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© 2018, Amazon Web Services, Inc. or its Affiliates. All rights reserved.
Vicky Falconer, Head of Analytics and Big Data - ANZ, AWS
Craig Stires, Head of AI, Analytics, Big Data - Asia Pacific, AWS
October 2018
Data Driven Decisions
Building an Insight Driven Culture
© 2018, Amazon Web Services, Inc. or its Affiliates. All rights reserved. Amazon Confidential and Trademark© 2018, Amazon Web Services, Inc. or its Affiliates. All rights reserved. Amazon Confidential and Trademark
Inventing on behalf of the customer
v
Amazon Confidential
v
Amazon Confidential
Amazon Confidential
Amazon Confidential
Amazon Confidential
© 2017, Amazon Web Services, Inc. or its Affiliates. All rights reserved.© 2018, Amazon Web Services, Inc. or its Affiliates. All rights reserved.
Innovation with Machine Learning at Amazon
Personalized
recommendations
Inventing
entirely new
customer
experiences
Fulfillment
automation
/ inventory
management
Drones Voice driven
interactions
© 2017, Amazon Web Services, Inc. or its Affiliates. All rights reserved.© 2018, Amazon Web Services, Inc. or its Affiliates. All rights reserved.
Invention requires two things:
the ability to try a lot of experiments,
and not having to live with collateral damage of failed experiments
Andy Jassy, CEO Amazon Web Services
© 2017, Amazon Web Services, Inc. or its Affiliates. All rights reserved.© 2018, Amazon Web Services, Inc. or its Affiliates. All rights reserved.
The Amazon Data Lake - Objectives
Provide an analytic ecosystem that
Scales with the Amazon Business
Leverage the broad AWS platform to
drive a better customer experience
for all Amazon customers
To Provide Choice and Options in New Analytic Technologies
- Focus on new analytic approaches including Machine Learning and Programmatic Analysis
- Enable both “Bring Your Own Cluster” and “Bring your Own Query” approaches
© 2017, Amazon Web Services, Inc. or its Affiliates. All rights reserved.© 2018, Amazon Web Services, Inc. or its Affiliates. All rights reserved.
Table Subscriptions - The VisionGoverned and secure - data subscriptions
v
Amazon Confidential
v
Amazon Confidential
© 2018, Amazon Web Services, Inc. or its Affiliates. All rights reserved. Amazon Confidential and Trademark
Quote
“We've had three big ideas at Amazon that we've stuck
with for 18 years, and they're the reason we're
successful: put the customer first, invent, and be patient”
- Jeff Bezos
© 2018, Amazon Web Services, Inc. or its Affiliates. All rights reserved. Amazon Confidential and Trademark© 2018, Amazon Web Services, Inc. or its Affiliates. All rights reserved. Amazon Confidential and Trademark
Perspectives on a data driven
culture…
How good are you at using insights to make decisions?
Stage 1
Analytically
Impaired
Stage 2
Localised
Analytics
Stage 4
Analytical
Companies
Stage 3
Analytical
Aspirations
Stage 5
Insight Driven
Organisation
Aware of analytics, but
little to no infrastructure
and poorly defined
analytics strategy
Adopting analytics,
building capability and
articulating an analytics
strategy in silos
Expanding ad-hoc
analytical capabilities
beyond silos and into
mainstream business
functions
Industrialising analytics
to aggregate & combine
data from broad sources
into meaningful content
and new ideas
Transforming analytics
to streamline decision
making across all
business functions
Being insight driven is all about…..
Process
Demand and
Prioritisation
Process
Re-engineering
Agility and
Scalability
Governance
Benefits
Realisation
Technology
Solution
Architecture
Vendor
Management
Cloud vs.
On Premises
Security &
Reliability
Sandbox &
Industrialising
Data
Data Quality
and
Management
Information
Model and
Data Sources
Regulation and
Compliance
Ethics and
Sharing
Privacy &
Security
People Talent
Change
Journey
Leadership
Knowledge
Management
Organisation
Design
Strategy
Stakeholder
Management
Analytics
Vision
Innovation
Value Drivers
and
Business Case
Operating
Model1. Asking the right
questions
2. Doing the
right analysis
3. Taking the right
actions
The building blocks of an IDO
DATA WAREHOUSING
BUSINESS INTELLIGENCE
ERP APPLICATIONS
DATA MODELING
CLOUD
VIRTUALISATION
INTERNET
OF THINGS
INTELLIGENT
AGENTS
TEXT
ANALYTICS
MACHINE LEARNING &
PREDICTIVE ANALYTICS
ARTIFICIAL INTELLIGENCE
& COGNITIVE ANALYTICS
CROWD-SOURCING
& COMPETITIONS
ADVANCED HUMAN
COMPUTER INTERFACE
TABLE STAKES MODERNISERS EXPONENTIALS
LEVELOFENTERPRISE-WIDEADOPTION
CYBER SECURITY
VISUALISATION DATA LAKES BIG DATA
… and applying the right technology for the right problem
Purple people help deliver meaningful (and actionable) insights
Testing and Validation
Data Querying /
Integration
Data
Modelling
Data Analysis
Reporting &
Analytics
Alignment to
Business Value
Macro-
Perspective
Business
Knowledge
Business
Commentary
Soft
Skills
Becoming an IDO requires an incremental approach
Operating
model
Iterative capabilities
and platform
IDO
Use Case 1
Use Case 2
Use Case 3
Use Case 4
Now
Incremental delivery of
value…
…driving strategic decisions
Vague Specific
And starts with asking the right “crunchy” question
Real life example:
How many public
transport services do I
need to bring forward
to evacuate the CBD in
less than 30 minutes
due to an emergency?
