SlideShare a Scribd company logo
Grab some
coffee and
enjoy the
pre-show
banter
before the
top of the
hour!
H T	
  Technologies	
  	
  of	
  2015	
  
HOST:	
  
Eric	
  Kavanagh	
  
 	
  	
  THIS	
  YEAR	
  is…	
  
ANALYST:	
  
Rick	
  Sherman	
  
Managing	
  Partner,	
  	
  
Athena	
  IT	
  Solutions	
  
ANALYST:	
  
Dr.	
  Robin	
  Bloor	
  
Chief	
  Analyst,	
  	
  
The	
  Bloor	
  Group	
  
GUEST:	
  
Bob	
  Muglia	
  
CEO,	
  
Snowflake	
  Computing	
  
THE	
  LINE	
  UP	
  
INTRODUCING	
  
Rick	
  Sherman	
  
Copyright © 2015 Athena IT Solutions
Rick	
  Sherman	
  
Athena	
  IT	
  Solu4ons	
  
A	
  Revolu4onary	
  Approach	
  to	
  	
  
Modernizing	
  the	
  Data	
  Warehouse	
  
Hot	
  Technologies	
  
Rick	
  Sherman	
  
Athena	
  IT	
  Solu4ons	
  
rsherman@athena-­‐solu4ons.com	
  	
  
Slide 8 Copyright © 2015 Athena IT Solutions All rights reserved.
Modernizing the Data Warehouse
Traditional DW - Data Architecture - Hub & Spoke
Slide 9 Copyright © 2015 Athena IT Solutions All rights reserved.
Modernizing the Data Warehouse
Traditional DW – Technology Architecture – 3 Enabling Layers
Slide 10 Copyright © 2015 Athena IT Solutions All rights reserved.
Modernizing the Data Warehouse
Traditional DW – Moving Out of Its Comfort Zone
Data - Differences in origin, management & use of data
Slide 11 Copyright © 2015 Athena IT Solutions All rights reserved.
Modernizing the Data Warehouse
Traditional DW - Evolution
Databases - Differences in data structures, schemas & technologies
Slide 12 Copyright © 2015 Athena IT Solutions All rights reserved.
Modernizing the Data Warehouse
Traditional DW - Evolution
Integration - Differences in types of integration, data & technologies
Slide 13 Copyright © 2015 Athena IT Solutions All rights reserved.
Modernizing the Data Warehouse
Traditional DW – Current State of Affairs
Slide 14 Copyright © 2015 Athena IT Solutions All rights reserved.
Modernizing the Data Warehouse
Changing the Architectural Approach
Classic DW-Oriented Architecture Analytical Data Architecture (ADA)
Slide 15 Copyright © 2015 Athena IT Solutions All rights reserved.
Modernizing the Data Warehouse
Creating an Analytics-Oriented Data Architecture
Slide 16 Copyright © 2015 Athena IT Solutions All rights reserved.
Modernizing the Data Warehouse
Analytical Data Architecture (ADA)
Slide 17 Copyright © 2015 Athena IT Solutions All rights reserved.
Modernizing the Data Warehouse
Slide 18 Copyright © 2015 Athena IT Solutions All rights reserved.
Creating a Data Architecture BI & Analytics
My Background
•  Experience
ü  25 years of DW & BI experience
ü  30 years relational database experience
ü  Consulting, IT and Software Engineering
•  Consulting
ü  Business & IT Groups
ü  Software Vendors
•  Instructor
ü  Northeastern University, Graduate School of Engineering
ü  DW & BI Conferences; DW & BI Courses
•  Writer, Columnist, Blogger
ü  Book & 200+ Published Articles
ü  White papers, Webinars, Podcasts & Seminars
ü  DataDoghouse.com Blog on BI/DW industry
•  Thought Leadership:
ü  TDWI – Boston User Group Officer
ü  Boulder BI Brain Trust
INTRODUCING	
  
Dr.	
  Robin	
  Bloor	
  
Quo
Vadis?
Robin Bloor, PhD
The State of Play
Nobody is questioning the need for a
Data Warehouse
(a BI & Analytics engine)
§  Inexpensive (?)
§  Any data
§  May have metadata
§  Poor performance
§  Weak scheduling
§  Weak data mgmt
§  Security?
§  Data lake
§  Expensive
§  Prepared data
§  Will have metadata
§  Optimized
§  Optimized
§  Good data mgmt
§  Secure
§  Data workhorse
Hadoop v Data Warehouse
Hadoop DBMS/EDW
The Reasonable Conclusion
Hadoop is not a data warehouse…
At least NOT YET
§  Cloud deployments
§  CPU/GPU merging
§  Commodity servers
and storage
§  On-chip processing
§  Memory-based
architectures
§  Virtual networks
§  Parallel S/W
§  Data volumes!!
§  Hadoop + Schema on
read
§  Unstructured data
§  Event data
§  Data availability and
the market for data
§  Analytics workloads
§  Analytics tools
Dimensions of Disruption
In These Circumstances..
New database technologies and
ideas have stepped forward
The Questions?
What are the characteristics of an
appropriate data warehouse?
Should it live in the cloud?
INTRODUCING	
  
Bob	
  Muglia	
  
The	
  Archive	
  Trifecta:	
  
•  Inside	
  Analysis	
  	
  www.insideanalysis.com	
  
•  SlideShare	
  	
  www.slideshare.net/InsideAnalysis	
  
•  YouTube	
  	
  www.youtube.com/user/BloorGroup	
  
THANK	
  YOU!	
  

More Related Content

What's hot

Bridged Overview by CodeData
Bridged Overview by CodeDataBridged Overview by CodeData
Bridged Overview by CodeData
Sam Sur
 
Data Vault 2.0 Demystified: East Coast Tour
Data Vault 2.0 Demystified: East Coast TourData Vault 2.0 Demystified: East Coast Tour
Data Vault 2.0 Demystified: East Coast Tour
WhereScape
 
Sisesnse Business Intelligence Tool
Sisesnse Business Intelligence ToolSisesnse Business Intelligence Tool
Sisesnse Business Intelligence Tool
Harnoor Singh
 
Smarter Analytics: Supporting the Enterprise with Automation
Smarter Analytics: Supporting the Enterprise with AutomationSmarter Analytics: Supporting the Enterprise with Automation
Smarter Analytics: Supporting the Enterprise with Automation
Inside Analysis
 
Introduction to Data Engineering
Introduction to Data EngineeringIntroduction to Data Engineering
Introduction to Data Engineering
Vivek Aanand Ganesan
 
Data kitchen 7 agile steps - big data fest 9-18-2015
Data kitchen   7 agile steps - big data fest 9-18-2015Data kitchen   7 agile steps - big data fest 9-18-2015
Data kitchen 7 agile steps - big data fest 9-18-2015
DataKitchen
 
How Companies are Using Cloud-Based Data Visualization & Analytics to Transfo...
How Companies are Using Cloud-Based Data Visualization & Analytics to Transfo...How Companies are Using Cloud-Based Data Visualization & Analytics to Transfo...
How Companies are Using Cloud-Based Data Visualization & Analytics to Transfo...
Amazon Web Services
 
