Training at Scale with Vertex AI Training Service Reviews
9927 reviews
Seitkazin B. · Reviewed 2 yıldan fazla ago
Алихан С. · Reviewed 2 yıldan fazla ago
Karthick s. · Reviewed 2 yıldan fazla ago
Matti M. · Reviewed 2 yıldan fazla ago
URK21CO3026 S. · Reviewed 2 yıldan fazla ago
Gulbakhram K. · Reviewed 2 yıldan fazla ago
Mochammad Zava A. · Reviewed 2 yıldan fazla ago
Азат И. · Reviewed 2 yıldan fazla ago
直也 小. · Reviewed 2 yıldan fazla ago
too much showing, and so low explaining, i mean i know what the results are going to be, but how and why?... we need more of an explanation than just showing what is happening.
Sebastián C. · Reviewed 2 yıldan fazla ago
Medeu Z. · Reviewed 2 yıldan fazla ago
BucketNotFoundException: 404 gs://qwiklabs-gcp-00-d4c1bc16f963 bucket does not exist. --------------------------------------------------------------------------- CalledProcessError Traceback (most recent call last) Cell In[24], line 1 ----> 1 get_ipython().run_cell_magic('bash', '', '# TODO 1 and TODO 2\n\necho "Deleting current contents of $OUTDIR"\ngsutil -m -q rm -rf $OUTDIR\n\necho "Extracting training data to $OUTDIR"\nbq --location=US extract \\\n --destination_format CSV \\\n --field_delimiter "," --noprint_header \\\n taxifare.feateng_training_data \\\n $OUTDIR/taxi-train-*.csv\n\necho "Extracting validation data to $OUTDIR"\nbq --location=US extract \\\n --destination_format CSV \\\n --field_delimiter "," --noprint_header \\\n taxifare.feateng_valid_data \\\n $OUTDIR/taxi-valid-*.csv\n\ngsutil ls -l $OUTDIR\n') File /opt/conda/lib/python3.10/site-packages/IPython/core/interactiveshell.py:2515, in InteractiveShell.run_cell_magic(self, magic_name, line, cell) 2513 with self.builtin_trap: 2514 args = (magic_arg_s, cell) -> 2515 result = fn(*args, **kwargs) 2517 # The code below prevents the output from being displayed 2518 # when using magics with decorator @output_can_be_silenced 2519 # when the last Python token in the expression is a ';'. 2520 if getattr(fn, magic.MAGIC_OUTPUT_CAN_BE_SILENCED, False): File /opt/conda/lib/python3.10/site-packages/IPython/core/magics/script.py:154, in ScriptMagics._make_script_magic.<locals>.named_script_magic(line, cell) 152 else: 153 line = script --> 154 return self.shebang(line, cell) File /opt/conda/lib/python3.10/site-packages/IPython/core/magics/script.py:314, in ScriptMagics.shebang(self, line, cell) 309 if args.raise_error and p.returncode != 0: 310 # If we get here and p.returncode is still None, we must have 311 # killed it but not yet seen its return code. We don't wait for it, 312 # in case it's stuck in uninterruptible sleep. -9 = SIGKILL 313 rc = p.returncode or -9 --> 314 raise CalledProcessError(rc, cell) CalledProcessError: Command 'b'# TODO 1 and TODO 2\n\necho "Deleting current contents of $OUTDIR"\ngsutil -m -q rm -rf $OUTDIR\n\necho "Extracting training data to $OUTDIR"\nbq --location=US extract \\\n --destination_format CSV \\\n --field_delimiter "," --noprint_header \\\n taxifare.feateng_training_data \\\n $OUTDIR/taxi-train-*.csv\n\necho "Extracting validation data to $OUTDIR"\nbq --location=US extract \\\n --destination_format CSV \\\n --field_delimiter "," --noprint_header \\\n taxifare.feateng_valid_data \\\n $OUTDIR/taxi-valid-*.csv\n\ngsutil ls -l $OUTDIR\n'' returned non-zero exit status 1.
Leonardo L. · Reviewed 2 yıldan fazla ago
Anwesha R. · Reviewed 2 yıldan fazla ago
Gowthaman K. · Reviewed 2 yıldan fazla ago
Craig P. · Reviewed 2 yıldan fazla ago
Danzler A. · Reviewed 2 yıldan fazla ago
This is an excellent lab, the best one in the entire course. It would be great if other labs were of this quality. In the other labs of the course, the main thing that was missing for me is the clear and intuitive explanation of doing feature encoding and feature engineering in TF. The flow in those labs is very abstract and unintuitive, and quite confusing. A clear explanation of how numeric and categorical columns get converted into dense vectors (embeddings) would be super useful, especially if you focus on a simple example from scratch (let's say 5 features and 1 label) and look under the hood throughout the process and just make it more clear. Also, using pre-processing layers was quite unclear as well. Overall, I am very excited about these labs and ML courses on our GCP in general, definitely looking forward to more content in the future!
Denis C. · Reviewed 2 yıldan fazla ago
Togzhan B. · Reviewed 2 yıldan fazla ago
Eric P. · Reviewed 2 yıldan fazla ago
Yasser A. · Reviewed 2 yıldan fazla ago
Tongqing Q. · Reviewed 2 yıldan fazla ago
Will B. · Reviewed 2 yıldan fazla ago
Jefferson P. B. · Reviewed 2 yıldan fazla ago
Marián Ž. · Reviewed 2 yıldan fazla ago
Мадина А. · Reviewed 2 yıldan fazla ago
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