커스텀 작업을 위한 학습 파이프라인 만들기

create_training_pipeline 메서드를 사용하여 커스텀 작업을 위한 학습 파이프라인을 만듭니다.

더 살펴보기

이 코드 샘플이 포함된 자세한 문서는 다음을 참조하세요.

코드 샘플

Java

이 샘플을 사용해 보기 전에 Vertex AI 빠른 시작: 클라이언트 라이브러리 사용Java 설정 안내를 따르세요. 자세한 내용은 Vertex AI Java API 참고 문서를 참조하세요.

Vertex AI에 인증하려면 애플리케이션 기본 사용자 인증 정보를 설정합니다. 자세한 내용은 로컬 개발 환경의 인증 설정을 참조하세요.

import com.google.cloud.aiplatform.v1.LocationName;
import com.google.cloud.aiplatform.v1.Model;
import com.google.cloud.aiplatform.v1.ModelContainerSpec;
import com.google.cloud.aiplatform.v1.PipelineServiceClient;
import com.google.cloud.aiplatform.v1.PipelineServiceSettings;
import com.google.cloud.aiplatform.v1.TrainingPipeline;
import com.google.gson.JsonArray;
import com.google.gson.JsonObject;
import com.google.protobuf.Value;
import com.google.protobuf.util.JsonFormat;
import java.io.IOException;

public class CreateTrainingPipelineCustomJobSample {

  public static void main(String[] args) throws IOException {
    // TODO(developer): Replace these variables before running the sample.
    String project = "PROJECT";
    String displayName = "DISPLAY_NAME";
    String modelDisplayName = "MODEL_DISPLAY_NAME";
    String containerImageUri = "CONTAINER_IMAGE_URI";
    String baseOutputDirectoryPrefix = "BASE_OUTPUT_DIRECTORY_PREFIX";
    createTrainingPipelineCustomJobSample(
        project, displayName, modelDisplayName, containerImageUri, baseOutputDirectoryPrefix);
  }

  static void createTrainingPipelineCustomJobSample(
      String project,
      String displayName,
      String modelDisplayName,
      String containerImageUri,
      String baseOutputDirectoryPrefix)
      throws IOException {
    PipelineServiceSettings settings =
        PipelineServiceSettings.newBuilder()
            .setEndpoint("us-central1-aiplatform.googleapis.com:443")
            .build();
    String location = "us-central1";

    // Initialize client that will be used to send requests. This client only needs to be created
    // once, and can be reused for multiple requests. After completing all of your requests, call
    // the "close" method on the client to safely clean up any remaining background resources.
    try (PipelineServiceClient client = PipelineServiceClient.create(settings)) {
      JsonObject jsonMachineSpec = new JsonObject();
      jsonMachineSpec.addProperty("machineType", "n1-standard-4");

      // A working docker image can be found at
      // gs://cloud-samples-data/ai-platform/mnist_tfrecord/custom_job
      // This sample image accepts a set of arguments including model_dir.
      JsonObject jsonContainerSpec = new JsonObject();
      jsonContainerSpec.addProperty("imageUri", containerImageUri);
      JsonArray jsonArgs = new JsonArray();
      jsonArgs.add("--model_dir=$(AIP_MODEL_DIR)");
      jsonContainerSpec.add("args", jsonArgs);

      JsonObject jsonJsonWorkerPoolSpec0 = new JsonObject();
      jsonJsonWorkerPoolSpec0.addProperty("replicaCount", 1);
      jsonJsonWorkerPoolSpec0.add("machineSpec", jsonMachineSpec);
      jsonJsonWorkerPoolSpec0.add("containerSpec", jsonContainerSpec);

      JsonArray jsonWorkerPoolSpecs = new JsonArray();
      jsonWorkerPoolSpecs.add(jsonJsonWorkerPoolSpec0);

      JsonObject jsonBaseOutputDirectory = new JsonObject();
      // The GCS location for outputs must be accessible by the project's AI Platform
      // service account.
      jsonBaseOutputDirectory.addProperty("output_uri_prefix", baseOutputDirectoryPrefix);

      JsonObject jsonTrainingTaskInputs = new JsonObject();
      jsonTrainingTaskInputs.add("workerPoolSpecs", jsonWorkerPoolSpecs);
      jsonTrainingTaskInputs.add("baseOutputDirectory", jsonBaseOutputDirectory);

