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Tengine is a lite, high performance, modular inference engine for embedded device

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Tengine Overview

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Tengine, developed by OPEN AI LAB, is a lite, high-performance, and modular inference engine for embedded device.

Tengine is composed of six modules: core/operator/serializer/executor/driver/wrapper.

  • core provides the basic components and functionalities of the system.
  • operator defines the schema of operators, such as convolution, relu, pooling, etc. al. Here is the current support operator list.
  • serializer is to load the saved model. The serializer framework is extensible to support different format, including the customized one. caffe/onnx/Tensorflow and MXNet models can be loaded directly by Tengine.
  • executor implements the code to run graph and operators. Current version provides a highly optimized implementation for multi A72 cores.
  • driver is the adapter of real H/W and provides service to device executor by HAL API. It is possible for single driver to create multiple devices.
  • wrapper provides the wrapper of APIs for different frameworks. Both Caffe API wrapper and Tensorflow API wrapper work now.

This version can load and run Caffe/MXNet model of mobilenet and squeezenet directly. For more details, please goto install.

NOTE: Old Caffe model has to be upgraded using upgrade_net_proto_binary/upgrade_net_proto_binary from Caffe's package.

Performance

The data is collected on 1.8G A72 and on chip RK3399, by repeating calling the forward interface to get the average time cost (ms) per run.

  • Single A72 core (1xA72)
NN Caffe(Openblas) Tengine
squeezenet 147 91
mobilenet 306 122
  • Two A72 cores (2xA72)
NN Caffe(Openblas) Tengine
squeezenet 102 51
mobilenet 232 65

For details to run benchmark, please visit benchmark page.

Build and Install

please refer to the install page.

Tengine examples

please visit exmaples for applications on classification/detection.

Develop New Operator

It is easy to add new operator to Tengine. Here is the guide on new operator.

Support New Model Format

Tengine can be extended to support new serialization format, by building new serializer module.

How to build new serializer module

Communication && Tech Support

  • Github issues
  • QQ group: 829565581 (Question:Tengine Answer:openailab)
  • Wechat group: add account gaojinwei01 as friend. Input your Github account name, and then you will be recognized and invited into the group

Release History

version 0.7.2 - 2018/10/15

Serializer:

tensorflow: support more models

ONNX: update new onnx protobuf version and support more op

version 0.7.0 - 2018/9/15

New features

Serializer: support saving model as c files

ACL GPU: add FP16 support

NN: mobilenet v2 support in examples

Accuray tools: yolov2 accuracy test

Build:

   support cross-building arm32 library 

   support building on raspberry pi 3b

   automatically clean the build directory when makfile.config changed

Bug fix

A few memory leakage issues in library and examples

A race condition issue between front thread and the background working thread

Tensorflow serializer issue: fail to load inception_v3 model

version 0.6.0 - 2018/7/02

Support Tengine model file. protobuf is optional now.

Please refer to tengine_model exmaples

version 0.5.0 - 2018/6/15

New features

Support GPU: using ACL (Arm computing library) as a backend graph device

Support blas operator implementation: Tengine can run on x86 without caffe now

Support new NN: Inception-v3/vgg16/faster-rcnn/ssd/yolo-v2

Support Android build: includes 32bit and 64bit

Support cross-compile on x86 (experimental): debian example contributed by mcharleb and Mani-Sadhasivam @ Linaro

Support Tensorflow serializer: load inception-v3 and mobilenet TF model directly

Support Tensorflow wrapper: label_image.cpp from tensorflow repo

Others

Single so file now and remove the etc/config according to feedback from field.

Tengine will automatically probe the CPU arch/part settings, and there is just one CPU driver now.

To assign cpu manually when necessary:

 export TENGINE_CPU_LIST=1,2 

Besides probing CPU, a few CPUs are defined in cpu_predefined.cpp, including rk3399/a63/kirin960/apq8096. To use the predefined CPU, refers to below:

const struct cpu_info * p_info=get_predefined_cpu("rk3399");
create_cpu_device("rk3399",p_info);

version 0.3.0 - 2018/2/6

Introduce the driver/device model to support MT(Multi-Thread)

Support new NN: Inception-v4

Caffe Wrapper examples: squeezenet/mobilenet/mtcnn

MXNet model load examples: squeezenet/mobilenet

version 0.2.0 - 2018/1/24

Support new operator: Eltwise, PReLU, Slice

Support new NN: mtcnn, resnet and lighten_cnn

Experimental caffe API wrapper: caffe based application just needs to recompile to use Tengine

version 0.1.2 - 2017/12/30

Update documents, as well a few fixes.

version 0.1.0 - 2017/12/29

Initial release of single A72 support

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Tengine is a lite, high performance, modular inference engine for embedded device

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