关于“Using custom containers with AI Platform Training”的评价

4207 条评价

Anna Elisabetta Z. · 已于 over 3 years前审核

Jerome V. · 已于 over 3 years前审核

Rafael G. · 已于 over 3 years前审核

Manikant J. · 已于 over 3 years前审核

Tony R. · 已于 over 3 years前审核

NameError: name 'df_train' is not defined !bq extract \ --destination_format CSV \ covertype_dataset.training \ $TRAINING_FILE_PATH Waiting on bqjob_r5a514c61aa269f4c_0000018091715755_1 ... (0s) Current status: DONE

Tony R. · 已于 over 3 years前审核

NameError: name 'df_train' is not defined when splitting my train/val data sets it appeared as though the train file was missing, quicklabs accepted the checkpoint for splitting dataset. When I went to convert numerics to float64 "NameError: name 'df_train' is not defined" became the issue

Tony R. · 已于 over 3 years前审核

Fayyaz F. · 已于 over 3 years前审核

ALAN S. · 已于 over 3 years前审核

Kiran R. · 已于 over 3 years前审核

sachin s. · 已于 over 3 years前审核

2 hours was not enough, processes took very long to start or to complete. Checkpoints did not turn to complete even though the task was clearly done and process was executed on the cloud. It took 10-15 minutes until I was able to mark it as done.

Georgios G. · 已于 over 3 years前审核

Renuka H. · 已于 over 3 years前审核

Tondam N. · 已于 over 3 years前审核

sachin s. · 已于 over 3 years前审核

José Luis G. · 已于 over 3 years前审核

TieSheng W. · 已于 over 3 years前审核

Shinichi M. · 已于 over 3 years前审核

Alvin C. · 已于 over 3 years前审核

Very good lab to understand e2e ml project. One drawback is consistency of the lab instruction; e.g. training split takes 80% of sample, but it actually takes 40% according to the query.

Nattacha P. · 已于 over 3 years前审核

This was a good one, but the time was tight. There wasn't much slop with just copy pasting code from the reference notebook. I expect many/most people would run out of time.

Guy M. · 已于 over 3 years前审核

Time is not sufficient

Ruchi A. · 已于 over 3 years前审核

Time is not sufficient

Ruchi A. · 已于 over 3 years前审核

John N. · 已于 over 3 years前审核

John N. · 已于 over 3 years前审核

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