Files
Eduard van Valkenburg a2856d3b92 Python: restructure: Python samples into progressive 01-05 layout (#3862)
* restructure: Python samples into progressive 01-05 layout

- 01-get-started/: 6 numbered steps (hello agent → hosting)
- 02-agents/: all agent concept samples (tools, middleware, providers, etc.)
- 03-workflows/: ALL existing workflow samples preserved as-is
- 04-hosting/: azure-functions, durabletask, a2a
- 05-end-to-end/: demos, evaluation, hosted agents
- Old files moved to _to_delete/ for review
- Added AGENTS.md with structure documentation
- autogen-migration/ and semantic-kernel-migration/ preserved at root

* fix: switch to AzureOpenAI Foundry, fix CI failures

- Switch all 01-get-started samples to AzureOpenAIResponsesClient with
  Azure AI Foundry project endpoint (AZURE_AI_PROJECT_ENDPOINT +
  AZURE_OPENAI_RESPONSES_DEPLOYMENT_NAME + AzureCliCredential)
- Add _to_delete/ and 05-end-to-end/ to pyrightconfig.samples.json excludes
- Fix test paths in packages/ that referenced old getting_started/ dirs:
  durabletask conftest + streaming test, azurefunctions conftest,
  devui conftest + capture_messages + openai_sdk_integration
- Fix workflow_as_agent_human_in_the_loop.py import (sibling import)
- Update hosting READMEs and tool comment paths
- Replace root README.md with new structure overview
- Update AGENTS.md to document Azure OpenAI Foundry as default provider

* cleanup: remove _to_delete folder, copy resource files to active dirs

All files in _to_delete/ were either:
- Exact duplicates of files in the new structure (240 files)
- Same file with only comment path updates (100 files)
- One import-fix diff (workflow_as_agent_human_in_the_loop.py)
- One superseded minimal_sample.py

Resource files (sample.pdf, countries.json, employees.pdf, weather.json)
copied to 02-agents/sample_assets/ and 02-agents/resources/ since active
samples reference them.

* fix: address PR review comments, centralize resources, remove root duplicates

- Fix type annotation in 04_memory.py (string union -> proper types)
- Fix old sample paths in observability files
- Fix grammar/spelling in observability samples
- Move sample_assets/ and resources/ to shared/ folder
- Remove 8 duplicate observability files from 02-agents root
- Update resource path references in multimodal_input and provider samples

* fix: update broken links from old getting_started paths to new structure

- Update relative paths in READMEs: getting_started/ → 01-get-started/,
  02-agents/, 03-workflows/, 04-hosting/, 05-end-to-end/
- Fix absolute GitHub URLs in package READMEs
- Fix broken link in ollama package README

* fix: convert absolute GitHub URLs to relative paths for link checker

Absolute URLs to python/samples/ on main branch 404 until PR merges.
Converted to relative paths that linkspector can verify locally.

* fix: update link for handoff sample moved to orchestrations/

* fix: update chatkit-integration README path from demos/ to 05-end-to-end/

* fix: update broken links in orchestrations README to match flat directory structure
2026-02-12 17:36:36 +00:00

