In this tutorial, we build an advanced multi-agent communication system using a structured message bus architecture powered by Langgraph and Pydentic. We define a strict ACP-style messaging schema that allows agents to communicate through a shared state rather than calling each other directly, enabling modularity, traceability, and production-grade orchestration. We implement three specialized agents, a planner, executor, and verifier, which coordinate through structured messages, persistent state, and routing logic. We also integrate SQLite-based persistence to provide durable memory during execution and visualize agent communication flows to understand how messages propagate through the system.
!pip -q install -U "pydantic==2.12.3"
!pip -q install -U langgraph langchain-core networkx matplotlib
!pip -q install -U langgraph-checkpoint-sqlite
import os
import json
import uuid
import sqlite3
from datetime import datetime, timezone
from typing import Any, Dict, List, Literal, Optional, Tuple
from pydantic import BaseModel, Field
import networkx as nx
import matplotlib.pyplot as plt
from langgraph.graph import StateGraph, END
from langgraph.checkpoint.sqlite import SqliteSaver
Role = Literal("planner", "executor", "validator", "user", "system")
MsgType = Literal("task", "plan", "result", "validation", "error", "control")
class ACPMessage(BaseModel):
msg_id: str = Field(default_factory=lambda: str(uuid.uuid4()))
ts: str = Field(default_factory=lambda: datetime.now(timezone.utc).isoformat().replace("+00:00", "Z"))
sender: Role
receiver: Role
msg_type: MsgType
content: str
meta: Dict(str, Any) = Field(default_factory=dict)
trace: Dict(str, Any) = Field(default_factory=dict)
def acp_log_path() -> str:
os.makedirs("acp_logs", exist_ok=True)
return os.path.join("acp_logs", "acp_messages.jsonl")
def append_acp_log(m: ACPMessage) -> None:
with open(acp_log_path(), "a", encoding="utf-8") as f:
f.write(m.model_dump_json() + "\n")
We install and import all the necessary libraries needed to build a structured multi-agent communication system. We define an ACP-style message schema using Pydantic, which allows us to enforce a strict and structured format for agent communications. We also implement structured logging to retain every message exchanged between agents, enabling traceability and observability of the system.
class BusState(BaseModel):
goal: str = ""
done: bool = False
errors: List(str) = Field(default_factory=list)
mailbox: List(ACPMessage) = Field(default_factory=list)
edges: List(Tuple(str, str, str)) = Field(default_factory=list)
active_role: Role = "user"
step: int = 0
def bus_update(
state: BusState,
sender: Role,
receiver: Role,
msg_type: MsgType,
content: str,
meta: Optional(Dict(str, Any)) = None,
trace: Optional(Dict(str, Any)) = None,
) -> Dict(str, Any):
m = ACPMessage(
sender=sender,
receiver=receiver,
msg_type=msg_type,
content=content,
meta=meta or {},
trace=trace or {},
)
append_acp_log(m)
return {
"goal": state.goal,
"done": state.done,
"errors": state.errors,
"mailbox": state.mailbox + (m),
"edges": state.edges + ((sender, receiver, msg_type)),
"active_role": receiver,
"step": state.step + 1,
}
We define a shared state structure that acts as a centralized message bus for all agents. We implement the BusState class to store the target, mailbox, routing information, and execution progress. We also create a bus_update function, which allows us to generate structured messages, update shared state, and persist message logs.
