Quantum Machine Learning for Material Synthesis and Hardware Security (Invited Paper).

arxiv(2022)

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摘要
Using quantum computing, this paper addresses two scientifically-pressing and day to day-relevant problems, namely, chemical retrosynthesis which is an important step in drug/material discovery and security of semiconductor supply chain. We show that Quantum Long Short-Term Memory (QLSTM) is a viable tool for retrosynthesis. We achieve 65% training accuracy with QLSTM whereas classical LSTM can achieve 100%. However, in testing we achieve 80% accuracy with the QLSTM while classical LSTM peaks at only 70% accuracy! We also demonstrate an application of Quantum Neural Network (QNN) in the hardware security domain, specifically in Hardware Trojan (HT) detection using a set of power and area Trojan features. The QNN model achieves detection accuracy as high as 97.27%.
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关键词
Quantum computing,quantum machine learning,chemical retrosynthesis,drug discovery,machine learning,Trojan,hardware Trojan,hardware security,LSTM,QLSTM,QNN,quantum neural network
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