public static interface ModelEvaluation.BiasConfigOrBuilder
extends com.google.protobuf.MessageOrBuilder
| Modifier and Type | Method and Description |
|---|---|
ModelEvaluationSlice.Slice.SliceSpec |
getBiasSlices()
Specification for how the data should be sliced for bias.
|
ModelEvaluationSlice.Slice.SliceSpecOrBuilder |
getBiasSlicesOrBuilder()
Specification for how the data should be sliced for bias.
|
String |
getLabels(int index)
Positive labels selection on the target field.
|
com.google.protobuf.ByteString |
getLabelsBytes(int index)
Positive labels selection on the target field.
|
int |
getLabelsCount()
Positive labels selection on the target field.
|
List<String> |
getLabelsList()
Positive labels selection on the target field.
|
boolean |
hasBiasSlices()
Specification for how the data should be sliced for bias.
|
findInitializationErrors, getAllFields, getDefaultInstanceForType, getDescriptorForType, getField, getInitializationErrorString, getOneofFieldDescriptor, getRepeatedField, getRepeatedFieldCount, getUnknownFields, hasField, hasOneofboolean hasBiasSlices()
Specification for how the data should be sliced for bias. It contains a
list of slices, with limitation of two slices. The first slice of data
will be the slice_a. The second slice in the list (slice_b) will be
compared against the first slice. If only a single slice is provided,
then slice_a will be compared against "not slice_a".
Below are examples with feature "education" with value "low", "medium",
"high" in the dataset:
Example 1:
bias_slices = [{'education': 'low'}]
A single slice provided. In this case, slice_a is the collection of data
with 'education' equals 'low', and slice_b is the collection of data with
'education' equals 'medium' or 'high'.
Example 2:
bias_slices = [{'education': 'low'},
{'education': 'high'}]
Two slices provided. In this case, slice_a is the collection of data
with 'education' equals 'low', and slice_b is the collection of data with
'education' equals 'high'.
.google.cloud.aiplatform.v1beta1.ModelEvaluationSlice.Slice.SliceSpec bias_slices = 1;
ModelEvaluationSlice.Slice.SliceSpec getBiasSlices()
Specification for how the data should be sliced for bias. It contains a
list of slices, with limitation of two slices. The first slice of data
will be the slice_a. The second slice in the list (slice_b) will be
compared against the first slice. If only a single slice is provided,
then slice_a will be compared against "not slice_a".
Below are examples with feature "education" with value "low", "medium",
"high" in the dataset:
Example 1:
bias_slices = [{'education': 'low'}]
A single slice provided. In this case, slice_a is the collection of data
with 'education' equals 'low', and slice_b is the collection of data with
'education' equals 'medium' or 'high'.
Example 2:
bias_slices = [{'education': 'low'},
{'education': 'high'}]
Two slices provided. In this case, slice_a is the collection of data
with 'education' equals 'low', and slice_b is the collection of data with
'education' equals 'high'.
.google.cloud.aiplatform.v1beta1.ModelEvaluationSlice.Slice.SliceSpec bias_slices = 1;
ModelEvaluationSlice.Slice.SliceSpecOrBuilder getBiasSlicesOrBuilder()
Specification for how the data should be sliced for bias. It contains a
list of slices, with limitation of two slices. The first slice of data
will be the slice_a. The second slice in the list (slice_b) will be
compared against the first slice. If only a single slice is provided,
then slice_a will be compared against "not slice_a".
Below are examples with feature "education" with value "low", "medium",
"high" in the dataset:
Example 1:
bias_slices = [{'education': 'low'}]
A single slice provided. In this case, slice_a is the collection of data
with 'education' equals 'low', and slice_b is the collection of data with
'education' equals 'medium' or 'high'.
Example 2:
bias_slices = [{'education': 'low'},
{'education': 'high'}]
Two slices provided. In this case, slice_a is the collection of data
with 'education' equals 'low', and slice_b is the collection of data with
'education' equals 'high'.
.google.cloud.aiplatform.v1beta1.ModelEvaluationSlice.Slice.SliceSpec bias_slices = 1;
List<String> getLabelsList()
Positive labels selection on the target field.
repeated string labels = 2;int getLabelsCount()
Positive labels selection on the target field.
repeated string labels = 2;String getLabels(int index)
Positive labels selection on the target field.
repeated string labels = 2;index - The index of the element to return.com.google.protobuf.ByteString getLabelsBytes(int index)
Positive labels selection on the target field.
repeated string labels = 2;index - The index of the value to return.Copyright © 2025 Google LLC. All rights reserved.