Command Palette

Search for a command to run...

UnylyUnyly
Browse all

Federated Search

FreeNot checked

A federation MCP server that sits in front of multiple memory backends and presents a unified search surface to AI agents, allowing a single query to search acr

GitHubEmbed

About

A federation MCP server that sits in front of multiple memory backends and presents a unified search surface to AI agents, allowing a single query to search across knowledge graphs, session history, and web search.

README

One query, all knowledge. A federation MCP server that sits in front of multiple memory backends and presents a unified search surface to AI agents.

What It Does

Instead of an agent juggling 3-4 MCP connections and deciding which backend to query, federation handles it:

Agent → fed_search("Kronos") → Federation
                                   ├→ Knowledge Graph (curated entities)
                                   ├→ Flex (session history)
                                   └→ SearXNG (web, opt-in)
                                ← merged, ranked, one response

Results are priority-ordered by bank, relevance-ranked within each bank, and filtered for signal quality.

Tools

fed_search(query, db?, limit?, mode?, domain?)

Search across all subscribed memory banks.

Parameter Default Description
query required What to search for
db all defaults Bank ID or comma-separated IDs. "knowledge_graph", "flex,web"
limit 10 Max results. -1 for unlimited
mode "broad" "broad", "exact" (phrase match), or "semantic" (meaning-based)
domain none Pre-filter KG results to an index alias. "infrastructure", "api"

fed_banks()

Returns registered banks with priorities, descriptions, and health status.

Architecture

federation/
  server.py          # FastMCP server — tool definitions
  federation.py      # Core engine — fan-out, merge, rank
  config.py          # YAML config loader
  types.py           # FederatedResult envelope, BankConfig, SearchRequest
  filters.py         # Signal quality — confidence floor, adaptive count, dedup
  formatter.py       # Markdown output formatting
  plugins/
    base.py          # BankPlugin ABC
    kg.py            # Knowledge graph MCP plugin
    flex.py          # Flex session history plugin
    searxng.py       # SearXNG web search plugin

Plugin System

Each backend is a plugin that translates fed_search into native queries and packs results into a universal envelope:

class MyPlugin(BankPlugin):
    async def search(self, query, limit=10, mode="broad", domain=None):
        # Call your backend, return list[FederatedResult]

    async def health_check(self):
        # Return BankStatus.HEALTHY / DEGRADED / DOWN

Adding a new bank = write a plugin class + add a YAML config block. No core changes.

See skills/federation-plugin-dev.md for the full plugin development guide.

Signal Quality

  • Query validation — rejects empty, single-char, and stopword queries
  • Confidence floor — results below 0.25 relevance get cut
  • Adaptive count — when strong results exist, weak tail is trimmed with a note
  • Bank representation — each bank gets at least 1 result slot
  • Cross-bank annotation — flex chunks referencing KG entities get overlaps_with metadata

Config

config.yaml defines agents and their bank subscriptions:

agents:
  my_agent:
    port: 4001
    banks:
      - id: knowledge_graph
        type: kg
        label: "Curated Knowledge"
        description: "Agent-curated structured knowledge graph"
        priority: 1        # lower = results sort first
        default: true       # searched when no db= specified
        url: "http://127.0.0.1:3101/mcp"
        auth: "Bearer ${KG_AUTH_TOKEN}"
      - id: web
        type: searxng
        priority: 99
        default: false      # opt-in only
        url: "http://your-searxng:8080"

Copy config.yaml to config.local.yaml and fill in real values. The local config is gitignored.

Setup

python3 -m venv .venv
source .venv/bin/activate
pip install -e .

Usage

# stdio mode (for Claude Code MCP)
python -m federation.server --agent my_agent --config config.local.yaml

# HTTP mode
python -m federation.server --agent my_agent --config config.local.yaml --http --port 4001

Add to Claude Code

claude mcp add fed-search -s user -- \
  /path/to/.venv/bin/python -m federation.server \
  --agent my_agent --config /path/to/config.local.yaml

License

MIT

from github.com/ArkTechNWA/federated-search

Installing Federated Search

This server has no published package — it is built from source. Open the repository and follow its README.

▸ github.com/ArkTechNWA/federated-search

FAQ

Is Federated Search MCP free?

Yes, Federated Search MCP is free — one-click install via Unyly at no cost.

Does Federated Search need an API key?

No, Federated Search runs without API keys or environment variables.

Is Federated Search hosted or self-hosted?

A hosted option is available: Unyly runs the server in the cloud, no local setup required.

How do I install Federated Search in Claude Desktop, Claude Code or Cursor?

Open Federated Search on unyly.org, pick your client tab (Claude Desktop, Claude Code, Cursor) and press Install — the config is generated automatically, no JSON editing.

Related MCPs

Compare Federated Search with

Not sure what to pick?

Find your stack in 60 seconds

Author?

Embed badge for your README

Browse similar

All ai MCPs