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# Document Indexes
## Overview
An index can be thought of as a collection of _Documents_, and represents the largest granularity of data grouping in the store.
The first step in persisting documents via the _Search Data Service_ is to create the _Index_ into which we will put the documents.
This is where we define the structure of the _Documents_ that we will be storing in our _Index_, including how we want the data in our documents to be analyzed and indexed so that they can be queried for in interesting and useful ways.
## Syntax
When we create an _Index_ we need to define the structure of the _Documents_ that we will be storing in it. Specifically, we must enumerate the _Fields_ that make up the _Document_, the type of data we expect to be stored in each _Field_, and how we want that data to be indexed by the back end document store.
We express this as a JSON structure, enumerating the _Fields_ in our document, where each _Field_ is expressed as a JSON object which conforms to the following schema:
{
"name": {"type": "string" },
"data-type": {"type": "string" },
"format": {"type": "string" },
"searchable": {"type": "boolean"},
"search-analyzer": {"type": "string" },
"index-analyzer": {"type": "string" }
}
Where,
name = An arbitrary label to assign to the _Index_
data-type = One of: string, date, long, double, boolean, ip, or nested*
format = For 'date' type fields, the date format string to use when persisting the field.
searchable = true - field will be indexed,
false - field will not be indexed
search-analyzer = Default analyzer to use for queries if one is not specified as part of the query
One of: whitespace or ngram.
index-analyser = Analyzer to use for this field when indexing documents being persisted to the Index
One of: whitespace or ngram.
\* **Nested** fields:
If the _data-type_ is specified as _nested_, then this indicates that the contents of the field is itself a set of document fields. In this case, the _Field_ definition should contain an additional entry named _sub-fields_, which is a JSON array containing the definitions of the sub-fields.
**Example - A simple document definition which includes a 'date' type field.**
_Take note of the following:_
* For our 'BirthDate' field, which is a date, we also specify the format string to use when storing the field's contents.
{
"fields": [
{"name": "FirstName", "data-type": "string"},
{"name": "LastName", "data-type": "string"},
{"name": "BirthDate", "data-type": "date", "format": "MMM d y HH:m:s"}
]
}
**Example - An example document definition containing nested sub-fields.**
_Take note of the following:_
* It is perfectly valid for a nested field to itself contain nested fields
* For the _Tracks.Title_ field, we are specifying that the _whitespace_ analyzer should be applied for both indexing and queries.
{
"fields": [
{"name": "Album", "data-type": "string"},
{"name": "Group", "data-type": "string"},
{"name": "Tracks", "data-type": "nested", "sub-fields": [
{"name": "Title", "data-type": "string", "index-analyzer": "whitespace", "search-analyzer": "whitespace"},
{"name": "Length", "data-type": "long"}
]},
{"name": "BandMembers", "data-type": "nested", "sub-fields": [
{"name": "FirstName", "data-type": "string"},
{"name": "LastName", "data-type": "string"},
{"name": "Address", "data-type": "nested", "sub-fields": [
{"name": "Street", "data-type": "string"},
{"name": "City", "data-type": "string"},
{"name": "Country", "data-type": "string"}
]}
]}
]
}
## API
### Create Index
Define a new _Index_ in the _Search Data Service_.
---
**URL**
https://{host}:9509/services/search-data-service/v1/search/indexes/{index}/
**Method**
PUT
**URL Params**
index - The name to assign to the document index we are creating.
**Request Header**
Accept = application/json
X-TransactionId = Unique id set by client (for logging purposes)
X-FromAppId = Application identifier (for logging purposes)
Content-Type = application/json
**Request Payload**
JSON format document structure for this index (see Syntax Section)
**Success Response**
Code: 201
Header(s): None
Body: JSON structure containing the URL for the created Index
Example:
{"url": "indexes/myindex"}
**Error Response**
400 - Bad Request
403 - Unauthorized
500 - Internal Error
---
### Delete Index
Remove an existing _Index_ from the _Search Data Service_.
Note that this results in the removal of all _Documents_ that are stored in the _Index_ at the time that the DELETE operation occurs.
---
**URL**
https://{host}:9509/services/search-data-service/v1/search/indexes/{index}/
**Method**
DELETE
**URL Params**
index - The name to assign to the document index we are creating.
**Request Header**
Accept = application/json
X-TransactionId = Unique id set by client (for logging purposes)
X-FromAppId = Application identifier (for logging purposes)
Content-Type = application/json
**Request Payload**
None
**Success Response**
Code: 201
Header(s): None
Body: JSON structure containing the URL for the created Index
Example:
{"url": "indexes/myindex"}
**Error Response**
400 - Bad Request
403 - Unauthorized
500 - Internal Error
---
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