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165 lines
7.0 KiB
Markdown
165 lines
7.0 KiB
Markdown
# Harness Agent Samples
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This folder demonstrates `create_harness_agent` — a factory function that builds a
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pre-configured, batteries-included agent by assembling the full agent pipeline
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from a chat client.
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## What is `create_harness_agent`?
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`create_harness_agent` bundles the following features into a single `Agent` instance:
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| Feature | Description |
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|---------|-------------|
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| Function invocation | Automatic tool calling loop |
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| Per-service-call persistence | History persisted after every model call |
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| Compaction | Context-window management (sliding window + tool result compaction) |
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| TodoProvider | Todo list management for planning and tracking |
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| AgentModeProvider | Plan/execute mode tracking |
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| MemoryContextProvider | File-based durable memory (when `memory_store` provided) |
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| SkillsProvider | File-based skill discovery and progressive loading |
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| Shell tool | Shell command execution + environment probing (when `shell_executor` provided) |
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| Tool approval | "Don't ask again" standing rules + heuristic auto-approval (enabled by default) |
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| Looping | Re-invoke the agent until a `loop_should_continue` predicate is satisfied (when provided) |
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| OpenTelemetry | Built-in observability |
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Each feature can be disabled or customized via keyword arguments.
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## Samples
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| File | Description |
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|------|-------------|
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| `harness_research.py` | Interactive research assistant with web search, a plan/execute workflow, and an execute-mode loop that re-invokes the agent until every todo is complete |
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| `harness_data_processing.py` | Data-processing assistant over a folder of CSV files, demonstrating file-access tools and tool approval |
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| [`build_your_own_claw/`](./build_your_own_claw/README.md) | *Build your own claw* blog series — a personal finance assistant built step by step |
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## Running
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```bash
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# Set your Foundry environment variables
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export FOUNDRY_PROJECT_ENDPOINT="https://your-project.services.ai.azure.com/api/projects/your-project-name"
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export FOUNDRY_MODEL="your-model-deployment-name"
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# Authenticate with Azure (required for AzureCliCredential)
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az login
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# Run a sample against the released agent-framework (PEP 723 isolated env)
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uv run samples/02-agents/harness/harness_research.py
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```
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### Running against the local repo
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To run a sample against your **local** `agent-framework` checkout (so it picks
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up uncommitted changes), use the workspace environment instead of the isolated
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PEP 723 env. From the `python/` directory, run the script with `uv run python`
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and add the `textual` UI dependency the harness console needs:
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```bash
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uv run --with textual python samples/02-agents/harness/harness_research.py
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uv run --with textual python samples/02-agents/harness/harness_data_processing.py
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```
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The workspace environment already provides the editable `agent-framework`
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packages plus the samples' other dependencies (`rich`, `python-dotenv`,
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`azure-identity`); only `textual` needs to be supplied with `--with`.
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> Note: invoking `uv run python <script>` (with `python`) bypasses the PEP 723
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> metadata and uses the workspace env; `uv run <script>` (without `python`)
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> uses the isolated env with the released package.
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## Key Concepts
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### Minimal Setup
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`create_harness_agent` requires only a chat client:
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```python
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from agent_framework import create_harness_agent
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from agent_framework.foundry import FoundryChatClient
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from azure.identity import AzureCliCredential
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agent = create_harness_agent(
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client=FoundryChatClient(credential=AzureCliCredential()),
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)
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```
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### With Compaction
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Provide token budget parameters to enable automatic context-window compaction:
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```python
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agent = create_harness_agent(
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client=FoundryChatClient(credential=AzureCliCredential()),
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max_context_window_tokens=128_000,
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max_output_tokens=16_384,
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)
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```
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### Further Customization
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Disable or customize any feature:
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```python
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agent = create_harness_agent(
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client=client,
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max_context_window_tokens=128_000,
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max_output_tokens=16_384,
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name="my-agent",
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agent_instructions="Custom instructions here.",
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disable_todo=True, # Skip todo management
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disable_mode=True, # Skip plan/execute modes
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disable_compaction=True, # Skip compaction
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)
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```
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### Plan/Execute Workflow
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The `AgentModeProvider` enables a two-phase workflow:
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1. **Plan mode** — Interactive: the agent asks questions, creates todos, gets approval
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2. **Execute mode** — Autonomous: the agent works through todos independently
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### Shell Tool
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Pass a shell executor (e.g. `LocalShellTool` from `agent-framework-tools`) to enable shell
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command execution plus automatic environment probing via a `ShellEnvironmentProvider`. The
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tool is only wired when the chat client supports shell tools; otherwise a warning is logged
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and the shell tool/provider are skipped. The caller owns the executor's lifecycle.
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```python
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from agent_framework_tools.shell import LocalShellTool, ShellEnvironmentProviderOptions
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async with LocalShellTool(acknowledge_unsafe=True) as shell:
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agent = create_harness_agent(
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client=client,
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max_context_window_tokens=128_000,
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max_output_tokens=16_384,
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shell_executor=shell,
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# Optional: customize environment probing.
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shell_environment_provider_options=ShellEnvironmentProviderOptions(probe_tools=("git", "python")),
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)
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```
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## Security Considerations
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Several harness capabilities extend the agent's trust boundary to external systems the developer
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configures. Each is opt-in and requires explicit configuration by the developer, who is responsible
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for vetting the external service, agent, skill source, or provider before enabling it:
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- **`background_agents`** (`BackgroundAgentsProvider`) — delegates work to developer-supplied agents,
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which receive input from the parent and whose output is fed back into its context. A compromised
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agent could exfiltrate data or inject adversarial content via indirect prompt injection. Vet all
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supplied agents.
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- **External skill sources** (`skills_provider` with e.g. `MCPSkillsSource`) — load skill content,
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and potentially scripts, from a remote source. A compromised source could return adversarial skills
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(indirect prompt injection) or exfiltrate data. Only enable sources you trust.
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- **`AgentLoopMiddleware.with_judge`** — sends the request and the agent's latest response to a second,
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external judge chat client on every iteration. A compromised judge could exfiltrate that data or
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return manipulated feedback. Trust the judge as much as the primary model.
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- **`SummarizationStrategy`** (via `before_compaction_strategy` / `after_compaction_strategy`) — calls
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out to an LLM whose output permanently becomes chat history. A compromised summarization service
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could inject unsafe, persistent instructions. Only use a service you trust as much as the primary
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model.
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- **Telemetry** — when observability is enabled, telemetry destinations are developer-configured.
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Default telemetry is metadata only; enabling sensitive data additionally emits raw message content,
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tool arguments, and tool results. See the [observability samples](../observability/README.md).
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