8/1/26
1
AIRBNB ALLOWS TRAVELLERS TO STAY IN
PRIVATE HOMES BY ACCESSING A PLATFORM LINKING
OWNERS WITH TRAVELLERS
A [label] that allows [users] to [benefit] by
[method]
TELEGRAM ALLOWS MOBILE PHONE OWNERS TO STAY IN
TOUCH FOR FREE BY USING INTERNET
AS AN ALTERNATIVE TO SMS MESSAGES
78
79
DISRUPTIVE INNOVATION IN BIG DATA/AI
CREATIVITY VS. INNOVATION
DEEPER NEED
DISRUPT REAL-ABSTRACT-REAL
QUESTIONS
80
ROAD MAP
1. Disruptive innovation
2. Innovation Mindset
3. Introduction to Big Data and AI
4. Identifying Opportunities for Disruption
5. Implementing AI for competitive
advantage
6. Overcoming Challenges in AI and Big
Data
7. Disruptive innovation workshop
81
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2
INNOVATION
MINDSET
INVENTIONS
ANCHORING
BM
SKILLS
82
PADMAN
84
A MATRIX for OPPORTUNITIES
4 DIMENSIONS FOR EACH VARIABLE
IDEA 5
IDEA 2
EXPANSION
REDUCTION
OPPOSITE
DENIAL
VARIABLES
SYNTHESIS
Prioritising what really makes sense
ABSTRACTION
Expanding, Reducing, Denying, Opposing
SOLUTION
COST AVAILABILITY HIGYENE MINDSET
Idea 13
Idea 13
Idea 13
Idea 13
Idea 13
85
INVENTIONS
TWIST create something that did not
exist before
86
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3
A MATRIX for DIGITAL OPPORTUNITIES
4 DIMENSIONS FOR EACH VARIABLE
IDEA 5
IDEA 2
EXPANSION
REDUCTION
OPPOSITE
DENIAL
VARIABLES
SYNTHESIS
Prioritising what really makes sense
ABSTRACTION
Expanding, Reducing, Denying, Opposing
SOLUTION
DISTANCE SPEED THRUST COST
87
NEED
DEEPER
NEED
SOLUTION
DO IT
BETTER
Creativity generates ideas (AGILE CREDIT CARD, HOME
EATING, HYBRID SOCIAL PLATFORM)
Innovation turns ideas into solutions (BBVA APP, McDonald
conbo, Social media
Disruption occurs when an innovation changes the market
dynamics (REVOLUT, EATWITH, MEETUP).
88
A BIT OF NEUROSCIENCE
HERDING Go with the crowd.
SELF-HERDING Go with your past-decision
CONFIRMATION BIASES Adapt or seek new
information, to your past decision
IS IT GOOD? DO YOU DO IT?
ARE YOU ANCHORED OR INNOVATOR?
89
90
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4
Which companies are anchored, which are not?
Was Kodak anchored?
WHICH COMPANIES GOT ANCHORED?
91
92
READ THE COLOR, NOT THE WORD
ORANGE, BLUE, RED, BLUE
GREEN, BLACK, BLUE, ORANGE,
GREEN, ORANGE, BLUE, RED,
BLUE, GREEN, RED, BLUE,
ORANGE, GREEN, ORANGE,
BLUE, RED, BLACK, GREEN, RED,
BLUE, ORANGE, GREEN
93
ANCHORING
1. How would you estimate the cost per
hour of jobs like:
- Smelling used shoes
- Hugging people in the street
- Cleaning shoes
2. Write the last 4 digits of your mobile phone
number
94
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5
ANCHORING
How would you react if these two digits represent the
cost of:
- A pair of sunglasses with polarised lenses
- The H Couture Beauty Diamond lipstick
- The Macallan 64 in Lalique Cire Perdue
95
DATA INNOVATORS MINDSET
WHAT SKILLS?
96
STEVE JOBS vs. STEVE BALMER
97
Who discovered the
waves?
Who invented the line?
Who created the device?
Who sponsored it?
