REST Resource: projects.locations.trainingPipelines

Resource: TrainingPipeline

The TrainingPipeline orchestrates tasks associated with training a Model. It always executes the training task, and optionally may also export data from Vertex AI's Dataset which becomes the training input, upload the Model to Vertex AI, and evaluate the Model.

Fields
name string

Output only. Resource name of the TrainingPipeline.

displayName string

Required. The user-defined name of this TrainingPipeline.

inputDataConfig object (InputDataConfig)

Specifies Vertex AI owned input data that may be used for training the Model. The TrainingPipeline's trainingTaskDefinition should make clear whether this config is used and if there are any special requirements on how it should be filled. If nothing about this config is mentioned in the trainingTaskDefinition, then it should be assumed that the TrainingPipeline does not depend on this configuration.

trainingTaskDefinition string

Required. A Google Cloud Storage path to the YAML file that defines the training task which is responsible for producing the model artifact, and may also include additional auxiliary work. The definition files that can be used here are found in gs://google-cloud-aiplatform/schema/trainingjob/definition/. Note: The URI given on output will be immutable and probably different, including the URI scheme, than the one given on input. The output URI will point to a location where the user only has a read access.

trainingTaskInputs value (Value format)

Required. The training task's parameter(s), as specified in the trainingTaskDefinition's inputs.

trainingTaskMetadata value (Value format)

Output only. The metadata information as specified in the trainingTaskDefinition's metadata. This metadata is an auxiliary runtime and final information about the training task. While the pipeline is running this information is populated only at a best effort basis. Only present if the pipeline's trainingTaskDefinition contains metadata object.

modelToUpload object (Model)

Describes the Model that may be uploaded (via ModelService.UploadModel) by this TrainingPipeline. The TrainingPipeline's trainingTaskDefinition should make clear whether this Model description should be populated, and if there are any special requirements regarding how it should be filled. If nothing is mentioned in the trainingTaskDefinition, then it should be assumed that this field should not be filled and the training task either uploads the Model without a need of this information, or that training task does not support uploading a Model as part of the pipeline. When the Pipeline's state becomes PIPELINE_STATE_SUCCEEDED and the trained Model had been uploaded into Vertex AI, then the modelToUpload's resource name is populated. The Model is always uploaded into the Project and Location in which this pipeline is.

modelId string

Optional. The id to use for the uploaded Model, which will become the final component of the model resource name.

This value may be up to 63 characters, and valid characters are [a-z0-9_-]. The first character cannot be a number or hyphen.

parentModel string

Optional. When specify this field, the modelToUpload will not be uploaded as a new model, instead, it will become a new version of this parentModel.

state enum (PipelineState)

Output only. The detailed state of the pipeline.

error object (Status)

Output only. Only populated when the pipeline's state is PIPELINE_STATE_FAILED or PIPELINE_STATE_CANCELLED.

createTime string (Timestamp format)

Output only. time when the TrainingPipeline was created.

A timestamp in RFC3339 UTC "Zulu" format, with nanosecond resolution and up to nine fractional digits. Examples: "2014-10-02T15:01:23Z" and "2014-10-02T15:01:23.045123456Z".

startTime string (Timestamp format)

Output only. time when the TrainingPipeline for the first time entered the PIPELINE_STATE_RUNNING state.

A timestamp in RFC3339 UTC "Zulu" format, with nanosecond resolution and up to nine fractional digits. Examples: "2014-10-02T15:01:23Z" and "2014-10-02T15:01:23.045123456Z".

endTime string (Timestamp format)

Output only. time when the TrainingPipeline entered any of the following states: PIPELINE_STATE_SUCCEEDED, PIPELINE_STATE_FAILED, PIPELINE_STATE_CANCELLED.

A timestamp in RFC3339 UTC "Zulu" format, with nanosecond resolution and up to nine fractional digits. Examples: "2014-10-02T15:01:23Z" and "2014-10-02T15:01:23.045123456Z".

updateTime string (Timestamp format)

Output only. time when the TrainingPipeline was most recently updated.

