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Using apache spark 1.6.0

I have two db: phoenix and postgres with the same number of records and I have performance problem when loading data from postgres tables.

To create a dataframe from phoenix tables I use method org.apache.phoenix.spark.SparkSqlContextFunctions phoenixTableAsDataFrame:

implicit val sc: SparkContext = new SparkContext(new SparkConf().setAppName("App"))
sc.hadoopConfiguration.set("hbase.zookeeper.quorum", "jdbc:phoenix:node01,node02,node03:2181")

implicit val sqlc = new SQLContext(sc)
def findAllPH: DataFrame = {
    val predicate: Option[String] = Some(s" operationTime > TO_TIMESTAMP( '30/01/2017 00:00:00' ,'dd/MM/yyyy HH:mm:ss') ");
    val df = sqlc.phoenixTableAsDataFrame(
      TableName, TableColumns, predicate, conf = configuration
    ).select("custumer_id")
    df
}

To create a dataframe from postgres:

    def findAllPS(): DataFrame = {
      val df = sqlc.read
        .format("jdbc")
        .options(
          Map("url" -> jdbc:postgresql://server_db:5432/db_name,
            "driver" -> "org.postgresql.Driver",
            "dbtable" -> s"(select id,name,surname from custumer_table ) t ",
            "user" -> "user",
            "password" -> "password").load().select("id","name","surname")
    df
  }

When I call findAllPH.where("custumer_id = '100000'").show(1) takes few seconds (thanks to DagScheduler)

When I call findAllPS.where("id = '100000'").show(1) takes minutes because spark loads all records before filter by id (seems no DagScheduler)

So if I do a dataframe sql join: findAllPH join findAllPS on id = and custumer_id, takes a lot time, however a selfJoin between findAllPH on custumer_id takes few time

Is there a way to make PS working as PHOENIX ?

The first solution of the problem was to retrive all the ids:

ids = findAllPH.rdd.collect.as[String]

postgres query like:

"dbtable" -> (select id,name,surname from custumer_table where id in (ids(1), ids(2), .... ids(N) )) 

It's faster but not as expected because the function collect is very expensive

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