Questions tagged [google-cloud-ml]

Google Cloud ML Engine is a managed service that offers training and/or prediction services using Machine Learning models.

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cloud online prediction retruns request payload size exceeds the limit: 1572864 bytes

I trained an image classifier with tensorflow and deployed it to google cloud and now I'm trying to make online predictions using the following code : service = googleapiclient.discovery.build('...
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4 views

Create Version failed. Model validation failed: Outer dimension for outputs must be unknown, outer dimension of 'Const_1:0' is 5

I trained an image classifier with tf.keras and exported the model after the training is done to serve it in the cloud and make online predictions. I served my model on a localhost using : ...
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1answer
32 views

Tensorflow object detection train_config file error

So I'm trying to retrain a fast_rcnn object detection model, with just one class, which I've attempted to run both locally (on a VM) and through ML engine. I keep running into the same error in ...
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16 views

How does the google cloud ml engine predict function work?

How does the google cloud ml engine predict function work? Does it apply the same data transformations on the test data point as it does on the training data set?
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28 views

Submitting training job to Cloud ML… Error [on hold]

While trying to submit my first job on google cloud from RStudio, I get this error: Submitting training job to Cloud ML... Error: Unable to retrieve package records for the following packages: - "...
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1answer
25 views

Load data from Google Datastore to Google Cloud ML Engine

I was trying to run a ML Engine training job reading data from Cloud Datastore, but a got a permission error: line 434, in _end_unary_response_blocking raise _Rendezvous(state, None, None, deadline) ...
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36 views

Problems with pytorch BERT on Google Cloud ml-engine

I am trying to run Hugging Face BERT on Google Cloud ML, but am having trouble loading the model Here is my Python code: self.bert_model = "bert-large-uncased" self.tokenizer = BertTokenizer....
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2answers
33 views

google ml-engine cloud storage as a file

I am working in Python with Google Cloud ML-Engine. The documentation I have found indicates that data storage should be done with Buckets and Blobs https://cloud.google.com/ml-engine/docs/...
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28 views

Google Cloud Machine Learning Engine v1 API is not working with filter jobId:rnn*

I started using the Machine Learning Engine API for terminal and python and I discovered some discrepancies between the bash API and python API: $ gcloud ml-engine jobs list --filter='jobId:eval_*' ...
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1answer
24 views

training google cloud ml engine actually in the cloud- clarification on the approach

I am trying to implement cloud based predictions for an sklearn model using google cloud ML engine. I am able to do this however it seems that even when using the REST API, it always references a ...
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32 views
+50

Including BEAM preprocessing graph in Keras models at serving

Short Question: Since Tensorflow is moving towards Keras and away from Estimators, how can we incorporate our preprocessing pipelines e.g. using tf.Transform and build_serving_input_fn() (which are ...
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8 views

CloudML does not log epoch progress (Batch stats missing)

Why doesn't cloud ML log epoch progress? The progress appears only once the epoch is completed fully as so: However, while the epoch is running, we get: Now the above was just a test, the real ...
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1answer
63 views

Setting an active gcloud account in docker container

Currently i'm setting up a Kubeflow Pipeline on GKE. The goal is to start a trainingjob on the ML Engine and later on serve it on GKE. The trainingjob gets launched in a Docker container. (Every step ...
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31 views

Layer conv2d_1 was called with an input that isn't a symbolic tensor / Keras / Cloudml / R

I am using the R interface to Keras version 2.14, and version 1.5 for Tensorflow. When I run the following code at my local machine, it runs without any issues. When I run it on cloudml, I get the ...
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2answers
73 views

TensorFlow Serving for images as base64-encoded strings on Cloud ML Engine

How to implement TensorFlow Serving Input function for images as base64-encoded strings and get prediction on Cloud ML Engine I am planning to deploy the model on Cloud Machine Learning (ML) Engine ...
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13 views

cloud prediction and local prediction doesn't return the same result

I trained an image classifier with tensorflow and deployed it in the cloud. When i perform a prediction locally i get a result and when i perform a batch prediction using my deployed model i get a ...
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1answer
18 views

“Confidence” field missing in the paid version of the cloud vision API's JSON response for OCR

