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  1. Home
  2. /Repositories
  3. /jaimasih05-commits/swarm-foraging-qlearn
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repoGitHubTrust 82 · PrimaryPublished 3d agoLive · yesterday

jaimasih05-commits/swarm-foraging-qlearn

Q-Learning Swarm Foraging 2026: Multi-Agent RL in Dynamic Grid Environments

Lineage graph

Paper → model → repo connections mined from source citations (Tier-1 exact match).

Covers

newsAutonomous navigation of intelligent microrobotic swarms in unknown environmentsnewsOptimising LMAPF guidance graphs using Evolutionary algorithms: Advice needed [R]newsRL without TD learningnewsI made a superhuman Generals.io agent with self-play RL [P]

Implements

paperLLawCo: Learning Laws of Cooperation for Modeling Embodied Multi-Agent Behavior

Related across the graph

newsRL without TD learningpaperLLawCo: Learning Laws of Cooperation for Modeling Embodied Multi-Agent BehaviornewsI made a superhuman Generals.io agent with self-play RL [P]newsAutonomous navigation of intelligent microrobotic swarms in unknown environmentsnewsOptimising LMAPF guidance graphs using Evolutionary algorithms: Advice needed [R]
Knowledge path·NRL without TD learning→PLLawCo: Learning Laws of Cooperation for Modeling Embodied Multi-Agent Behavior→NI made a superhuman Generals.io agent with self-play RL [P]→Rjaimasih05-commits/swarm-foraging-qlearn

Topics

ai-simulationartificial-intelligenceautonomous-agentsdecision-makingdynamic-environmentsexploration-exploitationgridworldintelligent-agentmachine-learningmulti-agent-systems

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Search similar →Knowledge graph →All repos →Full intelligence feed →
Graph trust82Primary
Graph score151