WHO DID INVENT: Telephone
98
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6
Who created the keyboard?
Who invented the mouse?
Who created the chip?
Who assembled it?
WHO DID INVENT: Computer
99
WHO DID INVENT THE MONEY?
Coins
Banknotes (Schein)
Digital accounts 1960
ATM machines 1965
Electronic trading 1970
Global payment networks 1977
Internet banking 1990
Mobile payments 2000
Now BAAS, Business as a Service,
instead of CRM by Microsoft
Dynamic, a platform.
100
INNOVATION MINDSET
Share with your neighbor examples of
innovation that faced skepticism and
worked immediately or worked after some
time.
Then be honest and think something you
are skeptical about.
HOW IS YOUR MINDSET?
101
Mc Donald BM
104
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7
Inventions create something that
did not exist before
Business Model is the logic of the
firm to operate with stakeholders
Strategy is the choice of the
business model to reach a goal
INVENTIONS, BUSINESS MODEL & STRATEGY
105
BUSINESS MODEL 50+
Franchise McDonald
Multi-sided platform model Linkedin
Razor & blade Nespresso
Freemium Zoom
Crowdsourcing Wikipedia
Pay-as-you-go Amazon AWS
Hidden Revenue Google Meta
Subscription Netflix Navozyme
Peer to Peer Airbnb Eatwith
Brokerage Expedia
Disintermediation Tesla Dell
Bundling Microsoft
106
BM INNOVATION
Centralised decision making
Industry Spanning Research
Complex system Thinking
THE G ENESIS AN D META M OR PH OSIS OF N OV ELTY IMPR INTS: HO W BUS INESS MO D EL INN OV ATIO N EM ERGES
IN YO U N G V EN TU R ES S N IHU R ZO T T 2 02 0
107
ANCHORING VS.“T” SHAPED
T-shaped talents:
Horizontally fluent
Vertically world class
T
108
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8
GROWING
SKILLS
DECLINING
SKILLS
ANALYTICAL
THINKING
MANUAL DEXTERITY,
ENDURANCE & PRECISION
INNOVATION
MEMORY, VERBAL &
SPATIAL HABILITIES
ACTIVE LEARNING
RESOURCES
MANAGEMENT
CREATIVITY &
INITIATIVE
TECHNOLOGY
INSTALLATION
TECHNOLOGY DESIGN
READING, WRITING &
ACTIVE LISTENING
CRITICAL THINKING
PEOPLE MANAGEMENT
COMPLEX PROBLEM
-
SOLVING
QUALITY CONTROL
109
Knowledge
Experience
Human Judgment
SKILL
110
INNOVATION MINDSET
WRITING WILL UNDERMINE OUR
ABILITY TO REMEMBER
READING WILL MAKE OUR
KNOWLEDGE MERE DATA
PHAEDRUS- PLATO
111
INNOVATION MINDSET
INVENTIONS
ANCHORING
BM
SKILLS
112
8/1/26
9
ROAD MAP
1. Disruptive innovation
2. Innovation Mindset
3. Introduction to Big Data and AI
4. Identifying Opportunities for Disruption
5. Implementing AI for competitive
advantage
6. Overcoming Challenges in AI and Big
Data
7. Disruptive innovation workshop
113
BIG DATA & AI
DATA NETWORK EFFECT
DATA BUSINESS MODEL (PAAS)
THINK ECOSYSTEM
ELECTRIC TOOTHBRUSH BUSINESS MODEL
STAR SENSE-TRANSMIT-ANALYSE-RESPOND
ROBOTICS
HUMAN&MACHINE
114
A data network
effect is when a
product's value
grows as a result of
more usage via the
accretion of data.
WAZE
115
116
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10
DATA DAILY EXAMPLE
Time you woke up
Weather
Number of emails received
Coffee cups consumed
People interacted with
Mood at three different moments
Do not explain or connect them. Just list.
Is this information useful
as it is
?
Why or why not?
117
DATA CATEGORIES
Group the 30 observations into 3–5
categories (e.g., Energy, Work, Social,
Health, Emotions).
