SlideShare a Scribd company logo
1 of 39
The old computing is about what computers could do.  The new computing is about what people can do…  Ben Shneiderman
[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],A few facts … …  From the enterprises
A few facts … …  From our digital lives ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]
[object Object],[object Object],[object Object],[object Object],[object Object],Consequences Data owners   will   have   to :
[object Object],[object Object],[object Object],[object Object],Database perspective …  But … ,[object Object],[object Object],[object Object],Source: M. Brodie VLDB Conference 2007
[object Object],[object Object],The turning point Computer science in the 20 th  century was about perfect solutions in closed domains and applications.  Computer science in the 21 st  century will be about approximate solutions and frameworks that capture the relationships of partial solutions and requirements. Dieter Fensel
[object Object],[object Object],[object Object],[object Object],[object Object],Technology panorama
What Market strives for: ,[object Object],[object Object],[object Object],[object Object],[object Object]
Data Consolidation in Time MAINFRAMES DISTRIBUTED SYSTEMS PHYSICAL DATAWAREHOUSE FEDERATED SYSTEMS Data Marts Distributed Logical Datawarehouses From DRP … …  to Just in Time Operational Informational
Current IT Panorama ,[object Object],[object Object],[object Object]
What Vendors propose - 1 Relational   Databases   Vendors
What Vendors propose - 2 Business   Analytics   Solutions
[object Object],[object Object],QueryObject in the Market QueryObject market positioning as a database independent technology is confirmed
Vendors vs. Model Solution Technology Software License Appliance / HW Vendor Agreement Data Service MPP Architecture [Relational] Oracle Teradata Netezza  Dataupia Datallegro+MSFT Columnar Vertica SenSage ParAccel Vertica ParAccel+EMC2 GRID / Cloud AsterData [MR] Hadoop Greenplum [MR] Google [MR] Amazon Elastic Cloud [MR] Esoteric Panoratio
What is QueryObject ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]
QueryObject Architecture Prototype & Develop Command & Automate XML QueryObject Metadata Secure & Deploy Connect  Prepare Design Compile Secure Deploy Analyze Data Sources DBMS Warehouse Data Flat Files CSV Delivery ODBC JDBC EII Server HS JDBC Multi-channel Consumers Processes Connected Reporting Tools Disconnected Users Applications Engine Union Connect, Access, View  Aggregate Threshold Index A.P.I. WS A.P.I. Soap Server Data Copy Update Merge Access JDBC ODBC HTTP XML MDX
[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],How operates Data & Information Consumers Return  to details Operational query Data Services Analytical query Detailed DATA set Aggregated indexes
[object Object],[object Object],[object Object],[object Object],How QueryObject is used
[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],Add-on for DBs
[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],Data Consolidation
[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],Data Mobility
[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],Non-repudiation
Customer Perception Usability Performances
[object Object],[object Object],[object Object],[object Object],[object Object],Chart Analysis
[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],Competitive Advantages
[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],Applications … ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],QueryObject has been used with success in following markets … …  with following vertical solutions:
…  helping our Customers to: ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]
Impact on ROI and TCO ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],Increase  SLA /  Quality Reduce Costs Increase speed to market Reduce customer support requirements Increase number of users served with  the existing resources Driver Direct  SLA / Quality  Impact Indirect SLA / Quality  Impact Direct Cost Reduction Indirect Cost  Reduction Acquire new users Increase SLA for  existing users Develop new products  and services Increase  Quality of Data / Service Increase application & Technical Performance  Increase  users satisfaction Increase  loyalty of customers Improve productivity Displace costs Reduce capital  requirements
Direct Impact on Quality/SLA ,[object Object],[object Object],Acquire new users Increase SLA for  existing users Develop new products  and services
Indirect Impact on Quality/SLA ,[object Object],[object Object],[object Object],[object Object],Increase  Quality of Data/Service Increase application & Technical Performance  Increase  users satisfaction Increase  loyalty of customers
Reduction of Direct Costs ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],Improve productivity Displace costs Reduce capital  requirements
[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],Reduction of Indirect Costs Increase speed to market Reduce customer support requirements Increase number of users served with  the existing resources
Selected customers
Case Studies  ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],Advantages of QO vs Competition
Selected references
Case Studies ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],Advantages of QO vs Competition
Company Data ,[object Object],[object Object],[object Object],[object Object],[object Object],1998 ,[object Object],[object Object],2000 ,[object Object],[object Object],2002 ,[object Object],[object Object],2004 ,[object Object],[object Object],2006 ,[object Object],[object Object],2007 ,[object Object],[object Object],2008 ,[object Object],[object Object],[object Object]
Targeting Global Leadership ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],Targeting Fast Growing Demand Focused on Customer Value Fuelled by Demanding Customers Complete Market Coverage
Selected references

