使用 Cloud 用戶端程式庫執行工作流程

本快速入門導覽課程說明如何使用 Cloud 用戶端程式庫執行工作流程,並查看執行結果。

如要進一步瞭解如何安裝 Cloud 用戶端程式庫及設定開發環境,請參閱「工作流程用戶端程式庫總覽」。

您可以在終端機或 Cloud Shell 中使用 Google Cloud CLI 完成下列步驟。

事前準備

貴機構定義的安全性限制,可能會導致您無法完成下列步驟。如需疑難排解資訊,請參閱「在受限的 Google Cloud 環境中開發應用程式」。

  1. 登入 Google Cloud 帳戶。如果您是 Google Cloud新手,歡迎 建立帳戶,親自評估產品在實際工作環境中的成效。新客戶還能獲得價值 $300 美元的免費抵免額,可用於執行、測試及部署工作負載。
  2. 安裝 Google Cloud CLI。

  3. 若您採用的是外部識別資訊提供者 (IdP),請先使用聯合身分登入 gcloud CLI

  4. 執行下列指令,初始化 gcloud CLI:

    gcloud init
  5. 建立或選取 Google Cloud 專案

    選取或建立專案所需的角色

    • 選取專案:選取專案時,不需要具備特定 IAM 角色,只要您已獲授角色,即可選取任何專案。
    • 建立專案:如要建立專案,您需要具備專案建立者角色 (roles/resourcemanager.projectCreator),其中包含 resourcemanager.projects.create 權限。瞭解如何授予角色
    • 建立 Google Cloud 專案:

      gcloud projects create PROJECT_ID

      PROJECT_ID 替換為您要建立的 Google Cloud 專案名稱。

    • 選取您建立的 Google Cloud 專案:

      gcloud config set project PROJECT_ID

      PROJECT_ID 替換為 Google Cloud 專案名稱。

  6. 如要使用現有專案進行本指南中的操作,請確認您具有完成本指南所需的權限。如果您建立新專案,則已具備必要權限。

  7. 確認專案已啟用計費功能 Google Cloud

  8. 啟用 Workflows API:

    啟用 API 時所需的角色

    如要啟用 API,您需要具備服務使用情形管理員 IAM 角色 (roles/serviceusage.serviceUsageAdmin),其中包含 serviceusage.services.enable 權限。瞭解如何授予角色

    gcloud services enable workflows.googleapis.com
  9. 安裝 Google Cloud CLI。

  10. 若您採用的是外部識別資訊提供者 (IdP),請先使用聯合身分登入 gcloud CLI

  11. 執行下列指令,初始化 gcloud CLI:

    gcloud init
  12. 建立或選取 Google Cloud 專案

    選取或建立專案所需的角色

    • 選取專案:選取專案時,不需要具備特定 IAM 角色,只要您已獲授角色,即可選取任何專案。
    • 建立專案:如要建立專案,您需要具備專案建立者角色 (roles/resourcemanager.projectCreator),其中包含 resourcemanager.projects.create 權限。瞭解如何授予角色
    • 建立 Google Cloud 專案:

      gcloud projects create PROJECT_ID

      PROJECT_ID 替換為您要建立的 Google Cloud 專案名稱。

    • 選取您建立的 Google Cloud 專案:

      gcloud config set project PROJECT_ID

      PROJECT_ID 替換為 Google Cloud 專案名稱。

  13. 如要使用現有專案進行本指南中的操作,請確認您具有完成本指南所需的權限。如果您建立新專案,則已具備必要權限。

  14. 確認專案已啟用計費功能 Google Cloud

  15. 啟用 Workflows API:

    啟用 API 時所需的角色

    如要啟用 API,您需要具備服務使用情形管理員 IAM 角色 (roles/serviceusage.serviceUsageAdmin),其中包含 serviceusage.services.enable 權限。瞭解如何授予角色

    gcloud services enable workflows.googleapis.com
  16. 設定驗證方法:

