--- navigation_title: "Percentile ranks" mapped_pages: - https://www.elastic.co/guide/en/elasticsearch/reference/current/search-aggregations-metrics-percentile-rank-aggregation.html --- # Percentile ranks aggregation [search-aggregations-metrics-percentile-rank-aggregation] A `multi-value` metrics aggregation that calculates one or more percentile ranks over numeric values extracted from the aggregated documents. These values can be extracted from specific numeric or [histogram fields](/reference/elasticsearch/mapping-reference/histogram.md) in the documents. ::::{note} Please see [Percentiles are (usually) approximate](/reference/aggregations/search-aggregations-metrics-percentile-aggregation.md#search-aggregations-metrics-percentile-aggregation-approximation), [Compression](/reference/aggregations/search-aggregations-metrics-percentile-aggregation.md#search-aggregations-metrics-percentile-aggregation-compression) and [Execution hint](/reference/aggregations/search-aggregations-metrics-percentile-aggregation.md#search-aggregations-metrics-percentile-aggregation-execution-hint) for advice regarding approximation, performance and memory use of the percentile ranks aggregation :::: Percentile rank show the percentage of observed values which are below certain value. For example, if a value is greater than or equal to 95% of the observed values it is said to be at the 95th percentile rank. Assume your data consists of website load times. You may have a service agreement that 95% of page loads complete within 500ms and 99% of page loads complete within 600ms. Let’s look at a range of percentiles representing load time: ```console GET latency/_search { "size": 0, "aggs": { "load_time_ranks": { "percentile_ranks": { "field": "load_time", <1> "values": [ 500, 600 ] } } } } ``` 1. The field `load_time` must be a numeric field The response will look like this: ```console-result { ... "aggregations": { "load_time_ranks": { "values": { "500.0": 55.0, "600.0": 64.0 } } } } ``` From this information you can determine you are hitting the 99% load time target but not quite hitting the 95% load time target ## Keyed Response [_keyed_response_5] By default the `keyed` flag is set to `true` associates a unique string key with each bucket and returns the ranges as a hash rather than an array. Setting the `keyed` flag to `false` will disable this behavior: ```console GET latency/_search { "size": 0, "aggs": { "load_time_ranks": { "percentile_ranks": { "field": "load_time", "values": [ 500, 600 ], "keyed": false } } } } ``` Response: ```console-result { ... "aggregations": { "load_time_ranks": { "values": [ { "key": 500.0, "value": 55.0 }, { "key": 600.0, "value": 64.0 } ] } } } ``` ## Script [_script_9] If you need to run the aggregation against values that aren’t indexed, use a [runtime field](docs-content://manage-data/data-store/mapping/runtime-fields.md). For example, if our load times are in milliseconds but we want percentiles calculated in seconds: ```console GET latency/_search { "size": 0, "runtime_mappings": { "load_time.seconds": { "type": "long", "script": { "source": "emit(doc['load_time'].value / params.timeUnit)", "params": { "timeUnit": 1000 } } } }, "aggs": { "load_time_ranks": { "percentile_ranks": { "values": [ 500, 600 ], "field": "load_time.seconds" } } } } ``` ## HDR Histogram [_hdr_histogram] [HDR Histogram](https://github.com/HdrHistogram/HdrHistogram) (High Dynamic Range Histogram) is an alternative implementation that can be useful when calculating percentile ranks for latency measurements as it can be faster than the t-digest implementation with the trade-off of a larger memory footprint. This implementation maintains a fixed worse-case percentage error (specified as a number of significant digits). This means that if data is recorded with values from 1 microsecond up to 1 hour (3,600,000,000 microseconds) in a histogram set to 3 significant digits, it will maintain a value resolution of 1 microsecond for values up to 1 millisecond and 3.6 seconds (or better) for the maximum tracked value (1 hour). The HDR Histogram can be used by specifying the `hdr` object in the request: ```console GET latency/_search { "size": 0, "aggs": { "load_time_ranks": { "percentile_ranks": { "field": "load_time", "values": [ 500, 600 ], "hdr": { <1> "number_of_significant_value_digits": 3 <2> } } } } } ``` 1. `hdr` object indicates that HDR Histogram should be used to calculate the percentiles and specific settings for this algorithm can be specified inside the object 2. `number_of_significant_value_digits` specifies the resolution of values for the histogram in number of significant digits The HDRHistogram only supports positive values and will error if it is passed a negative value. It is also not a good idea to use the HDRHistogram if the range of values is unknown as this could lead to high memory usage. ## Missing value [_missing_value_13] The `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. ```console GET latency/_search { "size": 0, "aggs": { "load_time_ranks": { "percentile_ranks": { "field": "load_time", "values": [ 500, 600 ], "missing": 10 <1> } } } } ``` 1. Documents without a value in the `load_time` field will fall into the same bucket as documents that have the value `10`.