/softmax-logit-paths

Plots how the logit values that are passed into the softmax function change over time as the model is trained.

Primary LanguagePythonMIT LicenseMIT

Softmax Logit Paths Visualised

Use main.py to visualize how the logit values that are passed into the softmax function change over time as the model is trained with SGD (stochastic gradient descent) or the Adam optimizer.

This code if from my YouTube video:

Softmax Function Explained In Depth with 3D Visuals

https://youtu.be/ytbYRIN0N4g