OpenSearch/docs/reference/search/request/scroll.asciidoc

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[[search-request-scroll]]
=== Scroll
While a `search` request returns a single ``page'' of results, the `scroll`
API can be used to retrieve large numbers of results (or even all results)
from a single search request, in much the same way as you would use a cursor
on a traditional database.
Scrolling is not intended for real time user requests, but rather for
processing large amounts of data, e.g. in order to reindex the contents of one
index into a new index with a different configuration.
.Client support for scrolling and reindexing
*********************************************
Some of the officially supported clients provide helpers to assist with
scrolled searches and reindexing of documents from one index to another:
Perl::
See https://metacpan.org/pod/Search::Elasticsearch::Bulk[Search::Elasticsearch::Bulk]
and https://metacpan.org/pod/Search::Elasticsearch::Scroll[Search::Elasticsearch::Scroll]
Python::
See http://elasticsearch-py.readthedocs.org/en/master/helpers.html[elasticsearch.helpers.*]
*********************************************
NOTE: The results that are returned from a scroll request reflect the state of
the index at the time that the initial `search` request was made, like a
snapshot in time. Subsequent changes to documents (index, update or delete)
will only affect later search requests.
In order to use scrolling, the initial search request should specify the
`scroll` parameter in the query string, which tells Elasticsearch how long it
should keep the ``search context'' alive (see <<scroll-search-context>>), eg `?scroll=1m`.
[source,js]
--------------------------------------------------
POST /twitter/tweet/_search?scroll=1m
{
"size": 100,
"query": {
"match" : {
"title" : "elasticsearch"
}
}
}
--------------------------------------------------
// CONSOLE
// TEST[setup:twitter]
The result from the above request includes a `_scroll_id`, which should
be passed to the `scroll` API in order to retrieve the next batch of
results.
[source,js]
--------------------------------------------------
POST <1> /_search/scroll <2>
{
"scroll" : "1m", <3>
"scroll_id" : "DXF1ZXJ5QW5kRmV0Y2gBAAAAAAAAAD4WYm9laVYtZndUQlNsdDcwakFMNjU1QQ==" <4>
}
--------------------------------------------------
// CONSOLE
// TEST[continued s/DXF1ZXJ5QW5kRmV0Y2gBAAAAAAAAAD4WYm9laVYtZndUQlNsdDcwakFMNjU1QQ==/$body._scroll_id/]
<1> `GET` or `POST` can be used.
<2> The URL should not include the `index` or `type` name -- these
are specified in the original `search` request instead.
<3> The `scroll` parameter tells Elasticsearch to keep the search context open
for another `1m`.
<4> The `scroll_id` parameter
The `size` parameter allows you to configure the maximum number of hits to be
returned with each batch of results. Each call to the `scroll` API returns the
next batch of results until there are no more results left to return, ie the
`hits` array is empty.
IMPORTANT: The initial search request and each subsequent scroll request
returns a new `_scroll_id` -- only the most recent `_scroll_id` should be
used.
NOTE: If the request specifies aggregations, only the initial search response
will contain the aggregations results.
NOTE: Scroll requests have optimizations that make them faster when the sort
order is `_doc`. If you want to iterate over all documents regardless of the
order, this is the most efficient option:
[source,js]
--------------------------------------------------
GET /_search?scroll=1m
{
"sort": [
"_doc"
]
}
--------------------------------------------------
// CONSOLE
// TEST[setup:twitter]
[[scroll-search-context]]
==== Keeping the search context alive
The `scroll` parameter (passed to the `search` request and to every `scroll`
request) tells Elasticsearch how long it should keep the search context alive.
Its value (e.g. `1m`, see <<time-units>>) does not need to be long enough to
process all data -- it just needs to be long enough to process the previous
batch of results. Each `scroll` request (with the `scroll` parameter) sets a
new expiry time.
Normally, the background merge process optimizes the
index by merging together smaller segments to create new bigger segments, at
which time the smaller segments are deleted. This process continues during
scrolling, but an open search context prevents the old segments from being
deleted while they are still in use. This is how Elasticsearch is able to
return the results of the initial search request, regardless of subsequent
changes to documents.
TIP: Keeping older segments alive means that more file handles are needed.
Ensure that you have configured your nodes to have ample free file handles.
See <<file-descriptors>>.
