near
On this page
Definition
near
The
near
operator supports querying and scoring numeric, date, and GeoJSON point values. This operator can be used to perform a search over:- Number fields of BSON
int32
,int64
, anddouble
data types. - Date fields of BSON
date
type in ISODate format. - Geographic location fields defined using latitude and longitude coordinates.
You can use the
near
operator to find results that are near a number or a date. Thenear
operator scores the Atlas Search results by proximity to the number or date.- Number fields of BSON
Syntax
near
has the following syntax:
{ $search: { "index": <index name>, // optional, defaults to "default" "near": { "path": "<field-to-search>", "origin": <date-or-number>, "pivot": <pivot-distance>, "score": <score-options> } } }
Options
near
uses the following terms to construct a query:
Field | Type | Description | Necessity | |||
---|---|---|---|---|---|---|
origin | date, number, or geo | Number, date, or geographic point to search near. This is the origin from which the proximity of the results is measured.
| yes | |||
path | string or array of strings | Indexed field or fields to search. See Path Construction. | yes | |||
pivot | number | Value to use to calculate scores of Atlas Search result documents. Score is calculated using the following formula:
where Results have a score equal to If
| yes | |||
score | object | A measure of the proximity of the Atlas Search results to Score is calculated using the following formula:
where You can modify the score of the matching search results using the following options:
For more information on using | no |
Limitation
You cannot use the near
operator to query numeric or date values
stored in an array. Atlas Search cannot index numeric or date values if they
are part of an array.
Examples
The number and date
examples use the movies
collection in the sample_mflix
database. The GeoJSON point example uses the
listingsAndReviews
collection in the sample_airbnb
database.
If you loaded the sample dataset on your cluster, you can create the static indexes using the index definitions in the examples below or the default index and run the example queries on your cluster.
If you've already loaded the sample dataset, follow the Get Started with Atlas Search tutorial to create an index definition and run Atlas Search queries.
Number Example
The following example uses the near
operator to query a number field.
The following index definition named runtimes
indexes the
runtime
field values in the movies
collection:
1 { 2 "mappings": { 3 "dynamic": false, 4 "fields": { 5 "runtime": { 6 "type": "number" 7 } 8 } 9 } 10 }
The following query searches for documents in the movies
collection with a runtime
field value that is near 279. It
includes a $limit
stage to limit the output to 7 results
and a $project
stage to:
- Exclude all fields except
title
andruntime
- Add a field named
score
The score
is calculated using pivot
.
1 db.movies.aggregate([ 2 { 3 $search: { 4 "index": "runtimes", 5 "near": { 6 "path": "runtime", 7 "origin": 279, 8 "pivot": 2 9 } 10 } 11 }, 12 { 13 $limit: 7 14 }, 15 { 16 $project: { 17 "_id": 0, 18 "title": 1, 19 "runtime": 1, 20 score: { $meta: "searchScore" } 21 } 22 } 23 ])
The above query returns the following results:
1 { "runtime" : 279, "title" : "The Kingdom", "score" : 1 } 2 { "runtime" : 279, "title" : "The Jinx: The Life and Deaths of Robert Durst", "score" : 1 } 3 { "runtime" : 280, "title" : "Shoah", "score" : 0.6666666865348816 } 4 { "runtime" : 281, "title" : "Les Misèrables", "score" : 0.5 } 5 { "runtime" : 277, "title" : "Tokyo Trial", "score" : 0.5 } 6 { "runtime" : 276, "title" : "Warriors of the Rainbow: Seediq Bale", "score" : 0.4000000059604645 } 7 { "runtime" : 283, "title" : "Scenes from a Marriage", "score" : 0.3333333432674408 }
In the above Atlas Search results, the movies The Kingdom
and The
Jinx: The Life and Deaths of Robert Durst
receive a score of
1.0
because their runtime
field value of 279
is an exact
match. The movies Les Misèrables
and Tokyo Trial
receive a
score of 0.5
because their runtime
field value is 2
units away from 279
.
Date Example
The following example uses the near
operator to query a date field.