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# Workflows Getting Started Samples
## Installation
Microsoft Agent Framework Workflows support ships with the core `agent-framework` or `agent-framework-core` package, so no extra installation step is required.
To install with visualization support:
```bash
pip install agent-framework[viz] --pre
```
To export visualization images you also need to [install GraphViz](https://graphviz.org/download/).
## Samples Overview
## Foundational Concepts - Start Here
Begin with the `_start-here` folder in order. These three samples introduce the core ideas of executors, edges, agents in workflows, and streaming.
| Sample | File | Concepts |
| -------------------- | ----------------------------------------------------------------------------------------- | ------------------------------------------------------------------- |
| Executors and Edges | [\_start-here/step1_executors_and_edges.py](./_start-here/step1_executors_and_edges.py) | Minimal workflow with basic executors and edges |
| Agents in a Workflow | [\_start-here/step2_agents_in_a_workflow.py](./_start-here/step2_agents_in_a_workflow.py) | Introduces adding Agents as nodes; calling agents inside a workflow |
| Streaming (Basics) | [\_start-here/step3_streaming.py](./_start-here/step3_streaming.py) | Extends workflows with event streaming |
Once comfortable with these, explore the rest of the samples below.
---
## Samples Overview (by directory)
### agents
| Sample | File | Concepts |
| -------------------------------------- | -------------------------------------------------------------------------------------------------------------- | ---------------------------------------------------------------------------------------------------- |
| Azure Chat Agents (Streaming) | [agents/azure_chat_agents_streaming.py](./agents/azure_chat_agents_streaming.py) | Add Azure Chat agents as edges and handle streaming events |
| Azure AI Agents (Streaming) | [agents/azure_ai_agents_streaming.py](./agents/azure_ai_agents_streaming.py) | Add Azure AI agents as edges and handle streaming events |
| Azure AI Agents (Shared Thread) | [agents/azure_ai_agents_with_shared_thread.py](./agents/azure_ai_agents_with_shared_thread.py) | Share a common message thread between multiple Azure AI agents in a workflow |
| Custom Agent Executors | [agents/custom_agent_executors.py](./agents/custom_agent_executors.py) | Create executors to handle agent run methods |
| Workflow as Agent (Reflection Pattern) | [agents/workflow_as_agent_reflection_pattern.py](./agents/workflow_as_agent_reflection_pattern.py) | Wrap a workflow so it can behave like an agent (reflection pattern) |
| Workflow as Agent + HITL | [agents/workflow_as_agent_human_in_the_loop.py](./agents/workflow_as_agent_human_in_the_loop.py) | Extend workflow-as-agent with human-in-the-loop capability |
| Workflow as Agent with Thread | [agents/workflow_as_agent_with_thread.py](./agents/workflow_as_agent_with_thread.py) | Use AgentThread to maintain conversation history across workflow-as-agent invocations |
| Workflow as Agent kwargs | [agents/workflow_as_agent_kwargs.py](./agents/workflow_as_agent_kwargs.py) | Pass custom context (data, user tokens) via kwargs through workflow.as_agent() to @ai_function tools |
### checkpoint
| Sample | File | Concepts |
| ------------------------------ | -------------------------------------------------------------------------------------------------------------------------- | -------------------------------------------------------------------------------------------------- |
| Checkpoint & Resume | [checkpoint/checkpoint_with_resume.py](./checkpoint/checkpoint_with_resume.py) | Create checkpoints, inspect them, and resume execution |
| Checkpoint & HITL Resume | [checkpoint/checkpoint_with_human_in_the_loop.py](./checkpoint/checkpoint_with_human_in_the_loop.py) | Combine checkpointing with human approvals and resume pending HITL requests |
| Checkpointed Sub-Workflow | [checkpoint/sub_workflow_checkpoint.py](./checkpoint/sub_workflow_checkpoint.py) | Save and resume a sub-workflow that pauses for human approval |
| Handoff + Tool Approval Resume | [orchestrations/handoff_with_tool_approval_checkpoint_resume.py](./orchestrations/handoff_with_tool_approval_checkpoint_resume.py) | Handoff workflow that captures tool-call approvals in checkpoints and resumes with human decisions |
| Workflow as Agent Checkpoint | [checkpoint/workflow_as_agent_checkpoint.py](./checkpoint/workflow_as_agent_checkpoint.py) | Enable checkpointing when using workflow.as_agent() with checkpoint_storage parameter |
### composition
| Sample | File | Concepts |
