mirror of
https://github.com/microsoft/agent-framework.git
synced 2026-06-16 21:04:09 +08:00
3bbc81554b
* Improve the handling of intermediate outputs for workflows and orchestrations
* Address PR review feedback on intermediate output forwarding
- Switch workflow.as_agent() forwarding to an explicit allowlist of {output,
intermediate, data, request_info} so orchestration-internal events
(group_chat, handoff_sent, magentic_orchestrator) stay inside the workflow
instead of leaking into agent responses via str(data) coercion.
- Stop raising on intermediate AgentResponseUpdate in non-streaming run();
surface the partial as a Message with text_reasoning content. The defensive
raise still applies to terminal output events, where Update payloads would
corrupt message ordering.
- Extend the DevUI workflow-event mapper so intermediate yields wrapping
plain strings, Messages, and list[Message] render as visible output items
instead of generic completed-trace events.
- Add orchestration coverage for GroupChat, Handoff, and Magentic builders
(default vs intermediate_outputs=True; structural where end-to-end is heavy).
* Lift output-designation policy into a value type
Replace the ``Workflow._output_executors`` list and the
``RunnerContext.should_label_as_intermediate`` Protocol method with a single
immutable ``OutputDesignation`` value type owned by ``Workflow``. Thread the
designation as a parameter through the existing call chain (Runner ->
EdgeRunner -> Executor -> WorkflowContext) so ``yield_output`` consults the
threaded snapshot directly rather than calling back into the runner context.
Removes the ``InProcRunnerContext._workflow`` back-reference and the
``WorkflowBuilder.build()`` assignment that wired it up. Adds the public
predicate ``Workflow.is_terminal_executor(executor_id)`` for external
observers; ``OutputDesignation`` itself stays package-internal.
Key decisions
- ``OutputDesignation.designated`` is ``frozenset[str] | None`` -- ``None``
preserves legacy "every yield is type='output'" behavior, any frozenset
(including empty) opts into strict mode. The ``DeprecationWarning`` for
legacy mode at build time is unchanged.
- ``output_designation`` is an optional parameter on ``Runner``,
``EdgeRunner.send_message``, ``EdgeRunner._execute_on_target``,
``Executor.execute``, ``Executor._create_context_for_handler``, and
``WorkflowContext.__init__``. Each defaults to legacy ``OutputDesignation()``
so direct callers (Azure Functions ``CapturingRunnerContext``,
``test_runner`` recording fixtures) keep working without ceremony.
- The workflow-level filter in ``_run_core`` reads ``self._output_designation``
live, preserving today's semantics where mutating the designation after
build still affects subsequent runs (used by two existing tests).
- ``Workflow.to_dict()`` continues to emit ``"output_executors":
list[str] | None`` (sorted from the frozenset). Checkpoint format unchanged.
Files changed
- _workflow.py: add ``OutputDesignation`` dataclass; replace
``_output_executors`` with ``_output_designation``; add
``is_terminal_executor``; delete ``_should_yield_output_event``.
- _runner_context.py: drop ``should_label_as_intermediate`` Protocol method
and ``InProcRunnerContext`` impl; drop ``_workflow`` back-reference.
- _workflow_builder.py: remove ``context._workflow = workflow`` assignment.
- _runner.py, _edge_runner.py, _executor.py, _workflow_context.py: thread
``output_designation`` parameter through the call chain.
- tests/workflow/test_output_designation.py (new): three-state coverage of
the value type plus the public predicate delegation.
- tests/workflow/test_workflow_builder.py, test_validation.py,
test_workflow.py, test_runner.py and
orchestrations/tests/test_orchestration_intermediate_vs_terminal.py:
switch probes from ``_output_executors`` set checks to
``get_output_executors`` / ``is_terminal_executor``; update two
post-build mutation tests to set ``_output_designation`` instead.
Verification
- core/tests/workflow/, orchestrations/tests/, azurefunctions/tests/:
1119 passed, 42 skipped, 2 xfailed.
- ``uv run poe lint``: clean.
- ``uv run poe typing``: only the pre-existing
``_AGENT_FORWARDED_EVENT_TYPES`` pyright warning from 394bcd607 remains.
Notes for next iteration
- The builder's own ``_output_executors`` attribute (``list[Executor |
SupportsAgentRun]``) is intentionally untouched; the issue scoped the
rename to the workflow attribute.