More Related Content

What's hot

A Successful Data Strategy for Insurers in Volatile Times (ASEAN)
A Successful Data Strategy for Insurers in Volatile Times (ASEAN)A Successful Data Strategy for Insurers in Volatile Times (ASEAN)
A Successful Data Strategy for Insurers in Volatile Times (ASEAN)Denodo
 
Analyst Webinar: Best Practices In Enabling Data-Driven Decision Making
Analyst Webinar: Best Practices In Enabling Data-Driven Decision MakingAnalyst Webinar: Best Practices In Enabling Data-Driven Decision Making
Analyst Webinar: Best Practices In Enabling Data-Driven Decision MakingDenodo
 
Fast Data Strategy Houston Roadshow Presentation
Fast Data Strategy Houston Roadshow PresentationFast Data Strategy Houston Roadshow Presentation
Fast Data Strategy Houston Roadshow PresentationDenodo
 
Why Data Virtualization? An Introduction.
Why Data Virtualization? An Introduction.Why Data Virtualization? An Introduction.
Why Data Virtualization? An Introduction.Denodo
 
Deutsche Telekom on Big Data
Deutsche Telekom on Big DataDeutsche Telekom on Big Data
Deutsche Telekom on Big DataDataWorks Summit
 
Dell Technology World - IT as a Business - Multi-Cloud Strategy is your Product
Dell Technology World - IT as a Business - Multi-Cloud Strategy is your ProductDell Technology World - IT as a Business - Multi-Cloud Strategy is your Product
Dell Technology World - IT as a Business - Multi-Cloud Strategy is your ProductManuel "Manny" Rodriguez-Perez
 
Gartner Cool Vendor Report 2014
Gartner Cool Vendor Report 2014Gartner Cool Vendor Report 2014
Gartner Cool Vendor Report 2014jenjermain
 
Big data ibm keynote d advani presentation
Big data ibm keynote d advani presentationBig data ibm keynote d advani presentation
Big data ibm keynote d advani presentationMassTLC
 
To mesh or mess up your data organisation - Jochem van Grondelle (Prosus/OLX ...
To mesh or mess up your data organisation - Jochem van Grondelle (Prosus/OLX ...To mesh or mess up your data organisation - Jochem van Grondelle (Prosus/OLX ...
To mesh or mess up your data organisation - Jochem van Grondelle (Prosus/OLX ...Jochem van Grondelle
 
Multi-Cloud Integration with Data Virtualization (ASEAN)
Multi-Cloud Integration with Data Virtualization (ASEAN)Multi-Cloud Integration with Data Virtualization (ASEAN)
Multi-Cloud Integration with Data Virtualization (ASEAN)Denodo
 
Big data analytics beyond beer and diapers
Big data analytics   beyond beer and diapersBig data analytics   beyond beer and diapers
Big data analytics beyond beer and diapersKai Zhao
 
Redefining Data Analytics Through Search
Redefining Data Analytics Through SearchRedefining Data Analytics Through Search
Redefining Data Analytics Through SearchConnexica
 
The technology of the business data lake
The technology of the business data lakeThe technology of the business data lake
The technology of the business data lakeCapgemini
 
Klarna Tech Talk - Mind the Data!
Klarna Tech Talk - Mind the Data!Klarna Tech Talk - Mind the Data!
Klarna Tech Talk - Mind the Data!Jeffrey T. Pollock
 
