Im trying to save a Spark DataFrame (of more than 20G) to a single json file in Amazon S3, my code to save the dataframe is like this :


But im getting an error from S3 "Your proposed upload exceeds the maximum allowed size", i know that the maximum file size allowed by Amazon is 5GB.

Is it possible to use S3 multipart upload with Spark? or there is another way to solve this?

Btw i need the data in a single file because another user is going to download it after.

*Im using apache spark 1.3.1 in a 3-node cluster created with the spark-ec2 script.

Thanks a lot


  • I just saw that if i use s3a instead of s3n it could solve my problem (wiki.apache.org/hadoop/AmazonS3) , but the thing is that the hadoop version that im using (Hadoop 2.0.0-cdh4.2.0) it does not support s3a. Any ideas? Thanks again.
    – jegordon
    Commented Apr 28, 2015 at 3:07

3 Answers 3


I would try separating the large dataframe into a series of smaller dataframes that you then append into the same file in the target.

  • 22
    @TheRandomSuite: By any chance, do you know if it is possible to avoid the hadoopish format and store data to a file under a s3 key name of my choice instead of the directory with _SUCCES and part-* ?
    – lisak
    Commented May 19, 2016 at 20:37

Try this


s3a is not production version in Spark I think. I would say the design is not sound. repartition(1) is going to be terrible (what you are telling spark is to merge all partitions to a single one). I would suggest to convince the downstream to download contents from a folder rather than a single file

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

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