The JSON response from the free version of Vision API (https://cloud.google.com/vision/docs/drag-and-drop) has the field named "Confidence" which shows the recognition confidence of the model on the ...
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20 views

Prediction fails in Google Cloud with tensorflow model

I trained an image classifier following this [tutorial from tensorflow].(https://www.tensorflow.org/hub/tutorials/image_retraining) I used this snippet to generate my SavedModel after the training ...
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34 views

Generate SavedModel from Tensorflow model to serve it on Google Cloud ML

I used TF Hub to retrain a model for image classification. Now I would like to serve it in the cloud. For that i need a SavedModel. The retrain.py script from TF Hub uses tf.saved_model.simple_save to ...
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30 views

Model Deployment On GCP Without Cloud Storage Bucket

I have developed a Tensorflow based machine learning model on local Machine. And I want to deploy it in Google Cloud Platform (Cloud ML Engine) for predictions. The model reads input data from Google ...
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36 views

ML Engine Batch Prediction running on wrong python version

So I have a tensorflow model in python 3.5 registered with the ML engine and I want to run a batch prediction job using it. My API request body looks like: { "versionName": "XXXXX/v8_0QSZ", "...
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23 views

Run Unit tests in MLengine ( returns unrecognized arguments: --job-dir)

Im constantly using [ml-engine][1] as my production environment, and i'm now looking to run within it unit tests using the unittest package. Here is my running script (run_tests.py): import ...
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1answer
38 views

Add labels to estimator.export_saved_model when exporting a keras model for google cloud

I am trying to export a hdf5 model created by Keras training to Google cloud ML Engine. I have everything except the labels after making an online prediction and I would like to have the labels with ...
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1answer
35 views

Using trained keras model in google ml-engine

I am trying to use gcloud ml-engine with tensorflow, more precisely I would like to use an already trained keras model. I managed to do this with a sciktlearn model but this not the same here... ...
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13 views

Cloud ML API: remove version labels via Rest API

I'm using the Rest API of Google Cloud ML and I'd like to update the labels of versions. From the doc, it says it's not possible. But their doc is not always up to date, and their might be ...
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1answer
28 views

Exporting a model to be implemented in mobile app

We tested Cloud AutoML Vision product, the results are amazing 96% accuracy. So what we did so far was: upload labeled dataset, train, evaluate so we have a MODEL. Further we want to Export this ...
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1answer
45 views

Cloud storage upload failure when submitting ml-engine training job

I follow the instructions here: https://github.com/tensorflow/models/blob/master/research/object_detection/g3doc/running_on_cloud.md I have created a bucket for my project and uploaded the following ...
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25 views

How to fix setuptools outdated on google cloud ml-engine job

Training job fails with gcloud ml-engine training job. Solutions tried: Updated setuptools, pip and wheel to latest version on Google cloud sdk shell Removed and reinstalled setuptools, pip and ...
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18 views

Google Cloud ML Engine Hyperparameter Tuning: Any Advantage to Large machine?

I'm using ML Engine to run a hyperparameter tuning job for a Keras / Tensorflow model. I originally had set the machine type to be complex_model_l which is $1.65/hour. However, I'm using a TFRecords ...
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36 views

Google CloudML serving_input_receiver_fn() b64 decode error

I am sending a base64 encoded image via AJAX POST to a model stored in Google CloudML. I am getting an error telling me that my input_fn(): is failing to decode the image and transform it into jpeg. ...
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18 views

Configuring GPU enabled Cloud ML Engine machines (ERROR)

Initially, we received out of memory error. We increased the number of workers but we are facing an issue in configuring the machine in the best possible way. Error Log: { insertId: "1lq2iowfolil38"...
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21 views

Error training object-detection model on Google Cloud ML Engine no module nets

I get the following error when I start training the model on google cloud ml engine: The replica master 0 exited with a non-zero status of 1. Traceback (most recent call last): File "/usr/lib/python3....
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27 views

Split Strings from Tensorflow CSV serving function

I have a processing function for some feature logic which involves string splitting. A working Tensors from a datasets: <tf.Tensor 'arg0:0' shape=(1,) dtype=string> An invalid Tensor from the ...
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37 views

