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POLARON: Precision-aware On-device Learning and Adaptive Runtime-cONfigurable AI acceleration

POLARON: Precision-aware On-device Learning and Adaptive Runtime-cONfigurable AI acceleration

来源:Arxiv_logoArxiv
英文摘要

The increasing complexity of AI models requires flexible hardware capable of supporting diverse precision formats, particularly for energy-constrained edge platforms. This work presents PARV-CE, a SIMD-enabled, multi-precision MAC engine that performs efficient multiply-accumulate operations using a unified data-path for 4/8/16-bit fixed-point, floating point, and posit formats. The architecture incorporates a layer adaptive precision strategy to align computational accuracy with workload sensitivity, optimizing both performance and energy usage. PARV-CE integrates quantization-aware execution with a reconfigurable SIMD pipeline, enabling high-throughput processing with minimal overhead through hardware-software co-design. The results demonstrate up to 2x improvement in PDP and 3x reduction in resource usage compared to SoTA designs, while retaining accuracy within 1.8% FP32 baseline. The architecture supports both on-device training and inference across a range of workloads, including DNNs, RNNs, RL, and Transformer models. The empirical analysis establish PARVCE incorporated POLARON as a scalable and energy-efficient solution for precision-adaptive AI acceleration at edge.

Mukul Lokhande、Santosh Kumar Vishvakarma

微电子学、集成电路计算技术、计算机技术

Mukul Lokhande,Santosh Kumar Vishvakarma.POLARON: Precision-aware On-device Learning and Adaptive Runtime-cONfigurable AI acceleration[EB/OL].(2025-06-10)[2025-06-30].https://arxiv.org/abs/2506.08785.点此复制

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