Abstract
The growing demand for efficient deep learning inference on edge devices requires hardware that is both precision-adaptive and resource-efficient. This paper introduces C-SIMD, a CORDIC-driven, configurable SIMD Processing Element (PE) architecture for scalable, multi-precision MAC operations in DNN accelerators. C-SIMD supports dynamic operand precision (4/8/16/32-bit) and enables symmetric and asymmetric computation modes, covering integer and fixed-point arithmetic. By leveraging partial product computation with pipelined 8-bit CORDIC-based approximate multipliers, the architecture scales efficiently to higher precision while achieving notable area and power savings. A configurable pipeline offers tunable trade-offs between accuracy and complexity, making C-SIMD suitable for resource-constrained inference. Strategic reuse of the adder in the accumulation path enhances throughput and optimizes resource utilization. Unlike prior designs, C-SIMD fully exploits available resources and supports configurations such as 16 parallel 8×8-bit, 4 parallel 16×16-bit, single 32×32-bit, and asymmetric 32×8-bit MACs. Hardware evaluation demonstrates up to 14.29% area savings and as much as 16.17 × throughput improvement. The proposed C-SIMD_Low (4/8/16) achieves 7.04 GOP/s, while C-SIMD_High (8/16/32) attains 4.16 GOP/s, delivering a 4 × performance-efficiency gain over prior MAC architectures. Inference tests indicate minimal accuracy loss—below 1% on MNIST-LeNet, under 2.9% on CIFAR-10-AlexNet, and less than 2.2% on CIFAR-10-VGG16 compared to float32 baselines—demonstrating its potential for highthroughput, energy-efficient Edge-AI systems.
| Original language | British English |
|---|---|
| Pages (from-to) | 19015-19029 |
| Number of pages | 15 |
| Journal | IEEE Access |
| Volume | 14 |
| DOIs | |
| State | Published - 2026 |
UN SDGs
This output contributes to the following UN Sustainable Development Goals (SDGs)
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SDG 7 Affordable and Clean Energy
Keywords
- Adaptive precision
- CORDIC-driven computation
- DNN accelerator
- edge AI
- SIMD processing element
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