Published Jun 27, 2022
More Language, Less Labeling with Kate Saenko - #580
Kate Saenko delves into reducing AI data labeling biases and costs, enhancing domain generalization, and the burgeoning field of multimodal learning, emphasizing the importance of adaptable AI systems and resource accessibility.

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