Dyad X Machina: bringing emotion into machine learning (TensorFlow Meets)
Dyad X Machina is a research partnership that combines affective neuroscience and deep learning. In this episode, Laurence meets with the co-founder, Haohan Wang, who explains Dyad’s mission as bringing emotion into machine learning. Haohan and her partner Christian created a course — Applied Deep Learning with TensorFlow and Google Cloud AI — that is the synthesis of their learning. It covers everything from building your first deep learning model to taking it all the way to deployment. Watch to learn more about the intersection of deep learning and affective computing and Haohan’s four P’s of learning. Leave your comments below and stay tuned for Dyad X Machina’s upcoming course on effective computing and deep learning with TensorFlow!
Learn more → https://dyadxmachina.com
Applied Deep Learning with TensorFlow course → http://bit.ly/2nNeypf
4 P’s on the Road to Becoming a Deep Learning Researcher → http://bit.ly/2wa1Ggv
TensorFlow Meets playlist → http://bit.ly/2lbyLDK
Subscribe to the TensorFlow channel → http://bit.ly/TensorFlow1
Видео Dyad X Machina: bringing emotion into machine learning (TensorFlow Meets) канала TensorFlow
Learn more → https://dyadxmachina.com
Applied Deep Learning with TensorFlow course → http://bit.ly/2nNeypf
4 P’s on the Road to Becoming a Deep Learning Researcher → http://bit.ly/2wa1Ggv
TensorFlow Meets playlist → http://bit.ly/2lbyLDK
Subscribe to the TensorFlow channel → http://bit.ly/TensorFlow1
Видео Dyad X Machina: bringing emotion into machine learning (TensorFlow Meets) канала TensorFlow
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