Domain-Independent Dynamic Programming with Constraint Propagation
arXiv cs.AI / 3/18/2026
📰 NewsIdeas & Deep AnalysisModels & Research
Key Points
- The paper bridges dynamic programming (DP) and constraint propagation (CP) by integrating a CP solver into a DP framework to prune states and transitions.
- It implements propagation within a Domain-Independent Dynamic Programming (DI-DP) framework and evaluates on Single Machine Scheduling with Time Windows, RCPSP, and TSPTW.
- The results show substantial reductions in state expansions and more instances solved for certain problems, with runtime benefits on tightly constrained instances.
- The study highlights that propagation overhead exists and suggests further work to reduce it, marking a step toward combining DP and CP in model-based solvers.
Related Articles

Hey dev.to community – sharing my journey with Prompt Builder, Insta Posts, and practical SEO
Dev.to

How to Build Passive Income with AI in 2026: A Developer's Practical Guide
Dev.to

The Research That Doesn't Exist
Dev.to

Jeff Bezos reportedly wants $100 billion to buy and transform old manufacturing firms with AI
TechCrunch

Krish Naik: AI Learning Path For 2026- Data Science, Generative and Agentic AI Roadmap
Dev.to