SlideShare a Scribd company logo
1 of 15
Slide 1
Business Intelligence 102
Realcomm Webinar
Damien Georges
Managing Director
Hipercept Inc.
dgeorges@hipercept.com
Slide 2
• Overview
• Data Integration, Data Warehouse and Data Marts
• Reporting and Analytics
• Building the BI Business Case
• Possibilities for Data Mining and Predictive Analytics in Commercial
Real Estate Portfolios
Agenda
Slide 3
Overview
• Exploring the technical detail behind a BI implementation
• Building the business case to support a comprehensive business
intelligence program
• Using data mining and predictive analysis to understand potential
future portfolio trends
Slide 4
What Should a BI Solution Provide?
• Data transparency, allowing drill through from summarized information
down to the underlying detail
• A platform for monitoring and enforcing data quality standards
• Resiliency to underlying system change
– As underlying transactional systems change the users of the BI
platform are shielded from that change
• Graphical representation of analytics providing immediate
understanding of business trends
• A platform for orchestrating the movement of information between
systems
• A time sensitive view of information across systems
Slide 5
Integrated Enterprise Analytics Environment
Slide 6
• Data Integration/Warehousing solutions are comprised of:
– Data Dictionary
– Logical Data Model
– Physical Data Model
– Data Quality
– Data Synchronization
– Data Movement Capabilities
• Make sure this is implemented along with a data governance
mechanism and an ongoing monitoring program that ensures
consistent data quality
Integration, Warehousing and Data Marts
Slide 7
Implemented across the enterprise in a diverse vendor landscape
Slide 8
Taking a system agnostic approach to a data model
OSCRE Hybrid Approach
Slide 9
• Reporting in the complex world of commercial real estate can be characterized
as follows:
– Most companies use several dozen Excel spreadsheets to analyze and
report data
– Data is typically scattered in multiple and disparate sources
– “Plain vanilla” reports such as Balance Sheets and Income Statements
are relatively easy to produce at an aggregate level but more detailed
reporting can take weeks to pull together
• The solution
– Find an implementer and vendor who can be relied on to give you what
you really need based on true business requirements
– Consider standardizing on a single technology stack
– Make sure your internal resources understand what the vendor is doing
Reporting and Analytics
Slide 10
Building the BI Business Case:
• Quantify Cost Savings
– Interview business users to understand the time it takes to produce the
current reporting and analytics within your organization
– Apply an internal hourly rate
• Quantify BI implementation and ongoing costs
– Consulting costs, infrastructure costs, internal costs
– Training costs
• Determine ROI/Payback
• Simple, right?
Building the BI Business Case
Slide 11
• Simple ROI business cases only work in environments where there is a
general consensus that BI is an essential part of the overall organizational
architecture
– Understanding that a transactional system is not a good basis for a data
warehouse
– A system agnostic data and reporting platform is critical to maintaining
business operations
– A potential for expanding to additional asset classes to get a true picture
of an overall investment portfolio
• The qualitative components behind the BI Business Case are
unfortunately the most compelling for implementing an end-to-end
infrastructure
Building the BI Business Case – Not so fast
Slide 12
Business Benefit of BI
• Lowers operating costs as a result of eliminating manual
process
• Reduces the chance of reporting errors
• Improves the speed and efficiency at which a company can
determine specific exposure and risk, improving overall
business agility
• Streamlines operations by automating and standardizing the
aggregation of information from various entities irrespective of
geography, technology or business model
• Establishes an architecture that will support future growth
including additional assets in existing entities, new products and
new platforms
Slide 13
• Used forever by insurance companies to build risk and premium
models
• Takes historical information to predict future trends
• Requires a robust data environment (multidimensional) to be able to
support the analysis
• Technical resources must be able to determine the application
algorithm to apply to a data set
• Results must be aligned to significant macro indicators – examples:
– Economic environment (inflation, employment, rate of economic
growth)
– Regulatory environment
Data Mining and Predictive Analytics for Commercial Real Estate
Slide 14
Data Mining Process Flow
Slide 15
Real Estate BI Solution Partners

