| name | looker-studio-bigquery |
| description | Design and configure Looker Studio dashboards with BigQuery data sources. Use when creating analytics dashboards, connecting BigQuery to visualization tools, or optimizing data pipeline performance. Handles BigQuery connections, custom SQL queries, scheduled queries, dashboard design, and performance optimization. |
| metadata | {"tags":"Looker-Studio, BigQuery, dashboard, analytics, visualization, GCP, data-studio, SQL","platforms":"Claude, ChatGPT, Gemini"} |
Looker Studio BigQuery Integration
When to use this skill
- Analytics dashboard creation: Visualizing BigQuery data to derive business insights
- Real-time reporting: Building auto-refreshing dashboards
- Performance optimization: Optimizing query costs and loading time for large datasets
- Data pipeline: Automating ETL processes with scheduled queries
- Team collaboration: Building shareable interactive dashboards
Instructions
Step 1: Prepare GCP BigQuery Environment
Project creation and activation
Create a new project in Google Cloud Console and enable the BigQuery API.
gcloud projects create my-analytics-project
gcloud config set project my-analytics-project
gcloud services enable bigquery.googleapis.com
Create dataset and table
CREATE SCHEMA `my-project.analytics_dataset`
OPTIONS(
description="Analytics dataset",
location="US"
);
CREATE TABLE `my-project.analytics_dataset.events` (
event_date DATE,
event_name STRING,
user_id INT64,
event_value FLOAT64,
event_timestamp TIMESTAMP,
geo_country STRING,
device_category STRING
);
IAM permission configuration
Grant IAM permissions so Looker Studio can access BigQuery:
| Role | Description |
|---|
BigQuery Data Viewer | Table read permission |
BigQuery User | Query execution permission |
BigQuery Job User | Job execution permission |
Step 2: Connecting BigQuery in Looker Studio
Using native BigQuery connector (recommended)
- On Looker Studio homepage, click + Create → Data Source
- Search for "BigQuery" and select Google BigQuery connector
- Authenticate with Google account
- Select project, dataset, and table
- Click Connect to create data source
Custom SQL query approach
Write SQL directly when complex data transformation is needed:
SELECT
event_date,
event_name,
COUNT(DISTINCT user_id) as unique_users,
SUM(event_value) as total_revenue,
AVG(event_value) as avg_revenue_per_event
FROM `my-project.analytics_dataset.events`
WHERE event_date >= DATE_SUB(CURRENT_DATE(), INTERVAL 30 DAY)
GROUP BY event_date, event_name
ORDER BY event_date DESC
Advantages:
- Handle complex data transformations in SQL
- Pre-aggregate data in BigQuery to reduce query costs
- Improved performance by not loading all data every time
Multiple table join approach
SELECT
e.event_date,
e.event_name,
u.user_country,
u.user_tier,
COUNT(DISTINCT e.user_id) as unique_users,
SUM(e.event_value) as revenue
FROM `my-project.analytics_dataset.events` e
LEFT JOIN `my-project.analytics_dataset.users` u
ON e.user_id = u.user_id
WHERE e.event_date >= DATE_SUB(CURRENT_DATE(), INTERVAL 90 DAY)
GROUP BY e.event_date, e.event_name, u.user_country, u.user_tier
Step 3: Performance Optimization with Scheduled Queries
Use scheduled queries instead of live queries to periodically pre-compute data:
CREATE OR REPLACE TABLE `my-project.analytics_dataset.daily_summary` AS
SELECT
CURRENT_DATE() as report_date,
event_name,
user_country,
COUNT(DISTINCT user_id) as daily_users,
SUM(event_value) as daily_revenue,
AVG(event_value) as avg_event_value,
MAX(event_timestamp) as last_event_time
FROM `my-project.analytics_dataset.events`
WHERE event_date = CURRENT_DATE() - 1
GROUP BY event_name, user_country
Configure as scheduled query in BigQuery UI:
- Runs automatically daily
- Saves results to a new table
- Looker Studio connects to the pre-computed table
Advantages:
- Reduce Looker Studio loading time (50-80%)
- Reduce BigQuery costs (less data scanned)
