arXiv Open Access 2025

Multi-Dimensional Vector ISA Extension for Mobile In-Cache Computing

Alireza Khadem Daichi Fujiki Hilbert Chen Yufeng Gu Nishil Talati +2 lainnya
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Abstrak

In-cache computing technology transforms existing caches into long-vector compute units and offers low-cost alternatives to building expensive vector engines for mobile CPUs. Unfortunately, existing long-vector Instruction Set Architecture (ISA) extensions, such as RISC-V Vector Extension (RVV) and Arm Scalable Vector Extension (SVE), provide only one-dimensional strided and random memory accesses. While this is sufficient for typical vector engines, it fails to effectively utilize the large Single Instruction, Multiple Data (SIMD) widths of in-cache vector engines. This is because mobile data-parallel kernels expose limited parallelism across a single dimension. Based on our analysis of mobile vector kernels, we introduce a long-vector Multi-dimensional Vector ISA Extension (MVE) for mobile in-cache computing. MVE achieves high SIMD resource utilization and enables flexible programming by abstracting cache geometry and data layout. The proposed ISA features multi-dimensional strided and random memory accesses and efficient dimension-level masked execution to encode parallelism across multiple dimensions. Using a wide range of data-parallel mobile workloads, we demonstrate that MVE offers significant performance and energy reduction benefits of 2.9x and 8.8x, on average, compared to the SIMD units of a commercial mobile processor, at an area overhead of 3.6%.

Topik & Kata Kunci

Penulis (7)

A

Alireza Khadem

D

Daichi Fujiki

H

Hilbert Chen

Y

Yufeng Gu

N

Nishil Talati

S

Scott Mahlke

R

Reetuparna Das

Format Sitasi

Khadem, A., Fujiki, D., Chen, H., Gu, Y., Talati, N., Mahlke, S. et al. (2025). Multi-Dimensional Vector ISA Extension for Mobile In-Cache Computing. https://arxiv.org/abs/2501.09902

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2025
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arXiv
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