I seem to have hit a problem in which Spark writing to Elasticsearch is very slow and it takes quite a lot of time (around 15 mins) in making the initial connection, during which both Spark and Elasticsearch remain idle. There is another thread highlighting the same issue in the elastic community but it has been closed without any solution.

This is how I am writing from Spark to ES:

vgDF.write.format("org.elasticsearch.spark.sql").mode('append').option("es.resource", "demoindex/type1").option("es.nodes", "*ES IP*").save()

Spark specifications

Spark 2.1.0 3 cpu x 10 gb ram x 6 executors running on 3 gce nodesSpark 2.1.0

Elasticsearch specifications:

8 cpu * 30 gb RAM single node

ES Versions:

Elasticsearch: 6.2.2 ES-Hadoop: 6.2.2

For your information, Spark reads data from Cassandra DB, process the results (but this process is quite fast, takes around 1 - 2 mins) and then writes to Elasticsearch.

Any help would be greatly appreciated


I have also tried varying the size of data from millions of records to just 960 records, but the initial delay is still the same (approx 15 mins).

  • Is spark and ES on the same cluster? Mar 20, 2018 at 19:46
  • Nopes, they are not.
    – waleed ali
    Mar 20, 2018 at 19:52
  • Sounds like network latency to me Mar 20, 2018 at 20:26
  • can you elaborate, why you say it was idle in the first 15 minute? please update the question with that details. @sramalingam24 network latency doesnt seem to solve the 15 min initial delay question.
    – intiha
    Mar 21, 2018 at 4:45
  • I don't think it's because of network latency. I have tried it on multiple networks too, but initial timeout stays the same.
    – waleed ali
    Mar 21, 2018 at 7:23

1 Answer 1


Looks like ES connection is timing out. check if ES is accessible on the ip address you are providing. if you are using public IP, try changing it to private IP

  • 1
    Yeah, changed the public IP to private and it drastically reduced the ingestion time from 20 minutes to 12 seconds. Thanks mate!
    – waleed ali
    Apr 10, 2018 at 6:27
  • Hi, I'm in the same situation but I don't know how to fix it. Currently I'm working on docker containers, one for ES and one for Spark. They are in different projects (docker-compose) and Spark is able to reach ES. Any suggestion?
    – GianAnge
    Nov 22, 2019 at 13:14

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