SlideShare ist ein Scribd-Unternehmen logo
INTRODUCTION TO
DATABASE
MANAGEMENT SYSTEM
Presented by
Group 5
Content
1 DATA
• Usage in English
• Meaning of Data, Information and Knowledge
2 DATA MANAGEMENT
• Overview
• Corporate Data Quality Management
3 DATABASE
• Terminology and Overview
• Applications and Roles
PART ONE
DATA
01 Add your title
Add your text here. Add your text here.
Text
DATA TYPES
RAW DATA
FIELD DATA
EXPERIMENTAL
DATA
refers to a
collection of
numbers,
characters and
is a relative term.
refers to raw
data that is
collected in
uncontrolled in
situ environment.
refers to data that
is generted within
the context of a
scientific
investigation by
observation and
recording.
DATA
USAGE
IN
ENGLISH
01 Add your title
Add your text here. Add your text here.
Text
DATUM
DATUM & DATA
Datum means "an item given " . In categography, geography, nuclear magnetic resonance nd technical drawing it
often refers to a reference datum where from distance to all other data are measured. Any measurement or
result is a datum, though data point is now far more common. In one sense , datum is a count noun with the
plural datums that can be used with cardinal numbers ( e.g. 80 datums )
The IEEE Computer Society allows usage of data as either a mass noun or plural based an author preference. Some
professional organizations and style guides require that an authors treat data as a plural noun. Data is most often
used as singular mass noun in educated everyday usage.
01 Add your title
Add your text here. Add your text here.
Text
DATA & DATUM EXAMPLE
DATUM
Height Measurement
DATA
Weather Information
DATA, INFORMATION AND KNOWLEDGE
01 Add your title
Add your text here. Add your text here.
Text
DATA, INFORMATION AND KNOWLEGE
01 Add your title
Add your text here. Add your text here.
Text
DATA, INFORMATION AND KNOWLEGE
01 Add your title
Add your text here. Add your text here.
Text
DATA INFORMATION KNOWLEDGE
Is objective Should be objective Is subjective
Has no meaning Has a meaning Has meaning for a specific
purpose
Is unprocessed Is processed Is processed and
understood
Is quantifiable, there can be
data overloaded
Is quantifiable, there can be
information overloaded
Is not quantifiable, there
can be information
overloaded
CHARACTERISTICS OF DATA, INFORMATION AND KNOWLEDGE
PART TWO
DATA MANAGEMENT
OVERVIEW
02 Add your title
Add your text here. Add your text here.
Text
OVERVIEW
Data Resources Management is the development and execution of architectures, policies, practices, and
procedures that properly manage the full data lifecyle needs of an enterprise.
Alternatively, the definition provided in the DAMA Data Management Book of Knowledge ( DAMA-DMBOK ) is :
"Data management is the development, execution and supervision of plans, policies, programs and practicies that
control, protect, deliver and enhance the value of data and information assets."
The concept of the "Data Management" arose in the 1980s as technology moved from sequential processing to
random access processing. Since it was now technically possible to store a single fact in a single place and access
that using random access disk, those suggesting that "Data Management" was more important than "Process
Management" used arguments such as "a customer's home address is stored in 75 places in our computer
systems."
CORPORATE DATA
QUALITY MANAGEMENT
02 Add your title
Add your text here. Add your text here.
Text
Comporate Data Quality Management ( CDQM ) is, according to the European Foundation for Quality Management and the
Competence Centre Corporate Data Quality ( CCCDQ, University of St. Gallen ), the whole set of activities intended to
improve corporate data quality ( both reactive and preventive ). Main premise of CDQM is the business relevance of high-
quality corporate data.
CORPORATE DATA QUALITY MANAGEMENT
CDQM comprises with the following activities are:
• Strategy for Corporate Data Quality: As CDQM is affected by various business drivers and requires involvement of
multiple divisions in an organisation; it must be considered a company-wide endeavour.
• Corporate Data Quality Controlling: Effective CDQM requires compliance with standard, policies, and procedures.
Compliance is monitored according to previously defined metrics and performance indicators and reported to
stakeholders.
• Corporate Data Quality Organisation: CDQM requires clear roles and responsibilities for the use of corporate data. The
CDQM organisation defines task and privileges for decision making for CDQM.
• Corporate Data Quality processes and Methods: In order to handle corporate data properly and in a standardized way
across the entire organisation and to ensure corporate data quality, standard procedures and guidelines must be
embedded in company's daily processes.
02 Add your title
Add your text here. Add your text here.
Text
CORPORATE DATA QUALITY MANAGEMENT
• Data Architecture for Corporate Data Quality: The data architecture consists of the data object model which
comprises the unambiguous definition and the conceptual model of corporate data and the data storage and
distribution architecture.
• Application for Corporate Data Quality: Sofftware applications supports the activities of Corporate Data Quality
Management.Their use must be planned, monitored, managed and continuously improved.
PART THREE
DATABASE
TERMINOLOGY
AND
OVERVIEW
03 Add your title
Add your text here. Add your text here.
Text
TERMINOLOGY AND OVERVIEW
Formally, "database" refers to the data themselves and supporting data structures. Databases are created to operate
large quantities of information by inputting, storing, retrieving, and managing that information. Databases are set up so
that one set of software programs provides all users with access to all data.
The interactions catered for by most DBMS fall into four main groups:
• Data definitiion - Defining new data structures for a database, removing the data structures from the database,
modifying the structure of existing data.
• Update - Inserting, modifying, and deleting data.
• Retrieval - Obtaining information either for end user queries and reports or for processing by applications.
• Administration - Registering and monitoring users, enforcing data security, monitoring performance, maintaning the
data integrity, dealing with concurrency control, and recovery information if the systems fails.
APPLICATIONS AND
ROLES
03 Add your title
Add your text here. Add your text here.
Text
APPLICATIONS AND ROLES
THANKS FOR YOUR
LISTENING!
Presenter

