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| """Placeholder docstring""" |
| from __future__ import absolute_import |
|
|
| from typing import Union, Optional |
|
|
| from sagemaker import image_uris |
| from sagemaker.amazon.amazon_estimator import AmazonAlgorithmEstimatorBase |
| from sagemaker.amazon.common import RecordSerializer, RecordDeserializer |
| from sagemaker.amazon.hyperparameter import Hyperparameter as hp |
| from sagemaker.amazon.validation import gt, isin, ge |
| from sagemaker.predictor import Predictor |
| from sagemaker.model import Model |
| from sagemaker.session import Session |
| from sagemaker.utils import pop_out_unused_kwarg |
| from sagemaker.vpc_utils import VPC_CONFIG_DEFAULT |
| from sagemaker.workflow.entities import PipelineVariable |
|
|
|
|
| class FactorizationMachines(AmazonAlgorithmEstimatorBase): |
| """A supervised learning algorithm used in classification and regression. |
| |
| Factorization Machines combine the advantages of Support Vector Machines |
| with factorization models. It is an extension of a linear model that is |
| designed to capture interactions between features within high dimensional |
| sparse datasets economically. |
| """ |
|
|
| repo_name: str = "factorization-machines" |
| repo_version: str = "1" |
|
|
| num_factors: hp = hp("num_factors", gt(0), "An integer greater than zero", int) |
| predictor_type: hp = hp( |
| "predictor_type", |
| isin("binary_classifier", "regressor"), |
| 'Value "binary_classifier" or "regressor"', |
| str, |
| ) |
| epochs: hp = hp("epochs", gt(0), "An integer greater than 0", int) |
| clip_gradient: hp = hp("clip_gradient", (), "A float value", float) |
| eps: hp = hp("eps", (), "A float value", float) |
| rescale_grad: hp = hp("rescale_grad", (), "A float value", float) |
| bias_lr: hp = hp("bias_lr", ge(0), "A non-negative float", float) |
| linear_lr: hp = hp("linear_lr", ge(0), "A non-negative float", float) |
| factors_lr: hp = hp("factors_lr", ge(0), "A non-negative float", float) |
| bias_wd: hp = hp("bias_wd", ge(0), "A non-negative float", float) |
| linear_wd: hp = hp("linear_wd", ge(0), "A non-negative float", float) |
| factors_wd: hp = hp("factors_wd", ge(0), "A non-negative float", float) |
| bias_init_method: hp = hp( |
| "bias_init_method", |
| isin("normal", "uniform", "constant"), |
| 'Value "normal", "uniform" or "constant"', |
| str, |
| ) |
| bias_init_scale: hp = hp("bias_init_scale", ge(0), "A non-negative float", float) |
| bias_init_sigma: hp = hp("bias_init_sigma", ge(0), "A non-negative float", float) |
| bias_init_value: hp = hp("bias_init_value", (), "A float value", float) |
| linear_init_method: hp = hp( |
| "linear_init_method", |
| isin("normal", "uniform", "constant"), |
| 'Value "normal", "uniform" or "constant"', |
| str, |
| ) |
| linear_init_scale: hp = hp("linear_init_scale", ge(0), "A non-negative float", float) |
| linear_init_sigma: hp = hp("linear_init_sigma", ge(0), "A non-negative float", float) |
| linear_init_value: hp = hp("linear_init_value", (), "A float value", float) |
| factors_init_method: hp = hp( |
| "factors_init_method", |
| isin("normal", "uniform", "constant"), |
| 'Value "normal", "uniform" or "constant"', |
| str, |
| ) |
| factors_init_scale: hp = hp("factors_init_scale", ge(0), "A non-negative float", float) |
| factors_init_sigma: hp = hp("factors_init_sigma", ge(0), "A non-negative float", float) |
| factors_init_value: hp = hp("factors_init_value", (), "A float value", float) |
|
|
| def __init__( |
| self, |
| role: str, |
| instance_count: Optional[Union[int, PipelineVariable]] = None, |
| instance_type: Optional[Union[str, PipelineVariable]] = None, |
| num_factors: Optional[int] = None, |
| predictor_type: Optional[str] = None, |
| epochs: Optional[int] = None, |
| clip_gradient: Optional[float] = None, |
| eps: Optional[float] = None, |
| rescale_grad: Optional[float] = None, |
| bias_lr: Optional[float] = None, |
