Enviar búsqueda
Cargar
Practical Applications for Data Warehousing, Analytics, BI, and Meta-Integration Technologies
•
2 recomendaciones
•
5,398 vistas
DATAVERSITY
Seguir
Tecnología
Empresariales
Denunciar
Compartir
Denunciar
Compartir
1 de 62
Descargar ahora
Descargar para leer sin conexión
Recomendados
Data-Ed Online: Practical Applications for Data Warehousing, Analytics, BI, a...
Data-Ed Online: Practical Applications for Data Warehousing, Analytics, BI, a...
Data Blueprint
MDM and Data Quality: Not an Option but a Requirement
MDM and Data Quality: Not an Option but a Requirement
DATAVERSITY
Data-Ed Online: Structuring Your Unstructured Data Document & Content Management
Data-Ed Online: Structuring Your Unstructured Data Document & Content Management
DATAVERSITY
Data-Ed Online: Practical Data Modeling
Data-Ed Online: Practical Data Modeling
Data Blueprint
Data-Ed: Show Me the Money: The Business Value of Data and ROI
Data-Ed: Show Me the Money: The Business Value of Data and ROI
Data Blueprint
Data-Ed Online: MDM: Quality is not an Option but a Requirement
Data-Ed Online: MDM: Quality is not an Option but a Requirement
Data Blueprint
Data-Ed Online: How Safe is Your Data? Data Security Webinar
Data-Ed Online: How Safe is Your Data? Data Security Webinar
Data Blueprint
Get the Most Out of Your Tools: Data Management Technologies
Get the Most Out of Your Tools: Data Management Technologies
DATAVERSITY
Recomendados
Data-Ed Online: Practical Applications for Data Warehousing, Analytics, BI, a...
Data-Ed Online: Practical Applications for Data Warehousing, Analytics, BI, a...
Data Blueprint
MDM and Data Quality: Not an Option but a Requirement
MDM and Data Quality: Not an Option but a Requirement
DATAVERSITY
Data-Ed Online: Structuring Your Unstructured Data Document & Content Management
Data-Ed Online: Structuring Your Unstructured Data Document & Content Management
DATAVERSITY
Data-Ed Online: Practical Data Modeling
Data-Ed Online: Practical Data Modeling
Data Blueprint
Data-Ed: Show Me the Money: The Business Value of Data and ROI
Data-Ed: Show Me the Money: The Business Value of Data and ROI
Data Blueprint
Data-Ed Online: MDM: Quality is not an Option but a Requirement
Data-Ed Online: MDM: Quality is not an Option but a Requirement
Data Blueprint
Data-Ed Online: How Safe is Your Data? Data Security Webinar
Data-Ed Online: How Safe is Your Data? Data Security Webinar
Data Blueprint
Get the Most Out of Your Tools: Data Management Technologies
Get the Most Out of Your Tools: Data Management Technologies
DATAVERSITY
Data-Ed Online: Making the Case for Data Governance
Data-Ed Online: Making the Case for Data Governance
DATAVERSITY
21 sep12 age at work seminar afternoon session
21 sep12 age at work seminar afternoon session
Katrina Pritchard
6-7-2011 Objects Engagement and Web 2.0 - PEMCI
6-7-2011 Objects Engagement and Web 2.0 - PEMCI
Mathieu Plourde
Professorial lecture: The many faces of the Web [2012 06-21]
Professorial lecture: The many faces of the Web [2012 06-21]
Thomas Roth-Berghofer
Inspire - Closing the Consumer Cycle
Inspire - Closing the Consumer Cycle
Ryan Manchee
SPONSORED WORKSHOP by Amplidata from Structure:Data 2012:
SPONSORED WORKSHOP by Amplidata from Structure:Data 2012:
Gigaom
Linked Data Warehouses: A new breed of Business Intelligence
Linked Data Warehouses: A new breed of Business Intelligence
3 Round Stones
The Future of Digital Learning, A presentation delivered
The Future of Digital Learning, A presentation delivered
Panita Wannapiroon Kmutnb
Zen of metadata 09212010
Zen of metadata 09212010
ERwin Modeling
What is data_science
What is data_science
idris2
6-10-2010-PEMCI 2010
6-10-2010-PEMCI 2010
Mathieu Plourde
Linked Data Approach for Integration of Human Health & Environmental Data
Linked Data Approach for Integration of Human Health & Environmental Data
3 Round Stones
Data science curricula at UW
Data science curricula at UW
University of Washington
1630 mon lomond ashley
1630 mon lomond ashley
UKSG: connecting the knowledge community
Social Analytics In The Enterprise
Social Analytics In The Enterprise
Alan Lepofsky
Application of Data Warehousing & Data Mining to Exploitation for Supporting ...
Application of Data Warehousing & Data Mining to Exploitation for Supporting ...
Gihan Wikramanayake
DATA WAREHOUSING
DATA WAREHOUSING
King Julian
Data Warehousing - in the real world
Data Warehousing - in the real world
ukc4
Why Your Healthcare Business Intelligence Strategy Can't Win
Why Your Healthcare Business Intelligence Strategy Can't Win
Health Catalyst
DATA WAREHOUSING AND DATA MINING
DATA WAREHOUSING AND DATA MINING
Lovely Professional University
Mastering in Data Warehousing and Business Intelligence
Mastering in Data Warehousing and Business Intelligence
Edureka!
Economic growth china
Economic growth china
Ada Alipaj
Más contenido relacionado
La actualidad más candente
Data-Ed Online: Making the Case for Data Governance
Data-Ed Online: Making the Case for Data Governance
DATAVERSITY
21 sep12 age at work seminar afternoon session
21 sep12 age at work seminar afternoon session
Katrina Pritchard
6-7-2011 Objects Engagement and Web 2.0 - PEMCI
6-7-2011 Objects Engagement and Web 2.0 - PEMCI
Mathieu Plourde
Professorial lecture: The many faces of the Web [2012 06-21]
Professorial lecture: The many faces of the Web [2012 06-21]
Thomas Roth-Berghofer
Inspire - Closing the Consumer Cycle
Inspire - Closing the Consumer Cycle
Ryan Manchee
SPONSORED WORKSHOP by Amplidata from Structure:Data 2012:
SPONSORED WORKSHOP by Amplidata from Structure:Data 2012:
Gigaom
Linked Data Warehouses: A new breed of Business Intelligence
Linked Data Warehouses: A new breed of Business Intelligence
3 Round Stones
The Future of Digital Learning, A presentation delivered
The Future of Digital Learning, A presentation delivered
Panita Wannapiroon Kmutnb
Zen of metadata 09212010
Zen of metadata 09212010
ERwin Modeling
What is data_science
What is data_science
idris2
6-10-2010-PEMCI 2010
6-10-2010-PEMCI 2010
Mathieu Plourde
Linked Data Approach for Integration of Human Health & Environmental Data
Linked Data Approach for Integration of Human Health & Environmental Data
3 Round Stones
Data science curricula at UW
Data science curricula at UW
University of Washington
1630 mon lomond ashley
1630 mon lomond ashley
UKSG: connecting the knowledge community
Social Analytics In The Enterprise
Social Analytics In The Enterprise
Alan Lepofsky
La actualidad más candente
(15)
Data-Ed Online: Making the Case for Data Governance
Data-Ed Online: Making the Case for Data Governance
21 sep12 age at work seminar afternoon session
21 sep12 age at work seminar afternoon session
6-7-2011 Objects Engagement and Web 2.0 - PEMCI
6-7-2011 Objects Engagement and Web 2.0 - PEMCI
Professorial lecture: The many faces of the Web [2012 06-21]
Professorial lecture: The many faces of the Web [2012 06-21]
Inspire - Closing the Consumer Cycle
Inspire - Closing the Consumer Cycle
SPONSORED WORKSHOP by Amplidata from Structure:Data 2012:
SPONSORED WORKSHOP by Amplidata from Structure:Data 2012:
Linked Data Warehouses: A new breed of Business Intelligence
Linked Data Warehouses: A new breed of Business Intelligence
The Future of Digital Learning, A presentation delivered
The Future of Digital Learning, A presentation delivered
Zen of metadata 09212010
Zen of metadata 09212010
What is data_science
What is data_science
6-10-2010-PEMCI 2010
6-10-2010-PEMCI 2010
Linked Data Approach for Integration of Human Health & Environmental Data
Linked Data Approach for Integration of Human Health & Environmental Data
Data science curricula at UW
Data science curricula at UW
1630 mon lomond ashley
1630 mon lomond ashley
Social Analytics In The Enterprise
Social Analytics In The Enterprise
Destacado
Application of Data Warehousing & Data Mining to Exploitation for Supporting ...
