Impact of Memory Approximation on Energy Efficiency
Abstract
Approximate memories can lower energy consumption at expense of incurring errors in some of the read/write operations. While these errors may be tolerated in some cases, in general, parts of the application must be re-executed to achieve usable results when a large number of errors occur. Frequent reexecutions may, in turn, attenuate or negate energy benefits obtained from using approximate memories. In this work, we show the energy impact of memory approximations in applications considering different quality requirements. Five out of nine selected applications showed a positive energy-quality tradeoff. For 8 error these applications, our results show up to 30% energy savings at a 10− rate, when a 20% degradation in quality is allowed.
Keywords:
Integrated circuit modeling, Computational modeling, Transform coding, Kernel, High performance computing, Memory management, Error analysis, Approximate Computing, Energy Efficiency, Memory approximation
Published
2018-10-01
How to Cite
FELZMANN, Isaías; FABRÍCIO FILHO, João; AZEVEDO, Rodolfo; WANNER, Lucas.
Impact of Memory Approximation on Energy Efficiency. In: SYMPOSIUM ON HIGH PERFORMANCE COMPUTING SYSTEMS (SSCAD), 19. , 2018, São Paulo.
Anais [...].
Porto Alegre: Sociedade Brasileira de Computação,
2018
.
p. 53-60.