← Back to leaderboard
53
/100
D ◐ Assessed 44

Claude Context MCP

Enables AI assistants to index and search codebases using semantic search powered by multiple embedding providers (OpenAI, VoyageAI, Gemini, Ollama) and vector database storage.

AI & Machine Learning by sahinrasit Last commit: 6 months, 2 weeks ago
Anthropic Google Gemini Ollama OpenAI
Assessed visibility — 4/4 applicable dimensions scored
✓ Schema Quality ✓ Protocol — Reliability ✓ Docs & Maintenance ✓ Security Hygiene — Schema Interpretability
Schema Quality
60
25% weight
Protocol Compliance
31
20% weight
Reliability
20% weight
Docs & Maintenance
35
15% weight
Security Hygiene
78
20% weight
30-Day Trend

Score History

Category Trends

30-Day Uptime

30 days ago Today

Static Analysis

Metric Score Rating
Schema Completeness 40 Fair
Description Quality 90 Good
Documentation Coverage 40 Fair
Maintenance Pulse 35 Poor
Dependency Health 55 Fair
License Clarity Poor
Version Hygiene Poor
Analyzed 4 weeks, 2 days ago
Embed Badge

Add this to your README to display your MCP Scoreboard grade:

MCP Score Badge
[![MCP Score](https://mcpscoreboard.com/badge/2f09fe0d-3130-445c-bb19-5c4cbe217173.svg)](https://mcpscoreboard.com/server/2f09fe0d-3130-445c-bb19-5c4cbe217173/)