Suche senden
Hochladen
Oracle BI06 From Volume To Value - Presentation
•
0 gefällt mir
•
1,428 views
David Walker
Folgen
Technologie
Business
Diashow-Anzeige
Melden
Teilen
Diashow-Anzeige
Melden
Teilen
1 von 30
Jetzt herunterladen
Downloaden Sie, um offline zu lesen
Empfohlen
UKOUG06 - An Introduction To Process Neutral Data Modelling - Presentation
UKOUG06 - An Introduction To Process Neutral Data Modelling - Presentation
David Walker
White Paper - How Data Works
White Paper - How Data Works
David Walker
Openworld04 - Information Delivery - The Change In Data Management At Network...
Openworld04 - Information Delivery - The Change In Data Management At Network...
David Walker
Big Data Week 2016 - Worldpay - Deploying Secure Clusters
Big Data Week 2016 - Worldpay - Deploying Secure Clusters
David Walker
Wallchart - Data Warehouse Documentation Roadmap
Wallchart - Data Warehouse Documentation Roadmap
David Walker
Data Works Summit Munich 2017 - Worldpay - Multi Tenancy Clusters
Data Works Summit Munich 2017 - Worldpay - Multi Tenancy Clusters
David Walker
Storage Characteristics Of Call Data Records In Column Store Databases
Storage Characteristics Of Call Data Records In Column Store Databases
David Walker
The principles of the business data lake
The principles of the business data lake
Capgemini
Empfohlen
UKOUG06 - An Introduction To Process Neutral Data Modelling - Presentation
UKOUG06 - An Introduction To Process Neutral Data Modelling - Presentation
David Walker
White Paper - How Data Works
White Paper - How Data Works
David Walker
Openworld04 - Information Delivery - The Change In Data Management At Network...
Openworld04 - Information Delivery - The Change In Data Management At Network...
David Walker
Big Data Week 2016 - Worldpay - Deploying Secure Clusters
Big Data Week 2016 - Worldpay - Deploying Secure Clusters
David Walker
Wallchart - Data Warehouse Documentation Roadmap
Wallchart - Data Warehouse Documentation Roadmap
David Walker
Data Works Summit Munich 2017 - Worldpay - Multi Tenancy Clusters
Data Works Summit Munich 2017 - Worldpay - Multi Tenancy Clusters
David Walker
Storage Characteristics Of Call Data Records In Column Store Databases
Storage Characteristics Of Call Data Records In Column Store Databases
David Walker
The principles of the business data lake
The principles of the business data lake
Capgemini
Microsoft SQL Azure - Scaling Out with SQL Azure Whitepaper
Microsoft SQL Azure - Scaling Out with SQL Azure Whitepaper
Microsoft Private Cloud
Data Governance, Compliance and Security in Hadoop with Cloudera
Data Governance, Compliance and Security in Hadoop with Cloudera
Caserta
Tera stream ETL
Tera stream ETL
Nguyễn Nguyễn Mạnh Trung
The technology of the business data lake
The technology of the business data lake
Capgemini
Data warehouse 101-fundamentals-
Data warehouse 101-fundamentals-
AshishGuleria
Core banking Closure bank day OSWA meetup 2018-Alexander Petrov Oslo
Core banking Closure bank day OSWA meetup 2018-Alexander Petrov Oslo
Alexander Petrov
White paper making an-operational_data_store_(ods)_the_center_of_your_data_...
White paper making an-operational_data_store_(ods)_the_center_of_your_data_...
Eric Javier Espino Man
Data Vault Overview
Data Vault Overview
Empowered Holdings, LLC
Data Warehouse Tutorial For Beginners | Data Warehouse Concepts | Data Wareho...
Data Warehouse Tutorial For Beginners | Data Warehouse Concepts | Data Wareho...
Edureka!
Flash session -streaming--ses1243-lon
Flash session -streaming--ses1243-lon
Jeffrey T. Pollock
Teradata Overview
Teradata Overview
Teradata
Logical Data Lakes: From Single Purpose to Multipurpose Data Lakes (APAC)
Logical Data Lakes: From Single Purpose to Multipurpose Data Lakes (APAC)
Denodo
Rev_3 Components of a Data Warehouse
Rev_3 Components of a Data Warehouse
Ryan Andhavarapu
Data-Centric Infrastructure for Agile Development
Data-Centric Infrastructure for Agile Development
DATAVERSITY
Teradata introduction
Teradata introduction
Rameejmd
Data Vault: Data Warehouse Design Goes Agile
Data Vault: Data Warehouse Design Goes Agile
Daniel Upton
Master Data Management (MDM) 101 & Oracle Trading Community Architecture (TCA...
Master Data Management (MDM) 101 & Oracle Trading Community Architecture (TCA...
Rhapsody Technologies, Inc.
Data-Ed Online Presents: Data Warehouse Strategies
Data-Ed Online Presents: Data Warehouse Strategies
DATAVERSITY
Benefits of the Azure Cloud
Benefits of the Azure Cloud
Caserta
Data Vault and DW2.0
Data Vault and DW2.0
Empowered Holdings, LLC
ETIS09 - Black Swans and White Elephants - Presentation
ETIS09 - Black Swans and White Elephants - Presentation
David Walker
Data science - o co chodzi?
Data science - o co chodzi?
Pawel Jarosz
Weitere ähnliche Inhalte
Was ist angesagt?
