Your Analytics does not have to be dramatic to be useful

Andrew Patricio
Andrew PatricioFounder at dataeffectiveness.com um Data Effectiveness
Analytics doesn’t have to be
dramatic to be useful
11 September 2023
Background
People
Structure
Data “Science” to Data Science
Background
Intro
Andrew Patricio
Principal, Digital Services UnidosUS
Previous
• DC Govt
• Management Consulting
UnidosUS
UnidosUS, previously known as NCLR (National
Council of La Raza) is the nation’s largest
Hispanic civil rights and advocacy organization.
• Policy & Advocacy
• Programs
• Partner with affiliated local organizations that
work directly with community
• Affiliate Network – 280+ affiliates across the US
• Principal, Digital Services
• New role, started spring 2021
• Chief digital/data officer function
UnidosUS acts as Platform
We enable the
work of and act as
a convenor for
nonprofits working
with US Hispanic
community
TA + $
TA
+
$
Ecosystem of subgrants
and technical assistance
(TA) to affiliates and
other partners
Data is an overhead cost
DATA
DATA
Data is fragmented
and is a cost not an
asset.
Data approach is
tactical and
transactional.
Doesn’t support
ecosystem
Solution: UnidosUS JUNTOS PLATFORM
JUNTOS
PLATFORM
Affiliates /
Partners
Community
Government
“Virtual”
Affilliate
Affilliate 1
Affilliate 2
Affilliate 3
Funders
Data becomes an
organizational and
community
resource
Academia
Staff
DATA
DATA
JUNTOS
PLATFORM
DATA
DATA
UnidosUS “platform” supported by Juntos Platform
Ecosystem of
subgrants and
technical assistance
supported by data
as an asset
TA + $
TA
+
$
High level data platform architecture
Data catalog
Data
Model
processing
Data Lake
(File level tagging)
monday
.com
Raisers
Edge
Other data
files: excel, csv,
etc
Concur
Read only
one way
exports
Intake
Processing
Data
Model
interface
JUNTOS
PLATFORM
Data Analyst Low
level queries using R,
SQL, Python, etc
Program Staff dashboards
WFD
Edu
Health
Finance
P&A
Housing
Data Warehouse
structured
“enterprise data model”
WFD
Edu
Housing
Finance
P&A
Health
MetaData
(Affiliate, Location, etc)
Analytics Data
Products
Adhoc &
scheduled
Queries
External Data
(Census, BLS, CDC, etc)
Reality
Alchemer
Quickbase
Great
plains
Housing
Health
Edu
WFD
Fiannce
P&A
People
Data people more important than data system
Right data person/Wrong system
Inefficient but effective
Wrong data person/Right system
Efficiently ineffective
Start with program person with “data mentality” who can be trained on data
tools/techniques rather than data person that needs to learn program.
Analytics does not replace Intuition
We hope to see something different from
a new data tool/approach because we
think the purpose of analytics is to replace
“subjective” human judgement
Purpose of analytics is to support human
work
• Data supporting communication
• Data supporting understanding
Intuition
Data
Analytics
Analytics Data
Intuition and data are part of a cycle, not two
different paths
Judgement
Judgement
Judgement
Intuition
Data Sophistication Journey
Stage Focus Question Tools Relevant and Easily Available
Immediate Fulfill
requests
Where is the data? understand the need to do more with data
but not exactly what that means
Email, phone Data doesn’t exist until we ask for it
Present Data
capture
What is the data? staff are able to ask simple questions about
the data because its easier to get to
Individual
databases
Data exists but not easily accessible
Past Reporting What is the data telling us about what is going on now?
standard metrics/business rules/reports are precalculated so
staff can spend time on more value adding data work
Data lake,
Data marts
Data exists and is easily accessible via
dashboards and other data tools
Future Analytics What is the data telling us about what we should do?
