Dynamic templates
Dynamic templates allow you greater control of how Elasticsearch maps your data beyond the default dynamic field mapping rules. You enable dynamic mapping by setting the dynamic parameter to true
or runtime
. You can then use dynamic templates to define custom mappings that can be applied to dynamically added fields based on the matching condition:
-
match_mapping_type
andunmatch_mapping_type
operate on the data type that Elasticsearch detects -
match
andunmatch
use a pattern to match on the field name -
path_match
andpath_unmatch
operate on the full dotted path to the field - If a dynamic template doesn’t define
match_mapping_type
,match
, orpath_match
, it won’t match any field. You can still refer to the template by name indynamic_templates
section of a bulk request.
Use the {{name}}
and {{dynamic_type}}
template variables in the mapping specification as placeholders.
Important
Dynamic field mappings are only added when a field contains a concrete value. Elasticsearch doesn’t add a dynamic field mapping when the field contains null
or an empty array. If the null_value
option is used in a dynamic_template
, it will only be applied after the first document with a concrete value for the field has been indexed.
Dynamic templates are specified as an array of named objects:
"dynamic_templates": [
{
"my_template_name": { 1
... match conditions ... 2
"mapping": { ... } 3
}
},
...
]
- The template name can be any string value.
- The match conditions can include any of :
match_mapping_type
,match
,match_pattern
,unmatch
,path_match
,path_unmatch
. - The mapping that the matched field should use.
Validating dynamic templates ¶
If a provided mapping contains an invalid mapping snippet, a validation error is returned. Validation occurs when applying the dynamic template at index time, and, in most cases, when the dynamic template is updated. Providing an invalid mapping snippet may cause the update or validation of a dynamic template to fail under certain conditions:
- If no
match_mapping_type
has been specified but the template is valid for at least one predefined mapping type, the mapping snippet is considered valid. However, a validation error is returned at index time if a field matching the template is indexed as a different type. For example, configuring a dynamic template with nomatch_mapping_type
is considered valid as string type, but if a field matching the dynamic template is indexed as a long, a validation error is returned at index time. It is recommended to configure thematch_mapping_type
to the expected JSON type or configure the desiredtype
in the mapping snippet. - If the
{{name}}
placeholder is used in the mapping snippet, validation is skipped when updating the dynamic template. This is because the field name is unknown at that time. Instead, validation occurs when the template is applied at index time.
Templates are processed in order — the first matching template wins. When putting new dynamic templates through the update mapping API, all existing templates are overwritten. This allows for dynamic templates to be reordered or deleted after they were initially added.
Mapping runtime fields in a dynamic template ¶
If you want Elasticsearch to dynamically map new fields of a certain type as runtime fields, set "dynamic":"runtime"
in the index mappings. These fields are not indexed, and are loaded from _source
at query time.
Alternatively, you can use the default dynamic mapping rules and then create dynamic templates to map specific fields as runtime fields. You set "dynamic":"true"
in your index mapping, and then create a dynamic template to map new fields of a certain type as runtime fields.
Let’s say you have data where each of the fields start with ip_
. Based on the dynamic mapping rules, Elasticsearch maps any string
that passes numeric
detection as a float
or long
. However, you can create a dynamic template that maps new strings as runtime fields of type ip
.
The following request defines a dynamic template named strings_as_ip
. When Elasticsearch detects new string
fields matching the ip*
pattern, it maps those fields as runtime fields of type ip
. Because ip
fields aren’t mapped dynamically, you can use this template with either "dynamic":"true"
or "dynamic":"runtime"
.
PUT my-index-000001/
{
"mappings": {
"dynamic_templates": [
{
"strings_as_ip": {
"match_mapping_type": "string",
"match": "ip*",
"runtime": {
"type": "ip"
}
}
}
]
}
}
See this example for how to use dynamic templates to map string
fields as either indexed fields or runtime fields.
match_mapping_type
and unmatch_mapping_type
¶
The match_mapping_type
parameter matches fields by the data type detected by the JSON parser, while unmatch_mapping_type
excludes fields based on the data type.
Because JSON doesn’t distinguish a long
from an integer
or a double
from a float
, any parsed floating point number is considered a double
JSON data type, while any parsed integer
number is considered a long
.
Note
With dynamic mappings, Elasticsearch will always choose the wider data type. The one exception is float
, which requires less storage space than double
and is precise enough for most applications. Runtime fields do not support float
, which is why "dynamic":"runtime"
uses double
.
Elasticsearch automatically detects the following data types:
Elasticsearch data type | ||
JSON data type | "dynamic":"true" |
"dynamic":"runtime" |
null |
No field added | No field added |
true or false |
boolean |
boolean |
double |
float |
double |
long |
long |
long |
object |
object |
No field added |
array |
Depends on the first non-null value in the array |
Depends on the first non-null value in the array |
string that passes date detection |
date |
date |
string that passes numeric detection |
float or long |
double or long |
string that doesn’t pass date detection or numeric detection |
text with a .keyword sub-field |
keyword |
You can specify either a single data type or a list of data types for either the match_mapping_type
or unmatch_mapping_type
parameters. You can also use a wildcard (*
) for the match_mapping_type
parameter to match all data types.