What do we mean by a crunchy question?
Where to start?
Digital Intent PredictionVideo Analytics Revenue Assurance
Cognitive Chatbots &
Predictions
IoT/Telematics Data Sharing
Bringing it together - AWS Deloitte ML lab
• Explore the Art of the Possible, through relevant
examples of global machine learning best practice
• Describe your vision for insight-driven decisions,
and understand your current IDO maturity
• Capture and prioritise crunchy questions, for
selection as an ML proof of concept
© 2018, Amazon Web Services, Inc. or its Affiliates. All rights reserved.
Table Discussion
What one outcome is most
compelling to becoming a data
driven business?
What do you believe is (or was)
the hardest change in achieving
this?
Actions being intelligently produced from the collected
data.
Quality & Speed of decision making
More informed decision making.
Mitigation of risk
Engaging, empowering and taking the users on the
journey. The users need to realise the value in the
information they seek and use make informed decisions.
Exposing accurate information to allow the business to
self service, otherwise adoption is very difficult
Superior, revenue-generating, actionable growth insights
Educating stakeholders on capability and building the
business case
Communication between end-points and ensuring the
appropriate amount of data is being collected (not too
much or too little).
Culture and mindset
Finding a case for this in our business.
Reconciling outputs of models with traditional decision
making processes
Prioritising and obtaining near real time data sets from
"older" source systems
Lack of understanding by senior leadership
Bringing it together - AWS Deloitte ML lab
• Explore the Art of the Possible, through relevant
examples of global machine learning best practice
• Describe your vision for insight-driven decisions,
and understand your current IDO maturity
• Capture and prioritise crunchy questions, for
selection as an ML proof of concept
© 2018, Amazon Web Services, Inc. or its Affiliates. All rights reserved. Amazon Confidential and Trademark© 2018, Amazon Web Services, Inc. or its Affiliates. All rights reserved. Amazon Confidential and Trademark
Thank you…

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Data Driven Decisions: Building an Insight Driven Culture

  • 1. © 2018, Amazon Web Services, Inc. or its Affiliates. All rights reserved. Vicky Falconer, Head of Analytics and Big Data - ANZ, AWS Craig Stires, Head of AI, Analytics, Big Data - Asia Pacific, AWS October 2018 Data Driven Decisions Building an Insight Driven Culture
  • 2. © 2018, Amazon Web Services, Inc. or its Affiliates. All rights reserved. Amazon Confidential and Trademark© 2018, Amazon Web Services, Inc. or its Affiliates. All rights reserved. Amazon Confidential and Trademark Inventing on behalf of the customer
  • 8. © 2017, Amazon Web Services, Inc. or its Affiliates. All rights reserved.© 2018, Amazon Web Services, Inc. or its Affiliates. All rights reserved. Innovation with Machine Learning at Amazon Personalized recommendations Inventing entirely new customer experiences Fulfillment automation / inventory management Drones Voice driven interactions
  • 9. © 2017, Amazon Web Services, Inc. or its Affiliates. All rights reserved.© 2018, Amazon Web Services, Inc. or its Affiliates. All rights reserved. Invention requires two things: the ability to try a lot of experiments, and not having to live with collateral damage of failed experiments Andy Jassy, CEO Amazon Web Services
  • 10. © 2017, Amazon Web Services, Inc. or its Affiliates. All rights reserved.© 2018, Amazon Web Services, Inc. or its Affiliates. All rights reserved. The Amazon Data Lake - Objectives Provide an analytic ecosystem that Scales with the Amazon Business Leverage the broad AWS platform to drive a better customer experience for all Amazon customers To Provide Choice and Options in New Analytic Technologies - Focus on new analytic approaches including Machine Learning and Programmatic Analysis - Enable both “Bring Your Own Cluster” and “Bring your Own Query” approaches
  • 11. © 2017, Amazon Web Services, Inc. or its Affiliates. All rights reserved.© 2018, Amazon Web Services, Inc. or its Affiliates. All rights reserved. Table Subscriptions - The VisionGoverned and secure - data subscriptions
  • 14. © 2018, Amazon Web Services, Inc. or its Affiliates. All rights reserved. Amazon Confidential and Trademark Quote “We've had three big ideas at Amazon that we've stuck with for 18 years, and they're the reason we're successful: put the customer first, invent, and be patient” - Jeff Bezos
  • 15. © 2018, Amazon Web Services, Inc. or its Affiliates. All rights reserved. Amazon Confidential and Trademark© 2018, Amazon Web Services, Inc. or its Affiliates. All rights reserved. Amazon Confidential and Trademark Perspectives on a data driven culture…
