SlideShare a Scribd company logo
1 of 32
 
Outline ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]
Definition ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]
Definition ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]
Outline ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]
Examples ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]
Outline ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]
Components and Human Interfaces
Outline ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]
Major Components ,[object Object],[object Object],[object Object],[object Object],[object Object]
Outline ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]
Major Roles of Individuals  ,[object Object],[object Object],[object Object],[object Object],[object Object]
Outline ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]
Notes on Components ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]
Outline ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]
Expert System Features ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]
Outline ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]
Goal-Driven Reasoning  ,[object Object],[object Object],[object Object],[object Object]
Goal-Driven Reasoning ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]
Outline ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]
Uncertainty ,[object Object],[object Object],[object Object],[object Object],[object Object]
Outline ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]
Data Driven Reasoning ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]
Data Driven Reasoning ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]
Outline ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]
Explanations  ,[object Object],[object Object],[object Object],[object Object],[object Object]
Outline ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]
Outline ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]
Advantages and Disadvantages ,[object Object],[object Object],[object Object],[object Object],[object Object]
Advantages and Disadvantages ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]
Outline ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]
 

More Related Content

What's hot

Computer graphics - colour crt and flat-panel displays
Computer graphics - colour crt and flat-panel displaysComputer graphics - colour crt and flat-panel displays
Computer graphics - colour crt and flat-panel displaysVishnupriya T H
 
Church Turing Thesis
Church Turing ThesisChurch Turing Thesis
Church Turing ThesisHemant Sharma
 
Lecture 06 production system
Lecture 06 production systemLecture 06 production system
Lecture 06 production systemHema Kashyap
 
3.1,2,3 pushdown automata definition, moves & id
3.1,2,3 pushdown automata   definition, moves & id3.1,2,3 pushdown automata   definition, moves & id
3.1,2,3 pushdown automata definition, moves & idSampath Kumar S
 
38 paged segmentation
38 paged segmentation38 paged segmentation
38 paged segmentationmyrajendra
 
Logical Agents
Logical AgentsLogical Agents
Logical AgentsYasir Khan
 
I. AO* SEARCH ALGORITHM
I. AO* SEARCH ALGORITHMI. AO* SEARCH ALGORITHM
I. AO* SEARCH ALGORITHMvikas dhakane
 
State Space Search in ai
State Space Search in aiState Space Search in ai
State Space Search in aivikas dhakane
 
Knowledge representation in AI
Knowledge representation in AIKnowledge representation in AI
Knowledge representation in AIVishal Singh
 
Knowledge representation In Artificial Intelligence
Knowledge representation In Artificial IntelligenceKnowledge representation In Artificial Intelligence
Knowledge representation In Artificial IntelligenceRamla Sheikh
 
State space search and Problem Solving techniques
State space search and Problem Solving techniquesState space search and Problem Solving techniques
State space search and Problem Solving techniquesKirti Verma
 
Bayes Classification
Bayes ClassificationBayes Classification
Bayes Classificationsathish sak
 
Expert systems
Expert systemsExpert systems
Expert systemsJithin Zcs
 
Seed filling algorithm
Seed filling algorithmSeed filling algorithm
Seed filling algorithmMani Kanth
 
Popular search algorithms
Popular search algorithmsPopular search algorithms
Popular search algorithmsMinakshi Atre
 

What's hot (20)

Computer graphics - colour crt and flat-panel displays
Computer graphics - colour crt and flat-panel displaysComputer graphics - colour crt and flat-panel displays
Computer graphics - colour crt and flat-panel displays
 
Church Turing Thesis
Church Turing ThesisChurch Turing Thesis
Church Turing Thesis
 
Lecture 06 production system
Lecture 06 production systemLecture 06 production system
Lecture 06 production system
 
3.1,2,3 pushdown automata definition, moves & id
3.1,2,3 pushdown automata   definition, moves & id3.1,2,3 pushdown automata   definition, moves & id
3.1,2,3 pushdown automata definition, moves & id
 
Support Vector Machines ( SVM )
Support Vector Machines ( SVM ) Support Vector Machines ( SVM )
Support Vector Machines ( SVM )
 
38 paged segmentation
38 paged segmentation38 paged segmentation
38 paged segmentation
 
Expert system
Expert systemExpert system
Expert system
 
Fuzzy Logic
Fuzzy LogicFuzzy Logic
Fuzzy Logic
 
Logical Agents
Logical AgentsLogical Agents
Logical Agents
 
I. AO* SEARCH ALGORITHM
I. AO* SEARCH ALGORITHMI. AO* SEARCH ALGORITHM
I. AO* SEARCH ALGORITHM
 
Fuzzy logic
Fuzzy logicFuzzy logic
Fuzzy logic
 
State Space Search in ai
State Space Search in aiState Space Search in ai
State Space Search in ai
 
