Skip to main content

Documentation Index

Fetch the complete documentation index at: https://openlayer.com/docs/llms.txt

Use this file to discover all available pages before exploring further.

Definition

The null rows test allows you to specify the number (or percentage) of rows with missing values.

Taxonomy

  • Task types: LLM, tabular classification, tabular regression, text classification.
  • Availability: and .

Why it matters

  • Missing values can have a direct impact on model performance.
  • The values missing from certain features can indicate issues with the data collection/ingestion process.
  • Measuring and tracking the number of missing values can inform the imputation strategies to be used.

Test configuration examples

If you are writing a tests.json, here are a few valid configurations for the character length test:
[
  {
    "name": "No rows with null values",
    "description": "Asserts that there are no rows with missing values",
    "type": "integrity",
    "subtype": "nullRowCount",
    "thresholds": [
      {
        "insightName": "nullRowCount",
        "insightParameters": null,
        "measurement": "nullRowPercentage",
        "operator": "<=",
        "value": 0.0
      }
    ],
    "subpopulationFilters": null,
    "mode": "development",
    "usesValidationDataset": true, // Apply test to the validation set
    "usesTrainingDataset": false,
    "usesMlModel": false,
    "syncId": "b4dee7dc-4f15-48ca-a282-63e2c04e0689" // Some unique id
  }
]