| name | agentic-development |
| description | Build AI agents with Pydantic AI (Python) and Claude SDK (Node.js) |
| when-to-use | When building AI agents, tool-using LLM systems, or agentic workflows |
| user-invocable | false |
| effort | high |
Agentic Development Skill
For building autonomous AI agents that perform multi-step tasks with tools.
Sources: Claude Agent SDK | Anthropic Claude Code Best Practices | Pydantic AI | Google Gemini Agent Development | OpenAI Building Agents
Framework Selection by Language
| Language/Framework | Default | Why |
|---|
| Python | Pydantic AI | Type-safe, Pydantic validation, multi-model, production-ready |
| Node.js / Next.js | Claude Agent SDK | Official Anthropic SDK, tools, multi-agent, native streaming |
Python: Pydantic AI (Default)
from pydantic_ai import Agent
from pydantic import BaseModel
class SearchResult(BaseModel):
title: str
url: str
summary: str
agent = Agent(
'claude-sonnet-4-20250514',
result_type=list[SearchResult],
system_prompt='You are a research assistant.',
)
result = await agent.run('Find articles about AI agents')
for item in result.data:
print(f"{item.title}: {item.url}")
Node.js / Next.js: Claude Agent SDK (Default)
import Anthropic from "@anthropic-ai/sdk";
const client = new Anthropic();
const tools: Anthropic.Tool[] = [
{
name: "web_search",
description: "Search the web for information",
input_schema: {
type: "object",
properties: {
query: { type: "string", description: "Search query" },
},
required: ["query"],
},
},
];
async function runAgent(prompt: string) {
const messages: Anthropic.MessageParam[] = [
{ role: "user", content: prompt },
];
while (true) {
const response = await client.messages.create({
model: "claude-sonnet-4-20250514",
max_tokens: 4096,
tools,
messages,
});
if (response.stop_reason === "tool_use") {
const toolUse = response.content.find((b) => b.type === "tool_use");
if (toolUse) {
const result = await executeTool(toolUse.name, toolUse.input);
messages.push({ role: "assistant", content: response.content });
messages.push({
role: "user",
content: [{ type: "tool_result", tool_use_id: toolUse.id, content: result }],
});
continue;
}
}
return response.content.find((b) => b.type === "text")?.text;
}
}
Core Principle
Plan first, act incrementally, verify always.
Agents that research and plan before executing consistently outperform those that jump straight to action. Break complex tasks into verifiable steps, use tools judiciously, and maintain clear state throughout execution.
Agent Architecture
Three Components (OpenAI)
┌─────────────────────────────────────────────────┐
│ AGENT │
├─────────────────────────────────────────────────┤
│ Model (Brain) │ LLM for reasoning & │
│ │ decision-making │
├─────────────────────┼───────────────────────────┤
│ Tools (Arms/Legs) │ APIs, functions, external │
│ │ systems for action │
├─────────────────────┼───────────────────────────┤
│ Instructions │ System prompts defining │
│ (Rules) │ behavior & boundaries │
└─────────────────────┴───────────────────────────┘
Project Structure
project/
├── src/
│ ├── agents/
│ │ ├── orchestrator.ts # Main agent coordinator
│ │ ├── specialized/ # Task-specific agents
│ │ │ ├── researcher.ts
│ │ │ ├── coder.ts
│ │ │ └── reviewer.ts
│ │ └── base.ts # Shared agent interface
│ ├── tools/
│ │ ├── definitions/ # Tool schemas
│ │ ├── implementations/ # Tool logic
│ │ └── registry.ts # Tool discovery
│ ├── prompts/
│ │ ├── system/ # Agent instructions
│ │ └── templates/ # Task templates
│ └── memory/
│ ├── conversation.ts # Short-term context
│ └── persistent.ts # Long-term storage
├── tests/
│ ├── agents/ # Agent behavior tests
│ ├── tools/ # Tool unit tests
│ └── evals/ # End-to-end evaluations
└── skills/ # Agent skills (Anthropic pattern)
├── skill-name/
│ ├── instructions.md
│ ├── scripts/
│ └── resources/
Workflow Pattern: Explore-Plan-Execute-Verify
1. Explore Phase
async function explore(task: Task): Promise<Context> {
const relevantFiles = await agent.searchCodebase(task.query);
const existingPatterns = await agent.analyzePatterns(relevantFiles);
const dependencies = await agent.identifyDependencies(task);
return { relevantFiles, existingPatterns, dependencies };
}
2. Plan Phase (Critical)
async function plan(task: Task, context: Context): Promise<Plan> {
const prompt = `
Task: ${task.description}
Context: ${JSON.stringify(context)}
Create a step-by-step plan. For each step:
1. What action to take
2. What tools to use
3. How to verify success
4. What could go wrong
Output JSON with steps array.