Top 8 cataloged recommendations to manage your rf is effectively. converted
Top 8 cataloged recommendations to manage your rf is effectively. convertedTop 8 cataloged recommendations to manage your rf is effectively. converted
Top 8 cataloged recommendations to manage your rf is effectively. convertediFieldsmart Technologies
 
Connecting Home/Building, Life and Car..The Importance of Insurance Risk Moni...
Connecting Home/Building, Life and Car..The Importance of Insurance Risk Moni...Connecting Home/Building, Life and Car..The Importance of Insurance Risk Moni...
Connecting Home/Building, Life and Car..The Importance of Insurance Risk Moni...DataWorks Summit
 
Future of Data Strategy (ASEAN)
Future of Data Strategy (ASEAN)Future of Data Strategy (ASEAN)
Future of Data Strategy (ASEAN)Denodo
 
BarbaraZigmanResume 2016
BarbaraZigmanResume 2016BarbaraZigmanResume 2016
BarbaraZigmanResume 2016bzigman
 
Data fabric and VMware
Data fabric and VMwareData fabric and VMware
Data fabric and VMwareVMware vFabric
 

What's hot (20)

A Successful Data Strategy for Insurers in Volatile Times (ASEAN)
A Successful Data Strategy for Insurers in Volatile Times (ASEAN)A Successful Data Strategy for Insurers in Volatile Times (ASEAN)
A Successful Data Strategy for Insurers in Volatile Times (ASEAN)
 
Analyst Webinar: Best Practices In Enabling Data-Driven Decision Making
Analyst Webinar: Best Practices In Enabling Data-Driven Decision MakingAnalyst Webinar: Best Practices In Enabling Data-Driven Decision Making
Analyst Webinar: Best Practices In Enabling Data-Driven Decision Making
 
Fast Data Strategy Houston Roadshow Presentation
Fast Data Strategy Houston Roadshow PresentationFast Data Strategy Houston Roadshow Presentation
Fast Data Strategy Houston Roadshow Presentation
 
Why Data Virtualization? An Introduction.
Why Data Virtualization? An Introduction.Why Data Virtualization? An Introduction.
Why Data Virtualization? An Introduction.
 
Deutsche Telekom on Big Data
Deutsche Telekom on Big DataDeutsche Telekom on Big Data
Deutsche Telekom on Big Data
 
Dell Technology World - IT as a Business - Multi-Cloud Strategy is your Product
Dell Technology World - IT as a Business - Multi-Cloud Strategy is your ProductDell Technology World - IT as a Business - Multi-Cloud Strategy is your Product
Dell Technology World - IT as a Business - Multi-Cloud Strategy is your Product
 
Gartner Cool Vendor Report 2014
Gartner Cool Vendor Report 2014Gartner Cool Vendor Report 2014
Gartner Cool Vendor Report 2014
 
Big data ibm keynote d advani presentation
Big data ibm keynote d advani presentationBig data ibm keynote d advani presentation
Big data ibm keynote d advani presentation
 
To mesh or mess up your data organisation - Jochem van Grondelle (Prosus/OLX ...
To mesh or mess up your data organisation - Jochem van Grondelle (Prosus/OLX ...To mesh or mess up your data organisation - Jochem van Grondelle (Prosus/OLX ...
To mesh or mess up your data organisation - Jochem van Grondelle (Prosus/OLX ...
 
Multi-Cloud Integration with Data Virtualization (ASEAN)
Multi-Cloud Integration with Data Virtualization (ASEAN)Multi-Cloud Integration with Data Virtualization (ASEAN)
Multi-Cloud Integration with Data Virtualization (ASEAN)
 
Big data analytics beyond beer and diapers
Big data analytics   beyond beer and diapersBig data analytics   beyond beer and diapers
Big data analytics beyond beer and diapers
 
Redefining Data Analytics Through Search
Redefining Data Analytics Through SearchRedefining Data Analytics Through Search
Redefining Data Analytics Through Search
 
Data Federation
Data FederationData Federation
Data Federation
 
The technology of the business data lake
The technology of the business data lakeThe technology of the business data lake
The technology of the business data lake
 
Klarna Tech Talk - Mind the Data!
Klarna Tech Talk - Mind the Data!Klarna Tech Talk - Mind the Data!
Klarna Tech Talk - Mind the Data!
 
