Questions tagged [keras]

Keras is a minimalist, highly modular neural network library providing a high-level API in Python as well as an R interface that allows for rapid prototyping and the use of one of several computational back-ends.

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22 views

Why does this Autoencoder consisting of all convolutions keep pushing the output to a blank/white image?

I am having a lot of trouble understanding the behaviour of my model and need some help to try figure it out. Suppose this Autoencoder consisting of all convolution layers: initializer = he_uniform() ...
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2answers
31 views

Manually Assign Dropout Layer in Keras

I'm trying to learn the inner workings of dropout regularization in NN. I'm largely working from "Deep Learning with Python" by Francois Chollet. Say I'm using the IMDB movie review sentiment data ...
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2answers
24 views

How to remove regularisation from pre-trained model?

I've got a partially trained model in Keras, and before training it any further I'd like to change the parameters for the dropout, l2 regularizer, gaussian noise etc. I have the model saved as a .h5 ...
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1answer
10 views

'Tensor' object is not callable when setting model's input layer

I'm building a siamese network to receive 2 image inputs, go trough the same convolutional network to extract features and then calculate the image's distance. For a better accuracy, i'm trying to ...
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1answer
20 views

Keras output single value through argmax

I'm trying to build a really simple neural network in Keras: model = Sequential() model.add(Dense(40, input_dim=186, activation='relu', name='x')) model.add(Dense(3, activation='softmax')) This ...
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0answers
14 views

How to add weights for each instance in DNN? [on hold]

I wanna ask how to add weights for each instance in DNN. Here "weights" does NOT mean the parameter of the network, instead, the "weights" is belong to each instance.
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1answer
26 views

Getting NaN Error While Using LSTM Autoencoder

I am trying to train a model with LSTM Autoencoder using Keras to reconstruct the input that I gave to the model and I am getting NaN error in result which I obtain after decode part. Here is my code; ...
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0answers
23 views

Understanding Dense layer after Embedding Layer in Keras

I am having some problems to understand the functioning of a Dense layer handling text sequences. Let's imagine this simple case: I have two sentences and I assign integers to the words: Sentence 1 ...
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1answer
18 views

How to predict a new data series with a trained Keras GRU model?

I'm trying to use a trained Keras sequence model (GRU) to predict some new data samples, but have some problem creating the time series generator. In the training process, the validation set was ...
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1answer
24 views

Custom loss with conditional return value

I want a loss function with this regularization: for each prediction, if the predicted point has norm lower than 0.9 or greater than 1, I want to apply the regularization. So I wrote this: def ...
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1answer
15 views

Transfer learning by fine tuning with weight of pretrained model in keras

I'm trying to fine tune with weights of my pretrained model. I already fine tune with available VGG network that trained on VGGface dataset, but I want to fine tune with my pretrained model on my ...
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0answers
29 views

Memory Leak in CNN for image classification

Ok so this is super strange and I have tried a lot. I am developing a CNN pipeline for an image classification problem. I am using a conda enviroment using python 3.7, keras-gpu and tensorflow-gpu. ...
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25 views

NameError: name 'keras_applications' is not defined

When I use keras to save my model and loading then I get this error message code:model=load_model('model.h5') it cause error( if hasattr(keras_applications, 'get_submodules_from_kwargs'): NameError: ...
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0answers
14 views

Model-logging for “hybrid models” (e.g. SKlearn Pipeline including KerasWrapper) possible?

I have wrapped my keras-tf-model into a Sklearn Pipeline, which also does some pre- and postprocessing. I want to serialize this model and capture its dependencies via MLflow. I have tried mlflow....
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0answers
27 views

Oscillating train/val accuracy graph while training neural nets

I am working on gesture recognition where I have videos divided into frames. I have trained my model as below using CNN3D Layer (type) Output Shape Param # ============...
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0answers
29 views

Looking for a python framework which combines Neuroevolution and Deep Learning. Any ideas? [on hold]

I am looking for an existing framework which combines Neuroevolution and Deep Learning. My idea is to use Neuroevolution to search for the best Network Architecture, and then on top of that, use ...
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0answers
10 views

Why keras.utils.Sequence based generator makes weird predictions?

