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Storage Class Memory Architecture for Energy Efficient Data Centers Bruce Childers, Sangyeun Cho, Rami Melhem, Daniel Mossé, Jun Yang, Youtao Zhang Computer.

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Presentation on theme: "Storage Class Memory Architecture for Energy Efficient Data Centers Bruce Childers, Sangyeun Cho, Rami Melhem, Daniel Mossé, Jun Yang, Youtao Zhang Computer."— Presentation transcript:

1 Storage Class Memory Architecture for Energy Efficient Data Centers Bruce Childers, Sangyeun Cho, Rami Melhem, Daniel Mossé, Jun Yang, Youtao Zhang Computer Science Department University of Pittsburgh

2 Server power consumption (Watts) Processors Memory (Lefurgy et al., ’03) (1,614W) (2,972W)

3 Challenges with DRAM Power wall –Large fractions of system power consumed in DRAM Cost wall –Memory accounts for a major fraction of overall server cost Scaling wall –DRAM scaling becomes harder and harder Higher speed (bandwidth) means faster clocking Larger size = increase of loading (on buses) and refresh overheads (power & performance)

4 New non-volatile memory to rescue US Patents Granted MRAM FRAM PCM (PRAM) (Lam, VLSI-TSA ’08) 1.Non-volatile 2.Byte-addressable 3.Acceptable performance 4.Good scaling potential * Subject to write endurance limit 1.Non-volatile 2.Byte-addressable 3.Acceptable performance 4.Good scaling potential * Subject to write endurance limit

5 Agenda Storage class memory architecture Industry progress Our vision Some research questions

6 Storage class memory architecture L1 $$ L2 $$ L1 $$ PCM-Small Smart Mem-ctrl Smart Mem-ctrl DRAM PCM-Large PCM is slow and write endurance limited; we need DRAM buffering This is PCM working memory; a better species (e.g., SLC)? This is PCM “storage” space; maybe equivalent to PCM-Small or maybe slower and larger (e.g., MLC)? “Smart mem. controller” to handle diff. technologies; cache mgmt, wear leveling, error handling (ECC, sparing), trim & low-level scheduling

7 Prior work & findings Memory energy savings –Sizable savings of 20~90% [Zhou et al., ’09, Park et al., ’11] –At a manageable performance hit of ~5% or so Hardware wear leveling feasible [Qureshi et al., ’09, Seong et al., ’10] Other system implications –Fast system on and off [Doh et al., ’09] –Single-level data store [Venkataraman et al., ’11] –Rapid checkpointing [Dong et al., ’09]

8 Industry progress: Samsung Lee et al. ISSCC ’07 Lee et al. JSSC ’08 512Mb @90nm Diode switch design 266MB/s read 4.64MB/s write (x16) 512Mb @90nm Diode switch design 266MB/s read 4.64MB/s write (x16) Chung et al. ISSCC ’11 1Gb @58nm LPDDR2-N “Write skewing” 6.4MB/s write “DCWI” (~Flip-N-Write) 1Gb @58nm LPDDR2-N “Write skewing” 6.4MB/s write “DCWI” (~Flip-N-Write)

9 (Servalli, IEDM ’09) Industry progress: Numonyx (Micron) Early access program (2009) “Alverstone” (OMNEO) 128Mb @90nm TR switch design 40MB/s read (?) <1MB/s write (?) “Alverstone” (OMNEO) 128Mb @90nm TR switch design 40MB/s read (?) <1MB/s write (?) Numerous press releases (slated for MP in 2011) “Bonelli” 1Gb @45nm 1.8V I/O “Bonelli” 1Gb @45nm 1.8V I/O (2011~2012?) “Imola” and “Mandello” 2Gb & 4Gb @45nm 1.2V & 1.8V I/O LPDDR2-NVM & DDR3-NVM “Imola” and “Mandello” 2Gb & 4Gb @45nm 1.2V & 1.8V I/O LPDDR2-NVM & DDR3-NVM

10 Our vision To drastically reduce the power needed by TB capacities for main memory Cross-cutting, holistic system design –With heterogeneous resources, management tasks are best handled by collaboration of layers –MemVisor

11 Research questions (infra) PCM has the potential to beat DRAM in terms of capacity and power… –But what about performance? How much performance is “good enough” for key applications? What cross-layer information is critical for MemVisor? –What are appropriate interfaces? Can we predictively allocate different amount of DRAM and PCM to a virtual machine? –Hardware and software support?

12 Research questions (application) How can we best utilize persistency in memory? –Extension of storage? How? –New algorithms and data structures? PCM provides “storage” that is orders of magnitude faster than HDDs –Any changes needed in OS? DBMS? New algorithms that work synergistically with the underlying hardware and system layers for longer lifetime and higher reliability?

13 Storage Class Memory Architecture for Energy Efficient Data Centers www.cs.pitt.edu/PCM


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