Weitere ähnliche Inhalte

Ähnlich wie INTRODUCTION TO DATABASE MANAGEMENT SYSTEM

Data Governance_Notes.pptx
Data Governance_Notes.pptxData Governance_Notes.pptx
Data Governance_Notes.pptx
VivekDubley
 
Introduction to Data Governance
Introduction to Data GovernanceIntroduction to Data Governance
Introduction to Data Governance
John Bao Vuu
 
DG - general intro ENG
DG - general intro ENGDG - general intro ENG
DG - general intro ENG
Hadar Gorodesky
 
Data Governance challenges in a major Energy Company
Data Governance challenges in a major Energy CompanyData Governance challenges in a major Energy Company
Data Governance challenges in a major Energy Company
Christopher Bradley
 
Data Collection Process And Integrity
Data Collection Process And IntegrityData Collection Process And Integrity
Data Collection Process And Integrity
Gerrit Klaschke, CSM
 
Information architecture overview
Information architecture overviewInformation architecture overview
Information architecture overview
James M. Dey
 
Data Quality Strategy: A Step-by-Step Approach
Data Quality Strategy: A Step-by-Step ApproachData Quality Strategy: A Step-by-Step Approach
Data Quality Strategy: A Step-by-Step Approach
FindWhitePapers
 
Why data governance is the new buzz?
Why data governance is the new buzz?Why data governance is the new buzz?
Why data governance is the new buzz?
Aachen Data & AI Meetup
 
Importance of Data Governance
Importance of Data GovernanceImportance of Data Governance
Importance of Data Governance
HTS Hosting
 
DGIQ - Case Studies_ Applications of Data Governance in the Enterprise (Final...
DGIQ - Case Studies_ Applications of Data Governance in the Enterprise (Final...DGIQ - Case Studies_ Applications of Data Governance in the Enterprise (Final...
DGIQ - Case Studies_ Applications of Data Governance in the Enterprise (Final...
Enterprise Knowledge
 
Metadata Repositories in Health Care - Master Data Management Approach to Met...
Metadata Repositories in Health Care - Master Data Management Approach to Met...Metadata Repositories in Health Care - Master Data Management Approach to Met...
Metadata Repositories in Health Care - Master Data Management Approach to Met...
Health Informatics New Zealand
 
