Steven Sanderson wraps up a series on shiny and tinyAML. Part 3 extends options for regression:
As data science continues to be a sought-after field, creating a reliable and accurate model is essential. While there are various machine learning algorithms available, the process of selecting the correct algorithm can be complex. The
{tidyAML}
package, part of thetidymodels
suite, offers an easy-to-use, consistent interface for building machine learning models. In this post, we will explore a Shiny application that utilizestidyAML
to build a machine learning model.Today I have updated the
tidyAML
shiny app to include the ability to set the parameter of thefast_regression()
function.parsnip_fns
and this is things likelinear_reg
.
And part 4 includes classification:
This is a Shiny app for building models using the
{tidyAML}
which is based on thetidymodels
package in R. The app allows you to upload your own data or choose from one of two built-in datasets (mtcars or iris) and select the type of model you want to build (regression or classification).Let’s take a closer look at the code.
This was an interesting series, for sure.