SlideShare a Scribd company logo
1 of 9
Data Quality Management Definitions The Characteristics of Data Quality
What is „Data Quality“? Slide  Data Quality stands for: Data Quality Characteristics Accurate Precise Relevant Complete Harmonized information need and provision 1 Mutual understanding of data capability 2 Trustworthy and credible information 3 Consistent Timely Transparent
The Characteristic „Accuracy“ Slide  Accuracy stands for: Examples for Data Accuracy issues: Data Accuracy  is the degree at which a data object  overlaps with the real world object or event described. Data accuracy is measured as  reciprocal maximum gap   between data and reality. [ high is good ] Frank Meyer is recorded as “Fritz Meier” in the Database. An incident is reported with €23m when the loss was €12k. The amount invoiced does not represent the customer’s usage. Accurate Good fit between the data and reality The ability to draw correct conclusions from data Business processes that match reality
The Characteristic „Precision“ Slide  Precision stands for: Examples of Data Precision issues: Data Precision  is the closeness between  all possible interpretations  of a data object. Data precision is measured as  reciprocal maximum distance   between all applicable data interpretations. [ high is good ] A close link between desired and offered information The ability to pinpoint decisions based on data. Lean Business processes. Frank Meyer lives in Bonn - or Cologne? Or was that Jon Myers? This Billing incident was caused by Mediation... I think… Why do we charge the customer 2 minutes for a 59sec call? Precise
The Characteristic „Relevance“ Slide  Relevance stands for: Examples of Data Relevance Issues: Data Relevance  is the closeness between data consumer need and data provider output. Data relevance is measured as  percentage of all data required divided by all data provided. [100% is best ] Data that helps you know what you want. The ability to use data with maximum efficiency. Not having to sort through information you don’t need. The Revenue Assurance report also tells you about the weather! A CSR asks the cell phone customer if they have a microwave. You need to fill in a 7-page form to apply for a tariff change. Relevant
The Characteristic „Accuracy“ Slide  Completeness stands for: Examples of Data Completeness issues: Data Completeness  is the extent by which the  data consumer’s need is met. Data completeness is measured as  percentage of data available divided by the data required. [100% is best ] Data that does not leave any open questions. The ability to make a good decision based on available data. Closeness between “need to know” and what the data tells you. We can not tell how many cell phone contracts Egon Huber has. The CC application does not provide a “Call back wanted” field. A summary report includes projects that did not report status! Complete
The Characteristic „Consistency“ Slide  Consistency stands for: Examples of Data Consistency Issues: Data Consistency  is the synchronization of data objects across the company. Data consistency is measured as  reciprocal ratio  of  distinct data objects per described object or event. [100% is best ] Data in harmony across the company. The ability to trust in data regardless of source. Identical information available to all processes and units. We send Mr. Smith’s invoices to “Smith” and ads to “Schmitz”. Asking DWH or SAP for revenue yields different numbers. Mr. Kim defines “churn” as  cancel/total  and Mr. Jones as  cancel/new . Consistent
The Characteristic „Transparency“ Slide  Transparency stands for: Examples of Data Transparency issues: Data Transparency  is the ability to trace back data to it’s origin and find out it’s real world meaning. Data transparency is measured as  percentage  of  maximum traceable distance by total processing steps. [100% is best ] Trustworthy data in the entire data supply chain. The ability to connect data with it’s real meaning.  Real accountability for data objects. We can’t tell why Frank Müller is now “Udo Huber” in the DB! A report contains a figure which nobody can explain. Project leaders get away with reporting “green” when it’s “red”! Transparent
The Characteristic „Timeliness“ Slide  Timeliness stands for: Examples of Data Timeliness Issues: Data that is available without delay. The ability to know what you need, when you need. Smooth Information Flow: ‘Data Delayed’ is ‘Data Denied’! The agenda is distributed during the Telco! Customers decide for a competitor before credit is approved! Receiving a “budget exceeded” SMS  after   you went over the limit! Timely Data Timeliness  is the availability of data  at the time it needs to be utilized. Data timeliness is measured as  percentage  of  processing time attributed to waiting for data. [0% is best ]

More Related Content

What's hot

Data quality overview
Data quality overviewData quality overview
Data quality overviewAlex Meadows
 
Data quality management Basic
Data quality management BasicData quality management Basic
Data quality management BasicKhaled Mosharraf
 
The data quality challenge
The data quality challengeThe data quality challenge
The data quality challengeLenia Miltiadous
 