AWS Webcast - Tibco Jaspersoft
AWS Webcast - Tibco JaspersoftAWS Webcast - Tibco Jaspersoft
AWS Webcast - Tibco Jaspersoft
Amazon Web Services
 
Introduction To Data Vault - DAMA Oregon 2012
Introduction To Data Vault - DAMA Oregon 2012Introduction To Data Vault - DAMA Oregon 2012
Introduction To Data Vault - DAMA Oregon 2012
Empowered Holdings, LLC
 
Webinar: Sizing Up Object Storage for the Enterprise
Webinar: Sizing Up Object Storage for the EnterpriseWebinar: Sizing Up Object Storage for the Enterprise
Webinar: Sizing Up Object Storage for the Enterprise
Storage Switzerland
 
Big Data and Oracle - 2013
Big Data and Oracle - 2013Big Data and Oracle - 2013
Big Data and Oracle - 2013
Connor McDonald
 
Operationalizing analytics to scale
Operationalizing analytics to scaleOperationalizing analytics to scale
Operationalizing analytics to scale
Looker
 
What is Big Data Discovery, and how it complements traditional business anal...
What is Big Data Discovery, and how it complements  traditional business anal...What is Big Data Discovery, and how it complements  traditional business anal...
What is Big Data Discovery, and how it complements traditional business anal...
Mark Rittman
 
Scaling Tableau to the Enterprise: The Perks and Pitfalls of Tableau Server W...
Scaling Tableau to the Enterprise: The Perks and Pitfalls of Tableau Server W...Scaling Tableau to the Enterprise: The Perks and Pitfalls of Tableau Server W...
Scaling Tableau to the Enterprise: The Perks and Pitfalls of Tableau Server W...
Senturus
 
Cloudera Federal Forum 2014: Hadoop's Impact on the Future of Data Management
Cloudera Federal Forum 2014: Hadoop's Impact on the Future of Data ManagementCloudera Federal Forum 2014: Hadoop's Impact on the Future of Data Management
Cloudera Federal Forum 2014: Hadoop's Impact on the Future of Data Management
Cloudera, Inc.
 
Washington DC DataOps Meetup -- Nov 2019
Washington DC DataOps Meetup   -- Nov 2019Washington DC DataOps Meetup   -- Nov 2019
Washington DC DataOps Meetup -- Nov 2019
DataKitchen
 
Hadoop as a data hub featuring sears
Hadoop as a data hub featuring searsHadoop as a data hub featuring sears
Hadoop as a data hub featuring searsDianna Doan
 
Build a Big Data Warehouse on the Cloud in 30 Minutes
Build a Big Data Warehouse on the Cloud in 30 MinutesBuild a Big Data Warehouse on the Cloud in 30 Minutes
Build a Big Data Warehouse on the Cloud in 30 Minutes
Caserta
 
Andrey Okhrimets - “Data Lake and Media Asset Management. Challenges and outc...
Andrey Okhrimets - “Data Lake and Media Asset Management. Challenges and outc...Andrey Okhrimets - “Data Lake and Media Asset Management. Challenges and outc...
Andrey Okhrimets - “Data Lake and Media Asset Management. Challenges and outc...
Lviv Startup Club
 
Rolling Out Tableau to the Enterprise
Rolling Out Tableau to the EnterpriseRolling Out Tableau to the Enterprise
Rolling Out Tableau to the Enterprise
Senturus
 

What's hot (20)

Bridged Overview by CodeData
Bridged Overview by CodeDataBridged Overview by CodeData
Bridged Overview by CodeData
 
Data Vault 2.0 Demystified: East Coast Tour
Data Vault 2.0 Demystified: East Coast TourData Vault 2.0 Demystified: East Coast Tour
Data Vault 2.0 Demystified: East Coast Tour
 
Sisesnse Business Intelligence Tool
Sisesnse Business Intelligence ToolSisesnse Business Intelligence Tool
Sisesnse Business Intelligence Tool
 
Smarter Analytics: Supporting the Enterprise with Automation
Smarter Analytics: Supporting the Enterprise with AutomationSmarter Analytics: Supporting the Enterprise with Automation
Smarter Analytics: Supporting the Enterprise with Automation
 
Introduction to Data Engineering
Introduction to Data EngineeringIntroduction to Data Engineering
Introduction to Data Engineering
 
Data kitchen 7 agile steps - big data fest 9-18-2015
Data kitchen   7 agile steps - big data fest 9-18-2015Data kitchen   7 agile steps - big data fest 9-18-2015
Data kitchen 7 agile steps - big data fest 9-18-2015
 
How Companies are Using Cloud-Based Data Visualization & Analytics to Transfo...
How Companies are Using Cloud-Based Data Visualization & Analytics to Transfo...How Companies are Using Cloud-Based Data Visualization & Analytics to Transfo...
How Companies are Using Cloud-Based Data Visualization & Analytics to Transfo...
 
AWS Webcast - Tibco Jaspersoft
AWS Webcast - Tibco JaspersoftAWS Webcast - Tibco Jaspersoft
AWS Webcast - Tibco Jaspersoft
 
Introduction To Data Vault - DAMA Oregon 2012
Introduction To Data Vault - DAMA Oregon 2012Introduction To Data Vault - DAMA Oregon 2012
Introduction To Data Vault - DAMA Oregon 2012
 
Webinar: Sizing Up Object Storage for the Enterprise
Webinar: Sizing Up Object Storage for the EnterpriseWebinar: Sizing Up Object Storage for the Enterprise
Webinar: Sizing Up Object Storage for the Enterprise
 
Big Data and Oracle - 2013
Big Data and Oracle - 2013Big Data and Oracle - 2013
Big Data and Oracle - 2013
 
Operationalizing analytics to scale
Operationalizing analytics to scaleOperationalizing analytics to scale
Operationalizing analytics to scale
 
What is Big Data Discovery, and how it complements traditional business anal...
What is Big Data Discovery, and how it complements  traditional business anal...What is Big Data Discovery, and how it complements  traditional business anal...
What is Big Data Discovery, and how it complements traditional business anal...
 
Scaling Tableau to the Enterprise: The Perks and Pitfalls of Tableau Server W...
Scaling Tableau to the Enterprise: The Perks and Pitfalls of Tableau Server W...Scaling Tableau to the Enterprise: The Perks and Pitfalls of Tableau Server W...
Scaling Tableau to the Enterprise: The Perks and Pitfalls of Tableau Server W...
 
