Best practices for bulk data loading in AWS Redshift - Glue or Copy

0

What are the pros and cons when it comes to using AWS Glue over Redshift's internal functions (such as COPY and INSERT)? for bulk data loading (In terms of cost, time, and adaptability). It's really appreciated if you can provide some examples use cases.

已提问 10 个月前351 查看次数
1 回答
0
已接受的回答

Hi, AWS Glue is an ETL service: T is the key letter. If you need to transform the source data before your load into RedShift, Glue will be highly useful.

For example, Glue provides lots of wired in simple and adanced transformations that you can integrate in your Glue-Based ETL pipeline: see https://docs.aws.amazon.com/glue/latest/dg/aws-glue-programming-python-transforms.html

Also, you may want to measure the quality of your data, before loading it to ensure constant quality. Then AWS Glue Data Quality may be very helpful: see https://aws.amazon.com/blogs/big-data/getting-started-with-aws-glue-data-quality-from-the-aws-glue-data-catalog/

Hope it helps,

Didier

profile pictureAWS
专家
已回答 10 个月前

您未登录。 登录 发布回答。

一个好的回答可以清楚地解答问题和提供建设性反馈,并能促进提问者的职业发展。

回答问题的准则