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tomelders

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ctrl/tinycolor and 40+ NPM Packages Compromised

stepsecurity.io
2 points·by tomelders·10 months ago·1 comments

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tomelders
·2 months ago·discuss
SpaceX's has disclosed that they're loosing $2Bln a quarter on A.I - and rising - in their IPO documents.

Anthropic told the Department of War-nee-Defence that they'd made $5bln total, which is a lot LOT less than what they're spending.

We'll see what's in OpenAi's IPO later this year I guess. I'll be very surprised if they're losing less that $100bln a year.
tomelders
·2 months ago·discuss
What are you talking about Willis?
tomelders
·2 months ago·discuss
I do think local models are the future, but there's still the question of cost to be answered. Even if there's some slew of effincency improvements that mean an LLM can run locally on consumer level hardware on an affordable budget (and that's a big "if"), there's still the cost of training the modles to consider.

Assuming we end up in a future where people pay to run multiple smaller models on their machines for specific tasks (e.g. A summariser model, a python coding model, or however fine grained/macro you want to go), the people training those models will need to turn a profit.

So how much will that cost? And how often will consumers have to pay? Models have a very short self life. Say you have a dedicated python coding model - that needs re-training every time there's a significant update to the language itself, any popular packages, related technologies (e.g. servers, cloud infra etc). So how often will users need to "upgrade" to the lastest version? It's going to be "frequently".

And it still needs the language stuff on top of that. Users aren't going to interact with a python coding model by writing python. They're going to use natural language. So the model needs all that stuff. And they're going to give it problems to solve. What if you asked the model "Write me a Bezier curve function". It needs to know about bezier curves, which have nothing to do with Python. So where do these LLM providers draw the line on what makes it into the training data and what doesn't?

And if an LLM doesn't know what a Bezier curve is, that's not going to stop it from just hallucinating an answer. If a significat proportion of prompts resulted in a response that said "Sorry, I don't know what you're talking about", then people will just stop using it. The utility of these things will be quickly overshadowed by the frustrations.

The way these frontier models have been introduced and promoted has set unrealistic expectations, and there's no putting the genie back in the bottle.
tomelders
·last year·discuss
My understanding is that the great filter theory means this is bad news for us humans here on earth. And considering the state of the world right now, it's especially ominous. Fate loves irony.