Athena: high-performance sparse tensor contraction sequence on heterogeneous memory

Jiawen Liu, Dong Li, R. Gioiosa, Jiajia Li
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引用次数: 9

Abstract

Sparse tensor contraction sequence has been widely employed in many fields, such as chemistry and physics. However, how to efficiently implement the sequence faces multiple challenges, such as redundant computations and memory operations, massive memory consumption, and inefficient utilization of hardware. To address the above challenges, we introduce Athena, a high-performance framework for SpTC sequences. Athena introduces new data structures, leverages emerging Optane-based heterogeneous memory (HM) architecture, and adopts stage parallelism. In particular, Athena introduces shared hash table-represented sparse accumulator to eliminate unnecessary input processing and data migration; Athena uses a novel data-semantic guided dynamic migration solution to make the best use of the Optane-based HM for high performance; Athena also co-runs execution phases with different characteristics to enable high hardware utilization. Evaluating with 12 datasets, we show that Athena brings 327-7362× speedup over the state-of-the-art SpTC algorithm. With the dynamic data placement guided by data semantics, Athena brings performance improvement on Optane-based HM over a state-of-the-art software-based data management solution, a hardware-based data management solution, and PMM-only by 1.58×, 1.82×, and 2.34× respectively. Athena also showcases its effectiveness in quantum chemistry and physics scenarios.
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Athena:异构存储器上的高性能稀疏张量收缩序列
稀疏张量收缩序列在化学、物理等领域得到了广泛的应用。然而,如何有效地实现该序列面临着冗余计算和内存操作、大量内存消耗和硬件利用率低下等诸多挑战。为了解决上述问题,我们引入了一个高性能的SpTC序列框架Athena。Athena引入了新的数据结构,利用了新兴的基于optane的异构内存(HM)架构,并采用了阶段并行。特别是,Athena引入了共享哈希表表示的稀疏累加器,消除了不必要的输入处理和数据迁移;Athena使用了一种新颖的数据语义引导的动态迁移解决方案,以充分利用基于optane的HM实现高性能;Athena还共同运行具有不同特征的执行阶段,以实现高硬件利用率。通过对12个数据集的评估,我们发现Athena比最先进的SpTC算法带来了327- 7362x的加速。通过数据语义指导的动态数据放置,Athena在基于optane的HM上带来了性能改进,比最先进的基于软件的数据管理解决方案、基于硬件的数据管理解决方案和PMM-only分别提高了1.58倍、1.82倍和2.34倍。雅典娜还展示了其在量子化学和物理场景中的有效性。
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