Microsoft SQL Azure - Scaling Out with SQL Azure Whitepaper
Microsoft SQL Azure - Scaling Out with SQL Azure Whitepaper
Microsoft Private Cloud
Data Governance, Compliance and Security in Hadoop with Cloudera
Data Governance, Compliance and Security in Hadoop with Cloudera
Caserta
Tera stream ETL
Tera stream ETL
Nguyễn Nguyễn Mạnh Trung
The technology of the business data lake
The technology of the business data lake
Capgemini
Data warehouse 101-fundamentals-
Data warehouse 101-fundamentals-
AshishGuleria
Core banking Closure bank day OSWA meetup 2018-Alexander Petrov Oslo
Core banking Closure bank day OSWA meetup 2018-Alexander Petrov Oslo
Alexander Petrov
White paper making an-operational_data_store_(ods)_the_center_of_your_data_...
White paper making an-operational_data_store_(ods)_the_center_of_your_data_...
Eric Javier Espino Man
Data Vault Overview
Data Vault Overview
Empowered Holdings, LLC
Data Warehouse Tutorial For Beginners | Data Warehouse Concepts | Data Wareho...
Data Warehouse Tutorial For Beginners | Data Warehouse Concepts | Data Wareho...
Edureka!
Flash session -streaming--ses1243-lon
Flash session -streaming--ses1243-lon
Jeffrey T. Pollock
Teradata Overview
Teradata Overview
Teradata
Logical Data Lakes: From Single Purpose to Multipurpose Data Lakes (APAC)
Logical Data Lakes: From Single Purpose to Multipurpose Data Lakes (APAC)
Denodo
Rev_3 Components of a Data Warehouse
Rev_3 Components of a Data Warehouse
Ryan Andhavarapu
Data-Centric Infrastructure for Agile Development
Data-Centric Infrastructure for Agile Development
DATAVERSITY
Teradata introduction
Teradata introduction
Rameejmd
Data Vault: Data Warehouse Design Goes Agile
Data Vault: Data Warehouse Design Goes Agile
Daniel Upton
Master Data Management (MDM) 101 & Oracle Trading Community Architecture (TCA...
Master Data Management (MDM) 101 & Oracle Trading Community Architecture (TCA...
Rhapsody Technologies, Inc.
Data-Ed Online Presents: Data Warehouse Strategies
Data-Ed Online Presents: Data Warehouse Strategies
DATAVERSITY
Benefits of the Azure Cloud
Benefits of the Azure Cloud
Caserta
Data Vault and DW2.0
Data Vault and DW2.0
Empowered Holdings, LLC
Was ist angesagt?
(20)
Microsoft SQL Azure - Scaling Out with SQL Azure Whitepaper
Microsoft SQL Azure - Scaling Out with SQL Azure Whitepaper
Data Governance, Compliance and Security in Hadoop with Cloudera
Data Governance, Compliance and Security in Hadoop with Cloudera
Tera stream ETL
Tera stream ETL
The technology of the business data lake
The technology of the business data lake
Data warehouse 101-fundamentals-
Data warehouse 101-fundamentals-
Core banking Closure bank day OSWA meetup 2018-Alexander Petrov Oslo
Core banking Closure bank day OSWA meetup 2018-Alexander Petrov Oslo
White paper making an-operational_data_store_(ods)_the_center_of_your_data_...
White paper making an-operational_data_store_(ods)_the_center_of_your_data_...
Data Vault Overview
Data Vault Overview
Data Warehouse Tutorial For Beginners | Data Warehouse Concepts | Data Wareho...
Data Warehouse Tutorial For Beginners | Data Warehouse Concepts | Data Wareho...
Flash session -streaming--ses1243-lon
Flash session -streaming--ses1243-lon
Teradata Overview
Teradata Overview
Logical Data Lakes: From Single Purpose to Multipurpose Data Lakes (APAC)
Logical Data Lakes: From Single Purpose to Multipurpose Data Lakes (APAC)
Rev_3 Components of a Data Warehouse
Rev_3 Components of a Data Warehouse
Data-Centric Infrastructure for Agile Development
Data-Centric Infrastructure for Agile Development
Teradata introduction
Teradata introduction
Data Vault: Data Warehouse Design Goes Agile
Data Vault: Data Warehouse Design Goes Agile
Master Data Management (MDM) 101 & Oracle Trading Community Architecture (TCA...
Master Data Management (MDM) 101 & Oracle Trading Community Architecture (TCA...
Data-Ed Online Presents: Data Warehouse Strategies
Data-Ed Online Presents: Data Warehouse Strategies
Benefits of the Azure Cloud
Benefits of the Azure Cloud
Data Vault and DW2.0
Data Vault and DW2.0
Andere mochten auch
ETIS09 - Black Swans and White Elephants - Presentation
ETIS09 - Black Swans and White Elephants - Presentation
David Walker
Data science - o co chodzi?
Data science - o co chodzi?
Pawel Jarosz
ETIS11 - Enterprise Metadata Management
ETIS11 - Enterprise Metadata Management
David Walker
19
19
BakanaScans
IRM09 - What Can IT Really Deliver For BI and DW - Presentation
IRM09 - What Can IT Really Deliver For BI and DW - Presentation
David Walker
Przyszłość IT. Marcin Wesołowski.
Przyszłość IT. Marcin Wesołowski.
