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koios/docs/tools/mnemosyne.md
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# Mnemosyne
> Multimodal personal knowledge base — Robert's curated content across many domains, retrieved through a content-type-aware MCP surface.
- **MCP server name:** `mnemosyne`
- **Prompt snippet:** [prompts/tools/mnemosyne.md](../../prompts/tools/mnemosyne.md)
- **Project repo:** `/home/robert/git/mnemosyne`
## What It Is
Mnemosyne is "the memory of everything you know" — Robert's content-type-aware multimodal knowledge management system built on Neo4j vector storage and Qwen3-VL embeddings. Unlike a generic vector store, Mnemosyne knows what *kind* of thing a document is (a novel, a textbook, an album, a journal entry, a business proposal) and adjusts chunking, embedding, and retrieval accordingly.
It is a **retrieval surface, not a synthesis engine**. Tools return ranked evidence — chunks plus metadata. The calling agent reads the chunks and forms the answer, citing chunk UIDs back so Robert can trace what informed the response.
## Concepts
**Library** — the top-level container. Each library has a `library_type` that drives chunking, embedding, and re-ranking strategy.
**Collection** — a named group of items inside a library (a novel series, a multi-volume manual).
**Item** — an indexed document or file. Only items with `embedding_status = "completed"` appear in search results.
**Chunk** — a text segment of an item. `search` returns a `text_preview` (~500 chars); use `get_chunk` for the full text.
## Library Types
| `library_type` | Content |
|---|---|
| `fiction` | Novels, short stories. Cover art available. |
| `nonfiction` | General non-fiction prose. |
| `technical` | Manuals, textbooks, docs. Diagrams and code-like content. |
| `music` | Lyrics, liner notes, album artwork. |
| `film` | Scripts, synopses, stills. |
| `art` | Catalogs, descriptions, the artwork itself. |
| `journal` | Personal entries; temporal/reflective. |
| `business` | Proposals, marketing, sales, strategy. Commercial context. |
| `finance` | Statements, tax, market commentary. Quote figures exactly. |
**Scoping queries to the right library_type matters.** A search for "Stoic philosophy" against the `finance` library returns useless results.
## MCP Tools
### Recommended workflow
```
list_libraries
→ search(query, library_type=..., library_uid=...)
→ get_chunk(chunk_uid) # only when text_preview is insufficient
```
### `search`
Hybrid retrieval: vector + full-text + concept-graph candidates fused by RRF (Reciprocal Rank Fusion), with optional Synesis re-ranking.
| Parameter | Type | Default | Description |
|---|---|---|---|
| `query` | str | required | The search query |
| `library_uid` | str \| None | None | Restrict to one library by UID |
| `library_type` | str \| None | None | Restrict by library type (table above) |
| `collection_uid` | str \| None | None | Restrict to one collection by UID |
| `limit` | int | 20 | Max candidates to return |
| `rerank` | bool | True | Apply Synesis re-ranking |
| `include_images` | bool | True | Include matching images in the response |
| `search_types` | list[str] \| None | `["vector", "fulltext", "graph"]` | Which retrieval strategies to run |
Returns:
```json
{
"query": "...",
"candidates": [
{
"chunk_uid": "...",
"item_uid": "...",
"item_title": "...",
"library_type": "...",
"text_preview": "... (~500 chars) ...",
"score": 0.92,
"source": "vector|fulltext|graph"
}
],
"images": [...],
"total_candidates": 42,
"search_time_ms": 85,
"reranker_used": true,
"reranker_model": "...",
"search_types_used": ["vector", "fulltext", "graph"]
}
```
### `get_chunk`
Full text of a single chunk by UID. Use when `text_preview` is insufficient.
| Parameter | Type | Description |
|---|---|---|
| `chunk_uid` | str | The chunk UID from a `search` result |
### `list_libraries`
Enumerate libraries the caller is authorized to read.
| Parameter | Type | Default | Description |
|---|---|---|---|
| `limit` | int | 50 | Max libraries (capped at 200) |
| `offset` | int | 0 | Pagination offset |
### `list_collections`
Enumerate collections, optionally filtered to one library.
| Parameter | Type | Default | Description |
|---|---|---|---|
| `library_uid` | str \| None | None | Filter to one parent library |
| `limit` | int | 50 | Max collections (capped at 200) |
| `offset` | int | 0 | Pagination offset |
### `list_items`
Enumerate indexed documents or files. Check `embedding_status` — only `"completed"` items appear in search.
| Parameter | Type | Default | Description |
|---|---|---|---|
| `collection_uid` | str \| None | None | Filter to one collection |
| `library_uid` | str \| None | None | Filter to one library |
| `limit` | int | 50 | Max items (capped at 200) |
| `offset` | int | 0 | Pagination offset |
### `get_health`
Pallas-compatible health probe. No auth required.