| ---------------------------------- | ------------------------------------------------------------------------------------------------------ | --------------------------------------------------------------------------------------------- |
| Sub-Workflow (Basics) | [composition/sub_workflow_basics.py](./composition/sub_workflow_basics.py) | Wrap a workflow as an executor and orchestrate sub-workflows |
| Sub-Workflow: Request Interception | [composition/sub_workflow_request_interception.py](./composition/sub_workflow_request_interception.py) | Intercept and forward sub-workflow requests using @handler for SubWorkflowRequestMessage |
| Sub-Workflow: Parallel Requests | [composition/sub_workflow_parallel_requests.py](./composition/sub_workflow_parallel_requests.py) | Multiple specialized interceptors handling different request types from same sub-workflow |
| Sub-Workflow: kwargs Propagation | [composition/sub_workflow_kwargs.py](./composition/sub_workflow_kwargs.py) | Pass custom context (user tokens, config) from parent workflow through to sub-workflow agents |
### control-flow
| Sample | File | Concepts |
| -------------------------- | ------------------------------------------------------------------------------------------ | ------------------------------------------------------- |
| Sequential Executors | [control-flow/sequential_executors.py](./control-flow/sequential_executors.py) | Sequential workflow with explicit executor setup |
| Sequential (Streaming) | [control-flow/sequential_streaming.py](./control-flow/sequential_streaming.py) | Stream events from a simple sequential run |
| Edge Condition | [control-flow/edge_condition.py](./control-flow/edge_condition.py) | Conditional routing based on agent classification |
| Switch-Case Edge Group | [control-flow/switch_case_edge_group.py](./control-flow/switch_case_edge_group.py) | Switch-case branching using classifier outputs |
| Multi-Selection Edge Group | [control-flow/multi_selection_edge_group.py](./control-flow/multi_selection_edge_group.py) | Select one or many targets dynamically (subset fan-out) |
| Simple Loop | [control-flow/simple_loop.py](./control-flow/simple_loop.py) | Feedback loop where an agent judges ABOVE/BELOW/MATCHED |
| Workflow Cancellation | [control-flow/workflow_cancellation.py](./control-flow/workflow_cancellation.py) | Cancel a running workflow using asyncio tasks |
### human-in-the-loop
| Sample | File | Concepts |
| ------------------------------------------ | ------------------------------------------------------------------------------------------------------------ | ----------------------------------------------------------------------------------------------------- |
| Human-In-The-Loop (Guessing Game) | [human-in-the-loop/guessing_game_with_human_input.py](./human-in-the-loop/guessing_game_with_human_input.py) | Interactive request/response prompts with a human via `ctx.request_info()` |
| Agents with Approval Requests in Workflows | [human-in-the-loop/agents_with_approval_requests.py](./human-in-the-loop/agents_with_approval_requests.py) | Agents that create approval requests during workflow execution and wait for human approval to proceed |
| Agents with Declaration-Only Tools | [human-in-the-loop/agents_with_declaration_only_tools.py](./human-in-the-loop/agents_with_declaration_only_tools.py) | Workflow pauses when agent calls a client-side tool (`func=None`), caller supplies the result |
Builder-oriented request-info samples are maintained in the orchestration sample set
(sequential, concurrent, and group-chat builder variants).
### tool-approval
Builder-based tool approval samples are maintained in the orchestration sample set.
### observability
| Sample | File | Concepts |
| ------------------------ | -------------------------------------------------------------------------------------- | ---------------------------------------------------------------------------------------------------------------------- |
| Executor I/O Observation | [observability/executor_io_observation.py](./observability/executor_io_observation.py) | Observe executor input/output data via executor_invoked events (type='executor_invoked') and executor_completed events (type='executor_completed') without modifying executor code |
For additional observability samples in Agent Framework, see the [observability concept samples](../02-agents/observability/README.md). The [workflow observability sample](../02-agents/observability/workflow_observability.py) demonstrates integrating observability into workflows.
### orchestration
Orchestration-focused samples (Sequential, Concurrent, Handoff, GroupChat, Magentic), including builder-based
