Publication
Signal Processing and Machine Learning on Reconfigurable Hardware
Hendrik Wöhrle; Johannes Teiwes
DFKI GmbH, DFKI Documents ( D), Vol. 14-05, ISBN ISSN 0946-0098, Selbstverlag, 7/2014.
Abstract
In this poster, the framework reSPACE for signal processing and machine learning on reconfigurable hardwareis introduced. It allows to rapidly develop application-specific, FPGA-based hardware accelerators to Speed up certain computational intensive data processing tasks. The underlying computational model is the static heterogeneous synchronous dataflow computing paradigm. In order to make the hardware accelerators accessible, it utilizes various model-based software Generation techniques to automatically generate device drivers and test facilities for simulation- and hardware-based verification.