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Artificial Intelligence: Human vs. Machine Professor Adam Anthony CMSC 180 Fall 2010 Slides Provided by and Adapted From: Dr. Marie desJardins
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BEFORE WE START! DON’T FORGET ABOUT MINI-PROJECT 1! Implementation: Make sure that whatever you submit works, even if it is incomplete! Test Report: 2-3 pages verifying that you tested each feature of your program How you tested it How that test confirmed it was working correctly 2
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3 Memory is at the Core (Literally) Memory is at the core of our being (and a computer’s) ...but our memories look very different! The first magnetic core memory [www.columbia.edu/acis/history] thebrain.mcgill.ca
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4 Overview What is AI? (and why is it so cool?) AI: Past and Present History of AI AI Today Computational vs. Biological Memory The Skeptics Speak
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What is AI?
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6 AI: A Vision Could an intelligent agent living on your home computer manage your email, coordinate your work and social activities, help plan your vacations…… even watch your house while you take those well planned vacations?
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7 RR epresent and store knowledge RR etrieve and reason about knowledge BB ehave intelligently in complex environments DD evelop interesting and useful applications II nteract with people, agents, and the environment Main Goals of AI
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8 Computer Science & Engineering AI Mathematics Cognitive Science Philosophy PsychologyLinguistics Biology Economics Foundations of AI
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9 Big Questions Can machines think? If so, how? If not, why not? What does this say about human beings? What does this say about the mind? And if we can make machines think, should we?
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Architecture of an Intelligent Agent An Intelligent Agent has: Sensors for inputting data Actuators for performing actions in the “world” Robotic tools in the real world Software routines in a virtual world A level of Response: Reflex-based: only does exactly what it’s told (remote-controlled) Knowledge-based: able to follow semi-complex instructions Baseball throwing example Goal-based: No instructions, just a goal to achieve Makes its own instruction set What types of things can be considered agents??? Skip to Philosophy Section Skip to Philosophy Section 10
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11 Why AI? Engineering: To get machines to do a wider variety of useful things e.g., understand spoken natural language, recognize individual people in visual scenes, find the best travel plan for your vacation, etc. Cognitive Science: As a way to understand how natural minds and mental phenomena work e.g., memory, learning, language, visual perception, etc. Philosophy: As a way to explore some basic and interesting (and important) philosophical questions e.g., the mind body problem, what is consciousness, etc.
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History of AI
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13 History
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14 ELIZA: A program that simulated a psychotherapist interacting with a patient and successfully passed the Turing Test Implemented at MIT during 1964-1966 by Joel Weizenbaum First script was DOCTOR Simple pattern-matching Each pattern had an associated reply which might include bits of the input (after simple transformations (my your) Weizenbaum was shocked at reactions Psychiatrists thought it had potential People unequivocally anthropomorphized Let me tell you my problems... Many thought it solved the natural language problem!! Early AI: Eliza
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15 Eliza Speaks I am the psychotherapist. Please, describe your problems. i'm having a hard time with my students Why do you say that? well, they keep asking me for money Maybe your plans have something to do with this. what plans? Is it because of your life that you say what plans? No, it's because I didn't know what you were talking about Is it because you didn't know what I was talking about that you came to me? no, it's because i wanted to see if you could pass the turing test Does it bother you that you wanted to see if I could really pass the turing test? ….. How do you reconcile problems at school? This is a waste of time. Good bye My secretary will send you a bill.
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16 Early AI: Parry Kenneth Colby modeled a paranoid using the same techniques as Eliza, around 1968 PARRY has basic emotions. If it gets angry, its replies become more hostile In a Turing test, expert psychiatrists were unable to distinguish PARRY’s ramblings from those of real paranoids
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17 PARRY Speaks Good afternoon. My name is Doctor Jones. Pleased to meet you. How are you? All right I guess. Could you tell me your name? Pat Smith. I though you might have some problems. I've been upset lately. By what? People get on my nerves sometimes. Tell me more. Do you know anything about bookies? ...
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18 P: I don't understand your motives. E: Why don't you understand my motives? P: Shouldn't I be? E: Why do you say that just now? P: That's just the way it is. E: Suppose that's the way it were not. P: So? E: I am not sure I understand you fully. P: You harp on the same questions too much. E: What does that similarity suggest to you? P: I don't get you. E: Do you wish that you did get I?
