SlideShare a Scribd company logo
1 of 6
http://informationaction.blogspot.com
Tw: @Alan_D_Duncan
Information Strategy | Data Governance | Analytics | Better Business Outcomes
Example Data Specifications &
Information Requirements Framework
TRANSFORMATION LOGIC TEMPLATE
(Source to Target Mapping)
Alan D. Duncan
This work is licensed under a Creative Commons Attribution-ShareAlike 4.0 International License.
Transformation Logic Template (Source to Target Mapping)
http://informationaction.blogspot.com
Tw: @Alan_D_Duncan
Information Strategy | Data Governance | Analytics | Better Business Outcomes
1 Purpose
This document template defines an outline structure for the clear and unambiguous definition of
transmission of data between one data storage location to another.
This template forms part of example data specification & information requirements framework. The
framework offers a set of outline principles, standards and guidelines to describe and clarify the
semantic meaning of data terms in support of an Information Requirements Management process.
(See the Framework Overview for further details.)
Transformation Logic Template (Source to Target Mapping)
http://informationaction.blogspot.com
Tw: @Alan_D_Duncan
Information Strategy | Data Governance | Analytics | Better Business Outcomes
2 Transformation Logic (Source to Target Mapping)
 It is anticipates that at times, data will be transmitted from one data storage location (the
“source”) to another (the “target”).
 Similar specification is required for the mapping of such data transfer, regardless of the
mechanism used to execute the transmission (e.g. ETL, ELT and ESB transport
mechanisms.)
Specification Item Purpose
Source Table Name(s)
The database table name(s) of the data source (or file name in file-based
data stores)
(NB: Should also capture details of the access path.)
Source Column
Name(s)
The database column(s) of the source (or field name/positions in file-
based data stores)
Target Table Name(s)
The database table name(s) of the target data structure.
Should also capture details of the access path.
Target Column
Name(s)
The database column(s) of the target data structure
Transformation Logic
The logical expression of how the data will be transmitted from the
source to the target, including any transformation rules to be applied.
Recognise that multiple sources could be merged into one target, or vice
versa.
Source Output Timing
Cover Timing of extraction / Extraction Method Details (may in part be
covered at Data Store level)
 Good data management and data governance practices require that the Source to Target
mapping of any data solution align with the Enterprise Logical (Canonical) Model.
 Data designers must therefore clearly demonstrate that the data transformation logic within
any data system of business application map to and align with the Logical Model.
 Beyond this requirement, Data Governance is not concerned with the technical details of data
management implementation, and therefore takes no specific interest in the physical design
or technical structure of any data processing layers.
 Where a system exposes data structures that are not explicitly relational, documentation
should be structured as if the data was stored in a relational manner.
 Notwithstanding, the expectations of auditability, traceability and persistence must be
demonstrated.
Transformation Logic Template (Source to Target Mapping)
http://informationaction.blogspot.com
Tw: @Alan_D_Duncan
Information Strategy | Data Governance | Analytics | Better Business Outcomes
Appendix A: Column Domains – Candidate list
Name Definition
Amount A Monetary Amount. i.e. a Quantity of a CURRENCY
Code A character string or number which is used for identification purposes.
* has no explicit natural language meaning - i.e. not an English word
Cost/Revenue Amount An Amount of a Currency where:
* positive = Revenue
* negative = Cost
Count
Date
Date/Time specification of seconds ?
Day of Month
Day of Week
Days A number of days.
Description A brief text description.
Details Data with embedded meaning and of a complex format but for which the
meaning cannot be consistently interpreted by a computer system.
Direction Direction of an accounted balance.
DR/CR Amount An Amount of a Currency where:
* positive = DR
* negative = CR
Email Address
External Reference A code or reference for which the format is specified by an external party.
Factor A rate/proportion/ratio in the range 0 to a maximum value.
Frequency EXAMPLES Annual, Half Year, Quarterly, Monthly, Weekly, Daily, Ad Hoc
Indicator Binary Indicator - Yes or No.
Name A meaningful word or phrase used for identification purposes.
Notes Textual Notes.
Ordinal A number indicating a position within a sequence of numbers.
Phone International
Quantity A number of units.
Rate A rate/proportion/percentage.
Status A number or character string used to indicate a state which is likely to change
over time.
Time
Type A number or character string used for classification with a discrete set of
values per column.
* could be an English word or phrase
Year A calendar year. E.g. 2002
Year/Month A month in a specific year. E.g. November 2002
Transformation Logic Template (Source to Target Mapping)
http://informationaction.blogspot.com
Tw: @Alan_D_Duncan
Information Strategy | Data Governance | Analytics | Better Business Outcomes
About the author
Alan D. Duncan is an evangelist for information and analytics as
enablers of better business outcomes, and a member of the
Advisory Board for QFire Software.
An executive-level leader in the field of Information and Data
Management Strategy, Governance and Business Analytics, he
has over 20 years of international business experience, working
with blue-chip companies in a range of industry sectors. Alan
was named by Information-Management.com in their 2012 list of
“Top 12 Data Governance gurus you should be following on
Twitter”.
Twitter: @Alan_D_Duncan
Blog: http://informationaction.blogspot.com.au/
Transformation Logic Template (Source to Target Mapping)
http://informationaction.blogspot.com
Tw: @Alan_D_Duncan
Information Strategy | Data Governance | Analytics | Better Business Outcomes
Intellectual curiosity
Skeptical scrutiny
Critical thinking
http://www.informationaction.blogspot.com.au/
@Alan_D_Duncan
http://www.linkedin.com/in/alandduncan