You can check how many search contexts are open with the
<<cluster-nodes-stats,nodes stats API>>:
[source,js]
---------------------------------------
GET /_nodes/stats/indices/search
---------------------------------------
// CONSOLE
==== Clear scroll API
Search context are automatically removed when the `scroll` timeout has been
exceeded. However keeping scrolls open has a cost, as discussed in the
<<scroll-search-context,previous section>> so scrolls should be explicitly
cleared as soon as the scroll is not being used anymore using the
`clear-scroll` API:
[source,js]
---------------------------------------
DELETE /_search/scroll
{
"scroll_id" : ["DXF1ZXJ5QW5kRmV0Y2gBAAAAAAAAAD4WYm9laVYtZndUQlNsdDcwakFMNjU1QQ=="]
}
---------------------------------------
// CONSOLE
// TEST[catch:missing]
Multiple scroll IDs can be passed as array:
[source,js]
---------------------------------------
DELETE /_search/scroll
{
"scroll_id" : [
"DXF1ZXJ5QW5kRmV0Y2gBAAAAAAAAAD4WYm9laVYtZndUQlNsdDcwakFMNjU1QQ==",
"DnF1ZXJ5VGhlbkZldGNoBQAAAAAAAAABFmtSWWRRWUJrU2o2ZExpSGJCVmQxYUEAAAAAAAAAAxZrUllkUVlCa1NqNmRMaUhiQlZkMWFBAAAAAAAAAAIWa1JZZFFZQmtTajZkTGlIYkJWZDFhQQAAAAAAAAAFFmtSWWRRWUJrU2o2ZExpSGJCVmQxYUEAAAAAAAAABBZrUllkUVlCa1NqNmRMaUhiQlZkMWFB"
]
}
---------------------------------------
// CONSOLE
// TEST[catch:missing]
All search contexts can be cleared with the `_all` parameter:
[source,js]
---------------------------------------
DELETE /_search/scroll/_all
---------------------------------------
// CONSOLE
The `scroll_id` can also be passed as a query string parameter or in the request body.
Multiple scroll IDs can be passed as comma separated values:
[source,js]
---------------------------------------
DELETE /_search/scroll/DXF1ZXJ5QW5kRmV0Y2gBAAAAAAAAAD4WYm9laVYtZndUQlNsdDcwakFMNjU1QQ==,DnF1ZXJ5VGhlbkZldGNoBQAAAAAAAAABFmtSWWRRWUJrU2o2ZExpSGJCVmQxYUEAAAAAAAAAAxZrUllkUVlCa1NqNmRMaUhiQlZkMWFBAAAAAAAAAAIWa1JZZFFZQmtTajZkTGlIYkJWZDFhQQAAAAAAAAAFFmtSWWRRWUJrU2o2ZExpSGJCVmQxYUEAAAAAAAAABBZrUllkUVlCa1NqNmRMaUhiQlZkMWFB
---------------------------------------
// CONSOLE
// TEST[catch:missing]
[[sliced-scroll]]
==== Sliced Scroll
For scroll queries that return a lot of documents it is possible to split the scroll in multiple slices which
can be consumed independently:
[source,js]
--------------------------------------------------
GET /twitter/tweet/_search?scroll=1m
{
"slice": {
"id": 0, <1>
"max": 2 <2>
},
"query": {
"match" : {
"title" : "elasticsearch"
}
}
}
GET /twitter/tweet/_search?scroll=1m
{
"slice": {
"id": 1,
"max": 2
},
"query": {
"match" : {
"title" : "elasticsearch"
}
}
}
--------------------------------------------------
// CONSOLE
// TEST[setup:big_twitter]
<1> The id of the slice
<2> The maximum number of slices
The result from the first request returned documents that belong to the first slice (id: 0) and the result from the
second request returned documents that belong to the second slice. Since the maximum number of slices is set to 2
the union of the results of the two requests is equivalent to the results of a scroll query without slicing.
By default the splitting is done on the shards first and then locally on each shard using the _uid field
with the following formula:
`slice(doc) = floorMod(hashCode(doc._uid), max)`
For instance if the number of shards is equal to 2 and the user requested 4 slices then the slices 0 and 2 are assigned
to the first shard and the slices 1 and 3 are assigned to the second shard.
Each scroll is independent and can be processed in parallel like any scroll request.
NOTE: If the number of slices is bigger than the number of shards the slice filter is very slow on the first calls, it has a complexity of O(N) and a memory cost equals
to N bits per slice where N is the total number of documents in the shard.
After few calls the filter should be cached and subsequent calls should be faster but you should limit the number of
sliced query you perform in parallel to avoid the memory explosion.
To avoid this cost entirely it is possible to use the `doc_values` of another field to do the slicing
but the user must ensure that the field has the following properties:
* The field is numeric.
* `doc_values` are enabled on that field
* Every document should contain a single value. If a document has multiple values for the specified field, the first value is used.
* The value for each document should be set once when the document is created and never updated. This ensures that each
slice gets deterministic results.
* The cardinality of the field should be high. This ensures that each slice gets approximately the same amount of documents.
[source,js]
--------------------------------------------------
GET /twitter/tweet/_search?scroll=1m
{
"slice": {
"field": "date",
"id": 0,
"max": 10
},
"query": {
"match" : {
"title" : "elasticsearch"
}
}
}
--------------------------------------------------
// CONSOLE
// TEST[setup:big_twitter]
For append only time-based indices, the `timestamp` field can be used safely.
NOTE: By default the maximum number of slices allowed per scroll is limited to 1024.
You can update the `index.max_slices_per_scroll` index setting to bypass this limit.