For example, if we wanted to map all integer fields as integer
instead of long
, and all string
fields as both text
and keyword
, we could use the following template:
PUT my-index-000001
{
"mappings": {
"dynamic_templates": [
{
"numeric_counts": {
"match_mapping_type": ["long", "double"],
"match": "count",
"mapping": {
"type": "{dynamic_type}",
"index": false
}
}
},
{
"integers": {
"match_mapping_type": "long",
"mapping": {
"type": "integer"
}
}
},
{
"strings": {
"match_mapping_type": "string",
"mapping": {
"type": "text",
"fields": {
"raw": {
"type": "keyword",
"ignore_above": 256
}
}
}
}
},
{
"non_objects_keyword": {
"match_mapping_type": "*",
"unmatch_mapping_type": "object",
"mapping": {
"type": "keyword"
}
}
}
]
}
}
PUT my-index-000001/_doc/1
{
"my_integer": 5, 1
"my_string": "Some string", 2
"my_boolean": "false", 3
"field": {"count": 4} 4
}
- The
my_integer
field is mapped as aninteger
. - The
my_string
field is mapped as atext
, with akeyword
multi-field. - The
my_boolean
field is mapped as akeyword
. - The
field.count
field is mapped as along
.
match
and unmatch
¶
The match
parameter uses one or more patterns to match on the field name, while unmatch
uses one or more patterns to exclude fields matched by match
.
The match_pattern
parameter adjusts the behavior of the match
parameter to support full Java regular expressions matching on the field name instead of simple wildcards. For example:
"match_pattern": "regex",
"match": "^profit_\d+$"
The following example matches all string
fields whose name starts with long_
(except for those which end with _text
) and maps them as long
fields:
PUT my-index-000001
{
"mappings": {
"dynamic_templates": [
{
"longs_as_strings": {
"match_mapping_type": "string",
"match": "long_*",
"unmatch": "*_text",
"mapping": {
"type": "long"
}
}
}
]
}
}
PUT my-index-000001/_doc/1
{
"long_num": "5", 1
"long_text": "foo" 2
}
- The
long_num
field is mapped as along
. - The
long_text
field uses the defaultstring
mapping.
You can specify a list of patterns using a JSON array for either the match
or unmatch
fields.
The next example matches all fields whose name starts with ip_
or ends with _ip
, except for fields which start with one
or end with two
and maps them as ip
fields:
PUT my-index-000001
{
"mappings": {
"dynamic_templates": [
{
"ip_fields": {
"match": ["ip_*", "*_ip"],
"unmatch": ["one*", "*two"],
"mapping": {
"type": "ip"
}
}
}
]
}
}
PUT my-index/_doc/1
{
"one_ip": "will not match", 1
"ip_two": "will not match", 2
"three_ip": "12.12.12.12", 3
"ip_four": "13.13.13.13" 4
}
- The
one_ip
field is unmatched, so uses the default mapping oftext
. - The
ip_two
field is unmatched, so uses the default mapping oftext
. - The
three_ip
field is mapped as typeip
. - The
ip_four
field is mapped as typeip
.
path_match
and path_unmatch
¶
The path_match
and path_unmatch
parameters work in the same way as match
and unmatch
, but operate on the full dotted path to the field, not just the final name, e.g. some_object.*.some_field
.
This example copies the values of any fields in the name
object to the top-level full_name
field, except for the middle
field:
PUT my-index-000001
{
"mappings": {
"dynamic_templates": [
{
"full_name": {
"path_match": "name.*",
"path_unmatch": "*.middle",
"mapping": {
"type": "text",
"copy_to": "full_name"
}
}
}
]
}
}
PUT my-index-000001/_doc/1
{
"name": {
"first": "John",
"middle": "Winston",
"last": "Lennon"
}
}
And the following example uses an array of patterns for both path_match
and path_unmatch
.
