Questions tagged [eager-execution]

TensorFlow's eager execution is an imperative programming environment that evaluates operations immediately, without building graphs: operations return concrete values instead of constructing a computational graph to run later. This makes it easy to get started with TensorFlow and debug models, and it reduces boilerplate as well. To follow along with this guide, run the code samples below in an interactive python interpreter.

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Symbolic tf.tensor Error on Model With Multiple Outputs and Custom Loss Function

I have a multiheaded autoencoder that outputs both the encoded image(s) and the decoded image(s). encoded_outputs = [encoder(input_layer) for input_layer in input_layers] decoded_outputs = [decoder(...
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Tensorflow float64 error while running in eager execution

I'm using TF 2.13.0 and I'm getting an error only when eager execution is enabled. Is there a workaround? The error is tensorflow.python.framework.errors_impl.InvalidArgumentError: TensorArray dtype ...
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How/Where decision is made to choose between eager execution & graph execution for Tensorflow kernel OPs

Description : I ran HuggingFace BERT model which uses tensorflow 2.13v with oneDNN support on intel machine and recorded its execution logs by setting TF_CPP_MAX_VLOG_LEVEL=2 & ONEDNN_VERBOSE=1 in ...
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Problem with the gradients for a tensor flow training

I am training a linear tensorflow model with a custom additional loss which depends on some inner derivatives. The NN recieves an input (x,y) and gives the output (u, v) with some hidden layers in ...
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Tensorflow cvae error when not using tf.compat.v1.disable_v2_behavior

I am running a toy Variational autoencoder (VAE) as described here https://blog.keras.io/building-autoencoders-in-keras.html, just using mse reconstruction loss. act1 = 'selu' n1 = tf.keras.Input(...
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Tensorflow and deriv (R) generate different derivatives for identical optimization problem

I am testing different ways of computing partial derivatives for a simple mathematical graph, and obtain a derivative > 0 when using Tensorflow 2.0 in eager execution mode, while other AD functions ...
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eager execution mode in tensorflow problem

I'm new to TensorFlow. I'm trying to run the following github repo for my classifier. https://github.com/hfawaz/ijcnn19attacks/blob/master/src/cleverhans_tutorials/tsc_tutorial_keras_tf.py I ...
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Tensorflow functions are not converted to graph mode

I was trying to implement a conjugate gradient for sparse tensors under TensorFlow. The test is the following snippet: EAGERMODE = False import os os.environ['TF_CPP_MIN_LOG_LEVEL'] = '2' import ...
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tf.py_function is only for Eager Mode?

Is tf.py_function only for Eager mode, and not for Graph mode? According to tf.py_function says, it gives the impression that tf.py_function is to be used at Eager mode. Wraps a python function into ...
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Tensorflow learning stucks at a random step and produces a lot of warnings

I set tf.config.experimental.set_device_policy('warn') and when I call fit() function the learning process might get stuck on a random step and epoch while producing these warnings each step: W ...
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Tensorflow 2 graph mode - For loop in a model train_step() function?

I am struggling to make a loop work in a model train_step() function in graph mode. =====> Please jump directly to UPDATE below The following snippet, which works in eager mode but not in graph ...
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How to re-write tensorflow code to make model training faster?

QUESTION: My training is super slow. How do I rewrite my code to make my deep learning model training faster? BACKGROUND: I have built a CNN with TensorFlow 2.8.1 to classify CIFAR-100 images using ...
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In Rust `map_or` and `map_or_else` method of `Option`/`Result`, what's lazy/eager evaluation?

I know Rust iterator (adaptors) are "lazy" since they doesn't actually do anything until we access them. To me iterators are like some sort of telescopes to peek stars, and that iterator ...
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Keras LSTM - looping over variable sequence length

I want to manually loop over the varying sequence lengths of the input sequences but Tensorflow automatically makes the time axis to None after noticing varying sequence lengths. Is there any work ...
Vigneswaran C's user avatar
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tensorflow.py_function fails to temporarily switch to eager execution while in graph mode

I'm not sure if this is a Tensorflow bug or my misunderstanding about what this function is supposed to do, but I can't get tf.py_function to return an EagerTensor while in graph mode. Consequently, ...
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tf.train.Checkpoint and loading weights

I'm training a model for seq2Seq using tensorflow. correct me if I'm wrong. I understood that the tf.train.Checkpoint is used to save just the checkpoint files which are only useful when source code ...
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segmentation fault in tensorflow eager execution?

