size_like( - input=label, dtype='int64', shape=[1], value=5.0) + limit = layers.fill_constant(shape=[1], dtype='int64', value=5) cond = layers.less_than(x=label, y=limit) ie = layers.IfElse(cond) @@ -125,7 +124,7 @@ class TestMNISTIfElseOp(unittest.TestCase): place = core.CPUPlace() exe = Executor(place) - exe.run(kwargs['startup_program']) + exe.run(startup_prog) PASS_NUM = 100 for pass_id in range(PASS_NUM): for data in train_reader(): @@ -133,7 +132,7 @@ class TestMNISTIfElseOp(unittest.TestCase): y_data = np.array(map(lambda x: x[1], data)).astype("int64") y_data = y_data.reshape((y_data.shape[0], 1)) - outs = exe.run(kwargs['main_program'], + outs = exe.run(prog, feed={'x': x_data, 'y': y_data}, fetch_list=[avg_loss]) @@ -143,6 +142,67 @@ class TestMNISTIfElseOp(unittest.TestCase): self.assertFalse(True) +class TestIfElse(unittest.TestCase): + def set_test_case(self): + # condiction is: self.data < self.cond_value + self.cond_value = 0.5 + self.data = np.random.rand(25, 1).astype(np.float32) + + def compare_ifelse_op_and_numpy(self, place): + self.set_test_case() + + prog = Program() + startup_prog = Program() + with program_guard(prog, startup_prog): + src = layers.data(name='data', shape=[1], dtype='float32') + cond = layers.fill_constant( + [1], dtype='float32', value=self.cond_value) + ifcond = layers.less_than(x=src, y=cond) + ie = layers.IfElse(ifcond) + with ie.true_block(): + true_target = ie.input(src) + ie.output(true_target) + + with ie.false_block(): + false_target = ie.input(src) + ie.output(false_target) + if_out = ie() + out = layers.reduce_sum(if_out) + + exe = fluid.Executor(place) + exe.run(fluid.default_startup_program()) + fetch_list = [out] + o1, = exe.run(fluid.default_main_program(), + feed={'data': self.data}, + fetch_list=[out]) + o2 = np.sum(self.data) + self.assertTrue( + np.allclose( + o1, o2, atol=1e-8), + "IfElse result : " + str(o1) + "\n Numpy result :" + str(o2)) + + def test_cpu(self): + self.compare_ifelse_op_and_numpy(fluid.CPUPlace()) + + def test_cuda(self): + if not core.is_compiled_with_cuda(): + return + self.compare_ifelse_op_and_numpy(fluid.CUDAPlace(0)) + + +class TestIfElseTrueBranch(TestIfElse): + def set_test_case(self): + # condiction is: self.data < self.cond_value + self.cond_value = 10. + self.data = np.random.rand(25, 1).astype(np.float32) + + +class TestIfElseFalseBranch(TestIfElse): + def set_test_case(self): + # condiction is: self.data < self.cond_value + self.cond_value = -10. + self.data = np.random.rand(25, 1).astype(np.float32) + + if __name__ == '__main__': - # temp disable if else unittest since it could be buggy. - exit(0) + unittest.main() diff --git a/python/paddle/fluid/tests/unittests/test_fake_dequantize_op.py b/python/paddle/fluid/tests/unittests/test_fake_dequantize_op.py index 281068e945e76a42635868d19573498f79fde1f3..026ac2112b2d78644b3315b9cab8019ca27e9714 100644 --- a/python/paddle/fluid/tests/unittests/test_fake_dequantize_op.py +++ b/python/paddle/fluid/tests/unittests/test_fake_dequantize_op.py @@ -40,7 +40,6 @@ class TestFakeDequantizeMaxAbsOp(OpTest): self.op_type = "fake_dequantize_max_abs" x = np.random.randn(31, 65).astype("float32") yq, scale = quantize_max_abs(x, self.num_bits) - print 'scale ', scale ydq = dequantize_max_abs(yq, self.num_bits, scale) self.inputs = {'X': yq} diff --git a/python/paddle/fluid/tests/unittests/test_parallel_op.py b/python/paddle/fluid/tests/unittests/test_parallel_op.py index 79bea148f9398152a02d70946cdc5fff1f47ba6b..9ba5f988f317a515b77c0b428da236626419a2c3 100644 --- a/python/paddle/fluid/tests/unittests/test_parallel_op.py +++ b/python/paddle/fluid/tests/unittests/test_parallel_op.py @@ -113,7 +113,9 @@ class BaseParallelForTest(unittest.TestCase): generator = callback() # Automatically insert parallel do if use_parallel = True if use_parallel: - places = fluid.layers.get_places() + thread_num = fluid.core.get_cuda_device_count( + ) if use_gpu else 8 + places = fluid.layers.get_places(thread_num) pd = fluid.layers.ParallelDo(places, use_nccl=use_nccl) data = next(generator) diff --git a/python/setup.py.in b/python/setup.py.in index 5506443733650631fe045be3f701a41519352e8d..a0cb39070bf7a89e3ea4cb1d31f54f919d6ff74e 100644 --- a/python/setup.py.in +++ b/python/setup.py.in @@ -1,16 +1,13 @@ from setuptools import setup, Distribution, Extension import subprocess -import shutil import os +import re +import shutil class BinaryDistribution(Distribution): def has_ext_modules(foo): return True -MAJOR = 0 -MINOR = 14 -PATCH = 0 RC = 0 -ISTAGED = False @@ -22,14 +19,47 @@ def git_commit(): git_commit = 'Unknown' return git_commit +def _get_version_detail(idx): + assert idx < 3, "vesion info consists of %(major)d.%(minor)d.%(patch)d, \ + so detail index must less than 3" + + if re.match('@TAG_VERSION_REGEX@', '@PADDLE_VERSION@'): + version_details = '@PADDLE_VERSION@'.split('.') + + if len(version_details) == 3: + return version_details[idx] + + return 0 + +def get_major(): + return int(_get_version_detail(0)) + +def get_minor(): + return int(_get_version_detail(1)) + +def get_patch(): + return str(_get_version_detail(2)) + +def is_taged(): + try: + cmd = ['git', 'describe', '--exact-match', '--tags'] + git_tag = subprocess.Popen(cmd, stdout = subprocess.PIPE).communicate()[0].strip() + except: + return False + + if git_tag.replace('v', '') == '@PADDLE_VERSION@': + return True + else: + return False + def write_version_py(filename='paddle/version.py'): cnt = ''' # THIS FILE IS GENERATED FROM PADDLEPADDLE SETUP.PY # -full_version = '%(major)d.%(minor)d.%(patch)d' +full_version = '%(major)d.%(minor)d.%(patch)s' major = '%(major)d' minor = '%(minor)d' -patch = '%(patch)d' +patch = '%(patch)s' rc = '%(rc)d' istaged = %(istaged)s commit = '%(commit)s' @@ -51,13 +81,13 @@ def mkl(): commit = git_commit() with open(filename, 'w') as f: f.write(cnt % { - 'major': MAJOR, - 'minor': MINOR, - 'patch': PATCH, + 'major': get_major(), + 'minor': get_minor(), + 'patch': get_patch(), 'rc': RC, 'version': '${PADDLE_VERSION}', 'commit': commit, - 'istaged': ISTAGED, + 'istaged': is_taged(), 'with_mkl': '@WITH_MKL@'}) write_version_py(filename='@PADDLE_BINARY_DIR@/python/paddle/version.py')