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Sensitivity-Guided Framework for Pruned and Quantized Reservoir Computing Accelerators

arXiv cs.AI / 3/11/2026

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Key Points

  • The paper introduces a compression framework for Reservoir Computing that balances quantization levels, pruning rates, accuracy, and hardware efficiency.
  • A sensitivity-guided pruning technique is used to remove less critical weights, minimizing accuracy loss while cutting computational costs.
  • Extensive trade-off analysis on classification and regression tasks with multiple time-series datasets validates the framework’s effectiveness.
  • FPGA-based accelerator implementations show significant resource utilization and power-delay product reductions without noticeable accuracy degradation.
  • For example, on the MELBOURNE dataset, a 4-bit quantized model with 15% pruning lowered resource use by 1.2% and PDP by 50.8% compared to the unpruned baseline.

Computer Science > Hardware Architecture

arXiv:2603.08737 (cs)
[Submitted on 24 Feb 2026]

Title:Sensitivity-Guided Framework for Pruned and Quantized Reservoir Computing Accelerators

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Abstract:This paper presents a compression framework for Reservoir Computing that enables systematic design-space exploration of trade-offs among quantization levels, pruning rates, model accuracy, and hardware efficiency. The proposed approach leverages a sensitivity-based pruning mechanism to identify and remove less critical quantized weights with minimal impact on model accuracy, thereby reducing computational overhead while preserving accuracy. We perform an extensive trade-off analysis to validate the effectiveness of the proposed framework and the impact of pruning and quantization on model performance and hardware parameters. For this evaluation, we employ three time-series datasets, including both classification and regression tasks. Experimental results across selected benchmarks demonstrate that our proposed approach maintains high accuracy while substantially improving computational and resource efficiency in FPGA-based implementations, with variations observed across different configurations and time series applications. For instance, for the MELBOEN dataset, an accelerator quantized to 4-bit at a 15\% pruning rate reduces resource utilization by 1.2\% and the Power Delay Product (PDP) by 50.8\% compared to an unpruned model, without any noticeable degradation in accuracy.
Subjects: Hardware Architecture (cs.AR); Artificial Intelligence (cs.AI); Distributed, Parallel, and Cluster Computing (cs.DC); Machine Learning (cs.LG)
Cite as: arXiv:2603.08737 [cs.AR]
  (or arXiv:2603.08737v1 [cs.AR] for this version)
  https://doi.org/10.48550/arXiv.2603.08737
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arXiv-issued DOI via DataCite

Submission history

From: Mahdi Taheri [view email]
[v1] Tue, 24 Feb 2026 17:13:53 UTC (1,050 KB)
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