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Reference documentation and code samples for the Google Cloud Ai Platform V1 Client class InputDataConfig.
Specifies Vertex AI owned input data to be used for training, and possibly evaluating, the Model.
Generated from protobuf message google.cloud.aiplatform.v1.InputDataConfig
Namespace
Google \ Cloud \ AIPlatform \ V1Methods
__construct
Constructor.
data
array
Optional. Data for populating the Message object.
↳ fraction_split
↳ filter_split
↳ predefined_split
↳ timestamp_split
TimestampSplit
Supported only for tabular Datasets. Split based on the timestamp of the input data pieces.
↳ stratified_split
StratifiedSplit
Supported only for tabular Datasets. Split based on the distribution of the specified column.
↳ gcs_destination
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 = "gcs_destination/dataset-
.${AIP_DATA_FORMAT}" * * AIP_VALIDATION_DATA_URI = "gcs_destination/dataset-
↳ bigquery_destination
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 = "bigquery_destination.dataset_
↳ dataset_id
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 [training_task_definition] [google.cloud.aiplatform.v1.TrainingPipeline.training_task_definition]. For tabular Datasets, all their data is exported to training, to pick and choose from.
↳ annotations_filter
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.
↳ annotation_schema_uri
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 dataset_id . 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 annotations_filter , the Annotations used for training are filtered by both annotations_filter and annotation_schema_uri .
↳ saved_query_id
string
Only applicable to Datasets that have SavedQueries. The ID of a SavedQuery (annotation set) under the Dataset specified by dataset_id used for filtering Annotations for training. Only Annotations that are associated with this SavedQuery are used in respectively training. When used in conjunction with annotations_filter , the Annotations used for training are filtered by both saved_query_id and annotations_filter . Only one of saved_query_id and annotation_schema_uri should be specified as both of them represent the same thing: problem type.
↳ persist_ml_use_assignment
bool
Whether to persist the ML use assignment to data item system labels.
getFractionSplit
Split based on fractions defining the size of each set.
hasFractionSplit
setFractionSplit
Split based on fractions defining the size of each set.
$this
getFilterSplit
Split based on the provided filters for each set.
hasFilterSplit
setFilterSplit
Split based on the provided filters for each set.
$this
getPredefinedSplit
Supported only for tabular Datasets.
Split based on a predefined key.
hasPredefinedSplit
setPredefinedSplit
Supported only for tabular Datasets.
Split based on a predefined key.
$this
getTimestampSplit
Supported only for tabular Datasets.
Split based on the timestamp of the input data pieces.
hasTimestampSplit
setTimestampSplit
Supported only for tabular Datasets.
Split based on the timestamp of the input data pieces.
$this
getStratifiedSplit
Supported only for tabular Datasets.
Split based on the distribution of the specified column.
hasStratifiedSplit
setStratifiedSplit
Supported only for tabular Datasets.
Split based on the distribution of the specified column.
$this
getGcsDestination
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 = "gcs_destination/dataset-
- AIP_VALIDATION_DATA_URI = "gcs_destination/dataset-
- AIP_TEST_DATA_URI = "gcs_destination/dataset-
hasGcsDestination
setGcsDestination
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 = "gcs_destination/dataset-
- AIP_VALIDATION_DATA_URI = "gcs_destination/dataset-
- AIP_TEST_DATA_URI = "gcs_destination/dataset-
$this
getBigqueryDestination
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 = "bigquery_destination.dataset_
- AIP_VALIDATION_DATA_URI = "bigquery_destination.dataset_
- AIP_TEST_DATA_URI = "bigquery_destination.dataset_
hasBigqueryDestination
setBigqueryDestination
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 = "bigquery_destination.dataset_
- AIP_VALIDATION_DATA_URI = "bigquery_destination.dataset_
- AIP_TEST_DATA_URI = "bigquery_destination.dataset_
$this
getDatasetId
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 training_task_definition .
For tabular Datasets, all their data is exported to training, to pick and choose from.
string
setDatasetId
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 training_task_definition .
For tabular Datasets, all their data is exported to training, to pick and choose from.
var
string
$this
getAnnotationsFilter
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.
string
setAnnotationsFilter
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.
var
string
$this
getAnnotationSchemaUri
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 dataset_id . 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 annotations_filter , the Annotations used for training are filtered by both annotations_filter and annotation_schema_uri .
string
setAnnotationSchemaUri
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 dataset_id . 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 annotations_filter , the Annotations used for training are filtered by both annotations_filter and annotation_schema_uri .
var
string
$this
getSavedQueryId
Only applicable to Datasets that have SavedQueries.
The ID of a SavedQuery (annotation set) under the Dataset specified by dataset_id used for filtering Annotations for training. Only Annotations that are associated with this SavedQuery are used in respectively training. When used in conjunction with annotations_filter , the Annotations used for training are filtered by both saved_query_id and annotations_filter . Only one of saved_query_id and annotation_schema_uri should be specified as both of them represent the same thing: problem type.
string
setSavedQueryId
Only applicable to Datasets that have SavedQueries.
The ID of a SavedQuery (annotation set) under the Dataset specified by dataset_id used for filtering Annotations for training. Only Annotations that are associated with this SavedQuery are used in respectively training. When used in conjunction with annotations_filter , the Annotations used for training are filtered by both saved_query_id and annotations_filter . Only one of saved_query_id and annotation_schema_uri should be specified as both of them represent the same thing: problem type.
var
string
$this
getPersistMlUseAssignment
Whether to persist the ML use assignment to data item system labels.
bool
setPersistMlUseAssignment
Whether to persist the ML use assignment to data item system labels.
var
bool
$this
getSplit
string
getDestination
string