Knowledge representation in AI
Knowledge representation in AIKnowledge representation in AI
Knowledge representation in AI
 
Knowledge representation In Artificial Intelligence
Knowledge representation In Artificial IntelligenceKnowledge representation In Artificial Intelligence
Knowledge representation In Artificial Intelligence
 
State space search and Problem Solving techniques
State space search and Problem Solving techniquesState space search and Problem Solving techniques
State space search and Problem Solving techniques
 
Bayes Classification
Bayes ClassificationBayes Classification
Bayes Classification
 
Expert systems
Expert systemsExpert systems
Expert systems
 
Seed filling algorithm
Seed filling algorithmSeed filling algorithm
Seed filling algorithm
 
Expert Systems
Expert SystemsExpert Systems
Expert Systems
 
Popular search algorithms
Popular search algorithmsPopular search algorithms
Popular search algorithms
 

Viewers also liked

Expert system
Expert systemExpert system
Expert systemEman86651
 
Expert system neural fuzzy system
Expert system neural fuzzy systemExpert system neural fuzzy system
Expert system neural fuzzy systemJamil S. Alagha
 
Application of expert system
Application of expert systemApplication of expert system
Application of expert systemDinkar DP
 
Lecture5 Expert Systems And Artificial Intelligence
Lecture5 Expert Systems And Artificial IntelligenceLecture5 Expert Systems And Artificial Intelligence
Lecture5 Expert Systems And Artificial IntelligenceKodok Ngorex
 
Expert Systems
Expert SystemsExpert Systems
Expert Systemsosmancikk
 
Knowledge management system
Knowledge management systemKnowledge management system
Knowledge management systemJerrin Mary John
 
Mind the Gap - Architecture versus Code @ Berlin Expert Days 2016
Mind the Gap - Architecture versus Code @ Berlin Expert Days 2016Mind the Gap - Architecture versus Code @ Berlin Expert Days 2016
Mind the Gap - Architecture versus Code @ Berlin Expert Days 2016Oliver Fischer
 
A Hybrid Architecture for Web-based Expert Systems
A Hybrid Architecture for Web-based Expert SystemsA Hybrid Architecture for Web-based Expert Systems
A Hybrid Architecture for Web-based Expert SystemsWaqas Tariq
 
Are you Shorting Potassium in Your Forage Fertility Program?
Are you Shorting Potassium in Your Forage Fertility Program?Are you Shorting Potassium in Your Forage Fertility Program?
Are you Shorting Potassium in Your Forage Fertility Program?DuPont Pioneer
 
Hybrid Recommender System Architecture for Personalized Wellness Management
Hybrid Recommender System Architecture for Personalized Wellness ManagementHybrid Recommender System Architecture for Personalized Wellness Management
Hybrid Recommender System Architecture for Personalized Wellness ManagementPrasad Priyadarshana Fernando
 

Viewers also liked (20)

Expert Systems
Expert SystemsExpert Systems
Expert Systems
 
6.expert systems
6.expert systems6.expert systems
6.expert systems
 
Expert system
Expert systemExpert system
Expert system
 
Expert system neural fuzzy system
Expert system neural fuzzy systemExpert system neural fuzzy system
Expert system neural fuzzy system
 
Expert system
Expert systemExpert system
Expert system
 
Application of expert system
Application of expert systemApplication of expert system
Application of expert system
 
Lecture5 Expert Systems And Artificial Intelligence
Lecture5 Expert Systems And Artificial IntelligenceLecture5 Expert Systems And Artificial Intelligence
Lecture5 Expert Systems And Artificial Intelligence
 
Expert Systems
Expert SystemsExpert Systems
Expert Systems
 
Topic 8 expert system
Topic 8 expert systemTopic 8 expert system
Topic 8 expert system
 
Knowledge management system
Knowledge management systemKnowledge management system
Knowledge management system
 
Mind the Gap - Architecture versus Code @ Berlin Expert Days 2016
Mind the Gap - Architecture versus Code @ Berlin Expert Days 2016Mind the Gap - Architecture versus Code @ Berlin Expert Days 2016
Mind the Gap - Architecture versus Code @ Berlin Expert Days 2016
 
A Hybrid Architecture for Web-based Expert Systems
A Hybrid Architecture for Web-based Expert SystemsA Hybrid Architecture for Web-based Expert Systems
A Hybrid Architecture for Web-based Expert Systems
 
Are you Shorting Potassium in Your Forage Fertility Program?
Are you Shorting Potassium in Your Forage Fertility Program?Are you Shorting Potassium in Your Forage Fertility Program?
Are you Shorting Potassium in Your Forage Fertility Program?
 
