SlideShare ist ein Scribd-Unternehmen logo
1 von 34
Downloaden Sie, um offline zu lesen
The Great Data Debate –
Do data quality dimensions have a place in
assessing data quality?
DAMA UK/ BCS Data Management Specialist Group – 20th June 2013
ISO 8000: Systemic and systematic data quality
03
Tim King, LSC Group
ISO 8000: Systemic & systematic
data quality
Dr. Timothy M. KING CEng CITP FIMechE FBCS DIC ACGI
IKM Principal Consultant, LSC Group
Convenor, ISO/TC184/SC4/WG13
DAMA / BCS DSMG
Do data quality dimensions have a place in assessing data quality?
2013-06-20
The context
• ISO/TC184/SC4
– "Industrial data"
– sub-committee of ISO/TC184 – "Automation systems & integration"
– founded July 1984
• standards for exchange, sharing & archiving of industrial data
– ISO 10303 – Product data representation & exchange
– ISO 13584 – Parts library
– ISO 15531 – Industrial manufacturing management data
– ISO 15926 – Integration of life-cycle data for process plants
– ISO 16739 – Data sharing in the construction & facility management industries
– ISO 17506 – 3D visualization of industrial data
– ISO 18629 – Process specification language
– ISO 18876 – Integration of industrial data for exchange, access & sharing
– ISO 22745 – Open technical dictionaries & their application to master data
– ISO 29002 – Exchange of characteristic data
23
The context
• standards for exchange, sharing & archiving of industrial data
– ISO 10303 – Product data representation & exchange
– ISO 13584 – Parts library
– ISO 15531 – Industrial manufacturing management data
– ISO 15926 – Integration of life-cycle data for process plants
– ISO 16739 – Data sharing in the construction & facility management industries
– ISO 17506 – 3D visualization of industrial data
– ISO 18629 – Process specification language
– ISO 18876 – Integration of industrial data for exchange, access & sharing
– ISO 22745 – Open technical dictionaries & their application to master data
– ISO 29002 – Exchange of characteristic data

