Asynchronous Memory Access Unit: Exploiting Massive Parallelism for Far Memory Access

Author:

Wang Luming1ORCID,Zhang Xu2ORCID,Wang Songyue2ORCID,Jiang Zhuolun2ORCID,Lu Tianyue2ORCID,Chen Mingyu2ORCID,Luo Siwei3ORCID,Huang Keji3ORCID

Affiliation:

1. State Key Lab of Processors, Institute of Computing Technology Chinese Academy of Sciences, Beijing, China and University of Chinese Academy of Sciences, Beijing, China

2. State Key Lab of Processors, Institute of Computing Technology Chinese Academy of Sciences, Beijing China and University of Chinese Academy of Sciences, Beijing, China

3. Huawei Technologies Co Ltd, Shenzhen, China

Abstract

The growing memory demands of modern applications have driven the adoption of far memory technologies in data centers to provide cost-effective, high-capacity memory solutions. However, far memory presents new performance challenges because its access latencies are significantly longer and more variable than local DRAM. For applications to achieve acceptable performance on far memory, a high degree of memory-level parallelism (MLP) is needed to tolerate the long access latency. While modern out-of-order processors are capable of exploiting a certain degree of MLP, they are constrained by resource limitations and hardware complexity. The key obstacle is the synchronous memory access semantics of traditional load/store instructions, which occupy critical hardware resources for a long time. The longer far memory latencies exacerbate this limitation. This article proposes a set of Asynchronous Memory Access Instructions (AMI) and its supporting function unit, Asynchronous Memory Access Unit (AMU), inside contemporary Out-of-Order Core. AMI separates memory request issuing from response handling to reduce resource occupation. Additionally, AMU architecture supports up to several hundreds of asynchronous memory requests through re-purposing a portion of L2 Cache as scratchpad memory (SPM) to provide sufficient temporal storage. Together with a coroutine-based programming framework, this scheme can achieve significantly higher MLP for hiding far memory latencies. Evaluation with a cycle-accurate simulation shows AMI achieves 2.42× speedup on average for memory-bound benchmarks with 1μs additional far memory latency. Over 130 outstanding requests are supported with 26.86× speedup for GUPS (random access) with 5 μs latency. These demonstrate how the techniques tackle far memory performance impacts through explicit MLP expression and latency adaptation.

Funder

National Key Research and Development Program of China NKRDPC

Publisher

Association for Computing Machinery (ACM)

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