def planner_agent(state_dict: Dict(str, Any)) -> Dict(str, Any):
state = BusState.model_validate(state_dict)
goal = state.goal.strip()
if not goal:
return bus_update(state, "planner", "validator", "error", "No goal provided.", meta={"reason": "empty_goal"})
plan = (
"Interpret the goal and extract requirements.",
"Decide an execution strategy with clear outputs.",
"Ask Executor to produce the result.",
"Ask Validator to check correctness + completeness.",
)
plan_text = "\n".join((f"{i+1}. {p}" for i, p in enumerate(plan)))
return bus_update(
state,
"planner",
"executor",
"plan",
plan_text,
meta={"goal": goal, "plan_steps": len(plan)},
trace={"policy": "deterministic_planner_v1"},
)
def executor_agent(state_dict: Dict(str, Any)) -> Dict(str, Any):
state = BusState.model_validate(state_dict)
goal = state.goal.strip()
latest_plan = None
for m in reversed(state.mailbox):
if m.receiver == "executor" and m.msg_type == "plan":
latest_plan = m.content
break
result = {
"goal": goal,
"assumptions": (
"We can produce a concise, actionable output.",
"We can validate via rule-based checks.",
),
"output": f"Executed task for goal: {goal}",
"deliverables": (
"A clear summary",
"A step-by-step action list",
"Any constraints and edge cases",
),
"plan_seen": bool(latest_plan),
}
result_text = json.dumps(result, indent=2)
return bus_update(
state,
"executor",
"validator",
"result",
result_text,
meta={"artifact_type": "json", "bytes": len(result_text.encode("utf-8"))},
trace={"policy": "deterministic_executor_v1"},
)
We implement planner and executor agents, which handle task planning and execution. We design the planner agent to interpret the goal and generate a structured execution plan, which is then passed through the message bus. We invoke the Executor Agent to read the plan, execute it, and produce a structured result artifact that downstream agents can validate.
def validator_agent(state_dict: Dict(str, Any)) -> Dict(str, Any):
state = BusState.model_validate(state_dict)
goal = state.goal.strip()
latest_result = None
for m in reversed(state.mailbox):
if m.receiver == "validator" and m.msg_type in ("result", "error"):
latest_result = m
break
if latest_result is None:
upd = bus_update(state, "validator", "planner", "error", "No result to validate.", meta={"reason": "missing_result"})
upd("done") = True
upd("errors") = state.errors + ("missing_result")
return upd
if latest_result.msg_type == "error":
upd = bus_update(
state,
"validator",
"planner",
"validation",
f"Validation failed because upstream error occurred: {latest_result.content}",
meta={"status": "fail"},
)
upd("done") = True
upd("errors") = state.errors + (latest_result.content)
return upd
try:
parsed = json.loads(latest_result.content)
except Exception as e:
upd = bus_update(
state,
"validator",
"planner",
"validation",
f"Result is not valid JSON: {e}",
meta={"status": "fail"},
)
upd("done") = True
upd("errors") = state.errors + (f"invalid_json: {e}")
return upd
issues = ()
if parsed.get("goal") != goal:
issues.append("Result.goal does not match input goal.")
if "deliverables" not in parsed or not isinstance(parsed("deliverables"), list) or len(parsed("deliverables")) == 0:
issues.append("Missing or empty deliverables list.")
if issues:
upd = bus_update(
state,
"validator",
"planner",
"validation",
"Validation failed:\n- " + "\n- ".join(issues),
meta={"status": "fail", "issues": issues},
)
upd("done") = True
upd("errors") = state.errors + issues
return upd
upd = bus_update(
state,
"validator",
"user",
"validation",
"Validation passed ✅ Result looks consistent and complete.",
meta={"status": "pass"},
)
upd("done") = True
upd("errors") = state.errors
return upd
def route_next(state_dict: Dict(str, Any)) -> str:
if state_dict.get("done", False):
return END
role = state_dict.get("active_role", "user")
if role == "planner":
return "planner"
if role == "executor":
return "executor"
if role == "validator":
return "validator"
return END
We implement the validator agent and the routing logic that controls the agent execution flow. We design verifiers to inspect execution results, verify correctness, and generate validation results through structured checks. We also implement a routing function that dynamically determines which agent should execute next, enabling coordinated multi-agent orchestration.
