Attachment processor
The attachment processor lets Elasticsearch extract file attachments in common formats (such as PPT, XLS, and PDF) by using the Apache text extraction library Tika.
The source field must be a base64 encoded binary. If you do not want to incur the overhead of converting back and forth between base64, you can use the CBOR format instead of JSON and specify the field as a bytes array instead of a string representation. The processor will skip the base64 decoding then.
Name | Required | Default | Description |
---|---|---|---|
field |
yes | - | The field to get the base64 encoded field from |
target_field |
no | attachment | The field that will hold the attachment information |
indexed_chars |
no | 100000 | The number of chars being used for extraction to prevent huge fields. Use -1 for no limit. |
indexed_chars_field |
no | null |
Field name from which you can overwrite the number of chars being used for extraction. See indexed_chars . |
properties |
no | all properties | Array of properties to select to be stored. Can be content , title , name , author , keywords , date , content_type , content_length , language |
ignore_missing |
no | false |
If true and field does not exist, the processor quietly exits without modifying the document |
remove_binary |
encouraged | false |
If true , the binary field will be removed from the document. This option is not required, but setting it explicitly is encouraged, and omitting it will result in a warning. |
resource_name |
no | Field containing the name of the resource to decode. If specified, the processor passes this resource name to the underlying Tika library to enable Resource Name Based Detection. |
If attaching files to JSON documents, you must first encode the file as a base64 string. On Unix-like systems, you can do this using a base64
command:
base64 -in myfile.rtf
The command returns the base64-encoded string for the file. The following base64 string is for an .rtf
file containing the text Lorem ipsum dolor sit amet
: e1xydGYxXGFuc2kNCkxvcmVtIGlwc3VtIGRvbG9yIHNpdCBhbWV0DQpccGFyIH0=
.
Use an attachment processor to decode the string and extract the file’s properties:
PUT _ingest/pipeline/attachment
{
"description" : "Extract attachment information",
"processors" : [
{
"attachment" : {
"field" : "data",
"remove_binary": true
}
}
]
}
PUT my-index-000001/_doc/my_id?pipeline=attachment
{
"data": "e1xydGYxXGFuc2kNCkxvcmVtIGlwc3VtIGRvbG9yIHNpdCBhbWV0DQpccGFyIH0="
}
GET my-index-000001/_doc/my_id
The document’s attachment
object contains extracted properties for the file:
{
"found": true,
"_index": "my-index-000001",
"_id": "my_id",
"_version": 1,
"_seq_no": 22,
"_primary_term": 1,
"_source": {
"attachment": {
"content_type": "application/rtf",
"language": "ro",
"content": "Lorem ipsum dolor sit amet",
"content_length": 28
}
}
}
The fields which might be extracted from a document are:
content
,title
,author
,keywords
,date
,content_type
,content_length
,language
,modified
,format
,identifier
,contributor
,coverage
,modifier
,creator_tool
,publisher
,relation
,rights
,source
,type
,description
,print_date
,metadata_date
,latitude
,longitude
,altitude
,rating
,comments
To extract only certain attachment
fields, specify the properties
array:
PUT _ingest/pipeline/attachment
{
"description" : "Extract attachment information",
"processors" : [
{
"attachment" : {
"field" : "data",
"properties": [ "content", "title" ],
"remove_binary": true
}
}
]
}
Extracting contents from binary data is a resource intensive operation and consumes a lot of resources. It is highly recommended to run pipelines using this processor in a dedicated ingest node.
Keeping the binary as a field within the document might consume a lot of resources. It is highly recommended to remove that field from the document, by setting remove_binary
to true
to automatically remove the field, as in the other examples shown on this page. If you do want to keep the binary field, explicitly set remove_binary
to false
to avoid the warning you get from omitting it:
PUT _ingest/pipeline/attachment
{
"description" : "Extract attachment information including original binary",
"processors" : [
{
"attachment" : {
"field" : "data",
"remove_binary": false
}
}
]
}
PUT my-index-000001/_doc/my_id?pipeline=attachment
{
"data": "e1xydGYxXGFuc2kNCkxvcmVtIGlwc3VtIGRvbG9yIHNpdCBhbWV0DQpccGFyIH0="
}
GET my-index-000001/_doc/my_id
The document’s _source
object includes the original binary field:
{
"found": true,
"_index": "my-index-000001",
"_id": "my_id",
"_version": 1,
"_seq_no": 22,
"_primary_term": 1,
"_source": {
"data": "e1xydGYxXGFuc2kNCkxvcmVtIGlwc3VtIGRvbG9yIHNpdCBhbWV0DQpccGFyIH0=",
"attachment": {
"content_type": "application/rtf",
"language": "ro",
"content": "Lorem ipsum dolor sit amet",
"content_length": 28
}
}
}
To avoid encoding and decoding JSON to base64, you can instead pass CBOR data to the attachment processor. For example, the following request creates the cbor-attachment
pipeline, which uses the attachment processor.