More Related Content

What's hot

Gathering Business Requirements for Data Warehouses
Gathering Business Requirements for Data WarehousesGathering Business Requirements for Data Warehouses
Gathering Business Requirements for Data WarehousesDavid Walker
 
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
 
Data Governance in a big data era
Data Governance in a big data eraData Governance in a big data era
Data Governance in a big data eraPieter De Leenheer
 
Enterprise Architecture vs. Data Architecture
Enterprise Architecture vs. Data ArchitectureEnterprise Architecture vs. Data Architecture
Enterprise Architecture vs. Data ArchitectureDATAVERSITY
 
Data Catalog as a Business Enabler
Data Catalog as a Business EnablerData Catalog as a Business Enabler
Data Catalog as a Business EnablerSrinivasan Sankar
 
Metadata and ontologies
Metadata and ontologiesMetadata and ontologies
Metadata and ontologiesDavid Lamas
 
MDM Architecture - SAP
MDM Architecture - SAPMDM Architecture - SAP
MDM Architecture - SAPCapgemini
 
Business Intelligence (BI) and Data Management Basics
Business Intelligence (BI) and Data Management  Basics Business Intelligence (BI) and Data Management  Basics
Business Intelligence (BI) and Data Management Basics amorshed
 
Relational and non relational database 7
Relational and non relational database 7Relational and non relational database 7
Relational and non relational database 7abdulrahmanhelan
 
Optimizing Your Supply Chain with the Neo4j Graph
Optimizing Your Supply Chain with the Neo4j GraphOptimizing Your Supply Chain with the Neo4j Graph
Optimizing Your Supply Chain with the Neo4j GraphNeo4j
 
Certification in Data Management
Certification in Data ManagementCertification in Data Management
Certification in Data ManagementL_MahonSmith
 
Data Governance and Metadata Management
Data Governance and Metadata ManagementData Governance and Metadata Management
Data Governance and Metadata Management DATAVERSITY
 
Data Architecture Strategies: Data Architecture for Digital Transformation
Data Architecture Strategies: Data Architecture for Digital TransformationData Architecture Strategies: Data Architecture for Digital Transformation
Data Architecture Strategies: Data Architecture for Digital TransformationDATAVERSITY
 
Visualization For Data Science
Visualization For Data ScienceVisualization For Data Science
Visualization For Data ScienceAngela Zoss
 
‏‏‏‏‏‏‏‏‏‏‏‏Chapter 13: Professional Development
‏‏‏‏‏‏‏‏‏‏‏‏Chapter 13: Professional Development‏‏‏‏‏‏‏‏‏‏‏‏Chapter 13: Professional Development
‏‏‏‏‏‏‏‏‏‏‏‏Chapter 13: Professional DevelopmentAhmed Alorage
 
Data Catalogs Are the Answer – What is the Question?
Data Catalogs Are the Answer – What is the Question?Data Catalogs Are the Answer – What is the Question?
Data Catalogs Are the Answer – What is the Question?DATAVERSITY
 
How to build a business glossary linked with data dictionary
How to build a business glossary linked with data dictionaryHow to build a business glossary linked with data dictionary
How to build a business glossary linked with data dictionaryPiotr Kononow
 
Best Practices in Metadata Management
Best Practices in Metadata ManagementBest Practices in Metadata Management
Best Practices in Metadata ManagementDATAVERSITY
 

What's hot (20)

Gathering Business Requirements for Data Warehouses
Gathering Business Requirements for Data WarehousesGathering Business Requirements for Data Warehouses
Gathering Business Requirements for Data Warehouses
 
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
 
Data Governance in a big data era
Data Governance in a big data eraData Governance in a big data era
Data Governance in a big data era
 
BI Business Requirements - A Framework For Business Analysts
BI Business Requirements -  A Framework For Business AnalystsBI Business Requirements -  A Framework For Business Analysts
BI Business Requirements - A Framework For Business Analysts
 
Enterprise Architecture vs. Data Architecture
Enterprise Architecture vs. Data ArchitectureEnterprise Architecture vs. Data Architecture
Enterprise Architecture vs. Data Architecture
 
Data Catalog as a Business Enabler
Data Catalog as a Business EnablerData Catalog as a Business Enabler
Data Catalog as a Business Enabler
 
Metadata and ontologies
Metadata and ontologiesMetadata and ontologies
Metadata and ontologies
 
MDM Architecture - SAP
MDM Architecture - SAPMDM Architecture - SAP
MDM Architecture - SAP
 
