| 
							
								 | 
							
							# Release v0.11.0
 | 
						
						
						
						
							 | 
							
								 | 
							
							
 | 
						
						
						
						
							 | 
							
								 | 
							
							## PaddlePaddle Fluid
 | 
						
						
						
						
							 | 
							
								 | 
							
							
 | 
						
						
						
						
							 | 
							
								 | 
							
							- Release 0.11.0 includes a new feature *PaddlePaddle Fluid*.  Fluid is
 | 
						
						
						
						
							 | 
							
								 | 
							
							  designed to allow users to program like PyTorch and TensorFlow Eager Execution.
 | 
						
						
						
						
							 | 
							
								 | 
							
							  In these systems, there is no longer the concept *model* and applications
 | 
						
						
						
						
							 | 
							
								 | 
							
							  do not include a symbolic description of a graph of operators nor a sequence
 | 
						
						
						
						
							 | 
							
								 | 
							
							  of layers. Instead, applications look exactly like a usual program that
 | 
						
						
						
						
							 | 
							
								 | 
							
							  describes a process of training or inference.  The difference between
 | 
						
						
						
						
							 | 
							
								 | 
							
							  Fluid and PyTorch or Eager Execution is that Fluid doesn't rely on Python's
 | 
						
						
						
						
							 | 
							
								 | 
							
							  control-flow, `if-then-else` nor `for`.  Instead, Fluid provides its
 | 
						
						
						
						
							 | 
							
								 | 
							
							  C++ implementations and their Python binding using the `with` statement.  For an example
 | 
						
						
						
						
							 | 
							
								 | 
							
							
 | 
						
						
						
						
							 | 
							
								 | 
							
							  https://github.com/PaddlePaddle/Paddle/blob/3df78ed2a98d37f7ae6725894cc7514effd5664b/python/paddle/v2/fluid/tests/test_while_op.py#L36-L44
 | 
						
						
						
						
							 | 
							
								 | 
							
							
 | 
						
						
						
						
							 | 
							
								 | 
							
							- In 0.11.0, we provides a C++ class `Executor` to run a Fluid program.
 | 
						
						
						
						
							 | 
							
								 | 
							
							Executor works like an interpreter. In future version, we will improve
 | 
						
						
						
						
							 | 
							
								 | 
							
							`Executor` into a debugger like GDB, and we might provide some compilers,
 | 
						
						
						
						
							 | 
							
								 | 
							
							which, for example, takes an application like the above one, and outputs
 | 
						
						
						
						
							 | 
							
								 | 
							
							an equivalent C++ source program, which can be compiled using
 | 
						
						
						
						
							 | 
							
								 | 
							
							[`nvcc`](http://docs.nvidia.com/cuda/cuda-compiler-driver-nvcc/index.html)
 | 
						
						
						
						
							 | 
							
								 | 
							
							to generate binaries that use CUDA, or using
 | 
						
						
						
						
							 | 
							
								 | 
							
							[`icc`](https://software.intel.com/en-us/c-compilers) to generate binaries
 | 
						
						
						
						
							 | 
							
								 | 
							
							that make full use of Intel CPUs.
 | 
						
						
						
						
							 | 
							
								 | 
							
							
 | 
						
						
						
						
							 | 
							
								 | 
							
							## New Features
 | 
						
						
						
						
							 | 
							
								 | 
							
							
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Release `PaddlePaddle Fluid`.
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Add C-API for model inference
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Use fluid API to create a simple GAN demo.
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Add develop guide about performance tunning.
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Add retry when download `paddle.v2.dataset`.
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Linking protobuf-lite not protobuf in C++. Reduce the binary size.
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Feature [Elastic Deep Learning (EDL)](https://github.com/PaddlePaddle/cloud/tree/develop/doc/autoscale/experiment) released.
 | 
						
						
						
						
							 | 
							
								 | 
							
							* A new style cmake functions for Paddle. It is based on Bazel API.
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Automatically download and compile with Intel® [MKLML](https://github.com/01org/mkl-dnn/releases/download/v0.11/mklml_lnx_2018.0.1.20171007.tgz) library as CBLAS when build `WITH_MKL=ON`.
 | 
						
						
						
						
							 | 
							
								 | 
							
							* [Intel® MKL-DNN on PaddlePaddle](https://github.com/PaddlePaddle/Paddle/tree/develop/doc/design/mkldnn):
 | 
						
