Serverless Data Processing with Dataflow - Writing an ETL Pipeline using Apache Beam and Dataflow (Python) recensioni
11480 recensioni
Issue with the project id. There is no parent organization to select.
Vanitha H. · Recensione inserita 5 giorni fa
médiocre
Kasraoui W. · Recensione inserita 5 giorni fa
Igor d. · Recensione inserita 6 giorni fa
Ana N. · Recensione inserita 6 giorni fa
having error on Run your pipeline task, even using the solution code provided in the lab. Traceback (most recent call last): File "/home/jupyter/training-data-analyst/quests/dataflow_python/1_Basic_ETL/lab/my_pipeline.py", line 108, in <module> run() File "/home/jupyter/training-data-analyst/quests/dataflow_python/1_Basic_ETL/lab/my_pipeline.py", line 92, in run | 'ReadFromGCS' >> beam.io.ReadFromText(input) File "/home/jupyter/training-data-analyst/quests/dataflow_python/1_Basic_ETL/lab/df-env/lib/python3.10/site-packages/apache_beam/io/textio.py", line 808, in __init__ self._source = self._source_class( File "/home/jupyter/training-data-analyst/quests/dataflow_python/1_Basic_ETL/lab/df-env/lib/python3.10/site-packages/apache_beam/io/textio.py", line 144, in __init__ super().__init__( File "/home/jupyter/training-data-analyst/quests/dataflow_python/1_Basic_ETL/lab/df-env/lib/python3.10/site-packages/apache_beam/io/filebasedsource.py", line 127, in __init__ self._validate() File "/home/jupyter/training-data-analyst/quests/dataflow_python/1_Basic_ETL/lab/df-env/lib/python3.10/site-packages/apache_beam/options/value_provider.py", line 193, in _f return fnc(self, *args, **kwargs) File "/home/jupyter/training-data-analyst/quests/dataflow_python/1_Basic_ETL/lab/df-env/lib/python3.10/site-packages/apache_beam/io/filebasedsource.py", line 190, in _validate match_result = FileSystems.match([pattern], limits=[1])[0] File "/home/jupyter/training-data-analyst/quests/dataflow_python/1_Basic_ETL/lab/df-env/lib/python3.10/site-packages/apache_beam/io/filesystems.py", line 240, in match return filesystem.match(patterns, limits) File "/home/jupyter/training-data-analyst/quests/dataflow_python/1_Basic_ETL/lab/df-env/lib/python3.10/site-packages/apache_beam/io/filesystem.py", line 779, in match raise BeamIOError("Match operation failed", exceptions) apache_beam.io.filesystem.BeamIOError: Match operation failed with exceptions {'gs://qwiklabs-gcp-02-c763640af21b/events.json': RefreshError(TransportError("Failed to retrieve https://metadata.google.internal/computeMetadata/v1/instance/service-accounts/default/?recursive=true from the Google Compute Engine metadata service. Compute Engine Metadata server unavailable. Last exception: HTTPSConnectionPool(host='metadata.google.internal', port=443): Max retries exceeded with url: /computeMetadata/v1/instance/service-accounts/default/?recursive=true (Caused by SSLError(SSLCertVerificationError(1, '[SSL: CERTIFICATE_VERIFY_FAILED] certificate verify failed: unable to get local issuer certificate (_ssl.c:1017)')))"))}
yumeng y. · Recensione inserita 6 giorni fa
proper folders were not cloned for all the tasks
Shaik S. · Recensione inserita 6 giorni fa
Sriyansh S. · Recensione inserita 6 giorni fa
Sriyansh S. · Recensione inserita 7 giorni fa
Luis Antonio C. · Recensione inserita 7 giorni fa
Jyoti S. · Recensione inserita 7 giorni fa
Luis Antonio C. · Recensione inserita 7 giorni fa
Luis Antonio C. · Recensione inserita 7 giorni fa
Could not get the pipeline to run due to multiple errors. Even the solution would not run. Very disappointing to be kicked out of the lab and lose progress before being able to resolve / troubleshoot. Errors were around: [SSL: CERTIFICATE_VERIFY_FAILED] certificate verify failed: unable to get local issuer certificate (_ssl.c:1017)'))': /computeMetadata/v1/instance/service-accounts/default/?recursive=true and Compute Engine Medadata server unavailable.
