Visualizing Filters of a CNN using TensorFlow
In this short, 1 hour long guided project, we will use a Convolutional Neural Network - the popular VGG16 model, and we will visualize various filters from...
By Amit Yadav on Coursera
About This Course
In this short, 1 hour long guided project, we will use a Convolutional Neural Network - the popular VGG16 model, and we will visualize various filters from different layers of the CNN. We will do this by using gradient ascent to visualize images that maximally activate specific filters from different layers of the model. We will be using TensorFlow as our machine learning framework. The project uses the Google Colab environment which is a fantastic tool for creating and running Jupyter Notebooks in the cloud, and Colab even provides free GPUs for your notebooks. You will need prior programming experience in Python. This is a practical, hands on guided project for learners who already have theoretical understanding of Neural Networks, Convolutional Neural Networks, and optimization algorithms like gradient descent but want to understand how to use the TensorFlow to visualize various filters of a CNN. Note: This course works best for learners who are based in the North America region. We’re currently working on providing the same experience in other regions.
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How much does Visualizing Filters of a CNN using TensorFlow cost?
Visit the Visualizing Filters of a CNN using TensorFlow course page for current pricing and available discounts.
Who teaches Visualizing Filters of a CNN using TensorFlow?
Visualizing Filters of a CNN using TensorFlow is taught by Amit Yadav, Coursera.
What skill level is Visualizing Filters of a CNN using TensorFlow for?
This course is designed for all levels learners.
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