arrow_back

Share Data using Google Data Cloud: Challenge Lab

登录 加入
访问 700 多个实验和课程

Share Data using Google Data Cloud: Challenge Lab

实验 1 小时 universal_currency_alt 5 个积分 show_chart 中级
info 此实验可能会提供 AI 工具来支持您学习。
访问 700 多个实验和课程

GSP375

Google Cloud self-paced labs logo

Overview

In a challenge lab you’re given a scenario and a set of tasks. Instead of following step-by-step instructions, you will use the skills learned from the labs in the course to figure out how to complete the tasks on your own! An automated scoring system (shown on this page) will provide feedback on whether you have completed your tasks correctly.

When you take a challenge lab, you will not be taught new Google Cloud concepts. You are expected to extend your learned skills, like changing default values and reading and researching error messages to fix your own mistakes.

To score 100% you must successfully complete all tasks within the time period!

This lab is recommended for students who have enrolled in the Share Data Using Google Data Cloud course. Are you ready for the challenge?

Topics tested:

  • Share BigQuery datasets across Google Cloud projects
  • Enrich datasets based on a curated data
  • Enable bi-directional data exchange
  • Create a visualization in Looker Studio

Setup and requirements

Before you click the Start Lab button

Read these instructions. Labs are timed and you cannot pause them. The timer, which starts when you click Start Lab, shows how long Google Cloud resources are made available to you.

This hands-on lab lets you do the lab activities in a real cloud environment, not in a simulation or demo environment. It does so by giving you new, temporary credentials you use to sign in and access Google Cloud for the duration of the lab.

To complete this lab, you need:

  • Access to a standard internet browser (Chrome browser recommended).
Note: Use an Incognito (recommended) or private browser window to run this lab. This prevents conflicts between your personal account and the student account, which may cause extra charges incurred to your personal account.
  • Time to complete the lab—remember, once you start, you cannot pause a lab.
Note: Use only the student account for this lab. If you use a different Google Cloud account, you may incur charges to that account.

Challenge scenario

You are a Google Cloud Data Sharing Partner hosting an application for multiple customers, storing data, and providing analytics as a service. The application caters to a customer that depends on your data to enrich their application data. In turn, the customer then shares high-level metrics with the Data Sharing Partner to better understand the customer footprint.

In this lab, you will be required to act as both the Data Sharing Partner and the customer by enabling bi-directional data exchange in BigQuery, as well as creating a visualization in Looker Studio.

lab architectural diagram

Task 1. Create the partner authorized view

Your first task as a Data Sharing Partner is to copy a BigQuery public dataset into your project. The dataset contains details of each zip code across the US. In this section, you will need to expose the loaded dataset as an authorized view and grant access to a specific customer user.

For this task, you will need to be logged into the Data Sharing Partner Project Console with the associated credentials.
  1. Create an authorized view named based off of the following query. Save it inside demo_dataset.
SELECT * FROM `bigquery-public-data.geo_us_boundaries.zip_codes`;

Click Check my progress to verify the objective. Create the partner authorized view

Authorize the view

Next, you will need to assign IAM permissions by authorizing the view in the dataset.

  1. Authorize the view you just created.

Assign IAM permissions for the customer user

Next, you will need to grant the Customer user the BigQuery Data Viewer role on the authorized view you created.

  1. Grant the customer user access to the view.
    • Their username is:
    • Grant them the BigQuery Data Viewer role

Click Check my progress to verify the objective. Authorize the view and Assign IAM permissions for the customer user

Task 2. Update the customer data table

In this task, you will be acting as the customer. Your next step is to run a query to update the customer table inside of your project.

For this task, you will need to be logged into the Customer Project Console with the associated credentials.
  1. Execute the query below to update the county value in the customer table.
UPDATE `{{{consumer_project.project_id|Customer A Project ID}}}.customer_dataset.customer_info` cust SET cust.county=vw.county FROM `{{{isv_project.project_id|Partner Project ID}}}.demo_dataset.{{{isv_project.startup_script.isv_authorized_view|Partner authorized view}}}` vw WHERE vw.zip_code=cust.postal_code;

You should see the following result:

This statement modified 14 rows in customer_info.

