AgentMesh

March 2, 2026 · View on GitHub

AgentMesh — Community Edition

SSL for AI Agents

The trust, identity, and governance layer for production AI agent systems

Identity · Trust · Reward · Governance

GitHub Stars Sponsor CI License Python TypeScript Go PyPI Downloads Downloads OWASP Agent-OS Compatible Featured in awesome-llm-apps Discussions Integrated in LlamaIndex awesome-AI-Agents awesome-copilot awesome-opentelemetry

If this project helps you, please star it! It helps others discover AgentMesh.

🔗 Part of the Agent Governance Ecosystem — Works with Agent OS (kernel), Agent Hypervisor (runtime), and Agent SRE (reliability)

📦 Install the full stack: pip install ai-agent-governance[full]PyPI | GitHub

Quick StartMCP ProxyExamplesAgent OSAgent Hypervisor

Trusted By

Dify LlamaIndex Agent-Lightning LangGraph OpenAI Agents OpenClaw

awesome-llm-apps Awesome-AI-Agents awesome-copilot awesome-opentelemetry awesome-agent-skills awesome-mcp-servers awesome-devops-mcp

1,300+

Tests Passing

6

Framework Integrations

170K+

Combined Stars of
Integrated Projects

4

Protocol Bridges
(A2A · MCP · IATP · AI Card)

<1ms p99

Full Governance Pipeline

🏢 Production Integrations

FrameworkStarsStatusWhat We Ship
Dify65K ⭐✅ MergedTrust verification plugin in Dify Marketplace
LlamaIndex47K ⭐✅ MergedTrustedAgentWorker + TrustGatedQueryEngine
Microsoft Agent-Lightning15K ⭐✅ MergedGovernance kernel for RL training safety
LangGraph24K ⭐📦 PyPITrust-scored state transitions
OpenAI Agents SDK📦 PyPITool-level governance guardrails
Haystack22K ⭐🔄 In ReviewGovernancePolicyChecker + TrustGate components

AgentMesh is "SSL for AI Agents" — the trust and identity layer that makes multi-agent systems enterprise-ready. Every agent gets a cryptographic identity. Every interaction is verified. Every action is audited.


AgentMesh Terminal Demo

Overview

AgentMesh is the first platform purpose-built for the Governed Agent Mesh — the cloud-native, multi-vendor network of AI agents that will define enterprise operations.

The protocols exist (A2A, MCP, IATP). The agents are shipping. The trust layer does not. AgentMesh fills that gap.

┌─────────────────────────────────────────────────────────────────────────────┐
│                           AGENTMESH ARCHITECTURE                            │
├─────────────────────────────────────────────────────────────────────────────┤
│  LAYER 4  │  Reward & Learning Engine                                       │
│           │  Per-agent trust scores · Behavioral rewards · Adaptive          │
├───────────┼─────────────────────────────────────────────────────────────────┤
│  LAYER 3  │  Governance & Compliance Plane                                  │
│           │  Policy engine · EU AI Act / SOC2 / HIPAA · Audit logs          │
├───────────┼─────────────────────────────────────────────────────────────────┤
│  LAYER 2  │  Trust & Protocol Bridge                                        │
│           │  A2A · MCP · IATP · Protocol translation · Capability scoping   │
├───────────┼─────────────────────────────────────────────────────────────────┤
│  LAYER 1  │  Identity & Zero-Trust Core                                     │
│           │  Agent CA · Ephemeral creds · SPIFFE/SVID · Human sponsors      │
└───────────┴─────────────────────────────────────────────────────────────────┘

Why AgentMesh?

The Problem

  • 40:1 to 100:1 — Non-human identities now outnumber human identities in enterprises
  • AI agents are the fastest-growing, least-governed identity category
  • A2A gives agents a common language. MCP gives agents tools. Neither enforces trust.