Decide the rule you use to assign each
data point to a category.
Cross out any data that does not fit your
structure.
Who decided the
categories?
What valuable
data might have
been excluded?
118
ALGORITHM (RULE)
Write a simple rule that transforms your structured data
into a decision.
Example:
“If energy is low before 11am and coffee > 2, then
productivity will be low.
Apply your rule to your data and write the output
decision.
Does the rule oversimplify reality?
What assumptions did you encode
without noticing?
An algorithm is not intelligence; it is
frozen reasoning.
119
AI role
If you had 10,000 days like this instead of
one:
What would become impossible for a
human?
What could a machine do better?
What would the machine still not know
without human input?
Big Data scales pattern
detection.
AI automates inference.
Humans define meaning, goals,
and ethics.
120
8/1/26
11
§ AI is the reproduction of human reasoning and
intelligent behavior by computational methods
Intelligent
behavior
Humans
Computer
WHAT IS AI?
an attempt of
121
INTELLIGENCE: INPUT VS. OUTPUT
122
CAN MACHINES ACT/THINK
INTELLIGENTLY?
123
BINGO to
UNDERSTAND
MACHINE
LEARNING
GET A FORECAST FROM A
WEATHER APP
DATA SET: what the weather
was like in the past
PREDICTION: what the
weather will be like in the
future
124
8/1/26
12
18 MONTHS OLD CHILD
125
HCI, HUMAN COMPUTER INTERACTIONS FORGES A NEW
PARTNERSHIP BETWEEN HUMAN AND MACHINE.
Humans excel at:
Dilemmas
Compassion
Dreaming
Abstraction
Imagination
Morals
Generalization
Cognitive Systems
excel at:
Common Sense
Locating Knowledge
Pattern Identification
Machine Learning
Eliminate Bias
Endless Capacity
126
127
1. Reactive machines
2. Limited memory
3. Theory of mind
4. Self-awareness
AI
128
8/1/26
13
Basic types: purely reactive
No memories, no past experience
EXAMPLE:
Deep Blue, IBM’s vs. Garry Kasparov in 1997.
Deep Blue ignores everything before the present
moment. All it does is look at the pieces on the
chess board as it stands right now, and choose
from possible next moves.
1. REACTIVE MACHINES
129
Type II class contains machines can look into
the past.
EXAMPLE: Self-driving cars.
They observe other cars’ speed and direction.
That can’t be done in a just one moment, but
rather requires identifying specific objects
and monitoring them over time.
2. LIMITED MEMORY
131
AlphaFold
132
Future machines: creatures and objects
in the world can have thoughts and
emotions that affect their own
behaviour.
3. THEORY OF MIND
133
8/1/26
14
134
Pizza Tarradellas? Producto
Tarradellas?
LLM for Pizza
135
PROMPTING
“KETCHUP…”
136
“I want that item” is a very different
statement from “I know I want that
item.”
Being aware will give you an insight
into your beliefs and whether they are
positive or holding you back. I
4. CONSCIOUSNESS
137
8/1/26
15
138
WHO IS SMARTER, A DOG OR A PIG?
WE ASSIGN CONSCIOUSNESS BASED
ON RELATIONSHIP, NOT ON
INTELLIGENCE
CONSCIOUSNESS & BACON
138
COMPLICATION
COMPLEXITY
HIGH
(NH
3
)
PREDICTABILITY
LOW
STABLE
ELEMENTS
CONNECTION
UNSTABLE
HIGH
REPEATABILITY
LOW
INDUSTRIAL REVOLUTION
ORIGIN
KNOWLEDGE ECONOMY
QUANTITATIVE
SOLUTION
QUALITATIVE
PLAN & IMPLEMENT
Mitt Romney’s Orca
APPROACH
TEST & LEARN
Obama 2008 and 2012
139
MANAGE, NOT SOLVE
Mechanist failure
TEST & LEARN (Continuous)
PLAN & IMPLEMENT (Batches)
P&G Questions Revenue
model or sales increase?
