custom-agent-design
About
This skill enables developers to build domain-specific agents from scratch using the Claude Agent SDK, providing full control over context, model, prompts, and custom tools. It's designed for creating specialized automation and converting generic workflows into dedicated agents. The process guides you from defining the agent's purpose through implementation with supported tools like Read, Grep, and Glob.
Quick Install
Claude Code
Recommended/plugin add https://github.com/majiayu000/claude-skill-registrygit clone https://github.com/majiayu000/claude-skill-registry.git ~/.claude/skills/custom-agent-designCopy and paste this command in Claude Code to install this skill
Documentation
Custom Agent Design Skill
Design domain-specific agents using Claude Agent SDK patterns.
Purpose
Guide the design of custom agents that solve domain-specific problems with full SDK control over Context, Model, Prompt, and Tools.
When to Use
- Building a new custom agent
- Converting generic workflow to specialized agent
- Designing domain-specific automation
- Creating repeatable agent patterns
Prerequisites
- Clear understanding of the domain problem
- Access to Claude Agent SDK documentation
- Understanding of when custom agents are appropriate (see @agent-evolution-path.md)
Design Process
Step 1: Define Agent Purpose
Answer these questions:
- What specific problem does this agent solve?
- What domain expertise does it need?
- What is the single purpose? (One agent, one purpose)
- Who are the stakeholders?
Output: Purpose statement (2-3 sentences)
Step 2: Select Model
Choose based on task complexity:
| Task Type | Model | Why |
|---|---|---|
| Simple transformations | Haiku | Fast, cheap |
| Balanced tasks | Sonnet | Good trade-off |
| Complex reasoning | Opus | Highest quality |
Decision factors:
- Speed requirements
- Quality requirements
- Cost constraints
- Task complexity
Step 3: Design System Prompt
Choose architecture:
Override (system_prompt=...)
- When: Building a new product
- Result: NOT Claude Code anymore
- Full control over behavior
Append (append_system_prompt=...)
- When: Extending Claude Code
- Result: Enhanced Claude Code
- Adds capabilities
System Prompt Template:
# [Agent Name]
## Purpose
[Identity and role definition - 2-3 sentences]
## Instructions
[Core behaviors - bullet list]
- Behavior 1
- Behavior 2
## Constraints
[What the agent must NOT do]
## Examples (if needed)
[Input/Output pairs]
Step 4: Configure Tool Access
Questions to answer:
- What tools does this agent need?
- What tools should be blocked?
- Are custom tools required?
Tool configuration:
# Whitelist approach
allowed_tools=["Read", "Write", "Bash"]
# Blacklist approach
disallowed_tools=["WebFetch", "WebSearch", "TodoWrite"]
# No default tools
disallowed_tools=["*"]
# Custom tools
mcp_servers={"domain": custom_mcp_server}
allowed_tools=["mcp__domain__tool1", "mcp__domain__tool2"]
Step 5: Add Governance (Optional)
If security/governance required:
hooks = {
"PreToolUse": [
HookMatcher(matcher="Read", hooks=[block_sensitive_files]),
HookMatcher(hooks=[log_all_tool_usage]),
]
}
Step 6: Select Deployment Form
| Form | Use When |
|---|---|
| Script | One-off automation, ADWs |
| Terminal REPL | Interactive tools |
| Backend API | UI integration |
| Data Stream | Real-time processing |
| Multi-Agent | Complex workflows |
Step 7: Create Configuration
Assemble the ClaudeAgentOptions:
options = ClaudeAgentOptions(
# Context
system_prompt=load_system_prompt("agent_system.md"),
# Model
model="opus",
# Tools
allowed_tools=["Read", "Write", "custom_tool"],
disallowed_tools=["WebFetch", "WebSearch"],
# Custom Tools (if needed)
mcp_servers={"domain": domain_mcp_server},
# Governance (if needed)
hooks=security_hooks,
# Session (if needed)
resume=session_id,
)
Output Format
When designing a custom agent, provide:
## Custom Agent Design
**Name:** [agent-name]
**Purpose:** [1-2 sentences]
**Domain:** [area of expertise]
### Configuration
**Model:** [haiku/sonnet/opus] - [reason]
**System Prompt Architecture:**
- Type: [Override/Append]
- Reason: [why this choice]
**Tool Access:**
- Allowed: [list]
- Disallowed: [list]
- Custom: [list if any]
**Governance:**
- Hooks: [list if any]
- Security: [considerations]
**Deployment:**
- Form: [script/repl/api/stream/multi-agent]
- Reason: [why this form]
### System Prompt
[Full system prompt content]
### Implementation Notes
[Any special considerations]
Design Checklist
- Purpose is specific and clear
- Model matches task complexity
- System prompt architecture chosen (override vs append)
- System prompt follows template
- Tool access is minimal (only what's needed)
- Governance hooks added if security required
- Deployment form selected
- Configuration assembled
Anti-Patterns
| Avoid | Why | Instead |
|---|---|---|
| Competing with Claude Code | Can't beat general agent | Specialize instead |
| Generic system prompts | No domain advantage | Domain-specific |
| Too many tools | Context overhead | Minimal tool set |
| Missing governance | Security risk | Add hooks |
| Override when append works | Loses Claude Code benefits | Use append |
Cross-References
- @agent-evolution-path.md - When to build custom agents
- @core-four-custom.md - Core Four configuration
- @system-prompt-architecture.md - Override vs append
- @custom-tool-patterns.md - Tool creation
- @model-selection skill - Model selection guidance
Version History
- v1.0.0 (2025-12-26): Initial release
Last Updated
Date: 2025-12-26 Model: claude-opus-4-5-20251101
GitHub Repository
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