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This documentation describes using the kv
processor in OpenSearch ingest pipelines. Consider using the Data Prepper key_value
processor, which runs on the OpenSearch cluster, if your use case involves large or complex datasets.
KV processor
The kv
processor automatically extracts specific event fields or messages that are in a key=value
format. This structured format organizes your data by grouping it together based on keys and values. It’s helpful for analyzing, visualizing, and using data, such as user behavior analytics, performance optimizations, or security investigations.
Example
The following is the syntax for the kv
processor:
{
"kv": {
"field": "message",
"field_split": " ",
"value_split": " "
}
}
Configuration parameters
The following table lists the required and optional parameters for the kv
processor.
Parameter | Required/Optional | Description |
field | Required | The name of the field containing the data to be parsed. |
field_split | Required | The regex pattern for key-value pair splitting. |
value_split | Required | The regex pattern for splitting the key from the value within a key-value pair, for example, equal sign = or colon : . |
exclude_keys | Optional | The keys to exclude from the document. Default is null . |
include_keys | Optional | The keys for filtering and inserting. Default is to include all keys. |
prefix | Optional | The prefix to add to the extracted keys. Default is null . |
strip_brackets | Optional | If set to true , strips brackets (() , <>, or [] ) and quotes (' or " ) from extracted values. Default is false . |
trim_key | Optional | The string of characters to trim from the extracted keys. |
trim value | Optional | The string of characters to trim from the extracted values. |
description | Optional | A brief description of the processor. |
if | Optional | A condition for running the processor. |
ignore_failure | Optional | If set to true , failures are ignored. Default is false . |
on_failure | Optional | A list of processors to run if the processor fails. |
ignore_missing | Optional | Specifies whether the processor should ignore documents that do not contain the specified field. Default is false . |
tag | Optional | An identifier tag for the processor. Useful for debugging in order to distinguish between processors of the same type. |
target_field | Optional | The name of the field in which to insert the extracted keys. Default is null . |
Using the processor
Follow these steps to use the processor in a pipeline.
Step 1: Create a pipeline
The following query creates a pipeline, named kv-pipeline
, that uses the kv
processor to extract the message
field of a document:
PUT _ingest/pipeline/kv-pipeline
{
"description" : "Pipeline that extracts user profile data",
"processors" : [
{
"kv" : {
"field" : "message",
"field_split": " ",
"value_split": "="
}
}
]
}
Step 2 (Optional): Test the pipeline
It is recommended that you test your pipeline before you ingest documents.
To test the pipeline, run the following query:
POST _ingest/pipeline/kv-pipeline/_simulate
```json
{
"docs": [
{
"_index": "testindex1",
"_id": "1",
"_source":{
"message": "goodbye=everybody hello=world"
}
}
]
}
Response
The following example response confirms that the pipeline is working as expected:
{
"docs": [
{
"doc": {
"_index": "testindex1",
"_id": "1",
"_source": {
"hello": "world",
"message": "goodbye=everybody hello=world",
"goodbye": "everybody"
},
"_ingest": {
"timestamp": "2023-12-06T09:59:21.823292Z"
}
}
}
]
}
Step 3: Ingest a document
The following query ingests a document into an index named testindex1
:
PUT testindex1/_doc/1?pipeline=kv-pipeline
```json
{
"message": "goodbye=everybody hello=world"
}
Step 4 (Optional): Retrieve the document
To retrieve the document, run the following query:
GET testindex1/_doc/1