| name | bigquery-basics |
| metadata | {"category":"BigDataAndAnalytics"} |
| description | Manages datasets, tables, and jobs in BigQuery. Use when you need to interact with BigQuery, run SQL queries, manage BigQuery resources (datasets, tables, views), or perform basic data ingestion and analysis. |
BigQuery Basics
BigQuery is a serverless, AI-ready data platform that enables high-speed
analysis of large datasets using SQL and Python. Its disaggregated architecture
separates compute and storage, allowing them to scale independently while
providing built-in machine learning, geospatial analysis, and business
intelligence capabilities.
Setup and Basic Usage
-
Enable the BigQuery API:
gcloud services enable bigquery.googleapis.com --quiet
-
Create a Dataset:
bq mk --dataset --location=US my_dataset
-
Create a Table:
Create a file named schema.json with your table schema:
[
{
"name": "name",
"type": "STRING",
"mode": "REQUIRED"
},
{
"name": "post_abbr",
"type": "STRING",
"mode": "NULLABLE"
}
]
Then create the table with the bq tool:
bq mk --table my_dataset.mytable schema.json
-
Run a Query:
bq query --use_legacy_sql=false \
'SELECT name FROM `bigquery-public-data.usa_names.usa_1910_2013` \
WHERE state = "TX" LIMIT 10'
Reference Directory
-
Core Concepts: Storage types, analytics
workflows, and BigQuery Studio features.
-
CLI Usage: Essential bq command-line tool
operations for managing data and jobs.
-
Client Libraries: Using Google Cloud
client libraries for Python, Java, Node.js, and Go.
-
MCP Usage: Using the BigQuery remote MCP server and
Gemini CLI extension.
-
Infrastructure as Code: Terraform examples for
datasets, tables, and reservations.
-
IAM & Security: Roles, permissions, and data
governance best practices.
If you need product information not found in these references, use the
Developer Knowledge MCP server search_documents tool.
Related Skills
- BigQuery AI & ML Skill:
SKILL.md file for BigQuery AI and ML capabilities (forecast, anomaly
detection, text generation).