I use the mirrored strategy in my Tensorflow2 code, as described in this tutorial: https://www.tensorflow.org/guide/distributed_training. I have almost the same exact code, and the setup is working ...
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Converting KerasTensor to numpy array

I am trying to convert "KerasTensor" into numpy array. I have tried converting KerasTensor to tf.Tensor (with no luck). I have also tried using tensor.numpy(), tensor.eval() and keras....
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Can't input data to custom loss: Inputs to eager execution function cannot be Keras symbolic tensors

When I'm testing my tensorflow keras custom loss(using additional input data to calculate loss), which is as follow: @tf.function def build_walker_loss(labeled_output_t, unlabeled_output_t, label): ...
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max value of a tensor in graph mode tensorflow

I have this tf code in graph mode (it has a training function wrapped by @tf.function) where I need to get the max value of a tensor x with type <class 'tensorflow.python.framework.ops.Tensor'> ...
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Tensorflow access tensor.numpy() in .map function but using py_function slows down iterator generation

I want to one hot encoder a tensor with my own one hot encoder. For this, I have to call tf.keras.backend.get_value() in .map which is only possible when using tf.py_function: def one_hot_encode(...
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Module 'tensorflow' has no attribute 'enable_eager_execution' - with TensorFlow 2.6

I have TensorFlow 2.6 installed with Python 3.9. However, I get the following errors: tf.enable_eager_execution() AttributeError: module 'tensorflow' has no attribute 'enable_eager_execution' When I ...
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Tensorflow2: How to print value of a tensor returned from tf.function when eager execution is disabled?

I've read that I can see contents of tf variables by using tf.print inside my tf.function definition. It doesn't work. My __tf.version__ is 2.5.0. I run the following function inside Jupyter notebook: ...
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Cannot avoid tensorflow function retracing

I implemented my custom layer to perform resizing of images with padding. I just want to resize my images (proportionally) that's why I implemented custom layer instead of using tf.image.resize(). And ...
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TensorFlow 2.0: Unable to train subclass model with custom fit in graph mode

The code snippet below is a vanila implementation of a TensorFlow model in which I am using subclass model and a custom fit function (implemented through train_step and test_step). The code works fine ...
Milan Jain's user avatar
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run_eagerly=True make the training result different in Tensorflow 2.3.2

Recently I come across a strange question in Running Neural network code on TensorFlow 2.3.2. The question is that when I only changed run_eagerly=True to run_eagerly=False in the config model....
blisslee's user avatar
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Defining a callable "loss" function

I am trying to optimize a loss function (defined using evidence lower bound) with tf.train.AdamOptimizer.minimize() on Tensorflow version 1.15.2 with eager execution enabled. I tried the following: ...
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In Tensorflow how can I (1) compute gradients and (2) update variables in *separate* @tf.function methods?

I need to compute tf.Variable gradients in a class method, but use those gradients to update the variables at a later time, in a different method. I can do this when not using the @tf.function ...
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tf.placeholder() is not compatible with eager execution [duplicate]

I am working on a project and am trying to replace this block of code with something that works. I am using version 2.5.0 of tensorflow and am faced with the following error. AttributeError: module '...
M. Mohasin Mudassar's user avatar
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LSTM nan loss in tensorflow

I have a classification model with LSTMs to process sequential data. It trains perfectly when I enable eager mode by this command; tf.config.experimental_run_functions_eagerly(True) When I turned it ...
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NotImplementedError: numpy() is only available when eager execution is enabled; while using TF2.4.1

Using tensorflow 2.4.1, I'm overriding SimpleRNNCell.call in keras, found here: https://github.com/tensorflow/tensorflow/blob/85c8b2a817f95a3e979ecd1ed95bff1dc1335cff/tensorflow/python/keras/layers/...
Ramy Hanna's user avatar
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863 views

Convert to numpy a tensor without eager mode

I am defining a custom layer as the last one of my network. Here I need to convert a tensor, the input one, into a numpy array to define a function on it. In particular, I want to define my last layer ...
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Updating dictionary with tensorflow 2.1.0

I am facing a problem and I cannot seem to find the solution anywhere else, so I decided to post my question here (I have basic knowledge of tensorflow but quite new): I wrote a simple code in python ...
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Eager Execution Error in TensorFlow for tf.GradientTape

