AgentLens
БесплатноНе проверенAI-agent observability server whose distinguishing feature is a SHA-256 hash-chained, tamper-evident audit log with chain verification and signed export. Works
Описание
AI-agent observability server whose distinguishing feature is a SHA-256 hash-chained, tamper-evident audit log with chain verification and signed export. Works with Claude Desktop, Cursor, and any MCP client.
README
🔍 AgentLens
Open-source observability for AI agents — with a tamper-evident audit trail
Every event SHA-256 hash-chained & cryptographically verifiable — built for EU AI Act Article 12 record-keeping
📖 Documentation · Quick Start · Dashboard · ☁️ Cloud
📑 Table of Contents
- Tamper-Evident by Design
- Quick Start
- Architecture
- Integration Guides
- Key Features
- Dashboard
- AgentLens Cloud
- Packages
- API Overview
- CLI
- Development
- Contributing
- AgentKit Ecosystem
- License
AgentLens is a flight recorder for AI agents. It captures every LLM call, tool invocation, approval decision, and error — then presents it through a queryable API and real-time web dashboard.
🔒 Tamper-evident by design
What sets AgentLens apart from other observability tools: every event is SHA-256 hash-chained to the one before it, the same way git commits and blockchains are linked. The audit log is append-only and cryptographically verifiable — alter, delete, or reorder a single record after the fact and verification fails, pointing at the exact event that broke. Purpose-built for the record-keeping obligations of EU AI Act Article 12 and the emerging IETF Agent Audit Trail work.
See it for yourself in 30 seconds (needs Docker):
git clone https://github.com/agentkitai/agentlens && cd agentlens
./demo/aha.sh
1/5 Starting AgentLens (SQLite, zero-config)… ✓ up at http://localhost:3400
2/5 Ingesting a 5-event agent trace… ✓ 5 events ingested
3/5 Verifying the hash chain… ✓ CHAIN VALID — no tampering detected
4/5 Tampering with one event in the database… ✓ altered llm_call (changed the logged model)
5/5 Re-verifying the hash chain… ✗ CHAIN BROKEN — tampering detected ✅
The demo ingests a real trace, verifies the chain (passes), edits one record directly in the database behind the audit log's back, then re-verifies (fails). Auditors get a signed, verifiable JSON snapshot from GET /api/audit/verify/export.
Five ways to integrate — pick what fits your stack:
| Integration | Language | Effort | Capture |
|---|---|---|---|
| 🔭 OpenTelemetry | Any | Point your OTLP exporter | Any gen_ai.*-instrumented agent — no AgentLens SDK |
| 🤖 OpenClaw Plugin | OpenClaw | Copy & enable | Every Anthropic call — prompts, tokens, cost, tools — zero code |
| 🐍 Python Auto-Instrumentation | Python | 1 line | Every OpenAI / Anthropic / LangChain call — deterministic |
| 🔌 MCP Server | Any (MCP) | Config block | Tool calls, sessions, events from Claude Desktop / Cursor |
| 📦 SDK | Python, TypeScript | Code | Full control — log events, query analytics, build integrations |
🚀 Quick Start
One command — server + dashboard on SQLite, zero config:
docker run -p 3400:3400 -e AUTH_DISABLED=true -e JWT_SECRET=dev-secret ghcr.io/agentkitai/agentlens
# Open http://localhost:3400
Or without Docker:
npx @agentkitai/agentlens-server
# http://localhost:3400 with SQLite — zero config
AUTH_DISABLED=trueis for a quick local trial (JWT_SECRETis still required by the hardened image). For anything shared, dropAUTH_DISABLED, set a realJWT_SECRET, and create an API key (below).
Full stack (Postgres + Redis, auth, TLS) — runs from source:
git clone https://github.com/agentkitai/agentlens && cd agentlens
cp .env.example .env
docker compose up
# production overlay (auth, restart policies):
docker compose -f docker-compose.yml -f docker-compose.prod.yml up
Create an API Key
curl -X POST http://localhost:3400/api/keys \
-H "Content-Type: application/json" \
-d '{"name": "my-agent"}'
Save the als_... key from the response — it's shown only once. Then head to the Integration Guides to instrument your agent.
🏗️ Architecture
graph TB
subgraph Agents["Your AI Agents"]
PY["Python App<br/>(OpenAI, Anthropic, LangChain)"]
MCP_C["MCP Client<br/>(Claude Desktop, Cursor)"]
TS["TypeScript App"]
OC["OpenClaw Plugin"]
end
PY -->|"agentlensai.init()<br/>auto-instrumentation"| SERVER
MCP_C -->|MCP Protocol| MCP_S["@agentkitai/agentlens-mcp"]
MCP_S -->|HTTP| SERVER
TS -->|"@agentkitai/agentlens-sdk"| SERVER
OC -->|HTTP| SERVER
subgraph Server["@agentkitai/agentlens-server"]
direction TB
INGEST[Ingest Engine]
QUERY[Query Engine]
ALERT[Alert Engine]
LLM_A[LLM Analytics]
HEALTH[Health Scoring]
COST[Cost Optimizer]
REPLAY[Session Replay]
BENCH[Benchmark Engine]
GUARD[Guardrails]
end
SERVER --> DB[(SQLite / Postgres)]
SERVER --> DASH["Dashboard<br/>(React SPA)"]
EXT["AgentGate / FormBridge"] -->|Webhook| SERVER
🔧 Integration Guides
🔭 OpenTelemetry (any GenAI agent — no SDK)
If your agent is already instrumented with the OpenTelemetry GenAI semantic conventions — via OpenLLMetry, OpenInference, or the official OTel instrumentations — just point its OTLP exporter at AgentLens. No AgentLens SDK required.