Data Privacy in the DMBOK - No Need to Reinvent the Wheel
Data Privacy in the DMBOK - No Need to Reinvent the WheelData Privacy in the DMBOK - No Need to Reinvent the Wheel
Data Privacy in the DMBOK - No Need to Reinvent the WheelDATAVERSITY
 
Rethinking Trust in Data
Rethinking Trust in Data Rethinking Trust in Data
Rethinking Trust in Data DATAVERSITY
 
Data Quality Dashboards
Data Quality DashboardsData Quality Dashboards
Data Quality DashboardsWilliam Sharp
 
Data Preparation Fundamentals
Data Preparation FundamentalsData Preparation Fundamentals
Data Preparation FundamentalsDATAVERSITY
 
Data Management vs Data Strategy
Data Management vs Data StrategyData Management vs Data Strategy
Data Management vs Data StrategyDATAVERSITY
 
Enterprise Data Management Framework Overview
Enterprise Data Management Framework OverviewEnterprise Data Management Framework Overview
Enterprise Data Management Framework OverviewJohn Bao Vuu
 
DAS Slides: Data Quality Best Practices
DAS Slides: Data Quality Best PracticesDAS Slides: Data Quality Best Practices
DAS Slides: Data Quality Best PracticesDATAVERSITY
 
Data Governance Best Practices
Data Governance Best PracticesData Governance Best Practices
Data Governance Best PracticesDATAVERSITY
 
Data Modeling, Data Governance, & Data Quality
Data Modeling, Data Governance, & Data QualityData Modeling, Data Governance, & Data Quality
Data Modeling, Data Governance, & Data QualityDATAVERSITY
 
Data Quality Best Practices
Data Quality Best PracticesData Quality Best Practices
Data Quality Best PracticesDATAVERSITY
 
Data strategy in a Big Data world
Data strategy in a Big Data worldData strategy in a Big Data world
Data strategy in a Big Data worldCraig Milroy
 
Building a Data Quality Program from Scratch
Building a Data Quality Program from ScratchBuilding a Data Quality Program from Scratch
Building a Data Quality Program from Scratchdmurph4
 
Data Modeling Fundamentals
Data Modeling FundamentalsData Modeling Fundamentals
Data Modeling FundamentalsDATAVERSITY
 
Data Quality Best Practices
Data Quality Best PracticesData Quality Best Practices
Data Quality Best PracticesDATAVERSITY
 
Data Quality Integration (ETL) Open Source
Data Quality Integration (ETL) Open SourceData Quality Integration (ETL) Open Source
Data Quality Integration (ETL) Open SourceStratebi
 
Approaching Data Quality
Approaching Data QualityApproaching Data Quality
Approaching Data QualityDATAVERSITY
 
Data Management PowerPoint Presentation Slides
Data Management PowerPoint Presentation Slides Data Management PowerPoint Presentation Slides
Data Management PowerPoint Presentation Slides SlideTeam
 

What's hot (20)

Data quality overview
Data quality overviewData quality overview
Data quality overview
 
Data quality management Basic
Data quality management BasicData quality management Basic
Data quality management Basic
 
The data quality challenge
The data quality challengeThe data quality challenge
The data quality challenge
 
Data Privacy in the DMBOK - No Need to Reinvent the Wheel
Data Privacy in the DMBOK - No Need to Reinvent the WheelData Privacy in the DMBOK - No Need to Reinvent the Wheel
Data Privacy in the DMBOK - No Need to Reinvent the Wheel
 
Rethinking Trust in Data
Rethinking Trust in Data Rethinking Trust in Data
Rethinking Trust in Data
 
Data Quality Dashboards
Data Quality DashboardsData Quality Dashboards
Data Quality Dashboards
 
Data Preparation Fundamentals
Data Preparation FundamentalsData Preparation Fundamentals
Data Preparation Fundamentals
 
Data Management vs Data Strategy
Data Management vs Data StrategyData Management vs Data Strategy
Data Management vs Data Strategy
 
Enterprise Data Management Framework Overview
Enterprise Data Management Framework OverviewEnterprise Data Management Framework Overview
Enterprise Data Management Framework Overview
 
DAS Slides: Data Quality Best Practices
DAS Slides: Data Quality Best PracticesDAS Slides: Data Quality Best Practices
DAS Slides: Data Quality Best Practices
 
Data Governance Best Practices
Data Governance Best PracticesData Governance Best Practices
Data Governance Best Practices
 
