Position paper: deep reinforcement learning for real-time resource management

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Abstract

Many real-time problems can be characterized as combinatorial optimization problems where exact solutions are infeasible at scale. As problem complexity grows, handcrafted heuristics become increasingly difficult to design. Reinforcement learning (RL) has emerged as a promising alternative, enabling the discovery of decision-making policies without requiring explicit supervision. While RL does not guarantee optimality, it provides adaptive heuristics to solve complex problems. This paper explores the potential of RL for real-time resource management, outlining key principles, demonstrating an application to directed acyclic graph (DAG) scheduling, and identifying open challenges for future research.

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APA

Theile, M., Sun, B., & Caccamo, M. (2025). Position paper: deep reinforcement learning for real-time resource management. Real-Time Systems, 61(2), 288–293. https://doi.org/10.1007/s11241-025-09443-x

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