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A spike-based long short-term memory on a neurosynaptic processor

机译:神经突触处理器上基于峰值的长期短期记忆

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Low-power brain-inspired hardware systems have gained significant traction in recent years. They offer high energy efficiency and massive parallelism due to the distributed and asynchronous nature of neural computation through low-energy spikes. One such platform is the IBM TrueNorth Neurosynaptic System. Recently TrueNorth compatible representation learning algorithms have emerged, achieving close to state-of-the-art performance in various datasets. An exception is its application in temporal sequence processing models such as recurrent neural networks (RNNs), which is still at the proof of concept level. This is partly due to the hardware constraints in connectivity and syn-aptic weight resolution, and the inherent difficulty in capturing temporal dynamics of an RNN using spiking neurons. This work presents a design flow that overcomes the aforementioned difficulties and maps a special case of recurrent networks called Long Short-Term Memory (LSTM) onto a spike-based platform. The framework is built on top of various approximation techniques, weight and activation discretization, spiking neuron sub-circuits that implements the complex gating mechanisms and a store-and-release technique to enable neuron synchronization and faithful storage. While many of the techniques can be applied to map LSTM to any SNN simulator/emulator, here we demonstrate this approach on the TrueNorth chip adhering to its constraints. Two benchmark LSTM applications, parity check and Extended Reber Grammar, are evaluated and their accuracy, energy and speed tradeoffs are analyzed.
机译:近年来,低功耗,受大脑启发的硬件系统受到了广泛的关注。由于通过低能量尖峰进行的神经计算具有分布式和异步性质,因此它们具有高能量效率和大规模并行性。这样的平台之一就是IBM TrueNorth Neurosynaptic System。最近,出现了与TrueNorth兼容的表示学习算法,该算法在各种数据集中均达到了最先进的性能。一个例外是它在时间序列处理模型(例如递归神经网络(RNN))中的应用,但仍处于概念验证的水平。部分原因是由于连接性和突触权重分辨率方面的硬件限制,以及使用尖峰神经元捕获RNN的时间动态性所固有的困难。这项工作提出了克服上述困难的设计流程,并将称为长期短期记忆(LSTM)的循环网络的特殊情况映射到基于尖峰的平台上。该框架建立在各种近似技术,权重和激活离散化,尖峰神经元子电路(实现复杂的门控机制)和存储和释放技术以实现神经元同步和忠实存储的基础之上。尽管可以应用许多技术将LSTM映射到任何SNN模拟器/仿真器,但在这里我们还是在TrueNorth芯片上遵循其约束条件演示了这种方法。评估了两个基准LSTM应用程序(奇偶校验和扩展Reber语法),并分析了它们的准确性,能量和速度折衷。

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