Gemini in BigQuery overview

This document describes how Gemini in BigQuery, which is part of the Gemini for Google Cloud product suite, provides AI-powered assistance to help you work with your data.

AI assistance with Gemini in BigQuery

Gemini in BigQuery provides AI assistance to help you do the following:

The Gemini large language models (LLMs) that are used by Gemini in BigQuery are trained on datasets of publicly available code, Google Cloud-specific material, and other relevant technical information in addition to the datasets used to train the Gemini foundation models. Models are trained so that Gemini in BigQuery responses are as useful to Gemini in BigQuery users as possible.

Learn how and when Gemini for Google Cloud uses your data. As an early-stage technology, Gemini for Google Cloud products can generate output that seems plausible but is factually incorrect. We recommend that you validate all output from Gemini for Google Cloud products before you use it. For more information, see Gemini for Google Cloud and responsible AI.

Pricing

See Gemini for Google Cloud pricing.

Quotas and limits

For quotas and limits that apply to Gemini in BigQuery, see Gemini for Google Cloud quotas and limits.

Where to interact with Gemini in BigQuery

After you set up Gemini in BigQuery, you can use Gemini in BigQuery to do the following in BigQuery Studio:

  • To generate data insights, go to the Insights tab for a table entry, where you can identify patterns, assess quality, and run statistical analysis across your BigQuery data.
  • To use data canvas, create a data canvas or use data canvas from a table or query to explore data assets with natural language and share your canvases.
  • To use natural language to generate SQL or Python code, or receive suggestions with autocomplete while typing, use the SQL generation tool for your SQL queries or Python code. Gemini in BigQuery can also explain your SQL code in natural language.
  • To prepare data for analysis, in the Create new list, select Data preparation. For more information, see Open the data preparation editor in BigQuery.
  • To view recommendations for partitioning, clustering, and materialized views, click Recommendations in the Google Cloud console toolbar.

Troubleshoot Spark jobs

Advanced troubleshooting provides natural language answers to "What is happening now?" and "What can I do about it?"

Set up Gemini in BigQuery

For detailed setup steps, see Set up Gemini in BigQuery.

What's next