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Mathematics for Machine Learning: Linear Algebra

Video Description
In this video, we take a look at CLIP (contrastive language image pretraining). What is it? Why do we have it? How does it look? And some code!
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[1 📚] Main Paper: https://openai.com/index/clip/
[2 📚] Slides: https://link.excalidraw.com/p/readonly/STU1Z0GcInkQNvA8naKM
[3 📚] Code: https://github.com/ajhalthor/computer-vision-101/tree/main/CLIP
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CHAPTERS
00:00 What is CLIP?
00:51 How is CLIP Trained?
04:23 Zero-shot Inference
06:30 Why CLIP?
07:25 Code to illustrate CLIP's rich encoding
09:20 Performance
09:45 Linear Probing
11:06 Quiz Time
12:04 Summary