Trace2Skill evolves task-specific skills from rollout traces and verifier feedback to boost hardware LLM agent performance on hard CVDP tasks without model fine-tuning.
Voyager: An open-ended embodied agent with large language models.Transactions on Machine Learning Research
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EmbodiSkill uses skill-aware reflection on execution trajectories to update skills in embodied agents, achieving 93.28% success on ALFWorld with a frozen Qwen3.5-27B model, outperforming direct GPT-5.2 use by 31.58%.
citing papers explorer
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Trace2Skill: Verifier-Guided Skill Evolution for Long-Context EDA Agents
Trace2Skill evolves task-specific skills from rollout traces and verifier feedback to boost hardware LLM agent performance on hard CVDP tasks without model fine-tuning.
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EmbodiSkill: Skill-Aware Reflection for Self-Evolving Embodied Agents
EmbodiSkill uses skill-aware reflection on execution trajectories to update skills in embodied agents, achieving 93.28% success on ALFWorld with a frozen Qwen3.5-27B model, outperforming direct GPT-5.2 use by 31.58%.