Logic Design of Neural Networks for High-Throughput and Low-Power Applications

2024 29th Asia and South Pacific Design Automation Conference (ASP-DAC)(2023)

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摘要
Neural networks (NNs) have been successfully deployed in various fields. In NNs, a large number of multiplyaccumulate (MAC) operations need to be performed. Most existing digital hardware platforms rely on parallel MAC units to accelerate these MAC operations. However, under a given area constraint, the number of MAC units in such platforms is limited, so MAC units have to be reused to perform MAC operations in a neural network. Accordingly, the throughput in generating classification results is not high, which prevents the application of traditional hardware platforms in extreme-throughput scenarios. Besides, the power consumption of such platforms is also high, mainly due to data movement. To overcome this challenge, in this paper, we propose to flatten and implement all the operations at neurons, e.g., MAC and ReLU, in a neural network with their corresponding logic circuits. To improve the throughput and reduce the power consumption of such logic designs, the weight values are embedded into the MAC units to simplify the logic, which can reduce the delay of the MAC units and the power consumption incurred by weight movement. The retiming technique is further used to improve the throughput of the logic circuits for neural networks. In addition, we propose a hardware-aware training method to reduce the area of logic designs of neural networks. Experimental results demonstrate that the proposed logic designs can achieve high throughput and low power consumption for several high-throughput applications.
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关键词
Neural Network,Network Design,High-throughput Applications,Logic Design,High Throughput,Power Consumption,Digital Platforms,Load Data,Low Power Consumption,Traditional Platforms,Parallel Units,Activation Function,Lookup Table,Number Of Weights,Bit Error Rate,Output Neurons,Validation Accuracy,Inference Accuracy,Input Combinations,Least Significant Bit,Truth Table,Bit-width,Quantization Bits,Electronic Design Automation,Area Overhead,Neurons In Neural Network,Boolean Function,Clock Period,Input Bits,Large Power Consumption
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