I wouldn’t go that far, both LLMs and other ML technologies clearly have novel use cases (unlike crypto where the only use cases are financial speculation and crime).
The issue is that AI promoters/conmen are knowingly misrepresenting the capabilities of their services to benefit from pump and dumps (case in point Microsoft and OpenAI agreeing to define AGI as any service that gets $100 B in annual revenue).
There are some very useful use cases. One that I have a decent amount of experience in is upscaling SD (or even VHS) content. Depending on the quality of the source material, you can get very good results.
I’ve also found LLMs helpful as a compliment to web searching for my work (I deal with lots of public datasets from international organisations); LLM queries have helped me find sources that I missed via directed search.
It can also be helpful as guided learning/reference system for Linux CLI (I tend to forget the parts I rarely use) or even software application more broadly (used it to help learn about GIS applications that I needed to use to access historical weather data for a work project).
Ludicrous amounts of money being pumped into a technology that has no practical purpose.
I wouldn’t go that far, both LLMs and other ML technologies clearly have novel use cases (unlike crypto where the only use cases are financial speculation and crime).
The issue is that AI promoters/conmen are knowingly misrepresenting the capabilities of their services to benefit from pump and dumps (case in point Microsoft and OpenAI agreeing to define AGI as any service that gets $100 B in annual revenue).
They’re novelties for sure, but I see nothing but toy uses or things that be achieved by other, less wasteful, techniques.
I assume by crypto you mean cryptocurrencies rather than any cryptography, because there’s lots of valid uses for private communication.
Yes, I didn’t mean cryptography of course. :)
There are some very useful use cases. One that I have a decent amount of experience in is upscaling SD (or even VHS) content. Depending on the quality of the source material, you can get very good results.
I’ve also found LLMs helpful as a compliment to web searching for my work (I deal with lots of public datasets from international organisations); LLM queries have helped me find sources that I missed via directed search.
It can also be helpful as guided learning/reference system for Linux CLI (I tend to forget the parts I rarely use) or even software application more broadly (used it to help learn about GIS applications that I needed to use to access historical weather data for a work project).
It has a lot of practical uses.