# Send standard OTLP/HTTP to AgentLens (JSON or protobuf, /v1/traces)
export OTEL_EXPORTER_OTLP_ENDPOINT=http://localhost:3400
export OTEL_EXPORTER_OTLP_TRACES_ENDPOINT=http://localhost:3400/v1/traces
AgentLens maps gen_ai.* spans into its model and into the tamper-evident audit log:
OTel GenAI span (gen_ai.operation.name) |
Becomes |
|---|---|
chat / text_completion / generate_content |
a paired llm_call + llm_response (model, provider, messages, usage.input_tokens/output_tokens, finish reason, latency, cost) |
execute_tool |
tool_call (gen_ai.tool.name, gen_ai.tool.call.id, arguments) |
embeddings |
embedding event with token usage |
invoke_agent / create_agent |
agent-invocation event |
Each OTel trace maps to a session (or gen_ai.conversation.id if present), and every event is hash-chained like any other — so traces from any GenAI framework get the same verifiable audit trail. Set OTLP_AUTH_TOKEN to require a bearer token on the OTLP endpoints in production.
Cost with no SDK: OTel GenAI instrumentation reports tokens but rarely cost. AgentLens reconstructs
costUsdfrom the model's per-1M-token pricing (fuzzy-matched on the model id), so OTel-only agents get the same cost analytics as SDK-instrumented ones — no per-call cost attribute required.
🤖 OpenClaw Plugin
If you're running OpenClaw, the AgentLens plugin captures every Anthropic API call automatically — prompts, completions, token usage, costs, latency, and tool calls.
cp -r packages/relay-plugin /usr/lib/node_modules/openclaw/extensions/agentlens-relay
openclaw config patch '{"plugins":{"entries":{"agentlens-relay":{"enabled":true}}}}'
openclaw gateway restart
Set AGENTLENS_URL if your AgentLens instance isn't on localhost:3400. See the plugin README for details.
🐍 Python Auto-Instrumentation
One line — every LLM call captured automatically across 9 providers (OpenAI, Anthropic, LiteLLM, AWS Bedrock, Google Vertex AI, Google Gemini, Mistral AI, Cohere, Ollama):
pip install agentlensai[all-providers]
import agentlensai
agentlensai.init(
url="http://localhost:3400",
api_key="als_your_key",
agent_id="my-agent",
)
# Every LLM call is now captured automatically
Key guarantees: ✅ Deterministic · ✅ Fail-safe · ✅ Non-blocking · ✅ Privacy (init(redact=True))
🔌 MCP Integration
For Claude Desktop, Cursor, or any MCP client — add to your config:
{
"mcpServers": {
"agentlens": {
"command": "npx",
"args": ["@agentkitai/agentlens-mcp"],
"env": {
"AGENTLENS_API_URL": "http://localhost:3400",
"AGENTLENS_API_KEY": "als_your_key_here"
}
}
}
}
AgentLens ships 22 MCP tools — covering core observability, intelligence & analytics, and operations. Full MCP tool reference →
📦 Programmatic SDK
Python:
pip install agentlensai
from agentlensai import AgentLensClient
client = AgentLensClient("http://localhost:3400", api_key="als_your_key")
sessions = client.get_sessions()
analytics = client.get_llm_analytics()
TypeScript:
npm install @agentkitai/agentlens-sdk
import { AgentLensClient } from '@agentkitai/agentlens-sdk';
const client = new AgentLensClient({ baseUrl: 'http://localhost:3400', apiKey: 'als_your_key' });
const sessions = await client.getSessions();
✨ Key Features
- 🐍 Python Auto-Instrumentation —
agentlensai.init()captures every LLM call across 9 providers automatically. Deterministic — no reliance on LLM behavior. - 🔌 MCP-Native — Ships as an MCP server. Works with Claude Desktop, Cursor, and any MCP client.
- 🔭 OpenTelemetry GenAI — Ingests
gen_ai.*OTLP traces from any OTel-instrumented agent (OpenLLMetry, OpenInference, official OTel) — no AgentLens SDK required. - 🧠 LLM Call Tracking — Full prompt/completion visibility, token usage, cost aggregation, latency measurement, and privacy redaction.
- 📊 Real-Time Dashboard — Session timelines, event explorer, LLM analytics, cost tracking, and alerting.
- 🔒 Tamper-Evident Audit Trail — Append-only event storage with SHA-256 hash chains per session.
- 💰 Cost Tracking — Track token usage and estimated costs per session, per agent, per model. Alert on cost spikes.
- 🚨 Alerting — Configurable rules for error rate, cost threshold, latency anomalies, and inactivity.
- ❤️🩹 Health Scores — 5-dimension health scoring with trend tracking.
- 💡 Cost Optimization — Complexity-aware model recommendation engine with projected savings.
- 📼 Session Replay — Step-through any past session with full context reconstruction.
- ⚖️ A/B Benchmarking — Statistical comparison of agent variants using Welch's t-test and chi-squared analysis.
- 🛡️ Guardrails — Automated safety rules with dry-run mode for safe testing.
- 🔌 Framework Plugins — LangChain, CrewAI, AutoGen, Semantic Kernel — auto-detection, fail-safe, non-blocking.
- 🔗 AgentKit Ecosystem — Integrations with AgentGate, FormBridge, Lore, and AgentEval.
- 🔒 Tenant Isolation — Multi-tenant support with per-tenant data scoping and API key binding.
- 🏠 Self-Hosted — SQLite by default, no external dependencies. MIT licensed.
📸 Dashboard
AgentLens ships with a real-time web dashboard for monitoring your agents.
📸 Dashboard Screenshots (click to expand)
Overview — At-a-Glance Metrics

