lindy-debug-bundleClaude Skill

Comprehensive debugging toolkit for Lindy AI agents.

1.4k Stars
173 Forks
2025/10/10

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namelindy-debug-bundle
descriptionComprehensive debugging toolkit for Lindy AI agents. Use when investigating complex issues, collecting diagnostics, or preparing support tickets. Trigger with phrases like "lindy debug", "lindy diagnostics", "lindy support bundle", "investigate lindy issue".
allowed-toolsRead, Write, Edit, Bash(curl:*), Grep
version1.0.0
licenseMIT
authorJeremy Longshore <jeremy@intentsolutions.io>

Lindy Debug Bundle

Overview

Comprehensive debugging toolkit for collecting diagnostics and resolving issues.

Prerequisites

  • Lindy SDK installed
  • Access to logs
  • curl installed for API testing

Instructions

Step 1: Collect Environment Info

#!/bin/bash
echo "=== Lindy Debug Bundle ==="
echo "Date: $(date -u +%Y-%m-%dT%H:%M:%SZ)"
echo "Node: $(node -v)"
echo "npm: $(npm -v)"
echo ""

echo "=== SDK Version ==="
npm list @lindy-ai/sdk 2>/dev/null || echo "SDK not found"
echo ""

echo "=== Environment ==="
echo "LINDY_API_KEY: ${LINDY_API_KEY:+[SET]}"
echo "LINDY_ENVIRONMENT: ${LINDY_ENVIRONMENT:-[NOT SET]}"
echo ""

Step 2: Test API Connectivity

echo "=== API Connectivity ==="
curl -s -o /dev/null -w "Status: %{http_code}\nTime: %{time_total}s\n" \
  -H "Authorization: Bearer $LINDY_API_KEY" \
  https://api.lindy.ai/v1/users/me
echo ""

Step 3: Collect Agent State

// debug/collect-agent-state.ts
import { Lindy } from '@lindy-ai/sdk';

async function collectAgentState(agentId: string) {
  const lindy = new Lindy({ apiKey: process.env.LINDY_API_KEY });

  const bundle = {
    timestamp: new Date().toISOString(),
    agent: await lindy.agents.get(agentId),
    runs: await lindy.runs.list({ agentId, limit: 10 }),
    automations: await lindy.automations.list({ agentId }),
  };

  return bundle;
}

// Export for support
const state = await collectAgentState(process.argv[2]);
console.log(JSON.stringify(state, null, 2));

Step 4: Check Run History

async function analyzeRuns(agentId: string) {
  const lindy = new Lindy({ apiKey: process.env.LINDY_API_KEY });

  const runs = await lindy.runs.list({ agentId, limit: 50 });

  const analysis = {
    total: runs.length,
    successful: runs.filter(r => r.status === 'completed').length,
    failed: runs.filter(r => r.status === 'failed').length,
    avgDuration: runs.reduce((a, r) => a + r.duration, 0) / runs.length,
    recentErrors: runs
      .filter(r => r.status === 'failed')
      .slice(0, 5)
      .map(r => ({ id: r.id, error: r.error })),
  };

  return analysis;
}

Step 5: Generate Support Bundle

async function generateSupportBundle(agentId: string) {
  const bundle = {
    generated: new Date().toISOString(),
    environment: {
      node: process.version,
      platform: process.platform,
      sdk: require('@lindy-ai/sdk/package.json').version,
    },
    agent: await collectAgentState(agentId),
    analysis: await analyzeRuns(agentId),
  };

  const filename = `lindy-debug-${Date.now()}.json`;
  fs.writeFileSync(filename, JSON.stringify(bundle, null, 2));
  console.log(`Bundle saved to: ${filename}`);

  return filename;
}

Output

  • Environment diagnostic information
  • API connectivity test results
  • Agent state and configuration
  • Run history analysis
  • Exportable support bundle

Error Handling

IssueDiagnosticResolution
Auth failsCheck API keyRegenerate key
TimeoutCheck networkVerify firewall
Agent missingCheck environmentVerify agent ID

Examples

Quick Health Check

# One-liner health check
curl -s -H "Authorization: Bearer $LINDY_API_KEY" \
  https://api.lindy.ai/v1/users/me | jq '.email'

Full Debug Script

#!/bin/bash
# save as lindy-debug.sh

echo "Collecting Lindy debug info..."
npx ts-node debug/collect-agent-state.ts $1 > debug-bundle.json
echo "Bundle saved to debug-bundle.json"

Resources

Next Steps

Proceed to lindy-rate-limits for rate limit management.

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