Fields that will be excluded in the prediction instance that is
sent to the Model.
Excluded will be attached to the batch prediction output if
key_field
is not specified.
When excluded_fields is populated,
included_fields
must be empty.
The input must be JSONL with objects at each line, CSV, BigQuery
or TfRecord.
Fields that will be excluded in the prediction instance that is
sent to the Model.
Excluded will be attached to the batch prediction output if
key_field
is not specified.
When excluded_fields is populated,
included_fields
must be empty.
The input must be JSONL with objects at each line, CSV, BigQuery
or TfRecord.
The bytes of the excludedFields at the given index.
getExcludedFieldsCount()
publicintgetExcludedFieldsCount()
Fields that will be excluded in the prediction instance that is
sent to the Model.
Excluded will be attached to the batch prediction output if
key_field
is not specified.
When excluded_fields is populated,
included_fields
must be empty.
The input must be JSONL with objects at each line, CSV, BigQuery
or TfRecord.
Fields that will be excluded in the prediction instance that is
sent to the Model.
Excluded will be attached to the batch prediction output if
key_field
is not specified.
When excluded_fields is populated,
included_fields
must be empty.
The input must be JSONL with objects at each line, CSV, BigQuery
or TfRecord.
Fields that will be included in the prediction instance that is
sent to the Model.
If
instance_type
is array, the order of field names in included_fields also determines
the order of the values in the array.
When included_fields is populated,
excluded_fields
must be empty.
The input must be JSONL with objects at each line, CSV, BigQuery
or TfRecord.
Fields that will be included in the prediction instance that is
sent to the Model.
If
instance_type
is array, the order of field names in included_fields also determines
the order of the values in the array.
When included_fields is populated,
excluded_fields
must be empty.
The input must be JSONL with objects at each line, CSV, BigQuery
or TfRecord.
The bytes of the includedFields at the given index.
getIncludedFieldsCount()
publicintgetIncludedFieldsCount()
Fields that will be included in the prediction instance that is
sent to the Model.
If
instance_type
is array, the order of field names in included_fields also determines
the order of the values in the array.
When included_fields is populated,
excluded_fields
must be empty.
The input must be JSONL with objects at each line, CSV, BigQuery
or TfRecord.
Fields that will be included in the prediction instance that is
sent to the Model.
If
instance_type
is array, the order of field names in included_fields also determines
the order of the values in the array.
When included_fields is populated,
excluded_fields
must be empty.
The input must be JSONL with objects at each line, CSV, BigQuery
or TfRecord.
The format of the instance that the Model accepts. Vertex AI will
convert compatible
batch prediction input instance
formats
to the specified format.
Supported values are:
object: Each input is converted to JSON object format.
For bigquery, each row is converted to an object.
For jsonl, each line of the JSONL input must be an object.
Does not apply to csv, file-list, tf-record, or
tf-record-gzip.
array: Each input is converted to JSON array format.
For bigquery, each row is converted to an array. The order
of columns is determined by the BigQuery column order, unless
included_fields
is populated.
included_fields
must be populated for specifying field orders.
For jsonl, if each line of the JSONL input is an object,
included_fields
must be populated for specifying field orders.
Does not apply to csv, file-list, tf-record, or
tf-record-gzip.
If not specified, Vertex AI converts the batch prediction input as
follows:
For bigquery and csv, the behavior is the same as array. The
order of columns is the same as defined in the file or table, unless
included_fields
is populated.
For jsonl, the prediction instance format is determined by
each line of the input.
For tf-record/tf-record-gzip, each record will be converted to
an object in the format of {"b64": <value>}, where <value> is
the Base64-encoded string of the content of the record.
For file-list, each file in the list will be converted to an
object in the format of {"b64": <value>}, where <value> is
the Base64-encoded string of the content of the file.
The format of the instance that the Model accepts. Vertex AI will
convert compatible
batch prediction input instance
formats
to the specified format.
Supported values are:
object: Each input is converted to JSON object format.
For bigquery, each row is converted to an object.
For jsonl, each line of the JSONL input must be an object.
Does not apply to csv, file-list, tf-record, or
tf-record-gzip.
array: Each input is converted to JSON array format.
For bigquery, each row is converted to an array. The order
of columns is determined by the BigQuery column order, unless
included_fields
is populated.
included_fields
must be populated for specifying field orders.
For jsonl, if each line of the JSONL input is an object,
included_fields
must be populated for specifying field orders.
Does not apply to csv, file-list, tf-record, or
tf-record-gzip.
If not specified, Vertex AI converts the batch prediction input as
follows:
For bigquery and csv, the behavior is the same as array. The
order of columns is the same as defined in the file or table, unless
included_fields
is populated.
For jsonl, the prediction instance format is determined by
each line of the input.
For tf-record/tf-record-gzip, each record will be converted to
an object in the format of {"b64": <value>}, where <value> is
the Base64-encoded string of the content of the record.
For file-list, each file in the list will be converted to an
object in the format of {"b64": <value>}, where <value> is
the Base64-encoded string of the content of the file.
The name of the field that is considered as a key.
The values identified by the key field is not included in the transformed
instances that is sent to the Model. This is similar to
specifying this name of the field in
excluded_fields.
In addition, the batch prediction output will not include the instances.
Instead the output will only include the value of the key field, in a
field named key in the output:
For jsonl output format, the output will have a key field
instead of the instance field.
For csv/bigquery output format, the output will have have a key
column instead of the instance feature columns.
The input must be JSONL with objects at each line, CSV, BigQuery
or TfRecord.
The name of the field that is considered as a key.
The values identified by the key field is not included in the transformed
instances that is sent to the Model. This is similar to
specifying this name of the field in
excluded_fields.
In addition, the batch prediction output will not include the instances.
Instead the output will only include the value of the key field, in a
field named key in the output:
For jsonl output format, the output will have a key field
instead of the instance field.
For csv/bigquery output format, the output will have have a key
column instead of the instance feature columns.
The input must be JSONL with objects at each line, CSV, BigQuery
or TfRecord.
[[["Easy to understand","easyToUnderstand","thumb-up"],["Solved my problem","solvedMyProblem","thumb-up"],["Other","otherUp","thumb-up"]],[["Hard to understand","hardToUnderstand","thumb-down"],["Incorrect information or sample code","incorrectInformationOrSampleCode","thumb-down"],["Missing the information/samples I need","missingTheInformationSamplesINeed","thumb-down"],["Other","otherDown","thumb-down"]],["Last updated 2025-08-18 UTC."],[],[],null,[]]