Questions tagged [tf.keras]

[tf.keras] is TensorFlow's implementation of the Keras API specification. Use the tag for questions specific to this TensorFlow module. You might also add the tag [keras] to your question since it has the same API.

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6 views

Fitting a custom (non-sequential) stateful RNN (GRU) model

I am facing some problems in training the following GRU model, which has to be stateful and output the hidden state. import numpy as np import tensorflow as tf #2.1.0 from tensorflow import keras ...
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Getting graph disconnected error when trying to build a new model output

I have a trained sequential model which composes of a pre-trained headless efficient net and the final layers. The model.summary() look as follows, Model: "sequential" ...
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Smaller speedup than expected by precomputing encoded output in full pairwise comparison

I am building a neural net to predict the outcome of pairwise comparison. The same encoder network is applied on both inputs before merging and computing the result in the downstream part. In my use ...
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how to load model from pre-trained weights?

from keras.models import Sequential from keras.layers import Dense, Activation from keras.applications.densenet import DenseNet121 weights_model='/home/nisnab/Downloads/Chexnet.h5' # my ...
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How can we get regression coefficients from a Keras linear regression model?

A multiple linear regression model with k predictors X1, X2, ..., Xk and a response Y , can be written as y = β0 + β1X1 + β2X2 + ··· βkXk + ". I followed the tutorial here to use tf.keras to do basic ...
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Keras: Max pool along 1 axis, Avg pool along another?

In Keras, for my particular dataset of 2D images, I would like to try using max pooling along the horizontal axis and average pooling along the vertical. How do I do that? (Currently I just have max ...
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KerasLayer trainable=false seems to have no effect

Setting trainable=False seems to have no effect. Minimal example: layer = tf.keras.layers.Dense( units=1, kernel_initializer=tf.keras.initializers.Constant([[1.0]]), ...
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How combine tf.keras preprocessing layers with distribute strategies

The Keras preprocessing layers aim at integrating preprocessing and augmentation into the model itself. However, it seems that these layers cannot be used together with tf.distribute.Strategy for ...
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34 views

Keras multiply parallel layers' outputs with constrained weigths

I have 3 parallel MLPs and want to obtain the following in Keras: Out = W1 * Out_MLP1 + W2 * Out_MLP2 + W3 * Out_MLP3 where Out_MLPs are output layer of each MLP and have dimension of (10,) and W1, ...
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Why there are many tensorflow.python.xx APIs used in tensorflow repos [duplicate]

I found TensorFlow repos extensively use tensorflow.python.xx APIs, but there are no docs for such APIs. For example, I found many codes in TF model gardens use the tensorflow.python.keras.backend API,...
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What happens when a Keras Sequential model is built and then called with a Tensor as its argument?

I was recently studying a code for text generation provided by TensorFlow on its website and I came across this. model(input_example_batch) I'm having problems understanding what is actually ...
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37 views

loss(y, y) != 0 (same labels and predictions, non-zero loss)

import numpy as np from tensorflow.keras.layers import Input, Dense, Flatten from tensorflow.keras.models import Model # TF 2.2.0 #%%####################################################### ipt = ...
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How to use tf.add.Layers with multiple layers

I downloaded the tf.js model from teachable machine and i look inside the layers to "replicate" in tensorflow(not js) and i foud this "Add" layer. Here is the full model.js and the name of layer is ...
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Tensorflow Keras RMSE metric returns different results than my own built RMSE loss function

This is a regression problem My custom RMSE loss: def root_mean_squared_error_loss(y_true, y_pred): return tf.keras.backend.sqrt(tf.keras.losses.MSE(y_true, y_pred)) Training code sample, ...
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Different message prompt on google colab vs Pycharm

I am running the same CNN model on the same dataset (with 50000 training examples) with exactly same parameters on both Google Colab (I think it has K80 GPU) and my own system (with GTX 1080 GPU and ...
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Tensorflow 2.0 (Keras) classification with restricted classes

Problem background I have a basic classification problem, classifying each simple row x into one of 20 classes. However, there is a twist. Every row has an associated set of class restrictions, ...
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Getting error( _variable_v2_call() got an unexpected keyword argument 'intial_value') while making custom layer in Tensorflow

I've making my custom layer, by using layer subclassing using the below code class MyLayermean(Layer): def __init__(self, units,input_dim): # define weight, biases dimension super(...
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How to write a custom RNN ' for loop ' in tensorflow 2

