The xgboost model flavor enables logging of XGBoost models in MLflow format modo the mlflow

The xgboost model flavor enables logging of XGBoost models in MLflow format modo the mlflow

xgboost.save_model() and mlflow.xgboost.log_model() methods in python and mlflow_save_model and mlflow_log_model sopra R respectively. These methods also add the python_function flavor preciso the MLflow Models that they produce, allowing the models esatto be interpreted as generic Python functions for inference inizio mlflow.pyfunc.load_model() . This loaded PyFunc model can only be scored with DataFrame spinta. You can also use the mlflow.xgboost.load_model() method puro load MLflow Models with the xgboost model flavor durante native XGBoost format.

LightGBM ( lightgbm )

The lightgbm model flavor enables logging of LightGBM models durante MLflow format cammino the mlflow.lightgbm.save_model() and mlflow.lightgbm.log_model() methods. These methods also add the python_function flavor puro the MLflow Models that they produce, allowing the models to be interpreted as generic Python functions for inference modo mlflow.pyfunc.load_model() . This loaded PyFunc model can only be scored with DataFrame stimolo. You can also use the mlflow.lightgbm.load_model() method to load MLflow Models with the lightgbm model flavor in native LightGBM format.

CatBoost ( catboost )

The catboost model flavor enables logging of CatBoost models in MLflow format coraggio the mlflow.catboost.save_model() and mlflow.catboost.log_model() methods. These methods also add the python_function flavor to the MLflow Models that they produce, allowing the models to be interpreted as generic Python functions for inference strada mlflow.pyfunc.load_model() . You can also use the mlflow.catboost.load_model() method to load MLflow Models with the catboost model flavor durante native CatBoost format.

Spacy( spaCy )

The spaCy model flavor enables logging of spaCy models con MLflow format modo the mlflow.spacy.save_model() and mlflow.spacy.log_model() methods. Additionally, these methods add the python_function flavor puro the MLflow Models that they produce, allowing the models onesto be interpreted as generic Python functions for inference via mlflow.pyfunc.load_model() . This loaded PyFunc model can only be scored with DataFrame input. You can also use the mlflow.spacy.load_model() method sicuro load MLflow Models with the spacy model flavor per native spaCy format.

Fastai( fastai )

The fastai model flavor enables logging of fastai Learner models mediante MLflow format modo the mlflow.fastai.save_model() and mlflow.fastai.log_model() methods. Additionally, these methods add the python_function flavor to the MLflow Models that they produce, allowing the models preciso be interpreted as generic Python functions for inference coraggio mlflow.pyfunc.load_model() . This loaded PyFunc model can only be scored with DataFrame incentivo. You can also use the mlflow.fastai.load_model() method esatto load MLflow Models with the fastai model flavor con native fastai format.

Statsmodels ( statsmodels )

The statsmodels model flavor enables logging of Statsmodels models sopra MLflow format via the mlflow.statsmodels.save_model() and mlflow.statsmodels.log_model() methods. These methods also add the python_function flavor puro the MLflow Models that they produce, allowing the models sicuro be interpreted as generic Python functions for inference modo mlflow.pyfunc.load_model() . This loaded PyFunc model can only be scored with DataFrame input. You can also use the mlflow.statsmodels.load_model() method to load MLflow Models with good grief on-line the statsmodels model flavor durante native statsmodels format.

As for now, automatic logging is restricted sicuro parameters, metrics and models generated by per call esatto fit on verso statsmodels model.

Prophet ( prophet )

The prophet model flavor enables logging of Prophet models per MLflow format via the mlflow.prophet.save_model() and mlflow.prophet.log_model() methods. These methods also add the python_function flavor to the MLflow Models that they produce, allowing the models onesto be interpreted as generic Python functions for inference strada mlflow.pyfunc.load_model() . This loaded PyFunc model can only be scored with DataFrame incentivo. You can also use the mlflow.prophet.load_model() method onesto load MLflow Models with the prophet model flavor sopra native prophet format.

Model Customization

While MLflow’s built-con model persistence utilities are convenient for packaging models from various popular ML libraries durante MLflow Model format, they do not cover every use case. For example, you may want preciso use verso model from an ML library that is not explicitly supported by MLflow’s built-durante flavors. Alternatively, you may want esatto package custom inference code and datazione esatto create an MLflow Model. Fortunately, MLflow provides two solutions that can be used onesto accomplish these tasks: Custom Python Models and Custom Flavors .

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