Cloudera Federal Forum 2014: Hadoop's Impact on the Future of Data Management
Cloudera Federal Forum 2014: Hadoop's Impact on the Future of Data ManagementCloudera Federal Forum 2014: Hadoop's Impact on the Future of Data Management
Cloudera Federal Forum 2014: Hadoop's Impact on the Future of Data Management
 
Washington DC DataOps Meetup -- Nov 2019
Washington DC DataOps Meetup   -- Nov 2019Washington DC DataOps Meetup   -- Nov 2019
Washington DC DataOps Meetup -- Nov 2019
 
Hadoop as a data hub featuring sears
Hadoop as a data hub featuring searsHadoop as a data hub featuring sears
Hadoop as a data hub featuring sears
 
Build a Big Data Warehouse on the Cloud in 30 Minutes
Build a Big Data Warehouse on the Cloud in 30 MinutesBuild a Big Data Warehouse on the Cloud in 30 Minutes
Build a Big Data Warehouse on the Cloud in 30 Minutes
 
Andrey Okhrimets - “Data Lake and Media Asset Management. Challenges and outc...
Andrey Okhrimets - “Data Lake and Media Asset Management. Challenges and outc...Andrey Okhrimets - “Data Lake and Media Asset Management. Challenges and outc...
Andrey Okhrimets - “Data Lake and Media Asset Management. Challenges and outc...
 
Rolling Out Tableau to the Enterprise
Rolling Out Tableau to the EnterpriseRolling Out Tableau to the Enterprise
Rolling Out Tableau to the Enterprise
 

Viewers also liked

DisrupTech - Robin Bloor (1)
DisrupTech - Robin Bloor (1)DisrupTech - Robin Bloor (1)
DisrupTech - Robin Bloor (1)
Inside Analysis
 
Introducing: A Complete Algebra of Data
Introducing: A Complete Algebra of DataIntroducing: A Complete Algebra of Data
Introducing: A Complete Algebra of Data
Inside Analysis
 
All Together Now: Connected Analytics for the Internet of Everything
All Together Now: Connected Analytics for the Internet of EverythingAll Together Now: Connected Analytics for the Internet of Everything
All Together Now: Connected Analytics for the Internet of Everything
Inside Analysis
 
The Bigger Picture: New Opportunities for the Modern Enterprise
The Bigger Picture: New Opportunities for the Modern EnterpriseThe Bigger Picture: New Opportunities for the Modern Enterprise
The Bigger Picture: New Opportunities for the Modern Enterprise
Inside Analysis
 
The Role of Data Wrangling in Driving Hadoop Adoption
The Role of Data Wrangling in Driving Hadoop AdoptionThe Role of Data Wrangling in Driving Hadoop Adoption
The Role of Data Wrangling in Driving Hadoop Adoption
Inside Analysis
 
Five Critical Success Factors for Big Data and Traditional BI
Five Critical Success Factors for Big Data and Traditional BIFive Critical Success Factors for Big Data and Traditional BI
Five Critical Success Factors for Big Data and Traditional BI
Inside Analysis
 
Empowering the Business with Agile Analytics
Empowering the Business with Agile AnalyticsEmpowering the Business with Agile Analytics
Empowering the Business with Agile Analytics
Inside Analysis
 
Agile, Automated, Aware: How to Model for Success
Agile, Automated, Aware: How to Model for SuccessAgile, Automated, Aware: How to Model for Success
Agile, Automated, Aware: How to Model for Success
Inside Analysis
 
How to Identify, Train or Become a Data Scientist
How to Identify, Train or Become a Data ScientistHow to Identify, Train or Become a Data Scientist
How to Identify, Train or Become a Data Scientist
Inside Analysis
 
Seeing Redshift: How Amazon Changed Data Warehousing Forever
Seeing Redshift: How Amazon Changed Data Warehousing ForeverSeeing Redshift: How Amazon Changed Data Warehousing Forever
Seeing Redshift: How Amazon Changed Data Warehousing Forever
Inside Analysis
 
First in Class: Optimizing the Data Lake for Tighter Integration
First in Class: Optimizing the Data Lake for Tighter IntegrationFirst in Class: Optimizing the Data Lake for Tighter Integration
First in Class: Optimizing the Data Lake for Tighter Integration
Inside Analysis
 
Technology Disruption
Technology DisruptionTechnology Disruption
Technology Disruption
Inside Analysis
 
Data Visualization and the Art of Self-Reliance
Data Visualization and the Art of Self-RelianceData Visualization and the Art of Self-Reliance
Data Visualization and the Art of Self-Reliance
Inside Analysis
 
Business plan coffee shop
Business plan coffee shopBusiness plan coffee shop
Business plan coffee shopAmol Kadu
 

Viewers also liked (14)

DisrupTech - Robin Bloor (1)
DisrupTech - Robin Bloor (1)DisrupTech - Robin Bloor (1)
DisrupTech - Robin Bloor (1)
 
Introducing: A Complete Algebra of Data
Introducing: A Complete Algebra of DataIntroducing: A Complete Algebra of Data
Introducing: A Complete Algebra of Data
 
All Together Now: Connected Analytics for the Internet of Everything
All Together Now: Connected Analytics for the Internet of EverythingAll Together Now: Connected Analytics for the Internet of Everything
All Together Now: Connected Analytics for the Internet of Everything
 
The Bigger Picture: New Opportunities for the Modern Enterprise
The Bigger Picture: New Opportunities for the Modern EnterpriseThe Bigger Picture: New Opportunities for the Modern Enterprise
The Bigger Picture: New Opportunities for the Modern Enterprise
 
The Role of Data Wrangling in Driving Hadoop Adoption
The Role of Data Wrangling in Driving Hadoop AdoptionThe Role of Data Wrangling in Driving Hadoop Adoption
The Role of Data Wrangling in Driving Hadoop Adoption
 
Five Critical Success Factors for Big Data and Traditional BI
Five Critical Success Factors for Big Data and Traditional BIFive Critical Success Factors for Big Data and Traditional BI
Five Critical Success Factors for Big Data and Traditional BI
 
Empowering the Business with Agile Analytics
Empowering the Business with Agile AnalyticsEmpowering the Business with Agile Analytics
Empowering the Business with Agile Analytics
 
Agile, Automated, Aware: How to Model for Success
Agile, Automated, Aware: How to Model for SuccessAgile, Automated, Aware: How to Model for Success
Agile, Automated, Aware: How to Model for Success
 
How to Identify, Train or Become a Data Scientist
How to Identify, Train or Become a Data ScientistHow to Identify, Train or Become a Data Scientist
How to Identify, Train or Become a Data Scientist
 
Seeing Redshift: How Amazon Changed Data Warehousing Forever
Seeing Redshift: How Amazon Changed Data Warehousing ForeverSeeing Redshift: How Amazon Changed Data Warehousing Forever
Seeing Redshift: How Amazon Changed Data Warehousing Forever
 
First in Class: Optimizing the Data Lake for Tighter Integration
First in Class: Optimizing the Data Lake for Tighter IntegrationFirst in Class: Optimizing the Data Lake for Tighter Integration
First in Class: Optimizing the Data Lake for Tighter Integration
 
Technology Disruption
Technology DisruptionTechnology Disruption
Technology Disruption
 
Data Visualization and the Art of Self-Reliance
Data Visualization and the Art of Self-RelianceData Visualization and the Art of Self-Reliance
Data Visualization and the Art of Self-Reliance
 
