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  • SIKSHAPATH Latest Questions

    Saurav kumar
    • 0
    Saurav kumar
    Asked: February 23, 2024In: Computer Science

    Which one of the following pieces of code is used to train Autoencoder?

    • 0

    After initializing your AutoEncoder you are all set to train it. Which of the following pieces of code will you use? def autoencoder_training (X_train, Y_train, epochs): history autoencoder.fit (# YOUR CODE HERE) return history Options: i. autoencoder.fit(X_train, ...

    tensorflow
    • 1 Answer
    • 313 Views
    Answer
    Saurav kumar
    • 0
    Saurav kumar
    Asked: February 23, 2024In: Computer Science

    What does model_1 output in this AutoEncoder code snippet?

    • 0

    Consider the following code for a simple AutoEncoder, what is model_1 outputting ? inputs = tf.keras.layers.Input(shape=(784,)) def simple_autoencoder(): encoder = tf.keras.layers.Dense(units=32, activation=’relu’)(inputs) decoder = tf.keras.layers.Dense(units=784, activation=’sigmoid’)(encoder) return encoder, decoder output_1, output_2 = simple_autoencoder() model_1 = tf.keras.Model(inputs=inputs, outputs=output_1) model_2 = tf.keras.Model(inputs=inputs, outputs=output_2) options: Displaying the reconstruction of the original input ...

    tensorflow
    • 1 Answer
    • 310 Views
    Answer
    Saurav kumar
    • 0
    Saurav kumar
    Asked: February 23, 2024In: Computer Science

    Calculate Content Loss Value between Generated and Content Images: 5 2 1 7 vs. 3 5 5 4

    • 0

    Consider the values given in the image below and calculate the content loss value. Generated image: 5 2 1 7 and content image : 3 5 5 4

    image processingmachine learning
    • 1 Answer
    • 359 Views
    Answer
    Saurav kumar
    • 0
    Saurav kumar
    Asked: February 23, 2024In: Computer Science

    Consider the following code snippet. How will you include Total Loss Variation in it? Use TensorFlow as tf.

    • 0

    Consider the following code snippet. How will you include Total Loss Variation in it? Use TensorFlow as tf. (Answer in the format, x + y(z), considering python’s spacing convention) def calculate_gradients(image, content_targets, style_targets, style_weight, content_weight,with_regularization=True): total_variation_weight = 30 with tf.GradientTape() as tape: if with_regularization: loss += ...

    tensorflow
    • 1 Answer
    • 545 Views
    Answer
    Saurav kumar
    • 1
    Saurav kumar
    Asked: February 21, 2024In: Computer Science

    advance computer vision with tensorflow week4

    • 1

    Q1.Consider the following code for Class Activation Maps. Which layer(s) of the model do we choose as outputs to draw out the class activation map ? Check all that apply. The layer which performs concatenation in the model The layer which feeds ...

    advance computer vision with tensorflow week4consider the following code for class activation maps. which layer(s) of the model do we choose as outputs to draw out the class activation map ? check all that apply.tensorflow
    • 1 Answer
    • 1k Views
    Answer
    Saurav kumar
    • 0
    Saurav kumar
    Asked: February 21, 2024In: Computer Science

    advance computer vision with tensorflow week3

    • 0

    Q1. At the heart of image segmentation with neural networks is an encoder/decoder architecture. What functionalities do they perform ? Options:   The decoder extracts features from an image and the encoder takes those extracted features, and assigns class labels to each ...

    advance computer vision with tensorflowat the heart of image segmentation with neural networks is an encoder/decoder architecture. what functionalities do they perform ?tensorflow-advanced-techniques-specialization
    • 1 Answer
    • 386 Views
    Answer
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