Mind Mapping – DQ dimension & measures Data Quality Principals Accuracy Completeness Consistency  Timely  Usable + Trust Validity  Calculation accuracy Relevance Confidence level of source Measures Validation(if else, pattern) Lookup Range Max/min Frequency distribution Source of reference Perception value to biz Source of data(manual entry?/ drop down ) Structural Vertical Structural Integrity(synchornized) Up to date Availability  Speed Ease of use Horizontal Contextual Dimensions Row count  Row checksum  Nullability / missing  info Full context of desc. Fill rate % for row No duplication Availability to read / update Rates of update – data decay rate Access respond time Data Presentation quality  Contextual Zero duplication(structurally) column, row, dataset Referential integrity Definition consistency  Naming convention Contextually Equivalence Data type, length Definition Data coverage (transact-ability + confidence) Prepared by Alex CK Yap 2010

Data Quality Dimensions and measures

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    Mind Mapping –DQ dimension & measures Data Quality Principals Accuracy Completeness Consistency Timely Usable + Trust Validity Calculation accuracy Relevance Confidence level of source Measures Validation(if else, pattern) Lookup Range Max/min Frequency distribution Source of reference Perception value to biz Source of data(manual entry?/ drop down ) Structural Vertical Structural Integrity(synchornized) Up to date Availability Speed Ease of use Horizontal Contextual Dimensions Row count Row checksum Nullability / missing info Full context of desc. Fill rate % for row No duplication Availability to read / update Rates of update – data decay rate Access respond time Data Presentation quality Contextual Zero duplication(structurally) column, row, dataset Referential integrity Definition consistency Naming convention Contextually Equivalence Data type, length Definition Data coverage (transact-ability + confidence) Prepared by Alex CK Yap 2010