SlideShare ist ein Scribd-Unternehmen logo
1 von 53
Downloaden Sie, um offline zu lesen
My slides are available for you at:
Coming to terms with
intelligence in machines
Prof. Dr. Dagmar Monett
Computer Science Dept., Berlin School of Economics and Law
dagmar.monett-diaz@hwr-berlin.de
https://www.slideshare.net/dmonett/monett-2021-atd
Keynote, Nov. 16, 2021
2
@dmonett
IG: @ThePartyEye
3
@dmonett
IG: @ThePartyEye
4
@dmonett
Main statement:
There are no truly
intelligent artifacts
on the horizon yet.
5
@dmonett
“The long-term dream of AI is to
build machines that have the
that people
have—to build machines that are
self-aware, conscious and
autonomous in the same way
that people like you and me are.”
Wooldridge, M. (2020). The Road to Conscious Machines: The Story of AI. UK: Pelican Random House.
6
@dmonett
“Intelligence measures an agent’s ability
to achieve goals in a wide range of
environments.” (Legg & Hutter, 2007)
Fogel, D. B. (2006). Defining Artificial Intelligence. In Evolutionary Computation: Toward a New Philosophy of Machine Intelligence.
Third Edition, pp. 1-32. The Institute of Electrical and Electronics Engineers, Inc., IEEE Press.
Legg, S. and Hutter, M. (2007). Universal Intelligence: A Definition of Machine Intelligence. Minds and Machines, 17(4):391-444,
Springer.
McCarthy, J. (2007). What is Artificial Intelligence? Computer Science Department, School of Engineering, Stanford University.
Wang, P. (2008). What Do You Mean by "AI"? In P. Wang, B. Goertzel, and S. Franklin (eds.), Artificial General Intelligence 2008,
Proceedings of the First AGI Conference, Frontiers in Artificial Intelligence and Applications, 171:362-373. IOS Press Amsterdam,
The Netherlands.
“[Artificial Intelligence is] the science and
engineering of making intelligent
machines. ... It is related to the similar task
of using computers to understand human
intelligence.” (McCarthy, 2007)
“Intelligence is] the capability of a system
to adapt its behavior to meet its goals in a
range of environments.” (Fogel, 2006)
Four examples of AI definitions
“The essence of intelligence is the
principle of adapting to the environment
while working with insufficient
knowledge and resources.” (Wang, 2008)
7
@dmonett
Misleading news and hype around AI
8
@dmonett
“
, the one
“available through
the newspapers,
books and films.”
Collins, H. (2018). Artifictional Intelligence: Against Humanity’s Surrender to Computers. Cambridge, UK: Polity Press.
9
@dmonett
“If you rely on movies and science
fiction (and even some popular non-
fiction) for your view of AI, you will
be afraid of AI becoming conscious,
turning malevolent, and trying to
enslave or kill us all. But given
,
this is not what most people in the AI
community worry about.”
Mitchell, M. (2019). Artificial Intelligence: A Guide for Thinking Humans. UK: Pelican Random House.
10
@dmonett
“Neither deep learning
nor other forms of
second-wave AI, nor any
proposals yet advanced
for third-wave,
.”
Smith, B. C. (2019). The Promise of Artificial Intelligence: Reckoning and Judgment. Cambridge, MA: The MIT Press.
11
@dmonett
“The myth is not that true AI is
possible. As to that, the future of AI
is a scientific unknown.
–that we have
already embarked on the path that
will lead to human-level AI, and then
superintelligence. We have not.”
Larson, E. J. (2021). The Myth of Artificial Intelligence: Why computers can’t think the way we do. Cambridge, MA: Berlknap,
Harvard University Press.
12
@dmonett
“The reality of AI for
the foreseeable
future
to the
grand dream.”
Wooldridge, M. (2020). The Road to Conscious Machines: The Story of AI. UK: Pelican Random House.
13
@dmonett
Key learning 1:
There is
on
defining intelligence.
14
@dmonett
No consensus
Journal editors (1921). Intelligence and Its Measurement: A Symposium. Journal of Educational Psychology, Vol 12(3), 123-147.
Detterman, D. K. (1986). Qualitative Integration: The Last Word? In R. J. Sternberg and D. K. Detterman (eds.), What is intelligence?
Contemporary Viewpoints on its Nature and Definition, pp. 163-166. Norwood, NJ: Ablex.
Chollet, F. (2019). The Measure of Intelligence. arXiv:1911.01547 [cs.AI].
“There is very great disagreement concerning the concept of
intelligence.” (Journal editors 1921)
“[A] substantial disagreement on a single definition still abounds.”
(Detterman 1986)
“It is a testimony to the immaturity of our field that the question of
what we mean when we talk about intelligence still doesn’t have a
satisfying answer.” (Chollet 2019)
15
@dmonett
“The lack of specificity allows journalists, entrepreneurs, and
marketing departments to say virtually anything they want.”
(Lipton, 2018)
“[T]he public knowledge and understanding on AI [...] is
suffering from a lack of transparency as to capabilities and
thus impacts of AI.” (Nemitz, 2018)
“[A] lack of clarity in terms of definitions and objectives seems
to have plagued the [AI] field right back to its origins in the
1950s. This makes tracing [its] evolution . . . a difficult task.”
(AI in the UK, 2018, p. 156)
No consensus and its consequences
http://approximatelycorrect.com/2018/06/05/ai-ml-ai-swirling-nomenclature-slurried-thought/
http://dx.doi.org/10.1098/rsta.2018.0089
https://publications.parliament.uk/pa/ld201719/ldselect/ldai/100/100.pdf
16
@dmonett
Key learning 2:
Both human and
machine intelligence
are concepts
.
17
@dmonett
14
Educational Psychology
USA, Europe
Prediction of behavior
14
Only definitions of human
intelligence
Participants
Primary
affiliation
Countries
Focus
Definitions
Type of
definitions
Symposium
1921
Defining (A)I: A comparison
18
@dmonett
5 (14) educational psychologists define intelligence
[ is …]
… the power of good responses from the point of view
of truth or facts; (Thorndike, 1921)
… the ability to carry on abstract thinking; (Terman , 1921)
… having learned or ability to learn to adjust oneself to
the environment; (Colvin , 1921)
… the capacity for knowledge; (Henmon, 1921)
… the capacity to acquire capacity. (Woodrow, 1921)
As referred to in Lanz, P. (2000). The Concept of Intelligence in Psychology and Philosophy. In Cruse, H., Dean, J., and Ritter, H. (eds.)
Prerational Intelligence: Adaptive Behavior and Intelligent Systems Without Symbols and Logic, Vol. 1, 19-30, Springer.
19
@dmonett
14
Educational Psychology
USA, Europe
Prediction of behavior
14
Only definitions of human
intelligence
25
Diverse Psychologies
(educational, cognitive,
behavioral, social, cross-
cultural, etc.)
USA, Europe
Understanding of behavior
25
Mostly definitions of human
intelligence
Participants
Primary
affiliation
Countries
Focus
Definitions
Type of
definitions
Symposium Symposium
1921 1986
Defining (A)I: A comparison
20
@dmonett
16 (25) leading psychologists define intelligence
[ is] an elusive concept (Estes, 1986); an illusory unified capacity
(Horn, 1986); a cognitive proficiency (Glaser, 1986); a polymorphous set of qualities
elusive to define, explain, and measure (Brown, 1986); a pluralistic (Anastasi, 1986),
context-dependent concept (Anastasi, 1986; Sternberg, 1986); a medley of important
events, a mixture of different things (Horn, 1986); a finite set of independent
abilities operating as a complex system (Detterman, 1986); the sum total of all
cognitive processes (Das, 1986); a collective term for demonstrated, mental
individual differences (Hunt, 1986); mental self-government (Sternberg, 1986); a
judgement or attribution that people do, and not a quality residing in the
