mlflow.diviner
The mlflow.diviner module provides an API for logging, saving and loading diviner models.
Diviner wraps several popular open source time series forecasting libraries in a unified API that
permits training, back-testing cross validation, and forecasting inference for groups of related
series.
This module exports groups of univariate diviner models in the following formats:
- Diviner format
Serialized instance of a
divinermodel type using native diviner serializers. (e.g., “GroupedProphet” or “GroupedPmdarima”)mlflow.pyfuncProduced for use by generic pyfunc-based deployment tools and for batch auditing of historical forecasts.
- mlflow.diviner.get_default_conda_env()[source]
- Returns
The default Conda environment for MLflow Models produced with the
Divinerflavor that is produced by calls tosave_model()andlog_model().
- mlflow.diviner.get_default_pip_requirements()[source]
- Returns
A list of default pip requirements for MLflow Models produced with the
Divinerflavor. Calls tosave_model()andlog_model()produce a pip environment that, at a minimum, contains these requirements.
- mlflow.diviner.load_model(model_uri, dst_path=None, **kwargs)[source]
Load a
Divinerobject from a local file or a run.- Parameters
model_uri –
The location, in URI format, of the MLflow model. For example:
/Users/me/path/to/local/modelrelative/path/to/local/models3://my_bucket/path/to/modelruns:/<mlflow_run_id>/run-relative/path/to/modelmlflow-artifacts:/path/to/model
For more information about supported URI schemes, see Referencing Artifacts.
dst_path – The local filesystem path to which to download the model artifact. This directory must already exist if provided. If unspecified, a local output path will be created.
kwargs – Optional configuration options for loading of a Diviner model. For models that have been fit and saved using Spark, if a specific DFS temporary directory is desired for loading of Diviner models, use the keyword argument “dfs_tmpdir” to define the loading temporary path for the model during loading.
- Returns
A
Divinermodel instance.
- mlflow.diviner.log_model(diviner_model, artifact_path: str | None = None, conda_env=None, code_paths=None, registered_model_name=None, signature: mlflow.models.signature.ModelSignature = None, input_example: Union[pandas.core.frame.DataFrame, numpy.ndarray, dict, list, csr_matrix, csc_matrix, str, bytes, tuple] = None, await_registration_for=300, pip_requirements=None, extra_pip_requirements=None, metadata=None, name: str | None = None, params: dict[str, typing.Any] | None = None, tags: dict[str, typing.Any] | None = None, model_type: str | None = None, step: int = 0, model_id: str | None = None, **kwargs)[source]
Log a
Divinerobject as an MLflow artifact for the current run.- Parameters
diviner_model –
Divinermodel that has beenfiton a grouped temporalDataFrame.artifact_path – Deprecated. Use name instead.
conda_env –
Either a dictionary representation of a Conda environment or the path to a conda environment yaml file. If provided, this describes the environment this model should be run in. At a minimum, it should specify the dependencies contained in get_default_conda_env(). If
None, a conda environment with pip requirements inferred bymlflow.models.infer_pip_requirements()is added to the model. If the requirement inference fails, it falls back to using get_default_pip_requirements. pip requirements fromconda_envare written to a piprequirements.txtfile and the full conda environment is written toconda.yaml. The following is an example dictionary representation of a conda environment:{ "name": "mlflow-env", "channels": ["conda-forge"], "dependencies": [ "python=3.8.15", { "pip": [ "diviner==x.y.z" ], }, ], }
code_paths –
A list of local filesystem paths to Python file dependencies (or directories containing file dependencies). These files are prepended to the system path when the model is loaded. Files declared as dependencies for a given model should have relative imports declared from a common root path if multiple files are defined with import dependencies between them to avoid import errors when loading the model.
