Skip to content

ovysotska/in_simple_english

Repository files navigation

Small projects to clarify big concepts

In this project, I try to clarify for myself and others the big mathematical (and not only) concepts. I try to find the simplest possible example and roll from there by asking a lot of "simple/obvious/stupid" questions. Here you can find a collection of Jupyter notebooks with different amount of content in them.

The links below will render the notebooks in nbviewer.

Main finished notebooks

gradient_descent - simplistic visualization of 1D and 2D gradient descent.

bag_of_visual_words - tf-idf reweighting for visual bag of words in pictures.

homogeneous_coords - couple of geometric operation for homogeneous points.

Interpolation - mainly thoughts about cubic interpolation and how to apply interpolations for scaling up images.

system_of_linear_equations - overview of how to solve Ax=b and Ax=0

local_image_operators - local image operators. Applying Binomial, Box and Sobel filter.

topological_sorting - code snippet to practice graph search using topological sorting.

Kullback_Leibler - an example of comparing two 1D discrete distribution using Kullback-Leibler divergence.

ml_regression - maximum likelihood estimation for linear regression. Bundle adjustment as a ML estimation method

Folder in_progress

This folder contains more complicated topics which were not completely simplified yet.

Gaussian Processes (gp)

* **GP_starting example**  - implementing GP from scratch
* **Gaussian_processes_functional** - GP implementation using funtional programming and multi dimensional input
* **SkLearn_example** - model selection and first steps for optimal parameter selection using sklearn framework

About

Small projects to clarify big concepts

Topics

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published