ISO/TC184/SC4/WG13 "Industrial data quality"
developing ISO 8000 "Data quality"
since 2006
24
ISO/TC184/SC4/WG13
• "Industrial data"
• founded 2006
• three face-to-face meetings per year
– two in parallel with parent committee ISO/TC184/SC4
• teleconference calls using Webex
– provided by ISO with free dial capability for all participants
• e-mail distribution list
– 150+ experts (including academics, engineers, scientists, consultants)
– 20+ countries
– manufacturing, logistics, mining, health, finance
• typical attendance at meetings of 15 to 20 individuals
25
What is data quality?
26
What is data quality?
• ... lost upon entry into orbit around Mars
• the Executive Summary from the Mishap
Investigation Board identified that the
primary cause of the accident was a data
quality issue …
The Mars Climate Orbiter
"thruster performance data in English units
was used … the data … was required to be in
metric units per existing software interface
documentation"
27
What is data quality?
data quality
spare part in warehouse
but not recorded in
computer
number in stock
= 0
data has no sensible
interpretation
length of bolt
= "green"
self-intersecting curve in CAD file
28
What is data quality?
• ISO/IEC 25012 (Software engineering data quality model)
• ISO/IEC 15288 (Systems engineering)
• Accenture
• US Defense Logistics Information Service
• Butler Group
• Korean Database Promotion Centre
• Shell
• UK MOD Acquisition Management System
• DGIQ (German Data & Information Quality Association)
• IAIDQ (International Association for Information & Data Quality)
29
What is data quality?
accessibility accessibility / security accuracy
appropriate amount of data authenticity availability believability
changeability clarity compatibility complete completeness
compliance concise representation conciseness confidential
confidentiality conformance with business rules congruity
consistency consistent representation correctness cost / benefit
credibility currency current currentness ease of manipulation
efficiency flexibility free of error inaccurate integrity
interpretability legible liability necessity objectivity outdated
portability precision protection recoverability redundancy
redundant referential integrity relevance relevancy relevant
reputation retrievability safety security sufficiency timeliness
timeliness / timely traceability unanimity understandability
usability utility utilization validity validity of data content
validity of format value added verifiable
30
ISO/IEC 25012
(Software engineering data quality model)
accessibility accessibility / security accuracy
appropriate amount of data authenticity availability believability
changeability clarity compatibility complete completeness
compliance concise representation conciseness confidential
confidentiality conformance with business rules congruity
consistency consistent representation correctness cost / benefit
credibility currency current currentness ease of manipulation
efficiency flexibility free of error inaccurate integrity
interpretability legible liability necessity objectivity outdated
portability precision protection recoverability redundancy
redundant referential integrity relevance relevancy relevant
reputation retrievability safety security sufficiency timeliness
timeliness / timely traceability unanimity understandability
usability utility utilization validity validity of data content
validity of format value added verifiable
31
IAIDQ
(International Association for Information & Data Quality)
accessibility accessibility / security accuracy
appropriate amount of data authenticity availability believability
changeability clarity compatibility complete completeness
compliance concise representation conciseness confidential
confidentiality conformance with business rules congruity
consistency consistent representation correctness cost / benefit
credibility currency current currentness ease of manipulation
efficiency flexibility free of error inaccurate integrity
interpretability legible liability necessity objectivity outdated
portability precision protection recoverability redundancy
redundant referential integrity relevance relevancy relevant
reputation retrievability safety security sufficiency timeliness
timeliness / timely traceability unanimity understandability
usability utility utilization validity validity of data content
validity of format value added verifiable
32
What is data quality?
ISO/IEC 25012
Software engineering data
quality model
IAIDQ
International Association for
Information & Data Quality
accessibility accessibility / security accuracy
appropriate amount of data authenticity availability believability
changeability clarity compatibility complete completeness
compliance concise representation conciseness confidential
confidentiality conformance with business rules congruity consistency
consistent representation correctness cost / benefit credibility
currency current currentness ease of manipulation efficiency
flexibility free of error inaccurate integrity interpretability legible
liability necessity objectivity outdated portability precision
protection recoverability redundancy redundant referential integrity
relevance relevancy relevant reputation retrievability safety
security sufficiency timeliness timeliness / timely traceability
unanimity understandability usability utility utilization validity
validity of data content validity of format value added verifiable
accessibility accessibility / security accuracy
appropriate amount of data authenticity availability believability
changeability clarity compatibility complete completeness
compliance concise representation conciseness confidential
confidentiality conformance with business rules congruity consistency
consistent representation correctness cost / benefit credibility
currency current currentness ease of manipulation efficiency
flexibility free of error inaccurate integrity interpretability legible
liability necessity objectivity outdated portability precision
protection recoverability redundancy redundant referential integrity
relevance relevancy relevant reputation retrievability safety
security sufficiency timeliness timeliness / timely traceability
unanimity understandability usability utility utilization validity
validity of data content validity of format value added verifiable
33
What is data quality?
34
The fundamentals of quality
continual
improvement
of the quality
management
system
customer
ISO 9000:2005
A process-based
quality management
systemaccountability
measurement,
analysis &
improvement
management
responsibility
resource
management
satisfaction
output
input
requirements
product
product
realization
35
Information & data quality
continual
improvement
of the quality
management
system
customer
ISO 9000:2005
A process-based
quality management
systemaccountability
measurement,
analysis &
improvement
management
responsibility
resource
management
satisfaction
output
input
requirements
product
product
realization
for data processes, "product" is
data
product
quality is conformance
to requirements, data
quality is conformance
to data requirements
requirements
a process focus is the basis on which
to build in quality
product
realization
36
The different perspectives on
information & data quality
business
processes
• the primary, core
processes of interest
to the user, involving
making decisions &
achieving outcomes
for which the user is
responsible
• examples of these
processes include
designing an aircraft,
recruiting a new
member of staff,
extinguishing a fire,
manufacturing ice
cream etc.
37
The different perspectives on
information & data quality
business
processes
information
management
• the means by which
data are made available
to ensure the right
person at the right time
can make the right
decision as part of a
particular business
process
• ISO 15288 identifies the
following tasks as
forming information
management: generate,
collect, transform,
retain, retrieve,
disseminate & dispose
DAMA-DMBOK Guide
• data governance
• data architecture
management
• data development
• database operations
management
• data security
management
• reference & master data
management
• data warehousing &
business intelligence
management
• document & content
management
• meta data management
• data quality management
38
The different perspectives on
information & data quality
business
processes
information
management
data enable
processes
processes
create data
resources enable
information management
• any component by
which to achieve the
required outcomes of
information
management
• these resources
include people,
software & hardware
39
The different perspectives on
information & data quality
business
processes
information
management
data enable
processes
processes
create data
resources enable
information management
process focus
quality
management &
process
maturity
data focus
quality =
conformance
of data to
requirements
ISO 9000
ISO 15504
(ISO 33000)
three types
of quality
• syntactic
• semantic
• pragmatic
40
ISO 8000 – In-scope list
• The following are within the scope of ISO 8000:
– principles of data quality;
– characteristics of data that determine its quality;
– requirements for achieving data quality;
– requirements for the representation of data
requirements, measurement methods, and inspection
results for the purposes of data quality;
– frameworks for measuring and improving data quality.
41
The parts of ISO 8000
General
Information & data
focus
Process focus
42
The parts of ISO 8000
General
Information & data
focus
Process focus
1 Overview, principles & general requirements
2 Terminology
3 Taxonomy
43
The parts of ISO 8000
General
Information & data
focus
Process focus
8 Information quality: Concepts & measuring
9 Information quality: Relationship to other standards
10
Exchange of data: Syntax, semantic encoding &
conformance to data specification
20 Exchange of data: Provenance
30 Exchange of data: Accuracy
40 Exchange of data: Completeness
100 Master data: Overview
102 Master data: Terminology
110
Master data: Exchange of characteristic data: Syntax,
semantic encoding & conformance to data specification
120 Master data: Provenance
130 Master data: Accuracy
140 Master data: Completeness
311 Usage guide for ISO 10303-59 (Product data quality-shape)
44
The parts of ISO 8000
General
Information & data
focus
Process focus
60
Data quality management: The overview of process
assessment
61 Data quality management: Process reference model
62
Data quality management: Process maturity assessment
model
63 Data quality management: Measurement framework
150 Master data: Quality management framework
45
Some complications
• "information" & "data"
– definitions from ISO/IEC 2382-1:1993
• data: "re-interpretable representation of information in a formalized
manner suitable for communication, interpretation, or processing"
• information: "knowledge concerning objects, such as facts, events,
things, processes, or ideas, including concepts, that within a certain
context has a particular meaning"
• attributes? dimensions? does data have colour?
– try reading warning notices in red text when wearing night
vision goggles …
– multiple layers to the issue
• ISO/IEC 25012: "Software engineering data quality model"
46
Case study
Data quality requirements in master data
management
47
ISO 8000-120
Master Data Warehouse
Portable master data with
provenance
Load Data
 Capture
provenance data
 Map metadata to
eOTD
 Convert to ISO
22745-40 data
stream
ERP
ISO 22745
Managed Ontology
 Terminology
 Data requirements
 Classifications
 Description rules
Data Integration
Master Data Cleansing
1. Identify reference data
2. Identify or assign class
3. Assign data requirement
4. Map properties (attributes)
5. Identify & standardize values
6. Obtain missing data (enrich)
7. Validate data
Create multilingual
descriptions
Identify potential
duplicates
ECCMA
Managed Ontology
 Terminology (eOTD)
 Data requirements (eDRR)
 Classifications (eCLR)
ISO 8000 in implementation form
Courtesy
of PiLog
48
Rigorous statement & exchange of requirements
Data
requester
Data
provider
Sub
Request for data
eOTD-q-xml
ISO 22745-35
Data exchange
eOTD-r-xml
ISO 22745-40
Request for data
eOTD-q-xml
ISO 22745-35
Data exchange
eOTD-r-xml
ISO 22745-40
Data requirement
eOTD-i-xml
ISO 22745-30
49
52368965412 – Tire Bridgestone
435/95 R25
56329845 – Tyre BS 435/R25
Standard Purpose E3 2 Star Radial
125435 – Bridge Stone 25inch
435/95
965123465 – Tyre Bridgestone Part
Number 12345
Inventory rationalization as a result of ISO 8000
Common ERP descriptions
Standardised Long Description:
Tire: Pneumatic, Vehicular: Service
Type for Which Designed: Loader Tire
Rim Nominal Diameter: 25' Tire
Width: 445mm Aspect Ratio: 0.95 Tire
Ply Arrangement: Radial Ply
Rating: 2* Tire & Rim Association
Number: E3 Tread Material: Standard
Tire Air Retention Method: Tubeless
Tire Load Index and Speed
Symbol: NA Tread Pattern: VHB TKPH
Rating: 80
Standardised Short Description:
Tire Pneumatic: Loader 25‘ 445mm
0.95 2*
50
The benefits of ISO 8000
vague data
requirements
human-readable
requirements
requirements differ
from project to project
repeated cleansing of
same non-conformances
ad hoc approaches to
validation
explicit, measurable
data requirements
computer-processable
requirements
classified, common
types of requirement
data right, first
& every time
recommended types
of validation
51
Conclusions
• systematic
– alignment with ISO 9000 principles of quality
– driven by explicit, robust data requirements
• systemic
– errors in data fields as a symptom of the real
problem
– sustainable quality from the enterprise strategy
downwards
52
Useful links
• ISO
– http://www.iso.org/iso/home.html
• ISO/TC184/SC4/WG13
– http://isotc.iso.org/livelink/livelink?func=ll&objId=8838237&objAction=brows
e&sort=name
• BSI AMT/4 "Industrial data & manufacturing interfaces"
– http://standardsdevelopment.bsigroup.com/Home/Committee/50001757
• LSC Group
– http://www.lsc.co.uk/
53

Weitere ähnliche Inhalte

Was ist angesagt?

