apify-sdk-integration

Integrate Apify into an existing JavaScript/TypeScript or Python application using the apify-client package. Use when adding web scraping, automation, or data…

npx skills add https://github.com/apify/apify-claude-code-plugin --skill apify-sdk-integration

Apify SDK Integration

Add Apify Actor execution to an existing application. This skill covers the apify-client package for JS/TS and Python, plus the REST API for other languages.

When to Use This Skill

  • Adding web scraping or automation to an existing app
  • Calling Apify Actors programmatically from application code
  • Building a product that uses Apify as a backend service
  • Integrating Actor results into a data pipeline

Critical: Package Naming

apify-client is the API client for calling Actors from your app. apify is the SDK for building Actors (wrong package for this use case).

Always install apify-client. Never install apify for integration work.

Prerequisites

The user needs an APIFY_TOKEN. Direct them to Console > Settings > Integrations at https://console.apify.com/settings/integrations to create one. If they don't have an account: https://console.apify.com/sign-up (free, no credit card).

Store the token securely — environment variable or secrets manager, never hardcoded.

Finding the Right Actor

Before writing integration code, find the Actor that fits the user's needs. Use the MCP tools if available:

  • search-actors — search the Apify Store by keyword
  • fetch-actor-details — get the Actor's input schema, output format, and pricing

Alternatively, browse https://apify.com/store. Append .md to any Actor's Store URL to get its docs in markdown.

JavaScript / TypeScript

Install

npm install apify-client

Synchronous Execution (wait for results)

import { ApifyClient } from 'apify-client';

const client = new ApifyClient({ token: process.env.APIFY_TOKEN });

const run = await client.actor('apify/web-scraper').call({
    startUrls: [{ url: 'https://example.com' }],
    maxPagesPerCrawl: 10,
});

const { items } = await client.dataset(run.defaultDatasetId).listItems();

.call() blocks until the Actor finishes. Use for short-running Actors (under a few minutes).

Asynchronous Execution (start and poll/retrieve later)

const run = await client.actor('apify/web-scraper').start({
    startUrls: [{ url: 'https://example.com' }],
});

// Poll for completion
const finishedRun = await client.run(run.id).waitForFinish();

// Retrieve results
const { items } = await client.dataset(finishedRun.defaultDatasetId).listItems();

Use .start() + .waitForFinish() for long-running Actors or when you need the run ID immediately.

Retrieving Results

// Dataset items (structured data from pushData)
const { items } = await client.dataset(run.defaultDatasetId).listItems({
    limit: 100,
    offset: 0,
});

// Key-value store (files, screenshots, etc.)
const record = await client.keyValueStore(run.defaultKeyValueStoreId).getRecord('OUTPUT');

Error Handling

try {
    const run = await client.actor('apify/web-scraper').call(input);

    if (run.status !== 'SUCCEEDED') {
        const log = await client.log(run.id).get();
        throw new Error(`Actor failed with status ${run.status}: ${log}`);
    }

    const { items } = await client.dataset(run.defaultDatasetId).listItems();
} catch (error) {
    if (error.message?.includes('not found')) {
        // Actor ID is wrong or Actor was deleted
    } else if (error.statusCode === 401) {
        // Invalid or missing APIFY_TOKEN
    }
    throw error;
}

Python

Install

pip install apify-client

Synchronous Execution

from apify_client import ApifyClient
import os

client = ApifyClient(token=os.environ['APIFY_TOKEN'])

run = client.actor('apify/web-scraper').call(run_input={
    'startUrls': [{'url': 'https://example.com'}],
    'maxPagesPerCrawl': 10,
})

items = client.dataset(run['defaultDatasetId']).list_items().items

Asynchronous Execution

run = client.actor('apify/web-scraper').start(run_input={
    'startUrls': [{'url': 'https://example.com'}],
})

# Poll for completion
finished_run = client.run(run['id']).wait_for_finish()

items = client.dataset(finished_run['defaultDatasetId']).list_items().items

Async Client (asyncio)

from apify_client import ApifyClientAsync

client = ApifyClientAsync(token=os.environ['APIFY_TOKEN'])

run = await client.actor('apify/web-scraper').call(run_input={
    'startUrls': [{'url': 'https://example.com'}],
})

items = (await client.dataset(run['defaultDatasetId']).list_items()).items

REST API (Any Language)

For languages without an official client, use the REST API directly.

