promptspeak-mcp-server

promptspeak-mcp-server

Pre-execution governance for AI agents. 45 MCP tools for hold queues, audit trails, risk scoring, and policy enforcement. Validates agent actions before they execute.

Category
Visit Server

README

promptspeak-mcp-server

Pre-execution governance for AI agents. Blocks dangerous tool calls before they execute.

AI agents call tools (file writes, API requests, shell commands) with no validation layer between intent and execution. A prompt injection, hallucinated argument, or drifting goal can trigger irreversible actions. PromptSpeak intercepts every MCP tool call, validates it against deterministic rules, and blocks or holds risky operations for human approval — in 0.1ms, before anything executes.

PromptSpeak Governance Demo

When to use this

  • You run AI agents that call tools (MCP servers, function calling, tool use) and need a governance layer between the agent and the tools.
  • You need human-in-the-loop approval for high-risk operations (production deployments, financial transactions, legal filings).
  • You want to detect behavioral drift — an agent gradually shifting away from its assigned task.
  • You need an audit trail of every tool call an agent attempted, whether it was allowed or blocked.
  • You operate in a regulated domain (legal, financial, healthcare) where agent actions must be deterministically constrained.

Install

Claude Code

Add to ~/.claude/settings.json (or project-level .claude/settings.json):

{
  "mcpServers": {
    "promptspeak": {
      "command": "npx",
      "args": ["promptspeak-mcp-server"]
    }
  }
}

Restart Claude Code. All 45 governance tools are immediately available.

Claude Desktop

Add to claude_desktop_config.json:

{
  "mcpServers": {
    "promptspeak": {
      "command": "npx",
      "args": ["promptspeak-mcp-server"]
    }
  }
}

As a library

npm install promptspeak-mcp-server

From source

git clone https://github.com/chrbailey/promptspeak-mcp-server.git
cd promptspeak-mcp-server
npm install && npm run build
npm start

How it works: 9-stage validation pipeline

Every tool call passes through this pipeline. If any stage fails, execution is blocked.

Agent calls tool
  │
  ├─ 1. Circuit Breaker ──── Halted agents blocked instantly (no further checks)
  ├─ 2. Frame Validation ─── Structural, semantic, and chain rule checks
  ├─ 3. Drift Prediction ─── Pre-flight behavioral anomaly detection
  ├─ 4. Hold Check ────────── Risky operations held for human approval
  ├─ 5. Interceptor ───────── Final permission gate (confidence thresholds)
  ├─ 6. Security Scan ─────── Scans write actions for vulnerabilities (see below)
  ├─ 7. Tool Execution ────── Only reached if all 6 pre-checks pass
  ├─ 8. Post-Audit ────────── Confirms behavior matched prediction
  └─ 9. Immediate Action ──── Halts agent if critical drift detected post-execution

Stages 1-6 are pre-execution — the tool never runs if any check fails. Stages 8-9 are post-execution — they detect drift and can halt the agent for future calls.

Security scanning

When an agent writes code (write_file, edit_file, create_file, patch_file), the content is scanned against 10 detection patterns before execution. Severity determines enforcement:

Severity Enforcement What it catches
CRITICAL Blocked — execution denied SQL injection via template literals, hardcoded API keys/passwords/tokens
HIGH Held — queued for human review Security-related TODOs, logging sensitive data, insecure defaults (cors(), 0.0.0.0, debug: true)
MEDIUM Warned — logged, execution continues Empty catch blocks, hedging comments ("probably works"), disabled tests
LOW Logged — no enforcement DROP TABLE, rm -rf (flagged for awareness)

What works (tested)

All claims below are backed by passing tests (95 tests across 4 test files):

  • Pattern detection works. Each of the 10 patterns is tested for true positives AND false positives. Example: api_key = "sk-1234567890abcdef" is caught; API_KEY = process.env.API_KEY is not. SQL injection catches \SELECT * FROM users WHERE id = ${id}` but not parameterized queries (db.query("SELECT * FROM users WHERE id = ?", [id])`).
  • Severity enforcement works. Critical findings block execution. High findings hold for review. Medium findings warn but allow. Tested end-to-end through the interceptor pipeline.
  • Only write actions are scanned. read_file and other non-write actions pass through without scanning, even if their arguments contain vulnerable code. Tested.
  • Runtime configuration works. Patterns can be enabled/disabled and severity can be changed at runtime via ps_security_config. A disabled pattern stops firing immediately. Changing a pattern from medium to critical makes it block instead of warn. Tested end-to-end.
  • Performance is fine. 100-line file scans complete in under 10ms. Tested.
  • Multiple findings in one file work. A file with 6 different vulnerability types correctly classifies each into the right severity bucket. Tested.

