# Copyright (c) 2025 Agentspan # Licensed under the MIT License. See LICENSE file in the project root for details. """Human-in-the-Loop with Custom Feedback. Demonstrates the general-purpose `respond()` API. Instead of a binary approve/reject, the human can send arbitrary feedback that the LLM processes on its next iteration. Uses interactive streaming with schema-driven console prompts. Use case: a content-publishing agent writes a blog post, and a human editor can approve, reject, or provide revision notes. The agent incorporates the feedback and tries again. Requirements: - Conductor server with LLM support - AGENTSPAN_SERVER_URL=http://localhost:6767/api as environment variable - AGENTSPAN_LLM_MODEL=openai/gpt-4o-mini as environment variable """ from agentspan.agents import Agent, AgentRuntime, EventType, tool from settings import settings @tool(approval_required=True) def publish_article(title: str, body: str) -> dict: """Publish an article to the blog. Requires editorial approval.""" return {"status": "published", "title": title, "url": f"/blog/{title.lower().replace(' ', '-')}"} agent = Agent( name="writer", model=settings.llm_model, tools=[publish_article], instructions=( "You are a blog writer. When asked to write about a topic, draft an article " "and publish it using the publish_article tool. If you receive editorial " "feedback, revise the article and try publishing again." ), ) if __name__ == "__main__": with AgentRuntime() as runtime: handle = runtime.start(agent, "Write a short blog post about the benefits of code review") print(f"Started: {handle.execution_id}\n") for event in handle.stream(): if event.type == EventType.THINKING: print(f" [thinking] {event.content}") elif event.type == EventType.TOOL_CALL: print(f" [tool_call] {event.tool_name}({event.args})") elif event.type == EventType.TOOL_RESULT: print(f" [tool_result] {event.tool_name} -> {str(event.result)[:100]}") elif event.type == EventType.WAITING: status = handle.get_status() pt = status.pending_tool or {} schema = pt.get("response_schema", {}) props = schema.get("properties", {}) print("\n--- Human input required ---") response = {} for field, fs in props.items(): desc = fs.get("description") or fs.get("title", field) if fs.get("type") == "boolean": val = input(f" {desc} (y/n): ").strip().lower() response[field] = val in ("y", "yes") else: response[field] = input(f" {desc}: ").strip() handle.respond(response) print() elif event.type == EventType.DONE: print(f"\nDone: {event.output}") # Non-interactive alternative (no HITL, will block on human tasks): # result = runtime.run(agent, "Write a short blog post outline about the benefits of code review. Do not publish it.") # result.print_result() # Production pattern: # 1. Deploy once during CI/CD: # runtime.deploy(agent) # # 2. In a separate long-lived worker process: # runtime.serve(agent)