While Model Trains

Read data blog posts.
Carefully handpicked.
Presented 3 at a time.

Why Open-Source a Model?

Matt Rickard

A compilation of several examples that illustrate the motivation behind open sourcing a machine learning model.

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How to Write a Git Commit Message

cbeams

Seven rules to write clear Git commit messages.

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Variance after scaling and summing: One of the most useful facts from statistics

Chris Said

"What do R2, laboratory error analysis, ensemble learning, meta-analysis, and financial portfolio risk all have in common? The answer is that they all depend on a fundamental principle of statistics that is not as widely known as it should be. Once this principle is understood, a lot of stuff starts to make more sense."

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