140
NEW BUSINESS MODEL
A business model entails
identifying "a new approach"
for
creating
and
capturing
VALUE
to exploit business
opportunities.
141
8/1/26
16
142
A MATRIX for DIGITAL OPPORTUNITIES
4 DIMENSIONS FOR EACH VARIABLE
IDEA 5
IDEA 2
EXPANSION
REDUCTION
OPPOSITE
DENIAL
VARIABLES
SYNTHESIS
Prioritising what really makes sense
ABSTRACTION
Expanding, Reducing, Denying, Opposing
SOLUTION
DISTANCE TIME SPEED # OF LINES COST
143
ZERO MOMENT OF TRUTH
144
ZERO MOMENT OF TRUTH
145
8/1/26
17
DATA BUSINESS: ECONOMY OF SCALE
Google Nest (paid 3.2
U$ Billion) will not only
play in the $3 billion
global thermostat
industry.
It will help shape the $6
trillion energy sector
146
THINK ECOSYSTEM
Think ecosystem, not supply chain.
Supply chain is binary:
1. Charge your users more
2. Pay your suppliers less
Ecosystem: other parties benefit when
your innovation succeeds.
WHO ELSE IS IN YOUR ECOSYSTEM?
147
STANDARD REVENUE STREAM
The Power Brush Revenue model:
1. 44 = 33 for toothbrush+ 11 for 2 Heads (5,5
each)
2. 10 for Toothbrush + 20 for 2 Heads (10
each)
3. Subscription model for replacement heads
18 per months
4. Toothbrush is free: all money on replacement
heads
148
DIGITAL REVENUE STREAM
WHAT CAN BE MEASURED CAN BE CHARGED
Smart Digital TT Power Brush model:
1. 0,1 per minute
2. Brushing Service PaaS 20 per month
3. Free to insurance companies’clients and then paid
from savings
4. Become as trusted partner- money made on
toothpaste and dental floss
5. Collect user data and sell it
149
8/1/26
18
PRODUCT AS A SERVICE (PaaS)
People Buy Holes, Not Drills &
WHAT CAN BE MEASURED CAN BE CHARGED
What if we deliver lighting hours instead of
bulbs?
Power per hour instead of jet engine?
Certificates vs. Safety?
Miles instead of tyres?
DATA & BUSINESS MODEL
150
151
TRAD ITION A L
HIGH
LATENCY
COSTS
FOCUS
COMPANY
CONTROL
SINGLE AND SILOED
FUNCTION
SIMPLE &
INDEPENDENT
SYSTEM
152
The challenge: prioritizing strategy
over technology. PROBLEM FIRST
Do not be dragged by disruptive
trends.
THE CHALLENGE FOR DIGITAL SUCCESS
153
8/1/26
19
Share with your neighbor examples of
different business models for the same
product/service.
Extract from your personal
experience/work or use a popular case.
STANDARD/DIGITAL REVENUE STREAM
154
EXECUTING TASKS: SHOP&SHIP TO SHIP&SHOP
155
WHAT DATA DOES AMAZON HAVE?
BROWN BOXES TRAFFIC
156
THE SELLER IS ALSO THE ADVERTISER
Amazon is telling
advertisers that the best
predictor of what you, the
consumer, are going to
buy is what you’ve
already bought.
157
8/1/26
20
AIRBNB ALLOWS TRAVELLERS TO STAY IN
PRIVATE HOMES BY ACCESSING A PLATFORM LINKING
OWNERS WITH TRAVELLERS
A [label] that allows [users] to [benefit] by
[method]
TELEGRAM ALLOWS MOBILE PHONE OWNERS TO STAY IN
TOUCH FOR FREE BY USING INTERNET
AS AN ALTERNATIVE TO SMS MESSAGES
158
Profits Respond
Data Science analytics Analyse
Data engineering Transmit
Infrastructure Sensing
FROM DATA TO PROFIT (STAR)
159
HOW MANY DATA
CAN WE HANDLE?
People consume far less information
than expected before deeming things
good or bad
160
CCTV CAMERAS
Evidence for crime or prevention
Body, clothes
What problems?
