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625 points lukebennett | 1 comments | | HN request time: 0s | source
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LASR ◴[] No.42140045[source]
Question for the group here: do we honestly feel like we've exhausted the options for delivering value on top of the current generation of LLMs?

I lead a team exploring cutting edge LLM applications and end-user features. It's my intuition from experience that we have a LONG way to go.

GPT-4o / Claude 3.5 are the go-to models for my team. Every combination of technical investment + LLMs yields a new list of potential applications.

For example, combining a human-moderated knowledge graph with an LLM with RAG allows you to build "expert bots" that understand your business context / your codebase / your specific processes and act almost human-like similar to a coworker in your team.

If you now give it some predictive / simulation capability - eg: simulate the execution of a task or project like creating a github PR code change, and test against an expert bot above for code review, you can have LLMs create reasonable code changes, with automatic review / iteration etc.

Similarly there are many more capabilities that you can ladder on and expose into LLMs to give you increasingly productive outputs from them.

Chasing after model improvements and "GPT-5 will be PHD-level" is moot imo. When did you hire a PHD coworker and they were productive on day-0 ? You need to onboard them with human expertise, and then give them execution space / long-term memories etc to be productive.

Model vendors might struggle to build something more intelligent. But my point is that we already have so much intelligence and we don't know what to do with that. There is a LOT you can do with high-schooler level intelligence at super-human scale.

Take a naive example. 200k context windows are now available. Most people, through ChatGPT, type out maybe 1500 tokens. That's a huge amount of untapped capacity. No human is going to type out 200k of context. Hence why we need RAG, and additional forms of input (eg: simulation outcomes) to fully leverage that.

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1. malthaus ◴[] No.42144682[source]
it's the equivalent of the "we overestimate the impact of technology in the short-term and underestimate the effect in the long run" quote.

everyone is looking at llm scores & strawberry gotchas while ignoring the trillions of market potential in replacing existing systems and (yes) people with the current capabilities. identifying the use cases, finetuning the models and (most importantly) actually rolling this out in existing organizations/processes/systems will be the challenge long before the base models' capabilities will be

it is worth working on those issues now and get the ball rolling, switching out your models for future more capable ones will be the easy part later on.