Context Keeper
CautionLLM-driven context and memory management with wide-recall + precise-reranking RAG architecture. Features multi-dimensional retrieval (vector/timeline/knowledge graph), short/long-term memory, and complete MCP support (HTTP/WebSocket/SSE).
Install
No auto-install command available for this server.
Check the GitHub repository for setup instructionsSafety Report
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Authentication detected: env_api_key_py, connection_string
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Unrestricted CORS (wildcard origin) detected
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Rate limiting detected: rate_limit_middleware, requests_per
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No known CVEs in dependencies
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No known vulnerable dependencies detected
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No dangerous code patterns detected
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License: MIT
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Last commit 63 days ago
Frequently Asked Questions
What is Context Keeper?
LLM-driven context and memory management with wide-recall + precise-reranking RAG architecture. Features multi-dimensional retrieval (vector/timeline/knowledge graph), short/long-term memory, and complete MCP support (HTTP/WebSocket/SSE).
Is Context Keeper safe to use?
Context Keeper is rated Caution. Some security checks raised warnings. Review the safety report on this page for details before use.
What are alternatives to Context Keeper?
Similar MCP servers include Context7, Cognee, Hindsight. Each serves a similar purpose but may differ in features, language, and compatibility.
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Hindsight
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