DGIQ 2013 Learned and Applied Concepts
DGIQ 2013 Learned and Applied Concepts DGIQ 2013 Learned and Applied Concepts
DGIQ 2013 Learned and Applied Concepts
Angela Boyd
 
data collection, data integration, data management, data modeling.pptx
data collection, data integration, data management, data modeling.pptxdata collection, data integration, data management, data modeling.pptx
data collection, data integration, data management, data modeling.pptx
Sourabhkumar729579
 
Data Governance Maturity Levels
Data Governance Maturity LevelsData Governance Maturity Levels
Data Governance Maturity Levels
Sowmya Kandregula
 
Chief Data Officer
Chief Data OfficerChief Data Officer
Chief Data Officer
Kevin DuPriest
 
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
 
Tips --Break Down the Barriers to Better Data Analytics
Tips --Break Down the Barriers to Better Data AnalyticsTips --Break Down the Barriers to Better Data Analytics
Tips --Break Down the Barriers to Better Data Analytics
Abhishek Sood
 
Ibm test data_management_v0.4
Ibm test data_management_v0.4Ibm test data_management_v0.4
Ibm test data_management_v0.4
Rosario Cunha
 
Why Data Standards?
Why Data Standards?Why Data Standards?
Why Data Standards?
Accounting_Whitepapers
 
Example data specifications and info requirements framework OVERVIEW
Example data specifications and info requirements framework OVERVIEWExample data specifications and info requirements framework OVERVIEW
Example data specifications and info requirements framework OVERVIEW
Alan D. Duncan
 

Ähnlich wie INTRODUCTION TO DATABASE MANAGEMENT SYSTEM (20)

Data Governance_Notes.pptx
Data Governance_Notes.pptxData Governance_Notes.pptx
Data Governance_Notes.pptx
 
Introduction to Data Governance
Introduction to Data GovernanceIntroduction to Data Governance
Introduction to Data Governance
 
DG - general intro ENG
DG - general intro ENGDG - general intro ENG
DG - general intro ENG
 
Data Governance challenges in a major Energy Company
Data Governance challenges in a major Energy CompanyData Governance challenges in a major Energy Company
Data Governance challenges in a major Energy Company
 
Data Collection Process And Integrity
Data Collection Process And IntegrityData Collection Process And Integrity
Data Collection Process And Integrity
 
Information architecture overview
Information architecture overviewInformation architecture overview
Information architecture overview
 
Data Quality Strategy: A Step-by-Step Approach
Data Quality Strategy: A Step-by-Step ApproachData Quality Strategy: A Step-by-Step Approach
Data Quality Strategy: A Step-by-Step Approach
 
Why data governance is the new buzz?
Why data governance is the new buzz?Why data governance is the new buzz?
Why data governance is the new buzz?
 
Importance of Data Governance
Importance of Data GovernanceImportance of Data Governance
Importance of Data Governance
 
DGIQ - Case Studies_ Applications of Data Governance in the Enterprise (Final...
DGIQ - Case Studies_ Applications of Data Governance in the Enterprise (Final...DGIQ - Case Studies_ Applications of Data Governance in the Enterprise (Final...
DGIQ - Case Studies_ Applications of Data Governance in the Enterprise (Final...
 
Metadata Repositories in Health Care - Master Data Management Approach to Met...
Metadata Repositories in Health Care - Master Data Management Approach to Met...Metadata Repositories in Health Care - Master Data Management Approach to Met...
Metadata Repositories in Health Care - Master Data Management Approach to Met...
 
DGIQ 2013 Learned and Applied Concepts
DGIQ 2013 Learned and Applied Concepts DGIQ 2013 Learned and Applied Concepts
DGIQ 2013 Learned and Applied Concepts
 
data collection, data integration, data management, data modeling.pptx
data collection, data integration, data management, data modeling.pptxdata collection, data integration, data management, data modeling.pptx
data collection, data integration, data management, data modeling.pptx
 
Data Governance Maturity Levels
Data Governance Maturity LevelsData Governance Maturity Levels
Data Governance Maturity Levels
 
Chief Data Officer
Chief Data OfficerChief Data Officer
Chief Data Officer
 
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...
 
