default_algorithm

An automl algorithm that consists of two modes: fast and long, where fast is a subset of long.

Module Contents

Classes Summary

DefaultAlgorithm

An automl algorithm that consists of two modes: fast and long, where fast is a subset of long.

Contents

class evalml.automl.automl_algorithm.default_algorithm.DefaultAlgorithm(X, y, problem_type, sampler_name, tuner_class=None, random_seed=0, pipeline_params=None, custom_hyperparameters=None, n_jobs=- 1, text_in_ensembling=False, top_n=3, num_long_explore_pipelines=50, num_long_pipelines_per_batch=10, allow_long_running_models=False, verbose=False)[source]

An automl algorithm that consists of two modes: fast and long, where fast is a subset of long.

  1. Naive pipelines:
    1. run baseline with default preprocessing pipeline

    2. run naive linear model with default preprocessing pipeline

    3. run basic RF pipeline with default preprocessing pipeline

  2. Naive pipelines with feature selection
    1. subsequent pipelines will use the selected features with a SelectedColumns transformer

At this point we have a single pipeline candidate for preprocessing and feature selection

  1. Pipelines with preprocessing components:
    1. scan rest of estimators (our current batch 1).

  2. First ensembling run

Fast mode ends here. Begin long mode.

  1. Run top 3 estimators:
    1. Generate 50 random parameter sets. Run all 150 in one batch

  2. Second ensembling run

  3. Repeat these indefinitely until stopping criterion is met:
    1. For each of the previous top 3 estimators, sample 10 parameters from the tuner. Run all 30 in one batch

    2. Run ensembling

Parameters
  • X (pd.DataFrame) – Training data.

  • y (pd.Series) – Target data.

  • problem_type (ProblemType) – Problem type associated with training data.

  • sampler_name (BaseSampler) – Sampler to use for preprocessing.

  • tuner_class (class) – A subclass of Tuner, to be used to find parameters for each pipeline. The default of None indicates the SKOptTuner will be used.

  • random_seed (int) – Seed for the random number generator. Defaults to 0.

  • pipeline_params (dict or None) – Pipeline-level parameters that should be passed to the proposed pipelines. Defaults to None.

  • custom_hyperparameters (dict or None) – Custom hyperparameter ranges specified for pipelines to iterate over. Defaults to None.

  • n_jobs (int or None) – Non-negative integer describing level of parallelism used for pipelines. Defaults to -1.

  • text_in_ensembling (boolean) – If True and ensembling is True, then n_jobs will be set to 1 to avoid downstream sklearn stacking issues related to nltk. Defaults to False.

  • top_n (int) – top n number of pipelines to use for long mode.

  • num_long_explore_pipelines (int) – number of pipelines to explore for each top n pipeline at the start of long mode.

  • num_long_pipelines_per_batch (int) – number of pipelines per batch for each top n pipeline through long mode.

  • allow_long_running_models (bool) – Whether or not to allow longer-running models for large multiclass problems. If False and no pipelines, component graphs, or model families are provided, AutoMLSearch will not use Elastic Net or XGBoost when there are more than 75 multiclass targets and will not use CatBoost when there are more than 150 multiclass targets. Defaults to False.

  • verbose (boolean) – Whether or not to display logging information regarding pipeline building. Defaults to False.

Methods

add_result

Register results from evaluating a pipeline. In batch number 2, the selected column names from the feature selector are taken to be used in a column selector. Information regarding the best pipeline is updated here as well.

batch_number

Returns the number of batches which have been recommended so far.

default_max_batches

Returns the number of max batches AutoMLSearch should run by default.

next_batch

Get the next batch of pipelines to evaluate.

pipeline_number

Returns the number of pipelines which have been recommended so far.

add_result(self, score_to_minimize, pipeline, trained_pipeline_results, cached_data=None)[source]

Register results from evaluating a pipeline. In batch number 2, the selected column names from the feature selector are taken to be used in a column selector. Information regarding the best pipeline is updated here as well.

Parameters
  • score_to_minimize (float) – The score obtained by this pipeline on the primary objective, converted so that lower values indicate better pipelines.

  • pipeline (PipelineBase) – The trained pipeline object which was used to compute the score.

  • trained_pipeline_results (dict) – Results from training a pipeline.

  • cached_data (dict) – A dictionary of cached data, where the keys are the model family. Expected to be of format {model_family: {hash1: trained_component_graph, hash2: trained_component_graph…}…}. Defaults to None.

property batch_number(self)

Returns the number of batches which have been recommended so far.

property default_max_batches(self)

Returns the number of max batches AutoMLSearch should run by default.

next_batch(self)[source]

Get the next batch of pipelines to evaluate.

Returns

a list of instances of PipelineBase subclasses, ready to be trained and evaluated.

Return type

list(PipelineBase)

property pipeline_number(self)

Returns the number of pipelines which have been recommended so far.