Data quality management Basic
Data quality management BasicData quality management Basic
Data quality management BasicKhaled Mosharraf
 
Data Management Strategies
Data Management StrategiesData Management Strategies
Data Management StrategiesMicheal Axelsen
 
Data Governance Best Practices
Data Governance Best PracticesData Governance Best Practices
Data Governance Best PracticesBoris Otto
 
Building Audi’s enterprise big data platform
Building Audi’s enterprise big data platformBuilding Audi’s enterprise big data platform
Building Audi’s enterprise big data platformDataWorks Summit
 
Data Quality Best Practices
Data Quality Best PracticesData Quality Best Practices
Data Quality Best PracticesDATAVERSITY
 
Knowledge Management System(KMS)
Knowledge Management System(KMS)Knowledge Management System(KMS)
Knowledge Management System(KMS)ayush goyal
 
Data Modeling, Data Governance, & Data Quality
Data Modeling, Data Governance, & Data QualityData Modeling, Data Governance, & Data Quality
Data Modeling, Data Governance, & Data QualityDATAVERSITY
 
Critical Review of Open Group IT4IT Reference Architecture
Critical Review of Open Group IT4IT Reference ArchitectureCritical Review of Open Group IT4IT Reference Architecture
Critical Review of Open Group IT4IT Reference ArchitectureAlan McSweeney
 
Data governance Program PowerPoint Presentation Slides
Data governance Program PowerPoint Presentation Slides Data governance Program PowerPoint Presentation Slides
Data governance Program PowerPoint Presentation Slides SlideTeam
 
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
 
Data Quality Rules introduction
Data Quality Rules introductionData Quality Rules introduction
Data Quality Rules introductiondatatovalue
 
Data Governance Initiative
Data Governance InitiativeData Governance Initiative
Data Governance InitiativeDataWorks Summit
 
Driving Data Intelligence in the Supply Chain Through the Data Catalog at TJX
Driving Data Intelligence in the Supply Chain Through the Data Catalog at TJXDriving Data Intelligence in the Supply Chain Through the Data Catalog at TJX
Driving Data Intelligence in the Supply Chain Through the Data Catalog at TJXDATAVERSITY
 
Governance and Architecture in Data Integration
Governance and Architecture in Data IntegrationGovernance and Architecture in Data Integration
Governance and Architecture in Data IntegrationAnalytiX DS
 
Data Architecture for Data Governance
Data Architecture for Data GovernanceData Architecture for Data Governance
Data Architecture for Data GovernanceDATAVERSITY
 
PostgreSQL em projetos de Business Analytics e Big Data Analytics com Pentaho
PostgreSQL em projetos de Business Analytics e Big Data Analytics com PentahoPostgreSQL em projetos de Business Analytics e Big Data Analytics com Pentaho
PostgreSQL em projetos de Business Analytics e Big Data Analytics com PentahoAmbiente Livre
 
Conceptual vs. Logical vs. Physical Data Modeling
Conceptual vs. Logical vs. Physical Data ModelingConceptual vs. Logical vs. Physical Data Modeling
Conceptual vs. Logical vs. Physical Data ModelingDATAVERSITY
 

Was ist angesagt? (20)

Data quality management Basic
Data quality management BasicData quality management Basic
Data quality management Basic
 
Data Management Strategies
Data Management StrategiesData Management Strategies
Data Management Strategies
 
Data Governance Best Practices
Data Governance Best PracticesData Governance Best Practices
Data Governance Best Practices
 
Building Audi’s enterprise big data platform
Building Audi’s enterprise big data platformBuilding Audi’s enterprise big data platform
Building Audi’s enterprise big data platform
 
Data Quality Best Practices
Data Quality Best PracticesData Quality Best Practices
Data Quality Best Practices
 
Knowledge Management System(KMS)
Knowledge Management System(KMS)Knowledge Management System(KMS)
Knowledge Management System(KMS)
 
Data Modeling, Data Governance, & Data Quality
Data Modeling, Data Governance, & Data QualityData Modeling, Data Governance, & Data Quality
Data Modeling, Data Governance, & Data Quality
 
Critical Review of Open Group IT4IT Reference Architecture
Critical Review of Open Group IT4IT Reference ArchitectureCritical Review of Open Group IT4IT Reference Architecture
Critical Review of Open Group IT4IT Reference Architecture
 
TOGAF Complete Slide Deck
TOGAF Complete Slide DeckTOGAF Complete Slide Deck
TOGAF Complete Slide Deck
 
Data Governance
Data GovernanceData Governance
Data Governance
 
Data governance Program PowerPoint Presentation Slides
Data governance Program PowerPoint Presentation Slides Data governance Program PowerPoint Presentation Slides
Data governance Program PowerPoint Presentation Slides
 
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?
 
