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Toward A High-Performance Emulation Platformfor Brain-Inspired Intelligent SystemsExploring Dataflow-Based Execution Model and Beyond

机译:面向面向大脑的智能系统的高性能仿真平台探索基于数据流的执行模型及其超越

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Brain-inspired computing is a novel computing technology based on neural morphological engineering, which draws lessons from methods of human brain information processing and storage. Combining with the high-performance computing (HPC) platform, they constitute the foundation of general artificial intelligence. However, current brain HPC platforms generally suffer from slow speed, poor scalability, and high energy consumption, which severely restrain its potential and circumscribe the development of general artificial intelligence. The dataflow model was first proposed in the 1970s, providing a novel idea for the development of HPC. In addition, the dataflow model shares similar information processing mechanisms with human's neural system, which makes dataflow models naturally suit the emulation of brain-inspired computing. Based on the contemporary progress of the dataflow model, the Codelet model was proposed. Through a fine-grained asynchronous program execution and resource allocation, the Codelet model successfully realized the distributed computing on the heterogeneous system, effectively improved the computing power and speed, and open up a new path to overcome the shortcomings of the existing high-performance computing technology. We propose a dataflow-based emulation platform, aiming at providing high-performance computing technology support for general brain-inspired intelligent system, as well as using characteristics of dataflow models to fully explore the potential of brain-inspired intelligence. As an example, we will select a convolutional neural network (LeNet5) that already has a spectacular user base to initially verify the superiority and feasibility of our proposal.
机译:脑启发式计算是一种基于神经形态工程学的新型计算技术,该技术从人脑信息处理和存储方法中汲取了教训。结合高性能计算(HPC)平台,它们构成了通用人工智能的基础。但是,当前的大脑HPC平台通常受速度慢,可伸缩性差和能耗高的困扰,这严重限制了其潜力并限制了通用人工智能的发展。数据流模型于1970年代首次提出,为HPC的发展提供了新颖的思路。此外,数据流模型与人的神经系统共享相似的信息处理机制,这使得数据流模型自然适合于大脑启发式计算的仿真。基于数据流模型的最新发展,提出了Codelet模型。通过细粒度的异步程序执行和资源分配,Codelet模型成功地实现了异构系统上的分布式计算,有效地提高了计算能力和速度,并开辟了一条新的途径来克服现有高性能计算的缺点技术。我们提出了一个基于数据流的仿真平台,旨在为通用的大脑启发式智能系统提供高性能的计算技术支持,并利用数据流模型的特征来充分挖掘大脑启发式智能的潜力。例如,我们将选择一个已经拥有庞大用户群的卷积神经网络(LeNet5),以初步验证我们提议的优越性和可行性。

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