Mariette D. · Recensione inserita 8 giorni fa
too complex, needs more direction on what to do
Oscar O. · Recensione inserita 9 giorni fa
Daniela L. · Recensione inserita 9 giorni fa
problema con la infrectuctura (falta de espacio)
Gabriela C. · Recensione inserita 9 giorni fa
Luis Antonio C. · Recensione inserita 10 giorni fa
Could not complete Part1 Task 6 run the pipeline (using the provided Solution code) due to the following error: raise BeamIOError("Match operation failed", exceptions) apache_beam.io.filesystem.BeamIOError: Match operation failed with exceptions {'gs://qwiklabs-gcp-00-f5855126f119/events.json': RefreshError(TransportError("Failed to retrieve https://metadata.google.internal/computeMetadata/v1/instance/service-accounts/default/?recursive=true from the Google Compute Engine metadata service. Compute Engine Metadata server unavailable. Last exception: HTTPSConnectionPool(host='metadata.google.internal', port=443): Max retries exceeded with url: /computeMetadata/v1/instance/service-accounts/default/?recursive=true (Caused by SSLError(SSLCertVerificationError(1, '[SSL: CERTIFICATE_VERIFY_FAILED] certificate verify failed: unable to get local issuer certificate (_ssl.c:1017)')))"))}
Lingmin M. · Recensione inserita 10 giorni fa
Qwiklabs Dataflow Lab Fix Summary Problems SSL/Metadata auth failure — google-auth 2.44.0+ broke the default HTTP transport, causing CERTIFICATE_VERIFY_FAILED errors when the notebook tried to reach GCP's metadata server Zone resource exhaustion — n1-standard-1 (Dataflow's default) was completely unavailable across all us-central1 zones for Qwiklabs accounts Pipeline exits early — p.run() doesn't wait for completion, causing silent failures argparse rejects extra flags — parse_args() blocks passing extra Beam arguments like --worker_machine_type Fixes 1. Fix SSL auth error bashexport GCE_METADATA_MTLS_MODE=none 2. Use e2-standard-2 machine type Add to your run command: bash--worker_machine_type=e2-standard-2 3. Fix pipeline code In my_pipeline.py: python# Change this: opts = parser.parse_args() options = PipelineOptions() p.run() # To this: opts, pipeline_args = parser.parse_known_args() options = PipelineOptions(pipeline_args) p.run().wait_until_finish() 4. Full working command bashcd $BASE_DIR export PROJECT_ID=$(gcloud config get-value project) export GCE_METADATA_MTLS_MODE=none python3 my_pipeline.py \ --project=${PROJECT_ID} \ --region=us-central1 \ --stagingLocation=gs://$PROJECT_ID/staging/ \ --tempLocation=gs://$PROJECT_ID/temp/ \ --runner=DataflowRunner \ --worker_machine_type=e2-standard-2 5. For the Dataflow Template UI Under Optional Parameters → uncheck "Use default machine type" → Series: E2 → Machine type: e2-standard-2
David O. · Recensione inserita 10 giorni fa
console did not open
Nihal Hussain M. · Recensione inserita 10 giorni fa
Mara Malina F. · Recensione inserita 10 giorni fa
VERY BAD>> I am unable to run my jobs are with DataflowRunner as I am always getting resources contraints errors.. job is not able to spn up us-cerntral1 region.. I am getting same error in all labs which requires to submit jobs on dataflow. I am able to run with DirectRunner. Please help in this as I have spent too many hours but end up getting same error again and again
Mallikarjunarao G. · Recensione inserita 11 giorni fa
couldnt finisih it lots of errors in the step by step or resources available
Sebastián P. · Recensione inserita 11 giorni fa
couldn't finish because dataflow job could get the resources to actually run. Stupid and a waste of my time. still can't run due to limited resources
Tyler W. · Recensione inserita 11 giorni fa
couldn't finish because dataflow job could get the resources to actually run. Stupid and a waste of my time.
Tyler W. · Recensione inserita 11 giorni fa
Non garantiamo che le recensioni pubblicate provengano da consumatori che hanno acquistato o utilizzato i prodotti. Le recensioni non sono verificate da Google.