cursus.steps.configs.config_tsa_preprocessing_step¶
TSA Data Preprocessing Configuration with Self-Contained Derivation Logic
This module implements the configuration class for SageMaker Processing steps for TSA (Temporal Self-Attention) data preprocessing, using a self-contained design where each field is properly categorized according to the three-tier design: 1. Essential User Inputs (Tier 1) - Required fields that must be provided by users 2. System Fields (Tier 2) - Fields with reasonable defaults that can be overridden 3. Derived Fields (Tier 3) - Fields calculated from other fields, private with read-only properties
- class TSAPreprocessingConfig(*, author, bucket, role, region, service_name, pipeline_version, model_class='xgboost', current_date=<factory>, framework_version='2.1.2', py_version='py310', source_dir=None, enable_caching=False, use_secure_pypi=False, max_runtime_seconds=172800, project_root_folder, processing_instance_count=1, processing_volume_size=500, processing_instance_type_large='ml.m5.4xlarge', processing_instance_type_small='ml.m5.2xlarge', use_large_processing_instance=False, skip_volume_kms=None, processing_source_dir=None, processing_entry_point='tsa_preprocessing.py', processing_script_arguments=None, processing_framework_version='1.2-1', job_type='training', tag='is_abusive_mdr', tag2='is_flr', target_positive_rate=0.2, time_window_train=240, time_window_calib=150, time_window_vali=90, amount_field='concamt', preprocessor_path=None, seq_len=51, data_version='v0', seed=0, enable_tsa_streaming=False, tsa_streaming_batch_size=10, validation_split_ratio=0.1, time_delta_cap=20736000, **extra_data)[source]¶
Bases:
ProcessingStepConfigBaseConfiguration for the TSA Preprocessing step with three-tier field categorization. Inherits from ProcessingStepConfigBase.
Fields are categorized into: - Tier 1: Essential User Inputs - Required from users - Tier 2: System Fields - Default values that can be overridden - Tier 3: Derived Fields - Private with read-only property access
- model_config: ClassVar[ConfigDict] = {'arbitrary_types_allowed': True, 'extra': 'allow', 'protected_namespaces': (), 'validate_assignment': True}¶
Configuration for the model, should be a dictionary conforming to [ConfigDict][pydantic.config.ConfigDict].
- property full_script_path: str | None¶
Get full path to the preprocessing script.
- Returns:
Full path to the script
- property preprocessing_environment_variables: Dict[str, str]¶
Get preprocessing-specific environment variables based on configuration.
These are static environment variables derived from config fields like target_positive_rate, time windows, and tag. Dynamic environment variables that depend on step inputs (like PREPROCESSOR_PATH) are added by the builder at runtime when the step is created.
- Returns:
Dictionary mapping environment variable names to values
- classmethod validate_entry_point_relative(v)[source]¶
Ensure processing_entry_point is a non‐empty relative path.
- classmethod validate_target_positive_rate(v)[source]¶
Ensure target_positive_rate is between 0 and 1 (inclusive).
- get_public_init_fields()[source]¶
Override get_public_init_fields to include TSA preprocessing specific fields.
- Returns:
Dictionary of field names to values for child initialization
- Return type:
Dict[str, Any]
- model_post_init(context, /)¶
This function is meant to behave like a BaseModel method to initialize private attributes.
It takes context as an argument since that’s what pydantic-core passes when calling it.
- Parameters:
self (BaseModel) – The BaseModel instance.
context (Any) – The context.