For a detailed explanation of
code_pathsfunctionality, recommended usage patterns and limitations, see the code_paths usage guide.registered_model_name – If given, create a model version under
registered_model_name, also creating a registered model if one with the given name does not exist.signature –
Model Signaturedescribes model input and outputSchema. The model signature can beinferredfrom datasets with valid model input (e.g. the training dataset with target column omitted) and valid model output (e.g. model predictions generated on the training dataset), for example:from mlflow.models import infer_signature auto_arima_obj = AutoARIMA(out_of_sample_size=60, maxiter=100) base_auto_arima = GroupedPmdarima(model_template=auto_arima_obj).fit( df=training_data, group_key_columns=("region", "state"), y_col="y", datetime_col="ds", silence_warnings=True, ) predictions = model.predict(n_periods=30, alpha=0.05, return_conf_int=True) signature = infer_signature(data, predictions)
input_example – one or several instances of valid model input. The input example is used as a hint of what data to feed the model. It will be converted to a Pandas DataFrame and then serialized to json using the Pandas split-oriented format, or a numpy array where the example will be serialized to json by converting it to a list. Bytes are base64-encoded. When the
signatureparameter isNone, the input example is used to infer a model signature.await_registration_for – Number of seconds to wait for the model version to finish being created and is in
READYstatus. By default, the function waits for five minutes. Specify 0 or None to skip waiting.pip_requirements – Either an iterable of pip requirement strings (e.g.
["diviner", "-r requirements.txt", "-c constraints.txt"]) or the string path to a pip requirements file on the local filesystem (e.g."requirements.txt"). If provided, this describes the environment this model should be run in. IfNone, a default list of requirements is inferred bymlflow.models.infer_pip_requirements()from the current software environment. If the requirement inference fails, it falls back to using get_default_pip_requirements. Both requirements and constraints are automatically parsed and written torequirements.txtandconstraints.txtfiles, respectively, and stored as part of the model. Requirements are also written to thepipsection of the model’s conda environment (conda.yaml) file.extra_pip_requirements –
Either an iterable of pip requirement strings (e.g.
["pandas", "-r requirements.txt", "-c constraints.txt"]) or the string path to a pip requirements file on the local filesystem (e.g."requirements.txt"). If provided, this describes additional pip requirements that are appended to a default set of pip requirements generated automatically based on the user’s current software environment. Both requirements and constraints are automatically parsed and written torequirements.txtandconstraints.txtfiles, respectively, and stored as part of the model. Requirements are also written to thepipsection of the model’s conda environment (conda.yaml) file.Warning
The following arguments can’t be specified at the same time:
conda_envpip_requirementsextra_pip_requirements
This example demonstrates how to specify pip requirements using
pip_requirementsandextra_pip_requirements.metadata – Custom metadata dictionary passed to the model and stored in the MLmodel file.
name – Model name.
params – A dictionary of parameters to log with the model.
tags – A dictionary of tags to log with the model.
model_type – The type of the model.
step – The step at which to log the model outputs and metrics
model_id – The ID of the model.
kwargs – Additional arguments for
mlflow.models.model.ModelAdditionally, for models that have been fit in Spark, the following supported configuration options are available to set. Current supported options: - partition_by for setting a (or several) partition columns as a list of column names. Must be a list of strings of grouping key column(s). - partition_count for setting the number of part files to write from a repartition per partition_by group. The default part file count is 200. - dfs_tmpdir for specifying the DFS temporary location where the model will be stored while copying from a local file system to a Spark-supported “dbfs:/” scheme.
- Returns
A
ModelInfoinstance that contains the metadata of the logged model.