Task 3. Create the customer authorized view

In this section, you will need to create a customer authorized view and grant access to a specific Data Sharing Partner user.

For this task, you will need to be logged into the Customer Project Console with the associated credentials.
  1. Create an authorized view named based off of the following query that lists the counties and number of customers in the listed counties. Save it inside customer_dataset.
SELECT county, COUNT(1) AS Count FROM `{{{consumer_project.project_id|Customer A Project ID}}}.customer_dataset.customer_info` cust GROUP BY county HAVING county is not null

Click Check my progress to verify the objective. Create the customer authorized view

Authorize the view

Next, you will need to assign IAM permissions by authorizing the customer view in the dataset.

  1. Authorize the view you just created.

Assign IAM permissions for the partner user

Next, you will need to grant the Data Sharing Partner user the BigQuery Data Viewer role on the customer authorized view you created.

  1. Grant the Data Sharing Partner user access to the view.
    • Their username is:
    • Grant them the BigQuery Data Viewer role

Click Check my progress to verify the objective. Authorize the view and Assign IAM permissions for the partner user

Task 4. Use the customer authorized view to create a visualization

Your fourth task is to consume the customer’s authorized view in the Data Sharing Partner project and create a column chart visualization that shows the distribution of the customers and counties.

For this task, you will need to be logged into the Data Sharing Partner Project Console with the associated credentials.

Connect BigQuery to Looker Studio

  1. Open Google Looker Studio and create a Blank Report.

  2. Connect BigQuery and authorize to Looker Studio.

  3. From My Projects on the left pane, navigate to the customer project and select . Add the table to the blank report.

Click Check my progress to verify the objective. Connect BigQuery to Looker Studio

Create a visualization in Looker Studio

  1. Create a visualization with the following requirements:
    • Report name: Data Sharing Partner Vizualization
    • For the visualization, insert a Vertical Bar Chart
    • For the Bar Chart, set county as the Dimension and Count as the Breakdown Dimension and Metric.

The visualization should resemble the following:

visualization of report

Congratulations!

In this lab, you shared BigQuery datasets across Google Cloud projects, enriched datasets based on curated data, enabled bi-directional data exchange, and created a visualization.

Share Data Using Google Data Cloud skill badge

Earn Your Next Skill Badge

This self-paced lab is part of the Share Data Using Google Data Cloud skill badge course. Completing this skill badge course earns you the badge above, to recognize your achievement. Share your badge on your resume and social platforms, and announce your accomplishment using #GoogleCloudBadge. Search the catalog for 20+ other skill badge courses in which you can enroll.

Google Cloud training and certification

...helps you make the most of Google Cloud technologies. Our classes include technical skills and best practices to help you get up to speed quickly and continue your learning journey. We offer fundamental to advanced level training, with on-demand, live, and virtual options to suit your busy schedule. Certifications help you validate and prove your skill and expertise in Google Cloud technologies.

Manual Last Updated May 22, 2025

Lab Last Tested May 22, 2025

Copyright 2025 Google LLC. All rights reserved. Google and the Google logo are trademarks of Google LLC. All other company and product names may be trademarks of the respective companies with which they are associated.

准备工作

  1. 实验会创建一个 Google Cloud 项目和一些资源,供您使用限定的一段时间
  2. 实验有时间限制,并且没有暂停功能。如果您中途结束实验,则必须重新开始。
  3. 在屏幕左上角,点击开始实验即可开始

使用无痕浏览模式

  1. 复制系统为实验提供的用户名密码
  2. 在无痕浏览模式下,点击打开控制台

登录控制台

  1. 使用您的实验凭证登录。使用其他凭证可能会导致错误或产生费用。
  2. 接受条款,并跳过恢复资源页面
  3. 除非您已完成此实验或想要重新开始,否则请勿点击结束实验,因为点击后系统会清除您的工作并移除该项目

此内容目前不可用

一旦可用,我们会通过电子邮件告知您

太好了!

一旦可用,我们会通过电子邮件告知您

一次一个实验

确认结束所有现有实验并开始此实验

使用无痕浏览模式运行实验

请使用无痕模式或无痕式浏览器窗口运行此实验。这可以避免您的个人账号与学生账号之间发生冲突,这种冲突可能导致您的个人账号产生额外费用。