Skip to main content

Multi-Agent Coordination

Coordinate multiple LLM agents using shared Synapse minds, tasks, and chat.


Multi-Agent Coordination

When you have multiple LLM agents working on related tasks, Synapse provides the coordination layer — shared memory, task assignment, and async chat.

Patterns

Pattern 1: Shared Mind (Single Source of Truth)

All agents share one Mind Key. They read/write the same memory store.

┌──────────┐  ┌──────────┐  ┌──────────┐
│ Agent A  │  │ Agent B  │  │ Agent C  │
└────┬─────┘  └────┬─────┘  └────┬─────┘
     │             │             │
     └─────────────┼─────────────┘
                   ▼
           ┌──────────────┐
           │ Shared Mind  │
           │  (one key)   │
           └──────────────┘

Use case: Small team of agents working on one project.

Setup:

# All agents use the same Mind Key
export SYNAPSE_MIND_KEY=mk_shared_key...

Coordination via tasks:

# Agent A creates a task
create_task("Review PR #42", priority="high")

# Agent B picks it up
tasks = list_tasks(status="pending")
if tasks:
    task = tasks[0]
    update_task(task["id"], status="in_progress")
    # ... do work ...
    update_task(task["id"], status="done")

Pattern 2: Specialized Minds (Isolated Contexts)

Each agent has its own mind. They communicate via a shared "coordination" mind.

┌──────────┐  ┌──────────┐  ┌──────────┐
│ Coder    │  │ Reviewer │  │ Deployer │
│ Agent    │  │ Agent    │  │ Agent    │
└────┬─────┘  └────┬─────┘  └────┬─────┘
     │             │             │
     ▼             ▼             ▼
┌─────────┐  ┌─────────┐  ┌─────────┐
│ Mind C  │  │ Mind R  │  │ Mind D  │
└─────────┘  └─────────┘  └─────────┘
     │             │             │
     └─────────────┼─────────────┘
                   ▼
           ┌──────────────────┐
           │ Coordination Mind│
           │ (shared)         │
           └──────────────────┘

Use case: Agents with different specialties (coding, review, deployment).

Setup:

# Coder agent
SYNAPSE_MIND_KEY=mk_coder... MCP_TRANSPORT=stdio npx synapse-mcp-api@latest

# Reviewer agent
SYNAPSE_MIND_KEY=mk_reviewer... MCP_TRANSPORT=stdio npx synapse-mcp-api@latest

# Deployer agent
SYNAPSE_MIND_KEY=mk_deployer... MCP_TRANSPORT=stdio npx synapse-mcp-api@latest

Coordination via shared mind:

# Coder stores "ready for review"
COORDINATION_KEY = "mk_coordination..."
requests.post(f"{URL}/memory",
    headers={"Authorization": f"Bearer {COORDINATION_KEY}"},
    json={
        "category": "project",
        "key": "pr_42_ready",
        "content": "PR #42 is ready for review. Branch: feature/docs-system",
        "tags": ["review", "pr-42"],
        "priority": "high"
    })

# Reviewer polls for review requests
r = requests.get(f"{URL}/memory/search?q=ready+for+review",
    headers={"Authorization": f"Bearer {COORDINATION_KEY}"})

Pattern 3: Hub-and-Spoke (Orchestrator)

A central orchestrator agent assigns tasks to worker agents.

        ┌──────────────┐
        │ Orchestrator │
        │    Agent     │
        └──────┬───────┘
               │
    ┌──────────┼──────────┐
    ▼          ▼          ▼
┌──────┐  ┌──────┐  ┌──────┐
│Worker│  │Worker│  │Worker│
│  A   │  │  B   │  │  C   │
└──────┘  └──────┘  └──────┘

Use case: Complex workflows with parallel work.

Implementation:

# Orchestrator
class Orchestrator:
    def assign_task(self, worker_id, task_description):
        # Store task in worker's mind (or shared coordination mind)
        create_task(task_description, priority="high")
        # Notify worker via chat
        reply(f"@{worker_id}: New task — {task_description}")
    
    def check_progress(self):
        tasks = list_tasks(status="in_progress")
        for t in tasks:
            print(f"{t['title']}: {t['status']}")

# Workers poll for assigned tasks
class Worker:
    def run(self):
        while True:
            tasks = list_tasks(status="pending")
            for t in tasks:
                if assigned_to_me(t):
                    update_task(t["id"], status="in_progress")
                    result = do_work(t)
                    update_task(t["id"], status="done")
                    reply(f"Completed: {t['title']}")
            time.sleep(60)

Coordination via Chat

Agents can communicate via the chat system:

# Agent A sends to Agent B
reply("@agent-b: Can you review my PR?")

# Agent B polls and responds
for msg in poll_messages():
    if "@agent-b" in msg["content"]:
        reply(f"@agent-a: Sure, looking at it now.")
Chat messages are role-tagged. Set role=agent for agent-to-agent messages, role=human for human-to-agent.

Coordination via Variables

Use variables for lightweight coordination (locks, flags):

# Acquire a lock
def acquire_lock(name):
    r = requests.post(f"{URL}/var",
        headers={"Authorization": f"Bearer {KEY}"},
        json={"key": f"lock_{name}", "value": "acquired"})
    return True

def release_lock(name):
    requests.delete(f"{URL}/var/lock_{name}",
        headers={"Authorization": f"Bearer {KEY}"})

# Use
if acquire_lock("deploy"):
    try:
        deploy_to_production()
    finally:
        release_lock("deploy")

Best Practices

Next Steps