What does NOT work yet

  • No hold queue integration for HIGH findings. The interceptor blocks HIGH-severity findings (returns allowed: false) but does not create an actual hold in the HoldManager. This means ps_hold_list won't show security holds, and there's no approve/reject flow for them. The ps_security_gate tool reports decision: "held" but this is informational only — there's no pending hold to act on. Why: Wiring into HoldManager requires an ExecuteRequest object and a HoldReason type extension. Both are doable but weren't in scope for the initial implementation.
  • No auto-scan on ps_execute. The security scan only triggers in the interceptor's intercept() method for direct tool calls. If an agent uses ps_execute (the governed execution path), the scan runs only if the inner tool is a write action AND the content is passed as a top-level arg. Nested argument structures may bypass scanning. Why: ps_execute wraps tool calls in its own argument schema; the scanner checks proposedArgs.content, not deeply nested fields.
  • No file-path-based scanning. The scanner only examines content passed as arguments. It cannot scan files already on disk — it doesn't read from the filesystem. Why: The scanner is a pure function that takes a string. Adding filesystem access would change the security model.
  • Patterns are regex-based, not AST-aware. The patterns use regular expressions, which means they can't understand code structure. A hardcoded secret inside a test fixture or a SQL injection in a comment will still trigger. False positive rates range from 25-70% depending on the pattern (documented per-pattern). Why: AST parsing would add dependencies and complexity. Regex is fast and good enough for a governance layer that holds for human review rather than silently blocking.
  • No persistence. Pattern configuration changes (enable/disable, severity changes) are in-memory only. They reset when the server restarts. Why: The rest of PromptSpeak's config is also in-memory. Persistence would need the SQLite layer or a config file, neither of which was in scope.

MCP tools (45)

Core governance

Tool When to call it What it does
ps_validate Before executing any agent action Validate a frame against all rules without executing
ps_validate_batch When checking multiple actions at once Batch validation for efficiency
ps_execute When an agent wants to perform a tool call Full pipeline: validate → hold check → execute → audit
ps_execute_dry_run When previewing what would happen Run full pipeline without executing the tool

Human-in-the-loop holds

Tool When to call it What it does
ps_hold_list When reviewing pending agent actions List all operations awaiting human approval
ps_hold_approve When a held operation should proceed Approve with optional modified arguments
ps_hold_reject When a held operation should be denied Reject with reason
ps_hold_config When tuning which operations require approval Configure hold triggers and thresholds
ps_hold_stats When monitoring hold queue health Hold queue statistics

Agent lifecycle

Tool When to call it What it does
ps_state_get When checking what an agent is doing Get agent's active frame and last action
ps_state_system When monitoring overall system health System-wide statistics
ps_state_halt When an agent must be stopped immediately Trip circuit breaker — blocks all future calls
ps_state_resume When a halted agent should be allowed to continue Reset circuit breaker
ps_state_reset When clearing agent state Full state reset
ps_state_drift_history When investigating behavioral changes Drift detection alert history

Delegation

Tool When to call it What it does
ps_delegate When an agent spawns a sub-agent Create parent→child delegation with constrained permissions
ps_delegate_revoke When revoking a sub-agent's authority Remove delegation
ps_delegate_list When auditing delegation chains List active delegations

Configuration

Tool When to call it What it does
ps_config_set When changing governance rules at runtime Set configuration key-value pairs
ps_config_get When reading current configuration Get current config
ps_config_activate When switching policy profiles Activate a named configuration
ps_config_export When backing up configuration Export full config as JSON
ps_config_import When restoring configuration Import config from JSON
ps_confidence_set When tuning validation strictness Set confidence thresholds
ps_confidence_get When checking current thresholds Get current thresholds
ps_confidence_bulk_set When reconfiguring multiple thresholds Batch threshold update
ps_feature_set When toggling pipeline stages Enable/disable specific checks
ps_feature_get When checking which stages are active Get feature flags

Symbol registry (entity tracking)

Tool When to call it What it does
ps_symbol_create When registering a new entity (company, person, system) Create symbol with type, metadata, and tags
ps_symbol_get When looking up an entity Retrieve by ID
ps_symbol_update When entity data changes Update metadata or tags
ps_symbol_list When browsing entities by type List with optional type filter
ps_symbol_delete When removing an entity Delete by ID
ps_symbol_import When bulk-loading entities Batch import
ps_symbol_stats When monitoring registry health Registry statistics
ps_symbol_format When displaying an entity Format symbol for display
ps_symbol_verify When confirming entity data is current Mark symbol as verified
ps_symbol_list_unverified When auditing stale data List symbols needing verification
ps_symbol_add_alternative When an entity has aliases Add alternative identifier