- mlflow.diviner.save_model(diviner_model, path, conda_env=None, code_paths=None, mlflow_model=None, signature: mlflow.models.signature.ModelSignature = None, input_example: Union[pandas.core.frame.DataFrame, numpy.ndarray, dict, list, csr_matrix, csc_matrix, str, bytes, tuple] = None, pip_requirements=None, extra_pip_requirements=None, metadata=None, **kwargs)[source]
Save a
Divinermodel object to a path on the local file system.- Parameters
diviner_model –
Divinermodel that has beenfiton a grouped temporalDataFrame.path – Local path destination for the serialized model is to be saved.
conda_env –
Either a dictionary representation of a Conda environment or the path to a conda environment yaml file. If provided, this describes the environment this model should be run in. At a minimum, it should specify the dependencies contained in get_default_conda_env(). If
None, a conda environment with pip requirements inferred bymlflow.models.infer_pip_requirements()is added to the model. If the requirement inference fails, it falls back to using get_default_pip_requirements. pip requirements fromconda_envare written to a piprequirements.txtfile and the full conda environment is written toconda.yaml. The following is an example dictionary representation of a conda environment:{ "name": "mlflow-env", "channels": ["conda-forge"], "dependencies": [ "python=3.8.15", { "pip": [ "diviner==x.y.z" ], }, ], }
code_paths –
A list of local filesystem paths to Python file dependencies (or directories containing file dependencies). These files are prepended to the system path when the model is loaded. Files declared as dependencies for a given model should have relative imports declared from a common root path if multiple files are defined with import dependencies between them to avoid import errors when loading the model.
For a detailed explanation of
code_pathsfunctionality, recommended usage patterns and limitations, see the code_paths usage guide.mlflow_model –
mlflow.models.Modelthe flavor that this model is being added to.signature –
Model Signaturedescribes model input and outputSchema. The model signature can beinferredfrom datasets with valid model input (e.g. the training dataset with target column omitted) and valid model output (e.g. model predictions generated on the training dataset), for example:from mlflow.models import infer_signature model = diviner.GroupedProphet().fit(data, ("region", "state")) predictions = model.predict(prediction_config) signature = infer_signature(data, predictions)
input_example – one or several instances of valid model input. The input example is used as a hint of what data to feed the model. It will be converted to a Pandas DataFrame and then serialized to json using the Pandas split-oriented format, or a numpy array where the example will be serialized to json by converting it to a list. Bytes are base64-encoded. When the
signatureparameter isNone, the input example is used to infer a model signature.pip_requirements – Either an iterable of pip requirement strings (e.g.
["diviner", "-r requirements.txt", "-c constraints.txt"]) or the string path to a pip requirements file on the local filesystem (e.g."requirements.txt"). If provided, this describes the environment this model should be run in. IfNone, a default list of requirements is inferred bymlflow.models.infer_pip_requirements()from the current software environment. If the requirement inference fails, it falls back to using get_default_pip_requirements. Both requirements and constraints are automatically parsed and written torequirements.txtandconstraints.txtfiles, respectively, and stored as part of the model. Requirements are also written to thepipsection of the model’s conda environment (conda.yaml) file.extra_pip_requirements –
Either an iterable of pip requirement strings (e.g.
["pandas", "-r requirements.txt", "-c constraints.txt"]) or the string path to a pip requirements file on the local filesystem (e.g."requirements.txt"). If provided, this describes additional pip requirements that are appended to a default set of pip requirements generated automatically based on the user’s current software environment. Both requirements and constraints are automatically parsed and written torequirements.txtandconstraints.txtfiles, respectively, and stored as part of the model. Requirements are also written to thepipsection of the model’s conda environment (conda.yaml) file.Warning
The following arguments can’t be specified at the same time:
conda_envpip_requirementsextra_pip_requirements
This example demonstrates how to specify pip requirements using
pip_requirementsandextra_pip_requirements.metadata – Custom metadata dictionary passed to the model and stored in the MLmodel file.
kwargs – Optional configurations for Spark DataFrame storage iff the model has been fit in Spark. Current supported options: - partition_by for setting a (or several) partition columns as a list of column names. Must be a list of strings of grouping key column(s). - partition_count for setting the number of part files to write from a repartition per partition_by group. The default part file count is 200. - dfs_tmpdir for specifying the DFS temporary location where the model will be stored while copying from a local file system to a Spark-supported “dbfs:/” scheme.