Top 8 cataloged recommendations to manage your rf is effectively. converted
Top 8 cataloged recommendations to manage your rf is effectively. convertedTop 8 cataloged recommendations to manage your rf is effectively. converted
Top 8 cataloged recommendations to manage your rf is effectively. converted
 
Connecting Home/Building, Life and Car..The Importance of Insurance Risk Moni...
Connecting Home/Building, Life and Car..The Importance of Insurance Risk Moni...Connecting Home/Building, Life and Car..The Importance of Insurance Risk Moni...
Connecting Home/Building, Life and Car..The Importance of Insurance Risk Moni...
 
Future of Data Strategy (ASEAN)
Future of Data Strategy (ASEAN)Future of Data Strategy (ASEAN)
Future of Data Strategy (ASEAN)
 
BarbaraZigmanResume 2016
BarbaraZigmanResume 2016BarbaraZigmanResume 2016
BarbaraZigmanResume 2016
 
Data fabric and VMware
Data fabric and VMwareData fabric and VMware
Data fabric and VMware
 

Viewers also liked

Numbers: the very hungry Caterpillar
Numbers: the very hungry CaterpillarNumbers: the very hungry Caterpillar
Numbers: the very hungry CaterpillarColladoLaura
 
кумедні закони сша (учнівська презентація)
кумедні закони сша (учнівська презентація)кумедні закони сша (учнівська презентація)
кумедні закони сша (учнівська презентація)Allya5
 
Diversity of sorghum (sorghum bicolor l. moench) germplasm from tanzania
Diversity of sorghum (sorghum bicolor l. moench) germplasm from tanzaniaDiversity of sorghum (sorghum bicolor l. moench) germplasm from tanzania
Diversity of sorghum (sorghum bicolor l. moench) germplasm from tanzaniaAlexander Decker
 
BMO Capital Markets Global Metals & Mining Conference
BMO Capital Markets Global Metals & Mining ConferenceBMO Capital Markets Global Metals & Mining Conference
BMO Capital Markets Global Metals & Mining Conferenceyamanagold2015
 
Pakistan's Energy Challenges: a Seminar Supported by USAID
Pakistan's Energy Challenges: a Seminar Supported by USAIDPakistan's Energy Challenges: a Seminar Supported by USAID
Pakistan's Energy Challenges: a Seminar Supported by USAIDAlliance To Save Energy
 
Sheila Pember Product Portfolio
Sheila Pember Product PortfolioSheila Pember Product Portfolio
Sheila Pember Product PortfolioSheila Pember
 
Surfer avec la vague mobile (Claude Rapoport) - Belgian Insurance Conference ...
Surfer avec la vague mobile (Claude Rapoport) - Belgian Insurance Conference ...Surfer avec la vague mobile (Claude Rapoport) - Belgian Insurance Conference ...
Surfer avec la vague mobile (Claude Rapoport) - Belgian Insurance Conference ...Wolters Kluwer Belgium
 
Bruce Breier January 28 The Organized Executive Workshop Flyer
Bruce Breier January 28   The Organized Executive Workshop FlyerBruce Breier January 28   The Organized Executive Workshop Flyer
Bruce Breier January 28 The Organized Executive Workshop FlyerPRFulton
 
Charkha Development Communication Network
Charkha Development Communication NetworkCharkha Development Communication Network
Charkha Development Communication NetworkDasra
 
Final hh - 15.4.13 - gibsonburg 1 clte release
Final   hh - 15.4.13 - gibsonburg 1 clte releaseFinal   hh - 15.4.13 - gibsonburg 1 clte release
Final hh - 15.4.13 - gibsonburg 1 clte releasehmhollingsworth
 
