I have a query returning ~200K hits from 7 different indices distributed across our cluster. I process my results as:

while (true) {
    scrollResp = client.prepareSearchScroll(scrollResp.getScrollId()).setScroll(new TimeValue(600000)).execute().actionGet();

    for (SearchHit hit : scrollResp.getHits()){
            //process hit}

    //Break condition: No hits are returned
    if (scrollResp.hits().hits().length == 0) {

I'm noticing that the client.prepareSearchScroll line can hang for quite some time before returning the next set of search hits. This seems to get worse the longer I run the code for.

My setup for the search is:

SearchRequestBuilder searchBuilder = client.prepareSearch( index_names )
    .setScroll(new TimeValue(60000)) //TimeValue?
    .setQuery( qb )
    .setFrom(0) //?
    .setSize(5000); //number of jsons to get in each search, what should it be? I have no idea.
    SearchResponse scrollResp = searchBuilder.execute().actionGet();

Is it expected that scanning and scrolling just takes a long time when examining many results? I'm very new to Elastic Search so keep in mind that I may be missing something very obvious.

My query:

QueryBuilder qb = QueryBuilders.boolQuery().must(QueryBuilders.termsQuery("tweet", interesting_words));

4 Answers 4


.setSize(5000) means that each client.prepareSearchScroll call is going to retrieve 5000 records per shard. You are requesting back source, and if your records are big, assembling 5000 records in memory might take awhile. I would suggest trying a smaller number. Try 100 and 10 to see if you are getting a better performance.

.setFrom(0) is not necessary.

  • Yes, this definitely makes each scroll response faster. Now, are many smaller scrolls faster than one big scroll?
    – dranxo
    Nov 20, 2012 at 21:25
  • It depends on your setup. With very small batch size you get overhead of network communication, with very large batch size you get overhead of allocating large chunks of memory to collect and keep entire batch in memory. The sweet spot is somewhere in the middle, but you will have to figure it out yourself by experimenting with different batch sizes.
    – imotov
    Nov 20, 2012 at 21:50
  • Ok good, I will try that. Another thing I've noticed is that the time it takes to scroll is not constant. After a while, the scrolls take much longer. I suspect I am filling up memory somewhere. I don't need the results after I process them, is there some sort of memory flush I should be doing in my loop?
    – dranxo
    Nov 20, 2012 at 21:58
  • What kind of query are you using?
    – imotov
    Nov 20, 2012 at 22:46
  • 2
    Regarding the question is many batches faster than large batches, I am experimenting with this right now and have found in my application that I can complete the scroll in 30s with a size of 10. If I increase the size to 100, the total time goes to 300s. Very odd IMO but sharing my experience for others to see.
    – AaronM
    Jun 18, 2014 at 22:37

I'm going to add another answer here, because I was very puzzled by this behaviour and it took me a long time to find the answer in the comments by @AaronM

This applies to ES 1.7.2, using the java API.

I was scrolling/scanning an index of 500m records, but with a query that returns about 400k rows.

I started off with a scroll size of 1,000 which seemed to me a reasonable trade-off in terms of network versus CPU.

This query ran terribly slowly, taking about 30 minutes to complete, with very long pauses between fetches from the cursor.

I worried that maybe it was just the query I was running and did not believe that decreasing the scroll size could help, as 1000 seemed tiny.

However, seeing AaronM's comment above, I tried a scroll size of 10.

The whole job completed in 30 seconds (and this was whether I had restarted ES or not, so presumably nothing to do with caching) - a speed-up of about 60x!!!

So if you're having performance problems with scroll/scan, I highly recommend trying decreasing the scroll size. I couldn't find much about this on the internet, so posted this here.

  • 1
    More you decrease scroll size, number of queries executed in total will be increased. Suppose your search result has 50K total hits and you keep scroll size to 10000 then query is executed 5 times which is less than 5000 times for scroll size 10. Query execution time has usually major part in total performance. So decreasing scroll size is not recommended. And scroll API is mainly for more than 10000 search results where you can paginate results.
    – Rohanil
    Sep 25, 2017 at 12:02
  • Query data node not client node or master node
  • Select the fields you need with filter_pathproperty
  • Set scroll size according your document size, there is no a magic rule, you must set value and try, and so on
  • Monitor your network band width
  • If it's not enough, let's go for some multi-threads stuff:

Think that elasticsearch index is composed of multiple shards. This design means you can parallelize operation.

Let's say your index has 3 shards, and your cluster 3 nodes (good practice to have more nodes than shards by index).

You could run 3 Java "workers", in a separate thread each, that will search scroll a different shard and node, and use a queue to "centralize" the results.

This way, you will have a good performance!

This is what the elasticsearch-hadoop library does.

To retrieve shards/nodes details about an index, use the https://www.elastic.co/guide/en/elasticsearch/reference/current/search-shards.html API.


You can read document here


I think Timevalue is time to keep scrolling alive

setScroll(TimeValue keepAlive)

If set, will enable scrolling of the search request for the specified timeout.

You can read more here :


Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.