Skip to content

🔀 Neural Network (NN) Streamer, Stream Processing Paradigm for Neural Network Apps/Devices.

License

Notifications You must be signed in to change notification settings

tdrozdovsky/nnstreamer

 
 

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 

NNStreamer

Gitter Code Coverage Coverity Scan Defect Status DailyBuild GitHub repo size GitHub issues GitHub pull requests CII Best Practices

Neural Network Support as Gstreamer Plugins.

NNStreamer is a set of Gstreamer plugins that allow Gstreamer developers to adopt neural network models easily and efficiently and neural network developers to manage neural network pipelines and their filters easily and efficiently.

Architectural Description (WIP)

NNStreamer: Stream Processing Paradigm for Neural Networks ... [pdf/tech report]
GStreamer Conference 2018, NNStreamer [media] [pdf/slides]
Naver Tech Talk (Korean), 2018 [media] [pdf/slides]
Samsung Developer Conference 2019, NNStreamer [media]
ResearchGate Page of NNStreamer

Official Releases

Tizen Ubuntu Android Yocto macOS
5.5M2 and later 16.04/18.04/20.04 9/P Zeus and later
arm armv7l badge Available Available Ready N/A
arm64 aarch64 badge Available android badge Planned N/A
x64 x64 badge ubuntu badge Ready Ready Available
x86 x86 badge N/A N/A N/A N/A
Publish Tizen Repo PPA Daily build Brew Tap
API C/C# (Official) C Java C C
  • Ready: CI system ensures build-ability and unit-testing. Users may easily build and execute. However, we do not have automated release & deployment system for this instance.
  • Available: binary packages are released and deployed automatically and periodically along with CI tests.
  • Daily Release
  • SDK Support: Tizen Studio (5.5 M2+) / Android Studio (JCenter, "nnstreamer")
  • Enabled features of official releases

Objectives

  • Provide neural network framework connectivities (e.g., tensorflow, caffe) for gstreamer streams.

    • Efficient Streaming for AI Projects: Apply efficient and flexible stream pipeline to neural networks.
    • Intelligent Media Filters!: Use a neural network model as a media filter / converter.
    • Composite Models!: Multiple neural network models in a single stream pipeline instance.
    • Multi Modal Intelligence!: Multiple sources and stream paths for neural network models.
  • Provide easy methods to construct media streams with neural network models using the de-facto-standard media stream framework, GStreamer.

    • Gstreamer users: use neural network models as if they are yet another media filters.
    • Neural network developers: manage media streams easily and efficiently.

Maintainers

Committers

Components

Note that this project has just started and many of the components are in design phase. In Component Description page, we describe nnstreamer components of the following three categories: data type definitions, gstreamer elements (plugins), and other misc components.

Getting Started

For more details, please access the following manuals.

  • For Linux-like systems such as Tizen, Debian, and Ubuntu, press here.
  • For macOS systems, press here.
  • To build an API library for Android, press here.

Applications

CI Server

AI Acceleration Hardware Support

Although a framework may accelerate transparently as Tensorflow-GPU does, nnstreamer provides various hardware acceleration subplugins.

  • Movidius-X via ncsdk2 subplugin: Released
  • Movidius-X via openVINO subplugin: Released
  • Edge-TPU via edgetpu subplugin: Released
  • ONE runtime via nnfw(an old name of ONE) subplugin: Released
  • ARMNN via armnn subplugin: Released
  • Verisilicon-Vivante via vivante subplugin: Released
  • Qualcomm SNPE via snpe subplugin: Released
  • Exynos NPU: WIP

Contributing

Contributions are welcome! Please see our Contributing Guide for more details.

About

🔀 Neural Network (NN) Streamer, Stream Processing Paradigm for Neural Network Apps/Devices.

Resources

License

Code of conduct

Security policy

Stars

Watchers

Forks

Packages

No packages published

Languages

  • C 45.2%
  • C++ 39.0%
  • Shell 8.4%
  • Meson 2.9%
  • Python 2.6%
  • Makefile 0.7%
  • Other 1.2%