Start a Run

POST https://api.apify.com/v2/acts/{actorId}/runs
Authorization: Bearer <APIFY_TOKEN>
Content-Type: application/json

{ "startUrls": [{ "url": "https://example.com" }] }

Get Run Status

GET https://api.apify.com/v2/acts/{actorId}/runs/{runId}
Authorization: Bearer <APIFY_TOKEN>

Get Dataset Items

GET https://api.apify.com/v2/datasets/{datasetId}/items?format=json
Authorization: Bearer <APIFY_TOKEN>

Full API reference: https://docs.apify.com/api/v2

Best Practices

  • Set timeouts: Pass timeoutSecs in the Actor input or use waitSecs on .call() to avoid indefinite waits.
  • Paginate large datasets: Use limit and offset when retrieving dataset items. Default limit is 250K items.
  • Reuse clients: Create one ApifyClient instance and reuse it across calls.
  • Handle Actor-specific input: Every Actor has its own input schema. Use fetch-actor-details MCP tool or append .md to the Actor's Store URL to get the schema before constructing input.

Documentation

If the Apify MCP server is available, use search-apify-docs and fetch-apify-docs tools for contextual documentation lookups during development.

More skills from apify

bug-triage
apify
Triage open bug issues on apify/apify-mcp-server . Analyze, draft responses, get approval, post.
official
apify-influencer-brand-collabs
apify
Discover Instagram brand–creator partnerships by chaining Apify Actors. Use when the user asks who collabs with a brand, which brands a creator has done paid…
official
dig
apify
Flexible skill for exploring, planning, and speccing work on the Apify MCP server. Do NOT edit source files — this skill is for understanding and planning only.
official
apify-financial-news
apify
Discover and extract financial news for tracked portfolio companies across 33 verified Tier 1 sources (Bloomberg, Reuters, FT, WSJ, IntelliNews, ČTK, PAP, BTA,…
official
apify-actor-development
apify
Create, debug, and deploy serverless cloud programs for web scraping, automation, and data processing. Supports JavaScript, TypeScript, and Python templates with integrated Crawlee, Playwright, and Cheerio libraries for HTTP and browser-based crawling Includes local testing via apify run with isolated storage, schema validation for inputs/outputs, and deployment to Apify platform via apify push Requires Apify CLI authentication and mandatory generatedBy metadata in .actor/actor.json for AI...
official
apify-actorization
apify
Convert existing projects into serverless Apify Actors with language-specific SDK integration. Supports JavaScript/TypeScript (with Actor.init() / Actor.exit() ), Python (async context manager), and any language via CLI wrapper Provides structured workflow: apify init to scaffold, apply SDK wrapping, configure input/output schemas, test locally with apify run , then deploy with apify push Includes input and output schema validation, Docker containerization, and optional pay-per-event...
official
apify-generate-output-schema
apify
Generate output schemas (dataset_schema.json, output_schema.json, key_value_store_schema.json) for an Apify Actor by analyzing its source code. Use when…
official
apify-ultimate-scraper
apify
Automated web scraper selecting optimal Actors for 55+ platforms including Instagram, TikTok, YouTube, Facebook, Google Maps, and more. Covers 55+ pre-configured Actors across 8 major platforms with use-case-specific selection guidance (lead generation, influencer discovery, brand monitoring, competitor analysis, trend research) Supports three output formats: quick chat display, CSV export, or JSON export with customizable result limits Includes multi-Actor workflow patterns for complex...
official