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game_playing_agents [2026/03/25 14:53] – Create page: LLM agents for game playing agentgame_playing_agents [2026/03/31 15:04] (current) – SEO: add target search terms agent
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-====== Game Playing Agents ======+====== Game Agents: AI for Game Playing and Strategy ======
  
-LLM-powered agents for game playing leverage language-guided policy generation and cross-game evaluation benchmarks to achieve generalization across thousands of diverse 3D video games without traditional reinforcement learning training.+**AI game agents** powered by LLMs leverage language-guided policy generation and cross-game evaluation benchmarks to achieve generalization across thousands of diverse 3D video games without traditional reinforcement learning training. These game agents represent a new frontier in AI for game playing and strategy, moving beyond single-game specialists toward truly general-purpose players.(([[https://arxiv.org/abs/2503.13356|Xu et al. "PORTAL: Agents Play Thousands of 3D Video Games" (2025)]]))
  
 ===== Overview ===== ===== Overview =====
  
-Game environments have served as foundational testing grounds for AI since the field's inception. The explosion of user-generated content (UGC) platforms has created thousands of diverse games that challenge traditional per-game AI approaches. PORTAL introduces language-guided behavior tree generation for playing thousands of 3D games, while the Orak benchmark evaluates LLM agents across 12 commercial titles spanning multiple genres.+Game environments have served as foundational testing grounds for AI since the field's inception. The explosion of user-generated content (UGC) platforms has created thousands of diverse games that challenge traditional per-game AI approaches. PORTAL introduces language-guided behavior tree generation for playing thousands of 3D games, while the Orak benchmark evaluates LLM agents across 12 commercial titles spanning multiple genres.(([[https://arxiv.org/abs/2506.03610|Park et al. "Orak: A Foundational Benchmark for Training and Evaluating LLM Game Agents" (2025)]]))
  
 ===== PORTAL: Language-Guided Policy Generation ===== ===== PORTAL: Language-Guided Policy Generation =====
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-===== References ===== 
- 
-  * [[https://arxiv.org/abs/2503.13356|Xu et al. "PORTAL: Agents Play Thousands of 3D Video Games" (2025)]] 
-  * [[https://arxiv.org/abs/2506.03610|Park et al. "Orak: A Foundational Benchmark for Training and Evaluating LLM Game Agents" (2025)]] 
  
 ===== See Also ===== ===== See Also =====
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   * [[budget_aware_reasoning|Budget-Aware Reasoning]]   * [[budget_aware_reasoning|Budget-Aware Reasoning]]
  
 +===== References =====
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