544 lines
16 KiB
Plaintext
544 lines
16 KiB
Plaintext
[role="xpack"]
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[testenv="platinum"]
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[[put-dfanalytics]]
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=== Create {dfanalytics-jobs} API
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[subs="attributes"]
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++++
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<titleabbrev>Create {dfanalytics-jobs}</titleabbrev>
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++++
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Instantiates a {dfanalytics-job}.
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experimental[]
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[[ml-put-dfanalytics-request]]
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==== {api-request-title}
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`PUT _ml/data_frame/analytics/<data_frame_analytics_id>`
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[[ml-put-dfanalytics-prereq]]
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==== {api-prereq-title}
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If the {es} {security-features} are enabled, you must have the following built-in roles and privileges:
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* `machine_learning_admin`
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* `kibana_user` (UI only)
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* source index: `read`, `view_index_metadata`
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* destination index: `read`, `create_index`, `manage` and `index`
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* cluster: `monitor` (UI only)
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For more information, see <<security-privileges>> and <<built-in-roles>>.
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[[ml-put-dfanalytics-desc]]
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==== {api-description-title}
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This API creates a {dfanalytics-job} that performs an analysis on the source
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index and stores the outcome in a destination index.
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The destination index will be automatically created if it does not exist. The
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`index.number_of_shards` and `index.number_of_replicas` settings of the source
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index will be copied over the destination index. When the source index matches
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multiple indices, these settings will be set to the maximum values found in the
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source indices.
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The mappings of the source indices are also attempted to be copied over
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to the destination index, however, if the mappings of any of the fields don't
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match among the source indices, the attempt will fail with an error message.
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If the destination index already exists, then it will be use as is. This makes
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it possible to set up the destination index in advance with custom settings
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and mappings.
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[discrete]
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[[ml-hyperparam-optimization]]
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===== Hyperparameter optimization
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If you don't supply {regression} or {classification} parameters, _hyperparameter
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optimization_ occurs, which sets a value for the undefined parameters. The
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starting point is calculated for data dependent parameters by examining the loss
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on the training data. Subject to the size constraint, this operation provides an
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upper bound on the improvement in validation loss.
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A fixed number of rounds is used for optimization which depends on the number of
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parameters being optimized. The optimization starts with random search, then
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Bayesian optimization is performed that is targeting maximum expected
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improvement. If you override any parameters by explicitely setting it, the
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optimization calculates the value of the remaining parameters accordingly and
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uses the value you provided for the overridden parameter. The number of rounds
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are reduced respectively. The validation error is estimated in each round by
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using 4-fold cross validation.
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[[ml-put-dfanalytics-path-params]]
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==== {api-path-parms-title}
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`<data_frame_analytics_id>`::
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(Required, string)
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include::{docdir}/ml/ml-shared.asciidoc[tag=job-id-data-frame-analytics-define]
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[[ml-put-dfanalytics-request-body]]
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==== {api-request-body-title}
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`allow_lazy_start`::
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(Optional, boolean)
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include::{docdir}/ml/ml-shared.asciidoc[tag=allow-lazy-start]
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`analysis`::
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(Required, object)
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The analysis configuration, which contains the information necessary to perform
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one of the following types of analysis: {classification}, {oldetection}, or
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{regression}.
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`analysis`.`classification`:::
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(Required^*^, object)
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The configuration information necessary to perform
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{ml-docs}/dfa-classification.html[{classification}].
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+
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--
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TIP: Advanced parameters are for fine-tuning {classanalysis}. They are set
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automatically by <<ml-hyperparam-optimization,hyperparameter optimization>>
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to give minimum validation error. It is highly recommended to use the default
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values unless you fully understand the function of these parameters.
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--
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`analysis`.`classification`.`dependent_variable`::::
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(Required, string)
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+
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--
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include::{docdir}/ml/ml-shared.asciidoc[tag=dependent-variable]
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The data type of the field must be numeric (`integer`, `short`, `long`, `byte`),
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categorical (`ip`, `keyword`, `text`), or boolean.
