Go to file
Kainan Cha fef9532954 Update README with framework support
Signed-off-by: Kainan Cha <kainan.cha@verisilicon.com>
2021-02-25 17:50:36 +08:00
cmake Add cross compile for A311D 2021-02-07 18:52:03 +08:00
include/tim/vx fix the bug of pooling layer output shape mismatch 2021-02-24 10:15:24 +08:00
prebuilt-sdk Support build for A311D 2021-01-29 00:11:41 -08:00
samples/lenet Update linking style as static linking for sample 2021-02-08 14:47:37 +08:00
src/tim/vx Link whole archive of tim_internal 2021-02-25 15:45:35 +08:00
toolchains support build for tensorflow A311D 2021-02-07 10:33:04 +08:00
.bazelrc support build for tensorflow A311D 2021-02-07 10:33:04 +08:00
.bazelversion Support build for A311D 2021-01-29 00:11:41 -08:00
.clang-format Add .clang-format 2021-01-19 09:54:50 +08:00
BUILD.bazel Added NBG support 2021-02-22 11:38:21 +08:00
CMakeLists.txt Update linking style as static linking for sample 2021-02-08 14:47:37 +08:00
LICENSE Initial Commit for VERSION 1.1.28 2021-01-11 18:27:48 +08:00
README.md Update README with framework support 2021-02-25 17:50:36 +08:00
VERSION Initial Commit for VERSION 1.1.28 2021-01-11 18:27:48 +08:00
WORKSPACE Added NBG support 2021-02-22 11:38:21 +08:00

README.md

TIM-VX - Tensor Interface Module for OpenVX

TIM-VX is a software integration module provided by VeriSilicon to facilitate deployment of Neural-Networks on OpenVX enabled ML accelerators. It serves as the backend binding for runtime frameworks such as Android NN, Tensorflow-Lite, MLIR, TVM and more.

Main Features

  • Over 130 internal operators with rich format support for both quantized and floating point
  • Simplified binding API calls to create Tensors and Operations
  • Dynamic graph construction and supports shape inferencing
  • Built-in custom layer extensions
  • A set of utility functions for debugging

Framework Support

Tensorflow-Lite Delegate (Unofficial) OAID Tegine (Official) MLIR Dialect (In development) TVM (In development)

Roadmap

Roadmap of TIM-VX will be updated here in the future.

Get started

Build and Run

TIM-VX uses bazel build system by default. Install bazel first to get started.

TIM-VX needs to be compiled and linked against VeriSilicon OpenVX SDK which provides related header files and pre-compiled libraries. A default linux-x86_64 SDK is provided which contains the simulation environment on PC. Platform specific SDKs can be obtained from respective SoC vendors.

To build TIM-VX

bazel build libtim-vx.so

To run sample LeNet

# set VIVANTE_SDK_DIR for runtime compilation environment
export VIVANTE_SDK_DIR=`pwd`/prebuilt-sdk/x86_64_linux

bazel build //samples/lenet:lenet_asymu8_cc
bazel run //samples/lenet:lenet_asymu8_cc

To build and run Tensorflow-Lite delegate on A311D platform

# clone and cross build VeriSilicon tensorflow fork with TFlite delegate support
git clone --single-branch --branch dev/vx-delegate git@github.com:VeriSilicon/tensorflow.git vx-delegate; cd vx-delegate
bazel build --config A311D //tensorflow/lite/tools/benchmark:benchmark_model

# push benchmark_model onto device and run
./benchmark_model --graph=mobilenet_v1_1.0_224_quant.tflite --use_vxdelegate=true