A timestamp in RFC3339 UTC "Zulu" format, with nanosecond resolution and up to nine fractional digits. Examples: "2014-10-02T15:01:23Z" and "2014-10-02T15:01:23.045123456Z".

labels map (key: string, value: string)

The labels with user-defined metadata to organize TrainingPipelines.

label keys and values can be no longer than 64 characters (Unicode codepoints), can only contain lowercase letters, numeric characters, underscores and dashes. International characters are allowed.

See https://goo.gl/xmQnxf for more information and examples of labels.

encryptionSpec object (EncryptionSpec)

Customer-managed encryption key spec for a TrainingPipeline. If set, this TrainingPipeline will be secured by this key.

Note: Model trained by this TrainingPipeline is also secured by this key if modelToUpload is not set separately.

JSON representation
{
  "name": string,
  "displayName": string,
  "inputDataConfig": {
    object (InputDataConfig)
  },
  "trainingTaskDefinition": string,
  "trainingTaskInputs": value,
  "trainingTaskMetadata": value,
  "modelToUpload": {
    object (Model)
  },
  "modelId": string,
  "parentModel": string,
  "state": enum (PipelineState),
  "error": {
    object (Status)
  },
  "createTime": string,
  "startTime": string,
  "endTime": string,
  "updateTime": string,
  "labels": {
    string: string,
    ...
  },
  "encryptionSpec": {
    object (EncryptionSpec)
  }
}

InputDataConfig

Specifies Vertex AI owned input data to be used for training, and possibly evaluating, the Model.

Fields
datasetId string

Required. The id of the Dataset in the same Project and Location which data will be used to train the Model. The Dataset must use schema compatible with Model being trained, and what is compatible should be described in the used TrainingPipeline's trainingTaskDefinition. For tabular Datasets, all their data is exported to training, to pick and choose from.

annotationsFilter string

Applicable only to Datasets that have DataItems and Annotations.

A filter on Annotations of the Dataset. Only Annotations that both match this filter and belong to DataItems not ignored by the split method are used in respectively training, validation or test role, depending on the role of the DataItem they are on (for the auto-assigned that role is decided by Vertex AI). A filter with same syntax as the one used in ListAnnotations may be used, but note here it filters across all Annotations of the Dataset, and not just within a single DataItem.

annotationSchemaUri string

Applicable only to custom training with Datasets that have DataItems and Annotations.

Cloud Storage URI that points to a YAML file describing the annotation schema. The schema is defined as an OpenAPI 3.0.2 Schema Object. The schema files that can be used here are found in gs://google-cloud-aiplatform/schema/dataset/annotation/ , note that the chosen schema must be consistent with metadata of the Dataset specified by datasetId.

Only Annotations that both match this schema and belong to DataItems not ignored by the split method are used in respectively training, validation or test role, depending on the role of the DataItem they are on.

When used in conjunction with annotationsFilter, the Annotations used for training are filtered by both annotationsFilter and annotationSchemaUri.

savedQueryId string

Only applicable to Datasets that have SavedQueries.

The id of a SavedQuery (annotation set) under the Dataset specified by datasetId used for filtering Annotations for training.

Only Annotations that are associated with this SavedQuery are used in respectively training. When used in conjunction with annotationsFilter, the Annotations used for training are filtered by both savedQueryId and annotationsFilter.

Only one of savedQueryId and annotationSchemaUri should be specified as both of them represent the same thing: problem type.

persistMlUseAssignment boolean

Whether to persist the ML use assignment to data item system labels.

split Union type
The instructions how the input data should be split between the training, validation and test sets. If no split type is provided, the fraction_split is used by default. split can be only one of the following:
fractionSplit object (FractionSplit)

Split based on fractions defining the size of each set.

filterSplit object (FilterSplit)

Split based on the provided filters for each set.

predefinedSplit object (PredefinedSplit)

Supported only for tabular Datasets.

