665 lines
16 KiB
Plaintext
665 lines
16 KiB
Plaintext
[role="xpack"]
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[testenv="basic"]
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[[put-trained-models]]
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= Create trained models API
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[subs="attributes"]
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++++
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<titleabbrev>Create trained models</titleabbrev>
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++++
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Creates a trained model.
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WARNING: Models created in version 7.8.0 are not backwards compatible
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with older node versions. If in a mixed cluster environment,
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all nodes must be at least 7.8.0 to use a model stored by
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a 7.8.0 node.
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experimental[]
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[[ml-put-trained-models-request]]
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== {api-request-title}
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`PUT _ml/trained_models/<model_id>`
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[[ml-put-trained-models-prereq]]
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== {api-prereq-title}
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If the {es} {security-features} are enabled, you must have the following
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built-in roles or equivalent privileges:
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* `machine_learning_admin`
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For more information, see <<built-in-roles>> and {ml-docs-setup-privileges}.
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[[ml-put-trained-models-desc]]
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== {api-description-title}
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The create trained model API enables you to supply a trained model that is not
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created by {dfanalytics}.
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[[ml-put-trained-models-path-params]]
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== {api-path-parms-title}
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`<model_id>`::
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(Required, string)
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include::{es-repo-dir}/ml/ml-shared.asciidoc[tag=model-id]
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[role="child_attributes"]
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[[ml-put-trained-models-request-body]]
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== {api-request-body-title}
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`compressed_definition`::
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(Required, string)
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The compressed (GZipped and Base64 encoded) {infer} definition of the model.
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If `compressed_definition` is specified, then `definition` cannot be specified.
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//Begin definition
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`definition`::
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(Required, object)
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The {infer} definition for the model. If `definition` is specified, then
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`compressed_definition` cannot be specified.
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+
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.Properties of `definition`
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[%collapsible%open]
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====
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//Begin preprocessors
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`preprocessors`::
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(Optional, object)
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Collection of preprocessors. See <<ml-put-trained-models-preprocessor-example>>.
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+
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.Properties of `preprocessors`
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[%collapsible%open]
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=====
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//Begin frequency encoding
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`frequency_encoding`::
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(Required, object)
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Defines a frequency encoding for a field.
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+
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.Properties of `frequency_encoding`
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[%collapsible%open]
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======
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`feature_name`::
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(Required, string)
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The name of the resulting feature.
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`field`::
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(Required, string)
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The field name to encode.
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`frequency_map`::
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(Required, object map of string:double)
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Object that maps the field value to the frequency encoded value.
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`custom`::
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include::{es-repo-dir}/ml/ml-shared.asciidoc[tag=custom-preprocessor]
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======
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//End frequency encoding
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//Begin one hot encoding
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`one_hot_encoding`::
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(Required, object)
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Defines a one hot encoding map for a field.
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+
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.Properties of `one_hot_encoding`
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[%collapsible%open]
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======
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`field`::
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(Required, string)
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The field name to encode.
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`hot_map`::
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(Required, object map of strings)
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String map of "field_value: one_hot_column_name".
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`custom`::
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include::{es-repo-dir}/ml/ml-shared.asciidoc[tag=custom-preprocessor]
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======
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//End one hot encoding
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//Begin target mean encoding
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`target_mean_encoding`::
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(Required, object)
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Defines a target mean encoding for a field.
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+
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.Properties of `target_mean_encoding`
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[%collapsible%open]
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======
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`default_value`:::
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(Required, double)
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The feature value if the field value is not in the `target_map`.
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`feature_name`:::
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(Required, string)
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The name of the resulting feature.
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`field`:::
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(Required, string)
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The field name to encode.
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`target_map`:::
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(Required, object map of string:double)
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Object that maps the field value to the target mean value.
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`custom`::
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include::{es-repo-dir}/ml/ml-shared.asciidoc[tag=custom-preprocessor]
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======
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//End target mean encoding
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=====
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//End preprocessors
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//Begin trained model
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`trained_model`::
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(Required, object)
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The definition of the trained model.
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+
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.Properties of `trained_model`
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[%collapsible%open]
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=====
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//Begin tree
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`tree`::
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(Required, object)
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The definition for a binary decision tree.
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+
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.Properties of `tree`
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[%collapsible%open]
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======
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`classification_labels`:::
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(Optional, string) An array of classification labels (used for
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`classification`).
