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jezweb/claude-skills1.5k installs

elevenlabs-agents

Build conversational AI voice agents on the ElevenLabs platform. Configure agent + tools + knowledge base, integrate SDK (React / React Native / Swift / JS / server-side), test, deploy. Use whenever the user mentions ElevenLabs, building a voice agent, an AI phone system, an AI receptionist, conversational AI, or troubleshooting deprecated @11labs packages, webhook errors, CSP violations, localhost allowlist, or tool parsing errors.

How do I install this agent skill?

npx skills add https://github.com/jezweb/claude-skills --skill elevenlabs-agents
view source ↗

Is this agent skill safe to install?

  • Gen Agent Trust Hubpass

    The skill provides comprehensive documentation and boilerplate code for building voice agents using the ElevenLabs platform. It follows security best practices by recommending environment variables for secrets and signed URLs for client-side authentication.

  • Socketpass

    No alerts

  • Snykwarn

    Risk: MEDIUM · 2 issues

  • Runlayerwarn

    6/21 files flagged

  • ZeroLeakspass

    1 finding · Score: 86/100

What does this agent skill do?

ElevenLabs Agent Builder

Build a production-ready conversational AI voice agent. Produces a configured agent with tools, knowledge base, and SDK integration.

Packages

npm install @elevenlabs/react           # React SDK
npm install @elevenlabs/client          # JavaScript SDK (browser + server)
npm install @elevenlabs/react-native    # React Native SDK
npm install @elevenlabs/elevenlabs-js   # Full API (server only)
npm install -g @elevenlabs/agents-cli   # CLI ("Agents as Code")

DEPRECATED: @11labs/react, @11labs/client -- uninstall if present.

Server-only warning: @elevenlabs/elevenlabs-js uses Node.js child_process and won't work in browsers. Use @elevenlabs/client for browser environments, or create a proxy server.

Workflow

Step 1: Create Agent via Dashboard or CLI

Dashboard: https://elevenlabs.io/app/conversational-ai -> Create Agent

CLI (Agents as Code):

elevenlabs agents init
elevenlabs agents add "Support Bot" --template customer-service
# Edit agent_configs/support-bot.json
elevenlabs agents push --env dev

Templates: default, minimal, voice-only, text-only, customer-service, assistant.

Configure:

  • Voice -- Choose from 5000+ voices or clone
  • LLM -- GPT, Claude, Gemini, or custom
  • System prompt -- Use the 6-component framework below
  • First message -- What the agent says when conversation starts

Step 2: Write the System Prompt

Use the 6-component framework for effective agent prompts:

1. Personality -- who the agent is:

You are [NAME], a [ROLE] at [COMPANY].
You have [EXPERIENCE]. Your traits: [LIST TRAITS].

2. Environment -- communication context:

You're communicating via [phone/chat/video].
Consider [environmental factors]. Adapt to [context].

3. Tone -- speech patterns and formality:

Tone: Professional yet warm. Use contractions for natural speech.
Avoid jargon. Keep responses to 2-3 sentences. Ask one question at a time.

4. Goal -- objectives and success criteria:

Primary Goal: Resolve customer issues on the first call.
Success: Customer verbally confirms issue is resolved.

5. Guardrails -- boundaries and ethics:

Never: provide medical/legal/financial advice, share confidential info.
Always: verify identity before account access, document interactions.
Escalation: customer requests manager, issue beyond knowledge base.

6. Tools -- available functions and when to use them:

1. lookup_order(order_id) -- Use when customer mentions an order.
2. transfer_to_supervisor() -- Use when issue requires manager approval.
Always explain what you're doing before calling a tool.

Step 3: Add Tools

Client-side tools (run in browser):

const clientTools = {
  updateCart: {
    description: "Add or remove items from the shopping cart",
    parameters: z.object({
      action: z.enum(['add', 'remove']),
      item: z.string(),
      quantity: z.number().min(1)
    }),
    handler: async ({ action, item, quantity }) => {
      const cart = getCart();
      action === 'add' ? cart.add(item, quantity) : cart.remove(item, quantity);
      return { success: true, total: cart.total, items: cart.items.length };
    }
  },
  navigate: {
    description: "Navigate user to a different page",
    parameters: z.object({ url: z.string().url() }),
    handler: async ({ url }) => { window.location.href = url; return { success: true }; }
  }
};

Server-side tools (webhooks):

{
  "name": "get_weather",
  "description": "Fetch current weather for a city",
  "url": "https://api.weather.com/v1/current",
  "method": "GET",
  "parameters": {
    "type": "object",
    "properties": {
      "city": { "type": "string", "description": "City name" }
    },
    "required": ["city"]
  },
  "headers": {
    "Authorization": "Bearer {{secret__weather_api_key}}"
  }
}

Use {{secret__key_name}} for API keys in webhook headers -- never hardcode.

