I have been working on getting a flexible setup for myself to use spark on aws with docker swarm mode. The docker image I have been using is configured to use the latest spark, which at the time is 2.1.0 with Hadoop 2.7.3, and is available at jupyter/pyspark-notebook.
This is working, and I have been just going through to test out the various connectivity paths that I plan to use. The issue I came across is with the uncertainty around the correct way to interact with s3. I have followed the trail on how to provide the dependencies for spark to connect to data on aws s3 using the
s3a protocol, vs
I finally came across the hadoop aws guide and thought I was following how to provide the configuration. However, I was still receiving the
400 Bad Request error, as seen in this question that describes how to fix it by defining the endpoint, which I had already done.
I ended up being too far off the standard configuration by being on
us-east-2, making me uncertain if I had a problem with the jar files. To eliminate the region issue, I set things back up on the regular
us-east-1 region, and I was able to finally connect with
s3a. So I have narrowed down the problem to the region, but thought I was doing everything required to operate on the other region.
What is the correct way to use the configuration variables for hadoop in spark to use
Note: This example uses local execution mode to simplify things.
import os import pyspark
I can see in the console for the notebook these download after creating the context, and adding these took me from being completely broken, to getting the Bad Request error.
os.environ['PYSPARK_SUBMIT_ARGS'] = '--packages com.amazonaws:aws-java-sdk:1.7.4,org.apache.hadoop:hadoop-aws:2.7.3 pyspark-shell' conf = pyspark.SparkConf('local') sc = pyspark.SparkContext(conf=conf) sql = pyspark.SQLContext(sc)
For the aws config, I tried both the below method and by just using the above
conf, and doing
conf.set(spark.hadoop.fs.<config_string>, <config_value>) pattern equivalent to what I do below, except doing it this was I set the values on
conf before creating the spark context.
hadoop_conf = sc._jsc.hadoopConfiguration() hadoop_conf.set("fs.s3.impl", "org.apache.hadoop.fs.s3a.S3AFileSystem") hadoop_conf.set("fs.s3a.endpoint", "s3.us-east-2.amazonaws.com") hadoop_conf.set("fs.s3a.access.key", access_id) hadoop_conf.set("fs.s3a.secret.key", access_key)
One thing to note, is that I also tried an alternative endpoint for
I then read some parquet data off of s3.
df = sql.read.parquet('s3a://bucket-name/parquet-data-name') df.limit(10).toPandas()
Again, after moving the EC2 instance to us-east-1, and commenting out the endpoint config, the above works for me. To me, it seems like endpoint config isn't being used for some reason.