* Bug fixes:
* Thresholds for XGBoost trees are forced to be float32 now (https://github.com/BayesWitnesses/m2cgen/issues/168).
* Fixed support for newer versions of XGBoost, in which the default value for the `base_score` parameter became None (https://github.com/BayesWitnesses/m2cgen/issues/182).
* Models can now be transpiled into the Dart language. Kudos to MattConflitti for this great addition 🎉
* Support for following models has been introduced:
* Models from the `statsmodels` package are now supported. The list of added models includes: GLS, GLSAR, OLS, ProcessMLE, QuantReg and WLS.
* Models from the `lightning` package: AdaGradRegressor/AdaGradClassifier, CDRegressor/CDClassifier, FistaRegressor/FistaClassifier, SAGARegressor/SAGAClassifier, SAGRegressor/SAGClassifier, SDCARegressor/SDCAClassifier, SGDClassifier, LinearSVR/LinearSVC and KernelSVC.
* RANSACRegressor from the `scikit-learn` package.
* The name of the scoring function can now be changed via a parameter. Thanks mrshu 💪
* The `SubroutineExpr` expression has been removed from AST. The logic of how to split the generated code into subroutines is now focused in interpreters and was completely removed from assemblers.