More mistakes for black women vs. White men.
SenseTime has 176 Million Cameras in China
COVID TEMPERATURE CONTROL in BEIJING
UNDERGROUND
BY - NC - nicolamattina.it
161

Preview text:

8/1/26
AIRBNB ALLOWS TRAVELLERS TO STAY IN
PRIVATE HOMES BY ACCESSING A PLATFORM LINKING OWNERS WITH TRAVELLERS
TELEGRAM ALLOWS MOBILE PHONE OWNERS TO STAY IN
TOUCH FOR FREE BY USING INTERNET
AS AN ALTERNATIVE TO SMS MESSAGES
A [label] that al ows [users] to [benefit] by [method] 78 79
DISRUPTIVE INNOVATION IN BIG DATA/AI ROAD MAP • CREATIVITY VS. INNOVATION 1. Disruptive innovation • DEEPER NEED 2. Innovation Mindset • DISRUPT REAL-ABSTRACT-REAL
3. Introduction to Big Data and AI • QUESTIONS
4. Identifying Opportunities for Disruption
5. Implementing AI for competitive advantage
6. Overcoming Challenges in AI and Big Data
7. Disruptive innovation workshop 80 81 1 8/1/26 INNOVATION PADMAN MINDSET INVENTIONS ANCHORING BM SKILLS 82 84 A MATRIX for OPPORTUNITIES INVENTIONS 4 DIMENSIONS FOR EACH VARIABLE
TWIST create something that did not VARIABLES
COST AVAILABILITY HIGYENE MINDSET SOLUTION exist before EXPANSION Idea 13 Idea 13 IDEA 2 REDUCTION Idea 13 IDEA 5 OPPOSITE Idea 13 DENIAL Idea 13 ABSTRACTION SYNTHESIS
Prioritising what real y makes sense
Expanding, Reducing, Denying, Opposing 85 86 2 8/1/26
A MATRIX for DIGITAL OPPORTUNITIES
Creativity generates ideas (AGILE CREDIT CARD, HOME 4 DIMENSIONS FOR EACH VARIABLE
EATING, HYBRID SOCIAL PLATFORM) → VARIABLES
Innovation turns ideas into solutions (BBVA APP, McDonald DISTANCE SPEED THRUST COST SOLUTION conbo, Social media→ EXPANSION
Disruption occurs when an innovation changes the market IDEA 2 REDUCTION
dynamics (REVOLUT, EATWITH, MEETUP). IDEA 5 OPPOSITE NEED DEEPER SOLUTION NEED DENIAL ABSTRACTION SYNTHESIS DO IT
Prioritising what real y makes sense BETTER
Expanding, Reducing, Denying, Opposing 87 88 ARE YOU ANCHORED OR INNOVATOR? A BIT OF NEUROSCIENCE
HERDING Go with the crowd.
SELF-HERDING Go with your past-decision
CONFIRMATION BIASES Adapt or seek new
information, to your past decision
IS IT GOOD? DO YOU DO IT? 89 90 3 8/1/26 WHICH COMPANIES GOT ANCHORED?
Which companies are anchored, which are not? Was Kodak anchored? 91 92
READ THE COLOR, NOT THE WORD ANCHORING ORANGE, BLUE, RED, BLUE GREEN, BLACK, BLUE, ORANGE,
1. How would you estimate the cost per hour of jobs like: GREEN, ORANGE, BLUE, RED, - Smel ing used shoes BLUE, GREEN, RED, BLUE,
- Hugging people in the street - Cleaning shoes ORANGE, GREEN, ORANGE,
2. Write the last 4 digits of your mobile phone BLUE, RED, BLACK, GREEN, RED, number BLUE, ORANGE, GREEN 93 94 4 8/1/26 ANCHORING DATA INNOVATORS MINDSET
How would you react if these two digits represent the WHAT SKILLS? cost of:
- A pair of sunglasses with polarised lenses
- The H Couture Beauty Diamond lipstick
- The Macal an 64 in Lalique Cire Perdue 95 96 STEVE JOBS vs. STEVE BALMER WHO DID INVENT: Telephone Who discovered the waves? Who invented the line? Who created the device? Who sponsored it? 97 98 5 8/1/26 WHO DID INVENT: Computer WHO DID INVENT THE MONEY?