Eureka Technology Park / Eureka Hub
ETIS11 - Agile Business Intelligence - Presentation
ETIS11 - Agile Business Intelligence - Presentation
David Walker
Zarządzanie energią
Zarządzanie energią
Eureka Technology Park / Eureka Hub
IOUG93 - Technical Architecture for the Data Warehouse - Presentation
IOUG93 - Technical Architecture for the Data Warehouse - Presentation
David Walker
Data Driven Insurance Underwriting (Dutch Language Version)
Data Driven Insurance Underwriting (Dutch Language Version)
David Walker
An introduction to social network data
An introduction to social network data
David Walker
Implementing Netezza Spatial
Implementing Netezza Spatial
David Walker
BI SaaS & Cloud Strategies for Telcos
BI SaaS & Cloud Strategies for Telcos
David Walker
ETIS10 - BI Governance Models & Strategies - Presentation
ETIS10 - BI Governance Models & Strategies - Presentation
David Walker
Big Data and Data Virtualization
Big Data and Data Virtualization
Kenneth Peeples
ETIS09 - Data Quality: Common Problems & Checks - Presentation
ETIS09 - Data Quality: Common Problems & Checks - Presentation
David Walker
Data Driven Insurance Underwriting
Data Driven Insurance Underwriting
David Walker
ETIS10 - BI Business Requirements - Presentation
ETIS10 - BI Business Requirements - Presentation
David Walker
An introduction to data virtualization in business intelligence
An introduction to data virtualization in business intelligence
David Walker
Gathering Business Requirements for Data Warehouses
Gathering Business Requirements for Data Warehouses
David Walker
Andere mochten auch
(20)
ETIS09 - Black Swans and White Elephants - Presentation
ETIS09 - Black Swans and White Elephants - Presentation
Data science - o co chodzi?
Data science - o co chodzi?
ETIS11 - Enterprise Metadata Management
ETIS11 - Enterprise Metadata Management
19
19
IRM09 - What Can IT Really Deliver For BI and DW - Presentation
IRM09 - What Can IT Really Deliver For BI and DW - Presentation
Przyszłość IT. Marcin Wesołowski.
Przyszłość IT. Marcin Wesołowski.
ETIS11 - Agile Business Intelligence - Presentation
ETIS11 - Agile Business Intelligence - Presentation
Zarządzanie energią
Zarządzanie energią
IOUG93 - Technical Architecture for the Data Warehouse - Presentation
IOUG93 - Technical Architecture for the Data Warehouse - Presentation
Data Driven Insurance Underwriting (Dutch Language Version)
Data Driven Insurance Underwriting (Dutch Language Version)
An introduction to social network data
An introduction to social network data
Implementing Netezza Spatial
Implementing Netezza Spatial
BI SaaS & Cloud Strategies for Telcos
BI SaaS & Cloud Strategies for Telcos
ETIS10 - BI Governance Models & Strategies - Presentation
ETIS10 - BI Governance Models & Strategies - Presentation
Big Data and Data Virtualization
Big Data and Data Virtualization
ETIS09 - Data Quality: Common Problems & Checks - Presentation
ETIS09 - Data Quality: Common Problems & Checks - Presentation
Data Driven Insurance Underwriting
Data Driven Insurance Underwriting
ETIS10 - BI Business Requirements - Presentation
ETIS10 - BI Business Requirements - Presentation
An introduction to data virtualization in business intelligence
An introduction to data virtualization in business intelligence
Gathering Business Requirements for Data Warehouses
Gathering Business Requirements for Data Warehouses
Ähnlich wie Oracle BI06 From Volume To Value - Presentation
Clare Somerville Trish O’Kane Data in Databases
Clare Somerville Trish O’Kane Data in Databases
Future Perfect 2012
The Death of the Star Schema
The Death of the Star Schema
DATAVERSITY
Presentation by Ivan Schotsmans (DV Community) at the Data Vault Modelling an...
Presentation by Ivan Schotsmans (DV Community) at the Data Vault Modelling an...
Patrick Van Renterghem
A beginners guide to Cloudera Hadoop
A beginners guide to Cloudera Hadoop
David Yahalom
Data Mesh using Microsoft Fabric
Data Mesh using Microsoft Fabric
Nathan Bijnens
Cliff Denhom, Stream Restoration Inc., "Datashed Overview and Q&A"
Cliff Denhom, Stream Restoration Inc., "Datashed Overview and Q&A"
Michael Hewitt, GISP
The Data Lake and Getting Buisnesses the Big Data Insights They Need
The Data Lake and Getting Buisnesses the Big Data Insights They Need
Dunn Solutions Group
Using Data Platforms That Are Fit-For-Purpose
Using Data Platforms That Are Fit-For-Purpose
DATAVERSITY
Data Architecture Best Practices for Advanced Analytics
Data Architecture Best Practices for Advanced Analytics
DATAVERSITY
Advances And Research Directions In Data-Warehousing Technology
Advances And Research Directions In Data-Warehousing Technology
Kate Campbell
Unconstrained Analytics in the Age of Data – Delivering High-Performance Anal...
Unconstrained Analytics in the Age of Data – Delivering High-Performance Anal...
Xpand IT
536855_Singh_Resume_Final_V2
536855_Singh_Resume_Final_V2
Bhopal Singh
Big data oracle_introduccion
Big data oracle_introduccion
Fran Navarro
Think Big - How to Design a Big Data Information Architecture
Think Big - How to Design a Big Data Information Architecture
Inside Analysis
How Financial Institutions Are Leveraging Data Virtualization to Overcome the...
How Financial Institutions Are Leveraging Data Virtualization to Overcome the...
