Skip to content

This project contains a code generator that produces static C NN inference deployment code targeting tiny micro-controllers (TinyML) as replacement for other µTVM runtimes. This tools generates a runtime, which statically executes the compiled model. This reduces the overhead in terms of code size and execution time compared to having a dynamic …

License

tum-ei-eda/utvm_staticrt_codegen

Repository files navigation

µTVM StaticRT CodeGen

This project contains a code generator that produces static C NN inference deployment code targeting tiny micro-controllers (TinyML) as replacement for other µTVM runtimes. This tools generates a runtime, which statically executes the compiled model. This reduces the overhead in terms of code size and execution time compared to having a dynamic on-device runtime.

Tool flow

Requirements

  • Install required system packages
  • Install required python packages
  • Clone TVM
  • Apply patches in tvm_patches/
  • Build TVM

For detailed commands see CI Config.

Building

The generator is a conventional CMake project.

mkdir build && cd build
cmake ..
cmake --build .

Usage

  • Point python to the TVM installation:

    export PYTHONPATH=../tvm/python:${PYTHONPATH}
    
  • Generate a graph.json, params.bin and kernels.c file for your model with µTVM. A complete example is shown in this µTVM example script.

  • Inspect kernels.c and determine the required workspace size by looking at the TVMBackendAllocWorkspace calls and picking the largest used byte size. If there are no calls, the size should be zero.

  • Execute the µTVM StaticRT CodeGen:

    ./utvm_staticrt_codegen graph.json params.bin staticrt.c $WORKSPACE_SIZE
    
  • Now the kernels.c and staticrt.c can be compiled together with some calling code into a complete application. An example is given in examples/target_src/.

For detailed commands see example full flow script.

About

This project contains a code generator that produces static C NN inference deployment code targeting tiny micro-controllers (TinyML) as replacement for other µTVM runtimes. This tools generates a runtime, which statically executes the compiled model. This reduces the overhead in terms of code size and execution time compared to having a dynamic …

Topics

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published