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[-] frazorth@feddit.uk 104 points 10 months ago

But this sounds exactly the sort of thing that machines are better at that people, so it just feels completely unsurprising that it was good at the task.

Turning multiple dials to manage speed and direction is not normally how humans interact with the world, so we can we pretty shit at it.

A basic motor is completely designed to turn like this.

This feels no different to the machine learning tools used to train on Mario a decade ago.

[-] tsonfeir@lemm.ee 10 points 10 months ago

Right. Computers doing the shit that we don’t want to do for a living while giving us time to do things like paint cows that don’t have two heads.

[-] 1984@lemmy.today 3 points 10 months ago* (last edited 10 months ago)

Technology has removed a lot of time consuming or boring jobs, but it also made us spend our time in front of the computers. The idea from the start was that we could live our lives while computers do our tasks. But we ended up on social media or in front of computer games.

It's great for companies though, since now they make money both when we work and when we are off work. The attention economy is very real.

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[-] Taako_Tuesday@lemmy.ca 54 points 10 months ago

I'm not really surprised, the main challenge of that game is motor control, something any machine can do with more precision than a human

[-] sushibowl@feddit.nl 18 points 10 months ago

I agree but also disagree. It's true that machines are capable of fine motor control much more quickly and accurately than humans. But this by itself is often not enough.

This achievement should be somewhat surprising because of Moravec's paradox: the observation that, opposite to what early AI researchers expected, intelligence and reasoning skills are comparatively easy for a computer to simulate, while sensorimotor skills are in fact incredibly hard. Notice how, for example, chess engines started beating human players in the 90s or so, but we still don't have a robot that can do something as simple as pick raspberries (because surprise, for a machine picking a raspberry is actually hard as shit).

[-] CluckN@lemmy.world 15 points 10 months ago* (last edited 10 months ago)

My eyes bursted out of my sockets when an AI was able to multiply 8 prime numbers faster than a human.

[-] lvxferre@mander.xyz 39 points 10 months ago* (last edited 10 months ago)

They're calling everything "AI" nowadays... this sort of learning algorithm is old as fuck, here's a 8yo example. The main differences between both situations is 1) some sensor(s) being used to "tell" the algorithm about the board state, and 2) the barebones robotic arms messing with the board.

[-] Thorny_Insight@lemm.ee 14 points 10 months ago

I don't get what the issue is calling it AI?

[-] lvxferre@mander.xyz 24 points 10 months ago* (last edited 10 months ago)

Even if skipping completely the discussion about what is "intelligence", the expression "artificial intelligence" has been used as a label for so many different technologies that it has become practically useless. It includes things like decision trees in games (even if a lot of them boil down to simple if/then statements), generative models, even theoretical systems that would reason in a human-like way. And evolutionary models like the one in the OP and the one in my link.

So it's basically the 20s version of what "smart" was in the 90s/00s. Like this:


OK, I'm being cheeky and exaggerating it in the image macro, but it should give you an idea.

[-] infamousta@sh.itjust.works 10 points 10 months ago

AI has been a field within computer science since at least the 1950s. It encompasses algorithms for making decisions, which is why so many technologies are labeled this way. “Intelligence” may seem like an odd choice of terminology (some people conflate it with sentience or similar), but general machine intelligence is one goal of this study, and the applications of AI are putative steps to that end.

Back when those guys started talking about what methods could get us there, things like decision trees, symbolic manipulation, neural nets, were all potential pathways that were on the table. So these get included in the field because that’s where and to what end they were produced.

Another thing is that intelligence can be narrow in its domain. A character in a video game that needs to move from point A to point B can do so following something like the A* pathfinding algorithm. In the domain of graph traversal/pathfinding, it’s hard to imagine something much more intelligent (or fit to solve the problem) than A* despite being a simple algorithm.

But yeah, as a marketing term it is kind of silly since most people don’t know what it means. It remains a useful categorization for a broad field of study/research in CS though.

[-] lvxferre@mander.xyz 4 points 10 months ago* (last edited 10 months ago)

I'm fine with the usage of the acronym and expression in CS; specially because scientists are damn stubborn when it comes to "This is not [word1]! This is [word2]! Don't screw with the terminology, you muppet!". (As they should.)

So the bone that I have to pick against it is mostly against its marketing usage. Specially when it masks the underlying tech, just to make it look fancier. (Like here.)

[-] Thorny_Insight@lemm.ee 2 points 10 months ago

It may be over-used but in my mind it's still the correct term. AI is quite a broad category so you can fit many kinds of software algorithms under it. Perhaps it's misleading as many people probably imagine AI to imply AGI when it could just be narrow AI aswell which even though not generally intelligent may still be superhuman at this one specific task like in this example playing the labyrith.

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[-] TheFriar@lemm.ee 8 points 10 months ago

Exactly. Not to mention, why the fuck is it a surprise that a computer twisting the knobs “at superhuman speed” would be better at this game than humans. Like, no shit. We can’t compute how the degrees at which we’re turning the knobs affects the speed of the ball, can’t store that information for next time, and find the best way not making the same mistakes twice. Because…we’re human. We don’t have that finely tuned ability…because we’re not machines.

So…this isn’t “AI” despite the robot hands they put in the thumbnail and no shit a dedicated computer could master this game. I’m surprised it took six hours.

