# PaddlePaddle 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. ## 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: 1. Optimized math operations through SSE/AVX intrinsics, BLAS libraries (e.g. MKL, ATLAS, cuBLAS) or customized CPU/GPU kernels. 2. Highly optimized recurrent networks which can handle **variable-length** sequence without padding. 3. 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 See [Installation Guide](http://paddlepaddle.org/doc/build/) to install from pre-built package or build from the source code. (Note: The installation packages are still in pre-release state and your experience of installation may not be smooth.). ## Documentation - [Chinese Documentation](http://paddlepaddle.org/doc_cn/)
- [Quick Start](http://paddlepaddle.org/doc/demo/quick_start/index_en)
You can follow the quick start tutorial to learn how use PaddlePaddle step-by-step. - [Example and Demo](http://paddlepaddle.org/doc/demo/)
We provide five demos, including: image classification, sentiment analysis, sequence to sequence model, recommendation, semantic role labelling. - [Distributed Training](http://paddlepaddle.org/doc/cluster)
This system supports training deep learning models on multiple machines with data parallelism. - [Python API](http://paddlepaddle.org/doc/ui/)
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](http://paddlepaddle.org/doc/build/contribute_to_paddle.html)
We sincerely appreciate your interest and contributions. If you would like to contribute, please read the contribution guide. - [Source Code Documents](http://paddlepaddle.org/doc/source/)
## Ask Questions If you want to ask questions and discuss about methods and models, welcome to send email to paddle-dev@baidu.com. Framework development discussions and bug reports are collected on [Issues](https://github.com/baidu/paddle/issues). ## Copyright and License PaddlePaddle is provided under the [Apache-2.0 license](LICENSE).