    1. 確認您具備「建立服務帳戶」身分與存取權管理角色 (roles/iam.serviceAccountCreator) 和「專案 IAM 管理員」角色 (roles/resourcemanager.projectIamAdmin)。瞭解如何授予角色
    2. 建立服務帳戶:

      gcloud iam service-accounts create SERVICE_ACCOUNT_NAME

      SERVICE_ACCOUNT_NAME 換成服務帳戶的名稱。

    3. roles/logging.logWriter 身分與存取權管理角色授予服務帳戶:

      gcloud projects add-iam-policy-binding PROJECT_ID --member="serviceAccount:SERVICE_ACCOUNT_NAME@PROJECT_ID.iam.gserviceaccount.com" --role=roles/logging.logWriter

      請替換下列項目:

      • SERVICE_ACCOUNT_NAME:服務帳戶名稱
      • PROJECT_ID:您建立服務帳戶的專案 ID
  17. 如要進一步瞭解服務帳戶角色和權限,請參閱授予工作流程存取Google Cloud 資源的權限

  18. 視需要下載並安裝 Git 原始碼管理工具。

必要的角色

如要取得完成本快速入門導覽課程所需的權限,請要求管理員在專案中授予您下列 IAM 角色:

如要進一步瞭解如何授予角色,請參閱「管理專案、資料夾和組織的存取權」。

您或許也能透過自訂角色或其他預先定義的角色,取得必要權限。

部署範例工作流程

定義工作流程後,請部署工作流程,以便執行。部署步驟也會驗證來源檔案是否可執行。

下列工作流程會將要求傳送至公用 API,然後傳回 API 的回應。

  1. 建立名為 myFirstWorkflow.yaml 的文字檔,並在當中加入下列內容:

    # This workflow accepts an optional "searchTerm" argument for the Wikipedia API.
    # If no input arguments are provided or "searchTerm" is absent,
    # it will fetch the day of the week in Amsterdam and use it as the search term.
    
    main:
        params: [input]
        steps:
        - validateSearchTermAndRedirectToReadWikipedia:
            switch:
                - condition: '${map.get(input, "searchTerm") != null}'
                  assign:
                    - searchTerm: '${input.searchTerm}'
                  next: readWikipedia
        - getCurrentTime:
            call: http.get
            args:
                url: https://timeapi.io/api/Time/current/zone?timeZone=Europe/Amsterdam
            result: currentTime
        - setFromCallResult:
            assign:
                - searchTerm: '${currentTime.body.dayOfWeek}'
        - readWikipedia:
            call: http.get
            args:
                url: 'https://en.wikipedia.org/w/api.php'
                query:
                    action: opensearch
                    search: '${searchTerm}'
            result: wikiResult
        - returnOutput:
                return: '${wikiResult.body[1]}'
  2. 建立工作流程後,您可以部署工作流程,但請勿執行工作流程:

    gcloud workflows deploy myFirstWorkflow \
        --source=myFirstWorkflow.yaml \
        --service-account=SERVICE_ACCOUNT_NAME@PROJECT_ID.iam.gserviceaccount.com \
        --location=CLOUD_REGION

    CLOUD_REGION 替換為工作流程的支援位置。程式碼範例中使用的預設區域為 us-central1

取得程式碼範例

您可以從 GitHub 複製程式碼範例。

  1. 將應用程式存放區範例複製到本機電腦中:

    C#

    git clone https://github.com/GoogleCloudPlatform/dotnet-docs-samples.git

    您也可以下載 zip 格式的範例檔案,然後將檔案解壓縮。

    Go

    git clone https://github.com/GoogleCloudPlatform/golang-samples.git

    您也可以下載 zip 格式的範例檔案,然後將檔案解壓縮。

    Java

    git clone https://github.com/GoogleCloudPlatform/java-docs-samples.git

    您也可以下載 zip 格式的範例檔案,然後將檔案解壓縮。

    Node.js

    git clone https://github.com/GoogleCloudPlatform/nodejs-docs-samples.git

    您也可以下載 zip 格式的範例檔案,然後將檔案解壓縮。

    Python

    git clone https://github.com/GoogleCloudPlatform/python-docs-samples.git

    您也可以下載 zip 格式的範例檔案,然後將檔案解壓縮。

  2. 變更為包含 Workflows 範例程式碼的目錄:

    C#

    cd dotnet-docs-samples/workflows/api/Workflow.Samples/

    Go

    cd golang-samples/workflows/executions/

    Java

    cd java-docs-samples/workflows/cloud-client/

    Node.js

    cd nodejs-docs-samples/workflows/quickstart/

    Python

    cd python-docs-samples/workflows/cloud-client/

  3. 查看程式碼範例,每個範例應用程式都會執行下列操作:

    1. 設定 Workflows 適用的 Cloud 用戶端程式庫。
    2. 執行工作流程。
    3. 輪詢工作流程的執行作業 (使用指數輪詢),直到執行作業終止為止。
    4. 列印執行結果。

    C#

    
    using Google.Cloud.Workflows.Common.V1;
    using Google.Cloud.Workflows.Executions.V1;
    using System;
    using System.Threading;
    using System.Threading.Tasks;
    
    public class ExecuteWorkflowSample
    {
        /// <summary>
        /// Execute a workflow and return the execution operation.
        /// </summary>
        /// <param name="projectID">Your Google Cloud Project ID.</param>
        /// <param name="locationID">The region where your workflow is located.</param>
        /// <param name="workflowID">Your Workflow ID.</param>
        /// <returns>
        /// An Execute object representing the completed workflow execution.
        /// </returns>
        public async Task<Execution> ExecuteWorkflow(
            string projectId = "YOUR-PROJECT-ID",
            string locationID = "YOUR-LOCATION-ID",
            string workflowID = "YOUR-WORKFLOW-ID")
        {
            // Initialize the client.
            ExecutionsClient client = await ExecutionsClient.CreateAsync();
    
            // Build the parent location path.
            WorkflowName parent = new WorkflowName(projectId, locationID, workflowID);
    
            // Create an execution request.
            CreateExecutionRequest createExecutionRequest = new CreateExecutionRequest
            {
                ParentAsWorkflowName = parent,
            };
    
            // Execute the operation.
            Execution execution = await client.CreateExecutionAsync(createExecutionRequest);
            Console.WriteLine("- Execution started...");
    
            TimeSpan backoffDelay = TimeSpan.FromSeconds(1);
            TimeSpan maxBackoffDelay = TimeSpan.FromSeconds(16);
    
            // Keep polling the state until the execution finishes, using exponential backoff.
            while (execution.State == Execution.Types.State.Active)
            {
                await Task.Delay(backoffDelay);
    
                // Implement exponential backoff by doubling the delay, but limiting it to a practical duration.
                backoffDelay = (backoffDelay < maxBackoffDelay) ? backoffDelay * 2 : maxBackoffDelay;
    
                execution = await client.GetExecutionAsync(execution.Name);
            }
    
            // Print results.
            Console.WriteLine($"Execution finished with state: {execution.State}");
            Console.WriteLine($"Execution results: {execution.Result}");
    
            // Return the fetched execution.
            return execution;
        }
    }

    Go

    import (
    	"context"
    	"fmt"
    	"io"
    	"time"
    
    	workflowexecutions "google.golang.org/api/workflowexecutions/v1"
    )
    
    // Execute a workflow and print the execution results.
    //
    // For more information about Workflows see:
    // https://cloud.google.com/workflows/docs/overview
    func executeWorkflow(w io.Writer, projectID, workflowID, locationID string) error {
    	// TODO(developer): Uncomment and update the following lines:
    	// projectID := "YOUR_PROJECT_ID"
    	// workflowID := "YOUR_WORKFLOW_ID"
    	// locationID := "YOUR_LOCATION_ID"
    
    	ctx := context.Background()
    
    	// Construct the location path.
    	parent := fmt.Sprintf("projects/%s/locations/%s/workflows/%s", projectID, locationID, workflowID)
    
    	// Create execution client.
    	client, err := workflowexecutions.NewService(ctx)
    	if err != nil {
    		return fmt.Errorf("workflowexecutions.NewService error: %w", err)
    	}
    
    	// Get execution service.
    	service := client.Projects.Locations.Workflows.Executions
    
    	// Build and run the new workflow execution.
    	res, err := service.Create(parent, &workflowexecutions.Execution{}).Do()
    	if err != nil {
    		return fmt.Errorf("service.Create.Do error: %w", err)
    	}
    	fmt.Fprintln(w, "- Execution started...")
    