More Related Content

What's hot

Four Critical Considerations for your IT Infrastructure
Four Critical Considerations for your IT InfrastructureFour Critical Considerations for your IT Infrastructure
Four Critical Considerations for your IT Infrastructure
worksmart2
 
Architecture and Optimisationapr
Architecture and OptimisationaprArchitecture and Optimisationapr
Architecture and Optimisationapr
Frank Curry
 
Why M & T - Presentation
Why M & T - PresentationWhy M & T - Presentation
Why M & T - Presentation
digitalenergy
 

What's hot (20)

alfabet: A Navigation System for Innovative Transformation Projects
alfabet: A Navigation System for Innovative Transformation Projectsalfabet: A Navigation System for Innovative Transformation Projects
alfabet: A Navigation System for Innovative Transformation Projects
 
Effective EAM: whet your appetite & deliver solutions
Effective EAM: whet your appetite & deliver solutionsEffective EAM: whet your appetite & deliver solutions
Effective EAM: whet your appetite & deliver solutions
 
Interloc MaxTalk FMMUG 2018
Interloc MaxTalk FMMUG 2018Interloc MaxTalk FMMUG 2018
Interloc MaxTalk FMMUG 2018
 
Projetech MaxTalk FMMUG 2018
Projetech MaxTalk FMMUG 2018Projetech MaxTalk FMMUG 2018
Projetech MaxTalk FMMUG 2018
 
2015 CMU trading summit session 2 emerging bank technology
2015 CMU trading summit session 2 emerging bank technology2015 CMU trading summit session 2 emerging bank technology
2015 CMU trading summit session 2 emerging bank technology
 
How to leverage Enterprise Architecture in a regulated environment
How to leverage Enterprise Architecture in a regulated environmentHow to leverage Enterprise Architecture in a regulated environment
How to leverage Enterprise Architecture in a regulated environment
 
Application Harmonisation using Design Principles in LeanIX
Application Harmonisation using Design Principles in LeanIXApplication Harmonisation using Design Principles in LeanIX
Application Harmonisation using Design Principles in LeanIX
 
Upcoming changes in lease accounting standards: How technology can help with ...
Upcoming changes in lease accounting standards: How technology can help with ...Upcoming changes in lease accounting standards: How technology can help with ...
Upcoming changes in lease accounting standards: How technology can help with ...
 
Application Portfolio Management Webinar
Application Portfolio Management WebinarApplication Portfolio Management Webinar
Application Portfolio Management Webinar
 
SAP Reference Architecture based on LeanIX
SAP Reference Architecture based on LeanIXSAP Reference Architecture based on LeanIX
SAP Reference Architecture based on LeanIX
 
Digitalization of Trading by Platinion at ETOT 2017
Digitalization of Trading by Platinion at ETOT 2017 Digitalization of Trading by Platinion at ETOT 2017
Digitalization of Trading by Platinion at ETOT 2017
 
Moving EA - from where we are to where we should be
Moving EA - from where we are to where we should beMoving EA - from where we are to where we should be
Moving EA - from where we are to where we should be
 
Enterprise Architecture - An Introduction
Enterprise Architecture - An Introduction Enterprise Architecture - An Introduction
Enterprise Architecture - An Introduction
 
Four Critical Considerations for your IT Infrastructure
Four Critical Considerations for your IT InfrastructureFour Critical Considerations for your IT Infrastructure
Four Critical Considerations for your IT Infrastructure
 
AWS RoadShow Cambridge - Haven Power Customer Presentation
AWS RoadShow Cambridge - Haven Power Customer PresentationAWS RoadShow Cambridge - Haven Power Customer Presentation
AWS RoadShow Cambridge - Haven Power Customer Presentation
 