Keras running on GCloud ML Engine with GPU is slower than locally with CPU

I have a Mobilenet build on Keras. Running it locally takes around 290 seconds every step, but when I run on the GCLoud ML Engine it takes over 400 seconds.I put the following line on my code: K....
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1answer
75 views

Deployment of a Tensorflow object detection model and serving predicitions

I have a Tensorflow object detection model deployed on Google cloud platform's ML Engine. I have come across posts suggesting Tensorflow Serving + Docker for better performance. I am new to Tensorflow ...
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2answers
21 views

Scaling of Google Cloud ML Engine with online predictions. How to measure the node utilization?

I have an Inception V3 Model with some input and output modification deployed to the Google Cloud ML Engine for online predictions. During a week or so I had relatively few sparse requests (around 130)...
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1answer
30 views

using cx_oracle in ml-engine results in “Oracle Client library cannot be loaded”

I'm trying to use cx_oracle in a google cloud ml-engine job but i'm not able to find how to make the instant client libraries available. I packaged the task so that the libraries are in the package ...
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1answer
27 views

ML Engine: Package libffi was not found

I'm trying to train a model in ML Engine that uses the cairocffi python module, which has a dependency on something called libffi. In the logs I get the message No package 'libffi' found. Others who'...
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53 views

Why does google ml-engine online predict return a different prediction from local predict?

I have created a scikit-learn pipeline and uploaded a model version to ml-engine by submitting a training job. When I request a local prediction from the model I get a different probability than when ...
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1answer
100 views

Best way to process terabytes of data on gcloud ml-engine with keras

I want to train a model on about 2TB of image data on gcloud storage. I saved the image data as separate tfrecords and tried to use the tensorflow data api following this example https://medium.com/@...
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1answer
40 views

ML Engine: Easiest Way to Get GCS File onto Machine

I'm submitting an ML Engine training job that calls some of my Python code. I'd like to download a specific file of mine from on Google Cloud Storage, for use in my code. What is the best way of ...
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1answer
29 views

Cloud ML-Engine Quota between P100 and K80

The Cloud ML-Engine Quota documentation mentions: Total concurrent number of GPUs: This is the maximum number of GPUs in concurrent use, split per type as follows: Concurrent number of Tesla K80 ...
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1answer
51 views

MLengine 'module' object has no attribute 'estimator'

Running this example on ML engine using Cloud composer but am receiving the following error: AttributeError: 'module' object has no attribute 'estimator' Even though I am importing import ...
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1answer
56 views

Scikit Learn model results in error when calling local predict or creating model version on Google Cloud ml engine

I'm trying to deploy a model to the cloud-ml engine by following the tutorial here (https://cloud.google.com/ml-engine/docs/scikit/quickstart), however when I reach the stage when I'm running the ...
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1answer
25 views

Supplying arguments to MLEngine airflow operator

I have been able to successfully train using the gcloud ml-engine sumbit job CLI. I then copied the "args" value from the console training input of the success job. "args": [ "--output_dir=gs://...
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24 views

Airflow ML Engine Package_URI

What is the package URI used for? Is it mandatory? If so how do I create one? Currently I have my model package into the proper format of: model.py task.py _init_.py
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1answer
40 views

Process online prediction request

When using ml-engine for online prediction we send a request and get the prediction results, that's cool but Request is usually different compared to model input, for example: A categorical variable ...
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0answers
71 views

Google ML prediction : 1 prediction with large dataset vs multiple smaller predictions

I'm trying to design how my system uses Google ML for predictions. I have a largish set of images I need to use for prediction. I can either: send one big dataset to Google ML, and have the model ...
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0answers
82 views

Can't get predictions on ML Engine while local predict works fine

I am having some troubles to make my model working with Google Cloud ML-Engine while it is working fine locally via the following command: gcloud ml-engine local predict --model-dir >/my/model/...
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38 views

About a error of Google Cloud Platform: The requested 54.0 CPUs exceeds the allowed maximum of 20.0

I'm trying to test TPU performance following this article: https://codelabs.developers.google.com/codelabs/tpu-resnet/#0 But at the train job commit step, Cloud Shell display the error below:  ERROR:...