Files
agent-framework/python/samples/semantic-kernel-migration/orchestrations/sequential.py
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Eduard van Valkenburg 0521f5bed8 Python: [BREAKING] Simplify API: ChatAgent -> Agent, ChatMessage -> Message (#3747)
* [BREAKING] Rename ChatAgent -> Agent, ChatMessage -> Message, ChatClientProtocol -> SupportsChatGetResponse

Simplify the public API by removing redundant 'Chat' prefix from core types:
- ChatAgent -> Agent
- RawChatAgent -> RawAgent
- ChatMessage -> Message
- ChatClientProtocol -> SupportsChatGetResponse

Also renamed internal WorkflowMessage (was Message in _runner_context) to avoid collision.

No backward compatibility aliases - this is a clean breaking change.

* [BREAKING] Rename Agent chat_client parameter to client

* Fix rebase issues: WorkflowMessage references and broken markdown links

* Fix formatting and lint issues from code quality checks

* Fix import ordering in workflow sample files

* fixed rebase

* Fix test failures: use WorkflowMessage and A2AMessage after ChatMessage→Message rename

- Replace Message(data=..., source_id=...) with WorkflowMessage(...) in workflow tests
- Fix isinstance check in A2A agent to use A2AMessage instead of Message
- Fix import in test_workflow_observability.py (Message→WorkflowMessage)

* Fix lint, fmt, and sample errors after ChatMessage→Message rename

- Auto-fix 70+ ruff lint issues across samples (ChatMessage→Message refs)
- Fix HostedVectorStoreContent→Content.from_hosted_vector_store in file search sample
- Fix _normalize_messages→normalize_messages in custom agent sample
- Fix context.terminate→raise MiddlewareTermination in middleware samples
- Fix with_update_hook→with_transform_hook in override middleware sample
- Add TOptions_co import back to custom_chat_client sample
- Add noqa for FastAPI File() default in chatkit sample
- Fix B023 loop variable capture in weather agent sample

* fix: update Agent constructor calls from chat_client to client in declaration-only tool tests

* fix: add register_cleanup to devui lazy-loading proxy and type stub

* fixed tests and updated new pieces

* fix agui typevar

* fix merge errors

* fix merge conflicts

* fiux merge

* Remove unused links

---------

Co-authored-by: Evan Mattson <evan.mattson@microsoft.com>
2026-02-10 23:04:32 +00:00

138 lines
4.6 KiB
Python

# /// script
# requires-python = ">=3.10"
# dependencies = [
# "semantic-kernel",
# ]
# ///
# Run with any PEP 723 compatible runner, e.g.:
# uv run samples/semantic-kernel-migration/orchestrations/sequential.py
# Copyright (c) Microsoft. All rights reserved.
"""Side-by-side sequential orchestrations for Agent Framework and Semantic Kernel."""
import asyncio
from collections.abc import Sequence
from typing import cast
from agent_framework import Message
from agent_framework.azure import AzureOpenAIChatClient
from agent_framework.orchestrations import SequentialBuilder
from azure.identity import AzureCliCredential
from semantic_kernel.agents import Agent, ChatCompletionAgent, SequentialOrchestration
from semantic_kernel.agents.runtime import InProcessRuntime
from semantic_kernel.connectors.ai.open_ai import AzureChatCompletion
from semantic_kernel.contents import ChatMessageContent
PROMPT = "Write a tagline for a budget-friendly eBike."
######################################################################
# Semantic Kernel orchestration path
######################################################################
def build_semantic_kernel_agents() -> list[Agent]:
credential = AzureCliCredential()
writer_agent = ChatCompletionAgent(
name="WriterAgent",
instructions=("You are a concise copywriter. Provide a single, punchy marketing sentence based on the prompt."),
service=AzureChatCompletion(credential=credential),
)
reviewer_agent = ChatCompletionAgent(
name="ReviewerAgent",
instructions=("You are a thoughtful reviewer. Give brief feedback on the previous assistant message."),
service=AzureChatCompletion(credential=credential),
)
return [writer_agent, reviewer_agent]
async def sk_agent_response_callback(
message: ChatMessageContent | Sequence[ChatMessageContent],
) -> None:
if isinstance(message, ChatMessageContent):
messages: Sequence[ChatMessageContent] = [message]
elif isinstance(message, Sequence) and not isinstance(message, (str, bytes)):
messages = list(message)
else:
messages = [cast(ChatMessageContent, message)]
for item in messages:
content = item.content or ""
print(f"# {item.name}\n{content}\n")
######################################################################
# Agent Framework orchestration path
######################################################################
async def run_agent_framework_example(prompt: str) -> list[Message]:
client = AzureOpenAIChatClient(credential=AzureCliCredential())
writer = client.as_agent(
instructions=("You are a concise copywriter. Provide a single, punchy marketing sentence based on the prompt."),
name="writer",
)
reviewer = client.as_agent(
instructions=("You are a thoughtful reviewer. Give brief feedback on the previous assistant message."),
name="reviewer",
)
workflow = SequentialBuilder(participants=[writer, reviewer]).build()
conversation_outputs: list[list[Message]] = []
async for event in workflow.run(prompt, stream=True):
if event.type == "output":
conversation_outputs.append(cast(list[Message], event.data))
return conversation_outputs[-1] if conversation_outputs else []
async def run_semantic_kernel_example(prompt: str) -> str:
sequential_orchestration = SequentialOrchestration(
members=build_semantic_kernel_agents(),
agent_response_callback=sk_agent_response_callback,
)
runtime = InProcessRuntime()
runtime.start()
try:
orchestration_result = await sequential_orchestration.invoke(task=prompt, runtime=runtime)
final_message = await orchestration_result.get(timeout=20)
if isinstance(final_message, ChatMessageContent):
return final_message.content or ""
return str(final_message)
finally:
await runtime.stop_when_idle()
def _format_conversation(conversation: list[Message]) -> None:
if not conversation:
print("No Agent Framework output.")
return
print("===== Agent Framework Sequential =====")
for index, message in enumerate(conversation, start=1):
name = message.author_name or ("assistant" if message.role == "assistant" else "user")
print(f"{'-' * 60}\n{index:02d} [{name}]\n{message.text}")
print()
async def main() -> None:
conversation = await run_agent_framework_example(PROMPT)
_format_conversation(conversation)
print("===== Semantic Kernel Sequential =====")
final_text = await run_semantic_kernel_example(PROMPT)
print(final_text)
if __name__ == "__main__":
asyncio.run(main())