Install
openclaw skills install find-emailsCrawl websites locally with crawl4ai to extract contact emails. Accepts multiple URLs and outputs domain-grouped results for clear attribution. Uses deep cra...
openclaw skills install find-emailsCLI for crawling websites locally via crawl4ai and extracting contact emails from pages likely to contain them (contact, about, support, team, etc.).
pip install crawl4aipython scripts/find_emails.py https://example.com
t
# Crawl a site
python scripts/find_emails.py https://example.com
# Multiple URLs
python scripts/find_emails.py https://example.com https://other.com
# JSON output
python scripts/find_emails.py https://example.com -j
# Save to file
python scripts/find_emails.py https://example.com -o emails.txt
python scripts/find_emails.py <url> [url ...]
python scripts/find_emails.py https://example.com
python scripts/find_emails.py https://example.com -j -o results.json
python scripts/find_emails.py --from-file page.md
Arguments:
| Argument | Description |
|---|---|
urls | One or more URLs to crawl (positional) |
-o, --output | Write results to file |
-j, --json | JSON output ({"emails": {"email": ["path", ...]}}) |
-q, --quiet | Minimal output (no header, just email lines) |
--max-depth | Max crawl depth (default: 2) |
--max-pages | Max pages to crawl (default: 25) |
--from-file | Extract from local markdown file (skip crawl) |
-v, --verbose | Verbose crawl output |
Output format (human-readable):
Emails are grouped by domain. Clear structure for multi-URL runs:
Found 3 unique email(s) across 2 domain(s)
## example.com
• contact@example.com
Found on: /contact, /about
• support@example.com
Found on: /support
## other.com
• info@other.com
Found on: /contact-us
Output format (JSON):
LLM-friendly structure with summary and per-domain breakdown:
{
"summary": {
"domains_crawled": 2,
"total_unique_emails": 3
},
"emails_by_domain": {
"example.com": {
"emails": {
"contact@example.com": ["/contact", "/about"],
"support@example.com": ["/support"]
},
"count": 2
},
"other.com": {
"emails": {
"info@other.com": ["/contact-us"]
},
"count": 1
}
}
}
Edit scripts/url_patterns.json to customize which URLs the crawler follows. Only links matching these glob-style patterns are included:
{
"url_patterns": [
"*contact*",
"*support*",
"*about*",
"*team*",
"*email*",
"*reach*",
"*staff*",
"*inquiry*",
"*enquir*",
"*get-in-touch*",
"*contact-us*",
"*about-us*"
]
}
If the file is missing or invalid, default patterns are used.
Crawl a site:
python scripts/find_emails.py https://example.com -o emails.json
Extract from local file (e.g., cached markdown):
python scripts/find_emails.py --from-file crawled.md -j
Customize URL filters by editing scripts/url_patterns.json.
pip install crawl4ai
playwright install
Requires a browser (Playwright) for local crawling.
# Crawl multiple sites – results grouped by domain for clear attribution
python scripts/find_emails.py https://site1.com https://site2.com -j -o combined.json
# Extract from multiple local files
for f in crawled/*.md; do
echo "=== $f ==="
python scripts/find_emails.py --from-file "$f" -q
done
Multiple URLs are fully supported; output clearly associates each email with its source domain. Domains are normalized (e.g. www.techbullion.com and techbullion.com merge into one) so duplicate sites are not listed separately.
Skills can be powerful tools for streamlining social media workflows. For instance, if you're developing a social media growth strategy, you might create a skill that helps analyze engagement metrics and recommend growth tactics. Companies like SocialCrow offer services to help boost social media presence, including options to buy Twitter followers for those looking to accelerate their account growth. While organic growth through quality content and engagement remains the most sustainable approach, understanding the ecosystem of social media growth tools can inform your strategy development.