Split based on a predefined key.

timestampSplit object (TimestampSplit)

Supported only for tabular Datasets.

Split based on the timestamp of the input data pieces.

stratifiedSplit object (StratifiedSplit)

Supported only for tabular Datasets.

Split based on the distribution of the specified column.

destination Union type

Only applicable to Custom and Hyperparameter Tuning TrainingPipelines.

The destination of the training data to be written to.

Supported destination file formats: * For non-tabular data: "jsonl". * For tabular data: "csv" and "bigquery".

The following Vertex AI environment variables are passed to containers or python modules of the training task when this field is set:

  • AIP_DATA_FORMAT : Exported data format.
  • AIP_TRAINING_DATA_URI : Sharded exported training data uris.
  • AIP_VALIDATION_DATA_URI : Sharded exported validation data uris.
  • AIP_TEST_DATA_URI : Sharded exported test data uris. destination can be only one of the following:
gcsDestination object (GcsDestination)

The Cloud Storage location where the training data is to be written to. In the given directory a new directory is created with name: dataset-<dataset-id>-<annotation-type>-<timestamp-of-training-call> where timestamp is in YYYY-MM-DDThh:mm:ss.sssZ ISO-8601 format. All training input data is written into that directory.

The Vertex AI environment variables representing Cloud Storage data URIs are represented in the Cloud Storage wildcard format to support sharded data. e.g.: "gs://.../training-*.jsonl"

  • AIP_DATA_FORMAT = "jsonl" for non-tabular data, "csv" for tabular data
  • AIP_TRAINING_DATA_URI = "gcsDestination/dataset---
  • AIP_VALIDATION_DATA_URI = "gcsDestination/dataset---

  • AIP_TEST_DATA_URI = "gcsDestination/dataset---

bigqueryDestination object (BigQueryDestination)

Only applicable to custom training with tabular Dataset with BigQuery source.

The BigQuery project location where the training data is to be written to. In the given project a new dataset is created with name dataset_<dataset-id>_<annotation-type>_<timestamp-of-training-call> where timestamp is in YYYY_MM_DDThh_mm_ss_sssZ format. All training input data is written into that dataset. In the dataset three tables are created, training, validation and test.

  • AIP_DATA_FORMAT = "bigquery".
  • AIP_TRAINING_DATA_URI = "bigqueryDestination.dataset___
  • AIP_VALIDATION_DATA_URI = "bigqueryDestination.dataset___

  • AIP_TEST_DATA_URI = "bigqueryDestination.dataset___

JSON representation
{
  "datasetId": string,
  "annotationsFilter": string,
  "annotationSchemaUri": string,
  "savedQueryId": string,
  "persistMlUseAssignment": boolean,

  // split
  "fractionSplit": {
    object (FractionSplit)
  },
  "filterSplit": {
    object (FilterSplit)
  },
  "predefinedSplit": {
    object (PredefinedSplit)
  },
  "timestampSplit": {
    object (TimestampSplit)
  },
  "stratifiedSplit": {
    object (StratifiedSplit)
  }
  // Union type

  // destination
  "gcsDestination": {
    object (GcsDestination)
  },
  "bigqueryDestination": {
    object (BigQueryDestination)
  }
  // Union type
}

FractionSplit

Assigns the input data to training, validation, and test sets as per the given fractions. Any of trainingFraction, validationFraction and testFraction may optionally be provided, they must sum to up to 1. If the provided ones sum to less than 1, the remainder is assigned to sets as decided by Vertex AI. If none of the fractions are set, by default roughly 80% of data is used for training, 10% for validation, and 10% for test.

Fields
trainingFraction number

The fraction of the input data that is to be used to train the Model.

validationFraction number

The fraction of the input data that is to be used to validate the Model.

testFraction number

The fraction of the input data that is to be used to evaluate the Model.