Data is a core part of how we plan out our work because it is
very easy to get to. Our educated guesses are now more data
supported, our gut feelings easily can be validated and fleshed
out with data analytics
Data
Warehouse,
Data Science
New data from analytics products is
easily created and easily accessible
Current
focus
An organization’s approach to data evolves over time
Digestibility – Meet your users where they are
Create appropriate level of data system for your data sophistication
Analytics cannot far outstrip your user’s ability to use it
Set expectations to right level – what is possible based on data quality etc
Don’t build a
Ferrari to go
through a field
“Data Entry Team” not “Users”
End users are fundamental to success but “Analytics" can be intimidating
Start your users slow
and work your way up
You
are
here
Start with the familiar
Recognizing
themselves in the
data increases
emotional buy-in
(eg GIS - first thing
people do a try and
find thier house)
Reduce Cognitive workload
Systems provide structure and orientation
• Logical flow (step 1, step 2, etc)
• Forest instead of trees (data points in
context)
Common language for communication
Goal is to have accurate metrics aligned with business goal
1. Cannot talk about accuracy if there isn’t agreement on the value being reported
2. Once the value is consistent, you can talk about if it’s accurate
3. Once it’s accurate you can talk about whether it’s relevant to business goal
Metric A
Report 1: 90
Report 2: 81
Report 3: 87
Metric A
Report 1: 87
Report 2: 87
Report 3: 87
Consistent
Metric A
Report 1: 85
Report 2: 85
Report 3: 85
Metric
aligned with
goal
Not
Relevant
Determine proposed change
and go through cycle again
Accurate Relevant
DATA KNOWLEDGE INFORMATION
Accuracy
Relevancy
Consistency
0
1
2
3
4
5
6
Immediate Present Past Future
Data Confidence – Evolves over time
Confidence
starts off
unknown
Confidence drops but
uncertainty narrows as you
pull data into a reporting
system and you see your
actual data quality is poor
As data is actually
captured, our confidence
increases but is still
somewhat uncertain
Your understanding of
your data increases,
quality goes up, and
confidence rebounds
Set expectations when putting new system in place.
“Garbage in is Garbage out” – realization usually starts with seeing “Garbage out”
Structure
Not all interesting questions are relevant
Resources should be focused
on data that ultimately solves
the main problem of achieving
organizational goals
Prioritization
• Desired organizational success prioritize which outcomes business should focus on
• Desired business outcomes prioritize which decisions analytics should focus on
• Desired analytics decisions prioritizes which data reporting should focus on
Prioritize
Outcomes
Prioritize
Analytics
Prioritize
Data
Traceability
Traceability tells you what is impacted
by upstream mistakes or change in
business rules
System helps tie outputs back to
inputs
Data “Science” to Data Science
Data Science - Iteration
Science is usually
about incrementalism
not revolution
Maxwell Lorentz Michaelson, Morley
Poincaré
“Standing on the shoulders of giants”
Data Science - Experimentation
Independent Variables - controllable
Independent Variables - environmental Systems /
Processes
System helps to focus
on what should be
controlled and what of
that can actually be
controlled
Data Science - Statistics
Data as common language for
communication
• Stats vs individual anecdotes
• Shared institutional knowledge
Andrew Patricio
apatricio@unidosus.org
https://www.linkedin.com/in/andrewpatricio1/
1 von 28

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Your Analytics does not have to be dramatic to be useful

  • 1. Analytics doesn’t have to be dramatic to be useful 11 September 2023
  • 4. Intro Andrew Patricio Principal, Digital Services UnidosUS Previous • DC Govt • Management Consulting
  • 5. UnidosUS UnidosUS, previously known as NCLR (National Council of La Raza) is the nation’s largest Hispanic civil rights and advocacy organization. • Policy & Advocacy • Programs • Partner with affiliated local organizations that work directly with community • Affiliate Network – 280+ affiliates across the US • Principal, Digital Services • New role, started spring 2021 • Chief digital/data officer function
  • 6. UnidosUS acts as Platform We enable the work of and act as a convenor for nonprofits working with US Hispanic community TA + $ TA + $ Ecosystem of subgrants and technical assistance (TA) to affiliates and other partners
  • 7. Data is an overhead cost DATA DATA Data is fragmented and is a cost not an asset. Data approach is tactical and transactional. Doesn’t support ecosystem
  • 8. Solution: UnidosUS JUNTOS PLATFORM JUNTOS PLATFORM Affiliates / Partners Community Government “Virtual” Affilliate Affilliate 1 Affilliate 2 Affilliate 3 Funders Data becomes an organizational and community resource Academia Staff DATA DATA
  • 9. JUNTOS PLATFORM DATA DATA UnidosUS “platform” supported by Juntos Platform Ecosystem of subgrants and technical assistance supported by data as an asset TA + $ TA + $
  • 10. High level data platform architecture Data catalog Data Model processing Data Lake (File level tagging) monday .com Raisers Edge Other data files: excel, csv, etc Concur Read only one way exports Intake Processing Data Model interface JUNTOS PLATFORM Data Analyst Low level queries using R, SQL, Python, etc Program Staff dashboards WFD Edu Health Finance P&A Housing Data Warehouse structured “enterprise data model” WFD Edu Housing Finance P&A Health MetaData (Affiliate, Location, etc) Analytics Data Products Adhoc & scheduled Queries External Data (Census, BLS, CDC, etc) Reality Alchemer Quickbase Great plains Housing Health Edu WFD Fiannce P&A
  • 12. Data people more important than data system Right data person/Wrong system Inefficient but effective Wrong data person/Right system Efficiently ineffective Start with program person with “data mentality” who can be trained on data tools/techniques rather than data person that needs to learn program.