Architecture and Optimisationapr
Architecture and OptimisationaprArchitecture and Optimisationapr
Architecture and Optimisationapr
 
ASIC Technology Update
ASIC Technology UpdateASIC Technology Update
ASIC Technology Update
 
Universal Consor
Universal ConsorUniversal Consor
Universal Consor
 
Case Study- BusinessOne
Case Study- BusinessOneCase Study- BusinessOne
Case Study- BusinessOne
 
Why M & T - Presentation
Why M & T - PresentationWhy M & T - Presentation
Why M & T - Presentation
 

Viewers also liked

BI in Retail sector
BI in Retail sectorBI in Retail sector
BI in Retail sector
ashutosh2811
 
Busienss intelligence in banking sector
Busienss intelligence in banking sectorBusienss intelligence in banking sector
Busienss intelligence in banking sector
CSC
 
Business Intelligence in E-Commerce
Business Intelligence in E-CommerceBusiness Intelligence in E-Commerce
Business Intelligence in E-Commerce
Cygnet Infotech
 
Case Study on Business Intelligence
Case Study on Business IntelligenceCase Study on Business Intelligence
Case Study on Business Intelligence
NewGate India
 

Viewers also liked (18)

Business Intelligence and Retail
Business Intelligence and RetailBusiness Intelligence and Retail
Business Intelligence and Retail
 
E-Commerce Video Marketing Case Studies & Tips
E-Commerce Video Marketing Case Studies & TipsE-Commerce Video Marketing Case Studies & Tips
E-Commerce Video Marketing Case Studies & Tips
 
Weight loss surgery Questions and Answers
Weight loss surgery Questions and AnswersWeight loss surgery Questions and Answers
Weight loss surgery Questions and Answers
 
A small peak into Business Intelligence
A small peak into Business IntelligenceA small peak into Business Intelligence
A small peak into Business Intelligence
 
e-Retail Industry + Landscape
e-Retail Industry + Landscape e-Retail Industry + Landscape
e-Retail Industry + Landscape
 
TRANSFORMING PUBLIC TRANSPORTATION
TRANSFORMING PUBLIC TRANSPORTATIONTRANSFORMING PUBLIC TRANSPORTATION
TRANSFORMING PUBLIC TRANSPORTATION
 
Business Intelligence tool recommendation for ecommerce
Business Intelligence tool recommendation for ecommerceBusiness Intelligence tool recommendation for ecommerce
Business Intelligence tool recommendation for ecommerce
 
Fashion Media Communication
Fashion Media CommunicationFashion Media Communication
Fashion Media Communication
 
BI in Retail sector
BI in Retail sectorBI in Retail sector
BI in Retail sector
 
Business Intelligence In Retail
Business Intelligence In RetailBusiness Intelligence In Retail
Business Intelligence In Retail
 
Busienss intelligence in banking sector
Busienss intelligence in banking sectorBusienss intelligence in banking sector
Busienss intelligence in banking sector
 
Fashion History
Fashion HistoryFashion History
Fashion History
 
Communication presentation on fashion
Communication presentation on fashionCommunication presentation on fashion
Communication presentation on fashion
 
Business Intelligence in E-Commerce
Business Intelligence in E-CommerceBusiness Intelligence in E-Commerce
Business Intelligence in E-Commerce
 
Case Study on Business Intelligence
Case Study on Business IntelligenceCase Study on Business Intelligence
Case Study on Business Intelligence
 
E-COMMERCE AND THE FUTURE OF RETAIL: 2015
E-COMMERCE AND THE FUTURE OF RETAIL: 2015E-COMMERCE AND THE FUTURE OF RETAIL: 2015
E-COMMERCE AND THE FUTURE OF RETAIL: 2015
 
Big data analytics in sports industry
Big data analytics in sports industryBig data analytics in sports industry
Big data analytics in sports industry
 
E-tailing (E-Retailing)
E-tailing (E-Retailing)E-tailing (E-Retailing)
E-tailing (E-Retailing)
 

