Suppose I want to use elasticsearch to implement a generic search on a website. The top search bar would be expected to find resources of all different kinds across the site. Documents for sure (uploaded/indexed via tika) but also things like clients, accounts, other people, etc.

For architectural reasons, most of the non-document stuff (clients, accounts) will exist in a relational database.

When implementing this search, option #1 would be to create document versions of everything, and then just use elasticsearch to run all aspects of the search, relying not at all on the relational database for finding different types of objects.

Option #2 would be to use elasticsearch only for indexing the documents, which would mean for a general "site search" feature, you'd have to farm out multiple searches to multiple systems, then aggregate the results before returning them.

Option #1 seems far superior, but the downside is that it requires that elastic search in essence have a copy of a great many things in the production relational database, plus that those copies be kept fresh as things change.

What's the best option for keeping these stores in sync, and am I correct in thinking that for general search, option #1 is superior? Is there an option #3?

2 Answers 2


You've pretty much listed the two main options there are when it comes to search across multiple data stores, i.e. search in one central data store (option #1) or search in all data stores and aggregate the results (option #2).

Both options would work, although option #2 has two main drawbacks:

  1. It will require a substantial amount of logic to be developed in your application in order to "branch out" the searches to the multiple data stores and aggregate the results you get back.
  2. The response times might be different for each data store, and thus, you will have to wait for the slowest data store to respond in order to present the search results to the user (unless you circumvent this by using different asynchronous technologies, such as Ajax, websocket, etc)

If you want to provide a better and more reliable search experience, option #1 would clearly get my vote (I take this way most of the time actually). As you've correctly stated, the main "drawback" of this option is that you need to keep Elasticsearch in synch with the changes in your other master data stores.

Since your other data stores will be relational databases, you have a few different options to keep them in synch with Elasticsearch, namely:

These first two options work great but have one main disadvantage, i.e. they don't capture DELETEs on your table, they will only capture INSERTs and UPDATEs. This means that if you ever delete a user, account, etc, you will not be able to know that you have to delete the corresponding document in Elasticsearch. Unless, of course, you decide to delete the Elasticsearch index before each import session.

To alleviate this, you can use another tool which bases itself on the MySQL binlog and will thus be able to capture every event. There's one written in Go, one in Java and one in Python.


Here is another interesting blog article on the subject: How to keep Elasticsearch synchronized with a relational database using Logstash

  • Thanks - intuitively I think option #1 is better. What I was missing was that I wasn't aware of the automatic sync tools like Logstash JDBC input, that's a key missing piece for me that makes option #1 a lot easier than I was otherwise imagining. I can deal with having to propagate DELETE operations, in the end this just means I have to do less work to propagate changes than I was thinking would be the case. Thanks. Dec 27, 2015 at 15:38
  • @Val..is there framework which provides interceptors to mysql bin logs where these interceptors can execute java code based on event in binlog and push data into elasticsearch ? Sep 28, 2016 at 13:09
  • @PrannoyMittal see if this answer helps: stackoverflow.com/a/33029458/4604579
    – Val
    Sep 28, 2016 at 13:11

Please take a look at Debezium. It's a change data capture (CDC) platform, which allow you to stream your data.

I created a simple github repository, which shows how it works with PostgreSQL and ElasticSearch.

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