AI CSC361: Intelligent Agents1 Intelligent Agents -1 CSC361.

Slides:



Advertisements
Similar presentations
Additional Topics ARTIFICIAL INTELLIGENCE
Advertisements

Artificial Intelligent
Intelligent Agents Chapter 2.
Intelligent Agents Chapter 2.
Agentes Inteligentes Capítulo 2. Contenido Agentes y medios ambientes Racionalidad PEAS (Performance measure, Environment, Actuators, Sensors) Tipos de.
ICS-171: 1 Intelligent Agents Chapter 2 ICS 171, Fall 2009.
Intelligent Agents Chapter 2.
Intelligent Agents Chapter 2. Outline Agents and environments Agents and environments Rationality Rationality PEAS (Performance measure, Environment,
COMP 4640 Intelligent and Interactive Systems Intelligent Agents Chapter 2.
Agents and Intelligent Agents  An agent is anything that can be viewed as  perceiving its environment through sensors and  acting upon that environment.
ICS-271: 1 Intelligent Agents Chapter 2 ICS 279 Fall 09.
© Copyright 2008 STI INNSBRUCK Intelligent Systems Intelligent Agents – Lecture 9 Prof. Dieter Fensel (& Francois.
ICS-171: Notes 2: 1 Intelligent Agents Chapter 2 ICS 171, Fall 2005.
Intelligent Agents Chapter 2 ICS 171, Fall 2005.
Intelligent Agents Chapter 2.
ICS-171: Notes 2: 1 Intelligent Agents Chapter 2 ICS 171, spring 2007.
Rational Agents (Chapter 2)
Introduction to Logic Programming WS2004/A.Polleres 1 Introduction to Artificial Intelligence MSc WS 2009 Intelligent Agents: Chapter 2.
Rational Agents (Chapter 2)
Intelligent Agents Chapter 2. Outline Agents and environments Rationality PEAS (Performance measure, Environment, Actuators, Sensors) Environment types.
Intelligent Agents Chapter 2. Outline Agents and environments Rationality PEAS (Performance measure, Environment, Actuators, Sensors) Environment types.
CPSC 7373: Artificial Intelligence Jiang Bian, Fall 2012 University of Arkansas at Little Rock.
INTELLIGENT AGENTS Chapter 2 02/12/ Outline  Agents and environments  Rationality  PEAS (Performance measure, Environment, Actuators, Sensors)
Artificial Intelligence
CHAPTER 2 Intelligent Agents. Outline Agents and environments Rationality PEAS (Performance measure, Environment, Actuators, Sensors) Environment types.
COMP 4640 Intelligent & Interactive Systems Cheryl Seals, Ph.D. Computer Science & Software Engineering Auburn University Lecture 2: Intelligent Agents.
© Copyright 2008 STI INNSBRUCK Introduction to A rtificial I ntelligence MSc WS 2009 Intelligent Agents: Chapter.
Intelligent Agents Chapter 2 Some slide credits to Hwee Tou Ng (Singapore)
Lection 3. Part 1 Chapter 2 of Russel S., Norvig P. Artificial Intelligence: Modern Approach.
Outline Agents and environments Rationality PEAS (Performance measure, Environment, Actuators, Sensors) Environment types Agent types Artificial Intelligence.
Intelligent Agents Chapter 2. CIS Intro to AI - Fall Outline  Brief Review  Agents and environments  Rationality  PEAS (Performance measure,
1/34 Intelligent Agents Chapter 2 Modified by Vali Derhami.
Chapter 2 Agents & Environments. © D. Weld, D. Fox 2 Outline Agents and environments Rationality PEAS specification Environment types Agent types.
Artificial Intelligence Lecture No. 4 Dr. Asad Safi ​ Assistant Professor, Department of Computer Science, COMSATS Institute of Information Technology.
