Agent skill

apify-local-dev-loop

Set up local Apify Actor development with Apify CLI and Crawlee. Use when creating Actors locally, testing with apify run, or establishing a fast develop-test-deploy cycle. Trigger: "apify dev setup", "apify local development", "develop actor locally", "apify run local".

Stars 1,803
Forks 241

Install this agent skill to your Project

npx add-skill https://github.com/jeremylongshore/claude-code-plugins-plus-skills/tree/main/plugins/saas-packs/apify-pack/skills/apify-local-dev-loop

SKILL.md

Apify Local Dev Loop

Overview

Build and test Apify Actors on your local machine before deploying to the platform. Uses the Apify CLI (apify run) which emulates the platform environment locally, creating local storage directories for datasets, key-value stores, and request queues.

Prerequisites

  • npm install -g apify-cli (global CLI)
  • apify login completed with valid token
  • Node.js 18+

Actor Project Structure

my-actor/
├── .actor/
│   ├── actor.json          # Actor metadata and config
│   └── INPUT_SCHEMA.json   # Input schema (auto-generates UI on platform)
├── src/
│   └── main.ts             # Entry point
├── storage/                # Created by apify run (git-ignored)
│   ├── datasets/default/
│   ├── key_value_stores/default/
│   └── request_queues/default/
├── package.json
└── tsconfig.json

Instructions

Step 1: Create a New Actor Project

bash
# Create from template (interactive)
apify create my-actor

# Or create from specific template
apify create my-actor --template project_cheerio_crawler_ts
# Templates: project_empty, project_cheerio_crawler_ts,
#   project_playwright_crawler_ts, project_puppeteer_crawler_ts

Step 2: Configure .actor/actor.json

json
{
  "actorSpecification": 1,
  "name": "my-actor",
  "title": "My Actor",
  "description": "Scrapes data from example.com",
  "version": "0.1",
  "meta": {
    "templateId": "project_cheerio_crawler_ts"
  },
  "input": "./INPUT_SCHEMA.json",
  "dockerfile": "./Dockerfile",
  "storages": {
    "dataset": {
      "actorSpecification": 1,
      "title": "Scraped items",
      "views": {
        "overview": {
          "title": "Overview",
          "transformation": { "fields": ["url", "title", "text"] },
          "display": {
            "component": "table",
            "properties": {
              "url": { "label": "URL", "format": "link" },
              "title": { "label": "Title" },
              "text": { "label": "Content" }
            }
          }
        }
      }
    }
  }
}

Step 3: Define Input Schema

json
{
  "title": "My Actor Input",
  "type": "object",
  "schemaVersion": 1,
  "properties": {
    "startUrls": {
      "title": "Start URLs",
      "type": "array",
      "description": "URLs to crawl",
      "editor": "requestListSources",
      "prefill": [{ "url": "https://example.com" }]
    },
    "maxPages": {
      "title": "Max pages",
      "type": "integer",
      "description": "Maximum number of pages to crawl",
      "default": 10,
      "minimum": 1,
      "maximum": 1000
    }
  },
  "required": ["startUrls"]
}

Step 4: Write the Actor

typescript
// src/main.ts
import { Actor } from 'apify';
import { CheerioCrawler } from 'crawlee';

await Actor.init();

const input = await Actor.getInput<{
  startUrls: { url: string }[];
  maxPages?: number;
}>();

if (!input?.startUrls?.length) {
  throw new Error('startUrls is required');
}

const crawler = new CheerioCrawler({
  maxRequestsPerCrawl: input.maxPages ?? 10,
  async requestHandler({ request, $, enqueueLinks }) {
    const title = $('title').text().trim();
    const h1 = $('h1').first().text().trim();

    await Actor.pushData({
      url: request.url,
      title,
      h1,
      timestamp: new Date().toISOString(),
    });

    // Enqueue links on the same domain
    await enqueueLinks({ strategy: 'same-domain' });
  },
});

await crawler.run(input.startUrls.map(s => s.url));
await Actor.exit();

Step 5: Run Locally

bash
# Run with default input from storage/key_value_stores/default/INPUT.json
apify run

# Run with input from command line
apify run --input='{"startUrls":[{"url":"https://example.com"}],"maxPages":5}'

# View results
cat storage/datasets/default/*.json | jq '.'

# Or list dataset files
ls storage/datasets/default/

Step 6: Provide Local Input

Create storage/key_value_stores/default/INPUT.json:

json
{
  "startUrls": [{ "url": "https://example.com" }],
  "maxPages": 5
}

Local Storage Emulation

apify run creates a storage/ directory that mirrors platform storage:

Platform Storage Local Path Access via SDK
Default dataset storage/datasets/default/ Actor.pushData()
Default KV store storage/key_value_stores/default/ Actor.setValue() / Actor.getValue()
Default request queue storage/request_queues/default/ Managed by crawler

Hot Reload Development

json
{
  "scripts": {
    "start": "tsx src/main.ts",
    "dev": "tsx watch src/main.ts",
    "test": "vitest"
  }
}
bash
# Direct tsx execution (faster iteration than apify run)
npx tsx src/main.ts

# With environment variables emulating platform
APIFY_IS_AT_HOME=0 APIFY_LOCAL_STORAGE_DIR=./storage npx tsx src/main.ts

Testing Actors

typescript
// tests/main.test.ts
import { describe, it, expect, vi } from 'vitest';
import { Actor } from 'apify';

describe('Actor', () => {
  it('should process input correctly', async () => {
    vi.spyOn(Actor, 'getInput').mockResolvedValue({
      startUrls: [{ url: 'https://example.com' }],
      maxPages: 1,
    });

    const pushSpy = vi.spyOn(Actor, 'pushData').mockResolvedValue(undefined);

    // Run actor logic...
    // Assert pushData was called with expected shape
    expect(pushSpy).toHaveBeenCalledWith(
      expect.objectContaining({ url: 'https://example.com' })
    );
  });
});

Error Handling

Error Cause Solution
apify: command not found CLI not installed npm i -g apify-cli
INPUT.json not found No input provided Create storage/key_value_stores/default/INPUT.json
Cannot find module 'apify' SDK not installed npm install apify crawlee
Dockerfile not found Missing actor config Run apify create or create .actor/actor.json

Resources

Next Steps

See apify-sdk-patterns for production-ready Actor code patterns.

Expand your agent's capabilities with these related and highly-rated skills.

Didn't find tool you were looking for?

Be as detailed as possible for better results