Not Null
Definition
Asserts that none of the selected fields' values are explicitly set to nothing.
Field Scope
Multi: The rule evaluates multiple specified fields.
Accepted Fields
Type | |
---|---|
Date |
|
Timestamp |
|
Integral |
|
Fractional |
|
String |
|
Boolean |
General Properties
Name | Supported |
---|---|
Filter Allows the targeting of specific data based on conditions |
|
Coverage Customization Allows adjusting the percentage of records that must meet the rule's conditions |
The filter allows you to define a subset of data upon which the rule will operate.
It requires a valid Spark SQL expression that determines the criteria rows in the DataFrame should meet. This means the expression specifies which rows the DataFrame should include based on those criteria. Since it's applied directly to the Spark DataFrame, traditional SQL constructs like WHERE clauses are not supported.
Examples
Direct Conditions
Simply specify the condition you want to be met.
Combining Conditions
Combine multiple conditions using logical operators like AND
and OR
.
Correct usage
Incorrect usage
Utilizing Functions
Leverage Spark SQL functions to refine and enhance your conditions.
Correct usage
Incorrect usage
Using scan-time variables
To refer to the current dataframe being analyzed, use the reserved dynamic variable {{ _qualytics_self }}
.
Correct usage
Incorrect usage
While subqueries can be useful, their application within filters in our context has limitations. For example, directly referencing other containers or the broader target container in such subqueries is not supported. Attempting to do so will result in an error.
Important Note on {{ _qualytics_self }}
The {{ _qualytics_self }}
keyword refers to the dataframe that's currently under examination. In the context of a full scan, this variable represents the entire target container. However, during incremental scans, it only reflects a subset of the target container, capturing just the incremental data. It's crucial to recognize that in such scenarios, using {{ _qualytics_self }}
may not encompass all entries from the target container.
Anomaly Types
Type | Supported |
---|---|
Record Flag inconsistencies at the row level |
|
Shape Flag inconsistencies in the overall patterns and distributions of a field |
Example
Objective: Ensure that every record in the CUSTOMER table has an assigned value for the C_NAME and C_ADDRESS fields.
Sample Data
C_CUSTKEY | C_NAME | C_ADDRESS |
---|---|---|
1 | Alice | 123 Oak St |
2 | Bob | NULL |
3 | Charlie | 789 Maple Ave |
4 | NULL | 456 Pine Rd |
{
"description": "Ensure that every record in the CUSTOMER table has an assigned value for the C_NAME and C_ADDRESS fields",
"coverage": 1,
"properties": null,
"tags": [],
"fields": ["C_ADDRESS","C_NAME"],
"additional_metadata": {"key 1": "value 1", "key 2": "value 2"},
"rule": "notNull",
"container_id": {container_id},
"template_id": {template_id},
"filter": "1=1"
}
Anomaly Explanation
In the sample data above, the entries with C_CUSTKEY
2 and 4 do not satisfy the rule because they have NULL
values in the C_NAME
or C_ADDRESS
fields.
graph TD
A[Start] --> B[Retrieve C_NAME and C_ADDRESS]
B --> C{Are C_NAME and C_ADDRESS non-null?}
C -->|Yes| D[Move to Next Record/End]
C -->|No| E[Mark as Anomalous]
E --> D
Potential Violation Messages
Record Anomaly
There is no assigned value for C_NAME
.
Shape Anomaly
In C_NAME
and C_ADDRESS
, 50.000% of 4 filtered records (2) are not assigned values.