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Governed

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MCP server that enforces governance on agentic decisions with auditable evidence records, providing tools for understanding, calibrating confidence, and navigat

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Описание

MCP server that enforces governance on agentic decisions with auditable evidence records, providing tools for understanding, calibrating confidence, and navigating handoffs based on policy.

README

Governance that travels over the Model Context Protocol.

The governed co-workers — Understander, Calibrator, Navigator — exposed as an MCP server. Any MCP-capable client (Claude, or a platform built on Claude) mounts governance at the two points where it actually bites: the input and the handoff. Every decision leaves an owned, auditable evidence record as a byproduct — not by convention, but because the server can't act without writing one.

This is the thesis made literal: you don't attach governance to one system, you publish it and it travels to wherever it's mounted.

The interface

Tools (model-controlled actions)

  • understand(action, context, principal) — reads intent, scope, sensitivity, and consequence class. Opens the evidence record under an owning principal.
  • calibrate(decision_id, model_confidence) — is that confidence sufficient for this consequence? Not a flat threshold: the Calibrator tracks the outcomes of past decisions per consequence class and discounts stated confidence by an online reliability estimate before comparing it to the floor. A class whose confidence has proven only 80% trustworthy sees the same stated 0.85 fall to an effective 0.69. With no history reliability is 1.0, so it reduces exactly to a flat floor — a strict generalization, not a replacement. Every adjustment is returned in the record, so calibration is itself auditable. (This is a reliability-weighted estimator with shrinkage, not a trained calibrator; it depends on resolved outcomes fed via Calibrator.observe(), and that labeling is its own hard problem.)
  • navigate(decision_id) — the handoff: proceed, gate, or block, plus the exact rule that fired.

Resources (read-only data)

  • governance://policy — the versioned ruleset, as an auditable artifact.
  • governance://evidence/{decision_id} — one decision's full record: inputs, every tool result, the route, timestamps, and the owning principal. This is the underwriter's read.

Prompt

  • escalation_review(decision_id) — what the gate presents to the accountable human: the evidence, then "Would you sign your name to this outcome?"

Run the demo (no dependencies)

python examples/walkthrough.py

Act 1 — three decisions, three routes:

Action Class Confidence Route
Read Q3 summary, draft internal note reversible 0.88 proceed
Transfer $250k to external account irreversible 0.99 gate
Bulk-modify customer PII records bounded 0.79 block

Act 2 — calibration learns. The same action at the same stated confidence, judged differently as the agent builds a track record:

Pass Reliability Effective conf. Floor Route
cold start (no history) 1.00 0.85 0.80 proceed
after 40 overconfident outcomes 0.81 0.69 0.80 block

Nothing about the request changed — the system's earned trust in that confidence did, and the evidence record shows exactly why. That flip is the thing to screen-record.

Run the MCP server

pip install "mcp[cli]"
python -m governed_mcp.server        # stdio transport

To mount it in Claude Code / the desktop app, add it as an MCP server (stdio, command python -m governed_mcp.server). Then ask Claude to run an action through understandcalibratenavigate and read back governance://evidence/{id}.

Design principle

Two things are enforced by the interface, not left to discipline:

  1. Every tool call writes evidence. A decision cannot progress silently.
  2. principal is required to open a decision. "Whoever deploys the agent owns the outcome" is captured mechanically — the record always answers who owns this.

Swapping in the real governed

The co-workers here are transparent stand-ins with the right interfaces. The real depth lives in your library's internals — the consequence classifier, the calibration thresholds, the policy engine. Replace the bodies of Understander.read, Calibrator.check, and Navigator.route in governed_mcp/coworkers.py; the server, resources, prompt, and evidence store stay as-is. The MCP layer is deliberately thin — the point it proves is that you know where governance attaches in an agentic system.

Tests

python tests/test_governance.py     # no pytest needed; pytest also works

Asserts the decisions a governance tool must get right: routes match consequence, sensitive scope raises the floor, every step writes evidence under a principal, and calibration flips a verdict as overconfidence accumulates.

Layout

governed-mcp/
├── governed_mcp/
│   ├── policy.py       # consequence bands, classification, calibration floors
│   ├── coworkers.py    # Understander, Calibrator (reliability-weighted), Navigator
│   ├── evidence.py     # EvidenceStore, Decision, owned records
│   └── server.py       # FastMCP: 3 tools, 2 resources, 1 prompt
├── policy.yaml         # editable ruleset (overrides default when pyyaml present)
├── examples/
│   └── walkthrough.py  # runnable, dependency-free demo (Act 1 + Act 2)
├── tests/
│   └── test_governance.py
├── requirements.txt
└── pyproject.toml

from github.com/rsiraj0/governed-mcp

Установка Governed

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

▸ github.com/rsiraj0/governed-mcp

FAQ

Governed MCP бесплатный?

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

Нужен ли API-ключ для Governed?

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

Governed — hosted или self-hosted?

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

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

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

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