[[search-aggregations-bucket-datehistogram-aggregation]] === Date Histogram A multi-bucket aggregation similar to the <> 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 a special support for time based data. From a functionality perspective, this histogram supports the same features as the normal <>. The main difference is that the interval can be specified by date/time expressions. Requesting bucket intervals of a month. [source,js] -------------------------------------------------- { "aggs" : { "articles_over_time" : { "date_histogram" : { "field" : "date", "interval" : "month" } } } } -------------------------------------------------- fractional values are allowed, for example 1.5 hours: [source,js] -------------------------------------------------- { "aggs" : { "articles_over_time" : { "date_histogram" : { "field" : "date", "interval" : "1.5h" } } } } -------------------------------------------------- Available expressions for interval: `year`, `quarter`, `month`, `week`, `day`, `hour`, `minute`, `second` ==== Time Zone By default, times are stored as UTC milliseconds since the epoch. Thus, all computation and "bucketing" / "rounding" is done on UTC. It is possible to provide a time zone (both pre rounding, and post rounding) value, which will cause all computations to take the relevant zone into account. The time returned for each bucket/entry is milliseconds since the epoch of the provided time zone. The parameters are `pre_zone` (pre rounding based on interval) and `post_zone` (post rounding based on interval). The `time_zone` parameter simply sets the `pre_zone` parameter. By default, those are set to `UTC`. The zone value accepts either a numeric value for the hours offset, for example: `"time_zone" : -2`. It also accepts a format of hours and minutes, like `"time_zone" : "-02:30"`. Another option is to provide a time zone accepted as one of the values listed here. Lets take an example. For `2012-04-01T04:15:30Z`, with a `pre_zone` of `-08:00`. For day interval, the actual time by applying the time zone and rounding falls under `2012-03-31`, so the returned value will be (in millis) of `2012-03-31T00:00:00Z` (UTC). For hour interval, applying the time zone results in `2012-03-31T20:15:30`, rounding it results in `2012-03-31T20:00:00`, but, we want to return it in UTC (`post_zone` is not set), so we convert it back to UTC: `2012-04-01T04:00:00Z`. Note, we are consistent in the results, returning the rounded value in UTC. `post_zone` simply takes the result, and adds the relevant offset. Sometimes, we want to apply the same conversion to UTC we did above for hour also for day (and up) intervals. We can set `pre_zone_adjust_large_interval` to `true`, which will apply the same conversion done for hour interval in the example, to day and above intervals (it can be set regardless of the interval, but only kick in when using day and higher intervals). ==== Factor The date histogram works on numeric values (since time is stored in milliseconds since the epoch in UTC). But, sometimes, systems will store a different resolution (like seconds since UTC) in a numeric field. The `factor` parameter can be used to change the value in the field to milliseconds to actual do the relevant rounding, and then be applied again to get to the original unit. For example, when storing in a numeric field seconds resolution, the factor can be set to 1000. ==== Pre/Post Offset Specific offsets can be provided for pre rounding and post rounding. The `pre_offset` for pre rounding, and `post_offset` for post rounding. The format is the date time format (`1h`, `1d`, etc...). ==== Keys Since internally, dates are represented as 64bit numbers, these numbers are returned as the bucket keys (each key representing a date - milliseconds since the epoch). It is also possible to define a date format, which will result in returning the dates as formatted strings next to the numeric key values: [source,js] -------------------------------------------------- { "aggs" : { "articles_over_time" : { "date_histogram" : { "field" : "date", "interval" : "1M", "format" : "yyyy-MM-dd" <1> } } } } -------------------------------------------------- <1> Supports expressive date <> Response: [source,js] -------------------------------------------------- { "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 }, ... ] } } } -------------------------------------------------- Like with the normal <>, 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 defaults to all buckets with `min_doc_count > 0` will be returned). This histogram also supports the `extended_bounds` settings, that 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 <>.