individual (Goodnow, 1986); a hypothetical (Zigler, 1986), culture-bound, ethnocentric,
and excessively narrow (Berry, 1986), societal construct, a concept in the mind of
a society at large (Carroll, 1986).
A summary of some of the definitions that are included in Sternberg, R. J. and Detterman, D. K. (1986). What is intelligence?
Contemporary Viewpoints on its Nature and Definition. Norwood, NJ: Ablex.
21
@dmonett
AGISI survey
14
Educational Psychology
USA, Europe
Prediction of behavior
14
Only definitions of human
intelligence
25
Diverse Psychologies
(educational, cognitive,
behavioral, social, cross-
cultural, etc.)
USA, Europe
Understanding of behavior
25
Mostly definitions of human
intelligence
567 (academia: 79.7%)
Computer Science,
Engineering, Biology,
Neurosciences, Philosophy,
Cognitive Science, etc.
57+ countries
Computation of behavior
343 (+ 4128 opinions)
Explicit distinction human vs.
machine intelligence
Participants
Primary
affiliation
Countries
Focus
Definitions
Type of
definitions
Symposium Symposium
1921 1986 2019
Defining (A)I: A comparison
22
@dmonett
24.7.2017—25.7.2019 57+ 184+
Academia (N=452, 79.7%)
Industry (N=116, 20.5%)
Researchers (N=435, 76.7%)
Educators (N=197, 34.7%)
Developers, Engineers (N=90, 15.9%)
567 responses
4,128
opinions
343 new,
suggested
definitions
9x2 definitions of (human/machine)
intelligence to agree upon
AGISI survey Defining (machine) Intelligence
(Partial results) Monett, D. and Lewis, C. W. P. (2018). Getting clarity by defining Artificial Intelligence—A Survey. In Müller, Vincent C.
(Ed.), Philosophy and Theory of Artificial Intelligence 2017. SAPERE 44 (pp. 212-214). Berlin: Springer.
See http://agisi.org/Survey_intelligence.html
23
@dmonett
9x2 (+) definitions of (human/machine)
intelligence to agree upon
See http://agisi.org/Defs_intelligence.html
24
@dmonett
A widely accepted definition of intelligence
Gottfredson, L. S. (1997a). Mainstream science on intelligence: An editorial with 52 signatories,
history, and bibliography. Intelligence, 24: 13-23.
As cited in Haier, R. J. (2017). The Neuroscience of Intelligence. New York: Cambridge University
Press.
Most accepted definition, AGISI survey
25
@dmonett
1 target article on defining AI (Wang, 2019)
20 commentaries from leading AI experts
1 extended answer from target author
Wang, P. (2019). On Defining Artificial Intelligence. Journal of Artificial General
Intelligence, 10(2), 1–37.
Monett, D., Lewis, C. W. P., & Thórisson, K. R. (eds.) (2020). Special Issue “On Defining
Artificial Intelligence.” Journal of Artificial General Intelligence, 11(2), 1–100.
But still no general consensus in the AI community!
26
@dmonett
“ .
Rather, artificial intelligence is both
embodied and material, made from
natural resources, fuel, human labor,
infrastructures, logistics, histories, and
classifications. AI systems are not
autonomous, rational, or able to discern
anything without extensive,
computationally intensive training with
large datasets or predefined rules and
rewards.”
Crawford, K. (2021). Atlas of AI: Power, Politics, and the Planetary Costs of Artificial Intelligence. Yale University Press.
27
@dmonett
Key learning 3:
between
AI and Software
Engineering
.
28
@dmonett
AI?
It is software!
29
@dmonett
Monett, D., & Lemke, C. (2021). AI-ware: Bridging AI and Software Engineering for responsible and sustainable intelligent artefacts.
In van Giffen, B., Koehler, J., Brenner, W., & Albayrak, C. A., Managing Artificial Intelligence (pp. 66-73), Workshop Paper Series,
INFORMATIK 2021, Institute of Information Management, University of St. Gallen. A workshop co-located with INFORMATIK 2021,
the 51st Annual Conference of the German Informatics Society (GI), September 29th - October 1st, 2021, in Berlin and online.
Soft-
ware
AI-
ware
30
@dmonett
(Monett & Lemke, 2021)
AI-
ware
The need to be aware of what AI is and is not,
its subfields, as well as a critical appraisal of
where does applying AI make sense at all.
The conjunction of AI and Software
Engineering, mainly –but not only– the former
learning from the variety of well-established
techniques and good practices from the latter,
at the same time extending them.
31
@dmonett
research agenda & Responsible AI
(Monett & Lemke, 2021)
Societal and
ethical
perspective
Algorithmic
perspective
Data-oriented
perspective
Framework-
based
perspective
Economics
perspective
Interdisciplinary
perspective
32
@dmonett
Ex.: Requirements engineering as a process
Adapted from
(Schenkel, 2014)
33
@dmonett
Ex.: Requirements engineering as a process
Adapted from
(Schenkel, 2014)
Responsible AI:
in all stages!
RAI
RAI
RAI
RAI
RAI
RAI
RAI
RAI
34
@dmonett
Ex.: Requirements development in detail
Adapted from
(Wiegers & Beatty,
2013)
35
@dmonett
Ex.: Requirements development in detail
Adapted from
(Wiegers & Beatty,
2013)
Responsible AI:
in all stages!
RAI
RAI
RAI
RAI
36
@dmonett
Agile development? No problem!
© Ignacio Palomo Duarte
https://flic.kr/p/8QjDJy
37
@dmonett
Agile development? No problem!
Responsible AI:
in all stages!
RAI
RAI
RAI
RAI
RAI
RAI
RAI
RAI RAI
RAI
RAI
RAI
RAI
RAI
RAI
RAI
RAI
RAI
RAI
RAI
RAI
© Ignacio Palomo Duarte
https://flic.kr/p/8QjDJy
38
@dmonett
How?
39
@dmonett
Responsible AI, Regulating AI
40
@dmonett
https://ec.europa.eu/futurium/en/ai-alliance-consultation/guidelines/2
“[A] non-exhaustive
[with
] to operationalise
Trustworthy AI. It particularly
applies to AI systems that
directly interact with users, and is
primarily addressed to
developers and deployers of AI
systems.”
41
@dmonett
“Did you assess how your
system behaves in
unexpected situations
and environments?”
Cartoon created at www.projectcartoon.com
(Trustworthy AI assessment list, 2019)
42
@dmonett
“Did you consider the
potential impact or safety
risk to the environment
or to animals?”
Cartoon created at www.projectcartoon.com
(Trustworthy AI assessment list, 2019)
43
@dmonett
“In case the AI system
features a chat bot or
conversational system,
are the human end users
made aware of the fact
that they are interacting
with a non-human
agent?”
Cartoon created at www.projectcartoon.com
(Trustworthy AI assessment list, 2019)
44
@dmonett
“Did you consider ways to
develop the AI system or
train the model without
or with minimal use of
potentially sensitive or
personal data?”
Cartoon created at www.projectcartoon.com
(Trustworthy AI assessment list, 2019)
45
@dmonett
“Did you consider
diversity and
representativeness of
users in the data?
Did you test for specific
populations or
problematic use cases?”
Cartoon created at www.projectcartoon.com
(Trustworthy AI assessment list, 2019)
46
@dmonett
“Did you put in place
mechanisms that
facilitate the system’s
auditability by internal
and/or independent
actors?”
Cartoon created at www.projectcartoon.com
(Trustworthy AI assessment list, 2019)
Put it
on your backlog!
That’s how RAI gets done.
@dmonett
48
@dmonett
It is software!
49
@dmonett
Responsible AI needs
responsible humans.
50
@dmonett
Main statement:
There are no truly
intelligent artifacts
on the horizon yet.
51
@dmonett
We are
the intelligent
ones.
Contact
/monettdiaz
@dmonett
Prof. Dr.
Dagmar Monett
52
http://monettdiaz.com
dagmar.monett-diaz@hwr-berlin.de
Prof. Dr. Computer Science
(Artificial Intelligence, Software Engineering)
Computer Science Dept.
Co-Director M.Sc. Digital Transformation
Berlin School of Economics and Law (HWR Berlin)
Faculty of Cooperative Studies
Template: ATD and www.allppt.com
Coming to terms with intelligence in machines

