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A 3.43TOPS/W 48.9pJ/pixel 50.1nJ/classification 512 analog neuron sparse coding neural network with on-chip learning and classification in 40nm CMOS

机译:在40nm CMOS中具有片上学习和分类功能的3.43TOPS / W 48.9pJ /像素50.1nJ /分类512模拟神经元稀疏编码神经网络

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A digital-analog hybrid neural network exploits efficient analog computation and digital intra-network communication for feature extraction and classification. Taking advantage of the inherently low SNR requirements of the Locally Competitive Algorithm (LCA), the internally-analog neuron is 3x smaller and 7.5x more energy efficient than an equivalent digital design. This work demonstrates large-scale integration of 512 analog neurons using a traditional scalable digital workflow to achieve a best-of-class power efficiency of 3.43TOPS/W for object classification. At 48.9pJ/pixel and 50.1nJ/classification, the prototype 512-neuron IC achieves 2x efficiency over the digital design while maintaining reliable classification results over PVT.
机译:数模混合神经网络利用有效的模拟计算和数字内部网络通信进行特征提取和分类。利用本地竞争算法(LCA)固有的低SNR要求,内部模拟神经元比等效数字设计小3倍,而能源效率高7.5倍。这项工作演示了使用传统的可扩展数字工作流程对512个模拟神经元进行大规模集成,以实现3.43TOPS / W的最佳功率效率,可用于对象分类。在48.9pJ /像素和50.1nJ /分类的情况下,原型512神经元IC的效率是数字设计的2倍,同时保持了PVT上可靠的分类结果。

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