One of the use cases I thought was reasonable to expect from ChatGPT and Friends (LLMs) was summarising. It turns out I was wrong. What ChatGPT isn’t summarising at all, it only looks like it…
Cheaper for now, since venture capitalist cash is paying to keep those extremely expensive servers running. The AI experiments at my work (automatically generating documentation) have got about an 80% reject rate - sometimes they’re not right, sometimes they’re not even wrong - and it’s not really an improvement on time having to review it all versus just doing the work.
No doubt there are places where AI makes sense; a lot of those places seem to be in enhancing the output of someone who is already very skilled. So let’s see how “cheaper” works out.
I use AI often as a glorified search engine these days. It’s actually kinda convenient to give me ideas to look into further, when encountering a problem to solve. But would I just take some AI output without reviewing it? Hell no😄
People always assume that the current state of generative AI is the end point. Five years ago nobody would have believed what we have today. In five years it’ll all be a different story again.
People always assume that generative AI (and technology in general) will continue improving at the same pace it always has been. They always assume that there are no limits in the number of parameters, that there’s always more useful data to train it on, and that things like physical limits in electricity infrastructure, compute resources, etc., don’t exist. In five years generative AI will have roughly the same capability it has today, barring massive breakthroughs that result in a wholesale pivot away from LLMs. (More likely, in five years it’ll be regarded similarly to cryptocurrency is today, because once the hype dies down and the VC money runs out the AI companies will have to jack prices to a level where it’s economically unviable to use in most commercial environments.)
In five years it’ll all be a different story again.
You don’t know that. Maybe it will take 124 years to make the next major breakthru and until then all that will happen is people will tinker around and find that improving one thing makes another thing worse.
But having an AI do it is cheaper so that’s where we’re going.
Cheaper for now, since venture capitalist cash is paying to keep those extremely expensive servers running. The AI experiments at my work (automatically generating documentation) have got about an 80% reject rate - sometimes they’re not right, sometimes they’re not even wrong - and it’s not really an improvement on time having to review it all versus just doing the work.
No doubt there are places where AI makes sense; a lot of those places seem to be in enhancing the output of someone who is already very skilled. So let’s see how “cheaper” works out.
I use AI often as a glorified search engine these days. It’s actually kinda convenient to give me ideas to look into further, when encountering a problem to solve. But would I just take some AI output without reviewing it? Hell no😄
People always assume that the current state of generative AI is the end point. Five years ago nobody would have believed what we have today. In five years it’ll all be a different story again.
People always assume that generative AI (and technology in general) will continue improving at the same pace it always has been. They always assume that there are no limits in the number of parameters, that there’s always more useful data to train it on, and that things like physical limits in electricity infrastructure, compute resources, etc., don’t exist. In five years generative AI will have roughly the same capability it has today, barring massive breakthroughs that result in a wholesale pivot away from LLMs. (More likely, in five years it’ll be regarded similarly to cryptocurrency is today, because once the hype dies down and the VC money runs out the AI companies will have to jack prices to a level where it’s economically unviable to use in most commercial environments.)
To add to this, we’re going to run into the problem of garbage in, garbage out.
LLMs are trained on text from the internet.
Currently, a massive amount of text on the internet is coming from LLMs.
This creates a cycle of models getting trained on data sets that increasingly contain large sets of data generated by older models.
The most likely outlook is that LLMs will get worse as the years go by, not better.
You don’t know that. Maybe it will take 124 years to make the next major breakthru and until then all that will happen is people will tinker around and find that improving one thing makes another thing worse.