Weitere ähnliche Inhalte

Was ist angesagt?

History of AI, Current Trends, Prospective Trajectories
History of AI, Current Trends, Prospective TrajectoriesHistory of AI, Current Trends, Prospective Trajectories
History of AI, Current Trends, Prospective TrajectoriesGiovanni Sileno
 
Artificial Intelligence power point presentation document
Artificial Intelligence power point presentation documentArtificial Intelligence power point presentation document
Artificial Intelligence power point presentation documentDavid Raj Kanthi
 
Cognitive Computing : IBM Watson
Cognitive Computing : IBM WatsonCognitive Computing : IBM Watson
Cognitive Computing : IBM WatsonAmit Ranjan
 
Artificial Intelligence Report
Artificial Intelligence Report Artificial Intelligence Report
Artificial Intelligence Report Shubham Verma
 
Machine learning and language v2
Machine learning  and language v2Machine learning  and language v2
Machine learning and language v2William Moore
 
Artificial Intelligence AI Topics History and Overview
Artificial Intelligence AI Topics History and OverviewArtificial Intelligence AI Topics History and Overview
Artificial Intelligence AI Topics History and Overviewbutest
 

“Towards Machine Intelligence” - Daniyal Shahrokhian

“Towards Machine Intelligence” - Daniyal Shahrokhian
“Towards Machine Intelligence” - Daniyal Shahrokhian

“Towards Machine Intelligence” - Daniyal ShahrokhianEIT Digital Alumni
 
FOR A MEANINGFUL ARTIFICIAL INTELLIGENCE TOWARDS A FRENCH AND EUROPEAN ST...
FOR A  MEANINGFUL  ARTIFICIAL  INTELLIGENCE TOWARDS A FRENCH  AND EUROPEAN ST...FOR A  MEANINGFUL  ARTIFICIAL  INTELLIGENCE TOWARDS A FRENCH  AND EUROPEAN ST...
FOR A MEANINGFUL ARTIFICIAL INTELLIGENCE TOWARDS A FRENCH AND EUROPEAN ST...Willy Marroquin (WillyDevNET)
 
A critical examination of the socio-political implications of IoT enabled ing...
A critical examination of the socio-political implications of IoT enabled ing...A critical examination of the socio-political implications of IoT enabled ing...
A critical examination of the socio-political implications of IoT enabled ing...Aaron Sherwood
 
Deep Learning Explained: The future of Artificial Intelligence and Smart Netw...
Deep Learning Explained: The future of Artificial Intelligence and Smart Netw...Deep Learning Explained: The future of Artificial Intelligence and Smart Netw...
Deep Learning Explained: The future of Artificial Intelligence and Smart Netw...Melanie Swan
 
Internet of Things and Artificial Intelligence
Internet of Things and  Artificial IntelligenceInternet of Things and  Artificial Intelligence
Internet of Things and Artificial IntelligenceIrem Gokce Aydin
 
Artificial Intelligence Future |Impact Of Artificial Intelligence On Society
Artificial Intelligence Future |Impact Of Artificial Intelligence On SocietyArtificial Intelligence Future |Impact Of Artificial Intelligence On Society
Artificial Intelligence Future |Impact Of Artificial Intelligence On SocietyYashShah445
 
Solving disciplines 20200207 v2
Solving disciplines 20200207 v2Solving disciplines 20200207 v2
Solving disciplines 20200207 v2ISSIP
 
Ert 20200420 v11
Ert 20200420 v11Ert 20200420 v11
Ert 20200420 v11ISSIP
 
Presentatie internet of things voor ngi en ieee op 5 juni 213 door ben van lier
Presentatie internet of things voor ngi en ieee op 5 juni 213 door ben van lierPresentatie internet of things voor ngi en ieee op 5 juni 213 door ben van lier
Presentatie internet of things voor ngi en ieee op 5 juni 213 door ben van lierRichard Koppen
 
AI for Good Global Summit - 2017 Report
AI for Good Global Summit - 2017 ReportAI for Good Global Summit - 2017 Report
AI for Good Global Summit - 2017 ReportITU
 

Was ist angesagt? (19)

History of AI, Current Trends, Prospective Trajectories
History of AI, Current Trends, Prospective TrajectoriesHistory of AI, Current Trends, Prospective Trajectories
History of AI, Current Trends, Prospective Trajectories
 
Artificial Intelligence power point presentation document
Artificial Intelligence power point presentation documentArtificial Intelligence power point presentation document
Artificial Intelligence power point presentation document
 
Cognitive Computing : IBM Watson
Cognitive Computing : IBM WatsonCognitive Computing : IBM Watson
Cognitive Computing : IBM Watson
 
Artificial Intelligence Report
Artificial Intelligence Report Artificial Intelligence Report
Artificial Intelligence Report
 
AI 3.0
AI 3.0AI 3.0
AI 3.0
 
Machine learning and language v2
Machine learning  and language v2Machine learning  and language v2
Machine learning and language v2
 
Artificial Intelligence AI Topics History and Overview
Artificial Intelligence AI Topics History and OverviewArtificial Intelligence AI Topics History and Overview
Artificial Intelligence AI Topics History and Overview
 
Narrative: Text Generation Model from Data
Narrative: Text Generation Model from DataNarrative: Text Generation Model from Data
Narrative: Text Generation Model from Data
 

“Towards Machine Intelligence” - Daniyal Shahrokhian

“Towards Machine Intelligence” - Daniyal Shahrokhian
“Towards Machine Intelligence” - Daniyal Shahrokhian

“Towards Machine Intelligence” - Daniyal Shahrokhian
 
FOR A MEANINGFUL ARTIFICIAL INTELLIGENCE TOWARDS A FRENCH AND EUROPEAN ST...
FOR A  MEANINGFUL  ARTIFICIAL  INTELLIGENCE TOWARDS A FRENCH  AND EUROPEAN ST...FOR A  MEANINGFUL  ARTIFICIAL  INTELLIGENCE TOWARDS A FRENCH  AND EUROPEAN ST...
FOR A MEANINGFUL ARTIFICIAL INTELLIGENCE TOWARDS A FRENCH AND EUROPEAN ST...
 
A critical examination of the socio-political implications of IoT enabled ing...
A critical examination of the socio-political implications of IoT enabled ing...A critical examination of the socio-political implications of IoT enabled ing...
A critical examination of the socio-political implications of IoT enabled ing...
 
Deep Learning Explained: The future of Artificial Intelligence and Smart Netw...
Deep Learning Explained: The future of Artificial Intelligence and Smart Netw...Deep Learning Explained: The future of Artificial Intelligence and Smart Netw...
Deep Learning Explained: The future of Artificial Intelligence and Smart Netw...
 
Internet of Things and Artificial Intelligence
Internet of Things and  Artificial IntelligenceInternet of Things and  Artificial Intelligence
Internet of Things and Artificial Intelligence
 
EU CV Takis Lybereas
EU CV Takis LybereasEU CV Takis Lybereas
EU CV Takis Lybereas
 
Artificial Intelligence Future |Impact Of Artificial Intelligence On Society
Artificial Intelligence Future |Impact Of Artificial Intelligence On SocietyArtificial Intelligence Future |Impact Of Artificial Intelligence On Society
Artificial Intelligence Future |Impact Of Artificial Intelligence On Society
 
Solving disciplines 20200207 v2
Solving disciplines 20200207 v2Solving disciplines 20200207 v2
Solving disciplines 20200207 v2
 
Ert 20200420 v11
Ert 20200420 v11Ert 20200420 v11
Ert 20200420 v11
 
Presentatie internet of things voor ngi en ieee op 5 juni 213 door ben van lier
Presentatie internet of things voor ngi en ieee op 5 juni 213 door ben van lierPresentatie internet of things voor ngi en ieee op 5 juni 213 door ben van lier
Presentatie internet of things voor ngi en ieee op 5 juni 213 door ben van lier
 
AI for Good Global Summit - 2017 Report
AI for Good Global Summit - 2017 ReportAI for Good Global Summit - 2017 Report
AI for Good Global Summit - 2017 Report
 

Ähnlich wie Coming to terms with intelligence in machines

Artificial Intelligence A Clarification of Misconceptions, Myths and Desired ...
Artificial Intelligence A Clarification of Misconceptions, Myths and Desired ...Artificial Intelligence A Clarification of Misconceptions, Myths and Desired ...
Artificial Intelligence A Clarification of Misconceptions, Myths and Desired ...Christiane Moisés
 
Is the future post-human? IDU planner
Is the future post-human? IDU plannerIs the future post-human? IDU planner
Is the future post-human? IDU plannercinbarnsley
 
PHIL20031 Applied Philosophy.docx
PHIL20031 Applied Philosophy.docxPHIL20031 Applied Philosophy.docx
PHIL20031 Applied Philosophy.docxwrite5
 
The story of Data Stories
The story of Data StoriesThe story of Data Stories
The story of Data StoriesElena Simperl
 
Making our mark: the important role of social scientists in the ‘era of big d...
Making our mark: the important role of social scientists in the ‘era of big d...Making our mark: the important role of social scientists in the ‘era of big d...
Making our mark: the important role of social scientists in the ‘era of big d...The Higher Education Academy
 
yonas bishaw information society-evolvement
yonas bishaw information society-evolvementyonas bishaw information society-evolvement
yonas bishaw information society-evolvementyonasbishaw
 
Slideshowfor nw jct
Slideshowfor nw jctSlideshowfor nw jct
Slideshowfor nw jctJohn Thomas
 
Workshop: Multimodal Tutor
Workshop: Multimodal TutorWorkshop: Multimodal Tutor
Workshop: Multimodal TutorDaniele Di Mitri
 
Conflicts, Bounded Rationality and Collective Wisdom. Lecce 2014
Conflicts, Bounded Rationality and Collective Wisdom. Lecce 2014Conflicts, Bounded Rationality and Collective Wisdom. Lecce 2014
Conflicts, Bounded Rationality and Collective Wisdom. Lecce 2014Jose Francisco Álvarez Álvarez
 
