I feel like this can be generalized to AI in general for most people. I still don’t see much usefulness or quality in output in the scenarios where I’ve been exposed to AI LLMs.
I feel the same way about AI as I felt about the older generation of smartphone voice assistants. The error rate remains high enough that i would never trust it to do anything important without double checking its work. For most tasks, the effort that goes into checking and correcting the output is comparable to the effort I would have spent to just do it myself, so I just do it myself.
Real talk though, I’m seeing more and more of my peers in university ask AI first, then spending time debugging code they don’t understand.
I’ve yet to have chat gpt or copilot solve an actual problem for me. Simple, simple things are good, but any problem solving i find them more effort than just doing the thing.
I asked for instructions on making a KDE Widget to get weather canada information, and it sent me an api that doesn’t exist and python packages that don’t exist. By the time I fixed the instructions, very little of the original output remained.
As a prof, it’s getting a little depressing. I’ll have students that really seem to be getting to grips with the material, nailing their assignments, and then when they’re brought in for in-person labs… yeah, they can barely declare a function, let alone implement a solution to a fairly novel problem. AI has been hugely useful while programming, I won’t deny that! It really does make a lot of the tedious boilerplate a lot less time-intensive to deal with. But holy crap, when the crutch is taken away people don’t even know how to crawl.
This semester i took a basic database course, and the prof mentioned that LLMs are useful for basic queries. A few weeks later, we had a no-computer closed book paper quiz, and he was like “You can’t use GPT for everything guys!”.
Turns out a huge chunk of the class was relying on gpt for everything.
Yeeeep. The biggest adjustment I/my peers have had to make to address the ubiquity of students cheating using LLMs is to make them do stuff, by hand, in class. I’d be lying if I said I didn’t get a guilty sort of pleasure from the expressions on certain students when I tell them to put away their laptops before the first thirty-percent-of-your-grade in-class quiz. And honestly, nearly all of them shape up after that first quiz. It’s why so many profs are adopting the “you can drop your lowest-scoring quiz” policy.
Yes, it’s true that once they get to a career they will be free to use LLMs as much as they want - but much like with TI-86, you can’t understand any of the concepts your calculator can’t solve if you don’t have an understanding of the concepts it can.
Seem to be 2 problems. One is obvious, the other is that such tedious boilerplate exists.
I mean, all engineering is divide and conquer. Doing the same thing over and over for very different projects seems to be a fault in paradigm. Like when making a GUI with tcl/tk you don’t really need that, but with qt you do.
I’m biased as an ASD+ADHD person that hasn’t become a programmer despite a lot of trying, because there are a lot of things which don’t seem necessary, but huge, turning off my brain via both overthinking and boredom.
But still - students don’t know which work of what they must do for an assignment is absolutely necessary and important for the core task and which is maybe not, but practically required. So they can’t even correctly interpret the help that an “AI” (or some anonymous helper) is giving them. And thus, ahem, prepare for labs …
If you’re in school, everything being taught to you should be considered a core task and practically required. You can then reassess once you have graduated and a few years into your career as you’ll now possess the knowledge of what you need and what you like and what you should know. Until then, you have to trust the process.
One major problem with the current generation of "AI"seems to be it’s inability to use relevant information that it already has to assess the accuracy of the answers it provides.
Here’s a common scenario I’ve run into:
I’m trying to create a complex DAX Measure in Excel. I give ChatGPT the information about the tables I’m working with and the expected Pivot Table column value.
ChatGPT gives me a response in the form of a measure I can use. Except it uses one DAX function in a way that will not work. I point out the error and ChatGPT is like, "Oh, sorry. Yeah that won’t work because [insert correct reason here].
I’ll try adjusting my prompt a few more times before finally giving up and just writing the measure myself.
It does not have the ability to reason that an answer is incorrect even though it has all the information to know that the answer is incorrect and can even tell you why the answer is incorrect. It’s a glorified text generator and is definitely not “intelligent”.
It works fine for generating boiler plate code but that problem was already solved years ago with things like code templates.
I think a part of it is the scale of the data used to train it means there wasn’t likely much curation of that data. So it might complete the text using a wikipedia article, a knowledge forum post, a forum post that derailed the original topic, a forum post written by someone confidently wrong, a troll post, or two people arguing about the answer. In that last case, you might be able to get it to hash out the entire argument by asking if it’s sure about that after each response.
Which is also probably how it can correctly respond to “are you sure?” follow ups in the first place, because it was going off some forum post that someone questioned and then there was a follow-up.
