You can not select more than 25 topics Topics must start with a letter or number, can include dashes ('-') and can be up to 35 characters long.
 
 
 
 
 
Go to file
qiaolongfei 06690cfb01
add l2 regularization to reduce the probability of fpe exception
8 years ago
benchmark All file pass pre-commit hook 8 years ago
cmake Set Protobuf 3.1 in FIND_PACKAGE 8 years ago
demo add l2 regularization to reduce the probability of fpe exception 8 years ago
doc Add input data interface for inference 8 years ago
doc_theme All file pass pre-commit hook 8 years ago
paddle Fix outArgs_.resize() 8 years ago
proto fix calculating totalScore2_ bug 8 years ago
python Merge pull request #1501 from reyoung/feature/recommendation_v2_api 8 years ago
.clang-format Refine clang-format for Paddle style 8 years ago
.dockerignore Add .dockerignore as an alias of .gitignore 8 years ago
.gitignore Merge pull request #1017 from gangliao/external 8 years ago
.gitmodules add blank 8 years ago
.pre-commit-config.yaml Add submodule for book 8 years ago
.style.yapf change python code style to pep8 8 years ago
.travis.yml remove osx build from CI 8 years ago
CMakeLists.txt Merge pull request #1144 from gangliao/dso 8 years ago
CONTRIBUTING.md add linkto CONTRIBUTING.md 8 years ago
ISSUE_TEMPLATE.md Revise one word in ISSUE_TEMPLATE.md (#371) 8 years ago
LICENSE Change "Baidu, Inc" into "PaddlePaddle Authors" 8 years ago
README.md Fix wrong links in Readme 8 years ago
RELEASE.md Refine documentation in RELEASE.md 8 years ago
authors update authors 8 years ago

README.md

PaddlePaddle

Build Status Documentation Status Documentation Status Coverage Status Release License

Welcome to the PaddlePaddle GitHub.

PaddlePaddle (PArallel Distributed Deep LEarning) is an easy-to-use, efficient, flexible and scalable deep learning platform, which is originally developed by Baidu scientists and engineers for the purpose of applying deep learning to many products at Baidu.

Our vision is to enable deep learning for everyone via PaddlePaddle. Please refer to our release announcement to track the latest feature of PaddlePaddle.

Features

  • Flexibility

    PaddlePaddle supports a wide range of neural network architectures and optimization algorithms. It is easy to configure complex models such as neural machine translation model with attention mechanism or complex memory connection.

  • Efficiency

    In order to unleash the power of heterogeneous computing resource, optimization occurs at different levels of PaddlePaddle, including computing, memory, architecture and communication. The following are some examples:

    • Optimized math operations through SSE/AVX intrinsics, BLAS libraries (e.g. MKL, ATLAS, cuBLAS) or customized CPU/GPU kernels.
    • Highly optimized recurrent networks which can handle variable-length sequence without padding.
    • Optimized local and distributed training for models with high dimensional sparse data.
  • Scalability

    With PaddlePaddle, it is easy to use many CPUs/GPUs and machines to speed up your training. PaddlePaddle can achieve high throughput and performance via optimized communication.

  • Connected to Products

    In addition, PaddlePaddle is also designed to be easily deployable. At Baidu, PaddlePaddle has been deployed into products or service with a vast number of users, including ad click-through rate (CTR) prediction, large-scale image classification, optical character recognition(OCR), search ranking, computer virus detection, recommendation, etc. It is widely utilized in products at Baidu and it has achieved a significant impact. We hope you can also exploit the capability of PaddlePaddle to make a huge impact for your product.

Installation

Check out the Install Guide to install from pre-built packages (docker image, deb package) or directly build on Linux and Mac OS X from the source code.

Documentation

Both English Docs and Chinese Docs are provided for our users and developers.

  • Quick Start
    You can follow the quick start tutorial to learn how use PaddlePaddle step-by-step.

  • Example and Demo
    We provide five demos, including: image classification, sentiment analysis, sequence to sequence model, recommendation, semantic role labeling.

  • Distributed Training
    This system supports training deep learning models on multiple machines with data parallelism.

  • Python API
    PaddlePaddle supports using either Python interface or C++ to build your system. We also use SWIG to wrap C++ source code to create a user friendly interface for Python. You can also use SWIG to create interface for your favorite programming language.

  • How to Contribute
    We sincerely appreciate your interest and contributions. If you would like to contribute, please read the contribution guide.

  • Source Code Documents

Ask Questions

You are welcome to submit questions and bug reports as Github Issues.

PaddlePaddle is provided under the Apache-2.0 license.