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Copyright © 2012, SAS Institute Inc. All rights reserved.
ANALYTICS MANAGEMENT SERIES
PRESENTED BY SAS CANADA
Copyright © 2012, SAS Institute Inc. All rights reserved.
WHY? GROWTH IN ANALYTICAL ENVIRONMENTS
• Complex to develop, support, sustain and manage
• Challenging to realize maximum value from investment
Copyright © 2012, SAS Institute Inc. All rights reserved.
SERIES OVERVIEW ANALYTICS MANAGEMENT SERIES
• Designed to suggest paths towards effective decision-making in order to help
sustain and grow analytical capabilities
• Thought leaders who actively manage complex analytical environments will
share their best practices and engage in discussion by responding to your
questions at the end of the presentation
• Chat functionality is enabled and being monitored
• Webinars are recorded and will be made available on the SAS Canada
Community (http://sascanada.ning.com) ‘On Demand’
Copyright © 2012, SAS Institute Inc. All rights reserved.
UPCOMING
WEBINARS
• June 30th – ‘How an Internal Consulting Unit Can Support Enterprise
Analytics’ (Eugene Wen, VP & Chief Statistician, WSIB)
• July 15th – ‘The New Business Intelligence’ (Bernard Blais, Senior Manager,
SAS Global Technology Practice)
• August 26th – ‘Hosting SAS in the Cloud’ (Robert Tee, Manager, SAS
Consulting)
• September 23rd – ‘Training Analysts to Meet Today’s Demanding Business
Requirements’ (Marje Fecht, Senior Partner, Prowerk Consulting)
Copyright © 2012, SAS Institute Inc. All rights reserved.
WELCOME
EPISODE 1: SUSTAINING ANALYTICAL CAPABILITIES
WITHIN AN ORGANIZATION
• Daymond Ling, Senior Director,
Modelling & Analytics (CIBC)
Copyright © 2012, SAS Institute Inc. All rights reserved.
1. Deliver value
2. Analytics Process and Maturity
3. Elements of Analytics Capability
4. People
5. Culture
6. Organization
Agenda
Copyright © 2012, SAS Institute Inc. All rights reserved.
Organizations want better performance.
Organizations need to have problems identified and solved.
Organizations don’t want analytics for its own sake.
Sustainability is all about continuous value delivery.
Analytics done right creates value. It is an enabler.
1. Deliver Value
Copyright © 2012, SAS Institute Inc. All rights reserved.
Drive Results
Governance
 Origination
 Vetting
 Prioritization
DeployDeployAnalyticsAnalyticsTopicsTopics
Discovery
 Framework
 Analysis
 Knowledge Management
Action
 Communication
 Recommendation
 Implementation
Copyright © 2012, SAS Institute Inc. All rights reserved.
Relevance
 Origination
 Where ideas come from
 Stay connected
 Vetting / Prioritization
 Answer what you know,
find out what you don’t
 Alignment to strategy
 Prioritization
Origination
 Sources of questions arise from all major divisions of an
organization. Understand major issues facing organization to solve
important problems is crucial to focus and value.
 Mechanism to continuously stay connected to collect and inventory
the questions / answers
Vetting / Prioritization
 Key issues of an organization evolve slowly. Use available
knowledge to answer questions where possible.
 New discovery projects aligned to strategy and have significant
potential payback. Vet, prioritize, and stream strategic, tactical
and operational work.
 Advanced analytics discovery results in improved processes and
corporate knowledge. As knowledge is gained, they form the corpus
of knowledge that the organization should maintain and leverage.
Do The Right WorkDo The Right Work
TopicsTopics
Copyright © 2012, SAS Institute Inc. All rights reserved.
Different
Workstreams
# of Projects Impact of workEffort of work
Strategic
Tactical
Operational
DifferentStreamDifferentStream
Strategic Tactical Operational
Nature of work Fuzzy Bounded Precisely defined
Subject Area Many Single area Single process
Questions Many Several Single
Approach Investigate Probe Diagnose & tune
Example New way of doing business Grow a line of business A well defined Fraud Detection model
within a particular system
DifferentValueDifferentValue
Engagement spectrumEngagement spectrum
Copyright © 2012, SAS Institute Inc. All rights reserved.
