realtimex-web-scraping-mcp-server
A MCP server package intended to help agents perform real-time web scraping tasks (fetching and extracting data from web pages) via Model Context Protocol tools.
Score Breakdown
⚙ Agent Friendliness
🔒 Security
Web scraping tools can be exposed to SSRF-like risks if arbitrary URLs are accepted without allowlists, and may inadvertently fetch sensitive content. No explicit security controls (URL validation, allowlists/denylists, sanitization, SSRF protection, logging redaction) were provided in the supplied content, so scores are conservative.
⚡ Reliability
Use Cases
- • Letting LLM agents scrape and extract information from public web pages
- • Research workflows that require up-to-date web content
- • Building agent-driven data collection pipelines using MCP
Not For
- • Authenticated scraping behind logins/paywalls without explicit support
- • High-volume scraping that violates target site terms or robots.txt
- • Replacing a dedicated crawling/search index for large-scale discovery
Interface
Authentication
No authentication details were provided in the supplied content, so auth requirements cannot be confirmed.
Pricing
Pricing/hosting model not provided.
Agent Metadata
Known Gotchas
- ⚠ Scraping results may be unstable due to dynamic pages and A/B tests
- ⚠ Targets may block requests (rate limiting, bot detection) causing intermittent failures
- ⚠ Robots.txt, legal/ToS restrictions may prevent scraping even if the tool works technically
Alternatives
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Scores are editorial opinions as of 2026-04-04.