Who created the keyboard? Coins Who invented the mouse? Banknotes (Schein) Who created the chip? Digital accounts 1960 Who assembled it? ATM machines 1965 Electronic trading 1970 Global payment networks 1977 Internet banking 1990 Mobile payments 2000
Now BAAS, Business as a Service, instead of CRM by Microsoft Dynamic, a platform. 99 100 INNOVATION MINDSET Mc Donald BM
Share with your neighbor examples of
innovation that faced skepticism and
worked immediately or worked after some time.
Then be honest and think something you are skeptical about. HOW IS YOUR MINDSET? 101 104 6 8/1/26
INVENTIONS, BUSINESS MODEL & STRATEGY BUSINESS MODEL 50+
Inventions create something that Franchise McDonald
Multi-sided platform model Linkedin did not exist before Razor & blade Nespresso
Business Model is the logic of the Freemium Zoom Crowdsourcing Wikipedia
firm to operate with stakeholders Pay-as-you-go Amazon AWS
Strategy is the choice of the Hidden Revenue Google Meta Subscription Netflix Navozyme business model to reach a goal Peer to Peer Airbnb Eatwith Brokerage Expedia Disintermediation Tesla Del Bundling Microsoft 105 106
BM INNOVATION THE GENESIS AND METAMORPHOSIS OF NOVELTY IMPRINTS: HOW BUSINESS MODEL INNOVATION EMERGES
IN YOUNG VENTURES SNIHUR ZOTT 2020 ANCHORING VS.“T” SHAPED Centralised decision making T-shaped talents: Horizontally fluent 108 T Vertical y world class Complex system Thinking Industry Spanning Research 107 7 8/1/26 GROWING DECLINING SKILL SKILLS SKILLS ANALYTICAL MANUAL DEXTERITY, THINKING ENDURANCE & PRECISION INNOVATION MEMORY, VERBAL & Knowledge SPATIAL HABILITIES ACTIVE LEARNING RESOURCES Experience MANAGEMENT CREATIVITY & TECHNOLOGY Human Judgment INITIATIVE INSTALLATION TECHNOLOGY DESIGN READING, WRITING & ACTIVE LISTENING CRITICAL THINKING PEOPLE MANAGEMENT COMPLEX PROBLEM- QUALITY CONTROL SOLVING 109 110 INNOVATION MINDSET INNOVATION MINDSET • INVENTIONS • ANCHORING WRITING WILL UNDERMINE OUR • BM ABILITY TO REMEMBER • SKILLS READING WILL MAKE OUR KNOWLEDGE MERE DATA PHAEDRUS- PLATO 111 112 8 8/1/26 ROAD MAP BIG DATA & AI 1. Disruptive innovation DATA NETWORK EFFECT 2. Innovation Mindset DATA BUSINESS MODEL (PAAS) THINK ECOSYSTEM
3. Introduction to Big Data and AI
ELECTRIC TOOTHBRUSH BUSINESS MODEL
4. Identifying Opportunities for Disruption
STAR SENSE-TRANSMIT-ANALYSE-RESPOND ROBOTICS
5. Implementing AI for competitive HUMAN&MACHINE advantage
6. Overcoming Challenges in AI and Big Data
7. Disruptive innovation workshop 113 114 A data network effect is when a product's value grows as a result of more usage via the accretion of data. WAZE 115 116 9 8/1/26 DATA DAILY EXAMPLE DATA CATEGORIES Time you woke up
Group the 30 observations into 3–5 Weather
categories (e.g., Energy, Work, Social, Number of emails received Health, Emotions). Coffee cups consumed
Decide the rule you use to assign each People interacted with data point to a category.
Mood at three different moments
Cross out any data that does not fit your structure.