The following index definition named releaseddate
indexes the
released
field values in the movies
collection:
1 { 2 "mappings": { 3 "dynamic": false, 4 "fields": { 5 "released": { 6 "type": "date" 7 } 8 } 9 } 10 }
The following query searches for movies released near September 13,
1915. It includes a $limit
stage to limit the output to
3 results and a $project
stage to:
- Exclude all fields except
title
andreleased
- Add a field named
score
The score
of results is calculated using pivot
.
pivot
is measured here in milliseconds, and
7,776,000,000 ms
is equal to approximately three months.
1 db.movies.aggregate([ 2 { 3 $search: { 4 "index": "releaseddate", 5 "near": { 6 "path": "released", 7 "origin": ISODate("1915-09-13T00:00:00.000+00:00"), 8 "pivot": 7776000000 9 } 10 } 11 }, 12 { 13 $limit: 3 14 }, 15 { 16 $project: { 17 "_id": 0, 18 "title": 1, 19 "released": 1, 20 score: { $meta: "searchScore" } 21 } 22 } 23 ])
The above query returns the following search results:
{ "title" : "Regeneration", "released" : ISODate("1915-09-13T00:00:00Z"), "score" : 1 } { "title" : "The Cheat", "released" : ISODate("1915-12-13T00:00:00Z"), "score" : 0.49723756313323975 } { "title" : "Hell's Hinges", "released" : ISODate("1916-03-05T00:00:00Z"), "score" : 0.34090909361839294 }
In the above Atlas Search results, the movie Regeneration
receives a
score of 1
because the released
field value of
1915-09-13
is an exact match. The movie The Cheat
, which was
released on 1915-12-13
, receives a score of approximately
0.5
because the released
field value distance from
origin
is approximately 7,776,000,000
milliseconds from
1915-09-13
.
GeoJSON Point Examples
The following examples use the near
operator to query a GeoJSON
point object in the sample_airbnb.listingsAndReviews
collection.
The following index definition indexes the address.location
and
property_type
fields in the listingsAndReviews
collection.
1 { 2 "mappings": { 3 "fields": { 4 "address": { 5 "fields": { 6 "location": { 7 "type": "geo" 8 } 9 }, 10 "type": "document" 11 }, 12 "property_type": { 13 "type": "string" 14 } 15 } 16 } 17 }
Basic Example
The following examples use the near
operator to query the
address.location
field in the sample_airbnb.listingsAndReviews
collection.
The following query searches for properties in Portugal. It includes
a $limit
stage to limit the output to 3 results and a
$project stage to:
- Exclude all fields except
name
andaddress
- Add a field named
score
The score
of results is calculated using pivot
. Note that
pivot
is measured here in meters and 1000 meters is equal to 1
kilometer.
1 db.listingsAndReviews.aggregate([ 2 { 3 "$search": { 4 "near": { 5 "origin": { 6 "type": "Point", 7 "coordinates": [-8.61308, 41.1413] 8 }, 9 "pivot": 1000, 10 "path": "address.location" 11 } 12 } 13 }, 14 { 15 $limit: 3 16 }, 17 { 18 $project: { 19 "_id": 0, 20 "name": 1, 21 "address": 1, 22 score: { $meta: "searchScore" } 23 } 24 } 25 ])
The above query returns the following search results:
1 { 2 "name" : "Ribeira Charming Duplex", 3 "address" : { 4 "street" : "Porto, Porto, Portugal", 5 "suburb" : "", 6 "government_area" : "Cedofeita, Ildefonso, Sé, Miragaia, Nicolau, Vitória", 7 "market" : "Porto", 8 "country" : "Portugal", 9 "country_code" : "PT", 10 "location" : { 11 "type" : "Point", 12 "coordinates" : [ -8.61308, 41.1413 ], 13 "is_location_exact" : false 14 } 15 }, 16 "score" : 1 17 } 18 { 19 "name" : "DB RIBEIRA - Grey Apartment", 20 "address" : { 21 "street" : "Porto, Porto, Portugal", 22 "suburb" : "", 23 "government_area" : "Cedofeita, Ildefonso, Sé, Miragaia, Nicolau, Vitória", 24 "market" : "Porto", 25 "country" : "Portugal", 26 "country_code" : "PT", 27 "location" : { 28 "type" : "Point", 29 "coordinates" : [ -8.61294, 41.14126 ], 30 "is_location_exact" : true 31 } 32 }, 33 "score" : 0.9876177310943604 34 } 35 { 36 "name" : "Ribeira 24 (4)", 37 "address" : { 38 "street" : "Porto, Porto, Portugal", 39 "suburb" : "", 40 "government_area" : "Cedofeita, Ildefonso, Sé, Miragaia, Nicolau, Vitória", 41 "market" : "Porto", 42 "country" : "Portugal", 43 "country_code" : "PT", 44 "location" : { 45 "type" : "Point", 46 "coordinates" : [ -8.61318, 41.14107 ], 47 "is_location_exact" : false 48 } 49 }, 50 "score" : 0.973789632320404 51 }
The results show that properties that are farther away from the specified coordinates have a lower score.