In the Guide on Recurrent Neural Networks (RNN) with Keras, this is written as a second focus point: Ease of customization: You can also define your own RNN cell layer (the inner part of the for ...
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Custom training loops for LSTMs (Tensorflow 2)

I am currently implementing the neural image captioning model shown here: https://www.tensorflow.org/tutorials/text/image_captioning The training loop passes a batch of sentences word by word into ...
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42 views

TypeError: Cannot convert value dtype to a TensorFlow DType

I am fairly new to tensorflow. I am loading a model from a .h5 file and trying to make a prediction using the model. import tensorflow as tf import pandas as pd import numpy as np file_path = '/path/...
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30 views

Share operation result between Keras metrics

I have a (time-expensive) operation that multiple metrics have in common. What would be the best way to share the operation result between the metrics avoiding the overhead of recalculating it each ...
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optimizing an ONNX model - from tensorflow.keras - error: kernel is undefined

Trying to optimize this simple model: from tensorflow import keras import keras2onnx from onnx.shape_inference import infer_shapes from onnx.optimizer import optimize model = keras.Sequential([ ...
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38 views

Keras : problem with gradients, custom layer won't work in a sequential model

This is the error message I get with the code down below: ValueError: No gradients provided for any variable: ['Variable:0']. right after it goes through the whole layer's build(), in model.fit(). It ...
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Why is `tf.keras.layers.LayerNormalization` implemented with `data_format=NCHW`

I am currently reading implementation of tf.keras.layers.LayerNormalization, and I am wondering why its comments says "This fused operation requires reshaped inputs to be NCHW" When I look into nn....
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Why isnt val_accuracy in the output from model.fit same as the model.history.history['val_accuracy']?

my code: history=model.fit(X_train, y_train, validation_data=(X_val,y_val),epochs=10, verbose=0,callbacks=[callbacks]) xyz=model.history.history['val_accuracy'] print(xyz) According to my ...
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The model is broken when I replaced keras with tf.keras

When I tried to use keras to build a simple autoencoder, I found something strange between keras and tf.keras. tf.__version__ 2.2.0 (x_train,_), (x_test,_) = tf.keras.datasets.mnist.load_data() ...
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1answer
23 views

What are _get_hyper and _set_hyper in TensorFlow optimizers?

I see it in __init__ of e.g. Adam optimizer: self._set_hyper('beta_1', beta_1). There are also _get_hyper and _serialize_hyperparameter throughout the code. I don't see these in Keras optimizers - are ...
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20 views

Incompatible shapes using `sample_weight` in Graph execution

Works fine in Eager. Code + error below; pasted outputs are from a Colab instance with tf.__version__ == 2.3.0-dev20200526 (tf-nightly), also reproduced in 2.2.0 and on Windows 10. No error in TF 1.14....
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tf.keras.layers.Multiply fails on Variables

I am trying a simple code: import tensorflow as tf v1 = tf.Variable(np.array([[1.,2.],[2.,3.]])) v2 = tf.Variable(np.array([[1.,2.],[2.,3.]])) v3=tf.keras.layers.Multiply()([v1,v2]) I am getting: ...
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AttributeError: 'float' object has no attribute 'pop' in Custom Keras Model with overwritten train_step

I got this error AttributeError: 'float' object has no attribute 'pop' in my Encoder-Decoder custom Keras model while using model.fit with custom train_step. I do not understand where this error has ...
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1answer
8 views

How to get the dictionary output from a generator, which outputs an array with a dictionary for custom keras image generator

I have a custom made generator to output multiple values to predict against. I'm trying to get the values to correspond to a given image, without success. Here is my output: e(array([[[[0., 0., 0.], ...
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1answer
18 views

R Keras error in k_get_session(): No attribute 'get_session'

When I try to run sess <- k_get_session(), I get the following error message Error in py_get_attr_impl(x, name, silent) : AttributeError: module 'tensorflow_core.keras.backend' has no attribute ...
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21 views

how to define a loss function in keras when the labels are not in order

I'm trying to compile a specially defined loss function to my model. The problem is that each pic outputs 2 numbers but the labels are not in order. For example, if I have one picture with the label (-...
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1answer
22 views

a question about boolean list in custom layer in tf.keras

I'm trying to construct a custom output layer for my model so that the range of angles can be constrained in [-90,90]. The code is as follows: class OutputLayer(Layer): def __init__(self): ...
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1answer
39 views

Tensorflow keras fit - accuracy and loss both increasing drastically

ubuntu - 20.04 tensorflow 2.2 dataset used = MNIST I am testing tensorflow and i notice that validation sparse_categorical_accuracy (accuracy) and validation SparseCategoricalCrossentropy (loss) ...
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1answer
42 views

How to construct a sobel filter for kernel initialization in input layer for images of size 128x128x3?