This is probably a long shot, but this has been a recurring problem for me, but I think this should be a really standard scenario, so the community might benefit from it. I have made a DataGenerator ...
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1answer
34 views

RNN Keras model for NLP takes lot of time while training with no decrease in validation loss

I have built an RNN model for entity recognition. I used BERT embedding and then processed the results through a RNN Model. However, while training the model for 5 epochs, each epoch seems to take ...
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0answers
22 views

Train a keras model iteratively using smaill batches of examples

I am building a convolutional network which takes input of big 3d array as input. as the array is too big (60000,100,100) my computer is raising a memory error when I am initializing the input. can i ...
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1answer
19 views

TensorFlow/Keras: How to get meaningful loss values from my generalized dice loss function?

I am trying to perform semantic segmentation in TensorFlow 1.10's Keras API (using Python) with the generalized dice loss function: def generalized_dice_loss(onehots_true, logits): smooth = tf....
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2answers
56 views

My model has high accuracy and val_accuracy but giving wrong result on test data

I have created some images using opencv and i am running a deep neural network classifier on it. It gives around 97% accuracy and 95% val_accuracy but when i test it, it gives wrong predictions. Here ...
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0answers
42 views

How to fix 'ValueError: could not broadcast input array(2, …) into (1, …)' model.predict?

After training an Encoder Decoder network, I am using it for making predictions. However, giving it the same data I used for training is giving me a value error. I've tried setting 'batch_size=1'. I'...
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0answers
11 views

Firebase AutoML model VS model I prepared

Firebase AutoML model(model.tflite) is working well while the model's accuracy I prepared is less(from 99% before converting to 60% after converting) though the architecture is almost same. What could ...
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0answers
36 views

AttributeError: can't set attribute in python3

Tring to run on google collab: params.dropoutkeepprobs = DropoutKeepProbs( self.q_conv_keep_prob, self.q_dense_keep_prob, self.q_gru_keep_prob ) self.q = DeepSense(...
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1answer
44 views

Keras apply different weight to different misclassification

I am trying to implement a classification problem with three classes: 'A','B' and 'C', where I would like to incorporate penalty for different type of misclassification in my model loss function (kind ...
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0answers
19 views

LSTM model to get output similar to Linear regression

I have dataframe as follows Type EndTime Time Values 2 170 101 20.402 2 170 102 20.402 2 170 103 20.402 2 170 104 20.402 2 170 105 20.402 2 170 106 20.383 2 170 107 20.383 2 170 108 20....
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0answers
18 views

How should I use mode.predict_generator to evaluate model performance in a Confusion Matrix?

I am trying to evaluate a transfer learning model in the common dogs and cats filtered dataset using confusion matrix. I have based the code in the transfer learning tutorial of tensorflow. The ...
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1answer
41 views

Reshape neural network input based on condition

Numerical data, using DL Neural Networks. I'm using Keras library for this purpose p u d ms action B x y-c pre area finger 0 0 36 3 1334893336790 0 1 ...
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0answers
24 views

Natural Language Processing Error when building MLP model

I am building an MLP model to classify text comments with labels. I have a NumPy array of vectorized comments, and an array of text labels. I have tried vectorizing the labels and determined that ...
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1answer
36 views

Row-wise processing of tensors in a batch

I need to get the outer product of each row of a tensor separately. The code goes like: input1=K.placeholder(shape=(None, 12)) prod=K.map_fn(someMethod,input1) the someMethod needs to do the ...
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0answers
21 views

time series forecasting using seq2seq

I am currently doing a similar time series forecasting for numbers of calls with seq2seq model. Now I meet a problem which is that when I want to predict like 30 days target's values in the future, ...
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0answers
14 views

Does it make sense to use early stopping and k-fold cross validation together? [duplicate]

I am currently training a model using keras, with LSTM layers. I'm confused on whether to use callbacks because I'm already using 10-fold cross validation. Would using them together reduce over-...
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14 views

How to integrate Keras with Shiny in R (code throws errors)

I am trying to build a small shiny app that outputs prediction based on certain inputs. The back-end uses Keras and I am basically trying to integrate that with a Shiny front-end I tried wrapping ...
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0answers
23 views

How do I convert a tensor object to an array without adding to graph?

