How to connect Google Cloud BigQuery (REST) and Google Vertex AI
Create a New Scenario to Connect Google Cloud BigQuery (REST) and Google Vertex AI
In the workspace, click the “Create New Scenario” button.

Add the First Step
Add the first node – a trigger that will initiate the scenario when it receives the required event. Triggers can be scheduled, called by a Google Cloud BigQuery (REST), triggered by another scenario, or executed manually (for testing purposes). In most cases, Google Cloud BigQuery (REST) or Google Vertex AI will be your first step. To do this, click "Choose an app," find Google Cloud BigQuery (REST) or Google Vertex AI, and select the appropriate trigger to start the scenario.

Add the Google Cloud BigQuery (REST) Node
Select the Google Cloud BigQuery (REST) node from the app selection panel on the right.

Google Cloud BigQuery (REST)
Configure the Google Cloud BigQuery (REST)
Click on the Google Cloud BigQuery (REST) node to configure it. You can modify the Google Cloud BigQuery (REST) URL and choose between DEV and PROD versions. You can also copy it for use in further automations.
Add the Google Vertex AI Node
Next, click the plus (+) icon on the Google Cloud BigQuery (REST) node, select Google Vertex AI from the list of available apps, and choose the action you need from the list of nodes within Google Vertex AI.

Google Cloud BigQuery (REST)
⚙
Google Vertex AI
Authenticate Google Vertex AI
Now, click the Google Vertex AI node and select the connection option. This can be an OAuth2 connection or an API key, which you can obtain in your Google Vertex AI settings. Authentication allows you to use Google Vertex AI through Latenode.
Configure the Google Cloud BigQuery (REST) and Google Vertex AI Nodes
Next, configure the nodes by filling in the required parameters according to your logic. Fields marked with a red asterisk (*) are mandatory.
Set Up the Google Cloud BigQuery (REST) and Google Vertex AI Integration
Use various Latenode nodes to transform data and enhance your integration:
- Branching: Create multiple branches within the scenario to handle complex logic.
- Merging: Combine different node branches into one, passing data through it.
- Plug n Play Nodes: Use nodes that don’t require account credentials.
- Ask AI: Use the GPT-powered option to add AI capabilities to any node.
- Wait: Set waiting times, either for intervals or until specific dates.
- Sub-scenarios (Nodules): Create sub-scenarios that are encapsulated in a single node.
- Iteration: Process arrays of data when needed.
- Code: Write custom code or ask our AI assistant to do it for you.

JavaScript
⚙
AI Anthropic Claude 3
⚙
Google Vertex AI
Trigger on Webhook
⚙
Google Cloud BigQuery (REST)
⚙
⚙
Iterator
⚙
Webhook response
Save and Activate the Scenario
After configuring Google Cloud BigQuery (REST), Google Vertex AI, and any additional nodes, don’t forget to save the scenario and click "Deploy." Activating the scenario ensures it will run automatically whenever the trigger node receives input or a condition is met. By default, all newly created scenarios are deactivated.
Test the Scenario
Run the scenario by clicking “Run once” and triggering an event to check if the Google Cloud BigQuery (REST) and Google Vertex AI integration works as expected. Depending on your setup, data should flow between Google Cloud BigQuery (REST) and Google Vertex AI (or vice versa). Easily troubleshoot the scenario by reviewing the execution history to identify and fix any issues.
Most powerful ways to connect Google Cloud BigQuery (REST) and Google Vertex AI
Google Cloud BigQuery (REST) + Google Vertex AI + Google Sheets: Execute a BigQuery query, analyze the data with Vertex AI's Gemini model, and then insert the insights into a Google Sheet for reporting purposes.
Google Cloud BigQuery (REST) + Google Vertex AI + Slack: Analyze BigQuery data with Vertex AI Gemini, then send a Slack message if anomalies are detected. This facilitates real-time monitoring and response to data changes.
Google Cloud BigQuery (REST) and Google Vertex AI integration alternatives
About Google Cloud BigQuery (REST)
Automate BigQuery data workflows in Latenode. Query and analyze massive datasets directly within your automation scenarios, bypassing manual SQL. Schedule queries, transform results with JavaScript, and pipe data to other apps. Scale your data processing without complex coding or expensive per-operation fees. Perfect for reporting, analytics, and data warehousing automation.
Similar apps
Related categories
About Google Vertex AI
Use Vertex AI in Latenode to build AI-powered automation. Quickly integrate machine learning models for tasks like sentiment analysis or image recognition. Automate data enrichment or content moderation workflows without complex coding. Latenode’s visual editor makes it easier to chain AI tasks and scale them reliably, paying only for the execution time of each flow.
Similar apps
Related categories
See how Latenode works
FAQ Google Cloud BigQuery (REST) and Google Vertex AI
How can I connect my Google Cloud BigQuery (REST) account to Google Vertex AI using Latenode?
To connect your Google Cloud BigQuery (REST) account to Google Vertex AI on Latenode, follow these steps:
- Sign in to your Latenode account.
- Navigate to the integrations section.
- Select Google Cloud BigQuery (REST) and click on "Connect".
- Authenticate your Google Cloud BigQuery (REST) and Google Vertex AI accounts by providing the necessary permissions.
- Once connected, you can create workflows using both apps.
Can I analyze BigQuery data with Vertex AI models?
Yes, you can! Latenode simplifies this by connecting the apps with a visual interface. Benefit: Quickly gain AI-driven insights from your data using serverless architecture that scales automatically.
What types of tasks can I perform by integrating Google Cloud BigQuery (REST) with Google Vertex AI?
Integrating Google Cloud BigQuery (REST) with Google Vertex AI allows you to perform various tasks, including:
- Train custom machine learning models using data stored in BigQuery.
- Deploy trained Vertex AI models to score new data from BigQuery.
- Automate data preprocessing pipelines before feeding into Vertex AI.
- Generate predictions on large datasets in BigQuery using Vertex AI.
- Build real-time dashboards with AI-powered insights from BigQuery data.
How secure is BigQuery data access in Latenode?
Latenode uses secure authentication and authorization protocols, ensuring that your BigQuery data is accessed safely, using permissions you grant.
Are there any limitations to the Google Cloud BigQuery (REST) and Google Vertex AI integration on Latenode?
While the integration is powerful, there are certain limitations to be aware of:
- Large data transfers may incur additional Google Cloud costs.
- Complex model training can consume significant Vertex AI resources.
- Real-time predictions are subject to Vertex AI endpoint availability.