Similar to Business Intelligence 102 for Real Estate

Case study businessone (en) 1.0
Case study  businessone (en) 1.0Case study  businessone (en) 1.0
Case study businessone (en) 1.0
BIcasestudy
 
Realizing Operating Efficiencies Through a Platform-Based Approach: A Case Study
Realizing Operating Efficiencies Through a Platform-Based Approach: A Case StudyRealizing Operating Efficiencies Through a Platform-Based Approach: A Case Study
Realizing Operating Efficiencies Through a Platform-Based Approach: A Case Study
Melissa Luongo
 
CHAPTER 10INFORMATION GOVERNANCEInformation Governance a.docx
CHAPTER 10INFORMATION GOVERNANCEInformation Governance a.docxCHAPTER 10INFORMATION GOVERNANCEInformation Governance a.docx
CHAPTER 10INFORMATION GOVERNANCEInformation Governance a.docx
bartholomeocoombs
 
CHAPTER 10INFORMATION GOVERNANCEInformation Governance a.docx
CHAPTER 10INFORMATION GOVERNANCEInformation Governance a.docxCHAPTER 10INFORMATION GOVERNANCEInformation Governance a.docx
CHAPTER 10INFORMATION GOVERNANCEInformation Governance a.docx
keturahhazelhurst
 
'A Practical Application of Enterprise Architecture – the Ecobank Example by ...
'A Practical Application of Enterprise Architecture – the Ecobank Example by ...'A Practical Application of Enterprise Architecture – the Ecobank Example by ...
'A Practical Application of Enterprise Architecture – the Ecobank Example by ...
IIBA_Latvia_Chapter
 

Similar to Business Intelligence 102 for Real Estate (20)

Enterprise Analytics for Real Estate Webinar
Enterprise Analytics for Real Estate WebinarEnterprise Analytics for Real Estate Webinar
Enterprise Analytics for Real Estate Webinar
 
iGlobal Enterprise Analytics
iGlobal Enterprise AnalyticsiGlobal Enterprise Analytics
iGlobal Enterprise Analytics
 
Case study businessone (en) 1.0
Case study  businessone (en) 1.0Case study  businessone (en) 1.0
Case study businessone (en) 1.0
 
Ea As Strategy Ver1 0
Ea As Strategy Ver1 0Ea As Strategy Ver1 0
Ea As Strategy Ver1 0
 
Business intelligence for manufacturing
Business intelligence for manufacturingBusiness intelligence for manufacturing
Business intelligence for manufacturing
 
Realizing Operating Efficiencies Through a Platform-Based Approach: A Case Study
Realizing Operating Efficiencies Through a Platform-Based Approach: A Case StudyRealizing Operating Efficiencies Through a Platform-Based Approach: A Case Study
Realizing Operating Efficiencies Through a Platform-Based Approach: A Case Study
 
CHAPTER 10INFORMATION GOVERNANCEInformation Governance a.docx
CHAPTER 10INFORMATION GOVERNANCEInformation Governance a.docxCHAPTER 10INFORMATION GOVERNANCEInformation Governance a.docx
CHAPTER 10INFORMATION GOVERNANCEInformation Governance a.docx
 
CHAPTER 10INFORMATION GOVERNANCEInformation Governance a.docx
CHAPTER 10INFORMATION GOVERNANCEInformation Governance a.docxCHAPTER 10INFORMATION GOVERNANCEInformation Governance a.docx
CHAPTER 10INFORMATION GOVERNANCEInformation Governance a.docx
 
Business Intelligence - Conceptual Introduction
Business Intelligence - Conceptual IntroductionBusiness Intelligence - Conceptual Introduction
Business Intelligence - Conceptual Introduction
 
Bending the IT Op-Ex Cost Curve Through IT Simplification
Bending the IT Op-Ex Cost Curve Through IT SimplificationBending the IT Op-Ex Cost Curve Through IT Simplification
Bending the IT Op-Ex Cost Curve Through IT Simplification
 
