BigQuery
Google BigQuery enables companies to handle large amounts of data without having to manage infrastructure. Google’s documentation describes it as a « serverless architecture (that) lets you use SQL queries to answer your organization's biggest questions with zero infrastructure management. BigQuery's scalable, distributed analysis engine lets you query terabytes in seconds and petabytes in minutes. » Its client libraries allow the use of widely known languages such as Python, Java, JavaScript, and Go. Federated queries are also supported, making it flexible to read data from external sources.
📖 A highly rated canonical book on it is « Google BigQuery: The Definitive Guide », a comprehensive reference.
Another enriching read on the subject is the inside story told in the article by the founding product manager of BigQuery celebrating its 10th anniversary.
Here are 26 public repositories matching this topic...
Download meteorological information from the Spanish agency (AEMET) and upload it to BigQuery
-
Updated
Feb 28, 2022 - Shell
dbt: write nothing, generate (almost) everything.
-
Updated
Dec 12, 2023 - Shell
Export BigQuery data to Cloud SQL
-
Updated
Dec 17, 2023 - Shell
An end-to-end example of Chicago taxi on Google Cloud using TensorFlow, TFX, and Vertex AI
-
Updated
Oct 17, 2023 - Shell
Understanding Computer Science.
-
Updated
May 23, 2024 - Shell
The Data Pipeline using Google Cloud Dataproc, Cloud Storage and BigQuery
-
Updated
Feb 27, 2021 - Shell
DBT execution from Cloud Composer. BigQuery is used for main DWH and Compute Engine is built for dbt execution.
-
Updated
Feb 16, 2024 - Shell
Copy table from one dataset to another in google big query using bash script
-
Updated
Apr 24, 2019 - Shell
An example Dataform project to load and transform the publicly available dataset from H&M Group into a format which could be imported into Discovery AI for Retail or Vertex AI Search and Conversation, , allowing you to train a retail recommendations model.
-
Updated
May 19, 2024 - Shell
An example Dataform project which will use the publicly available Movielens dataset to demonstrate how to upload your product catalog and user events into either the Google Cloud Retail API or Google Cloud Discovery Engine and train a personalised product recommendation model.
-
Updated
Apr 28, 2024 - Shell
An example Dataform project to load and transform the publicly available dataset from IMDB.
-
Updated
Apr 27, 2024 - Shell
GCP_Data_Enginner
-
Updated
Sep 4, 2021 - Shell
Released May 19, 2010
- Followers
- 48 followers
- Repository
- GoogleCloudPlatform/bigquery-utils
- Website
- cloud.google.com/bigquery
- Wikipedia
- Wikipedia