Data Modeling, Data Governance, & Data Quality
Data Modeling, Data Governance, & Data QualityData Modeling, Data Governance, & Data Quality
Data Modeling, Data Governance, & Data Quality
 
Data Quality Best Practices
Data Quality Best PracticesData Quality Best Practices
Data Quality Best Practices
 
Data strategy in a Big Data world
Data strategy in a Big Data worldData strategy in a Big Data world
Data strategy in a Big Data world
 
Building a Data Quality Program from Scratch
Building a Data Quality Program from ScratchBuilding a Data Quality Program from Scratch
Building a Data Quality Program from Scratch
 
Data Modeling Fundamentals
Data Modeling FundamentalsData Modeling Fundamentals
Data Modeling Fundamentals
 
Data Quality Best Practices
Data Quality Best PracticesData Quality Best Practices
Data Quality Best Practices
 
Data Quality Integration (ETL) Open Source
Data Quality Integration (ETL) Open SourceData Quality Integration (ETL) Open Source
Data Quality Integration (ETL) Open Source
 
Approaching Data Quality
Approaching Data QualityApproaching Data Quality
Approaching Data Quality
 
Data Management PowerPoint Presentation Slides
Data Management PowerPoint Presentation Slides Data Management PowerPoint Presentation Slides
Data Management PowerPoint Presentation Slides
 

Similar to Data Quality Definitions

Virtual Data Room Industry Growth Statistics and Trends.pdf
Virtual Data Room Industry Growth Statistics and Trends.pdfVirtual Data Room Industry Growth Statistics and Trends.pdf
Virtual Data Room Industry Growth Statistics and Trends.pdfHokme
 
How IT Security Teams Do More With Less When Economies Rapidly Change
How IT Security Teams Do More With Less When Economies Rapidly ChangeHow IT Security Teams Do More With Less When Economies Rapidly Change
How IT Security Teams Do More With Less When Economies Rapidly ChangeDana Gardner
 
Data quality metrics infographic
Data quality metrics infographicData quality metrics infographic
Data quality metrics infographicIntellspot
 
A Holistic Approach to Property Valuations
A Holistic Approach to Property ValuationsA Holistic Approach to Property Valuations
A Holistic Approach to Property ValuationsCognizant
 
EMC Perspective: What Customers Seek from Cloud Services Providers
EMC Perspective: What Customers Seek from Cloud Services ProvidersEMC Perspective: What Customers Seek from Cloud Services Providers
EMC Perspective: What Customers Seek from Cloud Services ProvidersEMC
 
What Your Competitors Are Already Doing with Big Data
What Your Competitors Are Already Doing with Big DataWhat Your Competitors Are Already Doing with Big Data
What Your Competitors Are Already Doing with Big DataBoston Consulting Group
 
Let’s Build a Smarter Planet: Re-thinking the way Insurance works!
Let’s Build aSmarter Planet: Re-thinking the way Insurance works!Let’s Build aSmarter Planet: Re-thinking the way Insurance works!
Let’s Build a Smarter Planet: Re-thinking the way Insurance works!IBMAsean
 
Protect your confidential information while improving services
Protect your confidential information while improving servicesProtect your confidential information while improving services
Protect your confidential information while improving servicesCloudMask inc.
 
Big Data and MDM altogether: the winning association
Big Data and MDM altogether: the winning associationBig Data and MDM altogether: the winning association
Big Data and MDM altogether: the winning associationJean-Michel Franco
 
The data value map for GDPR - How to extract Business Value from your GDPR Pr...
The data value map for GDPR - How to extract Business Value from your GDPR Pr...The data value map for GDPR - How to extract Business Value from your GDPR Pr...
The data value map for GDPR - How to extract Business Value from your GDPR Pr...DAMA Ireland
 
The data value map for GDPR - How to extract Business Value from your GDPR Pr...
The data value map for GDPR - How to extract Business Value from your GDPR Pr...The data value map for GDPR - How to extract Business Value from your GDPR Pr...
The data value map for GDPR - How to extract Business Value from your GDPR Pr...Ken O'Connor
 
Data foundation for analytics excellence
Data foundation for analytics excellenceData foundation for analytics excellence
Data foundation for analytics excellenceMudit Mangal
 
Cts Corporate Pitch
Cts Corporate PitchCts Corporate Pitch
Cts Corporate PitchSteve Kaye
 