[-] lvxferre@mander.xyz 4 points 10 months ago

Additionally, this shit is really easy to compute. It's all Newtonian physics, and there are only two relevant equations here, both simple: d = at²/2 + vt and a = g*sin(θ). It's really easy for a computer to reach those formulas, cancelling the advantage that humans would have (insight and actual knowledge of the system).

[-] PipedLinkBot@feddit.rocks 1 points 10 months ago

Here is an alternative Piped link(s):

here's a 8yo example

Piped is a privacy-respecting open-source alternative frontend to YouTube.

I'm open-source; check me out at GitHub.

[-] squirrel@discuss.tchncs.de 30 points 10 months ago

I hope their jaw is alright

[-] Lifecoach5000@lemmy.world 18 points 10 months ago

I cringed at the headline but just posted it as is and thought the article was kinda interesting.

[-] tooLikeTheNope@lemmy.ml 11 points 10 months ago* (last edited 10 months ago)

It sure won't after he's gonna discover that his wife has chosen to leave him for her new AI driven dildo.

It is just a matter of time

[-] maniel@lemmy.ml 29 points 10 months ago

You don't need AI to do that, seriously, such a buzzword where a relatively simple algorithm would suffice, don't tell me it's harder than double pendulums or those ball bouncing contraptions tech students make since a decade or more

[-] CrayonRosary@lemmy.world 15 points 10 months ago* (last edited 10 months ago)

Not needing AI isn't the point. The point is that AI can do it, and AI doesn't require a programmer to design and debug a bespoke algorithm to accomplish a task. It would take a human a lot longer than 6 hours to perfect an algorithm to do this.

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[-] Annoyed_Crabby@monyet.cc 19 points 10 months ago

https://youtu.be/zQMKfuWZRdA

Here, the video the article is talking about. Save you from reading the author's life story.

[-] nyan@lemmy.cafe 4 points 10 months ago

Save you from reading the author’s life story.

I can probably do that and still have time to spend in the washroom before the video is over. Some of us read fast.

[-] PipedLinkBot@feddit.rocks 3 points 10 months ago

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[-] surewhynotlem@lemmy.world 17 points 10 months ago

Oh yeah? Can it tilt the board all the way to one corner, then pop the other corner and send the ball flying right to the end?

No, it's amateur at best.

[-] Blooper@lemmy.world 2 points 10 months ago

That's addressed in the article actually. They had to program it so as not to cheat when they found it actually trying to cheat.

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[-] menemen@lemmy.world 13 points 10 months ago

This is pretty much what I'd expect AI to be best at.

[-] INeedMana@lemmy.world 12 points 10 months ago

It's cool but my question is (I did not see this addressed in the article nor video but might have missed it) did it learn to win the game in general terms or only this one example? I mean, if the layout of the board was changed, would it still solve it?

[-] just_another_person@lemmy.world 18 points 10 months ago* (last edited 10 months ago)

They don't discuss it here, but it's most likely a reinforcement model that operates different generations of learned behavior to decide if it's improving or not.

It would know that the ball going in the hole is "bad", and then try to avoid that happening. Each move that is "good' is then kept in a list of moves it should perform in the next generation of its plan to avoid the "bad" things. Loop -> fail -> logic build -> retry. After 6 hours, it has mapped a complete list of "good" moves to affect it's final outcome.

The answer your question: no, it would not be able to use what it learned here on a different map of the board. It's building reactions to events based on this one board, and bound by rules. You could use the ruleset with another board, but it would need to learn it all again just as a human would.

The thing about these models is less that they will work (it is assumed they eventually will through trial and error), but how efficiently they will work. The number of generational cycles and retries is usually the benchmark when dealing with reinforcement, but they don't discuss that data here either.

[-] INeedMana@lemmy.world 1 points 10 months ago

Yes, but that's kind of my point

We see it learn something with insane precision but most often it is almost an effect of over-training. It probably would require less time to learn another layout but it's not learning the general rules (can't go through walls, holes are bad, we want to get to X), it learns the specific layout. Each time a layout changes, it would have to re-learn it

It is impressive and enables automation in a lot of areas, but in the end it is still only machine learning, adapting weights to specific scenario

[-] indomara@lemmy.world 2 points 10 months ago

It did learn to use shortcuts to skip parts of the maze, and had to be told not to. Super interesting!

[-] INeedMana@lemmy.world 1 points 10 months ago

Yes, but that's only because a generation found some random, specific motion that scored better. Not because it analyzed that doing a skip should be possible

[-] jordanlund@lemmy.world 6 points 10 months ago

When the AI can solve one of these I'll be impressed:

https://youtu.be/UA33LOViUfw

[-] PipedLinkBot@feddit.rocks 4 points 10 months ago

Here is an alternative Piped link(s):

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[-] gian@lemmy.grys.it 2 points 10 months ago

A blast from the past... Damn, now I have the urge to recover mine... from somewhere in the storage room... if it still exist...

[-] datendefekt@lemmy.ml 2 points 10 months ago

Hey, I also had a toy like that! Cool!

[-] MonkderZweite@feddit.ch 4 points 10 months ago

Oh! That thing! Takes me back.

[-] gian@lemmy.grys.it 3 points 10 months ago

The only thing that is hard about this game is to control the board, which is the concept of it.

[-] dangblingus@lemmy.dbzer0.com 2 points 10 months ago

Not sure if it's more interesting that an AI taught itself the PID instructions in order to deftly move the ball around, or if it's more interesting if a human programs the PID instructions to move the ball around. Sounds like a lot of electricity was used doing it the first way.

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this post was submitted on 09 Feb 2024
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