Analytics
 Framework
 Business issues
 Analytic approach
 Analysis
 Quantitative analysis
 Iterative discovery process
 Knowledge Management
 Corporate knowledge
Framework
 The business framework deals with the “what”. It describes the issues, the
set of questions and considerations, the relevant business metrics, what the
desired outcome look like, and success criteria if applicable.
 The analytical framework is about the “how”. It translates the business
framework into mathematical formulation and technical analysis processes
that effectively answer the business framework concisely, accurately, and
efficiently.
Analysis
 Broad range of activities from simple reporting, in-depth drill-down, mapping
process flows and metrics, predictive analytics, up to systems simulation and
mathematical optimization of systems.
 Analysis is only successful if the business framework is relevant and correct.
Knowledge Management
 Manage the corpus of corporate knowledge to ensure it is easily retrievable
Do The Work RightDo The Work Right
AnalyticsAnalytics
Copyright © 2012, SAS Institute Inc. All rights reserved.
Deploy
 Communication
 Business insights
 Recommendation
 Action plan
 Implementation
 Change management
 Post change review
Communication
 Share findings with stakeholders and partners
 What’s working, what’s not working
Recommendation
 Craft action plans
 What to start, what to stop
Implementation
 Delivering against action plan
 Monitor actual results against expectation to realize benefits
No action creates no (immediate) value
? Inappropriate work
? Analysis paralysis / fulfill curiosity
? Work incomplete / incorrect
? Controversial findings
? Organizational willingness to act
? Lack of funding / capability gap
No action creates no (immediate) value
? Inappropriate work
? Analysis paralysis / fulfill curiosity
? Work incomplete / incorrect
? Controversial findings
? Organizational willingness to act
? Lack of funding / capability gap
Insight into ActionInsight into Action
DeployDeploy
Copyright © 2012, SAS Institute Inc. All rights reserved.
2. Analytics process
Domain knowledge Don’t care
Understand processes Don’t care
Know what data is relevant Leave out important data
Know how data relate to process Data are just numbers
Solve right problem Solve wrong problem
Flawless and efficient Wrong technique done wrong
Articulate findings Can’t relate to domain or process
Solutions Talk math
Generating insight is more than doing mathGenerating insight is more than doing math
Domain
Process
Data
Analytics
Story
Copyright © 2012, SAS Institute Inc. All rights reserved.
Analytics Maturity
Data
Management
Data
Management
Advanced Analytics:
Statistics & Optimization
Advanced Analytics:
Statistics & Optimization
Business
Analytics
Business
Analytics
Reporting and
Trending
Reporting and
Trending
 Master Data
Management
 360 view
 Dashboard
 Standard reports
 Report specification
 Opportunity sizing
 Root cause analysis
 Problem solving
 Explanatory effects
 Prediction
 Time series analysis
 Optimal decision under
competing conditions or
constraints
 Reporting software
 SQL
 Entity relationship
 Warehouse
 Hadoop
 Reporting software
 Data Visualization
 Statistics
 Time series
 Optimization
 Simulation
TypeofworkTypeofworkMethodMethod
Where are you, where do you want to beWhere are you, where do you want to be
Copyright © 2012, SAS Institute Inc. All rights reserved.
Analytics Maturity
Demand is uneven across
this spectrum.
Enable the organization
to run efficiently now.
Lead the organization on
the Art of the Possible.
Demand is uneven across
this spectrum.
Enable the organization
to run efficiently now.
Lead the organization on
the Art of the Possible.
Current and Now
Future and Possible
Lead The WayLead The Way
Copyright © 2012, SAS Institute Inc. All rights reserved.
3. Capability
PeoplePeople
ToolsTools ProcessProcessDataData + +
Analytics is an intellectually intensive knowledge discovery process.
It is human thought enabled and amplified by powerful machine learning
techniques and tools.
Quality of outcome is predominantly determined by the pilot, not the machineQuality of outcome is predominantly determined by the pilot, not the machine
SynergySynergy
Copyright © 2012, SAS Institute Inc. All rights reserved.
Synergy
PeoplePeople
ToolsTools ProcessProcessDataData + +
The view of “dump data into the machine and answers pop out” is an
incomplete portrayal of the analytics process.
People bring experience, creativity and judgment to the discovery journey.
People decide the direction and make decisions along the way.
Tools handle well specified (very powerful) computational tasks. They
discover nuggets of information, pieces of the puzzle, but it can’t “know”.
