Comment by menaerus
3 days ago
With all due respect, all of those examples are the examples of "yesterday" ... that's how we have been bringing money to businesses for decades, no? Today we have AI models that can already do as good, almost as good, or even better than the average human in many many tasks, including the ones you mentioned.
Businesses are incentivized to be more productive and cost-effective since they are solely profit-driven so they naturally see this as an opportunity to make more money by hiring less people while keeping the amount of work done roughly the same or even more.
So "classical" approach to many of the problems is I think the thing of a past already.
> Today we have AI models that can already do as good, almost as good, or even better than the average human in many many tasks, including the ones you mentioned.
We really don't. There are demos that look cool onstage, but there is a big difference between "in store good" and "at home good" in the sense that products aren't living up to their marketing during actual use.
IMO there is a lot of room to grow within the traditional approaches of "yesterday" - The problem is that large orgs get bogged down in legacy + bureaucracy, and most startups don't understand the business problems well enough to make a better solution. And I don't think that there is any technical silver bullet that can solve either of these problems (AI or otherwise)
I am wondering how often do you use AI models? Because I do it on a daily basis, and as much as they have limitations, I find them to be performing incredibly well. It's far very far from being a demo - last time it was a demo that looked "cool" was around 2020/21 when they were cool for spitting out the haiku poetry, and perhaps 2022 when capabilities were not as good. But today? Completely mind-blowing.
If you're not convinced, I suggest you to search for the law firms, hospitals, and laboratories ... all of which are using AI models as of today to do both the research and boiler-plate work. Creative industries are being literally erased by the generative AI as we are speaking. What will happen with the Photoshop and other similar tools when I can create whatever I want using the free AI model in literally 2 seconds without prior knowledge? What will happen with majority of movie effect makers when single guy will be able to do the work of 5 people at the same time? Or interior designers? The heck, what will happen with the Google search - I anticipate nobody will be using it in a year or two. I already don't because it's a massive sink of time compared to what I can do with perplexity for example.
There's many many examples. You just need to have your mind open to see it.
You're making a ridiculously overconfident statement.
* Show me a discrete manufacturing company using AI models for statistical process control or quality reporting
* Show me a pharmaceutical company using AI models for safety data analysis
* Show me an engineering company using AI models for structural design
The list goes on and on. There are precious few industries or companies that have replaced traditional analysis & prediction with AI. Why? Because one of two things are true: 1) their data is already in highly structured relational stores that have long legacies of SQL-based extraction and analysis, 2) they're in regulated industries and have to have audit-proof, explainable reporting, or 3) they need evidence-based design and analysis that has a key component coming from real people observing real processes in action.
For all the hyped "AI Automation" you read about, there are 100 other things that aren't, or where firms don't believe they can be, or where they'll struggle to for [reasons].
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I try them from time to time, but I have yet to see AI models produce a useful output for my work. The problems I work on are not well-represented in training data and internet-based resources, and correctness matters far more than speed.
For my work, it's important to form strong and correct mental models of complex systems so I can reason about them well. It's more about thinking and writing clearly than anything else. LLMs tend to include subtle mistakes or even completely incorrect information (and reasoning!) which disrupts this process.
On the creative industry side...well, you can produce some results that look fine by themselves, but producing large-scale cohesive artwork (games, movies, etc.)? It's mostly human elbow-grease for the foreseeable future.
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