jeremylongshore / lindy-sdk-patterns

Lindy AI SDK best practices and common patterns. Use when learning SDK patterns, optimizing API usage, or implementing advanced agent features. Trigger with phrases like "lindy SDK patterns", "lindy best practices", "lindy API patterns", "lindy code patterns".

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Skill Content

---
name: lindy-sdk-patterns
description: |
  Lindy AI integration patterns for webhook handling, HTTP actions, and Run Code.
  Use when building integrations, calling Lindy agents from code,
  or implementing the Run Code action with Python/JavaScript.
  Trigger with phrases like "lindy SDK patterns", "lindy best practices",
  "lindy API patterns", "lindy Run Code", "lindy HTTP Request".
allowed-tools: Read, Write, Edit, Bash(curl:*)
version: 1.0.0
license: MIT
author: Jeremy Longshore <jeremy@intentsolutions.io>
compatible-with: claude-code, codex, openclaw
tags: [saas, lindy, api]

---
# Lindy SDK & Integration Patterns

## Overview
Lindy is primarily a no-code platform. External integration happens through three
channels: **Webhook triggers** (inbound), **HTTP Request actions** (outbound), and
**Run Code actions** (inline Python/JS execution via E2B sandbox). This skill covers
patterns for each.

## Prerequisites
- Lindy account with active agents
- Node.js 18+ or Python 3.10+ for webhook receivers
- Completed `lindy-install-auth` setup

## Pattern 1: Webhook Trigger Integration
Your application fires webhooks to wake Lindy agents:

```typescript
// lindy-client.ts — Reusable Lindy webhook trigger client
class LindyClient {
  private webhookUrl: string;
  private secret: string;

  constructor(webhookUrl: string, secret: string) {
    this.webhookUrl = webhookUrl;
    this.secret = secret;
  }

  async trigger(payload: Record<string, unknown>): Promise<{ status: number }> {
    const response = await fetch(this.webhookUrl, {
      method: 'POST',
      headers: {
        'Authorization': `Bearer ${this.secret}`,
        'Content-Type': 'application/json',
      },
      body: JSON.stringify(payload),
    });

    if (!response.ok) {
      throw new Error(`Lindy webhook failed: ${response.status} ${response.statusText}`);
    }

    return { status: response.status };
  }

  async triggerWithCallback(
    payload: Record<string, unknown>,
    callbackUrl: string
  ): Promise<{ status: number }> {
    return this.trigger({ ...payload, callbackUrl });
  }
}

// Usage
const lindy = new LindyClient(
  'https://public.lindy.ai/api/v1/webhooks/YOUR_ID',
  process.env.LINDY_WEBHOOK_SECRET!
);

await lindy.trigger({ event: 'lead.created', name: 'Jane Doe', email: 'jane@co.com' });
```

## Pattern 2: HTTP Request Action (Agent Calling Your API)
Configure a Lindy agent to call your API as an action step:

**In Lindy Dashboard** — Add HTTP Request action:
- **Method**: POST
- **URL**: `https://api.yourapp.com/process`
- **Headers**: `Authorization: Bearer {{your_api_key}}`, `Content-Type: application/json`
- **Body** (AI Prompt mode):
  ```
  Send the processed data as JSON with fields matching the API schema.
  Include: name from {{trigger.data.name}}, analysis from previous step.
  ```

**Your API endpoint** receives the call:
```typescript
// Your API receiving Lindy agent calls
app.post('/process', async (req, res) => {
  const { name, analysis } = req.body;
  const result = await processData(name, analysis);
  res.json({ result, processedAt: new Date().toISOString() });
});
```

## Pattern 3: Run Code Action (E2B Sandbox)
Execute Python or JavaScript directly in Lindy workflows. Code runs in isolated
Firecracker microVMs with ~150ms startup time.

**Python example** (data transformation in a workflow):
```python
# Run Code action — Python
# Input variables: raw_data (string from previous step)
import json

data = json.loads(raw_data)  # Input vars are always strings

# Process
cleaned = [
    {"name": item["name"].strip(), "score": float(item["score"])}
    for item in data["items"]
    if float(item["score"]) > 0.5
]

# Sort by score descending
cleaned.sort(key=lambda x: x["score"], reverse=True)

# Return value accessible as {{run_code.result}} in next step
return json.dumps({"filtered_count": len(cleaned), "items": cleaned})
```

**JavaScript example** (API call + processing):
```javascript
// Run Code action — JavaScript
// Input variables: query (string), api_key (string)
const response = await fetch(`https://api.example.com/search?q=${query}`, {
  headers: { 'Authorization': `Bearer ${api_key}` }
});
const data = await response.json();

const summary = data.results.map(r => `${r.title}: ${r.snippet}`).join('\n');
return JSON.stringify({ count: data.results.length, summary });
```

**Run Code outputs** (available to subsequent steps):
| Output | Contents |
|--------|----------|
| `{{run_code.result}}` | Value from `return` statement |
| `{{run_code.text}}` | stdout from `print()` / `console.log()` |
| `{{run_code.stderr}}` | Error output for debugging |

**Available Python libraries**: pandas, numpy, scipy, scikit-learn, matplotlib,
requests, aiohttp, beautifulsoup4, nltk, spacy, openpyxl, python-docx

**Key constraint**: All input variables arrive as strings. Cast explicitly:
`count = int(count_str)`, `data = json.loads(json_str)`

## Pattern 4: Callback Pattern (Async Two-Way)
Send a `callbackUrl` in your webhook payload. Lindy can respond back using
the **Send POST Request to Callback** action:

```typescript
// Your app triggers Lindy with a callback URL
await lindy.trigger({
  event: 'analyze.request',
  data: { text: 'Analyze this quarterly report...' },
  callbackUrl: 'https://api.yourapp.com/lindy-callback'
});

// Your callback handler receives Lindy's response
app.post('/lindy-callback', (req, res) => {
  const { analysis, sentiment, summary } = req.body;
  saveAnalysis(analysis);
  res.sendStatus(200);
});
```

## Pattern 5: Retry with Exponential Backoff
```typescript
async function triggerWithRetry(
  client: LindyClient,
  payload: Record<string, unknown>,
  maxRetries = 3
): Promise<void> {
  for (let attempt = 0; attempt <= maxRetries; attempt++) {
    try {
      await client.trigger(payload);
      return;
    } catch (error: any) {
      if (attempt === maxRetries) throw error;
      const delay = Math.pow(2, attempt) * 1000; // 1s, 2s, 4s
      console.warn(`Retry ${attempt + 1}/${maxRetries} in ${delay}ms`);
      await new Promise(r => setTimeout(r, delay));
    }
  }
}
```

## Error Handling

| Pattern | Failure Mode | Solution |
|---------|-------------|----------|
| Webhook trigger | 401 Unauthorized | Verify Bearer token matches dashboard secret |
| HTTP Request action | Target API unreachable | Check URL, verify HTTPS, test with curl |
| Run Code | Timeout | Avoid infinite loops; keep execution under 30s |
| Run Code | Import error | Use only pre-installed libraries (see list above) |
| Callback | Callback URL unreachable | Ensure HTTPS endpoint is publicly accessible |

## Resources
- [Calling Any API](https://www.lindy.ai/academy-lessons/calling-any-api)
- [Run Code Documentation](https://docs.lindy.ai/skills/by-lindy/run-code)
- [Webhooks Documentation](https://docs.lindy.ai/skills/by-lindy/webhooks)

## Next Steps
Proceed to `lindy-core-workflow-a` for full agent creation workflows.