World class analytics requires firing on all four cylinders.
✘
People exercise intuition and judgment, machine crunch numbersPeople exercise intuition and judgment, machine crunch numbers
Copyright © 2012, SAS Institute Inc. All rights reserved.
4. People
AnalyticsAnalytics PeoplePeople ProcessProcess ToolsTools DataData+ + +
Business
Driver
Business
Driver
Analytics
Engine
Analytics
Engine
Origination
Vetting / Prioritization
Framework
Analysis
Communicate
Change
Business Change Agent
Know business issues well
Know what are important
Know where analytics can be used
Know what’s possible conceptually
Communicate business impact
Craft and drive change management
Technical Excellence
Has business domain knowledge
Understands business processes
Knows how to structure analytics
Technical expert in advanced analytics
Present technical finding in business terms
Assess success of process changes
Two complementary skills
Technical Excellence and Business SavvyTechnical Excellence and Business Savvy
Copyright © 2012, SAS Institute Inc. All rights reserved.
Talent Attribute
 Quantitative skills
 Problem solver
 Keen learner
 Objectivity
 Communication
 Team player
PASSIONPASSION
Large scale analytics is a team sportLarge scale analytics is a team sport
Copyright © 2012, SAS Institute Inc. All rights reserved.
5. Culture
Clarity of purpose Unclear objectives, impossible tasks
Involve Dictate
Work is valued Ignored or lack implementation
Open to explore Rigid project management
Open to experimentation Mistakes not allowed
Supportive team Working alone
Learning & SolvingLearning & Solving
Copyright © 2012, SAS Institute Inc. All rights reserved.
6. Organization
Domain Expertise
Familiarity with business and processes
Familiarity with systems and data
Ease of mobilization
Quality of work
Speed of delivery
Cost
Knowledge management
Copyright © 2012, SAS Institute Inc. All rights reserved.
Large Organization
 Analytics Centre of Excellence
 Distributed Analytics Function
 Centralized Analytics
 Analytics islands
 Analytics individuals
Scale MattersScale Matters
Copyright © 2012, SAS Institute Inc. All rights reserved.
Engage. Just Do It. Start Now. Don’t Wait. Learn & adjust along the way.Start Now. Don’t Wait. Learn & adjust along the way.
Copyright © 2012, SAS Institute Inc. All rights reserved.
Thank You
You can find me (Daymond Ling) on Linkedin

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How to sustain analytics capabilities in an organization

  • 1. Copyright © 2012, SAS Institute Inc. All rights reserved. ANALYTICS MANAGEMENT SERIES PRESENTED BY SAS CANADA
  • 2. Copyright © 2012, SAS Institute Inc. All rights reserved. WHY? GROWTH IN ANALYTICAL ENVIRONMENTS • Complex to develop, support, sustain and manage • Challenging to realize maximum value from investment
  • 3. Copyright © 2012, SAS Institute Inc. All rights reserved. SERIES OVERVIEW ANALYTICS MANAGEMENT SERIES • Designed to suggest paths towards effective decision-making in order to help sustain and grow analytical capabilities • Thought leaders who actively manage complex analytical environments will share their best practices and engage in discussion by responding to your questions at the end of the presentation • Chat functionality is enabled and being monitored • Webinars are recorded and will be made available on the SAS Canada Community (http://sascanada.ning.com) ‘On Demand’
  • 4. Copyright © 2012, SAS Institute Inc. All rights reserved. UPCOMING WEBINARS • June 30th – ‘How an Internal Consulting Unit Can Support Enterprise Analytics’ (Eugene Wen, VP & Chief Statistician, WSIB) • July 15th – ‘The New Business Intelligence’ (Bernard Blais, Senior Manager, SAS Global Technology Practice) • August 26th – ‘Hosting SAS in the Cloud’ (Robert Tee, Manager, SAS Consulting) • September 23rd – ‘Training Analysts to Meet Today’s Demanding Business Requirements’ (Marje Fecht, Senior Partner, Prowerk Consulting)
  • 5. Copyright © 2012, SAS Institute Inc. All rights reserved. WELCOME EPISODE 1: SUSTAINING ANALYTICAL CAPABILITIES WITHIN AN ORGANIZATION • Daymond Ling, Senior Director, Modelling & Analytics (CIBC)
  • 6. Copyright © 2012, SAS Institute Inc. All rights reserved. 1. Deliver value 2. Analytics Process and Maturity 3. Elements of Analytics Capability 4. People 5. Culture 6. Organization Agenda
  • 7. Copyright © 2012, SAS Institute Inc. All rights reserved. Organizations want better performance. Organizations need to have problems identified and solved. Organizations don’t want analytics for its own sake. Sustainability is all about continuous value delivery. Analytics done right creates value. It is an enabler. 1. Deliver Value
