High Level Tensorflow Deep Learning Library for Researcher and Engineer.
Project description
TensorLayer is a novel TensorFlow-based deep learning and reinforcement learning library designed for researchers and engineers. It provides a large collection of customizable neural layers / functions that are key to build real-world AI applications. TensorLayer is awarded the 2017 Best Open Source Software by the ACM Multimedia Society.
Why another deep learning library: TensorLayer
As deep learning practitioners, we have been looking for a library that can address various development purposes. This library is easy to adopt by providing diverse examples, tutorials and pre-trained models. Also, it allow users to easily fine-tune TensorFlow; while being suitable for production deployment. TensorLayer aims to satisfy all these purposes. It has three key features:
Simplicity : TensorLayer lifts the low-level dataflow interface of TensorFlow to high-level layers / models. It is very easy to learn through the rich example codes contributed by a wide community.
Flexibility : TensorLayer APIs are transparent: it does not mask TensorFlow from users; but leaving massive hooks that help low-level tuning and deep customization.
Zero-cost Abstraction : TensorLayer can achieve the full power of TensorFlow. The following table shows the training speeds of classic models using TensorLayer and native TensorFlow on a Titan X Pascal GPU.
CIFAR-10
PTB LSTM
Word2Vec
TensorLayer
2528 images/s
18063 words/s
58167 words/s
TensorFlow
2530 images/s
18075 words/s
58181 words/s
TensorLayer stands at a unique spot in the library landscape. Other wrapper libraries like Keras and TFLearn also provide high-level abstractions. They, however, often hide the underlying engine from users, which make them hard to customize and fine-tune. On the contrary, TensorLayer APIs are generally flexible and transparent. Users often find it easy to start with the examples and tutorials, and then dive into TensorFlow seamlessly. In addition, TensorLayer does not create library lock-in through native supports for importing components from Keras, TFSlim and TFLearn.
TensorLayer has a fast growing usage among top researchers and engineers, from universities like Imperial College London, UC Berkeley, Carnegie Mellon University, Stanford University, and University of Technology of Compiegne (UTC), and companies like Google, Microsoft, Alibaba, Tencent, Xiaomi, and Bloomberg.
Install
TensorLayer has pre-requisites including TensorFlow, numpy, and others. For GPU support, CUDA and cuDNN are required. The simplest way to install TensorLayer is to use the Python Package Index (PyPI):
# for last stable version
pip install --upgrade tensorlayer
# for latest release candidate
pip install --upgrade --pre tensorlayer
# if you want to install the additional dependencies, you can also run
pip install --upgrade tensorlayer[all] # all additional dependencies
pip install --upgrade tensorlayer[extra] # only the `extra` dependencies
pip install --upgrade tensorlayer[contrib_loggers] # only the `contrib_loggers` dependencies
Alternatively, you can install the latest or development version by directly pulling from github:
pip install https://github.com/tensorlayer/tensorlayer/archive/master.zip
# or
# pip install https://github.com/tensorlayer/tensorlayer/archive/<branch-name>.zip
Using Docker - a ready-to-use environment
The TensorLayer containers are built on top of the official TensorFlow containers:
Containers with CPU support
# for CPU version and Python 2
docker pull tensorlayer/tensorlayer:latest
docker run -it --rm -p 8888:8888 -p 6006:6006 -e PASSWORD=JUPYTER_NB_PASSWORD tensorlayer/tensorlayer:latest
# for CPU version and Python 3
docker pull tensorlayer/tensorlayer:latest-py3
docker run -it --rm -p 8888:8888 -p 6006:6006 -e PASSWORD=JUPYTER_NB_PASSWORD tensorlayer/tensorlayer:latest-py3
Containers with GPU support
NVIDIA-Docker is required for these containers to work: Project Link
# for GPU version and Python 2
docker pull tensorlayer/tensorlayer:latest-gpu
nvidia-docker run -it --rm -p 8888:88888 -p 6006:6006 -e PASSWORD=JUPYTER_NB_PASSWORD tensorlayer/tensorlayer:latest-gpu
# for GPU version and Python 3
docker pull tensorlayer/tensorlayer:latest-gpu-py3
nvidia-docker run -it --rm -p 8888:8888 -p 6006:6006 -e PASSWORD=JUPYTER_NB_PASSWORD tensorlayer/tensorlayer:latest-gpu-py3
Contribute
Please read the Contributor Guideline before submitting your PRs.
Cite
If you find this project useful, we would be grateful if you cite the TensorLayer paper:
@article{tensorlayer2017, author = {Dong, Hao and Supratak, Akara and Mai, Luo and Liu, Fangde and Oehmichen, Axel and Yu, Simiao and Guo, Yike}, journal = {ACM Multimedia}, title = {{TensorLayer: A Versatile Library for Efficient Deep Learning Development}}, url = {http://tensorlayer.org}, year = {2017} }
License
TensorLayer is released under the Apache 2.0 license.
Project details
Release history Release notifications | RSS feed
Download files
Download the file for your platform. If you're not sure which to choose, learn more about installing packages.
Source Distribution
File details
Details for the file tensorlayer3-1.0.0a0.tar.gz
.
File metadata
- Download URL: tensorlayer3-1.0.0a0.tar.gz
- Upload date:
- Size: 313.4 kB
- Tags: Source
- Uploaded using Trusted Publishing? No
- Uploaded via: Python-urllib/3.6
File hashes
Algorithm | Hash digest | |
---|---|---|
SHA256 | 60dc0998ddbaf263a9a59638a42fad55049ec2dae011fccfe801871d0799a93d |
|
MD5 | 878f5349d71a3cb121a2ff4ae74eafd4 |
|
BLAKE2b-256 | 289ffbea3eb2f3774eba0fddcfda3e59a948c4cad32b3276671f8fd54350f011 |