AI Robotics
AI RoboticsAI Robotics
AI Robotics
 
expert systems
expert systemsexpert systems
expert systems
 
Hybrid Recommender System Architecture for Personalized Wellness Management
Hybrid Recommender System Architecture for Personalized Wellness ManagementHybrid Recommender System Architecture for Personalized Wellness Management
Hybrid Recommender System Architecture for Personalized Wellness Management
 
Presentation1
Presentation1Presentation1
Presentation1
 
Mycin 016
Mycin  016Mycin  016
Mycin 016
 
Expert system mycin
Expert system   mycinExpert system   mycin
Expert system mycin
 
Expert Systems
Expert SystemsExpert Systems
Expert Systems
 

Similar to Expert System Seminar

helbredte
helbredtehelbredte
helbredtebutest
 
Expert system prepared by fikirte and hayat im assignment
Expert system prepared by fikirte and hayat im assignmentExpert system prepared by fikirte and hayat im assignment
Expert system prepared by fikirte and hayat im assignmentfikir getachew
 
Decision support systems
Decision support systemsDecision support systems
Decision support systemsMR Z
 
Introduction and architecture of expert system
Introduction  and architecture of expert systemIntroduction  and architecture of expert system
Introduction and architecture of expert systempremdeshmane
 
Ai lecture 02(unit-02)
Ai lecture  02(unit-02) Ai lecture  02(unit-02)
Ai lecture 02(unit-02) vikas dhakane
 
Enterprise Architecture Roles And Competencies V9
Enterprise Architecture Roles And Competencies V9Enterprise Architecture Roles And Competencies V9
Enterprise Architecture Roles And Competencies V9Paul W. Johnson
 
Expert System - Artificial intelligence
Expert System - Artificial intelligenceExpert System - Artificial intelligence
Expert System - Artificial intelligenceDr. Abdul Ahad Abro
 
Machine Learning for automated diagnosis of distributed ...AE
Machine Learning for automated diagnosis of distributed ...AEMachine Learning for automated diagnosis of distributed ...AE
Machine Learning for automated diagnosis of distributed ...AEbutest
 
1_Expertsystems.ppt
1_Expertsystems.ppt1_Expertsystems.ppt
1_Expertsystems.pptRISHI643981
 
Chapter 6 expert system
Chapter 6 expert systemChapter 6 expert system
Chapter 6 expert systemwahab khan
 

Similar to Expert System Seminar (20)

helbredte
helbredtehelbredte
helbredte
 
Expert system prepared by fikirte and hayat im assignment
Expert system prepared by fikirte and hayat im assignmentExpert system prepared by fikirte and hayat im assignment
Expert system prepared by fikirte and hayat im assignment
 
Decision support systems
Decision support systemsDecision support systems
Decision support systems
 
Introduction and architecture of expert system
Introduction  and architecture of expert systemIntroduction  and architecture of expert system
Introduction and architecture of expert system
 
Mis 009
Mis 009Mis 009
Mis 009
 
1 Expert System.ppt
1 Expert System.ppt1 Expert System.ppt
1 Expert System.ppt
 
Expert System
Expert SystemExpert System
Expert System
 
Topic8expertsystem 120503030324-phpapp02
Topic8expertsystem 120503030324-phpapp02Topic8expertsystem 120503030324-phpapp02
Topic8expertsystem 120503030324-phpapp02
 
Expert Systems
Expert SystemsExpert Systems
Expert Systems
 
Text Analytics for Legal work
Text Analytics for Legal workText Analytics for Legal work
Text Analytics for Legal work
 
Ai lecture 02(unit-02)
Ai lecture  02(unit-02) Ai lecture  02(unit-02)
Ai lecture 02(unit-02)
 
Expert system
Expert systemExpert system
Expert system
 
Enterprise Architecture Roles And Competencies V9
Enterprise Architecture Roles And Competencies V9Enterprise Architecture Roles And Competencies V9
Enterprise Architecture Roles And Competencies V9
 
Expert System - Artificial intelligence
Expert System - Artificial intelligenceExpert System - Artificial intelligence
Expert System - Artificial intelligence
 
Machine Learning for automated diagnosis of distributed ...AE
Machine Learning for automated diagnosis of distributed ...AEMachine Learning for automated diagnosis of distributed ...AE
Machine Learning for automated diagnosis of distributed ...AE
 