The overview page shows live metrics — sessions, events, errors, and active agents — with a 24-hour event timeline chart, recent sessions with status badges, and a recent errors feed.
Sessions — Track Every Agent Run

Every agent session with sortable columns: agent name, status, start time, duration, event count, error count, and total cost.
Session Detail — Timeline & Hash Chain

Full event timeline with tamper-evident hash chain verification. Filter by event type, view cost breakdown.
Events Explorer — Search & Filter Everything

Searchable, filterable view of every event across all sessions.
🧠 LLM Analytics — Prompt & Cost Tracking

Total LLM calls, cost, latency, and token usage across all agents with model comparison.
🧠 Session Timeline — LLM Call Pairing

LLM calls in session timeline with model, tokens, cost, and latency.
💬 Prompt Detail — Chat Bubble Viewer

Full prompt and completion in a chat-bubble style viewer with metadata panel.
❤️🩹 Health Overview — Agent Reliability

5-dimension health score for every agent with trend tracking.
💡 Cost Optimization — Model Recommendations

Analyzes LLM call patterns and recommends cheaper model alternatives with confidence levels.
📼 Session Replay — Step-Through Debugger

Step through any past session event by event with full context reconstruction.
⚖️ Benchmarks — A/B Testing for Agents

Create and manage A/B experiments with statistical significance testing.
🛡️ Guardrails — Automated Safety Rules

