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Title: L19.4.1 Using Attention Without the RNN -- A Basic Form of Self-Attention

Playlist:Intro to Deep Learning and Generative Models

Author:Sebastian Raschka

Views: 1027.0

Rating: None

Level: advanced

Length: 12724.0

Type: course

Topics: word words text language sentence sequence attention embedding english token

Cluster: word words sentence text vectors right sequence vector sentences model






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