Expert system
Expert systemExpert system
Expert system
 
1_Expertsystems.ppt
1_Expertsystems.ppt1_Expertsystems.ppt
1_Expertsystems.ppt
 
Chapter 6 expert system
Chapter 6 expert systemChapter 6 expert system
Chapter 6 expert system
 
Introduction
IntroductionIntroduction
Introduction
 
Management information system
Management information systemManagement information system
Management information system
 

More from Prof. Erwin Globio

Cisco Router Basic Configuration
Cisco Router Basic ConfigurationCisco Router Basic Configuration
Cisco Router Basic ConfigurationProf. Erwin Globio
 
Introduction to iOS Apps Development
Introduction to iOS Apps DevelopmentIntroduction to iOS Apps Development
Introduction to iOS Apps DevelopmentProf. Erwin Globio
 
Introduction to Android Development Latest
Introduction to Android Development LatestIntroduction to Android Development Latest
Introduction to Android Development LatestProf. Erwin Globio
 
iOS Apps Development (SQLite Tutorial Part 2)
iOS Apps Development (SQLite Tutorial Part 2)iOS Apps Development (SQLite Tutorial Part 2)
iOS Apps Development (SQLite Tutorial Part 2)Prof. Erwin Globio
 
iOS Apps Development (SQLite Tutorial Part 1)
iOS Apps Development (SQLite Tutorial Part 1)iOS Apps Development (SQLite Tutorial Part 1)
iOS Apps Development (SQLite Tutorial Part 1)Prof. Erwin Globio
 
Introduction to Computer Programming
Introduction to Computer ProgrammingIntroduction to Computer Programming
Introduction to Computer ProgrammingProf. Erwin Globio
 
Solutions to Common Android Problems
Solutions to Common Android ProblemsSolutions to Common Android Problems
Solutions to Common Android ProblemsProf. Erwin Globio
 
Android Development Tools and Installation
Android Development Tools and InstallationAndroid Development Tools and Installation
Android Development Tools and InstallationProf. Erwin Globio
 

More from Prof. Erwin Globio (20)

Embedded System Presentation
Embedded System PresentationEmbedded System Presentation
Embedded System Presentation
 
BSCS | BSIT Thesis Guidelines
BSCS | BSIT Thesis GuidelinesBSCS | BSIT Thesis Guidelines
BSCS | BSIT Thesis Guidelines
 
Internet of Things
Internet of ThingsInternet of Things
Internet of Things
 
Networking Trends
Networking TrendsNetworking Trends
Networking Trends
 
Sq lite presentation
Sq lite presentationSq lite presentation
Sq lite presentation
 
Ethics for IT Professionals
Ethics for IT ProfessionalsEthics for IT Professionals
Ethics for IT Professionals
 
Cisco Router Basic Configuration
Cisco Router Basic ConfigurationCisco Router Basic Configuration
Cisco Router Basic Configuration
 
Introduction to iOS Apps Development
Introduction to iOS Apps DevelopmentIntroduction to iOS Apps Development
Introduction to iOS Apps Development
 
Cloud Computing Latest
Cloud Computing LatestCloud Computing Latest
Cloud Computing Latest
 
Introduction to Android Development Latest
Introduction to Android Development LatestIntroduction to Android Development Latest
Introduction to Android Development Latest
 
iOS Apps Development (SQLite Tutorial Part 2)
iOS Apps Development (SQLite Tutorial Part 2)iOS Apps Development (SQLite Tutorial Part 2)
iOS Apps Development (SQLite Tutorial Part 2)
 
iOS Apps Development (SQLite Tutorial Part 1)
iOS Apps Development (SQLite Tutorial Part 1)iOS Apps Development (SQLite Tutorial Part 1)
iOS Apps Development (SQLite Tutorial Part 1)
 
A tutorial on C++ Programming
A tutorial on C++ ProgrammingA tutorial on C++ Programming
A tutorial on C++ Programming
 
Overview of C Language
Overview of C LanguageOverview of C Language
Overview of C Language
 
Introduction to Computer Programming
Introduction to Computer ProgrammingIntroduction to Computer Programming
Introduction to Computer Programming
 
Android Fragments
Android FragmentsAndroid Fragments
Android Fragments
 
Solutions to Common Android Problems
Solutions to Common Android ProblemsSolutions to Common Android Problems
Solutions to Common Android Problems
 
Android Development Tools and Installation
Android Development Tools and InstallationAndroid Development Tools and Installation
Android Development Tools and Installation
 