						
						
						
							 | 
							
								 | 
							
							  - Complete 11 MKL-DNN layers: Convolution, Fully connectivity, Pooling, ReLU, Tanh, ELU, Softmax, BatchNorm, AddTo, Concat, LRN.
 | 
						
						
						
						
							 | 
							
								 | 
							
							  - Complete 3 MKL-DNN networks: VGG-19, ResNet-50, GoogleNet
 | 
						
						
						
						
							 | 
							
								 | 
							
							  - [Benchmark](https://github.com/PaddlePaddle/Paddle/blob/develop/benchmark/IntelOptimizedPaddle.md) on Intel Skylake 6148 CPU: 2~3x training speedup compared with MKLML.
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Add the [`softsign` activation](http://www.paddlepaddle.org/docs/develop/documentation/zh/api/v2/config/activation.html#softsign).
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Add the [dot product layer](http://www.paddlepaddle.org/docs/develop/documentation/zh/api/v2/config/layer.html#dot-prod).
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Add the [L2 distance layer](http://www.paddlepaddle.org/docs/develop/documentation/zh/api/v2/config/layer.html#l2-distance).
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Add the [sub-nested sequence layer](http://www.paddlepaddle.org/docs/develop/documentation/zh/api/v2/config/layer.html#sub-nested-seq).
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Add the [kmax sequence score layer](http://www.paddlepaddle.org/docs/develop/documentation/zh/api/v2/config/layer.html#kmax-sequence-score).
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Add the [sequence slice layer](http://www.paddlepaddle.org/docs/develop/documentation/zh/api/v2/config/layer.html#seq-slice).
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Add the [row convolution layer](http://www.paddlepaddle.org/docs/develop/documentation/zh/api/v2/config/layer.html#row-conv)
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Add mobile friendly webpages.
 | 
						
						
						
						
							 | 
							
								 | 
							
							
 | 
						
						
						
						
							 | 
							
								 | 
							
							## Improvements
 | 
						
						
						
						
							 | 
							
								 | 
							
							
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Build and install using a single `whl` package.
 | 
						
						
						
						
							 | 
							
								 | 
							
							* [Custom evaluating in V2 API](https://github.com/PaddlePaddle/models/tree/develop/ltr#训练过程中输出自定义评估指标).
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Change `PADDLE_ONLY_CPU` to `PADDLE_WITH_GPU`, since we will support many kinds of devices.
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Remove buggy BarrierStat.
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Clean and remove unused functions in paddle::Parameter.
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Remove ProtoDataProvider.
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Huber loss supports both regression and classification.
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Add the `stride` parameter  for sequence pooling layers.
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Enable v2 API use cudnn batch normalization automatically.
 | 
						
						
						
						
							 | 
							
								 | 
							
							* The BN layer's parameter can be shared by a fixed the parameter name.
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Support variable-dimension input feature for 2D convolution operation.
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Refine cmake about CUDA to automatically detect GPU architecture.
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Improved website navigation.
 | 
						
						
						
						
							 | 
							
								 | 
							
							
 | 
						
						
						
						
							 | 
							
								 | 
							
							## Bug Fixes
 | 
						
						
						
						
							 | 
							
								 | 
							
							
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Fix bug in ROI pooling. cc9a761
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Fix AUC is zero when label is dense vector. #5274
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Fix bug in WarpCTC layer.
 | 
						
						
						
						
							 | 
							
								 | 
							
							
 | 
						
						
						
						
							 | 
							
								 | 
							
							# Release v0.10.0
 | 
						
						
						
						
							 | 
							
								 | 
							
							
 | 
						
						
						
						
							 | 
							
								 | 
							
							We are glad to release version 0.10.0.  In this version, we are happy to release the new 
 | 
						
						
						
						
							 | 
							
								 | 
							
							[Python API](http://research.baidu.com/paddlepaddles-new-api-simplifies-deep-learning-programs/).
 | 
						
