53

Spark 1.4.1

I encounter a situation where grouping by a dataframe, then counting and filtering on the 'count' column raises the exception below

import sqlContext.implicits._
import org.apache.spark.sql._

case class Paf(x:Int)
val myData = Seq(Paf(2), Paf(1), Paf(2))
val df = sc.parallelize(myData, 2).toDF()

Then grouping and filtering:

df.groupBy("x").count()
  .filter("count >= 2")
  .show()

Throws an exception:

java.lang.RuntimeException: [1.7] failure: ``('' expected but `>=' found count >= 2

Solution:

Renaming the column makes the problem vanish (as I suspect there is no conflict with the interpolated 'count' function'

df.groupBy("x").count()
  .withColumnRenamed("count", "n")
  .filter("n >= 2")
  .show()

So, is that a behavior to expect, a bug or is there a canonical way to go around?

thanks, alex

3 Answers 3

53

When you pass a string to the filter function, the string is interpreted as SQL. Count is a SQL keyword and using count as a variable confuses the parser. This is a small bug (you can file a JIRA ticket if you want to).

You can easily avoid this by using a column expression instead of a String:

df.groupBy("x").count()
  .filter($"count" >= 2)
  .show()
2
  • Why does the filter expression not work if I change it to '==' ? May 9, 2019 at 12:58
  • @sqlconsumer.net use '==='
    – Jacob Joy
    Dec 10, 2019 at 15:06
31

So, is that a behavior to expect, a bug

Truth be told I am not sure. It looks like parser is interpreting count not as a column name but a function and expects following parentheses. Looks like a bug or at least a serious limitation of the parser.

is there a canonical way to go around?

Some options have been already mentioned by Herman and mattinbits so here more SQLish approach from me:

import org.apache.spark.sql.functions.count

df.groupBy("x").agg(count("*").alias("cnt")).where($"cnt"  > 2)
2
  • how can i show all columns instead of the column X and the CNT col?
    – Abu Shoeb
    Aug 1, 2018 at 4:38
  • 1
    @abu-shoeb You can use agg(...) with more than one expression. A common pattern is to use min(name) for all the other columns you'd like to show, giving the smallest value of the column in each group. You would have to list all columns explicitly. Aug 10, 2020 at 5:58
11

I think a solution is to put count in back ticks

.filter("`count` >= 2")

http://mail-archives.us.apache.org/mod_mbox/spark-user/201507.mbox/%3C8E43A71610EAA94A9171F8AFCC44E351B48EDF@fmsmsx124.amr.corp.intel.com%3E

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