| linear_lr: Optional[float] = None, |
| factors_lr: Optional[float] = None, |
| bias_wd: Optional[float] = None, |
| linear_wd: Optional[float] = None, |
| factors_wd: Optional[float] = None, |
| bias_init_method: Optional[str] = None, |
| bias_init_scale: Optional[float] = None, |
| bias_init_sigma: Optional[float] = None, |
| bias_init_value: Optional[float] = None, |
| linear_init_method: Optional[str] = None, |
| linear_init_scale: Optional[float] = None, |
| linear_init_sigma: Optional[float] = None, |
| linear_init_value: Optional[float] = None, |
| factors_init_method: Optional[str] = None, |
| factors_init_scale: Optional[float] = None, |
| factors_init_sigma: Optional[float] = None, |
| factors_init_value: Optional[float] = None, |
| **kwargs |
| ): |
| """Factorization Machines is :class:`Estimator` for general-purpose supervised learning. |
| |
| Amazon SageMaker Factorization Machines is a general-purpose |
| supervised learning algorithm that you can use for both classification |
| and regression tasks. It is an extension of a linear model that is |
| designed to parsimoniously capture interactions between features within |
| high dimensional sparse datasets. |
| |
| This Estimator may be fit via calls to |
| :meth:`~sagemaker.amazon.amazon_estimator.AmazonAlgorithmEstimatorBase.fit`. |
| It requires Amazon :class:`~sagemaker.amazon.record_pb2.Record` protobuf |
| serialized data to be stored in S3. There is an utility |
| :meth:`~sagemaker.amazon.amazon_estimator.AmazonAlgorithmEstimatorBase.record_set` |
| that can be used to upload data to S3 and creates |
| :class:`~sagemaker.amazon.amazon_estimator.RecordSet` to be passed to |
| the `fit` call. |
| |
| To learn more about the Amazon protobuf Record class and how to |
| prepare bulk data in this format, please consult AWS technical |
| documentation: |
| https://docs.aws.amazon.com/sagemaker/latest/dg/cdf-training.html |
| |
| After this Estimator is fit, model data is stored in S3. The model |
| may be deployed to an Amazon SageMaker Endpoint by invoking |
| :meth:`~sagemaker.amazon.estimator.EstimatorBase.deploy`. As well as |
| deploying an Endpoint, deploy returns a |
| :class:`~sagemaker.amazon.pca.FactorizationMachinesPredictor` object |
| that can be used for inference calls using the trained model hosted in |
| the SageMaker Endpoint. |
| |
| FactorizationMachines Estimators can be configured by setting |
| hyperparameters. The available hyperparameters for FactorizationMachines |
| are documented below. |
| |
| For further information on the AWS FactorizationMachines algorithm, |
| please consult AWS technical documentation: |
| https://docs.aws.amazon.com/sagemaker/latest/dg/fact-machines.html |
| |
| Args: |
| role (str): An AWS IAM role (either name or full ARN). The Amazon |
| SageMaker training jobs and APIs that create Amazon SageMaker |
| endpoints use this role to access training data and model |
| artifacts. After the endpoint is created, the inference code |
| might use the IAM role, if accessing AWS resource. |
| instance_count (int or PipelineVariable): Number of Amazon EC2 instances to use |
| for training. |
| instance_type (str or PipelineVariable): Type of EC2 instance to use for training, |
| for example, 'ml.c4.xlarge'. |
| num_factors (int): Dimensionality of factorization. |
| predictor_type (str): Type of predictor 'binary_classifier' or |
| 'regressor'. |
| epochs (int): Number of training epochs to run. |
| clip_gradient (float): Optimizer parameter. Clip the gradient by |
| projecting onto the box [-clip_gradient, +clip_gradient] |
| eps (float): Optimizer parameter. Small value to avoid division by |
| 0. |
| rescale_grad (float): Optimizer parameter. If set, multiplies the |
| gradient with rescale_grad before updating. Often choose to be |
| 1.0/batch_size. |
| bias_lr (float): Non-negative learning rate for the bias term. |
| linear_lr (float): Non-negative learning rate for linear terms. |