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--
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`analysis`.`classification`.`eta`::::
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(Optional, double)
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include::{docdir}/ml/ml-shared.asciidoc[tag=eta]
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`analysis`.`classification`.`feature_bag_fraction`::::
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(Optional, double)
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include::{docdir}/ml/ml-shared.asciidoc[tag=feature-bag-fraction]
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`analysis`.`classification`.`max_trees`::::
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(Optional, integer)
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include::{docdir}/ml/ml-shared.asciidoc[tag=max-trees]
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`analysis`.`classification`.`gamma`::::
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(Optional, double)
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include::{docdir}/ml/ml-shared.asciidoc[tag=gamma]
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`analysis`.`classification`.`lambda`::::
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(Optional, double)
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include::{docdir}/ml/ml-shared.asciidoc[tag=lambda]
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`analysis`.`classification`.`class_assignment_objective`::::
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(Optional, string)
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include::{docdir}/ml/ml-shared.asciidoc[tag=class-assignment-objective]
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`analysis`.`classification`.`num_top_classes`::::
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(Optional, integer)
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include::{docdir}/ml/ml-shared.asciidoc[tag=num-top-classes]
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`analysis`.`classification`.`prediction_field_name`::::
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(Optional, string)
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include::{docdir}/ml/ml-shared.asciidoc[tag=prediction-field-name]
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`analysis`.`classification`.`randomize_seed`::::
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(Optional, long)
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include::{docdir}/ml/ml-shared.asciidoc[tag=randomize-seed]
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`analysis`.`classification`.`num_top_feature_importance_values`::::
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(Optional, integer)
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Advanced configuration option. Specifies the maximum number of
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{ml-docs}/dfa-classification.html#dfa-classification-feature-importance[feature
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importance] values per document to return. By default, it is zero and no feature importance
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calculation occurs.
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`analysis`.`classification`.`training_percent`::::
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(Optional, integer)
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include::{docdir}/ml/ml-shared.asciidoc[tag=training-percent]
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`analysis`.`outlier_detection`:::
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(Required^*^, object)
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The configuration information necessary to perform
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{ml-docs}/dfa-outlier-detection.html[{oldetection}]:
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`analysis`.`outlier_detection`.`compute_feature_influence`::::
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(Optional, boolean)
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include::{docdir}/ml/ml-shared.asciidoc[tag=compute-feature-influence]
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`analysis`.`outlier_detection`.`feature_influence_threshold`::::
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(Optional, double)
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include::{docdir}/ml/ml-shared.asciidoc[tag=feature-influence-threshold]
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`analysis`.`outlier_detection`.`method`::::
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(Optional, string)
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include::{docdir}/ml/ml-shared.asciidoc[tag=method]
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`analysis`.`outlier_detection`.`n_neighbors`::::
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(Optional, integer)
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include::{docdir}/ml/ml-shared.asciidoc[tag=n-neighbors]
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`analysis`.`outlier_detection`.`outlier_fraction`::::
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(Optional, double)
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include::{docdir}/ml/ml-shared.asciidoc[tag=outlier-fraction]
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`analysis`.`outlier_detection`.`standardization_enabled`::::
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(Optional, boolean)
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include::{docdir}/ml/ml-shared.asciidoc[tag=standardization-enabled]
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`analysis`.`regression`:::
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(Required^*^, object)
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The configuration information necessary to perform
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{ml-docs}/dfa-regression.html[{regression}].
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+
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--
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TIP: Advanced parameters are for fine-tuning {reganalysis}. They are set
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automatically by <<ml-hyperparam-optimization,hyperparameter optimization>>
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to give minimum validation error. It is highly recommended to use the default
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values unless you fully understand the function of these parameters.
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--
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`analysis`.`regression`.`dependent_variable`::::
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(Required, string)
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+
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--
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include::{docdir}/ml/ml-shared.asciidoc[tag=dependent-variable]
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The data type of the field must be numeric.