Bloor Research Comparative costs and uses for data integration platforms
Bloor Research Comparative costs and uses for data integration platformsBloor Research Comparative costs and uses for data integration platforms
Bloor Research Comparative costs and uses for data integration platformsFiona Lew
 
Sogeti on big data creating clarity - Report 1-4 on Big Data - Sogeti ViNT
 Sogeti on big data creating clarity - Report 1-4 on Big Data - Sogeti ViNT Sogeti on big data creating clarity - Report 1-4 on Big Data - Sogeti ViNT
Sogeti on big data creating clarity - Report 1-4 on Big Data - Sogeti ViNTRick Bouter
 
Data Quality Audit
Data Quality AuditData Quality Audit
Data Quality AuditUniserv
 
Facts, Figures & Fictions
Facts, Figures & Fictions Facts, Figures & Fictions
Facts, Figures & Fictions Johnbillett.com
 

Similar to Data Quality Definitions (20)

Virtual Data Room Industry Growth Statistics and Trends.pdf
Virtual Data Room Industry Growth Statistics and Trends.pdfVirtual Data Room Industry Growth Statistics and Trends.pdf
Virtual Data Room Industry Growth Statistics and Trends.pdf
 
The cloud: financial, legal and technical
The cloud: financial, legal and technicalThe cloud: financial, legal and technical
The cloud: financial, legal and technical
 
How IT Security Teams Do More With Less When Economies Rapidly Change
How IT Security Teams Do More With Less When Economies Rapidly ChangeHow IT Security Teams Do More With Less When Economies Rapidly Change
How IT Security Teams Do More With Less When Economies Rapidly Change
 
Data quality metrics infographic
Data quality metrics infographicData quality metrics infographic
Data quality metrics infographic
 
A Holistic Approach to Property Valuations
A Holistic Approach to Property ValuationsA Holistic Approach to Property Valuations
A Holistic Approach to Property Valuations
 
EMC Perspective: What Customers Seek from Cloud Services Providers
EMC Perspective: What Customers Seek from Cloud Services ProvidersEMC Perspective: What Customers Seek from Cloud Services Providers
EMC Perspective: What Customers Seek from Cloud Services Providers
 
What Your Competitors Are Already Doing with Big Data
What Your Competitors Are Already Doing with Big DataWhat Your Competitors Are Already Doing with Big Data
What Your Competitors Are Already Doing with Big Data
 
Let’s Build a Smarter Planet: Re-thinking the way Insurance works!
Let’s Build aSmarter Planet: Re-thinking the way Insurance works!Let’s Build aSmarter Planet: Re-thinking the way Insurance works!
Let’s Build a Smarter Planet: Re-thinking the way Insurance works!
 
Financial transparency
Financial transparencyFinancial transparency
Financial transparency
 
Protect your confidential information while improving services
Protect your confidential information while improving servicesProtect your confidential information while improving services
Protect your confidential information while improving services
 
Big Data and MDM altogether: the winning association
Big Data and MDM altogether: the winning associationBig Data and MDM altogether: the winning association
Big Data and MDM altogether: the winning association
 
The data value map for GDPR - How to extract Business Value from your GDPR Pr...
The data value map for GDPR - How to extract Business Value from your GDPR Pr...The data value map for GDPR - How to extract Business Value from your GDPR Pr...
The data value map for GDPR - How to extract Business Value from your GDPR Pr...
 
The data value map for GDPR - How to extract Business Value from your GDPR Pr...
The data value map for GDPR - How to extract Business Value from your GDPR Pr...The data value map for GDPR - How to extract Business Value from your GDPR Pr...
The data value map for GDPR - How to extract Business Value from your GDPR Pr...
 
Data foundation for analytics excellence
Data foundation for analytics excellenceData foundation for analytics excellence
Data foundation for analytics excellence
 
Monetize Big Data
Monetize Big DataMonetize Big Data
Monetize Big Data
 
Cts Corporate Pitch
Cts Corporate PitchCts Corporate Pitch
Cts Corporate Pitch
 
Bloor Research Comparative costs and uses for data integration platforms
Bloor Research Comparative costs and uses for data integration platformsBloor Research Comparative costs and uses for data integration platforms
Bloor Research Comparative costs and uses for data integration platforms
 
Sogeti on big data creating clarity - Report 1-4 on Big Data - Sogeti ViNT
 Sogeti on big data creating clarity - Report 1-4 on Big Data - Sogeti ViNT Sogeti on big data creating clarity - Report 1-4 on Big Data - Sogeti ViNT
Sogeti on big data creating clarity - Report 1-4 on Big Data - Sogeti ViNT
 