    	// Set initial value for backoff delay in one second.
    	backoffDelay := time.Second
    
    	for res.State == "ACTIVE" {
    		time.Sleep(backoffDelay)
    
    		// Request the updated state for the execution.
    		getReq := service.Get(res.Name)
    		res, err = getReq.Do()
    		if err != nil {
    			return fmt.Errorf("getReq error: %w", err)
    		}
    
    		// Double the delay to provide exponential backoff (capped at 16 seconds).
    		if backoffDelay < time.Second*16 {
    			backoffDelay *= 2
    		}
    	}
    
    	fmt.Fprintf(w, "Execution finished with state: %s\n", res.State)
    	fmt.Fprintf(w, "Execution results: %s\n", res.Result)
    
    	return nil
    }
    

    Java

    // Imports the Google Cloud client library
    
    import com.google.cloud.workflows.executions.v1.CreateExecutionRequest;
    import com.google.cloud.workflows.executions.v1.Execution;
    import com.google.cloud.workflows.executions.v1.ExecutionsClient;
    import com.google.cloud.workflows.executions.v1.WorkflowName;
    import java.io.IOException;
    import java.util.concurrent.ExecutionException;
    
    public class WorkflowsQuickstart {
    
      private static final String PROJECT = System.getenv("GOOGLE_CLOUD_PROJECT");
      private static final String LOCATION = System.getenv().getOrDefault("LOCATION", "us-central1");
      private static final String WORKFLOW =
          System.getenv().getOrDefault("WORKFLOW", "myFirstWorkflow");
    
      public static void main(String... args)
          throws IOException, InterruptedException, ExecutionException {
        if (PROJECT == null) {
          throw new IllegalArgumentException(
              "Environment variable 'GOOGLE_CLOUD_PROJECT' is required to run this quickstart.");
        }
        workflowsQuickstart(PROJECT, LOCATION, WORKFLOW);
      }
    
      private static volatile boolean finished;
    
      public static void workflowsQuickstart(String projectId, String location, String workflow)
          throws IOException, InterruptedException, ExecutionException {
        // 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 (ExecutionsClient executionsClient = ExecutionsClient.create()) {
          // Construct the fully qualified location path.
          WorkflowName parent = WorkflowName.of(projectId, location, workflow);
    
          // Creates the execution object.
          CreateExecutionRequest request =
              CreateExecutionRequest.newBuilder()
                  .setParent(parent.toString())
                  .setExecution(Execution.newBuilder().build())
                  .build();
          Execution response = executionsClient.createExecution(request);
    
          String executionName = response.getName();
          System.out.printf("Created execution: %s%n", executionName);
    
          long backoffTime = 0;
          long backoffDelay = 1_000; // Start wait with delay of 1,000 ms
          final long backoffTimeout = 10 * 60 * 1_000; // Time out at 10 minutes
          System.out.println("Poll for results...");
    
          // Wait for execution to finish, then print results.
          while (!finished && backoffTime < backoffTimeout) {
            Execution execution = executionsClient.getExecution(executionName);
            finished = execution.getState() != Execution.State.ACTIVE;
    
            // If we haven't seen the results yet, wait.
            if (!finished) {
              System.out.println("- Waiting for results");
              Thread.sleep(backoffDelay);
              backoffTime += backoffDelay;
              backoffDelay *= 2; // Double the delay to provide exponential backoff.
            } else {
              System.out.println("Execution finished with state: " + execution.getState().name());
              System.out.println("Execution results: " + execution.getResult());
            }
          }
        }
      }
    }

    Node.js

    const {ExecutionsClient} = require('@google-cloud/workflows');
    const client = new ExecutionsClient();
    /**
     * TODO(developer): Uncomment these variables before running the sample.
     */
    // const projectId = 'my-project';
    // const location = 'us-central1';
    // const workflow = 'myFirstWorkflow';
    // const searchTerm = '';
    
