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<h1><a href="datalabeling_v1beta1.html">Data Labeling API</a> . <a href="datalabeling_v1beta1.projects.html">projects</a> . <a href="datalabeling_v1beta1.projects.evaluations.html">evaluations</a></h1>
<h2>Instance Methods</h2>
<p class="toc_element">
<code><a href="#close">close()</a></code></p>
<p class="firstline">Close httplib2 connections.</p>
<p class="toc_element">
<code><a href="#search">search(parent, filter=None, pageSize=None, pageToken=None, x__xgafv=None)</a></code></p>
<p class="firstline">Searches evaluations within a project.</p>
<p class="toc_element">
<code><a href="#search_next">search_next(previous_request, previous_response)</a></code></p>
<p class="firstline">Retrieves the next page of results.</p>
<h3>Method Details</h3>
<div class="method">
<code class="details" id="close">close()</code>
<pre>Close httplib2 connections.</pre>
</div>
<div class="method">
<code class="details" id="search">search(parent, filter=None, pageSize=None, pageToken=None, x__xgafv=None)</code>
<pre>Searches evaluations within a project.
Args:
parent: string, Required. Evaluation search parent (project ID). Format: &quot;projects/ {project_id}&quot; (required)
filter: string, Optional. To search evaluations, you can filter by the following: * evaluation_job.evaluation_job_id (the last part of EvaluationJob.name) * evaluation_job.model_id (the {model_name} portion of EvaluationJob.modelVersion) * evaluation_job.evaluation_job_run_time_start (Minimum threshold for the evaluationJobRunTime that created the evaluation) * evaluation_job.evaluation_job_run_time_end (Maximum threshold for the evaluationJobRunTime that created the evaluation) * evaluation_job.job_state (EvaluationJob.state) * annotation_spec.display_name (the Evaluation contains a metric for the annotation spec with this displayName) To filter by multiple critiera, use the `AND` operator or the `OR` operator. The following examples shows a string that filters by several critiera: &quot;evaluation_job.evaluation_job_id = {evaluation_job_id} AND evaluation_job.model_id = {model_name} AND evaluation_job.evaluation_job_run_time_start = {timestamp_1} AND evaluation_job.evaluation_job_run_time_end = {timestamp_2} AND annotation_spec.display_name = {display_name}&quot;
pageSize: integer, Optional. Requested page size. Server may return fewer results than requested. Default value is 100.
pageToken: string, Optional. A token identifying a page of results for the server to return. Typically obtained by the nextPageToken of the response to a previous search request. If you don&#x27;t specify this field, the API call requests the first page of the search.
x__xgafv: string, V1 error format.
Allowed values
1 - v1 error format
2 - v2 error format
Returns:
An object of the form:
{ # Results of searching evaluations.
&quot;evaluations&quot;: [ # The list of evaluations matching the search.
{ # Describes an evaluation between a machine learning model&#x27;s predictions and ground truth labels. Created when an EvaluationJob runs successfully.
&quot;annotationType&quot;: &quot;A String&quot;, # Output only. Type of task that the model version being evaluated performs, as defined in the evaluationJobConfig.inputConfig.annotationType field of the evaluation job that created this evaluation.
&quot;config&quot;: { # Configuration details used for calculating evaluation metrics and creating an Evaluation. # Output only. Options used in the evaluation job that created this evaluation.
&quot;boundingBoxEvaluationOptions&quot;: { # Options regarding evaluation between bounding boxes. # Only specify this field if the related model performs image object detection (`IMAGE_BOUNDING_BOX_ANNOTATION`). Describes how to evaluate bounding boxes.
&quot;iouThreshold&quot;: 3.14, # Minimum [intersection-over-union (IOU)](/vision/automl/object-detection/docs/evaluate#intersection-over-union) required for 2 bounding boxes to be considered a match. This must be a number between 0 and 1.
},
},
&quot;createTime&quot;: &quot;A String&quot;, # Output only. Timestamp for when this evaluation was created.
&quot;evaluatedItemCount&quot;: &quot;A String&quot;, # Output only. The number of items in the ground truth dataset that were used for this evaluation. Only populated when the evaulation is for certain AnnotationTypes.
&quot;evaluationJobRunTime&quot;: &quot;A String&quot;, # Output only. Timestamp for when the evaluation job that created this evaluation ran.
&quot;evaluationMetrics&quot;: { # Output only. Metrics comparing predictions to ground truth labels.
&quot;classificationMetrics&quot;: { # Metrics calculated for a classification model.
&quot;confusionMatrix&quot;: { # Confusion matrix of the model running the classification. Only applicable when the metrics entry aggregates multiple labels. Not applicable when the entry is for a single label. # Confusion matrix of predicted labels vs. ground truth labels.