JSON representation
{
  "trainingFraction": number,
  "validationFraction": number,
  "testFraction": number
}

FilterSplit

Assigns input data to training, validation, and test sets based on the given filters, data pieces not matched by any filter are ignored. Currently only supported for Datasets containing DataItems. If any of the filters in this message are to match nothing, then they can be set as '-' (the minus sign).

Supported only for unstructured Datasets.

Fields
trainingFilter string

Required. A filter on DataItems of the Dataset. DataItems that match this filter are used to train the Model. A filter with same syntax as the one used in DatasetService.ListDataItems may be used. If a single DataItem is matched by more than one of the FilterSplit filters, then it is assigned to the first set that applies to it in the training, validation, test order.

validationFilter string

Required. A filter on DataItems of the Dataset. DataItems that match this filter are used to validate the Model. A filter with same syntax as the one used in DatasetService.ListDataItems may be used. If a single DataItem is matched by more than one of the FilterSplit filters, then it is assigned to the first set that applies to it in the training, validation, test order.

testFilter string

Required. A filter on DataItems of the Dataset. DataItems that match this filter are used to test the Model. A filter with same syntax as the one used in DatasetService.ListDataItems may be used. If a single DataItem is matched by more than one of the FilterSplit filters, then it is assigned to the first set that applies to it in the training, validation, test order.

JSON representation
{
  "trainingFilter": string,
  "validationFilter": string,
  "testFilter": string
}

PredefinedSplit

Assigns input data to training, validation, and test sets based on the value of a provided key.

Supported only for tabular Datasets.

Fields
key string

Required. The key is a name of one of the Dataset's data columns. The value of the key (either the label's value or value in the column) must be one of {training, validation, test}, and it defines to which set the given piece of data is assigned. If for a piece of data the key is not present or has an invalid value, that piece is ignored by the pipeline.

JSON representation
{
  "key": string
}

TimestampSplit

Assigns input data to training, validation, and test sets based on a provided timestamps. The youngest data pieces are assigned to training set, next to validation set, and the oldest to the test set.

Supported only for tabular Datasets.

Fields
trainingFraction number

The fraction of the input data that is to be used to train the Model.

validationFraction number

The fraction of the input data that is to be used to validate the Model.

testFraction number

The fraction of the input data that is to be used to evaluate the Model.

key string

Required. The key is a name of one of the Dataset's data columns. The values of the key (the values in the column) must be in RFC 3339 date-time format, where time-offset = "Z" (e.g. 1985-04-12T23:20:50.52Z). If for a piece of data the key is not present or has an invalid value, that piece is ignored by the pipeline.

JSON representation
{
  "trainingFraction": number,
  "validationFraction": number,
  "testFraction": number,
  "key": string
}

StratifiedSplit

Assigns input data to the training, validation, and test sets so that the distribution of values found in the categorical column (as specified by the key field) is mirrored within each split. The fraction values determine the relative sizes of the splits.

For example, if the specified column has three values, with 50% of the rows having value "A", 25% value "B", and 25% value "C", and the split fractions are specified as 80/10/10, then the training set will constitute 80% of the training data, with about 50% of the training set rows having the value "A" for the specified column, about 25% having the value "B", and about 25% having the value "C".

Only the top 500 occurring values are used; any values not in the top 500 values are randomly assigned to a split. If less than three rows contain a specific value, those rows are randomly assigned.

Supported only for tabular Datasets.

Fields
trainingFraction number

The fraction of the input data that is to be used to train the Model.

validationFraction number

The fraction of the input data that is to be used to validate the Model.

testFraction number

The fraction of the input data that is to be used to evaluate the Model.

key string

Required. The key is a name of one of the Dataset's data columns. The key provided must be for a categorical column.

JSON representation
{
  "trainingFraction": number,
  "validationFraction": number,
  "testFraction": number,
  "key": string
}

Methods

cancel

Cancels a TrainingPipeline.

create

Creates a TrainingPipeline.

delete

Deletes a TrainingPipeline.

get

Gets a TrainingPipeline.

list

Lists TrainingPipelines in a Location.