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ARTIFICIAL INTELLIGENCE
• Computers or intelligence system
with the ability to mimic or duplicate
the functions of the human brain.
OR

• Artificial intelligence is technology
and a branch of computer science that
studies and develops intelligent
machines and software
+

11/15/2013
• John McCarthy was an American
computer scientist and cognitive
scientist.
• He coined the term "artificial
intelligence" (AI), developed the LISP
PROGRAMMING language family.

• Significantly influenced the design of
the ALGOL PROGRAMMING LANGUAGE,
popularized timesharing, and was very
influential in the early development of
AI.
• Alan Turing was a British scientist
known for his Computer , Algorithm
and the very famous TURING TEST.
• He had worked for the British army
during World War 2 in the code
ciphering section and had
successfully cracked many German
codes.

• Turing test
• The Turing test is a test of a machine's
ability to exhibit intelligent
behaviour equivalent to, or
indistinguishable from, that of a
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• A human judge engages in natural
language conversations with a human and
a machine designed to generate
performance indistinguishable from that
of a human being.
• All participants are separated from
one another. If the judge cannot reliably
tell the machine from the human, the
machine is said to have passed the test.
• The test does not check the ability to
give the correct answer to questions; it
checks how closely the answer
resembles typical human answers.
11/15/2013
• The conversation is limited to a
text-only channel such as a
computer keyboard and screen so
that the result is not dependent on
the machine's ability to render
words into audio.

• “Can machines think?”
11/15/2013
• 1943 - McCulloch and Pits -- modeling neurons
using on/off devices.
1950's - Claude Shannon and Alan Turing try to
write chess playing programs.
1956 - John McCarthy thinks of the name
"Artificial Intelligence".
1960's - Logic Theorist, GPS, microworlds, and
neural networks.
1971 - NP-Completeness theory (Cook and Karp)
casts doubt on general applicability of AI
methods.
1970's - Knowledge based systems and expert
systems.
1980's - AI techniques in widespread use, neural
networks rediscovered.
1990's - Deep Blue wins against world chess
champion. Image and Speech recognition becomes
11/15/2013
practical.
Perceptive system
A system that approximates the way
a human sees, hears, and feels
objects
Vision system
Capture, store, and manipulate
visual images and pictures
Robotics
Mechanical and computer devices
that perform tedious tasks with high
precision
Expert system
Stores knowledge and makes
11/15/2013
inferences
Learning system
Computer changes how it functions
or reacts to situations based on
feedback
Natural language processing
Computers understand and react to
statements and commands made in a
“natural” language, such as English
Neural network
Computer system that can act like
or simulate the functioning of the
human brain
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• Mathematics and articial
intelligence (AI) have had a
symbiotic relationship.
• It began when Allen Turing
dreamed of taking Hilbert's
tenth problem into the
realm of computation that
would blur the distinction
between human and machine
reasoning.
• Find an algorithm to determine
whether a given
polynomial Diophantine
equation{a Diophantine equation is

a polynomial equation that allows two or
more variables to take integer values only}

with integer coefficients has an
integer solution.
• Resolved. Result:
impossible, Matiyasevich's
theorem implies that there is no
such algorithm.
11/15/2013
11/15/2013
• Boolean algebra {Propositional Logic} is the
subarea of algebra in which the values of

the variables are the truth values true and false,
usually denoted 1 and 0 respectively.

•

Instead of elementary algebra where the

values of the variables are numbers, and the

main operations are addition and multiplication,
the main operations of Boolean algebra are
the conjunction and, denoted ∧,

the disjunction or, denoted ∨, and

11/15/2013
11/15/2013
11/15/2013
•

Graph theory is the study of graphs, which are

mathematical structures used to model pairwise

relations between objects.
• Graphs are used to represent networks of
communication, data organization, computational
devices, the flow of computation.

11/15/2013
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• Eigenvector is an advanced level of 3D
geometry and it is used in artificial intelligence
to detect motion and deduce expression .
• A square matrix is multiplied with the vector

or the axis and this results in a change and hence
can detect or simulate the same
• The eigenvalues are used to determine the

natural frequencies (or eigenfrequencies) of
vibration, and the eigenvectors determine the
shapes of these vibrational modes and hence can

determine motion

11/15/2013
11/15/2013
 Statistics is the study of the collection,
organization, analysis, interpretation and
presentation of data.
 Created complex models such as nonlinear

models as well as the creation of new types,
such as generalized linear
models and multilevel models and uses the

most significant answer from the results to take
a decision .
 A large number of both general and special

purpose statistical software are now available.

11/15/2013
11/15/2013
 OPTIMIZATION THEORY is the selection of the best
answer and can also be called a mix of
probability and statistics.

 An optimization problem consists of maximizing
or minimizing a real function by systematically
choosing input values from within an allowed set
and computing the value of the function.
 Optimization includes finding "best available"
values of some objective function given a
defined domain, including a variety of different
types of objective functions.
11/15/2013
11/15/2013
11/15/2013
ALGORITHMIC THEORY is a subfield
of information theory and computer
science that concerns itself with the
relationship between computation
and information.

