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5arXiv cs.CL (Computation and Language)·2d ago

Scalable behaviour cloning for browser agents via skill distillation from human interaction traces

A new arXiv preprint proposes converting human browser interaction trajectories into compact natural-language skills that agents can retrieve and compose, arguing that the bottleneck for browser agents is decision-making under incomplete information rather than low-level operations. The approach organizes distilled skills into a skill graph to enable consolidation rather than unbounded accumulation. The work positions collective human browsing behavior as a scalable, under-exploited source of reusable agent priors, potentially reducing reliance on manually designed task demonstrations.

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6arXiv · cs.AI·1mo ago·source ↗

Systematic Study of Model-Generated Agent Skills Across the Full Skill Lifecycle

This paper presents a utility-grounded evaluation framework for model-generated agent skills, covering the full lifecycle of experience generation, skill extraction, and skill consumption across five agentic task domains. The authors find that while such skills are beneficial on average, they exhibit non-trivial negative transfer, and that skill utility is independent of model scale or baseline task strength. A key finding is that strong extractors are not necessarily strong consumers and vice versa. The work culminates in a 'meta-skill' that guides extraction toward utility-correlated features, consistently improving skill quality and reducing negative transfer.

5arXiv · cs.CL·2d ago·source ↗

SkillComposer: Structured skill composition for LLM agents via constrained autoregressive decoding

A new arXiv preprint introduces SkillComposer, a method that frames skill selection for LLM agents as a structured prediction problem — jointly deciding which skills to activate, how many, and in what order via a constrained autoregressive decoder over skill identifiers. The approach addresses a bottleneck in growing skill libraries where existing retrieval and full-context methods fail to capture the joint nature of skill composition. Evaluated on SkillsBench across two production-grade coding agents (GPT-5.2-Codex and Gemini-3-Pro-Preview), SkillComposer raises pass rates by +23.1 and +18.2 percentage points over no-skill baselines, matching gold-skill retrieval upper bounds at lower prompt-token cost.

6arXiv · cs.CL·16d ago·source ↗

SkillWeaver: Compositional Skill Routing for LLM Agents via Decompose-Retrieve-Compose

Researchers introduce SkillWeaver, a framework for compositional skill routing in LLM agents that decomposes complex queries into atomic sub-tasks, retrieves matching skills from a large library, and composes an executable DAG plan. The paper formalizes the Compositional Skill Routing problem and introduces CompSkillBench, a benchmark of 300 compositional queries over 2,209 real MCP server skills across 24 categories. A key finding is that task decomposition quality is the primary bottleneck, with standard LLM decomposition reaching only 34.2% category recall; the proposed Iterative Skill-Aware Decomposition (SAD) method improves decomposition accuracy from 51.0% to 67.7% in a single iteration. The framework also reduces context window consumption by over 99% compared to naive skill-stuffing approaches.

7arXiv · cs.AI·1mo ago·source ↗

SkillOpt: Systematic Text-Space Optimizer for Self-Evolving Agent Skills

SkillOpt introduces a principled optimization framework for agent skills, treating the skill document as an external trainable state analogous to model weights. A separate optimizer model converts scored rollouts into bounded edits (add/delete/replace) on a skill document, accepting only edits that improve held-out validation scores. Evaluated across six benchmarks, seven target models, and three execution harnesses (direct chat, Codex, Claude Code), SkillOpt achieves best or tied performance on all 52 evaluated cells, lifting GPT-5.5 no-skill accuracy by up to +24.8 points inside the Codex agentic loop. Optimized skill artifacts also transfer across model scales and execution environments without further optimization.

4Github Trending·1mo ago·source ↗

agent-skills: Secure Validated Skill Registry for AI Coding Agents

A TypeScript-based open-source skill registry designed to extend AI coding agents including Claude Code, Cursor, GitHub Copilot, and Antigravity with validated, reusable capabilities. The project provides a structured way to add skills to multiple coding agent platforms with a focus on security and validation. It is gaining notable traction with 3,767 total stars and 225 stars added today.

4Latent Space·28h ago·source ↗

Latent Space: Skill engineering and the case against one-shot AI design

Paul Bakaus discusses 'skill engineering' as a design philosophy for AI-assisted workflows, arguing against fully automated one-shot AI pipelines in favor of keeping humans in the loop. The conversation centers on Impeccable, a tool or approach Bakaus is developing, and the concept of 'loopmaxxing' — iterative human-agent collaboration cycles. The piece addresses why current agents still require human steering to produce high-quality outputs.

3Github Trending·1mo ago·source ↗

SkillKit: Portable Skills Layer for AI Coding Agents

SkillKit is an open-source TypeScript project that provides a portable skills abstraction for AI coding agents, enabling installation, translation, and sharing of skills across tools like Claude Code, Cursor, Codex, GitHub Copilot, and 40+ others. The project has accumulated 1,112 stars with 32 added today, indicating moderate community traction. It targets the interoperability gap between the growing ecosystem of AI coding assistants.

5arXiv · cs.AI·1mo ago·source ↗

SkillGenBench: Benchmarking Skill Generation Pipelines for LLM Agents

SkillGenBench is a new benchmark designed to evaluate the ability of LLM agents to generate correct, reusable, and executable skills from raw repositories and documents, rather than merely using pre-provided skills. It covers two generation regimes (task-conditioned and task-agnostic) and two procedural sources (repository-grounded and document-grounded), with standardized execution-based evaluation protocols. Experiments across multiple skill-generation methods reveal substantial performance variation and distinct failure modes depending on source type. The benchmark aims to establish skill generation as an independent research problem within agent systems.