  • 8. Copyright © 2012, SAS Institute Inc. All rights reserved. Drive Results Governance  Origination  Vetting  Prioritization DeployDeployAnalyticsAnalyticsTopicsTopics Discovery  Framework  Analysis  Knowledge Management Action  Communication  Recommendation  Implementation
  • 9. Copyright © 2012, SAS Institute Inc. All rights reserved. Relevance  Origination  Where ideas come from  Stay connected  Vetting / Prioritization  Answer what you know, find out what you don’t  Alignment to strategy  Prioritization Origination  Sources of questions arise from all major divisions of an organization. Understand major issues facing organization to solve important problems is crucial to focus and value.  Mechanism to continuously stay connected to collect and inventory the questions / answers Vetting / Prioritization  Key issues of an organization evolve slowly. Use available knowledge to answer questions where possible.  New discovery projects aligned to strategy and have significant potential payback. Vet, prioritize, and stream strategic, tactical and operational work.  Advanced analytics discovery results in improved processes and corporate knowledge. As knowledge is gained, they form the corpus of knowledge that the organization should maintain and leverage. Do The Right WorkDo The Right Work TopicsTopics
  • 10. Copyright © 2012, SAS Institute Inc. All rights reserved. Different Workstreams # of Projects Impact of workEffort of work Strategic Tactical Operational DifferentStreamDifferentStream Strategic Tactical Operational Nature of work Fuzzy Bounded Precisely defined Subject Area Many Single area Single process Questions Many Several Single Approach Investigate Probe Diagnose & tune Example New way of doing business Grow a line of business A well defined Fraud Detection model within a particular system DifferentValueDifferentValue Engagement spectrumEngagement spectrum
  • 11. Copyright © 2012, SAS Institute Inc. All rights reserved. Analytics  Framework  Business issues  Analytic approach  Analysis  Quantitative analysis  Iterative discovery process  Knowledge Management  Corporate knowledge Framework  The business framework deals with the “what”. It describes the issues, the set of questions and considerations, the relevant business metrics, what the desired outcome look like, and success criteria if applicable.  The analytical framework is about the “how”. It translates the business framework into mathematical formulation and technical analysis processes that effectively answer the business framework concisely, accurately, and efficiently. Analysis  Broad range of activities from simple reporting, in-depth drill-down, mapping process flows and metrics, predictive analytics, up to systems simulation and mathematical optimization of systems.  Analysis is only successful if the business framework is relevant and correct. Knowledge Management  Manage the corpus of corporate knowledge to ensure it is easily retrievable Do The Work RightDo The Work Right AnalyticsAnalytics
  • 12. Copyright © 2012, SAS Institute Inc. All rights reserved. Deploy  Communication  Business insights  Recommendation  Action plan  Implementation  Change management  Post change review Communication  Share findings with stakeholders and partners  What’s working, what’s not working Recommendation  Craft action plans  What to start, what to stop Implementation  Delivering against action plan  Monitor actual results against expectation to realize benefits No action creates no (immediate) value ? Inappropriate work ? Analysis paralysis / fulfill curiosity ? Work incomplete / incorrect ? Controversial findings ? Organizational willingness to act ? Lack of funding / capability gap No action creates no (immediate) value ? Inappropriate work ? Analysis paralysis / fulfill curiosity ? Work incomplete / incorrect ? Controversial findings ? Organizational willingness to act ? Lack of funding / capability gap Insight into ActionInsight into Action DeployDeploy
  • 13. Copyright © 2012, SAS Institute Inc. All rights reserved. 2. Analytics process Domain knowledge Don’t care Understand processes Don’t care Know what data is relevant Leave out important data Know how data relate to process Data are just numbers Solve right problem Solve wrong problem Flawless and efficient Wrong technique done wrong Articulate findings Can’t relate to domain or process Solutions Talk math Generating insight is more than doing mathGenerating insight is more than doing math Domain Process Data Analytics Story