Do not explain or connect them. Just list. Who decided the categories? What valuable
Is this information useful as it is? data might have Why or why not? been excluded? 117 118 ALGORITHM (RULE) AI role
Write a simple rule that transforms your structured data
If you had 10,000 days like this instead of into a decision. Example: one:
“If energy is low before 11am and coffee > 2, then
What would become impossible for a productivity wil be low.” human?
Apply your rule to your data and write the output decision.
What could a machine do better?
What would the machine stil not know without human input?
Does the rule oversimplify reality?
What assumptions did you encode Big Data scales pattern without noticing? detection. AI automates inference.
An algorithm is not intel igence; it is reasoning. Humans define meaning, goals, frozen and ethics. 119 120 10 8/1/26 WHAT IS AI? INTELLIGENCE: INPUT VS. OUTPUT an attempt of
§ AI is the reproduction of human reasoning and
intelligent behavior by computational methods Intelligent behavior Computer Humans 121 122 CAN MACHINES ACT/THINK INTELLIGENTLY? BINGO to UNDERSTAND MACHINE LEARNING
GET A FORECAST FROM A WEATHER APP DATA SET: what the weather was like in the past PREDICTION: what the weather wil be like in the future 123 124 11 8/1/26 18 MONTHS OLD CHILD
HCI, HUMAN COMPUTER INTERACTIONS FORGES A NEW
PARTNERSHIP BETWEEN HUMAN AND MACHINE. Hu man s excel at :
Co g n i t i ve Syst ems Common Sense excel at : Morals Locating Knowledge Imagination Pattern Identification Compassion Machine Learning Abstraction Eliminate Bias Dilemmas Endless Capacity Dreaming Generalization 125 126 AI 1. Reactive machines 2. Limited memory 3. Theory of mind 4. Self-awareness 127 128 12 8/1/26 1. REACTIVE MACHINES 2. LIMITED MEMORY
Basic types: purely reactive
Type I class contains machines can look into
No memories, no past experience the past. EXAMPLE:
Deep Blue, IBM’s vs. Garry Kasparov in 1997. EXAMPLE: Self-driving cars.
Deep Blue ignores everything before the present
moment. Al it does is look at the pieces on the
They observe other cars’ speed and direction.
chess board as it stands right now, and choose
from possible next moves.
That can’t be done in a just one moment, but
rather requires identifying specific objects and monitoring them over time. 129 131 AlphaFold 3. THEORY OF MIND
Future machines: creatures and objects
in the world can have thoughts and
emotions that affect their own behaviour. 132 133 13 8/1/26 LLM for Pizza Pizza Tarradel as? Producto Tarradel as? 134 135 4. CONSCIOUSNESS
“I want that item” is a very different
statement from “I know I want that item.”
Being aware wil give you an insight
into your beliefs and whether they are
positive or holding you back. I PROMPTING “KETCHUP…” 136 137 14 8/1/26 CONSCIOUSNESS & BACON COMPLICATION COMPLEXITY HIGH (NH3) PREDICTABILITY LOW
WHO IS SMARTER, A DOG OR A PIG? STABLE ELEMENTS UNSTABLE CONNECTION WE ASSIGN CONSCIOUSNESS BASED HIGH REPEATABILITY LOW ON RELATIONSHIP, NOT ON INDUSTRIAL REVOLUTION ORIGIN KNOWLEDGE ECONOMY INTELLIGENCE QUANTITATIVE SOLUTION QUALITATIVE PLAN & IMPLEMENT APPROACH TEST & LEARN Mitt Romney’s Orca Obama 2008 and 2012 138 138 139 MANAGE, NOT SOLVE NEW BUSINESS MODEL Mechanist failure A business model entails identifying "a new approach" TEST & LEARN (Continuous) for PLAN & IMPLEMENT (Batches) creating and P&G Questions Revenue capturing model or sales increase? VALUE to exploit business opportunities. 140 141 15 8/1/26
A MATRIX for DIGITAL OPPORTUNITIES 4 DIMENSIONS FOR EACH VARIABLE VARIABLES DISTANCE TIME SPEED # OF LINES COST SOLUTION EXPANSION IDEA 2 REDUCTION IDEA 5 OPPOSITE DENIAL ABSTRACTION SYNTHESIS
Prioritising what real y makes sense
Expanding, Reducing, Denying, Opposing 142 143 ZERO MOMENT OF TRUTH ZERO MOMENT OF TRUTH 144 145 16 8/1/26
DATA BUSINESS: ECONOMY OF SCALE THINK ECOSYSTEM Google Nest (paid 3.2
Think ecosystem, not supply chain. U$ Bil ion) wil not only Supply chain is binary: play in the $3 bil ion 1. Charge your users more global thermostat 2. Pay your suppliers less industry.
