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create-agent

pjt222
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Über

Die `create-agent`-Fähigkeit erstellt neue Agenten-Definitionsdateien, die der `agent-almanac`-Vorlage und den Registry-Standards entsprechen. Sie führt Entwickler durch das Persona-Design, die Auswahl von Werkzeugen/Fähigkeiten und die korrekte Integration für spezialisierte Agenten oder Claude Code-Subagenten. Verwenden Sie sie, wenn Sie Ihrem Bibliotheksbestand einen domänenspezifischen Assistenten mit kuratierten Fähigkeiten hinzufügen möchten.

Schnellinstallation

Claude Code

Empfohlen
Primär
npx skills add pjt222/agent-almanac -a claude-code
Plugin-BefehlAlternativ
/plugin add https://github.com/pjt222/agent-almanac
Git CloneAlternativ
git clone https://github.com/pjt222/agent-almanac.git ~/.claude/skills/create-agent

Kopieren Sie diesen Befehl und fügen Sie ihn in Claude Code ein, um diese Fähigkeit zu installieren

Dokumentation

Create a New Agent

Define Claude Code subagent persona. Focused purpose, curated tools, assigned skills, complete docs. Follow agent template and registry rules.

When Use

  • Adding new specialist agent to library for new domain
  • Converting recurring workflow or prompt pattern into reusable agent persona
  • Creating domain-specific assistant with curated skills and constrained tools
  • Splitting too-broad agent into focused single-responsibility agents
  • Designing new team member before composing multi-agent team

Inputs

  • Required: Agent name (lowercase kebab-case, e.g., data-engineer)
  • Required: One-line description of agent's primary purpose
  • Required: Purpose statement explaining problem agent solves
  • Optional: Model choice (default: sonnet; alternatives: opus, haiku)
  • Optional: Priority level (default: normal; alternatives: high, low)
  • Optional: List of skills from skills/_registry.yml to assign
  • Optional: MCP servers agent needs (e.g., r-mcptools, hf-mcp-server)

Steps

Step 1: Design the Agent Persona

Pick clear, focused identity for agent:

  • Name: lowercase kebab-case, describes role. Start with noun or domain qualifier: security-analyst, r-developer, tour-planner. Dodge generic names like helper or assistant.
  • Purpose: one paragraph explaining specific problem this agent solves. Ask: "What does this agent do that no existing agent covers?"
  • Communication style: think domain. Technical agents precise, citation-heavy. Creative agents can explore more. Compliance agents formal, audit-oriented.

Before moving on, check for overlap with existing 53 agents:

grep -i "description:" agents/_registry.yml | grep -i "<your-domain-keywords>"

Got: No existing agent covers same niche. Existing agent partially overlaps? Consider extending it instead of creating new one.

If fail: Agent with big overlap exists? Either extend that agent's skills list or narrow your new agent's scope to complement, not duplicate.

Step 2: Select Tools

Pick minimal tools agent needs. Principle of least privilege:

Tool SetWhen to UseExample Agents
[Read, Grep, Glob]Read-only analysis, review, auditingcode-reviewer, security-analyst, auditor
[Read, Grep, Glob, WebFetch]Analysis plus external lookupssenior-researcher
[Read, Write, Edit, Bash, Grep, Glob]Full development — creating/modifying coder-developer, web-developer, devops-engineer
[Read, Write, Edit, Bash, Grep, Glob, WebFetch, WebSearch]Development plus external researchpolymath, shapeshifter

Do not include Bash for agents only analyzing code. Do not include WebFetch or WebSearch unless agent truly needs external lookups.

Got: Tool list has only tools agent will actually use in primary workflows.

If fail: Check agent's capabilities list — capability does not need tool? Remove tool.

Step 3: Choose Model

Pick model based on task complexity:

  • sonnet (default): Most agents. Good balance of reasoning and speed. Use for development, review, analysis, standard workflows.
  • opus: Complex reasoning, multi-step planning, nuanced judgment. Use for senior-level agents, architectural decisions, tasks needing deep domain expertise.
  • haiku: Simple, fast responses. Use for agents doing lookups, formatting, template-filling.

