// Copyright 2019 Google LLC. // // Licensed under the Apache License, Version 2.0 (the "License"); // you may not use this file except in compliance with the License. // You may obtain a copy of the License at // // http://www.apache.org/licenses/LICENSE-2.0 // // Unless required by applicable law or agreed to in writing, software // distributed under the License is distributed on an "AS IS" BASIS, // WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. // See the License for the specific language governing permissions and // limitations under the License. // syntax = "proto3"; package google.cloud.automl.v1beta1; import "google/api/annotations.proto"; import "google/cloud/automl/v1beta1/annotation_spec.proto"; import "google/cloud/automl/v1beta1/classification.proto"; import "google/protobuf/timestamp.proto"; option go_package = "google.golang.org/genproto/googleapis/cloud/automl/v1beta1;automl"; option java_multiple_files = true; option java_outer_classname = "ImageProto"; option java_package = "com.google.cloud.automl.v1beta1"; option php_namespace = "Google\\Cloud\\AutoMl\\V1beta1"; option ruby_package = "Google::Cloud::AutoML::V1beta1"; // Dataset metadata that is specific to image classification. message ImageClassificationDatasetMetadata { // Required. Type of the classification problem. ClassificationType classification_type = 1; } // Dataset metadata specific to image object detection. message ImageObjectDetectionDatasetMetadata {} // Model metadata for image classification. message ImageClassificationModelMetadata { // Optional. The ID of the `base` model. If it is specified, the new model // will be created based on the `base` model. Otherwise, the new model will be // created from scratch. The `base` model must be in the same // `project` and `location` as the new model to create, and have the same // `model_type`. string base_model_id = 1; // Required. The train budget of creating this model, expressed in hours. The // actual `train_cost` will be equal or less than this value. int64 train_budget = 2; // Output only. The actual train cost of creating this model, expressed in // hours. If this model is created from a `base` model, the train cost used // to create the `base` model are not included. int64 train_cost = 3; // Output only. The reason that this create model operation stopped, // e.g. `BUDGET_REACHED`, `MODEL_CONVERGED`. string stop_reason = 5; // Optional. Type of the model. The available values are: // * `cloud` - Model to be used via prediction calls to AutoML API. // This is the default value. // * `mobile-low-latency-1` - A model that, in addition to providing // prediction via AutoML API, can also be exported (see // [AutoMl.ExportModel][google.cloud.automl.v1beta1.AutoMl.ExportModel]) // and used on a mobile or edge device with TensorFlow // afterwards. Expected to have low latency, but may have lower // prediction quality than other models. // * `mobile-versatile-1` - A model that, in addition to providing // prediction via AutoML API, can also be exported (see // [AutoMl.ExportModel][google.cloud.automl.v1beta1.AutoMl.ExportModel]) // and used on a mobile or edge device with TensorFlow // afterwards. // * `mobile-high-accuracy-1` - A model that, in addition to providing // prediction via AutoML API, can also be exported (see // [AutoMl.ExportModel][google.cloud.automl.v1beta1.AutoMl.ExportModel]) // and used on a mobile or edge device with TensorFlow // afterwards. Expected to have a higher latency, but should // also have a higher prediction quality than other models. // * `mobile-core-ml-low-latency-1` - A model that, in addition to providing // prediction via AutoML API, can also be exported (see // [AutoMl.ExportModel][google.cloud.automl.v1beta1.AutoMl.ExportModel]) // and used on a mobile device with Core ML afterwards. Expected // to have low latency, but may have lower prediction quality // than other models. // * `mobile-core-ml-versatile-1` - A model that, in addition to providing // prediction via AutoML API, can also be exported (see // [AutoMl.ExportModel][google.cloud.automl.v1beta1.AutoMl.ExportModel]) // and used on a mobile device with Core ML afterwards. // * `mobile-core-ml-high-accuracy-1` - A model that, in addition to // providing prediction via AutoML API, can also be exported // (see // [AutoMl.ExportModel][google.cloud.automl.v1beta1.AutoMl.ExportModel]) // and used on a mobile device with Core ML afterwards. Expected // to have a higher latency, but should also have a higher // prediction quality than other models. string model_type = 7; // Output only. An approximate number of online prediction QPS that can // be supported by this model per each node on which it is deployed. double node_qps = 13; // Output only. The number of nodes this model is deployed on. A node is an // abstraction of a machine resource, which can handle online prediction QPS // as given in the node_qps field. int64 node_count = 14; } // Model metadata specific to image object detection. message ImageObjectDetectionModelMetadata { // Optional. Type of the model. The available values are: // * `cloud-high-accuracy-1` - (default) A model to be used via prediction // calls to AutoML API. Expected to have a higher latency, but // should also have a higher prediction quality than other // models. // * `cloud-low-latency-1` - A model to be used via prediction // calls to AutoML API. Expected to have low latency, but may // have lower prediction quality than other models. string model_type = 1; // Output only. The number of nodes this model is deployed on. A node is an // abstraction of a machine resource, which can handle online prediction QPS // as given in the qps_per_node field. int64 node_count = 3; // Output only. An approximate number of online prediction QPS that can // be supported by this model per each node on which it is deployed. double node_qps = 4; // Output only. The reason that this create model operation stopped, // e.g. `BUDGET_REACHED`, `MODEL_CONVERGED`. string stop_reason = 5; // The train budget of creating this model, expressed in milli node // hours i.e. 1,000 value in this field means 1 node hour. The actual // `train_cost` will be equal or less than this value. If further model // training ceases to provide any improvements, it will stop without using // full budget and the stop_reason will be `MODEL_CONVERGED`. // Note, node_hour = actual_hour * number_of_nodes_invovled. // For model type `cloud-high-accuracy-1`(default) and `cloud-low-latency-1`, // the train budget must be between 20,000 and 900,000 milli node hours, // inclusive. The default value is 216, 000 which represents one day in // wall time. // For model type `mobile-low-latency-1`, `mobile-versatile-1`, // `mobile-high-accuracy-1`, `mobile-core-ml-low-latency-1`, // `mobile-core-ml-versatile-1`, `mobile-core-ml-high-accuracy-1`, the train // budget must be between 1,000 and 100,000 milli node hours, inclusive. // The default value is 24, 000 which represents one day in wall time. int64 train_budget_milli_node_hours = 6; // Output only. The actual train cost of creating this model, expressed in // milli node hours, i.e. 1,000 value in this field means 1 node hour. // Guaranteed to not exceed the train budget. int64 train_cost_milli_node_hours = 7; } // Model deployment metadata specific to Image Classification. message ImageClassificationModelDeploymentMetadata { // Input only. The number of nodes to deploy the model on. A node is an // abstraction of a machine resource, which can handle online prediction QPS // as given in the model's // // [node_qps][google.cloud.automl.v1beta1.ImageClassificationModelMetadata.node_qps]. // Must be between 1 and 100, inclusive on both ends. int64 node_count = 1; } // Model deployment metadata specific to Image Object Detection. message ImageObjectDetectionModelDeploymentMetadata { // Input only. The number of nodes to deploy the model on. A node is an // abstraction of a machine resource, which can handle online prediction QPS // as given in the model's // // [qps_per_node][google.cloud.automl.v1beta1.ImageObjectDetectionModelMetadata.qps_per_node]. // Must be between 1 and 100, inclusive on both ends. int64 node_count = 1; }