The mlflow.pmdarima
module provides an API for logging and loading pmdarima
models. This module exports univariate pmdarima
models in the following formats:
Serialized instance of a pmdarima
model using pickle.
mlflow.pyfunc
Produced for use by generic pyfunc-based deployment tools and for batch auditing of historical forecasts.
import pandas as pd import mlflow import mlflow.pyfunc import pmdarima from pmdarima import auto_arima # Define a custom model class class PmdarimaWrapper(mlflow.pyfunc.PythonModel): def load_context(self, context): self.model = context.artifacts["model"] def predict(self, context, model_input): return self.model.predict(n_periods=model_input.shape[0]) # Specify locations of source data and the model artifact SOURCE_DATA = "https://raw.githubusercontent.com/facebook/prophet/master/examples/example_retail_sales.csv" ARTIFACT_PATH = "model" # Read data and recode columns sales_data = pd.read_csv(SOURCE_DATA) sales_data.rename(columns={"y": "sales", "ds": "date"}, inplace=True) # Split the data into train/test train_size = int(0.8 * len(sales_data)) train, _ = sales_data[:train_size], sales_data[train_size:] # Create the model model = pmdarima.auto_arima(train["sales"], seasonal=True, m=12) # Log the model with mlflow.start_run(): wrapper = PmdarimaWrapper() mlflow.pyfunc.log_model( name="model", python_model=wrapper, artifacts={"model": mlflow.pyfunc.model_to_dict(model)}, )
The default Conda environment for MLflow Models produced by calls to save_model()
and log_model()
.
A list of default pip requirements for MLflow Models produced by this flavor. Calls to save_model()
and log_model()
produce a pip environment that, at a minimum, contains these requirements.
Load a pmdarima
ARIMA
model or Pipeline
object from a local file or a run.
model_uri â
The location, in URI format, of the MLflow model. For example:
/Users/me/path/to/local/model
relative/path/to/local/model
s3://my_bucket/path/to/model
runs:/<mlflow_run_id>/run-relative/path/to/model
mlflow-artifacts:/path/to/model
For more information about supported URI schemes, see Referencing Artifacts.
dst_path â The local filesystem path to which to download the model artifact. This directory must already exist. If unspecified, a local output path will be created.
A pmdarima
model instance
import pandas as pd import mlflow from mlflow.models import infer_signature import pmdarima from pmdarima.metrics import smape # Specify locations of source data and the model artifact SOURCE_DATA = "https://raw.githubusercontent.com/facebook/prophet/master/examples/example_retail_sales.csv" ARTIFACT_PATH = "model" # Read data and recode columns sales_data = pd.read_csv(SOURCE_DATA) sales_data.rename(columns={"y": "sales", "ds": "date"}, inplace=True) # Split the data into train/test train_size = int(0.8 * len(sales_data)) train = sales_data[:train_size] test = sales_data[train_size:] with mlflow.start_run(): # Create the model model = pmdarima.auto_arima(train["sales"], seasonal=True, m=12) # Calculate metrics prediction = model.predict(n_periods=len(test)) metrics = {"smape": smape(test["sales"], prediction)} # Infer signature input_sample = pd.DataFrame(train["sales"]) output_sample = pd.DataFrame(model.predict(n_periods=5)) signature = infer_signature(input_sample, output_sample) # Log model input_example = input_sample.head() model_info = mlflow.pmdarima.log_model( model, name=ARTIFACT_PATH, signature=signature, input_example=input_example ) # Load the model loaded_model = mlflow.pmdarima.load_model(model_info.model_uri) # Forecast for the next 60 days forecast = loaded_model.predict(n_periods=60) print(f"forecast: {forecast}")
forecast: 234 382452.397246 235 380639.458720 236 359805.611219 ...
Logs a pmdarima
ARIMA
or Pipeline
object as an MLflow artifact for the current run.
pmdarima_model â pmdarima ARIMA
or Pipeline
model that has been fit
on a temporal series.
artifact_path â Deprecated. Use name instead.
conda_env â
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 by mlflow.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 from conda_env
are written to a pip requirements.txt
file and the full conda environment is written to conda.yaml
. The following is an example dictionary representation of a conda environment:
{ "name": "mlflow-env", "channels": ["conda-forge"], "dependencies": [ "python=3.8.15", { "pip": [ "pmdarima==x.y.z" ], }, ], }
code_paths â
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_paths
functionality, recommended usage patterns and limitations, see the code_paths usage guide.
registered_model_name â 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 â
an instance of the ModelSignature
class that describes the modelâs inputs and outputs. If not specified but an input_example
is supplied, a signature will be automatically inferred based on the supplied input example and model. To disable automatic signature inference when providing an input example, set signature
to False
. To manually infer a model signature, call infer_signature()
on datasets with valid model inputs, such as a training dataset with the target column omitted, and valid model outputs, like model predictions made on the training dataset, for example:
from mlflow.models import infer_signature model = pmdarima.auto_arima(data) predictions = model.predict(n_periods=30, return_conf_int=False) signature = infer_signature(data, predictions)
Warning
if utilizing confidence interval generation in the predict
method of a pmdarima
model (return_conf_int=True
), the signature will not be inferred due to the complex tuple return type when using the native ARIMA.predict()
API. infer_schema
will function correctly if using the pyfunc
flavor of the model, though.
input_example â 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 signature
parameter is None
, the input example is used to infer a model signature.
await_registration_for â Number of seconds to wait for the model version to finish being created and is in READY
status. By default, the function waits for five minutes. Specify 0 or None to skip waiting.
pip_requirements â Either an iterable of pip requirement strings (e.g. ["pmdarima", "-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. If None
, a default list of requirements is inferred by mlflow.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 to requirements.txt
and constraints.txt
files, respectively, and stored as part of the model. Requirements are also written to the pip
section of the modelâs conda environment (conda.yaml
) file.
extra_pip_requirements â
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 userâs current software environment. Both requirements and constraints are automatically parsed and written to requirements.txt
and constraints.txt
files, respectively, and stored as part of the model. Requirements are also written to the pip
section of the modelâs conda environment (conda.yaml
) file.