Data Quality Audit
Data Quality AuditData Quality Audit
Data Quality Audit
 
Facts, Figures & Fictions
Facts, Figures & Fictions Facts, Figures & Fictions
Facts, Figures & Fictions
 

More from Michael Küsters

More from Michael Küsters (11)

Ten reasons why you shouldn't use SAFe
Ten reasons why you shouldn't use SAFeTen reasons why you shouldn't use SAFe
Ten reasons why you shouldn't use SAFe
 
Trust customersatisfaction
Trust customersatisfactionTrust customersatisfaction
Trust customersatisfaction
 
Extreme Agility
Extreme AgilityExtreme Agility
Extreme Agility
 
Projekte Schneiden
Projekte SchneidenProjekte Schneiden
Projekte Schneiden
 
Story slicing Techniken
Story slicing TechnikenStory slicing Techniken
Story slicing Techniken
 
Keeping your IT projects on track
Keeping your IT projects on trackKeeping your IT projects on track
Keeping your IT projects on track
 
Why "Agile" fails
Why "Agile" failsWhy "Agile" fails
Why "Agile" fails
 
Testinvoices - DQM
Testinvoices - DQMTestinvoices - DQM
Testinvoices - DQM
 
DQM bei Ihnen
DQM bei IhnenDQM bei Ihnen
DQM bei Ihnen
 
Data Quality+Security
Data Quality+SecurityData Quality+Security
Data Quality+Security
 
Data Quality Solution
Data Quality SolutionData Quality Solution
Data Quality Solution
 

Recently uploaded

0183760ssssssssssssssssssssssssssss00101011 (27).pdf
0183760ssssssssssssssssssssssssssss00101011 (27).pdf0183760ssssssssssssssssssssssssssss00101011 (27).pdf
0183760ssssssssssssssssssssssssssss00101011 (27).pdfRenandantas16
 
Mondelez State of Snacking and Future Trends 2023
Mondelez State of Snacking and Future Trends 2023Mondelez State of Snacking and Future Trends 2023
Mondelez State of Snacking and Future Trends 2023Neil Kimberley
 
Tech Startup Growth Hacking 101 - Basics on Growth Marketing
Tech Startup Growth Hacking 101  - Basics on Growth MarketingTech Startup Growth Hacking 101  - Basics on Growth Marketing
Tech Startup Growth Hacking 101 - Basics on Growth MarketingShawn Pang
 
Best Basmati Rice Manufacturers in India
Best Basmati Rice Manufacturers in IndiaBest Basmati Rice Manufacturers in India
Best Basmati Rice Manufacturers in IndiaShree Krishna Exports
 
HONOR Veterans Event Keynote by Michael Hawkins
HONOR Veterans Event Keynote by Michael HawkinsHONOR Veterans Event Keynote by Michael Hawkins
HONOR Veterans Event Keynote by Michael HawkinsMichael W. Hawkins
 
9599632723 Top Call Girls in Delhi at your Door Step Available 24x7 Delhi
9599632723 Top Call Girls in Delhi at your Door Step Available 24x7 Delhi9599632723 Top Call Girls in Delhi at your Door Step Available 24x7 Delhi
9599632723 Top Call Girls in Delhi at your Door Step Available 24x7 DelhiCall Girls in Delhi
 
MONA 98765-12871 CALL GIRLS IN LUDHIANA LUDHIANA CALL GIRL
MONA 98765-12871 CALL GIRLS IN LUDHIANA LUDHIANA CALL GIRLMONA 98765-12871 CALL GIRLS IN LUDHIANA LUDHIANA CALL GIRL
MONA 98765-12871 CALL GIRLS IN LUDHIANA LUDHIANA CALL GIRLSeo
 
Understanding the Pakistan Budgeting Process: Basics and Key Insights
Understanding the Pakistan Budgeting Process: Basics and Key InsightsUnderstanding the Pakistan Budgeting Process: Basics and Key Insights
Understanding the Pakistan Budgeting Process: Basics and Key Insightsseri bangash
 
Progress Report - Oracle Database Analyst Summit
Progress  Report - Oracle Database Analyst SummitProgress  Report - Oracle Database Analyst Summit
Progress Report - Oracle Database Analyst SummitHolger Mueller
 
