Questions tagged [tensorflow-estimator]

TensorFlow's tf.estimator module is a high-level machine learning API. It makes it easy to create, train and evaluate models in TensorFlow. You can use predefined models to quickly configure common model types, or create your own custom Estimator.

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Clearing devices when using Tensorflow estimator export_savedmodel

I have a custom estimator that is being trained. The model is then saved using: estimator.export_savedmodel() I'm training on a GPU instance, and looking to perform serving/inference on a CPU ...
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1answer
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What are the reasons to use MonitoredTrainingSession vs Estimator in TF

I see many examples with either MonitoredTrainingSession or tf.Estimator as the training framework. However it's not clear why I would use one over the other. Both are configurable with ...
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Should I use basic Tensorflow, Estimator, or Keras [on hold]

I'm doing a project in machine learning, and I'm going to use Tensorflow. I need to choose between using basic Tensorflow, Estimator, and Keras (using the Tensorflow backend). The project will use ...
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19 views

tensorflow more metrics with custom estimator

I created custom estimator that used binary_classification_head() under the hood. All works good but the problem is with visible metrics. I'm using logging with level tf.logging.set_verbosity(tf....
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What does linear regressor output mean? I am using tensorflow estimator in R [migrated]

I try the code at tensorflow in R tutorial (https://tensorflow.rstudio.com/tfestimators/) but I cannot understand the output what the code produces. Code: library(tfestimators) install_tensorflow() ...
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learning rate conditioned on evaluation

I implement my model using tf.estimator and it works fine: model = tf.estimator.Estimator(...) for _ in range(epochs): model.train(train_input_fn, steps=STEPS_PER_EPOCH) model.evaluate(...
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20 views

Tuning Tensorflow Estimators based on batch size, hash bucket size, memory etc on CPU?

We're testing out various estimators such as LinearEstimator, DNNClassifier etc. Right now we are restricted to use only CPU for training, and we're testing out parameters and levers such as CPU: 8~...
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Tensorflow Estimator error: incorrect checksum for freed object - object was probably modified after being freed

I am training a TF Boosted Trees estimator, which is giving me an error: incorrect checksum for freed object - object was probably modified after being freed. On CloudML I get: Command '['python', '...
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29 views

Tensorflow evaluation, [closed]

Given tensor names of the layers, is it possible to evaluate an input only for specific layers and in general is it possible to save all the results during the forward pass ? Will be grateful for any ...
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1answer
92 views

Tensorflow 2.0 Keras is training 4x slower than 2.0 Estimator

We recently switched to Keras for TF 2.0, but when we compared it to the DNNClassifier Estimator on 2.0, we experienced around 4x slower speeds with Keras. But I cannot for the life of me figure out ...
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Tensorflow recognizes but won't use my GPU

I'm using Tensorflow 1.13 from the docker image tensorflow/tensorflow:1.13.1-gpu-py3-jupyter using the Estimator API. I have a machine with 4 K-80 GPUs. When I train the model, the logs indicate that ...
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How to save a SingularMoniteredSession in tensorflow?

I have a SingularMoniteredSession in TF which executes 2 sessions inside of itself and i need to save one of the session and then restore it. with tf.train.SingularMonitoredSession( config=...
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1answer
33 views

tensor conversion function numpy() doesn't work within tf.estimator model function

I have tried this with both tensorflow v2.0 and v1.12.0 (with tf.enable_eager_execution() ). So apparently if I call numpy() with the code snippet shown below in my main() function, it works perfectly....
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10 views

Are Tensorflow Estimator's train and predict thread-safe?

In other words, is it safe to create an Estimator object on the main thread, and then call predict on childThread1 and train on childThread2? The purpose of doing so is to perform predictions with the ...
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1answer
67 views

Evaluating Tensorflow Tensors

to get the gradients of the output with respect to the input, one can use grads = tf.gradients(model.output, model.input) where grads = [<tf.Tensor 'gradients_81/dense/MatMul_grad/MatMul:0' ...
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How to obtain the computational graph of a pre-made Tensorflow Estimator?