Application of Data Warehousing & Data Mining to Exploitation for Supporting ...
Gihan Wikramanayake
DATA WAREHOUSING
DATA WAREHOUSING
King Julian
Data Warehousing - in the real world
Data Warehousing - in the real world
ukc4
Why Your Healthcare Business Intelligence Strategy Can't Win
Why Your Healthcare Business Intelligence Strategy Can't Win
Health Catalyst
DATA WAREHOUSING AND DATA MINING
DATA WAREHOUSING AND DATA MINING
Lovely Professional University
Mastering in Data Warehousing and Business Intelligence
Mastering in Data Warehousing and Business Intelligence
Edureka!
Economic growth china
Economic growth china
Ada Alipaj
An example of discovering simple patterns using basic data mining
An example of discovering simple patterns using basic data mining
Eoin Brazil
Data Warehousing 101(and a video)
Data Warehousing 101(and a video)
PostgreSQL Experts, Inc.
Setting Up the Data Lake
Setting Up the Data Lake
Caserta
Real World Business Intelligence and Data Warehousing
Real World Business Intelligence and Data Warehousing
ukc4
Top 10 Wishes –What every Human Want Most
Top 10 Wishes –What every Human Want Most
Samantha Choo
Persuasion vs. argument
Persuasion vs. argument
Tanya Appling
Kite runner revision
Kite runner revision
Madiya Afzal
Вusiness communication in China
Вusiness communication in China
Roksolana Zelinska
Your First Day Of Computers Class
Your First Day Of Computers Class
Heather Wanshon
leaner's mosule in pe 9
leaner's mosule in pe 9
Ronalyn Concordia
Can could have to must might should
Can could have to must might should
mel_v19
Star schema
Star schema
Chandanapriya Sathavalli
06 gsm bss network kpi (network coverage) optimization manual
06 gsm bss network kpi (network coverage) optimization manual
tharinduwije
Destacado
(20)
Application of Data Warehousing & Data Mining to Exploitation for Supporting ...
Application of Data Warehousing & Data Mining to Exploitation for Supporting ...
DATA WAREHOUSING
DATA WAREHOUSING
Data Warehousing - in the real world
Data Warehousing - in the real world
Why Your Healthcare Business Intelligence Strategy Can't Win
Why Your Healthcare Business Intelligence Strategy Can't Win
DATA WAREHOUSING AND DATA MINING
DATA WAREHOUSING AND DATA MINING
Mastering in Data Warehousing and Business Intelligence
Mastering in Data Warehousing and Business Intelligence
Economic growth china
Economic growth china
An example of discovering simple patterns using basic data mining
An example of discovering simple patterns using basic data mining
Data Warehousing 101(and a video)
Data Warehousing 101(and a video)
Setting Up the Data Lake
Setting Up the Data Lake
Real World Business Intelligence and Data Warehousing
Real World Business Intelligence and Data Warehousing
Top 10 Wishes –What every Human Want Most
Top 10 Wishes –What every Human Want Most
Persuasion vs. argument
Persuasion vs. argument
Kite runner revision
Kite runner revision
Вusiness communication in China
Вusiness communication in China
Your First Day Of Computers Class
Your First Day Of Computers Class
leaner's mosule in pe 9
leaner's mosule in pe 9
Can could have to must might should
Can could have to must might should
Star schema
Star schema
06 gsm bss network kpi (network coverage) optimization manual
06 gsm bss network kpi (network coverage) optimization manual
Similar a Practical Applications for Data Warehousing, Analytics, BI, and Meta-Integration Technologies
Data-Ed Online: A Practical Approach to Data Modeling
Data-Ed Online: A Practical Approach to Data Modeling
DATAVERSITY
DataEd Online: Show Me the Money - The Business Value of Data and ROI
DataEd Online: Show Me the Money - The Business Value of Data and ROI
DATAVERSITY
Data-Ed Online: How Safe is Your Data? Data Security
Data-Ed Online: How Safe is Your Data? Data Security
DATAVERSITY
Data-Ed Online: Data Operations Management: Turning Your Challenges Into Success
Data-Ed Online: Data Operations Management: Turning Your Challenges Into Success
Data Blueprint
Data-Ed Online: Data Operations Management: Turning your Challenges into Success
Data-Ed Online: Data Operations Management: Turning your Challenges into Success
DATAVERSITY
Data-Ed Online: Building A Solid Foundation-Data/Information Architecture
Data-Ed Online: Building A Solid Foundation-Data/Information Architecture
Data Blueprint
Data-Ed Online: "Building a Solid Foundation: Data/Information Architecture"
Data-Ed Online: "Building a Solid Foundation: Data/Information Architecture"
DATAVERSITY
Data-Ed Online: Let's Talk Metadata: Strategies and Successes
Data-Ed Online: Let's Talk Metadata: Strategies and Successes
Data Blueprint
DataEd Webinar: Unlocking Business Value Through Data Modeling and Data Archi...
DataEd Webinar: Unlocking Business Value Through Data Modeling and Data Archi...
DATAVERSITY
Data-Ed: Unlocking business value through data modeling and data architecture...
Data-Ed: Unlocking business value through data modeling and data architecture...
Data Blueprint
Data-Ed: Get the Most Out of Your Tools: Data Management Technologies
Data-Ed: Get the Most Out of Your Tools: Data Management Technologies
Data Blueprint
DataEd Online: Let's Talk Metadata Strategies and Successes
DataEd Online: Let's Talk Metadata Strategies and Successes
DATAVERSITY
DataEd Online: Unlocking Business Value through Data Modeling and Data Archit...
DataEd Online: Unlocking Business Value through Data Modeling and Data Archit...
DATAVERSITY
Data-Ed: Unlocking Business Value through Data Modeling and Data Architecture...
Data-Ed: Unlocking Business Value through Data Modeling and Data Architecture...
Data Blueprint
Data-Ed Online - Making the Case for Data Governance
Data-Ed Online - Making the Case for Data Governance
Data Blueprint
DataEd Online: Building the Case for the Top Data Job
DataEd Online: Building the Case for the Top Data Job
DATAVERSITY
Data-Ed: Building the Case for the Top Data Job
Data-Ed: Building the Case for the Top Data Job
Data Blueprint
Data-Ed Online: Your Documents and Other Content: Managing Unstructured Data
Data-Ed Online: Your Documents and Other Content: Managing Unstructured Data
Data Blueprint
DataEd Slides: Data Management Best Practices
DataEd Slides: Data Management Best Practices
DATAVERSITY
How to Become a Data Scientist | Data Scientist Skills | Data Science Trainin...
How to Become a Data Scientist | Data Scientist Skills | Data Science Trainin...
Edureka!
Similar a Practical Applications for Data Warehousing, Analytics, BI, and Meta-Integration Technologies
(20)
Data-Ed Online: A Practical Approach to Data Modeling
Data-Ed Online: A Practical Approach to Data Modeling
DataEd Online: Show Me the Money - The Business Value of Data and ROI
DataEd Online: Show Me the Money - The Business Value of Data and ROI
Data-Ed Online: How Safe is Your Data? Data Security
Data-Ed Online: How Safe is Your Data? Data Security
Data-Ed Online: Data Operations Management: Turning Your Challenges Into Success
Data-Ed Online: Data Operations Management: Turning Your Challenges Into Success
Data-Ed Online: Data Operations Management: Turning your Challenges into Success
Data-Ed Online: Data Operations Management: Turning your Challenges into Success
Data-Ed Online: Building A Solid Foundation-Data/Information Architecture
Data-Ed Online: Building A Solid Foundation-Data/Information Architecture
Data-Ed Online: "Building a Solid Foundation: Data/Information Architecture"
Data-Ed Online: "Building a Solid Foundation: Data/Information Architecture"
Data-Ed Online: Let's Talk Metadata: Strategies and Successes
Data-Ed Online: Let's Talk Metadata: Strategies and Successes
DataEd Webinar: Unlocking Business Value Through Data Modeling and Data Archi...
DataEd Webinar: Unlocking Business Value Through Data Modeling and Data Archi...
Data-Ed: Unlocking business value through data modeling and data architecture...
Data-Ed: Unlocking business value through data modeling and data architecture...