Business Intelligence (BI) and Data Management Basics
Business Intelligence (BI) and Data Management  Basics Business Intelligence (BI) and Data Management  Basics
Business Intelligence (BI) and Data Management Basics
 
Data modelling 101
Data modelling 101Data modelling 101
Data modelling 101
 
Relational and non relational database 7
Relational and non relational database 7Relational and non relational database 7
Relational and non relational database 7
 
Optimizing Your Supply Chain with the Neo4j Graph
Optimizing Your Supply Chain with the Neo4j GraphOptimizing Your Supply Chain with the Neo4j Graph
Optimizing Your Supply Chain with the Neo4j Graph
 
Certification in Data Management
Certification in Data ManagementCertification in Data Management
Certification in Data Management
 
Data Governance and Metadata Management
Data Governance and Metadata ManagementData Governance and Metadata Management
Data Governance and Metadata Management
 
Data Architecture Strategies: Data Architecture for Digital Transformation
Data Architecture Strategies: Data Architecture for Digital TransformationData Architecture Strategies: Data Architecture for Digital Transformation
Data Architecture Strategies: Data Architecture for Digital Transformation
 
Visualization For Data Science
Visualization For Data ScienceVisualization For Data Science
Visualization For Data Science
 
‏‏‏‏‏‏‏‏‏‏‏‏Chapter 13: Professional Development
‏‏‏‏‏‏‏‏‏‏‏‏Chapter 13: Professional Development‏‏‏‏‏‏‏‏‏‏‏‏Chapter 13: Professional Development
‏‏‏‏‏‏‏‏‏‏‏‏Chapter 13: Professional Development
 
Data Catalogs Are the Answer – What is the Question?
Data Catalogs Are the Answer – What is the Question?Data Catalogs Are the Answer – What is the Question?
Data Catalogs Are the Answer – What is the Question?
 
How to build a business glossary linked with data dictionary
How to build a business glossary linked with data dictionaryHow to build a business glossary linked with data dictionary
How to build a business glossary linked with data dictionary
 
Best Practices in Metadata Management
Best Practices in Metadata ManagementBest Practices in Metadata Management
Best Practices in Metadata Management
 

Similar to 06. Transformation Logic Template (Source to Target)

Data quality and bi
Data quality and biData quality and bi
Data quality and bijeffd00
 
Data warehouse 101-fundamentals-
Data warehouse 101-fundamentals-Data warehouse 101-fundamentals-
Data warehouse 101-fundamentals-AshishGuleria
 
Overview of business intelligence
Overview of business intelligenceOverview of business intelligence
Overview of business intelligenceAhsan Kabir
 
Itlc hanoi ba day 3 - thai son - data modelling
Itlc hanoi   ba day 3 - thai son - data modellingItlc hanoi   ba day 3 - thai son - data modelling
Itlc hanoi ba day 3 - thai son - data modellingVu Hung Nguyen
 
BI Masterclass slides (Reference Architecture v3)
BI Masterclass slides (Reference Architecture v3)BI Masterclass slides (Reference Architecture v3)
BI Masterclass slides (Reference Architecture v3)Syaifuddin Ismail
 
Эволюция Big Data и Information Management. Reference Architecture.
Эволюция Big Data и Information Management. Reference Architecture.Эволюция Big Data и Information Management. Reference Architecture.
Эволюция Big Data и Information Management. Reference Architecture.Andrey Akulov
 
3._DWH_Architecture__Components.ppt
3._DWH_Architecture__Components.ppt3._DWH_Architecture__Components.ppt
3._DWH_Architecture__Components.pptBsMath3rdsem
 
Arun Mathew Thomas_resume
Arun Mathew Thomas_resumeArun Mathew Thomas_resume
Arun Mathew Thomas_resumeARUN THOMAS
 
Dimensional Modeling
Dimensional ModelingDimensional Modeling
Dimensional ModelingSunita Sahu
 
Data warehouse
Data warehouseData warehouse
Data warehouse_123_
 
Introduction to Dimesional Modelling
Introduction to Dimesional ModellingIntroduction to Dimesional Modelling
Introduction to Dimesional ModellingAshish Chandwani
 
Data Architecture, Solution Architecture, Platform Architecture — What’s the ...
Data Architecture, Solution Architecture, Platform Architecture — What’s the ...Data Architecture, Solution Architecture, Platform Architecture — What’s the ...
Data Architecture, Solution Architecture, Platform Architecture — What’s the ...DATAVERSITY
 
Data science | What is Data science
Data science | What is Data scienceData science | What is Data science
Data science | What is Data scienceShilpaKrishna6
 
Data Mining Presentation on Science Day 2023
Data Mining Presentation on Science Day 2023Data Mining Presentation on Science Day 2023
Data Mining Presentation on Science Day 2023SakshiTiwari490123
 
Become BI Architect with 1KEY Agile BI Suite - OLAP
Become BI Architect with 1KEY Agile BI Suite - OLAPBecome BI Architect with 1KEY Agile BI Suite - OLAP
Become BI Architect with 1KEY Agile BI Suite - OLAPDhiren Gala
 

