Building FPGA-based Machine Learning Accelerators in Python
Offered By: PyCon US via YouTube
Course Description
Overview
Explore the development of a simple machine learning accelerator deployed on a commodity FPGA using a Python-based toolchain in this 34-minute PyCon US talk. Witness a demonstration of an accelerator built on an entry-level Xilinx FPGA with a total cost under $200. Learn about the combination of open-source software tools used, including PyTorch and ONNX for modeling, and Migen and LiteX for System-on-chip construction. Gain insights into the array of open-source and proprietary vendor tools required for this project, and discover the broader landscape of open-source silicon development.
Syllabus
Talks - Tim Paine: Building FPGA-based Machine Learning Accelerators in Python
Taught by
PyCon US
Related Courses
Embedded Systems DesignIndian Institute of Technology, Kharagpur via Swayam FPGA computing systems: Background knowledge and introductory materials
Politecnico di Milano via Coursera Future of Computing - on the Road to Quantum
openHPI Learning FPGA Development
LinkedIn Learning Learn VHDL and FPGA Development
Udemy