• About
  • Get Started
  • Guides
  • ValidMind Library
    • ValidMind Library
    • Supported Models
    • QuickStart Notebook

    • TESTING
    • Run Tests & Test Suites
    • Test Descriptions
    • Test Sandbox (BETA)

    • CODE SAMPLES
    • All Code Samples · LLM · NLP · Time Series · Etc.
    • Download Code Samples · notebooks.zip
    • Try it on JupyterHub

    • REFERENCE
    • ValidMind Library Python API
  • Support
  • Training
  • Releases
  • Documentation
    • About ​ValidMind
    • Get Started
    • Guides
    • Support
    • Releases

    • Python Library
    • ValidMind Library

    • ValidMind Academy
    • Training Courses
  • Log In
    • Public Internet
    • ValidMind Platform · US1
    • ValidMind Platform · CA1

    • Private Link
    • Virtual Private ValidMind (VPV)

    • Which login should I use?
  1. Test descriptions
  2. Data Validation
  3. DatasetDescription

EU AI Act Compliance — Read our original regulation brief on how the EU AI Act aims to balance innovation with safety and accountability, setting standards for responsible AI use

  • ValidMind Library
  • Supported models

  • QuickStart
  • Quickstart for model documentation
  • Install and initialize ValidMind Library
  • Store model credentials in .env files

  • Model Development
  • 1 — Set up ValidMind Library
  • 2 — Start model development process
  • 3 — Integrate custom tests
  • 4 — Finalize testing & documentation

  • Model Validation
  • 1 — Set up ValidMind Library for validation
  • 2 — Start model validation process
  • 3 — Developing a challenger model
  • 4 — Finalize validation & reporting