    /**
     * Executes a Workflow and waits for the results with exponential backoff.
     * @param {string} projectId The Google Cloud Project containing the workflow
     * @param {string} location The workflow location
     * @param {string} workflow The workflow name
     * @param {string} searchTerm Optional search term to pass to the Workflow as a runtime argument
     */
    async function executeWorkflow(projectId, location, workflow, searchTerm) {
      /**
       * Sleeps the process N number of milliseconds.
       * @param {Number} ms The number of milliseconds to sleep.
       */
      function sleep(ms) {
        return new Promise(resolve => {
          setTimeout(resolve, ms);
        });
      }
      const runtimeArgs = searchTerm ? {searchTerm: searchTerm} : {};
      // Execute workflow
      try {
        const createExecutionRes = await client.createExecution({
          parent: client.workflowPath(projectId, location, workflow),
          execution: {
            // Runtime arguments can be passed as a JSON string
            argument: JSON.stringify(runtimeArgs),
          },
        });
        const executionName = createExecutionRes[0].name;
        console.log(`Created execution: ${executionName}`);
    
        // Wait for execution to finish, then print results.
        let executionFinished = false;
        let backoffDelay = 1000; // Start wait with delay of 1,000 ms
        console.log('Poll every second for result...');
        while (!executionFinished) {
          const [execution] = await client.getExecution({
            name: executionName,
          });
          executionFinished = execution.state !== 'ACTIVE';
    
          // If we haven't seen the result yet, wait a second.
          if (!executionFinished) {
            console.log('- Waiting for results...');
            await sleep(backoffDelay);
            backoffDelay *= 2; // Double the delay to provide exponential backoff.
          } else {
            console.log(`Execution finished with state: ${execution.state}`);
            console.log(execution.result);
            return execution.result;
          }
        }
      } catch (e) {
        console.error(`Error executing workflow: ${e}`);
      }
    }
    
    executeWorkflow(projectId, location, workflowName, searchTerm).catch(err => {
      console.error(err.message);
      process.exitCode = 1;
    });
    

    Python

    import time
    
    from google.cloud import workflows_v1
    from google.cloud.workflows import executions_v1
    
    from google.cloud.workflows.executions_v1.types import executions
    
    # TODO(developer): Update and uncomment the following lines.
    # project_id = "YOUR_PROJECT_ID"
    # location = "YOUR_LOCATION"  # For example: us-central1
    # workflow_id = "YOUR_WORKFLOW_ID"  # For example: myFirstWorkflow
    
    # Initialize API clients.
    execution_client = executions_v1.ExecutionsClient()
    workflows_client = workflows_v1.WorkflowsClient()
    
    # Construct the fully qualified location path.
    parent = workflows_client.workflow_path(project_id, location, workflow_id)
    
    # Execute the workflow.
    response = execution_client.create_execution(request={"parent": parent})
    print(f"Created execution: {response.name}")
    
    # Wait for execution to finish, then print results.
    execution_finished = False
    backoff_delay = 1  # Start wait with delay of 1 second.
    print("Poll for result...")
    
    # Keep polling the state until the execution finishes,
    # using exponential backoff.
    while not execution_finished:
        execution = execution_client.get_execution(
            request={"name": response.name}
        )
        execution_finished = execution.state != executions.Execution.State.ACTIVE
    
        # If we haven't seen the result yet, keep waiting.
        if not execution_finished:
            print("- Waiting for results...")
            time.sleep(backoff_delay)
            # Double the delay to provide exponential backoff.
            backoff_delay *= 2
        else:
            print(f"Execution finished with state: {execution.state.name}")
            print(f"Execution results: {execution.result}")

執行程式碼範例

您可以執行程式碼範例,並執行工作流程。執行工作流程時,系統會執行與該工作流程相關聯的已部署工作流程定義。

  1. 如要執行範例,請先安裝依附元件:

    C#

    dotnet restore

    Go

    go mod download

    Java

    mvn compile

    Node.js

    npm install -D tsx

    Python

    pip3 install -r requirements.txt

  2. 執行指令碼:

    C#

    GOOGLE_CLOUD_PROJECT=PROJECT_ID LOCATION=CLOUD_REGION WORKFLOW=WORKFLOW_NAME dotnet run

    Go

    GOOGLE_CLOUD_PROJECT=PROJECT_ID LOCATION=CLOUD_REGION WORKFLOW=WORKFLOW_NAME go run .

