I have a requirement to process xml files streamed into a S3 folder. Currently, I have implemented it as follows.

First, Read files using Spark's fileStream

val data = ssc.fileStream[LongWritable, Text, TextInputFormat]("s3://myfolder/",(t: org.apache.hadoop.fs.Path) => true, newFilesOnly = true, hadoopConf).map(_._2.toString())

For each RDD, check if any file has been read

if (data.count() !=0)

Write the string to a new HDFS directory


Create a Dataframe reading from the above HDFS directory

val loaddata = sqlContext.read.format("com.databricks.spark.xml").option("rowTag", "Trans").load(sdir)

Do some processing on Dataframe and save as JSON


Somehow, I feel that the above approach is very inefficient and frankly quite school boyish. Is there a better solution? Any help would be greatly appreciated.

A follow up question: How to manipulate fields (not Columns) in a dataframe? I have a vey complex nested xml and when I use the above described method, I am getting a Dataframe with 9 columns and 50 odd inner Struct arrays. That is fine except for the need to trim certain field names. Is there a way to achieve that without exploding the dataframe, as I need to construct the same structure again?


If you use Spark 2.0 you may be able to make it work with structured streaming:

val inputDF = spark.readStream.format("com.databricks.spark.xml")
  .option("rowTag", "Trans")
  • Thanks a lot. My target env is EMR stack with Spark 2.0.1. I will try your suggestion on an EMR box. – Vamsi Nov 18 '16 at 15:51
  • pls vote-up/accept if you are okay with solution mentioned above. – Ram Ghadiyaram Nov 23 '16 at 16:15
  • val inputDF = spark.readStream.format("com.databricks.spark.xml") .option("rowTag", "Trans") .load(path) The above solution does not seem to work with spark 2.X – Parag Chimanpure Oct 19 '20 at 9:54

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