Denodo
Citizens Bank: Data Lake Implementation – Selecting BigInsights ViON Spark/Ha...
Citizens Bank: Data Lake Implementation – Selecting BigInsights ViON Spark/Ha...
Seeling Cheung
Building a Logical Data Fabric using Data Virtualization (ASEAN)
Building a Logical Data Fabric using Data Virtualization (ASEAN)
Denodo
ADV Slides: When and How Data Lakes Fit into a Modern Data Architecture
ADV Slides: When and How Data Lakes Fit into a Modern Data Architecture
DATAVERSITY
Dwdm unit 1-2016-Data ingarehousing
Dwdm unit 1-2016-Data ingarehousing
Dhilsath Fathima
Enterprise Data Management - Data Lake - A Perspective
Enterprise Data Management - Data Lake - A Perspective
Saurav Mukherjee
Ähnlich wie Oracle BI06 From Volume To Value - Presentation
(20)
Clare Somerville Trish O’Kane Data in Databases
Clare Somerville Trish O’Kane Data in Databases
The Death of the Star Schema
The Death of the Star Schema
Presentation by Ivan Schotsmans (DV Community) at the Data Vault Modelling an...
Presentation by Ivan Schotsmans (DV Community) at the Data Vault Modelling an...
A beginners guide to Cloudera Hadoop
A beginners guide to Cloudera Hadoop
Data Mesh using Microsoft Fabric
Data Mesh using Microsoft Fabric
Cliff Denhom, Stream Restoration Inc., "Datashed Overview and Q&A"
Cliff Denhom, Stream Restoration Inc., "Datashed Overview and Q&A"
The Data Lake and Getting Buisnesses the Big Data Insights They Need
The Data Lake and Getting Buisnesses the Big Data Insights They Need
Using Data Platforms That Are Fit-For-Purpose
Using Data Platforms That Are Fit-For-Purpose
Data Architecture Best Practices for Advanced Analytics
Data Architecture Best Practices for Advanced Analytics
Advances And Research Directions In Data-Warehousing Technology
Advances And Research Directions In Data-Warehousing Technology
Unconstrained Analytics in the Age of Data – Delivering High-Performance Anal...
Unconstrained Analytics in the Age of Data – Delivering High-Performance Anal...
536855_Singh_Resume_Final_V2
536855_Singh_Resume_Final_V2
Big data oracle_introduccion
Big data oracle_introduccion
Think Big - How to Design a Big Data Information Architecture
Think Big - How to Design a Big Data Information Architecture
How Financial Institutions Are Leveraging Data Virtualization to Overcome the...
How Financial Institutions Are Leveraging Data Virtualization to Overcome the...
Citizens Bank: Data Lake Implementation – Selecting BigInsights ViON Spark/Ha...
Citizens Bank: Data Lake Implementation – Selecting BigInsights ViON Spark/Ha...
Building a Logical Data Fabric using Data Virtualization (ASEAN)
Building a Logical Data Fabric using Data Virtualization (ASEAN)
ADV Slides: When and How Data Lakes Fit into a Modern Data Architecture
ADV Slides: When and How Data Lakes Fit into a Modern Data Architecture
Dwdm unit 1-2016-Data ingarehousing
Dwdm unit 1-2016-Data ingarehousing
Enterprise Data Management - Data Lake - A Perspective
Enterprise Data Management - Data Lake - A Perspective
Mehr von David Walker
Moving To MicroServices
Moving To MicroServices
David Walker
Data Works Berlin 2018 - Worldpay - PCI Compliance
Data Works Berlin 2018 - Worldpay - PCI Compliance
David Walker
Big Data Analytics 2017 - Worldpay - Empowering Payments
Big Data Analytics 2017 - Worldpay - Empowering Payments
David Walker
Building an analytical platform
Building an analytical platform
David Walker
Data warehousing change in a challenging environment
Data warehousing change in a challenging environment
David Walker
Building a data warehouse of call data records
Building a data warehouse of call data records
David Walker
Struggling with data management
Struggling with data management
David Walker
A linux mac os x command line interface
A linux mac os x command line interface
David Walker
Connections a life in the day of - david walker
Connections a life in the day of - david walker
David Walker
Conspectus data warehousing appliances – fad or future
Conspectus data warehousing appliances – fad or future
David Walker
Using the right data model in a data mart
Using the right data model in a data mart
David Walker
Mehr von David Walker
(11)
Moving To MicroServices
Moving To MicroServices
Data Works Berlin 2018 - Worldpay - PCI Compliance
Data Works Berlin 2018 - Worldpay - PCI Compliance
Big Data Analytics 2017 - Worldpay - Empowering Payments
Big Data Analytics 2017 - Worldpay - Empowering Payments
Building an analytical platform
Building an analytical platform
Data warehousing change in a challenging environment
Data warehousing change in a challenging environment
Building a data warehouse of call data records
Building a data warehouse of call data records
Struggling with data management
Struggling with data management
A linux mac os x command line interface
A linux mac os x command line interface
Connections a life in the day of - david walker
Connections a life in the day of - david walker
Conspectus data warehousing appliances – fad or future
Conspectus data warehousing appliances – fad or future
Using the right data model in a data mart
Using the right data model in a data mart
Kürzlich hochgeladen
Navigating the Deluge_ Dubai Floods and the Resilience of Dubai International...
Navigating the Deluge_ Dubai Floods and the Resilience of Dubai International...
