AI and Machine Learning Demystified by Carol Smith at Midwest UX 2017
AI is when machines :
- Exhibit Intelligence
- Perceive their environment
- Take actions/ make decision to maximize chance of success at a goal
Elon Musk was wrong The AI Singularity Won't Kill Us All.
Most people working in AI have a healthy skepticism for the idea of singularity. We know how hard it is to get even a little intelligence into a machine, let alone enough to achieve recursive self improvement.
Don't fear super intelligent AI remember we could unplug the machine.
Cognitive computers are:
- Made with algorithms
- Knowledgeable ONLY about what taught
- Control ONLY what we give them control of
- Aware of nuances and can continue to learn more
Cognitive computer (Algorithm) Can
- Do very boring work for you
- Often make better more consistent decisions than humans
- Be efficient won't get tired
Exhibit intelligence
- Transfer human concept and relationship
Dependent on experts
- Subject Matter Experts (SME) Availabilty
- Lawyers
- Machinishts
- Physicians
- Insurance Adjusters
Usually not EXPERIENCED in machine learning.
- Need close collaboration with those making algorithms
It is only as good as data and time spent improving it
Creating an AI requires
The goal is saving time, machine learning creates a more highly trained specialist not an ''All Knowing Being''
Examples of AI and Cognitive Computers
Consider for each example:
- What intelligence does the system need?
- What the AI perceiving in their environment?
- What actions are taken to maximize success of goals?
- Watson developed for quiz show jeopardy , won against champions in 2011 for 1million $
Humans teach what we feel is important , teach them to share our values.
Super knowings not super doing.