88

Using the code:

all_reviews = db_handle.find().sort('reviewDate', pymongo.ASCENDING)
print all_reviews.count()

print all_reviews[0]
print all_reviews[2000000]

The count prints 2043484, and it prints all_reviews[0].

However when printing all_reviews[2000000], I get the error:

pymongo.errors.OperationFailure: database error: Runner error: Overflow sort stage buffered data usage of 33554495 bytes exceeds internal limit of 33554432 bytes

How do I handle this?

6 Answers 6

122

You're running into the 32MB limit on an in-memory sort:

https://docs.mongodb.com/manual/reference/limits/#Sort-Operations

Add an index to the sort field. That allows MongoDB to stream documents to you in sorted order, rather than attempting to load them all into memory on the server and sort them in memory before sending them to the client.

9
  • 7
    Better to declare an index so you don't need to sort in RAM: faster and more reliable, limited RAM usage rather than potentially unlimited. If you insist, turn your "find" into an aggregation (which can use 100MB of RAM to sort) and set allowDiskUse: true to tell the aggregation framework to spill to disk if it would exceed 100MB of RAM. Expect a severe performance penalty compared to just declaring an appropriate index. docs.mongodb.org/manual/reference/operator/aggregation/sort/… Jul 21, 2015 at 13:50
  • 32
    Actually, it can be changed. You need to run this command: db.adminCommand({setParameter: 1, internalQueryExecMaxBlockingSortBytes: <limit in bytes>}). Source: askubuntu.com/questions/501937/…
    – kumarharsh
    Jul 26, 2015 at 18:00
  • 6
    Good to note for mongoose users that setting index:true on the prop in your schema will fix this problem ... mongoose will go through all your schemas and ensure that the fields are in fact indexes before starting the app ... that is unless you turn this behavior off with mySchema.set('autoIndex', false); Feb 26, 2016 at 3:41
  • 2
    I have created an index on sorting field but still it giving me this "Sort operation used more than the maximum 33554432 bytes of RAM" error may be because of I am applying match operation before sorting and according to mongo doc if you use match before sort operation it will neglect index and perform in memory sorting over all matched records. Feb 19, 2018 at 7:01
  • 11
    If this is the accepted answer, then it should include information on how to add an index. Jun 24, 2018 at 19:09
47

As said by kumar_harsh in the comments section, i would like to add another point.

You can view the current buffer usage using the below command over the admin database:

> use admin
switched to db admin
> db.runCommand( { getParameter : 1, "internalQueryExecMaxBlockingSortBytes" : 1 } )
{ "internalQueryExecMaxBlockingSortBytes" : 33554432, "ok" : 1 }

It has a default value of 32 MB(33554432 bytes).In this case you're running short of buffer data so you can increase buffer limit with your own defined optimal value, example 50 MB as below:

>  db.adminCommand({setParameter: 1, internalQueryExecMaxBlockingSortBytes:50151432})
{ "was" : 33554432, "ok" : 1 }

We can also set this limit permanently by the below parameter in the mongodb config file:

setParameter=internalQueryExecMaxBlockingSortBytes=309715200

Hope this helps !!!

Note:This commands supports only after version 3.0 +

4
  • What is the way to set this limit permanently in the config file? I have a 1 TB memory machine dedicated to mongo and I would like to permanently crank it up. Jul 26, 2018 at 17:24
  • @SamanthaAtkins I have updated the answer to set this permanently in the config file.
    – Jerry
    Jul 31, 2018 at 5:17
  • @JERRY where to set permanently in rails. Rails 5/mongoid.yml ?
    – PKul
    Mar 30, 2019 at 19:07
  • I found it. run at my terminal with : mongod and follow manual zocada.com/setting-mongodb-users-beginners-guide
    – PKul
    Mar 30, 2019 at 19:17
25

solved with indexing

db_handle.ensure_index([("reviewDate", pymongo.ASCENDING)])
2
15

If you want to avoid creating an index (e.g. you just want a quick-and-dirty check to explore the data), you can use aggregation with disk usage:

all_reviews = db_handle.aggregate([{$sort: {'reviewDate': 1}}], {allowDiskUse: true})

(Not sure how to do this in pymongo, though).

1
  • 1
    In pymongo would be db_handle.aggregate(pipe, allowDiskUse=True). See this question for more info!
    – Genarito
    Mar 21, 2020 at 14:56
3

JavaScript API syntax for the index:

db_handle.ensureIndex({executedDate: 1})
2

In my case, it was necessary to fix nessary indexes in code and recreate them:

rake db:mongoid:create_indexes RAILS_ENV=production

As the memory overflow does not occur when there is a needed index of field.

PS Before this I had to disable the errors when creating long indexes:

# mongo
MongoDB shell version: 2.6.12
connecting to: test
> db.getSiblingDB('admin').runCommand( { setParameter: 1, failIndexKeyTooLong: false } )

Also may be needed reIndex:

# mongo
MongoDB shell version: 2.6.12
connecting to: test
> use your_db
switched to db your_db
> db.getCollectionNames().forEach( function(collection){ db[collection].reIndex() } )

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