242 lines
8.2 KiB
Plaintext
242 lines
8.2 KiB
Plaintext
[[search-aggregations-bucket-geohashgrid-aggregation]]
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=== GeoHash grid Aggregation
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A multi-bucket aggregation that works on `geo_point` fields and groups points into buckets that represent cells in a grid.
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The resulting grid can be sparse and only contains cells that have matching data. Each cell is labeled using a http://en.wikipedia.org/wiki/Geohash[geohash] which is of user-definable precision.
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* High precision geohashes have a long string length and represent cells that cover only a small area.
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* Low precision geohashes have a short string length and represent cells that each cover a large area.
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Geohashes used in this aggregation can have a choice of precision between 1 and 12.
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WARNING: The highest-precision geohash of length 12 produces cells that cover less than a square metre of land and so high-precision requests can be very costly in terms of RAM and result sizes.
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Please see the example below on how to first filter the aggregation to a smaller geographic area before requesting high-levels of detail.
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The specified field must be of type `geo_point` (which can only be set explicitly in the mappings) and it can also hold an array of `geo_point` fields, in which case all points will be taken into account during aggregation.
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==== Simple low-precision request
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[source,console]
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--------------------------------------------------
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PUT /museums
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{
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"mappings": {
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"properties": {
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"location": {
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"type": "geo_point"
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}
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}
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}
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}
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POST /museums/_bulk?refresh
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{"index":{"_id":1}}
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{"location": "52.374081,4.912350", "name": "NEMO Science Museum"}
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{"index":{"_id":2}}
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{"location": "52.369219,4.901618", "name": "Museum Het Rembrandthuis"}
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{"index":{"_id":3}}
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{"location": "52.371667,4.914722", "name": "Nederlands Scheepvaartmuseum"}
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{"index":{"_id":4}}
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{"location": "51.222900,4.405200", "name": "Letterenhuis"}
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{"index":{"_id":5}}
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{"location": "48.861111,2.336389", "name": "Musée du Louvre"}
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{"index":{"_id":6}}
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{"location": "48.860000,2.327000", "name": "Musée d'Orsay"}
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POST /museums/_search?size=0
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{
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"aggregations" : {
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"large-grid" : {
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"geohash_grid" : {
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"field" : "location",
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"precision" : 3
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}
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}
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}
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}
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--------------------------------------------------
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Response:
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[source,console-result]
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--------------------------------------------------
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{
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...
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"aggregations": {
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"large-grid": {
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"buckets": [
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{
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"key": "u17",
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"doc_count": 3
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},
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{
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"key": "u09",
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"doc_count": 2
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},
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{
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"key": "u15",
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"doc_count": 1
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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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// TESTRESPONSE[s/\.\.\./"took": $body.took,"_shards": $body._shards,"hits":$body.hits,"timed_out":false,/]
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==== High-precision requests
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When requesting detailed buckets (typically for displaying a "zoomed in" map) a filter like <<query-dsl-geo-bounding-box-query,geo_bounding_box>> should be applied to narrow the subject area otherwise potentially millions of buckets will be created and returned.
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[source,console]
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--------------------------------------------------
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POST /museums/_search?size=0
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{
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"aggregations" : {
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"zoomed-in" : {
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"filter" : {
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"geo_bounding_box" : {
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"location" : {
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"top_left" : "52.4, 4.9",
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"bottom_right" : "52.3, 5.0"
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}
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}
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},
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"aggregations":{
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"zoom1":{
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"geohash_grid" : {
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"field": "location",
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"precision": 8
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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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// TEST[continued]
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The geohashes returned by the `geohash_grid` aggregation can be also used for zooming in. To zoom into the
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first geohash `u17` returned in the previous example, it should be specified as both `top_left` and `bottom_right` corner:
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[source,console]
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--------------------------------------------------
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POST /museums/_search?size=0
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{
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"aggregations" : {
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"zoomed-in" : {
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"filter" : {
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"geo_bounding_box" : {
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"location" : {
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"top_left" : "u17",
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"bottom_right" : "u17"
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}
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}
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},
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"aggregations":{
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"zoom1":{
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"geohash_grid" : {
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"field": "location",
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"precision": 8
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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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// TEST[continued]
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[source,console-result]
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--------------------------------------------------
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{
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...
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"aggregations" : {
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"zoomed-in" : {
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"doc_count" : 3,
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"zoom1" : {
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"buckets" : [
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{
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"key" : "u173zy3j",
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"doc_count" : 1
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},
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{
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"key" : "u173zvfz",
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"doc_count" : 1
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},
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{
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"key" : "u173zt90",
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"doc_count" : 1
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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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// TESTRESPONSE[s/\.\.\./"took": $body.took,"_shards": $body._shards,"hits":$body.hits,"timed_out":false,/]
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For "zooming in" on the system that don't support geohashes, the bucket keys should be translated into bounding boxes using
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one of available geohash libraries. For example, for javascript the https://github.com/sunng87/node-geohash[node-geohash] library
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can be used:
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[source,js]
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--------------------------------------------------
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var geohash = require('ngeohash');
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// bbox will contain [ 52.03125, 4.21875, 53.4375, 5.625 ]
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// [ minlat, minlon, maxlat, maxlon]
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var bbox = geohash.decode_bbox('u17');
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--------------------------------------------------
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// NOTCONSOLE
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==== Cell dimensions at the equator
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The table below shows the metric dimensions for cells covered by various string lengths of geohash.
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Cell dimensions vary with latitude and so the table is for the worst-case scenario at the equator.
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[horizontal]
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*GeoHash length*:: *Area width x height*
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1:: 5,009.4km x 4,992.6km
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2:: 1,252.3km x 624.1km
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3:: 156.5km x 156km
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4:: 39.1km x 19.5km
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5:: 4.9km x 4.9km
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6:: 1.2km x 609.4m
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7:: 152.9m x 152.4m
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8:: 38.2m x 19m
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9:: 4.8m x 4.8m
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10:: 1.2m x 59.5cm
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11:: 14.9cm x 14.9cm
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12:: 3.7cm x 1.9cm
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==== Options
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[horizontal]
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field:: Mandatory. The name of the field indexed with GeoPoints.
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precision:: Optional. The string length of the geohashes used to define
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cells/buckets in the results. Defaults to 5.
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The precision can either be defined in terms of the integer
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precision levels mentioned above. Values outside of [1,12] will
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be rejected.
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Alternatively, the precision level can be approximated from a
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distance measure like "1km", "10m". The precision level is
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calculate such that cells will not exceed the specified
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size (diagonal) of the required precision. When this would lead
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to precision levels higher than the supported 12 levels,
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(e.g. for distances <5.6cm) the value is rejected.
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size:: Optional. The maximum number of geohash buckets to return
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(defaults to 10,000). When results are trimmed, buckets are
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prioritised based on the volumes of documents they contain.
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shard_size:: Optional. To allow for more accurate counting of the top cells
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returned in the final result the aggregation defaults to
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returning `max(10,(size x number-of-shards))` buckets from each
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shard. If this heuristic is undesirable, the number considered
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from each shard can be over-ridden using this parameter.
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