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Recursive Synaptic Bit Reuse: An Efficient Way to Increase Memory Capacity in Associative Memory

机译:递归突触位重用:提高关联存储器中的内存容量的有效方法

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Neural associative memory (AM) is one of the critical building blocks for cognitive computing systems. It memorizes (learns) and retrieves input data by information content itself. One of the key challenges of designing AM for intelligent devices is to expand memory capacity while using a minimal amount of hardware and energy resources. However, prior arts show that memory capacity increases slowly, i.e., in square root with the total number of synaptic weights. To tackle this problem, we propose a synapse model called recursive synaptic bit reuse, which enables near-linear scaling of memory capacity with total synaptic bits. Our model can also handle input data that are correlated more robustly than the conventional model. We evaluated our model in the context of Hopfield neural networks (HNNs) that contain 5-327-KB data storage for synaptic weights. Our model can increase the memory capacity of HNNs as large as 30x over the conventional ones. The very large scale integration implementation of HNNs in 65 nm confirms that our proposed model can save up to 19x area and up to 232x energy dissipation as compared to the conventional model. These savings are expected to grow with the network size.
机译:神经关联记忆(AM)是认知计算系统的关键构建块之一。它记住(学习)并通过信息内容本身检索输入数据。为智能设备设计AM的关键挑战之一是在使用最少量的硬件和能量资源的同时扩展内存容量。然而,现有技术表明,存储器容量增加缓慢,即在平方根中,具有突触权重的总数。为了解决这个问题,我们提出了一个名为递归突触比特重复使用的突触模型,它可以通过总突触位实现近线性缩放。我们的模型还可以处理与传统模型更强大的输入数据。我们在Hopfield神经网络(HNN)的背景下评估了我们的模型,其包含用于突触权重的5-327 kB数据存储。我们的模型可以通过传统的模型将HNN的内存容量增加为30倍。 65 nm中HNN的大规模集成实施确认,与传统模型相比,我们所提出的模型可以节省高达19倍的区域和高达232倍的能量耗散。这些节省预计将随网络规模增长。

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