Carnegie Mellon University
file.pdf (445.33 kB)

RAIDR: Retention-Aware Intelligent DRAM Refresh

Download (445.33 kB)
journal contribution
posted on 2012-06-01, 00:00 authored by Jamie Liu, Ben Jaiyen, Richard Veras, Onur Mutlu

Dynamic random-access memory (DRAM) is the building block of modern main memory systems.DRAM cells must be periodically refreshed to prevent loss of data. These refresh operations waste energy and degrade system performance by interfering with memory accesses. The negative effects ofDRAM refresh increase as DRAM device capacity increases. Existing DRAM devices refresh all cells at a rate determined by the leakiest cell in the device. However, most DRAM cells can retain data for significantly longer. Therefore, many of these refreshes are unnecessary. In this paper, we proposeRAIDR (Retention-Aware Intelligent DRAM Refresh), a low-cost mechanism that can identify and skip unnecessary refreshes using knowledge of cell retention times. Our key idea is to group DRAM rows into retention time bins and apply a different refresh rate to each bin. As a result, rows containing leaky cells are refreshed as frequently as normal, while most rows are refreshed less frequently. RAIDRuses Bloom filters to efficiently implement retention time bins. RAIDR requires no modification to DRAMand minimal modification to the memory controller. In an 8-core system with 32 GB DRAM, RAIDRachieves a 74.6% refresh reduction, an average DRAM power reduction of 16.1%, and an average system performance improvement of 8.6% over existing systems, at a modest storage overhead of 1.25 KB in the memory controller. RAIDR's benefits are robust to variation in DRAM system configuration, and increase as memory capacity increases.


Publisher Statement

© 2012 IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for all other uses, in any current or future media, including reprinting/republishing this material for advertising or promotional purposes, creating new collective works, for resale or redistribution to servers or lists, or reuse of any copyrighted component of this work in other works.



Usage metrics


    Ref. manager