Business plan coffee shop
Business plan coffee shopBusiness plan coffee shop
Business plan coffee shop
 

Similar to A Revolutionary Approach to Modernizing the Data Warehouse

The Great Lakes: How to Approach a Big Data Implementation
The Great Lakes: How to Approach a Big Data ImplementationThe Great Lakes: How to Approach a Big Data Implementation
The Great Lakes: How to Approach a Big Data Implementation
Inside Analysis
 
The Maturity Model: Taking the Growing Pains Out of Hadoop
The Maturity Model: Taking the Growing Pains Out of HadoopThe Maturity Model: Taking the Growing Pains Out of Hadoop
The Maturity Model: Taking the Growing Pains Out of Hadoop
Inside Analysis
 
Presumption of Abundance: Architecting the Future of Success
Presumption of Abundance: Architecting the Future of SuccessPresumption of Abundance: Architecting the Future of Success
Presumption of Abundance: Architecting the Future of Success
Inside Analysis
 
Rethinking The Data Warehouse: Emerging Practices and Technologies to Meet To...
Rethinking The Data Warehouse: Emerging Practices and Technologies to Meet To...Rethinking The Data Warehouse: Emerging Practices and Technologies to Meet To...
Rethinking The Data Warehouse: Emerging Practices and Technologies to Meet To...
Senturus
 
Data-Ed Webinar: Data Architecture Requirements
Data-Ed Webinar: Data Architecture RequirementsData-Ed Webinar: Data Architecture Requirements
Data-Ed Webinar: Data Architecture Requirements
DATAVERSITY
 
Data-Ed: Data Architecture Requirements
Data-Ed: Data Architecture Requirements  Data-Ed: Data Architecture Requirements
Data-Ed: Data Architecture Requirements
Data Blueprint
 
Pluto7 meetup v2
Pluto7    meetup v2Pluto7    meetup v2
Pluto7 meetup v2
Manju Devadas
 
The Future of Data Management: The Enterprise Data Hub
The Future of Data Management: The Enterprise Data HubThe Future of Data Management: The Enterprise Data Hub
The Future of Data Management: The Enterprise Data HubCloudera, Inc.
 
Guru4Pro Data Vault Best Practices
Guru4Pro Data Vault Best PracticesGuru4Pro Data Vault Best Practices
Guru4Pro Data Vault Best Practices
CGI
 
The New Frontier: Optimizing Big Data Exploration
The New Frontier: Optimizing Big Data ExplorationThe New Frontier: Optimizing Big Data Exploration
The New Frontier: Optimizing Big Data Exploration
Inside Analysis
 
DELWP’s Data Lake: Investing in Asset Wealth for Public/Community Benefit – B...
DELWP’s Data Lake: Investing in Asset Wealth for Public/Community Benefit – B...DELWP’s Data Lake: Investing in Asset Wealth for Public/Community Benefit – B...
DELWP’s Data Lake: Investing in Asset Wealth for Public/Community Benefit – B...
Amazon Web Services
 
Horses for Courses: Database Roundtable
Horses for Courses: Database RoundtableHorses for Courses: Database Roundtable
Horses for Courses: Database Roundtable
Eric Kavanagh
 
Business in the Driver’s Seat – An Improved Model for Integration
Business in the Driver’s Seat – An Improved Model for IntegrationBusiness in the Driver’s Seat – An Improved Model for Integration
Business in the Driver’s Seat – An Improved Model for Integration
Inside Analysis
 
Level Up – How to Achieve Hadoop Acceleration
Level Up – How to Achieve Hadoop AccelerationLevel Up – How to Achieve Hadoop Acceleration
Level Up – How to Achieve Hadoop Acceleration
Inside Analysis
 
A Connected Data Landscape: Virtualization and the Internet of Things
A Connected Data Landscape: Virtualization and the Internet of ThingsA Connected Data Landscape: Virtualization and the Internet of Things
A Connected Data Landscape: Virtualization and the Internet of Things
Inside Analysis
 
An Ounce of Prevention: Forging Healthy BI
An Ounce of Prevention: Forging Healthy BIAn Ounce of Prevention: Forging Healthy BI
An Ounce of Prevention: Forging Healthy BI
Inside Analysis
 
A Tale of Two BI Standards
A Tale of Two BI StandardsA Tale of Two BI Standards
A Tale of Two BI Standards
Arcadia Data
 
Evolution of Big Data at Intel - Crawl, Walk and Run Approach
Evolution of Big Data at Intel - Crawl, Walk and Run ApproachEvolution of Big Data at Intel - Crawl, Walk and Run Approach
Evolution of Big Data at Intel - Crawl, Walk and Run Approach
DataWorks Summit
 
Driving Real Insights Through Data Science
Driving Real Insights Through Data ScienceDriving Real Insights Through Data Science
Driving Real Insights Through Data Science
VMware Tanzu
 
Unlocking the Value of Your Data Lake
Unlocking the Value of Your Data LakeUnlocking the Value of Your Data Lake
Unlocking the Value of Your Data Lake
DATAVERSITY
 

Similar to A Revolutionary Approach to Modernizing the Data Warehouse (20)

The Great Lakes: How to Approach a Big Data Implementation
The Great Lakes: How to Approach a Big Data ImplementationThe Great Lakes: How to Approach a Big Data Implementation
The Great Lakes: How to Approach a Big Data Implementation
 
The Maturity Model: Taking the Growing Pains Out of Hadoop
The Maturity Model: Taking the Growing Pains Out of HadoopThe Maturity Model: Taking the Growing Pains Out of Hadoop
The Maturity Model: Taking the Growing Pains Out of Hadoop
 
Presumption of Abundance: Architecting the Future of Success
Presumption of Abundance: Architecting the Future of SuccessPresumption of Abundance: Architecting the Future of Success
Presumption of Abundance: Architecting the Future of Success
 
Rethinking The Data Warehouse: Emerging Practices and Technologies to Meet To...
Rethinking The Data Warehouse: Emerging Practices and Technologies to Meet To...Rethinking The Data Warehouse: Emerging Practices and Technologies to Meet To...
Rethinking The Data Warehouse: Emerging Practices and Technologies to Meet To...
 