- Improved dashboard refresh speed
Step 4: Dashboard Layout Design
F-pattern layout
Use the F-pattern that follows the natural reading flow of users:
┌─────────────────────────────────────┐
│ Header: Logo | Filters/Date Picker │ ← Users see this first
├─────────────────────────────────────┤
│ KPI 1 │ KPI 2 │ KPI 3 │ KPI 4 │ ← Key metrics (3-4)
├─────────────────────────────────────┤
│ │
│ Main Chart (time series/comparison) │ ← Deep insights
│ │
├─────────────────────────────────────┤
│ Concrete data table │ ← Detailed analysis
│ (Drilldown enabled) │
├─────────────────────────────────────┤
│ Additional Insights / Map / Heatmap │
└─────────────────────────────────────┘
Dashboard components
| Element | Purpose | Example |
|---|
| Header | Dashboard title, logo, filter placement | "2026 Q1 Sales Analysis" |
| KPI tiles | Display key metrics at a glance | Total revenue, MoM growth rate, active users |
| Trend charts | Changes over time | Line chart showing daily/weekly revenue trend |
| Comparison charts | Compare across categories | Bar chart comparing sales by region/product |
| Distribution charts | Visualize data distribution | Heatmap, scatter plot, bubble chart |
| Detail tables | Provide exact figures | Conditional formatting to highlight thresholds |
| Map | Geographic data | Revenue distribution by country/region |
Real example: E-commerce dashboard
┌──────────────────────────────────────────────────┐
│ 📊 Jan 2026 Sales Analysis | 🔽 Country | 📅 Date │
├──────────────────────────────────────────────────┤
│ Total Revenue: $125,000 │ Orders: 3,200 │ Conversion: 3.5% │
├──────────────────────────────────────────────────┤
│ Daily Revenue Trend (Line Chart) │
│ ↗ Upward trend: +15% vs last month │
├──────────────────────────────────────────────────┤
│ Sales by Category │ Top 10 Products │
│ (Bar chart) │ (Table, sortable) │
├──────────────────────────────────────────────────┤
│ Revenue Distribution by Region (Map) │
└──────────────────────────────────────────────────┘
Step 5: Interactive Filters and Controls
Filter types
1. Date range filter (required)
- Select specific period via calendar
- Pre-defined options like "Last 7 days", "This month"
- Connected to dataset, auto-applied to all charts
2. Dropdown filter
Example: Country selection filter
- All countries
- South Korea
- Japan
- United States
Shows only data for the selected country
3. Advanced filter (SQL-based)
WHERE customer_revenue >= 10000
Filter implementation example
event_date >= DATE_SUB(CURRENT_DATE(), INTERVAL @date_range_days DAY)
WHERE country = @selected_country
WHERE event_date >= @start_date
AND event_date <= @end_date
AND country IN (@country_list)
AND revenue >= @min_revenue
Step 6: Query Performance Optimization
1. Using partition keys
SELECT * FROM events
WHERE DATE(event_timestamp) >= '2026-01-01'
SELECT * FROM events
WHERE event_date >= '2026-01-01'
2. Data extraction (Extract and Load)
Extract data to a Looker Studio-dedicated table each night:
CREATE OR REPLACE TABLE `my-project.looker_studio_data.dashboard_snapshot` AS
SELECT
event_date,
event_name,
country,
device_category,
COUNT(DISTINCT user_id) as users,
SUM(event_value) as revenue,
COUNT(*) as events
FROM `my-project.analytics_dataset.events`
WHERE event_date >= DATE_SUB(CURRENT_DATE(), INTERVAL 90 DAY)
GROUP BY event_date, event_name, country, device_category;
3. Caching strategy
- Looker Studio default caching: Automatically caches for 3 hours
- BigQuery caching: Identical queries reuse previous results (6 hours)
- Utilizing scheduled queries: Pre-compute at night
4. Dashboard complexity management
- Use a maximum of 20-25 charts per dashboard
- Distribute across multiple tabs (pages) if many charts
- Do not group unrelated metrics together
Step 7: Community Connector Development (Advanced)
Develop a Community Connector for more complex requirements:
function getConfig() {
return {
configParams: [
{
name: 'project_id',
