Unity Catalog Metric Views
Define reusable, governed business metrics in YAML that separate measure definitions from dimension groupings for flexible querying.
When to Use
Use this skill when:
-
Defining standardized business metrics (revenue, order counts, conversion rates)
-
Building KPI layers shared across dashboards, Genie, and SQL queries
-
Creating metrics with complex aggregations (ratios, distinct counts, filtered measures)
-
Defining window measures (moving averages, running totals, period-over-period, YTD)
-
Modeling star or snowflake schemas with joins in metric definitions
-
Enabling materialization for pre-computed metric aggregations
Prerequisites
-
Databricks Runtime 17.2+ (for YAML version 1.1)
-
SQL warehouse with CAN USE permissions
-
SELECT on source tables, CREATE TABLE
- USE SCHEMA in the target schema
Quick Start
Create a Metric View
CREATE OR REPLACE VIEW catalog.schema.orders_metrics WITH METRICS LANGUAGE YAML AS $$ version: 1.1 comment: "Orders KPIs for sales analysis" source: catalog.schema.orders filter: order_date > '2020-01-01' dimensions: - name: Order Month expr: DATE_TRUNC('MONTH', order_date) comment: "Month of order" - name: Order Status expr: CASE WHEN status = 'O' THEN 'Open' WHEN status = 'P' THEN 'Processing' WHEN status = 'F' THEN 'Fulfilled' END comment: "Human-readable order status" measures: - name: Order Count expr: COUNT(1) - name: Total Revenue expr: SUM(total_price) comment: "Sum of total price" - name: Revenue per Customer expr: SUM(total_price) / COUNT(DISTINCT customer_id) comment: "Average revenue per unique customer" $$
Query a Metric View
All measures must use the MEASURE() function. SELECT * is NOT supported.
SELECT
Order Month,
Order Status,
MEASURE(Total Revenue) AS total_revenue,
MEASURE(Order Count) AS order_count
FROM catalog.schema.orders_metrics
WHERE extract(year FROM Order Month) = 2024
GROUP BY ALL
ORDER BY ALL
Reference Files
Topic File Description
YAML Syntax yaml-reference.md Complete YAML spec: dimensions, measures, joins, materialization
Patterns & Examples patterns.md Common patterns: star schema, snowflake, filtered measures, window measures, ratios
MCP Tools
Use the manage_metric_views tool for all metric view operations:
Action Description
create
Create a metric view with dimensions and measures
alter
Update a metric view's YAML definition
describe
Get the full definition and metadata
query
Query measures grouped by dimensions
drop
Drop a metric view
grant
Grant SELECT privileges to users/groups
Create via MCP
manage_metric_views( action="create", full_name="catalog.schema.orders_metrics", source="catalog.schema.orders", or_replace=True, comment="Orders KPIs for sales analysis", filter_expr="order_date > '2020-01-01'", dimensions=[ {"name": "Order Month", "expr": "DATE_TRUNC('MONTH', order_date)", "comment": "Month of order"}, {"name": "Order Status", "expr": "status"}, ], measures=[ {"name": "Order Count", "expr": "COUNT(1)"}, {"name": "Total Revenue", "expr": "SUM(total_price)", "comment": "Sum of total price"}, ], )
Query via MCP
manage_metric_views(
action="query",
full_name="catalog.schema.orders_metrics",
query_measures=["Total Revenue", "Order Count"],
query_dimensions=["Order Month"],
where="extract(year FROM Order Month) = 2024",
order_by="ALL",
limit=100,
)
Describe via MCP
manage_metric_views( action="describe", full_name="catalog.schema.orders_metrics", )
Grant Access
manage_metric_views( action="grant", full_name="catalog.schema.orders_metrics", principal="data-consumers", privileges=["SELECT"], )
YAML Spec Quick Reference
version: 1.1 # Required: "1.1" for DBR 17.2+ comment: "Description" # Optional: metric view description source: catalog.schema.table # Required: source table/view filter: column > value # Optional: global WHERE filter
dimensions: # Required: at least one
- name: Display Name # Backtick-quoted in queries expr: sql_expression # Column ref or SQL transformation comment: "Description" # Optional (v1.1+)
measures: # Required: at least one
- name: Display Name # Queried via MEASURE(
name) expr: AGG_FUNC(column) # Must be an aggregate expression comment: "Description" # Optional (v1.1+)
joins: # Optional: star/snowflake schema
- name: dim_table source: catalog.schema.dim_table on: source.fk = dim_table.pk
materialization: # Optional (experimental) schedule: every 6 hours mode: relaxed
Key Concepts
Dimensions vs Measures
Dimensions Measures
Purpose Categorize and group data Aggregate numeric values
Examples Region, Date, Status SUM(revenue), COUNT(orders)
In queries Used in SELECT and GROUP BY Wrapped in MEASURE()
SQL expressions Any SQL expression Must use aggregate functions
Why Metric Views vs Standard Views?
Feature Standard Views Metric Views
Aggregation locked at creation Yes No - flexible at query time
Safe re-aggregation of ratios No Yes
Star/snowflake schema joins Manual Declarative in YAML
Materialization Separate MV needed Built-in
AI/BI Genie integration Limited Native
Common Issues
Issue Solution
SELECT * not supported Must explicitly list dimensions and use MEASURE() for measures
"Cannot resolve column" Dimension/measure names with spaces need backtick quoting
JOIN at query time fails Joins must be in the YAML definition, not in the SELECT query
MEASURE() required
All measure references must be wrapped: MEASURE(
name)
DBR version error Requires Runtime 17.2+ for YAML v1.1, or 16.4+ for v0.1
Materialization not working Requires serverless compute enabled; currently experimental
Integrations
Metric views work natively with:
-
AI/BI Dashboards - Use as datasets for visualizations
-
AI/BI Genie - Natural language querying of metrics
-
Alerts - Set threshold-based alerts on measures
-
SQL Editor - Direct SQL querying with MEASURE()
-
Catalog Explorer UI - Visual creation and browsing
Resources
-
Metric Views Documentation
-
YAML Syntax Reference
-
Joins
-
Window Measures (Experimental)
-
Materialization
-
MEASURE() Function