# ADK Task as Sub-agent Sample ## Overview This sample demonstrates how a "task mode" agent can act as a sub-agent to an LLM agent, effectively extracting structured data from a conversational flow. The main agent (`coordinator`) delegates interactions to two sub-agents: 1. `order_collector`: A task agent that collects the user's food order (from a menu of Pizza, Burger, Salad) and returns a structured list of selected items as a `list[OrderItem]`. 1. `payment_collector`: A task agent that collects the user's credit card and CVV information, returning a `PaymentInfo` object. Once the tasks are completed, the coordinator automatically uses a `place_order` tool with the structured data returned by both agents. ## Sample Inputs - `I would like to order some food please.` - `I want 2 pizzas and 1 salad.` - `My credit card is 1234-5678-9012-3456 and my CVV is 123.` ## Graph ```mermaid graph TD coordinator --> order_collector coordinator --> payment_collector coordinator -.->|uses| place_order[place_order tool] ``` ## How To 1. Define a sub-agent with `mode="task"` and an output schema: ```python order_collector = Agent( name="order_collector", mode="task", output_schema=list[OrderItem], ... ) ``` 1. Assign it to a parent agent and use it in the instruction to collect the information: ```python coordinator = Agent( sub_agents=[order_collector], instruction="Delegate using `order_collector`...", ... ) ``` ## Related Guides - [LlmAgent Task Mode](../../../../docs/guides/agents/llm_agent/task.md) - Guide explaining the behavior and configuration of task-mode agents.