Data-Ed: Get the Most Out of Your Tools: Data Management Technologies
Data-Ed: Get the Most Out of Your Tools: Data Management Technologies
DataEd Online: Let's Talk Metadata Strategies and Successes
DataEd Online: Let's Talk Metadata Strategies and Successes
DataEd Online: Unlocking Business Value through Data Modeling and Data Archit...
DataEd Online: Unlocking Business Value through Data Modeling and Data Archit...
Data-Ed: Unlocking Business Value through Data Modeling and Data Architecture...
Data-Ed: Unlocking Business Value through Data Modeling and Data Architecture...
Data-Ed Online - Making the Case for Data Governance
Data-Ed Online - Making the Case for Data Governance
DataEd Online: Building the Case for the Top Data Job
DataEd Online: Building the Case for the Top Data Job
Data-Ed: Building the Case for the Top Data Job
Data-Ed: Building the Case for the Top Data Job
Data-Ed Online: Your Documents and Other Content: Managing Unstructured Data
Data-Ed Online: Your Documents and Other Content: Managing Unstructured Data
DataEd Slides: Data Management Best Practices
DataEd Slides: Data Management Best Practices
How to Become a Data Scientist | Data Scientist Skills | Data Science Trainin...
How to Become a Data Scientist | Data Scientist Skills | Data Science Trainin...
Más de DATAVERSITY
Architecture, Products, and Total Cost of Ownership of the Leading Machine Le...
Architecture, Products, and Total Cost of Ownership of the Leading Machine Le...
DATAVERSITY
Data at the Speed of Business with Data Mastering and Governance
Data at the Speed of Business with Data Mastering and Governance
DATAVERSITY
Exploring Levels of Data Literacy
Exploring Levels of Data Literacy
DATAVERSITY
Building a Data Strategy – Practical Steps for Aligning with Business Goals
Building a Data Strategy – Practical Steps for Aligning with Business Goals
DATAVERSITY
Make Data Work for You
Make Data Work for You
DATAVERSITY
Data Catalogs Are the Answer – What is the Question?
Data Catalogs Are the Answer – What is the Question?
DATAVERSITY
Data Catalogs Are the Answer – What Is the Question?
Data Catalogs Are the Answer – What Is the Question?
DATAVERSITY
Data Modeling Fundamentals
Data Modeling Fundamentals
DATAVERSITY
Showing ROI for Your Analytic Project
Showing ROI for Your Analytic Project
DATAVERSITY
How a Semantic Layer Makes Data Mesh Work at Scale
How a Semantic Layer Makes Data Mesh Work at Scale
DATAVERSITY
Is Enterprise Data Literacy Possible?
Is Enterprise Data Literacy Possible?
DATAVERSITY
The Data Trifecta – Privacy, Security & Governance Race from Reactivity to Re...
The Data Trifecta – Privacy, Security & Governance Race from Reactivity to Re...
DATAVERSITY
Emerging Trends in Data Architecture – What’s the Next Big Thing?
Emerging Trends in Data Architecture – What’s the Next Big Thing?
DATAVERSITY
Data Governance Trends - A Look Backwards and Forwards
Data Governance Trends - A Look Backwards and Forwards
DATAVERSITY
Data Governance Trends and Best Practices To Implement Today
Data Governance Trends and Best Practices To Implement Today
DATAVERSITY
2023 Trends in Enterprise Analytics
2023 Trends in Enterprise Analytics
DATAVERSITY
Data Strategy Best Practices
Data Strategy Best Practices
DATAVERSITY
Who Should Own Data Governance – IT or Business?
Who Should Own Data Governance – IT or Business?
DATAVERSITY
Data Management Best Practices
Data Management Best Practices
DATAVERSITY
MLOps – Applying DevOps to Competitive Advantage
MLOps – Applying DevOps to Competitive Advantage
DATAVERSITY
Más de DATAVERSITY
(20)
Architecture, Products, and Total Cost of Ownership of the Leading Machine Le...
Architecture, Products, and Total Cost of Ownership of the Leading Machine Le...
Data at the Speed of Business with Data Mastering and Governance
Data at the Speed of Business with Data Mastering and Governance
Exploring Levels of Data Literacy
Exploring Levels of Data Literacy
Building a Data Strategy – Practical Steps for Aligning with Business Goals
Building a Data Strategy – Practical Steps for Aligning with Business Goals
Make Data Work for You
Make Data Work for You
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 Modeling Fundamentals
Data Modeling Fundamentals
Showing ROI for Your Analytic Project
Showing ROI for Your Analytic Project
How a Semantic Layer Makes Data Mesh Work at Scale
How a Semantic Layer Makes Data Mesh Work at Scale
Is Enterprise Data Literacy Possible?
Is Enterprise Data Literacy Possible?
The Data Trifecta – Privacy, Security & Governance Race from Reactivity to Re...
The Data Trifecta – Privacy, Security & Governance Race from Reactivity to Re...
Emerging Trends in Data Architecture – What’s the Next Big Thing?
Emerging Trends in Data Architecture – What’s the Next Big Thing?
Data Governance Trends - A Look Backwards and Forwards
Data Governance Trends - A Look Backwards and Forwards
Data Governance Trends and Best Practices To Implement Today
Data Governance Trends and Best Practices To Implement Today
2023 Trends in Enterprise Analytics
2023 Trends in Enterprise Analytics
Data Strategy Best Practices
Data Strategy Best Practices
Who Should Own Data Governance – IT or Business?
Who Should Own Data Governance – IT or Business?
Data Management Best Practices
Data Management Best Practices
MLOps – Applying DevOps to Competitive Advantage
MLOps – Applying DevOps to Competitive Advantage
Último
Corporate and higher education May webinar.pptx
Corporate and higher education May webinar.pptx
Rustici Software
Web Form Automation for Bonterra Impact Management (fka Social Solutions Apri...
Web Form Automation for Bonterra Impact Management (fka Social Solutions Apri...
Jeffrey Haguewood
Mcleodganj Call Girls 🥰 8617370543 Service Offer VIP Hot Model
Mcleodganj Call Girls 🥰 8617370543 Service Offer VIP Hot Model
Deepika Singh
Apidays New York 2024 - Passkeys: Developing APIs to enable passwordless auth...
Apidays New York 2024 - Passkeys: Developing APIs to enable passwordless auth...
apidays
Connector Corner: Accelerate revenue generation using UiPath API-centric busi...
Connector Corner: Accelerate revenue generation using UiPath API-centric busi...
DianaGray10
Modular Monolith - a Practical Alternative to Microservices @ Devoxx UK 2024
Modular Monolith - a Practical Alternative to Microservices @ Devoxx UK 2024
Victor Rentea
Introduction to use of FHIR Documents in ABDM
Introduction to use of FHIR Documents in ABDM
Kumar Satyam
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
Safe Software
Rising Above_ Dubai Floods and the Fortitude of Dubai International Airport.pdf
Rising Above_ Dubai Floods and the Fortitude of Dubai International Airport.pdf
Orbitshub
Spring Boot vs Quarkus the ultimate battle - DevoxxUK
Spring Boot vs Quarkus the ultimate battle - DevoxxUK
Jago de Vreede
ICT role in 21st century education and its challenges
ICT role in 21st century education and its challenges
rafiqahmad00786416
Apidays New York 2024 - The value of a flexible API Management solution for O...
Apidays New York 2024 - The value of a flexible API Management solution for O...
apidays
Understanding the FAA Part 107 License ..
Understanding the FAA Part 107 License ..
Christopher Logan Kennedy
"I see eyes in my soup": How Delivery Hero implemented the safety system for ...
"I see eyes in my soup": How Delivery Hero implemented the safety system for ...
Zilliz
Repurposing LNG terminals for Hydrogen Ammonia: Feasibility and Cost Saving
Repurposing LNG terminals for Hydrogen Ammonia: Feasibility and Cost Saving
Edi Saputra
Apidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, Adobe
Apidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, Adobe
apidays
DEV meet-up UiPath Document Understanding May 7 2024 Amsterdam
DEV meet-up UiPath Document Understanding May 7 2024 Amsterdam
UiPathCommunity
AI+A11Y 11MAY2024 HYDERBAD GAAD 2024 - HelloA11Y (11 May 2024)
AI+A11Y 11MAY2024 HYDERBAD GAAD 2024 - HelloA11Y (11 May 2024)
Samir Dash
Apidays New York 2024 - APIs in 2030: The Risk of Technological Sleepwalk by ...
