- Add /healthz endpoint returning LLM provider validation status - Add /metrics endpoint serving Prometheus metrics via prometheus_client - Replace all print() calls in health.py with proper logging module - Remove _PREFIX variable in favor of structured logger context
3.9 KiB
Mnemosyne Integration — Pallas Reference
This document summarises the Pallas-specific changes required for Mnemosyne knowledge integration. The full specification lives in daedalus/docs/mnemosyne_integration.md.
Overview
Pallas agents gain access to Mnemosyne's content-type-aware knowledge graph as a downstream MCP server. Agents can search documents, browse libraries, retrieve items, and traverse the concept graph — all via standard MCP tool calls.
Configuration Changes
fastagent.config.yaml
Add the Mnemosyne MCP server:
mcp:
servers:
# ... existing servers (argos, neo4j_cypher, kernos, rommie, gitea, grafana) ...
mnemosyne:
transport: http
url: "http://puck.incus:22091/mcp"
Agent Definitions
Research Agent (port 23031)
The knowledge agent in the research chain gains Mnemosyne access:
@fast.agent(name="search", servers=["argos"])
@fast.agent(name="knowledge", servers=["neo4j_cypher", "mnemosyne"])
@fast.chain(name="research", sequence=["search", "knowledge"], default=True)
The knowledge agent's system instruction should guide tool selection:
Use
mnemosyne.search_knowledgefor document content retrieval — it handles chunking, vector search, re-ranking, and content-type-aware context. Useneo4j_cypherfor graph topology queries, relationship exploration, and data not managed by Mnemosyne.
Infrastructure Agent (port 23032)
No changes — Infrastructure does not use Mnemosyne.
Orchestrator (port 23033)
@fast.agent(name="research_sub", servers=["argos", "neo4j_cypher", "mnemosyne"])
@fast.agent(name="infra_sub", servers=["kernos", "gitea", "rommie"])
@fast.orchestrator(name="orchestrator", agents=["research_sub", "infra_sub"],
plan_type="iterative", default=True)
Registry Update
Update agent descriptions to reflect Mnemosyne access:
{
"server": {
"name": "ca.helu.ouranos/pallas-research",
"title": "Research Agent",
"description": "Web search via Argos, knowledge graph via Neo4j, and content library search via Mnemosyne",
"version": "1.1.0",
"remotes": [
{ "type": "streamable-http", "url": "http://puck.incus:23031/mcp" }
]
}
}
Available Mnemosyne MCP Tools
These tools become available to agents with mnemosyne in their servers list:
| Tool | Purpose | When to Use |
|---|---|---|
search_knowledge |
Hybrid vector + full-text + graph search with re-ranking | Document content retrieval, question answering over stored knowledge |
search_by_category |
Search scoped to a library type (fiction, technical, etc.) | When the user specifies or implies a content domain |
list_libraries |
List all knowledge libraries | Discovering what knowledge domains exist |
list_collections |
List collections within a library | Browsing a specific knowledge domain |
get_item |
Retrieve item metadata + chunk previews + concept links | Deep dive on a specific document/item |
get_concepts |
Traverse concept graph | Exploring relationships between topics, people, places |
Downstream MCP Servers (Updated)
| Server | Host | URL | Used by |
|---|---|---|---|
| argos | miranda.incus | http://miranda.incus:25534/mcp |
Research, Orchestrator |
| neo4j_cypher | circe.helu.ca | http://circe.helu.ca:22034/mcp |
Research, Orchestrator |
| mnemosyne | puck.incus | http://puck.incus:22091/mcp |
Research, Orchestrator |
| kernos | caliban.incus | http://caliban.incus:22021/mcp |
Infrastructure, Orchestrator |
| gitea | miranda.incus | http://miranda.incus:25535/mcp |
Infrastructure, Orchestrator |
| rommie | caliban.incus | http://caliban.incus:22031/mcp |
Infrastructure, Orchestrator |
| grafana | miranda.incus | http://miranda.incus:25533/mcp |
Infrastructure |