`;
return await llmCall({ prompt, schema: PlanSchema });
}
3. Execute Phase
async function execute(plan: Plan): Promise<Result[]> {
const results: Result[] = [];
for (const step of plan.steps) {
const result = await executeStep(step);
if (!await verify(step, result)) {
const corrected = await selfCorrect(step, result);
if (!corrected.success) {
return handleFailure(step, results);
}
}
results.push(result);
}
return results;
}
4. Verify Phase
async function verify(step: Step, result: Result): Promise<boolean> {
if (step.testCommand) {
const testResult = await runCommand(step.testCommand);
if (!testResult.success) return false;
}
const verification = await llmCall({
prompt: `
Step: ${step.description}
Expected: ${step.successCriteria}
Actual: ${JSON.stringify(result)}
Does the result satisfy the success criteria?
Respond with { "passes": boolean, "reasoning": string }
`,
schema: VerificationSchema
});
return verification.passes;
}
Tool Design
Tool Definition Pattern
import { z } from 'zod';
export const ReadFileTool = {
name: 'read_file',
description: 'Read contents of a file. Use before modifying any file.',
parameters: z.object({
path: z.string().describe('Absolute path to the file'),
startLine: z.number().optional().describe('Start line (1-indexed)'),
endLine: z.number().optional().describe('End line (1-indexed)'),
}),
riskLevel: 'low' as const,
};
export const WriteFileTool = {
name: 'write_file',
description: 'Write content to a file. Always read first to understand context.',
parameters: z.object({
path: z.string().describe('Absolute path to the file'),
content: z.string().describe('Complete file content'),
}),
riskLevel: 'medium' as const,
requiresConfirmation: true,
};
Tool Implementation
export async function readFile(
params: z.infer<typeof ReadFileTool.parameters>
): Promise<ToolResult> {
try {
const content = await fs.readFile(params.path, 'utf-8');
const lines = content.split('\n');
const start = (params.startLine ?? 1) - 1;
const end = params.endLine ?? lines.length;
return {
success: true,
data: lines.slice(start, end).join('\n'),
metadata: { totalLines: lines.length }
};
} catch (error) {
return {
success: false,
error: `Failed to read file: ${error.message}`
};
}
}
Prefer Built-in Tools (OpenAI)
const agent = createAgent({
tools: [
{ type: 'web_search' },
{ type: 'code_interpreter' },
{ type: 'function', function: customDatabaseTool },
],
});
Multi-Agent Patterns
Single Agent (Default)
Use one agent for most tasks. Multiple agents add complexity.
Agent-as-Tool Pattern (OpenAI)
const researchAgent = createAgent({
name: 'researcher',
instructions: 'You research topics and return structured findings.',
tools: [webSearchTool, documentReadTool],
});
const mainAgent = createAgent({
tools: [
{
type: 'function',
function: {
name: 'research_topic',
description: 'Delegate research to specialized agent',
parameters: ResearchQuerySchema,
handler: async (query) => researchAgent.run(query),
},
},
],
});
Handoff Pattern (OpenAI)
const customerServiceAgent = createAgent({
tools: [
{
name: 'transfer_to_billing',
description: 'Transfer to billing specialist for payment issues',
handler: async (context) => {
return { handoff: 'billing_agent', context };
},
},
],
});
When to Use Multiple Agents
- Separate task domains with non-overlapping tools
- Different authorization levels needed
- Complex workflows with clear handoff points
- Parallel execution of independent subtasks
Memory & State
Conversation Memory
interface ConversationMemory {
messages: Message[];
maxTokens: number;
add(message: Message): void;
getContext(): Message[];
summarize(): Promise<string>;
}
interface AgentState {
thoughtSignature?: string;
conversationId: string;
currentPlan?: Plan;
completedSteps: Step[];
}
Persistent Memory
interface PersistentMemory {
store(key: string, value: any): Promise<void>;
retrieve(key: string): Promise<any>;
search(query: string, limit: number): Promise<Memory[]>;
}
Guardrails & Safety
Multi-Layer Protection (OpenAI)
interface GuardrailConfig {
inputClassifier: (input: string) => Promise<SafetyResult>;
outputValidator: (output: string) => Promise<SafetyResult>;
toolRiskLevels: Record<string, 'low' | 'medium' | 'high'>;
humanInTheLoop: string[];
}
async function executeWithGuardrails(
agent: Agent,
input: string,
config: GuardrailConfig
): Promise<Result> {
const inputCheck = await config.inputClassifier(input);
if (!inputCheck.safe) {
return { blocked: true, reason: inputCheck.reason };
}
const result = await agent.run(input, {
beforeTool: async (tool, params) => {
const risk = config.toolRiskLevels[tool.name];
if (risk === 'high' || config.humanInTheLoop.includes(tool.name)) {
return await requestHumanApproval(tool, params);
}
return { approved: true };
},
});
const outputCheck = await config.outputValidator(result.output);
if (!outputCheck.safe) {
return { blocked: true, reason: outputCheck.reason };
}
return result;
}
Scope Enforcement (OpenAI)
const agentInstructions = `
You are a customer service agent for Acme Corp.
