Vigil
Routes alerts from Vigil to Discord channels via webhook triggers.
Allows emitting signals from GitHub Actions workflows, enabling CI/CD pipelines to update agent awareness.
Routes alerts from Vigil to Slack channels via webhook triggers.
Vigil
Observability and awareness infrastructure for AI agents.
Vigil is two layers in one package:
MCPWatch — the silent-failure watchdog for MCP servers. One-line instrumentation for any Python MCP server (FastMCP and low-level
mcp.server.lowlevel.Server). Gateways and dashboards already give you latency and error charts. The thing nobody catches is the call that looks successful but returns nothing: empty, null, or blank content with no error raised. MCPWatch flags those as a distinctsilentstatus, on top of per-tool latency (p50/p95/p99), error rates, andisErrorresponses. Used in production across 95+ MCP tools.Awareness platform — daemon-compiled context, signal protocol, session handoff, frame-based tool filtering, MCP server. The nervous system layer most agent frameworks skip.
Most agent memory tools are filing cabinets. Vigil is a stethoscope and a nervous system.
The Problem
MCP servers fail silently. A tool returns empty content, the SDK swallows the exception, the agent treats it as "no results found" and you find out three days later from a customer ticket. Latency and error monitoring is now table stakes (gateways, OpenTelemetry, and FastMCP itself emit it). But none of them flag the empty-but-not-errored response — the failure mode your agent quietly hallucinates around. That gap is what MCPWatch exists to close.
Agents forget everything between sessions. They load all tools regardless of context (wasting 50K+ tokens). They can't coordinate across sessions or hand off work to each other. Every conversation starts cold.
Related MCP server: mcpstat
What Vigil Does
MCPWatch — the MCP silent-failure watchdog — One line wraps any Python MCP server (FastMCP or low-level mcp.server.lowlevel.Server). Its headline job: detect silent failures — calls that return empty, null, or blank content with no error raised — and record them as a distinct silent status that shows up in health, per-tool stats, and alerts. It also tracks tool-call latency (p50/p95/p99), per-tool error rates, isError responses, and call volume over time. REST API, CLI, and alert hooks. MIT, no config required.
Awareness Daemon — A background process compiles system state every 90 seconds. Agents boot with pre-compiled context in <1 second. No startup latency, no "remind me what we were doing."
Frame-Based Tool Filtering — Tag tools with context frames. An agent in "backend" mode sees 14 tools, not 95. Saves 50-90% of tool-definition tokens per session.
Signal Protocol — Lightweight event bus with content budgets. Agents emit signals (max 300-800 chars by type), the daemon synthesizes them into awareness. Agents coordinate without direct communication.
Session Handoff — Agents end sessions with structured summaries (files touched, decisions, next steps). The next agent boots with full context of what happened and what to do next.
Signal Compaction — Old signals get summarized, not deleted. Tiered retention (raw → daily → weekly → monthly) keeps context fresh without losing history.
MCP Server — Expose Vigil as an MCP tool server. Any Claude Code, Claude Desktop, Cursor, or Windsurf agent connects and gets persistent awareness instantly.
Articles
Your MCP Servers Are Flying Blind (Here's How to Fix It) — MCPWatch deep dive on Dev.to
Install
# Core library (daemon, signals, handoff, compaction)
pip install vigil-agent
# With MCP server support
pip install vigil-agent[mcp]30-Second Demo
See Vigil work in four commands:
pip install vigil-agent
vigil init
vigil signal my-agent "Hello from Vigil!"
vigil statusExpected output:
Current Awareness
─────────────────
Agents: my-agent (1 signal)
Latest: "Hello from Vigil!" (just now)
Frame: default
Status: active — 1 unacknowledged signalThat's it — your agent has awareness. Read on for the full quickstart with daemon, handoff, and MCP server.