Data Quality Rules introduction
Data Quality Rules introductionData Quality Rules introduction
Data Quality Rules introduction
 
Data Governance Initiative
Data Governance InitiativeData Governance Initiative
Data Governance Initiative
 
Driving Data Intelligence in the Supply Chain Through the Data Catalog at TJX
Driving Data Intelligence in the Supply Chain Through the Data Catalog at TJXDriving Data Intelligence in the Supply Chain Through the Data Catalog at TJX
Driving Data Intelligence in the Supply Chain Through the Data Catalog at TJX
 
Governance and Architecture in Data Integration
Governance and Architecture in Data IntegrationGovernance and Architecture in Data Integration
Governance and Architecture in Data Integration
 
Data Architecture for Data Governance
Data Architecture for Data GovernanceData Architecture for Data Governance
Data Architecture for Data Governance
 
Data Mesh
Data MeshData Mesh
Data Mesh
 
PostgreSQL em projetos de Business Analytics e Big Data Analytics com Pentaho
PostgreSQL em projetos de Business Analytics e Big Data Analytics com PentahoPostgreSQL em projetos de Business Analytics e Big Data Analytics com Pentaho
PostgreSQL em projetos de Business Analytics e Big Data Analytics com Pentaho
 
Conceptual vs. Logical vs. Physical Data Modeling
Conceptual vs. Logical vs. Physical Data ModelingConceptual vs. Logical vs. Physical Data Modeling
Conceptual vs. Logical vs. Physical Data Modeling
 

Ähnlich wie The Great Data Debate (3) ISO8000: Systemic and systematic data quality, T.King

New Trends in Data Management in the Information Industries
New Trends in Data Management in the Information Industries New Trends in Data Management in the Information Industries
New Trends in Data Management in the Information Industries Matt Turner
 
Industrial Data Space Association - New Members, New Insights, New Future Dir...
Industrial Data Space Association - New Members, New Insights, New Future Dir...Industrial Data Space Association - New Members, New Insights, New Future Dir...
Industrial Data Space Association - New Members, New Insights, New Future Dir...Thorsten Huelsmann
 
IT OT Integration_Vishnu_Murali_05262016_UPDATED
IT OT Integration_Vishnu_Murali_05262016_UPDATEDIT OT Integration_Vishnu_Murali_05262016_UPDATED
IT OT Integration_Vishnu_Murali_05262016_UPDATEDVishnu Murali
 
UNINFO - BIG DATA & Information Security Standards - Guasconi
UNINFO - BIG DATA & Information Security Standards - GuasconiUNINFO - BIG DATA & Information Security Standards - Guasconi
UNINFO - BIG DATA & Information Security Standards - GuasconiBL4CKSWAN Srl
 
EY_Graph Database Powered Sustainability
EY_Graph Database Powered SustainabilityEY_Graph Database Powered Sustainability
EY_Graph Database Powered SustainabilityNeo4j
 
Demand & Supply Management in a Multi-Sourcing Environment
Demand & Supply Management in a Multi-Sourcing EnvironmentDemand & Supply Management in a Multi-Sourcing Environment
Demand & Supply Management in a Multi-Sourcing EnvironmentJean-Pierre Beelen
 
Cloud Security Standards: What to Expect and What to Negotiate V2.0
Cloud Security Standards: What to Expect and What to Negotiate V2.0Cloud Security Standards: What to Expect and What to Negotiate V2.0
Cloud Security Standards: What to Expect and What to Negotiate V2.0Cloud Standards Customer Council
 
Reference data utilities - the only way forward
Reference data utilities - the only way forwardReference data utilities - the only way forward
Reference data utilities - the only way forwardEuroclear
 
Asset Reliability Through Integrated Asset Management
Asset Reliability Through Integrated Asset ManagementAsset Reliability Through Integrated Asset Management
Asset Reliability Through Integrated Asset ManagementL&T Technology Services
 
Leveraging compute power at the edge - M2M solutions with Informix in the IoT...
Leveraging compute power at the edge - M2M solutions with Informix in the IoT...Leveraging compute power at the edge - M2M solutions with Informix in the IoT...
Leveraging compute power at the edge - M2M solutions with Informix in the IoT...IBM_Info_Management
 
Latest Developments in Cloud Security Standards and Privacy
Latest Developments in Cloud Security Standards and PrivacyLatest Developments in Cloud Security Standards and Privacy
Latest Developments in Cloud Security Standards and PrivacyCloud Standards Customer Council
 
IoT / M2M Solutions with Informix in the IoT Gateway
IoT / M2M Solutions with Informix in the IoT GatewayIoT / M2M Solutions with Informix in the IoT Gateway
IoT / M2M Solutions with Informix in the IoT GatewayEurotech
 

Ähnlich wie The Great Data Debate (3) ISO8000: Systemic and systematic data quality, T.King (20)

New Trends in Data Management in the Information Industries
New Trends in Data Management in the Information Industries New Trends in Data Management in the Information Industries
New Trends in Data Management in the Information Industries
 
Industrial Data Space Association - New Members, New Insights, New Future Dir...
Industrial Data Space Association - New Members, New Insights, New Future Dir...Industrial Data Space Association - New Members, New Insights, New Future Dir...
Industrial Data Space Association - New Members, New Insights, New Future Dir...
 
IT OT Integration_Vishnu_Murali_05262016_UPDATED
IT OT Integration_Vishnu_Murali_05262016_UPDATEDIT OT Integration_Vishnu_Murali_05262016_UPDATED
IT OT Integration_Vishnu_Murali_05262016_UPDATED
 
Big Data and Safety Culture
Big Data and Safety CultureBig Data and Safety Culture
Big Data and Safety Culture
 
UNINFO - BIG DATA & Information Security Standards - Guasconi
UNINFO - BIG DATA & Information Security Standards - GuasconiUNINFO - BIG DATA & Information Security Standards - Guasconi
UNINFO - BIG DATA & Information Security Standards - Guasconi
 
Usulan untuk wg1 dan wg2 serta kualitas data pada kaminfo 12 agustus 2015
Usulan untuk wg1 dan wg2 serta kualitas data pada kaminfo 12 agustus 2015Usulan untuk wg1 dan wg2 serta kualitas data pada kaminfo 12 agustus 2015
Usulan untuk wg1 dan wg2 serta kualitas data pada kaminfo 12 agustus 2015
 
Usulan untuk wg1 dan wg2 serta kualitas data pada pnps2015 rapat ke-2 pt35-...
Usulan untuk wg1 dan wg2 serta kualitas data pada pnps2015   rapat ke-2 pt35-...Usulan untuk wg1 dan wg2 serta kualitas data pada pnps2015   rapat ke-2 pt35-...
Usulan untuk wg1 dan wg2 serta kualitas data pada pnps2015 rapat ke-2 pt35-...
 
