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arkmm

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Ask HN: For those of you building AI agents, how have you made them faster?

2 points·by arkmm·6 mesi fa·1 comments

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arkmm
·mese scorso·discuss
Seems like LLMs embrace that last point as well.
arkmm
·2 mesi fa·discuss
everything is computer
arkmm
·4 mesi fa·discuss
Didn't know this technique had a name, but I would think a modern compiler could make this optimization on its own, no?
arkmm
·4 mesi fa·discuss
You can fine tune a small LLM with a few thousand examples in just a few hours for a few dollars. It can be a bit tricky to host, but if you share a rough idea of the volume and whether this needs to be real-time or batched, I could list some of the tradeoffs you'd think about.

Source: Consulted for a few companies to help them finetune a bunch of LLMs. Typical categorical / data extraction use cases would have ~10x fewer errors at 100x lower inference cost than using the OpenAI models at the time.
arkmm
·4 mesi fa·discuss
Can you share more details about your use case? The good applications of fine tuning are usually pretty niche, which tends to make people feel like others might not be interested in hearing the details.

As a result it's really hard to read about real-world use cases online. I think a lot of people would love to hear more details - at least I know I would!
arkmm
·4 mesi fa·discuss
Payment fees are crazy when you think about them from the perspective of a merchant in a low margin business. E.g. in retail or restaurants, margins aren't much better than ~10%. If they didn't have to pay ~3% credit card fees, they'd have 30% more profit!
arkmm
·4 mesi fa·discuss
I used to also have this optimistic take, but over time I think the reality is that most people will instead just distrust unknown online sources and fall into the mental shortcuts of confirmation bias and social proof. Net effect will be even more polarization and groupthink.
arkmm
·5 mesi fa·discuss
Get ready for the acquisition offers.
arkmm
·5 mesi fa·discuss
Sorry Ploum, just getting a chance to read this now and comment. Great insights!
arkmm
·5 mesi fa·discuss
this is a really cool insight, going to use this on my team from now on!
arkmm
·6 mesi fa·discuss
They're still very good for finetuned classification, often 10-100x cheaper to run at similar or higher accuracy as a large model - but I think most people just prompt the large model unless they have high volume needs or need to self host.
arkmm
·6 mesi fa·discuss
Maybe a bit off-topic, but how'd you meet your partner while on your adventures?
arkmm
·9 mesi fa·discuss
As a follow-up to this, even though water makes up 70% of the Earth's surface, it's only 0.02% of the Earth's mass.
arkmm
·9 mesi fa·discuss
Wow, this deserves its own submission.
arkmm
·9 mesi fa·discuss
Neat approach, but seems like the eventual goal of caching DOM maps for all users would be a privacy nightmare?
arkmm
·9 mesi fa·discuss
What's misleading about that? You rent $100 of time on an H100 to train the model.
arkmm
·9 mesi fa·discuss
What sorts of automations were you able to get working with the Chrome dev tools MCP?
arkmm
·9 mesi fa·discuss
The irony of this is so much of Reddit comments these days are AI generated.
arkmm
·10 mesi fa·discuss
Unfortunately I think they have stopped doing this since COVID.
arkmm
·10 mesi fa·discuss
This misses the forest from the trees IMO:

- The datacenter GPU market is 10x larger than the consumer GPU market for Nvidia (and it's still growing). Winning an extra few percentage points in consumer is not a priority anymore.

- Nvidia doesn't have a CPU offering for the datacenter market and they were blocked from acquiring ARM. It's in their interest to have a friend on the CPU side.

- Nvidia is fabless and has concentrated supplier and geopolitical risk with TSMC. Intel is one of the only other leading fabs onshoring, which significantly improves Nvidia's supplier negotiation position and hedges geopolitical risk.