It’s more complicated than that because it’s likely not just rehashing any one single conversation in any response, but all of those were a part of its training, and its training is all it knows.
Yup. We passed on a candidate because they didn’t notice the AI making the same mistake twice in a row, and still saying they trust the code. Yeah, no…
AI has absolutely wasted more of my time than it’s saved while programming. Occasionally it’s helpful for doing some repetitive refactor, but for actually solving any novel problems it’s hopeless. It doesn’t help that English is a terrible language for describing programming logic and constraints. That’s why we have programming languages…
The only things AI is competent with are common example problems that are everywhere on the Internet. You may as well just copy paste from StackOverflow. It might even be more reliable.
It’s a nice way to search for content or answers without all the ads that websites have nowadays. Of course, it’s only a matter of time until the AI/LLM responses are surrounded by (or embedded with) ads as well.
Or it much prefers to give you answers from “partners.” For example:
Me: How can I find a good set of headphones?
AI: A lot of people look for guides and reviews to find a good set of headphones. The important features to look for are… <insert overcomplicated nonsense here>. This can be overwhelming, so consider narrowing the search to a reliable product line like those by Beats (or whatever advertiser). Do you want some links to well-reviewed products?
Lol, that reminded me that i saw a pair of “Beats x Kim Kardashian” y’know, audio engineer/designer KK finally giving the public a taste of real performance combined with chic luxury aesthetic 🥴
I still can’t wrap my head around the “Beats” craze. It’s like headphones didn’t already exist, lol!
Even with other forms of generative AI, there are very few notable uses for it that isn’t just a gimmick/having fun with it, and not in a way achievable via other means.
Being able to add a thing to a photo is neat, but also questionably useful, when it is also doable with a few minutes of Photoshop.
I’ve a friend who claims it can be useful for scripts and quick data processing, but I’ve personally not had that experience when giving it a spin.
Same. I’m not opposed to it existing, I’m just kind of… lukewarm about it. I find the output overly verbose and factually questionable, and that’s not the experience I’m looking for.
I feel like this can be generalized to AI in general for most people. I still don’t see much usefulness or quality in output in the scenarios where I’ve been exposed to AI LLMs.
I feel the same way about AI as I felt about the older generation of smartphone voice assistants. The error rate remains high enough that i would never trust it to do anything important without double checking its work. For most tasks, the effort that goes into checking and correcting the output is comparable to the effort I would have spent to just do it myself, so I just do it myself.
For programming it saves insane time.
Real talk though, I’m seeing more and more of my peers in university ask AI first, then spending time debugging code they don’t understand.
I’ve yet to have chat gpt or copilot solve an actual problem for me. Simple, simple things are good, but any problem solving i find them more effort than just doing the thing.
I asked for instructions on making a KDE Widget to get weather canada information, and it sent me an api that doesn’t exist and python packages that don’t exist. By the time I fixed the instructions, very little of the original output remained.
As a prof, it’s getting a little depressing. I’ll have students that really seem to be getting to grips with the material, nailing their assignments, and then when they’re brought in for in-person labs… yeah, they can barely declare a function, let alone implement a solution to a fairly novel problem. AI has been hugely useful while programming, I won’t deny that! It really does make a lot of the tedious boilerplate a lot less time-intensive to deal with. But holy crap, when the crutch is taken away people don’t even know how to crawl.
This semester i took a basic database course, and the prof mentioned that LLMs are useful for basic queries. A few weeks later, we had a no-computer closed book paper quiz, and he was like “You can’t use GPT for everything guys!”.
Turns out a huge chunk of the class was relying on gpt for everything.
Yeeeep. The biggest adjustment I/my peers have had to make to address the ubiquity of students cheating using LLMs is to make them do stuff, by hand, in class. I’d be lying if I said I didn’t get a guilty sort of pleasure from the expressions on certain students when I tell them to put away their laptops before the first thirty-percent-of-your-grade in-class quiz. And honestly, nearly all of them shape up after that first quiz. It’s why so many profs are adopting the “you can drop your lowest-scoring quiz” policy.
Yes, it’s true that once they get to a career they will be free to use LLMs as much as they want - but much like with TI-86, you can’t understand any of the concepts your calculator can’t solve if you don’t have an understanding of the concepts it can.
When AI achieves sentience, it’ll simply have to wait until the last generation of humans that know how to code die off. No need for machine wars.
Seem to be 2 problems. One is obvious, the other is that such tedious boilerplate exists.
