MemCompiler reframes memory use as state-conditioned compilation, delivering relevant guidance via text and latent channels to improve embodied agent performance up to 129% and cut latency 60% versus static injection.
Multi-agent embodied ai: Advances and future directions.Science China Information Sciences, 69(5):151202
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EvoAgent is an evolvable LLM agent framework using structured skill learning, user-feedback loops, and hierarchical delegation that boosts GPT5.2 performance by about 28% in real-world trade scenarios under LLM-as-Judge evaluation.
citing papers explorer
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MemCompiler: Compile, Don't Inject -- State-Conditioned Memory for Embodied Agents
MemCompiler reframes memory use as state-conditioned compilation, delivering relevant guidance via text and latent channels to improve embodied agent performance up to 129% and cut latency 60% versus static injection.
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EvoAgent: An Evolvable Agent Framework with Skill Learning and Multi-Agent Delegation
EvoAgent is an evolvable LLM agent framework using structured skill learning, user-feedback loops, and hierarchical delegation that boosts GPT5.2 performance by about 28% in real-world trade scenarios under LLM-as-Judge evaluation.