Apidays New York 2024 - APIs in 2030: The Risk of Technological Sleepwalk by ...
apidays
Navigating the Deluge_ Dubai Floods and the Resilience of Dubai International...
Navigating the Deluge_ Dubai Floods and the Resilience of Dubai International...
Orbitshub
Último
(20)
Corporate and higher education May webinar.pptx
Corporate and higher education May webinar.pptx
Web Form Automation for Bonterra Impact Management (fka Social Solutions Apri...
Web Form Automation for Bonterra Impact Management (fka Social Solutions Apri...
Mcleodganj Call Girls 🥰 8617370543 Service Offer VIP Hot Model
Mcleodganj Call Girls 🥰 8617370543 Service Offer VIP Hot Model
Apidays New York 2024 - Passkeys: Developing APIs to enable passwordless auth...
Apidays New York 2024 - Passkeys: Developing APIs to enable passwordless auth...
Connector Corner: Accelerate revenue generation using UiPath API-centric busi...
Connector Corner: Accelerate revenue generation using UiPath API-centric busi...
Modular Monolith - a Practical Alternative to Microservices @ Devoxx UK 2024
Modular Monolith - a Practical Alternative to Microservices @ Devoxx UK 2024
Introduction to use of FHIR Documents in ABDM
Introduction to use of FHIR Documents in ABDM
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
Cloud Frontiers: A Deep Dive into Serverless Spatial Data and FME
Rising Above_ Dubai Floods and the Fortitude of Dubai International Airport.pdf
Rising Above_ Dubai Floods and the Fortitude of Dubai International Airport.pdf
Spring Boot vs Quarkus the ultimate battle - DevoxxUK
Spring Boot vs Quarkus the ultimate battle - DevoxxUK
ICT role in 21st century education and its challenges
ICT role in 21st century education and its challenges
Apidays New York 2024 - The value of a flexible API Management solution for O...
Apidays New York 2024 - The value of a flexible API Management solution for O...
Understanding the FAA Part 107 License ..
Understanding the FAA Part 107 License ..
"I see eyes in my soup": How Delivery Hero implemented the safety system for ...
"I see eyes in my soup": How Delivery Hero implemented the safety system for ...
Repurposing LNG terminals for Hydrogen Ammonia: Feasibility and Cost Saving
Repurposing LNG terminals for Hydrogen Ammonia: Feasibility and Cost Saving
Apidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, Adobe
Apidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, Adobe
DEV meet-up UiPath Document Understanding May 7 2024 Amsterdam
DEV meet-up UiPath Document Understanding May 7 2024 Amsterdam
AI+A11Y 11MAY2024 HYDERBAD GAAD 2024 - HelloA11Y (11 May 2024)
AI+A11Y 11MAY2024 HYDERBAD GAAD 2024 - HelloA11Y (11 May 2024)
Apidays New York 2024 - APIs in 2030: The Risk of Technological Sleepwalk by ...
Apidays New York 2024 - APIs in 2030: The Risk of Technological Sleepwalk by ...
Navigating the Deluge_ Dubai Floods and the Resilience of Dubai International...
Navigating the Deluge_ Dubai Floods and the Resilience of Dubai International...
Practical Applications for Data Warehousing, Analytics, BI, and Meta-Integration Technologies
1.
Welcome!
TITLE Practical Applications for Data Warehousing, Analytics, BI, and Meta-Integration Technologies Date: July 10, 2012 Time: 2:00 PM ET Presented by: Dr. Peter Aiken PRODUCED BY CLASSIFICATION DATE SLIDE DATA BLUEPRINT 10124-C W. BROAD ST, GLEN ALLEN, VA 23060 EDUCATION 7/10/2012 1 07/06/12 © Copyright this and previous years by Data Blueprint - all rights reserved!
2.
TITLE
Abstract: DW, Analytics, BI, Meta-Integration Technologies Meta-integration is considered data warehousing by some, while others describe it as data virtualization. This presentation provides an overview of meta-integration starting with organizational requirements. We will discuss how meta-models can be used to jump-start organizational efforts. Participants will understand the strengths and weaknesses of various technological capabilities, and the key role of data quality in all of them. Turns out that proper analysis at this stage makes actual technology selection far more accurate. PRODUCED BY CLASSIFICATION DATE SLIDE DATA BLUEPRINT 10124-C W. BROAD ST, GLEN ALLEN, VA 23060 EDUCATION 7/10/2012 2 07/06/12 © Copyright this and previous years by Data Blueprint - all rights reserved!
3.
TITLE
Live Twitter Feed & Facebook Updates Join the conversation on Twitter! www.facebook.com/datablueprint Follow us @datablueprint and Post questions and comments @paiken Find industry news, insightful Ask questions and submit your content comments: #dataed and event updates PRODUCED BY CLASSIFICATION DATE SLIDE DATA BLUEPRINT 10124-C W. BROAD ST, GLEN ALLEN, VA 23060 EDUCATION 06/12/12 3 06/06/12 © Copyright this and previous years by Data Blueprint - all rights reserved!
4.
LinkedIn Group: Join
the Discussion TITLE New Group: Data Management & Business Intelligence PRODUCED BY CLASSIFICATION DATE SLIDE DATA BLUEPRINT 10124-C W. BROAD ST, GLEN ALLEN, VA 23060 EDUCATION 7/10/2012 4 07/06/12 © Copyright this and previous years by Data Blueprint - all rights reserved!
5.
TITLE
Meet Your Presenter: Dr. Peter Aiken • Internationally recognized thought-leader in the data management field with more than 30 years of experience • Recipient of the 2010 International Stevens Award • Founding Director of Data Blueprint (http://datablueprint.com) • Associate Professor of Information Systems at Virginia Commonwealth University (http://vcu.edu) • President of DAMA International (http://dama.org) • DoD Computer Scientist, Reverse Engineering Program Manager/ Office of the Chief Information Officer • Visiting Scientist, Software Engineering Institute/Carnegie Mellon University • 7 books and dozens of articles • Experienced w/ 500+ data management practices in 20 countries #dataed PRODUCED BY CLASSIFICATION DATE SLIDE DATA BLUEPRINT 10124-C W. BROAD ST, GLEN ALLEN, VA 23060 EDUCATION 7/10/2012 5 07/06/12 © Copyright this and previous years by Data Blueprint - all rights reserved!
6.
Data Warehousing,
Analytics, BI, Meta-Integration Technologies Data Warehousing, Analytics, BI, Meta-Integration Technologies n/a 7/10/2012
7.
TITLE
Outline 1. Data management overview 2. What are DW, analytics, BI and meta- integration technologies and why are they important? 3. Top 10 causes of data warehouse failures 4. DW & architecture focus 5. Business intelligence focus 6. The use of meta models 7. DW, analytics & BI building blocks 8. Guiding principles & best practices Tweeting now: 9. Take aways, references and Q&A #dataed PRODUCED BY CLASSIFICATION DATE SLIDE DATA BLUEPRINT 10124-C W. BROAD ST, GLEN ALLEN, VA 23060 EDUCATION 7/10/2012 7 07/06/12 © Copyright this and previous years by Data Blueprint - all rights reserved!
8.
TITLE
The DAMA Guide to the Data Management Body of Knowledge Published by DAMA International • The professional association for Data Managers (40 chapters worldwide) DMBoK organized around • Primary data management functions focused around data delivery to the organization • Organized around several environmental elements Data Management Functions PRODUCED BY CLASSIFICATION DATE SLIDE DATA BLUEPRINT 10124-C W. BROAD ST, GLEN ALLEN, VA 23060 EDUCATION 7/10/2012 8 07/06/12 © Copyright this and previous years by Data Blueprint - all rights reserved!
9.
TITLE
The DAMA Guide to the Data Management Body of Knowledge Amazon: http:// www.amazon.com/ DAMA-Guide- Management- Knowledge-DAMA- DMBOK/dp/ 0977140083 Or enter the terms "dama dm bok" at the Amazon search engine Environmental Elements PRODUCED BY CLASSIFICATION DATE SLIDE DATA BLUEPRINT 10124-C W. BROAD ST, GLEN ALLEN, VA 23060 EDUCATION 7/10/2012 9 07/06/12 © Copyright this and previous years by Data Blueprint - all rights reserved!
10.
TITLE
Data Management PRODUCED BY CLASSIFICATION DATE SLIDE DATA BLUEPRINT 10124-C W. BROAD ST, GLEN ALLEN, VA 23060 EDUCATION 7/10/2012 10 07/06/12 © Copyright this and previous years by Data Blueprint - all rights reserved!
