pdmlabs.experiment.streaming.unsupervised_experiment#
Classes
|
Streaming (online) unsupervised anomaly detection. |
- class pdmlabs.experiment.streaming.unsupervised_experiment.StreamingUnsupervisedPdMExperiment(experiment_name: str, pipeline: PdMPipeline, param_space: dict, constraint_function: Callable = None, target_data: list[DataFrame] = None, target_sources: list[str] = None, historic_data: list[DataFrame] = [], historic_sources: list[str] = [], optimization_param: str = 'AD1_AUC', initial_random: int = 2, num_iteration: int = 20, batch_size: int = 1, n_jobs: int = 1, random_state: int = 42, random_n_tries: int = 3, constraint_max_retries: int = 10, historic_data_header: str = 'infer', target_data_header: str = 'infer', artifacts: str = 'artifacts', debug: bool = False, delay: float = None, log_best_scores: bool = False, maximize: bool = True, custom_evaluators: list = None)#
Bases:
PdMExperimentStreaming (online) unsupervised anomaly detection.
Status: Stub Implementation
This experiment flavor is designed for unsupervised streaming data: - Processes continuous data streams without labels - Adapts models in real-time - Produces anomaly scores online
Current Implementation: This is a placeholder stub with no execution logic. Use batch experiments for full functionality. Streaming support is planned for future versions.
Design Goals: - Minimal memory footprint for long-running applications - Per-sample or mini-batch prediction - Automatic concept drift handling - No offline/batch retraining required
- Raises:
NotImplementedError – Streaming functionality not yet implemented.
Examples
>>> # Streaming experiments are not yet implemented >>> # Use UnsupervisedPdMExperiment (batch) instead
- execute() None#
Execute placeholder unsupervised streaming experiment.
- Returns:
Not implemented.
- Return type:
None