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arxiv:2409.15645

Quantum Machine Learning in Drug Discovery: Applications in Academia and Pharmaceutical Industries

Published on Sep 24, 2024
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Abstract

Quantum machine learning, particularly quantum neural networks, has potential applications in drug discovery, focusing on molecular property prediction and generation while acknowledging its challenges.

AI-generated summary

The nexus of quantum computing and machine learning - quantum machine learning - offers the potential for significant advancements in chemistry. This review specifically explores the potential of quantum neural networks on gate-based quantum computers within the context of drug discovery. We discuss the theoretical foundations of quantum machine learning, including data encoding, variational quantum circuits, and hybrid quantum-classical approaches. Applications to drug discovery are highlighted, including molecular property prediction and molecular generation. We provide a balanced perspective, emphasizing both the potential benefits and the challenges that must be addressed.

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