When running "sbt package" from the command line for a small Spark Scala application, I'm getting the "value $ is not a member of StringContext" compilation error on the following line of code:

val joined = ordered.join(empLogins, $"login" === $"username", "inner")
  .select("login", "count")

Intellij 13.1 is giving me the same error message. The same .scala source code gets compiled without any issue in Eclipse 4.4.2. And also it works well with maven in a separate maven project from the command line.

It looks like sbt doesn't recognize the $ sign because I'm missing some plugin in my project/plugins.sbt file or some setting in my build.sbt file.

Are you familiar with this issue? Any pointers will be appreciated. I can provide build.sbt and/or project/plugins.sbt if needed be.

  • Probably it would help if you would describe what do you think $ does. Do you have a special import? Do you use plugins? I know you already mentioned plugins, but if you already suspect, why did you not share the used plugins? – Gábor Bakos May 25 '15 at 20:36

You need to make sure you import sqlContext.implicits._

This gets you implicit class StringToColumn extends AnyRef

Which is commented as:

Converts $"col name" into an Column.

  • I did like this still giving error ...any suggestion please i am using scala 2.11 val resultDf = accumulated_results_df.as("a").join(computed_df.as("c"), ( $"a.company_id" === $"c.company_id" ) && ( $"c.min_dd" > $"a.max_dd" ) , "left") Error : org.apache.spark.sql.AnalysisException: Reference 'company_id' is ambiguous, could be: a.company_id, c.company_id.; – Shyam Apr 4 at 8:11

In Spark 2.0+

$-notation for columns can be used by importing implicit on SparkSession object (spark)

val spark = org.apache.spark.sql.SparkSession.builder
        .appName("App name")

import spark.implicits._

then your code with $ notation

val joined = ordered.join(empLogins, $"login" === $"username", "inner")
  .select("login", "count")

Great answer guys, if resolving import is a concern, then will this work

import org.apache.spark.sql.{SparkSession, SQLContext}
val ss = SparkSession.builder().appName("test").getOrCreate()
val dataDf = ...

import ss.sqlContext.implicits._
dataDf.filter(not($"column_name1" === "condition"))
  • 1
    No need to use sqlContext in Spark 2.x, SparkSession is enough. – mrsrinivas May 3 '18 at 1:36

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