11.
TITLE
Data Management Manage data coherently. Data Program Coordina;on Share data across boundaries. Organiza;onal Data Integra;on Data Data Stewardship Development Assign responsibilities for data. Engineer data delivery systems. Data Support Opera;ons Maintain data availability. PRODUCED BY CLASSIFICATION DATE SLIDE DATA BLUEPRINT 10124-C W. BROAD ST, GLEN ALLEN, VA 23060 EDUCATION 7/10/2012 11 07/06/12 © Copyright this and previous years by Data Blueprint - all rights reserved!
12.
TITLE
Data Management PRODUCED BY CLASSIFICATION DATE SLIDE DATA BLUEPRINT 10124-C W. BROAD ST, GLEN ALLEN, VA 23060 EDUCATION 7/10/2012 12 07/06/12 © Copyright this and previous years by Data Blueprint - all rights reserved!
13.
TITLE
Summary: Data Warehousing & Business Intelligence Management PRODUCED BY CLASSIFICATION DATE SLIDE DATA BLUEPRINT 10124-C W. BROAD ST, GLEN ALLEN, VA 23060 EDUCATION 7/10/2012 13 07/06/12 © Copyright this and previous years by Data Blueprint - all rights reserved!
14.
TITLE
Outline 1. Data management overview 2. What are DW, analytics, BI and meta- integration technologies and why are they important? 3. Top 10 causes of data warehouse failures 4. DW & architecture focus 5. Business intelligence focus 6. The use of meta models 7. DW, analytics & BI building blocks 8. Guiding principles & best practices Tweeting now: 9. Take aways, references and Q&A #dataed PRODUCED BY CLASSIFICATION DATE SLIDE DATA BLUEPRINT 10124-C W. BROAD ST, GLEN ALLEN, VA 23060 EDUCATION 7/10/2012 14 07/06/12 © Copyright this and previous years by Data Blueprint - all rights reserved!
15.
TITLE
DW, Analytics, BI, Meta-Integration Technologies Definitions • Beyond the nuts and bolts of data management • Analysis of information that had not been integrated previously Business Intelligence • Dates at least to 1958 • Support better business decision making • Technologies, applications and practices for the collection, integration, analysis, and Data Warehousing presentation of business • Operational extract, cleansing, information • Also described as decision transformation, load, and support associated control processes for integrating disparate data into a single conceptual database from The DAMA Guide to the Data Management Body of Knowledge © 2009 by DAMA International PRODUCED BY CLASSIFICATION DATE SLIDE DATA BLUEPRINT 10124-C W. BROAD ST, GLEN ALLEN, VA 23060 EDUCATION 7/10/2012 15 07/06/12 © Copyright this and previous years by Data Blueprint - all rights reserved!
16.
TITLE
Definitions, cont’d • Study of data to discover and understand historical patterns to improve future performance • Use of mathematics in business • Analytics closely resembles statistical analysis and data mining – based on modeling involving extensive computation. • Some fields within the area of analytics are – enterprise decision management, marketing analytics, predictive science, strategy science, credit risk analysis and fraud analytics. PRODUCED BY CLASSIFICATION DATE SLIDE DATA BLUEPRINT 10124-C W. BROAD ST, GLEN ALLEN, VA 23060 EDUCATION 7/10/2012 16 07/06/12 © Copyright this and previous years by Data Blueprint - all rights reserved!
17.
TITLE
Warehousing Definitions • Inmon: – "A subject oriented, integrated, time variant, and non-volatile collection of summary and detailed historical data used to support the strategic decision-making processes of the organization." • Kimball: – "A copy of transaction data specifically structured for query and analysis." • Key concepts focus on: – Subjects – Transactions – Non-volatility – Restructuring PRODUCED BY CLASSIFICATION DATE SLIDE DATA BLUEPRINT 10124-C W. BROAD ST, GLEN ALLEN, VA 23060 EDUCATION 7/10/2012 17 07/06/12 © Copyright this and previous years by Data Blueprint - all rights reserved!
18.
TITLE
Example: Portfolio Analysis • Bank accounts are of varying value and risk • Cube by – Social status – Geographical location – Net value, etc. • Balance return on the loan with risk of default • How to evaluate the portfolio as a whole? – Least risk loan may be to the very wealthy, but there are a very limited number – Many poor customers, but greater risk • Solution may combine types of analyses – When to lend, interest rate charged PRODUCED BY CLASSIFICATION DATE SLIDE DATA BLUEPRINT 10124-C W. BROAD ST, GLEN ALLEN, VA 23060 EDUCATION 7/10/2012 18 07/06/12 © Copyright this and previous years by Data Blueprint - all rights reserved!
19.
TITLE
Example: Set Analysis from MicroStrategy, Better Business Decisions Every Day: Integrating Business Reporting & Analysis PRODUCED BY CLASSIFICATION DATE SLIDE DATA BLUEPRINT 10124-C W. BROAD ST, GLEN ALLEN, VA 23060 EDUCATION 7/10/2012 19 07/06/12 © Copyright this and previous years by Data Blueprint - all rights reserved!
20.
TITLE 15 years ago,
CarMax started as a way to make the car buying experience simple, fair, and fun. Today CarMax is a FORTUNE 500 retailer and one of FORTUNE’s “100 Best Companies to Work For.” And we are hiring talented individuals who are interested in: --solving original, wide-ranging, and open-ended business problems --not only discovering new insights, but successfully implementing them --making a significant mark on a growing company CarMax Example Job Posting --developing the fundamental skills for a rewarding business career --solving original, wide-ranging, and open-ended business problems If that sounds like you, the Strategy Analyst position is the unique opportunity you’ve been looking for. The strategy team at CarMax currently consists of over 40 analysts, many of whom are recent college graduates from top schools with a variety of academic backgrounds (computer science, economics, English, engineering, journalism, math, political --not only discovering new insights, but successfully implementing them science). These analysts lead advances and decisions in several key business areas:-Inventory and pricing—what is the optimal selection of inventory, how do we acquire it, what should we pay for it, what should we price it for? --making a significant mark on a growing company -Expansion planning—which markets should we enter and how do we store those markets? Will each $10-30 million store investment generate a sufficient economic return? -Credit strategy—how can our bank (CarMax Auto Finance) approve more customers for loans and convert more approvals to sales? --developing the fundamental skills for a rewarding business career -Marketing and consumer insight—how do we reach our customers, increase traffic to our stores, and best use the internet to drive sales and build our brand -Industry and competitive research—what middle- and long-term risks are we exposed to, and how best do we prepare to respond? -Production—how do we increase vehicle reconditioning quality while reducing cost and production time? -Sales process and workforce—what is the best way to serve customers in our stores, and how do we manage, motivate and compensate our sales team? Even early in your career at CarMax, you will have the responsibility to own an area of the business and will be expected to improve it. For example, one undergraduate recruit used data analysis to reformulate our retail pricing strategy, pitched and sold his idea to the senior executive team, and implemented a new system nationwide in his first 6 months with the company. That is the kind of impact you can make at CarMax. And as you do this, you will work closely with the senior executives and analytical managers to develop the fundamental and advanced skills that underpin a successful career in business. In fact, most of our managers in the strategy group started at CarMax as analysts, and our VP of own an area of the business and will be expected to improve it Strategy and Analysis started his career here through our undergraduate recruiting program. While an MBA is not required to advance or contribute at CarMax, analysts who have chosen to pursue a business degree have enjoyed superior acceptance rates at their first choice schools, including Harvard, Chicago, UVa, Columbia, and Duke. Your opportunities to develop, contribute, and lead as an analyst at CarMax are as great as the company’s opportunity to grow. While CarMax is already the largest used car retailer in the country (with over $8 billion in sales and over 90 superstores across the country), we have only 2% of the 1 to 6-year-old used car market, which, at $280 billion annually, is bigger than the home improvement or consumer electronics industries. CarMax is already growing at 15% a year, and over the next 10 years plans to have 250-300 stores and achieve $25+ billion in annual sales. As an analyst, you can be an integral part of that growth, all while enjoying a casual and friendly environment, a diverse group of talented associates, a healthy work-life balance, and excellent compensation and benefits. An ideal candidate will have --Demonstrated top caliber analytic and problem solving skills --History of achievement demonstrated by top 15% GPA, with a quantitative major(s), and/or other recognition such as scholarships, awards, honor societies -- Passion for business and desire to develop into a strong business leader We encourage you to apply. For more information, please visit us at the career fair, on our website (www.carmax.com/collegerecruiting), or email us at college_recruiting@carmax.com. PRODUCED BY CLASSIFICATION http://www.seas.virginia.edu/careerdevelopment/index.php?option=com_careerfairstudent&task=detailView&employerId=216&eventId=3 DATE SLIDE DATA BLUEPRINT 10124-C W. BROAD ST, GLEN ALLEN, VA 23060 EDUCATION 7/10/2012 24 - datablueprint.com 07/06/12 © Copyright this and previous years by Data Blueprint - all rights reserved! 8/2/2010 © Copyright this and previous years by Data Blueprint - all rights reserved! 20
21.
