Geohash grid aggregationedit

A multi-bucket aggregation that groups geo_point and geo_shape values into buckets that represent a grid. The resulting grid can be sparse and only contains cells that have matching data. Each cell is labeled using a geohash which is of user-definable precision.

  • High precision geohashes have a long string length and represent cells that cover only a small area.
  • Low precision geohashes have a short string length and represent cells that each cover a large area.

Geohashes used in this aggregation can have a choice of precision between 1 and 12.

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. Please see the example below on how to first filter the aggregation to a smaller geographic area before requesting high-levels of detail.

You can only use geohash_grid to aggregate an explicitly mapped geo_point or geo_shape field. If the geo_point field contains an array, geohash_grid aggregates all the array values.

Simple low-precision requestedit

response = client.indices.create(
  index: 'museums',
  body: {
    mappings: {
      properties: {
        location: {
          type: 'geo_point'
        }
      }
    }
  }
)
puts response

response = client.bulk(
  index: 'museums',
  refresh: true,
  body: [
    {
      index: {
        _id: 1
      }
    },
    {
      location: 'POINT (4.912350 52.374081)',
      name: 'NEMO Science Museum'
    },
    {
      index: {
        _id: 2
      }
    },
    {
      location: 'POINT (4.901618 52.369219)',
      name: 'Museum Het Rembrandthuis'
    },
    {
      index: {
        _id: 3
      }
    },
    {
      location: 'POINT (4.914722 52.371667)',
      name: 'Nederlands Scheepvaartmuseum'
    },
    {
      index: {
        _id: 4
      }
    },
    {
      location: 'POINT (4.405200 51.222900)',
      name: 'Letterenhuis'
    },
    {
      index: {
        _id: 5
      }
    },
    {
      location: 'POINT (2.336389 48.861111)',
      name: 'Musée du Louvre'
    },
    {
      index: {
        _id: 6
      }
    },
    {
      location: 'POINT (2.327000 48.860000)',
      name: "Musée d'Orsay"
    }
  ]
)
puts response

response = client.search(
  index: 'museums',
  size: 0,
  body: {
    aggregations: {
      "large-grid": {
        geohash_grid: {
          field: 'location',
          precision: 3
        }
      }
    }
  }
)
puts response
PUT /museums
{
  "mappings": {
    "properties": {
      "location": {
        "type": "geo_point"
      }
    }
  }
}

POST /museums/_bulk?refresh
{"index":{"_id":1}}
{"location": "POINT (4.912350 52.374081)", "name": "NEMO Science Museum"}
{"index":{"_id":2}}
{"location": "POINT (4.901618 52.369219)", "name": "Museum Het Rembrandthuis"}
{"index":{"_id":3}}
{"location": "POINT (4.914722 52.371667)", "name": "Nederlands Scheepvaartmuseum"}
{"index":{"_id":4}}
{"location": "POINT (4.405200 51.222900)", "name": "Letterenhuis"}
{"index":{"_id":5}}
{"location": "POINT (2.336389 48.861111)", "name": "Musée du Louvre"}
{"index":{"_id":6}}
{"location": "POINT (2.327000 48.860000)", "name": "Musée d'Orsay"}

POST /museums/_search?size=0
{
  "aggregations": {
    "large-grid": {
      "geohash_grid": {
        "field": "location",
        "precision": 3
      }
    }
  }
}

Response:

{
  ...
  "aggregations": {
  "large-grid": {
    "buckets": [
      {
        "key": "u17",
        "doc_count": 3
      },
      {
        "key": "u09",
        "doc_count": 2
      },
      {
        "key": "u15",
        "doc_count": 1
      }
    ]
  }
}
}

High-precision requestsedit

When requesting detailed buckets (typically for displaying a "zoomed in" map) a filter like geo_bounding_box should be applied to narrow the subject area otherwise potentially millions of buckets will be created and returned.

response = client.search(
  index: 'museums',
  size: 0,
  body: {
    aggregations: {
      "zoomed-in": {
        filter: {
          geo_bounding_box: {
            location: {
              top_left: 'POINT (4.9 52.4)',
              bottom_right: 'POINT (5.0 52.3)'
            }
          }
        },
        aggregations: {
          "zoom1": {
            geohash_grid: {
              field: 'location',
              precision: 8
            }
          }
        }
      }
    }
  }
)
puts response
POST /museums/_search?size=0
{
  "aggregations": {
    "zoomed-in": {
      "filter": {
        "geo_bounding_box": {
          "location": {
            "top_left": "POINT (4.9 52.4)",
            "bottom_right": "POINT (5.0 52.3)"
          }
        }
      },
      "aggregations": {
        "zoom1": {
          "geohash_grid": {
            "field": "location",
            "precision": 8
          }
        }
      }
    }
  }
}