- Adjacent review candidates (twin ``WorkflowAgent`` translators,
``_AGENT_FORWARDED_EVENT_TYPES`` kind classifier,
``_event_origin_context`` ContextVar removal, ``WorkflowEvent`` ADT
split, legacy-mode removal) remain out of scope.
* Add explicit workflow output designation
Key decisions
- Extend the internal OutputDesignation value type from terminal-only membership to output/intermediate/hidden classification. Legacy mode remains outputs=None, so workflows built without output_executors or intermediate_executors still label every yield_output as type='output'.
- WorkflowBuilder now accepts intermediate_executors. Providing either designation enters explicit mode; output executors emit output, intermediate executors emit intermediate, and unlisted yield_output payloads are hidden from caller-facing events while remaining in executor_completed data.
- Empty explicit designation, duplicate entries, overlaps, unknown executors, and designated executors without workflow output annotations fail build validation. Existing orchestration builders pass intermediate-capable participants through intermediate_executors to preserve current intermediate_outputs behavior until participant-oriented designation lands.
Files changed
- packages/core/agent_framework/_workflows/_workflow.py, _workflow_builder.py, _workflow_context.py, _validation.py, _events.py
- packages/core/tests/workflow/test_output_designation.py, test_output_executors_contract.py, test_strict_mode_event_labeling.py, test_validation.py, test_workflow.py, test_workflow_agent_intermediate.py
- packages/orchestrations/agent_framework_orchestrations/_sequential.py, _concurrent.py, _group_chat.py, _magentic.py
- packages/core/AGENTS.md
Verification
- uv run pytest packages/core/tests/workflow packages/orchestrations/tests packages/devui/tests/devui/test_mapper.py -q
- uv run pytest packages/azurefunctions/tests -q
- uv run poe lint
- uv run poe typing fails only on pre-existing packages/core/agent_framework/_workflows/_agent.py _AGENT_FORWARDED_EVENT_TYPES private-use pyright error.
Notes for next iteration
- issues/03-core-workflow-explicit-designation.md was moved to issues/done but issues/ remains untracked and intentionally excluded from this commit.
- Slice 4 should tighten workflow.as_agent() mapping for hidden emissions and streaming-only update payloads; Slice 5 should replace orchestration intermediate_outputs with participant-oriented designation.
* Tighten workflow-as-agent output mapping
Key decisions
- Treat AgentResponseUpdate as a streaming-only payload across the workflow.as_agent() adapter, so non-streaming agent runs now reject both terminal output and intermediate workflow events carrying updates.
- Keep streaming classification behavior explicit: terminal update payloads remain normal text content, while intermediate update payloads are rewritten to text_reasoning content.
- Add explicit-mode coverage proving hidden yield_output emissions do not appear in non-streaming AgentResponse messages or streaming AgentResponseUpdate chunks.
Files changed
- packages/core/agent_framework/_workflows/_agent.py
- packages/core/tests/workflow/test_workflow_agent_intermediate.py
Verification
- uv run pytest packages/core/tests/workflow/test_workflow_agent_intermediate.py -q
- uv run pytest packages/core/tests/workflow/test_workflow_agent.py packages/core/tests/workflow/test_workflow_agent_intermediate.py -q
- uv run pytest packages/core/tests/workflow packages/orchestrations/tests packages/devui/tests/devui/test_mapper.py -q
- uv run poe lint
- uv run poe typing fails only on the pre-existing packages/core/agent_framework/_workflows/_agent.py _AGENT_FORWARDED_EVENT_TYPES private-use pyright error.
Blockers or notes for next iteration
- issues/04-workflow-as-agent-output-mapping.md was moved to issues/done/ but issues/ remains untracked and intentionally excluded from this commit.
- Slice 5 should replace orchestration intermediate_outputs with participant-oriented designation.
* Add orchestration participant output designation
Key decisions
- Replace orchestration intermediate_outputs with participant-oriented output_participants and intermediate_participants across Sequential, Concurrent, GroupChat, Magentic, and Handoff builders.
- Keep synthetic final executors terminal by default for Concurrent, GroupChat, and Magentic; keep Sequential's final participant terminal by default; keep Handoff participants terminal by default.
- Centralize participant designation validation for empty explicit designation, duplicates, overlaps, and unknown participants, then map validated participants to workflow output/intermediate executors.
