Join Recipe(1)

Concept: Join Recipe

The primary use case for the Join recipe is to enrich one dataset with columns from another. DSS matches values using a key column that is common to both datasets. The Left join is a common join type used in data enrichment. It lets you keep all the records in your main dataset regardless if there is a match in the enrichment dataset.

While the default join type is a Left join, you can set the join type that best fits your use case.

You can always change the detected key column by selecting your own columns to match on and setting the conditions.

In the Selected columns step, you can tell DSS which columns you want to see in the output dataset.

There are a few other options including Pre-filters which allows you to keep or drop rows based on your criteria.

You can use the Post-filter to inform DSS if duplicate rows are allowed and when you want to be able to select only the rows that match a condition.

Finally, you can use the Output step to review the execution specs, for example the generated SQL query and execution plan.

There are a lot of reasons to use joins when building a Flow. In the following hands-on lesson, you can practice using the Join Recipe to enrich the customers dataset.

©著作权归作者所有,转载或内容合作请联系作者
【社区内容提示】社区部分内容疑似由AI辅助生成,浏览时请结合常识与多方信息审慎甄别。
平台声明:文章内容(如有图片或视频亦包括在内)由作者上传并发布,文章内容仅代表作者本人观点,简书系信息发布平台,仅提供信息存储服务。

相关阅读更多精彩内容

友情链接更多精彩内容