Contribute Media
A thank you to everyone who makes this possible: Read More

Building FPGA-based Machine Learning Accelerators in Python

Description

In this talk, we will demo a simple machine learning accelerator deployed on a commodity FPGA and developed using a Python-based toolchain. The FPGA platform is based on an entry level Xilinx FPGA, with a total cost of materials <$200. The toolchain uses a combination of open source software, including PyTorch and ONNX for modeling, and Migen and LiteX for the construction of the System-on-chip. We will also survey the wide array of both open source and proprietary vendor tools necessary to build this project, and discuss the broader open source silicon landscape.

Details

Improve this page