Operations Research
TITLE • Interdisciplinary branch of applied mathematics and formal science • Uses methods such as mathematical modeling, statistics, and algorithms to arrive at optimal or near optimal solutions • Typically concerned with optimizing the maxima (profit, assembly line performance, crop yield, bandwidth, etc) or minima (loss, risk, etc.) of some objective function • Operations research helps management achieve its goals using scientific methods http://en.wikipedia.org/wiki/Operations_research PRODUCED BY CLASSIFICATION DATE SLIDE DATA BLUEPRINT 10124-C W. BROAD ST, GLEN ALLEN, VA 23060 EDUCATION 7/10/2012 21 07/06/12 © Copyright this and previous years by Data Blueprint - all rights reserved!
22.
TITLE
Outline 1. Data management overview 2. What are DW, analytics, BI and meta- integration technologies and why are they important? 3. Top 10 causes of data warehouse failures 4. DW & architecture focus 5. Business intelligence focus 6. The use of meta models 7. DW, analytics & BI building blocks 8. Guiding principles & best practices Tweeting now: 9. Take aways, references and Q&A #dataed PRODUCED BY CLASSIFICATION DATE SLIDE DATA BLUEPRINT 10124-C W. BROAD ST, GLEN ALLEN, VA 23060 EDUCATION 7/10/2012 22 07/06/12 © Copyright this and previous years by Data Blueprint - all rights reserved!
23.
TITLE
Indiana Jones: Raiders Of The Lost Ark PRODUCED BY CLASSIFICATION DATE SLIDE DATA BLUEPRINT 10124-C W. BROAD ST, GLEN ALLEN, VA 23060 EDUCATION 7/10/2012 23 07/06/12 © Copyright this and previous years by Data Blueprint - all rights reserved!
24.
TITLE
Top Causes of Data Warehouse Failure • Poor Quality Data – Many more values of gender code than (M/F) • Incorrectly Structured Data – Providing the correct answer to the wrong question • Bad Warehouse Design – Overly complex from The DAMA Guide to the Data Management Body of Knowledge © 2009 by DAMA International PRODUCED BY CLASSIFICATION DATE SLIDE DATA BLUEPRINT 10124-C W. BROAD ST, GLEN ALLEN, VA 23060 EDUCATION 7/10/2012 24 07/06/12 © Copyright this and previous years by Data Blueprint - all rights reserved!
25.
TITLE
Top 10 Data Warehouse Failure Causes 1. The project is over budget 2. Slipped schedule 3. Functions and capabilities not implemented 4. Unhappy users 5. Unacceptable performance 6. Poor availability 7. Inability to expand 8. Poor quality data/reports 9. Too complicated for users 10. Project not cost justified from The Data Administration Newsletter, www.tdan.com PRODUCED BY CLASSIFICATION DATE SLIDE DATA BLUEPRINT 10124-C W. BROAD ST, GLEN ALLEN, VA 23060 EDUCATION 7/10/2012 25 07/06/12 © Copyright this and previous years by Data Blueprint - all rights reserved!
26.
TITLE
Outline 1. Data management overview 2. What are DW, analytics, BI and meta- integration technologies and why are they important? 3. Top 10 causes of data warehouse failures 4. DW & architecture focus 5. Business intelligence focus 6. The use of meta models 7. DW, analytics & BI building blocks 8. Guiding principles & best practices Tweeting now: 9. Take aways, references and Q&A #dataed PRODUCED BY CLASSIFICATION DATE SLIDE DATA BLUEPRINT 10124-C W. BROAD ST, GLEN ALLEN, VA 23060 EDUCATION 7/10/2012 26 07/06/12 © Copyright this and previous years by Data Blueprint - all rights reserved!
27.
TITLE
Health Care Provider Data Warehouse • 1.8 million members • 1.4 million providers • 800,000 providers no key • 2.2% prov_number = 9 digits (required) • 29% prov_ssn ≠ 9 digits • 1 User "I can take a roomful of MBAs and accomplish this analysis faster!" PRODUCED BY CLASSIFICATION DATE SLIDE DATA BLUEPRINT 10124-C W. BROAD ST, GLEN ALLEN, VA 23060 EDUCATION 7/10/2012 27 07/06/12 © Copyright this and previous years by Data Blueprint - all rights reserved!
28.
Basic Data Warehouse
Analysis TITLE • Emphasis on the cube • Permits different users to "slice and dice" subsets of data • Viewing from different perspectives from MicroStrategy, Better Business Decisions Every Day: Integrating Business Reporting & Analysis PRODUCED BY CLASSIFICATION DATE SLIDE DATA BLUEPRINT 10124-C W. BROAD ST, GLEN ALLEN, VA 23060 EDUCATION 7/10/2012 28 07/06/12 © Copyright this and previous years by Data Blueprint - all rights reserved!
29.
Warehouse Analysis
TITLE • Users can "drill" anywhere • Entire collection is accessible • Summaries to transaction-level detail from MicroStrategy, Better Business Decisions Every Day: Integrating Business Reporting & Analysis PRODUCED BY CLASSIFICATION DATE SLIDE DATA BLUEPRINT 10124-C W. BROAD ST, GLEN ALLEN, VA 23060 EDUCATION 7/10/2012 29 07/06/12 © Copyright this and previous years by Data Blueprint - all rights reserved!
30.
from The DAMA
Guide to the Data Management Body of Knowledge © 2009 by DAMA International TITLE Oracle PRODUCED BY CLASSIFICATION DATE SLIDE DATA BLUEPRINT 10124-C W. BROAD ST, GLEN ALLEN, VA 23060 EDUCATION 7/10/2012 30 07/06/12 © Copyright this and previous years by Data Blueprint - all rights reserved!
31.
from The DAMA
Guide to the Data Management Body of Knowledge © 2009 by DAMA International TITLE Corporate Information Factory Architecture PRODUCED BY CLASSIFICATION DATE SLIDE DATA BLUEPRINT 10124-C W. BROAD ST, GLEN ALLEN, VA 23060 EDUCATION 7/10/2012 31 07/06/12 © Copyright this and previous years by Data Blueprint - all rights reserved!
32.
TITLE
Corporate Information Factory Architecture from The DAMA Guide to the Data Management Body of Knowledge © 2009 by DAMA International PRODUCED BY CLASSIFICATION DATE SLIDE DATA BLUEPRINT 10124-C W. BROAD ST, GLEN ALLEN, VA 23060 EDUCATION 7/10/2012 32 07/06/12 © Copyright this and previous years by Data Blueprint - all rights reserved!
33.
from The DAMA
Guide to the Data Management Body of Knowledge © 2009 by DAMA International TITLE Corporate Information Factory Architecture PRODUCED BY CLASSIFICATION DATE SLIDE DATA BLUEPRINT 10124-C W. BROAD ST, GLEN ALLEN, VA 23060 EDUCATION 7/10/2012 33 07/06/12 © Copyright this and previous years by Data Blueprint - all rights reserved!
34.
from The DAMA
Guide to the Data Management Body of Knowledge © 2009 by DAMA International TITLE Corporate Information Factory Architecture PRODUCED BY CLASSIFICATION DATE SLIDE DATA BLUEPRINT 10124-C W. BROAD ST, GLEN ALLEN, VA 23060 EDUCATION 7/10/2012 34 07/06/12 © Copyright this and previous years by Data Blueprint - all rights reserved!
35.
from The DAMA
Guide to the Data Management Body of Knowledge © 2009 by DAMA International TITLE Kimball's DW Chess Pieces PRODUCED BY CLASSIFICATION DATE SLIDE DATA BLUEPRINT 10124-C W. BROAD ST, GLEN ALLEN, VA 23060 EDUCATION 7/10/2012 35 07/06/12 © Copyright this and previous years by Data Blueprint - all rights reserved!
