filmov
tv
New in BigQuery: Time Unit Partitioning
Показать описание
New in BigQuery: more granular control over your partitions with Time Unit Partitioning. Using flexible units of time (ranging from an hour to a year), you can organize time-based data to optimize how your users load and query data. With these updates, BigQuery now supports different time units on TIMESTAMP and DATETIME data types, giving you the flexibility to write extremely fast and efficient queries. As with other partitioning schemes in BigQuery, you can use clustering along with these new partitioning schemes to speed up the performance of your queries. Best part - Time Unit Partitioning is easily implemented using standard SQL DDL, and there is no additional cost for the use of these new partitioning schemes. These new partitioning schemes can help you lower query costs and allow you to match partitioning schemes available in traditional data warehouses for ease of migration. Check out the demo video to see Time Unit Partitioning in action.
New in BigQuery: Time Unit Partitioning
What's new in BigQuery
What’s new in BigQuery, Google Cloud’s modern data warehouse
BigQuery Table Partitioning: TIME UNIT (MONTHLY, DAILY, YEAR) PARTITIONS
Introduction to big data: tools that deliver deep insights (Google Cloud Next '17)
BigQuery Architecture
3. Partitioning and Clustering in Google BigQuery for beginners
Analytics in a multi-cloud world with BigQuery Omni
Building a Scalable ETL Pipeline | Data Engineering Project & Key Takeaways
Advanced BigQuery features: keys to the cloud datawarehouse of the future (Google Cloud Next '1...
Google BigQuery Tutorial
A Tour of Google Cloud Hands-on Labs || #qwiklabs || #GSP282 || [With Explanation🗣️]
Reimagine Data Warehousing: How The Home Depot is Using BigQuery to Scale (Cloud Next '19)
Geo for Good 2019: BigQuery GIS Training
Unlocking the Power of Google BigQuery (Cloud Next '19)
Cooking data: BigQuery ML vs the online dating spam
Data Modeling for BigQuery (Google Cloud Next '17)
DATA & ANALYTICS - BigQuery, Cloud Dataflow, an ISP, and big data - a real story of evolution
Auto-awesome: advanced data science on Google Cloud Platform (Google Cloud Next '17)
BigQuery, IPython, Pandas and R for data science, starring Pearson
Database vs Data Warehouse vs Data Lake | What is the Difference?
Data and Analytics Platform Overview and Customer Examples (Cloud Next '18)
Data Warehousing Migrations: Lessons from Home Depot (Cloud Next '18)
What is BigQuery? #GCPSketchnote
Комментарии