Opiniones sobre Aprendizaje automático con TensorFlow en Vertex AI
Cargando…
No se encontraron resultados.

    Opiniones sobre Aprendizaje automático con TensorFlow en Vertex AI

    13794 opiniones

    Difficult to follow. Endpoint creation failed

    Partha D. · Se revisó hace más de 1 año

    Yeoh W. · Se revisó hace más de 1 año

    Gonzalo S. · Se revisó hace más de 1 año

    Lakshmi N. · Se revisó hace más de 1 año

    Need more explaination on code. Correct typo: At the beggining, we are using 5millions examples, and the comments say that it is a very low number.

    Laura B. · Se revisó hace más de 1 año

    vahid a. · Se revisó hace más de 1 año

    Documentation should be updated.

    Swapnil A. · Se revisó hace más de 1 año

    Paul C. · Se revisó hace más de 1 año

    Jyoti P. · Se revisó hace más de 1 año

    fixed

    Suppadate T. · Se revisó hace más de 1 año

    problem in creating notebook

    Frendy C. · Se revisó hace más de 1 año

    iVan D. · Se revisó hace más de 1 año

    Some complicated to follow

    Jeongho J. · Se revisó hace más de 1 año

    Its broken! It doesnt work!

    Justin H. · Se revisó hace más de 1 año

    could only get a score of 80% as task 6 kept failing due to error listed below: Google Cloud Self-Paced Labs Machine Learning with TensorFlow in Vertex AI - GSP273 Task 6 gs://qwiklabs-gcp-00-905ba1094efe-dsongcp/ch9/trained_model/export/flights_20230726-210005/ Using endpoint [https://us-central1-aiplatform.googleapis.com/] Endpoint for flights_xai-20230726-215121 already exists Using endpoint [https://us-central1-aiplatform.googleapis.com/] ENDPOINT_ID=6499675026667601920 Using endpoint [https://us-central1-aiplatform.googleapis.com/] Using endpoint [https://us-central1-aiplatform.googleapis.com/] Waiting for operation [7021920166275448832]... ..................................................................................................................................................................................................................................................................................................................................................................................................................................................................................................................................................................................................................................................................................................................................................................................................................................................................................................................................................................................................................................................................................failed. ERROR: (gcloud.beta.ai.models.upload) Error occurred in Explanation preprocessing. <class 'ValueError'> NodeDef mentions attr 'Tsegmentids' not in Op<name=SparseSegmentMean; signature=data:T, indices:Tidx, segment_ids:int32 -> output:T; attr=T:type,allowed=[DT_FLOAT, DT_DOUBLE]; attr=Tidx:type,default=DT_INT32,allowed=[DT_INT32, DT_INT64]>; NodeDef: {{node model_3/deep_inputs/arr_airport_lat_bucketized_X_arr_airport_lon_bucketized_X_dep_airport_lat_bucketized_X_dep_airport_lon_bucketized_embedding/arr_airport_lat_bucketized_X_arr_airport_lon_bucketized_X_dep_airport_lat_bucketized_X_dep_airport_lon_bucketized_embedding_weights/embedding_lookup_sparse}}. (Check whether your GraphDef-interpreting binary is up to date with your GraphDef-generating binary.). Using endpoint [https://us-central1-aiplatform.googleapis.com/] MODEL_ID= Using endpoint [https://us-central1-aiplatform.googleapis.com/] ERROR: (gcloud.beta.ai.endpoints.deploy-model) could not parse resource [] --------------------------------------------------------------------------- CalledProcessError Traceback (most recent call last) Cell In[42], line 1 ----> 1 get_ipython().run_cell_magic('bash', '', '# note TF_VERSION set in 1st cell, but ENDPOINT_NAME is being changed\n# TF_VERSION=2-6\nENDPOINT_NAME=flights_xai\nTIMESTAMP=$(date +%Y%m%d-%H%M%S)\nMODEL_NAME=${ENDPOINT_NAME}-${TIMESTAMP}\nEXPORT_PATH=$(gsutil ls ${OUTDIR}/export | tail -1)\necho $EXPORT_PATH\n# create the model endpoint for deploying the model\nif [[ $(gcloud beta ai endpoints list --region=$REGION \\\n --format=\'value(DISPLAY_NAME)\' --filter=display_name=${ENDPOINT_NAME}) ]]; then\n echo "Endpoint for $MODEL_NAME already exists"\nelse\n # create model endpoint\n echo "Creating Endpoint for $MODEL_NAME"\n gcloud beta ai endpoints create --region=${REGION} --display-name=${ENDPOINT_NAME}\nfi\nENDPOINT_ID=$(gcloud beta ai endpoints list --region=$REGION \\\n --format=\'value(ENDPOINT_ID)\' --filter=display_name=${ENDPOINT_NAME})\necho "ENDPOINT_ID=$ENDPOINT_ID"\n# delete any existing models with this name\nfor MODEL_ID in $(gcloud beta ai models list --region=$REGION --format=\'value(MODEL_ID)\' --filter=display_name=${MODEL_NAME}); do\n echo "Deleting existing $MODEL_NAME ... $MODEL_ID "\n gcloud ai models delete --region=$REGION $MODEL_ID\ndone\n# upload the model using the parameters docker conatiner image, artifact URI, explanation method, \n# explanation path count and explanation metadata JSON file `explanation-metadata.json`. \n# Here, you keep number of feature permutations to `10` when approximating the Shapley values for explanation.