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picture1_Machine Learning Ppt Template 69699 | Cec2000


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File: Machine Learning Ppt Template 69699 | Cec2000
it s hard to build large ai systems brittleness unforeseen interactions scaling requires too much manual complexity management people must understand intervene patch and tune like programming need more autonomy ...

icon picture PPT Filetype Power Point PPT | Posted on 29 Aug 2022 | 3 years ago
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       It’s Hard to Build Large AI Systems
    • Brittleness
    • Unforeseen interactions
    • Scaling
    • Requires too much manual complexity management
      – people must understand, intervene, patch and tune
      – like programming
    • Need more autonomy
      – learning, verification
      – internal coherence of knowledge and experience
       Marr’s Three Levels of Understanding
     • Marr proposed three levels at which any information-processing 
      machine must be understood
       – Computational Theory Level
         • What is computed and why
       – Representation and Algorithm Level
       – Hardware Implementation Level
     • We have little computational theory for Intelligence
       – Many methods for knowledge representation, but no theory of knowledge
       – No clear problem definition
       – Logic
                           Reinforcement Learning provides a little 
                                                         Computational Theory
                    • Policies (controllers)
                    : States  Pr(Actions)
                    • Value Functions
                            
                                   Vπ: States →  ℜ
                                         
                                                                    ∞
                                        π                                    t−1
                                   V (s)=E ∑γ rewardstart in s, follow π
                                                                                                      t                               0
                                                                  t=1
                   • 1-Step Models
                           
                           
                                      P s               s,a                                           E r              s,a
                                                t+1       t       t                                            t+1       t       t
            Outline of Talk
         • Experience
         • Knowledge  Prediction
         • Macro-Predictions
         • Mental Simulation
          offering a coherent candidate 
         computational theory of intelligence
                                 Experience
         • AI agent should be embedded in an ongoing interaction with a world
                                   actions
                     Agent       observations   World
                                              Experience = these 2 time series
         • Enables clear definition of the AI problem
            – Let {reward  } be function of {observation  }
            – Choose actions to maximize total reward
         •                   t                              t
           Experience provides something for knowledge to be about    cf. textbook
                                                                      definitions
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...It s hard to build large ai systems brittleness unforeseen interactions scaling requires too much manual complexity management people must understand intervene patch and tune like programming need more autonomy learning verification internal coherence of knowledge experience marr three levels understanding proposed at which any information processing machine be understood computational theory level what is computed why representation algorithm hardware implementation we have little for intelligence many methods but no clear problem definition logic reinforcement provides a policies controllers states pr actions value functions v t e rewardstart in follow step models p r outline talk prediction macro predictions mental simulation offering coherent candidate agent should embedded an ongoing interaction with world observations these time series enables the let reward function observation choose maximize total something about cf textbook definitions...

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