Wright, DerekYan, Yangtian2022-08-262022-08-262022-08-262022-08-19http://hdl.handle.net/10012/18648Spiking neural networks (SNNs) are an emerging class of biologically inspired Artificial Neural Networks implemented in machine learning and artificial intelligence. Current state-of-the-art small- and large-scale SNNs are mainly implemented as digital hardware with time-multiplexing techniques to achieve power efficiency. In this thesis, a 65 nm CMOS mixed signal asynchronous SNN implementation was designed and simulated. The proposed design reduces hardware and timing complexity over existing implementations and opens opportunities for further larger-scale implementations.enartificial intelligenceCMOSneural networkartificial neural networkspiking neural networkmachine learningmixed signal ICA Mixed Signal 65nm CMOS Implementation of a Spiking Neural NetworkMaster Thesis