Deep Learning for Sequential Decision Making under Uncertainty: Foundations, Frameworks, and Frontiers
arXiv stat.ML / 4/14/2026
💬 OpinionIdeas & Deep AnalysisModels & Research
Key Points
- The article/tutoriel argues that AI is shifting from prediction to decision-making in complex, uncertain, and dynamic environments, creating a strong connection with operations research (OR/MS).
- It presents deep learning as a complement to optimization rather than a replacement, emphasizing that neural methods provide adaptability and scalable approximation while OR/MS adds structural rigor for constraints, recourse, and uncertainty.
- It reviews foundational sequential decision-making concepts and maps them to major neural architectures, including feedforward networks, LSTMs, transformers, and deep reinforcement learning.
- It surveys approaches for integrating learning with optimization and discusses emerging domain impacts such as supply chains, healthcare/epidemic response, agriculture, energy, and autonomous operations.
- Overall, it frames the work as part of the broader “decision-capable AI” transition and highlights OR/MS’s role in shaping integrated learning–optimization systems.
