DaDianNao: A Machine-Learning Supercomputer

MICRO(2014)

引用 1871|浏览880
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摘要
Many companies are deploying services, either for consumers or industry, which are largely based on machine-learning algorithms for sophisticated processing of large amounts of data. The state-of-the-art and most popular such machine-learning algorithms are Convolutional and Deep Neural Networks (CNNs and DNNs), which are known to be both computationally and memory intensive. A number of neural network accelerators have been recently proposed which can offer high computational capacity/area ratio, but which remain hampered by memory accesses. However, unlike the memory wall faced by processors on general-purpose workloads, the CNNs and DNNs memory footprint, while large, is not beyond the capability of the on chip storage of a multi-chip system. This property, combined with the CNN/DNN algorithmic characteristics, can lead to high internal bandwidth and low external communications, which can in turn enable high-degree parallelism at a reasonable area cost. In this article, we introduce a custom multi-chip machine-learning architecture along those lines. We show that, on a subset of the largest known neural network layers, it is possible to achieve a speedup of 450.65x over a GPU, and reduce the energy by 150.31x on average for a 64-chip system. We implement the node down to the place and route at 28nm, containing a combination of custom storage and computational units, with industry-grade interconnects.
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关键词
neural network,custom storage,deep neural network,high-degree parallelism,machine-learning supercomputer,dadiannao,multichip machine-learning architecture,gpu,learning (artificial intelligence),convolutional neural network,computational units,mainframes,industry-grade interconnects,computational capacity-area ratio,general-purpose workloads,multichip system,accelerator,cnn-dnn algorithmic characteristics,computer architecture,machine learning,parallel machines,neural nets,neural network accelerators,computer science,bandwidth,kernel,hardware,programming
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