Optimizing Performance of LookML Queries
About this Course
This is a Google Cloud Self-Paced Lab. In this lab, you\'ll learn the best methods to optimize query performance in Looker. Looker is a modern data platform in Google Cloud that you can use to 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. Big, complex queries can be costly, and running them repeatedly strains your database, thereby reducing performance. Ideally, you want to avoid re-running massive queries if nothing has changed, and instead, append new data to existing results to reduce repetitive requests. Although there are many ways to optimize performance of LookML queries, this lab focuses on the most commonly used methods to optimize query performance in Looker: persistent derived tables, aggregate awareness, and performantly joining views.Created by: Google Cloud

Related Online Courses
Welcome to Introduction to PySpark, a short course strategically crafted to empower you with the skills needed to assess the concepts of Big Data Management and efficiently perform data analysis... more
This Specialization explains high level patterns used in Microservice architectures and the motivation to move towards these architectures and away from monolithic development of applications.... more
This course covers two of the seven trading strategies that work in emerging markets. The seven include strategies based on momentum, momentum crashes, price reversal, persistence of earnings,... more
Preparing for graduate school in the United States can be nerve-wracking. Many international students have questions about what the programs are like and what resources they can use to excel in... more
This course presents the different customer interactions that happen in a retail setting and allows you to experience real interactions through simulations and scenarios. Interactions examined... more