Files changed
- packages/orchestrations/agent_framework_orchestrations/_participant_designation.py
- packages/orchestrations/agent_framework_orchestrations/_sequential.py
- packages/orchestrations/agent_framework_orchestrations/_concurrent.py
- packages/orchestrations/agent_framework_orchestrations/_group_chat.py
- packages/orchestrations/agent_framework_orchestrations/_magentic.py
- packages/orchestrations/agent_framework_orchestrations/_handoff.py
- packages/orchestrations/tests/test_orchestration_intermediate_vs_terminal.py
- packages/orchestrations/tests/test_magentic.py
Blockers or notes for next iteration
- issues/05-orchestration-participant-designation.md was moved to issues/done/ but issues/ remains untracked and intentionally excluded from this commit.
- Slice 7 should migrate samples and docs away from intermediate_outputs to the new participant designation API.
- uv run poe typing still fails only on the pre-existing packages/core/agent_framework/_workflows/_agent.py _AGENT_FORWARDED_EVENT_TYPES private-use pyright error.
* Migrate samples to explicit output designation
Key decisions
- Replace sample usage of the removed orchestration intermediate_outputs boolean with participant-oriented intermediate_participants designation.
- Update raw workflow guidance to show output_executors together with intermediate_executors, and document that unlisted yields are hidden in explicit designation mode.
- Keep orchestration final outputs terminal while streaming designated participant responses as intermediate progress, including workflow.as_agent() samples where intermediates map to text_reasoning content.
- Refresh workflow and orchestration README guidance plus the changelog reference so public docs no longer point users at intermediate_outputs.
Files changed
- CHANGELOG.md
- packages/orchestrations/README.md
- samples/README.md
- samples/03-workflows/README.md
- samples/03-workflows/control-flow/intermediate_vs_terminal_outputs.py
- samples/03-workflows/orchestrations/README.md
- samples/03-workflows/orchestrations/group_chat_agent_manager.py
- samples/03-workflows/orchestrations/group_chat_philosophical_debate.py
- samples/03-workflows/orchestrations/group_chat_simple_selector.py
- samples/03-workflows/orchestrations/magentic.py
- samples/03-workflows/orchestrations/magentic_human_plan_review.py
- samples/03-workflows/orchestrations/sequential_chain_only_agent_responses.py
- samples/03-workflows/agents/group_chat_workflow_as_agent.py
- samples/03-workflows/agents/magentic_workflow_as_agent.py
- samples/03-workflows/agents/sequential_workflow_as_agent.py
- samples/semantic-kernel-migration/orchestrations/group_chat.py
- samples/semantic-kernel-migration/orchestrations/magentic.py
Blockers or notes for next iteration
- issues/07-samples-and-docs-explicit-output-designation.md was moved to issues/done/ but issues/ remains untracked and intentionally excluded from this commit.
- issues/06-devui-intermediate-event-rendering.md remains present and appears already satisfied by existing DevUI mapper/tests from the prior implementation slice.
- PRD-explicit-workflow-output-designation.md remains untracked and intentionally excluded from this commit.
* Render DevUI intermediate workflow outputs
Key decisions
- Preserve workflow output designation metadata on visible DevUI output messages and text deltas so intermediate/data emissions remain distinguishable from terminal output.
- Render intermediate workflow message items in the execution timeline using executor metadata, while excluding them from the final workflow result aggregation.
- Keep terminal output message rendering unchanged and retain legacy data events on the intermediate compatibility path.
Files changed
- packages/devui/agent_framework_devui/_mapper.py
- packages/devui/frontend/src/components/features/workflow/execution-timeline.tsx
- packages/devui/frontend/src/components/features/workflow/workflow-view.tsx
- packages/devui/frontend/src/types/openai.ts
- packages/devui/tests/devui/test_mapper.py
Blockers or notes for next iteration
- issues/06-devui-intermediate-event-rendering.md was moved to issues/done/ but issues/ remains untracked and intentionally excluded from this commit.
- PRD-explicit-workflow-output-designation.md remains untracked and intentionally excluded from this commit.
- uv run poe typing still fails only on the pre-existing packages/core/agent_framework/_workflows/_agent.py _AGENT_FORWARDED_EVENT_TYPES private-use pyright error.
* Fix mypy
* Clarify orchestration participant output config
* Rename participant output kwargs for clarity
output_participants -> final_output_from, intermediate_participants ->
intermediate_output_from. The old names read like categories of
participant; the new names make it clear the kwarg designates which
participants' outputs surface as final vs. intermediate events.
