st century, industries and researchers witnessed the end of the Moore’'/> A Prospect of Achieving Artificial Neural Networks through FPGA
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A Prospect of Achieving Artificial Neural Networks through FPGA

机译:通过FPGA实现人工神经网络的前景

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With the beginning of the 21st century, industries and researchers witnessed the end of the Moore’s Law. The stagnation of the size of transistor and other related limitations have compelled researchers to look for alternative approaches in order to maintain the momentum for design of computational intensive, high performing reliable systems focusing applications involving cloud computing, artificial intelligence, big data and IoT. The fuzzy Artificial Neural Network (ANN) based design approach have assisted a lot, in optimizing the systems manifold, for instance optimizing the system design targeting the pattern recognition problem in a large dataset. The capabilities and advantages associated with ANN have made it possible to address varied set of problems. Until now it was being implemented through software. Recent studies have showcased different limitations associated with software level ANN implementations. To address these issues hardware implementation of ANN based algorithms have been proposed and found more efficient vis-a-vis software based implementations. With the advances in technology, hardware available today is more efficient and capable. Devices based on GPUs, FPGAs and ASICs are used for the same, however FPGA shows more potentials as it is closer to wafer processing, providing options for high degree optimizations in power, speed and area; which seems to be perfect for today’s dynamic dataset requirements. This paper focuses on the use of FPGAs for ANN inspired hardware level implementations. Authors have made a comprehensive study of the amalgamations of the technologies. Authors then propound the implementation of processing blocks, activations functions, weight managements and applications on the FPGA augmenting with external data interface.
机译:以21 \ n st \ n世纪,行业和研究人员见证了摩尔定律的终结。晶体管尺寸的停滞和其他相关局限性迫使研究人员寻找替代方法,以保持设计密集型,高性能,可靠系统的设计势头,重点关注涉及云计算,人工智能,大数据和物联网的应用。基于模糊人工神经网络(ANN)的设计方法在优化系统流水线方面提供了很多帮助,例如针对大型数据集中的模式识别问题优化系统设计。与人工神经网络相关的功能和优势使得解决各种问题成为可能。到目前为止,它是通过软件实现的。最近的研究显示了与软件级ANN实现相关的不同限制。为了解决这些问题,已经提出了基于ANN的算法的硬件实现,并且发现了比基于软件的实现更有效的实现。随着技术的进步,当今可用的硬件变得更加高效和强大。同样使用基于GPU,FPGA和ASIC的设备,但是FPGA显示出更大的潜力,因为它更接近晶圆处理,为功率,速度和面积的高度优化提供了选择。对于当今的动态数据集要求而言,这似乎是完美的选择。本文重点介绍将FPGA用于ANN启发的硬件级别实现。作者对这些技术的融合进行了全面的研究。然后作者提出了FPGA上的处理模块,激活功能,权重管理和应用程序的实现以及外部数据接口的扩展。

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