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--
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`analysis`.`regression`.`eta`::::
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(Optional, double)
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include::{docdir}/ml/ml-shared.asciidoc[tag=eta]
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`analysis`.`regression`.`feature_bag_fraction`::::
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(Optional, double)
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include::{docdir}/ml/ml-shared.asciidoc[tag=feature-bag-fraction]
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`analysis`.`regression`.`max_trees`::::
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(Optional, integer)
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include::{docdir}/ml/ml-shared.asciidoc[tag=max-trees]
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`analysis`.`regression`.`gamma`::::
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(Optional, double)
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include::{docdir}/ml/ml-shared.asciidoc[tag=gamma]
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`analysis`.`regression`.`lambda`::::
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(Optional, double)
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include::{docdir}/ml/ml-shared.asciidoc[tag=lambda]
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`analysis`.`regression`.`prediction_field_name`::::
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(Optional, string)
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include::{docdir}/ml/ml-shared.asciidoc[tag=prediction-field-name]
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`analysis`.`regression`.`num_top_feature_importance_values`::::
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(Optional, integer)
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Advanced configuration option. Specifies the maximum number of
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{ml-docs}/dfa-regression.html#dfa-regression-feature-importance[feature importance]
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values per document to return. By default, it is zero and no feature importance calculation
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occurs.
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`analysis`.`regression`.`training_percent`::::
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(Optional, integer)
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include::{docdir}/ml/ml-shared.asciidoc[tag=training-percent]
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`analysis`.`regression`.`randomize_seed`::::
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(Optional, long)
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include::{docdir}/ml/ml-shared.asciidoc[tag=randomize-seed]
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`analyzed_fields`::
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(Optional, object)
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include::{docdir}/ml/ml-shared.asciidoc[tag=analyzed-fields]
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`analyzed_fields`.`excludes`:::
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(Optional, array)
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include::{docdir}/ml/ml-shared.asciidoc[tag=analyzed-fields-excludes]
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`analyzed_fields`.`includes`:::
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(Optional, array)
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include::{docdir}/ml/ml-shared.asciidoc[tag=analyzed-fields-includes]
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`description`::
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(Optional, string)
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include::{docdir}/ml/ml-shared.asciidoc[tag=description-dfa]
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`dest`::
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(Required, object)
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include::{docdir}/ml/ml-shared.asciidoc[tag=dest]
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`model_memory_limit`::
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(Optional, string)
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include::{docdir}/ml/ml-shared.asciidoc[tag=model-memory-limit-dfa]
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`source`::
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(object)
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include::{docdir}/ml/ml-shared.asciidoc[tag=source-put-dfa]
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[[ml-put-dfanalytics-example]]
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==== {api-examples-title}
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[[ml-put-dfanalytics-example-preprocess]]
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===== Preprocessing actions example
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The following example shows how to limit the scope of the analysis to certain
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fields, specify excluded fields in the destination index, and use a query to
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filter your data before analysis.
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[source,console]
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--------------------------------------------------
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PUT _ml/data_frame/analytics/model-flight-delays-pre
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{
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"source": {
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"index": [
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"kibana_sample_data_flights" <1>
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],
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"query": { <2>
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"range": {
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"DistanceKilometers": {
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"gt": 0
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}
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}
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},
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"_source": { <3>
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"includes": [],
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"excludes": [
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"FlightDelay",
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"FlightDelayType"
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]
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}
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},
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"dest": { <4>
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"index": "df-flight-delays",
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"results_field": "ml-results"
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},
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"analysis": {
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"regression": {
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"dependent_variable": "FlightDelayMin",
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"training_percent": 90
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}
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},
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"analyzed_fields": { <5>
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"includes": [],
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"excludes": [
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"FlightNum"
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]
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},
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"model_memory_limit": "100mb"
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}
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--------------------------------------------------
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// TEST[skip:setup kibana sample data]
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<1> The source index to analyze.
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<2> This query filters out entire documents that will not be present in the
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destination index.
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<3> The `_source` object defines fields in the dataset that will be included or
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excluded in the destination index. In this case, `includes` does not specify any
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fields, so the default behavior takes place: all the fields of the source index
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will included except the ones that are explicitly specified in `excludes`.
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<4> Defines the destination index that contains the results of the analysis and
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the fields of the source index specified in the `_source` object. Also defines
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the name of the `results_field`.
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<5> Specifies fields to be included in or excluded from the analysis. This does
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not affect whether the fields will be present in the destination index, only
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affects whether they are used in the analysis.
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In this example, we can see that all the fields of the source index are included
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in the destination index except `FlightDelay` and `FlightDelayType` because
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these are defined as excluded fields by the `excludes` parameter of the
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`_source` object. The `FlightNum` field is included in the destination index,
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however it is not included in the analysis because it is explicitly specified as
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excluded field by the `excludes` parameter of the `analyzed_fields` object.
