Manages datasets, tables, and jobs in BigQuery, and integrates with BigQuery ML and Gemini for advanced data analytics and AI-driven insights. Use for SQL queries, resource management, data ingestion, or AI applications on BigQuery.
Install with the open skills CLI (global, non-interactive — available in every Claude Code session):
npx skills add davila7/claude-code-templates --skill "bigquery-basics" -g -a claude-code -yOr manually — clone and copy the skill directory (SKILL.md + companion files):
git clone --depth 1 https://github.com/davila7/claude-code-templates /tmp/claude-code-templates && cp -r /tmp/claude-code-templates/cli-tool/components/skills/database/bigquery-basics ~/.claude/skills/bigquery-basicsThis skill is a directory: SKILL.md is the entry point; the files below ship with it.
---
name: bigquery-basics
description: Manages datasets, tables, and jobs in BigQuery, and integrates with BigQuery ML and Gemini for advanced data analytics and AI-driven insights. Use for SQL queries, resource management, data ingestion, or AI applications on BigQuery.
source: google/skills (Apache 2.0)
---
# 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
1. **Enable the BigQuery API:**
```bash
gcloud services enable bigquery.googleapis.com --quiet
```
2. **Create a Dataset:**
```bash
bq mk --dataset --location=US my_dataset
```
3. **Create a Table:**
Create a file named `schema.json` with your table schema:
```json
[
{
"name": "name",
"type": "STRING",
"mode": "REQUIRED"
},
{
"name": "post_abbr",
"type": "STRING",
"mode": "NULLABLE"
}
]
```
Then create the table with the `bq` tool:
```bash
bq mk --table my_dataset.mytable schema.json
```
4. **Run a Query:**
```bash
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](references/core-concepts.md): Storage types, analytics
workflows, and BigQuery Studio features.
- [CLI Usage](references/cli-usage.md): Essential `bq` command-line tool
operations for managing data and jobs.
- [Client Libraries](references/client-library-usage.md): Using Google Cloud
client libraries for Python, Java, Node.js, and Go.
- [MCP Usage](references/mcp-usage.md): Using the BigQuery remote MCP server and
Gemini CLI extension.
- [Infrastructure as Code](references/iac-usage.md): Terraform examples for
datasets, tables, and reservations.
- [IAM & Security](references/iam-security.md): 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](https://github.com/google/adk-python/tree/main/src/google/adk/tools/bigquery/skills/bigquery-ai-ml):
SKILL.md file for BigQuery AI and ML capabilities.
- [BigQuery AI & ML References](https://github.com/google/adk-python/tree/main/src/google/adk/tools/bigquery/skills/bigquery-ai-ml/references):
Reference files published for the BigQuery AI and ML skill.
- [bigquery_ai_classify.md](https://github.com/google/adk-python/blob/main/src/google/adk/tools/bigquery/skills/bigquery-ai-ml/references/bigquery_ai_classify.md)
- [bigquery_ai_detect_anomalies.md](https://github.com/google/adk-python/blob/main/src/google/adk/tools/bigquery/skills/bigquery-ai-ml/references/bigquery_ai_detect_anomalies.md)
- [bigquery_ai_forecast.md](https://github.com/google/adk-python/blob/main/src/google/adk/tools/bigquery/skills/bigquery-ai-ml/references/bigquery_ai_forecast.md)
- [bigquery_ai_generate.md](https://github.com/google/adk-python/blob/main/src/google/adk/tools/bigquery/skills/bigquery-ai-ml/references/bigquery_ai_generate.md)
- [bigquery_ai_generate_bool.md](https://github.com/google/adk-python/blob/main/src/google/adk/tools/bigquery/skills/bigquery-ai-ml/references/bigquery_ai_generate_bool.md)
- [bigquery_ai_generate_double.md](https://github.com/google/adk-python/blob/main/src/google/adk/tools/bigquery/skills/bigquery-ai-ml/references/bigquery_ai_generate_double.md)
- [bigquery_ai_generate_int.md](https://github.com/google/adk-python/blob/main/src/google/adk/tools/bigquery/skills/bigquery-ai-ml/references/bigquery_ai_generate_int.md)
- [bigquery_ai_if.md](https://github.com/google/adk-python/blob/main/src/google/adk/tools/bigquery/skills/bigquery-ai-ml/references/bigquery_ai_if.md)
- [bigquery_ai_score.md](https://github.com/google/adk-python/blob/main/src/google/adk/tools/bigquery/skills/bigquery-ai-ml/references/bigquery_ai_score.md)
- [bigquery_ai_search.md](https://github.com/google/adk-python/blob/main/src/google/adk/tools/bigquery/skills/bigquery-ai-ml/references/bigquery_ai_search.md)
- [bigquery_ai_similarity.md](https://github.com/google/adk-python/blob/main/src/google/adk/tools/bigquery/skills/bigquery-ai-ml/references/bigquery_ai_similarity.md)
Build fully-integrated 3-statement models (IS, BS, CF) in Excel with working capital schedules, D&A roll-forwards, debt schedule, and the plugs that make cash and retained earnings tie. Pairs with excel-author.
Give the agent its own dedicated email inbox via AgentMail. Send, receive, and manage email autonomously using agent-owned email addresses (e.g. hermes-agent@agentmail.to).
Airtable REST API via curl. Records CRUD, filters, upserts.