Tips --Break Down the Barriers to Better Data Analytics
Tips --Break Down the Barriers to Better Data AnalyticsTips --Break Down the Barriers to Better Data Analytics
Tips --Break Down the Barriers to Better Data Analytics
 
Ibm test data_management_v0.4
Ibm test data_management_v0.4Ibm test data_management_v0.4
Ibm test data_management_v0.4
 
Why Data Standards?
Why Data Standards?Why Data Standards?
Why Data Standards?
 
Example data specifications and info requirements framework OVERVIEW
Example data specifications and info requirements framework OVERVIEWExample data specifications and info requirements framework OVERVIEW
Example data specifications and info requirements framework OVERVIEW
 

Kürzlich hochgeladen

Cosa hanno in comune un mattoncino Lego e la backdoor XZ?
Cosa hanno in comune un mattoncino Lego e la backdoor XZ?Cosa hanno in comune un mattoncino Lego e la backdoor XZ?
Cosa hanno in comune un mattoncino Lego e la backdoor XZ?
Speck&Tech
 
5th LF Energy Power Grid Model Meet-up Slides
5th LF Energy Power Grid Model Meet-up Slides5th LF Energy Power Grid Model Meet-up Slides
5th LF Energy Power Grid Model Meet-up Slides
DanBrown980551
 
HCL Notes and Domino License Cost Reduction in the World of DLAU
HCL Notes and Domino License Cost Reduction in the World of DLAUHCL Notes and Domino License Cost Reduction in the World of DLAU
HCL Notes and Domino License Cost Reduction in the World of DLAU
panagenda
 
Skybuffer SAM4U tool for SAP license adoption
Skybuffer SAM4U tool for SAP license adoptionSkybuffer SAM4U tool for SAP license adoption
Skybuffer SAM4U tool for SAP license adoption
Tatiana Kojar
 
20240607 QFM018 Elixir Reading List May 2024
20240607 QFM018 Elixir Reading List May 202420240607 QFM018 Elixir Reading List May 2024
20240607 QFM018 Elixir Reading List May 2024
Matthew Sinclair
 
Columbus Data & Analytics Wednesdays - June 2024
Columbus Data & Analytics Wednesdays - June 2024Columbus Data & Analytics Wednesdays - June 2024
Columbus Data & Analytics Wednesdays - June 2024
Jason Packer
 
Serial Arm Control in Real Time Presentation
Serial Arm Control in Real Time PresentationSerial Arm Control in Real Time Presentation
Serial Arm Control in Real Time Presentation
tolgahangng
 
UI5 Controls simplified - UI5con2024 presentation
UI5 Controls simplified - UI5con2024 presentationUI5 Controls simplified - UI5con2024 presentation
UI5 Controls simplified - UI5con2024 presentation
Wouter Lemaire
 
Unlock the Future of Search with MongoDB Atlas_ Vector Search Unleashed.pdf
Unlock the Future of Search with MongoDB Atlas_ Vector Search Unleashed.pdfUnlock the Future of Search with MongoDB Atlas_ Vector Search Unleashed.pdf
Unlock the Future of Search with MongoDB Atlas_ Vector Search Unleashed.pdf
Malak Abu Hammad
 
Taking AI to the Next Level in Manufacturing.pdf
Taking AI to the Next Level in Manufacturing.pdfTaking AI to the Next Level in Manufacturing.pdf
Taking AI to the Next Level in Manufacturing.pdf
ssuserfac0301
 
OpenID AuthZEN Interop Read Out - Authorization
OpenID AuthZEN Interop Read Out - AuthorizationOpenID AuthZEN Interop Read Out - Authorization
OpenID AuthZEN Interop Read Out - Authorization
David Brossard
 
GenAI Pilot Implementation in the organizations
GenAI Pilot Implementation in the organizationsGenAI Pilot Implementation in the organizations
GenAI Pilot Implementation in the organizations
kumardaparthi1024
 
Ocean lotus Threat actors project by John Sitima 2024 (1).pptx
Ocean lotus Threat actors project by John Sitima 2024 (1).pptxOcean lotus Threat actors project by John Sitima 2024 (1).pptx
Ocean lotus Threat actors project by John Sitima 2024 (1).pptx
SitimaJohn
 
