I have a collection in MongoDB which I am indexing into Elasticsearch. I am doing this in a C# process. The collection has 100 million documents, and for each document, I have to query other documents in order to denormalise into the Elasticsearch index.

This all takes time. Reading from MongoDB is the slow part (indexing is relatively quick). I am batching the data from MongoDB as efficiently as I can but the process takes over 2 days.

This only has to happen when the mapping in Elasticsearch changes, but that has happened a couple of times over the last month. Are there any ways of improving the performance for this?

  • Are you already importing this data to Elasticsearch through the _bulk API? – Bruno Henrique Aug 25 '17 at 15:04
  • Is I'm right, you import some data from mongo to elasticsearch. Then, when you need change elasticsearch mappings, you delete old data and launch import into new elasticsearch index with updated mappings? – froosty Aug 26 '17 at 11:22
  • @BrunoHenrique It's not using the bulk API, but it is not really the indexing that is slow - it is reading from MongoDB. – Paul T Davies Aug 29 '17 at 8:05
  • @froosty That is correct. If the mapping has changed, the only thing to do is to delete the index and re-index the documents. At least that is my understanding. – Paul T Davies Aug 29 '17 at 8:06

Maybe you don't need launch import from scratch (I mean import from MongoDB), when you change mappings. Read this: Elasticsearch Reindex API

When you need to change mapping you must:

  1. Create new index with new mapping
  2. Reindex data from the old index into a new index using the built-in feature of elasticsearch.

After this old documents will be indexed with new mappings inside the new index. And built-in reindex in elasticsearch will work more quickly, than import from MongoDB via HTTP API.

If you will use reindex, don't forget to use parameter wait_for_completion(this parameter described in the documentation). This will run the reindex in the background.

Is this approach will solve your problem?

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.