Listening non-stop for 150min per week, for 16 weeks –4000$ (your tuition).. Watching Rao sip 30+ doppio machchiatos –30$ (aggravation fee).. Catching.

Slides:



Advertisements
Similar presentations
Big Ideas in Cmput366. Search Blind Search State space representation Iterative deepening Heuristic Search A*, f(n)=g(n)+h(n), admissible heuristics Local.
Advertisements

CSE 571: Artificial Intelligence Instructor: Subbarao Kambhampati Homepage:
Causal Data Mining Richard Scheines Dept. of Philosophy, Machine Learning, & Human-Computer Interaction Carnegie Mellon.
Listening non-stop for 150min per week, for 16 weeks –4000$ (your tuition).. Re-viewing all the lecture videos on Youtube –100000$ (in lost girl friends/boy.
CSE 5522: Survey of Artificial Intelligence II: Advanced Techniques Instructor: Alan Ritter TA: Fan Yang.
An Introduction to Artificial Intelligence. Introduction Getting machines to “think”. Imitation game and the Turing test. Chinese room test. Key processes.
Markov Logic Networks Instructor: Pedro Domingos.
AI 授課教師:顏士淨 2013/09/12 1. Part I & Part II 2  Part I Artificial Intelligence 1 Introduction 2 Intelligent Agents Part II Problem Solving 3 Solving Problems.
CPSC 322, Lecture 19Slide 1 Propositional Logic Intro, Syntax Computer Science cpsc322, Lecture 19 (Textbook Chpt ) February, 23, 2009.
CSE 471/598 Introduction to Artificial Intelligence (aka the very best subject in the whole-wide-world) The Class His classes are hard; He is not.
1946: ENIAC heralds the dawn of Computing. I propose to consider the question: “Can machines think?” --Alan Turing, : Turing asks the question….
Carla P. Gomes CS4700 CS 4700: Foundations of Artificial Intelligence Carla P. Gomes Exam-Info.
Class Project Due at end of finals week Essentially anything you want, so long as its AI related and I approve Any programming language you want In pairs.
Introduction to Introduction to Artificial Intelligence Henry Kautz.
Artificial Intelligence Course review AIMA. Four main themes Problem solving by search Uninformed search Informed search Constraint satisfaction Adversarial.
Interactive Review + a (corny) ending 12/05  Project due today (with extension)  Homework 4 due Friday  Demos (to the TA) as scheduled.
CSE 471/598 Intro to AI (Lecture 1). Course Overview What is AI –Intelligent Agents Search (Problem Solving Agents) –Single agent search [Project 1]
Cooperating Intelligent Systems Course review AIMA.
Artificial Intelligence and Lisp Lecture 4 LiU Course TDDC65 Autumn Semester, 2010
CPSC 322 Introduction to Artificial Intelligence November 10, 2004.
CSCI 5582 Fall 2006 CSCI 5582 Artificial Intelligence Lecture 9 Jim Martin.
CS 331 / CMPE 334 – Intro to AI CS 531 / CMPE AI Course Outline.
Listening non-stop for 150min per week, for 16 weeks –4000$ (your tuition).. Catching up on your beauty sleep in the class –300$ (chairs not very comfy)
Big Ideas in Cmput366. Search Blind Search Iterative deepening Heuristic Search A* Local and Stochastic Search Randomized algorithm Constraint satisfaction.
1 5/4: Final Agenda… 3:15—3:20 Raspberry bars »In lieu of Google IPO shares.. Homework 3 returned; Questions on Final? 3:15--3:40 Demos of student projects.
CSE 574: Artificial Intelligence II Statistical Relational Learning Instructor: Pedro Domingos.
Listening non-stop for 150min per week, for 16 weeks –4000$ (your tuition).. Catching up on your beauty sleep in the class –300$ (chairs not very comfy)
Lead Black Slide. © 2001 Business & Information Systems 2/e2 Chapter 11 Management Decision Making.
CSE 590ST Statistical Methods in Computer Science Instructor: Pedro Domingos.