&quot;row&quot;: [
{ # A row in the confusion matrix. Each entry in this row has the same ground truth label.
&quot;annotationSpec&quot;: { # Container of information related to one possible annotation that can be used in a labeling task. For example, an image classification task where images are labeled as `dog` or `cat` must reference an AnnotationSpec for `dog` and an AnnotationSpec for `cat`. # The annotation spec of the ground truth label for this row.
&quot;description&quot;: &quot;A String&quot;, # Optional. User-provided description of the annotation specification. The description can be up to 10,000 characters long.
&quot;displayName&quot;: &quot;A String&quot;, # Required. The display name of the AnnotationSpec. Maximum of 64 characters.
&quot;index&quot;: 42, # Output only. This is the integer index of the AnnotationSpec. The index for the whole AnnotationSpecSet is sequential starting from 0. For example, an AnnotationSpecSet with classes `dog` and `cat`, might contain one AnnotationSpec with `{ display_name: &quot;dog&quot;, index: 0 }` and one AnnotationSpec with `{ display_name: &quot;cat&quot;, index: 1 }`. This is especially useful for model training as it encodes the string labels into numeric values.
},
&quot;entries&quot;: [ # A list of the confusion matrix entries. One entry for each possible predicted label.
{
&quot;annotationSpec&quot;: { # Container of information related to one possible annotation that can be used in a labeling task. For example, an image classification task where images are labeled as `dog` or `cat` must reference an AnnotationSpec for `dog` and an AnnotationSpec for `cat`. # The annotation spec of a predicted label.
&quot;description&quot;: &quot;A String&quot;, # Optional. User-provided description of the annotation specification. The description can be up to 10,000 characters long.
&quot;displayName&quot;: &quot;A String&quot;, # Required. The display name of the AnnotationSpec. Maximum of 64 characters.
&quot;index&quot;: 42, # Output only. This is the integer index of the AnnotationSpec. The index for the whole AnnotationSpecSet is sequential starting from 0. For example, an AnnotationSpecSet with classes `dog` and `cat`, might contain one AnnotationSpec with `{ display_name: &quot;dog&quot;, index: 0 }` and one AnnotationSpec with `{ display_name: &quot;cat&quot;, index: 1 }`. This is especially useful for model training as it encodes the string labels into numeric values.
},
&quot;itemCount&quot;: 42, # Number of items predicted to have this label. (The ground truth label for these items is the `Row.annotationSpec` of this entry&#x27;s parent.)
},
],
},
],
},
&quot;prCurve&quot;: { # Precision-recall curve based on ground truth labels, predicted labels, and scores for the predicted labels.
&quot;annotationSpec&quot;: { # Container of information related to one possible annotation that can be used in a labeling task. For example, an image classification task where images are labeled as `dog` or `cat` must reference an AnnotationSpec for `dog` and an AnnotationSpec for `cat`. # The annotation spec of the label for which the precision-recall curve calculated. If this field is empty, that means the precision-recall curve is an aggregate curve for all labels.
&quot;description&quot;: &quot;A String&quot;, # Optional. User-provided description of the annotation specification. The description can be up to 10,000 characters long.
&quot;displayName&quot;: &quot;A String&quot;, # Required. The display name of the AnnotationSpec. Maximum of 64 characters.
&quot;index&quot;: 42, # Output only. This is the integer index of the AnnotationSpec. The index for the whole AnnotationSpecSet is sequential starting from 0. For example, an AnnotationSpecSet with classes `dog` and `cat`, might contain one AnnotationSpec with `{ display_name: &quot;dog&quot;, index: 0 }` and one AnnotationSpec with `{ display_name: &quot;cat&quot;, index: 1 }`. This is especially useful for model training as it encodes the string labels into numeric values.
},
&quot;areaUnderCurve&quot;: 3.14, # Area under the precision-recall curve. Not to be confused with area under a receiver operating characteristic (ROC) curve.
&quot;confidenceMetricsEntries&quot;: [ # Entries that make up the precision-recall graph. Each entry is a &quot;point&quot; on the graph drawn for a different `confidence_threshold`.
{
&quot;confidenceThreshold&quot;: 3.14, # Threshold used for this entry. For classification tasks, this is a classification threshold: a predicted label is categorized as positive or negative (in the context of this point on the PR curve) based on whether the label&#x27;s score meets this threshold. For image object detection (bounding box) tasks, this is the [intersection-over-union (IOU)](/vision/automl/object-detection/docs/evaluate#intersection-over-union) threshold for the context of this point on the PR curve.