Got: Model matches cognitive demands of agent's primary use cases.

If fail: In doubt? Use sonnet. Upgrade to opus only if testing shows weak reasoning.

Step 4: Assign Skills

Browse skills registry. Pick skills fitting agent's domain:

# List all skills in a domain
grep -A3 "domain-name:" skills/_registry.yml

# Search for skills by keyword
grep -i "keyword" skills/_registry.yml

Build skills list for frontmatter:

skills:
  - skill-id-one
  - skill-id-two
  - skill-id-three

Important: All agents auto-inherit default skills (meditate, heal) from registry-level default_skills field. Do NOT list these in agent's frontmatter unless core to agent's methodology (e.g., mystic agent lists meditate because meditation facilitation is primary purpose).

Got: Skills list has 3-15 skill IDs existing in skills/_registry.yml.

If fail: Verify each skill ID exists: grep "id: skill-name" skills/_registry.yml. Drop any that do not match.

Step 5: Write the Agent File

Copy template. Fill in frontmatter:

cp agents/_template.md agents/<agent-name>.md

Fill in YAML frontmatter:

---
name: agent-name
description: One to two sentences describing primary capability and domain
tools: [Read, Write, Edit, Bash, Grep, Glob]
model: sonnet
version: "1.0.0"
author: Philipp Thoss
created: YYYY-MM-DD
updated: YYYY-MM-DD
tags: [domain, specialty, relevant-keywords]
priority: normal
max_context_tokens: 200000
skills:
  - assigned-skill-one
  - assigned-skill-two
# Note: All agents inherit default skills (meditate, heal) from the registry.
# Only list them here if they are core to this agent's methodology.
# mcp_servers: []  # Uncomment and populate if MCP servers are needed
---

Got: YAML frontmatter parses without errors. All required fields (name, description, tools, model, version, author) present.

If fail: Validate YAML syntax. Common issues: missing quotes around version strings, wrong indentation, unclosed brackets in tool lists.

Step 6: Write Purpose and Capabilities

Replace template placeholder sections:

Purpose: One paragraph explaining specific problem this agent solves and value it gives. Be concrete — name domain, workflow, outcome.

Capabilities: Bulleted list with bold lead-ins. Group by category if agent has many:

## Capabilities

- **Primary Capability**: What the agent does best
- **Secondary Capability**: Additional functionality
- **Tool Integration**: How it leverages its tools

Available Skills: List each assigned skill with brief description. Use bare skill IDs (slash-command names):

## Available Skills

- `skill-id` - Brief description of what the skill does

Got: Purpose is specific (not "helps with development"), capabilities are concrete and verifiable, skills list matches frontmatter.

If fail: Purpose feels vague? Answer: "What specific task would user ask this agent to do?" Use that as purpose.

Step 7: Write Usage Scenarios and Examples

Give 2-3 usage scenarios showing how to spawn agent:

### Scenario 1: Primary Use Case
Brief description of the main scenario.

> "Use the agent-name agent to [specific task]."

### Scenario 2: Alternative Use Case
Description of another common use case.

> "Spawn the agent-name to [different task]."

Add 1-2 concrete examples showing user request and expected agent behavior:

### Example 1: Basic Usage
**User**: [Specific request]
**Agent**: [Expected response pattern and actions taken]

Got: Scenarios are realistic, examples show real value, invocation patterns match Claude Code conventions.

If fail: Test examples in head — would agent actually fulfill request with its assigned tools and skills?

Step 8: Write Limitations and See Also

Limitations: 3-5 honest constraints. What agent cannot do, should not be used for, or where results poor:

## Limitations

- Cannot execute code in language X (no runtime available)
- Not suitable for tasks requiring Y — use Z agent instead
- Requires MCP server ABC to be running for full functionality

See Also: Cross-reference complementary agents, relevant guides, related teams:

## See Also

- [complementary-agent](complementary-agent.md) - handles the X side of this workflow
- [relevant-guide](../guides/guide-name.md) - background knowledge for this domain
- [relevant-team](../teams/team-name.md) - team that includes this agent

Got: Limitations honest and specific. See Also references existing files.

