--- layout: default title: Commands parent: PPL – Piped Processing Language grand_parent: SQL and PPL nav_order: 2 redirect_from: - /search-plugins/ppl/commands/ --- # Commands `PPL` supports all [`SQL` common]({{site.url}}{{site.baseurl}}/search-plugins/sql/functions/) functions, including [relevance search]({{site.url}}{{site.baseurl}}/search-plugins/sql/full-text/), but also introduces few more functions (called `commands`) which are available in `PPL` only. ## dedup The `dedup` (data deduplication) command removes duplicate documents defined by a field from the search result. ### Syntax ```sql dedup [int] [keepempty=] [consecutive=] ``` Field | Description | Type | Required | Default :--- | :--- |:--- |:--- |:--- `int` | Retain the specified number of duplicate events for each combination. The number must be greater than 0. If you do not specify a number, only the first occurring event is kept and all other duplicates are removed from the results. | `string` | No | 1 `keepempty` | If true, keep the document if any field in the field list has a null value or a field missing. | `nested list of objects` | No | False `consecutive` | If true, remove only consecutive events with duplicate combinations of values. | `Boolean` | No | False `field-list` | Specify a comma-delimited field list. At least one field is required. | `String` or comma-separated list of strings | Yes | - **Example 1: Dedup by one field** To remove duplicate documents with the same gender: ```sql search source=accounts | dedup gender | fields account_number, gender; ``` | account_number | gender :--- | :--- | 1 | M 13 | F **Example 2: Keep two duplicate documents** To keep two duplicate documents with the same gender: ```sql search source=accounts | dedup 2 gender | fields account_number, gender; ``` | account_number | gender :--- | :--- | 1 | M 6 | M 13 | F **Example 3: Keep or ignore an empty field by default** To keep two duplicate documents with a `null` field value: ```sql search source=accounts | dedup email keepempty=true | fields account_number, email; ``` | account_number | email :--- | :--- | 1 | amberduke@pyrami.com 6 | hattiebond@netagy.com 13 | null 18 | daleadams@boink.com To remove duplicate documents with the `null` field value: ```sql search source=accounts | dedup email | fields account_number, email; ``` | account_number | email :--- | :--- | 1 | amberduke@pyrami.com 6 | hattiebond@netagy.com 18 | daleadams@boink.com **Example 4: Dedup of consecutive documents** To remove duplicates of consecutive documents: ```sql search source=accounts | dedup gender consecutive=true | fields account_number, gender; ``` | account_number | gender :--- | :--- | 1 | M 13 | F 18 | M ### Limitations The `dedup` command is not rewritten to OpenSearch DSL, it is only executed on the coordination node. ## eval The `eval` command evaluates an expression and appends its result to the search result. ### Syntax ```sql eval = ["," = ]... ``` Field | Description | Required :--- | :--- |:--- `field` | If a field name does not exist, a new field is added. If the field name already exists, it's overwritten. | Yes `expression` | Specify any supported expression. | Yes **Example 1: Create a new field** To create a new `doubleAge` field for each document. `doubleAge` is the result of `age` multiplied by 2: ```sql search source=accounts | eval doubleAge = age * 2 | fields age, doubleAge; ``` | age | doubleAge :--- | :--- | 32 | 64 36 | 72 28 | 56 33 | 66 *Example 2*: Overwrite the existing field To overwrite the `age` field with `age` plus 1: ```sql search source=accounts | eval age = age + 1 | fields age; ``` | age :--- | | 33 | 37 | 29 | 34 **Example 3: Create a new field with a field defined with the `eval` command** To create a new field `ddAge`. `ddAge` is the result of `doubleAge` multiplied by 2, where `doubleAge` is defined in the `eval` command: ```sql search source=accounts | eval doubleAge = age * 2, ddAge = doubleAge * 2 | fields age, doubleAge, ddAge; ``` | age | doubleAge | ddAge :--- | :--- | | 32 | 64 | 128 | 36 | 72 | 144 | 28 | 56 | 112 | 33 | 66 | 132 ### Limitation The ``eval`` command is not rewritten to OpenSearch DSL, it is only executed on the coordination node. ## fields Use the `fields` command to keep or remove fields from a search result. ### Syntax ```sql fields [+|-] ``` Field | Description | Required | Default :--- | :--- |:---|:--- `index` | Plus (+) keeps only fields specified in the field list. Minus (-) removes all fields specified in the field list. | No | + `field list` | Specify a comma-delimited list of fields. | Yes | No default **Example 1: Select specified fields from result** To get `account_number`, `firstname`, and `lastname` fields from a search result: ```sql search source=accounts | fields account_number, firstname, lastname; ``` | account_number | firstname | lastname :--- | :--- | | 1 | Amber | Duke | 6 | Hattie | Bond | 13 | Nanette | Bates | 18 | Dale | Adams **Example 2: Remove specified fields from a search result** To remove the `account_number` field from the search results: ```sql search source=accounts | fields account_number, firstname, lastname | fields - account_number; ``` | firstname | lastname :--- | :--- | | Amber | Duke | Hattie | Bond | Nanette | Bates | Dale | Adams ## parse Use the `parse` command to parse a text field using regular expression and append the result to the search result. ### Syntax ```sql parse ``` Field | Description | Required :--- | :--- |:--- field | A text field. | Yes regular-expression | The regular expression used to extract new fields from the given test field. If a new field name exists, it will replace the original field. | Yes The regular expression is used to match the whole text field of each document with Java regex engine. Each named capture group in the expression will become a new ``STRING`` field. **Example 1: Create new field** The example shows how to create new field `host` for each document. `host` will be the hostname after `@` in `email` field. Parsing a null field will return an empty string. ```sql os> source=accounts | parse email '.+@(?.+)' | fields email, host ; fetched rows / total rows = 4/4 ``` | email | host :--- | :--- | | amberduke@pyrami.com | pyrami.com | hattiebond@netagy.com | netagy.com | null | null | daleadams@boink.com | boink.com *Example 2*: Override the existing field The example shows how to override the existing address field with street number removed. ```sql os> source=accounts | parse address '\d+ (?
.+)' | fields address ; fetched rows / total rows = 4/4 ``` | address :--- | | Holmes Lane | Bristol Street | Madison Street | Hutchinson Court **Example 3: Filter and sort be casted parsed field** The example shows how to sort street numbers that are higher than 500 in address field. ```sql os> source=accounts | parse address '(?\d+) (?.+)' | where cast(streetNumber as int) > 500 | sort num(streetNumber) | fields streetNumber, street ; fetched rows / total rows = 3/3 ``` | streetNumber | street :--- | :--- | | 671 | Bristol Street | 789 | Madison Street | 880 | Holmes Lane ### Limitations A few limitations exist when using the parse command: - Fields defined by parse cannot be parsed again. For example, `source=accounts | parse address '\d+ (?.+)' | parse street '\w+ (?\w+)' ;` will fail to return any expressions. - Fields defined by parse cannot be overridden with other commands. For example, when entering `source=accounts | parse address '\d+ (?.+)' | eval street='1' | where street='1' ;` `where` will not match any documents since `street` cannot be overridden. - The text field used by parse cannot be overridden. For example, when entering `source=accounts | parse address '\d+ (?.+)' | eval address='1' ;` `street` will not be parse since address is overridden. - Fields defined by parse cannot be filtered/sorted after using them in the `stats` command. For example, `source=accounts | parse email '.+@(?.+)' | stats avg(age) by host | where host=pyrami.com ;` `where` will not parse the domain listed. ## rename Use the `rename` command to rename one or more fields in the search result. ### Syntax ```sql rename AS ["," AS ]... ``` Field | Description | Required :--- | :--- |:--- `source-field` | The name of the field that you want to rename. | Yes `target-field` | The name you want to rename to. | Yes **Example 1: Rename one field** Rename the `account_number` field as `an`: ```sql search source=accounts | rename account_number as an | fields an; ``` | an :--- | | 1 | 6 | 13 | 18 **Example 2: Rename multiple fields** Rename the `account_number` field as `an` and `employer` as `emp`: ```sql search source=accounts | rename account_number as an, employer as emp | fields an, emp; ``` | an | emp :--- | :--- | | 1 | Pyrami | 6 | Netagy | 13 | Quility | 18 | null ### Limitations The `rename` command is not rewritten to OpenSearch DSL, it is only executed on the coordination node. ## sort Use the `sort` command to sort search results by a specified field. ### Syntax ```sql sort [count] <[+|-] sort-field>... ``` Field | Description | Required | Default :--- | :--- |:--- `count` | The maximum number results to return from the sorted result. If count=0, all results are returned. | No | 1000 `[+|-]` | Use plus [+] to sort by ascending order and minus [-] to sort by descending order. | No | Ascending order `sort-field` | Specify the field that you want to sort by. | Yes | - **Example 1: Sort by one field** To sort all documents by