s05
스킬
계획 및 조정Load on Demand
187 LOC5 도구SkillLoader + two-layer injection
Inject knowledge via tool_result when needed, not upfront in the system prompt
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): |
| <skill name="git"> |
| Full git workflow instructions... | ~2000 tokens
| Step 1: ... |
| </skill> |
+--------------------------------------+
Layer 1: skill names in system prompt (cheap). Layer 2: full body via tool_result (on demand).
How It Works
- Each skill is a directory containing a
SKILL.mdwith YAML frontmatter.
skills/
pdf/
SKILL.md # ---\n name: pdf\n description: Process PDF files\n ---\n ...
code-review/
SKILL.md # ---\n name: code-review\n description: Review code\n ---\n ...
- SkillLoader scans for
SKILL.mdfiles, uses the directory name as the skill identifier.
class SkillLoader:
def __init__(self, skills_dir: Path):
self.skills = {}
for f in sorted(skills_dir.rglob("SKILL.md")):
text = f.read_text()
meta, body = self._parse_frontmatter(text)
name = meta.get("name", f.parent.name)
self.skills[name] = {"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"<skill name=\"{name}\">\n{skill['body']}\n</skill>"
- Layer 1 goes into the system prompt. Layer 2 is just another tool handler.
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/*/SKILL.md files |
| Injection | None | Two-layer (system + result) |
Try It
python agents/s05_skill_loading.py
What skills are available?Load the agent-builder skill and follow its instructionsI need to do a code review -- load the relevant skill firstBuild an MCP server using the mcp-builder skill
