menu
arrow_back

Caching and Datagroups with LookML

search share 가입 로그인

Caching and Datagroups with LookML

1시간 무료

GSP893

Google Cloud Self-Paced Labs

Overview

Looker is a modern data platform in Google Cloud that lets you analyze and visualize your data interactively. You can use Looker to do in-depth data analysis, integrate insights across different data sources, build actionable data-driven workflows, and create custom data applications.

Looker is constantly generating SQL queries and sending them to the connected database. Whenever someone runs new a query in Looker, the SQL results are cached and stored in an encrypted file on the Looker instance.

caching-overview.png

Caching leverages the saved results from previously executed queries, so that the same query does not need to be run on the database each time. This helps to reduce database load.

A datagroup is the Looker term for a caching policy or rule. LookML developers use datagroups to manage caching on a Looker instance.

Caching is a useful feature that reduces database load and helps to optimize Looker performance. In this lab, you will learn how caching works in Looker and explore how to use LookML objects called datagroups to define caching policies.

이 실습의 나머지 부분과 기타 사항에 대해 알아보려면 Qwiklabs에 가입하세요.

  • Cloud Console에 대한 임시 액세스 권한을 얻습니다.
  • 초급부터 고급 수준까지 200여 개의 실습이 준비되어 있습니다.
  • 자신의 학습 속도에 맞춰 학습할 수 있도록 적은 분량으로 나누어져 있습니다.
이 실습을 시작하려면 가입하세요