Ecosystem: other parties benefit when your innovation succeeds. WHO ELSE IS IN YOUR ECOSYSTEM? It will help shape the $6 tril ion energy sector 146 147 STANDARD REVENUE STREAM DIGITAL REVENUE STREAM The Power Brush Revenue model:
WHAT CAN BE MEASURED CAN BE CHARGED
Smart Digital TT Power Brush model: 1.
44€ = 33 for toothbrush+ 11 for 2 Heads (5,5 € 1. each) 0,1€ per minute
2. Brushing Service PaaS 20€ per month 2.
10€ for Toothbrush + 20 for 2 Heads (10 € each)
3. Free to insurance companies’clients and then paid from savings 3.
Subscription model for replacement heads 18€ per months
4. Become as trusted partner- money made on toothpaste and dental floss 4.
Toothbrush is free: al money on replacement heads
5. Collect user data and sell it 148 149 17 8/1/26 DATA & BUSINESS MODEL PRODUCT AS A SERVICE (PaaS)
People Buy Holes, Not Dril s &
WHAT CAN BE MEASURED CAN BE CHARGED
What if we deliver lighting hours instead of bulbs?
Power per hour instead of jet engine? Certificates vs. Safety? Miles instead of tyres? 150 151 TRADITIONAL DIGITAL
THE CHALLENGE FOR DIGITAL SUCCESS HIGH LATENCY LOW TO REAL TIME
The chal enge: prioritizing strategy over technology. PROBLEM FIRST COSTS FOCUS OUTCOME
Do not be dragged by disruptive COMPANY CONTROL CUSTOMER trends. SINGLE AND SILOED FUNCTION INTEGRATED AND KPI SIMPLE & COMPLEX & INDEPENDENT SYSTEM INTERDEPENDENT (ECOSYSTEM) 152 153 18 8/1/26
STANDARD/DIGITAL REVENUE STREAM
EXECUTING TASKS: SHOP&SHIP TO SHIP&SHOP
Share with your neighbor examples of
different business models for the same product/service. Extract from your personal
experience/work or use a popular case. 154 155 WHAT DATA DOES AMAZON HAVE?
THE SELLER IS ALSO THE ADVERTISER BROWN BOXES TRAFFIC Amazon is tel ing advertisers that the best predictor of what you, the consumer, are going to buy is what you’ve already bought. 156 157 19 8/1/26 FROM DATA TO PROFIT (STAR)
AIRBNB ALLOWS TRAVELLERS TO STAY IN
PRIVATE HOMES BY ACCESSING A PLATFORM LINKING OWNERS WITH TRAVELLERS
TELEGRAM ALLOWS MOBILE PHONE OWNERS TO STAY IN
TOUCH FOR FREE BY USING INTERNET
AS AN ALTERNATIVE TO SMS MESSAGES Profits Respond
A [label] that al ows [users] to [benefit] by
Data Science analytics Analyse [method]
Data engineering Transmit Infrastructure Sensing 158 159 HOW MANY DATA CCTV CAMERAS CAN WE HANDLE?
Evidence for crime or prevention Body, clothes What problems?
More mistakes for black women vs. White men.
SenseTime has 176 Mil ion Cameras in China
COVID TEMPERATURE CONTROL in BEIJING
People consume far less information UNDERGROUND
than expected before deeming things good or bad 160 161 20 BY - NC - nicolamattina.it