# Copy as .env file and fill your values below # Run ./update_dotenv_example.sh to update .env-example from your .env file. # Choose Model Backend: 0 -> ML Dev, 1 -> Vertex GOOGLE_GENAI_USE_VERTEXAI=1 # ML Dev backend config GOOGLE_API_KEY=YOUR_VALUE_HERE # Vertex backend config # Rag Engine only works with Vertex. So we should configure it to use Vertex: GOOGLE_CLOUD_PROJECT=YOUR_VALUE_HERE GOOGLE_CLOUD_LOCATION=YOUR_VALUE_HERE # Existing corpus in Vertex RAG Engine to be used by RAG agent # e.g. projects/123/locations/us-central1/ragCorpora/456 RAG_CORPUS=YOUR_VALUE_HERE # Staging bucket name for ADK agent deployment to Vertex AI Agent Engine (Shall respect this format gs://your-bucket-name) STAGING_BUCKET=YOUR_VALUE_HERE # Agent Engine ID in the following format: projects//locations/us-central1/reasoningEngines/ AGENT_ENGINE_ID=YOUR_VALUE_HERE