Similar to 06. Transformation Logic Template (Source to Target) (20)

Data quality and bi
Data quality and biData quality and bi
Data quality and bi
 
Data warehouse 101-fundamentals-
Data warehouse 101-fundamentals-Data warehouse 101-fundamentals-
Data warehouse 101-fundamentals-
 
Overview of business intelligence
Overview of business intelligenceOverview of business intelligence
Overview of business intelligence
 
Dimensional Modelling
Dimensional ModellingDimensional Modelling
Dimensional Modelling
 
Itlc hanoi ba day 3 - thai son - data modelling
Itlc hanoi   ba day 3 - thai son - data modellingItlc hanoi   ba day 3 - thai son - data modelling
Itlc hanoi ba day 3 - thai son - data modelling
 
BI Masterclass slides (Reference Architecture v3)
BI Masterclass slides (Reference Architecture v3)BI Masterclass slides (Reference Architecture v3)
BI Masterclass slides (Reference Architecture v3)
 
SOA the Oracle way
SOA the Oracle waySOA the Oracle way
SOA the Oracle way
 
Эволюция Big Data и Information Management. Reference Architecture.
Эволюция Big Data и Information Management. Reference Architecture.Эволюция Big Data и Information Management. Reference Architecture.
Эволюция Big Data и Information Management. Reference Architecture.
 
3._DWH_Architecture__Components.ppt
3._DWH_Architecture__Components.ppt3._DWH_Architecture__Components.ppt
3._DWH_Architecture__Components.ppt
 
Arun Mathew Thomas_resume
Arun Mathew Thomas_resumeArun Mathew Thomas_resume
Arun Mathew Thomas_resume
 
Dimensional Modeling
Dimensional ModelingDimensional Modeling
Dimensional Modeling
 
Data warehouse
Data warehouseData warehouse
Data warehouse
 
Focus
FocusFocus
Focus
 
Introduction to Dimesional Modelling
Introduction to Dimesional ModellingIntroduction to Dimesional Modelling
Introduction to Dimesional Modelling
 
Data Architecture, Solution Architecture, Platform Architecture — What’s the ...
Data Architecture, Solution Architecture, Platform Architecture — What’s the ...Data Architecture, Solution Architecture, Platform Architecture — What’s the ...
Data Architecture, Solution Architecture, Platform Architecture — What’s the ...
 
Data science | What is Data science
Data science | What is Data scienceData science | What is Data science
Data science | What is Data science
 
Data Mining Presentation on Science Day 2023
Data Mining Presentation on Science Day 2023Data Mining Presentation on Science Day 2023
Data Mining Presentation on Science Day 2023
 
Batog
BatogBatog
Batog
 
Big data careers
Big data careersBig data careers
Big data careers
 
Become BI Architect with 1KEY Agile BI Suite - OLAP
Become BI Architect with 1KEY Agile BI Suite - OLAPBecome BI Architect with 1KEY Agile BI Suite - OLAP
Become BI Architect with 1KEY Agile BI Suite - OLAP
 

More from Alan D. Duncan

Igqie14 analytics and ethics 20141107
Igqie14   analytics and ethics 20141107Igqie14   analytics and ethics 20141107
Igqie14 analytics and ethics 20141107Alan D. Duncan
 
The one question you must never ask!" (Information Requirements Gathering for...
The one question you must never ask!" (Information Requirements Gathering for...The one question you must never ask!" (Information Requirements Gathering for...
The one question you must never ask!" (Information Requirements Gathering for...Alan D. Duncan
 
Data Quality in Data Warehouse and Business Intelligence Environments - Disc...
Data Quality in  Data Warehouse and Business Intelligence Environments - Disc...Data Quality in  Data Warehouse and Business Intelligence Environments - Disc...
Data Quality in Data Warehouse and Business Intelligence Environments - Disc...Alan D. Duncan
 
LL Higher Ed BI 2014 Key BI Market Trends 20140513a
LL Higher Ed BI 2014 Key BI Market Trends 20140513aLL Higher Ed BI 2014 Key BI Market Trends 20140513a
LL Higher Ed BI 2014 Key BI Market Trends 20140513aAlan D. Duncan
 
Managing for Effective Data Governance: workshop for DQ Asia Pacific Congress...
Managing for Effective Data Governance: workshop for DQ Asia Pacific Congress...Managing for Effective Data Governance: workshop for DQ Asia Pacific Congress...
Managing for Effective Data Governance: workshop for DQ Asia Pacific Congress...Alan D. Duncan
 
WHITE PAPER: Distributed Data Quality
WHITE PAPER: Distributed Data QualityWHITE PAPER: Distributed Data Quality
WHITE PAPER: Distributed Data QualityAlan D. Duncan
 
The ABC of Data Governance: driving Information Excellence
The ABC of Data Governance: driving Information ExcellenceThe ABC of Data Governance: driving Information Excellence
The ABC of Data Governance: driving Information ExcellenceAlan D. Duncan
 

More from Alan D. Duncan (7)

Igqie14 analytics and ethics 20141107
Igqie14   analytics and ethics 20141107Igqie14   analytics and ethics 20141107
Igqie14 analytics and ethics 20141107
 
The one question you must never ask!" (Information Requirements Gathering for...
The one question you must never ask!" (Information Requirements Gathering for...The one question you must never ask!" (Information Requirements Gathering for...
The one question you must never ask!" (Information Requirements Gathering for...
 