Orbitshub
Polkadot JAM Slides - Token2049 - By Dr. Gavin Wood
Polkadot JAM Slides - Token2049 - By Dr. Gavin Wood
Juan lago vázquez
ICT role in 21st century education and its challenges
ICT role in 21st century education and its challenges
rafiqahmad00786416
WSO2's API Vision: Unifying Control, Empowering Developers
WSO2's API Vision: Unifying Control, Empowering Developers
WSO2
Web Form Automation for Bonterra Impact Management (fka Social Solutions Apri...
Web Form Automation for Bonterra Impact Management (fka Social Solutions Apri...
Jeffrey Haguewood
"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
CNIC Information System with Pakdata Cf In Pakistan
CNIC Information System with Pakdata Cf In Pakistan
danishmna97
Exploring Multimodal Embeddings with Milvus
Exploring Multimodal Embeddings with Milvus
Zilliz
Understanding the FAA Part 107 License ..
Understanding the FAA Part 107 License ..
Christopher Logan Kennedy
AWS Community Day CPH - Three problems of Terraform
AWS Community Day CPH - Three problems of Terraform
Andrey Devyatkin
DBX First Quarter 2024 Investor Presentation
DBX First Quarter 2024 Investor Presentation
Dropbox
Mcleodganj Call Girls 🥰 8617370543 Service Offer VIP Hot Model
Mcleodganj Call Girls 🥰 8617370543 Service Offer VIP Hot Model
Deepika Singh
Strategies for Landing an Oracle DBA Job as a Fresher
Strategies for Landing an Oracle DBA Job as a Fresher
Remote DBA Services
Finding Java's Hidden Performance Traps @ DevoxxUK 2024
Finding Java's Hidden Performance Traps @ DevoxxUK 2024
Victor Rentea
MINDCTI Revenue Release Quarter One 2024
MINDCTI Revenue Release Quarter One 2024
MIND CTI
Strategize a Smooth Tenant-to-tenant Migration and Copilot Takeoff
Strategize a Smooth Tenant-to-tenant Migration and Copilot Takeoff
sammart93
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
Introduction to Multilingual Retrieval Augmented Generation (RAG)
Introduction to Multilingual Retrieval Augmented Generation (RAG)
Zilliz
+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...
+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...
?#DUbAI#??##{{(☎️+971_581248768%)**%*]'#abortion pills for sale in dubai@
presentation ICT roal in 21st century education
presentation ICT roal in 21st century education
jfdjdjcjdnsjd
Kürzlich hochgeladen
(20)
Navigating the Deluge_ Dubai Floods and the Resilience of Dubai International...
Navigating the Deluge_ Dubai Floods and the Resilience of Dubai International...
Polkadot JAM Slides - Token2049 - By Dr. Gavin Wood
Polkadot JAM Slides - Token2049 - By Dr. Gavin Wood
ICT role in 21st century education and its challenges
ICT role in 21st century education and its challenges
WSO2's API Vision: Unifying Control, Empowering Developers
WSO2's API Vision: Unifying Control, Empowering Developers
Web Form Automation for Bonterra Impact Management (fka Social Solutions Apri...
Web Form Automation for Bonterra Impact Management (fka Social Solutions Apri...
"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 ...
CNIC Information System with Pakdata Cf In Pakistan
CNIC Information System with Pakdata Cf In Pakistan
Exploring Multimodal Embeddings with Milvus
Exploring Multimodal Embeddings with Milvus
Understanding the FAA Part 107 License ..
Understanding the FAA Part 107 License ..
AWS Community Day CPH - Three problems of Terraform
AWS Community Day CPH - Three problems of Terraform
DBX First Quarter 2024 Investor Presentation
DBX First Quarter 2024 Investor Presentation
Mcleodganj Call Girls 🥰 8617370543 Service Offer VIP Hot Model
Mcleodganj Call Girls 🥰 8617370543 Service Offer VIP Hot Model
Strategies for Landing an Oracle DBA Job as a Fresher
Strategies for Landing an Oracle DBA Job as a Fresher
Finding Java's Hidden Performance Traps @ DevoxxUK 2024
Finding Java's Hidden Performance Traps @ DevoxxUK 2024
MINDCTI Revenue Release Quarter One 2024
MINDCTI Revenue Release Quarter One 2024
Strategize a Smooth Tenant-to-tenant Migration and Copilot Takeoff
Strategize a Smooth Tenant-to-tenant Migration and Copilot Takeoff
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 ...
Introduction to Multilingual Retrieval Augmented Generation (RAG)
Introduction to Multilingual Retrieval Augmented Generation (RAG)
+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...
+971581248768>> SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHA...
presentation ICT roal in 21st century education
presentation ICT roal in 21st century education
Oracle BI06 From Volume To Value - Presentation
1.
Data Management &
Warehousing From Volume to Value: What Next Generation Telco Data Warehouses Must Do to Provide Value to the Business David M. Walker davidw@datamgmt.com © 2006 Data Management & Warehousing Oracle Business Intelligence Page 1 of 30 Speaker: David M. Walker Thames Valley Park 30 March 2006
2.
What do we
have ? •! A European Mobile Telco: –! Data warehouse has over 150 Billion CDRs –! Over 2000 registered users •! But: –! It takes 20 minutes to get answers to even the most basic question which should only take seconds –! Less than 100 people use it every day and they all hate the reporting tools –! Operations and support costs are soaring –! Can’t get changes to the system through fast enough © 2006 Data Management & Warehousing Oracle Business Intelligence Page 2 of 30 Speaker: David M. Walker Thames Valley Park 30 March 2006
3.