SCOPE BOUNDARIES (non-negotiable):
- Only answer questions about Acme products and services
- Never provide legal, medical, or financial advice
- Never access or modify data outside your authorized scope
- If a request is out of scope, politely decline and explain why
If you cannot complete a task within scope, notify the user
and request explicit approval before proceeding.
`;
Model Selection
Match Model to Task
| Task Complexity | Recommended Model | Notes |
|---|
| Simple, fast | gpt-5-mini, claude-haiku | Low latency |
| General purpose | gpt-4.1, claude-sonnet | Balance |
| Complex reasoning | o4-mini, claude-opus | Higher accuracy |
| Deep planning | gpt-5 + reasoning, ultrathink | Maximum capability |
Gemini-Specific
const response = await gemini.generate({
model: 'gemini-3',
thinking_level: 'high',
temperature: 1.0,
});
const nextResponse = await gemini.generate({
thoughtSignature: response.thoughtSignature,
});
Claude-Specific (Thinking Modes)
const thinkingLevels = {
'think': 'standard analysis',
'think hard': 'deeper reasoning',
'think harder': 'extensive analysis',
'ultrathink': 'maximum reasoning budget',
};
const prompt = `
Think hard about this problem before proposing a solution.
Task: ${task.description}
`;
Testing Agents
Unit Tests (Tools)
describe('readFile tool', () => {
it('reads file content correctly', async () => {
const result = await readFile({ path: '/test/file.txt' });
expect(result.success).toBe(true);
expect(result.data).toContain('expected content');
});
});
Behavior Tests (Agent Decisions)
describe('agent planning', () => {
it('creates plan before executing file modifications', async () => {
const trace = await agent.runWithTrace('Refactor the auth module');
const firstToolCall = trace.toolCalls[0];
expect(firstToolCall.name).toBe('read_file');
const writeIndex = trace.toolCalls.findIndex(t => t.name === 'write_file');
const readIndex = trace.toolCalls.findIndex(t => t.name === 'read_file');
expect(readIndex).toBeLessThan(writeIndex);
});
});
Evaluation Tests
describe('Agent Accuracy (Eval)', () => {
const testCases = loadTestCases('./evals/coding-tasks.json');
it.each(testCases)('completes $name correctly', async (testCase) => {
const result = await agent.run(testCase.input);
expect(result.filesModified).toEqual(testCase.expectedFiles);
expect(await runTests(testCase.testCommand)).toBe(true);
}, 120000);
});
Pydantic AI Patterns (Python Default)
Project Structure (Python)
project/
├── src/
│ ├── agents/
│ │ ├── __init__.py
│ │ ├── researcher.py # Research agent
│ │ ├── coder.py # Coding agent
│ │ └── orchestrator.py # Main coordinator
│ ├── tools/
│ │ ├── __init__.py
│ │ ├── web.py # Web search tools
│ │ ├── files.py # File operations
│ │ └── database.py # DB queries
│ ├── models/
│ │ ├── __init__.py
│ │ └── schemas.py # Pydantic models
│ └── deps.py # Dependencies
├── tests/
│ ├── test_agents.py
│ └── test_tools.py
└── pyproject.toml
Agent with Tools
from pydantic_ai import Agent, RunContext
from pydantic import BaseModel
from httpx import AsyncClient
class SearchResult(BaseModel):
title: str
url: str
snippet: str
class ResearchDeps(BaseModel):
http_client: AsyncClient
api_key: str
research_agent = Agent(
'claude-sonnet-4-20250514',
deps_type=ResearchDeps,
result_type=list[SearchResult],
system_prompt='You are a research assistant. Use tools to find information.',
)
@research_agent.tool
async def web_search(ctx: RunContext[ResearchDeps], query: str) -> list[dict]:
"""Search the web for information."""
response = await ctx.deps.http_client.get(
'https://api.search.com/search',
params={'q': query},
headers={'Authorization': f'Bearer {ctx.deps.api_key}'},
)
return response.json()['results']
@research_agent.tool
async def read_webpage(ctx: RunContext[ResearchDeps], url: str) -> str:
"""Read and extract content from a webpage."""
