Remarn: A Reconfigurable Multi-threaded Multi-core Accelerator for Recurrent Neural Networks

Author:

Que Zhiqiang1ORCID,Nakahara Hiroki2ORCID,Fan Hongxiang1ORCID,Li He3ORCID,Meng Jiuxi1ORCID,Tsoi Kuen Hung4ORCID,Niu Xinyu4ORCID,Nurvitadhi Eriko5ORCID,Luk Wayne1ORCID

Affiliation:

1. Imperial College London, South Kensington, London, UK

2. Tokyo Institute of Technology, Ohokayama, Tokyo, Japan

3. University of Cambridge, Cambridge, UK

4. Corerain Technologies Ltd., Shenzhou, China

5. Intel Corporation, Jones Farm Campus, Hillsboro, OR, USA

Abstract

This work introduces Remarn, a reconfigurable multi-threaded multi-core accelerator supporting both spatial and temporal co-execution of Recurrent Neural Network (RNN) inferences. It increases processing capabilities and quality of service of cloud-based neural processing units (NPUs) by improving their hardware utilization and by reducing design latency, with two innovations. First, a custom coarse-grained multi-threaded RNN/Long Short-Term Memory (LSTM) hardware architecture, switching tasks among threads when RNN computational engines meet data hazards. Second, the partitioning of this hardware architecture into multiple full-fledged sub-accelerator cores, enabling spatially co-execution of multiple RNN/LSTM inferences. These innovations improve the exploitation of the available parallelism to increase runtime hardware utilization and boost design throughput. Evaluation results show that a dual-threaded quad-core Remarn NPU achieves 2.91 times higher performance while only occupying 5.0% more area than a single-threaded one on a Stratix 10 FPGA. When compared with a Tesla V100 GPU implementation, our design achieves 6.5 times better performance and 15.6 times higher power efficiency, showing that our approach contributes to high performance and energy-efficient FPGA-based multi-RNN inference designs for datacenters.

Funder

United Kingdom EPSRC

Publisher

Association for Computing Machinery (ACM)

Subject

General Computer Science

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