Human-machine Inter-agencies
Human-machine Inter-agenciesHuman-machine Inter-agencies
Human-machine Inter-agenciesmo-seph
 
Introduction to PhilosophyFall 2017Essay Exam 2Due Date Tues.docx
Introduction to PhilosophyFall 2017Essay Exam 2Due Date Tues.docxIntroduction to PhilosophyFall 2017Essay Exam 2Due Date Tues.docx
Introduction to PhilosophyFall 2017Essay Exam 2Due Date Tues.docxnormanibarber20063
 
Student Presentation: AI, Humanoids
Student Presentation: AI, HumanoidsStudent Presentation: AI, Humanoids
Student Presentation: AI, HumanoidsShaynaBlum
 
Introduction to Human Computer Interface (HCI)
Introduction to Human Computer Interface (HCI)Introduction to Human Computer Interface (HCI)
Introduction to Human Computer Interface (HCI)Edneil Jocusol
 
near field interactions with the internet of things
near field interactions with the internet of thingsnear field interactions with the internet of things
near field interactions with the internet of thingsBoni
 
Let's Get Digital, Digital 🎶: Using Digital Humanities to Embrace Data Fuzziness
Let's Get Digital, Digital 🎶: Using Digital Humanities to Embrace Data FuzzinessLet's Get Digital, Digital 🎶: Using Digital Humanities to Embrace Data Fuzziness
Let's Get Digital, Digital 🎶: Using Digital Humanities to Embrace Data FuzzinessLeah Henrickson
 
Being Engelbartian
Being EngelbartianBeing Engelbartian
Being EngelbartianJohn Bradley
 
The era of artificial intelligence
The era of artificial intelligenceThe era of artificial intelligence
The era of artificial intelligencePrajjwal Kushwaha
 

Ähnlich wie Coming to terms with intelligence in machines (20)

Artificial Intelligence A Clarification of Misconceptions, Myths and Desired ...
Artificial Intelligence A Clarification of Misconceptions, Myths and Desired ...Artificial Intelligence A Clarification of Misconceptions, Myths and Desired ...
Artificial Intelligence A Clarification of Misconceptions, Myths and Desired ...
 
Is the future post-human? IDU planner
Is the future post-human? IDU plannerIs the future post-human? IDU planner
Is the future post-human? IDU planner
 
PHIL20031 Applied Philosophy.docx
PHIL20031 Applied Philosophy.docxPHIL20031 Applied Philosophy.docx
PHIL20031 Applied Philosophy.docx
 
The story of Data Stories
The story of Data StoriesThe story of Data Stories
The story of Data Stories
 
Artificial intelligence
Artificial intelligenceArtificial intelligence
Artificial intelligence
 
Making our mark: the important role of social scientists in the ‘era of big d...
Making our mark: the important role of social scientists in the ‘era of big d...Making our mark: the important role of social scientists in the ‘era of big d...
Making our mark: the important role of social scientists in the ‘era of big d...
 
yonas bishaw information society-evolvement
yonas bishaw information society-evolvementyonas bishaw information society-evolvement
yonas bishaw information society-evolvement
 
Slideshowfor nw jct
Slideshowfor nw jctSlideshowfor nw jct
Slideshowfor nw jct
 
Workshop: Multimodal Tutor
Workshop: Multimodal TutorWorkshop: Multimodal Tutor
Workshop: Multimodal Tutor
 
Conflicts, Bounded Rationality and Collective Wisdom. Lecce 2014
Conflicts, Bounded Rationality and Collective Wisdom. Lecce 2014Conflicts, Bounded Rationality and Collective Wisdom. Lecce 2014
Conflicts, Bounded Rationality and Collective Wisdom. Lecce 2014
 
Human-machine Inter-agencies
Human-machine Inter-agenciesHuman-machine Inter-agencies
Human-machine Inter-agencies
 
Introduction to PhilosophyFall 2017Essay Exam 2Due Date Tues.docx
Introduction to PhilosophyFall 2017Essay Exam 2Due Date Tues.docxIntroduction to PhilosophyFall 2017Essay Exam 2Due Date Tues.docx
Introduction to PhilosophyFall 2017Essay Exam 2Due Date Tues.docx
 
Student Presentation: AI, Humanoids
Student Presentation: AI, HumanoidsStudent Presentation: AI, Humanoids
Student Presentation: AI, Humanoids
 
Introduction to Human Computer Interface (HCI)
Introduction to Human Computer Interface (HCI)Introduction to Human Computer Interface (HCI)
Introduction to Human Computer Interface (HCI)
 
Fruitful Friction as a Strategy to Scale Social Innovations
Fruitful Friction as a Strategy to Scale Social InnovationsFruitful Friction as a Strategy to Scale Social Innovations
Fruitful Friction as a Strategy to Scale Social Innovations
 
near field interactions with the internet of things
near field interactions with the internet of thingsnear field interactions with the internet of things
near field interactions with the internet of things
 
Let's Get Digital, Digital 🎶: Using Digital Humanities to Embrace Data Fuzziness
Let's Get Digital, Digital 🎶: Using Digital Humanities to Embrace Data FuzzinessLet's Get Digital, Digital 🎶: Using Digital Humanities to Embrace Data Fuzziness
Let's Get Digital, Digital 🎶: Using Digital Humanities to Embrace Data Fuzziness
 
ENP_Dutch_Infoday_PHuijnen
ENP_Dutch_Infoday_PHuijnen ENP_Dutch_Infoday_PHuijnen
ENP_Dutch_Infoday_PHuijnen
 
Being Engelbartian
Being EngelbartianBeing Engelbartian
Being Engelbartian
 
The era of artificial intelligence
The era of artificial intelligenceThe era of artificial intelligence
The era of artificial intelligence
 

Mehr von Dagmar Monett

Narratives that speak AI lingua? AI vocabulary in listed companies' annual re...
Narratives that speak AI lingua? AI vocabulary in listed companies' annual re...Narratives that speak AI lingua? AI vocabulary in listed companies' annual re...
Narratives that speak AI lingua? AI vocabulary in listed companies' annual re...Dagmar Monett
 
Game-based Learning as a Suitable Approach for Teaching Digital Ethical Think...
Game-based Learning as a Suitable Approach for Teaching Digital Ethical Think...Game-based Learning as a Suitable Approach for Teaching Digital Ethical Think...
Game-based Learning as a Suitable Approach for Teaching Digital Ethical Think...Dagmar Monett
 
University-Industry Collaboration's Next Level: A Comparative Study as Basis ...
University-Industry Collaboration's Next Level: A Comparative Study as Basis ...University-Industry Collaboration's Next Level: A Comparative Study as Basis ...
University-Industry Collaboration's Next Level: A Comparative Study as Basis ...Dagmar Monett
 
The Changing Landscape of Digital Technologies for Learning
The Changing Landscape of Digital Technologies for Learning The Changing Landscape of Digital Technologies for Learning
The Changing Landscape of Digital Technologies for Learning Dagmar Monett
 
Will Robots Take all the Jobs? Not yet.
Will Robots Take all the Jobs? Not yet.Will Robots Take all the Jobs? Not yet.
Will Robots Take all the Jobs? Not yet.Dagmar Monett
 
Erfahrungen aus Projektbasiertes Lernen im Informatik Studium - The Missing p...
Erfahrungen aus Projektbasiertes Lernen im Informatik Studium - The Missing p...Erfahrungen aus Projektbasiertes Lernen im Informatik Studium - The Missing p...
Erfahrungen aus Projektbasiertes Lernen im Informatik Studium - The Missing p...Dagmar Monett
 
Simulating the Fractional Reserve Banking using Agent-based Modelling with Ne...
Simulating the Fractional Reserve Banking using Agent-based Modelling with Ne...Simulating the Fractional Reserve Banking using Agent-based Modelling with Ne...
Simulating the Fractional Reserve Banking using Agent-based Modelling with Ne...Dagmar Monett
 
Predicting Star Ratings based on Annotated Reviewss of Mobile Apps [Slides]
Predicting Star Ratings based on Annotated Reviewss of Mobile Apps [Slides]Predicting Star Ratings based on Annotated Reviewss of Mobile Apps [Slides]
Predicting Star Ratings based on Annotated Reviewss of Mobile Apps [Slides]Dagmar Monett
 
Teaching Students Collaborative Requirements Engineering. Case Study Red:Wire
Teaching Students Collaborative Requirements Engineering. Case Study Red:WireTeaching Students Collaborative Requirements Engineering. Case Study Red:Wire
Teaching Students Collaborative Requirements Engineering. Case Study Red:WireDagmar Monett
 