```json
{
"status": "ok | degraded | error",
"checks": {
"neo4j": {"status": "ok", "duration_ms": 2.1},
"s3": {"status": "ok", "duration_ms": 8.4},
"embedding": {"status": "ok", "model": "...", "duration_ms": 0.3}
}
}
```
Neo4j or S3 failures → `error` (critical). Missing or unconfigured embedding model → `degraded` (non-critical).
## Authentication
All tools except `get_health` require a `Bearer` token in the `Authorization` header. Three credential types:
| Type | Issued by | Lifetime | Scope |
|---|---|---|---|
| **Opaque `MCPToken`** | Mnemosyne admin | Long-lived (optional expiry) | `allowed_libraries` list on the token row; per-tool ACL available |
| **Per-turn JWT** (`iss=daedalus`) | Daedalus chat | ≤10 minutes | `libs` claim (list of Library UIDs) |
| **Team JWT** (`iss=mnemosyne`, `typ=team`) | Mnemosyne | 10-year lifetime | Resolved live from `TeamWorkspaceAssignment` → Neo4j `Library.workspace_id`. Revoked via `active_jti` rotation. |
Every authenticated request resolves to a `resolved_libraries` list — the set of Library UIDs the caller may read. Tools enforce this list at the query layer. Empty list = authenticated but sees nothing (fail-closed). No auth = also fail-closed.
## Who Uses Mnemosyne
All regular agents have access via team-based authentication. Each team's token resolves to the libraries appropriate for that team's domain:
- **Personal team** — all personal-relevant libraries (fiction, nonfiction, technical, music, film, art, journal, business, finance). Each agent self-filters by `library_type` based on their domain.
- **Work team** — business-focused libraries; supporting reference (Ann reaches for nonfiction; Alan reaches for business strategy material).
- **Engineering team** — technical libraries and reference (Harper for build references; Scotty for runbooks and incident records).
Within a team, each agent is responsible for searching the right `library_type` for their work — there's no per-agent ACL inside a team token. Searching the wrong library type returns useless results, not an error.
## What It's Good For
- Searching Robert's curated knowledge across libraries — books, music, journal entries, business documents, reference material
- Multimodal queries — find a book cover, an album sleeve, a screenshot alongside text
- "Did I read something about X" / "what did I write about Y on what date"
- Pulling source material Robert has actually curated, rather than guessing from training data
- Following graph relationships through the underlying Neo4j vector store (Author → Book → Topic; Artist → Album → Track)
## What It's Not Good For
- General web knowledge — that's Argos
- Anything not yet ingested — Mnemosyne only knows what's been indexed
- Synthesis or "give me the answer" — Mnemosyne returns chunks; the calling agent synthesizes
- Real-time information (status, news) — content is ingested, not live
- Writing — Mnemosyne is a retrieval surface; ingestion happens through Daedalus and admin tooling
## Known Gotchas
- **It's retrieval, not answers.** Always cite `chunk_uid` so Robert can verify.
- **`library_type` matters.** Searching the wrong library type returns nothing useful. Use `list_libraries` if uncertain.
- **`text_preview` is ~500 chars.** Often enough for the agent to decide whether the chunk is relevant; not enough for synthesis. Call `get_chunk` for the full text only when you need it.
- **Only `embedding_status = "completed"` items appear in search.** A library with items in progress will show fewer results than `list_items` suggests.
- **Empty results may mean the index isn't ready in this environment.** `get_health` will report `degraded` if the embedding model is missing. Surface that, don't silently confabulate.
- **Fail-closed auth.** No token = no results. Empty allowed-library list = also no results. Distinguish "I searched and found nothing" from "I'm not authorized" — `list_libraries` returning an empty set is the tell for the latter.
- **`include_images=True` by default.** When images aren't relevant, set it to False to reduce noise and tokens.
- **Re-ranking has a cost.** `rerank=True` (default) gives better precision but adds latency. For exploratory queries, `rerank=False` is fine; for the query that produces the final answer, leave reranking on.