MCP Tools -- CRITICAL COMPATIBILITY NOTE:

ElevenLabs labels their MCP integration as "Streamable HTTP" but does NOT support the actual MCP 2025-03-26 Streamable HTTP spec (SSE responses). ElevenLabs expects:

  • Plain JSON responses (application/json), NOT SSE (text/event-stream)
  • Protocol version 2024-11-05, NOT 2025-03-26
  • Simple JSON-RPC over HTTP with direct JSON responses

What does NOT work:

  • Official MCP SDK's createMcpHandler (returns SSE)
  • Cloudflare Agents SDK McpServer.serve() (returns SSE)
  • Any server returning Content-Type: text/event-stream

Working MCP server pattern for ElevenLabs:

import { Hono } from 'hono';
import { cors } from 'hono/cors';

const tools = [{
  name: "my_tool",
  description: "Tool description",
  inputSchema: {
    type: "object",
    properties: { param1: { type: "string", description: "Description" } },
    required: ["param1"]
  }
}];

async function handleMCPRequest(request, env) {
  const { id, method, params } = request;
  switch (method) {
    case 'initialize':
      return {
        jsonrpc: '2.0', id,
        result: {
          protocolVersion: '2024-11-05',  // MUST be 2024-11-05
          serverInfo: { name: 'my-mcp', version: '1.0.0' },
          capabilities: { tools: {} }
        }
      };
    case 'tools/list':
      return { jsonrpc: '2.0', id, result: { tools } };
    case 'tools/call':
      const result = await handleTool(params.name, params.arguments, env);
      return { jsonrpc: '2.0', id, result };
    default:
      return { jsonrpc: '2.0', id, error: { code: -32601, message: `Unknown: ${method}` } };
  }
}

const app = new Hono();
app.use('/*', cors({ origin: '*', allowMethods: ['GET', 'POST', 'OPTIONS'] }));
app.post('/mcp', async (c) => {
  const body = await c.req.json();
  return c.json(await handleMCPRequest(body, c.env));  // Plain JSON, NOT SSE
});
export default app;

Step 4: Add Knowledge Base (RAG)

Upload documents for the agent to reference:

  • PDFs, text files, web URLs
  • Configure via dashboard: Agent -> Knowledge Base -> Upload
  • Or via API: POST /v1/convai/knowledge-base/upload (multipart/form-data)
  • Agent automatically searches knowledge base during conversation

Step 5: Integrate SDK

React -- copy and customise assets/react-sdk-boilerplate.tsx:

import { useConversation } from '@elevenlabs/react';

const { startConversation, stopConversation, status } = useConversation({
  agentId: 'your-agent-id',
  signedUrl: '/api/elevenlabs/auth',
  clientTools,
  dynamicVariables: {
    user_name: 'John',
    account_type: 'premium',
  },
  onEvent: (event) => { /* transcript, agent_response, tool_call */ },
});

System prompt references dynamic variables as {{user_name}}.

React Native -- see assets/react-native-boilerplate.tsx Widget embed -- see assets/widget-embed-template.html Swift -- see assets/swift-sdk-boilerplate.swift

Step 6: Test

CLI testing:

# Run all tests for an agent
elevenlabs agents test "Support Agent"

# Add a test scenario
elevenlabs tests add "Refund Request" --template basic-llm

Test configuration:

{
  "name": "Refund Request Test",
  "scenario": "Customer requests refund for defective product",
  "user_input": "I want a refund for order #12345. The product arrived broken.",
  "success_criteria": [
    "Agent acknowledges the issue empathetically",
    "Agent asks for or uses provided order number",
    "Agent verifies order details",
    "Agent provides clear next steps or refund timeline"
  ],
  "evaluation_type": "llm"
}

Tool call testing:

{
  "name": "Order Lookup Test",
  "scenario": "Customer asks about order status",
  "user_input": "What's the status of order ORD-12345?",
  "expected_tool_call": {
    "tool_name": "lookup_order",
    "parameters": { "order_id": "ORD-12345" }
  }
}

API simulation:

const simulation = await client.agents.simulate({
  agent_id: 'agent_123',
  scenario: 'Customer requests refund',
  user_messages: [
    "I want a refund for order #12345",
    "It arrived broken",
    "Yes, process the refund"
  ],
  success_criteria: [
    "Agent shows empathy",
    "Agent verifies order",
    "Agent provides timeline"
  ]
});
console.log('Passed:', simulation.passed);