Intelligent Agents Chapter 2. Outline Agents and environments Rationality PEAS (Performance measure, Environment, Actuators, Sensors) Environment types.
Intelligent Agents Chapter 2. Agents An agent is anything that can be viewed as perceiving its environment through sensors and acting upon that environment.
Chapter 2 Hande AKA. Outline Agents and Environments Rationality The Nature of Environments Agent Types.
CE An introduction to Artificial Intelligence CE Lecture 2: Intelligent Agents Ramin Halavati In which we discuss.
CS 8520: Artificial Intelligence Intelligent Agents Paula Matuszek Fall, 2008 Slides based on Hwee Tou Ng, aima.eecs.berkeley.edu/slides-ppt, which are.
CHAPTER 2 Intelligent Agents. Outline Artificial Intelligence a modern approach 2 Agents and environments Rationality PEAS (Performance measure, Environment,
Intelligent Agents Chapter 2. Outline Agents and environments Rationality PEAS (Performance measure, Environment, Actuators, Sensors) Environment types.
INTELLIGENT AGENTS. Agents  An agent is anything that can be viewed as perceiving its environment through sensors and acting upon that environment through.
Dr. Alaa Sagheer Chapter 2 Artificial Intelligence Ch2: Intelligent Agents Dr. Alaa Sagheer.
Intelligent Agents Chapter 2. Outline Agents and environments Rationality PEAS (Performance measure, Environment, Actuators, Sensors) Environment types.
Intelligent Agents Chapter 2. Outline Agents and environments Rationality PEAS (Performance measure, Environment, Actuators, Sensors) Environment types.
1/23 Intelligent Agents Chapter 2 Modified by Vali Derhami.
Chapter 2 Agents & Environments
CSC 9010 Spring Paula Matuszek Intelligent Agents Overview Slides based in part on Hwee Tou Ng, aima.eecs.berkeley.edu/slides-ppt, which are in turn.
Intelligent Agents Chapter 2 Dewi Liliana. Outline Agents and environments Rationality PEAS (Performance measure, Environment, Actuators, Sensors) Environment.
CPSC 420 – Artificial Intelligence Texas A & M University Lecture 2 Lecturer: Laurie webster II, M.S.S.E., M.S.E.e., M.S.BME, Ph.D., P.E.
Intelligent Agents. Outline Agents and environments Rationality PEAS (Performance measure, Environment, Actuators, Sensors) Environment types Agent types.
1 CSC AI Intelligent Agents. Outline Agents and environments Rationality PEAS (Performance measure, Environment, Actuators, Sensors) Environment.
Web-Mining Agents Cooperating Agents for Information Retrieval Prof. Dr. Ralf Möller Universität zu Lübeck Institut für Informationssysteme Karsten Martiny.
CSC AI Intelligent Agents.
Artificial Intelligence
EA C461 – Artificial Intelligence Intelligent Agents
Artificial Intelligence Lecture No. 4
Intelligent Agents Chapter 2.
Intelligent Agents Chapter 2.
Hong Cheng SEG4560 Computational Intelligence for Decision Making Chapter 2: Intelligent Agents Hong Cheng
Introduction to Artificial Intelligence
Intelligent Agents Chapter 2.
Intelligent Agents Chapter 2.
Artificial Intelligence
Intelligent Agents Chapter 2.
EA C461 – Artificial Intelligence Intelligent Agents
Artificial Intelligence
Intelligent Agents Chapter 2.
Intelligent Agents Chapter 2.
Presentation transcript:

AI CSC361: Intelligent Agents1 Intelligent Agents -1 CSC361

AI CSC361: Intelligent Agents2 Intelligent Agents What are Agents? Structure of an Agent. What to consider when designing an agent? Types of Agents

AI CSC361: Intelligent Agents3 What is an Agent? An agent is anything that can be viewed as perceiving its environment through sensors and acting upon that environment through actuators.

AI CSC361: Intelligent Agents4 What is an Agent? Examples: –Human agent: Sensors  eyes, ears, and other organs; Actuators  hands, legs, mouth, and other body parts. –Robotic agent: Sensors  cameras and infrared range finders; Actuators  various motors connected to arms.

AI CSC361: Intelligent Agents5 What is an Agent? Percept: agents’ input at any instant of time. Percept Sequence: complete history of what the agent has perceived so far. Behavior: what action, when? Agent function: maps from percept sequences to actions. [f: P*  A ]….. determines agents’ behavior.

AI CSC361: Intelligent Agents6 What is an Agent? Agent Program runs on the physical architecture to produce f agent = architecture + program Environment: Surroundings in which the agent has to operate.

AI CSC361: Intelligent Agents7 Vacuum-Cleaner Agent Percepts: location and contents, e.g., [A,Dirty] Actions: Left, Right, Suck, NoOp

AI CSC361: Intelligent Agents8 Vacuum-Cleaner Agent The agent can be implemented using a table. Or the agent function may be implemented in some other way. How to build the table?  Table could be very long.

AI CSC361: Intelligent Agents9

10 Is an Agent Good or Bad? How to judge an agents’ behavior?  Note: We are not talking about intelligent agents … just agents. An agent should strive to "do the right thing", based on what it can perceive and the actions it can perform. The right action is the one that will cause the agent to be most successful. Performance measure: An objective criterion for success of an agent's behavior.

AI CSC361: Intelligent Agents11 Is an Agent Good or Bad? Examples: performance measure of a vacuum-cleaner agent could be amount of dirt cleaned up, amount of time taken, amount of electricity consumed, amount of noise generated, etc. What could be the performance agent for a human agent?

AI CSC361: Intelligent Agents12 Is an Agent Good or Bad? Rational agent: If an agent performs actions which maximize its performance measure the agent is called rational agent. Rational agent is a good agent. Autonomous agent: An agent is autonomous if its behavior is determined by its own experience (with ability to learn and adapt). Autonomous agent is good agent.

AI CSC361: Intelligent Agents13 What to consider when designing an agent? We must consider PEAS: Performance measure, Environment, Actuators, Sensors. Consider the task of designing an automated taxi driver: –Performance measure: Safe, fast, legal, comfortable trip, maximize profits –Environment: Roads, traffic, pedestrians, customers –Actuators: Steering wheel, accelerator, brake, signal, horn –Sensors: Cameras, sonar, speedometer, GPS, odometer, engine sensors, keyboard

AI CSC361: Intelligent Agents14 What to consider when designing an agent? Consider the task of designing a medical diagnosis system. –Performance measure: Healthy patient, minimize costs, lawsuits –Environment: Patient, hospital, staff –Actuators: Screen display (questions, tests, diagnoses, treatments, referrals) –Sensors: Keyboard (entry of symptoms, findings, patient's answers)

AI CSC361: Intelligent Agents15 What to consider when designing an agent? Consider the task of designing a part- picking robot. –Performance measure: Percentage of parts in correct bins –Environment: Conveyor belt with parts, bins –Actuators: Jointed arm and hand –Sensors: Camera, joint angle sensors

AI CSC361: Intelligent Agents16 What to consider when designing an agent? Consider the task of designing a Interactive English tutor. –Performance measure: Maximize student's score on test –Environment: Set of students –Actuators: Screen display (exercises, suggestions, corrections) –Sensors: Keyboard

AI CSC361: Intelligent Agents17 How to implement an Agent? An agent is completely specified by the agent function mapping percept sequences to actions. action  f (percept-sequence). Aim: find a way to implement the rational agent function concisely.

AI CSC361: Intelligent Agents18 How to implement an Agent? Table-lookup agent: looks up the action entry corresponding to the current percept sequence. Drawbacks: –Huge table –Take a long time to build the table –No autonomy –Even with learning, need a long time to learn the table entries

AI CSC361: Intelligent Agents19 How to implement an Agent? Agent function implemented as a program in a programming language. Advantage: –can implement the agent function concisely.

AI CSC361: Intelligent Agents20

AI CSC361: Intelligent Agents21 What are the different types of agents? Two basic types in order of increasing generality: –Simple reflex agents –Model-based reflex agents –etc.

AI CSC361: Intelligent Agents22 Simple Reflex Agent

AI CSC361: Intelligent Agents23 Model-based Reflex Agent