36.
MetaMatrix Integration Example
• EII Enterprise Information Integration – between ETL and EAI - delivers tailored views of information to users at the time that it is required 36 - datablueprint.com 7/13/2012 © Copyright this and previous years by Data Blueprint - all rights reserved!
37.
Linked Data
Linked Data is about using the Web to connect related data that wasn't previously linked, or using the Web to lower the barriers to linking data currently linked using other methods. More specifically, Wikipedia defines Linked Data as "a term used to describe a recommended best practice for exposing, sharing, and connecting pieces of data, information, and knowledge on the Semantic Web using URIs and RDF." linkeddata.org 37 - datablueprint.com 7/13/2012 © Copyright this and previous years by Data Blueprint - all rights reserved!
38.
TITLE
Multiple Sources of (for example) Customer Data Finance Applica.on (3rd GL, batch Payroll Data system, no source) (database) Payroll Applica.on Finance (3rd GL) Data (indexed) Marke.ng Data Marke.ng Applica.on (external database) (4rd GL, query facili.es, no repor.ng, very large) Personnel Data (database) Personnel App. (20 years old, un-‐normalized data) Mfg. Data R & D Data (home grown database) Mfg. Applica.ons (raw) (contractor supported) R& D Applica.ons (researcher supported, no documenta.on) PRODUCED BY CLASSIFICATION DATE SLIDE DATA BLUEPRINT 10124-C W. BROAD ST, GLEN ALLEN, VA 23060 EDUCATION 7/10/2012 38 07/06/12 © Copyright this and previous years by Data Blueprint - all rights reserved!
39.
TITLE
Outline 1. Data management overview 2. What are DW, analytics, BI and meta- integration technologies and why are they important? 3. Top 10 causes of data warehouse failures 4. DW & architecture focus 5. Business intelligence focus 6. The use of meta models 7. DW, analytics & BI building blocks 8. Guiding principles & best practices Tweeting now: 9. Take aways, references and Q&A #dataed PRODUCED BY CLASSIFICATION DATE SLIDE DATA BLUEPRINT 10124-C W. BROAD ST, GLEN ALLEN, VA 23060 EDUCATION 7/10/2012 39 07/06/12 © Copyright this and previous years by Data Blueprint - all rights reserved!
40.
TITLE
Styles of Business Intelligence from MicroStrategy, Better Business Decisions Every Day: Integrating Business Reporting & Analysis PRODUCED BY CLASSIFICATION DATE SLIDE DATA BLUEPRINT 10124-C W. BROAD ST, GLEN ALLEN, VA 23060 EDUCATION 7/10/2012 40 07/06/12 © Copyright this and previous years by Data Blueprint - all rights reserved!
41.
TITLE
Business Intelligence Features Problema)c Data Quality PRODUCED BY CLASSIFICATION DATE SLIDE DATA BLUEPRINT 10124-C W. BROAD ST, GLEN ALLEN, VA 23060 EDUCATION 7/10/2012 41 07/06/12 © Copyright this and previous years by Data Blueprint - all rights reserved!
42.
hOp://www.cio.com/ar.cle/150450/Five_Key_Business_Intelligence_Trends_You_Need_to_Know?page=2&taxonomyId=3002
5 Key Business Intelligence Trends TITLE 1. There's so much data, but too little insight. More data translates to a greater need to manage it and make it actionable. 2. Market consolidation means fewer choices for business intelligence users. 3. Business Intelligence expands from the Board Room to the front lines. Increasingly, business intelligence tools will be available at all levels of the corporation 4. The convergence of structured and unstructured data Will create better business intelligence. 5. Applications will provide new views of business intelligence data. The next generation of business intelligence applications is moving beyond the pie charts and bar charts into more visual depictions of data and trends. PRODUCED BY CLASSIFICATION DATE SLIDE DATA BLUEPRINT 10124-C W. BROAD ST, GLEN ALLEN, VA 23060 EDUCATION 7/10/2012 42 07/06/12 © Copyright this and previous years by Data Blueprint - all rights reserved!
43.
TITLE
Outline 1. Data management overview 2. What are DW, analytics, BI and meta- integration technologies and why are they important? 3. Top 10 causes of data warehouse failures 4. DW & architecture focus 5. Business intelligence focus 6. The use of meta models 7. DW, analytics & BI building blocks 8. Guiding principles & best practices Tweeting now: 9. Take aways, references and Q&A #dataed PRODUCED BY CLASSIFICATION DATE SLIDE DATA BLUEPRINT 10124-C W. BROAD ST, GLEN ALLEN, VA 23060 EDUCATION 7/10/2012 43 07/06/12 © Copyright this and previous years by Data Blueprint - all rights reserved!
44.
TITLE
Meta Data Models Source:http://dmreview.com/article_sub.cfm?articleID=1000941 used with permission PRODUCED BY CLASSIFICATION DATE SLIDE DATA BLUEPRINT 10124-C W. BROAD ST, GLEN ALLEN, VA 23060 EDUCATION 7/10/2012 44 07/06/12 © Copyright this and previous years by Data Blueprint - all rights reserved!
45.
Overview of CWM
Metamodel TITLE Warehouse Warehouse Warehouse Management Process Opera.on Analysis Data Informa.on Business Transforma.on OLAP Mining Visualiza.on Nomenclature Resources Object-‐ Record-‐ Mul. Oriented Rela.onal XML (ObjectModel) Oriented Dimensional Foundation Business Data Keys Type So`ware Expressions Informa.on Types Index Mapping Deployment ObjectModel (Core, Behavioral, Rela.onships, Instance) http://www.omg.org/technology/documents/modeling_spec_catalog.htm PRODUCED BY CLASSIFICATION DATE SLIDE DATA BLUEPRINT 10124-C W. BROAD ST, GLEN ALLEN, VA 23060 EDUCATION 7/10/2012 45 07/06/12 © Copyright this and previous years by Data Blueprint - all rights reserved!
46.
TITLE
Outline 1. Data management overview 2. What are DW, analytics, BI and meta- integration technologies and why are they important? 3. Top 10 causes of data warehouse failures 4. DW & architecture focus 5. Business intelligence focus 6. The use of meta models 7. DW, analytics & BI building blocks 8. Guiding principles & best practices Tweeting now: 9. Take aways, references and Q&A #dataed PRODUCED BY CLASSIFICATION DATE SLIDE DATA BLUEPRINT 10124-C W. BROAD ST, GLEN ALLEN, VA 23060 EDUCATION 7/10/2012 46 07/06/12 © Copyright this and previous years by Data Blueprint - all rights reserved!
47.
TITLE
Data Warehousing, Analytics, BI, Meta-Integration Technologies ü ü ü ü ü ü ü ü ü ü ü ü ü ü ü ü ü ü ü ü ü ü ü ü ü ü ü ü ü ü ü ü ü ü ü ü ü ü ü ü ü ü from The DAMA Guide to the Data Management Body of Knowledge © 2009 by DAMA International PRODUCED BY CLASSIFICATION DATE SLIDE DATA BLUEPRINT 10124-C W. BROAD ST, GLEN ALLEN, VA 23060 EDUCATION 7/10/2012 47 07/06/12 © Copyright this and previous years by Data Blueprint - all rights reserved!
48.
TITLE
Goals and Principles 1. To support and enable effective business analysis and decision making by knowledgeable workers 2. To build and maintain the environment/infrastructure to support business intelligence activities, specifically leveraging all the other data management functions to cost effectively deliver consistent integrated data for all BI activities from The DAMA Guide to the Data Management Body of Knowledge © 2009 by DAMA International PRODUCED BY CLASSIFICATION DATE SLIDE DATA BLUEPRINT 10124-C W. BROAD ST, GLEN ALLEN, VA 23060 EDUCATION 7/10/2012 48 07/06/12 © Copyright this and previous years by Data Blueprint - all rights reserved!
49.
TITLE
Activities • Understand BI information needs • Define and maintain the DW/BI architecture • Process data for BI • Implement data warehouse/data marts • Implement BI tools and user interfaces • Monitor and tune DW processes • Monitor and tune BI activities and performance from The DAMA Guide to the Data Management Body of Knowledge © 2009 by DAMA International PRODUCED BY CLASSIFICATION DATE SLIDE DATA BLUEPRINT 10124-C W. BROAD ST, GLEN ALLEN, VA 23060 EDUCATION 7/10/2012 49 07/06/12 © Copyright this and previous years by Data Blueprint - all rights reserved!
