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#why#fine#prompt#each#tag#tune#llm#image#output#don

Discussion (7 Comments)Read Original on HackerNews
Am I reading this right that the jury is multiple LLMs each iterating through each tag and voting on each? Why wouldn't you tune one LLM to be really competent at a single tag? Like a single "spicy evaluator LLM" or "protein evaluator LLM"?
Whenever I create an image like this for the purpose of a demo, I make certain that it demonstrates either real input/output or at least is exemplary of real input/output because the whole point is to instill confidence in the tool. Sure, if the raw outputs aren't clean/comprehensible enough for presenting to stakeholders or others, fine, clean them up to make them comprehensible or add explainers, but there shouldn't be any need to fabricate the inputs.
I feel obligated to respond to the hypothetical "But they don't want to tie it to a particular restaurant or brand" -- you don't have to! Doordash has taken generic food photos for this exact purpose.
There are a lot of claims in the article but not a lot of hard data. In the end they still don’t know if the data is correct.
Good luck with your glutes allergy.
The weird thing for me is the prompt optimization loop? Why not fine tune the model instead of AI generating the prompt?
The healthy tag is about marketing. It's a product positioning statement.
Why is it weird to optimise the prompt? Whether you optimise the model is a separate issue.
If you use any closed models you can’t fine tune them, which is another reason for most but here they also fine tuned models.