I would like to visualize the computational graph of a pre-made (canned) estimator in Google Colab. After having defined the input functions and feature columns, I specified my pre-made estimator as ...
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How to show the loss curve of training set and validation set at the same time using estimator?

I'm using estimator API for training and validation. using the following code I can see the training loss and accuracy curve in tensorboard. How I can add the validation loss and train curve to the ...
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20 views

tensorflow feature_column tries to reshape features

I'm trying to implement a network for MNIST dataset using custom estimators. Here is my input function: def input_train_fn(): train, test = tf.keras.datasets.mnist.load_data() mnist_x, mnist_y = ...
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52 views

tensorflow estimator : different paths of model_fn in training and serving

I am coding a tf custom estimator and I want to compile the trained estimator and use it in another application. In my function model_fn I want to have an algorithm during the train/eval/predict loop,...
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18 views

Profiling time in tensorflow estimator when making prediction

I have been searching for method that allow me profiling time in tensorflow. I found many methods to profiling training operations in both high level APIs (estimator,..., etc) and low level APIs, but ...
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20 views

Using InMemoryEvaluatorHook with TPU throws exception

I tried using an InMemoryEvaluatorHook with a TPUEstimator to get validation statistics while training my model. Using a loop of estimator.train() and estimator.evaluate() was too expensive as it ...
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1answer
28 views

weight matrices and cost in each epoch of RNN using estimator API of tensorflow

I have used Estimator API for training a RNN model, and I wanna plot the cost/epoch figure and obtain the best model weight matrices. Is it possible in Estimator API? here is the code: classifier....
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1answer
59 views

tensorflow api 2.0 tensor objects are only iterable when eager execution is enabled. To iterate over this tensor use tf.map_fn

I am trying to use tensorflow estimator using tensorflow api 2. import tensorflow as tf import pandas as pd import numpy as np import matplotlib.pyplot as plt df = pd.DataFrame({'A': np.array([100, ...
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56 views

How to get in TensorBoard accuracy plot when using a keras model with tf.estimator?

I build a model using keras with TensorFlow 1.12. After (or during) the training the model, I can see with Tensorboard the accuray and loss distribution as a function of the number of epoch. when ...
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Tensorflow premade estimator is much slower than custom?

I'm benchmarking general TF operations, and so to establish a baseline I'm trying to figure out how quickly I can train a simple logistic regression with a single pass of the training data. My input ...
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2answers
70 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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1answer
36 views

tf.estimator - how to print accuracy on test set after every epoch?

I'd like to be able to print the accuracy of this neural network model on the test MNIST dataset with varying number of epochs - I'm using the for loop at the end and testing 1 vs. 2 epochs, but for ...
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22 views

KeyError: “The name 'boosted_trees/QuantileAccumulator/' refers to an Operation not in the graph.” when loading saved model

I created a TensorFlow estimator: outlier_estimator = tf.estimator.BoostedTreesClassifier( n_batches_per_layer = 15, feature_columns=outlier_feature_columns, model_dir="./...
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25 views

Tensorflow estimator fails to converge on model converted from Keras (when using binary_crossentropy)

I've been stuck for quite a while using the model_to_estimator functionality in Tensorflow Estimators. The problem seems to be that Keras allows a binary_crossentropy loss on a single neuron Dense ...
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1answer
26 views

Feeding large numpy arrays into TensorFlow estimators via tf.data.Dataset

TensorFlow's tf.data.Dataset documentation on consuming numpy arrays states that in order to use numpy arrays in combination with the Dataset API, the arrays have to be small enough (<2 GB in total)...
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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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Tensorflow DNNClassifier error: [Labels must <= n_classes - 1] [Condition x <= y did not hold element-wise:x

I am trying to use the tf.estimator.DNNClassifier to predict the monthly price for a dataset. However when running the program I am getting an error with the DNNClassifier stating that the labels is ...
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How to create only one copy of graph in tensorboard events file with custom tf.Estimator?

I'm using a custom tf.Estimator object to train a neural network. The problem is in size of the events file after training - it is unreasonably large. I've already solved the problem with saving part ...
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2answers
34 views

tensorflow estimator custom metrics: use sklearn metrics?