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[[ml-put-dfanalytics-example-od]]
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===== {oldetection-cap} example
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The following example creates the `loganalytics` {dfanalytics-job}, the analysis
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type is `outlier_detection`:
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[source,console]
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--------------------------------------------------
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PUT _ml/data_frame/analytics/loganalytics
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{
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"description": "Outlier detection on log data",
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"source": {
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"index": "logdata"
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},
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"dest": {
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"index": "logdata_out"
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},
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"analysis": {
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"outlier_detection": {
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"compute_feature_influence": true,
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"outlier_fraction": 0.05,
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"standardization_enabled": true
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}
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}
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}
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--------------------------------------------------
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// TEST[setup:setup_logdata]
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The API returns the following result:
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[source,console-result]
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----
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{
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"id": "loganalytics",
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"description": "Outlier detection on log data",
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"source": {
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"index": ["logdata"],
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"query": {
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"match_all": {}
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}
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},
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"dest": {
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"index": "logdata_out",
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"results_field": "ml"
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},
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"analysis": {
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"outlier_detection": {
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"compute_feature_influence": true,
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"outlier_fraction": 0.05,
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"standardization_enabled": true
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}
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},
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"model_memory_limit": "1gb",
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"create_time" : 1562265491319,
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"version" : "7.6.0",
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"allow_lazy_start" : false
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}
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----
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// TESTRESPONSE[s/1562265491319/$body.$_path/]
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// TESTRESPONSE[s/"version" : "7.6.0"/"version" : $body.version/]
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[[ml-put-dfanalytics-example-r]]
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===== {regression-cap} examples
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The following example creates the `house_price_regression_analysis`
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{dfanalytics-job}, the analysis type is `regression`:
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[source,console]
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--------------------------------------------------
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PUT _ml/data_frame/analytics/house_price_regression_analysis
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{
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"source": {
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"index": "houses_sold_last_10_yrs"
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},
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"dest": {
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"index": "house_price_predictions"
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},
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"analysis":
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{
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"regression": {
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"dependent_variable": "price"
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}
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}
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}
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--------------------------------------------------
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// TEST[skip:TBD]
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The API returns the following result:
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[source,console-result]
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----
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{
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"id" : "house_price_regression_analysis",
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"source" : {
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"index" : [
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"houses_sold_last_10_yrs"
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],
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"query" : {
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"match_all" : { }
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}
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},
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"dest" : {
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"index" : "house_price_predictions",
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"results_field" : "ml"
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},
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"analysis" : {
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"regression" : {
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"dependent_variable" : "price",
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"training_percent" : 100
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}
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},
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"model_memory_limit" : "1gb",
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"create_time" : 1567168659127,
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"version" : "8.0.0",
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"allow_lazy_start" : false
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}
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----
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// TESTRESPONSE[s/1567168659127/$body.$_path/]
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// TESTRESPONSE[s/"version": "8.0.0"/"version": $body.version/]
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The following example creates a job and specifies a training percent:
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[source,console]
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--------------------------------------------------
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PUT _ml/data_frame/analytics/student_performance_mathematics_0.3
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{
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"source": {
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"index": "student_performance_mathematics"
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},
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"dest": {
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"index":"student_performance_mathematics_reg"
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},
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"analysis":
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{
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"regression": {
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"dependent_variable": "G3",
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"training_percent": 70, <1>
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"randomize_seed": 19673948271 <2>
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}
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}
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}
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--------------------------------------------------
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// TEST[skip:TBD]
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<1> The `training_percent` defines the percentage of the data set that will be
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used for training the model.
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<2> The `randomize_seed` is the seed used to randomly pick which data is used
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for training.
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|
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[[ml-put-dfanalytics-example-c]]
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===== {classification-cap} example
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The following example creates the `loan_classification` {dfanalytics-job}, the
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analysis type is `classification`:
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[source,console]
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--------------------------------------------------
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PUT _ml/data_frame/analytics/loan_classification
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{
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"source" : {
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"index": "loan-applicants"
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},
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"dest" : {
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"index": "loan-applicants-classified"
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},
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"analysis" : {
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"classification": {
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"dependent_variable": "label",
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"training_percent": 75,
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"num_top_classes": 2
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}
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}
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}
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--------------------------------------------------
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// TEST[skip:TBD]
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