I basically have a for loop where I need to run a prediction in order to calculate something. for i in range(0,6,1): episodes, n_actions = util.record_episode(env,num = 2) data, ...
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1answer
16 views

Why does model.losses return regularization losses?

I have met a snippet of code of tensorflow 2.0, which is used for calculating the loss. The total loss is composed of two parts: 1) regularization loss, 2) prediction loss. My question is why model....
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1answer
10 views

What is the optional classes argument in Keras Applications model?

It says: "classes: optional number of classes to classify images into, only to be specified if include_top is True, and if no weights argument is specified." However, all the number of classes are ...
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0answers
10 views

Using Keras, how can I record each output of each layer for each epoch using callback functions?

I am trying to record all outputs for each layer for each epoch. I found the following solution: Keras/Tensorflow: Get predictions or output of all layers efficiently but I don't understand how to ...
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0answers
12 views

Custom made layer to create a covariance matrix in keras

I have some neural network which outputs a vector x=(x_1,...,x_d)^T. I then want to add another custom made layer on top of that which transforms x into a covariance matrix A (i.e. a 2d tensor) such ...
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0answers
5 views

If data contains similar(duplicate) text how to fed that as a input to Keras?

I have built a Keras model with an existing text data. Now while I get more data to add what are the steps required to update my previous model efficiently. My main concern is if I randomly start ...
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0answers
17 views

How can one add Laplacian noise to a tensor in keras?

I'm currently trying to teach a neural network to decode an input on which has been added Laplacian noise (ie adding a centered random variable which follows a Laplace distribution). To do this, I'd ...
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1answer
14 views

Use keras pad_sequences in pandas dataframe

I have a pandas data frame which contains word indexes. id seq int_sequence 0 111 cat over dog [2, 7, 3] 1 222 hello silly dog cat from [6, 9, 3, ...
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2answers
51 views

Is keras based on closures in python?

While working with keras and tensorflow, I found the following lines of code confusing. w_init = tf.random_normal_initializer() self.w = tf.Variable(initial_value=w_init(shape=(input_dim, units), ...
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0answers
22 views

Create custom convolution layer and compare two keras layers

I am currently creating a network in keras to perform harmonic/percussive source separation on an audio spectrogram using a median filtering technique (http://dafx10.iem.at/papers/...
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1answer
26 views

unable to import Metric from tensorflow.keras.metrics

I want to write a custom metric evaluator for which I am following this link. my dummy code is import tensorflow as tf from tensorflow import keras class DummyMetric(keras.metrics.Metric): ...
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0answers
15 views

How would I get a confidence interval over an integer classification neural network

I am quite new to data science and machine learning. I have a neural network that classifies data into a binary range 0-1 using sigmoid as the final output layer. I get an accuracy rate of 75-80% ...
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1answer
37 views

Is there a way to convert a grayscale image to an RGB image without altering the image?

I am trying to train a resnet50 model with EMNIST data which is a dataset containing 300k images of letters and numbers. Resnet50 requires 3 dimensional images as its input and not grayscale so i ...
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1answer
16 views

Keras EarlyStopping is not recognized

I am using Early Stopping in my U-net model but it is raising error File "main.py", line 18, in <module> earlystopper = EarlyStopping(monitor='val_loss', min_delta=0, patience=15, verbose=1,...
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1answer
27 views

Keras model.fit() Raises Error About Unspecified Parameter `steps_per_epoch`

I am trying to fit a Keras model with a tf.Dataset as my dataset. I specify the parameter steps_per_epoch. However, this error is raised: ValueError: When using iterators as input to a model, you ...
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1answer
22 views

Keras: IndexError: tuple index out of range when loading custom model

I have an .h5 model that was built with tensorflow==1.13.1 and Keras==2.2.4 on a host to which I don't have access. I'm trying to load that model using keras.models.load_model as follows: model.py: ...
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0answers
12 views

Transfer learning to fine tune with my specific pretrained model in convolution neural network

I'm trying to build face recognition model for few training data, so I want to fine tuned it on top of my previously pretrained model build on huge face dataset, I don't need to build it on top of ...