Bi sysco
Bi syscoBi sysco
Bi sysco
 
Business intelligence techniques U2.pptx
Business intelligence techniques U2.pptxBusiness intelligence techniques U2.pptx
Business intelligence techniques U2.pptx
 
ROI and Economic Value of Data Virtualization
ROI and Economic Value of Data VirtualizationROI and Economic Value of Data Virtualization
ROI and Economic Value of Data Virtualization
 
SQL Saturday STL 2016 Presentation
SQL Saturday STL 2016 PresentationSQL Saturday STL 2016 Presentation
SQL Saturday STL 2016 Presentation
 
Using Web Data to Drive Revenue and Reduce Costs
Using Web Data to Drive Revenue and Reduce CostsUsing Web Data to Drive Revenue and Reduce Costs
Using Web Data to Drive Revenue and Reduce Costs
 
Foundational Strategies for Trust in Big Data Part 1: Getting Data to the Pla...
Foundational Strategies for Trust in Big Data Part 1: Getting Data to the Pla...Foundational Strategies for Trust in Big Data Part 1: Getting Data to the Pla...
Foundational Strategies for Trust in Big Data Part 1: Getting Data to the Pla...
 
Maximize a 24 X 7 Shared Services Global Operation With Oracle E-Business Suite
Maximize a 24 X 7 Shared Services Global Operation With Oracle E-Business SuiteMaximize a 24 X 7 Shared Services Global Operation With Oracle E-Business Suite
Maximize a 24 X 7 Shared Services Global Operation With Oracle E-Business Suite
 
Analytics in the Cloud and the ROI for B2B
Analytics in the Cloud and the ROI for B2BAnalytics in the Cloud and the ROI for B2B
Analytics in the Cloud and the ROI for B2B
 
'A Practical Application of Enterprise Architecture – the Ecobank Example by ...
'A Practical Application of Enterprise Architecture – the Ecobank Example by ...'A Practical Application of Enterprise Architecture – the Ecobank Example by ...
'A Practical Application of Enterprise Architecture – the Ecobank Example by ...
 
Business Intelligence Module 3
Business Intelligence Module 3Business Intelligence Module 3
Business Intelligence Module 3
 

Recently uploaded

Call Girls Kengeri Satellite Town Just Call 👗 7737669865 👗 Top Class Call Gir...
Call Girls Kengeri Satellite Town Just Call 👗 7737669865 👗 Top Class Call Gir...Call Girls Kengeri Satellite Town Just Call 👗 7737669865 👗 Top Class Call Gir...
Call Girls Kengeri Satellite Town Just Call 👗 7737669865 👗 Top Class Call Gir...
amitlee9823
 
Chandigarh Escorts Service 📞8868886958📞 Just📲 Call Nihal Chandigarh Call Girl...
Chandigarh Escorts Service 📞8868886958📞 Just📲 Call Nihal Chandigarh Call Girl...Chandigarh Escorts Service 📞8868886958📞 Just📲 Call Nihal Chandigarh Call Girl...
Chandigarh Escorts Service 📞8868886958📞 Just📲 Call Nihal Chandigarh Call Girl...
Sheetaleventcompany
 
Call Girls In DLf Gurgaon ➥99902@11544 ( Best price)100% Genuine Escort In 24...
Call Girls In DLf Gurgaon ➥99902@11544 ( Best price)100% Genuine Escort In 24...Call Girls In DLf Gurgaon ➥99902@11544 ( Best price)100% Genuine Escort In 24...
Call Girls In DLf Gurgaon ➥99902@11544 ( Best price)100% Genuine Escort In 24...
lizamodels9
 
Insurers' journeys to build a mastery in the IoT usage
Insurers' journeys to build a mastery in the IoT usageInsurers' journeys to build a mastery in the IoT usage
Insurers' journeys to build a mastery in the IoT usage
Matteo Carbone
 