Java Collections Tutorials
Java Collections TutorialsJava Collections Tutorials
Java Collections Tutorials
 
Action Bar in Android
Action Bar in AndroidAction Bar in Android
Action Bar in Android
 

Recently uploaded

Decoding the Tweet _ Practical Criticism in the Age of Hashtag.pptx
Decoding the Tweet _ Practical Criticism in the Age of Hashtag.pptxDecoding the Tweet _ Practical Criticism in the Age of Hashtag.pptx
Decoding the Tweet _ Practical Criticism in the Age of Hashtag.pptxDhatriParmar
 
4.11.24 Poverty and Inequality in America.pptx
4.11.24 Poverty and Inequality in America.pptx4.11.24 Poverty and Inequality in America.pptx
4.11.24 Poverty and Inequality in America.pptxmary850239
 
Concurrency Control in Database Management system
Concurrency Control in Database Management systemConcurrency Control in Database Management system
Concurrency Control in Database Management systemChristalin Nelson
 
4.11.24 Mass Incarceration and the New Jim Crow.pptx
4.11.24 Mass Incarceration and the New Jim Crow.pptx4.11.24 Mass Incarceration and the New Jim Crow.pptx
4.11.24 Mass Incarceration and the New Jim Crow.pptxmary850239
 
Beauty Amidst the Bytes_ Unearthing Unexpected Advantages of the Digital Wast...
Beauty Amidst the Bytes_ Unearthing Unexpected Advantages of the Digital Wast...Beauty Amidst the Bytes_ Unearthing Unexpected Advantages of the Digital Wast...
Beauty Amidst the Bytes_ Unearthing Unexpected Advantages of the Digital Wast...DhatriParmar
 
Q-Factor HISPOL Quiz-6th April 2024, Quiz Club NITW
Q-Factor HISPOL Quiz-6th April 2024, Quiz Club NITWQ-Factor HISPOL Quiz-6th April 2024, Quiz Club NITW
Q-Factor HISPOL Quiz-6th April 2024, Quiz Club NITWQuiz Club NITW
 
How to Fix XML SyntaxError in Odoo the 17
How to Fix XML SyntaxError in Odoo the 17How to Fix XML SyntaxError in Odoo the 17
How to Fix XML SyntaxError in Odoo the 17Celine George
 
Mythology Quiz-4th April 2024, Quiz Club NITW
Mythology Quiz-4th April 2024, Quiz Club NITWMythology Quiz-4th April 2024, Quiz Club NITW
Mythology Quiz-4th April 2024, Quiz Club NITWQuiz Club NITW
 
How to Make a Duplicate of Your Odoo 17 Database
How to Make a Duplicate of Your Odoo 17 DatabaseHow to Make a Duplicate of Your Odoo 17 Database
How to Make a Duplicate of Your Odoo 17 DatabaseCeline George
 
31 ĐỀ THI THỬ VÀO LỚP 10 - TIẾNG ANH - FORM MỚI 2025 - 40 CÂU HỎI - BÙI VĂN V...
31 ĐỀ THI THỬ VÀO LỚP 10 - TIẾNG ANH - FORM MỚI 2025 - 40 CÂU HỎI - BÙI VĂN V...31 ĐỀ THI THỬ VÀO LỚP 10 - TIẾNG ANH - FORM MỚI 2025 - 40 CÂU HỎI - BÙI VĂN V...
31 ĐỀ THI THỬ VÀO LỚP 10 - TIẾNG ANH - FORM MỚI 2025 - 40 CÂU HỎI - BÙI VĂN V...Nguyen Thanh Tu Collection
 
week 1 cookery 8 fourth - quarter .pptx
week 1 cookery 8  fourth  -  quarter .pptxweek 1 cookery 8  fourth  -  quarter .pptx
week 1 cookery 8 fourth - quarter .pptxJonalynLegaspi2
 
Team Lead Succeed – Helping you and your team achieve high-performance teamwo...
Team Lead Succeed – Helping you and your team achieve high-performance teamwo...Team Lead Succeed – Helping you and your team achieve high-performance teamwo...
Team Lead Succeed – Helping you and your team achieve high-performance teamwo...Association for Project Management
 
Man or Manufactured_ Redefining Humanity Through Biopunk Narratives.pptx
Man or Manufactured_ Redefining Humanity Through Biopunk Narratives.pptxMan or Manufactured_ Redefining Humanity Through Biopunk Narratives.pptx
Man or Manufactured_ Redefining Humanity Through Biopunk Narratives.pptxDhatriParmar
 
