627 lines
17 KiB
Plaintext
627 lines
17 KiB
Plaintext
[[request-body-search-sort]]
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==== Sort
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Allows you to add one or more sorts on specific fields. Each sort can be
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reversed as well. The sort is defined on a per field level, with special
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field name for `_score` to sort by score, and `_doc` to sort by index order.
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Assuming the following index mapping:
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[source,console]
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--------------------------------------------------
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PUT /my_index
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{
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"mappings": {
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"properties": {
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"post_date": { "type": "date" },
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"user": {
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"type": "keyword"
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},
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"name": {
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"type": "keyword"
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},
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"age": { "type": "integer" }
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}
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}
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}
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--------------------------------------------------
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[source,console]
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--------------------------------------------------
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GET /my_index/_search
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{
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"sort" : [
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{ "post_date" : {"order" : "asc"}},
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"user",
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{ "name" : "desc" },
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{ "age" : "desc" },
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"_score"
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],
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"query" : {
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"term" : { "user" : "kimchy" }
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}
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}
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--------------------------------------------------
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// TEST[continued]
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NOTE: `_doc` has no real use-case besides being the most efficient sort order.
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So if you don't care about the order in which documents are returned, then you
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should sort by `_doc`. This especially helps when <<request-body-search-scroll,scrolling>>.
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===== Sort Values
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The sort values for each document returned are also returned as part of
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the response.
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===== Sort Order
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The `order` option can have the following values:
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[horizontal]
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`asc`:: Sort in ascending order
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`desc`:: Sort in descending order
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The order defaults to `desc` when sorting on the `_score`, and defaults
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to `asc` when sorting on anything else.
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===== Sort mode option
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Elasticsearch supports sorting by array or multi-valued fields. The `mode` option
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controls what array value is picked for sorting the document it belongs
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to. The `mode` option can have the following values:
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[horizontal]
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`min`:: Pick the lowest value.
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`max`:: Pick the highest value.
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`sum`:: Use the sum of all values as sort value. Only applicable for
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number based array fields.
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`avg`:: Use the average of all values as sort value. Only applicable
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for number based array fields.
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`median`:: Use the median of all values as sort value. Only applicable
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for number based array fields.
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The default sort mode in the ascending sort order is `min` -- the lowest value
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is picked. The default sort mode in the descending order is `max` --
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the highest value is picked.
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====== Sort mode example usage
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In the example below the field price has multiple prices per document.
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In this case the result hits will be sorted by price ascending based on
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the average price per document.
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[source,console]
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--------------------------------------------------
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PUT /my_index/_doc/1?refresh
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{
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"product": "chocolate",
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"price": [20, 4]
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}
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POST /_search
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{
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"query" : {
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"term" : { "product" : "chocolate" }
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},
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"sort" : [
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{"price" : {"order" : "asc", "mode" : "avg"}}
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]
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}
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--------------------------------------------------
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===== Sorting numeric fields
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For numeric fields it is also possible to cast the values from one type
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to another using the `numeric_type` option.
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This option accepts the following values: [`"double", "long", "date", "date_nanos"`]
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and can be useful for cross-index search if the sort field is mapped differently on some
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indices.
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Consider for instance these two indices:
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[source,console]
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--------------------------------------------------
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PUT /index_double
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{
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"mappings": {
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"properties": {
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"field": { "type": "double" }
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}
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}
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}
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--------------------------------------------------
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[source,console]
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--------------------------------------------------
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PUT /index_long
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{
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"mappings": {
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"properties": {
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"field": { "type": "long" }
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}
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}
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}
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--------------------------------------------------
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// TEST[continued]
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Since `field` is mapped as a `double` in the first index and as a `long`
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in the second index, it is not possible to use this field to sort requests
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that query both indices by default. However you can force the type to one
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or the other with the `numeric_type` option in order to force a specific
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type for all indices:
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[source,console]
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--------------------------------------------------
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POST /index_long,index_double/_search
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{
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"sort" : [
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{
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"field" : {
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"numeric_type" : "double"
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}
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}
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]
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}
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--------------------------------------------------
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// TEST[continued]
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In the example above, values for the `index_long` index are casted to
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a double in order to be compatible with the values produced by the
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`index_double` index.
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It is also possible to transform a floating point field into a `long`
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but note that in this case floating points are replaced by the largest
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value that is less than or equal (greater than or equal if the value
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is negative) to the argument and is equal to a mathematical integer.
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This option can also be used to convert a `date` field that uses millisecond
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resolution to a `date_nanos` field with nanosecond resolution.
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Consider for instance these two indices:
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[source,console]
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--------------------------------------------------
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PUT /index_double
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{
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"mappings": {
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"properties": {
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"field": { "type": "date" }
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}
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}
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}
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--------------------------------------------------
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[source,console]
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--------------------------------------------------
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PUT /index_long
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{
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"mappings": {
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"properties": {
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"field": { "type": "date_nanos" }
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}
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}
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}
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--------------------------------------------------
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// TEST[continued]
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Values in these indices are stored with different resolutions so sorting on these
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fields will always sort the `date` before the `date_nanos` (ascending order).