The Solution

AgentMesh provides:

CapabilityDescription
Agent IdentityFirst-class identity with human sponsor accountability
Ephemeral Credentials15-minute TTL by default, auto-rotation
Protocol BridgeNative A2A, MCP, IATP with unified trust model
Reward EngineContinuous behavioral scoring
Compliance AutomationEU AI Act, SOC 2, HIPAA, GDPR mapping

How It Works

1. Agent Registration & DID Issuance

sequenceDiagram
    participant Agent
    participant CLI as AgentMesh CLI
    participant CA as Certificate Authority
    participant Registry as Agent Registry

    Agent->>CLI: agentmesh init --name my-agent --sponsor alice@company.com
    CLI->>CA: Request Ed25519 keypair & DID
    CA-->>CLI: did:mesh:my-agent + signed certificate
    CLI->>Agent: Write identity to local config
    Agent->>CLI: agentmesh register
    CLI->>Registry: Register DID + capabilities + sponsor
    Registry-->>CLI: Registration confirmed
    CLI-->>Agent: Agent ready (status: registered)

2. Trust Handshake Between Two Agents

sequenceDiagram
    participant A as Agent A
    participant Bridge as TrustBridge
    participant B as Agent B

    A->>Bridge: verify_peer(did:mesh:agent-b, min_trust=700)
    Bridge->>B: IATP challenge (nonce + timestamp)
    B-->>Bridge: Signed response (Ed25519 signature)
    Bridge->>Bridge: Verify signature & check trust score
    alt Trust score ≥ 700
        Bridge-->>A: Verification succeeded (score: 850)
        A->>Bridge: send_message(did:mesh:agent-b, payload)
        Bridge->>B: Deliver message
        B-->>Bridge: Acknowledge
        Bridge-->>A: Message delivered
    else Trust score < 700
        Bridge-->>A: Verification failed (score: 620)
    end

3. MCP Proxy Request Flow

sequenceDiagram
    participant Client as MCP Client (e.g. Claude)
    participant Proxy as AgentMesh Proxy
    participant Policy as Policy Engine
    participant Server as MCP Server

    Client->>Proxy: Tool call request
    Proxy->>Policy: Evaluate action against policy rules
    alt Action allowed
        Policy-->>Proxy: Allow
        Proxy->>Server: Forward tool call
        Server-->>Proxy: Tool result
        Proxy->>Proxy: Sanitize output & append verification footer
        Proxy-->>Client: Governed tool result
    else Action denied
        Policy-->>Proxy: Deny (rule: no-pii-export)
        Proxy-->>Client: Action blocked + reason
    end
    Proxy->>Proxy: Write audit log entry

4. Credential Rotation Lifecycle

sequenceDiagram
    participant Agent
    participant CA as Certificate Authority
    participant Registry as Agent Registry

    CA->>Agent: Issue ephemeral credential (TTL: 15 min)
    Note over Agent: Credential active

    loop Every 15 minutes
        Agent->>CA: Request credential rotation
        CA->>CA: Verify agent DID & trust score
        CA-->>Agent: New ephemeral credential (TTL: 15 min)
        CA->>Registry: Update credential fingerprint
        Note over Agent: Old credential invalidated
    end

    alt Trust breach detected
        Registry->>CA: Revoke credential immediately
        CA-->>Agent: Credential revoked
        Note over Agent: Agent must re-register
    end

5. Trust Score Update After Task Completion

sequenceDiagram
    participant Agent
    participant Governance as Governance Layer
    participant Reward as Reward Engine
    participant Registry as Agent Registry

    Agent->>Governance: Complete task (action: data_export)
    Governance->>Governance: Check compliance (SOC2, HIPAA)
    Governance-->>Reward: Task result + compliance status
    Reward->>Reward: Calculate score delta
    Note over Reward: Policy compliance: +10<br/>Task success: +5<br/>No violations: +3
    Reward->>Registry: Update trust score (820 → 838)
    Registry-->>Agent: Updated trust score: 838
    Reward->>Governance: Write audit log

Quick Start

# Install AgentMesh
pip install agentmesh-platform

# Set up Claude Desktop to use AgentMesh governance
agentmesh init-integration --claude

# Restart Claude Desktop - all MCP tools are now secured!

Claude will now route tool calls through AgentMesh for policy enforcement and trust scoring.

