Training models with billions of parameters can be impractical due to resource limitations, both financially and with hardware. Increasing the size of the model in proportion to its auxiliary components, like sparse auto encoders, can lead to inefficiencies and degraded performance. Even slight improvements in performance may require significant investment, resulting in an inefficient use of resources. The success of large language models lies in their ability to compress vast amounts of data into a manageable number of parameters, achieving effective results without oversizing the model.

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