Title :
Optimizing bandwidth and power of graphics memory with hybrid memory technologies and adaptive data migration
Author :
Zhao, Jishen ; Xie, Yuan
Author_Institution :
Dept. of Comput. Sci. & Eng., Pennsylvania State Univ., University Park, PA, USA
Abstract :
While GPUs are designed to hide memory latency with massive multi-threading, the tremendous demands for memory bandwidth and power consumption constrain the system performance scaling. In this paper, we propose a hybrid graphics memory architecture with different memory technologies (DRAM, STT-RAM, and RRAM), to improve the memory bandwidth and reduce the power consumption. In addition, we present an adaptive data migration mechanism that exploits various memory access patterns of GPGPU applications for further memory power reduction. We evaluate our design with a set of multi-threaded GPU workloads. Compared to traditional GDDR5 memory, our design leads to 16% of GPU system power reduction, and improves the system throughput and energy efficiency by 12% and 33%.
Keywords :
DRAM chips; SRAM chips; graphics processing units; power consumption; DRAM; GPGPU applications; RRAM; STT-RAM; adaptive data migration; hybrid graphics memory architecture; hybrid memory technologies; massive multithreading; memory access patterns; memory bandwidth; memory latency; memory power reduction; multithreaded GPU workloads; optimizing bandwidth; power consumption constrain; Bandwidth; Graphics processing units; Hybrid power systems; Memory management; Nonvolatile memory; Power demand; Random access memory;
Conference_Titel :
Computer-Aided Design (ICCAD), 2012 IEEE/ACM International Conference on
Conference_Location :
San Jose, CA