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105 lines
3.5 KiB
Markdown
105 lines
3.5 KiB
Markdown
# Bigtable Tools Sample
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## Introduction
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This sample agent demonstrates the Bigtable first-party tools in ADK,
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distributed via the `google.adk.tools.bigtable` module. These tools include:
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1. `bigtable_list_instances`
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Fetches Bigtable instance ids in a Google Cloud project.
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1. `bigtable_get_instance_info`
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Fetches metadata information about a Bigtable instance.
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1. `bigtable_list_tables`
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Fetches table ids in a Bigtable instance.
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1. `bigtable_get_table_info`
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Fetches metadata information about a Bigtable table.
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1. `bigtable_execute_sql`
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Runs a DQL SQL query in Bigtable database.
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## How to use
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Set up environment variables in your `.env` file for using
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[Google AI Studio](https://google.github.io/adk-docs/get-started/quickstart/#gemini---google-ai-studio)
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or
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[Google Cloud Vertex AI](https://google.github.io/adk-docs/get-started/quickstart/#gemini---google-cloud-vertex-ai)
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for the LLM service for your agent. For example, for using Google AI Studio you
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would set:
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- GOOGLE_GENAI_USE_ENTERPRISE=FALSE
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- GOOGLE_API_KEY={your api key}
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### With Application Default Credentials
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This mode is useful for quick development when the agent builder is the only
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user interacting with the agent. The tools are run with these credentials.
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1. Create application default credentials on the machine where the agent would
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be running by following https://cloud.google.com/docs/authentication/provide-credentials-adc.
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1. Set `CREDENTIALS_TYPE=None` in `agent.py`
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1. Run the agent
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### With Service Account Keys
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This mode is useful for quick development when the agent builder wants to run
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the agent with service account credentials. The tools are run with these
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credentials.
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1. Create service account key by following https://cloud.google.com/iam/docs/service-account-creds#user-managed-keys.
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1. Set `CREDENTIALS_TYPE=AuthCredentialTypes.SERVICE_ACCOUNT` in `agent.py`
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1. Download the key file and replace `"service_account_key.json"` with the path
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1. Run the agent
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### With Interactive OAuth
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1. Follow
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https://developers.google.com/identity/protocols/oauth2#1.-obtain-oauth-2.0-credentials-from-the-dynamic_data.setvar.console_name.
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to get your client id and client secret. Be sure to choose "web" as your client
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type.
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1. Follow https://developers.google.com/workspace/guides/configure-oauth-consent
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to add scope "https://www.googleapis.com/auth/bigtable.admin" and
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"https://www.googleapis.com/auth/bigtable.data" as a declaration, this is used
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for review purpose.
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1. Follow
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https://developers.google.com/identity/protocols/oauth2/web-server#creatingcred
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to add http://localhost/dev-ui/ to "Authorized redirect URIs".
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Note: localhost here is just a hostname that you use to access the dev ui,
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replace it with the actual hostname you use to access the dev ui.
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1. For 1st run, allow popup for localhost in Chrome.
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1. Configure your `.env` file to add two more variables before running the
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agent:
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- OAUTH_CLIENT_ID={your client id}
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- OAUTH_CLIENT_SECRET={your client secret}
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Note: don't create a separate .env, instead put it to the same .env file that
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stores your Vertex AI or Dev ML credentials
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1. Set `CREDENTIALS_TYPE=AuthCredentialTypes.OAUTH2` in `agent.py` and run the
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agent
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## Sample prompts
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- Show me all instances in the my-project.
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- Show me all tables in the my-instance instance in my-project.
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- Describe the schema of the my-table table in the my-instance instance in my-project.
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- Show me the first 10 rows of data from the my-table table in the my-instance instance in my-project.
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