关于“Advanced Visualizations with TensorFlow Data Validation”的评价
8640 条评价
Muhammad I. · 已于 over 2 years前审核
Siddhesh N. · 已于 over 2 years前审核
Dave S. · 已于 over 2 years前审核
kishore k. · 已于 over 2 years前审核
done
Kishore K. · 已于 over 2 years前审核
Rupesh P. · 已于 over 2 years前审核
julien P. · 已于 over 2 years前审核
Aljon P. · 已于 over 2 years前审核
Awesome!
Luis Ángel M. · 已于 over 2 years前审核
Manuel P. · 已于 over 2 years前审核
I had to complete the lab locally due to the course being out of date
Matthew V. · 已于 over 2 years前审核
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Fahad A. · 已于 over 2 years前审核
Pritam B. · 已于 over 2 years前审核
great
Snehal C. · 已于 over 2 years前审核
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Xiaofeng X. · 已于 over 2 years前审核
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Srikeerti V. · 已于 over 2 years前审核
Omar E. · 已于 over 2 years前审核
Laszlo S. · 已于 over 2 years前审核
This comment in the notebook is not consistent with the "serving data": "We also have an INT value in our trip seconds, where our schema expected a FLOAT. By making us aware of that difference, TFDV helps uncover inconsistencies in the way the data is generated for training and serving. It's very easy to be unaware of problems like that until model performance suffers, sometimes catastrophically. It may or may not be a significant issue, but in any case this should be cause for further investigation. In this case, we can safely convert INT values to FLOATs, so we want to tell TFDV to use our schema to infer the type. Let's do that now." Actually no anomly is detected for "trip seconds" feature.
Giovanna S. · 已于 over 2 years前审核
Abdul Q. · 已于 over 2 years前审核
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