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USE CASES FORTHE MODERN DATA PLATFORM
THE FUTURE OF DATA & ANALYTICS
Alex Gray (Regional Manager) May 2020
alexg@altis.co.nz
1Commercial-in-Confidence
AGENDA
2
• Welcome
• What is a modern data platform
• How is this different from a traditional set up
• Separating out use case from delivery approach
• The three approaches with choosing use cases
• Where those approaches have worked
• Where they have struggled
• How do Design Patterns come into play with a
Modern Data Platform
• How have organisations managed their costs
• Picking Native PaaS vs 3rd party PaaS
components for your use case
• How to identify what “success” for a use case
looks like
• Q & A
Commercial-in-Confidence
Australia and New Zealand’s largest
privately owned Data & Analytics
consultancy
For 22 years, we have been combining
industry expertise with technical capability
to deliver tangible business outcomes while
maintaining the Altis ethos of Connecting
with Courage, Heart and Insight.
Established in 1998
Offices in Sydney, Brisbane, Melbourne,
Canberra, Auckland and London
Vendor independent
ABOUT ALTIS
115+ 3Commercial-in-Confidence
Altis NAMED IN GARTNER’S MARKET GUIDE
4Commercial-in-Confidence
For the second year in a row, Altis Consulting has been recognised in
Gartner Inc.’s “Market Guide for Data and Analytics Service Providers”.
The report identifies service providers with a proven track record of
delivering successful analytics programs.
Altis’ CEO, John Hoffman said, “Our inclusion in the Gartner report
reaffirms our position as the leading data and analytics service provider
in Australia and New Zealand. Our focus on utilising industry expertise,
modern technologies, and repeatable patterns to accelerate the delivery
of tangible business outcomes for our clients continues to shine through.
We are delighted to be acknowledged again.”
5
WHAT: is a Modern Data
Platform
Commercial-in-Confidence
6
What is a modern data platform
Commercial-in-Confidence
7
What is a modern data platform - Roadmap
Commercial-in-Confidence
8
What is a modern data platform – Data Design
Commercial-in-Confidence
9
WHY: is this important
Commercial-in-Confidence
10
What is a modern data platform – Maturity
Commercial-in-Confidence
Microsoft’s data and analytics maturity curve Gartner’s recommendations and maturity stages
Not just technology
How is this different from a traditional set up
• Flexibility
• Scale
• Tailored Design
• Cost
Time to action is
shortened through
repeatable
machine-centered
analysis
Recap: Human vs Machine decision making and
automation
Commercial-in-Confidence 13
14
HOW: picking the initial use
cases
Commercial-in-Confidence
Separating out use case from delivery approach
• Be careful of how you are interlaying delivery over the top of use cases
• CI/CD
• Agile Delivery
• DataOps
• Don’t have delivery as a use case, that is an implementation style
The three types of initial use case
• Lift and Shift with a twist
• Taking something that exists and:
• Adding additional source systems
• Making it run more often
• Storing it in a different data format (ie data lake)
• Like for Like Lift and Shift is not a “use case”, it’s an approach
The three types of initial use case
• Hitting a Roadmap milestone
• Machine Learning
• Artificial Intelligence
• Chatbot
• IoT
The three types of initial use case
• An important win for the organisations strategy
• We have this new direction for the business, we might as well tie to this new
platform
Where those approaches have worked
• Lift and Shift with a twist
• Streaming some data that will give users valid information at the time that they
need to make a decision. Feeding live data into some easier to calculate KPI’s,
will give an organisation, the benefits of seeing what real time information can
do to their business
• Hitting a Roadmap milestone
• There was enough data of good enough quality to get the results that the
organisation was then able to trust that it would be good enough to validate
results. In Machine Learning, initial use cases should augment the decision
process, not automate it. It should give decision makers, better information to
give a better educated decision, not remove that decision from being made.
• An important win for the organisations strategy
• Where the strategy is small enough that it is manageable, it should ideally be a
lower level strategy, as not all use cases in the Modern Data Platform, will
return immediate benefits.