Data-Ed Webinar: Data Architecture Requirements
Data-Ed Webinar: Data Architecture RequirementsData-Ed Webinar: Data Architecture Requirements
Data-Ed Webinar: Data Architecture Requirements
 
Data-Ed: Data Architecture Requirements
Data-Ed: Data Architecture Requirements  Data-Ed: Data Architecture Requirements
Data-Ed: Data Architecture Requirements
 
Pluto7 meetup v2
Pluto7    meetup v2Pluto7    meetup v2
Pluto7 meetup v2
 
The Future of Data Management: The Enterprise Data Hub
The Future of Data Management: The Enterprise Data HubThe Future of Data Management: The Enterprise Data Hub
The Future of Data Management: The Enterprise Data Hub
 
Guru4Pro Data Vault Best Practices
Guru4Pro Data Vault Best PracticesGuru4Pro Data Vault Best Practices
Guru4Pro Data Vault Best Practices
 
The New Frontier: Optimizing Big Data Exploration
The New Frontier: Optimizing Big Data ExplorationThe New Frontier: Optimizing Big Data Exploration
The New Frontier: Optimizing Big Data Exploration
 
DELWP’s Data Lake: Investing in Asset Wealth for Public/Community Benefit – B...
DELWP’s Data Lake: Investing in Asset Wealth for Public/Community Benefit – B...DELWP’s Data Lake: Investing in Asset Wealth for Public/Community Benefit – B...
DELWP’s Data Lake: Investing in Asset Wealth for Public/Community Benefit – B...
 
Horses for Courses: Database Roundtable
Horses for Courses: Database RoundtableHorses for Courses: Database Roundtable
Horses for Courses: Database Roundtable
 
Business in the Driver’s Seat – An Improved Model for Integration
Business in the Driver’s Seat – An Improved Model for IntegrationBusiness in the Driver’s Seat – An Improved Model for Integration
Business in the Driver’s Seat – An Improved Model for Integration
 
Level Up – How to Achieve Hadoop Acceleration
Level Up – How to Achieve Hadoop AccelerationLevel Up – How to Achieve Hadoop Acceleration
Level Up – How to Achieve Hadoop Acceleration
 
A Connected Data Landscape: Virtualization and the Internet of Things
A Connected Data Landscape: Virtualization and the Internet of ThingsA Connected Data Landscape: Virtualization and the Internet of Things
A Connected Data Landscape: Virtualization and the Internet of Things
 
An Ounce of Prevention: Forging Healthy BI
An Ounce of Prevention: Forging Healthy BIAn Ounce of Prevention: Forging Healthy BI
An Ounce of Prevention: Forging Healthy BI
 
A Tale of Two BI Standards
A Tale of Two BI StandardsA Tale of Two BI Standards
A Tale of Two BI Standards
 
Evolution of Big Data at Intel - Crawl, Walk and Run Approach
Evolution of Big Data at Intel - Crawl, Walk and Run ApproachEvolution of Big Data at Intel - Crawl, Walk and Run Approach
Evolution of Big Data at Intel - Crawl, Walk and Run Approach
 
Driving Real Insights Through Data Science
Driving Real Insights Through Data ScienceDriving Real Insights Through Data Science
Driving Real Insights Through Data Science
 
Unlocking the Value of Your Data Lake
Unlocking the Value of Your Data LakeUnlocking the Value of Your Data Lake
Unlocking the Value of Your Data Lake
 

More from Inside Analysis

Fit For Purpose: Preventing a Big Data Letdown
Fit For Purpose: Preventing a Big Data LetdownFit For Purpose: Preventing a Big Data Letdown
Fit For Purpose: Preventing a Big Data Letdown
Inside Analysis
 
To Serve and Protect: Making Sense of Hadoop Security
To Serve and Protect: Making Sense of Hadoop Security To Serve and Protect: Making Sense of Hadoop Security
To Serve and Protect: Making Sense of Hadoop Security
Inside Analysis
 
The Hadoop Guarantee: Keeping Analytics Running On Time
The Hadoop Guarantee: Keeping Analytics Running On TimeThe Hadoop Guarantee: Keeping Analytics Running On Time
The Hadoop Guarantee: Keeping Analytics Running On Time
Inside Analysis
 
Ahead of the Stream: How to Future-Proof Real-Time Analytics
Ahead of the Stream: How to Future-Proof Real-Time AnalyticsAhead of the Stream: How to Future-Proof Real-Time Analytics
Ahead of the Stream: How to Future-Proof Real-Time Analytics
Inside Analysis
 
Goodbye, Bottlenecks: How Scale-Out and In-Memory Solve ETL
Goodbye, Bottlenecks: How Scale-Out and In-Memory Solve ETLGoodbye, Bottlenecks: How Scale-Out and In-Memory Solve ETL
Goodbye, Bottlenecks: How Scale-Out and In-Memory Solve ETL
Inside Analysis
 
The Biggest Picture: Situational Awareness on a Global Level
The Biggest Picture: Situational Awareness on a Global LevelThe Biggest Picture: Situational Awareness on a Global Level
The Biggest Picture: Situational Awareness on a Global Level
Inside Analysis
 
Structurally Sound: How to Tame Your Architecture
Structurally Sound: How to Tame Your ArchitectureStructurally Sound: How to Tame Your Architecture
Structurally Sound: How to Tame Your Architecture
Inside Analysis
 
SQL In Hadoop: Big Data Innovation Without the Risk
SQL In Hadoop: Big Data Innovation Without the RiskSQL In Hadoop: Big Data Innovation Without the Risk
SQL In Hadoop: Big Data Innovation Without the Risk
Inside Analysis
 
The Perfect Fit: Scalable Graph for Big Data
The Perfect Fit: Scalable Graph for Big DataThe Perfect Fit: Scalable Graph for Big Data
The Perfect Fit: Scalable Graph for Big Data
Inside Analysis
 
Rethinking Data Availability and Governance in a Mobile World
Rethinking Data Availability and Governance in a Mobile WorldRethinking Data Availability and Governance in a Mobile World
Rethinking Data Availability and Governance in a Mobile World
Inside Analysis
 
DisrupTech - Dave Duggal
DisrupTech - Dave DuggalDisrupTech - Dave Duggal
DisrupTech - Dave Duggal
Inside Analysis
 
Modus Operandi
Modus OperandiModus Operandi
Modus Operandi
Inside Analysis
 
Phasic Systems - Dr. Geoffrey Malafsky
Phasic Systems - Dr. Geoffrey MalafskyPhasic Systems - Dr. Geoffrey Malafsky
Phasic Systems - Dr. Geoffrey Malafsky
Inside Analysis
 
Red Hat - Sarangan Rangachari
Red Hat - Sarangan RangachariRed Hat - Sarangan Rangachari
Red Hat - Sarangan Rangachari
Inside Analysis
 
WebAction-Sami Abkay
WebAction-Sami AbkayWebAction-Sami Abkay
WebAction-Sami Abkay
Inside Analysis
 
DisrupTech 2015ek
DisrupTech 2015ekDisrupTech 2015ek
DisrupTech 2015ek
Inside Analysis
 
DisrupTech - Robin Bloor (2)
DisrupTech - Robin Bloor (2)DisrupTech - Robin Bloor (2)
DisrupTech - Robin Bloor (2)
Inside Analysis
 
Big Data Refinery: Distilling Value for User-Driven Analytics
Big Data Refinery: Distilling Value for User-Driven AnalyticsBig Data Refinery: Distilling Value for User-Driven Analytics
Big Data Refinery: Distilling Value for User-Driven Analytics
Inside Analysis
 
