3min chapter

Towards Data Science cover image

121. Alexei Baevski - data2vec and the future of multimodal learning

Towards Data Science

CHAPTER

Do We Need to Limit Our Interpretability to Theoretical Models?

When we have these systems that are multimotile in that way, a handling many different kinds of input data, it kind of seems like it might introduce challenges from an interpretability standpoint. Am at what point do we lose the ability to even theoreticallyk interpret what's going on in these systems? I think trying to understand exactly what each icular kind of modal inside this network is doing, i i think it's useful, but i Think it's not necessary. And i think you can do the same thing with the current mural network base models as well. It's very difficult to do as muc yet.

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