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Jon Krohn

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Jon Krohn

Gradient Descent (Hands-on with PyTorch)

Added on November 27, 2021 by Jon Krohn.

In my preceding YouTube videos, we detailed exactly what the gradient of cost is. With that understanding, today we dig into what it means to *descend* this gradient and fit a machine learning model.

We publish a new video from my "Calculus for Machine Learning" course to YouTube every Wednesday. Playlist is here.

More detail about my broader "ML Foundations" curriculum and all of the associated open-source code is available in GitHub here.

In Calculus, Data Science, ML Foundations, Professional Development, YouTube Tags machinelearning, datascience, math, calculus, gradients, video
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