Package: MLwrap
Title: Machine Learning Modelling for Everyone
Version: 0.1.1
Authors@R: c(person(given   = "Javier", family = "Martínez García",
                    role    = "aut", 
                    email   = "javier.nezcia@gmail.com",
                    comment = c(ORCID = "0009-0007-7861-5274")),
             person(given = "Juan José", family = "Montaño Moreno",
                    role  = "ctb", 
                    email = "juanjo.montano@uib.es",
                    comment = c(ORCID = "0000-0002-1116-1964")),
             person(given = "Albert", family = "Sesé",
                    role  = c("cre", "ctb"), 
                    email = "albert.sese@uib.es",
                    comment = c(ORCID = "0000-0003-3771-1749")))
Description: A minimal library specifically designed to make the estimation of Machine Learning
             (ML) techniques as easy and accessible as possible, particularly within the framework of
             the Knowledge Discovery in Databases (KDD) process in data mining. The package provides
             essential tools to structure and execute each stage of a predictive or classification
             modeling workflow, aligning closely with the fundamental steps of the KDD methodology,
             from data selection and preparation, through model building and tuning, to the
             interpretation and evaluation of results using Sensitivity Analysis. The 'MLwrap' workflow
             is organized into four core steps; preprocessing(), build_model(), fine_tuning(), and
             sensitivity_analysis(). These steps correspond, respectively, to data preparation and
             transformation, model construction, hyperparameter optimization, and sensitivity analysis.
             The user can access comprehensive model evaluation results including fit assessment metrics,
             plots, predictions, and performance diagnostics for ML models implemented through 'Neural
             Networks', 'Random Forest', 'XGBoost' (Extreme Gradient Boosting), and 'Support Vector
             Machines' (SVM) algorithms. By streamlining these phases, 'MLwrap' aims to simplify the
             implementation of ML techniques, allowing analysts and data scientists to focus on
             extracting actionable insights and meaningful patterns from large datasets, in line with
             the objectives of the KDD process.
License: GPL-3
Encoding: UTF-8
RoxygenNote: 7.3.3
Depends: R (>= 4.1.0)
Imports: R6, tidyr, magrittr, dials, parsnip, recipes, rsample, tune,
        workflows, yardstick, vip, glue, innsight, fastshap,
        DiagrammeR, ggbeeswarm, ggplot2, sensitivity, dplyr, rlang,
        tibble, patchwork, cli
Suggests: testthat (>= 3.0.0), torch, brulee, ranger, kernlab, xgboost
Config/testthat/edition: 3
URL: https://github.com/AlbertSesePsy/MLwrap
BugReports: https://github.com/AlbertSesePsy/MLwrap/issues
LazyData: true
NeedsCompilation: no
Packaged: 2025-09-17 17:09:52 UTC; uib
Author: Javier Martínez García [aut] (ORCID:
    <https://orcid.org/0009-0007-7861-5274>),
  Juan José Montaño Moreno [ctb] (ORCID:
    <https://orcid.org/0000-0002-1116-1964>),
  Albert Sesé [cre, ctb] (ORCID: <https://orcid.org/0000-0003-3771-1749>)
Maintainer: Albert Sesé <albert.sese@uib.es>
Repository: CRAN
Date/Publication: 2025-09-18 12:50:29 UTC