Create and manage automated safety rules with trigger history and activity feed.
☁️ AgentLens Cloud
Don't want to self-host? AgentLens Cloud is a fully managed SaaS — same SDK, zero infrastructure:
import agentlensai
agentlensai.init(cloud=True, api_key="als_cloud_your_key_here", agent_id="my-agent")
- Same SDK, one parameter change — switch
url=tocloud=True - Managed Postgres — multi-tenant with row-level security
- Team features — organizations, RBAC, audit logs
- No server to run — dashboard at app.agentlens.ai
📖 Cloud Setup Guide · Migration Guide · Troubleshooting
📦 Packages
Python (PyPI)
| Package | Description | PyPI |
|---|---|---|
| agentlensai | Python SDK + auto-instrumentation for 9 LLM providers | PyPI |
TypeScript / Node.js (npm)
| Package | Description | npm |
|---|---|---|
| @agentkitai/agentlens-server | Hono API server + dashboard serving | npm |
| @agentkitai/agentlens-mcp | MCP server for agent instrumentation | npm |
| @agentkitai/agentlens-sdk | Programmatic TypeScript client | npm |
| @agentkitai/agentlens-core | Shared types, schemas, hash chain utilities | npm |
| @agentkitai/agentlens-cli | Command-line interface | npm |
| @agentkitai/agentlens-dashboard | React web dashboard (bundled with server) | private |
🔌 API Overview
| Endpoint | Description |
|---|---|
POST /api/events |
Ingest events (batch) |
GET /api/events |
Query events with filters |
GET /api/sessions |
List sessions |
GET /api/sessions/:id/timeline |
Session timeline with hash chain verification |
GET /api/analytics |
Bucketed metrics over time |
⌨️ CLI
npx @agentkitai/agentlens-cli health # Overview of all agents
npx @agentkitai/agentlens-cli health --agent my-agent # Detailed health with dimensions
npx @agentkitai/agentlens-cli optimize # Cost optimization recommendations
Both commands support --format json for machine-readable output. See agentlens health --help for all options.
🛠️ Development
git clone https://github.com/agentkitai/agentlens.git
cd agentlens
pnpm install
pnpm typecheck && pnpm test && pnpm lint # Run all checks
pnpm dev # Start dev server
Requirements: Node.js ≥ 20.0.0 · pnpm ≥ 10.0.0
🤝 Contributing
We welcome contributions! See CONTRIBUTING.md for setup instructions, coding standards, and the PR process.
🧰 AgentKit Ecosystem
| Project | Description | |
|---|---|---|
| AgentLens | Observability & tamper-evident audit trail for AI agents | ⬅️ you are here |
| AgentGate | Human-in-the-loop approval gateway + reactive guardrails | |
| Lore | Cross-agent memory and lesson sharing | |
| AgentEval | Testing & evaluation framework | |
| FormBridge | Agent-human mixed-mode forms |
📄 License
Установка AgentLens
У этого сервера нет опубликованного пакета — он собирается из исходников. Открой репозиторий и следуй инструкции в README.
▸ github.com/agentkitai/agentlensFAQ
AgentLens MCP бесплатный?
Да, AgentLens MCP бесплатный — установка в пару кликов через Unyly без оплаты.
Нужен ли API-ключ для AgentLens?
Нет, AgentLens работает без API-ключей и переменных окружения.
AgentLens — hosted или self-hosted?
Self-hosted: сервер запускается локально на твоей машине командой из раздела установки.
Как установить AgentLens в Claude Desktop, Claude Code или Cursor?
Открой AgentLens на unyly.org, выбери вкладку своего клиента (Claude Desktop, Claude Code, Cursor) и нажми Install — конфиг сгенерируется автоматически, без правки JSON.
Похожие MCP
Fetch
Web content fetching and conversion for efficient LLM usage.
AWS KB Retrieval
Retrieval from AWS Knowledge Base using Bedrock Agent Runtime.
автор: modelcontextprotocolSpring AI MCP Server
Provides auto-configuration for setting up an MCP server in Spring Boot applications.
llm-analysis-assistant
A very streamlined mcp client that supports calling and monitoring stdio/sse/streamableHttp, and can also view request responses through the /logs page. It also
автор: xuzexin-hzCompare AgentLens with
Не уверен что выбрать?
Найди свой стек за 60 секунд
Автор?
Embed-бейдж для README
Похожее
Все в категории ai
