Analysing emerging memory technologies for big data and signal processing applications

T. Xu, V. Leppãnen
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引用次数: 6

Abstract

In this paper, we investigate and compare different emerging memory technologies as on-chip cache for big data and signal processing applications. Static Random Access Memory (SRAM) has been widely used as level 1 and last level caches for multicore processors. Server chips integrate Dynamic Random Access Memory (DRAM) as an additional cache for better server-level applications that process more data. Both SRAM and DRAM have advantages and disadvantages. Therefore new types of RAMs are proposed and prototyped. For big data and signal processing applications nowadays, enormous amount of data are processed, usually with time limitations. We analyse novel RAMs, including Phase-change RAM (PRAM), Magnetoresistive RAM (MRAM), Ferroelectric RAM (FRAM) and Resistive RAM (RRAM). The conventional and new memories are analysed in terms of size, area, access latency and power consumption. We present benchmark results using a full system simulator. Workloads are selected from several big data, server, signal processing and video processing applications. Experiments show that, in consideration of these applications, it is crucial to replace SRAM and DRAM caches with MRAM and RRAM.
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分析大数据和信号处理应用的新兴存储技术
在本文中,我们研究并比较了不同的新兴存储技术作为大数据和信号处理应用的片上缓存。静态随机存取存储器(SRAM)被广泛用作多核处理器的一级和最后一级缓存。服务器芯片集成动态随机存取存储器(DRAM)作为额外的缓存,用于处理更多数据的更好的服务器级应用程序。SRAM和DRAM都有各自的优缺点。因此,提出了新型ram并进行了原型设计。在当今的大数据和信号处理应用中,处理的数据量非常大,通常有时间限制。我们分析了新型RAM,包括相变RAM (PRAM)、磁阻RAM (MRAM)、铁电RAM (FRAM)和电阻RAM (RRAM)。分析了传统存储器和新型存储器的尺寸、面积、访问延迟和功耗。我们使用一个完整的系统模拟器给出基准测试结果。工作负载从几个大数据、服务器、信号处理和视频处理应用中选择。实验表明,考虑到这些应用,用MRAM和RRAM取代SRAM和DRAM缓存至关重要。
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