20240609 QFM020 Irresponsible AI Reading List May 2024
20240609 QFM020 Irresponsible AI Reading List May 202420240609 QFM020 Irresponsible AI Reading List May 2024
20240609 QFM020 Irresponsible AI Reading List May 2024
Matthew Sinclair
 
Building Production Ready Search Pipelines with Spark and Milvus
Building Production Ready Search Pipelines with Spark and MilvusBuilding Production Ready Search Pipelines with Spark and Milvus
Building Production Ready Search Pipelines with Spark and Milvus
Zilliz
 
Let's Integrate MuleSoft RPA, COMPOSER, APM with AWS IDP along with Slack
Let's Integrate MuleSoft RPA, COMPOSER, APM with AWS IDP along with SlackLet's Integrate MuleSoft RPA, COMPOSER, APM with AWS IDP along with Slack
Let's Integrate MuleSoft RPA, COMPOSER, APM with AWS IDP along with Slack
shyamraj55
 
How to use Firebase Data Connect For Flutter
How to use Firebase Data Connect For FlutterHow to use Firebase Data Connect For Flutter
How to use Firebase Data Connect For Flutter
Daiki Mogmet Ito
 
Driving Business Innovation: Latest Generative AI Advancements & Success Story
Driving Business Innovation: Latest Generative AI Advancements & Success StoryDriving Business Innovation: Latest Generative AI Advancements & Success Story
Driving Business Innovation: Latest Generative AI Advancements & Success Story
Safe Software
 
Digital Marketing Trends in 2024 | Guide for Staying Ahead
Digital Marketing Trends in 2024 | Guide for Staying AheadDigital Marketing Trends in 2024 | Guide for Staying Ahead
Digital Marketing Trends in 2024 | Guide for Staying Ahead
Wask
 
National Security Agency - NSA mobile device best practices
National Security Agency - NSA mobile device best practicesNational Security Agency - NSA mobile device best practices
National Security Agency - NSA mobile device best practices
Quotidiano Piemontese
 

Kürzlich hochgeladen (20)

Cosa hanno in comune un mattoncino Lego e la backdoor XZ?
Cosa hanno in comune un mattoncino Lego e la backdoor XZ?Cosa hanno in comune un mattoncino Lego e la backdoor XZ?
Cosa hanno in comune un mattoncino Lego e la backdoor XZ?
 
5th LF Energy Power Grid Model Meet-up Slides
5th LF Energy Power Grid Model Meet-up Slides5th LF Energy Power Grid Model Meet-up Slides
5th LF Energy Power Grid Model Meet-up Slides
 
HCL Notes and Domino License Cost Reduction in the World of DLAU
HCL Notes and Domino License Cost Reduction in the World of DLAUHCL Notes and Domino License Cost Reduction in the World of DLAU
HCL Notes and Domino License Cost Reduction in the World of DLAU
 
Skybuffer SAM4U tool for SAP license adoption
Skybuffer SAM4U tool for SAP license adoptionSkybuffer SAM4U tool for SAP license adoption
Skybuffer SAM4U tool for SAP license adoption
 
20240607 QFM018 Elixir Reading List May 2024
20240607 QFM018 Elixir Reading List May 202420240607 QFM018 Elixir Reading List May 2024
20240607 QFM018 Elixir Reading List May 2024
 
Columbus Data & Analytics Wednesdays - June 2024
Columbus Data & Analytics Wednesdays - June 2024Columbus Data & Analytics Wednesdays - June 2024
Columbus Data & Analytics Wednesdays - June 2024
 
Serial Arm Control in Real Time Presentation
Serial Arm Control in Real Time PresentationSerial Arm Control in Real Time Presentation
Serial Arm Control in Real Time Presentation
 
UI5 Controls simplified - UI5con2024 presentation
UI5 Controls simplified - UI5con2024 presentationUI5 Controls simplified - UI5con2024 presentation
UI5 Controls simplified - UI5con2024 presentation
 