Data Quality in Data Warehouse and Business Intelligence Environments - Disc...
Data Quality in  Data Warehouse and Business Intelligence Environments - Disc...Data Quality in  Data Warehouse and Business Intelligence Environments - Disc...
Data Quality in Data Warehouse and Business Intelligence Environments - Disc...
 
LL Higher Ed BI 2014 Key BI Market Trends 20140513a
LL Higher Ed BI 2014 Key BI Market Trends 20140513aLL Higher Ed BI 2014 Key BI Market Trends 20140513a
LL Higher Ed BI 2014 Key BI Market Trends 20140513a
 
Managing for Effective Data Governance: workshop for DQ Asia Pacific Congress...
Managing for Effective Data Governance: workshop for DQ Asia Pacific Congress...Managing for Effective Data Governance: workshop for DQ Asia Pacific Congress...
Managing for Effective Data Governance: workshop for DQ Asia Pacific Congress...
 
WHITE PAPER: Distributed Data Quality
WHITE PAPER: Distributed Data QualityWHITE PAPER: Distributed Data Quality
WHITE PAPER: Distributed Data Quality
 
The ABC of Data Governance: driving Information Excellence
The ABC of Data Governance: driving Information ExcellenceThe ABC of Data Governance: driving Information Excellence
The ABC of Data Governance: driving Information Excellence
 

Recently uploaded

DBA Basics: Getting Started with Performance Tuning.pdf
DBA Basics: Getting Started with Performance Tuning.pdfDBA Basics: Getting Started with Performance Tuning.pdf
DBA Basics: Getting Started with Performance Tuning.pdfJohn Sterrett
 
INTERNSHIP ON PURBASHA COMPOSITE TEX LTD
INTERNSHIP ON PURBASHA COMPOSITE TEX LTDINTERNSHIP ON PURBASHA COMPOSITE TEX LTD
INTERNSHIP ON PURBASHA COMPOSITE TEX LTDRafezzaman
 
Industrialised data - the key to AI success.pdf
Industrialised data - the key to AI success.pdfIndustrialised data - the key to AI success.pdf
Industrialised data - the key to AI success.pdfLars Albertsson
 
20240419 - Measurecamp Amsterdam - SAM.pdf
20240419 - Measurecamp Amsterdam - SAM.pdf20240419 - Measurecamp Amsterdam - SAM.pdf
20240419 - Measurecamp Amsterdam - SAM.pdfHuman37
 
办理学位证中佛罗里达大学毕业证,UCF成绩单原版一比一
办理学位证中佛罗里达大学毕业证,UCF成绩单原版一比一办理学位证中佛罗里达大学毕业证,UCF成绩单原版一比一
办理学位证中佛罗里达大学毕业证,UCF成绩单原版一比一F sss
 
Amazon TQM (2) Amazon TQM (2)Amazon TQM (2).pptx
Amazon TQM (2) Amazon TQM (2)Amazon TQM (2).pptxAmazon TQM (2) Amazon TQM (2)Amazon TQM (2).pptx
Amazon TQM (2) Amazon TQM (2)Amazon TQM (2).pptxAbdelrhman abooda
 
How we prevented account sharing with MFA
How we prevented account sharing with MFAHow we prevented account sharing with MFA
How we prevented account sharing with MFAAndrei Kaleshka
 
9711147426✨Call In girls Gurgaon Sector 31. SCO 25 escort service
9711147426✨Call In girls Gurgaon Sector 31. SCO 25 escort service9711147426✨Call In girls Gurgaon Sector 31. SCO 25 escort service
9711147426✨Call In girls Gurgaon Sector 31. SCO 25 escort servicejennyeacort
 
Predictive Analysis - Using Insight-informed Data to Determine Factors Drivin...
Predictive Analysis - Using Insight-informed Data to Determine Factors Drivin...Predictive Analysis - Using Insight-informed Data to Determine Factors Drivin...
Predictive Analysis - Using Insight-informed Data to Determine Factors Drivin...ThinkInnovation
 
Data Science Jobs and Salaries Analysis.pptx
Data Science Jobs and Salaries Analysis.pptxData Science Jobs and Salaries Analysis.pptx
Data Science Jobs and Salaries Analysis.pptxFurkanTasci3
 
Dubai Call Girls Wifey O52&786472 Call Girls Dubai
Dubai Call Girls Wifey O52&786472 Call Girls DubaiDubai Call Girls Wifey O52&786472 Call Girls Dubai
Dubai Call Girls Wifey O52&786472 Call Girls Dubaihf8803863
 
