v0.1.2 (July 15, 2022) ----------------------- This is a minor release with bug fixes for issues identified since ``v0.1.1``. In this release, most of the classes are renamed and constructed following referring to Python `PEP8 `__. - Fixed a bug that appeared within the bootstrapping algorithm on 32-bit systems. - Fixed a bug where :class:`watex.cases.features.FeatureInspection` would crash on mixed categorical and numerical inputs. Now a crash is avoided and both data types. - Revised the whole module :mod:`watex.erp` as well as the detection of the conductive zone. - Fixed a bug where the auto-detection shape of anomaly "H" is confused with "U". See the :ref:`DC -method `. - Fixed a bug where the term:`sfi` is wrong computed when the value of resistivity is relatively higher. - Fixed a bug where :func:`despine` would cause an error when trying to trim spines on a matplotlib categorical axis. - Adapted to a change in the auto-selection of the best anomaly that caused problems with multiple reading excel sheets. - Developed a :func:`watex.utils.funcutils.read_from_excelsheets` to parse multiple excel data from different localities at once. - Deprecated several utility functions that are no longer used internally (``select_anomaly``, ``getminVal``, ``compute_lower_anomaly``, and ``define_conductive_zone``, ``compute_sfi``). ``compute_sfi`` is henceforth replace by :func:`watex.sfi` - Fixed bugs in :class:`watex.cases.processing.Preprocessing` and :class:`watex.cases.processing.Processing` and adapted to rearranged to accept other datasets whose objective is for predicting the :term:`groundwater` :term:`flow rate`. - Fixed bugs :class:`watex.cases.modeling.BaseModel` especially in the method :meth:`watex.cases.modeling.BaseModel.get_learning_curve` decoratored by :class:`watex.decorators.visualize_valearn_curve`. Henceforth returns the keyword arguments and are systematically used to customize the validation curve from the base learning curve.