Connect hosts to a June knowledge graph for memory, search, and cited answers.
Copy the install command and let the AI configure it · recommended for beginners
No copy-paste install info for "june-mcp" yet — see the docs or source repo.
Use june-mcp to connect to the June knowledge graph, search for information related to "user retention strategies," and summarize the key findings with citations.
A knowledge-graph-based summary with traceable citations.
Use june-mcp to store the current project context as memory and prioritize that memory in later question answering.
The agent can answer follow-up questions using stored context.
Use june-mcp to query the June knowledge graph for content about "competitor positioning" and produce a short cited answer.
A concise answer with clearly indicated cited sources.
Developers building MCP-based agents can use it to connect a host to the June knowledge graph so the assistant can use memory and existing knowledge across tasks. This helps reduce repeated background input.
Research or product teams can use it to search relevant knowledge and generate cited answers when they need responses grounded in a knowledge base. This makes sources easier to verify.
When a team wants a local host or runtime to access the June knowledge graph, this official MCP server can act as the connection layer for memory, search, and cited-answer capabilities.
It is an official MCP server that connects hosts to the June knowledge graph. Its stated capabilities include agent memory, search, and cited answers.
From the provided information, we can only confirm that it connects hosts to the June knowledge graph. For keys, runtime, or exact configuration, see the source repository.
The description shows that it supports not only search, but also agent memory and cited answers. That makes it more suited to knowledge-graph-driven retrieval and answering for agents.
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