One query on spark structured streaming integration with HIVE table.

I have tried to do some examples of spark structured streaming.

here is my example

 val spark =SparkSession.builder().appName("StatsAnalyzer")
     .config("hive.exec.dynamic.partition", "true")
     .config("hive.exec.dynamic.partition.mode", "nonstrict")
     .config("spark.sql.streaming.checkpointLocation", "hdfs://pp/apps/hive/warehouse/ab.db")

 // Register the dataframe as a Hive table

 val userSchema = new StructType().add("name", "string").add("age", "integer")
 val csvDF = spark.readStream.option("sep", ",").schema(userSchema).csv("file:///home/su/testdelta") 
 val query= spark.sql("insert into table_abcd select * from updates")


As you can see in the last step while writing data-frame to hdfs location, , the data is not getting inserted into the exciting directory (my existing directory having some old data partitioned by "age").

I am getting

spark.sql.AnalysisException : queries with streaming source must be executed with writeStream start()

Can you help why i am not able to insert data in to existing directory in hdfs location ? or is there any other way that i can do "insert into " operation on hive table ?

Looking for a solution

  • Ok my issue is not readStream...how to insert that data into existing hive table? I need to do insert into operation – BigD Dec 28 '18 at 21:15
  • 1
    Yes am getting spark.sql.AnalysisException : queries with streaming source must be executed with writeStream start() – BigD Dec 28 '18 at 21:24
  • 1
    my question is how to do transformations like JOIN ? – BigD Dec 28 '18 at 21:30
  • 1
    i want to join stream data from kafka or csv and static data from HIVE... hafter writting everything to hive doesn't work as i need to perform all operations in streaming manner.... – BigD Dec 28 '18 at 21:36
  • Let us continue this discussion in chat. – BigD Dec 28 '18 at 22:19

Spark Structured Streaming does not support writing the result of a streaming query to a Hive table.

scala> println(spark.version)

val sq = spark.readStream.format("rate").load
scala> :type sq

scala> assert(sq.isStreaming)

scala> sq.writeStream.format("hive").start
org.apache.spark.sql.AnalysisException: Hive data source can only be used with tables, you can not write files of Hive data source directly.;
  at org.apache.spark.sql.streaming.DataStreamWriter.start(DataStreamWriter.scala:246)
  ... 49 elided

If a target system (aka sink) is not supported you could use use foreach and foreachBatch operations (highlighting mine):

The foreach and foreachBatch operations allow you to apply arbitrary operations and writing logic on the output of a streaming query. They have slightly different use cases - while foreach allows custom write logic on every row, foreachBatch allows arbitrary operations and custom logic on the output of each micro-batch.

I think foreachBatch is your best bet.

import org.apache.spark.sql.DataFrame
sq.writeStream.foreachBatch { case (ds: DataFrame, batchId: Long) =>
  // do whatever you want with your input DataFrame
  // incl. writing to Hive
  // I simply decided to print out the rows to the console

There is also Apache Hive Warehouse Connector that I've never worked with but seems like it may be of some help.

  • Hello.. One more query... Is it possible to stream a file, lets say csv file to spark streaming? If i append any line to that file then that should captures by spark streaming..is it possible? Adding files to directory and streaming is possible... File streaming is possible in spark? – BigD Dec 30 '18 at 22:08
  • 1
    @BigD No it's not possible to append lines to a CSV file and "catch" the updates. Only new files are going to be processed. See the docs at spark.apache.org/docs/latest/… – Jacek Laskowski Dec 30 '18 at 22:10
  • Hello,I have tried but throwing error.. can you please help ... val csvDF = spark.readStream.option("sep", ",").schema(userSchema).csv("file:///home/sas/testdelta") csvDF.writeStream.foreachBatch { (batchDF: DataFrame, batchId: Long) => batchDF.show }.start() <console>:56: error: value foreachBatch is not a member of org.apache.spark.sql.streaming.DataStreamWriter[org.apache.spark.sql.Row] csvDF.writeStream.foreachBatch { (batchDF: DataFrame, batchId: Long) => – BigD Jan 2 at 17:18
  • @BigD What Spark version do you use? foreachBatch is available as of 2.4.0. Use foreach instead. – Jacek Laskowski Jan 2 at 17:38
  • i am using spark 2.3.0.. i tried both.. in my example csvDF is dataframe.. how can i insert that to hive using foreach.. that is my issue – BigD Jan 2 at 18:51

Just in case someone actually tried the code from Jacek Laskowski he knows that it does not really compile in Spark 2.4.0 (check my gist tested on AWS EMR 5.20.0 and vanilla Spark). So I guess that was his idea of how it should work in some future Spark version. The real code is:

scala> import org.apache.spark.sql.Dataset
import org.apache.spark.sql.Dataset

scala> sq.writeStream.foreachBatch((batchDs: Dataset[_], batchId: Long) => batchDs.show).start
res0: org.apache.spark.sql.streaming.StreamingQuery = 
  • but am using spark 2.3.0.. can you provide how to use foreach in 2.3.0 – BigD Jan 25 at 14:07

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

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