Small AI Models Gain Traction In places with unreliable networks

251 points - yesterday at 11:59 PM

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N_Lens today at 5:47 AM
I strongly believe this premise in the article is correct - we will see a lot of tiny, hyper specialized models for individual tasks, and perhaps that will converge with an orchestration layer for a generalized intelligence that controls these specialized tiny models, that will be quite capable.

I don't foresee AGI arising out training bigger LLMs (Though investors won't realise that for a while yet).

It's actually how organic brains work - specialized tasks are offloaded to local cortical columns. The overall coordination between these sub-brains creates emergent skills/abilities.

prmph today at 5:36 PM
> The RxScanner is a handheld spectrometer that scans a pill with infrared light, then sends the item’s molecular profile to an AI model equipped with a pharmaceutical database. In seconds, the AI identifies the medication from its molecular profile—or reports that it’s phony.

Is every tech, including database search "AI" now?

tim-fan today at 2:19 AM
Is anyone making LLM-in-a-box for emergency supply kits yet?

I feel that would be handy in all sorts of situations when networks are down.

egormakarov today at 9:08 AM
Can't wait to be killed by my toaster because some sexy mossad agent seduced it.
bix6 today at 4:05 AM
Has anyone used the Rx Scanner mentioned in the opening?

https://rxall.net/rxscanner/

monkeydust today at 7:22 AM
Where is a good place to start with training SLM these days if you don't have the compute locally?
HelloUsername today at 1:12 PM
What about small (offline) AI Models in places with weak hardware?
bombcar today at 1:41 AM
99% of the model "work" (meaning the connection to your computer) is just spinning a spinner - something that makes me want to wrap it with a mosh shell so I can just keep moving from network to network.
jdonaldson today at 3:31 AM
I think neuro-symbolic AI has a lot of potential here, since small models can handle a lot of conversational inputs, while relying on wired-in solvers for more complex symbolic math/computation needs. https://jjd.io/posts/swollm-bbh-leaderboard.html
enoint today at 1:55 AM
Fascinating to wonder whether the bigger model finds fewer or more counterfeits than the on-device one.
dmezzetti today at 11:33 AM
100% agree on this.

I've been working on small local models for years with txtai (https://github.com/neuml/txtai). I've published close to 100 models that can run local for RAG, Agents, Vector Search and more (https://huggingface.co/NeuML/collections).

mountainriver today at 5:29 AM
I looked into this a bit but unfortunately because of starlink most of this won’t be needed
fpauser today at 7:08 AM
SLMs for the rescue!
littlerobot today at 3:08 PM
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Pakvothe today at 1:36 PM
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