On-Page.ai SEO MCP
@on-page-ai
On-Page.ai SEO MCP について
On-Page.ai SEO MCP server for search engine optimization work with Codex and Claude Code. Public docs, examples, and directory metadata for the hosted server.
基本情報
設定
ツール
8Default full SEO audit for URL + keyword recommendations
Faster entity and competitor-cohort scan
Deeper competitor analysis and optional page-experience benchmark
Categorize a URL or text into topical buckets
Check async job status
Wait for async job completion
Fetch a completed job result
Check available credits and route costs
概要
What is On-Page.ai SEO MCP?
On-Page.ai SEO MCP is a hosted Model Context Protocol (MCP) server that provides AI agents with structured, evidence-backed search engine optimization data. It enables keyword research, competitor analysis, entity-gap detection, on-page audits, and search-result recommendations. The server is designed for developers and SEO professionals using AI coding assistants like Codex, Claude Code, or ChatGPT.
How to use On-Page.ai SEO MCP?
Install the server from the quick-install page at https://api.on-page.ai/install. Supply authentication via OAuth (with the required scope mcp:seo) or an API key bearer token for manual clients. The server URL is https://api.on-page.ai/mcp and uses Streamable HTTP transport. Invoke tools such as scan_page, scan_page_lite, scan_page_deep, classify_text, check_job, wait_for_job, get_job_result, or check_credits from any MCP-compatible client.
Key features of On-Page.ai SEO MCP
- Scans live URLs and compares them against search-result cohorts.
- Finds missing entities and related terms for target keywords.
- Compares competitor topic coverage and identifies gaps.
- Generates internal-link candidates automatically.
- Benchmarks page experience against top-ranking competitors.
- Provides customer-safe structured reports for agent reasoning.
Use cases of On-Page.ai SEO MCP
- Automate SEO audits and content recommendations inside AI coding assistants.
- Improve organic visibility by identifying entity gaps and competitor coverage.
- Generate targeted content briefs based on real-time search result analysis.
- Benchmark page experience metrics against top SERP competitors.
- Integrate SEO evidence directly into code review and writing workflows.
FAQ from On-Page.ai SEO MCP
How do I authenticate with the server?
Use OAuth with the mcp:seo scope where supported, or provide an API key bearer token for manual clients. The server URL is https://api.on-page.ai/mcp.
What tools are available?
Eight tools are provided: scan_page (full audit), scan_page_lite (faster scan), scan_page_deep (deep analysis), classify_text, check_job, wait_for_job, get_job_result, and check_credits.
What data does the server access?
It accesses structured SEO data by scanning live URLs and comparing them against the current search-result cohort for a specified keyword. It returns entity gaps, competitor coverage, internal-link opportunities, and page-experience benchmarks.
Is there a credit system?
Yes. The check_credits tool shows available credits and per-route costs. Each scan or analysis consumes credits based on the tool used.
Which AI clients are supported?
The server works with Codex, Claude Code, ChatGPT, and any client that supports MCP setup, API-key authentication, or remote server integrations.
「その他」の他のコンテンツ
FastMCP v2 🚀
jlowin🚀 The fast, Pythonic way to build MCP servers and clients.
Awesome Mlops
visengerA curated list of references for MLOps
Unity MCP ✨
justinpbarnettUnity MCP acts as a bridge between AI assistants and your Unity Editor. Give your LLM tools to manage assets, control scenes, edit scripts, and automate tasks within Unity.
ghidraMCP
LaurieWiredMCP Server for Ghidra
🚀 Model Context Protocol (MCP) Curriculum for Beginners
microsoftThis open-source curriculum introduces the fundamentals of Model Context Protocol (MCP) through real-world, cross-language examples in .NET, Java, TypeScript, JavaScript, Rust and Python. Designed for developers, it focuses on practical techniques for building modular, scalable,
コメント