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I read that in nosql (cassandra for instance) data is often stored denormalized. For instance see this SO answer or this website.

An example is if you have a column family of employees and departments and you want to execute a query: select * from Emps where Birthdate = '25/04/1975' Then you have to make a column family birthday_Emps and store the ID of each employee as a column. So then you can query the birthday_Emps family for the key '25/04/1975' and instantly get all the ID's of the employees born on that date. You can even denormalize the employee details into birthday_Emps as well so that you also instantly have the employee names.

Is this really the way to do it?

  1. Whenever an employee is deleted or inserted then you will have to remove the employee from birthday_Emps too. And in another example someone even said that sometimes you have a situation where one delete in some table requires like 100's of deletes in other tables. Is this really common to do?

  2. Is it common to do joins in application code? Do you have software that allows you create pre-written applications to join together data from different queries?

  3. Are there best practices, patterns, etc for handling these data model questions?

2 Answers 2

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"Yes" for the most part, taking an approach of query-based data modeling really is the best way to do it.

  1. That is still a good idea to do, because the speed of your query times make it worth it. Yes, there's a little more housecleaning to do. I haven't had to execute 100s of deletes from other column families, but occasionally there is some complicated clean-up to do. But, you shouldn't be doing a whole lot of deleting in Cassandra anyway (anti-pattern).

  2. No. Client-side JOINs are just as bad as distributed JOINs. The whole idea is to create a table to return data for each specific query...denormalized and/or replicated...and thus negating the need to do a JOIN at all. The exception to this, is if you are running OLAP queries for analysis, you can use a tool like Apache Spark to execute an ad-hoc, distributed JOIN. But it's definitely not something you'd want to do on a production system.

  3. A few articles I can recommend:

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    Btw. Is updating all the denormalized data is that a manual process? or can this be done by cassandra automatically?
    – Stefan
    Dec 5, 2014 at 11:05
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    @Stefan That's the drawback of a denormalized model, as there is no referential integrity. So you will need to adjust your DAOs to modify multiple tables on an update.
    – Aaron
    Jan 16, 2015 at 15:38
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It is worth adding that Cassandra 3.0 introduced Materialized Views, which does this denormalization automatically, including the necessary house-keeping to keep the data in sync. It is most likely not suitable for every situation, but it's worth to have a look.

Example from DataStax

Cassandra documentation

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    MVs are still marked as experimental, plus they are adding an additional load onto node as it needs to read data from disk
    – Alex Ott
    Sep 10, 2020 at 10:07
  • I agree with @AlexOtt. I would not recommend using Materialized Views at this time.
    – Aaron
    Sep 10, 2020 at 13:39

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