2021 IEEE International Conference on Cluster Computing (CLUSTER) | 2021

Optimisation of an FPGA Credit Default Swap engine by embracing dataflow techniques

 
 
 

Abstract


Quantitative finance is the use of mathematical models to analyse financial markets and securities. Typically requiring significant amounts of computation, an important question is the role that novel architectures can play in accelerating these models in the future on HPC machines. In this paper we explore the optimisation of an existing, open source, FPGA based Credit Default Swap (CDS) engine using High Level Synthesis (HLS). Developed by Xilinx, and part of their open source Vitis libraries, the implementation of this engine currently favours flexibility and ease of integration over performance.We explore redesigning the engine to fully embrace the dataflow approach, ultimately resulting in an engine which is around eight times faster on an Alveo U280 FPGA than the original Xilinx library version. We then compare five of our engines on the U280 against a 24-core Xeon Platinum Cascade Lake CPU, outperforming the CPU by around 1.55 times, with the FPGA consuming 4.7 times less power and delivering around seven times the power efficiency of the CPU.

Volume None
Pages 775-778
DOI 10.1109/Cluster48925.2021.00114
Language English
Journal 2021 IEEE International Conference on Cluster Computing (CLUSTER)

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