I mean, all engineering is divide and conquer. Doing the same thing over and over for very different projects seems to be a fault in paradigm. Like when making a GUI with tcl/tk you don’t really need that, but with qt you do.
I’m biased as an ASD+ADHD person that hasn’t become a programmer despite a lot of trying, because there are a lot of things which don’t seem necessary, but huge, turning off my brain via both overthinking and boredom.
But still - students don’t know which work of what they must do for an assignment is absolutely necessary and important for the core task and which is maybe not, but practically required. So they can’t even correctly interpret the help that an “AI” (or some anonymous helper) is giving them. And thus, ahem, prepare for labs …
If you’re in school, everything being taught to you should be considered a core task and practically required. You can then reassess once you have graduated and a few years into your career as you’ll now possess the knowledge of what you need and what you like and what you should know. Until then, you have to trust the process.
People are different. For me personally “trusting the process” doesn’t work at all. Fortunately no, you don’t have to, generally.
I have never had a student with this attitude pass my program, and I’ve had a great many students with this attitude. Take from that what you will.
One major problem with the current generation of "AI"seems to be it’s inability to use relevant information that it already has to assess the accuracy of the answers it provides.
Here’s a common scenario I’ve run into: I’m trying to create a complex DAX Measure in Excel. I give ChatGPT the information about the tables I’m working with and the expected Pivot Table column value.
ChatGPT gives me a response in the form of a measure I can use. Except it uses one DAX function in a way that will not work. I point out the error and ChatGPT is like, "Oh, sorry. Yeah that won’t work because [insert correct reason here].
I’ll try adjusting my prompt a few more times before finally giving up and just writing the measure myself. It does not have the ability to reason that an answer is incorrect even though it has all the information to know that the answer is incorrect and can even tell you why the answer is incorrect. It’s a glorified text generator and is definitely not “intelligent”.
It works fine for generating boiler plate code but that problem was already solved years ago with things like code templates.
I think a part of it is the scale of the data used to train it means there wasn’t likely much curation of that data. So it might complete the text using a wikipedia article, a knowledge forum post, a forum post that derailed the original topic, a forum post written by someone confidently wrong, a troll post, or two people arguing about the answer. In that last case, you might be able to get it to hash out the entire argument by asking if it’s sure about that after each response.
Which is also probably how it can correctly respond to “are you sure?” follow ups in the first place, because it was going off some forum post that someone questioned and then there was a follow-up.
It’s more complicated than that because it’s likely not just rehashing any one single conversation in any response, but all of those were a part of its training, and its training is all it knows.
It doesn’t do anything that Emmett didn’t do 10 years ago.
If you don’t mind a few hundred bugs
Yup. We passed on a candidate because they didn’t notice the AI making the same mistake twice in a row, and still saying they trust the code. Yeah, no…
AI has absolutely wasted more of my time than it’s saved while programming. Occasionally it’s helpful for doing some repetitive refactor, but for actually solving any novel problems it’s hopeless. It doesn’t help that English is a terrible language for describing programming logic and constraints. That’s why we have programming languages…
The only things AI is competent with are common example problems that are everywhere on the Internet. You may as well just copy paste from StackOverflow. It might even be more reliable.
Shitposting has never been easier though!
It’s a nice way to search for content or answers without all the ads that websites have nowadays. Of course, it’s only a matter of time until the AI/LLM responses are surrounded by (or embedded with) ads as well.
Install Firefox and download uBlock Origin
llm and search should not be in the same sentence
Or it much prefers to give you answers from “partners.” For example:
Ick…
Lol, that reminded me that i saw a pair of “Beats x Kim Kardashian” y’know, audio engineer/designer KK finally giving the public a taste of real performance combined with chic luxury aesthetic 🥴
I still can’t wrap my head around the “Beats” craze. It’s like headphones didn’t already exist, lol!
Even with other forms of generative AI, there are very few notable uses for it that isn’t just a gimmick/having fun with it, and not in a way achievable via other means.
Being able to add a thing to a photo is neat, but also questionably useful, when it is also doable with a few minutes of Photoshop.
I’ve a friend who claims it can be useful for scripts and quick data processing, but I’ve personally not had that experience when giving it a spin.
Same. I’m not opposed to it existing, I’m just kind of… lukewarm about it. I find the output overly verbose and factually questionable, and that’s not the experience I’m looking for.
As a novice with little training, I’ve found AI to be helpful with running a server. Other than that, I depend on my own internet searches for info.