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977c3adfb2
* python: replace pre-commit with prek, add PEP 723 script deps, clean up dev dependencies - Replace pre-commit with prek (Rust-native, faster pre-commit alternative) - Move supported hooks to repo: builtin for zero-clone speed - Add new builtin hooks: trailing-whitespace, check-merge-conflict, detect-private-key, check-added-large-files - Update all hook versions to latest (pre-commit-hooks v6, pyupgrade v3.21.2, bandit 1.9.3, uv-pre-commit 0.10.0) - Add PEP 723 inline script metadata to 34 samples with external deps - Remove autogen-agentchat/autogen-ext from dev deps (now declared per-sample) - Remove unused dev deps: pytest-env, tomli-w - Add agent-framework-core>=1.0.0b260130 lower bound to all 21 packages - Update CI workflow to use j178/prek-action - Update docs: DEV_SETUP.md, AGENTS.md, CODING_STANDARD.md, SAMPLE_GUIDELINES.md * updated lock * python: fix prek config paths for local execution and CI workflow Remove global 'files: ^python/' filter and strip python/ prefix from all path patterns in .pre-commit-config.yaml so prek finds files when run from the python/ directory. Update CI workflow to use --cd python instead of --config path. Include trailing whitespace fixes and dev dependency cleanup. * python: move helper scripts to scripts/ folder and exclude from checks * python: exclude AGENTS.md from prek markdown code lint * python: exclude AGENTS.md and azure_ai_search sample from markdown lint * fix m365 sample * python: ignore CPY rule for samples with PEP 723 headers * fix in dev_setup * python: replace aiofiles with regular open in samples * python: suppress reportUnusedImport in markdown code block checker * python: use samples pyright config for markdown code block checker Write a temp pyrightconfig.json matching pyrightconfig.samples.json rules (typeCheckingMode=off, only reportMissingImports and reportAttributeAccessIssue). Filter output to only fail on these rules since syntax-level errors (top-level await, undefined vars) are expected in README documentation snippets. * python: use markdown-code-lint with fixed globs instead of prek file list The prek-markdown-code-lint task received all changed files including non-README markdown and files with pre-existing broken imports. Replace with the standard markdown-code-lint task which uses the correct glob patterns (README.md, packages/**/README.md, samples/**/*.md). * python: exclude READMEs with pre-existing broken imports from markdown lint * python: fix broken README code snippets instead of excluding them - ag-ui: replace TextContent (removed) with content.type == 'text' - durabletask: fix import path to durabletask.worker.TaskHubGrpcWorker - orchestrations: use constructor params instead of .participants() method - observability: mark deprecated code blocks as plain text, filter reportMissingImports to agent_framework modules only - remove README excludes from markdown-code-lint task * add revision to gaia download * feat(python): parallelize checks across packages Run (package × task) cross-product in parallel using ThreadPoolExecutor and subprocesses. Key changes: - Add scripts/task_runner.py with shared parallel execution engine - Update run_tasks_in_packages_if_exists.py to accept multiple tasks - Update run_tasks_in_changed_packages.py with --files flag and parallel support - Add check-packages poe task (fmt+lint+pyright+mypy in parallel) - Add prek-markdown-code-lint and prek-samples-check with change detection - Split CI code quality workflow into parallel prek and mypy jobs - Update DEV_SETUP.md to document new parallel behavior Core package changes still trigger checks on all packages. * feat(ci): split code quality into 4 parallel jobs Split the single prek job into parallel jobs: - pre-commit-hooks: lightweight hooks (SKIP=poe-check) - package-checks: fmt/lint/pyright/mypy via check-packages - samples-markdown: samples-lint, samples-syntax, markdown-code-lint - mypy: change-detected mypy checks All 4 jobs run concurrently (×2 Python versions = 8 runners). * feat(ci): use only Python 3.10 for code quality checks * refactor(python): add future annotations and remove quoted types Add `from __future__ import annotations` to 93 package files that used quoted string annotations, then run pyupgrade --py310-plus to remove the now-unnecessary quotes. Fixes https://github.com/microsoft/agent-framework/issues/3578
277 lines
10 KiB
Python
277 lines
10 KiB
Python
# /// script
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# requires-python = ">=3.10"
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# dependencies = [
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# "semantic-kernel",
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# ]
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# ///
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# Run with any PEP 723 compatible runner, e.g.:
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# uv run samples/semantic-kernel-migration/orchestrations/group_chat.py
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# Copyright (c) Microsoft. All rights reserved.