ICS2208 Lecture6 Notes for SL spaces.pdf
ICS2208 Lecture6 Notes for SL spaces.pdfICS2208 Lecture6 Notes for SL spaces.pdf
ICS2208 Lecture6 Notes for SL spaces.pdfVanessa Camilleri
 
Q4-PPT-Music9_Lesson-1-Romantic-Opera.pptx
Q4-PPT-Music9_Lesson-1-Romantic-Opera.pptxQ4-PPT-Music9_Lesson-1-Romantic-Opera.pptx
Q4-PPT-Music9_Lesson-1-Romantic-Opera.pptxlancelewisportillo
 
Student Profile Sample - We help schools to connect the data they have, with ...
Student Profile Sample - We help schools to connect the data they have, with ...Student Profile Sample - We help schools to connect the data they have, with ...
Student Profile Sample - We help schools to connect the data they have, with ...Seán Kennedy
 
BIOCHEMISTRY-CARBOHYDRATE METABOLISM CHAPTER 2.pptx
BIOCHEMISTRY-CARBOHYDRATE METABOLISM CHAPTER 2.pptxBIOCHEMISTRY-CARBOHYDRATE METABOLISM CHAPTER 2.pptx
BIOCHEMISTRY-CARBOHYDRATE METABOLISM CHAPTER 2.pptxSayali Powar
 

Recently uploaded (20)

Decoding the Tweet _ Practical Criticism in the Age of Hashtag.pptx
Decoding the Tweet _ Practical Criticism in the Age of Hashtag.pptxDecoding the Tweet _ Practical Criticism in the Age of Hashtag.pptx
Decoding the Tweet _ Practical Criticism in the Age of Hashtag.pptx
 
4.11.24 Poverty and Inequality in America.pptx
4.11.24 Poverty and Inequality in America.pptx4.11.24 Poverty and Inequality in America.pptx
4.11.24 Poverty and Inequality in America.pptx
 
Concurrency Control in Database Management system
Concurrency Control in Database Management systemConcurrency Control in Database Management system
Concurrency Control in Database Management system
 
4.11.24 Mass Incarceration and the New Jim Crow.pptx
4.11.24 Mass Incarceration and the New Jim Crow.pptx4.11.24 Mass Incarceration and the New Jim Crow.pptx
4.11.24 Mass Incarceration and the New Jim Crow.pptx
 
Faculty Profile prashantha K EEE dept Sri Sairam college of Engineering
Faculty Profile prashantha K EEE dept Sri Sairam college of EngineeringFaculty Profile prashantha K EEE dept Sri Sairam college of Engineering
Faculty Profile prashantha K EEE dept Sri Sairam college of Engineering
 
Beauty Amidst the Bytes_ Unearthing Unexpected Advantages of the Digital Wast...
Beauty Amidst the Bytes_ Unearthing Unexpected Advantages of the Digital Wast...Beauty Amidst the Bytes_ Unearthing Unexpected Advantages of the Digital Wast...
Beauty Amidst the Bytes_ Unearthing Unexpected Advantages of the Digital Wast...
 
Q-Factor HISPOL Quiz-6th April 2024, Quiz Club NITW
Q-Factor HISPOL Quiz-6th April 2024, Quiz Club NITWQ-Factor HISPOL Quiz-6th April 2024, Quiz Club NITW
Q-Factor HISPOL Quiz-6th April 2024, Quiz Club NITW
 
How to Fix XML SyntaxError in Odoo the 17
How to Fix XML SyntaxError in Odoo the 17How to Fix XML SyntaxError in Odoo the 17
How to Fix XML SyntaxError in Odoo the 17
 
Mythology Quiz-4th April 2024, Quiz Club NITW
Mythology Quiz-4th April 2024, Quiz Club NITWMythology Quiz-4th April 2024, Quiz Club NITW
Mythology Quiz-4th April 2024, Quiz Club NITW
 
How to Make a Duplicate of Your Odoo 17 Database
How to Make a Duplicate of Your Odoo 17 DatabaseHow to Make a Duplicate of Your Odoo 17 Database
How to Make a Duplicate of Your Odoo 17 Database
 
prashanth updated resume 2024 for Teaching Profession
prashanth updated resume 2024 for Teaching Professionprashanth updated resume 2024 for Teaching Profession
prashanth updated resume 2024 for Teaching Profession
 
