M2RU: Memristive Minion Recurrent Unit for Continual Learning at the Edge

arXiv — cs.LGMonday, December 22, 2025 at 5:00:00 AM
  • A new architecture called M2RU (Memristive Minion Recurrent Unit) has been introduced to enhance continual learning on edge platforms, addressing the challenges posed by energy-intensive training and data movement in recurrent networks. This mixed-signal design achieves 15 GOPS at 48.62 mW, demonstrating significant energy efficiency improvements compared to traditional CMOS designs.
  • The development of M2RU is crucial as it enables efficient temporal processing and on-chip continual learning, maintaining accuracy close to software baselines on tasks like MNIST and CIFAR-10 while extending operational lifetimes to over a decade.
  • This advancement reflects a broader trend in AI towards optimizing models for resource-constrained environments, as seen in various frameworks aimed at improving energy efficiency and model performance, highlighting the ongoing need for innovations that balance computational demands with practical deployment constraints.
— via World Pulse Now AI Editorial System

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