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Deep Learning with PyTorch : GradCAM

Gradient-weighted Class Activation Mapping (Grad-CAM), uses the class-specific gradient information flowing into the final convolutional layer of a CNN to produce a coarse localization map of the important regions in the image. In this 2-hour long project-based course, you will implement GradCAM on simple classification dataset. You will write a custom dataset class for Image-Classification dataset. Thereafter, you will create custom CNN architecture. Moreover, you are going to create train function and evaluator function which will be helpful to write the training loop. After, saving the best model, you will write GradCAM function which return the heatmap of localization map of a given class. Lastly, you plot the heatmap which the given input image.

Status: Heat Maps
Status: Convolutional Neural Networks
IntermediateGuided Project2 hours

Featured reviews

HY

4.0Reviewed Jan 10, 2025

Please explain more in detail and also cover some important prerequisities.

SS

5.0Reviewed Feb 20, 2023

Great material, easy to follow and to some extent helps build intuition.

SF

5.0Reviewed Aug 31, 2025

Very good project. Helps you implement gradcam from grounds up.

All reviews

Showing: 4 of 4

Sayantan Sarkar
5.0
Reviewed Feb 21, 2023
Shaheer Fardan
5.0
Reviewed Sep 1, 2025
Jafeth Gonzalez
5.0
Reviewed Aug 19, 2025
Harith Y
4.0
Reviewed Jan 11, 2025