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"""Side-by-side group chat orchestrations for Agent Framework and Semantic Kernel."""
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import asyncio
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import sys
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from collections.abc import Sequence
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from typing import Any, cast
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from agent_framework import ChatAgent, ChatMessage
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from agent_framework.azure import AzureOpenAIChatClient, AzureOpenAIResponsesClient
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from agent_framework.orchestrations import GroupChatBuilder
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from azure.identity import AzureCliCredential
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from semantic_kernel.agents import Agent, ChatCompletionAgent, GroupChatOrchestration
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from semantic_kernel.agents.orchestration.group_chat import (
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BooleanResult,
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GroupChatManager,
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MessageResult,
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StringResult,
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)
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from semantic_kernel.agents.runtime import InProcessRuntime
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from semantic_kernel.connectors.ai.chat_completion_client_base import ChatCompletionClientBase
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from semantic_kernel.connectors.ai.open_ai import AzureChatCompletion
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from semantic_kernel.connectors.ai.prompt_execution_settings import PromptExecutionSettings
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from semantic_kernel.contents import AuthorRole, ChatHistory, ChatMessageContent
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from semantic_kernel.functions import KernelArguments
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from semantic_kernel.kernel import Kernel
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from semantic_kernel.prompt_template import KernelPromptTemplate, PromptTemplateConfig
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if sys.version_info >= (3, 12):
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from typing import override # pragma: no cover
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else:
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from typing_extensions import override # pragma: no cover
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DISCUSSION_TOPIC = "What are the essential steps for launching a community hackathon?"
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######################################################################
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# Semantic Kernel orchestration path
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######################################################################
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def build_semantic_kernel_agents() -> list[Agent]:
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credential = AzureCliCredential()
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researcher = ChatCompletionAgent(
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name="Researcher",
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description="Collects background information and potential resources.",
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instructions=(
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"Gather concise facts or considerations that help plan a community hackathon. "
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"Keep your responses factual and scannable."
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),
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service=AzureChatCompletion(credential=credential),
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)
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planner = ChatCompletionAgent(
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name="Planner",
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description="Synthesizes an actionable plan from available notes.",
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instructions=(
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"Use the running conversation to draft a structured action plan. Emphasize logistics and sequencing."
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),
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service=AzureChatCompletion(credential=credential),
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)
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return [researcher, planner]
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class ChatCompletionGroupChatManager(GroupChatManager):
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"""Group chat manager that delegates orchestration decisions to an Azure OpenAI deployment."""
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service: ChatCompletionClientBase
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topic: str
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termination_prompt: str = (
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"You are coordinating a conversation about '{{topic}}'. "
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"Decide if the discussion has produced a solid answer. "
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'Respond using JSON: {"result": true|false, "reason": "..."}.'
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)
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selection_prompt: str = (
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"You are coordinating a conversation about '{{topic}}'. "
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"Choose the next participant by returning JSON with keys (result, reason). "
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"The result must match one of: {{participants}}."
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)
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summary_prompt: str = (
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"You have just finished a discussion about '{{topic}}'. "
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"Summarize the plan and highlight key takeaways. Return JSON with keys (result, reason) where "
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"result is the final response text."
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)
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def __init__(self, *, topic: str, service: ChatCompletionClientBase) -> None:
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super().__init__(topic=topic, service=service)
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self._round_robin_index = 0
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async def _render_prompt(self, template: str, **kwargs: Any) -> str:
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prompt_template = KernelPromptTemplate(prompt_template_config=PromptTemplateConfig(template=template))
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return await prompt_template.render(Kernel(), arguments=KernelArguments(**kwargs))
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@override
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async def should_request_user_input(self, chat_history: ChatHistory) -> BooleanResult:
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return BooleanResult(result=False, reason="This orchestration is fully automated.")