response = await ctx.deps.http_client.get(url)
return response.text[:5000]
async def main():
async with AsyncClient() as client:
deps = ResearchDeps(http_client=client, api_key='...')
result = await research_agent.run(
'Find recent articles about LLM agents',
deps=deps,
)
for item in result.data:
print(f"- {item.title}")
Structured Output with Validation
from pydantic import BaseModel, Field
from pydantic_ai import Agent
class CodeReview(BaseModel):
summary: str = Field(description="Brief summary of the review")
issues: list[str] = Field(description="List of issues found")
suggestions: list[str] = Field(description="Improvement suggestions")
approval: bool = Field(description="Whether code is approved")
confidence: float = Field(ge=0, le=1, description="Confidence score")
review_agent = Agent(
'claude-sonnet-4-20250514',
result_type=CodeReview,
system_prompt='Review code for quality, security, and best practices.',
)
result = await review_agent.run(f"Review this code:\n```python\n{code}\n```")
if result.data.approval:
print("Code approved!")
else:
for issue in result.data.issues:
print(f"Issue: {issue}")
Multi-Agent Coordination
from pydantic_ai import Agent
planner = Agent('claude-sonnet-4-20250514', system_prompt='Create detailed plans.')
executor = Agent('claude-sonnet-4-20250514', system_prompt='Execute tasks precisely.')
reviewer = Agent('claude-sonnet-4-20250514', system_prompt='Review and verify work.')
async def orchestrate(task: str):
plan = await planner.run(f"Create a plan for: {task}")
results = []
for step in plan.data.steps:
result = await executor.run(f"Execute: {step}")
results.append(result.data)
review = await reviewer.run(
f"Review the results:\nTask: {task}\nResults: {results}"
)
return review.data
Streaming Responses
from pydantic_ai import Agent
agent = Agent('claude-sonnet-4-20250514')
async def stream_response(prompt: str):
async with agent.run_stream(prompt) as response:
async for chunk in response.stream():
print(chunk, end='', flush=True)
result = await response.get_data()
return result
Testing Agents
import pytest
from pydantic_ai import Agent
from pydantic_ai.models.test import TestModel
@pytest.fixture
def test_agent():
return Agent(
TestModel(),
result_type=str,
)
async def test_agent_response(test_agent):
result = await test_agent.run('Test prompt')
assert result.data is not None
async def test_with_mock_response():
model = TestModel()
model.seed_response('Expected output')
agent = Agent(model)
result = await agent.run('Any prompt')
assert result.data == 'Expected output'
Skills Pattern (Anthropic)
Skill Structure
skills/
└── code-review/
├── instructions.md # How to perform code reviews
├── scripts/
│ └── run-linters.sh # Supporting scripts
└── resources/
└── checklist.md # Review checklist
instructions.md Example
# Code Review Skill
## When to Use
Activate this skill when asked to review code, PRs, or diffs.
## Process
1. Read the changed files completely
2. Run linters: `./scripts/run-linters.sh`
3. Check against resources/checklist.md
4. Provide structured feedback
## Output Format
- Summary (1-2 sentences)
- Issues found (severity: critical/major/minor)
- Suggestions for improvement
- Approval recommendation
Loading Skills Dynamically
async function loadSkill(skillName: string): Promise<Skill> {
const skillPath = `./skills/${skillName}`;
const instructions = await fs.readFile(`${skillPath}/instructions.md`, 'utf-8');
const scripts = await glob(`${skillPath}/scripts/*`);
const resources = await glob(`${skillPath}/resources/*`);
return {
name: skillName,
instructions,
scripts: scripts.map(s => ({ name: path.basename(s), path: s })),
resources: await Promise.all(resources.map(loadResource)),
};
}
Anti-Patterns
- No planning before execution - Agents that jump to action make more errors
- Monolithic agents - One agent with 50 tools becomes confused
- No verification - Agents must verify their own work
- Hardcoded tool sequences - Let the model decide tool order
- Missing guardrails - All agents need safety boundaries
- No state management - Lose context across tool calls
- Testing only happy paths - Test failures and edge cases
- Ignoring model differences - Reasoning models need different prompts
- No cost tracking - Agentic workflows can be expensive
- Full automation without oversight - Human-in-the-loop for critical actions
Quick Reference
Agent Development Checklist
Thinking Triggers (Claude)
"think" → Standard analysis
"think hard" → Deeper reasoning
"think harder" → Extensive analysis
"ultrathink" → Maximum reasoning
Gemini Settings
thinking_level: "high" | "low"
temperature: 1.0 (keep at 1.0 for reasoning)
thoughtSignature: <pass back for function calling>