This article will cover all of the basic requirements that will be needed to run BigQuery connectors.
Before we continue with a step by step guide on setting up Google BigQuery, we first need to introduce you to a few basic Google BigQuery concepts.
Basic BigQuery Concepts
Projects
Projects are top-level containers in the Google Cloud Platform. They store information about billing and authorized users, and they contain BigQuery data. Each project has a name and a unique ID.
Datasets
A dataset is contained within a specific project. Datasets are top-level containers that are used to organize and control access to your tables and views. A table or view must belong to a dataset, so you need to create at least one dataset before you can start using Google BigQuery.
You will need to create a dataset within your project before you will be able to add any tables.
Tables
A BigQuery table contains individual records organized in rows. Each record is composed of columns (also called fields). Every table is defined by a schema that describes the column names, data types, and other information.
Basic requirements for BigQuery
Please follow these steps in order to get started with BigQuery:
Select or create a Google Cloud Platform project.
Make sure that billing is enabled for your Google Cloud Platform project.
- BigQuery is automatically enabled in new projects. To activate BigQuery in a pre-existing project, go to Enable the BigQuery API.
If you would like to read up some more on this topic, please take a look at the official Google BigQuery Quickstart guide.
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