Minerva: Accelerating Data Analysis in Next-Generation SSDs

Arup De, M. Gokhale, Rajesh K. Gupta, S. Swanson
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引用次数: 68

Abstract

Emerging non-volatile memory (NVM) technologies have DRAM-like latency with storage-like density, offering unique capability to analyze large data sets significantly faster than flash or disk storage. However, the hybrid nature of these NVM technologies such as phase-change memory (PCM) make it difficult to use them to best advantage in the memory-storage hierarchy. These NVMs lack the fast write latency required of DRAM and are thus not suitable as DRAM equivalent on the memory bus, yet their low latency even in random access patterns is not easily exploited over an I/O bus. In this work, we describe an FPGA-based system to execute application-specific operations in the NVM controller and evaluate its performance on two microbenchmarks and a keyvalue store. Our system Minerva1extends the conventional solidstate drive (SSD) architecture to offload data or I/O intensive application code to the SSD to exploit the low latency and high internal bandwidth of NVMs. Performing computation in the FPGA-based NVM storage controller significantly reduces data traffic between the host and storage and serves as an offload engine for data analysis workloads. A runtime library enables the programmer to offload computations to the SSD without dealing with the complications of the underlying architecture and inter-controller communication management. We have implemented a prototype of Minerva on the BEE3 FPGA system. We compare the performance of Minerva to a state of the art PCIe-attached PCM-based SSD. Minerva improves performance by an order of magnitude on two microbenchmarks. Minerva based key-value store performs up to 5.2 M get operations/s and 4.0 M set operations/s which is 7.45× and 9.85× higher than the PCM-based SSD that uses the conventional I/O architecture. This huge improvement comes from the reduction of data transfer between the storage to the host and the FPGA-based data processing in the SSD.
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Minerva:加速下一代ssd的数据分析
新兴的非易失性内存(NVM)技术具有类似dram的延迟和类似存储的密度,提供了独特的能力,可以比闪存或磁盘存储更快地分析大型数据集。然而,这些NVM技术(如相变存储器(PCM))的混合性质使得很难在内存-存储层次结构中充分利用它们。这些nvm缺乏DRAM所需的快速写入延迟,因此不适合作为内存总线上的DRAM等效,然而,即使在随机访问模式下,它们的低延迟也不容易在I/O总线上被利用。在这项工作中,我们描述了一个基于fpga的系统,用于在NVM控制器中执行特定于应用程序的操作,并在两个微基准测试和一个键值存储上评估其性能。我们的系统minerva1扩展了传统的固态硬盘(SSD)架构,将数据或I/O密集型应用程序代码卸载到SSD上,以利用nvm的低延迟和高内部带宽。在基于fpga的NVM存储控制器中执行计算,可以显著减少主机和存储之间的数据流量,并作为数据分析工作负载的卸载引擎。运行时库使程序员能够将计算卸载到SSD上,而无需处理底层体系结构和控制器间通信管理的复杂性。我们已经在BEE3 FPGA系统上实现了Minerva的原型。我们将Minerva的性能与最先进的pcie连接的基于pcm的SSD进行比较。Minerva在两个微基准测试上提高了一个数量级的性能。基于Minerva的键值存储的get操作次数为5.2 M /s, set操作次数为4.0 M /s,分别比采用传统I/O架构的基于pcm的SSD高7.45倍和9.85倍。这种巨大的改进来自于减少了存储到主机之间的数据传输和SSD中基于fpga的数据处理。
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