| factors_lr (float): Noon-negative learning rate for factorization |
| terms. |
| bias_wd (float): Non-negative weight decay for the bias term. |
| linear_wd (float): Non-negative weight decay for linear terms. |
| factors_wd (float): Non-negative weight decay for factorization |
| terms. |
| bias_init_method (str): Initialization method for the bias term: |
| 'normal', 'uniform' or 'constant'. |
| bias_init_scale (float): Non-negative range for initialization of |
| the bias term that takes effect when bias_init_method parameter |
| is 'uniform' |
| bias_init_sigma (float): Non-negative standard deviation for |
| initialization of the bias term that takes effect when |
| bias_init_method parameter is 'normal'. |
| bias_init_value (float): Initial value of the bias term that takes |
| effect when bias_init_method parameter is 'constant'. |
| linear_init_method (str): Initialization method for linear term: |
| 'normal', 'uniform' or 'constant'. |
| linear_init_scale (float): Non-negative range for initialization of |
| linear terms that takes effect when linear_init_method parameter |
| is 'uniform'. |
| linear_init_sigma (float): Non-negative standard deviation for |
| initialization of linear terms that takes effect when |
| linear_init_method parameter is 'normal'. |
| linear_init_value (float): Initial value of linear terms that takes |
| effect when linear_init_method parameter is 'constant'. |
| factors_init_method (str): Initialization method for |
| factorization term: 'normal', 'uniform' or 'constant'. |
| factors_init_scale (float): Non-negative range for initialization of |
| factorization terms that takes effect when factors_init_method |
| parameter is 'uniform'. |
| factors_init_sigma (float): Non-negative standard deviation for |
| initialization of factorization terms that takes effect when |
| factors_init_method parameter is 'normal'. |
| factors_init_value (float): Initial value of factorization terms |
| that takes effect when factors_init_method parameter is |
| 'constant'. |
| **kwargs: base class keyword argument values. |
| |
| .. tip:: |
| |
| You can find additional parameters for initializing this class at |
| :class:`~sagemaker.estimator.amazon_estimator.AmazonAlgorithmEstimatorBase` and |
| :class:`~sagemaker.estimator.EstimatorBase`. |
| """ |
| super(FactorizationMachines, self).__init__(role, instance_count, instance_type, **kwargs) |
|
|
| self.num_factors = num_factors |
| self.predictor_type = predictor_type |
| self.epochs = epochs |
| self.clip_gradient = clip_gradient |
| self.eps = eps |
| self.rescale_grad = rescale_grad |
| self.bias_lr = bias_lr |
| self.linear_lr = linear_lr |
| self.factors_lr = factors_lr |
| self.bias_wd = bias_wd |
| self.linear_wd = linear_wd |
| self.factors_wd = factors_wd |
| self.bias_init_method = bias_init_method |
| self.bias_init_scale = bias_init_scale |
| self.bias_init_sigma = bias_init_sigma |
| self.bias_init_value = bias_init_value |
| self.linear_init_method = linear_init_method |
| self.linear_init_scale = linear_init_scale |
| self.linear_init_sigma = linear_init_sigma |
| self.linear_init_value = linear_init_value |
| self.factors_init_method = factors_init_method |
| self.factors_init_scale = factors_init_scale |
| self.factors_init_sigma = factors_init_sigma |
| self.factors_init_value = factors_init_value |
|
|
| def create_model(self, vpc_config_override=VPC_CONFIG_DEFAULT, **kwargs): |
| """Return a :class:`~sagemaker.amazon.FactorizationMachinesModel`. |
| |
| It references the latest s3 model data produced by this Estimator. |
| |
| Args: |
| vpc_config_override (dict[str, list[str]]): Optional override for VpcConfig set on |
| the model. Default: use subnets and security groups from this Estimator. |
| * 'Subnets' (list[str]): List of subnet ids. |
| * 'SecurityGroupIds' (list[str]): List of security group ids. |
| **kwargs: Additional kwargs passed to the FactorizationMachinesModel constructor. |
