23

Problem: retrieving more than 10,000 results in elastic search via search in a GET /search query.

GET hostname:port /myIndex/_search { 
    "size": 10000,
    "query": {
        "term": { "field": "myField" }
    }
}

I have been using the size option knowing that:

index.max_result_window = 100000

But if my query has the size of 650,000 Documents for example or even more, how can I retrieve all of the results in one GET?

I have been reading about the SCROLL, FROM-TO, and the PAGINATION API, but all of them never deliver more than 10K.

This is the example from Elasticsearch Forum, that I have been using:

GET /_search?scroll=1m

Can anybody provide an example where you can retrieve all the documents for a GET search query?

Thank you very much.

24

Scroll is the way to go if you want to retrieve a high number of documents, high in the sense that it's way over the 10000 default limit, which can be raised.

The first request needs to specify the query you want to make and the scroll parameter with duration before the search context times out (1 minute in the example below)

POST /index/type/_search?scroll=1m
{
    "size": 1000,
    "query": {
        "match" : {
            "title" : "elasticsearch"
        }
    }
}

In the response to that first call, you get a _scroll_id that you need to use to make the second call:

POST /_search/scroll 
{
    "scroll" : "1m", 
    "scroll_id" : "DXF1ZXJ5QW5kRmV0Y2gBAAAAAAAAAD4WYm9laVYtZndUQlNsdDcwakFMNjU1QQ==" 
}

In each subsequent response, you'll get a new _scroll_id that you need to use for the next call until you've retrieved the amount of documents you need.

So in pseudo code it looks somewhat like this:

# first request
response = request('POST /index/type/_search?scroll=1m')
docs = [ response.hits ]
scroll_id = response._scroll_id

# subsequent requests
while (true) {
   response = request('POST /_search/scroll', scroll_id)
   docs.push(response.hits)
   scroll_id = response._scroll_id
}
  • Thanks val. I'm not sure I can get this working with curl within php. Unless I can parametrise the get scroll Id and knowing in advance how many docs I will have to retrieve. You see I'm not using sense or either kibana. I have to use google chart to do advance aggregations and I have to query elastic to get two large set of data. Regex them and store result in arrays. Elastic api can be very exotic. Do you think there i a simpler way to retrieve all data? Can index max value be increased ? Or is there any simpler way to use scroll Id s? – Franco Jan 15 '17 at 8:31
  • 1
    You can definitely increase the index.max_result_window value but you'll run the risk of bringing down your cluster if you want to get your 650000 documents in one shot. – Val Jan 17 '17 at 4:14
  • Another possibility is to query ES from within a Google Script so it's easier to integrate the results with Google Charts – Val Jan 17 '17 at 4:17
  • Otherwise you can stay with curl and use existing solutions to scroll over your index. – Val Jan 17 '17 at 4:18
  • Hey @Val; i will test this asap and give you feedback. I apology for the delay. I promise i will do this in the next 3-4 days max. – Franco Jan 18 '17 at 21:33
3

nodeJS scroll example using elascticsearch:

const elasticsearch = require('elasticsearch');
const elasticSearchClient = new elasticsearch.Client({ host: 'esURL' });

async function getAllData(query) {
  const result = await elasticSearchClient.search({
    index: '*',
    scroll: '10m',
    size: 10000,
    body: query,
  });

  const retriever = async ({
    data,
    total,
    scrollId,
  }) => {
    if (data.length >= total) {
      return data;
    }

    const result = await elasticSearchClient.scroll({
      scroll: '10m',
      scroll_id: scrollId,
    });

    data = [...data, ...result.hits.hits];

    return retriever({
      total,
      scrollId: result._scroll_id,
      data,
    });
  };

  return retriever({
    total: result.hits.total,
    scrollId: result._scroll_id,
    data: result.hits.hits,
  });
}
1

Another Option is the search_after Tag. Joind with a sorting mechanism you can save your last element in the first return and then ask for results coming after that last element.

    GET twitter/_search
    {
     "size": 10,
        "query": {
            "match" : {
                "title" : "elasticsearch"
            }
        },
        "search_after": [1463538857, "654323"],
        "sort": [
            {"date": "asc"},
            {"_id": "desc"}
        ]
    }

Worked for me. But until now getting more than 10.000 Dokuments is really not easy.

1

here you go:

GET /_search
{
  "size": "10000",
    "query": {
        "match_all": {"boost" : "1.0" }
    }
}

But we should mostly avoid this approach to retrieve huge amount of docs at once as it can increase data usage and overhead.

0

Look at search_after documentation

Example query as hash in Ruby:

query = {
  size: query_size,
  query: {
    multi_match: {
      query: "black",
      fields: [ "description", "title", "information", "params" ]
    }
  },
  search_after: [after],
  sort: [ {id: "asc"} ]

}

0

I can suggest a better way to do this. I guess you're trying to get more than 10,000 records. Try the below way and you will get millions of records as well.

  1. Define your client.

    client = Elasticsearch(['http://localhost:9200'])
    
  2. search = Search(using=client)

  3. Check total number of hits.

    results = search.execute()
    results.hits.total
    
  4. s = Search(using=client)

  5. Write down your query.

    s = s.query(..write your query here...)
    
  6. Dump the data into a data frame with scan. Scan will dump all the data into your data frame even if it's in billions, so be careful.

    results_df = pd.DataFrame((d.to_dict() for d in s.scan()))
    
  7. Have a look at your data frame.

    results_df
    
  8. If you're getting an error with search function, then do below:

    from elasticsearch_dsl import Search
    
  • Are you sure this works? It crashes the ES server when I run this... – mairan Sep 15 '18 at 1:57
  • 1
    @mairan Its working fine for me. Don't try to get all the data and I guess that is why it's crashing. You must be getting lots of data. First, check how many hits you are getting. Go through my medium blog for a better understanding :- medium.com/@abhimanyusingh_16119/… .please accept the answer if it works. – ak3191 Sep 17 '18 at 12:52
0

When there are more than 10000 results, the only way to get the rest is to split your query to multiple, more refined queries with more strict filters, such that each query returns less than 10000 results. And then combine the query results to obtain your complete target result set.

This limitation to 10000 results applies to web services that are backed by ElasticSearch index, and there’s just no way around it, the web service would have to be reimplemented without using ElasticSearch.

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.