Robert Helewka 7185d326eb
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feat(docker): rename web service to app, add nginx as web
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`app` and nginx is `web`, better reflecting their roles. Add a dedicated
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checks.

Update documentation to reflect:
- Neo4j migration from ariel.incus to a dedicated umbriel.incus instance
- Rationale for requiring a dedicated Neo4j instance (single-tenancy
  assumptions, label/index isolation, schema ownership)
- New service naming in compose commands and log tailing examples
2026-05-03 19:35:27 -04:00

Mnemosyne

"The electric light did not come from the continuous improvement of candles." — Oren Harari

The memory of everything you know.

Mnemosyne is a content-type-aware, multimodal personal knowledge management system built on Neo4j knowledge graphs and Qwen3-VL multimodal AI models. Named after the Titan goddess of memory and mother of the nine Muses, Mnemosyne doesn't just store your knowledge — it understands what kind of knowledge it is, connects it through relationships, and makes it all searchable through text, images, and natural language.

What Makes This Different

Every existing knowledge base tool treats all documents identically: text in, chunks out, vectors stored. A novel and a PostgreSQL manual get the same treatment.

Mnemosyne knows the difference:

  • A textbook has chapters, an index, technical terminology, and pedagogical structure. It's chunked accordingly, and when an LLM retrieves results, it knows this is instructional content.
  • A novel has narrative flow, characters, plot arcs, dialogue. The LLM knows to interpret results as creative fiction.
  • Album artwork is a visual asset tied to an artist, genre, and era. It's embedded multimodally — searchable by both image similarity and text description.
  • A journal entry is personal, temporal, reflective. The LLM treats it differently than a reference manual.

This content-type awareness flows through every layer: chunking strategy, embedding instructions, re-ranking, and the final LLM prompt.

Core Architecture

Component Technology Purpose
Knowledge Graph Neo4j 5.x Relationships + vector storage (no dimension limits)
Multimodal Embeddings Qwen3-VL-Embedding-8B Text + image + video in unified vector space (4096d)
Multimodal Re-ranking Synesis (Qwen3-VL-Reranker-2B) Cross-attention precision scoring via /v1/rerank
Web Framework Django 5.x + DRF Auth, admin, API, content management
Object Storage S3/MinIO Original content + chunk text storage
Async Processing Celery + RabbitMQ Document embedding, graph construction
LLM Interface MCP Server Primary interface for Claude, Copilot, etc.
GPU Serving vLLM + llama.cpp Local model inference

Library Types

Library Example Content Multimodal? Graph Relationships
Fiction Novels, short stories Cover art Author → Book → Character → Theme
Nonfiction History, biography, science writing Photos, charts Author → Work → Topic → Person/Place
Technical Textbooks, manuals, docs Diagrams, screenshots Product → Manual → Section → Procedure
Music Lyrics, liner notes Album artwork Artist → Album → Track → Genre
Film Scripts, synopses Stills, posters Director → Film → Scene → Actor
Art Descriptions, catalogs The artwork itself Artist → Piece → Style → Movement
Journal Personal entries, plans, observations Photos Date → Entry → Topic → Person/Place
Business Proposals, marketing, strategy Logos, charts Client → Engagement → Deliverable
Finance Statements, tax, market commentary Charts, statement scans Account → Instrument → Period

Search Pipeline

Query → Vector Search (Neo4j) + Graph Traversal (Cypher) + Full-Text Search
  → Candidate Fusion → Qwen3-VL Re-ranking → Ranked Chunks + Metadata
    → MCP tool result (the calling LLM does its own synthesis)

Heritage

Mnemosyne's RAG pipeline architecture is inspired by Spelunker, an enterprise RFP response platform. The proven patterns — hybrid search, two-stage RAG (responder + reviewer), citation-based retrieval, and async document processing — are carried forward and enhanced with multimodal capabilities and knowledge graph relationships.

Running Mnemosyne

Mnemosyne runs as three cooperating processes: the Django web app (REST API + admin), the MCP server (LLM-facing tools), and one or more Celery workers (async embedding + ingest). All three read configuration from mnemosyne/.env (copy from mnemosyne/.env example and fill in secrets).

