[role="xpack"]
[testenv="basic"]
[[search-aggregations-pipeline-normalize-aggregation]]
=== Normalize aggregation
++++
Normalize
++++
A parent pipeline aggregation which calculates the specific normalized/rescaled value for a specific bucket value.
Values that cannot be normalized, will be skipped using the <>.
==== Syntax
A `normalize` aggregation looks like this in isolation:
[source,js]
--------------------------------------------------
{
  "normalize": {
    "buckets_path": "normalized",
    "method": "percent_of_sum"
  }
}
--------------------------------------------------
// NOTCONSOLE
[[normalize_pipeline-params]]
.`normalize_pipeline` Parameters
[options="header"]
|===
|Parameter Name |Description |Required |Default Value
|`buckets_path` |The path to the buckets we wish to normalize (see <> for more details) |Required |
|`method` | The specific <> to apply | Required |
|`format` |format to apply to the output value of this aggregation |Optional |`null`
|===
==== Methods
[[normalize_pipeline-method]]
The Normalize Aggregation supports multiple methods to transform the bucket values. Each method definition will use
the following original set of bucket values as examples: `[5, 5, 10, 50, 10, 20]`.
_rescale_0_1_::
                This method rescales the data such that the minimum number is zero, and the maximum number is 1, with the rest normalized
                linearly in-between.
                x' = (x - min_x) / (max_x - min_x)
                [0, 0, .1111, 1, .1111, .3333]
_rescale_0_100_::
                This method rescales the data such that the minimum number is zero, and the maximum number is 100, with the rest normalized
                linearly in-between.
                x' = 100 * (x - min_x) / (max_x - min_x)
                [0, 0, 11.11, 100, 11.11, 33.33]
_percent_of_sum_::
                This method normalizes each value so that it represents a percentage of the total sum it attributes to.
                x' = x / sum_x
                [5%, 5%, 10%, 50%, 10%, 20%]
_mean_::
                This method normalizes such that each value is normalized by how much it differs from the average.
                x' = (x - mean_x) / (max_x - min_x)
                [4.63, 4.63, 9.63, 49.63, 9.63, 9.63, 19.63]
_zscore_::
                This method normalizes such that each value represents how far it is from the mean relative to the standard deviation
                x' = (x - mean_x) / stdev_x
                [-0.68, -0.68, -0.39, 1.94, -0.39, 0.19]
_softmax_::
                This method normalizes such that each value is exponentiated and relative to the sum of the exponents of the original values.
                x' = e^x / sum_e_x
                [2.862E-20, 2.862E-20, 4.248E-18, 0.999, 9.357E-14, 4.248E-18]
==== Example
The following snippet calculates the percent of total sales for each month:
[source,console]
--------------------------------------------------
POST /sales/_search
{
  "size": 0,
  "aggs": {
    "sales_per_month": {
      "date_histogram": {
        "field": "date",
        "calendar_interval": "month"
      },
      "aggs": {
        "sales": {
          "sum": {
            "field": "price"
          }
        },
        "percent_of_total_sales": {
          "normalize": {
            "buckets_path": "sales",          <1>
            "method": "percent_of_sum",       <2>
            "format": "00.00%"                <3>
          }
        }
      }
    }
  }
}
--------------------------------------------------
// TEST[setup:sales]
<1> `buckets_path` instructs this normalize aggregation to use the output of the `sales` aggregation for rescaling
<2> `method` sets which rescaling to apply. In this case, `percent_of_sum` will calculate the sales value as a percent of all sales
    in the parent bucket
<3> `format` influences how to format the metric as a string using Java's `DecimalFormat` pattern. In this case, multiplying by 100
    and adding a '%'
And the following may be the response:
[source,console-result]
--------------------------------------------------
{
   "took": 11,
   "timed_out": false,
   "_shards": ...,
   "hits": ...,
   "aggregations": {
      "sales_per_month": {
         "buckets": [
            {
               "key_as_string": "2015/01/01 00:00:00",
               "key": 1420070400000,
               "doc_count": 3,
               "sales": {
                  "value": 550.0
               },
               "percent_of_total_sales": {
                  "value": 0.5583756345177665,
                  "value_as_string": "55.84%"
               }
            },
            {
               "key_as_string": "2015/02/01 00:00:00",
               "key": 1422748800000,
               "doc_count": 2,
               "sales": {
                  "value": 60.0
               },
               "percent_of_total_sales": {
                  "value": 0.06091370558375635,
                  "value_as_string": "06.09%"
               }
            },
            {
               "key_as_string": "2015/03/01 00:00:00",
               "key": 1425168000000,
               "doc_count": 2,
               "sales": {
                  "value": 375.0
               },
               "percent_of_total_sales": {
                  "value": 0.38071065989847713,
                  "value_as_string": "38.07%"
               }
            }
         ]
      }
   }
}
--------------------------------------------------
// TESTRESPONSE[s/"took": 11/"took": $body.took/]
// TESTRESPONSE[s/"_shards": \.\.\./"_shards": $body._shards/]
// TESTRESPONSE[s/"hits": \.\.\./"hits": $body.hits/]