in retrospect, we know from chinchilla that gpt3 allocated its compute too much to parameters as opposed to training tokens. so it’s not surprising that models since then are smaller. model size is a less fundamental measure of model cost than pretraining compute. from here on i’m going to assume that whenever you say size you meant to say compute.
obviously it is possible to train better models using the same amount of compute. one way to see this is that it is definitely possible to train worse models with the same compute, and it is implausible that the current model production methodology is the optimal one.
it is unknown how much compute the latest models were trained with, and therefore what compute efficiency win they obtain over gpt4. it is unknown how much more effective compute gpt4 used than gpt3. we can’t really make strong assumptions using public information about what kinds of compute efficiency improvements have been discovered by various labs at different points in time. therefore, we can’t really make any strong conclusions about whether the current models are not that much better than gpt4 because of (a) a shortage of compute, (b) a shortage of compute efficiency improvements, or (c) a diminishing return of capability wrt effective compute.
in retrospect, we know from chinchilla that gpt3 allocated its compute too much to parameters as opposed to training tokens. so it’s not surprising that models since then are smaller. model size is a less fundamental measure of model cost than pretraining compute. from here on i’m going to assume that whenever you say size you meant to say compute.
obviously it is possible to train better models using the same amount of compute. one way to see this is that it is definitely possible to train worse models with the same compute, and it is implausible that the current model production methodology is the optimal one.
it is unknown how much compute the latest models were trained with, and therefore what compute efficiency win they obtain over gpt4. it is unknown how much more effective compute gpt4 used than gpt3. we can’t really make strong assumptions using public information about what kinds of compute efficiency improvements have been discovered by various labs at different points in time. therefore, we can’t really make any strong conclusions about whether the current models are not that much better than gpt4 because of (a) a shortage of compute, (b) a shortage of compute efficiency improvements, or (c) a diminishing return of capability wrt effective compute.