EY_Graph Database Powered Sustainability
EY_Graph Database Powered SustainabilityEY_Graph Database Powered Sustainability
EY_Graph Database Powered Sustainability
 
Sharing best practices for success
Sharing best practices for successSharing best practices for success
Sharing best practices for success
 
Demand & Supply Management in a Multi-Sourcing Environment
Demand & Supply Management in a Multi-Sourcing EnvironmentDemand & Supply Management in a Multi-Sourcing Environment
Demand & Supply Management in a Multi-Sourcing Environment
 
Cloud Security Standards: What to Expect and What to Negotiate V2.0
Cloud Security Standards: What to Expect and What to Negotiate V2.0Cloud Security Standards: What to Expect and What to Negotiate V2.0
Cloud Security Standards: What to Expect and What to Negotiate V2.0
 
Reference data utilities - the only way forward
Reference data utilities - the only way forwardReference data utilities - the only way forward
Reference data utilities - the only way forward
 
Asset Reliability Through Integrated Asset Management
Asset Reliability Through Integrated Asset ManagementAsset Reliability Through Integrated Asset Management
Asset Reliability Through Integrated Asset Management
 
69 AGARAM Venkatesh
69 AGARAM Venkatesh69 AGARAM Venkatesh
69 AGARAM Venkatesh
 
Usulan untuk wg1 dan wg2 pada pnps2015 rapat awal pt35-01 - 9 april 2015
Usulan untuk wg1 dan wg2 pada pnps2015   rapat awal pt35-01 - 9 april 2015Usulan untuk wg1 dan wg2 pada pnps2015   rapat awal pt35-01 - 9 april 2015
Usulan untuk wg1 dan wg2 pada pnps2015 rapat awal pt35-01 - 9 april 2015
 
Leveraging compute power at the edge - M2M solutions with Informix in the IoT...
Leveraging compute power at the edge - M2M solutions with Informix in the IoT...Leveraging compute power at the edge - M2M solutions with Informix in the IoT...
Leveraging compute power at the edge - M2M solutions with Informix in the IoT...
 
Latest Developments in Cloud Security Standards and Privacy
Latest Developments in Cloud Security Standards and PrivacyLatest Developments in Cloud Security Standards and Privacy
Latest Developments in Cloud Security Standards and Privacy
 
GE’s Industrial Data Lake Platform
GE’s Industrial Data Lake PlatformGE’s Industrial Data Lake Platform
GE’s Industrial Data Lake Platform
 
Usulanuntukwg1danwg2dandata28 feb2017
Usulanuntukwg1danwg2dandata28 feb2017Usulanuntukwg1danwg2dandata28 feb2017
Usulanuntukwg1danwg2dandata28 feb2017
 
IoT / M2M Solutions with Informix in the IoT Gateway
IoT / M2M Solutions with Informix in the IoT GatewayIoT / M2M Solutions with Informix in the IoT Gateway
IoT / M2M Solutions with Informix in the IoT Gateway
 

Kürzlich hochgeladen

Workshop - Best of Both Worlds_ Combine KG and Vector search for enhanced R...
Workshop - Best of Both Worlds_ Combine  KG and Vector search for  enhanced R...Workshop - Best of Both Worlds_ Combine  KG and Vector search for  enhanced R...
Workshop - Best of Both Worlds_ Combine KG and Vector search for enhanced R...Neo4j
 
Raspberry Pi 5: Challenges and Solutions in Bringing up an OpenGL/Vulkan Driv...
Raspberry Pi 5: Challenges and Solutions in Bringing up an OpenGL/Vulkan Driv...Raspberry Pi 5: Challenges and Solutions in Bringing up an OpenGL/Vulkan Driv...
Raspberry Pi 5: Challenges and Solutions in Bringing up an OpenGL/Vulkan Driv...Igalia
 
How to convert PDF to text with Nanonets
How to convert PDF to text with NanonetsHow to convert PDF to text with Nanonets
How to convert PDF to text with Nanonetsnaman860154
 
Boost PC performance: How more available memory can improve productivity
Boost PC performance: How more available memory can improve productivityBoost PC performance: How more available memory can improve productivity
Boost PC performance: How more available memory can improve productivityPrincipled Technologies
 
Boost Fertility New Invention Ups Success Rates.pdf
Boost Fertility New Invention Ups Success Rates.pdfBoost Fertility New Invention Ups Success Rates.pdf
Boost Fertility New Invention Ups Success Rates.pdfsudhanshuwaghmare1
 
TrustArc Webinar - Stay Ahead of US State Data Privacy Law Developments
TrustArc Webinar - Stay Ahead of US State Data Privacy Law DevelopmentsTrustArc Webinar - Stay Ahead of US State Data Privacy Law Developments
TrustArc Webinar - Stay Ahead of US State Data Privacy Law DevelopmentsTrustArc
 
Factors to Consider When Choosing Accounts Payable Services Providers.pptx
Factors to Consider When Choosing Accounts Payable Services Providers.pptxFactors to Consider When Choosing Accounts Payable Services Providers.pptx
Factors to Consider When Choosing Accounts Payable Services Providers.pptxKatpro Technologies
 
The Role of Taxonomy and Ontology in Semantic Layers - Heather Hedden.pdf
The Role of Taxonomy and Ontology in Semantic Layers - Heather Hedden.pdfThe Role of Taxonomy and Ontology in Semantic Layers - Heather Hedden.pdf
The Role of Taxonomy and Ontology in Semantic Layers - Heather Hedden.pdfEnterprise Knowledge
 
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...Miguel Araújo
 
Histor y of HAM Radio presentation slide
Histor y of HAM Radio presentation slideHistor y of HAM Radio presentation slide
Histor y of HAM Radio presentation slidevu2urc
 
CNv6 Instructor Chapter 6 Quality of Service
CNv6 Instructor Chapter 6 Quality of ServiceCNv6 Instructor Chapter 6 Quality of Service
CNv6 Instructor Chapter 6 Quality of Servicegiselly40
 
Bajaj Allianz Life Insurance Company - Insurer Innovation Award 2024
Bajaj Allianz Life Insurance Company - Insurer Innovation Award 2024Bajaj Allianz Life Insurance Company - Insurer Innovation Award 2024
Bajaj Allianz Life Insurance Company - Insurer Innovation Award 2024The Digital Insurer
 
Real Time Object Detection Using Open CV
Real Time Object Detection Using Open CVReal Time Object Detection Using Open CV
Real Time Object Detection Using Open CVKhem
 
Understanding Discord NSFW Servers A Guide for Responsible Users.pdf
Understanding Discord NSFW Servers A Guide for Responsible Users.pdfUnderstanding Discord NSFW Servers A Guide for Responsible Users.pdf
Understanding Discord NSFW Servers A Guide for Responsible Users.pdfUK Journal
 
08448380779 Call Girls In Diplomatic Enclave Women Seeking Men
08448380779 Call Girls In Diplomatic Enclave Women Seeking Men08448380779 Call Girls In Diplomatic Enclave Women Seeking Men
08448380779 Call Girls In Diplomatic Enclave Women Seeking MenDelhi Call girls
 
Finology Group – Insurtech Innovation Award 2024
Finology Group – Insurtech Innovation Award 2024Finology Group – Insurtech Innovation Award 2024
Finology Group – Insurtech Innovation Award 2024The Digital Insurer
 