VIP High Class Call Girls Jamshedpur Anushka 8250192130 Independent Escort Se...
VIP High Class Call Girls Jamshedpur Anushka 8250192130 Independent Escort Se...VIP High Class Call Girls Jamshedpur Anushka 8250192130 Independent Escort Se...
VIP High Class Call Girls Jamshedpur Anushka 8250192130 Independent Escort Se...Suhani Kapoor
 
Beautiful Sapna Vip Call Girls Hauz Khas 9711199012 Call /Whatsapps
Beautiful Sapna Vip  Call Girls Hauz Khas 9711199012 Call /WhatsappsBeautiful Sapna Vip  Call Girls Hauz Khas 9711199012 Call /Whatsapps
Beautiful Sapna Vip Call Girls Hauz Khas 9711199012 Call /Whatsappssapnasaifi408
 
毕业文凭制作#回国入职#diploma#degree澳洲中央昆士兰大学毕业证成绩单pdf电子版制作修改#毕业文凭制作#回国入职#diploma#degree
毕业文凭制作#回国入职#diploma#degree澳洲中央昆士兰大学毕业证成绩单pdf电子版制作修改#毕业文凭制作#回国入职#diploma#degree毕业文凭制作#回国入职#diploma#degree澳洲中央昆士兰大学毕业证成绩单pdf电子版制作修改#毕业文凭制作#回国入职#diploma#degree
毕业文凭制作#回国入职#diploma#degree澳洲中央昆士兰大学毕业证成绩单pdf电子版制作修改#毕业文凭制作#回国入职#diploma#degreeyuu sss
 
Customer Service Analytics - Make Sense of All Your Data.pptx
Customer Service Analytics - Make Sense of All Your Data.pptxCustomer Service Analytics - Make Sense of All Your Data.pptx
Customer Service Analytics - Make Sense of All Your Data.pptxEmmanuel Dauda
 
High Class Call Girls Noida Sector 39 Aarushi 🔝8264348440🔝 Independent Escort...
High Class Call Girls Noida Sector 39 Aarushi 🔝8264348440🔝 Independent Escort...High Class Call Girls Noida Sector 39 Aarushi 🔝8264348440🔝 Independent Escort...
High Class Call Girls Noida Sector 39 Aarushi 🔝8264348440🔝 Independent Escort...soniya singh
 
Consent & Privacy Signals on Google *Pixels* - MeasureCamp Amsterdam 2024
Consent & Privacy Signals on Google *Pixels* - MeasureCamp Amsterdam 2024Consent & Privacy Signals on Google *Pixels* - MeasureCamp Amsterdam 2024
Consent & Privacy Signals on Google *Pixels* - MeasureCamp Amsterdam 2024thyngster
 
Call Girls In Dwarka 9654467111 Escorts Service
Call Girls In Dwarka 9654467111 Escorts ServiceCall Girls In Dwarka 9654467111 Escorts Service
Call Girls In Dwarka 9654467111 Escorts ServiceSapana Sha
 
From idea to production in a day – Leveraging Azure ML and Streamlit to build...
From idea to production in a day – Leveraging Azure ML and Streamlit to build...From idea to production in a day – Leveraging Azure ML and Streamlit to build...
From idea to production in a day – Leveraging Azure ML and Streamlit to build...Florian Roscheck
 

Recently uploaded (20)

DBA Basics: Getting Started with Performance Tuning.pdf
DBA Basics: Getting Started with Performance Tuning.pdfDBA Basics: Getting Started with Performance Tuning.pdf
DBA Basics: Getting Started with Performance Tuning.pdf
 
INTERNSHIP ON PURBASHA COMPOSITE TEX LTD
INTERNSHIP ON PURBASHA COMPOSITE TEX LTDINTERNSHIP ON PURBASHA COMPOSITE TEX LTD
INTERNSHIP ON PURBASHA COMPOSITE TEX LTD
 
Industrialised data - the key to AI success.pdf
Industrialised data - the key to AI success.pdfIndustrialised data - the key to AI success.pdf
Industrialised data - the key to AI success.pdf
 
20240419 - Measurecamp Amsterdam - SAM.pdf
20240419 - Measurecamp Amsterdam - SAM.pdf20240419 - Measurecamp Amsterdam - SAM.pdf
20240419 - Measurecamp Amsterdam - SAM.pdf
 
Deep Generative Learning for All - The Gen AI Hype (Spring 2024)
Deep Generative Learning for All - The Gen AI Hype (Spring 2024)Deep Generative Learning for All - The Gen AI Hype (Spring 2024)
Deep Generative Learning for All - The Gen AI Hype (Spring 2024)
 
办理学位证中佛罗里达大学毕业证,UCF成绩单原版一比一
办理学位证中佛罗里达大学毕业证,UCF成绩单原版一比一办理学位证中佛罗里达大学毕业证,UCF成绩单原版一比一
办理学位证中佛罗里达大学毕业证,UCF成绩单原版一比一
 
