I'm creating a microservice to handle the contacts that are created in the software. I'll need to create contacts and also search if a contact exists based on some information (name, last name, email, phone number). The idea is the following: A customer calls, if it doesn't exist we create the contact asking all his personal information. The second time he calls, we will search coincidences by name, last name, email, to detect that the contact already exists in our DB. What I thought is to use a MongoDB as primary storage and use ElasticSearch to perform the query, but I don't know if there is really a big difference between this and querying in a common relational database.

EDIT: Imagine a call center that is getting calls all the time from mostly different people, and we want to search fast (by name, email, last name) if that person it's in our DB, wouldn't ElasticSearch be good for this?


A relational database can store data and also index it.

A search engine can index data but also store it.

Relational databases are better in read-what-was-just-written performance. Search engines are better at really quick search with additional tricks like all kinds of normalization: lowercase, ä->a or ae, prefix matches, ngram matches (if indexed respectively). Whether its 1 million or 10 million entries in the store is not the big deal nowadays, but what is your query load? Well, there are only this many service center workers, so your query load is likely far less than 1qps. No problem for a relational DB at all. The search engine would start to make sense if you want some normalization, as described above, or you start indexing free text comments, descriptions of customers.

  • Yes, agree. The type of search capabilities between ES and a normal RDBMS is different. In ES searches are really fast, but have also a lot search strategies that a RDMS doesn't support. That could also be interesting for smaller amounts of data. May 26 '19 at 9:23
  • There is no significant difference for small amounts of data. ElasticSearch is best for document stores. To manage structured, relational data as users on a call center, use relational databases, not MongoDB, nor ElasticSearch. Any major RDBMS already support inverted indices (the technology behind ElasticSearch) Aug 12 '20 at 21:25

If you don't have a problem with performance, then keep it simple and use 1 single datastore (maybe with some caching in your application).

Elasticsearch is not meant to be a primary datastore so my advice is to use a simple relational database like Postgres and use simple SQL queries / a ORM mapper. If the dataset is not really large it should be fast enough.

When you have performance issues on searches you can use a combination of relation db and Elasticsearch. You can use Elasticsearch feeders to update ES with your data in you relational db.

  • but what if I have a db that handles maybe a million contacts, querying by text shouldn't be slower in a regular database than elasticsearch? About caching, it's not so common that the same contact calls twice in a short period of time (imagine a call center). I don't know if caching will increase the response time and I don't know if looking for email, name and last name will be fast
    – Leandro
    Aug 1 '18 at 18:31
  • 1
    yes, of course caching have also a small price (in performance and complexity) and you only should use it if you really win a lot with it (reuse same data frequently). Everything depends on the situation what's the best solution but I like to keep it as simple as possible. You can always do extra things when you run into performance problems. If you have a representative dataset you do a proof of concept and measure performance. That can help to decide if you need ES or not. Don't forget that the maintenance becomes more complex with ES and the required sync. system. Aug 1 '18 at 19:15
  • So I'll need to do a proof of concept. I'll probably use ES phonetic matching plugin (as it's intended for a call center) and will check if it's way faster than PostgreSQL
    – Leandro
    Aug 1 '18 at 19:33
  • Keep also in mind that you are able to analyse data with Kibana when using Elasticsearch. That could be also interesting. Aug 1 '18 at 19:43
  • 2
    @emilly Elasticsearch is build for fast searches and is really good in that specific task, but ES isn't fully ACID compliant. You can use a RDBMS as primary store and synchronize the data to Elasticsearch for fast searches (using feeders(rivers) for example). For big data there are better solutions on the market like Cassandra, MongoDB, Neo4J, ... May 7 '19 at 17:19

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