# ADK Workflow Nested Workflow Sample ## Overview This sample demonstrates how to compose workflows by embedding one workflow inside another as a single node in **ADK Workflows**. It takes a 4-digit year as input and performs two tasks in parallel: 1. **Historical Event (`find_historical_event`)**: A straightforward Agent node that generates a 2-sentence description of an event that happened that year. 1. **Famous Person (`find_famous_person`)**: A nested Workflow that first finds a person born in that year (`find_name`), and then forwards that name to another agent to write a biography (`generate_bio`). From the perspective of the `root_agent` workflow, `find_famous_person` is just another node. The root workflow doesn't need to know the internal steps; it just waits for the parallel branches to finish, then synchronizes their outputs using a `JoinNode` before formatting them in `aggregate_results`. ## Sample Inputs - `1969` - `2000` - `1984` ## Graph ### Root Workflow (`root_agent`) ```mermaid graph TD START --> process_input process_input --> find_historical_event[find_historical_event
AGENT] process_input --> find_famous_person[find_famous_person
WORKFLOW] find_historical_event --> join_for_aggregation[join_for_aggregation
JOIN] find_famous_person --> join_for_aggregation join_for_aggregation --> aggregate_results ``` ### Nested Workflow (`find_famous_person`) ```mermaid graph TD START --> find_name find_name --> generate_bio ``` ## How To 1. Define your sub-workflow just like any regular workflow. Ensure it accepts the required state (e.g., `year`) and outputs the expected state (e.g., `person_bio`). ```python find_famous_person = Workflow( name="find_famous_person", edges=[("START", find_name, generate_bio)], ) ``` 1. Treat the sub-workflow as a normal node when defining the edges of the parent workflow. To run them concurrently, place the nodes in a tuple, then use a `JoinNode` to synchronize their parallel executions before the final aggregation. ```python root_agent = Workflow( name="root_agent", edges=[ ("START", process_input, (find_famous_person, find_historical_event), join_for_aggregation, aggregate_results), ], ) ```