Quickstart
# Initialize
vigil init
# Emit a signal
vigil signal my-agent "Deployed new API endpoint"
# Start the daemon (compiles awareness every 90s)
vigil daemon start
# Check awareness
vigil status
# See what agents boot with
vigil boot --json
# End a session with a structured handoff
vigil handoff my-agent "Shipped auth module" --files "auth.py, tests.py" --next-steps "Write docs"
# Resume from where the last agent left off
vigil resume next-agent
# Start as an MCP server (Claude Code / Claude Desktop)
vigil serve
# Run signal compaction manually
vigil compact --dry-runMCP Server
Vigil runs as an MCP server so any AI agent can connect and get persistent awareness.
# stdio (Claude Code, Claude Desktop)
vigil serve
# SSE (remote clients)
vigil serve --transport sse --port 8300Claude Desktop config (claude_desktop_config.json):
{
"mcpServers": {
"vigil": {
"command": "vigil",
"args": ["serve"]
}
}
}12 MCP tools available:
Tool | Description |
| Boot with pre-compiled hot context |
| Force a fresh awareness compilation |
| Emit a signal from an agent |
| Get current awareness state |
| Read recent signals |
| End session with structured handoff |
| Resume from last handoff |
| Get briefing of last N handoffs |
| Find agents that have gone silent |
| Manage priority work queue |
| Manage context frames |
| List known agents and activity |
Python API
from vigil import VigilDB, SignalBus, AwarenessCompiler, HandoffProtocol
# Initialize
db = VigilDB("vigil.db")
bus = SignalBus(db)
compiler = AwarenessCompiler(db)
proto = HandoffProtocol(db)
# Emit signals from agents
bus.emit("backend-agent", "Deployed auth service v2")
bus.emit("frontend-agent", "Updated dashboard layout")
# Compile awareness
compiler.synthesize()
context = compiler.compile()
# {'frame': 'backend', 'awareness': '...', 'focus': [...], 'compiled_at': '...'}
# Boot an agent with pre-compiled context (<1 second)
hot_context = compiler.boot()
# Structured session handoff
proto.end_session(
agent_id="backend-agent",
summary="Shipped auth v2 with JWT tokens",
files_touched=["auth.py", "middleware.py"],
decisions=["Switched from session cookies to JWT"],
next_steps=["Add rate limiting", "Write integration tests"],
)
# Next agent resumes with full context
context = proto.resume("next-agent")
# {'awareness': ..., 'last_handoff': {...}, 'signals_since_handoff': [...], 'pending_next_steps': [...]}Frame-Based Tool Filtering
from vigil.registry import tool, get_tools, tool_count
# Tag tools with frames
@tool(name="deploy", description="Deploy to production", frames=["backend", "devops"])
async def deploy(args):
return {"content": [{"type": "text", "text": f"Deployed {args['service']}"}]}
@tool(name="render", description="Render component", frames=["frontend"])
async def render(args):
...
@tool(name="health", description="Health check", frames=["core"]) # Always visible
async def health(args):
...
# Filter by context
tool_count() # 3 (all tools)
tool_count("backend") # 2 (deploy + health)
tool_count("frontend") # 2 (render + health)Signal Compaction
from vigil import SignalCompactor
compactor = SignalCompactor(db)
# Run compaction (tiered: raw → daily → weekly → monthly)
stats = compactor.compact()
# {'daily_summaries': 5, 'weekly_digests': 2, 'monthly_snapshots': 1, 'signals_compacted': 47}
# Browse compacted history
history = compactor.get_history(days=30, agent="backend-agent")Signal Types & Budgets
Type | Budget | Use |
| 400 chars | Regular activity updates |
| 600 chars | Session conclusions |
| 800 chars | Comprehensive summaries |
| 300 chars | Urgent notifications |
Architecture
Agents emit signals → SQLite → Daemon compiles → Hot context → Agents boot instantly
↓
Frame detection
Awareness synthesis
Signal compaction
Focus queueZero infrastructure — SQLite storage, no Redis/Postgres/Docker required
Framework-agnostic — Works with any MCP-compatible client, or standalone
Lightweight — Pure Python, no heavy dependencies (mcp is optional)
Integrations
Ready-to-use configs for popular AI tools. See the examples/ directory for full setup guides.