Unlock the Future of Search with MongoDB Atlas_ Vector Search Unleashed.pdf
Unlock the Future of Search with MongoDB Atlas_ Vector Search Unleashed.pdfUnlock the Future of Search with MongoDB Atlas_ Vector Search Unleashed.pdf
Unlock the Future of Search with MongoDB Atlas_ Vector Search Unleashed.pdf
 
Taking AI to the Next Level in Manufacturing.pdf
Taking AI to the Next Level in Manufacturing.pdfTaking AI to the Next Level in Manufacturing.pdf
Taking AI to the Next Level in Manufacturing.pdf
 
OpenID AuthZEN Interop Read Out - Authorization
OpenID AuthZEN Interop Read Out - AuthorizationOpenID AuthZEN Interop Read Out - Authorization
OpenID AuthZEN Interop Read Out - Authorization
 
GenAI Pilot Implementation in the organizations
GenAI Pilot Implementation in the organizationsGenAI Pilot Implementation in the organizations
GenAI Pilot Implementation in the organizations
 
Ocean lotus Threat actors project by John Sitima 2024 (1).pptx
Ocean lotus Threat actors project by John Sitima 2024 (1).pptxOcean lotus Threat actors project by John Sitima 2024 (1).pptx
Ocean lotus Threat actors project by John Sitima 2024 (1).pptx
 
20240609 QFM020 Irresponsible AI Reading List May 2024
20240609 QFM020 Irresponsible AI Reading List May 202420240609 QFM020 Irresponsible AI Reading List May 2024
20240609 QFM020 Irresponsible AI Reading List May 2024
 
Building Production Ready Search Pipelines with Spark and Milvus
Building Production Ready Search Pipelines with Spark and MilvusBuilding Production Ready Search Pipelines with Spark and Milvus
Building Production Ready Search Pipelines with Spark and Milvus
 
Let's Integrate MuleSoft RPA, COMPOSER, APM with AWS IDP along with Slack
Let's Integrate MuleSoft RPA, COMPOSER, APM with AWS IDP along with SlackLet's Integrate MuleSoft RPA, COMPOSER, APM with AWS IDP along with Slack
Let's Integrate MuleSoft RPA, COMPOSER, APM with AWS IDP along with Slack
 
How to use Firebase Data Connect For Flutter
How to use Firebase Data Connect For FlutterHow to use Firebase Data Connect For Flutter
How to use Firebase Data Connect For Flutter
 
Driving Business Innovation: Latest Generative AI Advancements & Success Story
Driving Business Innovation: Latest Generative AI Advancements & Success StoryDriving Business Innovation: Latest Generative AI Advancements & Success Story
Driving Business Innovation: Latest Generative AI Advancements & Success Story
 
Digital Marketing Trends in 2024 | Guide for Staying Ahead
Digital Marketing Trends in 2024 | Guide for Staying AheadDigital Marketing Trends in 2024 | Guide for Staying Ahead
Digital Marketing Trends in 2024 | Guide for Staying Ahead
 
National Security Agency - NSA mobile device best practices
National Security Agency - NSA mobile device best practicesNational Security Agency - NSA mobile device best practices
National Security Agency - NSA mobile device best practices
 

