Hadoop 2.6 doesn't support s3a out of the box, so I've tried a series of solutions and fixes, including:

deploy with hadoop-aws and aws-java-sdk => cannot read environment variable for credentials add hadoop-aws into maven => various transitive dependency conflicts

Has anyone successfully make both work?

  • Which version of Apache Spark are you using? – Holden May 21 '15 at 23:45
  • Related: SPARK-7442 – Nick Chammas May 22 '15 at 21:34
  • 1.3.1_ scala 2.10.4_hadoop 2.6. I just found that s3:// and s3n:// also doesn't work out of the box (they only works on hadoop 2.4) – tribbloid May 23 '15 at 21:45

10 Answers 10

Having experienced first hand the difference between s3a and s3n - 7.9GB of data transferred on s3a was around ~7 minutes while 7.9GB of data on s3n took 73 minutes [us-east-1 to us-west-1 unfortunately in both cases; Redshift and Lambda being us-east-1 at this time] this is a very important piece of the stack to get correct and it's worth the frustration.

Here are the key parts, as of December 2015:

  1. Your Spark cluster will need a Hadoop version 2.x or greater. If you use the Spark EC2 setup scripts and maybe missed it, the switch for using something other than 1.0 is to specify --hadoop-major-version 2 (which uses CDH 4.2 as of this writing).

  2. You'll need to include what may at first seem to be an out of date AWS SDK library (built in 2014 as version 1.7.4) for versions of Hadoop as late as 2.7.1 (stable): aws-java-sdk 1.7.4. As far as I can tell using this along with the specific AWS SDK JARs for 1.10.8 hasn't broken anything.

  3. You'll also need the hadoop-aws 2.7.1 JAR on the classpath. This JAR contains the class org.apache.hadoop.fs.s3a.S3AFileSystem.

  4. In spark.properties you probably want some settings that look like this:

    spark.hadoop.fs.s3a.impl=org.apache.hadoop.fs.s3a.S3AFileSystem  
    spark.hadoop.fs.s3a.access.key=ACCESSKEY  
    spark.hadoop.fs.s3a.secret.key=SECRETKEY
    

I've detailed this list in more detail on a post I wrote as I worked my way through this process. In addition I've covered all the exception cases I hit along the way and what I believe to be the cause of each and how to fix them.

  • 3
    This was helpful for me. The only dependency I ended up adding was "org.apache.hadoop" % "hadoop-aws" % "3.0.0-alpha2" at mvnrepository.com/artifact/org.apache.hadoop/hadoop-aws/… – Thomas Luechtefeld Apr 23 '17 at 0:14
  • Having hadoop-aws 2.7.1 (or higher) JAR on the classpath solved the issue for me, but when running on Amazon EMR I didnt need this, so I made it a provided dependency, my sbt looks like "org.apache.hadoop" % "hadoop-aws" % "2.8.1" % Provided – Naveen Cotha Oct 29 at 20:58

I got it working using the Spark 1.4.1 prebuilt binary with hadoop 2.6 Make sure you set both spark.driver.extraClassPath and spark.executor.extraClassPath pointing to the two jars (hadoop-aws and aws-java-sdk) If you run on a cluster, make sure your executors have access to the jar files on the cluster.

  • same problem: org.apache.spark.SparkException: Job aborted due to stage failure: Task 3 in stage 1.0 failed 4 times, most recent failure: Lost task 3.3 in stage 1.0 (TID 27, 10.122.113.63): java.io.IOException: No FileSystem for scheme: s3n – tribbloid Oct 2 '15 at 23:21
  • 1
    If it is default in nature for all s3, add the two variables in $SPARK_HOME/conf/spark-defaults.conf. Ref deploymentzone.com/2015/12/20/s3a-on-spark-on-aws-ec2 is a good source. – Robin Loxley Dec 28 '15 at 8:25

I'm writing this answer to access files with S3A from Spark 2.0.1 on Hadoop 2.7.3

Copy the AWS jars(hadoop-aws-2.7.3.jar and aws-java-sdk-1.7.4.jar) which shipped with Hadoop by default