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@override
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async def should_terminate(self, chat_history: ChatHistory) -> BooleanResult:
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rendered_prompt = await self._render_prompt(self.termination_prompt, topic=self.topic)
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chat_history.messages.insert(
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0,
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ChatMessageContent(role=AuthorRole.SYSTEM, content=rendered_prompt),
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)
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chat_history.add_message(
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ChatMessageContent(role=AuthorRole.USER, content="Decide if the discussion is complete."),
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)
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response = await self.service.get_chat_message_content(
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chat_history,
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settings=PromptExecutionSettings(response_format=BooleanResult),
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)
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result = BooleanResult.model_validate_json(response.content)
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return result
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@override
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async def select_next_agent(
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self,
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chat_history: ChatHistory,
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participant_descriptions: dict[str, str],
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) -> StringResult:
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rendered_prompt = await self._render_prompt(
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self.selection_prompt,
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topic=self.topic,
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participants=", ".join(participant_descriptions.keys()),
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)
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chat_history.messages.insert(
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0,
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ChatMessageContent(role=AuthorRole.SYSTEM, content=rendered_prompt),
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)
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chat_history.add_message(
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ChatMessageContent(role=AuthorRole.USER, content="Pick the next participant to speak."),
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)
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response = await self.service.get_chat_message_content(
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chat_history,
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settings=PromptExecutionSettings(response_format=StringResult),
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)
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result = StringResult.model_validate_json(response.content)
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if result.result not in participant_descriptions:
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raise RuntimeError(f"Unknown participant selected: {result.result}")
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return result
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@override
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async def filter_results(self, chat_history: ChatHistory) -> MessageResult:
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rendered_prompt = await self._render_prompt(self.summary_prompt, topic=self.topic)
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chat_history.messages.insert(
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0,
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ChatMessageContent(role=AuthorRole.SYSTEM, content=rendered_prompt),
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)
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chat_history.add_message(
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ChatMessageContent(role=AuthorRole.USER, content="Summarize the plan."),
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)
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response = await self.service.get_chat_message_content(
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chat_history,
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settings=PromptExecutionSettings(response_format=StringResult),
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)
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string_result = StringResult.model_validate_json(response.content)
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return MessageResult(
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result=ChatMessageContent(role=AuthorRole.ASSISTANT, content=string_result.result),
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reason=string_result.reason,
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)
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async def sk_agent_response_callback(message: ChatMessageContent | Sequence[ChatMessageContent]) -> None:
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if isinstance(message, ChatMessageContent):
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messages: Sequence[ChatMessageContent] = [message]
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elif isinstance(message, Sequence) and not isinstance(message, (str, bytes)):
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messages = list(message)
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else:
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messages = [cast(ChatMessageContent, message)]
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for item in messages:
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print(f"# {item.name}\n{item.content}\n")
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async def run_semantic_kernel_example(task: str) -> str:
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credential = AzureCliCredential()
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orchestration = GroupChatOrchestration(
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members=build_semantic_kernel_agents(),
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manager=ChatCompletionGroupChatManager(
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topic=DISCUSSION_TOPIC,
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service=AzureChatCompletion(credential=credential),
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max_rounds=8,
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),
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agent_response_callback=sk_agent_response_callback,
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)
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runtime = InProcessRuntime()
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runtime.start()
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try:
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orchestration_result = await orchestration.invoke(task=task, runtime=runtime)
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final_message = await orchestration_result.get(timeout=30)
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if isinstance(final_message, ChatMessageContent):
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return final_message.content or ""
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return str(final_message)
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finally:
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await runtime.stop_when_idle()
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######################################################################
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# Agent Framework orchestration path
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######################################################################
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async def run_agent_framework_example(task: str) -> str:
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credential = AzureCliCredential()
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researcher = ChatAgent(
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name="Researcher",
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description="Collects background information and potential resources.",
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instructions=(
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"Gather concise facts or considerations that help plan a community hackathon. "
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"Keep your responses factual and scannable."
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),
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chat_client=AzureOpenAIChatClient(credential=credential),
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)
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planner = ChatAgent(
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name="Planner",
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description="Turns the collected notes into a concrete action plan.",
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instructions=("Propose a structured action plan that accounts for logistics, roles, and timeline."),
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chat_client=AzureOpenAIResponsesClient(credential=credential),
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)
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workflow = GroupChatBuilder(
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participants=[researcher, planner],
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orchestrator_agent=AzureOpenAIChatClient(credential=credential).as_agent(),
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).build()
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final_response = ""
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async for event in workflow.run(task, stream=True):
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if event.type == "output":
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data = event.data
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if isinstance(data, list) and len(data) > 0:
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# Get the final message from the conversation
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final_message = data[-1]
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final_response = final_message.text or "" if isinstance(final_message, ChatMessage) else str(data)
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else:
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final_response = str(data)
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return final_response
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async def main() -> None:
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task = "Kick off the group discussion."
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print("===== Agent Framework Group Chat =====")
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af_response = await run_agent_framework_example(task)
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print(af_response or "No response returned.")
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print()
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print("===== Semantic Kernel Group Chat =====")
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sk_response = await run_semantic_kernel_example(task)
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print(sk_response or "No response returned.")
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if __name__ == "__main__":
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asyncio.run(main())
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