Things I Believe Now That I'm Old - Ross Tuck - Codemotion Milan 2014
Things I Believe Now That I'm Old - Ross Tuck - Codemotion Milan 2014Things I Believe Now That I'm Old - Ross Tuck - Codemotion Milan 2014
Things I Believe Now That I'm Old - Ross Tuck - Codemotion Milan 2014Codemotion
 

Viewers also liked (15)

Recruitment assignment
Recruitment assignmentRecruitment assignment
Recruitment assignment
 
Numbers: the very hungry Caterpillar
Numbers: the very hungry CaterpillarNumbers: the very hungry Caterpillar
Numbers: the very hungry Caterpillar
 
Map by 2015 startup
Map by 2015 startupMap by 2015 startup
Map by 2015 startup
 
кумедні закони сша (учнівська презентація)
кумедні закони сша (учнівська презентація)кумедні закони сша (учнівська презентація)
кумедні закони сша (учнівська презентація)
 
Diversity of sorghum (sorghum bicolor l. moench) germplasm from tanzania
Diversity of sorghum (sorghum bicolor l. moench) germplasm from tanzaniaDiversity of sorghum (sorghum bicolor l. moench) germplasm from tanzania
Diversity of sorghum (sorghum bicolor l. moench) germplasm from tanzania
 
BMO Capital Markets Global Metals & Mining Conference
BMO Capital Markets Global Metals & Mining ConferenceBMO Capital Markets Global Metals & Mining Conference
BMO Capital Markets Global Metals & Mining Conference
 
Pakistan's Energy Challenges: a Seminar Supported by USAID
Pakistan's Energy Challenges: a Seminar Supported by USAIDPakistan's Energy Challenges: a Seminar Supported by USAID
Pakistan's Energy Challenges: a Seminar Supported by USAID
 
Podcasting
PodcastingPodcasting
Podcasting
 
Sheila Pember Product Portfolio
Sheila Pember Product PortfolioSheila Pember Product Portfolio
Sheila Pember Product Portfolio
 
Surfer avec la vague mobile (Claude Rapoport) - Belgian Insurance Conference ...
Surfer avec la vague mobile (Claude Rapoport) - Belgian Insurance Conference ...Surfer avec la vague mobile (Claude Rapoport) - Belgian Insurance Conference ...
Surfer avec la vague mobile (Claude Rapoport) - Belgian Insurance Conference ...
 
Bruce Breier January 28 The Organized Executive Workshop Flyer
Bruce Breier January 28   The Organized Executive Workshop FlyerBruce Breier January 28   The Organized Executive Workshop Flyer
Bruce Breier January 28 The Organized Executive Workshop Flyer
 
Charkha Development Communication Network
Charkha Development Communication NetworkCharkha Development Communication Network
Charkha Development Communication Network
 
Final hh - 15.4.13 - gibsonburg 1 clte release
Final   hh - 15.4.13 - gibsonburg 1 clte releaseFinal   hh - 15.4.13 - gibsonburg 1 clte release
Final hh - 15.4.13 - gibsonburg 1 clte release
 
Jak stat
Jak statJak stat
Jak stat
 
Things I Believe Now That I'm Old - Ross Tuck - Codemotion Milan 2014
Things I Believe Now That I'm Old - Ross Tuck - Codemotion Milan 2014Things I Believe Now That I'm Old - Ross Tuck - Codemotion Milan 2014
Things I Believe Now That I'm Old - Ross Tuck - Codemotion Milan 2014
 

Similar to Qo Introduction V2

Bridging the Last Mile: Getting Data to the People Who Need It
Bridging the Last Mile: Getting Data to the People Who Need ItBridging the Last Mile: Getting Data to the People Who Need It
Bridging the Last Mile: Getting Data to the People Who Need ItDenodo
 
Modern Data Management for Federal Modernization
Modern Data Management for Federal ModernizationModern Data Management for Federal Modernization
Modern Data Management for Federal ModernizationDenodo
 
The Double win business transformation and in-year ROI and TCO reduction
The Double win business transformation and in-year ROI and TCO reductionThe Double win business transformation and in-year ROI and TCO reduction
The Double win business transformation and in-year ROI and TCO reductionMongoDB
 
