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RISC-V Driven Orchestration of Vector Processing Units and eFlash Compute-in-Memory Arrays for Fast and Accurate Keyword Spotting
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Title
RISC-V Driven Orchestration of Vector Processing Units and eFlash Compute-in-Memory Arrays for Fast and Accurate Keyword Spotting
Issued Date
2025-01-23
Citation
Kang, Gunil. (2025-01-23). RISC-V Driven Orchestration of Vector Processing Units and eFlash Compute-in-Memory Arrays for Fast and Accurate Keyword Spotting. 30th Asia and South Pacific Design Automation Conference, ASP-DAC 2025, 1174–1180. doi: 10.1145/3658617.3697697
Type
Conference Paper
ISBN
9798400706356
ISSN
2153-6961
Abstract
In this paper, we propose a computationally efficient keyword spotting (KWS) model, named hybrid reparameterized FSMN (HRepFSMN), by carefully examining the impact of binarization on the accuracy. In particular, we found that binarizing depthwise convolution (DW-Conv) within the previous binarized KWS model, i.e., BiFSMNv2, does not lead to a significant reduction in FLOPs. Therefore, we allow floating-point (FP) operations on less computation-intensive DW-Conv layers while the remaining layers are computed in a binary fashion (hybrid data type). In addition, we remove skip connections, which require data fetching in full precision, by applying a reparameterization technique. More importantly, to efficiently compute the proposed HRepFSMN, we present a RISC-V controlled hardware accelerator that consists of reconfigurable vector processing units for FP operations and eFlash compute-in-memory arrays for binary operations. We extend RISC-V instructions so that the core can efficiently manage both computing fabrics. As a result, our HRepFSMN improves accuracy by 2.57%/4.98% with 24.02×/3.66× speed-up compared to BiFSMNv2/BiFSMNv2_small. By shrinking down our HRepFSMN, we achieve 0.95% higher accuracy with 20.87× speed-up compared to BiFSMNv2_small. © 2025 Institute of Electrical and Electronics Engineers Inc.. All rights reserved.
URI
https://scholar.dgist.ac.kr/handle/20.500.11750/58411
DOI
10.1145/3658617.3697697
Publisher
Association for Computing Machinery
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