INTRODUCTION TO DATABASE MANAGEMENT SYSTEM

  • 2. Content 1 DATA • Usage in English • Meaning of Data, Information and Knowledge 2 DATA MANAGEMENT • Overview • Corporate Data Quality Management 3 DATABASE • Terminology and Overview • Applications and Roles
  • 4. 01 Add your title Add your text here. Add your text here. Text DATA TYPES RAW DATA FIELD DATA EXPERIMENTAL DATA refers to a collection of numbers, characters and is a relative term. refers to raw data that is collected in uncontrolled in situ environment. refers to data that is generted within the context of a scientific investigation by observation and recording. DATA
  • 6. 01 Add your title Add your text here. Add your text here. Text DATUM DATUM & DATA Datum means "an item given " . In categography, geography, nuclear magnetic resonance nd technical drawing it often refers to a reference datum where from distance to all other data are measured. Any measurement or result is a datum, though data point is now far more common. In one sense , datum is a count noun with the plural datums that can be used with cardinal numbers ( e.g. 80 datums ) The IEEE Computer Society allows usage of data as either a mass noun or plural based an author preference. Some professional organizations and style guides require that an authors treat data as a plural noun. Data is most often used as singular mass noun in educated everyday usage.
  • 7. 01 Add your title Add your text here. Add your text here. Text DATA & DATUM EXAMPLE DATUM Height Measurement DATA Weather Information
  • 9. 01 Add your title Add your text here. Add your text here. Text DATA, INFORMATION AND KNOWLEGE
  • 10. 01 Add your title Add your text here. Add your text here. Text DATA, INFORMATION AND KNOWLEGE
  • 11. 01 Add your title Add your text here. Add your text here. Text DATA INFORMATION KNOWLEDGE Is objective Should be objective Is subjective Has no meaning Has a meaning Has meaning for a specific purpose Is unprocessed Is processed Is processed and understood Is quantifiable, there can be data overloaded Is quantifiable, there can be information overloaded Is not quantifiable, there can be information overloaded CHARACTERISTICS OF DATA, INFORMATION AND KNOWLEDGE
  • 14. 02 Add your title Add your text here. Add your text here. Text OVERVIEW Data Resources Management is the development and execution of architectures, policies, practices, and procedures that properly manage the full data lifecyle needs of an enterprise. Alternatively, the definition provided in the DAMA Data Management Book of Knowledge ( DAMA-DMBOK ) is : "Data management is the development, execution and supervision of plans, policies, programs and practicies that control, protect, deliver and enhance the value of data and information assets." The concept of the "Data Management" arose in the 1980s as technology moved from sequential processing to random access processing. Since it was now technically possible to store a single fact in a single place and access that using random access disk, those suggesting that "Data Management" was more important than "Process Management" used arguments such as "a customer's home address is stored in 75 places in our computer systems."
  • 16. 02 Add your title Add your text here. Add your text here. Text Comporate Data Quality Management ( CDQM ) is, according to the European Foundation for Quality Management and the Competence Centre Corporate Data Quality ( CCCDQ, University of St. Gallen ), the whole set of activities intended to improve corporate data quality ( both reactive and preventive ). Main premise of CDQM is the business relevance of high- quality corporate data. CORPORATE DATA QUALITY MANAGEMENT CDQM comprises with the following activities are: • Strategy for Corporate Data Quality: As CDQM is affected by various business drivers and requires involvement of multiple divisions in an organisation; it must be considered a company-wide endeavour. • Corporate Data Quality Controlling: Effective CDQM requires compliance with standard, policies, and procedures. Compliance is monitored according to previously defined metrics and performance indicators and reported to stakeholders. • Corporate Data Quality Organisation: CDQM requires clear roles and responsibilities for the use of corporate data. The CDQM organisation defines task and privileges for decision making for CDQM. • Corporate Data Quality processes and Methods: In order to handle corporate data properly and in a standardized way across the entire organisation and to ensure corporate data quality, standard procedures and guidelines must be embedded in company's daily processes.
  • 17. 02 Add your title Add your text here. Add your text here. Text CORPORATE DATA QUALITY MANAGEMENT • Data Architecture for Corporate Data Quality: The data architecture consists of the data object model which comprises the unambiguous definition and the conceptual model of corporate data and the data storage and distribution architecture. • Application for Corporate Data Quality: Sofftware applications supports the activities of Corporate Data Quality Management.Their use must be planned, monitored, managed and continuously improved.
  • 20. 03 Add your title Add your text here. Add your text here. Text TERMINOLOGY AND OVERVIEW Formally, "database" refers to the data themselves and supporting data structures. Databases are created to operate large quantities of information by inputting, storing, retrieving, and managing that information. Databases are set up so that one set of software programs provides all users with access to all data. The interactions catered for by most DBMS fall into four main groups: • Data definitiion - Defining new data structures for a database, removing the data structures from the database, modifying the structure of existing data. • Update - Inserting, modifying, and deleting data. • Retrieval - Obtaining information either for end user queries and reports or for processing by applications. • Administration - Registering and monitoring users, enforcing data security, monitoring performance, maintaning the data integrity, dealing with concurrency control, and recovery information if the systems fails.
  • 22. 03 Add your title Add your text here. Add your text here. Text APPLICATIONS AND ROLES