Call Girls Jp Nagar Just Call 👗 7737669865 👗 Top Class Call Girl Service Bang...
Call Girls Jp Nagar Just Call 👗 7737669865 👗 Top Class Call Girl Service Bang...Call Girls Jp Nagar Just Call 👗 7737669865 👗 Top Class Call Girl Service Bang...
Call Girls Jp Nagar Just Call 👗 7737669865 👗 Top Class Call Girl Service Bang...
amitlee9823
 
FULL ENJOY Call Girls In Majnu Ka Tilla, Delhi Contact Us 8377877756
FULL ENJOY Call Girls In Majnu Ka Tilla, Delhi Contact Us 8377877756FULL ENJOY Call Girls In Majnu Ka Tilla, Delhi Contact Us 8377877756
FULL ENJOY Call Girls In Majnu Ka Tilla, Delhi Contact Us 8377877756
dollysharma2066
 
Call Girls Navi Mumbai Just Call 9907093804 Top Class Call Girl Service Avail...
Call Girls Navi Mumbai Just Call 9907093804 Top Class Call Girl Service Avail...Call Girls Navi Mumbai Just Call 9907093804 Top Class Call Girl Service Avail...
Call Girls Navi Mumbai Just Call 9907093804 Top Class Call Girl Service Avail...
Dipal Arora
 

Recently uploaded (20)

Call Girls Kengeri Satellite Town Just Call 👗 7737669865 👗 Top Class Call Gir...
Call Girls Kengeri Satellite Town Just Call 👗 7737669865 👗 Top Class Call Gir...Call Girls Kengeri Satellite Town Just Call 👗 7737669865 👗 Top Class Call Gir...
Call Girls Kengeri Satellite Town Just Call 👗 7737669865 👗 Top Class Call Gir...
 
Chandigarh Escorts Service 📞8868886958📞 Just📲 Call Nihal Chandigarh Call Girl...
Chandigarh Escorts Service 📞8868886958📞 Just📲 Call Nihal Chandigarh Call Girl...Chandigarh Escorts Service 📞8868886958📞 Just📲 Call Nihal Chandigarh Call Girl...
Chandigarh Escorts Service 📞8868886958📞 Just📲 Call Nihal Chandigarh Call Girl...
 
Call Girls In DLf Gurgaon ➥99902@11544 ( Best price)100% Genuine Escort In 24...
Call Girls In DLf Gurgaon ➥99902@11544 ( Best price)100% Genuine Escort In 24...Call Girls In DLf Gurgaon ➥99902@11544 ( Best price)100% Genuine Escort In 24...
Call Girls In DLf Gurgaon ➥99902@11544 ( Best price)100% Genuine Escort In 24...
 
It will be International Nurses' Day on 12 May
It will be International Nurses' Day on 12 MayIt will be International Nurses' Day on 12 May
It will be International Nurses' Day on 12 May
 
Insurers' journeys to build a mastery in the IoT usage
Insurers' journeys to build a mastery in the IoT usageInsurers' journeys to build a mastery in the IoT usage
Insurers' journeys to build a mastery in the IoT usage
 
Pharma Works Profile of Karan Communications
Pharma Works Profile of Karan CommunicationsPharma Works Profile of Karan Communications
Pharma Works Profile of Karan Communications
 
Call Girls Jp Nagar Just Call 👗 7737669865 👗 Top Class Call Girl Service Bang...
Call Girls Jp Nagar Just Call 👗 7737669865 👗 Top Class Call Girl Service Bang...Call Girls Jp Nagar Just Call 👗 7737669865 👗 Top Class Call Girl Service Bang...
Call Girls Jp Nagar Just Call 👗 7737669865 👗 Top Class Call Girl Service Bang...
 