E-Learning Adoption in a Higher Education Setting: An Empirical Study
E-Learning Adoption in a Higher Education Setting: An Empirical StudyE-Learning Adoption in a Higher Education Setting: An Empirical Study
E-Learning Adoption in a Higher Education Setting: An Empirical StudyDagmar Monett
 
Evolving Lesson Plans to Assist Educators: From Paper-Based to Adaptive Lesso...
Evolving Lesson Plans to Assist Educators: From Paper-Based to Adaptive Lesso...Evolving Lesson Plans to Assist Educators: From Paper-Based to Adaptive Lesso...
Evolving Lesson Plans to Assist Educators: From Paper-Based to Adaptive Lesso...Dagmar Monett
 
Joint Software Engineering to support STEM Education: Experiences before, dur...
Joint Software Engineering to support STEM Education: Experiences before, dur...Joint Software Engineering to support STEM Education: Experiences before, dur...
Joint Software Engineering to support STEM Education: Experiences before, dur...Dagmar Monett
 
Methods for Validating and Testing Software Requirements (lecture slides)
Methods for Validating and Testing Software Requirements (lecture slides)Methods for Validating and Testing Software Requirements (lecture slides)
Methods for Validating and Testing Software Requirements (lecture slides)Dagmar Monett
 
Modelling Software Requirements: Important diagrams and templates (lecture sl...
Modelling Software Requirements: Important diagrams and templates (lecture sl...Modelling Software Requirements: Important diagrams and templates (lecture sl...
Modelling Software Requirements: Important diagrams and templates (lecture sl...Dagmar Monett
 
Requirements Engineering Methods for Documenting Requirements (lecture slides)
Requirements Engineering Methods for Documenting Requirements (lecture slides)Requirements Engineering Methods for Documenting Requirements (lecture slides)
Requirements Engineering Methods for Documenting Requirements (lecture slides)Dagmar Monett
 
Requirements Engineering Techniques for Eliciting Requirements (lecture slides)
Requirements Engineering Techniques for Eliciting Requirements (lecture slides)Requirements Engineering Techniques for Eliciting Requirements (lecture slides)
Requirements Engineering Techniques for Eliciting Requirements (lecture slides)Dagmar Monett
 
A Structured Approach to Requirements Analysis (lecture slides)
A Structured Approach to Requirements Analysis (lecture slides)A Structured Approach to Requirements Analysis (lecture slides)
A Structured Approach to Requirements Analysis (lecture slides)Dagmar Monett
 
Walking the path from the MOOC to my classroom: My collection of methods and ...
Walking the path from the MOOC to my classroom: My collection of methods and ...Walking the path from the MOOC to my classroom: My collection of methods and ...
Walking the path from the MOOC to my classroom: My collection of methods and ...Dagmar Monett
 
Understanding the Cuban Blogosphere: Retrospective and Perspectives based on ...
Understanding the Cuban Blogosphere: Retrospective and Perspectives based on ...Understanding the Cuban Blogosphere: Retrospective and Perspectives based on ...
Understanding the Cuban Blogosphere: Retrospective and Perspectives based on ...Dagmar Monett
 
Genetic Algorithms and Ant Colony Optimisation (lecture slides)
Genetic Algorithms and Ant Colony Optimisation (lecture slides)Genetic Algorithms and Ant Colony Optimisation (lecture slides)
Genetic Algorithms and Ant Colony Optimisation (lecture slides)Dagmar Monett
 

Mehr von Dagmar Monett (20)

Narratives that speak AI lingua? AI vocabulary in listed companies' annual re...
Narratives that speak AI lingua? AI vocabulary in listed companies' annual re...Narratives that speak AI lingua? AI vocabulary in listed companies' annual re...
Narratives that speak AI lingua? AI vocabulary in listed companies' annual re...
 
Game-based Learning as a Suitable Approach for Teaching Digital Ethical Think...
Game-based Learning as a Suitable Approach for Teaching Digital Ethical Think...Game-based Learning as a Suitable Approach for Teaching Digital Ethical Think...
Game-based Learning as a Suitable Approach for Teaching Digital Ethical Think...
 
University-Industry Collaboration's Next Level: A Comparative Study as Basis ...
University-Industry Collaboration's Next Level: A Comparative Study as Basis ...University-Industry Collaboration's Next Level: A Comparative Study as Basis ...
University-Industry Collaboration's Next Level: A Comparative Study as Basis ...
 
The Changing Landscape of Digital Technologies for Learning
The Changing Landscape of Digital Technologies for Learning The Changing Landscape of Digital Technologies for Learning
The Changing Landscape of Digital Technologies for Learning
 
Will Robots Take all the Jobs? Not yet.
Will Robots Take all the Jobs? Not yet.Will Robots Take all the Jobs? Not yet.
Will Robots Take all the Jobs? Not yet.
 
Erfahrungen aus Projektbasiertes Lernen im Informatik Studium - The Missing p...
Erfahrungen aus Projektbasiertes Lernen im Informatik Studium - The Missing p...Erfahrungen aus Projektbasiertes Lernen im Informatik Studium - The Missing p...
Erfahrungen aus Projektbasiertes Lernen im Informatik Studium - The Missing p...
 
Simulating the Fractional Reserve Banking using Agent-based Modelling with Ne...
Simulating the Fractional Reserve Banking using Agent-based Modelling with Ne...Simulating the Fractional Reserve Banking using Agent-based Modelling with Ne...
Simulating the Fractional Reserve Banking using Agent-based Modelling with Ne...
 
Predicting Star Ratings based on Annotated Reviewss of Mobile Apps [Slides]
Predicting Star Ratings based on Annotated Reviewss of Mobile Apps [Slides]Predicting Star Ratings based on Annotated Reviewss of Mobile Apps [Slides]
Predicting Star Ratings based on Annotated Reviewss of Mobile Apps [Slides]
 
Teaching Students Collaborative Requirements Engineering. Case Study Red:Wire
Teaching Students Collaborative Requirements Engineering. Case Study Red:WireTeaching Students Collaborative Requirements Engineering. Case Study Red:Wire
Teaching Students Collaborative Requirements Engineering. Case Study Red:Wire
 
E-Learning Adoption in a Higher Education Setting: An Empirical Study
E-Learning Adoption in a Higher Education Setting: An Empirical StudyE-Learning Adoption in a Higher Education Setting: An Empirical Study
E-Learning Adoption in a Higher Education Setting: An Empirical Study
 
Evolving Lesson Plans to Assist Educators: From Paper-Based to Adaptive Lesso...
Evolving Lesson Plans to Assist Educators: From Paper-Based to Adaptive Lesso...Evolving Lesson Plans to Assist Educators: From Paper-Based to Adaptive Lesso...
Evolving Lesson Plans to Assist Educators: From Paper-Based to Adaptive Lesso...
 
Joint Software Engineering to support STEM Education: Experiences before, dur...
Joint Software Engineering to support STEM Education: Experiences before, dur...Joint Software Engineering to support STEM Education: Experiences before, dur...
Joint Software Engineering to support STEM Education: Experiences before, dur...
 
Methods for Validating and Testing Software Requirements (lecture slides)
Methods for Validating and Testing Software Requirements (lecture slides)Methods for Validating and Testing Software Requirements (lecture slides)
Methods for Validating and Testing Software Requirements (lecture slides)
 
Modelling Software Requirements: Important diagrams and templates (lecture sl...
Modelling Software Requirements: Important diagrams and templates (lecture sl...Modelling Software Requirements: Important diagrams and templates (lecture sl...
Modelling Software Requirements: Important diagrams and templates (lecture sl...
 
Requirements Engineering Methods for Documenting Requirements (lecture slides)
Requirements Engineering Methods for Documenting Requirements (lecture slides)Requirements Engineering Methods for Documenting Requirements (lecture slides)
Requirements Engineering Methods for Documenting Requirements (lecture slides)
 
Requirements Engineering Techniques for Eliciting Requirements (lecture slides)
Requirements Engineering Techniques for Eliciting Requirements (lecture slides)Requirements Engineering Techniques for Eliciting Requirements (lecture slides)
Requirements Engineering Techniques for Eliciting Requirements (lecture slides)
 
A Structured Approach to Requirements Analysis (lecture slides)
A Structured Approach to Requirements Analysis (lecture slides)A Structured Approach to Requirements Analysis (lecture slides)
A Structured Approach to Requirements Analysis (lecture slides)
 
Walking the path from the MOOC to my classroom: My collection of methods and ...
Walking the path from the MOOC to my classroom: My collection of methods and ...Walking the path from the MOOC to my classroom: My collection of methods and ...
Walking the path from the MOOC to my classroom: My collection of methods and ...
 