BEST ✨ Call Girls In Indirapuram Ghaziabad ✔️ 9871031762 ✔️ Escorts Service...
BEST ✨ Call Girls In  Indirapuram Ghaziabad  ✔️ 9871031762 ✔️ Escorts Service...BEST ✨ Call Girls In  Indirapuram Ghaziabad  ✔️ 9871031762 ✔️ Escorts Service...
BEST ✨ Call Girls In Indirapuram Ghaziabad ✔️ 9871031762 ✔️ Escorts Service...noida100girls
 
Enhancing and Restoring Safety & Quality Cultures - Dave Litwiller - May 2024...
Enhancing and Restoring Safety & Quality Cultures - Dave Litwiller - May 2024...Enhancing and Restoring Safety & Quality Cultures - Dave Litwiller - May 2024...
Enhancing and Restoring Safety & Quality Cultures - Dave Litwiller - May 2024...Dave Litwiller
 
Russian Faridabad Call Girls(Badarpur) : ☎ 8168257667, @4999
Russian Faridabad Call Girls(Badarpur) : ☎ 8168257667, @4999Russian Faridabad Call Girls(Badarpur) : ☎ 8168257667, @4999
Russian Faridabad Call Girls(Badarpur) : ☎ 8168257667, @4999Tina Ji
 
Unlocking the Secrets of Affiliate Marketing.pdf
Unlocking the Secrets of Affiliate Marketing.pdfUnlocking the Secrets of Affiliate Marketing.pdf
Unlocking the Secrets of Affiliate Marketing.pdfOnline Income Engine
 
Call Girls In Panjim North Goa 9971646499 Genuine Service
Call Girls In Panjim North Goa 9971646499 Genuine ServiceCall Girls In Panjim North Goa 9971646499 Genuine Service
Call Girls In Panjim North Goa 9971646499 Genuine Serviceritikaroy0888
 
Insurers' journeys to build a mastery in the IoT usage
Insurers' journeys to build a mastery in the IoT usageInsurers' journeys to build a mastery in the IoT usage
Insurers' journeys to build a mastery in the IoT usageMatteo Carbone
 
Boost the utilization of your HCL environment by reevaluating use cases and f...
Boost the utilization of your HCL environment by reevaluating use cases and f...Boost the utilization of your HCL environment by reevaluating use cases and f...
Boost the utilization of your HCL environment by reevaluating use cases and f...Roland Driesen
 
Call Girls Navi Mumbai Just Call 9907093804 Top Class Call Girl Service Avail...
Call Girls Navi Mumbai Just Call 9907093804 Top Class Call Girl Service Avail...Call Girls Navi Mumbai Just Call 9907093804 Top Class Call Girl Service Avail...
Call Girls Navi Mumbai Just Call 9907093804 Top Class Call Girl Service Avail...Dipal Arora
 
GD Birla and his contribution in management
GD Birla and his contribution in managementGD Birla and his contribution in management
GD Birla and his contribution in managementchhavia330
 
Call Girls in Gomti Nagar - 7388211116 - With room Service
Call Girls in Gomti Nagar - 7388211116  - With room ServiceCall Girls in Gomti Nagar - 7388211116  - With room Service
Call Girls in Gomti Nagar - 7388211116 - With room Servicediscovermytutordmt
 

Recently uploaded (20)

0183760ssssssssssssssssssssssssssss00101011 (27).pdf
0183760ssssssssssssssssssssssssssss00101011 (27).pdf0183760ssssssssssssssssssssssssssss00101011 (27).pdf
0183760ssssssssssssssssssssssssssss00101011 (27).pdf
 
Mondelez State of Snacking and Future Trends 2023
Mondelez State of Snacking and Future Trends 2023Mondelez State of Snacking and Future Trends 2023
Mondelez State of Snacking and Future Trends 2023
 
Tech Startup Growth Hacking 101 - Basics on Growth Marketing
Tech Startup Growth Hacking 101  - Basics on Growth MarketingTech Startup Growth Hacking 101  - Basics on Growth Marketing
Tech Startup Growth Hacking 101 - Basics on Growth Marketing
 
Best Basmati Rice Manufacturers in India
Best Basmati Rice Manufacturers in IndiaBest Basmati Rice Manufacturers in India
Best Basmati Rice Manufacturers in India
 
HONOR Veterans Event Keynote by Michael Hawkins
HONOR Veterans Event Keynote by Michael HawkinsHONOR Veterans Event Keynote by Michael Hawkins
HONOR Veterans Event Keynote by Michael Hawkins
 