What are the
engagement issues ? •! It doesn’t have anything for my role –! Don’t let the data warehouse sit outside a business process •! Identify where a report changes/helps –! People don’t need to know that they are using the data warehouse •! Ensure that it is integrated in their daily activities –! Pro-actively educate people about what is available •! Most people see data warehouses as something remote •! I’ve already got a report that does this –! Normally the response from the spreadsheet jockey •! But how accurate is it and how long does it take to produce ? © 2006 Data Management & Warehousing Oracle Business Intelligence Page 3 of 30 Speaker: David M. Walker Thames Valley Park 30 March 2006
4.
What are the
users issues ? •! I don’t know what information is available! –! Users are unwilling to search too hard for what is available –! Users are unable to comment quickly and easily on what is available –! Users ‘just’ want ‘the right report’ fed to them •! The report I got was wrong! –! Published data profiles tell users where the data issues are –! Helps users understand the requirement for data cleansing back into operational systems (GIGO) –! Nobody available to quickly modify a report to what the user actually wants © 2006 Data Management & Warehousing Oracle Business Intelligence Page 4 of 30 Speaker: David M. Walker Thames Valley Park 30 March 2006
5.
What are the
users issues (cont.) ? •! I asked them for this new report and they told me it would be two months! –! Who helps users to understand what is already available ? –! Who is available develop a report quickly? •! I went on a training course for the reporting tool but that was six months ago and I can’t remember how to use it now! –! If users are going to use a tool they should be frequent users with someone to support them –! If not, then provide resource to do the work for them © 2006 Data Management & Warehousing Oracle Business Intelligence Page 5 of 30 Speaker: David M. Walker Thames Valley Park 30 March 2006
6.
Five things that
can help •! Exploitation/QuickService Teams •! Data Profiling & Data Cleansing •! Process Integration •! Business Information Portals •! RSS - Really Simple Syndication © 2006 Data Management & Warehousing Oracle Business Intelligence Page 6 of 30 Speaker: David M. Walker Thames Valley Park 30 March 2006
7.
© 2006 Data
Management & Warehousing Oracle Business Intelligence Page 7 of 30 Speaker: David M. Walker Thames Valley Park 30 March 2006
8.
Exploitation/QuickService Teams •! Have
a (small) team that is ‘here to help’ –! Available via: •! Telephone •! Chat Room •! Web Conference •! Issue Tracking System –! Technology reduces costs of running a team and makes the data warehouse feel more accessible •! Will respond quickly to urgent requests –! Even if the answer is it will take sometime to fulfil the total requirement here’s what we can do now © 2006 Data Management & Warehousing Oracle Business Intelligence Page 8 of 30 Speaker: David M. Walker Thames Valley Park 30 March 2006
9.
Exploitation/QuickService Teams (2) •!
Look for heavy users and heavy queries and find ways to help them –! Cut out unused parts of the data warehouse –! Optimise response of major users –! Revise archiving strategy based on required data –! Ultimately reduces operational and support costs •! Visit frequent callers to the helpdesk –! Re-enforce training –! Gather new requirements –! Pre-empt the need to call the helpdesk •! But basically provide proactive support © 2006 Data Management & Warehousing Oracle Business Intelligence Page 9 of 30 Speaker: David M. Walker Thames Valley Park 30 March 2006
10.
Direct Access
to the Quick Service Team What’s related develops understanding Pre-empt FAQ’s Quick Service Team can monitor and respond © 2006 Data Management & Warehousing Oracle Business Intelligence Page 10 of 30 Speaker: David M. Walker Thames Valley Park 30 March 2006
11.
Data Profiling •! Look
at your source systems and understand what the data quality issues are –! Which required fields are not populated ? –! Which fields always have a default value ? –! Do all customers have sufficient contact details ? –! Etc. •! Detect and capture issues in the Data Warehouse –! Often related to issues of integration across systems •! Set up targets to improve the data quality –! Especially in the source system –! Publish the metrics and identify responsible owners © 2006 Data Management & Warehousing Oracle Business Intelligence Page 11 of 30 Speaker: David M. Walker Thames Valley Park 30 March 2006
12.
Allow users to
see related data quality © 2006 Data Management & Warehousing Oracle Business Intelligence Page 12 of 30 Speaker: David M. Walker Thames Valley Park 30 March 2006
13.
© 2006 Data
Management & Warehousing Oracle Business Intelligence Page 13 of 30 Speaker: David M. Walker Thames Valley Park 30 March 2006
14.
Data Cleansing •! Fix
data in the source systems –! A data quality issue fixed in the source will have benefits for other areas and often highlight business process issues •! Embed a call to the cleaning tool in all ETL –! Rule based cleansers simple and easy to implement –! Add the call even if there is no current requirement –! Use a metadata driven tool so new rules can be added –! Track the success rate of the results –! BUT: Maintain copies of the original data © 2006 Data Management & Warehousing Oracle Business Intelligence Page 14 of 30 Speaker: David M. Walker Thames Valley Park 30 March 2006
15.
Example Data Cleansing
Issues •! Standardisation of text –! Prevents correct aggregation –! Multiple spellings •! e.g. Zürich, Zuerich, Zurich => Zurich, Rd => Road –! Spaces •! e.g. David_ _Walker is not the same as David_Walker –! Standardization of case •! E.g. David Walker => DAVID WALKER, Zurich => ZURICH •! Range validation if dates –! 13-Mar-0006 becomes 13-Mar-2006 © 2006 Data Management & Warehousing Oracle Business Intelligence Page 15 of 30 Speaker: David M. Walker Thames Valley Park 30 March 2006
16.