						
						
						
							 | 
							
								 | 
							
							
 | 
						
						
						
						
							 | 
							
								 | 
							
							- Our old Python API is kind of out of date.  It's hard to learn and hard to
 | 
						
						
						
						
							 | 
							
								 | 
							
							  use.  To write a PaddlePaddle program using the old API, we'd have to write
 | 
						
						
						
						
							 | 
							
								 | 
							
							  at least two Python files: one `data provider` and another one that defines
 | 
						
						
						
						
							 | 
							
								 | 
							
							  the network topology.  Users start a PaddlePaddle job by running the
 | 
						
						
						
						
							 | 
							
								 | 
							
							  `paddle_trainer` C++ program, which calls Python interpreter to run the
 | 
						
						
						
						
							 | 
							
								 | 
							
							  network topology configuration script and then start the training loop,
 | 
						
						
						
						
							 | 
							
								 | 
							
							  which iteratively calls the data provider function to load minibatches.
 | 
						
						
						
						
							 | 
							
								 | 
							
							  This prevents us from writing a Python program in a modern way, e.g., in the
 | 
						
						
						
						
							 | 
							
								 | 
							
							  Jupyter Notebook.
 | 
						
						
						
						
							 | 
							
								 | 
							
							  
 | 
						
						
						
						
							 | 
							
								 | 
							
							- The new API, which we often refer to as the *v2 API*, allows us to write
 | 
						
						
						
						
							 | 
							
								 | 
							
							  much shorter Python programs to define the network and the data in a single
 | 
						
						
						
						
							 | 
							
								 | 
							
							  .py file.  Also, this program can run in Jupyter Notebook, since the entry
 | 
						
						
						
						
							 | 
							
								 | 
							
							  point is in Python program and PaddlePaddle runs as a shared library loaded
 | 
						
						
						
						
							 | 
							
								 | 
							
							  and invoked by this Python program.
 | 
						
						
						
						
							 | 
							
								 | 
							
							  
 | 
						
						
						
						
							 | 
							
								 | 
							
							Basing on the new API, we delivered an online interative
 | 
						
						
						
						
							 | 
							
								 | 
							
							book, [Deep Learning 101](http://book.paddlepaddle.org/index.en.html)
 | 
						
						
						
						
							 | 
							
								 | 
							
							and [its Chinese version](http://book.paddlepaddle.org/).
 | 
						
						
						
						
							 | 
							
								 | 
							
							
 | 
						
						
						
						
							 | 
							
								 | 
							
							We also worked on updating our online documentation to describe the new API.
 | 
						
						
						
						
							 | 
							
								 | 
							
							But this is an ongoing work.  We will release more documentation improvements
 | 
						
						
						
						
							 | 
							
								 | 
							
							in the next version.
 | 
						
						
						
						
							 | 
							
								 | 
							
							
 | 
						
						
						
						
							 | 
							
								 | 
							
							We also worked on bring the new API to distributed model training (via MPI and
 | 
						
						
						
						
							 | 
							
								 | 
							
							Kubernetes).  This work is ongoing. We will release more about it in the next
 | 
						
						
						
						
							 | 
							
								 | 
							
							version.
 | 
						
						
						
						
							 | 
							
								 | 
							
							
 | 
						
						
						
						
							 | 
							
								 | 
							
							## New Features
 | 
						
						
						
						
							 | 
							
								 | 
							
							
 | 
						
						
						
						
							 | 
							
								 | 
							
							* We release [new Python API](http://research.baidu.com/paddlepaddles-new-api-simplifies-deep-learning-programs/).
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Deep Learning 101 book in [English](http://book.paddlepaddle.org/index.en.html) and [Chinese](http://book.paddlepaddle.org/).
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Support rectangle input for CNN.
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Support stride pooling for seqlastin and seqfirstin.
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Expose `seq_concat_layer/seq_reshape_layer` in `trainer_config_helpers`.
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Add dataset package: CIFAR, MNIST, IMDB, WMT14, CONLL05, movielens, imikolov.
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Add Priorbox layer for Single Shot Multibox Detection. 
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Add smooth L1 cost.
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Add data reader creator and data reader decorator for v2 API.
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Add the CPU implementation of cmrnorm projection.
 | 
						
