Often, a field must be processed with several core types or in different ways. For example, a string field must be processed as tokenized
for search and not-tokenized
for sorting. To do this, we need to define a fields
multifield special property.
The fields
property is a very powerful feature of mappings because it allows you to use the same field in different ways.
Getting ready
You will need an up-and-running Elasticsearch installation, as we described in the Downloading and installing Elasticsearch recipe of Chapter 1, Getting Started.
To execute the commands in this recipe, you can use any HTTP client, such as curl (https://curl.haxx.se/), Postman (https://www.getpostman.com/), or similar. I suggest using the Kibana console, which provides code completion and better character escaping for Elasticsearch.
How to do it…
To define a multifield property, we need to define a dictionary containing the fields
subfield. The subfield with the same name as a parent field is the default one.
If we consider the item from our order
example, we can index the name like so:
{ "name": {
"type": "keyword",
"fields": {
"name": {"type": "keyword"},
"tk": {"type": "text"},
"code": {"type": "text","analyzer": "code_analyzer"}
} },
If we already have a mapping stored in Elasticsearch and we want to migrate the fields in a multi-field property, it's enough to save a new mapping with a different type, and Elasticsearch provides the merge automatically. New subfields in the fields
property can be added without problems at any moment, but the new subfields will only be available while you're searching/aggregating newly indexed documents.
When you add a new subfield to already indexed data, you need to reindex your record to ensure you have it correctly indexed for all your records.
How it works…
During indexing, when Elasticsearch processes a fields
property of the multifield
type, it reprocesses the same field for every subfield defined in the mapping.
To access the subfields of a multifield, we must build a new path on the base field, plus use the subfield's name. In the preceding example, we have the following:
name
: This points to the default multifield subfield-field (the keyword one).
name.tk
: This points to the standard analyzed (tokenized) text field.
name.code
: This points to a field that was analyzed with a code extractor analyzer.
As you may have noticed in the preceding example, we changed the analyzer to introduce a code extractor analyzer that allows you to extract the item code from a string.
By using the multifield, if we index a string such as Good Item to buy - ABC1234
, we'll have the following:
name
= Good Item to buy - ABC1234
(useful for sorting)
name.tk
= ["good", "item", "to", "buy", "abc1234"]
(useful for searching)
name.code
= ["ABC1234"]
(useful for searching and aggregations)
In the case of the code analyzer, if the code is not found in the string, no tokens are generated. This makes it possible to develop solutions that carry out information retrieval tasks at index time and uses these at search time.
There's more...
The fields
property is very useful in data processing because it allows you to define several ways to process field data.
For example, if we are working on documental content (such as articles, word documents, and so on), we can define fields as subfield analyzers to extract names, places, date/time, geolocation, and so on.
The subfields of a multifield are standard core type fields – we can perform every process we want on them, such as search, filter, aggregation, and scripting.
See also
To find out more about what Elasticsearch analyzers you can use, please refer to the Specifying different analyzers recipe.