* Rename core workflow output kwargs with deprecation shim
Adds final_output_from / intermediate_output_from as canonical kwargs on
Workflow and WorkflowBuilder. Old output_executors / intermediate_executors
kwargs continue to work but emit DeprecationWarning via a shared coalesce
helper that also rejects supplying both. Wire-format keys in to_dict()
stay as output_executors / intermediate_executors so checkpoint
compatibility is preserved.
Internal call sites in orchestrations and samples updated to the new
names so users following sample code learn the canonical vocabulary;
legacy callers still work with a one-shot warning.
* Suppress pyright reportPrivateUsage on cross-module sentinel import
* Update docstrings
* Propagate sub-workflow intermediate outputs, fix handoff/sequential intermediate-only designation, and shore up tests, sample, and docstrings around the intermediate output contract.
* Add canonical workflow output_from selection
Key decisions:\n- Make output_from the canonical workflow-output allow-list and keep output_executors/final_output_from as deprecated compatibility aliases.\n- Treat empty output_from/intermediate_output_from lists as explicit selections and keep validation responsible for empty, duplicate, overlap, and unknown selections.\n- Remove the branch-only public intermediate_executors WorkflowBuilder kwarg while preserving legacy wire keys in to_dict().\n\nFiles changed:\n- packages/core/agent_framework/_workflows/_workflow.py\n- packages/core/agent_framework/_workflows/_workflow_builder.py\n- packages/core/agent_framework/_workflows/_workflow_context.py\n- packages/core/agent_framework/_workflows/_agent.py\n- packages/core/agent_framework/_workflows/_agent_executor.py\n- packages/core/tests/workflow/* output-selection coverage updates\n- packages/core/AGENTS.md\n- issues/done/001-canonical-list-based-output-selection.md\n\nBlockers/notes:\n- Orchestration builders still pass final_output_from internally; follow-up issue 004 should migrate them to output_from.\n- Legacy omitted-selection behavior and explicit all/all_other literals are left for issues 002 and 003.
* Add explicit all workflow output selection
Key decisions:
- Treat output_from='all' as an explicit workflow-output selection sentinel and expand it at build time to executors with declared workflow output types.
- Keep omitted output selections in legacy all-output mode with a deprecation warning that names output_from and intermediate_output_from and points to output_from='all'.
- Reject intermediate_output_from='all' at construction because the all-output literal is output-only for this issue.
Files changed:
- packages/core/agent_framework/_workflows/_workflow_builder.py
- packages/core/tests/workflow/test_output_executors_contract.py
- issues/done/002-explicit-all-output-and-legacy-migration.md
Blockers/notes:
- all_other intermediate-output selection remains for issue 003.
- Workflow-as-agent/orchestration parity remains for issue 004.
* Add all-other intermediate output selection
Key decisions:
- Treat intermediate_output_from='all_other' as an explicit intermediate-output selection sentinel and expand it at build time after the workflow graph is complete.
- Expand all_other to output-capable executors not selected by output_from; omitted or empty output_from selects no workflow outputs, while output_from='all' leaves an empty intermediate selection.
- Keep output_from='all_other' invalid so all_other remains intermediate-output-only and runtime classification still receives concrete executor-id sets.
Files changed:
- packages/core/agent_framework/_workflows/_workflow_builder.py
- packages/core/tests/workflow/test_output_executors_contract.py
- issues/done/003-all-other-intermediate-output-selection.md
Blockers/notes:
- Workflow-as-agent and orchestration parity remains for issue 004.
- Full documentation updates remain for issue 005.
* Add orchestration output selection parity
Key decisions:
- Expose output_from on sequential, concurrent, group chat, handoff, and magentic builders while keeping final_output_from as a deprecated compatibility alias.
- Resolve orchestration participant selections through the same explicit rules as workflows: output_from='all', intermediate_output_from='all_other', hidden unselected participant payloads, and overlap/duplicate/unknown/invalid-literal validation.
- Continue preserving documented orchestration defaults by always designating each pattern's terminal internal executor where applicable.
Files changed:
- packages/orchestrations/agent_framework_orchestrations/_participant_output_config.py
- packages/orchestrations/agent_framework_orchestrations/_sequential.py
- packages/orchestrations/agent_framework_orchestrations/_concurrent.py
- packages/orchestrations/agent_framework_orchestrations/_group_chat.py
- packages/orchestrations/agent_framework_orchestrations/_handoff.py
- packages/orchestrations/agent_framework_orchestrations/_magentic.py
- packages/orchestrations/agent_framework_orchestrations/_orchestration_request_info.py
- packages/orchestrations/tests/test_orchestration_intermediate_vs_terminal.py
- issues/done/004-workflow-as-agent-and-orchestration-parity.md
Blockers/notes:
- Full documentation and sample migration wording remains for issue 005.