  • 13. Analytics does not replace Intuition We hope to see something different from a new data tool/approach because we think the purpose of analytics is to replace “subjective” human judgement Purpose of analytics is to support human work • Data supporting communication • Data supporting understanding Intuition Data Analytics Analytics Data Intuition and data are part of a cycle, not two different paths Judgement Judgement Judgement Intuition
  • 14. Data Sophistication Journey Stage Focus Question Tools Relevant and Easily Available Immediate Fulfill requests Where is the data? understand the need to do more with data but not exactly what that means Email, phone Data doesn’t exist until we ask for it Present Data capture What is the data? staff are able to ask simple questions about the data because its easier to get to Individual databases Data exists but not easily accessible Past Reporting What is the data telling us about what is going on now? standard metrics/business rules/reports are precalculated so staff can spend time on more value adding data work Data lake, Data marts Data exists and is easily accessible via dashboards and other data tools Future Analytics What is the data telling us about what we should do? Data is a core part of how we plan out our work because it is very easy to get to. Our educated guesses are now more data supported, our gut feelings easily can be validated and fleshed out with data analytics Data Warehouse, Data Science New data from analytics products is easily created and easily accessible Current focus An organization’s approach to data evolves over time
  • 15. Digestibility – Meet your users where they are Create appropriate level of data system for your data sophistication Analytics cannot far outstrip your user’s ability to use it Set expectations to right level – what is possible based on data quality etc Don’t build a Ferrari to go through a field
  • 16. “Data Entry Team” not “Users” End users are fundamental to success but “Analytics" can be intimidating Start your users slow and work your way up You are here Start with the familiar Recognizing themselves in the data increases emotional buy-in (eg GIS - first thing people do a try and find thier house)
  • 17. Reduce Cognitive workload Systems provide structure and orientation • Logical flow (step 1, step 2, etc) • Forest instead of trees (data points in context)
  • 18. Common language for communication Goal is to have accurate metrics aligned with business goal 1. Cannot talk about accuracy if there isn’t agreement on the value being reported 2. Once the value is consistent, you can talk about if it’s accurate 3. Once it’s accurate you can talk about whether it’s relevant to business goal Metric A Report 1: 90 Report 2: 81 Report 3: 87 Metric A Report 1: 87 Report 2: 87 Report 3: 87 Consistent Metric A Report 1: 85 Report 2: 85 Report 3: 85 Metric aligned with goal Not Relevant Determine proposed change and go through cycle again Accurate Relevant DATA KNOWLEDGE INFORMATION Accuracy Relevancy Consistency
  • 19. 0 1 2 3 4 5 6 Immediate Present Past Future Data Confidence – Evolves over time Confidence starts off unknown Confidence drops but uncertainty narrows as you pull data into a reporting system and you see your actual data quality is poor As data is actually captured, our confidence increases but is still somewhat uncertain Your understanding of your data increases, quality goes up, and confidence rebounds Set expectations when putting new system in place. “Garbage in is Garbage out” – realization usually starts with seeing “Garbage out”
  • 21. Not all interesting questions are relevant Resources should be focused on data that ultimately solves the main problem of achieving organizational goals
  • 22. Prioritization • Desired organizational success prioritize which outcomes business should focus on • Desired business outcomes prioritize which decisions analytics should focus on • Desired analytics decisions prioritizes which data reporting should focus on Prioritize Outcomes Prioritize Analytics Prioritize Data
  • 23. Traceability Traceability tells you what is impacted by upstream mistakes or change in business rules System helps tie outputs back to inputs
  • 24. Data “Science” to Data Science
  • 25. Data Science - Iteration Science is usually about incrementalism not revolution Maxwell Lorentz Michaelson, Morley Poincaré “Standing on the shoulders of giants”
  • 26. Data Science - Experimentation Independent Variables - controllable Independent Variables - environmental Systems / Processes System helps to focus on what should be controlled and what of that can actually be controlled
  • 27. Data Science - Statistics Data as common language for communication • Stats vs individual anecdotes • Shared institutional knowledge