Command Palette

Search for a command to run...

UnylyUnyly
Весь каталог

June

БесплатноНе проверен

Official MCP server connecting hosts to a June knowledge graph for agent memory, search, and cited answers.

GitHubEmbed

Описание

Official MCP server connecting hosts to a June knowledge graph for agent memory, search, and cited answers.

README

Give your agent a memory. june-mcp is the official MCP server for Junê — it connects any MCP host (Claude Desktop, Claude Code, and friends) to a June knowledge graph, so your agent can ask, search, and remember against a shared, cited, tenant-isolated memory.

This package is a thin, zero-logic connector: all retrieval, graph assembly, and answering happen on the June endpoint you point it at. No engine code lives here — which is why it's small enough to read in one sitting.

Claude Desktop / Claude Code  ──stdio──▶  june-mcp  ──HTTPS──▶  your June endpoint
                                                                 (graph · retrieval · answers)

Install

pip install june-mcp          # just the connector   (or: pipx install june-mcp)
pip install june-ai           # umbrella: june-mcp + june-bench (the benchmark suite)
pip install "june-bench[mcp]" # the bench, with the connector as an extra

Point it at a June endpoint

june-mcp speaks to any June service. Three ways to have one:

  1. Junê desktop app (local-first). Run the Junê app and connect to its local engine — your files, graph, and keys stay on your machine.
  2. Your own June service. Pro/Team customers running the june-local engine package point JUNE_BASE_URL at their own server.
  3. Hosted (Team). Point at your hosted June workspace endpoint with the API key from your console.

Configure

The server is fail-closed: it refuses to start unless it knows where to connect and as whom, and tells you everything that's missing in one message (not one error at a time).

env required meaning
JUNE_BASE_URL Your June endpoint, e.g. http://localhost:8000
JUNE_CANVAS The canvas (workspace) to bind this connection to — a name (work) or a canvas id. Names resolve to the id at startup; ambiguous names fail closed
JUNE_CANVAS_CREATE optional 1 creates the named canvas on first run if it doesn't exist yet (refused in read-only mode)
JUNE_API_KEY Your June API key (JUNE_ALLOW_ANON=1 explicitly opts out for keyless local setups)
JUNE_LLM_KEY optional Bring-your-own LLM key for cited answers — forwarded per-request as a header, never logged, never stored on the service
JUNE_READONLY optional 1 hides + refuses all write tools (memory becomes read-only)
JUNE_FILES_ROOT optional Opt-in directory agents may upload files from via june_ingest_file — unset ⇒ that tool doesn't exist
JUNE_TIMEOUT_READ / JUNE_TIMEOUT_ANSWER optional Per-verb timeouts (defaults 15 s / 120 s)
JUNE_LOG_LEVEL optional Logging is stderr-only by design — stdout is the MCP wire

Check it before your agent does

JUNE_BASE_URL=http://localhost:8000 JUNE_API_KEY=... JUNE_CANVAS=work june-mcp --doctor

The doctor verifies, in order: config → service reachable → canvas resolution (your canvas name → its id, e.g. name "work" → 9147bee6-…) → search seam healthy → tool manifest, and prints PASS/FAIL per check with a mapped hint (e.g. a missing name lists the canvases that DO exist and points at JUNE_CANVAS_CREATE=1). The doctor exits 0 only when every check passes (1 otherwise); the server itself exits 2 on a config error instead of starting half-wired. Run the doctor first; it catches every common misconfiguration before your agent ever sees the server.

Wire it into Claude

Claude Desktop — merge into claude_desktop_config.json (Settings → Developer):

{
  "mcpServers": {
    "june": {
      "command": "june-mcp",
      "env": {
        "JUNE_BASE_URL": "http://localhost:8000",
        "JUNE_API_KEY": "your-key",
        "JUNE_CANVAS": "work",
        "JUNE_LLM_KEY": "your-llm-provider-key"
      }
    }
  }
}

Claude Code:

claude mcp add june -e JUNE_BASE_URL=http://localhost:8000 \
  -e JUNE_API_KEY=your-key -e JUNE_CANVAS=work \
  -e JUNE_LLM_KEY=your-llm-provider-key -- june-mcp

Fully restart the host (Cmd+Q on macOS), then check the server shows 10 tools (11 when you opt into june_ingest_file via JUNE_FILES_ROOT).