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19 Turing Test Three rooms contain a person, a computer, and an interrogator The interrogator can communicate with the other two by “teleprinter” (or, say, AIM) The interrogator tries to determine which is the person and which is the machine The machine tries to fool the interrogator into believing that it is the person If the machine succeeds, then we conclude that the machine can think
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20 The Loebner Contest A modern version of the Turing Test, held annually, with a $100,000 cash prize http://www.loebner.net/Prizef/loebner-prize.html http://www.loebner.net/Prizef/loebner-prize.html Participants include a set of humans, a set of computers, and a set of judges Scoring Rank from least human to most human Highest median rank wins $2000 If better than a human, win $100,000 (Nobody yet…) 2008 winner: ElbotElbot
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21 What’s Easy and What’s Hard? It’s been easier to mechanize many of the high-level tasks we usually associate with “intelligence” in people e.g., symbolic integration, proving theorems, playing chess, medical diagnosis It’s been very hard to mechanize tasks that lots of animals can do walking around without running into things catching prey and avoiding predators interpreting complex sensory information (e.g., visual, aural, …) modeling the internal states of other animals from their behavior working as a team (e.g., with pack animals) Is there a fundamental difference between the two categories?
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AI Today
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23 Who Does AI? Academic researchers (perhaps the most Ph.D.-generating area of computer science in recent years) Some of the top AI schools: CMU, Stanford, Berkeley, MIT, UIUC, UMd, U Alberta, UT Austin, UMBC Government and private research labs NASA, NRL, NIST, IBM, AT&T, SRI, ISI, MERL,... Lots of companies!
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24 A sample from the 2008 International Conference on Innovative Applications of AI: Event management (for Olympic equestrian competition) Language and culture instruction Public school choice (for parents) Turbulence prediction (for air traffic safety) Heart wall abnormality diagnosis Epilepsy treatment planning Personalization of telecommunications services Earth observation flight planning (for science data) Crop selection (for optimal soil planning) Applications
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25 Here are some example applications: Computer vision: face recognition from a large set Robotics: autonomous (mostly) automobile Natural language processing: simple machine translation Expert systems: medical diagnosis in a narrow domain Spoken language systems: ~2000 word continuous speech Planning and scheduling: Hubble Telescope experiments Learning: text categorization into ~1000 topics User modeling: Bayesian reasoning in Windows help (the infamous paper clip…) Games: Grand Master level in chess (world champion), checkers, backgammon, etc. Breaking news (8/7/08) - MoGo beats professional Go playerMoGo beats professional Go player What Can AI Systems Do Now?
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26 Robotics
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27 DARPA Grand Challenge Completely autonomous vehicles (no human guidance) Several hundred miles over varied terrain First challenge (2004) – 142 miles “winner” traveled seven(!) miles Second challenge (2005) – 131 miles Winning team (Stanford) completed the course in under 7 hours Three other teams completed the course in just over 7 hours Onwards and upwards (2007) Urban Challenge Traffic laws, merging, traffic circles, busy intersections... Six finishers (best time: 2.8 miles in 4+ hours)
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28 Art: NEvAr Use genetic algorithms to evolve aesthetically interesting pictures See http://eden.dei.uc.pt/~machado/NEvArhttp://eden.dei.uc.pt/~machado/NEvAr
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29 ALife: Evolutionary Optimization MERL: evolving ‘bots
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30 Human-Computer Interaction: Sketching Step 1: Typing Step 2: Constrained handwriting Step 3: Handwriting recognition Step 4: Sketch recognition (doodling)! MIT sketch tablet
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31 Driving: Adaptive Cruise Control Adaptive cruise control and pre- crash safety system (ACC/PCS) Offered by dozens of makers, mostly as an option (~$1500) on high-end models Determines appropriate speed for traffic conditions Senses impending collisions and reacts (brakes, seatbelts) Latest AI technology: automatic parallel parking!