the `age` field in ascending order: ```sql search source=accounts | sort age | fields account_number, age; ``` | account_number | age | :--- | :--- | | 13 | 28 | 1 | 32 | 18 | 33 | 6 | 36 **Example 2: Sort by one field and return all results** To sort all documents by the `age` field in ascending order and specify count as 0 to get back all results: ```sql search source=accounts | sort 0 age | fields account_number, age; ``` | account_number | age | :--- | :--- | | 13 | 28 | 1 | 32 | 18 | 33 | 6 | 36 **Example 3: Sort by one field in descending order** To sort all documents by the `age` field in descending order: ```sql search source=accounts | sort - age | fields account_number, age; ``` | account_number | age | :--- | :--- | | 6 | 36 | 18 | 33 | 1 | 32 | 13 | 28 **Example 4: Specify the number of sorted documents to return** To sort all documents by the `age` field in ascending order and specify count as 2 to get back two results: ```sql search source=accounts | sort 2 age | fields account_number, age; ``` | account_number | age | :--- | :--- | | 13 | 28 | 1 | 32 **Example 5: Sort by multiple fields** To sort all documents by the `gender` field in ascending order and `age` field in descending order: ```sql search source=accounts | sort + gender, - age | fields account_number, gender, age; ``` | account_number | gender | age | :--- | :--- | :--- | | 13 | F | 28 | 6 | M | 36 | 18 | M | 33 | 1 | M | 32 ## stats Use the `stats` command to aggregate from search results. The following table lists the aggregation functions and also indicates how each one handles null or missing values: Function | NULL | MISSING :--- | :--- |:--- `COUNT` | Not counted | Not counted `SUM` | Ignore | Ignore `AVG` | Ignore | Ignore `MAX` | Ignore | Ignore `MIN` | Ignore | Ignore ### Syntax ``` stats ... [by-clause]... ``` Field | Description | Required | Default :--- | :--- |:--- `aggregation` | Specify a statistical aggregation function. The argument of this function must be a field. | Yes | 1000 `by-clause` | Specify one or more fields to group the results by. If not specified, the `stats` command returns only one row, which is the aggregation over the entire result set. | No | - **Example 1: Calculate the average value of a field** To calculate the average `age` of all documents: ```sql search source=accounts | stats avg(age); ``` | avg(age) :--- | | 32.25 **Example 2: Calculate the average value of a field by group** To calculate the average age grouped by gender: ```sql search source=accounts | stats avg(age) by gender; ``` | gender | avg(age) :--- | :--- | | F | 28.0 | M | 33.666666666666664 **Example 3: Calculate the average and sum of a field by group** To calculate the average and sum of age grouped by gender: ```sql search source=accounts | stats avg(age), sum(age) by gender; ``` | gender | avg(age) | sum(age) :--- | :--- | | F | 28 | 28 | M | 33.666666666666664 | 101 **Example 4: Calculate the maximum value of a field** To calculate the maximum age: ```sql search source=accounts | stats max(age); ``` | max(age) :--- | | 36 **Example 5: Calculate the maximum and minimum value of a field by group** To calculate the maximum and minimum age values grouped by gender: ```sql search source=accounts | stats max(age), min(age) by gender; ``` | gender | min(age) | max(age) :--- | :--- | :--- | | F | 28 | 28 | M | 32 | 36 ## where Use the `where` command with a bool expression to filter the search result. The `where` command only returns the result when the bool expression evaluates to true. ### Syntax ```sql where ``` Field | Description | Required :--- | :--- |:--- `bool-expression` | An expression that evaluates to a boolean value. | No **Example: Filter result set with a condition** To get all documents from the `accounts` index where `account_number` is 1 or gender is `F`: ```sql search source=accounts | where account_number=1 or gender=\"F\" | fields account_number, gender; ``` | account_number | gender :--- | :--- | | 1 | M | 13 | F ## head Use the `head` command to return the first N number of results in a specified search order. ### Syntax ```sql head [N] ``` Field | Description | Required | Default :--- | :--- |:--- `N` | Specify the number of results to return. | No | 10 **Example 1: Get the first 10 results** To get the first 10 results: ```sql search source=accounts | fields firstname, age | head; ``` | firstname | age :--- | :--- | | Amber | 32 | Hattie | 36 | Nanette | 28 **Example 2: Get the first N results** To get the first two results: ```sql search source=accounts | fields firstname, age | head 2; ``` | firstname | age :--- | :--- | | Amber | 32 | Hattie | 36 ### Limitations The `head` command is not rewritten to OpenSearch DSL, it is only executed on the