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Abstract

The multicore evolution has stimulated renewed interests in scaling up applications on shared-memory multiprocessors, significantly improving the scalability of many applications. But the scalability is limited within a single node; therefore programmers still have to redesign applications to scale out over multiple nodes. This paper revisits the design and implementation of distributed shared memory (DSM) as a way to scale out applications optimized for non-uniform memory access (NUMA) architecture over a well-connected cluster. This paper presents MAGI, an efficient DSM system that provides a transparent shared address space with scalable performance on a cluster with fast network interfaces. MAGI is unique in that it presents a NUMA abstraction to fully harness the multicore resources in each node through hierarchical synchronization and memory management. MAGI also exploits the memory access patterns of big-data applications and leverages a set of optimizations for remote direct memory access (RDMA) to reduce the number of page faults and the cost of the coherence protocol. MAGI has been implemented as a user-space library with pthread-compatible interfaces and can run existing multithreaded applications with minimized modifications. We deployed MAGI over an 8-node RDMAenabled cluster. Experimental evaluation shows that MAGI achieves up to 9.25x speedup compared with an unoptimized implementation, leading to a scalable performance for large-scale data-intensive applications.

Details

Title
Scaling out NUMA-Aware Applications with RDMA-Based Distributed Shared Memory
Author
Yang, Hong 1 ; Yang, Zheng 1 ; Yang, Fan 1 ; Bin-Yu, Zang 1 ; Hai-Bing Guan 1 ; Hai-Bo Chen 1 

 Shanghai Key Laboratory for Scalable Computing Systems, Shanghai Jiao Tong University, Shanghai, China 
Pages
94-112
Publication year
2019
Publication date
Jan 2019
Publisher
Springer Nature B.V.
ISSN
10009000
e-ISSN
18604749
Source type
Scholarly Journal
Language of publication
English
ProQuest document ID
2171314603
Copyright
Journal of Computer Science and Technology is a copyright of Springer, (2019). All Rights Reserved.