this post was submitted on 26 Aug 2024
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Big brain tech dude got yet another clueless take over at HackerNews etc? Here's the place to vent. Orange site, VC foolishness, all welcome.
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@bitofhope Absolutely agree, but this is where technology is evolving and we have to learn to adapt or not. Since it's not going away, I'm not sure that not adapting is the best strategy.
And I say the above with full awareness that it's a rubbish response.
have you ever run into the term “learned helplessness”? it may provide some interesting reading material for you
(just because samai and friends all pinky promise that this is totally 170% the future doesn’t actually mean they’re right. this is trivially argued too: their shit has consistently failed to deliver on promises for years, and has demonstrated no viable path to reaching that delivery. thus: their promises are as worthless as the flashy demos)
@froztbyte Given that I am currently working with GenAI every day and have been for a while, I'm going to have to disagree with you about "failed to deliver on promises" and "worthless."
There are definitely serious problems with GenAI, but actually being useful isn't one of them.
You know what? I'd have to agree, actually being useful isn't one of the problems of GenAI. Not being useful very well might be.
@zogwarg OK, my grammar may have been awkward, but you know what I meant.
Meanwhile, those of us working with AI and providing real value will continue to do so.
I wish people would start focusing on the REAL problems with AI and not keep pretending it's just a Markov Chain on steroids.
On a less sneerious note, I would draw distinctions between:
And so far i've really not been convinced of the latter.
@zogwarg
Consider traditional databases which let you search for strings. Vector databases let you search the meaning.
For one client, someone could search for "videos about cats". With stemming and stop words, that becomes "cat" and the results might be lists of videos about house cats and maybe the unix "cat" command. Tigers, lions, cheetahs? Nope.
Vector database will return tigers/lions/cheetahs because it "knows" they are cats. A much smarter search. I've built that for a client.
I realize it's probably a toy example but specifically for "cats" you could achieve the similar results by running a thesaurus/synonym-set on your stem words. With the added benefit that a client could add custom synonyms, for more domain-specific stuff that the LLM would probably not know, and not reliably learn through in-prompt or with fine-tuning. (Although i'd argue that if i'm looking for cats, I don't want to also see videos of tigers, or based on the "understanding" of the LLM of what a cat might be)
For the labeling of videos itself, the most valuable labels would be added by humans, and/or full-text search on the transcript of the video if applicable, speech-to-text being more in the realm of traditional ML than in the realm of GenAI.
As a minor quibble your use case of GenAI is not really "Generative" which is the main thing it's being sold as.
fosstodon is the programming dot dev of mastodon and I mean that in every negative way you can imagine
your posts all give me slimy SEO vibes and you haven’t shown any upward trajectory since claiming that only generative AI lacks a separation between code and data (fucking what? seriously, think on this) so you’re getting trimmed
I just ended up throwing the name into a search engine (one of those boring old actually search engine things; how pedestrian of me)
ah.
back when I used the wider fediverse more frequently I had fosstodon on mute for a significant amount of time
glad to know it’s still Like That