More Data Cleansing
Issues •! Mapping of codes & translation –! 01 means ‘Fixed Line’ in one system and ‘Roaming’ in another –! A code meant one thing for a period of time and then it’s use was changed to mean another thing after a certain date •! Overcome System Defaults –! 80% or all customers are MALE •! Actually the default is MALE and most operators just tab over the field –! Date of Birth is nearly always empty •! Optional field in source system – change to mandatory –! Date of Birth is 01-01-1900 •! Mandatory field with no range checking and no option for declined © 2006 Data Management & Warehousing Oracle Business Intelligence Page 16 of 30 Speaker: David M. Walker Thames Valley Park 30 March 2006
17.
Process Integration •! Put
the data warehouse into the process rather than sitting to one side –! Use it to allow customers to compare price plans online •! But restrict price plans available based on profile –! Trigger on-line offers and customised content when customers log into the website –! Add web ‘popup’ pages to existing internal applications •! Call centre gets an ‘image’ of the person they are talking to © 2006 Data Management & Warehousing Oracle Business Intelligence Page 17 of 30 Speaker: David M. Walker Thames Valley Park 30 March 2006
18.
Process Integration •! Put
the data warehouse into the process rather than sitting to one side –! Use it to allow customers to compare price plans onlinePlan: Price Prepay 5 Stop Churn: No •!Last Bill (View): price £0.50 available based on profile But restrict plans –! Trigger on-line offers9776 911 Last Call (Detail): 0118 and customised content when Last Contact: 20-Mar-2006 customers log into the website Next Best Offer: Text pack 50 –! Add web ‘popup’ 3 ! Open Cases (View): Dropped Calls: pages to existing internal ! Teenager applications Network Quality: !! Handset Type: ! ‘image’ •! Call centre gets an Texter 100of the person they are talking to © 2006 Data Management & Warehousing Oracle Business Intelligence Page 18 of 30 Speaker: David M. Walker Thames Valley Park 30 March 2006
19.
Process Integration •! Put
the data warehouse into the process rather than sitting to one side –! Use it to allow customers to compare price plans online Plan: Price Domestic 100 Stop Churn: Yes •! Last Bill (View): But restrict price plans available based on profile £37.50 Last Call (Detail): 07990 594 372 –! Trigger on-line offers and customised content when Last Contact: 10-Jan-2003 customers log into Handset +£50 Next Best Offer: the website Open Cases (View): 0 –! Add web Calls: Dropped ‘popup’ pages to existing internal """ Single Working Female applications Network Quality: "" Handset Type: " Cheapo X79a •! Call centre gets an ‘image’ of the person they are talking to © 2006 Data Management & Warehousing Oracle Business Intelligence Page 19 of 30 Speaker: David M. Walker Thames Valley Park 30 March 2006
20.
Process Integration •! Put
the data warehouse into the process rather than sitting to one side –! Use it to allow customers to compare price plans online Price Plan: Business 350 •! But restrict priceYes Stop Churn: plans available based on profile Last Bill (View): £180 –! Trigger on-line offers 028 911 Last Call (Detail): 07050 and customised content when Last Contact: 15-Sep-2005 customers log into the +£0 Next Best Offer: Handset website –! Add web ‘popup’None Open Cases (View): pages to existing internal Dropped Calls: !! Business User applications Network Quality: # •! Call centre gets ! Executive 3030 person they are talking to Handset Type: an ‘image’ of the © 2006 Data Management & Warehousing Oracle Business Intelligence Page 20 of 30 Speaker: David M. Walker Thames Valley Park 30 March 2006
21.
Business Information Portals •!
Single touch point –! The delivery mechanism for all business information services. •! Collaboration –! Allows users to communicate •! Synchronously (through chat & messaging) •! Asynchronously (through threaded discussion & email digests) •! Integration –! The connection of functions and data from multiple systems into new components © 2006 Data Management & Warehousing Oracle Business Intelligence Page 21 of 30 Speaker: David M. Walker Thames Valley Park 30 March 2006
22.
Business Information Portals
(2) •! Content and document management –! Services that support the full life cycle of document creation and provide mechanisms for authoring, approval, version control, scheduled publishing, indexing and searching. –! Consider a Wiki: a user editable webpage •! Personalization –! Allows users to subscribe (or be subscribed) to specific types of content and services. –! Users can also customize the look and feel of their environment. © 2006 Data Management & Warehousing Oracle Business Intelligence Page 22 of 30 Speaker: David M. Walker Thames Valley Park 30 March 2006
23.
RSS - Really
Simple Syndication •! If I could offer you only one tip for the future, RSS would be it. –! Already an inbuilt technology in most web browsers and mail clients –! Very cheap to modify existing reports to work with it –! Allows publish/subscribe to ‘news feeds’ •! These feeds would be reports by subject area –! An established technology already widely in use •! e.g. BBC, most newspapers, etc. & Podcasts –! Can easily be integrated with textual content © 2006 Data Management & Warehousing Oracle Business Intelligence Page 23 of 30 Speaker: David M. Walker Thames Valley Park 30 March 2006
24.