CSE 515 Statistical Methods in Computer Science Instructor: Pedro Domingos.
Dr Rong Qu Module Introduction.
CSE 573 Artificial Intelligence Dan Weld Peng Dai
Artificial Intelligence Dr. Paul Wagner Department of Computer Science University of Wisconsin – Eau Claire.
Kansas State University Department of Computing and Information Sciences CIS 730: Introduction to Artificial Intelligence Lecture 26 of 41 Friday, 22 October.
10/3/2015 ARTIFICIAL INTELLIGENCE Russell and Norvig ARTIFICIAL INTELLIGENCE: A Modern Approach.
Computer Science CPSC 322 Lecture 3 AI Applications 1.
Artificial Intelligence: Prospects for the 21 st Century Henry Kautz Department of Computer Science University of Rochester.
Dana Nau: Lecture slides for Automated Planning Licensed under the Creative Commons Attribution-NonCommercial-ShareAlike License:
Artificial Intelligence And Machine learning. Drag picture to placeholder or click icon to add What is AI?
Assoc. Prof. Abdulwahab AlSammak. Course Information Course Title: Artificial Intelligence Instructor : Assoc. Prof. Abdulwahab AlSammak
1 2010/2011 Semester 2 Introduction: Chapter 1 ARTIFICIAL INTELLIGENCE.
Dana Nau: Lecture slides for Automated Planning Licensed under the Creative Commons Attribution-NonCommercial-ShareAlike License:
KNOWLEDGE BASED SYSTEMS
Spring, 2005 CSE391 – Lecture 1 1 Introduction to Artificial Intelligence Martha Palmer CSE391 Spring, 2005.
1 Intro to Artificial Intelligence COURSE # CSC384H1F Fall 2008 Sonya Allin Note: many slides drawn from/inspired by Andrew Moore’s lectures at CMU and.
Lecture 4-1CS250: Intro to AI/Lisp Logical Reasoning I Lecture 4-2 January 25 th, 1999 CS250.
Dana Nau: Lecture slides for Automated Planning Licensed under the Creative Commons Attribution-NonCommercial-ShareAlike License:
General Information Course Id: COSC6368 Artificial Intelligence Professor: Ricardo Vilalta Classroom:AH 110 Telephone: (713)
CPSC 322, Lecture 2Slide 1 Representational Dimensions Computer Science cpsc322, Lecture 2 (Textbook Chpt1) Sept, 7, 2012.
Kansas State University Department of Computing and Information Sciences CIS 730: Introduction to Artificial Intelligence Lecture 24 of 41 Monday, 18 October.
Introduction: What is AI? CMSC Introduction to Artificial Intelligence January 3, 2002.
MAN UP BIBLE SERIES Men Who Care Enough to Share Lesson Three.
CITS4211 Artificial Intelligence Semester 1, 2013 A/Prof Lyndon While School of Computer Science & Software Engineering The University of Western Australia.
COMP 2208 Dr. Long Tran-Thanh University of Southampton Revision.
Computing & Information Sciences Kansas State University Friday, 13 Oct 2006CIS 490 / 730: Artificial Intelligence Lecture 21 of 42 Friday, 13 October.
CMPT 463 Artificial Intelligence Instructor: Tina Tian.
The Hebrew University of Jerusalem School of Engineering and Computer Science Academic Year: 2011/2012 Instructor: Jeff Rosenschein.
Announcements  Upcoming due dates  Thursday 10/1 in class Midterm  Coverage: everything in lecture and readings except first-order logic; NOT probability.
Brief Intro to Machine Learning CS539
Introduction to Artificial Intelligence – Unit 9 Wrap-up Course 67842
2009: Topics Covered in COSC 6368
Review for the Midterm Exam
CS 4700: Foundations of Artificial Intelligence
Basic Intro Tutorial on Machine Learning and Data Mining
CS 4700: Foundations of Artificial Intelligence
CSE 515 Statistical Methods in Computer Science
Logic for Artificial Intelligence
2004: Topics Covered in COSC 6368
CMPT 420 / CMPG 720 Artificial Intelligence
Chapter 14 February 26, 2004.
Presentation transcript:

