Ror*_*rne 37 scala aggregate-functions user-defined-functions apache-spark apache-spark-sql
我知道如何在Spark SQL中编写UDF:
def belowThreshold(power: Int): Boolean = {
return power < -40
}
sqlContext.udf.register("belowThreshold", belowThreshold _)
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我可以做类似的定义聚合函数吗?这是怎么做到的?
对于上下文,我想运行以下SQL查询:
val aggDF = sqlContext.sql("""SELECT span, belowThreshold(opticalReceivePower), timestamp
FROM ifDF
WHERE opticalReceivePower IS NOT null
GROUP BY span, timestamp
ORDER BY span""")
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它应该返回类似的东西
Row(span1, false, T0)
我希望聚合函数告诉我opticalReceivePower在定义的组中是否有任何值span,timestamp哪些值低于阈值.我是否需要以不同的方式将UDAF写入上面粘贴的UDF?
zer*_*323 76
Spark> = 2.3
矢量化udf(仅限Python):
from pyspark.sql.functions import pandas_udf
from pyspark.sql.functions import PandasUDFType
from pyspark.sql.types import *
import pandas as pd
df = sc.parallelize([
("a", 0), ("a", 1), ("b", 30), ("b", -50)
]).toDF(["group", "power"])
def below_threshold(threshold, group="group", power="power"):
@pandas_udf("struct<group: string, below_threshold: boolean>", PandasUDFType.GROUPED_MAP)
def below_threshold_(df):
df = pd.DataFrame(
df.groupby(group).apply(lambda x: (x[power] < threshold).any()))
df.reset_index(inplace=True, drop=False)
return df
return below_threshold_
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用法示例:
df.groupBy("group").apply(below_threshold(-40)).show()
## +-----+---------------+
## |group|below_threshold|
## +-----+---------------+
## | b| true|
## | a| false|
## +-----+---------------+
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另请参阅在PySpark中对GroupedData应用UDF(具有正常运行的python示例)
Spark> = 2.0(可选1.6但API略有不同):
可以Aggregators在打字时使用Datasets:
import org.apache.spark.sql.expressions.Aggregator
import org.apache.spark.sql.{Encoder, Encoders}
class BelowThreshold[I](f: I => Boolean) extends Aggregator[I, Boolean, Boolean]
with Serializable {
def zero = false
def reduce(acc: Boolean, x: I) = acc | f(x)
def merge(acc1: Boolean, acc2: Boolean) = acc1 | acc2
def finish(acc: Boolean) = acc
def bufferEncoder: Encoder[Boolean] = Encoders.scalaBoolean
def outputEncoder: Encoder[Boolean] = Encoders.scalaBoolean
}
val belowThreshold = new BelowThreshold[(String, Int)](_._2 < - 40).toColumn
df.as[(String, Int)].groupByKey(_._1).agg(belowThreshold)
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Spark> = 1.5:
在Spark 1.5中,您可以像这样创建UDAF,尽管它很可能是一种过度杀伤:
import org.apache.spark.sql.expressions._
import org.apache.spark.sql.types._
import org.apache.spark.sql.Row
object belowThreshold extends UserDefinedAggregateFunction {
// Schema you get as an input
def inputSchema = new StructType().add("power", IntegerType)
// Schema of the row which is used for aggregation
def bufferSchema = new StructType().add("ind", BooleanType)
// Returned type
def dataType = BooleanType
// Self-explaining
def deterministic = true
// zero value
def initialize(buffer: MutableAggregationBuffer) = buffer.update(0, false)
// Similar to seqOp in aggregate
def update(buffer: MutableAggregationBuffer, input: Row) = {
if (!input.isNullAt(0))
buffer.update(0, buffer.getBoolean(0) | input.getInt(0) < -40)
}
// Similar to combOp in aggregate
def merge(buffer1: MutableAggregationBuffer, buffer2: Row) = {
buffer1.update(0, buffer1.getBoolean(0) | buffer2.getBoolean(0))
}
// Called on exit to get return value
def evaluate(buffer: Row) = buffer.getBoolean(0)
}
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用法示例:
df
.groupBy($"group")
.agg(belowThreshold($"power").alias("belowThreshold"))
.show
// +-----+--------------+
// |group|belowThreshold|
// +-----+--------------+
// | a| false|
// | b| true|
// +-----+--------------+
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Spark 1.4解决方法:
我不确定我是否正确理解了您的要求,但据我所知,简单的旧聚合应该足够了:
val df = sc.parallelize(Seq(
("a", 0), ("a", 1), ("b", 30), ("b", -50))).toDF("group", "power")
df
.withColumn("belowThreshold", ($"power".lt(-40)).cast(IntegerType))
.groupBy($"group")
.agg(sum($"belowThreshold").notEqual(0).alias("belowThreshold"))
.show
// +-----+--------------+
// |group|belowThreshold|
// +-----+--------------+
// | a| false|
// | b| true|
// +-----+--------------+
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Spark <= 1.4:
据我所知,此时(Spark 1.4.1),除了Hive之外,UDAF并不支持.应该可以使用Spark 1.5(参见SPARK-3947).
内部Spark使用了许多类,包括ImperativeAggregates和DeclarativeAggregates.
有供内部使用,如有更改恕不另行通知,所以它可能不是你想要在你的产品代码使用的东西,但只是为了完整性BelowThreshold与DeclarativeAggregate可这样来实现(星火2.2快照测试):
import org.apache.spark.sql.catalyst.expressions.aggregate.DeclarativeAggregate
import org.apache.spark.sql.catalyst.expressions._
import org.apache.spark.sql.types._
case class BelowThreshold(child: Expression, threshold: Expression)
extends DeclarativeAggregate {
override def children: Seq[Expression] = Seq(child, threshold)
override def nullable: Boolean = false
override def dataType: DataType = BooleanType
private lazy val belowThreshold = AttributeReference(
"belowThreshold", BooleanType, nullable = false
)()
// Used to derive schema
override lazy val aggBufferAttributes = belowThreshold :: Nil
override lazy val initialValues = Seq(
Literal(false)
)
override lazy val updateExpressions = Seq(Or(
belowThreshold,
If(IsNull(child), Literal(false), LessThan(child, threshold))
))
override lazy val mergeExpressions = Seq(
Or(belowThreshold.left, belowThreshold.right)
)
override lazy val evaluateExpression = belowThreshold
override def defaultResult: Option[Literal] = Option(Literal(false))
}
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它应该进一步包裹相当于withAggregateFunction.