The geohashes returned by the geohash_grid aggregation can be also used for zooming in. To zoom into the first geohash u17 returned in the previous example, it should be specified as both top_left and bottom_right corner:

response = client.search(
  index: 'museums',
  size: 0,
  body: {
    aggregations: {
      "zoomed-in": {
        filter: {
          geo_bounding_box: {
            location: {
              top_left: 'u17',
              bottom_right: 'u17'
            }
          }
        },
        aggregations: {
          "zoom1": {
            geohash_grid: {
              field: 'location',
              precision: 8
            }
          }
        }
      }
    }
  }
)
puts response
POST /museums/_search?size=0
{
  "aggregations": {
    "zoomed-in": {
      "filter": {
        "geo_bounding_box": {
          "location": {
            "top_left": "u17",
            "bottom_right": "u17"
          }
        }
      },
      "aggregations": {
        "zoom1": {
          "geohash_grid": {
            "field": "location",
            "precision": 8
          }
        }
      }
    }
  }
}
{
  ...
  "aggregations": {
    "zoomed-in": {
      "doc_count": 3,
      "zoom1": {
        "buckets": [
          {
            "key": "u173zy3j",
            "doc_count": 1
          },
          {
            "key": "u173zvfz",
            "doc_count": 1
          },
          {
            "key": "u173zt90",
            "doc_count": 1
          }
        ]
      }
    }
  }
}

For "zooming in" on the system that don’t support geohashes, the bucket keys should be translated into bounding boxes using one of available geohash libraries. For example, for javascript the node-geohash library can be used:

var geohash = require('ngeohash');

// bbox will contain [ 52.03125, 4.21875, 53.4375, 5.625 ]
//                   [   minlat,  minlon,  maxlat, maxlon]
var bbox = geohash.decode_bbox('u17');

Requests with additional bounding box filteringedit

The geohash_grid aggregation supports an optional bounds parameter that restricts the cells considered to those that intersects the bounds provided. The bounds parameter accepts the bounding box in all the same accepted formats of the bounds specified in the Geo Bounding Box Query. This bounding box can be used with or without an additional geo_bounding_box query filtering the points prior to aggregating. It is an independent bounding box that can intersect with, be equal to, or be disjoint to any additional geo_bounding_box queries defined in the context of the aggregation.

response = client.search(
  index: 'museums',
  size: 0,
  body: {
    aggregations: {
      "tiles-in-bounds": {
        geohash_grid: {
          field: 'location',
          precision: 8,
          bounds: {
            top_left: 'POINT (4.21875 53.4375)',
            bottom_right: 'POINT (5.625 52.03125)'
          }
        }
      }
    }
  }
)
puts response
POST /museums/_search?size=0
{
  "aggregations": {
    "tiles-in-bounds": {
      "geohash_grid": {
        "field": "location",
        "precision": 8,
        "bounds": {
          "top_left": "POINT (4.21875 53.4375)",
          "bottom_right": "POINT (5.625 52.03125)"
        }
      }
    }
  }
}
{
  ...
  "aggregations": {
    "tiles-in-bounds": {
      "buckets": [
        {
          "key": "u173zy3j",
          "doc_count": 1
        },
        {
          "key": "u173zvfz",
          "doc_count": 1
        },
        {
          "key": "u173zt90",
          "doc_count": 1
        }
      ]
    }
  }
}

Cell dimensions at the equatoredit

The table below shows the metric dimensions for cells covered by various string lengths of geohash. Cell dimensions vary with latitude and so the table is for the worst-case scenario at the equator.

GeoHash length

Area width x height

1

5,009.4km x 4,992.6km

2

1,252.3km x 624.1km

3

156.5km x 156km

4

39.1km x 19.5km

5

4.9km x 4.9km

6

1.2km x 609.4m

7

152.9m x 152.4m

8

38.2m x 19m

9

4.8m x 4.8m

10

1.2m x 59.5cm

11

14.9cm x 14.9cm

12

3.7cm x 1.9cm

Aggregating geo_shape fieldsedit

Aggregating on Geoshape fields works just as it does for points, except that a single shape can be counted for in multiple tiles. A shape will contribute to the count of matching values if any part of its shape intersects with that tile. Below is an image that demonstrates this:

geoshape grid

Optionsedit

field

Mandatory. Field containing indexed geo-point or geo-shape values. Must be explicitly mapped as a geo_point or a geo_shape field. If the field contains an array, geohash_grid aggregates all array values.

precision

Optional. The string length of the geohashes used to define cells/buckets in the results. Defaults to 5. The precision can either be defined in terms of the integer precision levels mentioned above. Values outside of [1,12] will be rejected. Alternatively, the precision level can be approximated from a distance measure like "1km", "10m". The precision level is calculate such that cells will not exceed the specified size (diagonal) of the required precision. When this would lead to precision levels higher than the supported 12 levels, (e.g. for distances <5.6cm) the value is rejected.

bounds

Optional. The bounding box to filter the points in the bucket.

size

Optional. The maximum number of geohash buckets to return (defaults to 10,000). When results are trimmed, buckets are prioritised based on the volumes of documents they contain.

shard_size

Optional. To allow for more accurate counting of the top cells returned in the final result the aggregation defaults to returning max(10,(size x number-of-shards)) buckets from each shard. If this heuristic is undesirable, the number considered from each shard can be over-ridden using this parameter.