Understanding the Cuban Blogosphere: Retrospective and Perspectives based on ...
Understanding the Cuban Blogosphere: Retrospective and Perspectives based on ...Understanding the Cuban Blogosphere: Retrospective and Perspectives based on ...
Understanding the Cuban Blogosphere: Retrospective and Perspectives based on ...
 
Genetic Algorithms and Ant Colony Optimisation (lecture slides)
Genetic Algorithms and Ant Colony Optimisation (lecture slides)Genetic Algorithms and Ant Colony Optimisation (lecture slides)
Genetic Algorithms and Ant Colony Optimisation (lecture slides)
 

Kürzlich hochgeladen

Software Engineering Methodologies (overview)
Software Engineering Methodologies (overview)Software Engineering Methodologies (overview)
Software Engineering Methodologies (overview)eniolaolutunde
 
Disha NEET Physics Guide for classes 11 and 12.pdf
Disha NEET Physics Guide for classes 11 and 12.pdfDisha NEET Physics Guide for classes 11 and 12.pdf
Disha NEET Physics Guide for classes 11 and 12.pdfchloefrazer622
 
Class 11th Physics NEET formula sheet pdf
Class 11th Physics NEET formula sheet pdfClass 11th Physics NEET formula sheet pdf
Class 11th Physics NEET formula sheet pdfAyushMahapatra5
 
Nutritional Needs Presentation - HLTH 104
Nutritional Needs Presentation - HLTH 104Nutritional Needs Presentation - HLTH 104
Nutritional Needs Presentation - HLTH 104misteraugie
 
social pharmacy d-pharm 1st year by Pragati K. Mahajan
social pharmacy d-pharm 1st year by Pragati K. Mahajansocial pharmacy d-pharm 1st year by Pragati K. Mahajan
social pharmacy d-pharm 1st year by Pragati K. Mahajanpragatimahajan3
 
Unit-IV- Pharma. Marketing Channels.pptx
Unit-IV- Pharma. Marketing Channels.pptxUnit-IV- Pharma. Marketing Channels.pptx
Unit-IV- Pharma. Marketing Channels.pptxVishalSingh1417
 
Sports & Fitness Value Added Course FY..
Sports & Fitness Value Added Course FY..Sports & Fitness Value Added Course FY..
Sports & Fitness Value Added Course FY..Disha Kariya
 
1029-Danh muc Sach Giao Khoa khoi 6.pdf
1029-Danh muc Sach Giao Khoa khoi  6.pdf1029-Danh muc Sach Giao Khoa khoi  6.pdf
1029-Danh muc Sach Giao Khoa khoi 6.pdfQucHHunhnh
 
A Critique of the Proposed National Education Policy Reform
A Critique of the Proposed National Education Policy ReformA Critique of the Proposed National Education Policy Reform
A Critique of the Proposed National Education Policy ReformChameera Dedduwage
 
SOCIAL AND HISTORICAL CONTEXT - LFTVD.pptx
SOCIAL AND HISTORICAL CONTEXT - LFTVD.pptxSOCIAL AND HISTORICAL CONTEXT - LFTVD.pptx
SOCIAL AND HISTORICAL CONTEXT - LFTVD.pptxiammrhaywood
 
fourth grading exam for kindergarten in writing
fourth grading exam for kindergarten in writingfourth grading exam for kindergarten in writing
fourth grading exam for kindergarten in writingTeacherCyreneCayanan
 
Holdier Curriculum Vitae (April 2024).pdf
Holdier Curriculum Vitae (April 2024).pdfHoldier Curriculum Vitae (April 2024).pdf
Holdier Curriculum Vitae (April 2024).pdfagholdier
 
Student login on Anyboli platform.helpin
Student login on Anyboli platform.helpinStudent login on Anyboli platform.helpin
Student login on Anyboli platform.helpinRaunakKeshri1
 
IGNOU MSCCFT and PGDCFT Exam Question Pattern: MCFT003 Counselling and Family...
IGNOU MSCCFT and PGDCFT Exam Question Pattern: MCFT003 Counselling and Family...IGNOU MSCCFT and PGDCFT Exam Question Pattern: MCFT003 Counselling and Family...
IGNOU MSCCFT and PGDCFT Exam Question Pattern: MCFT003 Counselling and Family...PsychoTech Services
 
Activity 01 - Artificial Culture (1).pdf
Activity 01 - Artificial Culture (1).pdfActivity 01 - Artificial Culture (1).pdf
Activity 01 - Artificial Culture (1).pdfciinovamais
 
Arihant handbook biology for class 11 .pdf
Arihant handbook biology for class 11 .pdfArihant handbook biology for class 11 .pdf
Arihant handbook biology for class 11 .pdfchloefrazer622
 
Interactive Powerpoint_How to Master effective communication
Interactive Powerpoint_How to Master effective communicationInteractive Powerpoint_How to Master effective communication
Interactive Powerpoint_How to Master effective communicationnomboosow
 
Explore beautiful and ugly buildings. Mathematics helps us create beautiful d...
Explore beautiful and ugly buildings. Mathematics helps us create beautiful d...Explore beautiful and ugly buildings. Mathematics helps us create beautiful d...
Explore beautiful and ugly buildings. Mathematics helps us create beautiful d...christianmathematics
 
Presentation by Andreas Schleicher Tackling the School Absenteeism Crisis 30 ...
Presentation by Andreas Schleicher Tackling the School Absenteeism Crisis 30 ...Presentation by Andreas Schleicher Tackling the School Absenteeism Crisis 30 ...
Presentation by Andreas Schleicher Tackling the School Absenteeism Crisis 30 ...EduSkills OECD
 
BASLIQ CURRENT LOOKBOOK LOOKBOOK(1) (1).pdf
BASLIQ CURRENT LOOKBOOK  LOOKBOOK(1) (1).pdfBASLIQ CURRENT LOOKBOOK  LOOKBOOK(1) (1).pdf
BASLIQ CURRENT LOOKBOOK LOOKBOOK(1) (1).pdfSoniaTolstoy
 

Kürzlich hochgeladen (20)

Software Engineering Methodologies (overview)
Software Engineering Methodologies (overview)Software Engineering Methodologies (overview)
Software Engineering Methodologies (overview)
 
Disha NEET Physics Guide for classes 11 and 12.pdf
Disha NEET Physics Guide for classes 11 and 12.pdfDisha NEET Physics Guide for classes 11 and 12.pdf
Disha NEET Physics Guide for classes 11 and 12.pdf
 
Class 11th Physics NEET formula sheet pdf
Class 11th Physics NEET formula sheet pdfClass 11th Physics NEET formula sheet pdf
Class 11th Physics NEET formula sheet pdf
 
Nutritional Needs Presentation - HLTH 104
Nutritional Needs Presentation - HLTH 104Nutritional Needs Presentation - HLTH 104
Nutritional Needs Presentation - HLTH 104
 
social pharmacy d-pharm 1st year by Pragati K. Mahajan
social pharmacy d-pharm 1st year by Pragati K. Mahajansocial pharmacy d-pharm 1st year by Pragati K. Mahajan
social pharmacy d-pharm 1st year by Pragati K. Mahajan
 
Unit-IV- Pharma. Marketing Channels.pptx
Unit-IV- Pharma. Marketing Channels.pptxUnit-IV- Pharma. Marketing Channels.pptx
Unit-IV- Pharma. Marketing Channels.pptx
 
Sports & Fitness Value Added Course FY..
Sports & Fitness Value Added Course FY..Sports & Fitness Value Added Course FY..
Sports & Fitness Value Added Course FY..
 
1029-Danh muc Sach Giao Khoa khoi 6.pdf
1029-Danh muc Sach Giao Khoa khoi  6.pdf1029-Danh muc Sach Giao Khoa khoi  6.pdf
1029-Danh muc Sach Giao Khoa khoi 6.pdf
 
A Critique of the Proposed National Education Policy Reform
A Critique of the Proposed National Education Policy ReformA Critique of the Proposed National Education Policy Reform
A Critique of the Proposed National Education Policy Reform
 
SOCIAL AND HISTORICAL CONTEXT - LFTVD.pptx
SOCIAL AND HISTORICAL CONTEXT - LFTVD.pptxSOCIAL AND HISTORICAL CONTEXT - LFTVD.pptx
SOCIAL AND HISTORICAL CONTEXT - LFTVD.pptx
 
fourth grading exam for kindergarten in writing
fourth grading exam for kindergarten in writingfourth grading exam for kindergarten in writing
fourth grading exam for kindergarten in writing
 
Holdier Curriculum Vitae (April 2024).pdf
Holdier Curriculum Vitae (April 2024).pdfHoldier Curriculum Vitae (April 2024).pdf
Holdier Curriculum Vitae (April 2024).pdf
 
Student login on Anyboli platform.helpin
Student login on Anyboli platform.helpinStudent login on Anyboli platform.helpin
Student login on Anyboli platform.helpin
 
IGNOU MSCCFT and PGDCFT Exam Question Pattern: MCFT003 Counselling and Family...
IGNOU MSCCFT and PGDCFT Exam Question Pattern: MCFT003 Counselling and Family...IGNOU MSCCFT and PGDCFT Exam Question Pattern: MCFT003 Counselling and Family...
IGNOU MSCCFT and PGDCFT Exam Question Pattern: MCFT003 Counselling and Family...
 