50.
TITLE
Primary Deliverables • DW/BI Architecture • Data warehouses, marts, cubes etc. • Dashboards-scorecards • Analytic applications • Files extracts (for data mining, etc.) • BI tools and user environments • Data quality feedback mechanism/loop from The DAMA Guide to the Data Management Body of Knowledge © 2009 by DAMA International PRODUCED BY CLASSIFICATION DATE SLIDE DATA BLUEPRINT 10124-C W. BROAD ST, GLEN ALLEN, VA 23060 EDUCATION 7/10/2012 50 07/06/12 © Copyright this and previous years by Data Blueprint - all rights reserved!
51.
TITLE
Roles and Responsibilities Suppliers: Consumers: • Executives/managers • Application Users • Subject Matter Experts • BI and Reporting • Data governance council Users • Information consumers • Application • Data producers Developers and Architects • Data architects/analysts • Data integration Participants: Developers and • Executives/managers Architects • Data Stewards • BI Vendors and • Subject Matter Experts Architects • Data Architects • Vendors, Customers • Data Analysts and Partners • Application Architects • Data Governance Council • Data Providers • Other BI Professionals from The DAMA Guide to the Data Management Body of Knowledge © 2009 by DAMA International PRODUCED BY CLASSIFICATION DATE SLIDE DATA BLUEPRINT 10124-C W. BROAD ST, GLEN ALLEN, VA 23060 EDUCATION 7/10/2012 51 07/06/12 © Copyright this and previous years by Data Blueprint - all rights reserved!
52.
from The DAMA
Guide to the Data Management Body of Knowledge © 2009 by DAMA International TITLE Technology • ETL • Change Management Tools • Data Modeling Tools • Data Profiling Tools • Data Cleansing Tools • Data Integration Tools • Reference Data Management Applications • Master Data Management Applications • Process Modeling Tools • Meta-data Repositories • Business Process and Rule Engines PRODUCED BY CLASSIFICATION DATE SLIDE DATA BLUEPRINT 10124-C W. BROAD ST, GLEN ALLEN, VA 23060 EDUCATION 7/10/2012 52 07/06/12 © Copyright this and previous years by Data Blueprint - all rights reserved!
53.
TITLE
Outline 1. Data management overview 2. What are DW, analytics, BI and meta- integration technologies and why are they important? 3. Top 10 causes of data warehouse failures 4. DW & architecture focus 5. Business intelligence focus 6. The use of meta models 7. DW, analytics & BI building blocks 8. Guiding principles & best practices Tweeting now: 9. Take aways, references and Q&A #dataed PRODUCED BY CLASSIFICATION DATE SLIDE DATA BLUEPRINT 10124-C W. BROAD ST, GLEN ALLEN, VA 23060 EDUCATION 7/10/2012 53 07/06/12 © Copyright this and previous years by Data Blueprint - all rights reserved!
54.
TITLE
Guiding Principles 1. Obtain executive commitment and support. 2. Secure business SMEs. 3. Be business focused and driven. Let the business drive the prioritization. 4. Demonstrate data quality is essential. 5. Provide incremental value. 6. Transparency and self service. 7. One size does not fit all: Find the right tools and products for each of your segments. 8. Think and architect globally, act and build locally. 9. Collaborate with and integrate all other data initiatives, especially those for data governance, data quality and metadata. 10. Start with the end in mind. 11. Summarize and optimize last, not first. from The DAMA Guide to the Data Management Body of Knowledge © 2009 by DAMA International PRODUCED BY CLASSIFICATION DATE SLIDE DATA BLUEPRINT 10124-C W. BROAD ST, GLEN ALLEN, VA 23060 EDUCATION 7/10/2012 54 07/06/12 © Copyright this and previous years by Data Blueprint - all rights reserved!
55.
TITLE
6 Best Practices for Data Warehousing 1. Do some initial architecture envisioning. 2. Model the details just in time (JIT). 3. Prove the architecture early. 4. Focus on usage. 5. Organize your work by requirements. 6. Active stakeholder participation. hEp://www.agiledata.org/essays/dataWarehousingBestPrac;ces.html PRODUCED BY CLASSIFICATION DATE SLIDE DATA BLUEPRINT 10124-C W. BROAD ST, GLEN ALLEN, VA 23060 EDUCATION 7/10/2012 55 07/06/12 © Copyright this and previous years by Data Blueprint - all rights reserved!
56.
TITLE
Outline 1. Data management overview 2. What are DW, analytics, BI and meta- integration technologies and why are they important? 3. Top 10 causes of data warehouse failures 4. DW & architecture focus 5. Business intelligence focus 6. The use of meta models 7. DW, analytics & BI building blocks 8. Guiding principles & best practices Tweeting now: 9. Take aways, references and Q&A #dataed PRODUCED BY CLASSIFICATION DATE SLIDE DATA BLUEPRINT 10124-C W. BROAD ST, GLEN ALLEN, VA 23060 EDUCATION 7/10/2012 56 07/06/12 © Copyright this and previous years by Data Blueprint - all rights reserved!
57.
TITLE
Summary: Data Warehousing & Business Intelligence Management from The DAMA Guide to the Data Management Body of Knowledge © 2009 by DAMA International PRODUCED BY CLASSIFICATION DATE SLIDE DATA BLUEPRINT 10124-C W. BROAD ST, GLEN ALLEN, VA 23060 EDUCATION 7/10/2012 57 07/06/12 © Copyright this and previous years by Data Blueprint - all rights reserved!
58.
TITLE
References PRODUCED BY CLASSIFICATION DATE SLIDE DATA BLUEPRINT 10124-C W. BROAD ST, GLEN ALLEN, VA 23060 EDUCATION 7/10/2012 58 07/06/12 © Copyright this and previous years by Data Blueprint - all rights reserved!
59.
TITLE
References PRODUCED BY CLASSIFICATION DATE SLIDE DATA BLUEPRINT 10124-C W. BROAD ST, GLEN ALLEN, VA 23060 EDUCATION 7/10/2012 59 07/06/12 © Copyright this and previous years by Data Blueprint - all rights reserved!
60.
TITLE
Additional References • http://www.information-management.com/infodirect/20050909/1036703-1.html • http://www.agiledata.org/essays/dataWarehousingBestPractices.html • http://www.cio.com/article/150450/ Five_Key_Business_Intelligence_Trends_You_Need_to_Know? page=2&taxonomyId=3002 • http://www.computerworld.com/s/article/9228736/ Business_Intelligence_and_analytics_Conquering_Big_Data?taxonomyId=9 • http://www.enterpriseirregulars.com/5706/the-top-10-trends-for-2010-in-analytics- business-intelligence-and-performance-management/ • http://www.itbusinessedge.com/cm/blogs/vizard/taking-the-analytics-pressure-off-the- data-warehouse/?cs=50698 • http://www.informationweek.com/news/software/bi/240001922 PRODUCED BY CLASSIFICATION DATE SLIDE DATA BLUEPRINT 10124-C W. BROAD ST, GLEN ALLEN, VA 23060 EDUCATION 7/10/2012 60 07/06/12 © Copyright this and previous years by Data Blueprint - all rights reserved!
61.
TITLE
Questions? + = It’s your turn! Use the chat feature or Twitter (#dataed) to submit your questions to Peter now. PRODUCED BY CLASSIFICATION DATE SLIDE DATA BLUEPRINT 10124-C W. BROAD ST, GLEN ALLEN, VA 23060 EDUCATION 7/10/2012 61 07/06/12 © Copyright this and previous years by Data Blueprint - all rights reserved!
62.
TITLE
Upcoming Events August Webinar: Your Documents and Other Content: Managing Unstructured Data August 14, 2012 @ 2:00 PM – 3:30 PM ET (11:00 AM-12:30 PM PT) September Webinar: Let’s Talk Metadata: Strategies and Successes September 11, 2012 @ 2:00 PM – 3:30 PM ET (11:00 AM-12:30 PM PT) Sign up here: • www.datablueprint.com/webinar-schedule • www.Dataversity.net Brought to you by: PRODUCED BY CLASSIFICATION DATE SLIDE DATA BLUEPRINT 10124-C W. BROAD ST, GLEN ALLEN, VA 23060 EDUCATION 7/10/2012 62 07/06/12 © Copyright this and previous years by Data Blueprint - all rights reserved!
Descargar ahora