Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I have an EC2 server running Elasticsearch 0.9 with a nginx server for read/write access. My index has about 750k small-medium documents. I have a pretty continuous stream of minimal writes (mainly updates) to the content. The speeds/consistency I receive with search is fine with me, but I have some sporadic timeout issues with multi-get (/_mget).

On some pages in my app, our server will request a multi-get of a dozen to a few thousand documents (this usually takes less than 1-2 seconds). The requests that fail, fail with a 30,000 millisecond timeout from the nginx server. I am assuming this happens because the index was temporarily locked for writing/optimizing purposes. Does anyone have any ideas on what I can do here?

A temporary solution would be to lower the timeout and return a user friendly message saying documents couldn't be retrieved (however they still would have to wait ~10 seconds to see an error message).

Some of my other thoughts were to give read priority over writes. Anytime someone is trying to read a part of the index, don't allow any writes/locks to that section. I don't think this would be scalable and it may not even be possible?

Finally, I was thinking I could have a read-only alias and a write-only alias. I can figure out how to set this up through the documentation, but I am not sure if it will actually work like I expect it to (and I'm not sure how I can reliably test it in a local environment). If I set up aliases like this, would the read-only alias still have moments where the index was locked due to information being written through the write-only alias?

I'm sure someone else has come across this before, what is the typical solution to make sure a user can always read data from the index with a higher priority over writes. I would consider increasing our server power, if required. Currently we have 2 m2x-large EC2 instances. One is the primary and the replica, each with 4 shards.

An example dump of cURL info from a failed request (with an error of Operation timed out after 30000 milliseconds with 0 bytes received):

{
   "url":"127.0.0.1:9200\/_mget",
   "content_type":null,
   "http_code":100,
   "header_size":25,
   "request_size":221,
   "filetime":-1,
   "ssl_verify_result":0,
   "redirect_count":0,
   "total_time":30.391506,
   "namelookup_time":7.5e-5,
   "connect_time":0.0593,
   "pretransfer_time":0.059303,
   "size_upload":167002,
   "size_download":0,
   "speed_download":0,
   "speed_upload":5495,
   "download_content_length":-1,
   "upload_content_length":167002,
   "starttransfer_time":0.119166,
   "redirect_time":0,
   "certinfo":[

   ],
   "primary_ip":"127.0.0.1",
   "redirect_url":""
}
share|improve this question

1 Answer 1

After more monitoring using the Paramedic plugin, I noticed that I would get timeouts when my CPU would hit ~80-98% (no obvious spikes in indexing/searching traffic). I finally stumbled across a helpful thread on the Elasticsearch forum. It seems this happens when the index is doing a refresh and large merges are occurring.

Merges can be throttled at a cluster or index level and I've updated them from the indicies.store.throttle.max_bytes_per_sec from the default 20mb to 5mb. This can be done during runtime with the cluster update settings API.

PUT /_cluster/settings HTTP/1.1
Host: 127.0.0.1:9200

{
    "persistent" : {
        "indices.store.throttle.max_bytes_per_sec" : "5mb"
    }
}

So far Parmedic is showing a decrease in CPU usage. From an average of ~5-25% down to an average of ~1-5%. Hopefully this can help me avoid the 90%+ spikes I was having lock up my queries before, I'll report back by selecting this answer if I don't have any more problems.

As a side note, I guess I could have opted for more balanced EC2 instances (rather than memory-optimized). I think I'm happy with my current choice, but my next purchase will also take more CPU into account.

share|improve this answer

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

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