&quot;f1Score&quot;: 3.14, # Harmonic mean of recall and precision.
&quot;f1ScoreAt1&quot;: 3.14, # The harmonic mean of recall_at1 and precision_at1.
&quot;f1ScoreAt5&quot;: 3.14, # The harmonic mean of recall_at5 and precision_at5.
&quot;precision&quot;: 3.14, # Precision value.
&quot;precisionAt1&quot;: 3.14, # Precision value for entries with label that has highest score.
&quot;precisionAt5&quot;: 3.14, # Precision value for entries with label that has highest 5 scores.
&quot;recall&quot;: 3.14, # Recall value.
&quot;recallAt1&quot;: 3.14, # Recall value for entries with label that has highest score.
&quot;recallAt5&quot;: 3.14, # Recall value for entries with label that has highest 5 scores.
},
],
&quot;meanAveragePrecision&quot;: 3.14, # Mean average prcision of this curve.
},
},
&quot;objectDetectionMetrics&quot;: { # Metrics calculated for an image object detection (bounding box) model.
&quot;prCurve&quot;: { # Precision-recall curve.
&quot;annotationSpec&quot;: { # Container of information related to one possible annotation that can be used in a labeling task. For example, an image classification task where images are labeled as `dog` or `cat` must reference an AnnotationSpec for `dog` and an AnnotationSpec for `cat`. # The annotation spec of the label for which the precision-recall curve calculated. If this field is empty, that means the precision-recall curve is an aggregate curve for all labels.
&quot;description&quot;: &quot;A String&quot;, # Optional. User-provided description of the annotation specification. The description can be up to 10,000 characters long.
&quot;displayName&quot;: &quot;A String&quot;, # Required. The display name of the AnnotationSpec. Maximum of 64 characters.
&quot;index&quot;: 42, # Output only. This is the integer index of the AnnotationSpec. The index for the whole AnnotationSpecSet is sequential starting from 0. For example, an AnnotationSpecSet with classes `dog` and `cat`, might contain one AnnotationSpec with `{ display_name: &quot;dog&quot;, index: 0 }` and one AnnotationSpec with `{ display_name: &quot;cat&quot;, index: 1 }`. This is especially useful for model training as it encodes the string labels into numeric values.
},
&quot;areaUnderCurve&quot;: 3.14, # Area under the precision-recall curve. Not to be confused with area under a receiver operating characteristic (ROC) curve.
&quot;confidenceMetricsEntries&quot;: [ # Entries that make up the precision-recall graph. Each entry is a &quot;point&quot; on the graph drawn for a different `confidence_threshold`.
{
&quot;confidenceThreshold&quot;: 3.14, # Threshold used for this entry. For classification tasks, this is a classification threshold: a predicted label is categorized as positive or negative (in the context of this point on the PR curve) based on whether the label&#x27;s score meets this threshold. For image object detection (bounding box) tasks, this is the [intersection-over-union (IOU)](/vision/automl/object-detection/docs/evaluate#intersection-over-union) threshold for the context of this point on the PR curve.
&quot;f1Score&quot;: 3.14, # Harmonic mean of recall and precision.
&quot;f1ScoreAt1&quot;: 3.14, # The harmonic mean of recall_at1 and precision_at1.
&quot;f1ScoreAt5&quot;: 3.14, # The harmonic mean of recall_at5 and precision_at5.
&quot;precision&quot;: 3.14, # Precision value.
&quot;precisionAt1&quot;: 3.14, # Precision value for entries with label that has highest score.
&quot;precisionAt5&quot;: 3.14, # Precision value for entries with label that has highest 5 scores.
&quot;recall&quot;: 3.14, # Recall value.
&quot;recallAt1&quot;: 3.14, # Recall value for entries with label that has highest score.
&quot;recallAt5&quot;: 3.14, # Recall value for entries with label that has highest 5 scores.
},
],
&quot;meanAveragePrecision&quot;: 3.14, # Mean average prcision of this curve.
},
},
},
&quot;name&quot;: &quot;A String&quot;, # Output only. Resource name of an evaluation. The name has the following format: &quot;projects/{project_id}/datasets/{dataset_id}/evaluations/ {evaluation_id}&#x27;
},
],
&quot;nextPageToken&quot;: &quot;A String&quot;, # A token to retrieve next page of results.
}</pre>
</div>
<div class="method">
<code class="details" id="search_next">search_next(previous_request, previous_response)</code>
<pre>Retrieves the next page of results.
Args:
previous_request: The request for the previous page. (required)
previous_response: The response from the request for the previous page. (required)
Returns:
A request object that you can call &#x27;execute()&#x27; on to request the next
page. Returns None if there are no more items in the collection.
</pre>
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