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Using Branch Predictors to Predict Brain Activity in Brain-Machine Implants

机译:使用分支预测器预测脑机植入物中的大脑活动

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A key problem with implantable brain-machine interfaces is that they need extreme energy efficiency. One way of lowering energy consumption is to use the low power modes available on the processors embedded in these devices. We present a technique to predict when neuronal activity of interest is likely to occur so that the processor can run at nominal operating frequency at those times, and be placed in low power modes otherwise. To achieve this, we discover that branch predictors can also predict brain activity. We perform brain surgeries on awake and anesthetized mice, and evaluate the ability of several branch predictors to predict neuronal activity in the cerebellum. We find that perceptron branch predictors can predict cerebellar activity with accuracies as high as 85%. Consequently, we co-opt branch predictors to dictate when to transition between low power and normal operating modes, saving as much as 59% of processor energy.
机译:植入式脑机接口的关键问题是它们需要极高的能源效率。降低能耗的一种方法是使用这些设备中嵌入的处理器可用的低功耗模式。我们提出一种技术来预测何时可能发生感兴趣的神经元活动,以便处理器可以在那些时间以标称工作频率运行,否则将其置于低功耗模式。为了实现这一目标,我们发现分支预测器还可以预测大脑活动。我们对清醒和麻醉的小鼠进行脑部手术,并评估几种分支预测因子预测小脑神经元活动的能力。我们发现,感知器分支预测因子可以预测小脑活动,准确率高达85%。因此,我们选择了分支预测器来指示何时在低功耗和正常操作模式之间转换,从而节省多达59%的处理器能量。

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