This is my code for sobel filter: def init_f(shape, dtype=None): sobel_x = tf.constant([[-5, -4, 0, 4, 5], [-8, -10, 0, 10, 8], [-10, -20, 0, 20, 10], [-8, -10, 0, 10, 8], [-5, -4, 0, 4, 5]]) ...
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How to feed many .npz files to tf.data.Dataset efficiently while training tf.keras model by low-level tensorflow loop?

My basic idea is building the model by tf.keras.layers and training it through low-level tensorflow loop. In this way, I am not going to hack fit_generator() of Keras Thanks to the questions asked ...
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Pass 3D stack to Keras

I am working with 3d arrays . What i have is an input array of shape (20 , 100 , 160000) [20 samples of 100 rows * 160000 columns] I want to pass them through several dense layers and then reshape ...
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11 views

tape.gradient for model.trainable_variables returning None value

Here is my Function: def grad(self,model,ytrain, x_train): with tf.GradientTape() as tape: loss_value = self.calculate_loss(ytrain, self.pred) #Value of ...
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Passing 2 inputs to the Call function of the Subclass Model in TF 2.0

I am trying to build a Neural Translator and the input consists of 2 sentences, one in the source and the other in the language to be translated to. How do I break the input such as to pass only the ...
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23 views

LSTM for classification of multiple input sequences

I am new in python and Neural Networks, therefore sorry if my question is incorrect. I have a dataset which contains 4000 sequences with variable time steps each (n) and 4 features per time step. ...
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1answer
69 views

Tensorflow JS tfjs | Unable to load model using tf.loadLayersModel

While executing the following code embedded in html using WAMP stack const model = tf.loadLayersModel('js/model.json'); I encounter the following errors in chrome > Uncaught (in promise) ...
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@tensorflow/tfjs showing PromiseStatus rejected while loading the converted tf.keras savedmodel

It is showing the following error in browser console while loading the model using @tensorflow/tfjs. This is the code snippet to load the model: import React, { Component } from "react"; import * as ...
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23 views

How to set custom test step in Keras?

I have trained my model with the input (image) size [None, 400,400,3], but I want to test with a different input size like [None,512,512,3]. Here my custom training implementation: my_model = ...
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1answer
20 views

Name error of “activation” while creating a MLP using dense layers

NameError Traceback (most recent call last) <ipython-input-28-3f33c21e54b4> in <module>() 1 num_of_features=x_train.shape[1] 2 model=Sequential()...
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54 views

In tensorflow, for custom layers that need arguments at instantialion, does the get_config method need overriding?

Ubuntu - 20.04, Tensorflow - 2.2.0, Tensorboard - 2.2.1 I have read that one needs to reimplement the config method in order for a custom layer to be serializable. I have a custom layer that accepts ...
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1answer
28 views

what is wrong with the metrics arg in this code?

please look at this code solver = Adam(learning_rate = 0.001) model.compile( optimizer=solver, loss='binary_crossentropy', metrics=[ metrics.SensitivityAtSpecificity(0.5), metrics....
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1answer
15 views

How to merge a trained model and an untrained one?

I'm having a hard time on doing the following: I have a model with 125,089,410 trainable params which I've already trained; The model outputs two tensors with shape (None, 96); I wanted to build a ...
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1answer
25 views

Keras custom metrics self.validation_data is none , when using data generators

I have been trying to train a model and calculate precision and recall at the end of each epoch. The custom metric class Metrics(keras.callbacks.Callback): def on_train_begin(self, logs={}): ...
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9 views

About padding, the different between same and valid in conv1d

model = tf.keras.Sequential([ tf.keras.layers.Conv1D(10, 4, padding='valid') ]) model.build(input_shape=(None, 1, 10)) data = np.array([np.zeros((1, 10)), np.zeros((1, 10))]) ...

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