The strength of embeddings is very much primarily limited by the input data, by your training data. So if you had these models that were only good for a particular task, you'd want to apply those embeddings for that same task as well. And then as far as the form that the vector representation takes for a given input, are there any considerations that need to be made about how that vector is structured?

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