Amazon TQM (2) Amazon TQM (2)Amazon TQM (2).pptx
Amazon TQM (2) Amazon TQM (2)Amazon TQM (2).pptxAmazon TQM (2) Amazon TQM (2)Amazon TQM (2).pptx
Amazon TQM (2) Amazon TQM (2)Amazon TQM (2).pptx
 
How we prevented account sharing with MFA
How we prevented account sharing with MFAHow we prevented account sharing with MFA
How we prevented account sharing with MFA
 
9711147426✨Call In girls Gurgaon Sector 31. SCO 25 escort service
9711147426✨Call In girls Gurgaon Sector 31. SCO 25 escort service9711147426✨Call In girls Gurgaon Sector 31. SCO 25 escort service
9711147426✨Call In girls Gurgaon Sector 31. SCO 25 escort service
 
Predictive Analysis - Using Insight-informed Data to Determine Factors Drivin...
Predictive Analysis - Using Insight-informed Data to Determine Factors Drivin...Predictive Analysis - Using Insight-informed Data to Determine Factors Drivin...
Predictive Analysis - Using Insight-informed Data to Determine Factors Drivin...
 
Data Science Jobs and Salaries Analysis.pptx
Data Science Jobs and Salaries Analysis.pptxData Science Jobs and Salaries Analysis.pptx
Data Science Jobs and Salaries Analysis.pptx
 
Dubai Call Girls Wifey O52&786472 Call Girls Dubai
Dubai Call Girls Wifey O52&786472 Call Girls DubaiDubai Call Girls Wifey O52&786472 Call Girls Dubai
Dubai Call Girls Wifey O52&786472 Call Girls Dubai
 
VIP High Class Call Girls Jamshedpur Anushka 8250192130 Independent Escort Se...
VIP High Class Call Girls Jamshedpur Anushka 8250192130 Independent Escort Se...VIP High Class Call Girls Jamshedpur Anushka 8250192130 Independent Escort Se...
VIP High Class Call Girls Jamshedpur Anushka 8250192130 Independent Escort Se...
 
Beautiful Sapna Vip Call Girls Hauz Khas 9711199012 Call /Whatsapps
Beautiful Sapna Vip  Call Girls Hauz Khas 9711199012 Call /WhatsappsBeautiful Sapna Vip  Call Girls Hauz Khas 9711199012 Call /Whatsapps
Beautiful Sapna Vip Call Girls Hauz Khas 9711199012 Call /Whatsapps
 
毕业文凭制作#回国入职#diploma#degree澳洲中央昆士兰大学毕业证成绩单pdf电子版制作修改#毕业文凭制作#回国入职#diploma#degree
毕业文凭制作#回国入职#diploma#degree澳洲中央昆士兰大学毕业证成绩单pdf电子版制作修改#毕业文凭制作#回国入职#diploma#degree毕业文凭制作#回国入职#diploma#degree澳洲中央昆士兰大学毕业证成绩单pdf电子版制作修改#毕业文凭制作#回国入职#diploma#degree
毕业文凭制作#回国入职#diploma#degree澳洲中央昆士兰大学毕业证成绩单pdf电子版制作修改#毕业文凭制作#回国入职#diploma#degree
 
Customer Service Analytics - Make Sense of All Your Data.pptx
Customer Service Analytics - Make Sense of All Your Data.pptxCustomer Service Analytics - Make Sense of All Your Data.pptx
Customer Service Analytics - Make Sense of All Your Data.pptx
 
High Class Call Girls Noida Sector 39 Aarushi 🔝8264348440🔝 Independent Escort...
High Class Call Girls Noida Sector 39 Aarushi 🔝8264348440🔝 Independent Escort...High Class Call Girls Noida Sector 39 Aarushi 🔝8264348440🔝 Independent Escort...
High Class Call Girls Noida Sector 39 Aarushi 🔝8264348440🔝 Independent Escort...
 
Consent & Privacy Signals on Google *Pixels* - MeasureCamp Amsterdam 2024
Consent & Privacy Signals on Google *Pixels* - MeasureCamp Amsterdam 2024Consent & Privacy Signals on Google *Pixels* - MeasureCamp Amsterdam 2024
Consent & Privacy Signals on Google *Pixels* - MeasureCamp Amsterdam 2024
 
Call Girls In Dwarka 9654467111 Escorts Service
Call Girls In Dwarka 9654467111 Escorts ServiceCall Girls In Dwarka 9654467111 Escorts Service
Call Girls In Dwarka 9654467111 Escorts Service
 
From idea to production in a day – Leveraging Azure ML and Streamlit to build...
From idea to production in a day – Leveraging Azure ML and Streamlit to build...From idea to production in a day – Leveraging Azure ML and Streamlit to build...
From idea to production in a day – Leveraging Azure ML and Streamlit to build...
 