graph = StateGraph(dict)
graph.add_node("planner", planner_agent)
graph.add_node("executor", executor_agent)
graph.add_node("validator", validator_agent)
graph.set_entry_point("planner")
graph.add_conditional_edges("planner", route_next, {"planner": "planner", "executor": "executor", "validator": "validator", END: END})
graph.add_conditional_edges("executor", route_next, {"planner": "planner", "executor": "executor", "validator": "validator", END: END})
graph.add_conditional_edges("validator", route_next, {"planner": "planner", "executor": "executor", "validator": "validator", END: END})
os.makedirs("checkpoints", exist_ok=True)
db_path = "checkpoints/langgraph_bus.sqlite"
conn = sqlite3.connect(db_path, check_same_thread=False)
checkpointer = SqliteSaver(conn)
app = graph.compile(checkpointer=checkpointer)
def run_thread(goal: str, thread_id: str) -> BusState:
init = BusState(goal=goal, active_role="planner", done=False).model_dump()
final_state_dict = app.invoke(init, config={"configurable": {"thread_id": thread_id}})
return BusState.model_validate(final_state_dict)
thread_id = "demo-thread-001"
goal = "Design an ACP-style message bus where planner/executor/validator coordinate through shared state."
final_state = run_thread(goal, thread_id)
print("Done:", final_state.done)
print("Steps:", final_state.step)
print("Errors:", final_state.errors)
print("\nLast 5 messages:")
for m in final_state.mailbox(-5:):
print(f"- ({m.msg_type}) {m.sender} -> {m.receiver}: {m.content(:80)}")
snapshot = checkpointer.get_tuple({"configurable": {"thread_id": thread_id}})
cp = snapshot.checkpoint or {}
cv = cp.get("channel_values", {}) or {}
sv = cp.get("state", {}) or {}
vals = cv if isinstance(cv, dict) and len(cv) else sv if isinstance(sv, dict) else {}
print("\nCheckpoint keys:", list(cp.keys()))
if isinstance(cv, dict):
print("channel_values keys:", list(cv.keys())(:30))
if isinstance(sv, dict):
print("state keys:", list(sv.keys())(:30))
print("\nPersisted step (best-effort):", vals.get("step", "NOT_FOUND"))
print("Persisted active_role (best-effort):", vals.get("active_role", "NOT_FOUND"))
print("\nACP logs:", acp_log_path())
print("Checkpoint DB:", db_path)
G = nx.DiGraph()
G.add_edge("planner", "executor")
G.add_edge("executor", "validator")
G.add_edge("validator", "user")
plt.figure(figsize=(6, 4))
pos = nx.spring_layout(G, seed=7)
nx.draw(G, pos, with_labels=True, node_size=1800, font_size=10, arrows=True)
plt.title("Orchestration Graph: Planner → Executor → Validator")
plt.show()
comm = nx.MultiDiGraph()
for (s, r, t) in final_state.edges:
comm.add_edge(s, r, label=t)
plt.figure(figsize=(8, 5))
pos2 = nx.spring_layout(comm, seed=11)
nx.draw(comm, pos2, with_labels=True, node_size=1800, font_size=10, arrows=True)
plt.title("Communication Graph from Structured Message Bus (Runtime Edges)")
plt.show()
def tail_jsonl(path: str, n: int = 8) -> List(Dict(str, Any)):
if not os.path.exists(path):
return ()
with open(path, "r", encoding="utf-8") as f:
lines = f.readlines()(-n:)
return (json.loads(x) for x in lines)
print("\nLast ACP log entries:")
for row in tail_jsonl(acp_log_path(), 6):
print(f"{row('msg_type'):>10} | {row('sender')} -> {row('receiver')} | {row('ts')}")
We build the Langgraph state graph, enable SQLite-based persistence, and execute the multi-agent workflow. We use the thread identifier to ensure that agent state can be reliably saved and retrieved during execution. We also visualize orchestration and communication graphs and inspect persistent logs, which allows us to understand how agents interact via a structured message bus.
In this tutorial, we successfully designed and implemented a structured multi-agent communication framework using LangGraph’s shared-state architecture and ACP-style message-bus principles. We enabled agents to work independently while communicating through structured, persistent messages, improving reliability, observability, and scalability. We logged each interaction, maintained the state of the agent during execution, and visualized communication patterns to gain deeper insight into agent coordination. This architecture allows us to create robust, modular, and production-ready multi-agent systems that can be extended with additional agents, LLM reasoning, memory systems, and complex routing strategies.
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