						
						
						
							 | 
							
								 | 
							
							
 | 
						
						
						
						
							 | 
							
								 | 
							
							## Improvements
 | 
						
						
						
						
							 | 
							
								 | 
							
							
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Support Python virtualenv for `paddle_trainer`.
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Add pre-commit hooks, used for automatically format our code.
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Upgrade protobuf to version 3.x.
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Add an option to check data type in Python data provider.
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Speedup the backward of average layer on GPU.
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Documentation refinement.
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Check dead links in documents using Travis-CI.
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Add a example for explaining `sparse_vector`.
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Add ReLU in layer_math.py
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Simplify data processing flow for Quick Start.
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Support CUDNN Deconv.
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Add data feeder in v2 API.
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Support predicting the samples from sys.stdin for sentiment demo.
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Provide multi-proccess interface for image preprocessing. 
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Add benchmark document for v1 API.
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Add ReLU in `layer_math.py`.
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Add packages for automatically downloading public datasets.
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Rename `Argument::sumCost` to `Argument::sum` since class `Argument` is nothing with cost.
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Expose Argument::sum to Python
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Add a new `TensorExpression` implementation for matrix-related expression evaluations.
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Add lazy assignment for optimizing the calculation of a batch of multiple expressions.
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Add abstract calss `Function` and its implementation:
 | 
						
						
						
						
							 | 
							
								 | 
							
							  * `PadFunc` and `PadGradFunc`.
 | 
						
						
						
						
							 | 
							
								 | 
							
							  * `ContextProjectionForwardFunc` and `ContextProjectionBackwardFunc`.
 | 
						
						
						
						
							 | 
							
								 | 
							
							  * `CosSimBackward` and `CosSimBackwardFunc`.
 | 
						
						
						
						
							 | 
							
								 | 
							
							  * `CrossMapNormalFunc` and `CrossMapNormalGradFunc`.
 | 
						
						
						
						
							 | 
							
								 | 
							
							  * `MulFunc`.
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Add class `AutoCompare` and `FunctionCompare`, which make it easier to write unit tests for comparing gpu and cpu version of a function.
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Generate `libpaddle_test_main.a` and remove the main function inside the test file.
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Support dense numpy vector in PyDataProvider2.
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Clean code base, remove some copy-n-pasted code snippets:
 | 
						
						
						
						
							 | 
							
								 | 
							
							  * Extract `RowBuffer` class for `SparseRowMatrix`.
 | 
						
						
						
						
							 | 
							
								 | 
							
							  * Clean the  interface of `GradientMachine`.
 | 
						
						
						
						
							 | 
							
								 | 
							
							  * Use `override` keyword in layer.
 | 
						
						
						
						
							 | 
							
								 | 
							
							  * Simplify `Evaluator::create`, use `ClassRegister` to create `Evaluator`s.
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Check MD5 checksum when downloading demo's dataset.
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Add `paddle::Error` which intentially replace `LOG(FATAL)` in Paddle.
 | 
						
						
						
						
							 | 
							
								 | 
							
							
 | 
						
						
						
						
							 | 
							
								 | 
							
							## Bug Fixes
 | 
						
						
						
						
							 | 
							
								 | 
							
							
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Check layer input types for `recurrent_group`.
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Don't run `clang-format` with .cu source files.
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Fix bugs with `LogActivation`.
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Fix the bug that runs `test_layerHelpers` multiple times.
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Fix the bug that the seq2seq demo exceeds protobuf message size limit.
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Fix the bug in dataprovider converter in GPU mode.
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Fix a bug in `GatedRecurrentLayer`.
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Fix bug for `BatchNorm` when testing more than one models.
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Fix broken unit test of paramRelu.
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Fix some compile-time warnings about `CpuSparseMatrix`.
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Fix `MultiGradientMachine` error when `trainer_count > batch_size`.
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Fix bugs that prevents from asynchronous data loading in `PyDataProvider2`.
 | 
						
						
						
						
							 | 
							
								 | 
							
							
 | 
						
						
						
						
							 | 
							
								 | 
							
							# Release v0.9.0
 | 
						
						
						
						
							 | 
							
								 | 
							
							
 | 
						
						
						
						
							 | 
							
								 | 
							
							## New Features:
 | 
						
						
						
						
							 | 
							
								 | 
							
							
 | 
						
						
						
						
							 | 
							
								 | 
							
							* New Layers
 | 
						
						
						
						
							 | 
							
								 | 
							
							  * bilinear interpolation layer.
 | 
						
						
						
						
							 | 
							
								 | 
							
							  * spatial pyramid-pool layer.
 | 
						
						
						
						
							 | 
							
								 | 
							
							  * de-convolution layer.
 | 
						
						
						
						
							 | 
							
								 | 
							
							  * maxout layer.
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Support rectangle padding, stride, window and input for Pooling Operation.
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Add —job=time in trainer, which can be used to print time info without compiler option -WITH_TIMER=ON.
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Expose cost_weight/nce_layer in `trainer_config_helpers`
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Add FAQ, concepts, h-rnn docs.
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Add Bidi-LSTM and DB-LSTM to quick start demo @alvations
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Add usage track scripts.
 | 
						
