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Alternating Target-Path Planning for Scalable Multi-Agent Coordination

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The concurrent target assignment and pathfinding (TAPF) problem extends multi-agent pathfinding (MAPF) by asking planners to allocate distinct targets and collision-free paths to agents. Prior work on TAPF has relied exclusively on Conflict-Based Search (CBS), which tightly couples target assignment and pathfinding, resulting in compute-intensive, non-scalable solutions. In contrast, we propose an iterative refinement framework that decouples target assignment from pathfinding. Our framework builds on modern, fast, suboptimal MAPF solvers, such as LaCAM. Specifically, within a given time budget, it repeatedly solves MAPF for the current target assignment, identifies bottleneck agents via MAPF feedback, and refines the assignment. Empirical results show that feedback-driven reassignment loop is effective, enabling our framework to scale well beyond the reach of the state-of-the-art CBS-based solver while maintaining decent solution quality. This represents a solid step toward practical, large scale TAPF suitable for real-world setups.

Yu Kumagai, Keisuke Okumura• 2026

Related benchmarks

TaskDatasetResultRank
Multi-Agent Path Finding (MAPF)random 32x32-20
Success Rate100
83
Target Assignment and Pathfinding (TAPF)warehouse 10-20-10-2-1
Success Rate100
14
Target Assignment and Pathfinding (TAPF)den312d
Success Rate100
10
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