    Java

    GOOGLE_CLOUD_PROJECT=PROJECT_ID LOCATION=CLOUD_REGION WORKFLOW=WORKFLOW_NAME mvn compile exec:java -Dexec.mainClass=com.example.workflows.WorkflowsQuickstart

    Node.js

    npx tsx index.js

    Python

    GOOGLE_CLOUD_PROJECT=PROJECT_ID LOCATION=CLOUD_REGION WORKFLOW=WORKFLOW_NAME python3 main.py

    更改下列內容:

    • PROJECT_ID:您的 Google Cloud 專案名稱
    • CLOUD_REGION:工作流程的位置 (預設值:us-central1)
    • WORKFLOW_NAME:工作流程名稱 (預設為 myFirstWorkflow)

    輸出結果會與下列內容相似:

    Execution finished with state: SUCCEEDED
    Execution results: ["Thursday","Thursday Night Football","Thursday (band)","Thursday Island","Thursday (album)","Thursday Next","Thursday at the Square","Thursday's Child (David Bowie song)","Thursday Afternoon","Thursday (film)"]
    

在執行要求中傳遞資料

視用戶端程式庫語言而定,您也可以在執行要求中傳遞執行階段引數。例如:

C#


public class ExecuteWorkflowWithArgumentsSample
{
    /// <summary>
    /// Execute a workflow with arguments and return the execution operation.
    /// </summary>
    /// <param name="projectID">Your Google Cloud Project ID.</param>
    /// <param name="locationID">The region where your workflow is located.</param>
    /// <param name="workflowID">Your Workflow ID.</param>
    /// <returns>
    /// An Execute object representing the completed workflow execution.
    /// </returns>
    public async Task<Execution> ExecuteWorkflowWithArguments(
        string projectId = "YOUR-PROJECT-ID",
        string locationID = "YOUR-LOCATION-ID",
        string workflowID = "YOUR-WORKFLOW-ID")
    {
        // Initialize the client.
        ExecutionsClient client = await ExecutionsClient.CreateAsync();

        // Build the parent location path.
        WorkflowName parent = new WorkflowName(projectId, locationID, workflowID);

        // Serialize the argument.
        string argument = JsonSerializer.Serialize(new
        {
            searchTerm = "Cloud"
        });

        // Create an execution request.
        CreateExecutionRequest createExecutionRequest = new CreateExecutionRequest
        {
            ParentAsWorkflowName = parent,
            Execution = new Execution
            {
                Argument = argument,
            }
        };

        // Execute the operation and recieve the execution.
        Execution execution = await client.CreateExecutionAsync(createExecutionRequest);
        Console.WriteLine("- Execution started...");

        TimeSpan backoffDelay = TimeSpan.FromSeconds(1);
        TimeSpan maxBackoffDelay = TimeSpan.FromSeconds(16);

        // Keep polling the state until the execution finishes, using exponential backoff.
        while (execution.State == Execution.Types.State.Active)
        {
            await Task.Delay(backoffDelay);

            // Implement exponential backoff by doubling the delay, but limiting it to a practical duration.
            backoffDelay = (backoffDelay < maxBackoffDelay) ? backoffDelay * 2 : maxBackoffDelay;

            execution = await client.GetExecutionAsync(execution.Name);
        }

        // Print results.
        Console.WriteLine($"Execution finished with state: {execution.State}");
        Console.WriteLine($"Execution results: {execution.Result}");

        // Return the fetched execution.
        return execution;
    }
}

Go

import (
	"context"
	"encoding/json"
	"fmt"
	"io"
	"time"

	workflowexecutions "google.golang.org/api/workflowexecutions/v1"
)

// Execute a workflow with arguments and print the execution results.
//
// For more information about Workflows see:
// https://cloud.google.com/workflows/docs/overview
func executeWorkflowWithArguments(w io.Writer, projectID, workflowID, locationID string) error {
	// TODO(developer): Uncomment and update the following lines:
	// projectID := "YOUR_PROJECT_ID"
	// workflowID := "YOUR_WORKFLOW_ID"
	// locationID := "YOUR_LOCATION_ID"

	ctx := context.Background()

	// Construct the location path.
	parent := fmt.Sprintf("projects/%s/locations/%s/workflows/%s", projectID, locationID, workflowID)

	// Create execution client.
	client, err := workflowexecutions.NewService(ctx)
	if err != nil {
		return fmt.Errorf("workflowexecutions.NewService error: %w", err)
	}

	// Get execution service.
	service := client.Projects.Locations.Workflows.Executions

	// Create argument.
	argument := struct {
		SearchTerm string `json:"searchTerm"`
	}{
		SearchTerm: "Cloud",
	}

	// Encode argument to JSON.
	argumentEncoded, err := json.Marshal(argument)
	if err != nil {
		return fmt.Errorf("json.Marshal error: %w", err)
	}

	// Build and run the new workflow execution adding the argument.
	res, err := service.Create(parent, &workflowexecutions.Execution{
		Argument: string(argumentEncoded),
	}).Do()
	if err != nil {
		return fmt.Errorf("service.Create.Do error: %w", err)
	}
	fmt.Fprintln(w, "- Execution started...")

