Let me explain my question with an example. Let's say I have three different type of document with some common fields i.e book, song, magazin

  • Book has name, author, publisher, pageNumber etc.
  • Song has name, singer, publisher, length etc.
  • Magazin has name, company, publisher, pageNumber etc.

As you see name and publisher fields are common fields for all the three types of documents. pageNumber is feature of both Magazin and Book. And rest of the fields are independent from other types of documents.

I will store these data on same index. I can store these data either,

  • with a single type such as Object which has a category (Book, Song, Magazin) field in it. I'm giving mapping details when index first created. So, in this option book will have length field but it will be empty, since its not a Book feature.

  • or three types of documents on _type field.

My queries and facets will be on common fields. Which of the following approaches would have lesser query and facet times?

Is /index/book,song,magazin/ -d {myQuery} more efficient than /index/object/ -d {myQuery && (category = book || category = song || category = magazin)} ?

Thanks for the answers.

  • The only way to know is to generate some test data and benchmark it yourself. Without doing this you will be left with nothing more than a religious decision, based on faith and not fact, led down this or that path by whatever sort of proselyte happens along to appeal to you first.
    – zxq9
    Dec 30, 2013 at 10:18

1 Answer 1


Elasticsearch's type concept does not exist in Lucene.

When indexing documents, the document's type gets indexed. Then, when searching on just certain types, Elasticsearch will implicitly add a filter on the indexed type to your query.

Thus, with your last approach, you would have your category-filter in addition to the implicit _type:object-filter. Essentially, you are not gaining anything by not using Elasticsearch's types here.

  • this is super helpful to know
    – Anupam
    Dec 19, 2017 at 10:13

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