In order to be able to treat date fields as dates, numeric fields as numbers, and string fields as full-text or exact-value strings, Elasticsearch needs to know what type of data each field contains. This information is contained in the mapping.
As explained in [data-in-data-out], each document in an index has a type. Every type has its own mapping, or schema definition. A mapping defines the fields within a type, the datatype for each field, and how the field should be handled by Elasticsearch. A mapping is also used to configure metadata associated with the type.
We discuss mappings in detail in [mapping]. In this section, we’re going to look at just enough to get you started.
Elasticsearch supports the following simple field types:
-
String:
string
-
Whole number:
byte
,short
,integer
,long
-
Floating-point:
float
,double
-
Boolean:
boolean
-
Date:
date
When you index a document that contains a new field—one previously not seen—Elasticsearch will use dynamic mapping to try to guess the field type from the basic datatypes available in JSON, using the following rules:
JSON type |
Field type |
Boolean: true or false
|
|
Whole number: 123
|
|
Floating point: 123.45
|
|
String, valid date: 2014-09-15
|
|
String: foo bar
|
|
Note
|
This means that if you index a number in quotes ("123" ), it will be
mapped as type string , not type long . However, if the field is
already mapped as type long , then Elasticsearch will try to convert
the string into a long, and throw an exception if it can’t.
|
We can view the mapping that Elasticsearch has for one or more types in one or
more indices by using the /_mapping
endpoint. At the start
of this chapter, we already retrieved the mapping for type tweet
in index
gb
:
GET /gb/_mapping/tweet
This shows us the mapping for the fields (called properties) that Elasticsearch generated dynamically from the documents that we indexed:
{
"gb": {
"mappings": {
"tweet": {
"properties": {
"date": {
"type": "date",
"format": "strict_date_optional_time||epoch_millis"
},
"name": {
"type": "string"
},
"tweet": {
"type": "string"
},
"user_id": {
"type": "long"
}
}
}
}
}
}
Tip
|
Incorrect mappings, such as having an Instead of assuming that your mapping is correct, check it! |
While the basic field datatypes are sufficient for many cases, you will often need to customize the mapping for individual fields, especially string fields. Custom mappings allow you to do the following:
-
Distinguish between full-text string fields and exact value string fields
-
Use language-specific analyzers
-
Optimize a field for partial matching
-
Specify custom date formats
-
And much more
The most important attribute of a field is the type
. For fields
other than string
fields, you will seldom need to map anything other
than type
:
{
"number_of_clicks": {
"type": "integer"
}
}
Fields of type string
are, by default, considered to contain full text.
That is, their value will be passed through an analyzer before being indexed,
and a full-text query on the field will pass the query string through an
analyzer before searching.
The two most important mapping attributes for string
fields are
index
and analyzer
.
The index
attribute controls how the string will be indexed. It
can contain one of three values:
analyzed
-
First analyze the string and then index it. In other words, index this field as full text.
not_analyzed
-
Index this field, so it is searchable, but index the value exactly as specified. Do not analyze it.
no
-
Don’t index this field at all. This field will not be searchable.
The default value of index
for a string
field is analyzed
. If we
want to map the field as an exact value, we need to set it to
not_analyzed
:
{
"tag": {
"type": "string",
"index": "not_analyzed"
}
}
Note
|
The other simple types (such as |
For analyzed
string fields, use the analyzer
attribute to
specify which analyzer to apply both at search time and at index time. By
default, Elasticsearch uses the standard
analyzer, but you can change this
by specifying one of the built-in analyzers, such as
whitespace
, simple
, or english
:
{
"tweet": {
"type": "string",
"analyzer": "english"
}
}
In [custom-analyzers], we show you how to define and use custom analyzers as well.
You can specify the mapping for a type when you first create an index.
Alternatively, you can add the mapping for a new type (or update the mapping
for an existing type) later, using the /_mapping
endpoint.
Note
|
Although you can add to an existing mapping, you can’t change existing field mappings. If a mapping already exists for a field, data from that field has probably been indexed. If you were to change the field mapping, the indexed data would be wrong and would not be properly searchable. |
We can update a mapping to add a new field, but we can’t change an existing
field from analyzed
to not_analyzed
.
To demonstrate both ways of specifying mappings, let’s first delete the gb
index:
DELETE /gb
Then create a new index, specifying that the tweet
field should use
the english
analyzer:
PUT /gb (1)
{
"mappings": {
"tweet" : {
"properties" : {
"tweet" : {
"type" : "string",
"analyzer": "english"
},
"date" : {
"type" : "date"
},
"name" : {
"type" : "string"
},
"user_id" : {
"type" : "long"
}
}
}
}
}
-
This creates the index with the
mappings
specified in the body.
Later on, we decide to add a new not_analyzed
text field called tag
to the
tweet
mapping, using the _mapping
endpoint:
PUT /gb/_mapping/tweet
{
"properties" : {
"tag" : {
"type" : "string",
"index": "not_analyzed"
}
}
}
Note that we didn’t need to list all of the existing fields again, as we can’t change them anyway. Our new field has been merged into the existing mapping.
You can use the analyze
API to test the mapping for string fields by
name. Compare the output of these two requests:
GET /gb/_analyze
{
"field": "tweet"
"text": "Black-cats" (1)
}
GET /gb/_analyze
{
"field": "tag",
"text": "Black-cats" (1)
}
-
The text we want to analyze is passed in the body.
The tweet
field produces the two terms black
and cat
, while the
tag
field produces the single term Black-cats
. In other words, our
mapping is working correctly.