The values of any fields in the name
object or the user.name
object are copied to the top-level full_name
field, except for the middle
and midinitial
fields:
PUT my-index-000001
{
"mappings": {
"dynamic_templates": [
{
"full_name": {
"path_match": ["name.*", "user.name.*"],
"path_unmatch": ["*.middle", "*.midinitial"],
"mapping": {
"type": "text",
"copy_to": "full_name"
}
}
}
]
}
}
PUT my-index-000001/_doc/1
{
"name": {
"first": "John",
"middle": "Winston",
"last": "Lennon"
}
}
PUT my-index-000001/_doc/2
{
"user": {
"name": {
"first": "Jane",
"midinitial": "M",
"last": "Salazar"
}
}
}
Note that the path_match
and path_unmatch
parameters match on object paths in addition to leaf fields. As an example, indexing the following document will result in an error because the path_match
setting also matches the object field name.title
, which can’t be mapped as text:
PUT my-index-000001/_doc/2
{
"name": {
"first": "Paul",
"last": "McCartney",
"title": {
"value": "Sir",
"category": "order of chivalry"
}
}
}
Template variables ¶
The {{name}}
and {{dynamic_type}}
placeholders are replaced in the mapping
with the field name and detected dynamic type. The following example sets all string fields to use an analyzer
with the same name as the field, and disables doc_values
for all non-string fields:
PUT my-index-000001
{
"mappings": {
"dynamic_templates": [
{
"named_analyzers": {
"match_mapping_type": "string",
"match": "*",
"mapping": {
"type": "text",
"analyzer": "{name}"
}
}
},
{
"no_doc_values": {
"match_mapping_type":"*",
"mapping": {
"type": "{dynamic_type}",
"doc_values": false
}
}
}
]
}
}
PUT my-index-000001/_doc/1
{
"english": "Some English text", 1
"count": 5 2
}
- The
english
field is mapped as astring
field with theenglish
analyzer. - The
count
field is mapped as along
field withdoc_values
disabled.
Dynamic template examples ¶
Here are some examples of potentially useful dynamic templates:
Structured search ¶
When you set "dynamic":"true"
, Elasticsearch will map string fields as a text
field with a keyword
subfield. If you are only indexing structured content and not interested in full text search, you can make Elasticsearch map your fields only as keyword
fields. However, you must search on the exact same value that was indexed to search those fields.
PUT my-index-000001
{
"mappings": {
"dynamic_templates": [
{
"strings_as_keywords": {
"match_mapping_type": "string",
"mapping": {
"type": "keyword"
}
}
}
]
}
}
text
-only mappings for strings ¶
Contrary to the previous example, if you only care about full-text search on string fields and don’t plan on running aggregations, sorting, or exact searches, you could tell instruct Elasticsearch to map strings as text
:
PUT my-index-000001
{
"mappings": {
"dynamic_templates": [
{
"strings_as_text": {
"match_mapping_type": "string",
"mapping": {
"type": "text"
}
}
}
]
}
}
Alternatively, you can create a dynamic template to map your string fields as keyword
fields in the runtime section of the mapping. When Elasticsearch detects new fields of type string
, those fields will be created as runtime fields of type keyword
.
Although your string
fields won’t be indexed, their values are stored in _source
and can be used in search requests, aggregations, filtering, and sorting.
For example, the following request creates a dynamic template to map string
fields as runtime fields of type keyword
. Although the runtime
definition is blank, new string
fields will be mapped as keyword
runtime fields based on the dynamic mapping rules that Elasticsearch uses for adding field types to the mapping. Any string
that doesn’t pass date detection or numeric detection is automatically mapped as a keyword
:
PUT my-index-000001
{
"mappings": {
"dynamic_templates": [
{
"strings_as_keywords": {
"match_mapping_type": "string",
"runtime": {}
}
}
]
}
}
You index a simple document:
PUT my-index-000001/_doc/1
{
"english": "Some English text",
"count": 5
}
When you view the mapping, you’ll see that the english
field is a runtime field of type keyword
:
GET my-index-000001/_mapping
{
"my-index-000001" : {
"mappings" : {
"dynamic_templates" : [
{
"strings_as_keywords" : {
"match_mapping_type" : "string",
"runtime" : { }
}
}
],
"runtime" : {
"english" : {
"type" : "keyword"
}
},
"properties" : {
"count" : {
"type" : "long"
}
}
}
}
}
Disabled norms ¶
Norms are index-time scoring factors. If you do not care about scoring, which would be the case for instance if you never sort documents by score, you could disable the storage of these scoring factors in the index and save some space.
PUT my-index-000001
{
"mappings": {
"dynamic_templates": [
{
"strings_as_keywords": {
"match_mapping_type": "string",
"mapping": {
"type": "text",
"norms": false,
"fields": {
"keyword": {
"type": "keyword",
"ignore_above": 256
}
}
}
}
}
]
}
}
The sub keyword
field appears in this template to be consistent with the default rules of dynamic mappings. Of course if you do not need them because you don’t need to perform exact search or aggregate on this field, you could remove it as described in the previous section.
Time series ¶
When doing time series analysis with Elasticsearch, it is common to have many numeric fields that you will often aggregate on but never filter on. In such a case, you could disable indexing on those fields to save disk space and also maybe gain some indexing speed:
PUT my-index-000001
{
"mappings": {
"dynamic_templates": [
{
"unindexed_longs": {
"match_mapping_type": "long",
"mapping": {
"type": "long",
"index": false
}
}
},
{
"unindexed_doubles": {
"match_mapping_type": "double",
"mapping": {
"type": "float", 1
"index": false
}
}
}
]
}
}
- Like the default dynamic mapping rules, doubles are mapped as floats, which are usually accurate enough, yet require half the disk space.