coordination node. ## rare Use the `rare` command to find the least common values of all fields in a field list. A maximum of 10 results are returned for each distinct set of values of the group-by fields. ### Syntax ```sql rare [by-clause] ``` Field | Description | Required :--- | :--- |:--- `field-list` | Specify a comma-delimited list of field names. | No `by-clause` | Specify one or more fields to group the results by. | No **Example 1: Find the least common values in a field** To find the least common values of gender: ```sql search source=accounts | rare gender; ``` | gender :--- | | F | M **Example 2: Find the least common values grouped by gender** To find the least common age grouped by gender: ```sql search source=accounts | rare age by gender; ``` | gender | age :--- | :--- | | F | 28 | M | 32 | M | 33 ### Limitations The `rare` command is not rewritten to OpenSearch DSL, it is only executed on the coordination node. ## top {#top-command} Use the `top` command to find the most common values of all fields in the field list. ### Syntax ```sql top [N] [by-clause] ``` Field | Description | Default :--- | :--- |:--- `N` | Specify the number of results to return. | 10 `field-list` | Specify a comma-delimited list of field names. | - `by-clause` | Specify one or more fields to group the results by. | - **Example 1: Find the most common values in a field** To find the most common genders: ```sql search source=accounts | top gender; ``` | gender :--- | | M | F **Example 2: Find the most common value in a field** To find the most common gender: ```sql search source=accounts | top 1 gender; ``` | gender :--- | | M **Example 3: Find the most common values grouped by gender** To find the most common age grouped by gender: ```sql search source=accounts | top 1 age by gender; ``` | gender | age :--- | :--- | | F | 28 | M | 32 ### Limitations The `top` command is not rewritten to OpenSearch DSL, it is only executed on the coordination node. ## ad The `ad` command applies the Random Cut Forest (RCF) algorithm in the [ML Commons plugin]({{site.url}}{{site.baseurl}}/ml-commons-plugin/index/) on the search result returned by a PPL command. Based on the input, the plugin uses two types of RCF algorithms: fixed in time RCF for processing time-series data and batch RCF for processing non-time-series data. ### Syntax: Fixed In Time RCF For Time-series Data Command ```sql ad ``` Field | Description | Required :--- | :--- |:--- `shingle_size` | A consecutive sequence of the most recent records. The default value is 8. | No `time_decay` | Specifies how much of the recent past to consider when computing an anomaly score. The default value is 0.001. | No `time_field` | Specifies the time filed for RCF to use as time-series data. Must be either a long value, such as the timestamp in miliseconds, or a string value in "yyyy-MM-dd HH:mm:ss".| Yes ### Syntax: Batch RCF for Non-time-series Data Command ```sql ad ``` Field | Description | Required :--- | :--- |:--- `shingle_size` | A consecutive sequence of the most recent records. The default value is 8. | No `time_decay` | Specifies how much of the recent past to consider when computing an anomaly score. The default value is 0.001. | No **Example 1: Detecting events in New York City from taxi ridership data with time-series data** The example trains a RCF model and use the model to detect anomalies in the time-series ridership data. PPL query: ```sql os> source=nyc_taxi | fields value, timestamp | AD time_field='timestamp' | where value=10844.0 ``` value | timestamp | score | anomaly_grade :--- | :--- |:--- | :--- 10844.0 | 1404172800000 | 0.0 | 0.0 **Example 2: Detecting events in New York City from taxi ridership data with non-time-series data** PPL query: ```sql os> source=nyc_taxi | fields value | AD | where value=10844.0 ``` value | score | anomalous :--- | :--- |:--- | 10844.0 | 0.0 | false ## kmeans The kmeans command applies the ML Commons plugin's kmeans algorithm to the provided PPL command's search results. ### Syntax ```sql kmeans ``` For `cluster-number`, enter the number of clusters you want to group your data points into. **Example: Group Iris data** The example shows how to classify three Iris species (Iris setosa, Iris virginica and Iris versicolor) based on the combination of four features measured from each sample: the length and the width of the sepals and petals. PPL query: ```sql os> source=iris_data | fields sepal_length_in_cm, sepal_width_in_cm, petal_length_in_cm, petal_width_in_cm | kmeans 3 ``` sepal_length_in_cm | sepal_width_in_cm | petal_length_in_cm | petal_width_in_cm | ClusterID :--- | :--- |:--- | :--- | :--- | 5.1 | 3.5 | 1.4 | 0.2 | 1 | 5.6 | 3.0 | 4.1 | 1.3 | 0 | 6.7 | 2.5 | 5.8 | 1.8 | 2