1. STKI’s work Copyright@2016. Do not remove source or attribution from any slide, graph or portion of graph
1
STKI’s work Copyright@2016. Do not remove source or attribution from any slide, graph or portion of graph
Data &
Analytics
It’s all about the algorithms!
2. STKI’s work Copyright@2016. Do not remove source or attribution from any slide, graph or portion of graph
2
STKI’s work Copyright@2016. Do not remove source or attribution from any slide, graph or portion of graph
Algorithms are disrupting markets
Connected cars Programmatic Marketing TV & media Retail shopping
3. STKI’s work Copyright@2016. Do not remove source or attribution from any slide, graph or portion of graph
3
STKI’s work Copyright@2016. Do not remove source or attribution from any slide, graph or portion of graph
Everything is getting smarter
Nike’s Self-
Lacing Shoe
Smart Cup
Smart Toilet
Smart
Stethoscope
Smart
Pacifier
4. STKI’s work Copyright@2016. Do not remove source or attribution from any slide, graph or portion of graph
4
STKI’s work Copyright@2016. Do not remove source or attribution from any slide, graph or portion of graph
Algorithms are at the heart of ANY digital business
5. STKI’s work Copyright@2016. Do not remove source or attribution from any slide, graph or portion of graph
5
STKI’s work Copyright@2016. Do not remove source or attribution from any slide, graph or portion of graph
Tremendous technological progress in data & analytics.
Anything is possible.
The only limit is your imagination.
6. STKI’s work Copyright@2016. Do not remove source or attribution from any slide, graph or portion of graph
6
STKI’s work Copyright@2016. Do not remove source or attribution from any slide, graph or portion of graph
Tremendous technological progress in data & analytics.
Anything is possible.
The only limit is your imagination.Big data
The algorithm
Destination
Unknown!
?
7. STKI’s work Copyright@2016. Do not remove source or attribution from any slide, graph or portion of graph
7
STKI’s work Copyright@2016. Do not remove source or attribution from any slide, graph or portion of graph
What’s your problem, business?
Big data is still a solution looking for a problem
Our platform can solve ANY business problem!
Hmmm, well, that’s your decision.
Hey, did I mention we use machine learning?
Which business
problem?
Vendor
8. STKI’s work Copyright@2016. Do not remove source or attribution from any slide, graph or portion of graph
8
STKI’s work Copyright@2016. Do not remove source or attribution from any slide, graph or portion of graph
Adoption – worldwide versus Israel
“Big Data is of
critical importance”
Appointed a
CDO
Big Data in
production
70%
54%
63%
Source: HBR, 2016 Study of F1000
Big Data in
production
Started to
experiment
7%
30%
Source: STKI estimation, 2016 (Enterprises)
9. STKI’s work Copyright@2016. Do not remove source or attribution from any slide, graph or portion of graph
9
Data & Analysis
Decisions
Visualization &
Analytics
Information
Management
Virtual data layer
Data Platforms
10. STKI’s work Copyright@2016. Do not remove source or attribution from any slide, graph or portion of graph
10
Analytics
Visualization &
Analytics
11. STKI’s work Copyright@2016. Do not remove source or attribution from any slide, graph or portion of graph
11
The evolution of Analytics
1 2 3 4
Classic
BI/ DW
Data discovery
Analysis
Predictive
Analytics
Machine
Intelligence
5
Autonomous
Decisions
“What happened?” “Why?” “What will happen?” “Help me to ask the
right question!”
“Make the
decision for me”
12. STKI’s work Copyright@2016. Do not remove source or attribution from any slide, graph or portion of graph
12
STKI’s work Copyright@2016. Do not remove source or attribution from any slide, graph or portion of graph
NEW questions we can ask
• What are relevant questions to ask?
• What are the relevant features?
Entities? Connections?
• Optimization & micro-segments
• Real time analytics
• Extracting features and insights
from highly unstructured data
13. STKI’s work Copyright@2016. Do not remove source or attribution from any slide, graph or portion of graph
13
STKI’s work Copyright@2016. Do not remove source or attribution from any slide, graph or portion of graph
Will cognitive-powered machines learn, think
and make decisions for us?
14. STKI’s work Copyright@2016. Do not remove source or attribution from any slide, graph or portion of graph
14
STKI’s work Copyright@2016. Do not remove source or attribution from any slide, graph or portion of graph
Will cognitive-powered machines learn, think
and make decisions for us?
15. STKI’s work Copyright@2016. Do not remove source or attribution from any slide, graph or portion of graph
15
STKI’s work Copyright@2016. Do not remove source or attribution from any slide, graph or portion of graph
Many branches to Artificial Intelligence
16. STKI’s work Copyright@2016. Do not remove source or attribution from any slide, graph or portion of graph
16
STKI’s work Copyright@2016. Do not remove source or attribution from any slide, graph or portion of graph
Many branches to Artificial Intelligence
17. STKI’s work Copyright@2016. Do not remove source or attribution from any slide, graph or portion of graph
17
STKI’s work Copyright@2016. Do not remove source or attribution from any slide, graph or portion of graph
Source: Shivon Zilis
Self-driving cars
Autopilot drones
Robots daily tasks
Bots trained by
humans
18. STKI’s work Copyright@2016. Do not remove source or attribution from any slide, graph or portion of graph
18
STKI’s work Copyright@2016. Do not remove source or attribution from any slide, graph or portion of graph
Source: Shivon Zilis
Self-driving cars
Autopilot drones
Robots daily tasks
Bots trained by
humans
19. STKI’s work Copyright@2016. Do not remove source or attribution from any slide, graph or portion of graph
19
STKI’s work Copyright@2016. Do not remove source or attribution from any slide, graph or portion of graph
Has analysis reached the level of human thinking?