Algorithmic information theory
principally studies complexity measures

on strings (or other data structures).

11/15/2013
11/15/2013
LINEAR SYSTEM OF EQUATION is a collection of
linear equations involving the same set of variables.
 It helps in the location of the point {solution} and
can estimate the location graphically.
 it helps in computer
simulation.
 It can also determine the
Solution region.

11/15/2013
11/15/2013
CONVEX OPTIMIZATION THEORY is used in the
adaptation of a robot. It takes a more
probability in learning approaches.
 It permits fast prototyping of learning
algorithms
without the need for designing an appropriate
training procedure explicitly.
minx f0(x) s.t. { fk(x)=0 ∀k = 1,...,nK

{ fl(x) ≤ 0 ∀l = nK + 1,...,nK +nL

11/15/2013
11/15/2013
NEURAL NETWORK are

computational models inspired by
animal central nervous systems that are
capable of machine learning and pattern
recognition.
They are usually presented as systems of
interconnected neurons that can compute
values from inputs by feeding information

through the network.
11/15/2013
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• Strong AI is hypothetical artificial
intelligence that matches or exceeds
human intelligence — the intelligence of
a machine that could successfully
perform any intellectual task that a
human being can.
• The skill to evolve itself is the most
astonishing and at the same time
dangerous skill which is used or shall
be used in strong AI.
• One proposal to deal with this is to
ensure that the first generally
intelligent AI is 'Friendly AI', and will
then be able to control subsequently
11/15/2013
developed AIs.
11/15/2013
Brain inc.

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Artificial Intelligence and Mathematics

  • 1.
  • 2. ARTIFICIAL INTELLIGENCE • Computers or intelligence system with the ability to mimic or duplicate the functions of the human brain. OR • Artificial intelligence is technology and a branch of computer science that studies and develops intelligent machines and software
  • 4. • John McCarthy was an American computer scientist and cognitive scientist. • He coined the term "artificial intelligence" (AI), developed the LISP PROGRAMMING language family. • Significantly influenced the design of the ALGOL PROGRAMMING LANGUAGE, popularized timesharing, and was very influential in the early development of AI.
  • 5. • Alan Turing was a British scientist known for his Computer , Algorithm and the very famous TURING TEST. • He had worked for the British army during World War 2 in the code ciphering section and had successfully cracked many German codes. • Turing test • The Turing test is a test of a machine's ability to exhibit intelligent behaviour equivalent to, or indistinguishable from, that of a 11/15/2013
  • 7. • A human judge engages in natural language conversations with a human and a machine designed to generate performance indistinguishable from that of a human being. • All participants are separated from one another. If the judge cannot reliably tell the machine from the human, the machine is said to have passed the test. • The test does not check the ability to give the correct answer to questions; it checks how closely the answer resembles typical human answers. 11/15/2013
  • 8. • The conversation is limited to a text-only channel such as a computer keyboard and screen so that the result is not dependent on the machine's ability to render words into audio. • “Can machines think?” 11/15/2013
  • 9. • 1943 - McCulloch and Pits -- modeling neurons using on/off devices. 1950's - Claude Shannon and Alan Turing try to write chess playing programs. 1956 - John McCarthy thinks of the name "Artificial Intelligence". 1960's - Logic Theorist, GPS, microworlds, and neural networks. 1971 - NP-Completeness theory (Cook and Karp) casts doubt on general applicability of AI methods. 1970's - Knowledge based systems and expert systems. 1980's - AI techniques in widespread use, neural networks rediscovered. 1990's - Deep Blue wins against world chess champion. Image and Speech recognition becomes 11/15/2013 practical.
  • 10. Perceptive system A system that approximates the way a human sees, hears, and feels objects Vision system Capture, store, and manipulate visual images and pictures Robotics Mechanical and computer devices that perform tedious tasks with high precision Expert system Stores knowledge and makes 11/15/2013 inferences
  • 11. Learning system Computer changes how it functions or reacts to situations based on feedback Natural language processing Computers understand and react to statements and commands made in a “natural” language, such as English Neural network Computer system that can act like or simulate the functioning of the human brain 11/15/2013
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  • 18. • Mathematics and articial intelligence (AI) have had a symbiotic relationship. • It began when Allen Turing dreamed of taking Hilbert's tenth problem into the realm of computation that would blur the distinction between human and machine reasoning.
  • 19. • Find an algorithm to determine whether a given polynomial Diophantine equation{a Diophantine equation is a polynomial equation that allows two or more variables to take integer values only} with integer coefficients has an integer solution. • Resolved. Result: impossible, Matiyasevich's theorem implies that there is no such algorithm. 11/15/2013
  • 21. • Boolean algebra {Propositional Logic} is the subarea of algebra in which the values of the variables are the truth values true and false, usually denoted 1 and 0 respectively. • Instead of elementary algebra where the values of the variables are numbers, and the main operations are addition and multiplication, the main operations of Boolean algebra are the conjunction and, denoted ∧, the disjunction or, denoted ∨, and 11/15/2013
  • 24. • Graph theory is the study of graphs, which are mathematical structures used to model pairwise relations between objects. • Graphs are used to represent networks of communication, data organization, computational devices, the flow of computation. 11/15/2013
  • 26. • Eigenvector is an advanced level of 3D geometry and it is used in artificial intelligence to detect motion and deduce expression . • A square matrix is multiplied with the vector or the axis and this results in a change and hence can detect or simulate the same • The eigenvalues are used to determine the natural frequencies (or eigenfrequencies) of vibration, and the eigenvectors determine the shapes of these vibrational modes and hence can determine motion 11/15/2013
  • 28.  Statistics is the study of the collection, organization, analysis, interpretation and presentation of data.  Created complex models such as nonlinear models as well as the creation of new types, such as generalized linear models and multilevel models and uses the most significant answer from the results to take a decision .  A large number of both general and special purpose statistical software are now available. 11/15/2013
  • 30.  OPTIMIZATION THEORY is the selection of the best answer and can also be called a mix of probability and statistics.  An optimization problem consists of maximizing or minimizing a real function by systematically choosing input values from within an allowed set and computing the value of the function.  Optimization includes finding "best available" values of some objective function given a defined domain, including a variety of different types of objective functions. 11/15/2013
  • 33. ALGORITHMIC THEORY is a subfield of information theory and computer science that concerns itself with the relationship between computation and information. Algorithmic information theory principally studies complexity measures on strings (or other data structures). 11/15/2013
  • 35. LINEAR SYSTEM OF EQUATION is a collection of linear equations involving the same set of variables.  It helps in the location of the point {solution} and can estimate the location graphically.  it helps in computer simulation.  It can also determine the Solution region. 11/15/2013
  • 37. CONVEX OPTIMIZATION THEORY is used in the adaptation of a robot. It takes a more probability in learning approaches.  It permits fast prototyping of learning algorithms without the need for designing an appropriate training procedure explicitly. minx f0(x) s.t. { fk(x)=0 ∀k = 1,...,nK { fl(x) ≤ 0 ∀l = nK + 1,...,nK +nL 11/15/2013
  • 39. NEURAL NETWORK are computational models inspired by animal central nervous systems that are capable of machine learning and pattern recognition. They are usually presented as systems of interconnected neurons that can compute values from inputs by feeding information through the network. 11/15/2013
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  • 46. • Strong AI is hypothetical artificial intelligence that matches or exceeds human intelligence — the intelligence of a machine that could successfully perform any intellectual task that a human being can. • The skill to evolve itself is the most astonishing and at the same time dangerous skill which is used or shall be used in strong AI. • One proposal to deal with this is to ensure that the first generally intelligent AI is 'Friendly AI', and will then be able to control subsequently 11/15/2013 developed AIs.
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Notas do Editor