  • Model Testing
  • Run tests & test suites
    • Add context to LLM-generated test descriptions
    • Configure dataset features
    • Document multiple results for the same test
    • Explore test suites
    • Explore tests
    • Dataset Column Filters when Running Tests
    • Load dataset predictions
    • Log metrics over time
    • Run individual documentation sections
    • Run documentation tests with custom configurations
    • Run tests with multiple datasets
    • Intro to Unit Metrics
    • Understand and utilize RawData in ValidMind tests
    • Introduction to ValidMind Dataset and Model Objects
    • Run Tests
      • Run dataset based tests
      • Run comparison tests
  • Test descriptions
    • Data Validation
      • ACFandPACFPlot
      • ADF
      • AutoAR
      • AutoMA
      • AutoStationarity
      • BivariateScatterPlots
      • BoxPierce
      • ChiSquaredFeaturesTable
      • ClassImbalance
      • DatasetDescription
      • DatasetSplit
      • DescriptiveStatistics
      • DickeyFullerGLS
      • Duplicates
      • EngleGrangerCoint
      • FeatureTargetCorrelationPlot
      • HighCardinality
      • HighPearsonCorrelation
      • IQROutliersBarPlot
      • IQROutliersTable
      • IsolationForestOutliers
      • JarqueBera
      • KPSS
      • LaggedCorrelationHeatmap
      • LJungBox
      • MissingValues
      • MissingValuesBarPlot
      • MutualInformation
      • PearsonCorrelationMatrix
      • PhillipsPerronArch
      • ProtectedClassesCombination
      • ProtectedClassesDescription
      • ProtectedClassesDisparity
      • ProtectedClassesThresholdOptimizer
      • RollingStatsPlot
      • RunsTest
      • ScatterPlot
      • ScoreBandDefaultRates
      • SeasonalDecompose
      • ShapiroWilk
      • Skewness
      • SpreadPlot
      • TabularCategoricalBarPlots
      • TabularDateTimeHistograms
      • TabularDescriptionTables
      • TabularNumericalHistograms
      • TargetRateBarPlots
      • TimeSeriesDescription
      • TimeSeriesDescriptiveStatistics
      • TimeSeriesFrequency
      • TimeSeriesHistogram
      • TimeSeriesLinePlot
      • TimeSeriesMissingValues
      • TimeSeriesOutliers
      • TooManyZeroValues
      • UniqueRows
      • WOEBinPlots
      • WOEBinTable
      • ZivotAndrewsArch
      • Nlp
        • CommonWords
        • Hashtags
        • LanguageDetection
        • Mentions
        • PolarityAndSubjectivity
        • Punctuations
        • Sentiment
        • StopWords
        • TextDescription
        • Toxicity
    • Model Validation
      • BertScore
      • BleuScore
      • ClusterSizeDistribution
      • ContextualRecall
      • FeaturesAUC
      • MeteorScore
      • ModelMetadata
      • ModelPredictionResiduals
      • RegardScore
      • RegressionResidualsPlot
      • RougeScore
      • TimeSeriesPredictionsPlot
      • TimeSeriesPredictionWithCI
      • TimeSeriesR2SquareBySegments
      • TokenDisparity
      • ToxicityScore
      • Embeddings
        • ClusterDistribution
        • CosineSimilarityComparison
        • CosineSimilarityDistribution
        • CosineSimilarityHeatmap
        • DescriptiveAnalytics
        • EmbeddingsVisualization2D
        • EuclideanDistanceComparison
        • EuclideanDistanceHeatmap
        • PCAComponentsPairwisePlots
        • StabilityAnalysisKeyword
        • StabilityAnalysisRandomNoise
        • StabilityAnalysisSynonyms
        • StabilityAnalysisTranslation
        • TSNEComponentsPairwisePlots
      • Ragas
        • AnswerCorrectness
        • AspectCritic
        • ContextEntityRecall
        • ContextPrecision
        • ContextPrecisionWithoutReference
        • ContextRecall
        • Faithfulness
        • NoiseSensitivity
        • ResponseRelevancy
        • SemanticSimilarity
      • Sklearn
        • AdjustedMutualInformation
        • AdjustedRandIndex
        • CalibrationCurve
        • ClassifierPerformance
        • ClassifierThresholdOptimization
        • ClusterCosineSimilarity
        • ClusterPerformanceMetrics
        • CompletenessScore
        • ConfusionMatrix
        • FeatureImportance
        • FowlkesMallowsScore
        • HomogeneityScore
        • HyperParametersTuning
        • KMeansClustersOptimization
        • MinimumAccuracy
        • MinimumF1Score
        • MinimumROCAUCScore
        • ModelParameters
        • ModelsPerformanceComparison
        • OverfitDiagnosis
        • PermutationFeatureImportance
        • PopulationStabilityIndex
        • PrecisionRecallCurve
        • RegressionErrors
        • RegressionErrorsComparison
        • RegressionPerformance
        • RegressionR2Square
        • RegressionR2SquareComparison
        • RobustnessDiagnosis
        • ROCCurve
        • ScoreProbabilityAlignment
        • SHAPGlobalImportance
        • SilhouettePlot
        • TrainingTestDegradation
        • VMeasure
        • WeakspotsDiagnosis
      • Statsmodels
        • AutoARIMA
        • CumulativePredictionProbabilities
        • DurbinWatsonTest
        • GINITable
        • KolmogorovSmirnov
        • Lilliefors
        • PredictionProbabilitiesHistogram
        • RegressionCoeffs
        • RegressionFeatureSignificance
        • RegressionModelForecastPlot
        • RegressionModelForecastPlotLevels
        • RegressionModelSensitivityPlot
        • RegressionModelSummary
        • RegressionPermutationFeatureImportance
        • ScorecardHistogram
    • Ongoing Monitoring
      • CalibrationCurveDrift
      • ClassDiscriminationDrift
      • ClassificationAccuracyDrift
      • ClassImbalanceDrift
      • ConfusionMatrixDrift
      • CumulativePredictionProbabilitiesDrift
      • FeatureDrift
      • PredictionAcrossEachFeature
      • PredictionCorrelation
      • PredictionProbabilitiesHistogramDrift
      • PredictionQuantilesAcrossFeatures
      • ROCCurveDrift
      • ScoreBandsDrift
      • ScorecardHistogramDrift
      • TargetPredictionDistributionPlot
    • Prompt Validation
      • Bias
      • Clarity
      • Conciseness
      • Delimitation
      • NegativeInstruction
      • Robustness
      • Specificity
  • Test sandbox beta