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32 AxonX Smoke and fire monitoring system
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33 Rocket Review Automated SAT essay grading system
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34 What Can’t AI Systems Do (Yet)? Understand natural language robustly (e.g., read and understand articles in a newspaper) Surf the web (or a wave) Interpret an arbitrary visual scene Learn a natural language Play Go well √ Construct plans in dynamic real-time domains Refocus attention in complex environments Perform life-long learning
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Computational vs. Biological Memory
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36 How Does It Work? (Humans) Basic idea: Chemical traces in the neurons of the brain Types of memory: Primary (short-term) Secondary (long-term) Factors in memory quality: Distractions Emotional cues Repetition
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37 How Does It Work? (Computers) Basic idea: Store information as “bits” using physical processes (stable electronic states, capacitors, magnetic polarity,...) One bit = “yes or no” Types of computer storage: Primary storage (RAM or just “memory”) Secondary storage (hard disks) Tertiary storage (optical jukeboxes) Off-line storage (tape drives) Factors in memory quality: Power source (for RAM) Avoiding extreme temperatures Size Speed
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38 Measuring Memory Remember that one yes/no “bit” is the basic unit Eight (2 3 ) bits = one byte 1,024 (2 10 ) bytes = one kilobyte (1K) * 1,024K (2 20 bytes) = one megabyte (1M) 1,024K (2 30 bytes) = one gigabyte (1G) 1,024 (2 40 bytes) = one terabyte (1T) 1,024 (2 50 bytes) = one petabyte (1P) ... 2 80 bytes = one yottabyte (1Y?) * Note that external storage is usually measured in decimal rather than binary (1000 bytes = 1K, and so on)
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39 What Was It Like Then? The PDP-11/70s we used in college had 64K of RAM, with hard disks that held less than 1M of memory ... and we had to walk five miles, uphill, in the snow, every day! And we had to live in a cardboard box in the middle of the road!
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40 What Is It Like Now? The PDP-11/70s we used in college had 64K of RAM, with hard disks that held less than 1M of memory The cheapest Dell Inspiron laptop has 2G of RAM and up to 80G of hard drive storage.... ...a factor of 10 18 more RAM and 10 12 more disk space ...and your iPod nano has 8G of blindingly fast storage ...so don’t come whining to me about how slow your computer is!
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41 Moore’s Law Computer memory (and processing speed, resolution, and just about everything else) increases exponentially
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42 Showdown Computer capacity: Primary storage: 64GB Secondary storage: 750GB (~10 12 ) Tertiary storage: 1PB? (10 15 ) Computer retrieval speed: Primary: 10 -7 sec. Secondary: 10 -5 sec. Computing capacity: 1 petaflop (10 15 floating-point instructions per second), very special purpose Digital Extremely reliable Not (usually) parallel Human capacity: Primary storage: 7 ± 2 “chunks” Secondary storage: 10 8432 bits?? (or maybe 10 9 bits?) Human retrieval speed: Primary: 10 -2 sec Secondary: 10 -2 sec Computing capacity: possibly 100 petaflops, very general purpose Analog Moderately reliable Highly parallel More at movementarian.com
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43 It’s Not Just What You “Know” Storage Indexing Retrieval Inference Semantics Synthesis ...So far, computers are good at storage, OK at indexing and retrieval, and humans win on pretty much all of the other dimensions ...but we’re just getting started Electronic computers were only invented 60 years ago! Homo sapiens has had a few hundred thousand years to evolve...
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The Skeptics Speak
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45 Mind and Consciousness Many philosophers have wrestled with the question: Is Artificial Intelligence possible? John Searle: most famous AI skeptic Chinese Room argument Is this really intelligence? ? !
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46 What Searle Argues People have beliefs; computers and machines don’t. People have “intentionality”; computers and machines don’t. Brains have “causal properties”; computers and machines don’t. Brains have a particular biological and chemical structure; computers and machines don’t. (Philosophers can make claims like “People have intentionality” without ever really saying what “intentionality” is, except (in effect) “the stuff that people have and computers don’t.”)
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47 Let’s Introspect For a Moment... HH ave you ever learned something by rote that you didn’t really understand? WW ere you able to get a good grade on an essay where you didn’t really know what you were talking about? HH ave you ever convinced somebody you know a lot about something you really don’t? AA re you a Chinese room?? WW hat does “understanding” really mean? WW hat is intentionality? Are human beings the only entities that can ever have it? WW hat is consciousness? Why do we have it and other animals and inanimate objects don’t? (Or do they?)
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48 Just You Wait...
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49 Thank You!
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