  • 16. How good are you at using insights to make decisions? Stage 1 Analytically Impaired Stage 2 Localised Analytics Stage 4 Analytical Companies Stage 3 Analytical Aspirations Stage 5 Insight Driven Organisation Aware of analytics, but little to no infrastructure and poorly defined analytics strategy Adopting analytics, building capability and articulating an analytics strategy in silos Expanding ad-hoc analytical capabilities beyond silos and into mainstream business functions Industrialising analytics to aggregate & combine data from broad sources into meaningful content and new ideas Transforming analytics to streamline decision making across all business functions
  • 17. Being insight driven is all about….. Process Demand and Prioritisation Process Re-engineering Agility and Scalability Governance Benefits Realisation Technology Solution Architecture Vendor Management Cloud vs. On Premises Security & Reliability Sandbox & Industrialising Data Data Quality and Management Information Model and Data Sources Regulation and Compliance Ethics and Sharing Privacy & Security People Talent Change Journey Leadership Knowledge Management Organisation Design Strategy Stakeholder Management Analytics Vision Innovation Value Drivers and Business Case Operating Model1. Asking the right questions 2. Doing the right analysis 3. Taking the right actions The building blocks of an IDO
  • 18. DATA WAREHOUSING BUSINESS INTELLIGENCE ERP APPLICATIONS DATA MODELING CLOUD VIRTUALISATION INTERNET OF THINGS INTELLIGENT AGENTS TEXT ANALYTICS MACHINE LEARNING & PREDICTIVE ANALYTICS ARTIFICIAL INTELLIGENCE & COGNITIVE ANALYTICS CROWD-SOURCING & COMPETITIONS ADVANCED HUMAN COMPUTER INTERFACE TABLE STAKES MODERNISERS EXPONENTIALS LEVELOFENTERPRISE-WIDEADOPTION CYBER SECURITY VISUALISATION DATA LAKES BIG DATA … and applying the right technology for the right problem
  • 19. Purple people help deliver meaningful (and actionable) insights Testing and Validation Data Querying / Integration Data Modelling Data Analysis Reporting & Analytics Alignment to Business Value Macro- Perspective Business Knowledge Business Commentary Soft Skills
  • 20. Becoming an IDO requires an incremental approach Operating model Iterative capabilities and platform IDO Use Case 1 Use Case 2 Use Case 3 Use Case 4 Now Incremental delivery of value… …driving strategic decisions
  • 21. Vague Specific And starts with asking the right “crunchy” question
  • 22. Real life example: How many public transport services do I need to bring forward to evacuate the CBD in less than 30 minutes due to an emergency? What do we mean by a crunchy question?
  • 23. Where to start? Digital Intent PredictionVideo Analytics Revenue Assurance Cognitive Chatbots & Predictions IoT/Telematics Data Sharing
  • 24. Bringing it together - AWS Deloitte ML lab • Explore the Art of the Possible, through relevant examples of global machine learning best practice • Describe your vision for insight-driven decisions, and understand your current IDO maturity • Capture and prioritise crunchy questions, for selection as an ML proof of concept
  • 25. © 2018, Amazon Web Services, Inc. or its Affiliates. All rights reserved. Table Discussion What one outcome is most compelling to becoming a data driven business? What do you believe is (or was) the hardest change in achieving this? Actions being intelligently produced from the collected data. Quality & Speed of decision making More informed decision making. Mitigation of risk Engaging, empowering and taking the users on the journey. The users need to realise the value in the information they seek and use make informed decisions. Exposing accurate information to allow the business to self service, otherwise adoption is very difficult Superior, revenue-generating, actionable growth insights Educating stakeholders on capability and building the business case Communication between end-points and ensuring the appropriate amount of data is being collected (not too much or too little). Culture and mindset Finding a case for this in our business. Reconciling outputs of models with traditional decision making processes Prioritising and obtaining near real time data sets from "older" source systems Lack of understanding by senior leadership
  • 26. Bringing it together - AWS Deloitte ML lab • Explore the Art of the Possible, through relevant examples of global machine learning best practice • Describe your vision for insight-driven decisions, and understand your current IDO maturity • Capture and prioritise crunchy questions, for selection as an ML proof of concept
  • 27. © 2018, Amazon Web Services, Inc. or its Affiliates. All rights reserved. Amazon Confidential and Trademark© 2018, Amazon Web Services, Inc. or its Affiliates. All rights reserved. Amazon Confidential and Trademark Thank you…