  • Notebooks
  • Code samples
    • Capital Markets
      • Quickstart for knockout option pricing model documentation
      • Quickstart for Heston option pricing model using QuantLib
    • Credit Risk
      • Document an application scorecard model
      • Document an application scorecard model
      • Document an application scorecard model
      • Document a credit risk model
      • Document an application scorecard model
    • Custom Tests
      • Implement custom tests
      • Integrate external test providers
    • Model Validation
      • Validate an application scorecard model
    • Nlp and Llm
      • Sentiment analysis of financial data using a large language model (LLM)
      • Summarization of financial data using a large language model (LLM)
      • Sentiment analysis of financial data using Hugging Face NLP models
      • Summarization of financial data using Hugging Face NLP models
      • Automate news summarization using LLMs
      • Prompt validation for large language models (LLMs)
      • RAG Model Benchmarking Demo
      • RAG Model Documentation Demo
    • Ongoing Monitoring
      • Ongoing Monitoring for Application Scorecard
      • Quickstart for ongoing monitoring of models with ValidMind
    • Regression
      • Document a California Housing Price Prediction regression model
    • Time Series
      • Document a time series forecasting model
      • Document a time series forecasting model

  • Reference
  • ValidMind Library Python API

On this page

  • DatasetDescription
    • Purpose
    • Test Mechanism
    • Signs of High Risk
    • Strengths
    • Limitations
  • Edit this page
  • Report an issue
  1. Test descriptions
  2. Data Validation
  3. DatasetDescription

DatasetDescription

Provides comprehensive analysis and statistical summaries of each column in a machine learning model's dataset.

Purpose

The test depicted in the script is meant to run a comprehensive analysis on a Machine Learning model's datasets. The test or metric is implemented to obtain a complete summary of the columns in the dataset, including vital statistics of each column such as count, distinct values, missing values, histograms for numerical, categorical, boolean, and text columns. This summary gives a comprehensive overview of the dataset to better understand the characteristics of the data that the model is trained on or evaluates.

Test Mechanism

The DatasetDescription class accomplishes the purpose as follows: firstly, the test method "run" infers the data type of each column in the dataset and stores the details (id, column type). For each column, the describe_column" method is invoked to collect statistical information about the column, including count, missing value count and its proportion to the total, unique value count, and its proportion to the total. Depending on the data type of a column, histograms are generated that reflect the distribution of data within the column. Numerical columns use the "get_numerical_histograms" method to calculate histogram distribution, whereas for categorical, boolean and text columns, a histogram is computed with frequencies of each unique value in the datasets. For unsupported types, an error is raised. Lastly, a summary table is built to aggregate all the statistical insights and histograms of the columns in a dataset.

Signs of High Risk

  • High ratio of missing values to total values in one or more columns which may impact the quality of the predictions.
  • Unsupported data types in dataset columns.
  • Large number of unique values in the dataset's columns which might make it harder for the model to establish patterns.
  • Extreme skewness or irregular distribution of data as reflected in the histograms.

Strengths

  • Provides a detailed analysis of the dataset with versatile summaries like count, unique values, histograms, etc.
  • Flexibility in handling different types of data: numerical, categorical, boolean, and text.
  • Useful in detecting problems in the dataset like missing values, unsupported data types, irregular data distribution, etc.
  • The summary gives a comprehensive understanding of dataset features allowing developers to make informed decisions.

Limitations

  • The computation can be expensive from a resource standpoint, particularly for large datasets with numerous columns.
  • The histograms use an arbitrary number of bins which may not be the optimal number of bins for specific data distribution.
  • Unsupported data types for columns will raise an error which may limit evaluating the dataset.
  • Columns with all null or missing values are not included in histogram computation.
  • This test only validates the quality of the dataset but doesn't address the model's performance directly.
ClassImbalance
DatasetSplit

© Copyright 2025 ValidMind Inc. All Rights Reserved.

  • Edit this page
  • Report an issue
Cookie Preferences
  • validmind.com

  • Privacy Policy

  • Terms of Use