06. Transformation Logic Template (Source to Target)

  • 1. http://informationaction.blogspot.com Tw: @Alan_D_Duncan Information Strategy | Data Governance | Analytics | Better Business Outcomes Example Data Specifications & Information Requirements Framework TRANSFORMATION LOGIC TEMPLATE (Source to Target Mapping) Alan D. Duncan This work is licensed under a Creative Commons Attribution-ShareAlike 4.0 International License.
  • 2. Transformation Logic Template (Source to Target Mapping) http://informationaction.blogspot.com Tw: @Alan_D_Duncan Information Strategy | Data Governance | Analytics | Better Business Outcomes 1 Purpose This document template defines an outline structure for the clear and unambiguous definition of transmission of data between one data storage location to another. This template forms part of example data specification & information requirements framework. The framework offers a set of outline principles, standards and guidelines to describe and clarify the semantic meaning of data terms in support of an Information Requirements Management process. (See the Framework Overview for further details.)
  • 3. Transformation Logic Template (Source to Target Mapping) http://informationaction.blogspot.com Tw: @Alan_D_Duncan Information Strategy | Data Governance | Analytics | Better Business Outcomes 2 Transformation Logic (Source to Target Mapping)  It is anticipates that at times, data will be transmitted from one data storage location (the “source”) to another (the “target”).  Similar specification is required for the mapping of such data transfer, regardless of the mechanism used to execute the transmission (e.g. ETL, ELT and ESB transport mechanisms.) Specification Item Purpose Source Table Name(s) The database table name(s) of the data source (or file name in file-based data stores) (NB: Should also capture details of the access path.) Source Column Name(s) The database column(s) of the source (or field name/positions in file- based data stores) Target Table Name(s) The database table name(s) of the target data structure. Should also capture details of the access path. Target Column Name(s) The database column(s) of the target data structure Transformation Logic The logical expression of how the data will be transmitted from the source to the target, including any transformation rules to be applied. Recognise that multiple sources could be merged into one target, or vice versa. Source Output Timing Cover Timing of extraction / Extraction Method Details (may in part be covered at Data Store level)  Good data management and data governance practices require that the Source to Target mapping of any data solution align with the Enterprise Logical (Canonical) Model.  Data designers must therefore clearly demonstrate that the data transformation logic within any data system of business application map to and align with the Logical Model.  Beyond this requirement, Data Governance is not concerned with the technical details of data management implementation, and therefore takes no specific interest in the physical design or technical structure of any data processing layers.  Where a system exposes data structures that are not explicitly relational, documentation should be structured as if the data was stored in a relational manner.  Notwithstanding, the expectations of auditability, traceability and persistence must be demonstrated.
  • 4. Transformation Logic Template (Source to Target Mapping) http://informationaction.blogspot.com Tw: @Alan_D_Duncan Information Strategy | Data Governance | Analytics | Better Business Outcomes Appendix A: Column Domains – Candidate list Name Definition Amount A Monetary Amount. i.e. a Quantity of a CURRENCY Code A character string or number which is used for identification purposes. * has no explicit natural language meaning - i.e. not an English word Cost/Revenue Amount An Amount of a Currency where: * positive = Revenue * negative = Cost Count Date Date/Time specification of seconds ? Day of Month Day of Week Days A number of days. Description A brief text description. Details Data with embedded meaning and of a complex format but for which the meaning cannot be consistently interpreted by a computer system. Direction Direction of an accounted balance. DR/CR Amount An Amount of a Currency where: * positive = DR * negative = CR Email Address External Reference A code or reference for which the format is specified by an external party. Factor A rate/proportion/ratio in the range 0 to a maximum value. Frequency EXAMPLES Annual, Half Year, Quarterly, Monthly, Weekly, Daily, Ad Hoc Indicator Binary Indicator - Yes or No. Name A meaningful word or phrase used for identification purposes. Notes Textual Notes. Ordinal A number indicating a position within a sequence of numbers. Phone International Quantity A number of units. Rate A rate/proportion/percentage. Status A number or character string used to indicate a state which is likely to change over time. Time Type A number or character string used for classification with a discrete set of values per column. * could be an English word or phrase Year A calendar year. E.g. 2002 Year/Month A month in a specific year. E.g. November 2002
  • 5. Transformation Logic Template (Source to Target Mapping) http://informationaction.blogspot.com Tw: @Alan_D_Duncan Information Strategy | Data Governance | Analytics | Better Business Outcomes About the author Alan D. Duncan is an evangelist for information and analytics as enablers of better business outcomes, and a member of the Advisory Board for QFire Software. An executive-level leader in the field of Information and Data Management Strategy, Governance and Business Analytics, he has over 20 years of international business experience, working with blue-chip companies in a range of industry sectors. Alan was named by Information-Management.com in their 2012 list of “Top 12 Data Governance gurus you should be following on Twitter”. Twitter: @Alan_D_Duncan Blog: http://informationaction.blogspot.com.au/
  • 6. Transformation Logic Template (Source to Target Mapping) http://informationaction.blogspot.com Tw: @Alan_D_Duncan Information Strategy | Data Governance | Analytics | Better Business Outcomes Intellectual curiosity Skeptical scrutiny Critical thinking http://www.informationaction.blogspot.com.au/ @Alan_D_Duncan http://www.linkedin.com/in/alandduncan