Activity 01 - Artificial Culture (1).pdf
Activity 01 - Artificial Culture (1).pdfActivity 01 - Artificial Culture (1).pdf
Activity 01 - Artificial Culture (1).pdf
 
Arihant handbook biology for class 11 .pdf
Arihant handbook biology for class 11 .pdfArihant handbook biology for class 11 .pdf
Arihant handbook biology for class 11 .pdf
 
Interactive Powerpoint_How to Master effective communication
Interactive Powerpoint_How to Master effective communicationInteractive Powerpoint_How to Master effective communication
Interactive Powerpoint_How to Master effective communication
 
Explore beautiful and ugly buildings. Mathematics helps us create beautiful d...
Explore beautiful and ugly buildings. Mathematics helps us create beautiful d...Explore beautiful and ugly buildings. Mathematics helps us create beautiful d...
Explore beautiful and ugly buildings. Mathematics helps us create beautiful d...
 
Presentation by Andreas Schleicher Tackling the School Absenteeism Crisis 30 ...
Presentation by Andreas Schleicher Tackling the School Absenteeism Crisis 30 ...Presentation by Andreas Schleicher Tackling the School Absenteeism Crisis 30 ...
Presentation by Andreas Schleicher Tackling the School Absenteeism Crisis 30 ...
 
BASLIQ CURRENT LOOKBOOK LOOKBOOK(1) (1).pdf
BASLIQ CURRENT LOOKBOOK  LOOKBOOK(1) (1).pdfBASLIQ CURRENT LOOKBOOK  LOOKBOOK(1) (1).pdf
BASLIQ CURRENT LOOKBOOK LOOKBOOK(1) (1).pdf
 

