Quantum Machine Learning (QML) is moving from theory to reality.

Singh et al. maps out how QML is tackling "complex systems" from correlated matter to agro-climate modeling.

Key highlights:
- Surveys VQAs, Quantum Kernels, and Neural-Network Quantum States.
- Tackles "barren plateaus" and scalability issues.
- Real-world apps: Drug discovery, Cancer biology, and Climate data.
-Introduces Federated QML for privacy-preserving AI.

https://arxiv.org/abs/2602.20352

#QuantumComputing #QML

Quantum Machine Learning for Complex Systems

Quantum machine learning (QML) is rapidly transitioning from theoretical promise to practical relevance across data-intensive scientific domains. In this Review, we provide a structured overview of recent advances that bridge foundational quantum learning principles with real-world applications. We survey foundational QML paradigms, including variational quantum algorithms, quantum kernel methods, and neural-network quantum states, with emphasis on their applicability to complex quantum systems. We examine neural-network quantum states as expressive variational models for correlated matter, non-equilibrium dynamics, and open quantum systems, and discuss fundamental challenges associated with training and sampling. Recent advances in quantum-enhanced sampling and diagnostics of learning dynamics, including information-theoretic tools, are reviewed as mechanisms for improving scalability and trainability. The Review further highlights application-driven QML frameworks in drug discovery, cancer biology, and agro-climate modeling, where data complexity and constraints motivate hybrid quantum-classical approaches. We conclude with a discussion of federated quantum machine learning as a route to distributed, privacy-preserving quantum intelligence. Overall, this Review presents a unified perspective on the opportunities and limitations of QML for complex systems.

arXiv.org