Improving Inference Lifetime of Neuromorphic Systems via Intelligent Synapse Mapping
Shihao Song, Twisha Titirsha, Anup Das

TL;DR
This paper introduces an intelligent synapse mapping strategy for RRAM-based neuromorphic systems to significantly extend inference lifetime by considering cell endurance in workload placement.
Contribution
It formulates RRAM cell endurance as a function of synaptic weight and workload activation, and proposes a workload mapping strategy to enhance system longevity.
Findings
Inference lifetime increased significantly.
Minimal performance impact observed.
Endurance-aware mapping improves reliability.
Abstract
Non-Volatile Memories (NVMs) such as Resistive RAM (RRAM) are used in neuromorphic systems to implement high-density and low-power analog synaptic weights. Unfortunately, an RRAM cell can switch its state after reading its content a certain number of times. Such behavior challenges the integrity and program-once-read-many-times philosophy of implementing machine learning inference on neuromorphic systems, impacting the Quality-of-Service (QoS). Elevated temperatures and frequent usage can significantly shorten the number of times an RRAM cell can be reliably read before it becomes absolutely necessary to reprogram. We propose an architectural solution to extend the read endurance of RRAM-based neuromorphic systems. We make two key contributions. First, we formulate the read endurance of an RRAM cell as a function of the programmed synaptic weight and its activation within a machine…
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Taxonomy
TopicsAdvanced Memory and Neural Computing · Ferroelectric and Negative Capacitance Devices · CCD and CMOS Imaging Sensors
