Yea I am aware of meta hyperparameter approach for ML, except they only focus on accuracy instead of also including train/prediction times in to the equation :) That's what I was referring to! (you can save A LOT of compute and zoom in on things that work if you can weed out slow / badly performing algorithms as part of meta learning hyperparameters).
To make it extra clear: by doing a lot of compute on different datasets and not only recording the accuracy but also time it took, and then by including that as dimension it will even give better results.