The tools

tool what your agent gets
june_answer A grounded, cited answer from the graph — abstains rather than guesses
june_search Ranked evidence for a query (supports multi-hop)
june_context An assembled context pack under a token budget
june_neighborhood The graph around one node
june_subgraph A bounded subgraph export
june_remember Write a fact/note into the graph (becomes retrievable + citable immediately)
june_ingest Structured node/edge ingestion
june_enumerate EVERY node matching a predicate — recall-complete "list ALL X" (not top-k)
june_ingest_file Upload one local file (pdf/docx/xlsx/csv/html/md/images/audio) from the operator-approved folder — only exists when you set JUNE_FILES_ROOT
june_enrich Pro: background re-extraction of the canvas with the richer engine (idempotent; job + poll; 403 on free)
june_resolve Maintenance: merge duplicate entities via reversible same_as edges (runs server-side; strong_only=false unlocks the semantic tier on Pro)

Descriptions are written for the agent (what → when → returns), and every clamped input is visibly noted back to the agent instead of silently truncated.

Free vs Pro — the june-pro tag

june-mcp is one package for everyone; there is no separate "pro build". Pro is a property of the endpoint, not the connector: connect to a Pro-activated June (a Pro license in the app, a Pro key on a hosted workspace) and the same tools carry Pro-grade results: every june_remember and june_ingest_file write runs the richer entity/edge engines automatically (the result reports which engine ran), june_resolve upgrades to semantic matching, and june_enrich backfills memories that were written on the free floor before you upgraded. The terminal shows which world you're in: --doctor prints an edition line and the server's startup banner tags the connection —

june-mcp: connected http://localhost:8000 canvas name "work" → 11d2… [june-pro]

The tag is read from the service's own /v1/whoami (the same entitlement state that gates Pro routes server-side), so it can't disagree with what you actually get — and it's display-only: entitlements are enforced on the service no matter what any client prints. Older services without /v1/whoami simply show no tag.

Security model

The tool surface exposes no canvas/workspace parameter — the workspace is bound server-side from your connection's context, fail-closed. A cross-tenant read isn't a permission check that could fail open; it's unrepresentable from the client. JUNE_READONLY=1 adds a second fence for read-only deployments. Your BYO LLM key rides each answer request as a header and is never persisted or logged by the service.

Errors

Every upstream failure maps to a typed, redacted error payload (built from exception type + HTTP status only — never from response bodies), so the server survives anything the endpoint throws and your agent sees a clean, actionable message.

License

MIT. The Junê engine itself is a separate, closed-source product — this connector is the open part, by design.

from github.com/Junemind/june-mcp

Установка June

У этого сервера нет опубликованного пакета — он собирается из исходников. Открой репозиторий и следуй инструкции в README.

▸ github.com/Junemind/june-mcp

FAQ

June MCP бесплатный?

Да, June MCP бесплатный — установка в пару кликов через Unyly без оплаты.

Нужен ли API-ключ для June?

Нет, June работает без API-ключей и переменных окружения.

June — hosted или self-hosted?

Self-hosted: сервер запускается локально на твоей машине командой из раздела установки.

Как установить June в Claude Desktop, Claude Code или Cursor?

Открой June на unyly.org, выбери вкладку своего клиента (Claude Desktop, Claude Code, Cursor) и нажми Install — конфиг сгенерируется автоматически, без правки JSON.

Похожие MCP

Compare June with

Не уверен что выбрать?

Найди свой стек за 60 секунд

Автор?

Embed-бейдж для README

Похожее

Все в категории ai