31 ĐỀ THI THỬ VÀO LỚP 10 - TIẾNG ANH - FORM MỚI 2025 - 40 CÂU HỎI - BÙI VĂN V...
31 ĐỀ THI THỬ VÀO LỚP 10 - TIẾNG ANH - FORM MỚI 2025 - 40 CÂU HỎI - BÙI VĂN V...31 ĐỀ THI THỬ VÀO LỚP 10 - TIẾNG ANH - FORM MỚI 2025 - 40 CÂU HỎI - BÙI VĂN V...
31 ĐỀ THI THỬ VÀO LỚP 10 - TIẾNG ANH - FORM MỚI 2025 - 40 CÂU HỎI - BÙI VĂN V...
 
week 1 cookery 8 fourth - quarter .pptx
week 1 cookery 8  fourth  -  quarter .pptxweek 1 cookery 8  fourth  -  quarter .pptx
week 1 cookery 8 fourth - quarter .pptx
 
Team Lead Succeed – Helping you and your team achieve high-performance teamwo...
Team Lead Succeed – Helping you and your team achieve high-performance teamwo...Team Lead Succeed – Helping you and your team achieve high-performance teamwo...
Team Lead Succeed – Helping you and your team achieve high-performance teamwo...
 
Man or Manufactured_ Redefining Humanity Through Biopunk Narratives.pptx
Man or Manufactured_ Redefining Humanity Through Biopunk Narratives.pptxMan or Manufactured_ Redefining Humanity Through Biopunk Narratives.pptx
Man or Manufactured_ Redefining Humanity Through Biopunk Narratives.pptx
 
ICS2208 Lecture6 Notes for SL spaces.pdf
ICS2208 Lecture6 Notes for SL spaces.pdfICS2208 Lecture6 Notes for SL spaces.pdf
ICS2208 Lecture6 Notes for SL spaces.pdf
 
Q4-PPT-Music9_Lesson-1-Romantic-Opera.pptx
Q4-PPT-Music9_Lesson-1-Romantic-Opera.pptxQ4-PPT-Music9_Lesson-1-Romantic-Opera.pptx
Q4-PPT-Music9_Lesson-1-Romantic-Opera.pptx
 
Student Profile Sample - We help schools to connect the data they have, with ...
Student Profile Sample - We help schools to connect the data they have, with ...Student Profile Sample - We help schools to connect the data they have, with ...
Student Profile Sample - We help schools to connect the data they have, with ...
 
BIOCHEMISTRY-CARBOHYDRATE METABOLISM CHAPTER 2.pptx
BIOCHEMISTRY-CARBOHYDRATE METABOLISM CHAPTER 2.pptxBIOCHEMISTRY-CARBOHYDRATE METABOLISM CHAPTER 2.pptx
BIOCHEMISTRY-CARBOHYDRATE METABOLISM CHAPTER 2.pptx
 
Mattingly "AI & Prompt Design: Large Language Models"
Mattingly "AI & Prompt Design: Large Language Models"Mattingly "AI & Prompt Design: Large Language Models"
Mattingly "AI & Prompt Design: Large Language Models"
 

Expert System Seminar

  • 1.  
  • 2.
  • 3.
  • 4.
  • 5.
  • 6.
  • 7.
  • 8. Components and Human Interfaces
  • 9.
  • 10.
  • 11.
  • 12.
  • 13.
  • 14.
  • 15.
  • 16.
  • 17.
  • 18.
  • 19.
  • 20.
  • 21.
  • 22.
  • 23.
  • 24.
  • 25.
  • 26.
  • 27.
  • 28.
  • 29.
  • 30.
  • 31.
  • 32.  