Understanding What’s Possible: Getting Business Value from Big Data Quickly
Understanding What’s Possible: Getting Business Value from Big Data QuicklyUnderstanding What’s Possible: Getting Business Value from Big Data Quickly
Understanding What’s Possible: Getting Business Value from Big Data Quickly
Inside Analysis
 
The New Simple: Predictive Analytics for the Mainstream
The New Simple: Predictive Analytics for the Mainstream The New Simple: Predictive Analytics for the Mainstream
The New Simple: Predictive Analytics for the Mainstream
Inside Analysis
 

More from Inside Analysis (20)

Fit For Purpose: Preventing a Big Data Letdown
Fit For Purpose: Preventing a Big Data LetdownFit For Purpose: Preventing a Big Data Letdown
Fit For Purpose: Preventing a Big Data Letdown
 
To Serve and Protect: Making Sense of Hadoop Security
To Serve and Protect: Making Sense of Hadoop Security To Serve and Protect: Making Sense of Hadoop Security
To Serve and Protect: Making Sense of Hadoop Security
 
The Hadoop Guarantee: Keeping Analytics Running On Time
The Hadoop Guarantee: Keeping Analytics Running On TimeThe Hadoop Guarantee: Keeping Analytics Running On Time
The Hadoop Guarantee: Keeping Analytics Running On Time
 
Ahead of the Stream: How to Future-Proof Real-Time Analytics
Ahead of the Stream: How to Future-Proof Real-Time AnalyticsAhead of the Stream: How to Future-Proof Real-Time Analytics
Ahead of the Stream: How to Future-Proof Real-Time Analytics
 
Goodbye, Bottlenecks: How Scale-Out and In-Memory Solve ETL
Goodbye, Bottlenecks: How Scale-Out and In-Memory Solve ETLGoodbye, Bottlenecks: How Scale-Out and In-Memory Solve ETL
Goodbye, Bottlenecks: How Scale-Out and In-Memory Solve ETL
 
The Biggest Picture: Situational Awareness on a Global Level
The Biggest Picture: Situational Awareness on a Global LevelThe Biggest Picture: Situational Awareness on a Global Level
The Biggest Picture: Situational Awareness on a Global Level
 
Structurally Sound: How to Tame Your Architecture
Structurally Sound: How to Tame Your ArchitectureStructurally Sound: How to Tame Your Architecture
Structurally Sound: How to Tame Your Architecture
 
SQL In Hadoop: Big Data Innovation Without the Risk
SQL In Hadoop: Big Data Innovation Without the RiskSQL In Hadoop: Big Data Innovation Without the Risk
SQL In Hadoop: Big Data Innovation Without the Risk
 
The Perfect Fit: Scalable Graph for Big Data
The Perfect Fit: Scalable Graph for Big DataThe Perfect Fit: Scalable Graph for Big Data
The Perfect Fit: Scalable Graph for Big Data
 
Rethinking Data Availability and Governance in a Mobile World
Rethinking Data Availability and Governance in a Mobile WorldRethinking Data Availability and Governance in a Mobile World
Rethinking Data Availability and Governance in a Mobile World
 
DisrupTech - Dave Duggal
DisrupTech - Dave DuggalDisrupTech - Dave Duggal
DisrupTech - Dave Duggal
 
Modus Operandi
Modus OperandiModus Operandi
Modus Operandi
 
Phasic Systems - Dr. Geoffrey Malafsky
Phasic Systems - Dr. Geoffrey MalafskyPhasic Systems - Dr. Geoffrey Malafsky
Phasic Systems - Dr. Geoffrey Malafsky
 
Red Hat - Sarangan Rangachari
Red Hat - Sarangan RangachariRed Hat - Sarangan Rangachari
Red Hat - Sarangan Rangachari
 
WebAction-Sami Abkay
WebAction-Sami AbkayWebAction-Sami Abkay
WebAction-Sami Abkay
 
DisrupTech 2015ek
DisrupTech 2015ekDisrupTech 2015ek
DisrupTech 2015ek
 
DisrupTech - Robin Bloor (2)
DisrupTech - Robin Bloor (2)DisrupTech - Robin Bloor (2)
DisrupTech - Robin Bloor (2)
 
Big Data Refinery: Distilling Value for User-Driven Analytics
Big Data Refinery: Distilling Value for User-Driven AnalyticsBig Data Refinery: Distilling Value for User-Driven Analytics
Big Data Refinery: Distilling Value for User-Driven Analytics
 
Understanding What’s Possible: Getting Business Value from Big Data Quickly
Understanding What’s Possible: Getting Business Value from Big Data QuicklyUnderstanding What’s Possible: Getting Business Value from Big Data Quickly
Understanding What’s Possible: Getting Business Value from Big Data Quickly
 
The New Simple: Predictive Analytics for the Mainstream
The New Simple: Predictive Analytics for the Mainstream The New Simple: Predictive Analytics for the Mainstream
The New Simple: Predictive Analytics for the Mainstream
 

Recently uploaded

RESUME BUILDER APPLICATION Project for students
RESUME BUILDER APPLICATION Project for studentsRESUME BUILDER APPLICATION Project for students
RESUME BUILDER APPLICATION Project for students
KAMESHS29
 
Generative AI Deep Dive: Advancing from Proof of Concept to Production
Generative AI Deep Dive: Advancing from Proof of Concept to ProductionGenerative AI Deep Dive: Advancing from Proof of Concept to Production
Generative AI Deep Dive: Advancing from Proof of Concept to Production
Aggregage
 
The Art of the Pitch: WordPress Relationships and Sales
The Art of the Pitch: WordPress Relationships and SalesThe Art of the Pitch: WordPress Relationships and Sales
The Art of the Pitch: WordPress Relationships and Sales
Laura Byrne
 
Communications Mining Series - Zero to Hero - Session 1
Communications Mining Series - Zero to Hero - Session 1Communications Mining Series - Zero to Hero - Session 1
Communications Mining Series - Zero to Hero - Session 1
DianaGray10
 
Climate Impact of Software Testing at Nordic Testing Days
Climate Impact of Software Testing at Nordic Testing DaysClimate Impact of Software Testing at Nordic Testing Days
Climate Impact of Software Testing at Nordic Testing Days
Kari Kakkonen
 
Mind map of terminologies used in context of Generative AI
Mind map of terminologies used in context of Generative AIMind map of terminologies used in context of Generative AI
Mind map of terminologies used in context of Generative AI
Kumud Singh
 
Alt. GDG Cloud Southlake #33: Boule & Rebala: Effective AppSec in SDLC using ...
Alt. GDG Cloud Southlake #33: Boule & Rebala: Effective AppSec in SDLC using ...Alt. GDG Cloud Southlake #33: Boule & Rebala: Effective AppSec in SDLC using ...
Alt. GDG Cloud Southlake #33: Boule & Rebala: Effective AppSec in SDLC using ...
James Anderson
 
By Design, not by Accident - Agile Venture Bolzano 2024
By Design, not by Accident - Agile Venture Bolzano 2024By Design, not by Accident - Agile Venture Bolzano 2024
By Design, not by Accident - Agile Venture Bolzano 2024
Pierluigi Pugliese
 