Coming to terms with intelligence in machines

  • 1. My slides are available for you at: Coming to terms with intelligence in machines Prof. Dr. Dagmar Monett Computer Science Dept., Berlin School of Economics and Law dagmar.monett-diaz@hwr-berlin.de https://www.slideshare.net/dmonett/monett-2021-atd Keynote, Nov. 16, 2021
  • 4. 4 @dmonett Main statement: There are no truly intelligent artifacts on the horizon yet.
  • 5. 5 @dmonett “The long-term dream of AI is to build machines that have the that people have—to build machines that are self-aware, conscious and autonomous in the same way that people like you and me are.” Wooldridge, M. (2020). The Road to Conscious Machines: The Story of AI. UK: Pelican Random House.
  • 6. 6 @dmonett “Intelligence measures an agent’s ability to achieve goals in a wide range of environments.” (Legg & Hutter, 2007) Fogel, D. B. (2006). Defining Artificial Intelligence. In Evolutionary Computation: Toward a New Philosophy of Machine Intelligence. Third Edition, pp. 1-32. The Institute of Electrical and Electronics Engineers, Inc., IEEE Press. Legg, S. and Hutter, M. (2007). Universal Intelligence: A Definition of Machine Intelligence. Minds and Machines, 17(4):391-444, Springer. McCarthy, J. (2007). What is Artificial Intelligence? Computer Science Department, School of Engineering, Stanford University. Wang, P. (2008). What Do You Mean by "AI"? In P. Wang, B. Goertzel, and S. Franklin (eds.), Artificial General Intelligence 2008, Proceedings of the First AGI Conference, Frontiers in Artificial Intelligence and Applications, 171:362-373. IOS Press Amsterdam, The Netherlands. “[Artificial Intelligence is] the science and engineering of making intelligent machines. ... It is related to the similar task of using computers to understand human intelligence.” (McCarthy, 2007) “Intelligence is] the capability of a system to adapt its behavior to meet its goals in a range of environments.” (Fogel, 2006) Four examples of AI definitions “The essence of intelligence is the principle of adapting to the environment while working with insufficient knowledge and resources.” (Wang, 2008)
  • 8. 8 @dmonett “ , the one “available through the newspapers, books and films.” Collins, H. (2018). Artifictional Intelligence: Against Humanity’s Surrender to Computers. Cambridge, UK: Polity Press.
  • 9. 9 @dmonett “If you rely on movies and science fiction (and even some popular non- fiction) for your view of AI, you will be afraid of AI becoming conscious, turning malevolent, and trying to enslave or kill us all. But given , this is not what most people in the AI community worry about.” Mitchell, M. (2019). Artificial Intelligence: A Guide for Thinking Humans. UK: Pelican Random House.
  • 10. 10 @dmonett “Neither deep learning nor other forms of second-wave AI, nor any proposals yet advanced for third-wave, .” Smith, B. C. (2019). The Promise of Artificial Intelligence: Reckoning and Judgment. Cambridge, MA: The MIT Press.
  • 11. 11 @dmonett “The myth is not that true AI is possible. As to that, the future of AI is a scientific unknown. –that we have already embarked on the path that will lead to human-level AI, and then superintelligence. We have not.” Larson, E. J. (2021). The Myth of Artificial Intelligence: Why computers can’t think the way we do. Cambridge, MA: Berlknap, Harvard University Press.
  • 12. 12 @dmonett “The reality of AI for the foreseeable future to the grand dream.” Wooldridge, M. (2020). The Road to Conscious Machines: The Story of AI. UK: Pelican Random House.
  • 13. 13 @dmonett Key learning 1: There is on defining intelligence.
  • 14. 14 @dmonett No consensus Journal editors (1921). Intelligence and Its Measurement: A Symposium. Journal of Educational Psychology, Vol 12(3), 123-147. Detterman, D. K. (1986). Qualitative Integration: The Last Word? In R. J. Sternberg and D. K. Detterman (eds.), What is intelligence? Contemporary Viewpoints on its Nature and Definition, pp. 163-166. Norwood, NJ: Ablex. Chollet, F. (2019). The Measure of Intelligence. arXiv:1911.01547 [cs.AI]. “There is very great disagreement concerning the concept of intelligence.” (Journal editors 1921) “[A] substantial disagreement on a single definition still abounds.” (Detterman 1986) “It is a testimony to the immaturity of our field that the question of what we mean when we talk about intelligence still doesn’t have a satisfying answer.” (Chollet 2019)
  • 15. 15 @dmonett “The lack of specificity allows journalists, entrepreneurs, and marketing departments to say virtually anything they want.” (Lipton, 2018) “[T]he public knowledge and understanding on AI [...] is suffering from a lack of transparency as to capabilities and thus impacts of AI.” (Nemitz, 2018) “[A] lack of clarity in terms of definitions and objectives seems to have plagued the [AI] field right back to its origins in the 1950s. This makes tracing [its] evolution . . . a difficult task.” (AI in the UK, 2018, p. 156) No consensus and its consequences http://approximatelycorrect.com/2018/06/05/ai-ml-ai-swirling-nomenclature-slurried-thought/ http://dx.doi.org/10.1098/rsta.2018.0089 https://publications.parliament.uk/pa/ld201719/ldselect/ldai/100/100.pdf
  • 16. 16 @dmonett Key learning 2: Both human and machine intelligence are concepts .
  • 17. 17 @dmonett 14 Educational Psychology USA, Europe Prediction of behavior 14 Only definitions of human intelligence Participants Primary affiliation Countries Focus Definitions Type of definitions Symposium 1921 Defining (A)I: A comparison
  • 18. 18 @dmonett 5 (14) educational psychologists define intelligence [ is …] … the power of good responses from the point of view of truth or facts; (Thorndike, 1921) … the ability to carry on abstract thinking; (Terman , 1921) … having learned or ability to learn to adjust oneself to the environment; (Colvin , 1921) … the capacity for knowledge; (Henmon, 1921) … the capacity to acquire capacity. (Woodrow, 1921) As referred to in Lanz, P. (2000). The Concept of Intelligence in Psychology and Philosophy. In Cruse, H., Dean, J., and Ritter, H. (eds.) Prerational Intelligence: Adaptive Behavior and Intelligent Systems Without Symbols and Logic, Vol. 1, 19-30, Springer.
  • 19. 19 @dmonett 14 Educational Psychology USA, Europe Prediction of behavior 14 Only definitions of human intelligence 25 Diverse Psychologies (educational, cognitive, behavioral, social, cross- cultural, etc.) USA, Europe Understanding of behavior 25 Mostly definitions of human intelligence Participants Primary affiliation Countries Focus Definitions Type of definitions Symposium Symposium 1921 1986 Defining (A)I: A comparison
  • 20. 20 @dmonett 16 (25) leading psychologists define intelligence [ is] an elusive concept (Estes, 1986); an illusory unified capacity (Horn, 1986); a cognitive proficiency (Glaser, 1986); a polymorphous set of qualities elusive to define, explain, and measure (Brown, 1986); a pluralistic (Anastasi, 1986), context-dependent concept (Anastasi, 1986; Sternberg, 1986); a medley of important events, a mixture of different things (Horn, 1986); a finite set of independent abilities operating as a complex system (Detterman, 1986); the sum total of all cognitive processes (Das, 1986); a collective term for demonstrated, mental individual differences (Hunt, 1986); mental self-government (Sternberg, 1986); a judgement or attribution that people do, and not a quality residing in the individual (Goodnow, 1986); a hypothetical (Zigler, 1986), culture-bound, ethnocentric, and excessively narrow (Berry, 1986), societal construct, a concept in the mind of a society at large (Carroll, 1986). A summary of some of the definitions that are included in Sternberg, R. J. and Detterman, D. K. (1986). What is intelligence? Contemporary Viewpoints on its Nature and Definition. Norwood, NJ: Ablex.
  • 21. 21 @dmonett AGISI survey 14 Educational Psychology USA, Europe Prediction of behavior 14 Only definitions of human intelligence 25 Diverse Psychologies (educational, cognitive, behavioral, social, cross- cultural, etc.) USA, Europe Understanding of behavior 25 Mostly definitions of human intelligence 567 (academia: 79.7%) Computer Science, Engineering, Biology, Neurosciences, Philosophy, Cognitive Science, etc. 57+ countries Computation of behavior 343 (+ 4128 opinions) Explicit distinction human vs. machine intelligence Participants Primary affiliation Countries Focus Definitions Type of definitions Symposium Symposium 1921 1986 2019 Defining (A)I: A comparison
  • 22. 22 @dmonett 24.7.2017—25.7.2019 57+ 184+ Academia (N=452, 79.7%) Industry (N=116, 20.5%) Researchers (N=435, 76.7%) Educators (N=197, 34.7%) Developers, Engineers (N=90, 15.9%) 567 responses 4,128 opinions 343 new, suggested definitions 9x2 definitions of (human/machine) intelligence to agree upon AGISI survey Defining (machine) Intelligence (Partial results) Monett, D. and Lewis, C. W. P. (2018). Getting clarity by defining Artificial Intelligence—A Survey. In Müller, Vincent C. (Ed.), Philosophy and Theory of Artificial Intelligence 2017. SAPERE 44 (pp. 212-214). Berlin: Springer. See http://agisi.org/Survey_intelligence.html
  • 23. 23 @dmonett 9x2 (+) definitions of (human/machine) intelligence to agree upon See http://agisi.org/Defs_intelligence.html
  • 24. 24 @dmonett A widely accepted definition of intelligence Gottfredson, L. S. (1997a). Mainstream science on intelligence: An editorial with 52 signatories, history, and bibliography. Intelligence, 24: 13-23. As cited in Haier, R. J. (2017). The Neuroscience of Intelligence. New York: Cambridge University Press. Most accepted definition, AGISI survey
  • 25. 25 @dmonett 1 target article on defining AI (Wang, 2019) 20 commentaries from leading AI experts 1 extended answer from target author Wang, P. (2019). On Defining Artificial Intelligence. Journal of Artificial General Intelligence, 10(2), 1–37. Monett, D., Lewis, C. W. P., & Thórisson, K. R. (eds.) (2020). Special Issue “On Defining Artificial Intelligence.” Journal of Artificial General Intelligence, 11(2), 1–100. But still no general consensus in the AI community!
  • 26. 26 @dmonett “ . Rather, artificial intelligence is both embodied and material, made from natural resources, fuel, human labor, infrastructures, logistics, histories, and classifications. AI systems are not autonomous, rational, or able to discern anything without extensive, computationally intensive training with large datasets or predefined rules and rewards.” Crawford, K. (2021). Atlas of AI: Power, Politics, and the Planetary Costs of Artificial Intelligence. Yale University Press.
  • 27. 27 @dmonett Key learning 3: between AI and Software Engineering .
  • 29. 29 @dmonett Monett, D., & Lemke, C. (2021). AI-ware: Bridging AI and Software Engineering for responsible and sustainable intelligent artefacts. In van Giffen, B., Koehler, J., Brenner, W., & Albayrak, C. A., Managing Artificial Intelligence (pp. 66-73), Workshop Paper Series, INFORMATIK 2021, Institute of Information Management, University of St. Gallen. A workshop co-located with INFORMATIK 2021, the 51st Annual Conference of the German Informatics Society (GI), September 29th - October 1st, 2021, in Berlin and online. Soft- ware AI- ware
  • 30. 30 @dmonett (Monett & Lemke, 2021) AI- ware The need to be aware of what AI is and is not, its subfields, as well as a critical appraisal of where does applying AI make sense at all. The conjunction of AI and Software Engineering, mainly –but not only– the former learning from the variety of well-established techniques and good practices from the latter, at the same time extending them.
  • 31. 31 @dmonett research agenda & Responsible AI (Monett & Lemke, 2021) Societal and ethical perspective Algorithmic perspective Data-oriented perspective Framework- based perspective Economics perspective Interdisciplinary perspective
  • 32. 32 @dmonett Ex.: Requirements engineering as a process Adapted from (Schenkel, 2014)
  • 33. 33 @dmonett Ex.: Requirements engineering as a process Adapted from (Schenkel, 2014) Responsible AI: in all stages! RAI RAI RAI RAI RAI RAI RAI RAI
  • 34. 34 @dmonett Ex.: Requirements development in detail Adapted from (Wiegers & Beatty, 2013)
  • 35. 35 @dmonett Ex.: Requirements development in detail Adapted from (Wiegers & Beatty, 2013) Responsible AI: in all stages! RAI RAI RAI RAI
  • 36. 36 @dmonett Agile development? No problem! © Ignacio Palomo Duarte https://flic.kr/p/8QjDJy
  • 37. 37 @dmonett Agile development? No problem! Responsible AI: in all stages! RAI RAI RAI RAI RAI RAI RAI RAI RAI RAI RAI RAI RAI RAI RAI RAI RAI RAI RAI RAI RAI © Ignacio Palomo Duarte https://flic.kr/p/8QjDJy
  • 40. 40 @dmonett https://ec.europa.eu/futurium/en/ai-alliance-consultation/guidelines/2 “[A] non-exhaustive [with ] to operationalise Trustworthy AI. It particularly applies to AI systems that directly interact with users, and is primarily addressed to developers and deployers of AI systems.”
  • 41. 41 @dmonett “Did you assess how your system behaves in unexpected situations and environments?” Cartoon created at www.projectcartoon.com (Trustworthy AI assessment list, 2019)
  • 42. 42 @dmonett “Did you consider the potential impact or safety risk to the environment or to animals?” Cartoon created at www.projectcartoon.com (Trustworthy AI assessment list, 2019)
  • 43. 43 @dmonett “In case the AI system features a chat bot or conversational system, are the human end users made aware of the fact that they are interacting with a non-human agent?” Cartoon created at www.projectcartoon.com (Trustworthy AI assessment list, 2019)
  • 44. 44 @dmonett “Did you consider ways to develop the AI system or train the model without or with minimal use of potentially sensitive or personal data?” Cartoon created at www.projectcartoon.com (Trustworthy AI assessment list, 2019)
  • 45. 45 @dmonett “Did you consider diversity and representativeness of users in the data? Did you test for specific populations or problematic use cases?” Cartoon created at www.projectcartoon.com (Trustworthy AI assessment list, 2019)
  • 46. 46 @dmonett “Did you put in place mechanisms that facilitate the system’s auditability by internal and/or independent actors?” Cartoon created at www.projectcartoon.com (Trustworthy AI assessment list, 2019)
  • 47. Put it on your backlog! That’s how RAI gets done. @dmonett
  • 50. 50 @dmonett Main statement: There are no truly intelligent artifacts on the horizon yet.
  • 52. Contact /monettdiaz @dmonett Prof. Dr. Dagmar Monett 52 http://monettdiaz.com dagmar.monett-diaz@hwr-berlin.de Prof. Dr. Computer Science (Artificial Intelligence, Software Engineering) Computer Science Dept. Co-Director M.Sc. Digital Transformation Berlin School of Economics and Law (HWR Berlin) Faculty of Cooperative Studies Template: ATD and www.allppt.com