Intro to Feature Engineering with TensorFlow - Machine Learning Recipes #9
Hey everyone! Here’s an intro to techniques you can use to represent your features - including Bucketing, Crossing, Hashing, and Embedding - and utilities TensorFlow provides to help. Also included is a walkthrough of using TensorFlow Estimators to classify structured data.
Links from the video:
Code - https://goo.gl/K9dVqv
Facets: https://goo.gl/Dfpb7W
TensorFlow Embedding Projector: https://goo.gl/2SxrYK
You can find Josh on Twitter: https://twitter.com/random_forests
See Josh as a guest speaker in Week 2 of the openSAP course: https://goo.gl/UGGcX7
Thanks, and have fun!
Check out more Machine Learning Recipes here: https://goo.gl/KewA03
Subscribe to the Google Developers channel: http://goo.gl/mQyv5L
Видео Intro to Feature Engineering with TensorFlow - Machine Learning Recipes #9 канала Google Developers
Links from the video:
Code - https://goo.gl/K9dVqv
Facets: https://goo.gl/Dfpb7W
TensorFlow Embedding Projector: https://goo.gl/2SxrYK
You can find Josh on Twitter: https://twitter.com/random_forests
See Josh as a guest speaker in Week 2 of the openSAP course: https://goo.gl/UGGcX7
Thanks, and have fun!
Check out more Machine Learning Recipes here: https://goo.gl/KewA03
Subscribe to the Google Developers channel: http://goo.gl/mQyv5L
Видео Intro to Feature Engineering with TensorFlow - Machine Learning Recipes #9 канала Google Developers
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