displayName: 'BigQuery Project ID',
helpText: 'Your GCP Project ID',
placeholder: 'my-project-id'
},
{
name: 'dataset_id',
displayName: 'Dataset ID'
}
]
};
}
function getData(request) {
const projectId = request.configParams.project_id;
const datasetId = request.configParams.dataset_id;
const bq = BigQuery.newDataset(projectId, datasetId);
return { rows: data };
}
Community Connector advantages:
- Centralized billing (using service account)
- Custom caching logic
- Pre-defined query templates
- Parameterized user settings
Step 8: Security and Access Control
BigQuery-level security
GRANT `roles/bigquery.dataViewer`
ON TABLE `my-project.analytics_dataset.events`
TO "user@example.com";
CREATE OR REPLACE ROW ACCESS POLICY rls_by_country
ON `my-project.analytics_dataset.events`
GRANT ('editor@company.com') TO ('KR'),
('viewer@company.com') TO ('US', 'JP');
Looker Studio-level security
- Set viewer permissions when sharing dashboards (Viewer/Editor)
- Share with specific users/groups only
- Manage permissions per data source
Output format
Dashboard Setup Checklist
## Dashboard Setup Checklist
### Data Source Configuration
- [ ] BigQuery project/dataset prepared
- [ ] IAM permissions configured
- [ ] Scheduled queries configured (performance optimization)
- [ ] Data source connection tested
### Dashboard Design
- [ ] F-pattern layout applied
- [ ] KPI tiles placed (3-4)
- [ ] Main charts added (trend/comparison)
- [ ] Detail table included
- [ ] Interactive filters added
### Performance Optimization
- [ ] Partition key usage verified
- [ ] Query cost optimized
- [ ] Caching strategy applied
- [ ] Chart count verified (20-25 or fewer)
### Sharing and Security
- [ ] Access permissions configured
- [ ] Data security reviewed
- [ ] Sharing link created
Constraints
Mandatory Rules (MUST)
- Date filter required: Include date range filter in all dashboards
- Use partitions: Directly use partition keys in BigQuery queries
- Permission separation: Clearly configure access permissions per data source
Prohibited (MUST NOT)
- Excessive charts: Do not place more than 25 charts on a single dashboard
- **SELECT ***: Select only necessary columns instead of all columns
- Overusing live queries: Avoid directly connecting to large tables
Best practices
| Item | Recommendation |
|---|
| Data refresh | Use scheduled queries, run at night |
| Dashboard size | Max 25 charts, distribute to multiple pages if needed |
| Filter configuration | Date filter required, limit to 3-5 additional filters |
| Color palette | Use only 3-4 company brand colors |
| Title/Labels | Use clear descriptions for intuitiveness |
| Chart selection | Place in order: KPI → Trend → Comparison → Detail |
| Response speed | Target average loading within 2-3 seconds |
| Cost management | Keep monthly BigQuery scanned data within 5TB |
References
Metadata
Version
- Current Version: 1.0.0
- Last Updated: 2026-01-14
- Compatible Platforms: Claude, ChatGPT, Gemini
Related Skills
Tags
#Looker-Studio #BigQuery #dashboard #analytics #visualization #GCP
Examples
Example 1: Creating a Basic Dashboard
CREATE OR REPLACE TABLE `my-project.looker_data.daily_metrics` AS
SELECT
event_date,
COUNT(DISTINCT user_id) as dau,
SUM(revenue) as total_revenue,
COUNT(*) as total_events
FROM `my-project.analytics.events`
WHERE event_date >= DATE_SUB(CURRENT_DATE(), INTERVAL 30 DAY)
GROUP BY event_date;
Example 2: Advanced Analytics Dashboard
CREATE OR REPLACE TABLE `my-project.looker_data.cohort_analysis` AS
WITH user_cohort AS (
SELECT
user_id,
DATE_TRUNC(MIN(event_date), WEEK) as cohort_week
FROM `my-project.analytics.events`
GROUP BY user_id
)
SELECT
uc.cohort_week,
DATE_DIFF(e.event_date, uc.cohort_week, WEEK) as week_number,
COUNT(DISTINCT e.user_id) as active_users
FROM `my-project.analytics.events` e
JOIN user_cohort uc ON e.user_id = uc.user_id
GROUP BY cohort_week, week_number
ORDER BY cohort_week, week_number;