gdalle/MultiAgentPathFinding.jl
Structures and algorithms for Multi-Agent PathFinding in Julia
This is a toolbox for developers who need to implement and solve complex multi-agent pathfinding problems. It takes in problem definitions, such as a grid map and starting/ending points for multiple agents, and outputs optimized paths that avoid collisions. It's intended for Julia developers building applications in logistics, robotics, or game AI.
Use this if you are a Julia developer implementing multi-agent pathfinding solutions for autonomous systems or logistical planning.
Not ideal if you need a ready-to-use application or a solution outside of the Julia programming language.
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Language
Julia
License
MIT
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Last pushed
Mar 09, 2026
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