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Entities

Entities are real-world concepts in a business such as customers, transactions, and ad campaigns. We often focus our analyses around specific entities, such as customer churn or annual recurring revenue modeling. We represent entities in our semantic models using id columns that serve as join keys to other semantic models in your semantic graph.

Within a semantic graph, the required parameters for an entity are name and type. The name refers to either the key column name from the underlying data table, or it may serve as an alias with the column name referenced in the expr parameter. The name for your entity must be unique to the semantic model and can not be the same as an existing measure or dimension within that same model.

Entities can be specified with a single column or multiple columns. Entities (join keys) in a semantic model are identified by their name. Each entity name must be unique within a semantic model, but it doesn't have to be unique across different semantic models.

There are four entity types:

  • Primary — Has only one record for each row in the table and includes every record in the data platform. This key uniquely identifies each record in the table.
  • Unique — Contains only one record per row in the table and allows for null values. May have a subset of records in the data warehouse.
  • Foreign — A field (or a set of fields) in one table that uniquely identifies a row in another table. This key establishes a link between tables.
  • Natural — Columns or combinations of columns in a table that uniquely identify a record based on real-world data. This key is derived from actual data attributes.
Use entities as dimensions

You can also use entities as dimensions, which allows you to aggregate a metric to the granularity of that entity.

Entity types

MetricFlow's join logic depends on the entity type you use and determines how to join semantic models. Refer to Joins for more info on how to construct joins.

Primary

A primary key has only one record for each row in the table and includes every record in the data platform. It must contain unique values and can't contain null values. Use the primary key to ensure that each record in the table is distinct and identifiable.

 Primary key example

Unique

A unique key contains only one record per row in the table but may have a subset of records in the data warehouse. However, unlike the primary key, a unique key allows for null values. The unique key ensures that the column's values are distinct, except for null values.

 Unique key example

Foreign

A foreign key is a field (or a set of fields) in one table that uniquely identifies a row in another table. The foreign key establishes a link between the data in two tables. It can include zero, one, or multiple instances of the same record. It can also contain null values.

 Foreign key example

Natural

Natural keys are columns or combinations of columns in a table that uniquely identify a record based on real-world data. For instance, if you have a sales_person_department dimension table, the sales_person_id can serve as a natural key. You can only use natural keys for SCD type II dimensions.

Entities configuration

The following is the complete spec for entities:

Here's an example of how to define entities in a semantic model:

Combine columns with a key

If a table doesn't have any key (like a primary key), use surrogate combination to form a key that will help you identify a record by combining two columns. This applies to any entity type. For example, you can combine date_key and brand_code from the raw_brand_target_weekly table to form a surrogate key. The following example creates a surrogate key by joining date_key and brand_code using a pipe (|) as a separator.


entities:
- name: brand_target_key # Entity name or identified.
type: foreign # This can be any entity type key.
expr: date_key || '|' || brand_code # Defines the expression for linking fields to form the surrogate key.
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