Backlink For Seo

Created By
vipul510-weba month ago
Classic SEO suites charge heavily for link indexes. This MCP gives individuals and agencies a free, automatable path to: surface pages that mention a brand (linked or not), narrow guest-post and resource-page angles, see who links to competitors, verify whether a page links to you, and pull contact signals for outreach—all orchestrated by Claude or Cursor through typed tools instead of brittle copy-paste.
Overview

Why a Backlink MCP?

Classic SEO suites charge heavily for link indexes. This MCP gives individuals and agencies a free, automatable path to: surface pages that mention a brand (linked or not), narrow guest-post and resource-page angles, see who links to competitors, verify whether a page links to you, and pull contact signals for outreach—all orchestrated by Claude or Cursor through typed tools instead of brittle copy-paste.

Tools (from the MCP)

find_mentions — Discover pages mentioning your domain (linked or unlinked). find_prospects — Guest posts, resource pages, and roundups by niche. find_competitor_link_sources — Pages linking to a competitor (outreach targets). verify_page_links — Scrape a URL to confirm links to you and gather on-page hints. extract_contact_info — Emails, socials, and contact pages from a site. check_page_history — Wayback checks to see if a URL has a stable history. Signals come from DuckDuckGo, Wayback CDX, and direct fetches—use judgement on rate limits, robots directives, and recipient privacy (GDPR, CAN-SPAM, etc.).

Quick install

Clone vipul510-web/mcp-backlink-for-seo and create a Python 3.10+ venv. Install: pip install mcp duckduckgo-search httpx beautifulsoup4 lxml (see repo for pinned versions). Register server.py in Claude Desktop or .cursor/mcp.json with your absolute Python path. Example Claude Desktop snippet (adjust paths):

{ "mcpServers": { "backlink-mcp": { "command": "/absolute/path/to/mcp-backlink-for-seo/.venv/bin/python", "args": ["/absolute/path/to/mcp-backlink-for-seo/server.py"] } } } git clone https://github.com/vipul510-web/mcp-backlink-for-seo.git Copy Open README Typical automation workflow Ask your assistant to chain tools: start from find_prospects or find_competitor_link_sources, filter to realistic domains, run verify_page_links on finalists, then extract_contact_info before drafting outreach. For brand monitoring, begin with find_mentions and split linked vs unlinked follow-ups.

Pair with SellOnLLM analytics

Backlinks move rankings over time—validate impact in GA + GSC chat or the Claude MCP for SEO (referring URLs, landing pages, query deltas). For AI answer surfaces, add the AI visibility MCP.

Project Info
Created At
a month ago
Updated At
a month ago
Author Name
vipul510-web
Star
-
Language
-
License
-
Category

Recommend Servers

View All
Mnemom

14 hours ago
//beforeyouship — LLM Cost Modeling From Your Editor
@Indiegoing

Query realistic LLM cost models without leaving your editor. beforeyouship models the **true monthly cost** of an LLM app architecture — retries, prompt caching, batch discounts, infra overhead, and 3×/10× growth — across GPT-5.x, Claude, Gemini, DeepSeek, and more. Not a token calculator: a planning tool for the design phase, before you commit to a stack. **No API key needed to try it** — demo mode covers the six free-tier models. A Pro key from [beforeyouship.dev](https://beforeyouship.dev) unlocks the full 18-model catalog. ## What you can ask - "How much will a RAG chatbot cost at 10,000 requests/day?" - "Compare Claude Haiku vs Gemini Flash pricing for my workload" - "What's the cheapest model for a multi-step agent at scale?" - "Show me current per-token prices for Anthropic models" ## Tools ### `estimate_cost` Full cost model for an architecture at a given usage level. Returns Naive / Realistic / Worst Case monthly cost per model, 3×/10× growth scenarios, and an opinionated recommendation with reasoning. ### `get_model_prices` Current per-1M-token pricing — input, output, cached input, batch — with context windows and staleness metadata. ### `list_archetypes` Seven preset architecture patterns (simple chatbot, chatbot with history, RAG pipeline, multi-model router, coding assistant, document processor, multi-step agent) used as starting points for estimates. ## Setup **Claude Code:** ​```bash claude mcp add --transport http beforeyouship https://beforeyouship.dev/api/mcp ​``` **Cursor / other clients** — add a remote server: ​```json { "mcpServers": { "beforeyouship": { "type": "streamable-http", "url": "https://beforeyouship.dev/api/mcp" } } } ​``` Add an `Authorization: Bearer bys_...` header with a Pro key for the full catalog. ## Try it > Estimate the monthly cost of a RAG pipeline at 10,000 requests/day

13 hours ago
Docwand

13 hours ago