# s05: Skills `s01 > s02 > s03 > s04 > [ s05 ] s06 | s07 > s08 > s09 > s10 > s11 > s12` > *"Load knowledge when you need it, not upfront"* -- inject via tool_result, not the system prompt. ## Problem You want the agent to follow domain-specific workflows: git conventions, testing patterns, code review checklists. Putting everything in the system prompt wastes tokens on unused skills. 10 skills at 2000 tokens each = 20,000 tokens, most of which are irrelevant to any given task. ## Solution ``` System prompt (Layer 1 -- always present): +--------------------------------------+ | You are a coding agent. | | Skills available: | | - git: Git workflow helpers | ~100 tokens/skill | - test: Testing best practices | +--------------------------------------+ When model calls load_skill("git"): +--------------------------------------+ | tool_result (Layer 2 -- on demand): | | | | Full git workflow instructions... | ~2000 tokens | Step 1: ... | | | +--------------------------------------+ ``` Layer 1: skill *names* in system prompt (cheap). Layer 2: full *body* via tool_result (on demand). ## How It Works 1. Skill files live in `.skills/` as Markdown with YAML frontmatter. ``` .skills/ git.md # ---\n description: Git workflow\n ---\n ... test.md # ---\n description: Testing patterns\n ---\n ... ``` 2. SkillLoader parses frontmatter, separates metadata from body. ```python class SkillLoader: def __init__(self, skills_dir: Path): self.skills = {} for f in sorted(skills_dir.glob("*.md")): text = f.read_text() meta, body = self._parse_frontmatter(text) self.skills[f.stem] = {"meta": meta, "body": body} def get_descriptions(self) -> str: lines = [] for name, skill in self.skills.items(): desc = skill["meta"].get("description", "") lines.append(f" - {name}: {desc}") return "\n".join(lines) def get_content(self, name: str) -> str: skill = self.skills.get(name) if not skill: return f"Error: Unknown skill '{name}'." return f"\n{skill['body']}\n" ``` 3. Layer 1 goes into the system prompt. Layer 2 is just another tool handler. ```python SYSTEM = f"""You are a coding agent at {WORKDIR}. Skills available: {SKILL_LOADER.get_descriptions()}""" TOOL_HANDLERS = { # ...base tools... "load_skill": lambda **kw: SKILL_LOADER.get_content(kw["name"]), } ``` The model learns what skills exist (cheap) and loads them when relevant (expensive). ## What Changed From s04 | Component | Before (s04) | After (s05) | |----------------|------------------|----------------------------| | Tools | 5 (base + task) | 5 (base + load_skill) | | System prompt | Static string | + skill descriptions | | Knowledge | None | .skills/*.md files | | Injection | None | Two-layer (system + result)| ## Try It ```sh cd learn-claude-code python agents/s05_skill_loading.py ``` 1. `What skills are available?` 2. `Load the agent-builder skill and follow its instructions` 3. `I need to do a code review -- load the relevant skill first` 4. `Build an MCP server using the mcp-builder skill`