  • 14. Copyright © 2012, SAS Institute Inc. All rights reserved. Analytics Maturity Data Management Data Management Advanced Analytics: Statistics & Optimization Advanced Analytics: Statistics & Optimization Business Analytics Business Analytics Reporting and Trending Reporting and Trending  Master Data Management  360 view  Dashboard  Standard reports  Report specification  Opportunity sizing  Root cause analysis  Problem solving  Explanatory effects  Prediction  Time series analysis  Optimal decision under competing conditions or constraints  Reporting software  SQL  Entity relationship  Warehouse  Hadoop  Reporting software  Data Visualization  Statistics  Time series  Optimization  Simulation TypeofworkTypeofworkMethodMethod Where are you, where do you want to beWhere are you, where do you want to be
  • 15. Copyright © 2012, SAS Institute Inc. All rights reserved. Analytics Maturity Demand is uneven across this spectrum. Enable the organization to run efficiently now. Lead the organization on the Art of the Possible. Demand is uneven across this spectrum. Enable the organization to run efficiently now. Lead the organization on the Art of the Possible. Current and Now Future and Possible Lead The WayLead The Way
  • 16. Copyright © 2012, SAS Institute Inc. All rights reserved. 3. Capability PeoplePeople ToolsTools ProcessProcessDataData + + Analytics is an intellectually intensive knowledge discovery process. It is human thought enabled and amplified by powerful machine learning techniques and tools. Quality of outcome is predominantly determined by the pilot, not the machineQuality of outcome is predominantly determined by the pilot, not the machine SynergySynergy
  • 17. Copyright © 2012, SAS Institute Inc. All rights reserved. Synergy PeoplePeople ToolsTools ProcessProcessDataData + + The view of “dump data into the machine and answers pop out” is an incomplete portrayal of the analytics process. People bring experience, creativity and judgment to the discovery journey. People decide the direction and make decisions along the way. Tools handle well specified (very powerful) computational tasks. They discover nuggets of information, pieces of the puzzle, but it can’t “know”. World class analytics requires firing on all four cylinders. ✘ People exercise intuition and judgment, machine crunch numbersPeople exercise intuition and judgment, machine crunch numbers
  • 18. Copyright © 2012, SAS Institute Inc. All rights reserved. 4. People AnalyticsAnalytics PeoplePeople ProcessProcess ToolsTools DataData+ + + Business Driver Business Driver Analytics Engine Analytics Engine Origination Vetting / Prioritization Framework Analysis Communicate Change Business Change Agent Know business issues well Know what are important Know where analytics can be used Know what’s possible conceptually Communicate business impact Craft and drive change management Technical Excellence Has business domain knowledge Understands business processes Knows how to structure analytics Technical expert in advanced analytics Present technical finding in business terms Assess success of process changes Two complementary skills Technical Excellence and Business SavvyTechnical Excellence and Business Savvy
  • 19. Copyright © 2012, SAS Institute Inc. All rights reserved. Talent Attribute  Quantitative skills  Problem solver  Keen learner  Objectivity  Communication  Team player PASSIONPASSION Large scale analytics is a team sportLarge scale analytics is a team sport
  • 20. Copyright © 2012, SAS Institute Inc. All rights reserved. 5. Culture Clarity of purpose Unclear objectives, impossible tasks Involve Dictate Work is valued Ignored or lack implementation Open to explore Rigid project management Open to experimentation Mistakes not allowed Supportive team Working alone Learning & SolvingLearning & Solving
  • 21. Copyright © 2012, SAS Institute Inc. All rights reserved. 6. Organization Domain Expertise Familiarity with business and processes Familiarity with systems and data Ease of mobilization Quality of work Speed of delivery Cost Knowledge management
  • 22. Copyright © 2012, SAS Institute Inc. All rights reserved. Large Organization  Analytics Centre of Excellence  Distributed Analytics Function  Centralized Analytics  Analytics islands  Analytics individuals Scale MattersScale Matters
  • 23. Copyright © 2012, SAS Institute Inc. All rights reserved. Engage. Just Do It. Start Now. Don’t Wait. Learn & adjust along the way.Start Now. Don’t Wait. Learn & adjust along the way.
  • 24. Copyright © 2012, SAS Institute Inc. All rights reserved. Thank You You can find me (Daymond Ling) on Linkedin