No
Not yet
We are getting there Neuron
The basic unit of the nervous system
A cell that carries messages between
the brain and other parts of the body
Deep Learning: a branch of machine
learning that is Inspired by the way
the brain works
20. STKI’s work Copyright@2016. Do not remove source or attribution from any slide, graph or portion of graph
20
STKI’s work Copyright@2016. Do not remove source or attribution from any slide, graph or portion of graph
Neural networks versus Deep Learning
• Neural networks have a hidden layer and perform
“supervised” predictions (human intervention)
• Deep Learning Neural Networks – have more
hidden layers and can perform “unsupervised” tasks
like feature extraction & image recognition
2015 - Google opened its DL project to the community
21. STKI’s work Copyright@2016. Do not remove source or attribution from any slide, graph or portion of graph
21
Who makes the decisions?
Decisions
22. STKI’s work Copyright@2016. Do not remove source or attribution from any slide, graph or portion of graph
22
STKI’s work Copyright@2016. Do not remove source or attribution from any slide, graph or portion of graph
The future Data Scientist: a Robot?!
Source: Kdnuggests
Artificial intelligence will assist data scientists
mainly in data preparation (but not only…)
Data scientists can focus more on algorithms
instead of data engineering
23. STKI’s work Copyright@2016. Do not remove source or attribution from any slide, graph or portion of graph
23
Insights Discovery
Data
Discovery
Advanced
Analytics
Machine
Learning
Insights
Discovery
Predictive analytics can now reach a broader audience
Does “Citizen data scientist” = an empowered business analyst?
24. STKI’s work Copyright@2016. Do not remove source or attribution from any slide, graph or portion of graph
24
The empowered business analyst
Can use machine learning,
visualization and self-service
to perform more meaningful
analysis
Uses Predictive Analysis
More Discoveries
Less Reporting
Less Data Preparation
Uses Machine Learning
For feature extraction and data
engineering
25. STKI’s work Copyright@2016. Do not remove source or attribution from any slide, graph or portion of graph
25
Data Virtualization
Virtual data layer
26. STKI’s work Copyright@2016. Do not remove source or attribution from any slide, graph or portion of graph
26
STKI’s work Copyright@2016. Do not remove source or attribution from any slide, graph or portion of graph
Architecture shifts
We are moving from this:
Once in a while connection
To this:
Constant connection
27. STKI’s work Copyright@2016. Do not remove source or attribution from any slide, graph or portion of graph
27
STKI’s work Copyright@2016. Do not remove source or attribution from any slide, graph or portion of graph
Dynamic linking, use sum, conditions as
records, cashed, suggest relations, etc.
Virtual Data Layer
Operational Dashboards
BI Reports Future Analytics
Data Warehouses
Marts & Cubes Operational
Data Stores Transactional
Sources
File Systems
Big Data
Source: cisco
28. STKI’s work Copyright@2016. Do not remove source or attribution from any slide, graph or portion of graph
28
STKI’s work Copyright@2016. Do not remove source or attribution from any slide, graph or portion of graph
The virtualized data layer
An Agile approach to Data Integration:
Quick access to data, no replication, in the way you would like to see it
EIM Players’ solutions for data federation:
Specialized players – virtualized data layer:
29. STKI’s work Copyright@2016. Do not remove source or attribution from any slide, graph or portion of graph
29
Data Platforms
Data Platforms
30. STKI’s work Copyright@2016. Do not remove source or attribution from any slide, graph or portion of graph
30
Microservices
Source: http://martinfowler.com/
31. STKI’s work Copyright@2016. Do not remove source or attribution from any slide, graph or portion of graph
31
What are Microservices implications on data:
Polyglot Data (polyglot persistence)
Source: Martin Fowler
32. STKI’s work Copyright@2016. Do not remove source or attribution from any slide, graph or portion of graph
32
Evolving DBA Roles
Devops
Automation and self service in
general
Freedom to the
Developers
Developers in NoSQL DBMS are more free
Cloud DBA
Leverage cloud offering (limitless scale,
elasticity, new functionality)
Development expertise
For supporting NoSQL
33. STKI’s work Copyright@2016. Do not remove source or attribution from any slide, graph or portion of graph
33
Open Source RDBMS
34. STKI’s work Copyright@2016. Do not remove source or attribution from any slide, graph or portion of graph
34
New options: Third party maintenance for DBMS
35. STKI’s work Copyright@2016. Do not remove source or attribution from any slide, graph or portion of graph
35
STKI Recommendations: Data & Analytics
Do now
Be aware
Establish BI/Analytics users KPIs!
“Analysis tools usage” as part of employee assessment
Make advanced analytics a part of your portfolio
Data virtualization will become important
as enabler for business agility
36. STKI’s work Copyright@2016. Do not remove source or attribution from any slide, graph or portion of graph
36
STKI’s work Copyright@2016. Do not remove source or attribution from any slide, graph or portion of graph
That’s it.
Thank you for listening
09-7907000 www.stki.info STKI: IT Knowledge Integrator