Editor's Notes

  1. Forward Chaining is the questioning of an expert who has no idea of the solution and investigates progressively (eg fault diagnosis). Backward Chaining is the engine has an idea of the target (eg is it okay or not? Or: there is danger but what is the level?). Mixed Chaining is the engine has an idea of the goal but it is not enough: it deduces in forward chaining from previous user responses all that is possible before asking the next question. So, quite often, he deduces the answer to the next question before asking it.
  2. Expert systems are designed to facilitate tasks in the fields of accounting , medicine, process control , financial service , production , human resources , among others. Typically, the problem area is complex enough that a more simple traditional algorithm cannot provide a proper solution. The foundation of a successful expert system depends on a series of technical procedures and development that may be designed by technicians and related experts. As such, expert systems do not typically provide a definitive answer, but provide probabilistic recommendations. An example of the application of expert systems in the financial field is expert systems for mortgages . Loan departments are interested in expert systems for mortgages because of the growing cost of labour, which makes the handling and acceptance of relatively small loans less profitable. They also see a possibility for standardised, efficient handling of mortgage loan by applying expert systems, appreciating that for the acceptance of mortgages there are hard and fast rules which do not always exist with other types of loans. Another common application in the financial area for expert systems are in trading recommendations in various marketplaces . These markets involve numerous variables and human emotions which may be impossible to deterministically characterize, thus expert systems based on the rules of thumb from experts and simulation data are used. Expert system of this type can range from ones providing regional retail recommendations, like Wishabi , to ones used to assist monetary decisions by financial institutions and governments. Another 1970s and 1980s application of expert systems, which we today would simply call AI, was in computer games . For example, the computer baseball games Earl Weaver Baseball and Tony La Russa Baseball each had highly detailed simulations of the game strategies of those two baseball managers. When a human played the game against the computer, the computer queried the Earl Weaver or Tony La Russa Expert System for a decision on what strategy to follow. Even those choices where some randomness was part of the natural system (such as when to throw a surprise pitch-out to try to trick a runner trying to steal a base) were decided based on probabilities supplied by Weaver or La Russa. Today we would simply say that "the game's AI provided the opposing manager's strategy.
  3. Conversational For users conversational is the first quality of expert system because it allows to interact with the computer like with human. To enter data into the computer, traditional computing uses a specific human-machine interface: the data entry screen, a non-interactive medium. The data entry screen forces the user to adapt because he must prepare a dataset without necessarily understanding why. It usually requires him to follow a preliminary training before using a software. The conversational expert system, it asks the user step by step about the problem, to identify the solution gradually. The user only thinks of one question at a time. It's a natural way that humans are naturally adapted. Quick availability and opportunity to program itself As the rule base is in everyday language (the engine is untouchable), expert system can be written much faster than a conventional program, by users or experts, bypassing professional developers to whom everything must be explained. Ability to exploit a considerable amount of knowledge The expert system transforms a software as a database : a rule base. So, unlike conventional programs, the volume of knowledge to program is not a major concern, like for database. Whether the rule base has 10 rules or 10 000, the engine operation is the same. Reliability The reliability of an expert system is the same as the reliability of a database, ie good, higher than that of a classical program. Scalability Evolving an expert system is to add, modify or delete rules. Since the rules are written in plain language, those to be removed or modified are easily identified. Pedagogy The engines run by a true logic are able to explain to the user in plain language why they ask a question and how they arrived at each deduction. In doing so, they show knowledge of the expert contained in the system expert. So, user can learn this knowledge in its context. Moreover, they can communicate their deductions step by step. So, the user has information about his problem even before the final answer of the expert system. Preservation and improvement of knowledge Valuable knowledge can disappear with the death, resignation or retirement of an expert. Recorded in an expert system, it becomes eternal. Develop an expert system is to interview an expert and make him aware of his knowledge. In doing so, he reflects and enhances it. New areas neglected by conventional computing Automating a vast knowledge, the developer may meet a classic problem: " combinatorial explosion " that greatly complicates his work and results in a complex and time consuming program. The reasoning expert system does not encounter that problem since the engine automatically loads of combinatorics between rules. This ability can address areas where combinatorics is enormous: highly interactive or conversational applications, fault diagnosis, decision support in complex systems, educational software, logic simulation of machines or systems, constantly changing software.
  4. The expert system has a major flaw which explains its low success although the principle has existed for 70 years: knowledge collection and interpretation into rules, the knowledge engineering . Most developers have no method to perform this task. They work "manually" what opens to many possibilities for errors. Expert knowledge is not well understood, there is a lack of rules, rules are contradictory, some are poorly written and unusable. Worse, they most often use an engine unable to reasonning. Result: the expert system works badly and the project is abandoned. [18] This problem does not exist with a right method of developing. There exists software to interview the expert step by step which automatically write the rules and simultaneously run the expert system before his eyes, performing a consistency of the rules control [19] [20] [21] .So expert and users can check the quality of the software before it is finished. Many expert systems are also penalized by the logic used. Most of the logics operate on " variables " facts, ie whose value changes several times during one reasoning, considered as a property belonging to a more powerful logic. Exactly like in classical computing, a way of programming where developers are in fact comfortable. This is the case of Mycin, Dendral, fuzzy logic , predicate logic (Prolog), symbolic logic , mathematical logic , etc.. Propositional logic uses only not variable facts. It turns out that in human mind, the facts used must remain invariable as long as the brain reasons on them. This makes possible detection of contradictions and production of explanations, two ways of controlling consistency of the knowledge [23] . That is why expert systems using variable facts, more understandable for IT developers so the most numerous, are less easy to develop, less clear to users and less reliable, why they don't produce explanation or contradiction detection.