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concurrent_with_visualization.py
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# Copyright (c) Microsoft. All rights reserved.
import asyncio
import os
from dataclasses import dataclass
from agent_framework import (
AgentExecutor,
AgentExecutorRequest,
AgentExecutorResponse,
Executor,
Message,
WorkflowBuilder,
WorkflowContext,
WorkflowViz,
handler,
)
from agent_framework.azure import AzureOpenAIResponsesClient
from azure.identity import AzureCliCredential
from dotenv import load_dotenv
from typing_extensions import Never
# Load environment variables from .env file
load_dotenv()
"""
Sample: Concurrent (Fan-out/Fan-in) with Agents + Visualization
What it does:
- Fan-out: dispatch the same prompt to multiple domain agents (research, marketing, legal).
- Fan-in: aggregate their responses into one consolidated output.
- Visualization: generate Mermaid and GraphViz representations via `WorkflowViz` and optionally export SVG.
Prerequisites:
- AZURE_AI_PROJECT_ENDPOINT must be your Azure AI Foundry Agent Service (V2) project endpoint.
- Azure AI/ Azure OpenAI for `AzureOpenAIResponsesClient` agents.
- Authentication via `azure-identity` — uses `AzureCliCredential()` (run `az login`).
- For visualization export: `pip install graphviz>=0.20.0` and install GraphViz binaries.
"""
class DispatchToExperts(Executor):
"""Dispatches the incoming prompt to all expert agent executors (fan-out)."""
@handler
async def dispatch(self, prompt: str, ctx: WorkflowContext[AgentExecutorRequest]) -> None:
# Wrap the incoming prompt as a user message for each expert and request a response.
initial_message = Message("user", text=prompt)
await ctx.send_message(AgentExecutorRequest(messages=[initial_message], should_respond=True))
@dataclass
class AggregatedInsights:
"""Structured output from the aggregator."""
research: str
marketing: str
legal: str
class AggregateInsights(Executor):
"""Aggregates expert agent responses into a single consolidated result (fan-in)."""
@handler
async def aggregate(self, results: list[AgentExecutorResponse], ctx: WorkflowContext[Never, str]) -> None:
# Map responses to text by executor id for a simple, predictable demo.
by_id: dict[str, str] = {}
for r in results:
# AgentExecutorResponse.agent_response.text contains concatenated assistant text
by_id[r.executor_id] = r.agent_response.text
research_text = by_id.get("researcher", "")
marketing_text = by_id.get("marketer", "")
legal_text = by_id.get("legal", "")
aggregated = AggregatedInsights(
research=research_text,
marketing=marketing_text,
legal=legal_text,
)
# Provide a readable, consolidated string as the final workflow result.
consolidated = (
"Consolidated Insights\n"
"====================\n\n"
f"Research Findings:\n{aggregated.research}\n\n"
f"Marketing Angle:\n{aggregated.marketing}\n\n"
f"Legal/Compliance Notes:\n{aggregated.legal}\n"
)
await ctx.yield_output(consolidated)
async def main() -> None:
"""Build and run the concurrent workflow with visualization."""
# Create agent instances
researcher = AgentExecutor(
AzureOpenAIResponsesClient(
project_endpoint=os.environ["AZURE_AI_PROJECT_ENDPOINT"],
deployment_name=os.environ["AZURE_AI_MODEL_DEPLOYMENT_NAME"],
credential=AzureCliCredential(),
).as_agent(
instructions=(
"You're an expert market and product researcher. Given a prompt, provide concise, factual insights,"
" opportunities, and risks."
),
name="researcher",
)
)
marketer = AgentExecutor(
AzureOpenAIResponsesClient(
project_endpoint=os.environ["AZURE_AI_PROJECT_ENDPOINT"],
deployment_name=os.environ["AZURE_AI_MODEL_DEPLOYMENT_NAME"],
credential=AzureCliCredential(),
).as_agent(
instructions=(
"You're a creative marketing strategist. Craft compelling value propositions and target messaging"
" aligned to the prompt."
),
name="marketer",
)
)
legal = AgentExecutor(
AzureOpenAIResponsesClient(
project_endpoint=os.environ["AZURE_AI_PROJECT_ENDPOINT"],
deployment_name=os.environ["AZURE_AI_MODEL_DEPLOYMENT_NAME"],
credential=AzureCliCredential(),
).as_agent(
instructions=(
"You're a cautious legal/compliance reviewer. Highlight constraints, disclaimers, and policy concerns"
" based on the prompt."
),
name="legal",
)
)
# Create executor instances
dispatcher = DispatchToExperts(id="dispatcher")
aggregator = AggregateInsights(id="aggregator")
# Build a simple fan-out/fan-in workflow
workflow = (
WorkflowBuilder(start_executor=dispatcher)
.add_fan_out_edges(dispatcher, [researcher, marketer, legal])
.add_fan_in_edges([researcher, marketer, legal], aggregator)
.build()
)
# Generate workflow visualization
print("Generating workflow visualization...")
viz = WorkflowViz(workflow)
# Print out the mermaid string.
print("Mermaid string: \n=======")
print(viz.to_mermaid())
print("=======")
# Print out the DiGraph string with internal executors.
print("DiGraph string: \n=======")
print(viz.to_digraph(include_internal_executors=True))
print("=======")
# Export the DiGraph visualization as SVG.
svg_file = viz.export(format="svg")
print(f"SVG file saved to: {svg_file}")
if __name__ == "__main__":
asyncio.run(main())