Warning
The following arguments canât be specified at the same time:
conda_env
pip_requirements
extra_pip_requirements
This example demonstrates how to specify pip requirements using pip_requirements
and extra_pip_requirements
.
metadata â Custom metadata dictionary passed to the model and stored in the MLmodel file.
name â Model name.
params â A dictionary of parameters to log with the model.
tags â A dictionary of tags to log with the model.
model_type â The type of the model.
step â The step at which to log the model outputs and metrics
model_id â The ID of the model.
kwargs â Additional arguments for mlflow.models.model.Model
A ModelInfo
instance that contains the metadata of the logged model.
import pandas as pd import mlflow from mlflow.models import infer_signature import pmdarima from pmdarima.metrics import smape # Specify locations of source data and the model artifact SOURCE_DATA = "https://raw.githubusercontent.com/facebook/prophet/master/examples/example_retail_sales.csv" ARTIFACT_PATH = "model" # Read data and recode columns sales_data = pd.read_csv(SOURCE_DATA) sales_data.rename(columns={"y": "sales", "ds": "date"}, inplace=True) # Split the data into train/test train_size = int(0.8 * len(sales_data)) train = sales_data[:train_size] test = sales_data[train_size:] with mlflow.start_run(): # Create the model model = pmdarima.auto_arima(train["sales"], seasonal=True, m=12) # Calculate metrics prediction = model.predict(n_periods=len(test)) metrics = {"smape": smape(test["sales"], prediction)} # Infer signature input_sample = pd.DataFrame(train["sales"]) output_sample = pd.DataFrame(model.predict(n_periods=5)) signature = infer_signature(input_sample, output_sample) # Log model mlflow.pmdarima.log_model(model, name=ARTIFACT_PATH, signature=signature)
Save a pmdarima ARIMA
model or Pipeline
object to a path on the local file system.
pmdarima_model â pmdarima ARIMA
or Pipeline
model that has been fit
on a temporal series.
path â Local path destination for the serialized model (in pickle format) is to be saved.
conda_env â
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 by mlflow.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 from conda_env
are written to a pip requirements.txt
file and the full conda environment is written to conda.yaml
. The following is an example dictionary representation of a conda environment:
{ "name": "mlflow-env", "channels": ["conda-forge"], "dependencies": [ "python=3.8.15", { "pip": [ "pmdarima==x.y.z" ], }, ], }
code_paths â
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_paths
functionality, recommended usage patterns and limitations, see the code_paths usage guide.
mlflow_model â mlflow.models.Model
this flavor is being added to.
signature â
an instance of the ModelSignature
class that describes the modelâs inputs and outputs. If not specified but an input_example
is supplied, a signature will be automatically inferred based on the supplied input example and model. To disable automatic signature inference when providing an input example, set signature
to False
. To manually infer a model signature, call infer_signature()
on datasets with valid model inputs, such as a training dataset with the target column omitted, and valid model outputs, like model predictions made on the training dataset, for example:
from mlflow.models import infer_signature model = pmdarima.auto_arima(data) predictions = model.predict(n_periods=30, return_conf_int=False) signature = infer_signature(data, predictions)
Warning
if utilizing confidence interval generation in the predict
method of a pmdarima
model (return_conf_int=True
), the signature will not be inferred due to the complex tuple return type when using the native ARIMA.predict()
API. infer_schema
will function correctly if using the pyfunc
flavor of the model, though.
input_example â 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 signature
parameter is None
, the input example is used to infer a model signature.
pip_requirements â Either an iterable of pip requirement strings (e.g. ["pmdarima", "-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. If None
, a default list of requirements is inferred by mlflow.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 to requirements.txt
and constraints.txt
files, respectively, and stored as part of the model. Requirements are also written to the pip
section of the modelâs conda environment (conda.yaml
) file.
extra_pip_requirements â
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 userâs current software environment. Both requirements and constraints are automatically parsed and written to requirements.txt
and constraints.txt
files, respectively, and stored as part of the model. Requirements are also written to the pip
section of the modelâs conda environment (conda.yaml
) file.
Warning
The following arguments canât be specified at the same time:
conda_env
pip_requirements
extra_pip_requirements
This example demonstrates how to specify pip requirements using pip_requirements
and extra_pip_requirements
.
metadata â Custom metadata dictionary passed to the model and stored in the MLmodel file.
import pandas as pd import mlflow import pmdarima # Specify locations of source data and the model artifact SOURCE_DATA = "https://raw.githubusercontent.com/facebook/prophet/master/examples/example_retail_sales.csv" ARTIFACT_PATH = "model" # Read data and recode columns sales_data = pd.read_csv(SOURCE_DATA) sales_data.rename(columns={"y": "sales", "ds": "date"}, inplace=True) # Split the data into train/test train_size = int(0.8 * len(sales_data)) train = sales_data[:train_size] test = sales_data[train_size:] with mlflow.start_run(): # Create the model model = pmdarima.auto_arima(train["sales"], seasonal=True, m=12) # Save the model to the specified path mlflow.pmdarima.save_model(model, "model")
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