onnxruntime-tvm/vta
Lianmin Zheng 32076df815 [AUTOTVM] TOPI integration for ARM CPU (#1487) 2018-08-02 08:59:25 -07:00
..
config [VTA] bugfix parameter derivation (#1521) 2018-08-01 08:56:01 -07:00
hardware/xilinx [DOC] Update VTA readme files to avoid stale information (#1484) 2018-07-24 17:58:58 -07:00
include/vta [TEST] CI infrastructure (#30) 2018-07-11 21:54:39 -07:00
python/vta [AUTOTVM] TOPI integration for ARM CPU (#1487) 2018-08-02 08:59:25 -07:00
src [IR] support general type annotation. (#1480) 2018-07-24 14:01:58 -07:00
tests [AUTOTVM] TOPI integration for ARM CPU (#1487) 2018-08-02 08:59:25 -07:00
tutorials [AUTOTVM] TOPI integration for ARM CPU (#1487) 2018-08-02 08:59:25 -07:00
README.md [DOC] Update VTA readme files to avoid stale information (#1484) 2018-07-24 17:58:58 -07:00

README.md

VTA: Open, Modular, Deep Learning Accelerator Stack

VTA (versatile tensor accelerator) is an open-source deep learning accelerator complemented with an end-to-end TVM-based compiler stack.

The key features of VTA include:

  • Generic, modular, open-source hardware
    • Streamlined workflow to deploy to FPGAs.
    • Simulator support to prototype compilation passes on regular workstations.
  • Driver and JIT runtime for both simulator and FPGA hardware back-end.
  • End-to-end TVM stack integration
    • Direct optimization and deployment of models from deep learning frameworks via TVM.
    • Customized and extensible TVM compiler back-end.
    • Flexible RPC support to ease deployment, and program FPGAs with the convenience of Python.

Learn more about VTA here.