7

I want my Spark application to read a table from DynamoDB, do stuff, then write the result in DynamoDB.

Read the table into a DataFrame

Right now, I can read the table from DynamoDB into Spark as a hadoopRDD and convert it to a DataFrame. However, I had to use a regular expression to extract the value from AttributeValue. Is there a better/more elegant way? Couldn't find anything in the AWS API.

package main.scala.util

import org.apache.spark.sql.SparkSession
import org.apache.spark.SparkContext
import org.apache.spark.sql.SQLContext
import org.apache.spark.sql.functions._
import org.apache.spark.sql.types._
import org.apache.spark.rdd.RDD
import scala.util.matching.Regex
import java.util.HashMap

import com.amazonaws.services.dynamodbv2.model.AttributeValue
import org.apache.hadoop.io.Text;
import org.apache.hadoop.dynamodb.DynamoDBItemWritable
/* Importing DynamoDBInputFormat and DynamoDBOutputFormat */
import org.apache.hadoop.dynamodb.read.DynamoDBInputFormat
import org.apache.hadoop.dynamodb.write.DynamoDBOutputFormat
import org.apache.hadoop.mapred.JobConf
import org.apache.hadoop.io.LongWritable

object Tester {

  // {S: 298905396168806365,} 
  def extractValue : (String => String) = (aws:String) => {
    val pat_value = "\\s(.*),".r

    val matcher = pat_value.findFirstMatchIn(aws)
                matcher match {
                case Some(number) => number.group(1).toString
                case None => ""
        }
  }


   def main(args: Array[String]) {
    val spark = SparkSession.builder().getOrCreate()
    val sparkContext = spark.sparkContext

      import spark.implicits._

      // UDF to extract Value from AttributeValue 
      val col_extractValue = udf(extractValue)

  // Configure connection to DynamoDB
  var jobConf_add = new JobConf(sparkContext.hadoopConfiguration)
      jobConf_add.set("dynamodb.input.tableName", "MyTable")
      jobConf_add.set("dynamodb.output.tableName", "MyTable")
      jobConf_add.set("mapred.output.format.class", "org.apache.hadoop.dynamodb.write.DynamoDBOutputFormat")
      jobConf_add.set("mapred.input.format.class", "org.apache.hadoop.dynamodb.read.DynamoDBInputFormat")


      // org.apache.spark.rdd.RDD[(org.apache.hadoop.io.Text, org.apache.hadoop.dynamodb.DynamoDBItemWritable)]
      var hadooprdd_add = sparkContext.hadoopRDD(jobConf_add, classOf[DynamoDBInputFormat], classOf[Text], classOf[DynamoDBItemWritable])

      // Convert HadoopRDD to RDD
      val rdd_add: RDD[(String, String)] = hadooprdd_add.map {
      case (text, dbwritable) => (dbwritable.getItem().get("PIN").toString(), dbwritable.getItem().get("Address").toString())
      }

      // Convert RDD to DataFrame and extract Values from AttributeValue
      val df_add = rdd_add.toDF()
                  .withColumn("PIN", col_extractValue($"_1"))
                  .withColumn("Address", col_extractValue($"_2"))
                  .select("PIN","Address")
   }
}

Write the DataFrame to DynamoDB

Many answers in stackoverflow and elsewhere only point to the blog post and the emr-dynamodb-hadoop github. None of those resources actually demonstrate how to write to DynamoDB.

I tried converting my DataFrame to RDD[Row] unsuccessfully.

df_add.rdd.saveAsHadoopDataset(jobConf_add)

What are the steps to write this DataFrame to DynamoDB? (Bonus Points if you tell me how to control overwrite vs putItem ;)

Note: df_add has the same schema as MyTable in DynamoDB.

EDIT: I am following the recommendation from this answer which points to this post on Using Spark SQL for ETL:

// Format table to DynamoDB format
  val output_rdd =  df_add.as[(String,String)].rdd.map(a => {
    var ddbMap = new HashMap[String, AttributeValue]()

    // Field PIN
    var PINValue = new AttributeValue() // New AttributeValue
    PINValue.setS(a._1)                 // Set value of Attribute as String. First element of tuple
    ddbMap.put("PIN", PINValue)         // Add to HashMap

    // Field Address
    var AddValue = new AttributeValue() // New AttributeValue
    AddValue.setS(a._2)                 // Set value of Attribute as String
    ddbMap.put("Address", AddValue)     // Add to HashMap

    var item = new DynamoDBItemWritable()
    item.setItem(ddbMap)

    (new Text(""), item)
  })             

  output_rdd.saveAsHadoopDataset(jobConf_add) 

However, now I am getting java.lang.ClassCastException: java.lang.String cannot be cast to org.apache.hadoop.io.Text despite following the documentation ... Do you have any suggestion ?

EDIT 2: Reading more carefully this post on Using Spark SQL for ETL:

After you have the DataFrame, perform a transformation to have an RDD that matches the types that the DynamoDB custom output format knows how to write. The custom output format expects a tuple containing the Text and DynamoDBItemWritable types.

Taking this into account, the code below is exactly what theAWS blog post suggest, except I cast output_df as an rdd otherwise saveAsHadoopDataset doesn't work. And now, I am getting Exception in thread "main" scala.reflect.internal.Symbols$CyclicReference: illegal cyclic reference involving object InterfaceAudience. I am at the end of my rope!

