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* aGrUM
    * Learning algorithm `gum::learning::MIIC` can use the weighted databases.
    * Internal improvements for `act` tool, `cmake` and compilers (`clang`).
  
* pyAgrum
    * New visualisation for `gum::DiscretizedVariable` + new config to select this visualisation.
    * `pyAgrum.BNLearner` can use now the weighted databases for all learning algorithms.
    * Documentation improvements.
    * `pyAgrum.lib.bn2roc`
        * adding new functions `get{ROC|PR}points()`.
        * accepting `pandas.DataFrame` as data source (`datasrc`).
        * adding Fbeta (beta!=1) scores to bn2roc.
        * adding F-Beta threshold on ROC and PR curves.
        * `bn2roc` functions now force many parameters to be keyword-arguments in order to prevent the risk of mixing arguments.
        * adding new functions `anim{ROC|PR}`.
    * `pyAgrum.skbn.Discretizer` can propose a set of labels (that includes the labels from the database) when `"NoDiscretization"` is selected. (see tutorial `52-Classifier_Discretizer`).