CI/CD integration:

name: Test Agent
on: [push, pull_request]
jobs:
  test:
    runs-on: ubuntu-latest
    steps:
      - uses: actions/checkout@v3
      - run: npm install -g @elevenlabs/cli
      - run: elevenlabs tests push
        env:
          ELEVENLABS_API_KEY: ${{ secrets.ELEVENLABS_API_KEY }}
      - run: elevenlabs agents test "Support Agent"
        env:
          ELEVENLABS_API_KEY: ${{ secrets.ELEVENLABS_API_KEY }}

Step 7: Deploy

# Dry run first (always)
elevenlabs agents push --env prod --dry-run

# Deploy to production
elevenlabs agents push --env prod

Multi-environment workflow:

elevenlabs agents push --env dev       # Development
elevenlabs agents push --env staging   # Staging
elevenlabs agents test "Agent Name"    # Test in staging
elevenlabs agents push --env prod      # Production

Critical Patterns

Signed URLs (Security)

Never expose API keys in client code. Use a server endpoint:

app.get('/api/elevenlabs/auth', async (req, res) => {
  const response = await fetch(
    'https://api.elevenlabs.io/v1/convai/conversation/get-signed-url',
    {
      headers: { 'xi-api-key': process.env.ELEVENLABS_API_KEY },
      body: JSON.stringify({ agent_id: 'your-agent-id' }),
      method: 'POST'
    }
  );
  const { signed_url } = await response.json();
  res.json({ signed_url });
});

Agent Versioning (A/B Testing)

Dashboard: Agent -> Versions -> Create Branch. Compare metrics, promote winner.

Post-Call Webhook

{
  "type": "post_call_transcription",
  "data": {
    "conversation_id": "conv_xyz789",
    "transcript": "...",
    "duration_seconds": 120,
    "analysis": { "sentiment": "positive", "resolution": true }
  }
}

Verify with HMAC SHA-256:

const hmac = crypto.createHmac('sha256', process.env.WEBHOOK_SECRET)
  .update(JSON.stringify(request.body)).digest('hex');
if (signature !== hmac) { /* reject */ }

Cost Optimisation

Model lineups and pricing rot fast — check the live list in the ElevenLabs dashboard (Agent → LLM dropdown) or docs before picking, and don't hardcode a model id you haven't verified this session. The durable picks: a current cheap-fast model for most agents (upgrade only where quality demands it), a long-context model when the knowledge base is large.

Key savings:

  • LLM caching: up to 90% on repeated prompts (enable in config)
  • Prompt length: 150 tokens > 500 tokens for same instructions
  • RAG over context: use knowledge base instead of stuffing system prompt
  • Duration limits: set max_duration_seconds to prevent runaway conversations
  • Turn mode: "patient" mode = fewer LLM calls = lower cost

CLI Quick Reference

elevenlabs auth login                              # Authenticate
elevenlabs agents init                             # Init project
elevenlabs agents add "Name" --template default    # Add agent
elevenlabs agents push --env dev                   # Deploy to dev
elevenlabs agents push --env prod --dry-run        # Preview prod deploy
elevenlabs agents push --env prod                  # Deploy to prod
elevenlabs agents pull                             # Pull from platform
elevenlabs agents test "Name"                      # Run tests
elevenlabs agents list                             # List agents
elevenlabs agents status                           # Check sync status
elevenlabs agents widget "Name"                    # Generate widget
elevenlabs tools add-webhook "Name" --config-path tool.json  # Add tool
elevenlabs tests add "Name" --template basic-llm   # Add test

Environment: ELEVENLABS_API_KEY for CI/CD.


Optional References

For specialised use cases, see:

  • references/api-reference.md -- full REST API for programmatic agent management
  • references/compliance-guide.md -- GDPR, HIPAA, PCI DSS, data residency
  • references/workflow-examples.md -- multi-agent routing, escalation, multi-language

Asset Files

  • assets/react-sdk-boilerplate.tsx -- React integration template
  • assets/react-native-boilerplate.tsx -- React Native template
  • assets/swift-sdk-boilerplate.swift -- Swift/iOS template
  • assets/javascript-sdk-boilerplate.js -- Vanilla JS template
  • assets/widget-embed-template.html -- Embeddable widget
  • assets/system-prompt-template.md -- System prompt guide
  • assets/agent-config-schema.json -- Config schema reference
  • assets/ci-cd-example.yml -- CI/CD pipeline template

Add the canonical catalog link to the repository README so users can inspect current installs and available audits. The publishing guide covers the complete discovery path.

<a href="https://skillzs.dev/skills/jezweb/claude-skills/elevenlabs-agents">View elevenlabs-agents on skillZs</a>