5

I have a Spark job, written in Python, which is getting odd behaviour when checking for errors in its data. A simplified version is below:

from pyspark.sql import SparkSession
from pyspark.sql.types import StringType, StructType, StructField, DoubleType
from pyspark.sql.functions import col, lit

spark = SparkSession.builder.master("local[3]").appName("pyspark-unittest").getOrCreate()
spark.conf.set("mapreduce.fileoutputcommitter.marksuccessfuljobs", "false")


SCHEMA = StructType([
    StructField("headerDouble", DoubleType(), False),
    StructField("ErrorField", StringType(), False)
])

dataframe = (
    spark.read
    .option("header", "true")
    .option("mode", "PERMISSIVE")
    .option("columnNameOfCorruptRecord", "ErrorField")
    .schema(SCHEMA).csv("./x.csv")
)

total_row_count = dataframe.count()
print("total_row_count = " + str(total_row_count))

errors = dataframe.filter(col("ErrorField").isNotNull())
errors.show()
error_count = errors.count()
print("errors count = " + str(error_count))

The csv it is reading is simply:

headerDouble
wrong

The relevant output of this is

total_row_count = 1
+------------+----------+
|headerDouble|ErrorField|
+------------+----------+
|        null|     wrong|
+------------+----------+

errors count = 0

Now how does this possibly happen? If the dataframe has a record, how is being counted as 0? Is this a bug in the Spark infrastructure or am I missing something?

EDIT: Looks like this might be a known bug on Spark 2.2 which has been fixed in Spark 2.3 - https://issues.apache.org/jira/browse/SPARK-21610

1
  • 3
    Definitely a bug. Based on the execution plan and behavior likely somewhere in the pushdown mechanism. Conisder dataframe.select(col("ErrorField").isNotNull()).show() vs. dataframe.select("*", col("ErrorField").isNotNull()).show()... – zero323 May 1 '18 at 19:20
6
+50

Thanks @user6910411 - does seem to be a bug. I've raised an issue in the Spark project's bug tracker.

I'm speculating that Spark is getting confused due to the presence of the ErrorField in the schema which is also being specified as the error column and being used to filter the dataframe.

Meanwhile I think I've found a workaround to count the dataframe rows at a reasonable speed:

def count_df_with_spark_bug_workaround(df):
    return sum(1 for _ in df.toLocalIterator())

Not quite sure why this gives the right answer when .count() doesn't work.

Jira ticket I raised: https://issues.apache.org/jira/browse/SPARK-24147

This turned out to be a duplicate of: https://issues.apache.org/jira/browse/SPARK-21610

2
  • 2
    which spark version are you using? I am asking because I am getting AnalysisException: Since Spark 2.3, the queries from raw JSON/CSV files are disallowed when the referenced columns only include the internal corrupt record column – Ramesh Maharjan May 2 '18 at 17:16
  • Thanks, this was Spark 2.2-point-something. Looks like this was already "fixed" in the sense of giving an error message in 2.3 branch. – Rich Smith May 3 '18 at 11:24

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