menu
arrow_back

Exploring NCAA Data with BigQuery

—/100

Checkpoints

arrow_forward

Writing queries

Query 1

Query 2

Query 3

Query 4

Exploring NCAA Data with BigQuery

45 godz. Punkty: 5

GSP160

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 managing infrastructure or needing a database administrator. BigQuery uses SQL and takes advantage of the pay-as-you-go model. BigQuery allows you to focus on analyzing data to find meaningful insights.

We have a newly available dataset for NCAA Basketball games, teams, and players. The game data covers play-by-play and box scores back to 2009, as well as final scores back to 1996. Additional data about wins and losses goes back to the 1894-5 season in some teams' cases.

In this lab we will find and query the NCAA dataset using BigQuery.

What you'll learn

  • Using BigQuery

  • Query the NCAA Public Dataset

  • Writing and executing queries

What you'll need

Dołącz do Qwiklabs, aby zapoznać się z resztą tego modułu i innymi materiałami.

  • Uzyskaj tymczasowy dostęp do Google Cloud Console.
  • Ponad 200 modułów z poziomów od początkującego do zaawansowanego.
  • Podzielono na części, więc można uczyć się we własnym tempie.
Dołącz, aby rozpocząć ten moduł