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`feature_names`:::
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(Required, string)
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Features expected by the tree, in their expected order.
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`target_type`:::
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(Required, string)
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String indicating the model target type; `regression` or `classification`.
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`tree_structure`:::
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(Required, object)
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An array of `tree_node` objects. The nodes must be in ordinal order by their
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`tree_node.node_index` value.
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======
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//End tree
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//Begin tree node
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`tree_node`::
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(Required, object)
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The definition of a node in a tree.
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+
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--
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There are two major types of nodes: leaf nodes and not-leaf nodes.
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* Leaf nodes only need `node_index` and `leaf_value` defined.
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* All other nodes need `split_feature`, `left_child`, `right_child`,
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`threshold`, `decision_type`, and `default_left` defined.
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--
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+
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.Properties of `tree_node`
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[%collapsible%open]
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======
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`decision_type`::
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(Optional, string)
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Indicates the positive value (in other words, when to choose the left node)
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decision type. Supported `lt`, `lte`, `gt`, `gte`. Defaults to `lte`.
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`default_left`::
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(Optional, Boolean)
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Indicates whether to default to the left when the feature is missing. Defaults
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to `true`.
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`leaf_value`::
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(Optional, double)
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The leaf value of the of the node, if the value is a leaf (in other words, no
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children).
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`left_child`::
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(Optional, integer)
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The index of the left child.
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`node_index`::
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(Integer)
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The index of the current node.
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`right_child`::
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(Optional, integer)
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The index of the right child.
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`split_feature`::
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(Optional, integer)
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The index of the feature value in the feature array.
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`split_gain`::
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(Optional, double) The information gain from the split.
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`threshold`::
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(Optional, double)
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The decision threshold with which to compare the feature value.
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======
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//End tree node
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//Begin ensemble
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`ensemble`::
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(Optional, object)
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The definition for an ensemble model. See <<ml-put-trained-models-model-example>>.
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+
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.Properties of `ensemble`
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[%collapsible%open]
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======
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//Begin aggregate output
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`aggregate_output`::
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(Required, object)
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An aggregated output object that defines how to aggregate the outputs of the
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`trained_models`. Supported objects are `weighted_mode`, `weighted_sum`, and
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`logistic_regression`. See <<ml-put-trained-models-aggregated-output-example>>.
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+
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.Properties of `aggregate_output`
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[%collapsible%open]
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=======
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//Begin logistic regression
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`logistic_regression`::
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(Optional, object)
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This `aggregated_output` type works with binary classification (classification
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for values [0, 1]). It multiplies the outputs (in the case of the `ensemble`
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model, the inference model values) by the supplied `weights`. The resulting
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vector is summed and passed to a
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{wikipedia}/Sigmoid_function[`sigmoid` function]. The result
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of the `sigmoid` function is considered the probability of class 1 (`P_1`),
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consequently, the probability of class 0 is `1 - P_1`. The class with the
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highest probability (either 0 or 1) is then returned. For more information about
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logistic regression, see
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{wikipedia}/Logistic_regression[this wiki article].
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+
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.Properties of `logistic_regression`
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[%collapsible%open]
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========
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`weights`:::
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(Required, double)
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The weights to multiply by the input values (the inference values of the trained
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models).
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========
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//End logistic regression
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//Begin weighted sum
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`weighted_sum`::
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(Optional, object)
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This `aggregated_output` type works with regression. The weighted sum of the
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input values.
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+
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.Properties of `weighted_sum`
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[%collapsible%open]
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========
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`weights`:::
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(Required, double)
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The weights to multiply by the input values (the inference values of the trained
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models).
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========
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//End weighted sum
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//Begin weighted mode
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`weighted_mode`::
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(Optional, object)
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This `aggregated_output` type works with regression or classification. It takes
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a weighted vote of the input values. The most common input value (taking the
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weights into account) is returned.
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+
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.Properties of `weighted_mode`
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[%collapsible%open]
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========
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`weights`:::
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(Required, double)
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The weights to multiply by the input values (the inference values of the trained
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models).
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========
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//End weighted mode
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//Begin exponent
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`exponent`::
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(Optional, object)
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This `aggregated_output` type works with regression. It takes a weighted sum of
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the input values and passes the result to an exponent function
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(`e^x` where `x` is the sum of the weighted values).