  • Hint: If the jar locations are unsure? running find command as privileged user can be helpful, commands can be..

     find / -name hadoop-aws*.jar
     find / -name aws-java-sdk*.jar
    

into spark classpath which holds all spark jars

  • Hint: We can not directly point the location(It must be in property file) as I want make answer generic for distributions and Linux flavors. spark classpath can be identified by find command below

     find / -name spark-core*.jar
    

in spark-defaults.conf

Hint: (Mostly it will be placed in /etc/spark/conf/spark-defaults.conf)

#make sure jars are added to CLASSPATH
spark.yarn.jars=file://{spark/home/dir}/jars/*.jar,file://{hadoop/install/dir}/share/hadoop/tools/lib/*.jar


spark.hadoop.fs.s3a.impl=org.apache.hadoop.fs.s3a.S3AFileSystem  
spark.hadoop.fs.s3a.access.key={s3a.access.key} 
spark.hadoop.fs.s3a.secret.key={s3a.secret.key} 
#you can set above 3 properties in hadoop level `core-site.xml` as well by removing spark prefix.

in spark submit include jars(aws-java-sdk and hadoop-aws) in --driver-class-path if needed.

spark-submit --master yarn \
  --driver-class-path {spark/jars/home/dir}/aws-java-sdk-1.7.4.jar \
  --driver-class-path {spark/jars/home/dir}/hadoop-aws-2.7.3.jar \
  other options

Note:

Make sure the Linux user with read privileges, before running the find command to prevent error Permission denied

We're using spark 1.6.1 with Mesos and we were getting lots of issues writing to S3 from spark. I give credit to cfeduke for the answer. The slight change I made was adding maven coordinates to the spark.jar config in the spark-defaults.conf file. I tried with hadoop-aws:2.7.2 but was still getting lots of errors so we went back to 2.7.1. Below are the changes in spark-defaults.conf that are working for us:

spark.jars.packages             net.java.dev.jets3t:jets3t:0.9.0,com.google.guava:guava:16.0.1,com.amazonaws:aws-java-sdk:1.7.4,org.apache.hadoop:hadoop-aws:2.7.1
spark.hadoop.fs.s3a.impl        org.apache.hadoop.fs.s3a.S3AFileSystem
spark.hadoop.fs.s3a.access.key  <MY ACCESS KEY>
spark.hadoop.fs.s3a.secret.key  <MY SECRET KEY>
spark.hadoop.fs.s3a.fast.upload true

Thank you cfeduke for taking the time to write up your post. It was very helpful.

Here are the details as of October 2016, as presented at Spark Summit EU: Apache Spark and Object Stores.

Key points

  • The direct output committer is gone from Spark 2.0 due to risk/experience of data corruption.
  • There are some settings on the FileOutputCommitter to reduce renames, but not eliminate them
  • I'm working with some colleagues to do an O(1) committer, relying on Apache Dynamo to give us that consistency we need.
  • To use S3a, get your classpath right.
  • And be on Hadoop 2.7.z; 2.6.x had some problems which were addressed by then HADOOP-11571.
  • There's a PR under SPARK-7481 to pull everything into a spark distro you build yourself. Otherwise, ask whoever supplies to the binaries to do the work.
  • Hadoop 2.8 is going to add major perf improvements HADOOP-11694.

Product placement: the read-performance side of HADOOP-11694 is included in HDP2.5; The Spark and S3 documentation there might be of interest —especially the tuning options.

Using Spark 1.4.1 pre-built with Hadoop 2.6, I am able to get s3a:// to work when deploying to a Spark Standalone cluster by adding the hadoop-aws and aws-java-sdk jar files from the Hadoop 2.7.1 distro (found under $HADOOP_HOME/share/hadoop/tools/lib of Hadoop 2.7.1) to my SPARK_CLASSPATH environment variable in my $SPARK_HOME/conf/spark-env.sh file.

