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apify

Run any Apify Actor to scrape web data (Instagram, TikTok, Reddit, Twitter, etc). Handles Actor discovery, quality filtering, probe testing, batched execution, and result collection. Use when user asks to scrape/crawl/extract data from websites or social media platforms, or mentions Apify directly.

skill-install — Terminal

Install via CLI (Recommended)

clawhub install openclaw/skills/skills/duxj4520/apify-runner
Or

Apify Skill

Run any Apify Actor through a standardized workflow: search → validate → execute → collect results.

Prerequisites

  • APIFY_TOKEN env var, or a config.json with tokens (copy config.json.example)
  • Python 3 with requests installed

Workflow

Step 1: Parse User Intent

Extract from the user's request:

  • Platform/target (Instagram, TikTok, Reddit, etc.)
  • What to scrape (posts, profiles, hashtags, comments, etc.)
  • Targets (URLs, usernames, keywords)
  • Quantity/filters (how many, time range, min likes, etc.)

Step 2: Select Token

If user specifies a token name or the task maps to a specific account, use that. Otherwise use default.

Token can be provided via:

  1. --token flag (highest priority)
  2. config.json tokens map (by --token-name)
  3. APIFY_TOKEN env var (fallback)

Step 3: Search & Select Actor

Run the search script:

python3 scripts/search_actor.py "instagram scraper" --top 3

Output: ranked candidates with score, success rate, rating, pricing model.

Quality filters (built into script):

  • notice = NONE (not deprecated)
  • 30-day success rate ≥ 95%
  • 30-day runs ≥ 1,000
  • User rating ≥ 4.0

Pick the top-ranked candidate. If user has a preference or prior experience with a specific Actor, skip search.

Step 4: Get Actor Schema & Build run_input

Fetch the Actor's documentation:

web_fetch https://apify.com/{actor_id}.md

Read the input schema section. Construct run_input JSON based on:

  • The Actor's required/optional fields
  • The user's targets and filters
  • Sensible defaults from the documentation

Do NOT ask the user to write JSON. Build it from their natural language request.

Step 5: Probe Test (Top 1 → Top 2 → Top 3 fallback)

Test with minimal input before committing to full run:

python3 scripts/apify_runner.py {actor_id} \
  --input '{...}' \
  --token {token} \
  --probe-only \
  --list-key {key}

The probe automatically uses the first 2 items from the list field.

Checks:

  • Run starts successfully (no permission/billing errors)
  • Run completes (no timeout/crash)
  • Returns non-empty data

If probe fails → try next candidate Actor. If all 3 fail → report to user with Actor URLs for manual activation.

Step 6: Full Execution

python3 scripts/apify_runner.py {actor_id} \
  --input '{...}' \
  --token {token} \
  --output /path/to/results.json \
  --list-key {key} \
  --batch-size 50 \
  --probe

Key flags:

FlagPurposeDefault
--list-keyField in run_input containing the list to batchNone (no batching)
--batch-sizeItems per batch50
--timeoutPer-batch timeout (seconds)600
--probeRun probe before full executionOff
--outputSave results to JSON fileStdout
--configPath to config.json for token lookupNone
--token-nameWhich token to use from config"default"

Metadata

Author@duxj4520
Stars2387
Views0
Updated2026-03-09
View Author Profile
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Add to Configuration

Paste this into your clawhub.json to enable this plugin.

{
  "plugins": {
    "official-duxj4520-apify-runner": {
      "enabled": true,
      "auto_update": true
    }
  }
}
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