Option 2: Create a Governed Agent

# Initialize a governed agent in 30 seconds
agentmesh init --name my-agent --sponsor alice@company.com

# Register with the mesh
agentmesh register

# Start with governance enabled
agentmesh run

Option 3: Wrap Any MCP Server

# Proxy any MCP server with governance
agentmesh proxy --target npx --target -y \
  --target @modelcontextprotocol/server-filesystem \
  --target /path/to/directory

# Use strict policy (blocks writes/deletes)
agentmesh proxy --policy strict --target <your-mcp-server>

Installation

pip install agentmesh-platform

Or install with extra dependencies:

pip install agentmesh-platform[server]  # FastAPI server
pip install agentmesh-platform[dev]     # Development tools

Or from source:

git clone https://github.com/imran-siddique/agent-mesh.git
cd agent-mesh
pip install -e .

Examples & Integrations

Real-world examples to get started quickly:

ExampleUse CaseKey Features
Registration Hello WorldAgent registration walkthroughIdentity, DID, sponsor handshake
MCP Tool ServerSecure MCP server with governanceRate limiting, output sanitization, audit logs
Multi-Agent Customer ServiceCustomer support automationTrust handshakes, delegation, A2A
Healthcare HIPAAHIPAA-compliant data analysisCompliance automation, PHI protection, audit logs
DevOps AutomationJust-in-time DevOps credentialsEphemeral creds, capability scoping
GitHub PR ReviewCode review agentOutput policies, shadow mode, trust decay

Framework integrations:

📚 Browse all examples →

Trust Visualization Dashboard

Interactive Streamlit dashboard:

cd examples/06-trust-score-dashboard
pip install -r requirements.txt
streamlit run trust_dashboard.py

Tabs: Trust Network | Trust Scores | Credential Lifecycle | Protocol Traffic | Compliance

The AgentMesh Proxy: "SSL for AI Agents"

Problem: AI agents like Claude Desktop have unfettered access to your filesystem, database, and APIs through MCP servers. One hallucination could be catastrophic.

Solution: AgentMesh acts as a transparent governance proxy:

# Before: Unsafe direct access
{
  "mcpServers": {
    "filesystem": {
      "command": "npx",
      "args": ["-y", "@modelcontextprotocol/server-filesystem", "/Users/me"]
    }
  }
}

# After: Protected by AgentMesh
{
  "mcpServers": {
    "filesystem": {
      "command": "agentmesh",
      "args": [
        "proxy", "--policy", "strict",
        "--target", "npx", "--target", "-y",
        "--target", "@modelcontextprotocol/server-filesystem",
        "--target", "/Users/me"
      ]
    }
  }
}

What you get:

  • 🔒 Policy Enforcement - Block dangerous operations before they execute
  • 📊 Trust Scoring - Per-agent trust scoring (800-1000 scale)
  • 📝 Audit Logs - Record of every action
  • Verification Footers - Visual confirmation in outputs

Set it up in 10 seconds:

agentmesh init-integration --claude
# Restart Claude Desktop - done!

Learn more: Claude Desktop Integration Guide

Core Concepts

1. Agent Identity

Every agent gets a unique, cryptographically bound identity:

from agentmesh import AgentIdentity

identity = AgentIdentity.create(
    name="data-analyst-agent",
    sponsor="alice@company.com",  # Human accountability
    capabilities=["read:data", "write:reports"],
)

2. Scope Chains

Agents can delegate to sub-agents, but scope always narrows:

# Parent agent delegates to child
child_identity = parent_identity.delegate(
    name="summarizer-subagent",
    capabilities=["read:data"],  # Subset of parent's capabilities
)

3. Trust Handshakes (IATP)

Cross-agent communication requires trust verification:

from agentmesh import AgentIdentity, TrustBridge

# Create your identity first
identity = AgentIdentity.create(name="my-agent", sponsor="admin@company.com")

# Set up trust bridge
bridge = TrustBridge(agent_did=str(identity.did))

# Verify peer before communication
verification = await bridge.verify_peer(
    peer_did="did:mesh:other-agent",
    required_trust_score=700,
)

if verification.verified:
    print(f"Peer trusted: score={verification.trust_score}")

4. Reward Scoring

Every action is scored to maintain agent trust:

from agentmesh import RewardEngine

engine = RewardEngine()

# Actions are automatically scored
score = engine.get_agent_score("did:mesh:my-agent")
# Returns trust score on 0-1000 scale

5. Policy Engine

Declarative governance policies:

# policy.yaml
version: "1.0"
agent: "data-analyst-agent"

rules:
  - name: "no-pii-export"
    condition: "action.type == 'export' and data.contains_pii"
    action: "deny"
    
  - name: "rate-limit-api"
    condition: "action.type == 'api_call'"
    limit: "100/hour"
    
  - name: "require-approval-for-delete"
    condition: "action.type == 'delete'"
    action: "require_approval"
    approvers: ["security-team"]

Protocol Support

ProtocolStatusDescription
AI Card✅ AlphaCross-protocol identity standard (src/agentmesh/integrations/ai_card/)
A2A✅ AlphaAgent-to-agent coordination (full adapter in src/agentmesh/integrations/a2a/)
MCP✅ AlphaTool and resource binding (trust-gated server/client in src/agentmesh/integrations/mcp/)
IATP✅ AlphaTrust handshakes (via agent-os, graceful fallback if unavailable)
ACP🔜 PlannedLightweight messaging (protocol bridge supports routing, adapter not yet implemented)
SPIFFE✅ AlphaWorkload identity

Architecture

agentmesh/
├── identity/           # Layer 1: Identity & Zero-Trust
│   ├── agent_id.py     # Agent identity management (DIDs, Ed25519 keys)
│   ├── credentials.py  # Ephemeral credential issuance (15-min TTL)
│   ├── delegation.py   # Scope chains
│   ├── spiffe.py       # SPIFFE/SVID integration
│   ├── risk.py         # Continuous risk scoring
│   └── sponsor.py      # Human sponsor accountability

├── trust/              # Layer 2: Trust & Protocol Bridge
│   ├── bridge.py       # Multi-protocol trust bridge (A2A/MCP/IATP/ACP)
│   ├── handshake.py    # IATP trust handshakes
│   ├── cards.py        # Trusted agent cards
│   └── capability.py   # Capability scoping

├── governance/         # Layer 3: Governance & Compliance
│   ├── policy.py       # Declarative policy engine (YAML/JSON)
│   ├── compliance.py   # Compliance mapping (EU AI Act, SOC2, HIPAA, GDPR)
│   ├── audit.py        # Audit logs
│   └── shadow.py       # Shadow mode for policy testing

├── reward/             # Layer 4: Reward & Learning
│   ├── engine.py       # Multi-dimensional reward engine
│   ├── scoring.py      # Trust scoring
│   └── learning.py     # Adaptive learning

├── integrations/       # Protocol & framework adapters
│   ├── ai_card/        # AI Card standard (cross-protocol identity)
│   ├── a2a/            # Google A2A protocol support
│   ├── mcp/            # Anthropic MCP trust-gated server/client
│   ├── langgraph/      # LangGraph trust checkpoints
│   └── swarm/          # OpenAI Swarm trust-verified handoffs

├── cli/                # Command-line interface
│   ├── main.py         # agentmesh init/register/status/audit/policy
│   └── proxy.py        # MCP governance proxy

├── core/               # Low-level services
│   └── identity/ca.py  # Certificate Authority (SPIFFE/SVID)

├── storage/            # Storage abstraction (memory, Redis, PostgreSQL)

├── observability/      # OpenTelemetry tracing & Prometheus metrics

└── services/           # Service wrappers (registry, audit, reward)

Compliance

AgentMesh automates compliance mapping for:

  • EU AI Act — Risk classification, transparency requirements
  • SOC 2 — Security, availability, processing integrity
  • HIPAA — PHI handling, audit controls
  • GDPR — Data processing, consent, right to explanation
from agentmesh import ComplianceEngine, ComplianceFramework

compliance = ComplianceEngine(frameworks=[ComplianceFramework.SOC2, ComplianceFramework.HIPAA])

# Check an action for violations
violations = compliance.check_compliance(
    agent_did="did:mesh:healthcare-agent",
    action_type="data_access",
    context={"data_type": "phi", "encrypted": True},
)

# Generate compliance report
from datetime import datetime, timedelta
report = compliance.generate_report(
    framework=ComplianceFramework.SOC2,
    period_start=datetime.utcnow() - timedelta(days=30),
    period_end=datetime.utcnow(),
)