Hosts in the Ouranos lab:

  • Postgresportia.incus:5432 (Django ORM: users, IngestJob)
  • Neo4jumbriel.incus:7687 (Bolt; dedicated instance — see note below — knowledge graph + vectors; HTTP Browser on umbriel.incus:25555)
  • RabbitMQoberon.incus:5672 (Celery broker)
  • MinIOnyx.helu.ca:8555 (S3-compatible; mnemosyne-content and daedalus buckets)
  • Memcached127.0.0.1:11211 (task progress)

Neo4j must be dedicated to Mnemosyne. Don't share the instance with Spelunker or any other graph workload. Mnemosyne owns the Library, Collection, Item, Chunk, and Concept labels and runs its own indexes (chunk_embedding_index, full-text indexes per library_type) and schema migrations (setup_neo4j_indexes, load_library_types). The Phase-1 workspace-delete path runs label-scoped DETACH DELETE over those labels, and a workspace_id-scoped subgraph is the unit of isolation — both assume single-tenancy. A shared instance risks (1) label/property collisions corrupting the other tenant's graph, (2) vector-index memory contention degrading search latency for both apps, (3) management commands mutating schema another tenant depends on, and (4) backup/restore that can't be reasoned about per-app. Neo4j Community Edition is sufficient — the multi-database feature is Enterprise-only, so isolation has to come from running a separate server process. Run a dedicated instance per environment (one for staging, one for production); point each via NEOMODEL_NEO4J_BOLT_URL in that environment's mnemosyne/.env.

One-time setup

cd mnemosyne/
python manage.py migrate                       # Apply Django ORM migrations
python manage.py setup_neo4j_indexes           # Create Neo4j vector + full-text indexes
python manage.py load_library_types            # Load LIBRARY_TYPE_DEFAULTS into Neo4j

Start the web app

The Django REST API serves /library/api/* (libraries, collections, items, search, workspaces, ingest) and Django admin. Use Gunicorn in production; runserver for dev.

cd mnemosyne/

# Development
python manage.py runserver 0.0.0.0:8000

# Production
gunicorn --bind 0.0.0.0:8000 --workers 3 mnemosyne.wsgi:application

Start the MCP server

The MCP server exposes the LLM-facing tools (search, get_chunk, list_libraries, list_collections, list_items, get_health) over Streamable HTTP at /mcp and SSE at /mcp/sse. Run as a separate Uvicorn process, on its own port, so it can be reverse-proxied or scaled independently of the Django app.

cd mnemosyne/

# Single command: ASGI server hosting the FastMCP app
uvicorn mnemosyne.asgi:app --host 0.0.0.0 --port 22091 --workers 1

The mcp_server/asgi.py mounts FastMCP at /mcp (Streamable HTTP) and /mcp/sse (SSE), with a /mcp/health JSON probe for HAProxy/Pallas.

Start a Celery worker

A single worker that handles all queues (development) plus the focused command Daedalus depends on (the embedding queue, where the Daedalus ingest task lives).

cd mnemosyne/

# Development — one worker, all queues
celery -A mnemosyne worker -l info -Q celery,embedding,batch

# Production — embedding queue (handles Daedalus ingest + embed_item)
celery -A mnemosyne worker -l info -Q embedding -c 1 -n embedding@%h

# Production — batch queue (collection/library bulk operations)
celery -A mnemosyne worker -l info -Q batch -c 2 -n batch@%h

# Production — default queue (LLM validation, misc)
celery -A mnemosyne worker -l info -Q celery -c 2 -n default@%h

Daedalus's POST /library/api/ingest/ dispatches library.tasks.ingest_from_daedalus to the embedding queue. If you only run one worker, make sure it consumes embedding or that task will sit in the broker.

To bypass workers in dev/test, set CELERY_TASK_ALWAYS_EAGER=True in .env.

Scheduler & monitoring (optional):

celery -A mnemosyne beat -l info            # Periodic task scheduler
celery -A mnemosyne flower --port=5555      # Web monitoring UI

See Phase 2: Celery Workers & Scheduler for queue tuning, reliability settings, and task progress tracking.