If fail: Check referenced files exist: ls agents/complementary-agent.md.

Step 9: Add to Registry

Edit agents/_registry.yml. Add new agent entry in alphabetical position:

  - id: agent-name
    path: agents/agent-name.md
    description: Same one-line description from frontmatter
    tags: [domain, specialty]
    priority: normal
    tools: [Read, Write, Edit, Bash, Grep, Glob]
    skills:
      - skill-id-one
      - skill-id-two

Bump total_agents count at top of file.

Got: Registry entry matches agent file frontmatter. total_agents equals actual number of agent entries.

If fail: Count entries with grep -c "^ - id:" agents/_registry.yml. Verify matches total_agents.

Step 10: Verify Discovery

Claude Code discovers agents from .claude/agents/ directory. In this repo, that dir is symlink to agents/:

# Verify the symlink exists and resolves
ls -la .claude/agents/
readlink -f .claude/agents/<agent-name>.md

If .claude/agents/ symlink intact, no extra action needed — new agent file auto-discoverable.

Run README automation to update agents README:

npm run update-readmes

Got: .claude/agents/<agent-name>.md resolves to new agent file. agents/README.md includes new agent.

If fail: Symlink broken? Recreate: ln -sf ../agents .claude/agents. npm run update-readmes fails? Check scripts/generate-readmes.js exists and js-yaml installed.

Step 11: Scaffold Translations

Required for all agents. This step applies to both human authors and AI agents following this procedure. Do not skip — missing translations pile into stale backlog.

Scaffold translation files for all 4 supported locales right after committing new agent:

for locale in de zh-CN ja es; do
  npm run translate:scaffold -- agents <agent-name> "$locale"
done

Then translate scaffolded prose in each file (code blocks and IDs stay English). Finally regenerate status files:

npm run translation:status

Got: 4 files created at i18n/{de,zh-CN,ja,es}/agents/<agent-name>.md, all with source_commit matching current HEAD. npm run validate:translations shows 0 stale warnings for new agent.

If fail: Scaffold fails? Verify agent exists in agents/_registry.yml. Status files don't update? Run npm run translation:status explicitly — CI does not trigger it automatically.

Checks

  • Agent file exists at agents/<agent-name>.md
  • YAML frontmatter parses without errors
  • All required fields present: name, description, tools, model, version, author
  • name field matches filename (no .md)
  • All sections present: Purpose, Capabilities, Available Skills, Usage Scenarios, Examples, Limitations, See Also
  • Skills in frontmatter exist in skills/_registry.yml
  • Default skills (meditate, heal) NOT listed unless core to agent methodology
  • Tools list follows least-privilege
  • Agent listed in agents/_registry.yml with correct path and matching metadata
  • total_agents count in registry updated
  • .claude/agents/ symlink resolves to new agent file
  • No big overlap with existing agents

Pitfalls

  • Tool over-provisioning: Giving Bash, Write, or WebFetch when agent only needs to read and analyze. Breaks least-privilege, can cause unintended side effects. Start minimal, add tools only when capability needs them.
  • Missing or wrong skill assignments: Listing skill IDs not in registry, or forgetting skills entirely. Always verify each skill ID with grep "id: skill-name" skills/_registry.yml before adding.
  • Listing default skills unnecessarily: Adding meditate or heal to frontmatter when already inherited from registry. Only list if core to agent's methodology (e.g., mystic, alchemist, gardener, shaman).
  • Scope overlap with existing agents: Making new agent duplicating existing 53 agents. Search registry first. Consider extending existing agent's skills instead.
  • Vague purpose and capabilities: Writing "helps with development" instead of "scaffolds R packages with complete structure, documentation, CI/CD config." Specificity makes agent useful and discoverable.

See Also

  • create-skill - parallel procedure for creating SKILL.md files instead of agent files
  • create-team - compose many agents into coordinated team (planned)
  • commit-changes - commit new agent file and registry update

GitHub Repository

pjt222/agent-almanac
Pfad: i18n/caveman/skills/create-agent
0
agentsagentskillsai-assisted-developmentclaude-codeskillsteams

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