- Elasticsearch Guide: other versions:
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path.data
striping - Mapping changes
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cat
changes - Java API changes
- Breaking changes in 2.0
- API Conventions
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- Date Histogram Aggregation
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analyzer
boost
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WARNING: Version 2.0 of Elasticsearch has passed its EOL date.
This documentation is no longer being maintained and may be removed. If you are running this version, we strongly advise you to upgrade. For the latest information, see the current release documentation.
Date Histogram Aggregation
editDate Histogram Aggregation
editA multi-bucket aggregation similar to the histogram except it can
only be applied on date values. Since dates are represented in elasticsearch internally as long values, it is possible
to use the normal histogram
on dates as well, though accuracy will be compromised. The reason for this is in the fact
that time based intervals are not fixed (think of leap years and on the number of days in a month). For this reason,
we need special support for time based data. From a functionality perspective, this histogram supports the same features
as the normal histogram. The main difference is that the interval can be specified by date/time expressions.
Requesting bucket intervals of a month.
{ "aggs" : { "articles_over_time" : { "date_histogram" : { "field" : "date", "interval" : "month" } } } }
Available expressions for interval: year
, quarter
, month
, week
, day
, hour
, minute
, second
Fractional values are allowed for seconds, minutes, hours, days and weeks. For example 1.5 hours:
{ "aggs" : { "articles_over_time" : { "date_histogram" : { "field" : "date", "interval" : "1.5h" } } } }
See Time units for accepted abbreviations.
Keys
editInternally, a date is represented as a 64 bit number representing a timestamp
in milliseconds-since-the-epoch. These timestamps are returned as the bucket
key
s. The key_as_string
is the same timestamp converted to a formatted
date string using the format specified with the format
parameter:
If no format
is specified, then it will use the first date
format specified in the field mapping.
{ "aggs" : { "articles_over_time" : { "date_histogram" : { "field" : "date", "interval" : "1M", "format" : "yyyy-MM-dd" } } } }
Supports expressive date format pattern |
Response:
{ "aggregations": { "articles_over_time": { "buckets": [ { "key_as_string": "2013-02-02", "key": 1328140800000, "doc_count": 1 }, { "key_as_string": "2013-03-02", "key": 1330646400000, "doc_count": 2 }, ... ] } } }
Time Zone
editDate-times are stored in Elasticsearch in UTC. By default, all bucketing and
rounding is also done in UTC. The time_zone
parameter can be used to indicate
that bucketing should use a different time zone.
Time zones may either be specified as an ISO 8601 UTC offset (e.g. +01:00
or
-08:00
) or as a timezone id, an identifier used in the TZ database like
America/Los_Angeles
.
Consider the following example:
PUT my_index/log/1 { "date": "2015-10-01T00:30:00Z" } PUT my_index/log/2 { "date": "2015-10-01T01:30:00Z" } GET my_index/_search?size=0 { "aggs": { "by_day": { "date_histogram": { "field": "date", "interval": "day" } } } }
UTC is used if no time zone is specified, which would result in both of these documents being placed into the same day bucket, which starts at midnight UTC on 1 October 2015:
"aggregations": { "by_day": { "buckets": [ { "key_as_string": "2015-10-01T00:00:00.000Z", "key": 1443657600000, "doc_count": 2 } ] } }
If a time_zone
of -01:00
is specified, then midnight starts at one hour before
midnight UTC:
GET my_index/_search?size=0 { "aggs": { "by_day": { "date_histogram": { "field": "date", "interval": "day", "time_zone": "-01:00" } } } }
Now the first document falls into the bucket for 30 September 2015, while the second document falls into the bucket for 1 October 2015:
Offset
editThe offset
parameter is used to change the start value of each bucket by the
specified positive (+
) or negative offset (-
) duration, such as 1h
for
an hour, or 1M
for a month. See Time units for more possible time
duration options.
For instance, when using an interval of day
, each bucket runs from midnight
to midnight. Setting the offset
parameter to +6h
would change each bucket
to run from 6am to 6am:
PUT my_index/log/1 { "date": "2015-10-01T05:30:00Z" } PUT my_index/log/2 { "date": "2015-10-01T06:30:00Z" } GET my_index/_search?size=0 { "aggs": { "by_day": { "date_histogram": { "field": "date", "interval": "day", "offset": "+6h" } } } }
Instead of a single bucket starting at midnight, the above request groups the documents into buckets starting at 6am:
"aggregations": { "by_day": { "buckets": [ { "key_as_string": "2015-09-30T06:00:00.000Z", "key": 1443592800000, "doc_count": 1 }, { "key_as_string": "2015-10-01T06:00:00.000Z", "key": 1443679200000, "doc_count": 1 } ] } }
The start offset
of each bucket is calculated after the time_zone
adjustments have been made.
Scripts
editLike with the normal histogram, both document level scripts and
value level scripts are supported. It is also possible to control the order of the returned buckets using the order
settings and filter the returned buckets based on a min_doc_count
setting (by default all buckets between the first
bucket that matches documents and the last one are returned). This histogram also supports the extended_bounds
setting, which enables extending the bounds of the histogram beyond the data itself (to read more on why you’d want to
do that please refer to the explanation here).
Missing value
editThe missing
parameter defines how documents that are missing a value should be treated.
By default they will be ignored but it is also possible to treat them as if they
had a value.
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