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arxiv: 2404.06059 · v1 · pith:SQEI2BJ7new · submitted 2024-04-09 · 🪐 quant-ph · cs.AI

Efficient Quantum Circuits for Machine Learning Activation Functions including Constant T-depth ReLU

classification 🪐 quant-ph cs.AI
keywords quantumactivationfunctionslearningmachinereluapplicationcircuits
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In recent years, Quantum Machine Learning (QML) has increasingly captured the interest of researchers. Among the components in this domain, activation functions hold a fundamental and indispensable role. Our research focuses on the development of activation functions quantum circuits for integration into fault-tolerant quantum computing architectures, with an emphasis on minimizing $T$-depth. Specifically, we present novel implementations of ReLU and leaky ReLU activation functions, achieving constant $T$-depths of 4 and 8, respectively. Leveraging quantum lookup tables, we extend our exploration to other activation functions such as the sigmoid. This approach enables us to customize precision and $T$-depth by adjusting the number of qubits, making our results more adaptable to various application scenarios. This study represents a significant advancement towards enhancing the practicality and application of quantum machine learning.

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