DAMA & Denodo Webinar: Modernizing Data Architecture Using Data Virtualization
DAMA & Denodo Webinar: Modernizing Data Architecture Using Data Virtualization DAMA & Denodo Webinar: Modernizing Data Architecture Using Data Virtualization
DAMA & Denodo Webinar: Modernizing Data Architecture Using Data Virtualization Denodo
 
Data Virtualization. An Introduction (ASEAN)
Data Virtualization. An Introduction (ASEAN)Data Virtualization. An Introduction (ASEAN)
Data Virtualization. An Introduction (ASEAN)Denodo
 
Introduction Big Data
Introduction Big DataIntroduction Big Data
Introduction Big DataFrank Kienle
 
Data Virtualization: Introduction and Business Value (UK)
Data Virtualization: Introduction and Business Value (UK)Data Virtualization: Introduction and Business Value (UK)
Data Virtualization: Introduction and Business Value (UK)Denodo
 
How to Swiftly Operationalize the Data Lake for Advanced Analytics Using a Lo...
How to Swiftly Operationalize the Data Lake for Advanced Analytics Using a Lo...How to Swiftly Operationalize the Data Lake for Advanced Analytics Using a Lo...
How to Swiftly Operationalize the Data Lake for Advanced Analytics Using a Lo...Denodo
 
Bridging the Last Mile: Getting Data to the People Who Need It (APAC)
Bridging the Last Mile: Getting Data to the People Who Need It (APAC)Bridging the Last Mile: Getting Data to the People Who Need It (APAC)
Bridging the Last Mile: Getting Data to the People Who Need It (APAC)Denodo
 
A Logical Architecture is Always a Flexible Architecture (ASEAN)
A Logical Architecture is Always a Flexible Architecture (ASEAN)A Logical Architecture is Always a Flexible Architecture (ASEAN)
A Logical Architecture is Always a Flexible Architecture (ASEAN)Denodo
 
Dell Digital Transformation Through AI and Data Analytics Webinar
Dell Digital Transformation Through AI and  Data Analytics WebinarDell Digital Transformation Through AI and  Data Analytics Webinar
Dell Digital Transformation Through AI and Data Analytics WebinarBill Wong
 
Building a Single Logical Data Lake: For Advanced Analytics, Data Science, an...
Building a Single Logical Data Lake: For Advanced Analytics, Data Science, an...Building a Single Logical Data Lake: For Advanced Analytics, Data Science, an...
Building a Single Logical Data Lake: For Advanced Analytics, Data Science, an...Denodo
 
Data Mesh in Azure using Cloud Scale Analytics (WAF)
Data Mesh in Azure using Cloud Scale Analytics (WAF)Data Mesh in Azure using Cloud Scale Analytics (WAF)
Data Mesh in Azure using Cloud Scale Analytics (WAF)Nathan Bijnens
 
Beyond the Data Lake - Matthias Korn, Technical Consultant at Data Virtuality
Beyond the Data Lake - Matthias Korn, Technical Consultant at Data VirtualityBeyond the Data Lake - Matthias Korn, Technical Consultant at Data Virtuality
Beyond the Data Lake - Matthias Korn, Technical Consultant at Data VirtualityDataconomy Media
 
Data Fabric - Why Should Organizations Implement a Logical and Not a Physical...
Data Fabric - Why Should Organizations Implement a Logical and Not a Physical...Data Fabric - Why Should Organizations Implement a Logical and Not a Physical...
Data Fabric - Why Should Organizations Implement a Logical and Not a Physical...Denodo
 
Microsoft SQL Server - Parallel Data Warehouse Presentation
Microsoft SQL Server - Parallel Data Warehouse PresentationMicrosoft SQL Server - Parallel Data Warehouse Presentation
Microsoft SQL Server - Parallel Data Warehouse PresentationMicrosoft Private Cloud
 
Customer value analysis of big data products
Customer value analysis of big data productsCustomer value analysis of big data products
Customer value analysis of big data productsVikas Sardana
 
Modernize your Infrastructure and Mobilize Your Data
Modernize your Infrastructure and Mobilize Your DataModernize your Infrastructure and Mobilize Your Data
Modernize your Infrastructure and Mobilize Your DataPrecisely
 
There are 250 Database products, are you running the right one?
There are 250 Database products, are you running the right one?There are 250 Database products, are you running the right one?
There are 250 Database products, are you running the right one?Aerospike, Inc.
 