Mondelez State of Snacking and Future Trends 2023
Mondelez State of Snacking and Future Trends 2023Mondelez State of Snacking and Future Trends 2023
Mondelez State of Snacking and Future Trends 2023
 
How to Get Started in Social Media for Art League City
How to Get Started in Social Media for Art League CityHow to Get Started in Social Media for Art League City
How to Get Started in Social Media for Art League City
 
Uneak White's Personal Brand Exploration Presentation
Uneak White's Personal Brand Exploration PresentationUneak White's Personal Brand Exploration Presentation
Uneak White's Personal Brand Exploration Presentation
 
BAGALUR CALL GIRL IN 98274*61493 ❤CALL GIRLS IN ESCORT SERVICE❤CALL GIRL
BAGALUR CALL GIRL IN 98274*61493 ❤CALL GIRLS IN ESCORT SERVICE❤CALL GIRLBAGALUR CALL GIRL IN 98274*61493 ❤CALL GIRLS IN ESCORT SERVICE❤CALL GIRL
BAGALUR CALL GIRL IN 98274*61493 ❤CALL GIRLS IN ESCORT SERVICE❤CALL GIRL
 
Call Girls Ludhiana Just Call 98765-12871 Top Class Call Girl Service Available
Call Girls Ludhiana Just Call 98765-12871 Top Class Call Girl Service AvailableCall Girls Ludhiana Just Call 98765-12871 Top Class Call Girl Service Available
Call Girls Ludhiana Just Call 98765-12871 Top Class Call Girl Service Available
 
FULL ENJOY Call Girls In Majnu Ka Tilla, Delhi Contact Us 8377877756
FULL ENJOY Call Girls In Majnu Ka Tilla, Delhi Contact Us 8377877756FULL ENJOY Call Girls In Majnu Ka Tilla, Delhi Contact Us 8377877756
FULL ENJOY Call Girls In Majnu Ka Tilla, Delhi Contact Us 8377877756
 
John Halpern sued for sexual assault.pdf
John Halpern sued for sexual assault.pdfJohn Halpern sued for sexual assault.pdf
John Halpern sued for sexual assault.pdf
 
Call Girls Navi Mumbai Just Call 9907093804 Top Class Call Girl Service Avail...
Call Girls Navi Mumbai Just Call 9907093804 Top Class Call Girl Service Avail...Call Girls Navi Mumbai Just Call 9907093804 Top Class Call Girl Service Avail...
Call Girls Navi Mumbai Just Call 9907093804 Top Class Call Girl Service Avail...
 
Business Model Canvas (BMC)- A new venture concept
Business Model Canvas (BMC)-  A new venture conceptBusiness Model Canvas (BMC)-  A new venture concept
Business Model Canvas (BMC)- A new venture concept
 
A DAY IN THE LIFE OF A SALESMAN / WOMAN
A DAY IN THE LIFE OF A  SALESMAN / WOMANA DAY IN THE LIFE OF A  SALESMAN / WOMAN
A DAY IN THE LIFE OF A SALESMAN / WOMAN
 
VVVIP Call Girls In Greater Kailash ➡️ Delhi ➡️ 9999965857 🚀 No Advance 24HRS...
VVVIP Call Girls In Greater Kailash ➡️ Delhi ➡️ 9999965857 🚀 No Advance 24HRS...VVVIP Call Girls In Greater Kailash ➡️ Delhi ➡️ 9999965857 🚀 No Advance 24HRS...
VVVIP Call Girls In Greater Kailash ➡️ Delhi ➡️ 9999965857 🚀 No Advance 24HRS...
 
