1 research outputs found
ApproxFPGAs: Embracing ASIC-Based Approximate Arithmetic Components for FPGA-Based Systems
There has been abundant research on the development of Approximate Circuits
(ACs) for ASICs. However, previous studies have illustrated that ASIC-based ACs
offer asymmetrical gains in FPGA-based accelerators. Therefore, an AC that
might be pareto-optimal for ASICs might not be pareto-optimal for FPGAs. In
this work, we present the ApproxFPGAs methodology that uses machine learning
models to reduce the exploration time for analyzing the state-of-the-art
ASIC-based ACs to determine the set of pareto-optimal FPGA-based ACs. We also
perform a case-study to illustrate the benefits obtained by deploying these
pareto-optimal FPGA-based ACs in a state-of-the-art automation framework to
systematically generate pareto-optimal approximate accelerators that can be
deployed in FPGA-based systems to achieve high performance or low-power
consumption.Comment: Accepted for Publication at the 57th Design Automation Conference
(DAC), July 2020, San Francisco, CA, US