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+
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.Properties of `exponent`
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[%collapsible%open]
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========
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`weights`:::
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(Required, double)
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The weights to multiply by the input values (the inference values of the trained
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models).
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========
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//End exponent
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=======
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//End aggregate output
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`classification_labels`::
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(Optional, string)
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An array of classification labels.
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`feature_names`::
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(Optional, string)
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Features expected by the ensemble, in their expected order.
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`target_type`::
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(Required, string)
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String indicating the model target type; `regression` or `classification.`
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`trained_models`::
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(Required, object)
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An array of `trained_model` objects. Supported trained models are `tree` and
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`ensemble`.
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======
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//End ensemble
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=====
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//End trained model
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====
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//End definition
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`description`::
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(Optional, string)
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A human-readable description of the {infer} trained model.
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//Begin inference_config
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`inference_config`::
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(Required, object)
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The default configuration for inference. This can be either a `regression`
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or `classification` configuration. It must match the underlying
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`definition.trained_model`'s `target_type`.
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+
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.Properties of `inference_config`
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[%collapsible%open]
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====
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`regression`:::
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(Optional, object)
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Regression configuration for inference.
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+
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.Properties of regression inference
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[%collapsible%open]
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=====
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`num_top_feature_importance_values`::::
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(Optional, integer)
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include::{es-repo-dir}/ml/ml-shared.asciidoc[tag=inference-config-regression-num-top-feature-importance-values]
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`results_field`::::
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(Optional, string)
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include::{es-repo-dir}/ml/ml-shared.asciidoc[tag=inference-config-results-field]
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=====
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`classification`:::
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(Optional, object)
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Classification configuration for inference.
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+
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.Properties of classification inference
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[%collapsible%open]
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=====
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`num_top_classes`::::
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(Optional, integer)
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include::{es-repo-dir}/ml/ml-shared.asciidoc[tag=inference-config-classification-num-top-classes]
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`num_top_feature_importance_values`::::
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(Optional, integer)
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include::{es-repo-dir}/ml/ml-shared.asciidoc[tag=inference-config-classification-num-top-feature-importance-values]
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`prediction_field_type`::::
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(Optional, string)
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include::{es-repo-dir}/ml/ml-shared.asciidoc[tag=inference-config-classification-prediction-field-type]
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`results_field`::::
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(Optional, string)
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include::{es-repo-dir}/ml/ml-shared.asciidoc[tag=inference-config-results-field]
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`top_classes_results_field`::::
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(Optional, string)
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include::{es-repo-dir}/ml/ml-shared.asciidoc[tag=inference-config-classification-top-classes-results-field]
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=====
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====
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//End of inference_config
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//Begin input
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`input`::
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(Required, object)
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The input field names for the model definition.
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+
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.Properties of `input`
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[%collapsible%open]
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====
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`field_names`:::
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(Required, string)
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An array of input field names for the model.
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====
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//End input
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`metadata`::
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(Optional, object)
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An object map that contains metadata about the model.
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`tags`::
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(Optional, string)
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An array of tags to organize the model.
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[[ml-put-trained-models-example]]
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== {api-examples-title}
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[[ml-put-trained-models-preprocessor-example]]
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=== Preprocessor examples
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The example below shows a `frequency_encoding` preprocessor object:
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[source,js]
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----------------------------------
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{
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"frequency_encoding":{
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"field":"FlightDelayType",
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"feature_name":"FlightDelayType_frequency",
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"frequency_map":{
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"Carrier Delay":0.6007414737092798,