Security enforcement

Tool When to call it What it does
ps_security_scan When checking code for vulnerabilities Scan content, return findings by severity
ps_security_gate When enforcing security policy on writes Scan + enforce: block/hold/warn/allow
ps_security_config When tuning detection patterns List, enable, disable, change severity of patterns

Audit

Tool When to call it What it does
ps_audit_get When reviewing what happened Full audit trail with filters

Architecture

src/
├── gatekeeper/       # 8-stage validation pipeline (core enforcement)
│   ├── index.ts      #   Pipeline orchestrator + agent eviction policy
│   ├── validator.ts  #   Frame structural/semantic/chain validation
│   ├── interceptor.ts#   Permission gate with confidence thresholds
│   ├── hold-manager.ts#  Human-in-the-loop hold queue
│   ├── resolver.ts   #   Frame resolution with operator overrides
│   └── coverage.ts   #   Coverage confidence calculator
├── drift/            # Behavioral drift detection
│   ├── circuit-breaker.ts  # Per-agent halt/resume
│   ├── baseline.ts         # Behavioral baseline comparison
│   ├── tripwire.ts         # Anomaly tripwires
│   └── monitor.ts          # Continuous monitoring
├── security/         # Security vulnerability scanning
│   ├── patterns.ts   #   10 detection patterns (regex-based)
│   └── scanner.ts    #   Scanner engine + severity classification
├── symbols/          # SQLite-backed entity registry (11 CRUD tools)
├── policies/         # Policy file loader + overlay system
├── operator/         # Operator configuration
├── tools/            # MCP tool implementations
│   ├── registry.ts   #   29 core tools
│   ├── ps_hold.ts    #   5 hold tools
│   └── ps_security.ts#   3 security tools
├── handlers/         # Tool dispatch + metadata registry
├── core/             # Logging, errors, result patterns
└── server.ts         # MCP server entry point (stdio transport)

Performance

Metric Value
Validation latency 0.103ms avg (P95: 0.121ms)
Operations/second 6,977
Holds/second 33,333
Security scan (100 lines) < 10ms
Test suite 658 tests, 21 test files

Requirements

  • Node.js >= 20.0.0
  • TypeScript 5.3+ (build from source)
  • No external services required — SQLite for symbols, in-memory for everything else

Related Projects

  • deeptrend — Structured AI trend feed for autonomous agents. Curated from 14+ sources, synthesized via LLM Counsel, published every 6h as JSON Feed, RSS, and llms.txt. Designed as a data source for agent monitoring pipelines.

License

MIT

Recommended Servers

playwright-mcp

playwright-mcp

A Model Context Protocol server that enables LLMs to interact with web pages through structured accessibility snapshots without requiring vision models or screenshots.

Official
Featured
TypeScript
Magic Component Platform (MCP)

Magic Component Platform (MCP)

An AI-powered tool that generates modern UI components from natural language descriptions, integrating with popular IDEs to streamline UI development workflow.

Official
Featured
Local
TypeScript
Audiense Insights MCP Server

Audiense Insights MCP Server

Enables interaction with Audiense Insights accounts via the Model Context Protocol, facilitating the extraction and analysis of marketing insights and audience data including demographics, behavior, and influencer engagement.

Official
Featured
Local
TypeScript
VeyraX MCP

VeyraX MCP

Single MCP tool to connect all your favorite tools: Gmail, Calendar and 40 more.

Official
Featured
Local
graphlit-mcp-server

graphlit-mcp-server

The Model Context Protocol (MCP) Server enables integration between MCP clients and the Graphlit service. Ingest anything from Slack to Gmail to podcast feeds, in addition to web crawling, into a Graphlit project - and then retrieve relevant contents from the MCP client.

Official
Featured
TypeScript
Kagi MCP Server

Kagi MCP Server

An MCP server that integrates Kagi search capabilities with Claude AI, enabling Claude to perform real-time web searches when answering questions that require up-to-date information.

Official
Featured
Python
E2B

E2B

Using MCP to run code via e2b.

Official
Featured
Neon Database

Neon Database

MCP server for interacting with Neon Management API and databases

Official
Featured
Exa Search

Exa Search

A Model Context Protocol (MCP) server lets AI assistants like Claude use the Exa AI Search API for web searches. This setup allows AI models to get real-time web information in a safe and controlled way.

Official
Featured
Qdrant Server

Qdrant Server

This repository is an example of how to create a MCP server for Qdrant, a vector search engine.

Official
Featured