Tata AIG General Insurance Company - Insurer Innovation Award 2024
Tata AIG General Insurance Company - Insurer Innovation Award 2024Tata AIG General Insurance Company - Insurer Innovation Award 2024
Tata AIG General Insurance Company - Insurer Innovation Award 2024The Digital Insurer
 
08448380779 Call Girls In Greater Kailash - I Women Seeking Men
08448380779 Call Girls In Greater Kailash - I Women Seeking Men08448380779 Call Girls In Greater Kailash - I Women Seeking Men
08448380779 Call Girls In Greater Kailash - I Women Seeking MenDelhi Call girls
 
IAC 2024 - IA Fast Track to Search Focused AI Solutions
IAC 2024 - IA Fast Track to Search Focused AI SolutionsIAC 2024 - IA Fast Track to Search Focused AI Solutions
IAC 2024 - IA Fast Track to Search Focused AI SolutionsEnterprise Knowledge
 
🐬 The future of MySQL is Postgres 🐘
🐬  The future of MySQL is Postgres   🐘🐬  The future of MySQL is Postgres   🐘
🐬 The future of MySQL is Postgres 🐘RTylerCroy
 

Kürzlich hochgeladen (20)

Workshop - Best of Both Worlds_ Combine KG and Vector search for enhanced R...
Workshop - Best of Both Worlds_ Combine  KG and Vector search for  enhanced R...Workshop - Best of Both Worlds_ Combine  KG and Vector search for  enhanced R...
Workshop - Best of Both Worlds_ Combine KG and Vector search for enhanced R...
 
Raspberry Pi 5: Challenges and Solutions in Bringing up an OpenGL/Vulkan Driv...
Raspberry Pi 5: Challenges and Solutions in Bringing up an OpenGL/Vulkan Driv...Raspberry Pi 5: Challenges and Solutions in Bringing up an OpenGL/Vulkan Driv...
Raspberry Pi 5: Challenges and Solutions in Bringing up an OpenGL/Vulkan Driv...
 
How to convert PDF to text with Nanonets
How to convert PDF to text with NanonetsHow to convert PDF to text with Nanonets
How to convert PDF to text with Nanonets
 
Boost PC performance: How more available memory can improve productivity
Boost PC performance: How more available memory can improve productivityBoost PC performance: How more available memory can improve productivity
Boost PC performance: How more available memory can improve productivity
 
Boost Fertility New Invention Ups Success Rates.pdf
Boost Fertility New Invention Ups Success Rates.pdfBoost Fertility New Invention Ups Success Rates.pdf
Boost Fertility New Invention Ups Success Rates.pdf
 
TrustArc Webinar - Stay Ahead of US State Data Privacy Law Developments
TrustArc Webinar - Stay Ahead of US State Data Privacy Law DevelopmentsTrustArc Webinar - Stay Ahead of US State Data Privacy Law Developments
TrustArc Webinar - Stay Ahead of US State Data Privacy Law Developments
 
Factors to Consider When Choosing Accounts Payable Services Providers.pptx
Factors to Consider When Choosing Accounts Payable Services Providers.pptxFactors to Consider When Choosing Accounts Payable Services Providers.pptx
Factors to Consider When Choosing Accounts Payable Services Providers.pptx
 
The Role of Taxonomy and Ontology in Semantic Layers - Heather Hedden.pdf
The Role of Taxonomy and Ontology in Semantic Layers - Heather Hedden.pdfThe Role of Taxonomy and Ontology in Semantic Layers - Heather Hedden.pdf
The Role of Taxonomy and Ontology in Semantic Layers - Heather Hedden.pdf
 
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
 
Histor y of HAM Radio presentation slide
Histor y of HAM Radio presentation slideHistor y of HAM Radio presentation slide
Histor y of HAM Radio presentation slide
 
CNv6 Instructor Chapter 6 Quality of Service
CNv6 Instructor Chapter 6 Quality of ServiceCNv6 Instructor Chapter 6 Quality of Service
CNv6 Instructor Chapter 6 Quality of Service
 
Bajaj Allianz Life Insurance Company - Insurer Innovation Award 2024
Bajaj Allianz Life Insurance Company - Insurer Innovation Award 2024Bajaj Allianz Life Insurance Company - Insurer Innovation Award 2024
Bajaj Allianz Life Insurance Company - Insurer Innovation Award 2024
 
Real Time Object Detection Using Open CV
Real Time Object Detection Using Open CVReal Time Object Detection Using Open CV
Real Time Object Detection Using Open CV
 
Understanding Discord NSFW Servers A Guide for Responsible Users.pdf
Understanding Discord NSFW Servers A Guide for Responsible Users.pdfUnderstanding Discord NSFW Servers A Guide for Responsible Users.pdf
Understanding Discord NSFW Servers A Guide for Responsible Users.pdf
 
08448380779 Call Girls In Diplomatic Enclave Women Seeking Men
08448380779 Call Girls In Diplomatic Enclave Women Seeking Men08448380779 Call Girls In Diplomatic Enclave Women Seeking Men
08448380779 Call Girls In Diplomatic Enclave Women Seeking Men
 
Finology Group – Insurtech Innovation Award 2024
Finology Group – Insurtech Innovation Award 2024Finology Group – Insurtech Innovation Award 2024
Finology Group – Insurtech Innovation Award 2024
 
Tata AIG General Insurance Company - Insurer Innovation Award 2024
Tata AIG General Insurance Company - Insurer Innovation Award 2024Tata AIG General Insurance Company - Insurer Innovation Award 2024
Tata AIG General Insurance Company - Insurer Innovation Award 2024
 
08448380779 Call Girls In Greater Kailash - I Women Seeking Men
08448380779 Call Girls In Greater Kailash - I Women Seeking Men08448380779 Call Girls In Greater Kailash - I Women Seeking Men
08448380779 Call Girls In Greater Kailash - I Women Seeking Men
 
IAC 2024 - IA Fast Track to Search Focused AI Solutions
IAC 2024 - IA Fast Track to Search Focused AI SolutionsIAC 2024 - IA Fast Track to Search Focused AI Solutions
IAC 2024 - IA Fast Track to Search Focused AI Solutions
 
🐬 The future of MySQL is Postgres 🐘
🐬  The future of MySQL is Postgres   🐘🐬  The future of MySQL is Postgres   🐘
🐬 The future of MySQL is Postgres 🐘
 