Compound Example
The following example uses the compound
operator to query the
property_type
and address.location
fields in the
sample_airbnb.listingsAndReviews
collection.
The following query searches for apartments in Hong Kong near a
specified GeoJSON point. The query uses must to specify the search
condition, which must be met, and should to specify preference for
location. It includes a $limit
stage to limit the output to 3
results and a $project
stage to:
- Exclude all fields except
property_type
andaddress
- Add a field named
score
The score
is calculated using the pivot
field. Note that
pivot
is measured here in meters and 1000 meters is equal to 1
kilometer.
1 db.listingsAndReviews.aggregate([ 2 { 3 $search: { 4 "compound": { 5 "must": { 6 "text": { 7 "query": "Apartment", 8 "path": "property_type" 9 } 10 }, 11 "should": { 12 "near": { 13 "origin": { 14 "type": "Point", 15 "coordinates": [114.15027, 22.28158] 16 }, 17 "pivot": 1000, 18 "path": "address.location" 19 } 20 } 21 } 22 } 23 }, 24 { 25 $limit: 3 26 }, 27 { 28 $project: { 29 "_id": 0, 30 "property_type": 1, 31 "address": 1, 32 score: { $meta: "searchScore" } 33 } 34 } 35 ])
The above query returns the following search results:
1 { 2 "property_type" : "Apartment", 3 "address" : { 4 "street" : "Hong Kong, Hong Kong Island, Hong Kong", 5 "suburb" : "Central & Western District", 6 "government_area" : "Central & Western", 7 "market" : "Hong Kong", 8 "country" : "Hong Kong", 9 "country_code" : "HK", 10 "location" : { 11 "type" : "Point", 12 "coordinates" : [ 114.15027, 22.28158 ], 13 "is_location_exact" : true 14 } 15 }, 16 "score" : 1.177286982536316 17 } 18 { 19 "property_type" : "Apartment", 20 "address" : { 21 "street" : "Hong Kong, Hong Kong Island, Hong Kong", 22 "suburb" : "Central & Western District", 23 "government_area" : "Central & Western", 24 "market" : "Hong Kong", 25 "country" : "Hong Kong", 26 "country_code" : "HK", 27 "location" : { 28 "type" : "Point", 29 "coordinates" : [ 114.15082, 22.28161 ], 30 "is_location_exact" : true 31 } 32 }, 33 "score" : 1.1236450672149658 34 } 35 { 36 "property_type" : "Apartment", 37 "address" : { 38 "street" : "Hong Kong, 39 Hong Kong Island, Hong Kong", 40 "suburb" : "Mid-Levels", 41 "government_area" : "Central & Western", 42 "market" : "Hong Kong", 43 "country" : "Hong Kong", 44 "country_code" : "HK", 45 "location" : { 46 "type" : "Point", 47 "coordinates" : [ 114.15007, 22.28215 ], 48 "is_location_exact" : true 49 } 50 }, 51 "score" : 1.114811897277832 52 }