	// Set initial value for backoff delay in one second.
	backoffDelay := time.Second

	for res.State == "ACTIVE" {
		time.Sleep(backoffDelay)

		// Request the updated state for the execution.
		getReq := service.Get(res.Name)
		res, err = getReq.Do()
		if err != nil {
			return fmt.Errorf("getReq error: %w", err)
		}

		// Double the delay to provide exponential backoff (capped at 16 seconds).
		if backoffDelay < time.Second*16 {
			backoffDelay *= 2
		}
	}

	fmt.Fprintf(w, "Execution finished with state: %s\n", res.State)
	fmt.Fprintf(w, "Execution arguments: %s", res.Argument)
	fmt.Fprintf(w, "Execution results: %s\n", res.Result)

	return nil
}

Java

// Creates the execution object
CreateExecutionRequest request =
    CreateExecutionRequest.newBuilder()
        .setParent(parent.toString())
        .setExecution(Execution.newBuilder().setArgument("{\"searchTerm\":\"Friday\"}").build())
        .build();

Node.js

// Execute workflow
try {
  const createExecutionRes = await client.createExecution({
    parent: client.workflowPath(projectId, location, workflow),
    execution: {
      argument: JSON.stringify({"searchTerm": "Friday"})
    }
});
const executionName = createExecutionRes[0].name;

Python

import time

from google.cloud import workflows_v1
from google.cloud.workflows import executions_v1

from google.cloud.workflows.executions_v1.types import executions

# TODO(developer): Update and uncomment the following lines.
# project_id = "YOUR_PROJECT_ID"
# location = "YOUR_LOCATION"  # For example: us-central1
# workflow_id = "YOUR_WORKFLOW_ID"  # For example: myFirstWorkflow

# Initialize API clients.
execution_client = executions_v1.ExecutionsClient()
workflows_client = workflows_v1.WorkflowsClient()

# Construct the fully qualified location path.
parent = workflows_client.workflow_path(project_id, location, workflow_id)

# Execute the workflow adding an dictionary of arguments.
# Find more information about the Execution object here:
# https://cloud.google.com/python/docs/reference/workflows/latest/google.cloud.workflows.executions_v1.types.Execution
execution = executions_v1.Execution(
    name=parent,
    argument='{"searchTerm": "Cloud"}',
)

response = execution_client.create_execution(
    parent=parent,
    execution=execution,
)
print(f"Created execution: {response.name}")

# Wait for execution to finish, then print results.
execution_finished = False
backoff_delay = 1  # Start wait with delay of 1 second.
print("Poll for result...")

# Keep polling the state until the execution finishes,
# using exponential backoff.
while not execution_finished:
    execution = execution_client.get_execution(
        request={"name": response.name}
    )
    execution_finished = execution.state != executions.Execution.State.ACTIVE

    # If we haven't seen the result yet, keep waiting.
    if not execution_finished:
        print("- Waiting for results...")
        time.sleep(backoff_delay)
        # Double the delay to provide exponential backoff.
        backoff_delay *= 2
    else:
        print(f"Execution finished with state: {execution.state.name}")
        print(f"Execution results: {execution.result}")

如要進一步瞭解如何傳遞執行階段引數,請參閱「在執行要求中傳遞執行階段引數」。

清除所用資源

為了避免系統向您的 Google Cloud 帳戶收取本頁面所用資源的費用,請刪除含有這些資源的 Google Cloud 專案。

  1. 刪除您建立的工作流程:

    gcloud workflows delete myFirstWorkflow
    
  2. 系統詢問您是否要繼續時,請輸入 y

工作流程已刪除。

後續步驟