AI RESEARCH
A Theory of Training Profit-Optimal LLMs
arXiv CS.LG
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ArXi:2605.16430v1 Announce Type: new Scaling LLMs requires tremendous computational resources, and recent advances in AI have gone hand in hand with massive amounts of capital expenditure. While it is established that scaling up LLMs reliably increases model quality (quantified in terms of loss or downstream evaluations), it is unclear how these quality improvements translate to potential revenue, and whether revenue increases would offset costs of larger-scale