this post was submitted on 25 Aug 2024
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[โ€“] [email protected] 24 points 3 months ago* (last edited 3 months ago) (1 children)

LLMs have been around since roughly ~~2016~~ 2017 (comment below corrected me that Attention paper was 2017). While scaling the up has improved their performance/capabilities, there are fundamental limitations on the actual approach. Behind the scenes, LLMs (even multimodal ones like gpt4) are trying to predict what is most expected, while that can be powerful it means they can never innovate or be truth systems.

For years we used things like tf-idf to vectorize words, then embeddings, now transformers (supped up embeddings). Each approach has it limits, LLMs are no different. The results we see now are surprisingly good, but don't overcome the baseline limitations in the underlying model.