# ADK Answering Agent The ADK Answering Agent is a Python-based agent designed to help answer questions in GitHub discussions for the `google/adk-python` repository. It uses a large language model to analyze open discussions, retrieve information from document store, generate response, and post a comment in the github discussion. This agent can be operated in three distinct modes: - An interactive mode for local use. - A batch script mode for oncall use. - A fully automated GitHub Actions workflow. ______________________________________________________________________ ## Interactive Mode This mode allows you to run the agent locally to review its recommendations in real-time before any changes are made to your repository's issues. ### Features - **Web Interface**: The agent's interactive mode can be rendered in a web browser using the ADK's `adk web` command. - **User Approval**: In interactive mode, the agent is instructed to ask for your confirmation before posting a comment to a GitHub issue. - **Question & Answer**: You can ask ADK related questions, and the agent will provide answers based on its knowledge on ADK. ### Running in Interactive Mode To run the agent in interactive mode, first set the required environment variables. Then, execute the following command in your terminal: ```bash adk web ``` This will start a local server and provide a URL to access the agent's web interface in your browser. ______________________________________________________________________ ## Batch Script Mode The `main.py` script supports batch processing for ADK oncall team to process discussions. ### Features - **Single Discussion**: Process a specific discussion by providing its number. - **Batch Process**: Process the N most recently updated discussions. - **Direct Discussion Data**: Process a discussion using JSON data directly (optimized for GitHub Actions). ### Running in Batch Script Mode To run the agent in batch script mode, first set the required environment variables. Then, execute one of the following commands: ```bash export PYTHONPATH=contributing/samples # Answer a specific discussion python -m adk_answering_agent.main --discussion_number 27 # Answer the 10 most recent updated discussions python -m adk_answering_agent.main --recent 10 # Answer a discussion using direct JSON data (saves API calls) python -m adk_answering_agent.main --discussion '{"number": 27, "title": "How to...", "body": "I need help with...", "author": {"login": "username"}}' ``` ______________________________________________________________________ ## GitHub Workflow Mode The `main.py` script is automatically triggered by GitHub Actions when new discussions are created in the Q&A category. The workflow is configured in `.github/workflows/discussion_answering.yml` and automatically processes discussions using the `--discussion` flag with JSON data from the GitHub event payload. ### Optimization The GitHub Actions workflow passes discussion data directly from `github.event.discussion` using `toJson()`, eliminating the need for additional API calls to fetch discussion information that's already available in the event payload. This makes the workflow faster and more reliable. ______________________________________________________________________ ## Update the Knowledge Base The `upload_docs_to_vertex_ai_search.py` is a script to upload ADK related docs to Vertex AI Search datastore to update the knowledge base. It can be executed with the following command in your terminal: ```bash export PYTHONPATH=contributing/samples # If not already exported python -m adk_answering_agent.upload_docs_to_vertex_ai_search ``` ## Setup and Configuration Whether running in interactive or workflow mode, the agent requires the following setup. ### Dependencies The agent requires the following Python libraries. ```bash pip install --upgrade pip pip install google-adk ``` The agent also requires gcloud login: ```bash gcloud auth application-default login ``` The upload script requires the following additional Python libraries. ```bash pip install google-cloud-storage google-cloud-discoveryengine ``` ### Environment Variables The following environment variables are required for the agent to connect to the necessary services. - `GITHUB_TOKEN=YOUR_GITHUB_TOKEN`: **(Required)** A GitHub Personal Access Token with `issues:write` permissions. Needed for both interactive and workflow modes. - `GOOGLE_GENAI_USE_ENTERPRISE=TRUE`: **(Required)** Use Google Vertex AI for the authentication. - `GOOGLE_CLOUD_PROJECT=YOUR_PROJECT_ID`: **(Required)** The Google Cloud project ID. - `GOOGLE_CLOUD_LOCATION=LOCATION`: **(Required)** The Google Cloud region. - `VERTEXAI_DATASTORE_ID=YOUR_DATASTORE_ID`: **(Required)** The full Vertex AI datastore ID for the document store (i.e. knowledge base), with the format of `projects/{project_number}/locations/{location}/collections/{collection}/dataStores/{datastore_id}`. - `OWNER`: The GitHub organization or username that owns the repository (e.g., `google`). Needed for both modes. - `REPO`: The name of the GitHub repository (e.g., `adk-python`). Needed for both modes. - `INTERACTIVE`: Controls the agent's interaction mode. For the automated workflow, this is set to `0`. For interactive mode, it should be set to `1` or left unset. The following environment variables are required to upload the docs to update the knowledge base. - `GCS_BUCKET_NAME=YOUR_GCS_BUCKET_NAME`: **(Required)** The name of the GCS bucket to store the documents. - `ADK_DOCS_ROOT_PATH=YOUR_ADK_DOCS_ROOT_PATH`: **(Required)** Path to the root of the downloaded adk-docs repo. - `ADK_PYTHON_ROOT_PATH=YOUR_ADK_PYTHON_ROOT_PATH`: **(Required)** Path to the root of the downloaded adk-python repo. For local execution in interactive mode, you can place these variables in a `.env` file in the project's root directory. For the GitHub workflow, they should be configured as repository secrets.