SkillComposer performs task-conditioned skill sequence prediction with a constrained autoregressive decoder to jointly output skill subset, count, and order, raising pass rates by 23.1 and 18.2 percentage points on two production coding agents over no-skill baselines.
Agentic proposing: Enhancing large language model reasoning via compositional skill synthesis.arXiv preprint arXiv:2602.03279
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Skill-3D improves MLLM agent tool use in 3D spatial reasoning from 39% to 78% on VSI-Bench by evolving reusable scene-aware skills from aggregated trajectories stored in a scene memory.
SkillFoundry mines heterogeneous scientific resources into a self-evolving library of validated agent skills, with 71.1% novelty versus prior libraries and measurable gains on coding benchmarks plus two genomics tasks.
Skill1 trains a single RL policy to co-evolve skill selection, utilization, and distillation in language model agents from one task-outcome reward, using low-frequency trends to credit selection and high-frequency variation to credit distillation, outperforming baselines on ALFWorld and WebShop.
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Skill-3D: Evolving Scene-Aware Skills for Agentic 3D Spatial Reasoning
Skill-3D improves MLLM agent tool use in 3D spatial reasoning from 39% to 78% on VSI-Bench by evolving reusable scene-aware skills from aggregated trajectories stored in a scene memory.