Listening non-stop for 150min per week, for 16 weeks –4000$ (your tuition).. Watching Rao sip 30+ doppio machchiatos –30$ (aggravation fee).. Catching up on your beauty sleep in the class –300$ (chairs not very comfy) Redoing the in class exam at home –300$ (lost family time) Keeping up with the 17,578,940 billion bytes of –20$ (skimming cost) $ (Brain frying cost) Spending most of your life these last four months hacking lisp or doing home works for CSE 471 –Priceless… The CSE 471 Commercial

(* Benediction void where prohibited by governmental order or majority distaste for peace, including Iraq, Kashmir, Gaza, Jerusalem and certain parts of USA. Special restrictions may apply for Darfur.) Peace on Earth & Goodwill to the Living

Announcements Take home will be released by Thursday/Friday (check your mail and also homepage) –Will be set like an in-class exam (must be answered on the exam sheet) But you get to do it at home (or milk of kindness overfloweth..) –Thursday office hours will be held Review session needed? CEAS Evaluations online. –Do take part! –Comments on TA/Czar performance can be sent to me using the class anonymous mail facility Today: – Learning completed (Statistical Learning—until 2PM) – Interactive review (2-2:50pm) – Summary of what is not done (~5min)

What we did Week 1: Intro; Intelligent agent design [[nifty 2001 ]] Week 2: Problem Solving Agents and Search (start of A*) Week 3: Search: Blind;uniform cost search; A* start Week 4: Complete local search; start planning Week 5: Planning Graph Reachability Heuristics; MDP start Week 6: MDPs continued; Adversarial Search Week 7: Start of Logical Inference Week 8: Probabilistic Propositional Logic Week 9: Bayes Networks. Semantics and Specification Week 10: Bayes Networks. Inference-- Exact and Approximate Week 11: First Order Logic Week 12: FOPC--Backward Chaining; Resolution; Start of Reasoning with Time and Change Week 13: Reasoning with Time and Change (contd.); Learning (start) Week 14: Splendors of Bias; Decision Trees; Naive Bayes classifiers; Neural nets Week 15:Support Vector M/c; Kernelization; Statistical Learning; Naive Bayes Classifiers

Chapters Covered Table of Contents (Full Version)Full Version Preface (html); chapter map Part I Artificial Intelligence 1 Introduction 2 Intelligent Agents Part II Problem Solving 3 Solving Problems by Searching 4 Informed Search and Exploration 5 Constraint Satisfaction Problems 6 Adversarial Search Part III Knowledge and Reasoning 7 Logical Agents 8 First-Order Logic 9 Inference in First-Order Logic 10 Knowledge Representation Part IV Planning 11 Planning (pdf) 12 Planning and Acting in the Real Worldhtmlchapter mappdf Part V Uncertain Knowledge and Reasoning 13 Uncertainty 14 Probabilistic Reasoning 15 Probabilistic Reasoning Over Time 16 Making Simple Decisions 17 Making Complex Decisions Part VI Learning 18 Learning from Observations 19 Knowledge in Learning 20 Statistical Learning Methods 21 Reinforcement Learning Part VII Communicating, Perceiving, and Acting 22 Communication 23 Probabilistic Language Processing 24 Perception 25 Robotics Part VIII Conclusions 26 Philosophical Foundations 27 AI: Present and Future