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With the `numeric_type` type option it is possible to set a single resolution for
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the sort, setting to `date` will convert the `date_nanos` to the millisecond resolution
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while `date_nanos` will convert the values in the `date` field to the nanoseconds resolution:
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[source,console]
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--------------------------------------------------
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POST /index_long,index_double/_search
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{
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"sort" : [
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{
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"field" : {
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"numeric_type" : "date_nanos"
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}
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}
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]
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}
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--------------------------------------------------
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// TEST[continued]
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[WARNING]
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To avoid overflow, the conversion to `date_nanos` cannot be applied on dates before
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1970 and after 2262 as nanoseconds are represented as longs.
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[[nested-sorting]]
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===== Sorting within nested objects.
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Elasticsearch also supports sorting by
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fields that are inside one or more nested objects. The sorting by nested
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field support has a `nested` sort option with the following properties:
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`path`::
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Defines on which nested object to sort. The actual
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sort field must be a direct field inside this nested object.
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When sorting by nested field, this field is mandatory.
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`filter`::
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A filter that the inner objects inside the nested path
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should match with in order for its field values to be taken into account
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by sorting. Common case is to repeat the query / filter inside the
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nested filter or query. By default no `nested_filter` is active.
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`max_children`::
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The maximum number of children to consider per root document
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when picking the sort value. Defaults to unlimited.
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`nested`::
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Same as top-level `nested` but applies to another nested path within the
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current nested object.
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[WARNING]
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.Nested sort options before Elasticsearch 6.1
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============================================
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The `nested_path` and `nested_filter` options have been deprecated in
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favor of the options documented above.
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============================================
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====== Nested sorting examples
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In the below example `offer` is a field of type `nested`.
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The nested `path` needs to be specified; otherwise, Elasticsearch doesn't know on what nested level sort values need to be captured.
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[source,console]
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--------------------------------------------------
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POST /_search
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{
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"query" : {
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"term" : { "product" : "chocolate" }
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},
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"sort" : [
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{
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"offer.price" : {
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"mode" : "avg",
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"order" : "asc",
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"nested": {
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"path": "offer",
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"filter": {
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"term" : { "offer.color" : "blue" }
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}
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}
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}
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}
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]
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}
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--------------------------------------------------
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In the below example `parent` and `child` fields are of type `nested`.
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The `nested_path` needs to be specified at each level; otherwise, Elasticsearch doesn't know on what nested level sort values need to be captured.
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[source,console]
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--------------------------------------------------
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POST /_search
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{
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"query": {
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"nested": {
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"path": "parent",
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"query": {
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"bool": {
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"must": {"range": {"parent.age": {"gte": 21}}},
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"filter": {
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"nested": {
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"path": "parent.child",
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"query": {"match": {"parent.child.name": "matt"}}
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}
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}
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}
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}
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}
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},
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"sort" : [
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{
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"parent.child.age" : {
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"mode" : "min",
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"order" : "asc",
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"nested": {
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"path": "parent",
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"filter": {
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"range": {"parent.age": {"gte": 21}}
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},
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"nested": {
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"path": "parent.child",
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"filter": {
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"match": {"parent.child.name": "matt"}
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}
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}
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}
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}
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}
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]
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}
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--------------------------------------------------
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Nested sorting is also supported when sorting by
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scripts and sorting by geo distance.
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===== Missing Values
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The `missing` parameter specifies how docs which are missing
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the sort field should be treated: The `missing` value can be
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set to `_last`, `_first`, or a custom value (that
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will be used for missing docs as the sort value).
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The default is `_last`.
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For example:
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[source,console]
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--------------------------------------------------
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GET /_search
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{
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"sort" : [
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{ "price" : {"missing" : "_last"} }
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],
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"query" : {
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"term" : { "product" : "chocolate" }
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}
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}
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--------------------------------------------------
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NOTE: If a nested inner object doesn't match with
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the `nested_filter` then a missing value is used.
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===== Ignoring Unmapped Fields
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By default, the search request will fail if there is no mapping
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associated with a field. The `unmapped_type` option allows you to ignore
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fields that have no mapping and not sort by them. The value of this
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parameter is used to determine what sort values to emit. Here is an
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example of how it can be used:
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[source,console]
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--------------------------------------------------
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GET /_search
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{
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"sort" : [
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{ "price" : {"unmapped_type" : "long"} }
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],
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"query" : {
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"term" : { "product" : "chocolate" }
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}
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}
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--------------------------------------------------
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If any of the indices that are queried doesn't have a mapping for `price`
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then Elasticsearch will handle it as if there was a mapping of type
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`long`, with all documents in this index having no value for this field.