						
						
						
							 | 
							
								 | 
							
							
 | 
						
						
						
						
							 | 
							
								 | 
							
							## Improvements
 | 
						
						
						
						
							 | 
							
								 | 
							
							
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Add Travis-CI for Mac OS X. Enable swig unittest in Travis-CI. Skip Travis-CI when only docs are changed.
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Add code coverage tools.
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Refine convolution layer to speedup and reduce GPU memory.
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Speed up PyDataProvider2
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Add ubuntu deb package build scripts.
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Make Paddle use git-flow branching model.
 | 
						
						
						
						
							 | 
							
								 | 
							
							* PServer support no parameter blocks.
 | 
						
						
						
						
							 | 
							
								 | 
							
							
 | 
						
						
						
						
							 | 
							
								 | 
							
							## Bug Fixes
 | 
						
						
						
						
							 | 
							
								 | 
							
							
 | 
						
						
						
						
							 | 
							
								 | 
							
							* add zlib link to py_paddle
 | 
						
						
						
						
							 | 
							
								 | 
							
							* add input sparse data check for sparse layer at runtime
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Bug fix for sparse matrix multiplication
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Fix floating-point overflow problem of tanh
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Fix some nvcc compile options
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Fix a bug in yield dictionary in DataProvider
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Fix SRL hang when exit.
 | 
						
						
						
						
							 | 
							
								 | 
							
							
 | 
						
						
						
						
							 | 
							
								 | 
							
							# Release v0.8.0beta.1
 | 
						
						
						
						
							 | 
							
								 | 
							
							New features:
 | 
						
						
						
						
							 | 
							
								 | 
							
							
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Mac OSX is supported by source code. #138
 | 
						
						
						
						
							 | 
							
								 | 
							
							   * Both GPU and CPU versions of PaddlePaddle are supported.
 | 
						
						
						
						
							 | 
							
								 | 
							
							
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Support CUDA 8.0
 | 
						
						
						
						
							 | 
							
								 | 
							
							
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Enhance `PyDataProvider2`
 | 
						
						
						
						
							 | 
							
								 | 
							
							   * Add dictionary yield format. `PyDataProvider2` can yield a dictionary with key is data_layer's name, value is features.
 | 
						
						
						
						
							 | 
							
								 | 
							
							   * Add `min_pool_size` to control memory pool in provider.
 | 
						
						
						
						
							 | 
							
								 | 
							
							
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Add `deb` install package & docker image for no_avx machines.
 | 
						
						
						
						
							 | 
							
								 | 
							
							   * Especially for cloud computing and virtual machines
 | 
						
						
						
						
							 | 
							
								 | 
							
							
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Automatically disable `avx` instructions in cmake when machine's CPU don't support `avx` instructions.
 | 
						
						
						
						
							 | 
							
								 | 
							
							
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Add Parallel NN api in trainer_config_helpers.
 | 
						
						
						
						
							 | 
							
								 | 
							
							
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Add `travis ci` for Github
 | 
						
						
						
						
							 | 
							
								 | 
							
							
 | 
						
						
						
						
							 | 
							
								 | 
							
							Bug fixes:
 | 
						
						
						
						
							 | 
							
								 | 
							
							
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Several bugs in trainer_config_helpers. Also complete the unittest for trainer_config_helpers
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Check if PaddlePaddle is installed when unittest.
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Fix bugs in GTX series GPU
 | 
						
						
						
						
							 | 
							
								 | 
							
							* Fix bug in MultinomialSampler
 | 
						
						
						
						
							 | 
							
								 | 
							
							
 | 
						
						
						
						
							 | 
							
								 | 
							
							Also more documentation was written since last release.
 | 
						
						
						
						
							 | 
							
								 | 
							
							
 | 
						
						
						
						
							 | 
							
								 | 
							
							# Release v0.8.0beta.0
 | 
						
						
						
						
							 | 
							
								 | 
							
							
 | 
						
						
						
						
							 | 
							
								 | 
							
							PaddlePaddle v0.8.0beta.0 release. The install package is not stable yet and it's a pre-release version.
 |