I am getting this warning when I am trying to create saliency visualizations. RuntimeError Traceback (most recent call last) <ipython-input-36-6f13b9abef1d> in <...
Shourya Verma's user avatar
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336 views

Batch element-wise product in loss function with keras

I am trying to write a custom loss function in keras where I need to weight the MSE between y_true and y_pred (shape: (batch_size, 64, 64)) by the output of an intermediate layer (whose shape is (...
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eager execution on tensorflow2.3.0

I'm doing a beginner course on TensorFlow. The version I have installed is 2.3.0. I have had problems with eager execution since the course's TensorFlow version is different from the one I have ...
Alex Delarge's user avatar
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tf.random.normal() doesn't work as expected

I am new on Python and tensorflow. I am a little (or a lot) puzzled: tf.random.normal() doesn't seem to work as expected. tf.random.normal() is used to generate some data. I want to see the data are ...
Garry's user avatar
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Input tensor <name> enters the loop with shape (), but has shape <unknown> after one iteration

I am trying to save a model using tf.function on a greedy-decoding method. The code is tested and works in eager-mode (debug) as expected. However, it is not working in non-eager execution. The method ...
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Error when using run_eagerly=False in model.compile custom Keras Model in Tensorflow

I am developing a custom model in Tensorflow. I am trying to implement a Virtual Adversarial Training (VAT) model from https://arxiv.org/abs/1704.03976. The model makes use of both labeled and ...
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How do I fine tune using eager few shot object detection on custom dataset with multiple classes which is in coco format?

I have been trying to use this eager few shot object detection tutorial. Instead of using the rubber ducky data, I wanted to use my custom dataset which is already in coco format and quite large. I ...
Achyut Sarma's user avatar
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tf.compat.v1.disable_eager_execution() with tf.data.dateset

I am using tensorflow 2.2. I have two numpy arrays (features and labels) that I pass to tf.data.dataset.from_tensor_slices(): train_dataset = tf.data.Dataset.from_tensors(feature_train_slice, ...
Yahya Nik's user avatar
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when we should use tf.function decorator

I'm trying to boost the performance of a simple 2NN. Here is the code: from tensorflow.keras.models import Sequential from tensorflow.keras.layers import Dense from tensorflow.keras.optimizers import ...
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How to define dynamic-shape variable when building computational graph with Tensorflow 1.15

System information Have I written custom code (as opposed to using a stock example script provided in TensorFlow): No OS Platform and Distribution (e.g., Linux Ubuntu 16.04): Linux Ubuntu 18.04 ...
lengoanhcat's user avatar
6 votes
1 answer
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What is tracing with regard to tf.function

The word "tracing" is mentioned frequently in TensorFlow's guide like Better performance with tf.function What is "tracing" exactly, does it refer to generating the graph as a ...
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Tensorflow fails to stay in eager execution, TF2.x

I'm using TF2.x with eager execution on by default. However, when using a custom loss function, it reports that eager execution is False. tf import veryfing eager execution is True: import tensorflow ...
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How to reuse the inner gradient in nested gradient tapes?

I am working on a routine in tensorflow 1.15 that evaluates several hessian-vector products for different vectors def hessian_v_prod(self, v): with tf.GradientTape() as t1: with tf....
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Use Hamming Distance Loss Function with Tensorflow GradientTape: no gradients. Is it not differentiable?

I'm using Tensorflow 2.1 and Python 3, creating my custom training model following the tutorial "Tensorflow - Custom training: walkthrough". I'm trying to use Hamming Distance on my loss function: ...
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TypeError: <tf.Tensor: shape ... > has type <class 'tensorflow.python.framework.ops.EagerTensor'>, but expected one of: (<class 'int'>,)

I have been trying to run the code from this tutorial on tf.data. But I am getting this error when trying to execute it in vs code. TypeError: <tf.Tensor: shape=(), dtype=bool, numpy=False> has ...
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Tensorflow tf.GradientTape().gradient returns none

I designed a function to calculate gradients from loss and model.trainable_variables with Tensorflow GardientTape. I used this function to perform split-learning, which means the model is devided and ...
Melvin 's user avatar
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Value of tensor operation does not update after depending variable updated/assigned in tensorflow 2.2, running in eager execution

I run the following code in tensorflow 2.2 a = tf.constant([2.0, 3.0, 4.0]) b = tf.Variable([4.0, 3.0, 5.0]) c = a * b Value of b is: <tf.Variable 'Variable:0' shape=(3,) dtype=float32, numpy=...
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