Accelerating pattern matching in neuromorphic text recognition system using Intel Xeon Phi coprocessor

Neural Networks(2014)

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摘要
Neuromorphic computing systems refer to the computing architecture inspired by the working mechanism of human brains. The rapidly reducing cost and increasing performance of state-of-the-art computing hardware allows large-scale implementation of machine intelligence models with neuromorphic architectures and opens the opportunity for new applications. One such computing hardware is Intel Xeon Phi coprocessor, which delivers over a TeraFLOP of computing power with 61 integrated processing cores. How to efficiently harness such computing power to achieve real time decision and cognition is one of the key design considerations. This paper presents an optimized implementation of Brain-State-in-a-Box (BSB) neural network model on the Xeon Phi coprocessor for pattern matching in the context of intelligent text recognition of noisy document images. From a scalability standpoint on a High Performance Computing (HPC) platform we show that efficient workload partitioning and resource management can double the performance of this many-core architecture for neuromorphic applications.
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关键词
multiprocessing systems,neural nets,parallel processing,pattern matching,text detection,HPC platform,Intel Xeon Phi coprocessor,TeraFLOP,brain-state-in-a-box neural network model,high performance computing platform,machine intelligence models,many-core architecture,neuromorphic computing systems,neuromorphic text recognition system,noisy document images,pattern matching,resource management,workload partitioning
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