Storage-intensive systems in data centers rely heavily on DRAM and SSDs for the performance of reads and persistent writes, respectively. These applications pose a diverse set of requirements, and are limited by ixed capacity, ixed access latency, and ixed function of these resources as either memory or storage. In contrast, emerging memory technologies like 3D-Xpoint, battery-backed DRAM, and ASIC-based fast memory-compression ofer capabilities across several dimensions. However, existing proposals to use such technologies can only improve either read or write performance but not both without requiring extensive changes to the application, and the operating system. We present PolyEMT, a system that employs an emerging memory technology based cache to the SSD, and transparently morphs the capabilities of this cache across several dimensions ś persistence, capacity, latency ś to jointly improve both read and write performance. We demonstrate the beneits of PolyEMT using several large-scale storage-intensive workloads from our datacenters.
CITATION STYLE
Narayanan, I., Ganesan, A., Badam, A., Govindan, S., Sharma, B., & Sivasubramaniam, A. (2019). Geting more performance with polymorphism from emerging memory technologies. In SYSTOR 2019 - Proceedings of the 12th ACM International Systems and Storage Conference (pp. 8–20). Association for Computing Machinery, Inc. https://doi.org/10.1145/3319647.3325826
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