  • Really? Let me try your solutions again on 1.4.1, I wasn't commited to s3a as issues.apache.org/jira/browse/SPARK-7442 is still marked as 'unresolved' – tribbloid Aug 17 '15 at 15:54
  • Ive tried, seems like something else is missing, I keep getting this error: org.apache.spark.SparkException: Job aborted due to stage failure: Task 3 in stage 2.0 failed 4 times, most recent failure: Lost task 3.3 in stage 2.0 (TID 47, 10.122.113.63): java.io.IOException: No FileSystem for scheme: s3n – tribbloid Oct 2 '15 at 23:12
  • 1
    Oh, and here is deprecation conflict in your solution: |SPARK_CLASSPATH was detected (set to '$value'). |This is deprecated in Spark 1.0+. | |Please instead use: | - ./spark-submit with --driver-class-path to augment the driver classpath | - spark.executor.extraClassPath to augment the executor classpath – tribbloid Oct 2 '15 at 23:29
  • Specifically, even as late as Dec 31 2015 you need to use an AWS SDK library compiled in 2014: aws-java-sdk 1.7.4; this answer above is the most accurate answer on this question. – cfeduke Jan 1 '16 at 3:28

as you said, hadoop 2.6 doesn't support s3a, and latest spark release 1.6.1 doesn't support hadoop 2.7, but spark 2.0 is definitely no problem with hadoop 2.7 and s3a.

for spark 1.6.x, we made some dirty hack, with the s3 driver from EMR... you can take a look this doc: https://github.com/zalando/spark-appliance#emrfs-support

if you still want to try to use s3a in spark 1.6.x, refer to the answer here: https://stackoverflow.com/a/37487407/5630352

You can also add the S3A dependencies to the classpath using spark-defaults.conf.

Example:

spark.driver.extraClassPath     /usr/local/spark/jars/hadoop-aws-2.7.5.jar
spark.executor.extraClassPath   /usr/local/spark/jars/hadoop-aws-2.7.5.jar
spark.driver.extraClassPath     /usr/local/spark/jars/aws-java-sdk-1.7.4.jar
spark.executor.extraClassPath   /usr/local/spark/jars/aws-java-sdk-1.7.4.jar

Or just:

spark.jars     /usr/local/spark/jars/hadoop-aws-2.7.5.jar,/usr/local/spark/jars/aws-java-sdk-1.7.4.jar

Just make sure to match your AWS SDK version to the version of Hadoop. For more information about this, look at this answer: Unable to access S3 data using Spark 2.2

Here's a solution for pyspark (possibly with proxy):

def _configure_s3_protocol(spark, proxy=props["proxy"]["host"], port=props["proxy"]["port"], endpoint=props["s3endpoint"]["irland"]):
    """
    Configure access to the protocol s3
    https://sparkour.urizone.net/recipes/using-s3/
    AWS Regions and Endpoints
    https://docs.aws.amazon.com/general/latest/gr/rande.html
    """
    sc = spark.sparkContext
    sc._jsc.hadoopConfiguration().set("fs.s3a.impl", "org.apache.hadoop.fs.s3a.S3AFileSystem")
    sc._jsc.hadoopConfiguration().set("fs.s3a.access.key",  os.environ.get("AWS_ACCESS_KEY_ID"))
    sc._jsc.hadoopConfiguration().set("fs.s3a.secret.key", os.environ.get("AWS_SECRET_ACCESS_KEY"))
    sc._jsc.hadoopConfiguration().set("fs.s3a.proxy.host", proxy)
    sc._jsc.hadoopConfiguration().set("fs.s3a.proxy.port", port)
    sc._jsc.hadoopConfiguration().set("fs.s3a.endpoint", endpoint)
    return spark

I am using spark version 2.3, and when I save a dataset using spark like:

dataset.write().format("hive").option("fileFormat", "orc").mode(SaveMode.Overwrite)
    .option("path", "s3://reporting/default/temp/job_application")
    .saveAsTable("job_application");

It works perfectly and saves my data into s3.

  • IF you are using "s3" then you are using Amazon EMR, so unrelated. And It worked for you in the absence of failures and observable inconsistencies. You cannot rely on that working in production, hence the S3A committers of Hadoop 3.1 – Steve Loughran Apr 24 at 20:13

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