`workflow.as_agent(...)` variants, are documented in the [orchestrations](./orchestrations/README.md) directory.
### parallelism
| Sample | File | Concepts |
| ------------------------------------ | ------------------------------------------------------------------------------------------------------------ | -------------------------------------------------------------------- |
| Concurrent (Fan-out/Fan-in) | [parallelism/fan_out_fan_in_edges.py](./parallelism/fan_out_fan_in_edges.py) | Dispatch to multiple executors and aggregate results |
| Aggregate Results of Different Types | [parallelism/aggregate_results_of_different_types.py](./parallelism/aggregate_results_of_different_types.py) | Handle results of different types from multiple concurrent executors |
| Map-Reduce with Visualization | [parallelism/map_reduce_and_visualization.py](./parallelism/map_reduce_and_visualization.py) | Fan-out/fan-in pattern with diagram export |
### state-management
| Sample | File | Concepts |
| -------------------------------- | ------------------------------------------------------------------------------------------------ | ----------------------------------------------------------------- |
| State with Agents | [state-management/state_with_agents.py](./state-management/state_with_agents.py) | Store in state once and later reuse across agents |
| Workflow Kwargs (Custom Context) | [state-management/workflow_kwargs.py](./state-management/workflow_kwargs.py) | Pass custom context (data, user tokens) via kwargs to `@tool` tools |
### visualization
| Sample | File | Concepts |
| ----------------------------- | -------------------------------------------------------------------------------------------------- | ------------------------------------------- |
| Concurrent with Visualization | [visualization/concurrent_with_visualization.py](./visualization/concurrent_with_visualization.py) | Fan-out/fan-in workflow with diagram export |
### declarative
YAML-based declarative workflows allow you to define multi-agent orchestration patterns without writing Python code. See the [declarative workflows README](./declarative/README.md) for more details on YAML workflow syntax and available actions.
| Sample | File | Concepts |
| -------------------- | ------------------------------------------------------------------------ | ------------------------------------------------------------- |
| Conditional Workflow | [declarative/conditional_workflow/](./declarative/conditional_workflow/) | Nested conditional branching based on user input |
| Customer Support | [declarative/customer_support/](./declarative/customer_support/) | Multi-agent customer support with routing |
| Deep Research | [declarative/deep_research/](./declarative/deep_research/) | Research workflow with planning, searching, and synthesis |
| Function Tools | [declarative/function_tools/](./declarative/function_tools/) | Invoking Python functions from declarative workflows |
| Human-in-Loop | [declarative/human_in_loop/](./declarative/human_in_loop/) | Interactive workflows that request user input |
| Marketing | [declarative/marketing/](./declarative/marketing/) | Marketing content generation workflow |
| Simple Workflow | [declarative/simple_workflow/](./declarative/simple_workflow/) | Basic workflow with variable setting, conditionals, and loops |
| Student Teacher | [declarative/student_teacher/](./declarative/student_teacher/) | Student-teacher interaction pattern |
### resources
- Sample text inputs used by certain workflows:
- [resources/long_text.txt](./resources/long_text.txt)
- [resources/email.txt](./resources/email.txt)
- [resources/spam.txt](./resources/spam.txt)
- [resources/ambiguous_email.txt](./resources/ambiguous_email.txt)
Notes
- Agent-based samples use provider SDKs (Azure/OpenAI, etc.). Ensure credentials are configured, or adapt agents accordingly.
Sequential orchestration uses a few small adapter nodes for plumbing:
- "input-conversation" normalizes input to `list[Message]`
- "to-conversation:<participant>" converts agent responses into the shared conversation
- "complete" publishes the final output event (type='output')
These may appear in event streams (executor_invoked/executor_completed). They're analogous to
concurrents dispatcher and aggregator and can be ignored if you only care about agent activity.
### Environment Variables
Workflow samples that use `AzureOpenAIResponsesClient` expect:
- `AZURE_AI_PROJECT_ENDPOINT` (Azure AI Foundry Agent Service (V2) project endpoint)
- `AZURE_AI_MODEL_DEPLOYMENT_NAME` (model deployment name)
These values are passed directly into the client constructor via `os.getenv()` in sample code.