Threat Model

ThreatAgentMesh Defense
Prompt InjectionTool output sanitized at Protocol Bridge
Credential Theft15-min TTL, instant revocation on trust breach
Shadow AgentsUnregistered agents blocked at network layer
Delegation EscalationChains enforce scope narrowing
Cascade FailurePer-agent trust scoring isolates blast radius

🗺️ Roadmap

QuarterMilestone
Q1 2026✅ Core trust layer, identity, governance engine, 6 framework integrations
Q2 2026TypeScript SDK, Go SDK, Dashboard UI, Plugin Marketplace
Q3 2026AI Card spec contribution, CNCF Sandbox application
Q4 2026Managed cloud service (AgentMesh Cloud), SOC2 Type II

See our full roadmap for details.

Known Limitations & Open Work

Transparency about what's done and what isn't.

Not Yet Implemented

ItemLocationNotes
ACP protocol adaptertrust/bridge.pyBridge routes ACP messages, but no dedicated ACPAdapter class yet
Service wrapper for auditservices/audit/Core audit module (governance/audit.py) is complete; service layer wrapper is a TODO
Service wrapper for reward engineservices/reward_engine/Core reward engine (reward/engine.py) is complete; service layer wrapper is a TODO
Mesh control planeservices/mesh-control-plane/Placeholder directory; no implementation yet
Scope chain cryptographic verificationpackages/langchain-agentmesh/trust.pySimulated verification; full cryptographic chain validation not yet implemented

Integration Caveats (Dify)

The Dify integration has these documented limitations:

  • Request body signature verification (X-Agent-Signature header) is not yet verified by middleware
  • Trust score time decay is not yet implemented (scores don't decay over time)
  • Audit logs are in-memory only (not persistent across multi-worker deployments)
  • Environment variable configuration requires programmatic initialization (not auto-wired)

Infrastructure

  • Redis/PostgreSQL storage providers: Implemented but require real infrastructure for testing (unit tests use in-memory provider)
  • Kubernetes Operator: GovernedAgent CRD defined, but no controller/operator to reconcile it
  • SPIRE Integration: SPIFFE identity module exists; real SPIRE agent integration is stubbed
  • Performance targets: Latency overhead (<5ms) and throughput (10k reg/sec) are design targets, not yet benchmarked

Documentation

  • docs/rfcs/ — Directory exists, no RFCs written yet
  • docs/architecture/ — Directory exists, no architecture docs yet (see IMPLEMENTATION-NOTES.md for current notes)

Dependencies

AgentMesh builds on:

  • Agent OS — IATP protocol, Nexus trust exchange
  • Agent Hypervisor — Runtime session governance
  • Agent SRE — SLO monitoring, chaos testing
  • SPIFFE/SPIRE — Workload identity
  • OpenTelemetry — Observability

Frequently Asked Questions

What is an agent mesh? An agent mesh is a trust and communication infrastructure for multi-agent AI systems, analogous to a service mesh for microservices. AgentMesh provides identity (DID-based), per-agent trust scoring (0-1000 scale), ephemeral credentials, reward distribution, and automated compliance mapping.

How does AgentMesh handle trust between agents? Every agent gets a trust score from 0 to 1000 based on behavioral history, vouching from other agents, and compliance with governance policies. Trust scores gate what actions agents can perform and which sessions they can join. The score updates in real-time based on agent behavior.

What protocols does AgentMesh bridge? AgentMesh unifies three major protocols: Google's A2A (Agent-to-Agent) for inter-agent communication, Anthropic's MCP (Model Context Protocol) for tool integration, and IATP (Inter-Agent Trust Protocol) for cryptographic trust establishment. This means agents built on different frameworks can communicate through a single trust-verified channel.

Does AgentMesh help with regulatory compliance? Yes. AgentMesh provides automated compliance mapping for EU AI Act, SOC 2, HIPAA, and GDPR. Combined with audit trails and deterministic policy enforcement from Agent OS, it provides the documentation and safety guarantees needed for regulatory compliance.

Contributing

See CONTRIBUTING.md for guidelines.

License

Apache 2.0 — See LICENSE for details.


Agents shouldn't be islands. But they also shouldn't be ungoverned.

AgentMesh is the trust layer that makes the mesh safe enough to scale.