Title: WHY I AM OPTIMISTIC
1WHY I AM OPTIMISTIC
- Patrick H. Winston
- MIT Artificial Intelligence Laboratory
2The salients
- Applications sideWe have already won
- Science sideWe are bound to win
3The Applications
4We have expanded our frontiers
Lots of good
Lots of people
5A little good for a lot of people
6A little good for a lot of people
7A lot of good for a few people
8A lot of good for a lot of people
9We have exemplars of all kinds
- Large software companies
- Large entertainment companies
- Companies with huge IPOs
- Multidimensional multinationals
- A multitude of small companies
10We were a one-horse field
Rule chaining
Inheritance
11Now we ride many horses
Neural nets
Rule chaining
Inheritance
Generate and test
Constraint propagation
Search
Genetic algorithms
Tree building
Bayes nets
Learning
Agents
12And not just reasoning horses
- Vision
- Language and speech
- Infrastructure
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15We had a Pyrrhic victory
Network
Tapes
IO
Power
Cables
Disk
Memory
16We learned negative lessons
- Nobody cares about saving money
- Using cutting edge technology
- To replace expensive experts
17We learned positive lessons
- Everybody cares about
- New revenues
- Saving a mountain of money
- Increasing competitiveness
18We changed the business model
Replaces Expensive People
Saves Mountains Of Money
Creates New Revenue
Ferrets
Blunder stoppers
Novices
Experts
19The critic and the billionaire
20Whats next connections
People
Enhanced Reality
Human Computer Interaction
Information Access
Intelligent StructuresUseful robots
Computers
Physical World
Global Net
21The click-in phenomenon
- The fax machine
- The world wide web
22The Science
23Shrobes point
- Applications drive science
- Unless they all look alike
24Atkesons point
- We could move to the center
- But, we might be kidding ourselves
25My point
- AI is applied computer science
- Much energy wonderfully used
- But consequently diverted
26A 100 year enterprise
Molecular Biology
1950
2000
2050
1900
Artificial Intelligence
27Why we are the way we are
Powerful Ideas
Models of Thinking
ReflectionBiologyPsychology
28The standard paradigm
The IntelligentReasoner
Input/Output Channels
Language
Vision
29The dawn age
30What went wrong?
- We think with our eyes
- We think with our mouths
- We think with our hands
- Each faculty helps the others
31What is the evidence?
- Armchair psychology
- Clues from the brain
32Armchair psychology
- Hilliss observation on the value of talking to
yourself - Everyones observation on the value of drawing a
sketch.
33From brain scanning
34Intelligence is in the I/O
The Explanation
MotorReasoner
LinguisticReasoner
VisualReasoner
35Language is first among equals
- Language reasons
- Language tells vision how to see
- Language tells motor how to act
36Is it time to start over?
- An I/O oriented paradigm
- Essentially free computation
- Important, inspiring allies
37From brain rewiring
38From watching infants
39Is it time to start over?
- An I/O oriented paradigm
- Essentially free computation
- Important, inspiring allies
- Accumulation of powerful ideas
40Six powerful ideas
- Recreated condition
- One-shot learning
- Memory is cheap
- Change matters
- Survival of the smallest
- Bi-directional search
41Recreated condition Minsky
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42One-shot Yip and Sussman
Rule Memory
Word Memory
ae
p
l
Time
43One-shot Yip and Sussman
Rule Memory
Word Memory
ae
p
l
z
Time
44One-shot Yip and Sussman
100
Accuracy
Trials 500
45Memory is cheap Atkeson
46Atkesons practice tables
47Atkesons practice results
Feedback only
One stored trajectory
Three stored trajectories
48Change matters Borchardt
49Borchardts ladder diagrams
D
A
Distance
D
A
Speed
A
A
A
Contact
50Survival of the smallest Kirby
51Kirbys phase transitions
Coverage
Time
52Bi-directional search Ullman
Model
Image
53Joyous inferences
- Powerful ideas
- Marvelous engineering
- Essential alliances
54What about
- Bayes and Markov
- Neural nets and connectionism
- Logic
55WHAT WE MUST NOT DO
56Loose our faith
- It will take 300 years
- All the low hanging fruit is gone
- We shouldnt make predictions
57Waste time arguing
- Is it possible?
- Is it successful?
- Is it really AI?
58Squander our capital
- One thousand people
- 10 interested in the science side
- 10 actually working on it
- 10 of the time
59WHAT WESHOULD DO
60Human Intelligence Enterprise
- Vision, language, motor
- Free hardware
- Clues from the brain
- Powerful ideas
- Conceive and test models
61Why we should do it
- It can only be done once
- Revolutionary applications
62What we should ask
- Why do we have discrete words?
- What do our inner agents say?
- How do they learn what to say?
- Do we see what chimps see?
- How did our faculties evolve?
- Why cant we all play the piano?
63So, here is why Im optimistic
- Nothing could possibly be morefun, exciting,
rewarding, and glorious, than - Applications that really matter
- Figuring out our own intelligence