menu
arrow_back

Working with JSON, Arrays, and Structs in BigQuery

Working with JSON, Arrays, and Structs in BigQuery

1 个小时 15 分钟 5 个积分

GSP416

Google Cloud Self-Paced Labs

Overview

BigQuery is Google's fully managed, NoOps, low cost analytics database. With BigQuery you can query terabytes and terabytes of data without having any infrastructure to manage or needing a database administrator. BigQuery uses SQL and can take advantage of the pay-as-you-go model. BigQuery allows you to focus on analyzing data to find meaningful insights.

This lab is an in-depth walkthrough of working with semi-structured data (ingesting JSON, Array data types) inside of BigQuery. Denormalizing your schema into a single table with nested and repeated fields can yield performance improvements, but the SQL syntax for working with array data can be tricky. You will practice loading, querying, troubleshooting, and unnesting various semi-structured datasets.

加入 Qwiklabs 即可阅读本实验的剩余内容…以及更多精彩内容!

  • 获取对“Google Cloud Console”的临时访问权限。
  • 200 多项实验,从入门级实验到高级实验,应有尽有。
  • 内容短小精悍,便于您按照自己的节奏进行学习。
加入以开始此实验
分数

—/100

Create a new dataset and table to store the data

运行步骤

/ 20

Execute the query to see how many unique products were viewed

运行步骤

/ 15

Execute the query to use the UNNEST() on array field

运行步骤

/ 15

Create a dataset and a table to ingest JSON data

运行步骤

/ 20

Execute the query to COUNT how many racers were there in total

运行步骤

/ 10

Execute the query that will list the total race time for racers whose names begin with R

运行步骤

/ 10

Execute the query to see which runner ran fastest lap time

运行步骤

/ 10