DocumentCode
233690
Title
On the Viability of Microservers for Financial Analytics
Author
Gillan, Charles J. ; Nikolopoulos, Dimitrios S. ; Georgakoudis, Giorgis ; Faloon, Richard ; Tzenakis, George ; Spence, Ivor
Author_Institution
Inst. for Electron. Commun. & Inf. Technol., Queen´s Univ., Belfast, UK
fYear
2014
fDate
16-16 Nov. 2014
Firstpage
29
Lastpage
36
Abstract
Energy consumption and total cost of ownership are daunting challenges for Datacenters, because they scale disproportionately with performance. Datacenters running financial analytics may incur extremely high operational costs in order to meet performance and latency requirements of their hosted applications. Recently, ARM-based microservers have emerged as a viable alternative to high-end servers, promising scalable performance via scale-out approaches and low energy consumption.In this paper, we investigate the viability of ARM-based microservers for option pricing, using the Monte Carlo and Binomial Tree kernels. We compare an ARM-based microserver against a state-of-the-art x86 server. We define application-related but platform-independent energy and performance metrics to compare those platforms fairly in the context of datacenters for financial analytics and give insight on the particular requirements of option pricing. Our experiments show that through scaling out energy-efficient compute nodes within a 2U rack-mounted unit, an ARM-based microserver consumes as little as about 60% of the energy per option pricing compared to an x86 server, despite having significantly slower cores. We also find that the ARM microserver scales enough to meet a high fraction of market throughput demand, while consuming up to 30% less energy than an Intel server.
Keywords
Monte Carlo methods; computer centres; energy consumption; financial data processing; trees (mathematics); ARM-based microservers; Intel server; Monte Carlo kernel; binomial tree kernel; data centers; energy consumption; financial analytics; latency requirements; market throughput demand; microserver viability; option pricing; performance metric; platform-independent energy metric; scale-out approach; total ownership cost; Contracts; Energy consumption; Kernel; Measurement; Optimized production technology; Pricing; Servers; Event processing; numerical simulation; energy efficiency; financial analytics;
fLanguage
English
Publisher
ieee
Conference_Titel
High Performance Computational Finance (WHPCF), 2014 Seventh Workshop on
Conference_Location
New Orleans, LA
Type
conf
DOI
10.1109/WHPCF.2014.11
Filename
7016371
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