Tool | Setup |
Claude Code |
|
Claude Desktop | Add to |
Cursor | Add to |
GitHub Actions | Emit signals from CI/CD (workflow) |
Slack | Route alerts to Slack via triggers (guide) |
Discord | Route alerts to Discord via triggers (guide) |
Shell Completion
# Bash
source completions/vigil.bash
# Zsh
cp completions/vigil.zsh ~/.zsh/completions/_vigilCLI Reference
Command | Description |
| Initialize a new project |
| Interactive setup wizard |
| Start the awareness daemon |
| Check daemon compilation status |
| Start as MCP server (stdio or SSE) |
| Emit a signal |
| Show current awareness |
| Show compiled hot context |
| List registered frames |
| List tools (optionally filtered) |
| Write a structured session handoff |
| Resume from last handoff |
| Browse compacted signal history |
| List known agents |
| Run signal compaction manually |
| Store a knowledge entry |
| Fuzzy-search knowledge |
| List all knowledge entries |
| Delete a knowledge entry |
| Auto-extract knowledge from signal patterns |
| Export state to markdown |
| MCP server health (calls, errors, latency) |
| Probe MCP server in CI (exit 0/1) |
| Diagnose common issues |
| Show version |
MCP Production Observability
Monitor any MCP server with one line of code. Tracks tool calls, latency, errors, and emits alerts automatically.
from mcp.server.fastmcp import FastMCP
from vigil.mcpwatch import instrument
mcp = FastMCP("my-server")
@mcp.tool()
async def search(query: str) -> str:
return "results"
# One line — all tools are now monitored
watch = instrument(mcp)What it monitors:
Silent failures — calls that return empty, null, or blank content with no error raised. Recorded as a distinct
silentstatus, surfaced in health and stats, and alerted on. This is the headline feature.Every tool call: name, duration, success / error / silent
Latency spikes (configurable threshold, default 5s)
Error patterns with full tracebacks (including low-level
isErrorresponses)Server silence (no calls at all for N minutes)
Three ways to use it:
# 1. Local Vigil — store in same DB as your signals
watch = instrument(mcp, db_path="vigil.db")
# 2. Vigil Cloud — send to your hosted instance
watch = instrument(mcp, api_key="vgl_...")
# 3. Memory-only — just in-process stats
watch = instrument(mcp)Check health anytime:
health = watch.health()
# {'server': 'my-server', 'status': 'degraded', 'total_calls': 1247,
# 'total_errors': 25, 'error_rate': 0.02,
# 'total_silent': 140, 'silent_rate': 0.112, # <- the failures nobody else flags
# 'tools': {'search': {'avg_ms': 42, 'p95_ms': 180, 'silent_count': 140}}}
watch.recent_silent() # the actual empty/null calls, per toolA tool that returns "", None, or [] with no exception is the classic MCP
blind spot — the SDK reports success, your agent improvises around the void.
MCPWatch turns that into a first-class signal.
CLI:
vigil mcp-health # All monitored servers
vigil mcp-health -s my-server # Specific serverREST API (6 endpoints):
Endpoint | Description |
| Server health summary (incl. silent rate) |
| Per-tool analytics |
| Recent silent failures (empty/null returns) |
| Recent errors |
| p50/p95/p99 percentiles |
| Call volume over time |
Why Not Just Use Mem0/Letta/LangGraph?
Vigil | Mem0 | Letta | LangGraph | |
Approach | Awareness daemon | Memory retrieval | Stateful runtime | State machine |
Context | Pre-compiled, instant boot | Query on demand | LLM-managed | Checkpoint-based |
Tool filtering | Frame-based (50-90% savings) | None | None | None |
Multi-agent | Signal protocol + handoff | Shared memory | Single agent | Graph edges |
Compaction | Tiered (daily/weekly/monthly) | None | LLM-managed | None |
MCP native | Built-in server | No | No | No |
Infrastructure | SQLite (zero setup) | API + LLM costs | Full runtime | LangChain ecosystem |
Lock-in | None (framework-agnostic) | Mem0 API | Letta platform | LangChain |
Vigil is the nervous system. Others are the filing cabinet. Use them together — Vigil handles awareness and coordination, Mem0/Letta handles deep memory.
License
MIT
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