Deep Learning with PaddlePaddle

    Build Status Documentation Status Documentation Status

    1. Fit a Line
    2. Recognize Digits
    3. Image Classification
    4. Word to Vector
    5. Recommender System
    6. Understand Sentiment
    7. Label Semantic Roles
    8. Machine Translation

    Running the Book

    This book you are reading is interactive -- each chapter can run as a Jupyter Notebook.

    We packed this book, Jupyter, PaddlePaddle, and all dependencies into a Docker image. So you don't need to install anything except Docker. If you are using Windows, please follow this installation guide. If you are running Mac, please follow this. For various Linux distros, please refer to If you are using Windows or Mac, you might want to give Docker more memory and CPUs/cores.

    Just type

    docker run -d -p 8888:8888 paddlepaddle/book

    This command will download the pre-built Docker image from and run it in a container. Please direct your Web browser to http://localhost:8888 to read the book.

    If you are living in somewhere slow to access, you might try our mirror server

    docker run -d -p 8888:8888

    Training with GPU

    By default we are using CPU for training, if you want to train with GPU, the steps are a little different.

    To make sure GPU can be successfully used from inside container, please install nvidia-docker. Then run:

    nvidia-docker run -d -p 8888:8888 paddlepaddle/book:latest-gpu

    Or you can use the image registry mirror in China:

    nvidia-docker run -d -p 8888:8888

    Change the code in the chapter that you are reading from

    use_cuda = False


    use_cuda = True


    Your contribution is welcome! Please feel free to file Pull Requests to add your chapter as a directory under /pending. Once it is going stable, the community would like to move it to /.

    To write, run, and debug your chapters, you will need Python 2.x, Go >1.5. You can build the Docker image using this script. This tutorial is contributed by PaddlePaddle, and licensed under a Creative Commons Attribution-ShareAlike 4.0 International License.


    Deep Learning 101 with PaddlePaddle (『飞桨』深度学习框架入门教程)



    贡献者 104



    • Jupyter Notebook 75.4 %
    • HTML 18.5 %
    • Python 4.4 %
    • JavaScript 1.1 %
    • CSS 0.4 %