Last updated: July 22, 2025
DQOps REST API table_quality_policies models reference
The references of all objects used by table_quality_policies REST API operations are listed below.
TargetTablePatternSpec
The configuration of a table pattern to match default table checks.
The structure of this object is described below
Property name | Description | Data type |
---|---|---|
connection |
The data source connection name filter. Accepts wildcards in the format: conn, , conn*. | string |
schema |
The schema name filter. Accepts wildcards in the format: _prod, , pub*. | string |
table |
The table name filter. Accepts wildcards in the format: _customers, , fact_*. | string |
stage |
The table stage filter. Accepts wildcards in the format: _landing, , staging_*. | string |
table_priority |
The maximum table priority (inclusive) for tables that are covered by the default checks. | integer |
label |
The label filter. Accepts wildcards in the format: _customers, , fact_*. The label must be present on the connection or table. | string |
TableQualityPolicyListModel
The listing model of table-level default check patterns that is returned by the REST API.
The structure of this object is described below
Property name | Description | Data type |
---|---|---|
policy_name |
Quality policy name. | string |
priority |
The priority of the policy. Policies with lower values are applied before policies with higher priority values. | integer |
disabled |
Disables this data quality check configuration. The checks will not be activated. | boolean |
description |
The description (documentation) of this data quality check configuration. | string |
target_table |
The filters for the target table. | TargetTablePatternSpec |
can_edit |
Boolean flag that decides if the current user can update or delete this object. | boolean |
yaml_parsing_error |
Optional parsing error that was captured when parsing the YAML file. This field is null when the YAML file is valid. If an error was captured, this field returns the file parsing error message and the file location. | string |
TableMonitoringCheckCategoriesSpec
Container of table level monitoring, divided by the time window (daily, monthly, etc.)
The structure of this object is described below
Property name | Description | Data type |
---|---|---|
daily |
Configuration of daily monitoring evaluated at a table level. | TableDailyMonitoringCheckCategoriesSpec |
monthly |
Configuration of monthly monitoring evaluated at a table level. | TableMonthlyMonitoringCheckCategoriesSpec |
TablePartitionedCheckCategoriesSpec
Container of table level partitioned checks, divided by the time window (daily, monthly, etc.)
The structure of this object is described below
Property name | Description | Data type |
---|---|---|
daily |
Configuration of day partitioned data quality checks evaluated at a table level. | TableDailyPartitionedCheckCategoriesSpec |
monthly |
Configuration of monthly partitioned data quality checks evaluated at a table level.. | TableMonthlyPartitionedCheckCategoriesSpec |
TableQualityPolicySpec
The default configuration of table-level data quality checks that are enabled as data observability checks to analyze basic measures and detect anomalies on tables. This configuration serves as a data quality policy that defines the data quality checks that are verified on matching tables.
The structure of this object is described below
Property name | Description | Data type |
---|---|---|
priority |
The priority of the pattern. Patterns with lower values are applied before patterns with higher priority values. | integer |
disabled |
Disables this data quality check configuration. The checks will not be activated. | boolean |
description |
The description (documentation) of this data quality check configuration. | string |
target |
The target table filter that are filtering the table and connection on which the default checks are applied. | TargetTablePatternSpec |
profiling_checks |
Configuration of data quality profiling checks that are enabled. Pick a check from a category, apply the parameters and rules to enable it. | TableProfilingCheckCategoriesSpec |
monitoring_checks |
Configuration of table level monitoring checks. Monitoring checks are data quality checks that are evaluated for each period of time (daily, weekly, monthly, etc.). A monitoring check stores only the most recent data quality check result for each period of time. | TableMonitoringCheckCategoriesSpec |
partitioned_checks |
Configuration of table level date/time partitioned checks. Partitioned data quality checks are evaluated for each partition separately, raising separate alerts at a partition level. The table does not need to be physically partitioned by date, it is possible to run data quality checks for each day or month of data separately. | TablePartitionedCheckCategoriesSpec |
TableQualityPolicyModel
Default table-level checks pattern model that is returned by the REST API. Describes a configuration of data quality checks for a named pattern. DQOps applies these checks on tables that match the filter.
The structure of this object is described below
Property name | Description | Data type |
---|---|---|
policy_name |
Quality policy name | string |
policy_spec |
The quality policy specification. | TableQualityPolicySpec |
can_edit |
Boolean flag that decides if the current user can update or delete this object. | boolean |
yaml_parsing_error |
Optional parsing error that was captured when parsing the YAML file. This field is null when the YAML file is valid. If an error was captured, this field returns the file parsing error message and the file location. | string |