- Existing tests that intentionally use final_output_from now emit the new deprecation warning.
* Document workflow output selection contract
Key decisions:
- Use Workflow Output and Intermediate Output as the developer-facing terms for selected caller-facing emissions.
- Document output_from and intermediate_output_from as the canonical API, with output_from as an allow-list and unselected payloads hidden unless explicitly selected as intermediate.
- Add scenario and invalid-selection tables for workflow and orchestration docs, including legacy omission warnings, output_from='all', intermediate_output_from='all_other', list selections, invalid literals, overlap, duplicates, unknown selections, and empty explicit selections.
- Migrate samples away from final_output_from and output_executors except where compatibility aliases are explicitly documented.
Files changed:
- packages/core/AGENTS.md
- packages/orchestrations/README.md
- packages/orchestrations/agent_framework_orchestrations/_handoff.py
- packages/orchestrations/agent_framework_orchestrations/_sequential.py
- samples/03-workflows/README.md
- samples/03-workflows/control-flow/intermediate_vs_terminal_outputs.py
- samples/03-workflows/human-in-the-loop/agents_with_approval_requests.py
- samples/03-workflows/orchestrations/README.md
- samples/04-hosting/foundry-hosted-agents/responses/05_workflows/main.py
- scripts/sample_validation/create_dynamic_workflow_executor.py
- issues/done/005-document-output-selection-contract.md
Blockers/notes:
- Direct full Ruff on scripts/sample_validation/create_dynamic_workflow_executor.py still reports pre-existing docstring/print/line-length issues outside this docs migration; syntax-focused checks for changed files pass.
- No remaining AFK issue files are present under issues/.
* Latest updates
* Typing fixes
* Cleanup
210 lines
7.8 KiB
Python
210 lines
7.8 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/magentic.py
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# Copyright (c) Microsoft. All rights reserved.
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"""Side-by-side Magentic orchestrations for Agent Framework and Semantic Kernel."""
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import asyncio
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from collections.abc import Sequence
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from typing import cast
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from agent_framework import Agent, AgentResponseUpdate, Message
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from agent_framework.openai import OpenAIChatClient
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from agent_framework.orchestrations import MagenticBuilder
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from dotenv import load_dotenv
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from semantic_kernel.agents import (
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ChatCompletionAgent,
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MagenticOrchestration,
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OpenAIAssistantAgent,
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StandardMagenticManager,
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)
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from semantic_kernel.agents.runtime import InProcessRuntime
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from semantic_kernel.connectors.ai.open_ai import OpenAIChatCompletion, OpenAISettings
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from semantic_kernel.contents import ChatMessageContent
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# Load environment variables from .env file
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load_dotenv()
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PROMPT = (
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"I am preparing a report on the energy efficiency of different machine learning model architectures. "
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"Compare the estimated training and inference energy consumption of ResNet-50, BERT-base, and GPT-2 "
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"on standard datasets (e.g., ImageNet for ResNet, GLUE for BERT, WebText for GPT-2). "
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"Then, estimate the CO2 emissions associated with each, assuming training on an Azure Standard_NC6s_v3 VM "
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"for 24 hours. Provide tables for clarity, and recommend the most energy-efficient model per task type "
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"(image classification, text classification, and text generation)."
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)
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######################################################################
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# Semantic Kernel orchestration path
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######################################################################
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async def build_semantic_kernel_agents() -> list[ChatCompletionAgent | OpenAIAssistantAgent]:
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research_agent = ChatCompletionAgent(
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name="ResearchAgent",
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description="A helpful assistant with access to web search. Ask it to perform web searches.",
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instructions=(
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"You are a Researcher. You find information without additional computation or quantitative analysis."