\ngcloud beta ai models upload --region=$REGION --display-name=$MODEL_NAME \\\n --container-image-uri=us-docker.pkg.dev/vertex-ai/prediction/tf2-cpu.${TF_VERSION}:latest \\\n --artifact-uri=$EXPORT_PATH \\\n --explanation-method=sampled-shapley --explanation-path-count=10 --explanation-metadata-file=explanation-metadata.json\nMODEL_ID=$(gcloud beta ai models list --region=$REGION --format=\'value(MODEL_ID)\' --filter=display_name=${MODEL_NAME})\necho "MODEL_ID=$MODEL_ID"\n# deploy the model to the endpoint\ngcloud beta ai endpoints deploy-model $ENDPOINT_ID \\\n --region=$REGION \\\n --model=$MODEL_ID \\\n --display-name=$MODEL_NAME \\\n --machine-type=n1-standard-2 \\\n --min-replica-count=1 \\\n --max-replica-count=1 \\\n --traffic-split=0=100\n') File /opt/conda/lib/python3.10/site-packages/IPython/core/interactiveshell.py:2478, in InteractiveShell.run_cell_magic(self, magic_name, line, cell) 2476 with self.builtin_trap: 2477 args = (magic_arg_s, cell) -> 2478 result = fn(*args, **kwargs) 2480 # The code below prevents the output from being displayed 2481 # when using magics with decodator @output_can_be_silenced 2482 # when the last Python token in the expression is a ';'. 2483 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'# note TF_VERSION set in 1st cell, but ENDPOINT_NAME is being changed\n# TF_VERSION=2-6\nENDPOINT_NAME=flights_xai\nTIMESTAMP=$(date +%Y%m%d-%H%M%S)\nMODEL_NAME=${ENDPOINT_NAME}-${TIMESTAMP}\nEXPORT_PATH=$(gsutil ls ${OUTDIR}/export | tail -1)\necho $EXPORT_PATH\n# create the model endpoint for deploying the model\nif [[ $(gcloud beta ai endpoints list --region=$REGION \\\n --format=\'value(DISPLAY_NAME)\' --filter=display_name=${ENDPOINT_NAME}) ]]; then\n echo "Endpoint for $MODEL_NAME already exists"\nelse\n # create model endpoint\n echo "Creating Endpoint for $MODEL_NAME"\n gcloud beta ai endpoints create --region=${REGION} --display-name=${ENDPOINT_NAME}\nfi\nENDPOINT_ID=$(gcloud beta ai endpoints list --region=$REGION \\\n --format=\'value(ENDPOINT_ID)\' --filter=display_name=${ENDPOINT_NAME})\necho "ENDPOINT_ID=$ENDPOINT_ID"\n# delete any existing models with this name\nfor MODEL_ID in $(gcloud beta ai models list --region=$REGION --format=\'value(MODEL_ID)\' --filter=display_name=${MODEL_NAME}); do\n echo "Deleting existing $MODEL_NAME ... $MODEL_ID "\n gcloud ai models delete --region=$REGION $MODEL_ID\ndone\n# upload the model using the parameters docker conatiner image, artifact URI, explanation method, \n# explanation path count and explanation metadata JSON file `explanation-metadata.json`. \n# Here, you keep number of feature permutations to `10` when approximating the Shapley values for explanation.\ngcloud beta ai models upload --region=$REGION --display-name=$MODEL_NAME \\\n --container-image-uri=us-docker.pkg.dev/vertex-ai/prediction/tf2-cpu.${TF_VERSION}:latest \\\n --artifact-uri=$EXPORT_PATH \\\n --explanation-method=sampled-shapley --explanation-path-count=10 --explanation-metadata-file=explanation-metadata.json\nMODEL_ID=$(gcloud beta ai models list --region=$REGION --format=\'value(MODEL_ID)\' --filter=display_name=${MODEL_NAME})\necho "MODEL_ID=$MODEL_ID"\n# deploy the model to the endpoint\ngcloud beta ai endpoints deploy-model $ENDPOINT_ID \\\n --region=$REGION \\\n --model=$MODEL_ID \\\n --display-name=$MODEL_NAME \\\n --machine-type=n1-standard-2 \\\n --min-replica-count=1 \\\n --max-replica-count=1 \\\n --traffic-split=0=100\n'' returned non-zero exit status 1.

    Paul C. · Se revisó hace más de 1 año

    highly

    Anna A. · Se revisó hace más de 1 año

    Anna A. · Se revisó hace más de 1 año

    Felype d. · Se revisó hace más de 1 año

    Notebook instance not creating in us-central1 region due to resources not being available in any zone in that region.

    Sanjay S. · Se revisó hace más de 1 año

    can't create notebook

    Suppadate T. · Se revisó hace más de 1 año

    Could not create the notebook. The directions are outdated.

    Jeongho J. · Se revisó hace más de 1 año

    Could not actually instantiate a notebook from the coursera instructions. The error provided was no help.

    Pat B. · Se revisó hace más de 1 año

    Resource issues

    Gábor K. · Se revisó hace más de 1 año

    Santos B. · Se revisó hace más de 1 año

    David G. · Se revisó hace más de 1 año

    No garantizamos que las opiniones publicadas provengan de consumidores que hayan comprado o utilizado los productos. Google no verifica las opiniones.