We consider deploying deep learning inference service online to be a user-facing application in the future. **The goal of this project**: When you have trained a deep neural net with [Paddle](https://github.com/PaddlePaddle/Paddle), you can put the model online without much effort. A demo of serving is as follows:
We consider deploying deep learning inference service online to be a user-facing application in the future. **The goal of this project**: When you have trained a deep neural net with [Paddle](https://github.com/PaddlePaddle/Paddle), you are also capable to deploy the model online easily. A demo of serving is as follows:
<palign="center">
<imgsrc="doc/demo.gif"width="700">
</p>
<h2align="center">Some Key Features</h2>
- Integrate with Paddle training pipeline seemlessly, most paddle models can be deployed **with one line command**.
- Integrate with Paddle training pipeline seamlessly, most paddle models can be deployed **with one line command**.
-**Industrial serving features** supported, such as models management, online loading, online A/B testing etc.
-**Distributed Key-Value indexing** supported that is especially useful for large scale sparse features as model inputs.
-**Highly concurrent and efficient communication** between clients and servers.
-**Multiple programming languages** supported on client side, such as Golang, C++ and python
-**Extensible framework design**that can support model serving beyond Paddle.
-**Distributed Key-Value indexing** supported which is especially useful for large scale sparse features as model inputs.
-**Highly concurrent and efficient communication** between clients and servers supported.
-**Multiple programming languages** supported on client side, such as Golang, C++ and python.
-**Extensible framework design**which can support model serving beyond Paddle.