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),
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service=OpenAIChatCompletion(ai_model="gpt-4o-mini-search-preview"),
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)
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client = OpenAIAssistantAgent.create_client()
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code_interpreter_tool, code_interpreter_tool_resources = OpenAIAssistantAgent.configure_code_interpreter_tool()
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openai_settings = OpenAISettings()
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model = openai_settings.chat_model if openai_settings.chat_model else "gpt-5"
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definition = await client.beta.assistants.create( # pyright: ignore[reportDeprecated]
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model=model,
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name="CoderAgent",
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description="A helpful assistant that writes and executes code to process and analyze data.",
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instructions="You solve questions using code. Please provide detailed analysis and computation process.",
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tools=code_interpreter_tool,
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tool_resources=code_interpreter_tool_resources,
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)
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coder_agent = OpenAIAssistantAgent(
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client=client,
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definition=definition,
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)
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return [research_agent, coder_agent]
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def sk_agent_response_callback(
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message: ChatMessageContent | Sequence[ChatMessageContent],
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) -> 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 = [item for item in message if isinstance(item, ChatMessageContent)]
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else:
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messages = []
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for item in messages:
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content = item.content or ""
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print(f"**{item.name}**\n{content}\n")
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async def run_semantic_kernel_example(prompt: str) -> Sequence[ChatMessageContent]:
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agents = await build_semantic_kernel_agents()
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magentic_orchestration = MagenticOrchestration(
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members=agents, # type: ignore
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manager=StandardMagenticManager(chat_completion_service=OpenAIChatCompletion()),
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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 magentic_orchestration.invoke(task=prompt, runtime=runtime)
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value = await orchestration_result.get()
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if isinstance(value, ChatMessageContent):
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return [value]
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if isinstance(value, Sequence) and not isinstance(value, (str, bytes)):
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return [item for item in value if isinstance(item, ChatMessageContent)]
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return []
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finally:
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await runtime.stop_when_idle()
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def _print_semantic_kernel_outputs(outputs: Sequence[ChatMessageContent]) -> None:
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if not outputs:
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print("No Semantic Kernel output.")
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return
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print("===== Semantic Kernel Magentic =====")
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for item in outputs:
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content = item.content or ""
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print(f"**{item.name}**\n{content}\n")
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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(prompt: str) -> str | None:
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researcher = Agent(
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name="ResearcherAgent",
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description="Specialist in research and information gathering",
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instructions=(
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"You are a Researcher. You find information without additional computation or quantitative analysis."
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),
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client=OpenAIChatClient(model="gpt-4o-mini-search-preview"),
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)
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# Create code interpreter tool using static method
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coder_client = OpenAIChatClient()
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code_interpreter_tool = OpenAIChatClient.get_code_interpreter_tool()
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coder = Agent(
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name="CoderAgent",
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description="A helpful assistant that writes and executes code to process and analyze data.",
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instructions="You solve questions using code. Please provide detailed analysis and computation process.",
|
|
client=coder_client,
|
|
tools=[code_interpreter_tool],
|
|
)
|
|
|
|
# Create a manager agent for orchestration
|
|
manager_agent = Agent(
|
|
name="MagenticManager",
|
|
description="Orchestrator that coordinates the research and coding workflow",
|
|
instructions="You coordinate a team to complete complex tasks efficiently.",
|
|
client=OpenAIChatClient(),
|
|
)
|
|
|
|
workflow = MagenticBuilder(
|
|
participants=[researcher, coder],
|
|
manager_agent=manager_agent, # type: ignore
|
|
intermediate_output_from=[researcher, coder],
|
|
).build()
|
|
|
|
output_messages: list[Message] = []
|
|
last_message_id: str | None = None
|
|
async for event in workflow.run(prompt, stream=True):
|
|
if event.type in ("intermediate", "output"):
|
|
if isinstance(event.data, AgentResponseUpdate):
|
|
if event.data.message_id != last_message_id:
|
|
last_message_id = event.data.message_id
|
|
print(f"{event.data.author_name}: {event.data.text}", end="")
|
|
else:
|
|
print(event.data.text, end="")
|
|
else:
|
|
output_messages.extend(cast(list[Message], event.data))
|
|
for message in output_messages:
|
|
print(f"[{message.author_name}] {message.text}")
|
|
|
|
if output_messages:
|
|
return output_messages[-1].text
|
|
|
|
return None
|
|
|
|
|
|
def _print_agent_framework_output(result: str | None) -> None:
|
|
if result is None:
|
|
print("No Agent Framework output.")
|
|
return
|
|
|
|
print("===== Agent Framework Magentic =====")
|
|
print(result)
|
|
|
|
|
|
async def main() -> None:
|
|
agent_framework_result = await run_agent_framework_example(PROMPT)
|
|
_print_agent_framework_output(agent_framework_result)
|
|
|
|
semantic_kernel_outputs = await run_semantic_kernel_example(PROMPT)
|
|
_print_semantic_kernel_outputs(semantic_kernel_outputs)
|
|
|
|
|
|
if __name__ == "__main__":
|
|
asyncio.run(main())
|