Where organisations have struggled
• Lift and Shift with a twist
• Moved from 15 minute refreshes for existing reporting to 5 minutes in new
Modern Data Platform. 5 minute refreshes didn’t give any additional value, but
cost significant dollars to run ongoing.
• Real time reporting through streaming, can also cause issues for the business
then understanding why all reporting can’t then be real time.
• Hitting a Roadmap milestone
• The data wasn’t there to support the Machine Learning outcome that was
desired. The outcome wasn’t statistically accurate enough to give value and
thus deemed a failure, putting Machine Learning on hold for an additional 12
months
• An important win for the organisations strategy
• The strategy was important to the organisation and got lots of visibility, but the
business process wasn’t ready to support down stream usage. This is a
misalignment of tactics to strategy
Prioritisation
• Identify 3-5 use cases for each of the 3 types and prioritise
22
HOW: managing costs
Commercial-in-Confidence
How do Design Patterns come into play
How have organisations managed their costs
• Initial IT Driven spend bucket
• Business Unit driven
• Project Driven
Picking Native PaaS vs 3rd party components
• 3rd part components play an important part with:
• Controlling costs
• Better integration
• Tailored to easier development
• Our experience is to try native PaaS, understand the areas of concern and make an
informed decision.
26
HOW: understanding success
Commercial-in-Confidence
How to identify what “success” looks like
• Prove the benefit
• Need to understand cost and how to account for it
• Need to understand how the implementation ongoing would look like
• Need to give the business additional value from their current state
QUESTIONS
28Commercial-in-Confidence
29Commercial-in-Confidence
CONNECT WITH US
www.altis.com.au
connect@altis.com.au
+61 9211 1522
twitter.com/altis_DWBI
facebook.com/altisconsulting/
linkedin.com/company/altis-consulting/
youtube.com/AltisConsulting

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Modern Data Platform Use Cases

  • 1. USE CASES FORTHE MODERN DATA PLATFORM THE FUTURE OF DATA & ANALYTICS Alex Gray (Regional Manager) May 2020 alexg@altis.co.nz 1Commercial-in-Confidence
  • 2. AGENDA 2 • Welcome • What is a modern data platform • How is this different from a traditional set up • Separating out use case from delivery approach • The three approaches with choosing use cases • Where those approaches have worked • Where they have struggled • How do Design Patterns come into play with a Modern Data Platform • How have organisations managed their costs • Picking Native PaaS vs 3rd party PaaS components for your use case • How to identify what “success” for a use case looks like • Q & A Commercial-in-Confidence
  • 3. Australia and New Zealand’s largest privately owned Data & Analytics consultancy For 22 years, we have been combining industry expertise with technical capability to deliver tangible business outcomes while maintaining the Altis ethos of Connecting with Courage, Heart and Insight. Established in 1998 Offices in Sydney, Brisbane, Melbourne, Canberra, Auckland and London Vendor independent ABOUT ALTIS 115+ 3Commercial-in-Confidence
  • 4. Altis NAMED IN GARTNER’S MARKET GUIDE 4Commercial-in-Confidence For the second year in a row, Altis Consulting has been recognised in Gartner Inc.’s “Market Guide for Data and Analytics Service Providers”. The report identifies service providers with a proven track record of delivering successful analytics programs. Altis’ CEO, John Hoffman said, “Our inclusion in the Gartner report reaffirms our position as the leading data and analytics service provider in Australia and New Zealand. Our focus on utilising industry expertise, modern technologies, and repeatable patterns to accelerate the delivery of tangible business outcomes for our clients continues to shine through. We are delighted to be acknowledged again.”
