Welcome to AIR1 in 2026.
I'm quite happy to see so many comparatively of you here in spite of the snow.
I must say I've had nicer bike rides to the university than today and I'm assuming something
similar applies to you.
So all the better that you're here.
We are doing symbolic AI and that basically means we're designing artificial agents.
That means we're designing software
possibly hardware programs
that can interact with
the world.
They have ways of sensing the environment.
That could be eyes or ears or something like this.
Or just a text interface
whatever you want.
And that could act on the environment.
For instance
like a chess player who moves pieces or think of a robot that travels in
Romania or something like this.
And the main class of agents that we've looked at and are still looking at are goal or model
based agents in a very simple class of environments.
The environments are static
meaning nothing is changed unless the agent changes it by
its actions.
Completely unrealistic.
The only agents that kind of have this live in static environments where only things change
are gods.
It doesn't rain unless the god makes it rain.
We're not building artificial gods.
It's AI, not AG.
So the other thing about the environment is it's fully observable
which again is completely
different to the environment we work in or we live in.
And the environments are deterministic.
If we do an action, it succeeds.
Again, completely oversimplified.
But looking at these kind of agents in this very simple case is a wonderful kind of set
of training exercises to proceed to the more interesting and important environment
which
are of course algorithmically much more interesting
we could say
or much more difficult.
And of course
there are agents to whom the world is fully observable.
And think of the thermostat down there.
All that thermostat
quote unquote
wants to do is keep the temperature constant.
And it really doesn't care if there are students here or not.
So the temperature is the only variable of the environment that this little agent actually
has to observe.
Presenters
Zugänglich über
Offener Zugang
Dauer
01:31:00 Min
Aufnahmedatum
2026-01-08
Hochgeladen am
2026-01-09 06:40:05
Sprache
en-US