Data Mesh using Microsoft Fabric
Data Mesh using Microsoft FabricData Mesh using Microsoft Fabric
Data Mesh using Microsoft FabricNathan Bijnens
 

Similar to Qo Introduction V2 (20)

Bridging the Last Mile: Getting Data to the People Who Need It
Bridging the Last Mile: Getting Data to the People Who Need ItBridging the Last Mile: Getting Data to the People Who Need It
Bridging the Last Mile: Getting Data to the People Who Need It
 
Modern Data Management for Federal Modernization
Modern Data Management for Federal ModernizationModern Data Management for Federal Modernization
Modern Data Management for Federal Modernization
 
The Double win business transformation and in-year ROI and TCO reduction
The Double win business transformation and in-year ROI and TCO reductionThe Double win business transformation and in-year ROI and TCO reduction
The Double win business transformation and in-year ROI and TCO reduction
 
DAMA & Denodo Webinar: Modernizing Data Architecture Using Data Virtualization
DAMA & Denodo Webinar: Modernizing Data Architecture Using Data Virtualization DAMA & Denodo Webinar: Modernizing Data Architecture Using Data Virtualization
DAMA & Denodo Webinar: Modernizing Data Architecture Using Data Virtualization
 
Data Virtualization. An Introduction (ASEAN)
Data Virtualization. An Introduction (ASEAN)Data Virtualization. An Introduction (ASEAN)
Data Virtualization. An Introduction (ASEAN)
 
Introduction Big Data
Introduction Big DataIntroduction Big Data
Introduction Big Data
 
Data Virtualization: Introduction and Business Value (UK)
Data Virtualization: Introduction and Business Value (UK)Data Virtualization: Introduction and Business Value (UK)
Data Virtualization: Introduction and Business Value (UK)
 
How to Swiftly Operationalize the Data Lake for Advanced Analytics Using a Lo...
How to Swiftly Operationalize the Data Lake for Advanced Analytics Using a Lo...How to Swiftly Operationalize the Data Lake for Advanced Analytics Using a Lo...
How to Swiftly Operationalize the Data Lake for Advanced Analytics Using a Lo...
 
Bridging the Last Mile: Getting Data to the People Who Need It (APAC)
Bridging the Last Mile: Getting Data to the People Who Need It (APAC)Bridging the Last Mile: Getting Data to the People Who Need It (APAC)
Bridging the Last Mile: Getting Data to the People Who Need It (APAC)
 
A Logical Architecture is Always a Flexible Architecture (ASEAN)
A Logical Architecture is Always a Flexible Architecture (ASEAN)A Logical Architecture is Always a Flexible Architecture (ASEAN)
A Logical Architecture is Always a Flexible Architecture (ASEAN)
 
Dell Digital Transformation Through AI and Data Analytics Webinar
Dell Digital Transformation Through AI and  Data Analytics WebinarDell Digital Transformation Through AI and  Data Analytics Webinar
Dell Digital Transformation Through AI and Data Analytics Webinar
 
Building a Single Logical Data Lake: For Advanced Analytics, Data Science, an...
Building a Single Logical Data Lake: For Advanced Analytics, Data Science, an...Building a Single Logical Data Lake: For Advanced Analytics, Data Science, an...
Building a Single Logical Data Lake: For Advanced Analytics, Data Science, an...
 