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"NAS Delay":0.6007414737092798,
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"Weather Delay":0.024573576178086153,
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"Security Delay":0.02476631010889467,
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"No Delay":0.6007414737092798,
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"Late Aircraft Delay":0.6007414737092798
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}
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}
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}
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----------------------------------
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//NOTCONSOLE
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The next example shows a `one_hot_encoding` preprocessor object:
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[source,js]
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----------------------------------
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{
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"one_hot_encoding":{
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"field":"FlightDelayType",
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"hot_map":{
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"Carrier Delay":"FlightDelayType_Carrier Delay",
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"NAS Delay":"FlightDelayType_NAS Delay",
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"No Delay":"FlightDelayType_No Delay",
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"Late Aircraft Delay":"FlightDelayType_Late Aircraft Delay"
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}
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}
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}
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----------------------------------
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//NOTCONSOLE
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This example shows a `target_mean_encoding` preprocessor object:
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[source,js]
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----------------------------------
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{
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"target_mean_encoding":{
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"field":"FlightDelayType",
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"feature_name":"FlightDelayType_targetmean",
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"target_map":{
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"Carrier Delay":39.97465788139886,
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"NAS Delay":39.97465788139886,
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"Security Delay":203.171206225681,
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"Weather Delay":187.64705882352948,
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"No Delay":39.97465788139886,
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"Late Aircraft Delay":39.97465788139886
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},
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"default_value":158.17995752420433
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}
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}
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----------------------------------
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//NOTCONSOLE
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[[ml-put-trained-models-model-example]]
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=== Model examples
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The first example shows a `trained_model` object:
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[source,js]
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----------------------------------
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{
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"tree":{
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"feature_names":[
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"DistanceKilometers",
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"FlightTimeMin",
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"FlightDelayType_NAS Delay",
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"Origin_targetmean",
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"DestRegion_targetmean",
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"DestCityName_targetmean",
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"OriginAirportID_targetmean",
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"OriginCityName_frequency",
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"DistanceMiles",
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"FlightDelayType_Late Aircraft Delay"
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],
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"tree_structure":[
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{
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"decision_type":"lt",
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"threshold":9069.33437193022,
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"split_feature":0,
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"split_gain":4112.094574306927,
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"node_index":0,
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"default_left":true,
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"left_child":1,
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"right_child":2
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},
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...
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{
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"node_index":9,
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"leaf_value":-27.68987349695448
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},
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...
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],
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"target_type":"regression"
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}
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}
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----------------------------------
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//NOTCONSOLE
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The following example shows an `ensemble` model object:
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[source,js]
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----------------------------------
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"ensemble":{
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"feature_names":[
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...
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],
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"trained_models":[
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{
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"tree":{
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"feature_names":[],
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"tree_structure":[
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{
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"decision_type":"lte",
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"node_index":0,
|
|
"leaf_value":47.64069875778043,
|
|
"default_left":false
|
|
}
|
|
],
|
|
"target_type":"regression"
|
|
}
|
|
},
|
|
...
|
|
],
|
|
"aggregate_output":{
|
|
"weighted_sum":{
|
|
"weights":[
|
|
...
|
|
]
|
|
}
|
|
},
|
|
"target_type":"regression"
|
|
}
|
|
----------------------------------
|
|
//NOTCONSOLE
|
|
|
|
|
|
[[ml-put-trained-models-aggregated-output-example]]
|
|
=== Aggregated output example
|
|
|
|
Example of a `logistic_regression` object:
|
|
|
|
[source,js]
|
|
----------------------------------
|
|
"aggregate_output" : {
|
|
"logistic_regression" : {
|
|
"weights" : [2.0, 1.0, .5, -1.0, 5.0, 1.0, 1.0]
|
|
}
|
|
}
|
|
----------------------------------
|
|
//NOTCONSOLE
|
|
|
|
|
|
Example of a `weighted_sum` object:
|
|
|
|
[source,js]
|
|
----------------------------------
|
|
"aggregate_output" : {
|
|
"weighted_sum" : {
|
|
"weights" : [1.0, -1.0, .5, 1.0, 5.0]
|
|
}
|
|
}
|
|
----------------------------------
|
|
//NOTCONSOLE
|
|
|
|
|
|
Example of a `weighted_mode` object:
|
|
|
|
[source,js]
|
|
----------------------------------
|
|
"aggregate_output" : {
|
|
"weighted_mode" : {
|
|
"weights" : [1.0, 1.0, 1.0, 1.0, 1.0]
|
|
}
|
|
}
|
|
----------------------------------
|
|
//NOTCONSOLE
|
|
|
|
|
|
Example of an `exponent` object:
|
|
|
|
[source,js]
|
|
----------------------------------
|
|
"aggregate_output" : {
|
|
"exponent" : {
|
|
"weights" : [1.0, 1.0, 1.0, 1.0, 1.0]
|
|
}
|
|
}
|
|
----------------------------------
|
|
//NOTCONSOLE
|
|
|
|
|
|
[[ml-put-trained-models-json-schema]]
|
|
=== Trained models JSON schema
|
|
|
|
For the full JSON schema of trained models,
|
|
https://github.com/elastic/ml-json-schemas[click here].
|