BWA-NIMC: Budget-based Workload Allocation for Hybrid Near/In-Memory-Computing

2023 60TH ACM/IEEE DESIGN AUTOMATION CONFERENCE, DAC(2023)

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摘要
In enable efficient computation for convolutional neural networks, in- memory-computing (IMC) is proposed to perform computation within memory. However, the non-ideality significantly degrades the accuracy of IMC. In this work, we leverage a hybrid near/in-memory-computing architecture (NIMC) that allocates sensitive weights to error-free NMC and computes remained weights with high-efficient IMC. We further propose a Budget-based Workload Allocation for NIMC (BWA-NIMC). Specifically, we consider the resource difference between NMC and IMC to effectively allocate workloads under a targeted resource budget. Simulation results show that BWA-NIMC improves the accuracy by 18.38-48.54% under limited budgets (e.g., energy and latency) compared with prior works.
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关键词
In-memory-computing (IMC),near-memory-computing (NMC),hybrid computing architecture,non-ideality
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