It is a component that allows SQL-like queries to be executed in real-time against Elasticsearch SQL Access. You can think of Elasticsearch SQL as a translator, one that understands both SQL and Elasticsearch and makes it easy to read and process data in real-time, at scale by leveraging Elasticsearch capabilities.
Advantages of Elasticsearch SQL Access
- It has native integration − Each and every query is efficiently executed against the relevant nodes according to the underlying storage.
- No external parts − No need for additional hardware, processes, runtimes or libraries to query Elasticsearch.
- Lightweight and efficient − it embraces and exposes SQL to allow proper full-text search, in real-time.
Example
PUT /schoollist/_bulk?refresh {"index":{"_id": "CBSE"}} {"name": "GleanDale", "Address": "JR. Court Lane", "start_date": "2011-06-02", "student_count": 561} {"index":{"_id": "ICSE"}} {"name": "Top-Notch", "Address": "Gachibowli Main Road", "start_date": "1989- 05-26", "student_count": 482} {"index":{"_id": "State Board"}} {"name": "Sunshine", "Address": "Main Street", "start_date": "1965-06-01", "student_count": 604}
On running the above code, we get the response as shown below −
{ "took" : 277, "errors" : false, "items" : [ { "index" : { "_index" : "schoollist", "_type" : "_doc", "_id" : "CBSE", "_version" : 1, "result" : "created", "forced_refresh" : true, "_shards" : { "total" : 2, "successful" : 1, "failed" : 0 }, "_seq_no" : 0, "_primary_term" : 1, "status" : 201 } }, { "index" : { "_index" : "schoollist", "_type" : "_doc", "_id" : "ICSE", "_version" : 1, "result" : "created", "forced_refresh" : true, "_shards" : { "total" : 2, "successful" : 1, "failed" : 0 }, "_seq_no" : 1, "_primary_term" : 1, "status" : 201 } }, { "index" : { "_index" : "schoollist", "_type" : "_doc", "_id" : "State Board", "_version" : 1, "result" : "created", "forced_refresh" : true, "_shards" : { "total" : 2, "successful" : 1, "failed" : 0 }, "_seq_no" : 2, "_primary_term" : 1, "status" : 201 } } ] }
SQL Query
The following example shows how we frame the SQL query −
POST /_sql?format=txt { "query": "SELECT * FROM schoollist WHERE start_date < '2000-01-01'" }
On running the above code, we get the response as shown below −
Address | name | start_date | student_count --------------------+---------------+------------------------+--------------- Gachibowli Main Road|Top-Notch |1989-05-26T00:00:00.000Z|482 Main Street |Sunshine |1965-06-01T00:00:00.000Z|604
Note − By changing the SQL query above, you can get different result sets.
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