The Great Data Debate (3) ISO8000: Systemic and systematic data quality, T.King

  • 1. The Great Data Debate – Do data quality dimensions have a place in assessing data quality? DAMA UK/ BCS Data Management Specialist Group – 20th June 2013
  • 2. ISO 8000: Systemic and systematic data quality 03 Tim King, LSC Group
  • 3. ISO 8000: Systemic & systematic data quality Dr. Timothy M. KING CEng CITP FIMechE FBCS DIC ACGI IKM Principal Consultant, LSC Group Convenor, ISO/TC184/SC4/WG13 DAMA / BCS DSMG Do data quality dimensions have a place in assessing data quality? 2013-06-20
  • 4. The context • ISO/TC184/SC4 – "Industrial data" – sub-committee of ISO/TC184 – "Automation systems & integration" – founded July 1984 • standards for exchange, sharing & archiving of industrial data – ISO 10303 – Product data representation & exchange – ISO 13584 – Parts library – ISO 15531 – Industrial manufacturing management data – ISO 15926 – Integration of life-cycle data for process plants – ISO 16739 – Data sharing in the construction & facility management industries – ISO 17506 – 3D visualization of industrial data – ISO 18629 – Process specification language – ISO 18876 – Integration of industrial data for exchange, access & sharing – ISO 22745 – Open technical dictionaries & their application to master data – ISO 29002 – Exchange of characteristic data 23
  • 5. The context • standards for exchange, sharing & archiving of industrial data – ISO 10303 – Product data representation & exchange – ISO 13584 – Parts library – ISO 15531 – Industrial manufacturing management data – ISO 15926 – Integration of life-cycle data for process plants – ISO 16739 – Data sharing in the construction & facility management industries – ISO 17506 – 3D visualization of industrial data – ISO 18629 – Process specification language – ISO 18876 – Integration of industrial data for exchange, access & sharing – ISO 22745 – Open technical dictionaries & their application to master data – ISO 29002 – Exchange of characteristic data  ISO/TC184/SC4/WG13 "Industrial data quality" developing ISO 8000 "Data quality" since 2006 24
  • 6. ISO/TC184/SC4/WG13 • "Industrial data" • founded 2006 • three face-to-face meetings per year – two in parallel with parent committee ISO/TC184/SC4 • teleconference calls using Webex – provided by ISO with free dial capability for all participants • e-mail distribution list – 150+ experts (including academics, engineers, scientists, consultants) – 20+ countries – manufacturing, logistics, mining, health, finance • typical attendance at meetings of 15 to 20 individuals 25
  • 7. What is data quality? 26
  • 8. What is data quality? • ... lost upon entry into orbit around Mars • the Executive Summary from the Mishap Investigation Board identified that the primary cause of the accident was a data quality issue … The Mars Climate Orbiter "thruster performance data in English units was used … the data … was required to be in metric units per existing software interface documentation" 27
  • 9. What is data quality? data quality spare part in warehouse but not recorded in computer number in stock = 0 data has no sensible interpretation length of bolt = "green" self-intersecting curve in CAD file 28
  • 10. What is data quality? • ISO/IEC 25012 (Software engineering data quality model) • ISO/IEC 15288 (Systems engineering) • Accenture • US Defense Logistics Information Service • Butler Group • Korean Database Promotion Centre • Shell • UK MOD Acquisition Management System • DGIQ (German Data & Information Quality Association) • IAIDQ (International Association for Information & Data Quality) 29
  • 11. What is data quality? accessibility accessibility / security accuracy appropriate amount of data authenticity availability believability changeability clarity compatibility complete completeness compliance concise representation conciseness confidential confidentiality conformance with business rules congruity consistency consistent representation correctness cost / benefit credibility currency current currentness ease of manipulation efficiency flexibility free of error inaccurate integrity interpretability legible liability necessity objectivity outdated portability precision protection recoverability redundancy redundant referential integrity relevance relevancy relevant reputation retrievability safety security sufficiency timeliness timeliness / timely traceability unanimity understandability usability utility utilization validity validity of data content validity of format value added verifiable 30
  • 12. ISO/IEC 25012 (Software engineering data quality model) accessibility accessibility / security accuracy appropriate amount of data authenticity availability believability changeability clarity compatibility complete completeness compliance concise representation conciseness confidential confidentiality conformance with business rules congruity consistency consistent representation correctness cost / benefit credibility currency current currentness ease of manipulation efficiency flexibility free of error inaccurate integrity interpretability legible liability necessity objectivity outdated portability precision protection recoverability redundancy redundant referential integrity relevance relevancy relevant reputation retrievability safety security sufficiency timeliness timeliness / timely traceability unanimity understandability usability utility utilization validity validity of data content validity of format value added verifiable 31
  • 13. IAIDQ (International Association for Information & Data Quality) accessibility accessibility / security accuracy appropriate amount of data authenticity availability believability changeability clarity compatibility complete completeness compliance concise representation conciseness confidential confidentiality conformance with business rules congruity consistency consistent representation correctness cost / benefit credibility currency current currentness ease of manipulation efficiency flexibility free of error inaccurate integrity interpretability legible liability necessity objectivity outdated portability precision protection recoverability redundancy redundant referential integrity relevance relevancy relevant reputation retrievability safety security sufficiency timeliness timeliness / timely traceability unanimity understandability usability utility utilization validity validity of data content validity of format value added verifiable 32
  • 14. What is data quality? ISO/IEC 25012 Software engineering data quality model IAIDQ International Association for Information & Data Quality accessibility accessibility / security accuracy appropriate amount of data authenticity availability believability changeability clarity compatibility complete completeness compliance concise representation conciseness confidential confidentiality conformance with business rules congruity consistency consistent representation correctness cost / benefit credibility currency current currentness ease of manipulation efficiency flexibility free of error inaccurate integrity interpretability legible liability necessity objectivity outdated portability precision protection recoverability redundancy redundant referential integrity relevance relevancy relevant reputation retrievability safety security sufficiency timeliness timeliness / timely traceability unanimity understandability usability utility utilization validity validity of data content validity of format value added verifiable accessibility accessibility / security accuracy appropriate amount of data authenticity availability believability changeability clarity compatibility complete completeness compliance concise representation conciseness confidential confidentiality conformance with business rules congruity consistency consistent representation correctness cost / benefit credibility currency current currentness ease of manipulation efficiency flexibility free of error inaccurate integrity interpretability legible liability necessity objectivity outdated portability precision protection recoverability redundancy redundant referential integrity relevance relevancy relevant reputation retrievability safety security sufficiency timeliness timeliness / timely traceability unanimity understandability usability utility utilization validity validity of data content validity of format value added verifiable 33