Data Mesh in Azure using Cloud Scale Analytics (WAF)
Data Mesh in Azure using Cloud Scale Analytics (WAF)Data Mesh in Azure using Cloud Scale Analytics (WAF)
Data Mesh in Azure using Cloud Scale Analytics (WAF)
 
Beyond the Data Lake - Matthias Korn, Technical Consultant at Data Virtuality
Beyond the Data Lake - Matthias Korn, Technical Consultant at Data VirtualityBeyond the Data Lake - Matthias Korn, Technical Consultant at Data Virtuality
Beyond the Data Lake - Matthias Korn, Technical Consultant at Data Virtuality
 
Data Fabric - Why Should Organizations Implement a Logical and Not a Physical...
Data Fabric - Why Should Organizations Implement a Logical and Not a Physical...Data Fabric - Why Should Organizations Implement a Logical and Not a Physical...
Data Fabric - Why Should Organizations Implement a Logical and Not a Physical...
 
Microsoft SQL Server - Parallel Data Warehouse Presentation
Microsoft SQL Server - Parallel Data Warehouse PresentationMicrosoft SQL Server - Parallel Data Warehouse Presentation
Microsoft SQL Server - Parallel Data Warehouse Presentation
 
Customer value analysis of big data products
Customer value analysis of big data productsCustomer value analysis of big data products
Customer value analysis of big data products
 
Modernize your Infrastructure and Mobilize Your Data
Modernize your Infrastructure and Mobilize Your DataModernize your Infrastructure and Mobilize Your Data
Modernize your Infrastructure and Mobilize Your Data
 
There are 250 Database products, are you running the right one?
There are 250 Database products, are you running the right one?There are 250 Database products, are you running the right one?
There are 250 Database products, are you running the right one?
 
Data Mesh using Microsoft Fabric
Data Mesh using Microsoft FabricData Mesh using Microsoft Fabric
Data Mesh using Microsoft Fabric
 

Qo Introduction V2

  • 1. The old computing is about what computers could do. The new computing is about what people can do… Ben Shneiderman
  • 2.
  • 3.
  • 4.
  • 5.
  • 6.
  • 7.
  • 8.
  • 9. Data Consolidation in Time MAINFRAMES DISTRIBUTED SYSTEMS PHYSICAL DATAWAREHOUSE FEDERATED SYSTEMS Data Marts Distributed Logical Datawarehouses From DRP … … to Just in Time Operational Informational
  • 10.
  • 11. What Vendors propose - 1 Relational Databases Vendors
  • 12. What Vendors propose - 2 Business Analytics Solutions
  • 13.
  • 14. Vendors vs. Model Solution Technology Software License Appliance / HW Vendor Agreement Data Service MPP Architecture [Relational] Oracle Teradata Netezza Dataupia Datallegro+MSFT Columnar Vertica SenSage ParAccel Vertica ParAccel+EMC2 GRID / Cloud AsterData [MR] Hadoop Greenplum [MR] Google [MR] Amazon Elastic Cloud [MR] Esoteric Panoratio
  • 15.
  • 16. QueryObject Architecture Prototype & Develop Command & Automate XML QueryObject Metadata Secure & Deploy Connect Prepare Design Compile Secure Deploy Analyze Data Sources DBMS Warehouse Data Flat Files CSV Delivery ODBC JDBC EII Server HS JDBC Multi-channel Consumers Processes Connected Reporting Tools Disconnected Users Applications Engine Union Connect, Access, View Aggregate Threshold Index A.P.I. WS A.P.I. Soap Server Data Copy Update Merge Access JDBC ODBC HTTP XML MDX
  • 17.
  • 18.
  • 19.
  • 20.
  • 21.
  • 22.
  • 24.
  • 25.
  • 26.
  • 27.
  • 28.
  • 29.
  • 30.
  • 31.
  • 32.
  • 34.
  • 36.
  • 37.
  • 38.

Editor's Notes

  1. 60
  2. E' un compilatore di Informazioni che attraverso un processo batch genera tre set di oggetti: Dati di dettaglio - QueryObject ReadyFile Aggregati - QueryObect Holograms Relazioni tra aggregati e dati di dettaglio - QueryObject Keyback Con QueryObject è facile Distribuire Integrare e Pubblicare Informazione. L'informazione è il risultato di un'elaborazione dati gestionale. Il QueryObject abilita lo sviluppo di soluzioni analitiche e di Portali Informazionali Web Based.