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Towards General-Purpose Neural Network Computing

机译:迈向通用神经网络计算

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Machine learning is becoming pervasive, decades of research in neural network computation is now being leveraged to learn patterns in data and perform computations that are difficult to express using standard programming approaches. Recent work has demonstrated that custom hardware accelerators for neural network processing can outperform software implementations in both performance and power consumption. However, there is neither an agreed-upon interface to neural network accelerators nor a consensus on neural network hardware implementations. We present a generic set of software/hardware extensions, X-FILES, that allow for the general-purpose integration of feedforward and feedback neural network computation in applications. The interface is independent of the network type, configuration, and implementation. Using these proposed extensions, we demonstrate and evaluate an example dynamically allocated, multi-context neural network accelerator architecture, DANA. We show that the combination of X-FILES and our hardware prototype, DANA, enables generic support and increased throughput for neural-network-based computation in multi-threaded scenarios.
机译:机器学习正变得无处不在,现在已经利用了数十年的神经网络计算研究来学习数据模式并执行使用标准编程方法难以表达的计算。最近的工作表明,用于神经网络处理的定制硬件加速器在性能和功耗方面都可以胜过软件实现。但是,既没有神经网络加速器的公认接口,也没有关于神经网络硬件实现的共识。我们介绍了一组通用的软件/硬件扩展X-FILES,这些扩展允许在应用程序中将前馈和反馈神经网络计算进行通用集成。该接口与网络类型,配置和实现无关。使用这些建议的扩展,我们演示并评估了示例动态分配的多上下文神经网络加速器体系结构DANA。我们展示了X-FILES和我们的硬件原型DANA的结合,为多线程场景中的基于神经网络的计算提供了通用支持并提高了吞吐量。

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