Delimited payload token filter
The older name delimited_payload_filter is deprecated and should not be used with new indices. Use delimited_payload instead.
Separates a token stream into tokens and payloads based on a specified delimiter.
For example, you can use the delimited_payload filter with a | delimiter to split the|1 quick|2 fox|3 into the tokens the, quick, and fox with respective payloads of 1, 2, and 3.
This filter uses Lucene’s DelimitedPayloadTokenFilter.
A payload is user-defined binary data associated with a token position and stored as base64-encoded bytes.
Elasticsearch does not store token payloads by default. To store payloads, you must:
- Set the
term_vectormapping parameter towith_positions_payloadsorwith_positions_offsets_payloadsfor any field storing payloads. - Use an index analyzer that includes the
delimited_payloadfilter
You can view stored payloads using the term vectors API.
The following analyze API request uses the delimited_payload filter with the default | delimiter to split the|0 brown|10 fox|5 is|0 quick|10 into tokens and payloads.
GET _analyze { "tokenizer": "whitespace", "filter": ["delimited_payload"], "text": "the|0 brown|10 fox|5 is|0 quick|10" } The filter produces the following tokens:
[ the, brown, fox, is, quick ] Note that the analyze API does not return stored payloads. For an example that includes returned payloads, see Return stored payloads.
The following create index API request uses the delimited-payload filter to configure a new custom analyzer.
PUT delimited_payload { "settings": { "analysis": { "analyzer": { "whitespace_delimited_payload": { "tokenizer": "whitespace", "filter": [ "delimited_payload" ] } } } } } delimiter- (Optional, string) Character used to separate tokens from payloads. Defaults to
|. encoding- (Optional, string) Data type for the stored payload. Valid values are:
float- (Default) Float
identity- Characters
int- Integer
To customize the delimited_payload filter, duplicate it to create the basis for a new custom token filter. You can modify the filter using its configurable parameters.
For example, the following create index API request uses a custom delimited_payload filter to configure a new custom analyzer. The custom delimited_payload filter uses the + delimiter to separate tokens from payloads. Payloads are encoded as integers.
PUT delimited_payload_example { "settings": { "analysis": { "analyzer": { "whitespace_plus_delimited": { "tokenizer": "whitespace", "filter": [ "plus_delimited" ] } }, "filter": { "plus_delimited": { "type": "delimited_payload", "delimiter": "+", "encoding": "int" } } } } } Use the create index API to create an index that:
- Includes a field that stores term vectors with payloads.
- Uses a custom index analyzer with the
delimited_payloadfilter.
PUT text_payloads { "mappings": { "properties": { "text": { "type": "text", "term_vector": "with_positions_payloads", "analyzer": "payload_delimiter" } } }, "settings": { "analysis": { "analyzer": { "payload_delimiter": { "tokenizer": "whitespace", "filter": [ "delimited_payload" ] } } } } } Add a document containing payloads to the index.
POST text_payloads/_doc/1 { "text": "the|0 brown|3 fox|4 is|0 quick|10" } Use the term vectors API to return the document’s tokens and base64-encoded payloads.
GET text_payloads/_termvectors/1 { "fields": [ "text" ], "payloads": true } The API returns the following response:
{ "_index": "text_payloads", "_id": "1", "_version": 1, "found": true, "took": 8, "term_vectors": { "text": { "field_statistics": { "sum_doc_freq": 5, "doc_count": 1, "sum_ttf": 5 }, "terms": { "brown": { "term_freq": 1, "tokens": [ { "position": 1, "payload": "QEAAAA==" } ] }, "fox": { "term_freq": 1, "tokens": [ { "position": 2, "payload": "QIAAAA==" } ] }, "is": { "term_freq": 1, "tokens": [ { "position": 3, "payload": "AAAAAA==" } ] }, "quick": { "term_freq": 1, "tokens": [ { "position": 4, "payload": "QSAAAA==" } ] }, "the": { "term_freq": 1, "tokens": [ { "position": 0, "payload": "AAAAAA==" } ] } } } } }