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And some of them haven’t quite ‘won’ yet anyway
BenedictEvans · financial_analysis
And some of them haven’t quite ‘won’ yet anyway
The winners always look invulnerable, until they don’t
BenedictEvans · process_diagram
The winners always look invulnerable, until they don’t
The winners always look invulnerable, until they don't
BenedictEvans · precedent
The winners always look invulnerable, until they don't
So what are the new S Curves, to change all of this?
BenedictEvans · transition
So what are the new S Curves, to change all of this?
Real S Curves are never quite smooth
BenedictEvans · industry_trends
Real S Curves are never quite smooth
The iPod took almost 5 years to work
BenedictEvans · context
The iPod took almost 5 years to work
Four emerging S Curves to consider
BenedictEvans · framework_other
Four emerging S Curves to consider
We’ve all heard of ‘AI’ by now
BenedictEvans · context
We’ve all heard of ‘AI’ by now
Unhelpful ways to talk about AI
BenedictEvans · context
Unhelpful ways to talk about AI
More useful?
BenedictEvans · transition
More useful?
Machine learning as the new relational database
BenedictEvans · process_diagram
Machine learning as the new relational database
Machine learning = patterns
BenedictEvans · other
Machine learning = patterns
What patterns can you look for?
BenedictEvans · other
What patterns can you look for?
Automation means washing machines, not robots
BenedictEvans · context
Automation means washing machines, not robots
There's no such thing as 'data'
BenedictEvans · context
There's no such thing as 'data'
So, what are the washing machines of machine learning?
BenedictEvans · framework_other
So, what are the washing machines of machine learning?
Best use cases may not be clear at the start of the S Curve
BenedictEvans · framework_other
Best use cases may not be clear at the start of the S Curve
The same probably applies to machine learning
BenedictEvans · context
The same probably applies to machine learning
The same probably applies to machine learning
BenedictEvans · context
The same probably applies to machine learning
So, what can we automate next?
BenedictEvans · transition
So, what can we automate next?
Mechanised arithmetic
BenedictEvans · other
Mechanised arithmetic
What can you do with automated interns?
BenedictEvans · other
What can you do with automated interns?
What if computers can see, the way they can read or count?
BenedictEvans · transition
What if computers can see, the way they can read or count?
Automated recommendation?
BenedictEvans · context
Automated recommendation?
Automated trend analysis?
BenedictEvans · other
Automated trend analysis?
Automated process analysis?
BenedictEvans · other
Automated process analysis?
Automated disease detection?
BenedictEvans · case_study
Automated disease detection?
What if we automate driving?
BenedictEvans · transition
What if we automate driving?
“Driverless car” = “horseless carriage”
BenedictEvans · context
“Driverless car” = “horseless carriage”
What do 'car' or 'bus' mean?
BenedictEvans · context
What do 'car' or 'bus' mean?
But we also change roads – computers can drive differently
BenedictEvans · context
But we also change roads – computers can drive differently
How much does automated driving change cities?
BenedictEvans · problem_statement
How much does automated driving change cities?
Automatic cars change cities as much as cars changed cities
BenedictEvans · context
Automatic cars change cities as much as cars changed cities
Machine learning is such an enormous S Curve that ‘change entire cities!’ or ‘let computers see!’ are just applications
BenedictEvans · key_messages
Machine learning is such an enormous S Curve that ‘change entire cities!’ or ‘let computers see!’ are just applications
Mixed Reality: what if you wear a computer that can see?
BenedictEvans · section_divider
Mixed Reality: what if you wear a computer that can see?
Mixed reality 2017 = Multi-touch 2006
BenedictEvans · case_study
Mixed reality 2017 = Multi-touch 2006
Mixed reality 2017 = Multi-touch 2006
BenedictEvans · case_study
Mixed reality 2017 = Multi-touch 2006
If I could see anything, what should I see?
BenedictEvans · framework_other
If I could see anything, what should I see?
Crypto 2017 = HTML 1994?
BenedictEvans · context
Crypto 2017 = HTML 1994?
Crypto 2017 = HTML 1994?
BenedictEvans · quote_slide
Crypto 2017 = HTML 1994?
Two ways to be at the bottom of the S Curve
BenedictEvans · framework_other
Two ways to be at the bottom of the S Curve
So, if the internet automated this...
BenedictEvans · other
So, if the internet automated this...
Now 'crypto' automates another analogue technology
BenedictEvans · transition
Now 'crypto' automates another analogue technology
Money in the cloud for centuries, but it was never software
BenedictEvans · process_diagram
Money in the cloud for centuries, but it was never software
Innovation is dead?
BenedictEvans · section_divider
Innovation is dead?
Respondents agree: Front line decision making is ideal
PwC · 2017 · key_messages
Respondents agree: Front line decision making is ideal
63% — Percentage of respondents
A risk management ecosystem led from the front line, that fosters collaboration and shared accountability across all three lines of defence, positions a company to effectively meet the challenges of today’s risk landscape. To get there, a company should:
PwC · 2017 · framework_other
A risk management ecosystem led from the front line, that fosters collaboration and shared accountability across all three lines of defence, positions a company to effectively meet the challenges of today’s risk landscape. To get there, a company should:
Trending: A business-led approach for effectiveness and growth
PwC · 2017 · transition
Trending: A business-led approach for effectiveness and growth
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