9599632723 Top Call Girls in Delhi at your Door Step Available 24x7 Delhi
9599632723 Top Call Girls in Delhi at your Door Step Available 24x7 Delhi9599632723 Top Call Girls in Delhi at your Door Step Available 24x7 Delhi
9599632723 Top Call Girls in Delhi at your Door Step Available 24x7 Delhi
 
MONA 98765-12871 CALL GIRLS IN LUDHIANA LUDHIANA CALL GIRL
MONA 98765-12871 CALL GIRLS IN LUDHIANA LUDHIANA CALL GIRLMONA 98765-12871 CALL GIRLS IN LUDHIANA LUDHIANA CALL GIRL
MONA 98765-12871 CALL GIRLS IN LUDHIANA LUDHIANA CALL GIRL
 
Understanding the Pakistan Budgeting Process: Basics and Key Insights
Understanding the Pakistan Budgeting Process: Basics and Key InsightsUnderstanding the Pakistan Budgeting Process: Basics and Key Insights
Understanding the Pakistan Budgeting Process: Basics and Key Insights
 
Progress Report - Oracle Database Analyst Summit
Progress  Report - Oracle Database Analyst SummitProgress  Report - Oracle Database Analyst Summit
Progress Report - Oracle Database Analyst Summit
 
BEST ✨ Call Girls In Indirapuram Ghaziabad ✔️ 9871031762 ✔️ Escorts Service...
BEST ✨ Call Girls In  Indirapuram Ghaziabad  ✔️ 9871031762 ✔️ Escorts Service...BEST ✨ Call Girls In  Indirapuram Ghaziabad  ✔️ 9871031762 ✔️ Escorts Service...
BEST ✨ Call Girls In Indirapuram Ghaziabad ✔️ 9871031762 ✔️ Escorts Service...
 
Enhancing and Restoring Safety & Quality Cultures - Dave Litwiller - May 2024...
Enhancing and Restoring Safety & Quality Cultures - Dave Litwiller - May 2024...Enhancing and Restoring Safety & Quality Cultures - Dave Litwiller - May 2024...
Enhancing and Restoring Safety & Quality Cultures - Dave Litwiller - May 2024...
 
Russian Faridabad Call Girls(Badarpur) : ☎ 8168257667, @4999
Russian Faridabad Call Girls(Badarpur) : ☎ 8168257667, @4999Russian Faridabad Call Girls(Badarpur) : ☎ 8168257667, @4999
Russian Faridabad Call Girls(Badarpur) : ☎ 8168257667, @4999
 
Unlocking the Secrets of Affiliate Marketing.pdf
Unlocking the Secrets of Affiliate Marketing.pdfUnlocking the Secrets of Affiliate Marketing.pdf
Unlocking the Secrets of Affiliate Marketing.pdf
 
Call Girls In Panjim North Goa 9971646499 Genuine Service
Call Girls In Panjim North Goa 9971646499 Genuine ServiceCall Girls In Panjim North Goa 9971646499 Genuine Service
Call Girls In Panjim North Goa 9971646499 Genuine Service
 
Insurers' journeys to build a mastery in the IoT usage
Insurers' journeys to build a mastery in the IoT usageInsurers' journeys to build a mastery in the IoT usage
Insurers' journeys to build a mastery in the IoT usage
 
Boost the utilization of your HCL environment by reevaluating use cases and f...
Boost the utilization of your HCL environment by reevaluating use cases and f...Boost the utilization of your HCL environment by reevaluating use cases and f...
Boost the utilization of your HCL environment by reevaluating use cases and f...
 
Call Girls Navi Mumbai Just Call 9907093804 Top Class Call Girl Service Avail...
Call Girls Navi Mumbai Just Call 9907093804 Top Class Call Girl Service Avail...Call Girls Navi Mumbai Just Call 9907093804 Top Class Call Girl Service Avail...
Call Girls Navi Mumbai Just Call 9907093804 Top Class Call Girl Service Avail...
 
GD Birla and his contribution in management
GD Birla and his contribution in managementGD Birla and his contribution in management
GD Birla and his contribution in management
 
Call Girls in Gomti Nagar - 7388211116 - With room Service
Call Girls in Gomti Nagar - 7388211116  - With room ServiceCall Girls in Gomti Nagar - 7388211116  - With room Service
Call Girls in Gomti Nagar - 7388211116 - With room Service
 
VVVIP Call Girls In Greater Kailash ➡️ Delhi ➡️ 9999965857 🚀 No Advance 24HRS...
VVVIP Call Girls In Greater Kailash ➡️ Delhi ➡️ 9999965857 🚀 No Advance 24HRS...VVVIP Call Girls In Greater Kailash ➡️ Delhi ➡️ 9999965857 🚀 No Advance 24HRS...
VVVIP Call Girls In Greater Kailash ➡️ Delhi ➡️ 9999965857 🚀 No Advance 24HRS...
 