  • 5. 5 WHAT: is a Modern Data Platform Commercial-in-Confidence
  • 6. 6 What is a modern data platform Commercial-in-Confidence
  • 7. 7 What is a modern data platform - Roadmap Commercial-in-Confidence
  • 8. 8 What is a modern data platform – Data Design Commercial-in-Confidence
  • 9. 9 WHY: is this important Commercial-in-Confidence
  • 10. 10 What is a modern data platform – Maturity Commercial-in-Confidence Microsoft’s data and analytics maturity curve Gartner’s recommendations and maturity stages
  • 12. How is this different from a traditional set up • Flexibility • Scale • Tailored Design • Cost
  • 13. Time to action is shortened through repeatable machine-centered analysis Recap: Human vs Machine decision making and automation Commercial-in-Confidence 13
  • 14. 14 HOW: picking the initial use cases Commercial-in-Confidence
  • 15. Separating out use case from delivery approach • Be careful of how you are interlaying delivery over the top of use cases • CI/CD • Agile Delivery • DataOps • Don’t have delivery as a use case, that is an implementation style
  • 16. The three types of initial use case • Lift and Shift with a twist • Taking something that exists and: • Adding additional source systems • Making it run more often • Storing it in a different data format (ie data lake) • Like for Like Lift and Shift is not a “use case”, it’s an approach
  • 17. The three types of initial use case • Hitting a Roadmap milestone • Machine Learning • Artificial Intelligence • Chatbot • IoT
  • 18. The three types of initial use case • An important win for the organisations strategy • We have this new direction for the business, we might as well tie to this new platform
  • 19. Where those approaches have worked • Lift and Shift with a twist • Streaming some data that will give users valid information at the time that they need to make a decision. Feeding live data into some easier to calculate KPI’s, will give an organisation, the benefits of seeing what real time information can do to their business • Hitting a Roadmap milestone • There was enough data of good enough quality to get the results that the organisation was then able to trust that it would be good enough to validate results. In Machine Learning, initial use cases should augment the decision process, not automate it. It should give decision makers, better information to give a better educated decision, not remove that decision from being made. • An important win for the organisations strategy • Where the strategy is small enough that it is manageable, it should ideally be a lower level strategy, as not all use cases in the Modern Data Platform, will return immediate benefits.
  • 20. Where organisations have struggled • Lift and Shift with a twist • Moved from 15 minute refreshes for existing reporting to 5 minutes in new Modern Data Platform. 5 minute refreshes didn’t give any additional value, but cost significant dollars to run ongoing. • Real time reporting through streaming, can also cause issues for the business then understanding why all reporting can’t then be real time. • Hitting a Roadmap milestone • The data wasn’t there to support the Machine Learning outcome that was desired. The outcome wasn’t statistically accurate enough to give value and thus deemed a failure, putting Machine Learning on hold for an additional 12 months • An important win for the organisations strategy • The strategy was important to the organisation and got lots of visibility, but the business process wasn’t ready to support down stream usage. This is a misalignment of tactics to strategy
  • 21. Prioritisation • Identify 3-5 use cases for each of the 3 types and prioritise
  • 23. How do Design Patterns come into play
  • 24. How have organisations managed their costs • Initial IT Driven spend bucket • Business Unit driven • Project Driven
  • 25. Picking Native PaaS vs 3rd party components • 3rd part components play an important part with: • Controlling costs • Better integration • Tailored to easier development • Our experience is to try native PaaS, understand the areas of concern and make an informed decision.
  • 27. How to identify what “success” looks like • Prove the benefit • Need to understand cost and how to account for it • Need to understand how the implementation ongoing would look like • Need to give the business additional value from their current state
  • 29. 29Commercial-in-Confidence CONNECT WITH US www.altis.com.au connect@altis.com.au +61 9211 1522 twitter.com/altis_DWBI facebook.com/altisconsulting/ linkedin.com/company/altis-consulting/ youtube.com/AltisConsulting

Editor's Notes

  1. WHAT: is Augmented Analytics
  2. WHAT: is Augmented Analytics
  3. WHAT: is Augmented Analytics
  4. WHAT: is Augmented Analytics
  5. WHAT: is Augmented Analytics