RSS - Really
Simple Syndication •! If I could offer you only one tip for the future, <?xml version="1.0" ?> - <rdf:RDF xmlns:rdf="http://www.w3.org/1999/02/22-rdf-syntax-ns#" xmlns=http://purl.org/rss/1.0/> RSS would be it. - <channel rdf:about="http://www.datamgmt.com/files/phpwsrssfeeds/backend3.php"> <title>Data Warehousing Knowledge Base</title> <link>http://www.datamgmt.com/</link> <description>The Data Management & Warehousing Knowledge Base provides information and techniques about the design, build –! Already an inbuilt technology in most web browsers and implementation of data warehousing solutions that we as a company use and hope that you will also find useful.</description> <dc:date>2006-03-29T14:16:50+00:00</dc:date> and mail clients <image rdf:resource="http://www.datamgmt.com/images/phpwsrssfeeds/thumbs/logo_tn.gif" /> - <items> - <rdf:Seq> –! Very cheap to modify existing reports to work with it <rdf:li resource="http://www.datamgmt.com/index.php?module=article&view=news" /> </rdf:Seq> </items> –! Allows publish/subscribe to ‘news feeds’ </channel> - <image rdf:about="http://www.datamgmt.com/images/phpwsrssfeeds/thumbs/logo_tn.gif"> <title>Data Warehousing Knowledge Base</title> •! These feeds would be reports by subject area <link>http://www.datamgmt.com/</link> <url /> –! An established technology already widely in use </image> - <item rdf:about="http://www.datamgmt.com/index.php?module=article&view=76"> <title>Data Management & Warehousing White Papers</title> •! e.g. BBC, most newspapers, etc. <link>http://www.datamgmt.com/index.php?module=article&view=76</link> <description>Data Management & Warehousing is publishing a series of white papers on topics relating to data warehousing. –! Can easily be integrated with textual content This article lists each paper and provides a synopsis<br />Updated:</description> </item> … © 2006 Data Management & Warehousing Oracle Business Intelligence Page 24 of 30 Speaker: David M. Walker Thames Valley Park 30 March 2006
25.
RSS - Really
Simple Syndication •! If I could offer you only one tip for the future, RSS would be it. –! Already an inbuilt technology in most web browsers and mail clients –! Very cheap to modify existing reports to work with it –! Allows publish/subscribe to ‘news feeds’ •! These feeds would be reports by subject area –! An established technology already widely in use •! e.g. BBC, most newspapers, etc. –! Can easily be integrated with textual content © 2006 Data Management & Warehousing Oracle Business Intelligence Page 25 of 30 Speaker: David M. Walker Thames Valley Park 30 March 2006
26.
RSS - Really
Simple Syndication •! If I could offer you only one tip for the future, RSS would be it. –! Already an inbuilt technology in most web browsers and mail clients –! Very cheap to modify existing reports to work with it –! Allows publish/subscribe to ‘news feeds’ •! These feeds would be reports by subject area –! An established technology already widely in use •! e.g. BBC, most newspapers, etc. –! Can easily be integrated with textual content © 2006 Data Management & Warehousing Oracle Business Intelligence Page 26 of 30 Speaker: David M. Walker Thames Valley Park 30 March 2006
27.
What to use
RSS for •! Publishing batch reports –! By subject area –! By user community •! Publishing requirements •! Publishing analysis •! Publishing data quality issues and reports •! Publishing merged feeds –! Reports & Data Quality issues together •! Podcasting © 2006 Data Management & Warehousing Oracle Business Intelligence Page 27 of 30 Speaker: David M. Walker Thames Valley Park 30 March 2006
28.
More than just
reporting •! Some of the biggest benefits come from the process of building the data warehouse and integrating it into the business –! Builds a better understanding of what data is available –! What the data means to the organisation –! How it can be structured to make more sense across the whole organisation. –! Where information sits in the business process © 2006 Data Management & Warehousing Oracle Business Intelligence Page 28 of 30 Speaker: David M. Walker Thames Valley Park 30 March 2006
29.
What do we
want to be ? •! A European Mobile Telco: –! Data warehouse has over 150 Billion CDRs –! Over 2000 registered users •! But: And: –! It takes 20where to get basic answers quickly and effective. –! Users know minutes to get data from to even the most –! basic question which shouldtake totakeunderstand the They know how long a report will only run, seconds data quality and can subscribe to have it delivered to them –! Less than 100 people use it every day and they all –! 100’s of people visiting the business information portal each day hatevery few directly using reporting tools, and 1000’s using the with the reporting tools –! Operationseven realising costs are soaring data without and support –! Can’t get changes to the system are targeted against the –! Operations, support costs and change through fast enough highest value returns © 2006 Data Management & Warehousing Oracle Business Intelligence Page 29 of 30 Speaker: David M. Walker Thames Valley Park 30 March 2006
30.
Data Management &
Warehousing Thank you ! •! For more information: –! Visit our website at http://www.datamgmt.com –! Call us on 07050 028 911 –! E-mail davidw@datamgmt.com Winning Teams - Great Team Players Data Management & Warehousing are proud player sponsors for the 2005/06 season of Joe Worsley, utility back row with the English Rugby Premiership Champions London Wasps. Joe has helped London Wasps win the Zurich Premiership in 2002-03, 2003-04 and 2004-05 ©as wellManagement Heineken Cup in 2003-04. Joe was also a member of the England World Cup squad of 30 2006 Data as the & Warehousing Oracle Business Intelligence Page 30 Speaker: David M. Walker Thames Valley Park 30 March 2006 and was awarded an MBE by the Queen.
Jetzt herunterladen