PUT _ingest/pipeline/cbor-attachment
{
"description" : "Extract attachment information",
"processors" : [
{
"attachment" : {
"field" : "data",
"remove_binary": true
}
}
]
}
The following Python script passes CBOR data to an HTTP indexing request that includes the cbor-attachment
pipeline. The HTTP request headers use a content-type
of application/cbor
.
Not all Elasticsearch clients support custom HTTP request headers.
import cbor2
import requests
file = 'my-file'
headers = {'content-type': 'application/cbor'}
with open(file, 'rb') as f:
doc = {
'data': f.read()
}
requests.put(
'http://localhost:9200/my-index-000001/_doc/my_id?pipeline=cbor-attachment',
data=cbor2.dumps(doc),
headers=headers
)
To prevent extracting too many chars and overload the node memory, the number of chars being used for extraction is limited by default to 100000
. You can change this value by setting indexed_chars
. Use -1
for no limit but ensure when setting this that your node will have enough HEAP to extract the content of very big documents.
You can also define this limit per document by extracting from a given field the limit to set. If the document has that field, it will overwrite the indexed_chars
setting. To set this field, define the indexed_chars_field
setting.
For example:
PUT _ingest/pipeline/attachment
{
"description" : "Extract attachment information",
"processors" : [
{
"attachment" : {
"field" : "data",
"indexed_chars" : 11,
"indexed_chars_field" : "max_size",
"remove_binary": true
}
}
]
}
PUT my-index-000001/_doc/my_id?pipeline=attachment
{
"data": "e1xydGYxXGFuc2kNCkxvcmVtIGlwc3VtIGRvbG9yIHNpdCBhbWV0DQpccGFyIH0="
}
GET my-index-000001/_doc/my_id
Returns this:
{
"found": true,
"_index": "my-index-000001",
"_id": "my_id",
"_version": 1,
"_seq_no": 35,
"_primary_term": 1,
"_source": {
"attachment": {
"content_type": "application/rtf",
"language": "is",
"content": "Lorem ipsum",
"content_length": 11
}
}
}
PUT _ingest/pipeline/attachment
{
"description" : "Extract attachment information",
"processors" : [
{
"attachment" : {
"field" : "data",
"indexed_chars" : 11,
"indexed_chars_field" : "max_size",
"remove_binary": true
}
}
]
}
PUT my-index-000001/_doc/my_id_2?pipeline=attachment
{
"data": "e1xydGYxXGFuc2kNCkxvcmVtIGlwc3VtIGRvbG9yIHNpdCBhbWV0DQpccGFyIH0=",
"max_size": 5
}
GET my-index-000001/_doc/my_id_2
Returns this:
{
"found": true,
"_index": "my-index-000001",
"_id": "my_id_2",
"_version": 1,
"_seq_no": 40,
"_primary_term": 1,
"_source": {
"max_size": 5,
"attachment": {
"content_type": "application/rtf",
"language": "sl",
"content": "Lorem",
"content_length": 5
}
}
}
To use the attachment processor within an array of attachments the foreach processor is required. This enables the attachment processor to be run on the individual elements of the array.
For example, given the following source:
{
"attachments" : [
{
"filename" : "ipsum.txt",
"data" : "dGhpcyBpcwpqdXN0IHNvbWUgdGV4dAo="
},
{
"filename" : "test.txt",
"data" : "VGhpcyBpcyBhIHRlc3QK"
}
]
}
In this case, we want to process the data field in each element of the attachments field and insert the properties into the document so the following foreach
processor is used:
PUT _ingest/pipeline/attachment
{
"description" : "Extract attachment information from arrays",
"processors" : [
{
"foreach": {
"field": "attachments",
"processor": {
"attachment": {
"target_field": "_ingest._value.attachment",
"field": "_ingest._value.data",
"remove_binary": true
}
}
}
}
]
}
PUT my-index-000001/_doc/my_id?pipeline=attachment
{
"attachments" : [
{
"filename" : "ipsum.txt",
"data" : "dGhpcyBpcwpqdXN0IHNvbWUgdGV4dAo="
},
{
"filename" : "test.txt",
"data" : "VGhpcyBpcyBhIHRlc3QK"
}
]
}
GET my-index-000001/_doc/my_id
Returns this:
{
"_index" : "my-index-000001",
"_id" : "my_id",
"_version" : 1,
"_seq_no" : 50,
"_primary_term" : 1,
"found" : true,
"_source" : {
"attachments" : [
{
"filename" : "ipsum.txt",
"attachment" : {
"content_type" : "text/plain; charset=ISO-8859-1",
"language" : "en",
"content" : "this is\njust some text",
"content_length" : 24
}
},
{
"filename" : "test.txt",
"attachment" : {
"content_type" : "text/plain; charset=ISO-8859-1",
"language" : "en",
"content" : "This is a test",
"content_length" : 16
}
}
]
}
}
Note that the target_field
needs to be set, otherwise the default value is used which is a top level field attachment
. The properties on this top level field will contain the value of the first attachment only. However, by specifying the target_field
on to a value on _ingest._value
it will correctly associate the properties with the correct attachment.