Abstract
We propose a fully integrated common-source amplifier based analog artificial neural network (ANN). The performance of the proposed ANN with a custom non-linear activation function is demonstrated on the breast cancer classification task. A hardware-software co-design methodology is adopted to ensure good matching between the software AI model and hardware prototype. A 65 nm prototype of the proposed ANN is fabricated and characterized. The prototype ANN achieves 97% classification accuracy when operating from a 1.1 V supply with an energy consumption of 160 fJ/classification. The prototype consumes 50 µW power and occupies 0.003 mm2 die area.
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Chandrasekaran, S. T., Hua, R., Banerjee, I., & Sanyal, A. (2020). A fully-integrated analog machine learning classifier for breast cancer classification. Electronics (Switzerland), 9(3). https://doi.org/10.3390/electronics9030515
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