ML-Based Scheduling: A Paradigm Shift

Research Paper#Machine Learning, Scheduling, Optimization🔬 Research|Analyzed: Jan 3, 2026 19:48
Published: Dec 27, 2025 16:33
1 min read
ArXiv

Analysis

This paper surveys the evolving landscape of scheduling problems, highlighting the shift from traditional optimization methods to data-driven, machine-learning-centric approaches. It's significant because it addresses the increasing importance of adapting scheduling to dynamic environments and the potential of ML to improve efficiency and adaptability in various industries. The paper provides a comparative review of different approaches, offering valuable insights for researchers and practitioners.
Reference / Citation
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"The paper highlights the transition from 'solver-centric' to 'data-centric' paradigms in scheduling, emphasizing the shift towards learning from experience and adapting to dynamic environments."
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ArXivDec 27, 2025 16:33
* Cited for critical analysis under Article 32.