      // Format table to DynamoDB format
  val output_df =  df_add.map(a => {
    var ddbMap = new HashMap[String, AttributeValue]()

    // Field PIN
    var PINValue = new AttributeValue() // New AttributeValue
    PINValue.setS(a.get(0).toString())                 // Set value of Attribute as String
    ddbMap.put("PIN", PINValue)         // Add to HashMap

    // Field Address
    var AddValue = new AttributeValue() // New AttributeValue
    AddValue.setS(a.get(1).toString())                 // Set value of Attribute as String
    ddbMap.put("Address", AddValue)     // Add to HashMap

    var item = new DynamoDBItemWritable()
    item.setItem(ddbMap)

    (new Text(""), item)
  })             

  output_df.rdd.saveAsHadoopDataset(jobConf_add)   
  • I am having the similar scala.reflect.internal.Symbols$CyclicReference error, any help please? – Sudheer Palyam Apr 16 '18 at 6:16
  • I did not find a solution and used S3 instead. – Béatrice Moissinac Apr 18 '18 at 17:51
  • this is lot easier way for reading from DynamoDB, val simple2: RDD[(String)] = data.map { case (text, dbwritable) => (dbwritable.toString)} and then spark.read.json(simple2).registerTempTable("gooddata") and then spark.sql("select replace(replace(split(cast(address as string),',')[0],']',''),'[','') as housenumber from gooddata").show(false) – sri hari kali charan Tummala Jul 8 at 22:35
5

I was following that "Using Spark SQL for ETL" link, and found the same "illegal cyclic reference" exception. The solution for that exception is quite simple (but it cost me 2 days to figure out) as below. The key point is to use map function on the RDD of the dataframe, not the dataframe itself.

val ddbConf = new JobConf(spark.sparkContext.hadoopConfiguration)
ddbConf.set("dynamodb.output.tableName", "<myTableName>")
ddbConf.set("dynamodb.throughput.write.percent", "1.5")
ddbConf.set("mapred.input.format.class", "org.apache.hadoop.dynamodb.read.DynamoDBInputFormat")
ddbConf.set("mapred.output.format.class", "org.apache.hadoop.dynamodb.write.DynamoDBOutputFormat")


val df_ddb =  spark.read.option("header","true").parquet("<myInputFile>")
val schema_ddb = df_ddb.dtypes

var ddbInsertFormattedRDD = df_ddb.rdd.map(a => {
    val ddbMap = new HashMap[String, AttributeValue]()

    for (i <- 0 to schema_ddb.length - 1) {
        val value = a.get(i)
        if (value != null) {
            val att = new AttributeValue()
            att.setS(value.toString)
            ddbMap.put(schema_ddb(i)._1, att)
        }
    }

    val item = new DynamoDBItemWritable()
    item.setItem(ddbMap)

    (new Text(""), item)
}
)

ddbInsertFormattedRDD.saveAsHadoopDataset(ddbConf)
4

We have created a DynamoDB custom data source for Spark:

https://github.com/audienceproject/spark-dynamodb

It has a lot of elegant features:

  • Distributed, parallel scan with lazy evaluation
  • Throughput control by rate limiting on target fraction of provisioned table/index capacity
  • Schema discovery to suit your needs
  • Dynamic inference
  • Static analysis of case class
  • Column and filter pushdown
  • Global secondary index support
  • Write support

I think this would definitely suit your use case. We'd love if you could check it out and also provide feedback.

  • thanks a lot for sharing, very easy to use. The documentation says that targetCapacity is relevant for reads only, but it's also for writes. I was experiencing a very slow performance with targetCapacity=1 (100%), but setting it to 100000 had a huge performance benefit, regardless of being auto-scaling or on-demand. Is it supposed to have values > 1? – cahen Jan 16 at 15:39
  • This might be due to sub-optimal parallelization when writing. We have a branch where we have experimented with using the async client for writes, but we have yet to merge it to master. – Ana Todor Jan 21 at 15:25
0

This is somewhat simpler working example.

For Writing to DynamoDB from Kinesis Stream for Example using Hadoop RDD:-

https://github.com/kali786516/Spark2StructuredStreaming/blob/master/src/main/scala/com/dataframe/part11/kinesis/consumer/KinesisSaveAsHadoopDataSet/TransactionConsumerDstreamToDynamoDBHadoopDataSet.scala

For reading from DynamoDB using Hadoop RDD and using spark SQL without regex.

val ddbConf = new JobConf(spark.sparkContext.hadoopConfiguration)
    //ddbConf.set("dynamodb.output.tableName", "student")
    ddbConf.set("dynamodb.input.tableName", "student")
    ddbConf.set("dynamodb.throughput.write.percent", "1.5")
    ddbConf.set("dynamodb.endpoint", "dynamodb.us-east-1.amazonaws.com")
    ddbConf.set("dynamodb.regionid", "us-east-1")
    ddbConf.set("dynamodb.servicename", "dynamodb")
    ddbConf.set("dynamodb.throughput.read", "1")
    ddbConf.set("dynamodb.throughput.read.percent", "1")
    ddbConf.set("mapred.input.format.class", "org.apache.hadoop.dynamodb.read.DynamoDBInputFormat")
    ddbConf.set("mapred.output.format.class", "org.apache.hadoop.dynamodb.write.DynamoDBOutputFormat")
    //ddbConf.set("dynamodb.awsAccessKeyId", credentials.getAWSAccessKeyId)
    //ddbConf.set("dynamodb.awsSecretAccessKey", credentials.getAWSSecretKey)


val data = spark.sparkContext.hadoopRDD(ddbConf, classOf[DynamoDBInputFormat], classOf[Text], classOf[DynamoDBItemWritable])

val simple2: RDD[(String)] = data.map { case (text, dbwritable) => (dbwritable.toString)}

spark.read.json(simple2).registerTempTable("gooddata")

spark.sql("select replace(replace(split(cast(address as string),',')[0],']',''),'[','') as housenumber from gooddata").show(false)

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