  1. FINANCE =Banks use artificial intelligence systems to organize operations, invest in stocks, and manage properties.HEAVY INDUSTRY =Robots have become common in many industries. They are often given jobs that are considered dangerous to humans.ONLINE=Artificial intelligence is implemented in automated online assistants that can be seen as avatars on web pages. Similar techniques may be used in answering machines of call centres, such as speech recognition software to allow computers to handle first level of customer support, text mining and natural language processing to allow better customer handling, agent training by automatic mining of best practices from past interactions, support automation and many other technologies to improve agent productivity and customer satisfaction.[8]GAMES=Games use ai and gathers result as per the decision made on spot.For example the basic ai is used in pac man . red enemy chases Pac-Man, and the pink and blue enemies try to position themselves in front of Pac-Man's mouth.[27] Although he claimed that the orange enemy's behavior is randomMEDICAL=Artificial neural networks are used as clinical decision support systems for medical diagnosis, such as in Concept Processing technology in EMR software.Other tasks in medicine that can potentially be performed by artificial intelligence include:Computer-aided interpretation of medical images. Such systems help scan digital images, e.g. from computed tomography, for typical appearances and to highlight conspicuous sections, such as possible diseases. A typical application is the detection of a tumor.Heart sound analysis[5]
  2. FATHER OF ROBOTICSHIS THREE LAWS IS THE FOUNDATION OF ROBOTICS AND ARTIFICIAL INTELLIGENCE
  3. Disadvantage is that it needs different variables for each time.For eg as talked before in pac man there are 255 level for a player,representing 2^8 but however at 266 th level this is what happens…………..So we go for predicate calculus another developed part of boolean theory
  4. MENTION THE DEFINITION IS TOO BIG
  5. For example, in a neural network for handwriting recognition, a set of input neurons may be activated by the pixels of an input image representing a letter or digit. The activations of these neurons are then passed on, weighted and transformed by some function determined by the network's designer, to other neurons, etc., until finally an output neuron is activated that determines which character was read.