| """ |
| return FactorizationMachinesModel( |
| self.model_data, |
| self.role, |
| sagemaker_session=self.sagemaker_session, |
| vpc_config=self.get_vpc_config(vpc_config_override), |
| **kwargs |
| ) |
|
|
|
|
| class FactorizationMachinesPredictor(Predictor): |
| """Performs binary-classification or regression prediction from input vectors. |
| |
| The implementation of |
| :meth:`~sagemaker.predictor.Predictor.predict` in this |
| `Predictor` requires a numpy ``ndarray`` as input. The array should |
| contain the same number of columns as the feature-dimension of the data used |
| to fit the model this Predictor performs inference on. |
| |
| :meth:`predict()` returns a list of |
| :class:`~sagemaker.amazon.record_pb2.Record` objects (assuming the default |
| recordio-protobuf ``deserializer`` is used), one for each row in |
| the input ``ndarray``. The prediction is stored in the ``"score"`` key of |
| the ``Record.label`` field. Please refer to the formats details described: |
| https://docs.aws.amazon.com/sagemaker/latest/dg/fm-in-formats.html |
| """ |
|
|
| def __init__( |
| self, |
| endpoint_name, |
| sagemaker_session=None, |
| serializer=RecordSerializer(), |
| deserializer=RecordDeserializer(), |
| ): |
| """Initialization for FactorizationMachinesPredictor class. |
| |
| Args: |
| endpoint_name (str): Name of the Amazon SageMaker endpoint to which |
| requests are sent. |
| sagemaker_session (sagemaker.session.Session): A SageMaker Session |
| object, used for SageMaker interactions (default: None). If not |
| specified, one is created using the default AWS configuration |
| chain. |
| serializer (sagemaker.serializers.BaseSerializer): Optional. Default |
| serializes input data to x-recordio-protobuf format. |
| deserializer (sagemaker.deserializers.BaseDeserializer): Optional. |
| Default parses responses from x-recordio-protobuf format. |
| """ |
| super(FactorizationMachinesPredictor, self).__init__( |
| endpoint_name, |
| sagemaker_session, |
| serializer=serializer, |
| deserializer=deserializer, |
| ) |
|
|
|
|
| class FactorizationMachinesModel(Model): |
| """Reference S3 model data created by FactorizationMachines estimator. |
| |
| Calling :meth:`~sagemaker.model.Model.deploy` creates an Endpoint and |
| returns :class:`FactorizationMachinesPredictor`. |
| """ |
|
|
| def __init__( |
| self, |
| model_data: Union[str, PipelineVariable], |
| role: str, |
| sagemaker_session: Optional[Session] = None, |
| **kwargs |
| ): |
| """Initialization for FactorizationMachinesModel class. |
| |
| Args: |
| model_data (str or PipelineVariable): The S3 location of a SageMaker model data |
| ``.tar.gz`` file. |
| role (str): An AWS IAM role (either name or full ARN). The Amazon |
| SageMaker training jobs and APIs that create Amazon SageMaker |
| endpoints use this role to access training data and model |
| artifacts. After the endpoint is created, the inference code |
| might use the IAM role, if it needs to access an AWS resource. |
| sagemaker_session (sagemaker.session.Session): Session object which |
| manages interactions with Amazon SageMaker APIs and any other |
| AWS services needed. If not specified, the estimator creates one |
| using the default AWS configuration chain. |
| **kwargs: Keyword arguments passed to the ``FrameworkModel`` |
| initializer. |
| """ |
| sagemaker_session = sagemaker_session or Session() |
| image_uri = image_uris.retrieve( |
| FactorizationMachines.repo_name, |
| sagemaker_session.boto_region_name, |
| version=FactorizationMachines.repo_version, |
| ) |
| pop_out_unused_kwarg("predictor_cls", kwargs, FactorizationMachinesPredictor.__name__) |
| pop_out_unused_kwarg("image_uri", kwargs, image_uri) |
| super(FactorizationMachinesModel, self).__init__( |
| image_uri, |
| model_data, |
| role, |
| predictor_cls=FactorizationMachinesPredictor, |
| sagemaker_session=sagemaker_session, |
| **kwargs |
| ) |
|
|