Skip to content

airockchip/rknn-toolkit2

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

26 Commits
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

Description

RKNN software stack can help users to quickly deploy AI models to Rockchip chips. The overall framework is as follows:

In order to use RKNPU, users need to first run the RKNN-Toolkit2 tool on the computer, convert the trained model into an RKNN format model, and then inference on the development board using the RKNN C API or Python API.

  • RKNN-Toolkit2 is a software development kit for users to perform model conversion, inference and performance evaluation on PC and Rockchip NPU platforms.

  • RKNN-Toolkit-Lite2 provides Python programming interfaces for Rockchip NPU platform to help users deploy RKNN models and accelerate the implementation of AI applications.

  • RKNN Runtime provides C/C++ programming interfaces for Rockchip NPU platform to help users deploy RKNN models and accelerate the implementation of AI applications.

  • RKNPU kernel driver is responsible for interacting with NPU hardware. It has been open source and can be found in the Rockchip kernel code.

Support Platform

  • RK3588 Series
  • RK3576 Series
  • RK3566/RK3568 Series
  • RK3562 Series
  • RV1103/RV1106
  • RV1103B/RV1106B
  • RK2118

Note:

For RK1808/RV1109/RV1126/RK3399Pro, please refer to :

https://github.com/airockchip/rknn-toolkit

https://github.com/airockchip/rknpu

https://github.com/airockchip/RK3399Pro_npu

Download

  • You can also download all packages, docker image, examples, docs and platform-tools from RKNPU2_SDK, fetch code: rknn
  • You can get more examples from rknn mode zoo

Notes

  • RKNN-Toolkit2 is not compatible with RKNN-Toolkit
  • The supported Python versions are:
    • Python 3.6
    • Python 3.7
    • Python 3.8
    • Python 3.9
    • Python 3.10
    • Python 3.11
    • Python 3.12
  • Latest version:v2.3.0

RKNN LLM

If you want to deploy LLM (Large Language Model), we have introduced a new SDK called RKNN-LLM. For details, please refer to:

https://github.com/airockchip/rknn-llm

CHANGELOG

v2.3.0

  • RKNN-Toolkit2 support ARM64 architecture

  • RKNN-Toolkit-Lite2 support installation via pip

  • Add support for W4A16 symmetric quantization (RK3576)

  • Operator optimization, such as LayerNorm, LSTM, Transpose, MatMul, etc.

for older version, please refer CHANGELOG

Feedback and Community Support

  • Redmine (Feedback recommended, Please consult our sales or FAE for the redmine account)
  • QQ Group Chat: 1025468710 (full, please join group 3)
  • QQ Group Chat2: 547021958 (full, please join group 3)
  • QQ Group Chat3: 469385426