Phases of negotiation .pptx
 Phases of negotiation .pptx Phases of negotiation .pptx
Phases of negotiation .pptx
 
Famous Olympic Siblings from the 21st Century
Famous Olympic Siblings from the 21st CenturyFamous Olympic Siblings from the 21st Century
Famous Olympic Siblings from the 21st Century
 

Business Intelligence 102 for Real Estate

  • 1. Slide 1 Business Intelligence 102 Realcomm Webinar Damien Georges Managing Director Hipercept Inc. dgeorges@hipercept.com
  • 2. Slide 2 • Overview • Data Integration, Data Warehouse and Data Marts • Reporting and Analytics • Building the BI Business Case • Possibilities for Data Mining and Predictive Analytics in Commercial Real Estate Portfolios Agenda
  • 3. Slide 3 Overview • Exploring the technical detail behind a BI implementation • Building the business case to support a comprehensive business intelligence program • Using data mining and predictive analysis to understand potential future portfolio trends
  • 4. Slide 4 What Should a BI Solution Provide? • Data transparency, allowing drill through from summarized information down to the underlying detail • A platform for monitoring and enforcing data quality standards • Resiliency to underlying system change – As underlying transactional systems change the users of the BI platform are shielded from that change • Graphical representation of analytics providing immediate understanding of business trends • A platform for orchestrating the movement of information between systems • A time sensitive view of information across systems
  • 5. Slide 5 Integrated Enterprise Analytics Environment
  • 6. Slide 6 • Data Integration/Warehousing solutions are comprised of: – Data Dictionary – Logical Data Model – Physical Data Model – Data Quality – Data Synchronization – Data Movement Capabilities • Make sure this is implemented along with a data governance mechanism and an ongoing monitoring program that ensures consistent data quality Integration, Warehousing and Data Marts
  • 7. Slide 7 Implemented across the enterprise in a diverse vendor landscape
  • 8. Slide 8 Taking a system agnostic approach to a data model OSCRE Hybrid Approach
  • 9. Slide 9 • Reporting in the complex world of commercial real estate can be characterized as follows: – Most companies use several dozen Excel spreadsheets to analyze and report data – Data is typically scattered in multiple and disparate sources – “Plain vanilla” reports such as Balance Sheets and Income Statements are relatively easy to produce at an aggregate level but more detailed reporting can take weeks to pull together • The solution – Find an implementer and vendor who can be relied on to give you what you really need based on true business requirements – Consider standardizing on a single technology stack – Make sure your internal resources understand what the vendor is doing Reporting and Analytics
  • 10. Slide 10 Building the BI Business Case: • Quantify Cost Savings – Interview business users to understand the time it takes to produce the current reporting and analytics within your organization – Apply an internal hourly rate • Quantify BI implementation and ongoing costs – Consulting costs, infrastructure costs, internal costs – Training costs • Determine ROI/Payback • Simple, right? Building the BI Business Case
  • 11. Slide 11 • Simple ROI business cases only work in environments where there is a general consensus that BI is an essential part of the overall organizational architecture – Understanding that a transactional system is not a good basis for a data warehouse – A system agnostic data and reporting platform is critical to maintaining business operations – A potential for expanding to additional asset classes to get a true picture of an overall investment portfolio • The qualitative components behind the BI Business Case are unfortunately the most compelling for implementing an end-to-end infrastructure Building the BI Business Case – Not so fast
  • 12. Slide 12 Business Benefit of BI • Lowers operating costs as a result of eliminating manual process • Reduces the chance of reporting errors • Improves the speed and efficiency at which a company can determine specific exposure and risk, improving overall business agility • Streamlines operations by automating and standardizing the aggregation of information from various entities irrespective of geography, technology or business model • Establishes an architecture that will support future growth including additional assets in existing entities, new products and new platforms
  • 13. Slide 13 • Used forever by insurance companies to build risk and premium models • Takes historical information to predict future trends • Requires a robust data environment (multidimensional) to be able to support the analysis • Technical resources must be able to determine the application algorithm to apply to a data set • Results must be aligned to significant macro indicators – examples: – Economic environment (inflation, employment, rate of economic growth) – Regulatory environment Data Mining and Predictive Analytics for Commercial Real Estate
  • 14. Slide 14 Data Mining Process Flow
  • 15. Slide 15 Real Estate BI Solution Partners