  • 15. What is data quality? 34
  • 16. The fundamentals of quality continual improvement of the quality management system customer ISO 9000:2005 A process-based quality management systemaccountability measurement, analysis & improvement management responsibility resource management satisfaction output input requirements product product realization 35
  • 17. Information & data quality continual improvement of the quality management system customer ISO 9000:2005 A process-based quality management systemaccountability measurement, analysis & improvement management responsibility resource management satisfaction output input requirements product product realization for data processes, "product" is data product quality is conformance to requirements, data quality is conformance to data requirements requirements a process focus is the basis on which to build in quality product realization 36
  • 18. The different perspectives on information & data quality business processes • the primary, core processes of interest to the user, involving making decisions & achieving outcomes for which the user is responsible • examples of these processes include designing an aircraft, recruiting a new member of staff, extinguishing a fire, manufacturing ice cream etc. 37
  • 19. The different perspectives on information & data quality business processes information management • the means by which data are made available to ensure the right person at the right time can make the right decision as part of a particular business process • ISO 15288 identifies the following tasks as forming information management: generate, collect, transform, retain, retrieve, disseminate & dispose DAMA-DMBOK Guide • data governance • data architecture management • data development • database operations management • data security management • reference & master data management • data warehousing & business intelligence management • document & content management • meta data management • data quality management 38
  • 20. The different perspectives on information & data quality business processes information management data enable processes processes create data resources enable information management • any component by which to achieve the required outcomes of information management • these resources include people, software & hardware 39
  • 21. The different perspectives on information & data quality business processes information management data enable processes processes create data resources enable information management process focus quality management & process maturity data focus quality = conformance of data to requirements ISO 9000 ISO 15504 (ISO 33000) three types of quality • syntactic • semantic • pragmatic 40
  • 22. ISO 8000 – In-scope list • The following are within the scope of ISO 8000: – principles of data quality; – characteristics of data that determine its quality; – requirements for achieving data quality; – requirements for the representation of data requirements, measurement methods, and inspection results for the purposes of data quality; – frameworks for measuring and improving data quality. 41
  • 23. The parts of ISO 8000 General Information & data focus Process focus 42
  • 24. The parts of ISO 8000 General Information & data focus Process focus 1 Overview, principles & general requirements 2 Terminology 3 Taxonomy 43
  • 25. The parts of ISO 8000 General Information & data focus Process focus 8 Information quality: Concepts & measuring 9 Information quality: Relationship to other standards 10 Exchange of data: Syntax, semantic encoding & conformance to data specification 20 Exchange of data: Provenance 30 Exchange of data: Accuracy 40 Exchange of data: Completeness 100 Master data: Overview 102 Master data: Terminology 110 Master data: Exchange of characteristic data: Syntax, semantic encoding & conformance to data specification 120 Master data: Provenance 130 Master data: Accuracy 140 Master data: Completeness 311 Usage guide for ISO 10303-59 (Product data quality-shape) 44
  • 26. The parts of ISO 8000 General Information & data focus Process focus 60 Data quality management: The overview of process assessment 61 Data quality management: Process reference model 62 Data quality management: Process maturity assessment model 63 Data quality management: Measurement framework 150 Master data: Quality management framework 45
  • 27. Some complications • "information" & "data" – definitions from ISO/IEC 2382-1:1993 • data: "re-interpretable representation of information in a formalized manner suitable for communication, interpretation, or processing" • information: "knowledge concerning objects, such as facts, events, things, processes, or ideas, including concepts, that within a certain context has a particular meaning" • attributes? dimensions? does data have colour? – try reading warning notices in red text when wearing night vision goggles … – multiple layers to the issue • ISO/IEC 25012: "Software engineering data quality model" 46
  • 28. Case study Data quality requirements in master data management 47
  • 29. ISO 8000-120 Master Data Warehouse Portable master data with provenance Load Data  Capture provenance data  Map metadata to eOTD  Convert to ISO 22745-40 data stream ERP ISO 22745 Managed Ontology  Terminology  Data requirements  Classifications  Description rules Data Integration Master Data Cleansing 1. Identify reference data 2. Identify or assign class 3. Assign data requirement 4. Map properties (attributes) 5. Identify & standardize values 6. Obtain missing data (enrich) 7. Validate data Create multilingual descriptions Identify potential duplicates ECCMA Managed Ontology  Terminology (eOTD)  Data requirements (eDRR)  Classifications (eCLR) ISO 8000 in implementation form Courtesy of PiLog 48
  • 30. Rigorous statement & exchange of requirements Data requester Data provider Sub Request for data eOTD-q-xml ISO 22745-35 Data exchange eOTD-r-xml ISO 22745-40 Request for data eOTD-q-xml ISO 22745-35 Data exchange eOTD-r-xml ISO 22745-40 Data requirement eOTD-i-xml ISO 22745-30 49
  • 31. 52368965412 – Tire Bridgestone 435/95 R25 56329845 – Tyre BS 435/R25 Standard Purpose E3 2 Star Radial 125435 – Bridge Stone 25inch 435/95 965123465 – Tyre Bridgestone Part Number 12345 Inventory rationalization as a result of ISO 8000 Common ERP descriptions Standardised Long Description: Tire: Pneumatic, Vehicular: Service Type for Which Designed: Loader Tire Rim Nominal Diameter: 25' Tire Width: 445mm Aspect Ratio: 0.95 Tire Ply Arrangement: Radial Ply Rating: 2* Tire & Rim Association Number: E3 Tread Material: Standard Tire Air Retention Method: Tubeless Tire Load Index and Speed Symbol: NA Tread Pattern: VHB TKPH Rating: 80 Standardised Short Description: Tire Pneumatic: Loader 25‘ 445mm 0.95 2* 50
  • 32. The benefits of ISO 8000 vague data requirements human-readable requirements requirements differ from project to project repeated cleansing of same non-conformances ad hoc approaches to validation explicit, measurable data requirements computer-processable requirements classified, common types of requirement data right, first & every time recommended types of validation 51
  • 33. Conclusions • systematic – alignment with ISO 9000 principles of quality – driven by explicit, robust data requirements • systemic – errors in data fields as a symptom of the real problem – sustainable quality from the enterprise strategy downwards 52
  • 34. Useful links • ISO – http://www.iso.org/iso/home.html • ISO/TC184/SC4/WG13 – http://isotc.iso.org/livelink/livelink?func=ll&objId=8838237&objAction=brows e&sort=name • BSI AMT/4 "Industrial data & manufacturing interfaces" – http://standardsdevelopment.bsigroup.com/Home/Committee/50001757 • LSC Group – http://www.lsc.co.uk/ 53