A Farside treasury… It matters not what you cover, but what you uncover

Your opinions please… phnx.qwest.net - - [04/Dec/2006:23:36: ] "GET /cse471/acquired-wisdom-031.htm HTTP/1.1" ip ph.ph.cox.net - - [04/Dec/2006:23:37: ] "GET /cse471/acquired-wisdom-031.htm HTTP/1.1" phnx.qwest.net - - [04/Dec/2006:23:37: ] "GET /cse471/acquired-wisdom-031.htm HTTP/1.1" phnx.qwest.net - - [04/Dec/2006:23:39: ] "GET /cse471/acquired-wisdom-031.htm HTTP/1.1" phnx.qwest.net - - [04/Dec/2006:23:41: ] "GET /cse471/acquired-wisdom-031.htm HTTP/1.1" phnx.qwest.net - - [04/Dec/2006:23:42: ] "GET /cse471/acquired-wisdom-031.htm HTTP/1.1" ip ph.ph.cox.net - - [04/Dec/2006:23:56: ] "GET /cse471/acquired-wisdom-031.htm HTTP/1.1" moselle.eas.asu.edu - - [04/Dec/2006:23:59: ] "GET /cse471/acquired-wisdom-031.htm HTTP/1.1" ip ph.ph.cox.net - - [05/Dec/2006:00:05: ] "GET /cse471/acquired-wisdom-031.htm HTTP/1.1" ip ph.ph.cox.net - - [05/Dec/2006:00:07: ] "GET /cse471/acquired-wisdom-031.htm HTTP/1.1" ip ph.ph.cox.net - - [05/Dec/2006:00:24: ] "GET /cse471/acquired-wisdom-031.htm HTTP/1.1" ip ph.ph.cox.net - - [05/Dec/2006:01:00: ] "GET /cse471/acquired-wisdom-031.htm HTTP/1.1" ip ph.ph.cox.net - - [05/Dec/2006:01:01: ] "GET /cse471/acquired-wisdom-031.htm HTTP/1.1" ip ph.ph.cox.net - - [05/Dec/2006:01:36: ] "GET /cse471/acquired-wisdom-031.htm HTTP/1.1" ip ph.ph.cox.net - - [05/Dec/2006:01:40: ] "GET /cse471/acquired-wisdom-031.htm HTTP/1.1" en dhcp.asu.edu - - [05/Dec/2006:05:56: ] "GET /cse471/acquired-wisdom-031.htm HTTP/1.1" ip ph.ph.cox.net - - [05/Dec/2006:07:43: ] "GET /cse471/acquired-wisdom-031.htm HTTP/1.1" ip ph.ph.cox.net - - [05/Dec/2006:09:50: ] "GET /cse471/acquired-wisdom-031.htm HTTP/1.1" en dhcp.asu.edu - - [05/Dec/2006:11:12: ] "GET /cse471/acquired-wisdom-031.htm HTTP/1.1"

Rao: I could've taught more...I could've taught more, if I'd just...I could've taught more... Lei&Will: Rao, there are thirty people who are mad at you because you taught too much. Look at them. Rao: If I'd made more time...I wasted so much time, you have no idea. If I'd just... Lei&Will: There will be generations (of bitter people) because of what you did. Rao: I didn't do enough. Lei&Will: You did so much. Rao: This slide. We could’ve removed this slide. Why did I keep the slide? Two minutes, right there. Two minutes, two more minutes.. This music, a bit on reinforcement learning. This review. Two points on bagging and boosting. I could easily have made two for it. At least one. I could’ve gotten one more point across. One more. One more point. A point, Lei. For this. I could've gotten one more point across and I didn't.  Adieu with an Oscar Schindler Routine.. Schindler: I could've got more...I could've got more, if I'd just...I could've got more... Stern: Oskar, there are eleven hundred people who are alive because of you. Look at them. Schindler: If I'd made more money...I threw away so much money, you have no idea. If I'd just... Stern: There will be generations because of what you did. Schindler: I didn't do enough. Stern: You did so much. Schindler: This car. Goeth would've bought this car. Why did I keep the car? Ten people, right there. Ten people, ten more people...(He rips the swastika pin from his lapel) This pin, two people. This is gold. Two more people. He would've given me two for it. At least one. He would've given me one. One more. One more person. A person, Stern. For this. I could've gotten one more person and I didn't. Top few things I would have done if I had more time CSP and SAT Technology Reinforcement Learning; Bagging/Boosting Planning under uncertainty and incompleteness Multi-agent X (X=search,learning..) PERCEPTION (Speech; Language…) Be less demanding more often (or even once…)