Data Quality Definitions

  • 1. Data Quality Management Definitions The Characteristics of Data Quality
  • 2. What is „Data Quality“? Slide Data Quality stands for: Data Quality Characteristics Accurate Precise Relevant Complete Harmonized information need and provision 1 Mutual understanding of data capability 2 Trustworthy and credible information 3 Consistent Timely Transparent
  • 3. The Characteristic „Accuracy“ Slide Accuracy stands for: Examples for Data Accuracy issues: Data Accuracy is the degree at which a data object overlaps with the real world object or event described. Data accuracy is measured as reciprocal maximum gap between data and reality. [ high is good ] Frank Meyer is recorded as “Fritz Meier” in the Database. An incident is reported with €23m when the loss was €12k. The amount invoiced does not represent the customer’s usage. Accurate Good fit between the data and reality The ability to draw correct conclusions from data Business processes that match reality
  • 4. The Characteristic „Precision“ Slide Precision stands for: Examples of Data Precision issues: Data Precision is the closeness between all possible interpretations of a data object. Data precision is measured as reciprocal maximum distance between all applicable data interpretations. [ high is good ] A close link between desired and offered information The ability to pinpoint decisions based on data. Lean Business processes. Frank Meyer lives in Bonn - or Cologne? Or was that Jon Myers? This Billing incident was caused by Mediation... I think… Why do we charge the customer 2 minutes for a 59sec call? Precise
  • 5. The Characteristic „Relevance“ Slide Relevance stands for: Examples of Data Relevance Issues: Data Relevance is the closeness between data consumer need and data provider output. Data relevance is measured as percentage of all data required divided by all data provided. [100% is best ] Data that helps you know what you want. The ability to use data with maximum efficiency. Not having to sort through information you don’t need. The Revenue Assurance report also tells you about the weather! A CSR asks the cell phone customer if they have a microwave. You need to fill in a 7-page form to apply for a tariff change. Relevant
  • 6. The Characteristic „Accuracy“ Slide Completeness stands for: Examples of Data Completeness issues: Data Completeness is the extent by which the data consumer’s need is met. Data completeness is measured as percentage of data available divided by the data required. [100% is best ] Data that does not leave any open questions. The ability to make a good decision based on available data. Closeness between “need to know” and what the data tells you. We can not tell how many cell phone contracts Egon Huber has. The CC application does not provide a “Call back wanted” field. A summary report includes projects that did not report status! Complete
  • 7. The Characteristic „Consistency“ Slide Consistency stands for: Examples of Data Consistency Issues: Data Consistency is the synchronization of data objects across the company. Data consistency is measured as reciprocal ratio of distinct data objects per described object or event. [100% is best ] Data in harmony across the company. The ability to trust in data regardless of source. Identical information available to all processes and units. We send Mr. Smith’s invoices to “Smith” and ads to “Schmitz”. Asking DWH or SAP for revenue yields different numbers. Mr. Kim defines “churn” as cancel/total and Mr. Jones as cancel/new . Consistent
  • 8. The Characteristic „Transparency“ Slide Transparency stands for: Examples of Data Transparency issues: Data Transparency is the ability to trace back data to it’s origin and find out it’s real world meaning. Data transparency is measured as percentage of maximum traceable distance by total processing steps. [100% is best ] Trustworthy data in the entire data supply chain. The ability to connect data with it’s real meaning. Real accountability for data objects. We can’t tell why Frank Müller is now “Udo Huber” in the DB! A report contains a figure which nobody can explain. Project leaders get away with reporting “green” when it’s “red”! Transparent
  • 9. The Characteristic „Timeliness“ Slide Timeliness stands for: Examples of Data Timeliness Issues: Data that is available without delay. The ability to know what you need, when you need. Smooth Information Flow: ‘Data Delayed’ is ‘Data Denied’! The agenda is distributed during the Telco! Customers decide for a competitor before credit is approved! Receiving a “budget exceeded” SMS after you went over the limit! Timely Data Timeliness is the availability of data at the time it needs to be utilized. Data timeliness is measured as percentage of processing time attributed to waiting for data. [0% is best ]