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hey guys welcome to digital training channel on youtube and as you may know i tend to focus a bit more on image processing and image analysis tasks and as you know if you go back to my one of the earlier videos i spent quite a bit of time talking about traditional image processing whether it is gaussian denoising or median denoising or image registrations and then i slowly worked up towards traditional machine learning where we extract features and so on and then eventually we moved on to deep learning for unit-based semantic segmentation for example and we looked at 2d and we looked at 3d we looked at satellite and bratz type of data sets and so on when we were talking about those we learned about how we can actually read multiple files or how we can apply a task that we demonstrated on a single image for example like gaussian denoising and apply that to a folder full of images or apply that to a tip stack and so on a question that i common often get is how do you process a whole sli