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[[geo-sorting]]
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===== Geo Distance Sorting
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Allow to sort by `_geo_distance`. Here is an example, assuming `pin.location` is a field of type `geo_point`:
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[source,console]
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--------------------------------------------------
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GET /_search
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{
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"sort" : [
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{
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"_geo_distance" : {
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"pin.location" : [-70, 40],
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"order" : "asc",
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"unit" : "km",
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"mode" : "min",
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"distance_type" : "arc",
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"ignore_unmapped": true
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}
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}
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],
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"query" : {
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"term" : { "user" : "kimchy" }
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}
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}
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--------------------------------------------------
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`distance_type`::
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How to compute the distance. Can either be `arc` (default), or `plane` (faster, but inaccurate on long distances and close to the poles).
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`mode`::
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What to do in case a field has several geo points. By default, the shortest
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distance is taken into account when sorting in ascending order and the
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longest distance when sorting in descending order. Supported values are
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`min`, `max`, `median` and `avg`.
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`unit`::
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The unit to use when computing sort values. The default is `m` (meters).
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`ignore_unmapped`::
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Indicates if the unmapped field should be treated as a missing value. Setting it to `true` is equivalent to specifying
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an `unmapped_type` in the field sort. The default is `false` (unmapped field cause the search to fail).
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NOTE: geo distance sorting does not support configurable missing values: the
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distance will always be considered equal to +Infinity+ when a document does not
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have values for the field that is used for distance computation.
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The following formats are supported in providing the coordinates:
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====== Lat Lon as Properties
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[source,console]
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--------------------------------------------------
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GET /_search
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{
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"sort" : [
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{
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"_geo_distance" : {
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"pin.location" : {
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"lat" : 40,
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"lon" : -70
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},
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"order" : "asc",
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"unit" : "km"
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}
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}
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],
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"query" : {
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"term" : { "user" : "kimchy" }
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}
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}
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--------------------------------------------------
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====== Lat Lon as String
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Format in `lat,lon`.
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[source,console]
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--------------------------------------------------
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GET /_search
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{
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"sort" : [
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{
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"_geo_distance" : {
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"pin.location" : "40,-70",
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"order" : "asc",
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"unit" : "km"
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}
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}
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],
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"query" : {
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"term" : { "user" : "kimchy" }
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}
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}
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--------------------------------------------------
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====== Geohash
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[source,console]
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--------------------------------------------------
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GET /_search
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{
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"sort" : [
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{
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"_geo_distance" : {
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"pin.location" : "drm3btev3e86",
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"order" : "asc",
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"unit" : "km"
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}
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}
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],
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"query" : {
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"term" : { "user" : "kimchy" }
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}
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}
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--------------------------------------------------
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====== Lat Lon as Array
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Format in `[lon, lat]`, note, the order of lon/lat here in order to
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conform with http://geojson.org/[GeoJSON].
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[source,console]
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--------------------------------------------------
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GET /_search
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{
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"sort" : [
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{
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"_geo_distance" : {
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"pin.location" : [-70, 40],
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"order" : "asc",
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"unit" : "km"
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}
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}
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],
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"query" : {
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"term" : { "user" : "kimchy" }
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}
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}
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--------------------------------------------------
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===== Multiple reference points
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Multiple geo points can be passed as an array containing any `geo_point` format, for example
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[source,console]
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--------------------------------------------------
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GET /_search
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{
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"sort" : [
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{
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"_geo_distance" : {
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"pin.location" : [[-70, 40], [-71, 42]],
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"order" : "asc",
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"unit" : "km"
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}
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}
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],
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"query" : {
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"term" : { "user" : "kimchy" }
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}
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}
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--------------------------------------------------
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and so forth.
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The final distance for a document will then be `min`/`max`/`avg` (defined via `mode`) distance of all points contained in the document to all points given in the sort request.
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===== Script Based Sorting
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Allow to sort based on custom scripts, here is an example:
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[source,console]
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--------------------------------------------------
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GET /_search
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{
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"query" : {
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"term" : { "user" : "kimchy" }
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},
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"sort" : {
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"_script" : {
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"type" : "number",
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"script" : {
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"lang": "painless",
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"source": "doc['field_name'].value * params.factor",
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"params" : {
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"factor" : 1.1
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}
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},
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"order" : "asc"
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}
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}
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}
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--------------------------------------------------
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===== Track Scores
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When sorting on a field, scores are not computed. By setting
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`track_scores` to true, scores will still be computed and tracked.
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[source,console]
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--------------------------------------------------
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GET /_search
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{
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"track_scores": true,
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"sort" : [
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{ "post_date" : {"order" : "desc"} },
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{ "name" : "desc" },
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{ "age" : "desc" }
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],
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"query" : {
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"term" : { "user" : "kimchy" }
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}
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}
|
|
--------------------------------------------------
|
|
|
|
===== Memory Considerations
|
|
|
|
When sorting, the relevant sorted field values are loaded into memory.
|
|
This means that per shard, there should be enough memory to contain
|
|
them. For string based types, the field sorted on should not be analyzed
|
|
/ tokenized. For numeric types, if possible, it is recommended to
|
|
explicitly set the type to narrower types (like `short`, `integer` and
|
|
`float`).
|