LF Energy Webinar: Electrical Grid Modelling and Simulation Through PowSyBl -...
LF Energy Webinar: Electrical Grid Modelling and Simulation Through PowSyBl -...LF Energy Webinar: Electrical Grid Modelling and Simulation Through PowSyBl -...
LF Energy Webinar: Electrical Grid Modelling and Simulation Through PowSyBl -...
DanBrown980551
 
Artificial Intelligence for XMLDevelopment
Artificial Intelligence for XMLDevelopmentArtificial Intelligence for XMLDevelopment
Artificial Intelligence for XMLDevelopment
Octavian Nadolu
 
Elizabeth Buie - Older adults: Are we really designing for our future selves?
Elizabeth Buie - Older adults: Are we really designing for our future selves?Elizabeth Buie - Older adults: Are we really designing for our future selves?
Elizabeth Buie - Older adults: Are we really designing for our future selves?
Nexer Digital
 
Enchancing adoption of Open Source Libraries. A case study on Albumentations.AI
Enchancing adoption of Open Source Libraries. A case study on Albumentations.AIEnchancing adoption of Open Source Libraries. A case study on Albumentations.AI
Enchancing adoption of Open Source Libraries. A case study on Albumentations.AI
Vladimir Iglovikov, Ph.D.
 
How to Get CNIC Information System with Paksim Ga.pptx
How to Get CNIC Information System with Paksim Ga.pptxHow to Get CNIC Information System with Paksim Ga.pptx
How to Get CNIC Information System with Paksim Ga.pptx
danishmna97
 
Uni Systems Copilot event_05062024_C.Vlachos.pdf
Uni Systems Copilot event_05062024_C.Vlachos.pdfUni Systems Copilot event_05062024_C.Vlachos.pdf
Uni Systems Copilot event_05062024_C.Vlachos.pdf
Uni Systems S.M.S.A.
 
GridMate - End to end testing is a critical piece to ensure quality and avoid...
GridMate - End to end testing is a critical piece to ensure quality and avoid...GridMate - End to end testing is a critical piece to ensure quality and avoid...
GridMate - End to end testing is a critical piece to ensure quality and avoid...
ThomasParaiso2
 
Goodbye Windows 11: Make Way for Nitrux Linux 3.5.0!
Goodbye Windows 11: Make Way for Nitrux Linux 3.5.0!Goodbye Windows 11: Make Way for Nitrux Linux 3.5.0!
Goodbye Windows 11: Make Way for Nitrux Linux 3.5.0!
SOFTTECHHUB
 
Monitoring Java Application Security with JDK Tools and JFR Events
Monitoring Java Application Security with JDK Tools and JFR EventsMonitoring Java Application Security with JDK Tools and JFR Events
Monitoring Java Application Security with JDK Tools and JFR Events
Ana-Maria Mihalceanu
 
20240607 QFM018 Elixir Reading List May 2024
20240607 QFM018 Elixir Reading List May 202420240607 QFM018 Elixir Reading List May 2024
20240607 QFM018 Elixir Reading List May 2024
Matthew Sinclair
 
20240605 QFM017 Machine Intelligence Reading List May 2024
20240605 QFM017 Machine Intelligence Reading List May 202420240605 QFM017 Machine Intelligence Reading List May 2024
20240605 QFM017 Machine Intelligence Reading List May 2024
Matthew Sinclair
 
GraphSummit Singapore | The Art of the Possible with Graph - Q2 2024
GraphSummit Singapore | The Art of the  Possible with Graph - Q2 2024GraphSummit Singapore | The Art of the  Possible with Graph - Q2 2024
GraphSummit Singapore | The Art of the Possible with Graph - Q2 2024
Neo4j
 

Recently uploaded (20)

RESUME BUILDER APPLICATION Project for students
RESUME BUILDER APPLICATION Project for studentsRESUME BUILDER APPLICATION Project for students
RESUME BUILDER APPLICATION Project for students
 
Generative AI Deep Dive: Advancing from Proof of Concept to Production
Generative AI Deep Dive: Advancing from Proof of Concept to ProductionGenerative AI Deep Dive: Advancing from Proof of Concept to Production
Generative AI Deep Dive: Advancing from Proof of Concept to Production
 
The Art of the Pitch: WordPress Relationships and Sales
The Art of the Pitch: WordPress Relationships and SalesThe Art of the Pitch: WordPress Relationships and Sales
The Art of the Pitch: WordPress Relationships and Sales
 
Communications Mining Series - Zero to Hero - Session 1
Communications Mining Series - Zero to Hero - Session 1Communications Mining Series - Zero to Hero - Session 1
Communications Mining Series - Zero to Hero - Session 1
 
Climate Impact of Software Testing at Nordic Testing Days
Climate Impact of Software Testing at Nordic Testing DaysClimate Impact of Software Testing at Nordic Testing Days
Climate Impact of Software Testing at Nordic Testing Days
 
Mind map of terminologies used in context of Generative AI
Mind map of terminologies used in context of Generative AIMind map of terminologies used in context of Generative AI
Mind map of terminologies used in context of Generative AI
 
Alt. GDG Cloud Southlake #33: Boule & Rebala: Effective AppSec in SDLC using ...
Alt. GDG Cloud Southlake #33: Boule & Rebala: Effective AppSec in SDLC using ...Alt. GDG Cloud Southlake #33: Boule & Rebala: Effective AppSec in SDLC using ...
Alt. GDG Cloud Southlake #33: Boule & Rebala: Effective AppSec in SDLC using ...
 
By Design, not by Accident - Agile Venture Bolzano 2024
By Design, not by Accident - Agile Venture Bolzano 2024By Design, not by Accident - Agile Venture Bolzano 2024
By Design, not by Accident - Agile Venture Bolzano 2024
 
LF Energy Webinar: Electrical Grid Modelling and Simulation Through PowSyBl -...
LF Energy Webinar: Electrical Grid Modelling and Simulation Through PowSyBl -...LF Energy Webinar: Electrical Grid Modelling and Simulation Through PowSyBl -...
LF Energy Webinar: Electrical Grid Modelling and Simulation Through PowSyBl -...
 
Artificial Intelligence for XMLDevelopment
Artificial Intelligence for XMLDevelopmentArtificial Intelligence for XMLDevelopment
Artificial Intelligence for XMLDevelopment
 
Elizabeth Buie - Older adults: Are we really designing for our future selves?
Elizabeth Buie - Older adults: Are we really designing for our future selves?Elizabeth Buie - Older adults: Are we really designing for our future selves?
Elizabeth Buie - Older adults: Are we really designing for our future selves?
 
