- linear regression gradient
- L1 vs L2
- logistic regression
- loss functions
Classical Machine Learning / regression
Regression
Linear, polynomial, Ridge, Lasso, ElasticNet, logistic regression, assumptions, and loss functions.
shellstatic shell now
Regularization playground for L1/L2, train/test error, coefficients, and decision boundary shape.
- What is the core job of "Regression"?
- Which common mistake would break a production implementation of this topic?
- Which inputs or limits must be validated before the interactive feature ships?
- What is the smallest test that proves the future implementation behaves correctly?
- When does this module really need backend compute, and when is a UI simulation enough?
- Start with one focused feature, not a full course inside one page.
- All public inputs must be typed, bounded, and covered by reject-case tests.
- If a model, dataset, or job is added, document source, license, limits, and fallback.
- The interaction must explain the topic rather than serve as decoration.