use*_*530 2 unit-testing scala apache-spark parquet apache-spark-sql
我对Scala Spark生态系统非常陌生,想知道什么是对链式数据框转换进行单元测试的最佳方法,所以这是我要测试的方法的代码示例
def writeToParquet(spark: SparkSession, dataFrame: DataFrame, col1: DataType1, col2:DataType2): Unit {
dataFrame
.withColumn("date", some_columnar_date_logic)
.withColumn("hour", some_more_functional_logic)
.... //couple more transformation logic
.write
.mode(SaveMode.Append)
.partitionBy("col1", "col2", "col3")
.parquet("some hdfs/s3/url")
}
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问题是镶木地板属于Unit退货类型,这使测试变得困难。问题是,转换本质上是不可变的,这进一步加剧了问题,这使得模拟和监视变得有些困难
为了创建数据框,我将测试数据集转储到了csv中
请找到用于数据帧单元测试的简单示例。您可以将其分为两部分。第一。测试转换,您可以执行简单的shell脚本来测试写入的文件
import com.holdenkarau.spark.testing._
import org.apache.spark.sql.{DataFrame, Row}
import org.apache.spark.sql.functions.lit
import org.apache.spark.sql.types.{IntegerType, StringType, StructField, StructType}
import org.scalatest.{FunSuite, Matchers}
class SomeDFTest extends FunSuite with Matchers with DataFrameSuiteBase {
import spark.implicits._
test("Testing Input customer data date transformation") {
val inputSchema = List(
StructField("number", IntegerType, false),
StructField("word", StringType, false)
)
val expectedSchema = List(
StructField("number", IntegerType, false),
StructField("word", StringType, false),
StructField("dummyColumn", StringType, false)
)
val inputData = Seq(
Row(8, "bat"),
Row(64, "mouse"),
Row(-27, "horse")
)
val expectedData = Seq(
Row (8, "bat","test"),
Row(64, "mouse","test"),
Row(-27, "horse","test")
)
val inputDF = spark.createDataFrame(
spark.sparkContext.parallelize(inputData),
StructType(inputSchema)
)
val expectedDF = spark.createDataFrame(
spark.sparkContext.parallelize(expectedData),
StructType(expectedSchema)
)
val actual = transformSomeDf(inputDF)
assertDataFrameEquals(actual, expectedDF) // equal
}
def transformSomeDf(df:DataFrame):DataFrame={
df.withColumn("dummyColumn",lit("test"))
}
}
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Sbt.build配置
name := "SparkTest"
version := "0.1"
scalaVersion := "2.11.8"
val sparkVersion = "2.3.0"
libraryDependencies ++= Seq(
"org.apache.spark" %% "spark-core" % sparkVersion,
"org.apache.spark" %% "spark-sql" % sparkVersion,
"org.apache.spark" %% "spark-hive" % sparkVersion % "provided",
"com.holdenkarau" %% "spark-testing-base" % "2.4.0_0.11.0" % Test
)
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