Enchancing adoption of Open Source Libraries. A case study on Albumentations.AI
Enchancing adoption of Open Source Libraries. A case study on Albumentations.AIEnchancing adoption of Open Source Libraries. A case study on Albumentations.AI
Enchancing adoption of Open Source Libraries. A case study on Albumentations.AI
 
How to Get CNIC Information System with Paksim Ga.pptx
How to Get CNIC Information System with Paksim Ga.pptxHow to Get CNIC Information System with Paksim Ga.pptx
How to Get CNIC Information System with Paksim Ga.pptx
 
Uni Systems Copilot event_05062024_C.Vlachos.pdf
Uni Systems Copilot event_05062024_C.Vlachos.pdfUni Systems Copilot event_05062024_C.Vlachos.pdf
Uni Systems Copilot event_05062024_C.Vlachos.pdf
 
GridMate - End to end testing is a critical piece to ensure quality and avoid...
GridMate - End to end testing is a critical piece to ensure quality and avoid...GridMate - End to end testing is a critical piece to ensure quality and avoid...
GridMate - End to end testing is a critical piece to ensure quality and avoid...
 
Goodbye Windows 11: Make Way for Nitrux Linux 3.5.0!
Goodbye Windows 11: Make Way for Nitrux Linux 3.5.0!Goodbye Windows 11: Make Way for Nitrux Linux 3.5.0!
Goodbye Windows 11: Make Way for Nitrux Linux 3.5.0!
 
Monitoring Java Application Security with JDK Tools and JFR Events
Monitoring Java Application Security with JDK Tools and JFR EventsMonitoring Java Application Security with JDK Tools and JFR Events
Monitoring Java Application Security with JDK Tools and JFR Events
 
20240607 QFM018 Elixir Reading List May 2024
20240607 QFM018 Elixir Reading List May 202420240607 QFM018 Elixir Reading List May 2024
20240607 QFM018 Elixir Reading List May 2024
 
20240605 QFM017 Machine Intelligence Reading List May 2024
20240605 QFM017 Machine Intelligence Reading List May 202420240605 QFM017 Machine Intelligence Reading List May 2024
20240605 QFM017 Machine Intelligence Reading List May 2024
 
GraphSummit Singapore | The Art of the Possible with Graph - Q2 2024
GraphSummit Singapore | The Art of the  Possible with Graph - Q2 2024GraphSummit Singapore | The Art of the  Possible with Graph - Q2 2024
GraphSummit Singapore | The Art of the Possible with Graph - Q2 2024
 

A Revolutionary Approach to Modernizing the Data Warehouse

  • 1. Grab some coffee and enjoy the pre-show banter before the top of the hour!
  • 2. H T  Technologies    of  2015  
  • 4.      THIS  YEAR  is…  
  • 5. ANALYST:   Rick  Sherman   Managing  Partner,     Athena  IT  Solutions   ANALYST:   Dr.  Robin  Bloor   Chief  Analyst,     The  Bloor  Group   GUEST:   Bob  Muglia   CEO,   Snowflake  Computing   THE  LINE  UP  
  • 7. Copyright © 2015 Athena IT Solutions Rick  Sherman   Athena  IT  Solu4ons   A  Revolu4onary  Approach  to     Modernizing  the  Data  Warehouse   Hot  Technologies   Rick  Sherman   Athena  IT  Solu4ons   rsherman@athena-­‐solu4ons.com    
  • 8. Slide 8 Copyright © 2015 Athena IT Solutions All rights reserved. Modernizing the Data Warehouse Traditional DW - Data Architecture - Hub & Spoke
  • 9. Slide 9 Copyright © 2015 Athena IT Solutions All rights reserved. Modernizing the Data Warehouse Traditional DW – Technology Architecture – 3 Enabling Layers
  • 10. Slide 10 Copyright © 2015 Athena IT Solutions All rights reserved. Modernizing the Data Warehouse Traditional DW – Moving Out of Its Comfort Zone Data - Differences in origin, management & use of data
  • 11. Slide 11 Copyright © 2015 Athena IT Solutions All rights reserved. Modernizing the Data Warehouse Traditional DW - Evolution Databases - Differences in data structures, schemas & technologies
  • 12. Slide 12 Copyright © 2015 Athena IT Solutions All rights reserved. Modernizing the Data Warehouse Traditional DW - Evolution Integration - Differences in types of integration, data & technologies
  • 13. Slide 13 Copyright © 2015 Athena IT Solutions All rights reserved. Modernizing the Data Warehouse Traditional DW – Current State of Affairs
  • 14. Slide 14 Copyright © 2015 Athena IT Solutions All rights reserved. Modernizing the Data Warehouse Changing the Architectural Approach Classic DW-Oriented Architecture Analytical Data Architecture (ADA)
  • 15. Slide 15 Copyright © 2015 Athena IT Solutions All rights reserved. Modernizing the Data Warehouse Creating an Analytics-Oriented Data Architecture
  • 16. Slide 16 Copyright © 2015 Athena IT Solutions All rights reserved. Modernizing the Data Warehouse Analytical Data Architecture (ADA)
  • 17. Slide 17 Copyright © 2015 Athena IT Solutions All rights reserved. Modernizing the Data Warehouse
  • 18. Slide 18 Copyright © 2015 Athena IT Solutions All rights reserved. Creating a Data Architecture BI & Analytics My Background •  Experience ü  25 years of DW & BI experience ü  30 years relational database experience ü  Consulting, IT and Software Engineering •  Consulting ü  Business & IT Groups ü  Software Vendors •  Instructor ü  Northeastern University, Graduate School of Engineering ü  DW & BI Conferences; DW & BI Courses •  Writer, Columnist, Blogger ü  Book & 200+ Published Articles ü  White papers, Webinars, Podcasts & Seminars ü  DataDoghouse.com Blog on BI/DW industry •  Thought Leadership: ü  TDWI – Boston User Group Officer ü  Boulder BI Brain Trust
  • 21. The State of Play Nobody is questioning the need for a Data Warehouse (a BI & Analytics engine)
  • 22. §  Inexpensive (?) §  Any data §  May have metadata §  Poor performance §  Weak scheduling §  Weak data mgmt §  Security? §  Data lake §  Expensive §  Prepared data §  Will have metadata §  Optimized §  Optimized §  Good data mgmt §  Secure §  Data workhorse Hadoop v Data Warehouse Hadoop DBMS/EDW
  • 23. The Reasonable Conclusion Hadoop is not a data warehouse… At least NOT YET
  • 24. §  Cloud deployments §  CPU/GPU merging §  Commodity servers and storage §  On-chip processing §  Memory-based architectures §  Virtual networks §  Parallel S/W §  Data volumes!! §  Hadoop + Schema on read §  Unstructured data §  Event data §  Data availability and the market for data §  Analytics workloads §  Analytics tools Dimensions of Disruption
  • 25. In These Circumstances.. New database technologies and ideas have stepped forward
  • 26. The Questions? What are the characteristics of an appropriate data warehouse? Should it live in the cloud?
  • 28.
  • 29. The  Archive  Trifecta:   •  Inside  Analysis    www.insideanalysis.com   •  SlideShare    www.slideshare.net/InsideAnalysis   •  YouTube    www.youtube.com/user/BloorGroup   THANK  YOU!