AgentSkillsCN

lindy-core-workflow-a

创建和配置AI代理的核心Lindy工作流。 在构建新代理、定义代理行为或设置代理功能时使用。 可通过“create lindy agent”、“build lindy agent”、“lindy agent workflow”、“configure lindy agent”等短语触发。

SKILL.md
--- frontmatter
name: lindy-core-workflow-a
description: |
  Core Lindy workflow for creating and configuring AI agents.
  Use when building new agents, defining agent behaviors,
  or setting up agent capabilities.
  Trigger with phrases like "create lindy agent", "build lindy agent",
  "lindy agent workflow", "configure lindy agent".
allowed-tools: Read, Write, Edit
version: 1.0.0
license: MIT
author: Jeremy Longshore <jeremy@intentsolutions.io>

Lindy Core Workflow A: Agent Creation

Overview

Complete workflow for creating, configuring, and deploying Lindy AI agents.

Prerequisites

  • Completed lindy-install-auth setup
  • Understanding of agent use case
  • Clear instructions/persona defined

Instructions

Step 1: Define Agent Specification

typescript
interface AgentSpec {
  name: string;
  description: string;
  instructions: string;
  tools: string[];
  model?: string;
  temperature?: number;
}

const agentSpec: AgentSpec = {
  name: 'Customer Support Agent',
  description: 'Handles customer inquiries and support tickets',
  instructions: `
    You are a helpful customer support agent.
    - Be polite and professional
    - Ask clarifying questions when needed
    - Escalate complex issues to human support
    - Always confirm resolution with the customer
  `,
  tools: ['email', 'calendar', 'knowledge-base'],
  model: 'gpt-4',
  temperature: 0.7,
};

Step 2: Create the Agent

typescript
import { Lindy } from '@lindy-ai/sdk';

const lindy = new Lindy({ apiKey: process.env.LINDY_API_KEY });

async function createAgent(spec: AgentSpec) {
  const agent = await lindy.agents.create({
    name: spec.name,
    description: spec.description,
    instructions: spec.instructions,
    tools: spec.tools,
    config: {
      model: spec.model || 'gpt-4',
      temperature: spec.temperature || 0.7,
    },
  });

  console.log(`Created agent: ${agent.id}`);
  return agent;
}

Step 3: Configure Agent Tools

typescript
async function configureTools(agentId: string, tools: string[]) {
  for (const tool of tools) {
    await lindy.agents.addTool(agentId, {
      name: tool,
      enabled: true,
    });
  }
  console.log(`Configured ${tools.length} tools`);
}

Step 4: Test the Agent

typescript
async function testAgent(agentId: string) {
  const testCases = [
    'Hello, I need help with my order',
    'Can you check my subscription status?',
    'I want to cancel my account',
  ];

  for (const input of testCases) {
    const result = await lindy.agents.run(agentId, { input });
    console.log(`Input: ${input}`);
    console.log(`Output: ${result.output}\n`);
  }
}

Output

  • Fully configured AI agent
  • Connected tools and integrations
  • Tested agent responses
  • Ready for deployment

Error Handling

ErrorCauseSolution
Tool not foundInvalid tool nameCheck available tools list
Instructions too longExceeds limitSummarize or split instructions
Model unavailableUnsupported modelUse default gpt-4

Examples

Complete Agent Creation Flow

typescript
async function main() {
  // Create agent
  const agent = await createAgent(agentSpec);

  // Configure tools
  await configureTools(agent.id, agentSpec.tools);

  // Test agent
  await testAgent(agent.id);

  console.log(`Agent ${agent.id} is ready!`);
}

main().catch(console.error);

Resources

Next Steps

Proceed to lindy-core-workflow-b for task automation workflows.