      Value.Builder trainingTaskInputsBuilder = Value.newBuilder();
      JsonFormat.parser().merge(jsonTrainingTaskInputs.toString(), trainingTaskInputsBuilder);
      Value trainingTaskInputs = trainingTaskInputsBuilder.build();
      String trainingTaskDefinition =
          "gs://google-cloud-aiplatform/schema/trainingjob/definition/custom_task_1.0.0.yaml";
      String imageUri = "gcr.io/cloud-aiplatform/prediction/tf-cpu.1-15:latest";
      ModelContainerSpec containerSpec =
          ModelContainerSpec.newBuilder().setImageUri(imageUri).build();
      Model modelToUpload =
          Model.newBuilder()
              .setDisplayName(modelDisplayName)
              .setContainerSpec(containerSpec)
              .build();
      TrainingPipeline trainingPipeline =
          TrainingPipeline.newBuilder()
              .setDisplayName(displayName)
              .setTrainingTaskDefinition(trainingTaskDefinition)
              .setTrainingTaskInputs(trainingTaskInputs)
              .setModelToUpload(modelToUpload)
              .build();
      LocationName parent = LocationName.of(project, location);
      TrainingPipeline response = client.createTrainingPipeline(parent, trainingPipeline);
      System.out.format("response: %s\n", response);
      System.out.format("Name: %s\n", response.getName());
    }
  }
}

Python

이 샘플을 사용해 보기 전에 Vertex AI 빠른 시작: 클라이언트 라이브러리 사용Python 설정 안내를 따르세요. 자세한 내용은 Vertex AI Python API 참고 문서를 참조하세요.

Vertex AI에 인증하려면 애플리케이션 기본 사용자 인증 정보를 설정합니다. 자세한 내용은 로컬 개발 환경의 인증 설정을 참조하세요.

from google.cloud import aiplatform
from google.protobuf import json_format
from google.protobuf.struct_pb2 import Value


def create_training_pipeline_custom_job_sample(
    project: str,
    display_name: str,
    model_display_name: str,
    container_image_uri: str,
    base_output_directory_prefix: str,
    location: str = "us-central1",
    api_endpoint: str = "us-central1-aiplatform.googleapis.com",
):
    # The AI Platform services require regional API endpoints.
    client_options = {"api_endpoint": api_endpoint}
    # Initialize client that will be used to create and send requests.
    # This client only needs to be created once, and can be reused for multiple requests.
    client = aiplatform.gapic.PipelineServiceClient(client_options=client_options)

    training_task_inputs_dict = {
        "workerPoolSpecs": [
            {
                "replicaCount": 1,
                "machineSpec": {"machineType": "n1-standard-4"},
                "containerSpec": {
                    # A working docker image can be found at gs://cloud-samples-data/ai-platform/mnist_tfrecord/custom_job
                    "imageUri": container_image_uri,
                    "args": [
                        # AIP_MODEL_DIR is set by the service according to baseOutputDirectory.
                        "--model_dir=$(AIP_MODEL_DIR)",
                    ],
                },
            }
        ],
        "baseOutputDirectory": {
            # The GCS location for outputs must be accessible by the project's AI Platform service account.
            "output_uri_prefix": base_output_directory_prefix
        },
    }
    training_task_inputs = json_format.ParseDict(training_task_inputs_dict, Value())

    training_task_definition = "gs://google-cloud-aiplatform/schema/trainingjob/definition/custom_task_1.0.0.yaml"
    image_uri = "gcr.io/cloud-aiplatform/prediction/tf-cpu.1-15:latest"

    training_pipeline = {
        "display_name": display_name,
        "training_task_definition": training_task_definition,
        "training_task_inputs": training_task_inputs,
        "model_to_upload": {
            "display_name": model_display_name,
            "container_spec": {"image_uri": image_uri},
        },
    }
    parent = f"projects/{project}/locations/{location}"
    response = client.create_training_pipeline(
        parent=parent, training_pipeline=training_pipeline
    )
    print("response:", response)

다음 단계

다른 Google Cloud 제품의 코드 샘플을 검색하고 필터링하려면 Google Cloud 샘플 브라우저를 참조하세요.