Daedalus integration endpoints

These endpoints are used by the Daedalus FastAPI backend (HTTP Basic auth). All under /library/api/:

Method Route Purpose
POST /workspaces/ Create a workspace (idempotent on workspace_id); body: {workspace_id, name, library_type, description?}
GET /workspaces/{workspace_id}/ Workspace status (item/chunk counts)
DELETE /workspaces/{workspace_id}/ Delete workspace + reachable content; preserves shared concepts
POST /ingest/ Queue a file for ingestion + embedding
GET /jobs/{job_id}/ Poll ingest job status
POST /jobs/{job_id}/retry/ Re-dispatch a failed job
GET /jobs/?status=&library_uid= List recent jobs

See docs/mnemosyne_integration.md for the full Daedalus contract.

Production Deployment

Production runs as four containers from a single image (built and pushed by .gitea/workflows/cve-scan-docker-build.yml on every push to main):

Service Role Port
app Django REST API + admin (gunicorn) internal :8000
mcp FastMCP server (uvicorn) internal :22091
worker Celery worker — embedding/ingest/batch
web Reverse proxy + static files (nginx) host :23090

Plus a one-shot static-init service that copies /app/staticfiles (baked into the image at build time via collectstatic) into the shared volume nginx reads from. It runs to completion on every up, so static-file changes propagate on each deploy without manual intervention.

External services (NOT spun up by compose): Postgres on Portia, Neo4j on Umbriel (dedicated Mnemosyne instance), RabbitMQ on Oberon, S3/MinIO on Nyx, Memcached, embedder + reranker. All reached over the internal 10.10.0.0/24 network. URLs and credentials live in mnemosyne/.env.

First-time bring-up

# Pull the image (or build locally with `docker compose build`)
docker compose pull

# DB migrations (one-shot)
docker compose run --rm app migrate

# Neo4j indexes + library_type defaults (one-shot)
docker compose run --rm app setup

# Bring the stack up
docker compose up -d

Day-to-day

docker compose ps                  # service status + health
docker compose logs -f app         # tail Django app logs
docker compose logs -f web         # tail nginx logs
docker compose logs -f worker      # tail Celery worker logs
docker compose restart mcp         # restart just the MCP server

# After a new image is published:
docker compose pull && docker compose up -d

Things to verify in mnemosyne/.env before bringing up

The development .env has a few values that need adjusting for production:

  • DEBUG=False
  • USE_LOCAL_STORAGE=False (already set; just confirm)
  • KVDB_LOCATION=<external-memcached-host>:11211127.0.0.1 does not resolve from inside containers
  • AWS_ACCESS_KEY_ID / AWS_SECRET_ACCESS_KEY filled in
  • DAEDALUS_S3_* filled in for cross-bucket reads from the Daedalus bucket
  • ALLOWED_HOSTS includes the public hostname HAProxy routes to (e.g. mnemosyne.ouranos.helu.ca)
  • LLM_API_SECRETS_ENCRYPTION_KEY set to a real Fernet key

Health probes

Endpoint Probes Auth
GET /live/ Django process alive (always 200 if gunicorn is up) None
GET /ready/ PostgreSQL + Memcached reachable (503 if either is down) None
GET /healthz MCP server /mcp/health — used as the HAProxy health_path None
GET /metrics Prometheus scrape Internal networks only

Trailing slashes matter. Always use /live/ and /ready/ (with the trailing slash). The un-slashed forms (/live, /ready) trigger Django's APPEND_SLASH 301 redirect — health check clients that don't follow redirects will report a failure even when the service is healthy.

Architecture Note: Retrieval, Not Synthesis

Mnemosyne is a retrieval engine, not a RAG pipeline. It stores, embeds, and ranks — it does not synthesize answers.

The earlier roadmap had a server-side RAG layer that took a query and returned a written answer with citations. That layer has been removed. Calling LLMs (Claude via MCP, principally) are perfectly capable of driving iterative retrieval themselves when given the right primitives, and a server-side synthesis hop adds latency, cost, and a place where errors are harder to debug. Letting the calling LLM see chunks directly — and follow citations, pivot mid-search, or call get_chunk for full text — beats pre-digesting them.

If a "knowledge subagent" is ever wanted (a wrapper that takes a question and returns a written answer), it lives outside Mnemosyne as a thin client over the MCP tools, with its own system prompt. No coupling, no extra inference hop inside the server, and the subagent's behavior can iterate independently.

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