Explainable AI: Scene Classification and GradCam Visualization

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Explainable AI: Scene Classification and GradCam Visualization

Coursera · Intermediate ·📐 ML Fundamentals ·3mo ago

Key Takeaways

Trains a deep learning model for scene classification and uses Grad-Cam for explainable AI

Original Description

In this 2 hour long hands-on project, we will train a deep learning model to predict the type of scenery in images. In addition, we are going to use a technique known as Grad-Cam to help explain how AI models think. This project could be practically used for detecting the type of scenery from the satellite images.
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