Is there a way to use sklearn metrics as custom metrics in tf.estimator ? I have tried the custom score function below. from sklearn.metrics import recall_score def my_score(labels, predictions): ...
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Keras model & Tensorflow Estimator - model response processing

After creating the model in Keras, I use the model_to_estimator function to transform it into an Estimator. After training, the model is saved using the export_savedmodel function. Is there any way in ...
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Export TF estimator

I am trying to export estimator in tensorflow, but I am stuck and unable to do it right. The estimator itself is created from TensorFlowHub MobilenetV2 (https://tfhub.dev/google/imagenet/...
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How can I query to REST API runs on tensorflow_model_server?

I'd tried to run simple TensorFlow estimators example: official Iris classification problem and saved model using this code implemented by this tutorial. TensorFlow provides a command line tool to ...
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1answer
31 views

Custom batches for tf.data.Dataset

I'm using the Estimator API of tensorflow and would like to create custom batches for training. I have examples that looks as follows example1 = { "num_sentences": 3, "sentences": [[1, 2], [3, ...
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55 views

MirroredStrategy doesn't use GPUs

I wanted to use the tf.contrib.distribute.MirroredStrategy() on my Multi GPU System but it doesn't use the GPUs for the training (see the output below). Also I am running tensorflow-gpu 1.12. I did ...
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21 views

Tensorflow Parameter Server Hangs when doing distributed training with Estimator

System information - TensorFlow version:1.5, 1.8, 1.12 all the same results - MacOS 10.14.3 Is parameter server expected to be killed after the training is done when using tf.estimator.Estimator for ...
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16 views

Tensorflow boolean feature column

I am trying to train a model that requires to input some boolean parameters. I need them to be in boolean, because those fatures are binary/discrete values. Because of that, I am using tensorflow ...
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34 views

Accumulate gradients in Estimator with distribution strategy

In order to reduce the number of synchronization in distributed training, I want to do local accumulation of gradients first. it is just like you can have multiple GPUs, but in serial not in parallel. ...
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14 views

Will tf.dataset go through the entire training dataset when evaluating periodically on Google's TPUs

I am currently adapting my model to run on TPUs. I would like to evaluate the model periodically. I understand that the function train_and_evaluate cannot be used with TPUs. Instead, the alternative ...
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32 views

How to use TPUEstimator.export_saved_model with Tensorflow 1.12?

export_saved_model used on TPUEstimator raises TypeError: Failed to convert object of type to Tensor with Tensorflow 1.12.0. Am I using it incorrectly or if it is a bug is there some workaround? I ...
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Can I employ any saved model (*.pb) with Estimators?

I am performing transfer learning from image classification models to segmentation models, so I need to load a trained model, access to some of the layers outputs and add a few known operations to the ...
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XLA JIT optimization on CPU

I am trying to take a saved model (or frozen graph) and enable XLA JIT compilation. I use the configProto Optimization options to set it to L1 , but it doesnt seem to make any difference to execution ...
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1answer
25 views

Optimizing only certain variables of the model working with TensorFlow Estimator API

I need to freeze parts of my model and train only certain variables. Now, with the low-level API, I can just pass var_list to the tf.train.Optimizer.minimize method. But, when I use a TensorFlow ...
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27 views

Tensorflow Estimator Evaluate Metrics Precision and Recall

I am wondering why my estimator.evaluate only gives accuracy which is not that useful because of extreme imbalanced classes. ---------------------------------------------------------------------------...
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106 views

Tensorflow: Integrate Keras Model in Estimator model_fn

I am working on the problem of using a pretrained keras.applications model in the model_fn of a estimator. In my research group, we are using Tensorflow estimator since they offer many advantages ...
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54 views

MirrorStrategy doesn't see GPU - INFO:tensorflow:Not using Distribute Coordinator

I am trying to use MirrorStrategy to test how the model is distributed. I am using Estimator API on Google Colab. However once I run the code distribution = tf.contrib.distribute.MirroredStrategy() ...